[{"data":1,"prerenderedAt":-1},["ShallowReactive",2],{"summary-00ca920001176120-scaling-beyond-2d-ibm-s-nano-stack-and-the-rise-of-summary":3,"summaries-facets-categories":148,"summary-related-00ca920001176120-scaling-beyond-2d-ibm-s-nano-stack-and-the-rise-of-summary":5722},{"id":4,"title":5,"ai":6,"body":13,"categories":105,"created_at":107,"date_modified":107,"description":97,"extension":108,"faq":107,"featured":109,"kicker_label":107,"meta":110,"navigation":127,"path":128,"published_at":129,"question":107,"scraped_at":130,"seo":131,"sitemap":132,"source_id":133,"source_name":134,"source_type":135,"source_url":136,"stem":137,"tags":138,"thumbnail_url":143,"tldr":144,"tweet":145,"unknown_tags":146,"__hash__":147},"summaries\u002Fsummaries\u002F00ca920001176120-scaling-beyond-2d-ibm-s-nano-stack-and-the-rise-of-summary.md","Scaling Beyond 2D: IBM’s Nano Stack and the Rise of Orchestration",{"provider":7,"model":8,"input_tokens":9,"output_tokens":10,"processing_time_ms":11,"cost_usd":12},"openrouter","google\u002Fgemini-3.1-flash-lite",9647,1093,5224,0.00405125,{"type":14,"value":15,"toc":96},"minimark",[16,21,25,29,32,35,39,42,46,81,85],[17,18,20],"h2",{"id":19},"the-3d-shift-in-semiconductor-scaling","The 3D Shift in Semiconductor Scaling",[22,23,24],"p",{},"IBM has announced a breakthrough in semiconductor manufacturing with its 0.7nm \"nano stack\" technology. According to Huiming Bu, VP of Silicon Technology R&D, the industry has reached the physical limits of traditional 2D transistor scaling. The nano stack architecture introduces a vertical, staggered design that stacks transistors in the Z-direction for the first time in 60 years. This innovation provides a 50% performance increase or a 70% reduction in power consumption compared to current 2nm chips. Crucially, the design allows for independent optimization of top and bottom devices, providing a roadmap for scaling that could sustain the industry for the next 10–15 years.",[17,26,28],{"id":27},"the-rise-of-multi-model-orchestration","The Rise of Multi-Model Orchestration",[22,30,31],{},"The panel discussed the emergence of new models like Sakana AI’s Fugu and Z.ai’s GLM-5.2, which are challenging the dominance of frontier labs like OpenAI and Anthropic. The panelists reached a consensus that these \"models\" are better understood as orchestration platforms. Sakana’s Fugu, for instance, functions as a router that intelligently directs tasks to various underlying models.",[22,33,34],{},"This shift suggests that the future of AI capability lies in the orchestration layer rather than just the raw weights of a single monolithic model. Gabe Goodhart noted that while these systems can achieve superior benchmark results through perfect routing, they introduce significant non-determinism. The quality of output becomes dependent on the routing logic, creating a trade-off between consistent performance and the ability to leverage the best-in-class model for any given sub-task.",[17,36,38],{"id":37},"the-future-of-tokenminning-and-efficiency","The Future of \"Tokenminning\" and Efficiency",[22,40,41],{},"Moving away from \"tokenmaxxing\" (the pursuit of ever-larger context windows and output lengths), the panel highlighted a new trend: \"tokenminning.\" This approach focuses on efficiency and precision, prioritizing the most important outcomes of AI usage rather than sheer volume. The panelists argued that the real innovation will occur when these orchestration techniques are applied to smaller models, allowing frontier-level capabilities to run on commodity hardware like smartphones or laptops. This horizontal spread of smaller, highly capable, orchestrated models is viewed as a more sustainable and impactful path than the current race for massive, centralized models.",[17,43,45],{"id":44},"key-takeaways","Key Takeaways",[47,48,49,57,63,69,75],"ul",{},[50,51,52,56],"li",{},[53,54,55],"strong",{},"Vertical Scaling is Here:"," The transition from 2D to 3D (Z-direction) transistor stacking is the primary solution to the slowing of Moore's Law.",[50,58,59,62],{},[53,60,61],{},"Orchestration as Product:"," The most significant AI innovation is shifting from building better base models to building better routing and orchestration systems.",[50,64,65,68],{},[53,66,67],{},"Beware of Non-Determinism:"," Multi-model systems offer high performance but increase unpredictability, as the user cannot always control or predict which model will service a specific request.",[50,70,71,74],{},[53,72,73],{},"Efficiency Over Scale:"," The industry is pivoting from \"tokenmaxxing\" to \"tokenminning,\" focusing on getting higher quality results with smaller, more efficient footprints.",[50,76,77,80],{},[53,78,79],{},"Enterprise Resilience:"," Orchestration provides a buffer against model fluctuations, allowing developers to swap out underlying models without breaking the entire application pipeline.",[17,82,84],{"id":83},"notable-quotes","Notable Quotes",[47,86,87,90,93],{},[50,88,89],{},"\"For the first time in the history of the semiconductor industry, we are stacking the device in the vertical direction, Z-direction, which is a direction our industry has not explored in the past 60 plus years.\" — Huiming Bu",[50,91,92],{},"\"I think we're doing it a disservice by calling it a model. Because fundamentally, that's not the innovation here... they are figuring out how to get the best results out of the models that already exist, and stitch those together.\" — Gabe Goodhart",[50,94,95],{},"\"I don't see this as a fundamental jump in terms of a new model. I think we're gearing towards orchestration is the product as opposed to the actual model.\" — Abraham Daniels",{"title":97,"searchDepth":98,"depth":98,"links":99},"",2,[100,101,102,103,104],{"id":19,"depth":98,"text":20},{"id":27,"depth":98,"text":28},{"id":37,"depth":98,"text":38},{"id":44,"depth":98,"text":45},{"id":83,"depth":98,"text":84},[106],"Inference & Serving",null,"md",false,{"content_references":111,"triage":122},[112,116,118,120],{"type":113,"title":114,"context":115},"tool","Sakana AI Fugu","mentioned",{"type":113,"title":117,"context":115},"Z.ai GLM-5.2",{"type":113,"title":119,"context":115},"IBM Granite",{"type":113,"title":121,"context":115},"Google DeepMind",{"relevance":123,"novelty":124,"quality":123,"actionability":98,"composite":125,"reasoning":126},4,3,3.4,"Category: Agents & Orchestration. The article discusses the shift towards multi-model orchestration, which addresses a specific pain point for engineers looking to optimize AI performance. However, while it presents some new insights on orchestration, it lacks detailed actionable steps for implementation.",true,"\u002Fsummaries\u002F00ca920001176120-scaling-beyond-2d-ibm-s-nano-stack-and-the-rise-of-summary","2026-06-26 10:00:21","2026-06-29 14:33:35",{"title":5,"description":97},{"loc":128},"00ca920001176120","IBM Technology","video","https:\u002F\u002Fwww.youtube.com\u002Fwatch?v=d-hJa-yDJmQ","summaries\u002F00ca920001176120-scaling-beyond-2d-ibm-s-nano-stack-and-the-rise-of-summary",[139,140,141,142],"architectures","inference","agents","open-source","https:\u002F\u002Fi.ytimg.com\u002Fvi\u002Fd-hJa-yDJmQ\u002Fhqdefault.jpg","IBM introduces a 0.7nm 'nano stack' chip architecture to overcome 2D scaling limits, while the panel debates the shift from monolithic model development to multi-model orchestration as the new frontier for AI performance.","This podcast episode features a technical deep dive into [IBM’s 0.7nm \"Nano Stack\" chip technology](https:\u002F\u002Fibm.biz\u002F~Grs0J3yK2), explaining how vertical transistor stacking aims to bypass traditional 2D scaling limits. The remainder of the show is a general industry panel discussing recent AI model releases, the intersection of AI and film, and the shift from \"tokenmaxxing\" to \"tokenminning\" as a metric for AI efficiency.",[],"N1jVg_nTEyDizziKphYR3U4dwt83NdIb_W9jFq-An_c",[149,152,155,158,161,164,166,168,171,173,175,177,179,181,183,185,187,189,192,194,196,198,200,202,204,206,208,210,212,214,216,218,220,222,224,226,229,232,234,236,238,240,242,244,246,248,250,252,255,257,259,261,263,265,267,269,271,273,275,277,279,281,283,286,288,290,292,294,296,298,300,302,304,306,308,310,313,315,317,319,321,323,325,327,329,331,333,335,337,339,341,343,345,347,349,351,353,355,357,359,361,363,365,367,369,372,374,376,378,380,382,384,386,388,390,393,395,397,399,401,403,405,407,409,411,413,415,418,420,422,424,426,428,430,432,435,437,439,441,443,445,447,449,451,453,455,457,459,461,463,465,467,469,471,473,475,477,479,481,484,486,488,491,493,495,497,499,501,503,505,507,509,511,513,515,517,520,522,524,526,528,530,532,534,536,539,541,543,545,547,549,551,553,555,557,559,561,563,565,567,569,571,573,575,577,579,581,583,585,587,589,591,593,595,597,599,601,603,605,607,609,611,613,615,617,619,621,623,625,627,629,631,633,635,637,639,641,643,645,647,649,651,653,655,657,659,661,663,665,667,669,671,673,675,677,679,681,683,685,687,689,691,693,695,697,699,701,703,705,707,709,711,713,715,717,719,721,723,725,727,729,731,733,735,737,739,741,743,745,747,749,751,753,755,757,759,761,763,765,767,769,771,773,775,778,780,782,784,787,789,791,793,795,797,799,801,803,805,808,810,812,814,816,818,820,822,824,826,828,830,832,834,836,838,840,842,844,846,848,850,852,854,856,858,860,862,864,866,868,870,872,874,876,878,880,882,884,886,888,890,892,894,896,898,900,902,904,906,908,910,912,914,916,918,920,922,924,926,928,930,932,934,936,938,940,942,944,946,948,950,952,954,956,958,960,962,964,966,968,970,972,974,976,978,980,982,984,986,988,990,992,994,996,998,1000,1002,1004,1006,1008,1010,1012,1014,1016,1018,1020,1022,1024,1026,1028,1030,1032,1034,1036,1038,1040,1042,1044,1046,1048,1050,1052,1054,1057,1059,1061,1063,1065,1067,1069,1071,1073,1075,1077,1079,1081,1083,1085,1087,1089,1091,1093,1095,1097,1099,1101,1103,1105,1107,1109,1111,1113,1115,1117,1119,1121,1123,1125,1127,1129,1131,1133,1135,1137,1139,1141,1143,1145,1147,1149,1151,1153,1155,1157,1159,1161,1163,1165,1167,1169,1171,1173,1175,1177,1179,1181,1183,1185,1187,1189,1191,1193,1195,1197,1199,1201,1203,1205,1207,1209,1211,1214,1216,1218,1220,1222,1224,1226,1228,1230,1232,1234,1236,1238,1240,1242,1244,1246,1248,1250,1252,1254,1256,1258,1260,1262,1264,1266,1268,1270,1272,1274,1276,1278,1280,1282,1284,1286,1288,1290,1292,1294,1296,1298,1300,1302,1304,1306,1308,1310,1312,1314,1316,1318,1320,1322,1324,1327,1329,1331,1333,1335,1337,1339,1341,1343,1345,1347,1349,1351,1353,1355,1357,1359,1361,1363,1365,1367,1369,1371,1373,1375,1377,1379,1381,1383,1385,1387,1389,1391,1393,1395,1397,1399,1401,1403,1405,1407,1409,1411,1413,1415,1417,1419,1421,1423,1425,1427,1429,1431,1433,1435,1437,1439,1441,1443,1445,1447,1449,1452,1454,1456,1458,1460,1462,1464,1466,1468,1470,1472,1474,1476,1478,1480,1482,1484,1486,1488,1490,1492,1494,1496,1498,1500,1503,1505,1507,1509,1511,1513,1515,1517,1519,1521,1523,1525,1527,1529,1531,1533,1535,1537,1539,1541,1543,1545,1547,1549,1551,1553,1555,1557,1559,1561,1563,1565,1567,1569,1571,1573,1575,1577,1579,1581,1583,1585,1587,1589,1591,1593,1595,1597,1599,1601,1603,1605,1607,1609,1611,1613,1615,1617,1619,1621,1623,1625,1627,1629,1631,1633,1635,1637,1639,1641,1643,1645,1647,1649,1651,1653,1655,1657,1659,1661,1663,1665,1667,1669,1671,1673,1675,1677,1679,1681,1683,1685,1687,1689,1691,1693,1695,1697,1699,1701,1703,1705,1707,1709,1711,1713,1715,1717,1719,1721,1723,1725,1727,1729,1731,1733,1735,1737,1739,1741,1743,1745,1747,1749,1751,1753,1755,1757,1759,1761,1763,1765,1767,1769,1771,1773,1775,1777,1779,1781,1783,1785,1787,1789,1791,1793,1795,1797,1799,1801,1803,1805,1807,1809,1811,1813,1815,1817,1819,1821,1823,1825,1827,1829,1831,1833,1835,1837,1839,1841,1843,1845,1847,1850,1852,1854,1856,1858,1860,1862,1864,1866,1868,1870,1872,1874,1876,1878,1880,1882,1884,1886,1888,1890,1892,1894,1896,1898,1900,1902,1904,1906,1908,1910,1912,1914,1916,1918,1920,1922,1925,1927,1929,1931,1933,1935,1937,1939,1941,1943,1945,1947,1949,1951,1953,1955,1957,1959,1961,1963,1965,1967,1969,1971,1973,1975,1977,1979,1981,1983,1985,1987,1989,1991,1993,1995,1997,1999,2001,2003,2005,2007,2009,2011,2013,2015,2017,2019,2021,2024,2026,2028,2030,2032,2034,2036,2038,2040,2042,2044,2046,2048,2050,2052,2054,2056,2058,2061,2063,2065,2067,2069,2071,2073,2075,2077,2079,2081,2083,2085,2087,2089,2091,2093,2095,2097,2099,2101,2103,2105,2107,2109,2111,2113,2115,2117,2119,2121,2123,2125,2127,2129,2131,2133,2135,2137,2139,2141,2143,2145,2147,2149,2151,2153,2155,2157,2159,2161,2163,2165,2167,2169,2171,2173,2175,2177,2179,2181,2183,2185,2187,2189,2191,2193,2195,2197,2199,2201,2203,2205,2207,2209,2211,2213,2215,2217,2219,2221,2223,2225,2227,2229,2231,2233,2235,2237,2239,2241,2243,2245,2247,2249,2251,2253,2255,2257,2259,2261,2263,2265,2267,2269,2271,2273,2275,2277,2279,2281,2283,2285,2287,2289,2291,2293,2295,2297,2299,2301,2303,2305,2307,2309,2311,2313,2315,2317,2319,2321,2323,2325,2327,2329,2331,2333,2335,2337,2339,2341,2343,2345,2347,2349,2351,2353,2355,2357,2359,2361,2363,2365,2367,2369,2371,2373,2375,2377,2379,2381,2383,2385,2387,2389,2391,2393,2395,2397,2399,2401,2403,2405,2407,2409,2411,2413,2415,2417,2419,2421,2423,2425,2427,2429,2431,2433,2435,2437,2439,2441,2443,2445,2447,2449,2451,2453,2455,2457,2459,2461,2463,2465,2467,2469,2471,2473,2475,2477,2479,2481,2483,2485,2487,2489,2491,2493,2495,2497,2499,2501,2503,2505,2507,2509,2511,2513,2515,2517,2519,2521,2523,2525,2527,2529,2531,2533,2535,2537,2539,2541,2543,2545,2547,2549,2551,2553,2555,2557,2559,2561,2563,2565,2567,2569,2571,2573,2575,2577,2579,2582,2584,2586,2588,2590,2592,2594,2596,2598,2600,2602,2604,2606,2608,2610,2612,2614,2616,2618,2620,2622,2624,2626,2628,2630,2632,2634,2636,2638,2640,2642,2644,2646,2648,2650,2652,2654,2656,2658,2660,2662,2664,2666,2668,2670,2672,2674,2676,2679,2681,2683,2685,2687,2689,2691,2693,2695,2697,2699,2701,2703,2705,2707,2709,2711,2713,2715,2717,2719,2721,2723,2725,2727,2729,2731,2733,2735,2737,2739,2741,2743,2745,2747,2749,2751,2753,2755,2757,2759,2761,2763,2765,2767,2769,2771,2773,2775,2777,2779,2781,2783,2785,2787,2789,2791,2793,2795,2797,2799,2801,2803,2805,2807,2809,2811,2813,2815,2817,2819,2821,2823,2825,2827,2829,2831,2833,2835,2837,2839,2841,2843,2845,2847,2849,2851,2853,2855,2857,2859,2861,2863,2865,2867,2869,2871,2873,2875,2877,2879,2881,2883,2885,2887,2889,2891,2893,2895,2897,2899,2901,2903,2905,2907,2909,2911,2913,2915,2917,2919,2921,2923,2925,2927,2929,2931,2933,2935,2937,2939,2941,2943,2945,2947,2949,2951,2953,2955,2957,2959,2961,2963,2965,2967,2969,2971,2973,2975,2977,2979,2981,2983,2985,2987,2989,2991,2993,2995,2997,2999,3001,3003,3005,3007,3009,3011,3013,3015,3017,3019,3021,3023,3025,3027,3029,3031,3033,3035,3037,3039,3041,3043,3045,3047,3049,3051,3053,3055,3057,3059,3061,3063,3065,3067,3069,3071,3073,3075,3077,3079,3081,3083,3085,3087,3089,3091,3093,3095,3097,3099,3101,3103,3105,3107,3109,3111,3113,3115,3117,3119,3121,3123,3125,3127,3129,3131,3133,3135,3137,3139,3141,3143,3145,3147,3149,3151,3153,3155,3157,3159,3161,3163,3165,3167,3169,3171,3173,3175,3177,3179,3181,3183,3185,3187,3189,3191,3193,3195,3197,3199,3201,3203,3205,3207,3209,3211,3213,3215,3217,3219,3221,3223,3225,3227,3229,3231,3233,3235,3237,3239,3241,3243,3245,3247,3249,3251,3253,3255,3257,3259,3261,3263,3265,3267,3269,3271,3273,3275,3277,3279,3281,3283,3285,3287,3289,3291,3293,3295,3297,3299,3301,3303,3305,3307,3309,3311,3313,3315,3317,3319,3321,3323,3325,3327,3329,3331,3333,3335,3337,3339,3341,3343,3345,3347,3349,3351,3353,3355,3357,3359,3361,3363,3365,3367,3369,3371,3373,3375,3377,3379,3381,3383,3385,3387,3389,3391,3393,3395,3397,3399,3401,3403,3405,3407,3409,3411,3413,3415,3417,3419,3421,3423,3425,3427,3429,3431,3433,3435,3437,3439,3441,3443,3445,3447,3449,3451,3453,3455,3457,3459,3461,3463,3465,3467,3469,3471,3473,3475,3477,3479,3481,3483,3485,3487,3489,3491,3493,3495,3497,3499,3501,3503,3505,3507,3509,3511,3513,3515,3517,3519,3521,3523,3525,3527,3529,3531,3533,3535,3537,3539,3541,3543,3545,3547,3549,3551,3553,3555,3557,3559,3561,3563,3565,3567,3569,3571,3573,3575,3577,3579,3581,3583,3585,3587,3589,3591,3593,3595,3597,3599,3601,3603,3605,3607,3609,3611,3613,3615,3617,3619,3621,3623,3625,3627,3629,3631,3633,3635,3637,3639,3641,3643,3645,3647,3649,3651,3653,3655,3657,3659,3661,3663,3665,3667,3669,3671,3673,3675,3677,3679,3681,3683,3685,3687,3689,3691,3693,3695,3697,3699,3701,3703,3705,3707,3709,3712,3714,3716,3718,3720,3722,3724,3726,3728,3730,3732,3734,3736,3738,3740,3742,3744,3746,3748,3750,3752,3754,3756,3758,3760,3762,3764,3766,3768,3770,3772,3774,3776,3778,3780,3782,3784,3786,3788,3790,3792,3794,3796,3798,3800,3802,3804,3806,3808,3810,3812,3814,3816,3818,3820,3822,3824,3826,3828,3830,3832,3834,3836,3838,3840,3842,3844,3846,3848,3850,3852,3854,3856,3858,3860,3862,3864,3866,3868,3870,3872,3874,3876,3878,3880,3882,3884,3886,3888,3890,3892,3894,3896,3898,3900,3902,3904,3906,3908,3910,3912,3914,3916,3918,3920,3922,3924,3926,3928,3930,3932,3934,3936,3938,3940,3942,3944,3946,3948,3950,3952,3954,3956,3958,3960,3962,3964,3966,3968,3970,3972,3974,3976,3978,3980,3982,3984,3986,3988,3990,3992,3994,3996,3998,4000,4002,4004,4006,4008,4010,4012,4014,4016,4018,4020,4022,4024,4026,4028,4030,4032,4034,4036,4038,4040,4042,4044,4046,4048,4050,4052,4054,4056,4058,4060,4062,4064,4066,4068,4070,4072,4074,4076,4078,4080,4082,4084,4086,4088,4090,4092,4094,4096,4098,4100,4102,4104,4106,4108,4110,4112,4114,4116,4118,4120,4122,4124,4126,4128,4130,4132,4134,4136,4138,4140,4142,4144,4146,4148,4150,4152,4154,4156,4158,4160,4162,4164,4166,4168,4170,4172,4174,4176,4178,4180,4182,4184,4186,4188,4190,4192,4194,4196,4198,4200,4202,4204,4206,4208,4210,4212,4214,4216,4218,4220,4222,4224,4226,4228,4230,4232,4234,4236,4238,4240,4242,4244,4246,4248,4250,4252,4254,4256,4258,4260,4262,4264,4266,4268,4270,4272,4274,4276,4278,4280,4282,4284,4286,4288,4290,4292,4294,4296,4298,4300,4302,4304,4306,4308,4310,4312,4314,4316,4318,4320,4322,4324,4326,4328,4330,4332,4334,4336,4338,4340,4342,4344,4346,4348,4350,4352,4354,4356,4358,4360,4362,4364,4366,4368,4370,4372,4374,4376,4378,4380,4382,4384,4386,4388,4390,4392,4394,4396,4398,4400,4402,4404,4406,4409,4411,4413,4415,4417,4419,4421,4423,4425,4427,4429,4431,4433,4435,4437,4439,4441,4443,4445,4447,4449,4451,4453,4455,4457,4459,4461,4463,4465,4467,4469,4471,4473,4475,4477,4479,4481,4483,4485,4487,4489,4491,4493,4495,4497,4499,4501,4503,4505,4507,4509,4511,4513,4515,4517,4519,4521,4523,4525,4527,4529,4531,4533,4535,4537,4539,4541,4543,4545,4547,4549,4551,4553,4555,4557,4559,4561,4563,4565,4567,4569,4572,4574,4576,4578,4580,4582,4584,4586,4588,4590,4592,4594,4596,4598,4600,4602,4604,4606,4608,4610,4612,4614,4616,4618,4620,4622,4624,4626,4628,4630,4632,4634,4636,4638,4640,4642,4644,4646,4648,4650,4652,4654,4656,4658,4660,4662,4664,4666,4668,4670,4672,4674,4676,4678,4680,4682,4684,4686,4688,4690,4692,4694,4696,4698,4700,4702,4704,4706,4708,4710,4712,4714,4716,4718,4720,4722,4724,4726,4728,4730,4732,4734,4736,4738,4740,4742,4744,4746,4748,4750,4752,4754,4756,4758,4760,4762,4764,4766,4768,4770,4772,4774,4776,4778,4780,4782,4784,4786,4788,4790,4792,4794,4796,4798,4800,4802,4804,4806,4808,4810,4812,4814,4816,4818,4820,4822,4824,4826,4828,4830,4832,4834,4836,4838,4840,4842,4844,4846,4848,4850,4852,4854,4856,4858,4860,4862,4864,4866,4868,4870,4872,4874,4876,4878,4880,4882,4884,4886,4888,4890,4892,4894,4896,4898,4900,4902,4904,4906,4908,4910,4912,4914,4916,4918,4920,4922,4924,4926,4928,4930,4932,4934,4936,4938,4940,4942,4944,4946,4948,4950,4952,4954,4956,4958,4960,4962,4964,4966,4968,4970,4972,4974,4976,4978,4980,4982,4984,4986,4988,4990,4992,4994,4996,4998,5000,5002,5004,5006,5008,5010,5012,5014,5016,5018,5020,5022,5024,5026,5028,5030,5032,5034,5036,5038,5040,5042,5044,5046,5048,5050,5052,5054,5056,5058,5060,5062,5064,5066,5068,5070,5072,5074,5076,5078,5080,5082,5084,5086,5088,5090,5092,5094,5096,5098,5100,5102,5104,5106,5108,5110,5112,5114,5116,5118,5120,5122,5124,5126,5128,5130,5132,5134,5136,5138,5140,5142,5144,5146,5148,5150,5152,5154,5156,5158,5160,5162,5164,5166,5168,5170,5172,5174,5176,5178,5180,5182,5184,5186,5188,5190,5192,5194,5196,5198,5200,5202,5204,5206,5208,5210,5212,5214,5216,5218,5220,5222,5224,5226,5228,5230,5232,5234,5236,5238,5240,5242,5244,5246,5248,5250,5252,5254,5256,5258,5260,5262,5264,5266,5268,5270,5272,5274,5276,5278,5280,5282,5284,5286,5288,5290,5292,5294,5296,5298,5300,5302,5304,5306,5308,5310,5312,5314,5316,5318,5320,5322,5324,5326,5328,5330,5332,5334,5336,5338,5340,5342,5344,5346,5348,5350,5352,5354,5356,5358,5360,5362,5364,5366,5368,5370,5372,5374,5376,5378,5380,5382,5384,5386,5388,5390,5392,5394,5396,5398,5400,5402,5404,5406,5408,5410,5412,5414,5416,5418,5420,5422,5424,5426,5428,5430,5432,5434,5436,5438,5440,5442,5444,5446,5448,5450,5452,5454,5456,5458,5460,5462,5464,5466,5468,5470,5472,5474,5476,5478,5480,5482,5484,5486,5488,5490,5492,5494,5496,5498,5500,5502,5504,5506,5508,5510,5512,5514,5516,5518,5520,5522,5524,5526,5528,5530,5532,5534,5536,5538,5540,5542,5544,5546,5548,5550,5552,5554,5556,5558,5560,5562,5564,5566,5568,5570,5572,5574,5576,5578,5580,5582,5584,5586,5588,5590,5592,5594,5596,5598,5600,5602,5604,5606,5608,5610,5612,5614,5616,5618,5620,5622,5624,5626,5628,5630,5632,5634,5636,5638,5640,5642,5644,5646,5648,5650,5652,5654,5656,5658,5660,5662,5664,5666,5668,5670,5672,5674,5676,5678,5680,5682,5684,5686,5688,5690,5692,5694,5696,5698,5700,5702,5704,5706,5708,5710,5712,5714,5716,5718,5720],{"categories":150},[151],"Developer Productivity",{"categories":153},[154],"Business & SaaS",{"categories":156},[157],"AI & LLMs",{"categories":159},[160],"AI Automation",{"categories":162},[163],"Product Strategy",{"categories":165},[157],{"categories":167},[151],{"categories":169},[170],"Software Engineering",{"categories":172},[157],{"categories":174},[154],{"categories":176},[],{"categories":178},[157],{"categories":180},[106],{"categories":182},[157],{"categories":184},[157],{"categories":186},[160],{"categories":188},[],{"categories":190},[191],"AI News & Trends",{"categories":193},[160],{"categories":195},[157],{"categories":197},[154],{"categories":199},[157],{"categories":201},[160],{"categories":203},[191],{"categories":205},[160],{"categories":207},[160],{"categories":209},[157],{"categories":211},[160],{"categories":213},[157],{"categories":215},[157],{"categories":217},[157],{"categories":219},[191],{"categories":221},[157],{"categories":223},[157],{"categories":225},[],{"categories":227},[228],"Design & Frontend",{"categories":230},[231],"Data Science & Visualization",{"categories":233},[191],{"categories":235},[157],{"categories":237},[157],{"categories":239},[],{"categories":241},[157],{"categories":243},[160],{"categories":245},[170],{"categories":247},[157],{"categories":249},[160],{"categories":251},[157],{"categories":253},[254],"Marketing & Growth",{"categories":256},[228],{"categories":258},[157],{"categories":260},[160],{"categories":262},[157],{"categories":264},[],{"categories":266},[],{"categories":268},[228],{"categories":270},[157],{"categories":272},[160],{"categories":274},[151],{"categories":276},[170],{"categories":278},[228],{"categories":280},[157],{"categories":282},[170],{"categories":284},[285],"DevOps & Cloud",{"categories":287},[160],{"categories":289},[163],{"categories":291},[191],{"categories":293},[157],{"categories":295},[],{"categories":297},[157],{"categories":299},[],{"categories":301},[160],{"categories":303},[170],{"categories":305},[],{"categories":307},[170],{"categories":309},[157],{"categories":311},[312],"Governance & Standards",{"categories":314},[154],{"categories":316},[],{"categories":318},[],{"categories":320},[157],{"categories":322},[157],{"categories":324},[160],{"categories":326},[157],{"categories":328},[157],{"categories":330},[160],{"categories":332},[157],{"categories":334},[157],{"categories":336},[157],{"categories":338},[],{"categories":340},[170],{"categories":342},[],{"categories":344},[],{"categories":346},[170],{"categories":348},[],{"categories":350},[170],{"categories":352},[157],{"categories":354},[157],{"categories":356},[254],{"categories":358},[157],{"categories":360},[228],{"categories":362},[228],{"categories":364},[157],{"categories":366},[170],{"categories":368},[160],{"categories":370},[371],"GovTech & Public-Sector Adoption",{"categories":373},[170],{"categories":375},[157],{"categories":377},[157],{"categories":379},[160],{"categories":381},[160],{"categories":383},[231],{"categories":385},[157],{"categories":387},[191],{"categories":389},[160],{"categories":391},[392],"Legal AI Tools",{"categories":394},[160],{"categories":396},[254],{"categories":398},[160],{"categories":400},[163],{"categories":402},[170],{"categories":404},[371],{"categories":406},[],{"categories":408},[160],{"categories":410},[],{"categories":412},[160],{"categories":414},[160],{"categories":416},[417],"RAG & Retrieval",{"categories":419},[154],{"categories":421},[157],{"categories":423},[170],{"categories":425},[285],{"categories":427},[228],{"categories":429},[157],{"categories":431},[],{"categories":433},[434],"Agents & Orchestration",{"categories":436},[170],{"categories":438},[157],{"categories":440},[],{"categories":442},[160],{"categories":444},[154],{"categories":446},[],{"categories":448},[157],{"categories":450},[],{"categories":452},[151],{"categories":454},[170],{"categories":456},[154],{"categories":458},[157],{"categories":460},[157],{"categories":462},[191],{"categories":464},[157],{"categories":466},[],{"categories":468},[157],{"categories":470},[],{"categories":472},[170],{"categories":474},[231],{"categories":476},[],{"categories":478},[157],{"categories":480},[228],{"categories":482},[483],"Models & Frontier Labs",{"categories":485},[],{"categories":487},[228],{"categories":489},[490],"Regulation & Governance of AI",{"categories":492},[160],{"categories":494},[],{"categories":496},[157],{"categories":498},[157],{"categories":500},[160],{"categories":502},[191],{"categories":504},[154],{"categories":506},[157],{"categories":508},[],{"categories":510},[170],{"categories":512},[160],{"categories":514},[157],{"categories":516},[163],{"categories":518},[519],"AI Policy & Regulation",{"categories":521},[],{"categories":523},[157],{"categories":525},[163],{"categories":527},[160],{"categories":529},[157],{"categories":531},[160],{"categories":533},[],{"categories":535},[231],{"categories":537},[538],"Evals & Reliability",{"categories":540},[157],{"categories":542},[],{"categories":544},[151],{"categories":546},[371],{"categories":548},[519],{"categories":550},[157],{"categories":552},[154],{"categories":554},[157],{"categories":556},[160],{"categories":558},[157],{"categories":560},[160],{"categories":562},[434],{"categories":564},[157],{"categories":566},[170],{"categories":568},[157],{"categories":570},[],{"categories":572},[],{"categories":574},[157],{"categories":576},[371],{"categories":578},[157],{"categories":580},[157],{"categories":582},[],{"categories":584},[228],{"categories":586},[],{"categories":588},[157],{"categories":590},[],{"categories":592},[160],{"categories":594},[157],{"categories":596},[228],{"categories":598},[],{"categories":600},[157],{"categories":602},[160],{"categories":604},[157],{"categories":606},[154],{"categories":608},[160],{"categories":610},[157],{"categories":612},[157],{"categories":614},[170],{"categories":616},[228],{"categories":618},[160],{"categories":620},[],{"categories":622},[170],{"categories":624},[160],{"categories":626},[],{"categories":628},[191],{"categories":630},[],{"categories":632},[157],{"categories":634},[157],{"categories":636},[154,254],{"categories":638},[],{"categories":640},[157],{"categories":642},[157],{"categories":644},[160],{"categories":646},[],{"categories":648},[],{"categories":650},[157],{"categories":652},[228],{"categories":654},[157],{"categories":656},[],{"categories":658},[157],{"categories":660},[285],{"categories":662},[],{"categories":664},[160],{"categories":666},[191],{"categories":668},[157],{"categories":670},[228],{"categories":672},[],{"categories":674},[191],{"categories":676},[157],{"categories":678},[106],{"categories":680},[157],{"categories":682},[160],{"categories":684},[191],{"categories":686},[483],{"categories":688},[157],{"categories":690},[254],{"categories":692},[],{"categories":694},[160],{"categories":696},[154],{"categories":698},[170],{"categories":700},[157],{"categories":702},[160],{"categories":704},[],{"categories":706},[157,285],{"categories":708},[157],{"categories":710},[157],{"categories":712},[157],{"categories":714},[160],{"categories":716},[157,170],{"categories":718},[231],{"categories":720},[157],{"categories":722},[157],{"categories":724},[170],{"categories":726},[160],{"categories":728},[519],{"categories":730},[254],{"categories":732},[157],{"categories":734},[160],{"categories":736},[157],{"categories":738},[157],{"categories":740},[160],{"categories":742},[],{"categories":744},[157],{"categories":746},[160],{"categories":748},[157],{"categories":750},[157,154],{"categories":752},[154],{"categories":754},[],{"categories":756},[228],{"categories":758},[228],{"categories":760},[157],{"categories":762},[],{"categories":764},[],{"categories":766},[191],{"categories":768},[],{"categories":770},[151],{"categories":772},[157],{"categories":774},[170],{"categories":776},[777],"Generative UI & Design-to-Code",{"categories":779},[157],{"categories":781},[228],{"categories":783},[157],{"categories":785},[786],"Algorithmic Accountability",{"categories":788},[160],{"categories":790},[170],{"categories":792},[191],{"categories":794},[228],{"categories":796},[],{"categories":798},[157],{"categories":800},[157],{"categories":802},[157],{"categories":804},[160],{"categories":806},[807],"MLOps & Infrastructure",{"categories":809},[157],{"categories":811},[157],{"categories":813},[157],{"categories":815},[157],{"categories":817},[191],{"categories":819},[151],{"categories":821},[157],{"categories":823},[160],{"categories":825},[285],{"categories":827},[157],{"categories":829},[228],{"categories":831},[157],{"categories":833},[160],{"categories":835},[],{"categories":837},[],{"categories":839},[106],{"categories":841},[228],{"categories":843},[191],{"categories":845},[231],{"categories":847},[],{"categories":849},[157],{"categories":851},[157],{"categories":853},[154],{"categories":855},[157],{"categories":857},[157],{"categories":859},[157],{"categories":861},[191],{"categories":863},[106],{"categories":865},[157],{"categories":867},[228],{"categories":869},[],{"categories":871},[160],{"categories":873},[170],{"categories":875},[],{"categories":877},[157],{"categories":879},[157],{"categories":881},[160],{"categories":883},[170],{"categories":885},[157],{"categories":887},[231],{"categories":889},[],{"categories":891},[157],{"categories":893},[],{"categories":895},[157],{"categories":897},[],{"categories":899},[163],{"categories":901},[154],{"categories":903},[160],{"categories":905},[160],{"categories":907},[],{"categories":909},[151],{"categories":911},[157],{"categories":913},[154],{"categories":915},[191],{"categories":917},[151],{"categories":919},[],{"categories":921},[157],{"categories":923},[],{"categories":925},[],{"categories":927},[191],{"categories":929},[191],{"categories":931},[],{"categories":933},[434],{"categories":935},[157],{"categories":937},[228],{"categories":939},[170],{"categories":941},[],{"categories":943},[392],{"categories":945},[154],{"categories":947},[],{"categories":949},[],{"categories":951},[151],{"categories":953},[231],{"categories":955},[],{"categories":957},[254],{"categories":959},[160],{"categories":961},[154],{"categories":963},[160],{"categories":965},[154],{"categories":967},[170],{"categories":969},[],{"categories":971},[106],{"categories":973},[163],{"categories":975},[157],{"categories":977},[228],{"categories":979},[170],{"categories":981},[154],{"categories":983},[157],{"categories":985},[160],{"categories":987},[154],{"categories":989},[157],{"categories":991},[157],{"categories":993},[],{"categories":995},[],{"categories":997},[170],{"categories":999},[231],{"categories":1001},[163],{"categories":1003},[157],{"categories":1005},[160],{"categories":1007},[157],{"categories":1009},[],{"categories":1011},[191],{"categories":1013},[163],{"categories":1015},[157],{"categories":1017},[538],{"categories":1019},[285],{"categories":1021},[],{"categories":1023},[160],{"categories":1025},[],{"categories":1027},[151],{"categories":1029},[],{"categories":1031},[157],{"categories":1033},[157],{"categories":1035},[228],{"categories":1037},[254],{"categories":1039},[170],{"categories":1041},[160],{"categories":1043},[],{"categories":1045},[170],{"categories":1047},[151],{"categories":1049},[],{"categories":1051},[191],{"categories":1053},[157,285],{"categories":1055},[1056],"Design Systems for AI",{"categories":1058},[157],{"categories":1060},[191],{"categories":1062},[157],{"categories":1064},[157],{"categories":1066},[154],{"categories":1068},[157],{"categories":1070},[],{"categories":1072},[157],{"categories":1074},[157],{"categories":1076},[154],{"categories":1078},[157],{"categories":1080},[],{"categories":1082},[160],{"categories":1084},[170],{"categories":1086},[170],{"categories":1088},[228],{"categories":1090},[191],{"categories":1092},[231],{"categories":1094},[157],{"categories":1096},[151],{"categories":1098},[519],{"categories":1100},[157],{"categories":1102},[160],{"categories":1104},[157],{"categories":1106},[170],{"categories":1108},[170],{"categories":1110},[],{"categories":1112},[],{"categories":1114},[160],{"categories":1116},[163],{"categories":1118},[],{"categories":1120},[157],{"categories":1122},[],{"categories":1124},[228],{"categories":1126},[160],{"categories":1128},[170],{"categories":1130},[228],{"categories":1132},[157],{"categories":1134},[228],{"categories":1136},[],{"categories":1138},[],{"categories":1140},[191],{"categories":1142},[160],{"categories":1144},[160],{"categories":1146},[157],{"categories":1148},[157],{"categories":1150},[157],{"categories":1152},[154],{"categories":1154},[157],{"categories":1156},[157],{"categories":1158},[],{"categories":1160},[170],{"categories":1162},[170],{"categories":1164},[157],{"categories":1166},[170],{"categories":1168},[154],{"categories":1170},[],{"categories":1172},[157],{"categories":1174},[157],{"categories":1176},[157],{"categories":1178},[160],{"categories":1180},[151],{"categories":1182},[154],{"categories":1184},[191],{"categories":1186},[160],{"categories":1188},[106],{"categories":1190},[254],{"categories":1192},[157],{"categories":1194},[160],{"categories":1196},[],{"categories":1198},[228],{"categories":1200},[],{"categories":1202},[157],{"categories":1204},[157],{"categories":1206},[],{"categories":1208},[170],{"categories":1210},[154],{"categories":1212},[1213],"Visual & Generative Media",{"categories":1215},[160],{"categories":1217},[],{"categories":1219},[157],{"categories":1221},[157],{"categories":1223},[285],{"categories":1225},[231],{"categories":1227},[519],{"categories":1229},[170],{"categories":1231},[254],{"categories":1233},[157],{"categories":1235},[228],{"categories":1237},[157],{"categories":1239},[170],{"categories":1241},[160],{"categories":1243},[],{"categories":1245},[],{"categories":1247},[160],{"categories":1249},[151],{"categories":1251},[160],{"categories":1253},[483],{"categories":1255},[157],{"categories":1257},[163],{"categories":1259},[154],{"categories":1261},[],{"categories":1263},[157],{"categories":1265},[163],{"categories":1267},[157],{"categories":1269},[157],{"categories":1271},[157],{"categories":1273},[157],{"categories":1275},[157],{"categories":1277},[254],{"categories":1279},[157],{"categories":1281},[434],{"categories":1283},[157],{"categories":1285},[157],{"categories":1287},[157],{"categories":1289},[157],{"categories":1291},[157],{"categories":1293},[228],{"categories":1295},[160],{"categories":1297},[],{"categories":1299},[160],{"categories":1301},[],{"categories":1303},[285],{"categories":1305},[170],{"categories":1307},[],{"categories":1309},[483],{"categories":1311},[160],{"categories":1313},[157],{"categories":1315},[228,157],{"categories":1317},[151],{"categories":1319},[],{"categories":1321},[157],{"categories":1323},[151],{"categories":1325},[1326],"Medical Imaging & Radiology",{"categories":1328},[228],{"categories":1330},[160],{"categories":1332},[170],{"categories":1334},[],{"categories":1336},[157],{"categories":1338},[157],{"categories":1340},[157],{"categories":1342},[],{"categories":1344},[],{"categories":1346},[157],{"categories":1348},[434],{"categories":1350},[157],{"categories":1352},[151],{"categories":1354},[157],{"categories":1356},[157],{"categories":1358},[],{"categories":1360},[160],{"categories":1362},[157],{"categories":1364},[163],{"categories":1366},[170],{"categories":1368},[157],{"categories":1370},[434],{"categories":1372},[157],{"categories":1374},[160],{"categories":1376},[157],{"categories":1378},[228],{"categories":1380},[160],{"categories":1382},[285],{"categories":1384},[228],{"categories":1386},[154],{"categories":1388},[160],{"categories":1390},[157],{"categories":1392},[157],{"categories":1394},[157],{"categories":1396},[157],{"categories":1398},[157],{"categories":1400},[160],{"categories":1402},[170],{"categories":1404},[157],{"categories":1406},[163],{"categories":1408},[],{"categories":1410},[191],{"categories":1412},[],{"categories":1414},[163],{"categories":1416},[160],{"categories":1418},[1056],{"categories":1420},[1056],{"categories":1422},[228],{"categories":1424},[157],{"categories":1426},[157],{"categories":1428},[160],{"categories":1430},[170],{"categories":1432},[228],{"categories":1434},[160],{"categories":1436},[191],{"categories":1438},[],{"categories":1440},[157],{"categories":1442},[],{"categories":1444},[157],{"categories":1446},[157],{"categories":1448},[157],{"categories":1450},[1451],"Contract Review & E-Discovery",{"categories":1453},[228],{"categories":1455},[157],{"categories":1457},[151],{"categories":1459},[191],{"categories":1461},[157],{"categories":1463},[157],{"categories":1465},[254],{"categories":1467},[170],{"categories":1469},[157],{"categories":1471},[157],{"categories":1473},[160],{"categories":1475},[160],{"categories":1477},[786],{"categories":1479},[160],{"categories":1481},[160],{"categories":1483},[157],{"categories":1485},[157],{"categories":1487},[160],{"categories":1489},[157],{"categories":1491},[434],{"categories":1493},[417],{"categories":1495},[157],{"categories":1497},[160],{"categories":1499},[157],{"categories":1501},[1502],"Law-Firm Practice & Adoption",{"categories":1504},[157],{"categories":1506},[160],{"categories":1508},[228],{"categories":1510},[157],{"categories":1512},[157],{"categories":1514},[],{"categories":1516},[],{"categories":1518},[170],{"categories":1520},[],{"categories":1522},[151],{"categories":1524},[285],{"categories":1526},[157],{"categories":1528},[],{"categories":1530},[151],{"categories":1532},[154],{"categories":1534},[157],{"categories":1536},[254],{"categories":1538},[],{"categories":1540},[154],{"categories":1542},[154],{"categories":1544},[],{"categories":1546},[157],{"categories":1548},[157],{"categories":1550},[170],{"categories":1552},[],{"categories":1554},[],{"categories":1556},[],{"categories":1558},[],{"categories":1560},[157],{"categories":1562},[160],{"categories":1564},[285],{"categories":1566},[157],{"categories":1568},[151],{"categories":1570},[170],{"categories":1572},[157],{"categories":1574},[157],{"categories":1576},[170],{"categories":1578},[163],{"categories":1580},[157],{"categories":1582},[807],{"categories":1584},[157],{"categories":1586},[254],{"categories":1588},[170],{"categories":1590},[154],{"categories":1592},[157],{"categories":1594},[157],{"categories":1596},[228],{"categories":1598},[157],{"categories":1600},[157],{"categories":1602},[157],{"categories":1604},[160],{"categories":1606},[157,151],{"categories":1608},[434],{"categories":1610},[157],{"categories":1612},[170],{"categories":1614},[170],{"categories":1616},[228],{"categories":1618},[160],{"categories":1620},[170],{"categories":1622},[157],{"categories":1624},[157],{"categories":1626},[],{"categories":1628},[],{"categories":1630},[157],{"categories":1632},[],{"categories":1634},[157],{"categories":1636},[170],{"categories":1638},[231],{"categories":1640},[191],{"categories":1642},[228],{"categories":1644},[157],{"categories":1646},[170],{"categories":1648},[],{"categories":1650},[160],{"categories":1652},[157],{"categories":1654},[157],{"categories":1656},[157],{"categories":1658},[157],{"categories":1660},[],{"categories":1662},[160],{"categories":1664},[157],{"categories":1666},[157],{"categories":1668},[],{"categories":1670},[160],{"categories":1672},[157],{"categories":1674},[157],{"categories":1676},[154],{"categories":1678},[157],{"categories":1680},[],{"categories":1682},[151],{"categories":1684},[157],{"categories":1686},[228],{"categories":1688},[170],{"categories":1690},[157],{"categories":1692},[151],{"categories":1694},[157],{"categories":1696},[170],{"categories":1698},[254],{"categories":1700},[160],{"categories":1702},[160],{"categories":1704},[157,228],{"categories":1706},[157],{"categories":1708},[191],{"categories":1710},[157],{"categories":1712},[191],{"categories":1714},[160],{"categories":1716},[228],{"categories":1718},[],{"categories":1720},[170],{"categories":1722},[285],{"categories":1724},[228],{"categories":1726},[170],{"categories":1728},[157],{"categories":1730},[163],{"categories":1732},[157],{"categories":1734},[160],{"categories":1736},[],{"categories":1738},[],{"categories":1740},[157],{"categories":1742},[],{"categories":1744},[],{"categories":1746},[163],{"categories":1748},[170],{"categories":1750},[157],{"categories":1752},[160],{"categories":1754},[160],{"categories":1756},[154],{"categories":1758},[160],{"categories":1760},[285],{"categories":1762},[157],{"categories":1764},[157],{"categories":1766},[106],{"categories":1768},[157],{"categories":1770},[157],{"categories":1772},[160],{"categories":1774},[157],{"categories":1776},[157],{"categories":1778},[392],{"categories":1780},[786],{"categories":1782},[],{"categories":1784},[228],{"categories":1786},[1502],{"categories":1788},[170],{"categories":1790},[],{"categories":1792},[],{"categories":1794},[160],{"categories":1796},[],{"categories":1798},[],{"categories":1800},[254],{"categories":1802},[254],{"categories":1804},[160],{"categories":1806},[170],{"categories":1808},[],{"categories":1810},[157],{"categories":1812},[157],{"categories":1814},[170],{"categories":1816},[1451],{"categories":1818},[228],{"categories":1820},[228],{"categories":1822},[157],{"categories":1824},[160],{"categories":1826},[151],{"categories":1828},[157],{"categories":1830},[157],{"categories":1832},[228],{"categories":1834},[228],{"categories":1836},[160],{"categories":1838},[160],{"categories":1840},[157],{"categories":1842},[],{"categories":1844},[157],{"categories":1846},[],{"categories":1848},[1849],"Interaction & Product Design",{"categories":1851},[157],{"categories":1853},[160],{"categories":1855},[312],{"categories":1857},[191],{"categories":1859},[170],{"categories":1861},[157],{"categories":1863},[157],{"categories":1865},[170],{"categories":1867},[151],{"categories":1869},[157],{"categories":1871},[],{"categories":1873},[160],{"categories":1875},[160],{"categories":1877},[],{"categories":1879},[170],{"categories":1881},[157],{"categories":1883},[151],{"categories":1885},[1849],{"categories":1887},[157],{"categories":1889},[151],{"categories":1891},[151],{"categories":1893},[],{"categories":1895},[170],{"categories":1897},[],{"categories":1899},[160],{"categories":1901},[191],{"categories":1903},[157],{"categories":1905},[160],{"categories":1907},[157],{"categories":1909},[160],{"categories":1911},[157],{"categories":1913},[191],{"categories":1915},[231],{"categories":1917},[157],{"categories":1919},[163],{"categories":1921},[170],{"categories":1923},[1924],"Coding Agents & Dev Productivity",{"categories":1926},[191],{"categories":1928},[228],{"categories":1930},[],{"categories":1932},[157],{"categories":1934},[786],{"categories":1936},[],{"categories":1938},[157],{"categories":1940},[157],{"categories":1942},[191],{"categories":1944},[],{"categories":1946},[],{"categories":1948},[157],{"categories":1950},[],{"categories":1952},[160],{"categories":1954},[157],{"categories":1956},[],{"categories":1958},[170],{"categories":1960},[170],{"categories":1962},[157],{"categories":1964},[231],{"categories":1966},[],{"categories":1968},[157],{"categories":1970},[157],{"categories":1972},[157],{"categories":1974},[231],{"categories":1976},[170],{"categories":1978},[],{"categories":1980},[],{"categories":1982},[160],{"categories":1984},[160],{"categories":1986},[371],{"categories":1988},[170],{"categories":1990},[170],{"categories":1992},[160],{"categories":1994},[191],{"categories":1996},[191],{"categories":1998},[160],{"categories":2000},[160],{"categories":2002},[157],{"categories":2004},[151],{"categories":2006},[1849],{"categories":2008},[157,285],{"categories":2010},[],{"categories":2012},[228],{"categories":2014},[170],{"categories":2016},[151],{"categories":2018},[157],{"categories":2020},[160],{"categories":2022},[2023],"The Designer's Role & Craft",{"categories":2025},[228],{"categories":2027},[],{"categories":2029},[160],{"categories":2031},[157],{"categories":2033},[160],{"categories":2035},[160],{"categories":2037},[157],{"categories":2039},[254],{"categories":2041},[157],{"categories":2043},[170],{"categories":2045},[228],{"categories":2047},[157],{"categories":2049},[],{"categories":2051},[160],{"categories":2053},[228],{"categories":2055},[157],{"categories":2057},[157],{"categories":2059},[2060],"AI UX Patterns",{"categories":2062},[160],{"categories":2064},[160],{"categories":2066},[160],{"categories":2068},[160],{"categories":2070},[254],{"categories":2072},[231],{"categories":2074},[157],{"categories":2076},[160],{"categories":2078},[157],{"categories":2080},[1056],{"categories":2082},[],{"categories":2084},[254],{"categories":2086},[191],{"categories":2088},[170],{"categories":2090},[157],{"categories":2092},[160],{"categories":2094},[],{"categories":2096},[],{"categories":2098},[157],{"categories":2100},[160],{"categories":2102},[157],{"categories":2104},[160],{"categories":2106},[371],{"categories":2108},[228],{"categories":2110},[191],{"categories":2112},[170],{"categories":2114},[157],{"categories":2116},[160],{"categories":2118},[160],{"categories":2120},[],{"categories":2122},[157],{"categories":2124},[],{"categories":2126},[],{"categories":2128},[157],{"categories":2130},[157],{"categories":2132},[160],{"categories":2134},[170],{"categories":2136},[],{"categories":2138},[],{"categories":2140},[231],{"categories":2142},[106],{"categories":2144},[157],{"categories":2146},[231],{"categories":2148},[191],{"categories":2150},[157],{"categories":2152},[157],{"categories":2154},[160],{"categories":2156},[160],{"categories":2158},[157],{"categories":2160},[160],{"categories":2162},[],{"categories":2164},[],{"categories":2166},[157],{"categories":2168},[285],{"categories":2170},[157],{"categories":2172},[],{"categories":2174},[],{"categories":2176},[228],{"categories":2178},[807],{"categories":2180},[160],{"categories":2182},[151],{"categories":2184},[2023],{"categories":2186},[],{"categories":2188},[],{"categories":2190},[157],{"categories":2192},[],{"categories":2194},[],{"categories":2196},[170],{"categories":2198},[191],{"categories":2200},[254],{"categories":2202},[154],{"categories":2204},[157],{"categories":2206},[157],{"categories":2208},[154],{"categories":2210},[],{"categories":2212},[228],{"categories":2214},[157],{"categories":2216},[160],{"categories":2218},[154],{"categories":2220},[157],{"categories":2222},[157],{"categories":2224},[151],{"categories":2226},[157],{"categories":2228},[],{"categories":2230},[151],{"categories":2232},[157],{"categories":2234},[254],{"categories":2236},[160],{"categories":2238},[191],{"categories":2240},[157],{"categories":2242},[154],{"categories":2244},[157],{"categories":2246},[157],{"categories":2248},[157],{"categories":2250},[160],{"categories":2252},[],{"categories":2254},[157],{"categories":2256},[170],{"categories":2258},[151],{"categories":2260},[157],{"categories":2262},[157],{"categories":2264},[],{"categories":2266},[434],{"categories":2268},[191],{"categories":2270},[157],{"categories":2272},[157],{"categories":2274},[],{"categories":2276},[154],{"categories":2278},[154],{"categories":2280},[157],{"categories":2282},[157],{"categories":2284},[163],{"categories":2286},[157],{"categories":2288},[157],{"categories":2290},[170],{"categories":2292},[170],{"categories":2294},[157],{"categories":2296},[],{"categories":2298},[170],{"categories":2300},[157],{"categories":2302},[170],{"categories":2304},[519],{"categories":2306},[],{"categories":2308},[],{"categories":2310},[157],{"categories":2312},[191],{"categories":2314},[],{"categories":2316},[285],{"categories":2318},[157],{"categories":2320},[157],{"categories":2322},[228],{"categories":2324},[777],{"categories":2326},[],{"categories":2328},[157],{"categories":2330},[157],{"categories":2332},[170],{"categories":2334},[157],{"categories":2336},[157],{"categories":2338},[157,285],{"categories":2340},[157],{"categories":2342},[157],{"categories":2344},[228],{"categories":2346},[160],{"categories":2348},[],{"categories":2350},[160],{"categories":2352},[160],{"categories":2354},[157],{"categories":2356},[157],{"categories":2358},[157],{"categories":2360},[231],{"categories":2362},[157],{"categories":2364},[2060],{"categories":2366},[151],{"categories":2368},[231],{"categories":2370},[151],{"categories":2372},[170],{"categories":2374},[228],{"categories":2376},[160],{"categories":2378},[157],{"categories":2380},[],{"categories":2382},[157],{"categories":2384},[191],{"categories":2386},[157],{"categories":2388},[160],{"categories":2390},[157],{"categories":2392},[157],{"categories":2394},[154],{"categories":2396},[],{"categories":2398},[285],{"categories":2400},[157],{"categories":2402},[371],{"categories":2404},[228],{"categories":2406},[228],{"categories":2408},[170],{"categories":2410},[160],{"categories":2412},[157],{"categories":2414},[154],{"categories":2416},[191],{"categories":2418},[157],{"categories":2420},[228],{"categories":2422},[160],{"categories":2424},[157],{"categories":2426},[157],{"categories":2428},[483],{"categories":2430},[],{"categories":2432},[157],{"categories":2434},[157],{"categories":2436},[157],{"categories":2438},[],{"categories":2440},[],{"categories":2442},[157],{"categories":2444},[157],{"categories":2446},[157],{"categories":2448},[157],{"categories":2450},[170],{"categories":2452},[157],{"categories":2454},[157],{"categories":2456},[160],{"categories":2458},[157],{"categories":2460},[157],{"categories":2462},[157],{"categories":2464},[157],{"categories":2466},[],{"categories":2468},[170],{"categories":2470},[231],{"categories":2472},[157],{"categories":2474},[160],{"categories":2476},[157],{"categories":2478},[],{"categories":2480},[],{"categories":2482},[157],{"categories":2484},[157],{"categories":2486},[157],{"categories":2488},[191],{"categories":2490},[],{"categories":2492},[157],{"categories":2494},[228],{"categories":2496},[157],{"categories":2498},[285],{"categories":2500},[1502],{"categories":2502},[191],{"categories":2504},[170],{"categories":2506},[170],{"categories":2508},[170],{"categories":2510},[191],{"categories":2512},[191],{"categories":2514},[285],{"categories":2516},[],{"categories":2518},[191],{"categories":2520},[157],{"categories":2522},[151],{"categories":2524},[170],{"categories":2526},[157],{"categories":2528},[191],{"categories":2530},[],{"categories":2532},[157],{"categories":2534},[170],{"categories":2536},[231],{"categories":2538},[157],{"categories":2540},[191],{"categories":2542},[157],{"categories":2544},[170],{"categories":2546},[160],{"categories":2548},[191],{"categories":2550},[160],{"categories":2552},[285],{"categories":2554},[160],{"categories":2556},[157],{"categories":2558},[157],{"categories":2560},[170],{"categories":2562},[157],{"categories":2564},[],{"categories":2566},[154],{"categories":2568},[170],{"categories":2570},[],{"categories":2572},[],{"categories":2574},[157],{"categories":2576},[160],{"categories":2578},[157],{"categories":2580},[2581],"Frameworks & Tooling",{"categories":2583},[157],{"categories":2585},[157],{"categories":2587},[170],{"categories":2589},[157],{"categories":2591},[157],{"categories":2593},[],{"categories":2595},[231],{"categories":2597},[231],{"categories":2599},[151],{"categories":2601},[160],{"categories":2603},[228],{"categories":2605},[],{"categories":2607},[1502],{"categories":2609},[157],{"categories":2611},[170],{"categories":2613},[157],{"categories":2615},[285],{"categories":2617},[285],{"categories":2619},[],{"categories":2621},[160],{"categories":2623},[191],{"categories":2625},[191],{"categories":2627},[157],{"categories":2629},[160],{"categories":2631},[],{"categories":2633},[228],{"categories":2635},[157],{"categories":2637},[157],{"categories":2639},[],{"categories":2641},[157],{"categories":2643},[],{"categories":2645},[170],{"categories":2647},[157],{"categories":2649},[170],{"categories":2651},[285],{"categories":2653},[157],{"categories":2655},[170],{"categories":2657},[154],{"categories":2659},[157],{"categories":2661},[1502],{"categories":2663},[],{"categories":2665},[160],{"categories":2667},[151],{"categories":2669},[151],{"categories":2671},[],{"categories":2673},[160],{"categories":2675},[157],{"categories":2677},[2678],"AI Design Tooling",{"categories":2680},[228],{"categories":2682},[157],{"categories":2684},[157],{"categories":2686},[170],{"categories":2688},[228],{"categories":2690},[157],{"categories":2692},[170],{"categories":2694},[191],{"categories":2696},[163],{"categories":2698},[170],{"categories":2700},[160],{"categories":2702},[],{"categories":2704},[157],{"categories":2706},[157],{"categories":2708},[160],{"categories":2710},[157],{"categories":2712},[157],{"categories":2714},[],{"categories":2716},[160],{"categories":2718},[2581],{"categories":2720},[157],{"categories":2722},[160],{"categories":2724},[160],{"categories":2726},[170],{"categories":2728},[170],{"categories":2730},[],{"categories":2732},[170],{"categories":2734},[157],{"categories":2736},[157],{"categories":2738},[160],{"categories":2740},[154],{"categories":2742},[157],{"categories":2744},[],{"categories":2746},[157],{"categories":2748},[1849],{"categories":2750},[],{"categories":2752},[157],{"categories":2754},[157],{"categories":2756},[],{"categories":2758},[157],{"categories":2760},[157],{"categories":2762},[157],{"categories":2764},[254],{"categories":2766},[191],{"categories":2768},[157],{"categories":2770},[157],{"categories":2772},[1502],{"categories":2774},[151],{"categories":2776},[157],{"categories":2778},[157],{"categories":2780},[231],{"categories":2782},[157],{"categories":2784},[191],{"categories":2786},[160],{"categories":2788},[],{"categories":2790},[157],{"categories":2792},[228],{"categories":2794},[157],{"categories":2796},[254],{"categories":2798},[157],{"categories":2800},[160],{"categories":2802},[],{"categories":2804},[],{"categories":2806},[],{"categories":2808},[151],{"categories":2810},[191],{"categories":2812},[160],{"categories":2814},[157],{"categories":2816},[157],{"categories":2818},[157],{"categories":2820},[392],{"categories":2822},[228],{"categories":2824},[160],{"categories":2826},[157],{"categories":2828},[],{"categories":2830},[160],{"categories":2832},[160],{"categories":2834},[],{"categories":2836},[157],{"categories":2838},[160],{"categories":2840},[157],{"categories":2842},[],{"categories":2844},[157],{"categories":2846},[157],{"categories":2848},[191],{"categories":2850},[228],{"categories":2852},[160],{"categories":2854},[228],{"categories":2856},[160],{"categories":2858},[154],{"categories":2860},[],{"categories":2862},[],{"categories":2864},[157],{"categories":2866},[157],{"categories":2868},[151],{"categories":2870},[160],{"categories":2872},[191],{"categories":2874},[],{"categories":2876},[228],{"categories":2878},[],{"categories":2880},[170],{"categories":2882},[170],{"categories":2884},[228],{"categories":2886},[170],{"categories":2888},[157],{"categories":2890},[],{"categories":2892},[157],{"categories":2894},[157],{"categories":2896},[],{"categories":2898},[254],{"categories":2900},[157],{"categories":2902},[285],{"categories":2904},[170],{"categories":2906},[],{"categories":2908},[160],{"categories":2910},[157],{"categories":2912},[151],{"categories":2914},[483],{"categories":2916},[160],{"categories":2918},[160],{"categories":2920},[157],{"categories":2922},[157],{"categories":2924},[],{"categories":2926},[151],{"categories":2928},[157],{"categories":2930},[154],{"categories":2932},[170],{"categories":2934},[228],{"categories":2936},[],{"categories":2938},[],{"categories":2940},[],{"categories":2942},[160],{"categories":2944},[170],{"categories":2946},[228],{"categories":2948},[191],{"categories":2950},[157],{"categories":2952},[191],{"categories":2954},[160],{"categories":2956},[228],{"categories":2958},[157],{"categories":2960},[],{"categories":2962},[157],{"categories":2964},[106],{"categories":2966},[160],{"categories":2968},[228],{"categories":2970},[191],{"categories":2972},[154],{"categories":2974},[170],{"categories":2976},[157],{"categories":2978},[191],{"categories":2980},[254],{"categories":2982},[],{"categories":2984},[],{"categories":2986},[231],{"categories":2988},[434],{"categories":2990},[157],{"categories":2992},[160],{"categories":2994},[157,170],{"categories":2996},[191],{"categories":2998},[157],{"categories":3000},[157],{"categories":3002},[160],{"categories":3004},[157],{"categories":3006},[160],{"categories":3008},[157],{"categories":3010},[157],{"categories":3012},[],{"categories":3014},[1056],{"categories":3016},[170],{"categories":3018},[228],{"categories":3020},[157],{"categories":3022},[157],{"categories":3024},[157],{"categories":3026},[231],{"categories":3028},[160],{"categories":3030},[254],{"categories":3032},[285],{"categories":3034},[],{"categories":3036},[157],{"categories":3038},[154],{"categories":3040},[160],{"categories":3042},[151],{"categories":3044},[160],{"categories":3046},[157],{"categories":3048},[160],{"categories":3050},[163],{"categories":3052},[170],{"categories":3054},[157],{"categories":3056},[157],{"categories":3058},[],{"categories":3060},[],{"categories":3062},[],{"categories":3064},[285],{"categories":3066},[157],{"categories":3068},[191],{"categories":3070},[157],{"categories":3072},[157],{"categories":3074},[157],{"categories":3076},[157],{"categories":3078},[],{"categories":3080},[231],{"categories":3082},[154],{"categories":3084},[160],{"categories":3086},[157],{"categories":3088},[],{"categories":3090},[157],{"categories":3092},[160],{"categories":3094},[157],{"categories":3096},[285],{"categories":3098},[],{"categories":3100},[228],{"categories":3102},[228],{"categories":3104},[],{"categories":3106},[170],{"categories":3108},[157],{"categories":3110},[228],{"categories":3112},[157],{"categories":3114},[154],{"categories":3116},[160],{"categories":3118},[157],{"categories":3120},[],{"categories":3122},[191],{"categories":3124},[157],{"categories":3126},[157],{"categories":3128},[157],{"categories":3130},[228],{"categories":3132},[160],{"categories":3134},[191],{"categories":3136},[],{"categories":3138},[160],{"categories":3140},[160],{"categories":3142},[228],{"categories":3144},[157],{"categories":3146},[157],{"categories":3148},[157],{"categories":3150},[434],{"categories":3152},[157],{"categories":3154},[],{"categories":3156},[157],{"categories":3158},[157],{"categories":3160},[285],{"categories":3162},[191],{"categories":3164},[231],{"categories":3166},[519],{"categories":3168},[231],{"categories":3170},[],{"categories":3172},[],{"categories":3174},[],{"categories":3176},[160],{"categories":3178},[160],{"categories":3180},[170],{"categories":3182},[157],{"categories":3184},[417],{"categories":3186},[170],{"categories":3188},[157],{"categories":3190},[157],{"categories":3192},[157],{"categories":3194},[157],{"categories":3196},[160],{"categories":3198},[],{"categories":3200},[],{"categories":3202},[157],{"categories":3204},[],{"categories":3206},[157],{"categories":3208},[160],{"categories":3210},[228],{"categories":3212},[157],{"categories":3214},[157],{"categories":3216},[],{"categories":3218},[163],{"categories":3220},[157],{"categories":3222},[228],{"categories":3224},[157],{"categories":3226},[160],{"categories":3228},[154],{"categories":3230},[157],{"categories":3232},[254],{"categories":3234},[160],{"categories":3236},[157],{"categories":3238},[777],{"categories":3240},[157],{"categories":3242},[160],{"categories":3244},[157],{"categories":3246},[170],{"categories":3248},[157],{"categories":3250},[483],{"categories":3252},[228],{"categories":3254},[],{"categories":3256},[191],{"categories":3258},[434],{"categories":3260},[160],{"categories":3262},[157],{"categories":3264},[],{"categories":3266},[191],{"categories":3268},[371],{"categories":3270},[160],{"categories":3272},[160],{"categories":3274},[157],{"categories":3276},[157],{"categories":3278},[160],{"categories":3280},[],{"categories":3282},[154],{"categories":3284},[160],{"categories":3286},[],{"categories":3288},[170],{"categories":3290},[157],{"categories":3292},[151],{"categories":3294},[191],{"categories":3296},[285],{"categories":3298},[106],{"categories":3300},[160],{"categories":3302},[160],{"categories":3304},[157],{"categories":3306},[160],{"categories":3308},[151],{"categories":3310},[],{"categories":3312},[157],{"categories":3314},[157],{"categories":3316},[],{"categories":3318},[],{"categories":3320},[228],{"categories":3322},[157,154],{"categories":3324},[160],{"categories":3326},[157],{"categories":3328},[],{"categories":3330},[151],{"categories":3332},[231],{"categories":3334},[154],{"categories":3336},[157],{"categories":3338},[170],{"categories":3340},[157],{"categories":3342},[160],{"categories":3344},[157],{"categories":3346},[157],{"categories":3348},[157],{"categories":3350},[191],{"categories":3352},[1056],{"categories":3354},[160],{"categories":3356},[157],{"categories":3358},[],{"categories":3360},[],{"categories":3362},[160],{"categories":3364},[157],{"categories":3366},[285],{"categories":3368},[],{"categories":3370},[157],{"categories":3372},[160],{"categories":3374},[106],{"categories":3376},[160],{"categories":3378},[434],{"categories":3380},[],{"categories":3382},[392],{"categories":3384},[160],{"categories":3386},[157],{"categories":3388},[254],{"categories":3390},[157],{"categories":3392},[231],{"categories":3394},[160],{"categories":3396},[157],{"categories":3398},[434],{"categories":3400},[157],{"categories":3402},[285],{"categories":3404},[],{"categories":3406},[157],{"categories":3408},[254],{"categories":3410},[228],{"categories":3412},[157],{"categories":3414},[157],{"categories":3416},[],{"categories":3418},[254],{"categories":3420},[191],{"categories":3422},[157],{"categories":3424},[157],{"categories":3426},[519],{"categories":3428},[151],{"categories":3430},[157],{"categories":3432},[],{"categories":3434},[],{"categories":3436},[228],{"categories":3438},[157],{"categories":3440},[231],{"categories":3442},[254],{"categories":3444},[160],{"categories":3446},[254],{"categories":3448},[191],{"categories":3450},[],{"categories":3452},[157],{"categories":3454},[],{"categories":3456},[157],{"categories":3458},[538],{"categories":3460},[157],{"categories":3462},[157],{"categories":3464},[160],{"categories":3466},[434],{"categories":3468},[157],{"categories":3470},[157],{"categories":3472},[157],{"categories":3474},[],{"categories":3476},[157,170],{"categories":3478},[191],{"categories":3480},[160],{"categories":3482},[170],{"categories":3484},[160],{"categories":3486},[807],{"categories":3488},[170],{"categories":3490},[157],{"categories":3492},[151],{"categories":3494},[],{"categories":3496},[],{"categories":3498},[160],{"categories":3500},[157],{"categories":3502},[170],{"categories":3504},[151],{"categories":3506},[170],{"categories":3508},[170],{"categories":3510},[157],{"categories":3512},[254],{"categories":3514},[157],{"categories":3516},[170],{"categories":3518},[],{"categories":3520},[157],{"categories":3522},[228,157],{"categories":3524},[285],{"categories":3526},[151],{"categories":3528},[],{"categories":3530},[157],{"categories":3532},[157],{"categories":3534},[154],{"categories":3536},[154],{"categories":3538},[157],{"categories":3540},[157],{"categories":3542},[371],{"categories":3544},[157],{"categories":3546},[170],{"categories":3548},[231],{"categories":3550},[160],{"categories":3552},[157],{"categories":3554},[157],{"categories":3556},[191],{"categories":3558},[254],{"categories":3560},[228],{"categories":3562},[157],{"categories":3564},[157],{"categories":3566},[157],{"categories":3568},[157],{"categories":3570},[151],{"categories":3572},[157],{"categories":3574},[160],{"categories":3576},[160],{"categories":3578},[170],{"categories":3580},[191],{"categories":3582},[170],{"categories":3584},[],{"categories":3586},[],{"categories":3588},[231],{"categories":3590},[157],{"categories":3592},[170],{"categories":3594},[157],{"categories":3596},[228],{"categories":3598},[434],{"categories":3600},[392],{"categories":3602},[371],{"categories":3604},[157],{"categories":3606},[157],{"categories":3608},[157],{"categories":3610},[231],{"categories":3612},[157],{"categories":3614},[157],{"categories":3616},[157],{"categories":3618},[160],{"categories":3620},[151],{"categories":3622},[160],{"categories":3624},[157,154],{"categories":3626},[],{"categories":3628},[228],{"categories":3630},[],{"categories":3632},[163],{"categories":3634},[157],{"categories":3636},[191],{"categories":3638},[151],{"categories":3640},[151],{"categories":3642},[160],{"categories":3644},[160],{"categories":3646},[160],{"categories":3648},[157],{"categories":3650},[157],{"categories":3652},[154],{"categories":3654},[170],{"categories":3656},[254],{"categories":3658},[157],{"categories":3660},[],{"categories":3662},[191],{"categories":3664},[157],{"categories":3666},[157],{"categories":3668},[157],{"categories":3670},[157],{"categories":3672},[157],{"categories":3674},[170],{"categories":3676},[191],{"categories":3678},[170],{"categories":3680},[170],{"categories":3682},[157],{"categories":3684},[157],{"categories":3686},[392],{"categories":3688},[157],{"categories":3690},[160],{"categories":3692},[191],{"categories":3694},[157],{"categories":3696},[157],{"categories":3698},[157],{"categories":3700},[160],{"categories":3702},[157],{"categories":3704},[157],{"categories":3706},[157],{"categories":3708},[2581],{"categories":3710},[3711],"Clinical AI",{"categories":3713},[228],{"categories":3715},[157],{"categories":3717},[157],{"categories":3719},[157],{"categories":3721},[285],{"categories":3723},[2060],{"categories":3725},[157],{"categories":3727},[163],{"categories":3729},[157],{"categories":3731},[160],{"categories":3733},[157],{"categories":3735},[157],{"categories":3737},[191],{"categories":3739},[157],{"categories":3741},[160],{"categories":3743},[254],{"categories":3745},[157],{"categories":3747},[157],{"categories":3749},[154],{"categories":3751},[157],{"categories":3753},[483],{"categories":3755},[157],{"categories":3757},[],{"categories":3759},[157],{"categories":3761},[170],{"categories":3763},[157],{"categories":3765},[],{"categories":3767},[],{"categories":3769},[157],{"categories":3771},[],{"categories":3773},[154],{"categories":3775},[157],{"categories":3777},[160],{"categories":3779},[191],{"categories":3781},[191],{"categories":3783},[191],{"categories":3785},[191],{"categories":3787},[],{"categories":3789},[151],{"categories":3791},[160],{"categories":3793},[191],{"categories":3795},[157],{"categories":3797},[538],{"categories":3799},[163],{"categories":3801},[157],{"categories":3803},[151],{"categories":3805},[160],{"categories":3807},[157],{"categories":3809},[157],{"categories":3811},[157,160],{"categories":3813},[160],{"categories":3815},[285],{"categories":3817},[191],{"categories":3819},[160],{"categories":3821},[191],{"categories":3823},[160],{"categories":3825},[157],{"categories":3827},[],{"categories":3829},[191],{"categories":3831},[254],{"categories":3833},[151],{"categories":3835},[157],{"categories":3837},[157],{"categories":3839},[],{"categories":3841},[170],{"categories":3843},[],{"categories":3845},[151],{"categories":3847},[160],{"categories":3849},[191],{"categories":3851},[157],{"categories":3853},[191],{"categories":3855},[151],{"categories":3857},[191],{"categories":3859},[191],{"categories":3861},[],{"categories":3863},[154],{"categories":3865},[160],{"categories":3867},[191],{"categories":3869},[191],{"categories":3871},[191],{"categories":3873},[191],{"categories":3875},[191],{"categories":3877},[191],{"categories":3879},[191],{"categories":3881},[191],{"categories":3883},[191],{"categories":3885},[191],{"categories":3887},[231],{"categories":3889},[151],{"categories":3891},[157],{"categories":3893},[157],{"categories":3895},[160],{"categories":3897},[160],{"categories":3899},[],{"categories":3901},[157,151],{"categories":3903},[],{"categories":3905},[160],{"categories":3907},[191],{"categories":3909},[160],{"categories":3911},[807],{"categories":3913},[157],{"categories":3915},[157],{"categories":3917},[157],{"categories":3919},[157],{"categories":3921},[371],{"categories":3923},[157],{"categories":3925},[160],{"categories":3927},[154],{"categories":3929},[160],{"categories":3931},[160],{"categories":3933},[],{"categories":3935},[160],{"categories":3937},[228],{"categories":3939},[191],{"categories":3941},[157],{"categories":3943},[],{"categories":3945},[],{"categories":3947},[160],{"categories":3949},[228],{"categories":3951},[157],{"categories":3953},[],{"categories":3955},[157],{"categories":3957},[],{"categories":3959},[254],{"categories":3961},[157],{"categories":3963},[],{"categories":3965},[],{"categories":3967},[191],{"categories":3969},[151],{"categories":3971},[157],{"categories":3973},[157],{"categories":3975},[154],{"categories":3977},[157],{"categories":3979},[157],{"categories":3981},[157],{"categories":3983},[154],{"categories":3985},[228],{"categories":3987},[],{"categories":3989},[157],{"categories":3991},[191],{"categories":3993},[],{"categories":3995},[157],{"categories":3997},[157],{"categories":3999},[228],{"categories":4001},[157],{"categories":4003},[254],{"categories":4005},[157],{"categories":4007},[285],{"categories":4009},[],{"categories":4011},[160],{"categories":4013},[254],{"categories":4015},[170],{"categories":4017},[],{"categories":4019},[157],{"categories":4021},[],{"categories":4023},[160],{"categories":4025},[228],{"categories":4027},[170],{"categories":4029},[],{"categories":4031},[2581],{"categories":4033},[154],{"categories":4035},[151],{"categories":4037},[231],{"categories":4039},[160],{"categories":4041},[228],{"categories":4043},[170],{"categories":4045},[],{"categories":4047},[],{"categories":4049},[157],{"categories":4051},[151],{"categories":4053},[157],{"categories":4055},[254],{"categories":4057},[],{"categories":4059},[160],{"categories":4061},[160],{"categories":4063},[160],{"categories":4065},[157],{"categories":4067},[191],{"categories":4069},[170],{"categories":4071},[157],{"categories":4073},[160],{"categories":4075},[163],{"categories":4077},[157],{"categories":4079},[160],{"categories":4081},[157],{"categories":4083},[163],{"categories":4085},[254],{"categories":4087},[191],{"categories":4089},[],{"categories":4091},[254],{"categories":4093},[],{"categories":4095},[170],{"categories":4097},[160],{"categories":4099},[],{"categories":4101},[157],{"categories":4103},[157],{"categories":4105},[157],{"categories":4107},[157],{"categories":4109},[160],{"categories":4111},[154],{"categories":4113},[151],{"categories":4115},[157],{"categories":4117},[228],{"categories":4119},[170],{"categories":4121},[170],{"categories":4123},[157],{"categories":4125},[231],{"categories":4127},[160],{"categories":4129},[157],{"categories":4131},[160],{"categories":4133},[157],{"categories":4135},[154],{"categories":4137},[228],{"categories":4139},[170],{"categories":4141},[160],{"categories":4143},[157],{"categories":4145},[163],{"categories":4147},[157],{"categories":4149},[160],{"categories":4151},[157],{"categories":4153},[191],{"categories":4155},[],{"categories":4157},[151],{"categories":4159},[157],{"categories":4161},[157],{"categories":4163},[157],{"categories":4165},[170],{"categories":4167},[157],{"categories":4169},[170],{"categories":4171},[157],{"categories":4173},[160],{"categories":4175},[157],{"categories":4177},[157],{"categories":4179},[157],{"categories":4181},[157],{"categories":4183},[],{"categories":4185},[157],{"categories":4187},[228],{"categories":4189},[154],{"categories":4191},[191],{"categories":4193},[160],{"categories":4195},[157],{"categories":4197},[157],{"categories":4199},[228],{"categories":4201},[160],{"categories":4203},[157],{"categories":4205},[254],{"categories":4207},[157],{"categories":4209},[231],{"categories":4211},[157],{"categories":4213},[157],{"categories":4215},[191],{"categories":4217},[157],{"categories":4219},[157],{"categories":4221},[160],{"categories":4223},[285],{"categories":4225},[157],{"categories":4227},[170],{"categories":4229},[160],{"categories":4231},[231],{"categories":4233},[],{"categories":4235},[160],{"categories":4237},[170],{"categories":4239},[157],{"categories":4241},[1924],{"categories":4243},[228],{"categories":4245},[312],{"categories":4247},[157],{"categories":4249},[151],{"categories":4251},[170],{"categories":4253},[154],{"categories":4255},[170],{"categories":4257},[157],{"categories":4259},[],{"categories":4261},[160],{"categories":4263},[160],{"categories":4265},[157],{"categories":4267},[157],{"categories":4269},[231],{"categories":4271},[],{"categories":4273},[191],{"categories":4275},[],{"categories":4277},[191],{"categories":4279},[157],{"categories":4281},[157],{"categories":4283},[160],{"categories":4285},[160],{"categories":4287},[160],{"categories":4289},[],{"categories":4291},[191],{"categories":4293},[157],{"categories":4295},[],{"categories":4297},[157],{"categories":4299},[157],{"categories":4301},[],{"categories":4303},[228],{"categories":4305},[170],{"categories":4307},[160],{"categories":4309},[157],{"categories":4311},[157],{"categories":4313},[254],{"categories":4315},[157],{"categories":4317},[157],{"categories":4319},[151],{"categories":4321},[],{"categories":4323},[157],{"categories":4325},[157],{"categories":4327},[],{"categories":4329},[151],{"categories":4331},[191],{"categories":4333},[170],{"categories":4335},[434],{"categories":4337},[157],{"categories":4339},[157],{"categories":4341},[157],{"categories":4343},[170],{"categories":4345},[191],{"categories":4347},[228],{"categories":4349},[157],{"categories":4351},[157],{"categories":4353},[157],{"categories":4355},[191],{"categories":4357},[228],{"categories":4359},[157],{"categories":4361},[191],{"categories":4363},[228],{"categories":4365},[157],{"categories":4367},[191],{"categories":4369},[160],{"categories":4371},[160],{"categories":4373},[160],{"categories":4375},[170],{"categories":4377},[191],{"categories":4379},[160],{"categories":4381},[160],{"categories":4383},[157],{"categories":4385},[170],{"categories":4387},[228],{"categories":4389},[157],{"categories":4391},[],{"categories":4393},[160],{"categories":4395},[],{"categories":4397},[],{"categories":4399},[],{"categories":4401},[160],{"categories":4403},[154],{"categories":4405},[160],{"categories":4407},[4408],"Liability & Ethics",{"categories":4410},[157],{"categories":4412},[160],{"categories":4414},[151],{"categories":4416},[160],{"categories":4418},[154],{"categories":4420},[254],{"categories":4422},[160],{"categories":4424},[],{"categories":4426},[519],{"categories":4428},[160],{"categories":4430},[],{"categories":4432},[151],{"categories":4434},[160],{"categories":4436},[],{"categories":4438},[160],{"categories":4440},[157],{"categories":4442},[157],{"categories":4444},[191],{"categories":4446},[157],{"categories":4448},[157],{"categories":4450},[160],{"categories":4452},[157],{"categories":4454},[157],{"categories":4456},[191],{"categories":4458},[160],{"categories":4460},[170],{"categories":4462},[228],{"categories":4464},[151],{"categories":4466},[157],{"categories":4468},[],{"categories":4470},[160],{"categories":4472},[160],{"categories":4474},[434],{"categories":4476},[228],{"categories":4478},[285],{"categories":4480},[191],{"categories":4482},[157],{"categories":4484},[228],{"categories":4486},[157],{"categories":4488},[151],{"categories":4490},[],{"categories":4492},[160],{"categories":4494},[157],{"categories":4496},[157],{"categories":4498},[160],{"categories":4500},[157],{"categories":4502},[228],{"categories":4504},[],{"categories":4506},[160],{"categories":4508},[163],{"categories":4510},[191],{"categories":4512},[160],{"categories":4514},[154],{"categories":4516},[],{"categories":4518},[157],{"categories":4520},[163],{"categories":4522},[157],{"categories":4524},[160],{"categories":4526},[191],{"categories":4528},[151],{"categories":4530},[285],{"categories":4532},[157],{"categories":4534},[157],{"categories":4536},[157],{"categories":4538},[191],{"categories":4540},[154],{"categories":4542},[157],{"categories":4544},[228],{"categories":4546},[191],{"categories":4548},[285],{"categories":4550},[157],{"categories":4552},[160],{"categories":4554},[],{"categories":4556},[483],{"categories":4558},[],{"categories":4560},[157],{"categories":4562},[285],{"categories":4564},[231],{"categories":4566},[160],{"categories":4568},[160],{"categories":4570},[4571],"Design News & Tools",{"categories":4573},[157],{"categories":4575},[191],{"categories":4577},[157],{"categories":4579},[151],{"categories":4581},[157],{"categories":4583},[228],{"categories":4585},[160],{"categories":4587},[160],{"categories":4589},[157],{"categories":4591},[434],{"categories":4593},[157],{"categories":4595},[434],{"categories":4597},[254],{"categories":4599},[157],{"categories":4601},[160],{"categories":4603},[],{"categories":4605},[157],{"categories":4607},[157],{"categories":4609},[157],{"categories":4611},[191],{"categories":4613},[151],{"categories":4615},[],{"categories":4617},[157],{"categories":4619},[157],{"categories":4621},[170],{"categories":4623},[538],{"categories":4625},[170],{"categories":4627},[228],{"categories":4629},[157],{"categories":4631},[157,160],{"categories":4633},[254,154],{"categories":4635},[157],{"categories":4637},[157],{"categories":4639},[157],{"categories":4641},[],{"categories":4643},[160],{"categories":4645},[],{"categories":4647},[170],{"categories":4649},[157],{"categories":4651},[170],{"categories":4653},[],{"categories":4655},[160],{"categories":4657},[157],{"categories":4659},[191],{"categories":4661},[157],{"categories":4663},[],{"categories":4665},[160],{"categories":4667},[157],{"categories":4669},[],{"categories":4671},[228],{"categories":4673},[157],{"categories":4675},[160],{"categories":4677},[157],{"categories":4679},[157],{"categories":4681},[151],{"categories":4683},[160],{"categories":4685},[157],{"categories":4687},[],{"categories":4689},[285],{"categories":4691},[254],{"categories":4693},[154],{"categories":4695},[154],{"categories":4697},[157],{"categories":4699},[151],{"categories":4701},[151],{"categories":4703},[157],{"categories":4705},[160],{"categories":4707},[157],{"categories":4709},[157],{"categories":4711},[157],{"categories":4713},[170],{"categories":4715},[157],{"categories":4717},[151],{"categories":4719},[160],{"categories":4721},[157],{"categories":4723},[254],{"categories":4725},[157],{"categories":4727},[191],{"categories":4729},[157],{"categories":4731},[157],{"categories":4733},[160],{"categories":4735},[157],{"categories":4737},[],{"categories":4739},[170],{"categories":4741},[],{"categories":4743},[170],{"categories":4745},[160],{"categories":4747},[151],{"categories":4749},[],{"categories":4751},[231],{"categories":4753},[285],{"categories":4755},[157],{"categories":4757},[170],{"categories":4759},[157],{"categories":4761},[],{"categories":4763},[191],{"categories":4765},[160],{"categories":4767},[170],{"categories":4769},[228],{"categories":4771},[157],{"categories":4773},[160],{"categories":4775},[170],{"categories":4777},[160],{"categories":4779},[191],{"categories":4781},[157],{"categories":4783},[151],{"categories":4785},[191],{"categories":4787},[170],{"categories":4789},[157],{"categories":4791},[228],{"categories":4793},[154],{"categories":4795},[157],{"categories":4797},[157],{"categories":4799},[157],{"categories":4801},[157],{"categories":4803},[157],{"categories":4805},[160],{"categories":4807},[157],{"categories":4809},[160],{"categories":4811},[157],{"categories":4813},[157],{"categories":4815},[151],{"categories":4817},[157],{"categories":4819},[160],{"categories":4821},[160],{"categories":4823},[228],{"categories":4825},[160],{"categories":4827},[160],{"categories":4829},[151],{"categories":4831},[160],{"categories":4833},[228],{"categories":4835},[],{"categories":4837},[157],{"categories":4839},[231],{"categories":4841},[434],{"categories":4843},[157],{"categories":4845},[157],{"categories":4847},[157],{"categories":4849},[170],{"categories":4851},[],{"categories":4853},[160],{"categories":4855},[254],{"categories":4857},[157],{"categories":4859},[191],{"categories":4861},[160],{"categories":4863},[157],{"categories":4865},[254],{"categories":4867},[160],{"categories":4869},[154],{"categories":4871},[154],{"categories":4873},[157],{"categories":4875},[157],{"categories":4877},[157],{"categories":4879},[151],{"categories":4881},[],{"categories":4883},[157],{"categories":4885},[160],{"categories":4887},[160],{"categories":4889},[157],{"categories":4891},[157],{"categories":4893},[157],{"categories":4895},[170],{"categories":4897},[],{"categories":4899},[151],{"categories":4901},[157],{"categories":4903},[157],{"categories":4905},[160],{"categories":4907},[160],{"categories":4909},[],{"categories":4911},[170],{"categories":4913},[170],{"categories":4915},[157],{"categories":4917},[254],{"categories":4919},[154],{"categories":4921},[228],{"categories":4923},[],{"categories":4925},[157],{"categories":4927},[160],{"categories":4929},[151],{"categories":4931},[157],{"categories":4933},[170],{"categories":4935},[151],{"categories":4937},[191],{"categories":4939},[231],{"categories":4941},[191],{"categories":4943},[160],{"categories":4945},[],{"categories":4947},[191],{"categories":4949},[160],{"categories":4951},[228],{"categories":4953},[231],{"categories":4955},[157],{"categories":4957},[],{"categories":4959},[160],{"categories":4961},[2581],{"categories":4963},[191],{"categories":4965},[170],{"categories":4967},[157],{"categories":4969},[157],{"categories":4971},[154],{"categories":4973},[157],{"categories":4975},[151],{"categories":4977},[1502],{"categories":4979},[285],{"categories":4981},[151],{"categories":4983},[],{"categories":4985},[],{"categories":4987},[191],{"categories":4989},[160],{"categories":4991},[191],{"categories":4993},[],{"categories":4995},[160],{"categories":4997},[160],{"categories":4999},[160],{"categories":5001},[],{"categories":5003},[157],{"categories":5005},[],{"categories":5007},[191],{"categories":5009},[151],{"categories":5011},[228],{"categories":5013},[157],{"categories":5015},[160],{"categories":5017},[191],{"categories":5019},[157],{"categories":5021},[191],{"categories":5023},[],{"categories":5025},[191],{"categories":5027},[151],{"categories":5029},[434],{"categories":5031},[160],{"categories":5033},[157],{"categories":5035},[],{"categories":5037},[170],{"categories":5039},[160],{"categories":5041},[163],{"categories":5043},[160],{"categories":5045},[151],{"categories":5047},[],{"categories":5049},[],{"categories":5051},[],{"categories":5053},[228],{"categories":5055},[160],{"categories":5057},[157],{"categories":5059},[157],{"categories":5061},[],{"categories":5063},[],{"categories":5065},[],{"categories":5067},[228],{"categories":5069},[157],{"categories":5071},[],{"categories":5073},[160],{"categories":5075},[157],{"categories":5077},[151],{"categories":5079},[],{"categories":5081},[],{"categories":5083},[228],{"categories":5085},[157],{"categories":5087},[191],{"categories":5089},[],{"categories":5091},[254],{"categories":5093},[191],{"categories":5095},[254],{"categories":5097},[231],{"categories":5099},[157],{"categories":5101},[157],{"categories":5103},[],{"categories":5105},[],{"categories":5107},[160],{"categories":5109},[],{"categories":5111},[157],{"categories":5113},[434],{"categories":5115},[157],{"categories":5117},[157],{"categories":5119},[157],{"categories":5121},[],{"categories":5123},[160],{"categories":5125},[157],{"categories":5127},[157],{"categories":5129},[],{"categories":5131},[160],{"categories":5133},[157],{"categories":5135},[191],{"categories":5137},[157],{"categories":5139},[254],{"categories":5141},[154],{"categories":5143},[157],{"categories":5145},[157],{"categories":5147},[160],{"categories":5149},[231],{"categories":5151},[160],{"categories":5153},[160],{"categories":5155},[],{"categories":5157},[],{"categories":5159},[157],{"categories":5161},[],{"categories":5163},[191],{"categories":5165},[154],{"categories":5167},[],{"categories":5169},[],{"categories":5171},[228],{"categories":5173},[151],{"categories":5175},[],{"categories":5177},[154],{"categories":5179},[254],{"categories":5181},[157],{"categories":5183},[170],{"categories":5185},[151],{"categories":5187},[231],{"categories":5189},[154],{"categories":5191},[170],{"categories":5193},[170],{"categories":5195},[],{"categories":5197},[157],{"categories":5199},[],{"categories":5201},[160],{"categories":5203},[151],{"categories":5205},[228],{"categories":5207},[157],{"categories":5209},[151],{"categories":5211},[160],{"categories":5213},[285],{"categories":5215},[157],{"categories":5217},[157],{"categories":5219},[157],{"categories":5221},[151],{"categories":5223},[231],{"categories":5225},[160],{"categories":5227},[],{"categories":5229},[157],{"categories":5231},[170],{"categories":5233},[191],{"categories":5235},[170],{"categories":5237},[157],{"categories":5239},[163],{"categories":5241},[],{"categories":5243},[228],{"categories":5245},[191],{"categories":5247},[151],{"categories":5249},[160],{"categories":5251},[157],{"categories":5253},[157],{"categories":5255},[160],{"categories":5257},[157],{"categories":5259},[157],{"categories":5261},[154],{"categories":5263},[160],{"categories":5265},[160,285],{"categories":5267},[160],{"categories":5269},[170],{"categories":5271},[157],{"categories":5273},[157],{"categories":5275},[231],{"categories":5277},[160],{"categories":5279},[254],{"categories":5281},[160],{"categories":5283},[154],{"categories":5285},[],{"categories":5287},[160],{"categories":5289},[157],{"categories":5291},[154],{"categories":5293},[],{"categories":5295},[],{"categories":5297},[170],{"categories":5299},[157],{"categories":5301},[157],{"categories":5303},[160],{"categories":5305},[231],{"categories":5307},[254],{"categories":5309},[157],{"categories":5311},[157],{"categories":5313},[160],{"categories":5315},[],{"categories":5317},[160],{"categories":5319},[191],{"categories":5321},[160],{"categories":5323},[],{"categories":5325},[191],{"categories":5327},[170],{"categories":5329},[2581],{"categories":5331},[151],{"categories":5333},[170],{"categories":5335},[157],{"categories":5337},[160],{"categories":5339},[157],{"categories":5341},[157],{"categories":5343},[254],{"categories":5345},[170],{"categories":5347},[],{"categories":5349},[191],{"categories":5351},[157],{"categories":5353},[],{"categories":5355},[160],{"categories":5357},[157],{"categories":5359},[157],{"categories":5361},[157],{"categories":5363},[160],{"categories":5365},[157],{"categories":5367},[157],{"categories":5369},[163],{"categories":5371},[160],{"categories":5373},[157],{"categories":5375},[157],{"categories":5377},[157],{"categories":5379},[157],{"categories":5381},[157],{"categories":5383},[157],{"categories":5385},[154],{"categories":5387},[],{"categories":5389},[163],{"categories":5391},[191],{"categories":5393},[160],{"categories":5395},[157],{"categories":5397},[170],{"categories":5399},[],{"categories":5401},[170],{"categories":5403},[170],{"categories":5405},[160],{"categories":5407},[170],{"categories":5409},[157],{"categories":5411},[157],{"categories":5413},[170],{"categories":5415},[157],{"categories":5417},[160],{"categories":5419},[191],{"categories":5421},[157],{"categories":5423},[157],{"categories":5425},[157],{"categories":5427},[154],{"categories":5429},[157],{"categories":5431},[160],{"categories":5433},[228],{"categories":5435},[],{"categories":5437},[157],{"categories":5439},[231],{"categories":5441},[160],{"categories":5443},[157],{"categories":5445},[],{"categories":5447},[157],{"categories":5449},[157],{"categories":5451},[191],{"categories":5453},[157],{"categories":5455},[157],{"categories":5457},[160],{"categories":5459},[254],{"categories":5461},[],{"categories":5463},[],{"categories":5465},[170],{"categories":5467},[191],{"categories":5469},[170],{"categories":5471},[191],{"categories":5473},[157],{"categories":5475},[254],{"categories":5477},[157],{"categories":5479},[151],{"categories":5481},[160],{"categories":5483},[157],{"categories":5485},[160],{"categories":5487},[160],{"categories":5489},[157],{"categories":5491},[154],{"categories":5493},[],{"categories":5495},[231],{"categories":5497},[157],{"categories":5499},[],{"categories":5501},[191],{"categories":5503},[157],{"categories":5505},[231],{"categories":5507},[157],{"categories":5509},[170],{"categories":5511},[170],{"categories":5513},[170],{"categories":5515},[160],{"categories":5517},[160],{"categories":5519},[160],{"categories":5521},[157],{"categories":5523},[157],{"categories":5525},[228],{"categories":5527},[231],{"categories":5529},[231],{"categories":5531},[],{"categories":5533},[191],{"categories":5535},[157],{"categories":5537},[157],{"categories":5539},[170],{"categories":5541},[],{"categories":5543},[191],{"categories":5545},[191],{"categories":5547},[191],{"categories":5549},[],{"categories":5551},[160],{"categories":5553},[157],{"categories":5555},[],{"categories":5557},[151],{"categories":5559},[154],{"categories":5561},[],{"categories":5563},[157],{"categories":5565},[157],{"categories":5567},[],{"categories":5569},[170],{"categories":5571},[],{"categories":5573},[],{"categories":5575},[],{"categories":5577},[],{"categories":5579},[157],{"categories":5581},[191],{"categories":5583},[],{"categories":5585},[],{"categories":5587},[157],{"categories":5589},[157],{"categories":5591},[157],{"categories":5593},[231],{"categories":5595},[157],{"categories":5597},[231],{"categories":5599},[],{"categories":5601},[231],{"categories":5603},[231],{"categories":5605},[285],{"categories":5607},[160],{"categories":5609},[170],{"categories":5611},[],{"categories":5613},[],{"categories":5615},[231],{"categories":5617},[170],{"categories":5619},[170],{"categories":5621},[170],{"categories":5623},[],{"categories":5625},[151],{"categories":5627},[170],{"categories":5629},[170],{"categories":5631},[151],{"categories":5633},[170],{"categories":5635},[154],{"categories":5637},[170],{"categories":5639},[170],{"categories":5641},[170],{"categories":5643},[231],{"categories":5645},[191],{"categories":5647},[191],{"categories":5649},[157],{"categories":5651},[170],{"categories":5653},[231],{"categories":5655},[285],{"categories":5657},[231],{"categories":5659},[231],{"categories":5661},[231],{"categories":5663},[],{"categories":5665},[154],{"categories":5667},[],{"categories":5669},[285],{"categories":5671},[170],{"categories":5673},[170],{"categories":5675},[170],{"categories":5677},[160],{"categories":5679},[191,154],{"categories":5681},[231],{"categories":5683},[],{"categories":5685},[],{"categories":5687},[231],{"categories":5689},[],{"categories":5691},[231],{"categories":5693},[191],{"categories":5695},[160],{"categories":5697},[],{"categories":5699},[170],{"categories":5701},[157],{"categories":5703},[228],{"categories":5705},[],{"categories":5707},[157],{"categories":5709},[],{"categories":5711},[191],{"categories":5713},[151],{"categories":5715},[231],{"categories":5717},[],{"categories":5719},[170],{"categories":5721},[191],[5723,5838,5914,5983],{"id":5724,"title":5725,"ai":5726,"body":5731,"categories":5805,"created_at":107,"date_modified":107,"description":97,"extension":108,"faq":107,"featured":109,"kicker_label":107,"meta":5806,"navigation":127,"path":5823,"published_at":5824,"question":107,"scraped_at":5825,"seo":5826,"sitemap":5827,"source_id":5828,"source_name":5829,"source_type":135,"source_url":5830,"stem":5831,"tags":5832,"thumbnail_url":5833,"tldr":5834,"tweet":5835,"unknown_tags":5836,"__hash__":5837},"summaries\u002Fsummaries\u002F4a9b990c0fa7f84c-thermodynamic-computing-and-the-future-of-ai-drive-summary.md","Thermodynamic Computing and the Future of AI-Driven Chip Design",{"provider":7,"model":8,"input_tokens":5727,"output_tokens":5728,"processing_time_ms":5729,"cost_usd":5730},9864,1011,5068,0.0039825,{"type":14,"value":5732,"toc":5798},[5733,5737,5740,5744,5747,5750,5754,5757,5761,5764,5766],[17,5734,5736],{"id":5735},"the-lovable-for-chip-design","The 'Lovable' for Chip Design",[22,5738,5739],{},"Thomas Ahle and his team at Normal Computing are building an AI-driven pipeline to automate the entire chip design lifecycle—from intent and RTL (Register Transfer Level) generation to formal verification and tape-out. The hardware industry remains heavily locked down by expensive, proprietary EDA (Electronic Design Automation) tools that can cost $10,000 per CPU core. To bypass this, Normal Computing developed an open-source Verilog simulator, generating 580,000 lines of code in 43 days using a swarm of AI agents. Ahle views this as a necessary step toward democratizing hardware development, similar to how open-source software transformed the programming landscape.",[17,5741,5743],{"id":5742},"the-crisis-of-verification-and-understanding-debt","The Crisis of Verification and Understanding Debt",[22,5745,5746],{},"As AI agents take over complex engineering tasks, a critical tension emerges between competence and structure. Ahle highlights that while an agent might pass 70-80% of tests, passing tests is not equivalent to correctness. In hardware, where a single bug can cost billions, this is a existential risk.",[22,5748,5749],{},"Ahle warns of \"understanding debt\": when agents generate massive, complex codebases that humans no longer read or fully comprehend, the team loses the ability to debug or evolve the system effectively. He argues that deep, grounded understanding is essential for future design decisions. He remains skeptical of benchmarks like ProgramBench, noting that current models often fail to truly \"rebuild\" programs from scratch, instead relying on memorized patterns or superficial behavior matching rather than structural competence.",[17,5751,5753],{"id":5752},"thermodynamic-computing-noise-as-computation","Thermodynamic Computing: Noise as Computation",[22,5755,5756],{},"Normal Computing is pioneering \"thermodynamic computing,\" a paradigm that embraces physical noise rather than fighting it. Their CN101 chip is designed to leverage stochasticity to settle into solutions for complex mathematical problems, such as matrix inversion, by treating the chip's physical state as a stochastic differential equation. This approach aligns with probabilistic machine learning, where uncertainty is a feature, not a bug. By using the hardware's inherent noise to perform computations, they aim to achieve performance levels that would be prohibitively expensive or slow on traditional digital architectures.",[17,5758,5760],{"id":5759},"the-future-of-hybrid-compute","The Future of Hybrid Compute",[22,5762,5763],{},"Ahle discusses the shift toward hybrid systems where AI agents collaborate with specialized binaries (like Stockfish for chess or formal verifiers for RTL). He suggests that the future of AI engineering lies in \"vibe-coding\" loops that are eventually hardened by formal methods. The goal is to maintain a balance where AI handles the heavy lifting of implementation while humans retain the architectural oversight necessary to prevent the accumulation of unmanageable, opaque code.",[17,5765,45],{"id":44},[47,5767,5768,5774,5780,5786,5792],{},[50,5769,5770,5773],{},[53,5771,5772],{},"Verification is non-negotiable:"," In hardware, \"moving fast and breaking things\" is not an option. Formal verification must be integrated into the AI agent loop.",[50,5775,5776,5779],{},[53,5777,5778],{},"Beware of understanding debt:"," If your team cannot read the code generated by your agents, you are accumulating technical debt that will eventually block future innovation.",[50,5781,5782,5785],{},[53,5783,5784],{},"Structure vs. Competence:"," Passing tests is not the same as understanding the underlying logic. Always prioritize structural integrity over passing benchmarks.",[50,5787,5788,5791],{},[53,5789,5790],{},"Embrace stochasticity:"," Thermodynamic computing shows that physical noise can be harnessed as a computational resource for specific probabilistic workloads.",[50,5793,5794,5797],{},[53,5795,5796],{},"Open-source tooling is a bottleneck:"," The lack of open-source compilers and simulators in hardware is a major barrier to AI adoption in the industry; building these tools is as important as building the models themselves.",{"title":97,"searchDepth":98,"depth":98,"links":5799},[5800,5801,5802,5803,5804],{"id":5735,"depth":98,"text":5736},{"id":5742,"depth":98,"text":5743},{"id":5752,"depth":98,"text":5753},{"id":5759,"depth":98,"text":5760},{"id":44,"depth":98,"text":45},[106],{"content_references":5807,"triage":5820},[5808,5812,5814,5817],{"type":5809,"title":5810,"context":5811},"paper","ProgramBench: Can Language Models Rebuild Programs From Scratch?","cited",{"type":5809,"title":5813,"context":5811},"Thermodynamic AI and the Fluctuation Frontier",{"type":113,"title":5815,"url":5816,"context":115},"TLA+","https:\u002F\u002Flamport.azurewebsites.net\u002Ftla\u002Ftla.html",{"type":113,"title":5818,"url":5819,"context":115},"Stockfish","https:\u002F\u002Fen.wikipedia.org\u002Fwiki\u002FStockfish_(chess)",{"relevance":123,"novelty":123,"quality":123,"actionability":124,"composite":5821,"reasoning":5822},3.8,"Category: Agents & Orchestration. The article discusses the use of AI agents to automate chip design, addressing a specific audience pain point regarding the integration of AI into engineering tasks. It presents novel insights into the concept of 'understanding debt' in AI-generated code, which is crucial for engineers concerned about reliability and maintainability.","\u002Fsummaries\u002F4a9b990c0fa7f84c-thermodynamic-computing-and-the-future-of-ai-drive-summary","2026-06-28 23:38:07","2026-06-29 14:32:29",{"title":5725,"description":97},{"loc":5823},"4a9b990c0fa7f84c","Machine Learning Street Talk","https:\u002F\u002Fwww.youtube.com\u002Fwatch?v=5pieVHmlbyk","summaries\u002F4a9b990c0fa7f84c-thermodynamic-computing-and-the-future-of-ai-drive-summary",[141,140,139,142],"https:\u002F\u002Fi.ytimg.com\u002Fvi\u002F5pieVHmlbyk\u002Fhqdefault.jpg","Thomas Ahle of Normal Computing discusses using AI agents to automate chip design, the risks of 'understanding debt' in agentic code, and the development of thermodynamic chips that use physical noise to perform stochastic computations.","This is a wide-ranging technical conversation with [Thomas Ahle](https:\u002F\u002Fthomasahle.com) about [Normal Computing's](https:\u002F\u002Fnormalcomputing.com\u002F) efforts to automate chip design. The discussion moves from the practical challenges of building an open-source [Verilog simulator](https:\u002F\u002Fnormalcomputing.com\u002Fblog\u002Fbuilding-an-open-source-verilog-simulator-with-ai-580k-lines-in-43-days) to the theoretical hurdles of formal verification and the physics behind their [thermodynamic computing](https:\u002F\u002Farxiv.org\u002Fabs\u002F2302.06584) hardware.",[],"xKvevUXZPTP1AZaKossAJQuOoYUpGpc2w1tg0PNiBZQ",{"id":5839,"title":5840,"ai":5841,"body":5846,"categories":5880,"created_at":107,"date_modified":107,"description":97,"extension":108,"faq":107,"featured":109,"kicker_label":107,"meta":5881,"navigation":127,"path":5900,"published_at":5901,"question":107,"scraped_at":5901,"seo":5902,"sitemap":5903,"source_id":5904,"source_name":5905,"source_type":5906,"source_url":5907,"stem":5908,"tags":5909,"thumbnail_url":107,"tldr":5911,"tweet":107,"unknown_tags":5912,"__hash__":5913},"summaries\u002Fsummaries\u002F1e0d2465783ff443-spacex-s-neocloud-and-the-rise-of-owned-intelligen-summary.md","SpaceX's Neocloud and the Rise of Owned Intelligence",{"provider":7,"model":8,"input_tokens":5842,"output_tokens":5843,"processing_time_ms":5844,"cost_usd":5845},10460,964,5442,0.004061,{"type":14,"value":5847,"toc":5875},[5848,5852,5855,5859,5862,5865,5869,5872],[17,5849,5851],{"id":5850},"the-emergence-of-spacex-as-a-neocloud","The Emergence of SpaceX as a 'Neocloud'",[22,5853,5854],{},"SpaceX has rapidly scaled into a major compute provider, securing massive GPU rental agreements that position it as a critical infrastructure layer. Recent reports indicate a $6.3 billion deal with Reflection AI for GB300 access, following similar large-scale contracts with Anthropic and Google. These deals, totaling approximately $2.32 billion per month, annualize to $28 billion in revenue—roughly double the current revenue of Coreweave. This 'neocloud' model, characterized by high-density Blackwell deployments and significant compute leasing, suggests that GPU brokerage is becoming a strategic market that bridges the gap between hardware supply and frontier model builders.",[17,5856,5858],{"id":5857},"the-shift-toward-owned-intelligence","The Shift Toward 'Owned Intelligence'",[22,5860,5861],{},"There is a clear trend among enterprise application builders—such as Cursor, Notion, and Harvey—to move away from pure API reliance toward 'owned intelligence.' This involves running open-weight or specialized models that companies can post-train on their own data and evals. Baseten’s recent $1.5B Series F funding highlights this shift, as enterprises seek to retain control over their model stack to ensure reliability and continual learning.",[22,5863,5864],{},"GLM-5.2 has emerged as the leading open-weight model for these agentic workflows. Benchmarks and real-world harnesses (such as those performed in the Cline repository) show it is competitive with proprietary frontier models. While it may be slower and more tool-call-heavy than closed alternatives, it offers significant cost advantages ($0.41 vs $0.81 in specific bug-fixing tasks) and robust verification capabilities. The ecosystem has responded with high-velocity adoption, integrating GLM-5.2 into AWS Marketplace, Baseten, and various agentic frameworks.",[17,5866,5868],{"id":5867},"evolving-agentic-infrastructure","Evolving Agentic Infrastructure",[22,5870,5871],{},"Agent engineering is moving beyond simple chat interfaces toward stateful, tool-rich, long-running workflows. Google’s promotion of the 'Interactions API' as the default for Gemini agents reflects this, offering background async execution and remote sandboxing (Antigravity). Simultaneously, the developer community is standardizing around agent communication protocols and harness ergonomics, as seen in the growth of projects like Hermes.",[22,5873,5874],{},"However, this shift has exposed weaknesses in current evaluation methodologies. Audit data across 21 judges and 541K judgments indicates that 'exact-match' agreement significantly overstates judge quality; using metrics like Cohen’s kappa reveals much lower agreement. The industry is increasingly recognizing that evaluating agents requires testing system behavior under tools, memory, and long-horizon execution, rather than relying on static, single-turn benchmark scores.",{"title":97,"searchDepth":98,"depth":98,"links":5876},[5877,5878,5879],{"id":5850,"depth":98,"text":5851},{"id":5857,"depth":98,"text":5858},{"id":5867,"depth":98,"text":5868},[106],{"content_references":5882,"triage":5897},[5883,5886,5889,5891,5894],{"type":113,"title":5884,"url":5885,"context":115},"Baseten","https:\u002F\u002Fwww.baseten.co\u002F",{"type":113,"title":5887,"url":5888,"context":115},"Sakana Fugu","https:\u002F\u002Fx.com\u002FSakanaAILabs\u002Fstatus\u002F2068973497905545461",{"type":113,"title":5890,"context":115},"GLM-5.2",{"type":113,"title":5892,"url":5893,"context":115},"Cline","https:\u002F\u002Fx.com\u002Fcline\u002Fstatus\u002F2069171146994729078",{"type":113,"title":5895,"url":5896,"context":115},"Gemini Interactions API","https:\u002F\u002Fx.com\u002FGoogle\u002Fstatus\u002F2069108942102310957",{"relevance":123,"novelty":124,"quality":123,"actionability":124,"composite":5898,"reasoning":5899},3.6,"Category: Models & Frontier Labs. The article discusses the emergence of SpaceX as a significant compute provider and the shift towards 'owned intelligence' with open-weight models, which addresses the audience's interest in infrastructure and model capabilities. It provides insights into the competitive landscape of models like GLM-5.2, but lacks detailed actionable steps for implementation.","\u002Fsummaries\u002F1e0d2465783ff443-spacex-s-neocloud-and-the-rise-of-owned-intelligen-summary","2026-06-29 14:32:24",{"title":5840,"description":97},{"loc":5900},"1e0d2465783ff443","Latent Space (Newsletter)","article","https:\u002F\u002Fwww.latent.space\u002Fp\u002Fainews-spacex-is-already-a-28byr","summaries\u002F1e0d2465783ff443-spacex-s-neocloud-and-the-rise-of-owned-intelligen-summary",[140,141,142,5910],"models","SpaceX is emerging as a massive compute provider with $28B\u002Fyear in annualized GPU rental deals, while developers increasingly prioritize 'owned intelligence' via open-weight models like GLM-5.2 to gain control over their AI stacks.",[],"7x_j5gHdeh1IpFfUZyV40kl0-26pTBxT9niAjHQlmbc",{"id":5915,"title":5916,"ai":5917,"body":5922,"categories":5965,"created_at":107,"date_modified":107,"description":97,"extension":108,"faq":107,"featured":109,"kicker_label":107,"meta":5966,"navigation":127,"path":5970,"published_at":5971,"question":107,"scraped_at":5971,"seo":5972,"sitemap":5973,"source_id":5974,"source_name":5975,"source_type":5906,"source_url":5976,"stem":5977,"tags":5978,"thumbnail_url":107,"tldr":5980,"tweet":107,"unknown_tags":5981,"__hash__":5982},"summaries\u002Fsummaries\u002Fd21bc60bc19731c0-improving-long-horizon-llm-planning-via-symbolic-f-summary.md","Improving Long-Horizon LLM Planning via Symbolic Feedback",{"provider":7,"model":8,"input_tokens":5918,"output_tokens":5919,"processing_time_ms":5920,"cost_usd":5921},6011,424,2470,0.00213875,{"type":14,"value":5923,"toc":5961},[5924,5928,5931,5935,5938,5958],[17,5925,5927],{"id":5926},"the-challenge-of-long-horizon-planning","The Challenge of Long-Horizon Planning",[22,5929,5930],{},"Large Language Models often struggle with long-horizon decision-making, frequently generating infeasible or logically incorrect plans. These failures stem from the model's inability to maintain strict adherence to task constraints and semantics over extended sequences. The proposed framework addresses this by moving away from pure natural language generation toward a structured, feedback-driven refinement loop.",[17,5932,5934],{"id":5933},"symbolic-feedback-and-iterative-refinement","Symbolic Feedback and Iterative Refinement",[22,5936,5937],{},"The core of the framework is a three-part mechanism designed to enforce reliability:",[47,5939,5940,5946,5952],{},[50,5941,5942,5945],{},[53,5943,5944],{},"Symbolic Mapping:"," The system maps logical symbols into natural language descriptions. This bridges the gap between formal constraints and the model's linguistic capabilities, ensuring the LLM understands the underlying task requirements.",[50,5947,5948,5951],{},[53,5949,5950],{},"Symbolic Verifier:"," Instead of relying on the LLM to self-correct based on vague intuition, a dedicated verifier checks the generated plan against formal constraints. When errors are detected, the verifier translates these failures into specific, actionable corrective instructions that the LLM can interpret and execute.",[50,5953,5954,5957],{},[53,5955,5956],{},"Plan Recognizer:"," To prevent the model from drifting, a plan recognizer evaluates goal reachability. This provides a signal that guides the refinement process toward valid, achievable end-states.",[22,5959,5960],{},"By combining these components, the framework enables an iterative self-refinement loop where the LLM continuously updates its plan based on concrete, symbolic feedback rather than probabilistic guessing. This approach consistently improves both the feasibility and correctness of plans in complex, multi-step tasks.",{"title":97,"searchDepth":98,"depth":98,"links":5962},[5963,5964],{"id":5926,"depth":98,"text":5927},{"id":5933,"depth":98,"text":5934},[434],{"content_references":5967,"triage":5968},[],{"relevance":123,"novelty":123,"quality":123,"actionability":124,"composite":5821,"reasoning":5969},"Category: Agents & Orchestration. The article discusses a framework for improving LLM planning reliability, which directly addresses the audience's interest in architectures and tool use for AI systems. It presents a novel approach to enhancing decision-making in LLMs through symbolic feedback, which is a new angle in the field. However, while it provides insights into the framework, it lacks detailed actionable steps that the audience could immediately implement.","\u002Fsummaries\u002Fd21bc60bc19731c0-improving-long-horizon-llm-planning-via-symbolic-f-summary","2026-06-29 14:33:22",{"title":5916,"description":97},{"loc":5970},"d21bc60bc19731c0","arXiv cs.AI","https:\u002F\u002Farxiv.org\u002Fabs\u002F2606.27757","summaries\u002Fd21bc60bc19731c0-improving-long-horizon-llm-planning-via-symbolic-f-summary",[5979,141,139],"llm","This framework enhances LLM planning reliability by using a symbolic verifier to identify errors and provide corrective, interpretable instructions for iterative self-refinement.",[],"xebUSOJ_vs7Z1nvn4lXfWDfeRGEaC-ESX4ZfP6b_gPg",{"id":5984,"title":5985,"ai":5986,"body":5991,"categories":6034,"created_at":107,"date_modified":107,"description":97,"extension":108,"faq":107,"featured":109,"kicker_label":107,"meta":6035,"navigation":127,"path":6043,"published_at":6044,"question":107,"scraped_at":6044,"seo":6045,"sitemap":6046,"source_id":6047,"source_name":5975,"source_type":5906,"source_url":6040,"stem":6048,"tags":6049,"thumbnail_url":107,"tldr":6050,"tweet":107,"unknown_tags":6051,"__hash__":6052},"summaries\u002Fsummaries\u002F20c0eff6a70c41ac-ai-modelnet-a-networked-architecture-for-collabora-summary.md","AI-ModelNet: A Networked Architecture for Collaborative AI",{"provider":7,"model":8,"input_tokens":5987,"output_tokens":5988,"processing_time_ms":5989,"cost_usd":5990},6890,483,2670,0.002447,{"type":14,"value":5992,"toc":6030},[5993,5997,6000,6004,6007,6027],[17,5994,5996],{"id":5995},"the-case-for-an-ai-model-network","The Case for an AI-Model Network",[22,5998,5999],{},"As the industry shifts from monolithic, massive models toward a landscape of lightweight, private, and domain-specific models, the primary challenge has moved from raw compute to effective collaboration. The authors argue that just as the Internet transformed computing by enabling resource sharing and communication, an \"AI-Model Network\" (AI-ModelNet) is required to solve the current bottleneck of model isolation. This paradigm aims to move beyond single-model performance by establishing standardized pathways for interconnection, capability sharing, and collaborative reasoning.",[17,6001,6003],{"id":6002},"hierarchical-architecture-and-vision","Hierarchical Architecture and Vision",[22,6005,6006],{},"The proposed AI-ModelNet framework introduces a hierarchical system architecture designed to facilitate interaction between heterogeneous models. By treating models as nodes within a network, the architecture enables:",[47,6008,6009,6015,6021],{},[50,6010,6011,6014],{},[53,6012,6013],{},"Interconnection:"," Establishing protocols for models to discover and communicate with one another.",[50,6016,6017,6020],{},[53,6018,6019],{},"Capability Sharing:"," Allowing models to leverage the specialized knowledge or processing strengths of other models in the network.",[50,6022,6023,6026],{},[53,6024,6025],{},"Collaborative Reasoning:"," Orchestrating multi-model workflows to solve complex tasks that exceed the capabilities of any single model.",[22,6028,6029],{},"The authors validate this conceptual framework through a prototype system, demonstrating that diverse application cases can be handled more effectively when models are networked rather than siloed. This approach addresses the practical constraints of high training costs and deployment complexities by allowing smaller, specialized models to function as a cohesive, intelligent system.",{"title":97,"searchDepth":98,"depth":98,"links":6031},[6032,6033],{"id":5995,"depth":98,"text":5996},{"id":6002,"depth":98,"text":6003},[434],{"content_references":6036,"triage":6041},[6037],{"type":5809,"title":6038,"author":6039,"url":6040,"context":5811},"AI-Model Network: Concept, Current State and Future","Li Zhetao et al.","https:\u002F\u002Farxiv.org\u002Fabs\u002F2606.27382",{"relevance":123,"novelty":124,"quality":123,"actionability":124,"composite":5898,"reasoning":6042},"Category: Agents & Orchestration. The article discusses a new architecture for collaborative AI that addresses the fragmentation of models, which is relevant to engineers looking to implement multi-agent systems. It presents a novel framework but lacks detailed actionable steps for implementation.","\u002Fsummaries\u002F20c0eff6a70c41ac-ai-modelnet-a-networked-architecture-for-collabora-summary","2026-06-29 14:33:21",{"title":5985,"description":97},{"loc":6043},"20c0eff6a70c41ac","summaries\u002F20c0eff6a70c41ac-ai-modelnet-a-networked-architecture-for-collabora-summary",[141,139,5910],"AI-ModelNet proposes a hierarchical, Internet-inspired architecture to enable interconnection and collaborative reasoning among heterogeneous, domain-specific models, addressing the fragmentation of the current AI landscape.",[],"HIPHr0jNleVFUoWQ7ZkFV3R2A1-1xRh-SFeerMvW7_o"]