[{"data":1,"prerenderedAt":-1},["ShallowReactive",2],{"summary-e49f16bf5dbabedc-fixing-grpo-failure-modes-in-production-summary":3,"summaries-facets-categories":161,"summary-related-e49f16bf5dbabedc-fixing-grpo-failure-modes-in-production-summary":5735},{"id":4,"title":5,"ai":6,"body":13,"categories":121,"created_at":123,"date_modified":123,"description":115,"extension":124,"faq":123,"featured":125,"kicker_label":123,"meta":126,"navigation":142,"path":143,"published_at":144,"question":123,"scraped_at":145,"seo":146,"sitemap":147,"source_id":148,"source_name":149,"source_type":150,"source_url":151,"stem":152,"tags":153,"thumbnail_url":123,"tldr":158,"tweet":123,"unknown_tags":159,"__hash__":160},"summaries\u002Fsummaries\u002Fe49f16bf5dbabedc-fixing-grpo-failure-modes-in-production-summary.md","Fixing GRPO Failure Modes in Production",{"provider":7,"model":8,"input_tokens":9,"output_tokens":10,"processing_time_ms":11,"cost_usd":12},"openrouter","google\u002Fgemini-3.1-flash-lite",6684,817,4693,0.0028965,{"type":14,"value":15,"toc":114},"minimark",[16,21,25,48,52,55,81,85,88],[17,18,20],"h2",{"id":19},"the-structural-weaknesses-of-grpo","The Structural Weaknesses of GRPO",[22,23,24],"p",{},"GRPO (Group Relative Policy Optimization) is widely favored for its efficiency, as it eliminates the need for a critic network. However, its reliance on group-relative advantage normalization creates three primary failure modes that stall training:",[26,27,28,36,42],"ul",{},[29,30,31,35],"li",{},[32,33,34],"strong",{},"Advantage Collapse:"," Occurs when all sampled responses in a group receive the same reward (e.g., all correct or all incorrect). This results in near-zero advantage, effectively killing the gradient signal. This is most common on very hard or very easy prompts.",[29,37,38,41],{},[32,39,40],{},"Entropy Collapse:"," As the model converges, it may lose generation diversity. Once entropy drops below a critical threshold (typically \u003C 0.5 nats), the model becomes stuck in a narrow mode, making it difficult to recover without external intervention.",[29,43,44,47],{},[32,45,46],{},"KL Drift:"," Using a blunt KL penalty coefficient often forces the model to choose between reward hacking (low penalty) or stagnation (high penalty). Baking KL into the reward signal further distorts the advantage normalization process.",[17,49,51],{"id":50},"engineering-solutions-via-dapo","Engineering Solutions via DAPO",[22,53,54],{},"The DAPO (Dynamic Sampling Policy Optimization) framework provides specific algorithmic fixes to these issues:",[26,56,57,63,69,75],{},[29,58,59,62],{},[32,60,61],{},"Dynamic Sampling:"," Instead of training on all groups, filter out groups with zero reward variance. This prevents the model from updating on noise.",[29,64,65,68],{},[32,66,67],{},"Asymmetric KL Clipping:"," By using a higher upper bound for the probability ratio, the model can aggressively reinforce correct responses without needing to compress its entire output distribution, which helps preserve entropy.",[29,70,71,74],{},[32,72,73],{},"Decoupled KL:"," Remove the KL penalty from the reward signal entirely. Apply it as a direct loss term after advantage computation to prevent reward distortion.",[29,76,77,80],{},[32,78,79],{},"Token-Level Normalization:"," Standard GRPO normalizes at the sample level, which biases the model against long chain-of-thought reasoning. Normalizing by total token count ensures that longer, more complex reasoning traces are weighted appropriately.",[17,82,84],{"id":83},"production-best-practices","Production Best Practices",[22,86,87],{},"Beyond the algorithm, the success of GRPO depends on the quality of the reward signal and the training pipeline.",[26,89,90,96,102,108],{},[29,91,92,95],{},[32,93,94],{},"Audit the Reward Model:"," If the verifier is noisy, it will inject false signals that exacerbate advantage collapse.",[29,97,98,101],{},[32,99,100],{},"Monitor Entropy:"," Track per-token entropy as a first-class metric. If it stays below 0.5 nats for more than 50 steps, the model is likely collapsing.",[29,103,104,107],{},[32,105,106],{},"Manage SFT Bias:"," If the initial SFT checkpoint is already over-fitted to a specific format, it will be more prone to entropy collapse during RL.",[29,109,110,113],{},[32,111,112],{},"Hyperparameter Tuning:"," While increasing group size (G) can stabilize estimates, it is often more compute-efficient to use dynamic sampling to discard low-variance groups than to simply increase the number of rollouts.",{"title":115,"searchDepth":116,"depth":116,"links":117},"",2,[118,119,120],{"id":19,"depth":116,"text":20},{"id":50,"depth":116,"text":51},{"id":83,"depth":116,"text":84},[122],"AI & LLMs",null,"md",false,{"content_references":127,"triage":137},[128,133],{"type":129,"title":130,"author":131,"context":132},"paper","DeepSeekMath: Pushing the Limits of Mathematical Reasoning in Open Language Models","DeepSeek-AI","mentioned",{"type":129,"title":134,"author":135,"context":136},"DAPO: Dynamic Sampling Policy Optimization","Yu et al.","recommended",{"relevance":138,"novelty":139,"quality":139,"actionability":139,"composite":140,"reasoning":141},5,4,4.35,"Category: AI & LLMs. The article provides in-depth insights into the failure modes of GRPO and actionable solutions through DAPO techniques, addressing a specific pain point for AI developers working on production models. The detailed explanation of dynamic sampling and KL clipping offers practical steps that can be implemented in AI training workflows.",true,"\u002Fsummaries\u002Fe49f16bf5dbabedc-fixing-grpo-failure-modes-in-production-summary","2026-06-22 17:19:40","2026-06-23 12:56:49",{"title":5,"description":115},{"loc":143},"e49f16bf5dbabedc","Level Up Coding","article","https:\u002F\u002Flevelup.gitconnected.com\u002Fgrpo-in-production-the-failure-modes-nobody-writes-about-5d59c3fc9c3b?source=rss----5517fd7b58a6---4","summaries\u002Fe49f16bf5dbabedc-fixing-grpo-failure-modes-in-production-summary",[154,155,156,157],"llm","agents","ai-tools","reinforcement-learning","GRPO is more efficient than PPO but prone to silent failures like advantage collapse and entropy loss. Using Dynamic Sampling Policy Optimization (DAPO) techniques—specifically dynamic sampling, token-level normalization, and decoupled KL—is essential for stable production training.",[157],"4CEhNHYzoOyN8sKq7uCvHQxt3W7rlJzDp-bzL0gTCkE",[162,165,168,170,173,176,178,180,183,185,187,189,191,194,196,198,200,202,205,207,209,211,213,215,217,219,221,223,225,227,229,231,233,235,237,239,242,245,247,249,251,253,255,257,259,261,263,265,268,270,272,274,276,278,280,282,284,286,288,290,292,294,296,299,301,303,305,307,309,311,313,315,317,319,321,323,326,328,330,332,334,336,338,340,342,344,346,348,350,352,354,356,358,360,362,364,366,368,370,372,374,376,378,380,382,385,387,389,391,393,395,397,399,401,403,406,408,410,412,414,416,418,420,422,424,426,428,431,433,435,437,439,441,443,445,448,450,452,454,456,458,460,462,464,466,468,470,472,474,476,478,480,482,484,486,488,490,492,494,497,499,501,504,506,508,510,512,514,516,518,520,522,524,526,528,530,533,535,537,539,541,543,545,547,549,552,554,556,558,560,562,564,566,568,570,572,574,576,578,580,582,584,586,588,590,592,594,596,598,600,602,604,606,608,610,612,614,616,618,620,622,624,626,628,630,632,634,636,638,640,642,644,646,648,650,652,654,656,658,660,662,664,666,668,670,672,674,676,678,680,682,684,686,688,690,692,694,696,698,700,702,704,706,708,710,712,714,716,718,720,722,724,726,728,730,732,734,736,738,740,742,744,746,748,750,752,754,756,758,760,762,764,766,768,770,772,774,776,778,780,782,784,786,788,791,793,795,797,800,802,804,806,808,810,812,814,816,818,821,823,825,827,829,831,833,835,837,839,841,843,845,847,849,851,853,855,857,859,861,863,865,867,869,871,873,875,877,879,881,883,885,887,889,891,893,895,897,899,901,903,905,907,909,911,913,915,917,919,921,923,925,927,929,931,933,935,937,939,941,943,945,947,949,951,953,955,957,959,961,963,965,967,969,971,973,975,977,979,981,983,985,987,989,991,993,995,997,999,1001,1003,1005,1007,1009,1011,1013,1015,1017,1019,1021,1023,1025,1027,1029,1031,1033,1035,1037,1039,1041,1043,1045,1047,1049,1051,1053,1055,1057,1059,1061,1063,1065,1067,1070,1072,1074,1076,1078,1080,1082,1084,1086,1088,1090,1092,1094,1096,1098,1100,1102,1104,1106,1108,1110,1112,1114,1116,1118,1120,1122,1124,1126,1128,1130,1132,1134,1136,1138,1140,1142,1144,1146,1148,1150,1152,1154,1156,1158,1160,1162,1164,1166,1168,1170,1172,1174,1176,1178,1180,1182,1184,1186,1188,1190,1192,1194,1196,1198,1200,1202,1204,1206,1208,1210,1212,1214,1216,1218,1220,1222,1224,1227,1229,1231,1233,1235,1237,1239,1241,1243,1245,1247,1249,1251,1253,1255,1257,1259,1261,1263,1265,1267,1269,1271,1273,1275,1277,1279,1281,1283,1285,1287,1289,1291,1293,1295,1297,1299,1301,1303,1305,1307,1309,1311,1313,1315,1317,1319,1321,1323,1325,1327,1329,1331,1333,1335,1337,1340,1342,1344,1346,1348,1350,1352,1354,1356,1358,1360,1362,1364,1366,1368,1370,1372,1374,1376,1378,1380,1382,1384,1386,1388,1390,1392,1394,1396,1398,1400,1402,1404,1406,1408,1410,1412,1414,1416,1418,1420,1422,1424,1426,1428,1430,1432,1434,1436,1438,1440,1442,1444,1446,1448,1450,1452,1454,1456,1458,1460,1462,1465,1467,1469,1471,1473,1475,1477,1479,1481,1483,1485,1487,1489,1491,1493,1495,1497,1499,1501,1503,1505,1507,1509,1511,1513,1516,1518,1520,1522,1524,1526,1528,1530,1532,1534,1536,1538,1540,1542,1544,1546,1548,1550,1552,1554,1556,1558,1560,1562,1564,1566,1568,1570,1572,1574,1576,1578,1580,1582,1584,1586,1588,1590,1592,1594,1596,1598,1600,1602,1604,1606,1608,1610,1612,1614,1616,1618,1620,1622,1624,1626,1628,1630,1632,1634,1636,1638,1640,1642,1644,1646,1648,1650,1652,1654,1656,1658,1660,1662,1664,1666,1668,1670,1672,1674,1676,1678,1680,1682,1684,1686,1688,1690,1692,1694,1696,1698,1700,1702,1704,1706,1708,1710,1712,1714,1716,1718,1720,1722,1724,1726,1728,1730,1732,1734,1736,1738,1740,1742,1744,1746,1748,1750,1752,1754,1756,1758,1760,1762,1764,1766,1768,1770,1772,1774,1776,1778,1780,1782,1784,1786,1788,1790,1792,1794,1796,1798,1800,1802,1804,1806,1808,1810,1812,1814,1816,1818,1820,1822,1824,1826,1828,1830,1832,1834,1836,1838,1840,1842,1844,1846,1848,1850,1852,1854,1856,1858,1860,1863,1865,1867,1869,1871,1873,1875,1877,1879,1881,1883,1885,1887,1889,1891,1893,1895,1897,1899,1901,1903,1905,1907,1909,1911,1913,1915,1917,1919,1921,1923,1925,1927,1929,1931,1933,1935,1938,1940,1942,1944,1946,1948,1950,1952,1954,1956,1958,1960,1962,1964,1966,1968,1970,1972,1974,1976,1978,1980,1982,1984,1986,1988,1990,1992,1994,1996,1998,2000,2002,2004,2006,2008,2010,2012,2014,2016,2018,2020,2022,2024,2026,2028,2030,2032,2034,2037,2039,2041,2043,2045,2047,2049,2051,2053,2055,2057,2059,2061,2063,2065,2067,2069,2071,2074,2076,2078,2080,2082,2084,2086,2088,2090,2092,2094,2096,2098,2100,2102,2104,2106,2108,2110,2112,2114,2116,2118,2120,2122,2124,2126,2128,2130,2132,2134,2136,2138,2140,2142,2144,2146,2148,2150,2152,2154,2156,2158,2160,2162,2164,2166,2168,2170,2172,2174,2176,2178,2180,2182,2184,2186,2188,2190,2192,2194,2196,2198,2200,2202,2204,2206,2208,2210,2212,2214,2216,2218,2220,2222,2224,2226,2228,2230,2232,2234,2236,2238,2240,2242,2244,2246,2248,2250,2252,2254,2256,2258,2260,2262,2264,2266,2268,2270,2272,2274,2276,2278,2280,2282,2284,2286,2288,2290,2292,2294,2296,2298,2300,2302,2304,2306,2308,2310,2312,2314,2316,2318,2320,2322,2324,2326,2328,2330,2332,2334,2336,2338,2340,2342,2344,2346,2348,2350,2352,2354,2356,2358,2360,2362,2364,2366,2368,2370,2372,2374,2376,2378,2380,2382,2384,2386,2388,2390,2392,2394,2396,2398,2400,2402,2404,2406,2408,2410,2412,2414,2416,2418,2420,2422,2424,2426,2428,2430,2432,2434,2436,2438,2440,2442,2444,2446,2448,2450,2452,2454,2456,2458,2460,2462,2464,2466,2468,2470,2472,2474,2476,2478,2480,2482,2484,2486,2488,2490,2492,2494,2496,2498,2500,2502,2504,2506,2508,2510,2512,2514,2516,2518,2520,2522,2524,2526,2528,2530,2532,2534,2536,2538,2540,2542,2544,2546,2548,2550,2552,2554,2556,2558,2560,2562,2564,2566,2568,2570,2572,2574,2576,2578,2580,2582,2584,2586,2588,2590,2592,2595,2597,2599,2601,2603,2605,2607,2609,2611,2613,2615,2617,2619,2621,2623,2625,2627,2629,2631,2633,2635,2637,2639,2641,2643,2645,2647,2649,2651,2653,2655,2657,2659,2661,2663,2665,2667,2669,2671,2673,2675,2677,2679,2681,2683,2685,2687,2689,2692,2694,2696,2698,2700,2702,2704,2706,2708,2710,2712,2714,2716,2718,2720,2722,2724,2726,2728,2730,2732,2734,2736,2738,2740,2742,2744,2746,2748,2750,2752,2754,2756,2758,2760,2762,2764,2766,2768,2770,2772,2774,2776,2778,2780,2782,2784,2786,2788,2790,2792,2794,2796,2798,2800,2802,2804,2806,2808,2810,2812,2814,2816,2818,2820,2822,2824,2826,2828,2830,2832,2834,2836,2838,2840,2842,2844,2846,2848,2850,2852,2854,2856,2858,2860,2862,2864,2866,2868,2870,2872,2874,2876,2878,2880,2882,2884,2886,2888,2890,2892,2894,2896,2898,2900,2902,2904,2906,2908,2910,2912,2914,2916,2918,2920,2922,2924,2926,2928,2930,2932,2934,2936,2938,2940,2942,2944,2946,2948,2950,2952,2954,2956,2958,2960,2962,2964,2966,2968,2970,2972,2974,2976,2978,2980,2982,2984,2986,2988,2990,2992,2994,2996,2998,3000,3002,3004,3006,3008,3010,3012,3014,3016,3018,3020,3022,3024,3026,3028,3030,3032,3034,3036,3038,3040,3042,3044,3046,3048,3050,3052,3054,3056,3058,3060,3062,3064,3066,3068,3070,3072,3074,3076,3078,3080,3082,3084,3086,3088,3090,3092,3094,3096,3098,3100,3102,3104,3106,3108,3110,3112,3114,3116,3118,3120,3122,3124,3126,3128,3130,3132,3134,3136,3138,3140,3142,3144,3146,3148,3150,3152,3154,3156,3158,3160,3162,3164,3166,3168,3170,3172,3174,3176,3178,3180,3182,3184,3186,3188,3190,3192,3194,3196,3198,3200,3202,3204,3206,3208,3210,3212,3214,3216,3218,3220,3222,3224,3226,3228,3230,3232,3234,3236,3238,3240,3242,3244,3246,3248,3250,3252,3254,3256,3258,3260,3262,3264,3266,3268,3270,3272,3274,3276,3278,3280,3282,3284,3286,3288,3290,3292,3294,3296,3298,3300,3302,3304,3306,3308,3310,3312,3314,3316,3318,3320,3322,3324,3326,3328,3330,3332,3334,3336,3338,3340,3342,3344,3346,3348,3350,3352,3354,3356,3358,3360,3362,3364,3366,3368,3370,3372,3374,3376,3378,3380,3382,3384,3386,3388,3390,3392,3394,3396,3398,3400,3402,3404,3406,3408,3410,3412,3414,3416,3418,3420,3422,3424,3426,3428,3430,3432,3434,3436,3438,3440,3442,3444,3446,3448,3450,3452,3454,3456,3458,3460,3462,3464,3466,3468,3470,3472,3474,3476,3478,3480,3482,3484,3486,3488,3490,3492,3494,3496,3498,3500,3502,3504,3506,3508,3510,3512,3514,3516,3518,3520,3522,3524,3526,3528,3530,3532,3534,3536,3538,3540,3542,3544,3546,3548,3550,3552,3554,3556,3558,3560,3562,3564,3566,3568,3570,3572,3574,3576,3578,3580,3582,3584,3586,3588,3590,3592,3594,3596,3598,3600,3602,3604,3606,3608,3610,3612,3614,3616,3618,3620,3622,3624,3626,3628,3630,3632,3634,3636,3638,3640,3642,3644,3646,3648,3650,3652,3654,3656,3658,3660,3662,3664,3666,3668,3670,3672,3674,3676,3678,3680,3682,3684,3686,3688,3690,3692,3694,3696,3698,3700,3702,3704,3706,3708,3710,3712,3714,3716,3718,3720,3722,3725,3727,3729,3731,3733,3735,3737,3739,3741,3743,3745,3747,3749,3751,3753,3755,3757,3759,3761,3763,3765,3767,3769,3771,3773,3775,3777,3779,3781,3783,3785,3787,3789,3791,3793,3795,3797,3799,3801,3803,3805,3807,3809,3811,3813,3815,3817,3819,3821,3823,3825,3827,3829,3831,3833,3835,3837,3839,3841,3843,3845,3847,3849,3851,3853,3855,3857,3859,3861,3863,3865,3867,3869,3871,3873,3875,3877,3879,3881,3883,3885,3887,3889,3891,3893,3895,3897,3899,3901,3903,3905,3907,3909,3911,3913,3915,3917,3919,3921,3923,3925,3927,3929,3931,3933,3935,3937,3939,3941,3943,3945,3947,3949,3951,3953,3955,3957,3959,3961,3963,3965,3967,3969,3971,3973,3975,3977,3979,3981,3983,3985,3987,3989,3991,3993,3995,3997,3999,4001,4003,4005,4007,4009,4011,4013,4015,4017,4019,4021,4023,4025,4027,4029,4031,4033,4035,4037,4039,4041,4043,4045,4047,4049,4051,4053,4055,4057,4059,4061,4063,4065,4067,4069,4071,4073,4075,4077,4079,4081,4083,4085,4087,4089,4091,4093,4095,4097,4099,4101,4103,4105,4107,4109,4111,4113,4115,4117,4119,4121,4123,4125,4127,4129,4131,4133,4135,4137,4139,4141,4143,4145,4147,4149,4151,4153,4155,4157,4159,4161,4163,4165,4167,4169,4171,4173,4175,4177,4179,4181,4183,4185,4187,4189,4191,4193,4195,4197,4199,4201,4203,4205,4207,4209,4211,4213,4215,4217,4219,4221,4223,4225,4227,4229,4231,4233,4235,4237,4239,4241,4243,4245,4247,4249,4251,4253,4255,4257,4259,4261,4263,4265,4267,4269,4271,4273,4275,4277,4279,4281,4283,4285,4287,4289,4291,4293,4295,4297,4299,4301,4303,4305,4307,4309,4311,4313,4315,4317,4319,4321,4323,4325,4327,4329,4331,4333,4335,4337,4339,4341,4343,4345,4347,4349,4351,4353,4355,4357,4359,4361,4363,4365,4367,4369,4371,4373,4375,4377,4379,4381,4383,4385,4387,4389,4391,4393,4395,4397,4399,4401,4403,4405,4407,4409,4411,4413,4415,4417,4419,4422,4424,4426,4428,4430,4432,4434,4436,4438,4440,4442,4444,4446,4448,4450,4452,4454,4456,4458,4460,4462,4464,4466,4468,4470,4472,4474,4476,4478,4480,4482,4484,4486,4488,4490,4492,4494,4496,4498,4500,4502,4504,4506,4508,4510,4512,4514,4516,4518,4520,4522,4524,4526,4528,4530,4532,4534,4536,4538,4540,4542,4544,4546,4548,4550,4552,4554,4556,4558,4560,4562,4564,4566,4568,4570,4572,4574,4576,4578,4580,4582,4585,4587,4589,4591,4593,4595,4597,4599,4601,4603,4605,4607,4609,4611,4613,4615,4617,4619,4621,4623,4625,4627,4629,4631,4633,4635,4637,4639,4641,4643,4645,4647,4649,4651,4653,4655,4657,4659,4661,4663,4665,4667,4669,4671,4673,4675,4677,4679,4681,4683,4685,4687,4689,4691,4693,4695,4697,4699,4701,4703,4705,4707,4709,4711,4713,4715,4717,4719,4721,4723,4725,4727,4729,4731,4733,4735,4737,4739,4741,4743,4745,4747,4749,4751,4753,4755,4757,4759,4761,4763,4765,4767,4769,4771,4773,4775,4777,4779,4781,4783,4785,4787,4789,4791,4793,4795,4797,4799,4801,4803,4805,4807,4809,4811,4813,4815,4817,4819,4821,4823,4825,4827,4829,4831,4833,4835,4837,4839,4841,4843,4845,4847,4849,4851,4853,4855,4857,4859,4861,4863,4865,4867,4869,4871,4873,4875,4877,4879,4881,4883,4885,4887,4889,4891,4893,4895,4897,4899,4901,4903,4905,4907,4909,4911,4913,4915,4917,4919,4921,4923,4925,4927,4929,4931,4933,4935,4937,4939,4941,4943,4945,4947,4949,4951,4953,4955,4957,4959,4961,4963,4965,4967,4969,4971,4973,4975,4977,4979,4981,4983,4985,4987,4989,4991,4993,4995,4997,4999,5001,5003,5005,5007,5009,5011,5013,5015,5017,5019,5021,5023,5025,5027,5029,5031,5033,5035,5037,5039,5041,5043,5045,5047,5049,5051,5053,5055,5057,5059,5061,5063,5065,5067,5069,5071,5073,5075,5077,5079,5081,5083,5085,5087,5089,5091,5093,5095,5097,5099,5101,5103,5105,5107,5109,5111,5113,5115,5117,5119,5121,5123,5125,5127,5129,5131,5133,5135,5137,5139,5141,5143,5145,5147,5149,5151,5153,5155,5157,5159,5161,5163,5165,5167,5169,5171,5173,5175,5177,5179,5181,5183,5185,5187,5189,5191,5193,5195,5197,5199,5201,5203,5205,5207,5209,5211,5213,5215,5217,5219,5221,5223,5225,5227,5229,5231,5233,5235,5237,5239,5241,5243,5245,5247,5249,5251,5253,5255,5257,5259,5261,5263,5265,5267,5269,5271,5273,5275,5277,5279,5281,5283,5285,5287,5289,5291,5293,5295,5297,5299,5301,5303,5305,5307,5309,5311,5313,5315,5317,5319,5321,5323,5325,5327,5329,5331,5333,5335,5337,5339,5341,5343,5345,5347,5349,5351,5353,5355,5357,5359,5361,5363,5365,5367,5369,5371,5373,5375,5377,5379,5381,5383,5385,5387,5389,5391,5393,5395,5397,5399,5401,5403,5405,5407,5409,5411,5413,5415,5417,5419,5421,5423,5425,5427,5429,5431,5433,5435,5437,5439,5441,5443,5445,5447,5449,5451,5453,5455,5457,5459,5461,5463,5465,5467,5469,5471,5473,5475,5477,5479,5481,5483,5485,5487,5489,5491,5493,5495,5497,5499,5501,5503,5505,5507,5509,5511,5513,5515,5517,5519,5521,5523,5525,5527,5529,5531,5533,5535,5537,5539,5541,5543,5545,5547,5549,5551,5553,5555,5557,5559,5561,5563,5565,5567,5569,5571,5573,5575,5577,5579,5581,5583,5585,5587,5589,5591,5593,5595,5597,5599,5601,5603,5605,5607,5609,5611,5613,5615,5617,5619,5621,5623,5625,5627,5629,5631,5633,5635,5637,5639,5641,5643,5645,5647,5649,5651,5653,5655,5657,5659,5661,5663,5665,5667,5669,5671,5673,5675,5677,5679,5681,5683,5685,5687,5689,5691,5693,5695,5697,5699,5701,5703,5705,5707,5709,5711,5713,5715,5717,5719,5721,5723,5725,5727,5729,5731,5733],{"categories":163},[164],"Developer Productivity",{"categories":166},[167],"Business & SaaS",{"categories":169},[122],{"categories":171},[172],"AI Automation",{"categories":174},[175],"Product Strategy",{"categories":177},[122],{"categories":179},[164],{"categories":181},[182],"Software Engineering",{"categories":184},[122],{"categories":186},[167],{"categories":188},[],{"categories":190},[122],{"categories":192},[193],"Inference & Serving",{"categories":195},[122],{"categories":197},[122],{"categories":199},[172],{"categories":201},[],{"categories":203},[204],"AI News & Trends",{"categories":206},[172],{"categories":208},[122],{"categories":210},[167],{"categories":212},[122],{"categories":214},[172],{"categories":216},[204],{"categories":218},[172],{"categories":220},[172],{"categories":222},[122],{"categories":224},[172],{"categories":226},[122],{"categories":228},[122],{"categories":230},[122],{"categories":232},[204],{"categories":234},[122],{"categories":236},[122],{"categories":238},[],{"categories":240},[241],"Design & Frontend",{"categories":243},[244],"Data Science & Visualization",{"categories":246},[204],{"categories":248},[122],{"categories":250},[122],{"categories":252},[],{"categories":254},[122],{"categories":256},[172],{"categories":258},[182],{"categories":260},[122],{"categories":262},[172],{"categories":264},[122],{"categories":266},[267],"Marketing & Growth",{"categories":269},[241],{"categories":271},[122],{"categories":273},[172],{"categories":275},[122],{"categories":277},[],{"categories":279},[],{"categories":281},[241],{"categories":283},[122],{"categories":285},[172],{"categories":287},[164],{"categories":289},[182],{"categories":291},[241],{"categories":293},[122],{"categories":295},[182],{"categories":297},[298],"DevOps & Cloud",{"categories":300},[172],{"categories":302},[175],{"categories":304},[204],{"categories":306},[122],{"categories":308},[],{"categories":310},[122],{"categories":312},[],{"categories":314},[172],{"categories":316},[182],{"categories":318},[],{"categories":320},[182],{"categories":322},[122],{"categories":324},[325],"Governance & Standards",{"categories":327},[167],{"categories":329},[],{"categories":331},[],{"categories":333},[122],{"categories":335},[122],{"categories":337},[172],{"categories":339},[122],{"categories":341},[122],{"categories":343},[172],{"categories":345},[122],{"categories":347},[122],{"categories":349},[122],{"categories":351},[],{"categories":353},[182],{"categories":355},[],{"categories":357},[],{"categories":359},[182],{"categories":361},[],{"categories":363},[182],{"categories":365},[122],{"categories":367},[122],{"categories":369},[267],{"categories":371},[122],{"categories":373},[241],{"categories":375},[241],{"categories":377},[122],{"categories":379},[182],{"categories":381},[172],{"categories":383},[384],"GovTech & Public-Sector Adoption",{"categories":386},[182],{"categories":388},[122],{"categories":390},[122],{"categories":392},[172],{"categories":394},[172],{"categories":396},[244],{"categories":398},[122],{"categories":400},[204],{"categories":402},[172],{"categories":404},[405],"Legal AI Tools",{"categories":407},[172],{"categories":409},[267],{"categories":411},[172],{"categories":413},[175],{"categories":415},[182],{"categories":417},[384],{"categories":419},[],{"categories":421},[172],{"categories":423},[],{"categories":425},[172],{"categories":427},[172],{"categories":429},[430],"RAG & Retrieval",{"categories":432},[167],{"categories":434},[122],{"categories":436},[182],{"categories":438},[298],{"categories":440},[241],{"categories":442},[122],{"categories":444},[],{"categories":446},[447],"Agents & Orchestration",{"categories":449},[182],{"categories":451},[122],{"categories":453},[],{"categories":455},[172],{"categories":457},[167],{"categories":459},[],{"categories":461},[122],{"categories":463},[],{"categories":465},[164],{"categories":467},[182],{"categories":469},[167],{"categories":471},[122],{"categories":473},[122],{"categories":475},[204],{"categories":477},[122],{"categories":479},[],{"categories":481},[122],{"categories":483},[],{"categories":485},[182],{"categories":487},[244],{"categories":489},[],{"categories":491},[122],{"categories":493},[241],{"categories":495},[496],"Models & Frontier Labs",{"categories":498},[],{"categories":500},[241],{"categories":502},[503],"Regulation & Governance of AI",{"categories":505},[172],{"categories":507},[],{"categories":509},[122],{"categories":511},[122],{"categories":513},[172],{"categories":515},[204],{"categories":517},[167],{"categories":519},[122],{"categories":521},[],{"categories":523},[182],{"categories":525},[172],{"categories":527},[122],{"categories":529},[175],{"categories":531},[532],"AI Policy & Regulation",{"categories":534},[],{"categories":536},[122],{"categories":538},[175],{"categories":540},[172],{"categories":542},[122],{"categories":544},[172],{"categories":546},[],{"categories":548},[244],{"categories":550},[551],"Evals & Reliability",{"categories":553},[122],{"categories":555},[],{"categories":557},[164],{"categories":559},[384],{"categories":561},[532],{"categories":563},[122],{"categories":565},[167],{"categories":567},[122],{"categories":569},[172],{"categories":571},[122],{"categories":573},[172],{"categories":575},[447],{"categories":577},[122],{"categories":579},[182],{"categories":581},[122],{"categories":583},[],{"categories":585},[],{"categories":587},[122],{"categories":589},[384],{"categories":591},[122],{"categories":593},[122],{"categories":595},[],{"categories":597},[241],{"categories":599},[],{"categories":601},[122],{"categories":603},[],{"categories":605},[172],{"categories":607},[122],{"categories":609},[241],{"categories":611},[],{"categories":613},[122],{"categories":615},[172],{"categories":617},[122],{"categories":619},[167],{"categories":621},[172],{"categories":623},[122],{"categories":625},[122],{"categories":627},[182],{"categories":629},[241],{"categories":631},[172],{"categories":633},[],{"categories":635},[182],{"categories":637},[172],{"categories":639},[],{"categories":641},[204],{"categories":643},[],{"categories":645},[122],{"categories":647},[122],{"categories":649},[167,267],{"categories":651},[],{"categories":653},[122],{"categories":655},[122],{"categories":657},[172],{"categories":659},[],{"categories":661},[],{"categories":663},[122],{"categories":665},[241],{"categories":667},[122],{"categories":669},[],{"categories":671},[122],{"categories":673},[298],{"categories":675},[],{"categories":677},[172],{"categories":679},[204],{"categories":681},[122],{"categories":683},[241],{"categories":685},[],{"categories":687},[204],{"categories":689},[122],{"categories":691},[193],{"categories":693},[122],{"categories":695},[172],{"categories":697},[204],{"categories":699},[496],{"categories":701},[122],{"categories":703},[267],{"categories":705},[],{"categories":707},[172],{"categories":709},[167],{"categories":711},[182],{"categories":713},[122],{"categories":715},[172],{"categories":717},[],{"categories":719},[122,298],{"categories":721},[122],{"categories":723},[122],{"categories":725},[122],{"categories":727},[172],{"categories":729},[122,182],{"categories":731},[244],{"categories":733},[122],{"categories":735},[122],{"categories":737},[182],{"categories":739},[172],{"categories":741},[532],{"categories":743},[267],{"categories":745},[122],{"categories":747},[172],{"categories":749},[122],{"categories":751},[122],{"categories":753},[172],{"categories":755},[],{"categories":757},[122],{"categories":759},[172],{"categories":761},[122],{"categories":763},[122,167],{"categories":765},[167],{"categories":767},[],{"categories":769},[241],{"categories":771},[241],{"categories":773},[122],{"categories":775},[],{"categories":777},[],{"categories":779},[204],{"categories":781},[],{"categories":783},[164],{"categories":785},[122],{"categories":787},[182],{"categories":789},[790],"Generative UI & Design-to-Code",{"categories":792},[122],{"categories":794},[241],{"categories":796},[122],{"categories":798},[799],"Algorithmic Accountability",{"categories":801},[172],{"categories":803},[182],{"categories":805},[204],{"categories":807},[241],{"categories":809},[],{"categories":811},[122],{"categories":813},[122],{"categories":815},[122],{"categories":817},[172],{"categories":819},[820],"MLOps & Infrastructure",{"categories":822},[122],{"categories":824},[122],{"categories":826},[122],{"categories":828},[122],{"categories":830},[204],{"categories":832},[164],{"categories":834},[122],{"categories":836},[172],{"categories":838},[298],{"categories":840},[122],{"categories":842},[241],{"categories":844},[122],{"categories":846},[172],{"categories":848},[],{"categories":850},[],{"categories":852},[193],{"categories":854},[241],{"categories":856},[204],{"categories":858},[244],{"categories":860},[],{"categories":862},[122],{"categories":864},[122],{"categories":866},[167],{"categories":868},[122],{"categories":870},[122],{"categories":872},[122],{"categories":874},[204],{"categories":876},[193],{"categories":878},[122],{"categories":880},[241],{"categories":882},[],{"categories":884},[172],{"categories":886},[182],{"categories":888},[],{"categories":890},[122],{"categories":892},[122],{"categories":894},[172],{"categories":896},[182],{"categories":898},[122],{"categories":900},[244],{"categories":902},[],{"categories":904},[122],{"categories":906},[],{"categories":908},[122],{"categories":910},[],{"categories":912},[175],{"categories":914},[167],{"categories":916},[172],{"categories":918},[172],{"categories":920},[],{"categories":922},[164],{"categories":924},[122],{"categories":926},[167],{"categories":928},[204],{"categories":930},[164],{"categories":932},[],{"categories":934},[122],{"categories":936},[],{"categories":938},[],{"categories":940},[204],{"categories":942},[204],{"categories":944},[],{"categories":946},[447],{"categories":948},[122],{"categories":950},[241],{"categories":952},[182],{"categories":954},[],{"categories":956},[405],{"categories":958},[167],{"categories":960},[],{"categories":962},[],{"categories":964},[164],{"categories":966},[244],{"categories":968},[],{"categories":970},[267],{"categories":972},[172],{"categories":974},[167],{"categories":976},[172],{"categories":978},[167],{"categories":980},[182],{"categories":982},[],{"categories":984},[193],{"categories":986},[175],{"categories":988},[122],{"categories":990},[241],{"categories":992},[182],{"categories":994},[167],{"categories":996},[122],{"categories":998},[172],{"categories":1000},[167],{"categories":1002},[122],{"categories":1004},[122],{"categories":1006},[],{"categories":1008},[],{"categories":1010},[182],{"categories":1012},[244],{"categories":1014},[175],{"categories":1016},[122],{"categories":1018},[172],{"categories":1020},[122],{"categories":1022},[],{"categories":1024},[204],{"categories":1026},[175],{"categories":1028},[122],{"categories":1030},[551],{"categories":1032},[298],{"categories":1034},[],{"categories":1036},[172],{"categories":1038},[],{"categories":1040},[164],{"categories":1042},[],{"categories":1044},[122],{"categories":1046},[122],{"categories":1048},[241],{"categories":1050},[267],{"categories":1052},[182],{"categories":1054},[172],{"categories":1056},[],{"categories":1058},[182],{"categories":1060},[164],{"categories":1062},[],{"categories":1064},[204],{"categories":1066},[122,298],{"categories":1068},[1069],"Design Systems for AI",{"categories":1071},[122],{"categories":1073},[204],{"categories":1075},[122],{"categories":1077},[122],{"categories":1079},[167],{"categories":1081},[122],{"categories":1083},[],{"categories":1085},[122],{"categories":1087},[122],{"categories":1089},[167],{"categories":1091},[122],{"categories":1093},[],{"categories":1095},[172],{"categories":1097},[182],{"categories":1099},[182],{"categories":1101},[241],{"categories":1103},[204],{"categories":1105},[244],{"categories":1107},[122],{"categories":1109},[164],{"categories":1111},[532],{"categories":1113},[122],{"categories":1115},[172],{"categories":1117},[122],{"categories":1119},[182],{"categories":1121},[182],{"categories":1123},[],{"categories":1125},[],{"categories":1127},[172],{"categories":1129},[175],{"categories":1131},[],{"categories":1133},[122],{"categories":1135},[],{"categories":1137},[241],{"categories":1139},[172],{"categories":1141},[182],{"categories":1143},[241],{"categories":1145},[122],{"categories":1147},[241],{"categories":1149},[],{"categories":1151},[],{"categories":1153},[204],{"categories":1155},[172],{"categories":1157},[172],{"categories":1159},[122],{"categories":1161},[122],{"categories":1163},[122],{"categories":1165},[167],{"categories":1167},[122],{"categories":1169},[122],{"categories":1171},[],{"categories":1173},[182],{"categories":1175},[182],{"categories":1177},[122],{"categories":1179},[182],{"categories":1181},[167],{"categories":1183},[],{"categories":1185},[122],{"categories":1187},[122],{"categories":1189},[122],{"categories":1191},[172],{"categories":1193},[164],{"categories":1195},[167],{"categories":1197},[204],{"categories":1199},[172],{"categories":1201},[193],{"categories":1203},[267],{"categories":1205},[122],{"categories":1207},[172],{"categories":1209},[],{"categories":1211},[241],{"categories":1213},[],{"categories":1215},[122],{"categories":1217},[122],{"categories":1219},[],{"categories":1221},[182],{"categories":1223},[167],{"categories":1225},[1226],"Visual & Generative Media",{"categories":1228},[172],{"categories":1230},[],{"categories":1232},[122],{"categories":1234},[122],{"categories":1236},[298],{"categories":1238},[244],{"categories":1240},[532],{"categories":1242},[182],{"categories":1244},[267],{"categories":1246},[122],{"categories":1248},[241],{"categories":1250},[122],{"categories":1252},[182],{"categories":1254},[172],{"categories":1256},[],{"categories":1258},[],{"categories":1260},[172],{"categories":1262},[164],{"categories":1264},[172],{"categories":1266},[496],{"categories":1268},[122],{"categories":1270},[175],{"categories":1272},[167],{"categories":1274},[],{"categories":1276},[122],{"categories":1278},[175],{"categories":1280},[122],{"categories":1282},[122],{"categories":1284},[122],{"categories":1286},[122],{"categories":1288},[122],{"categories":1290},[267],{"categories":1292},[122],{"categories":1294},[447],{"categories":1296},[122],{"categories":1298},[122],{"categories":1300},[122],{"categories":1302},[122],{"categories":1304},[122],{"categories":1306},[241],{"categories":1308},[172],{"categories":1310},[],{"categories":1312},[172],{"categories":1314},[],{"categories":1316},[298],{"categories":1318},[182],{"categories":1320},[],{"categories":1322},[496],{"categories":1324},[172],{"categories":1326},[122],{"categories":1328},[241,122],{"categories":1330},[164],{"categories":1332},[],{"categories":1334},[122],{"categories":1336},[164],{"categories":1338},[1339],"Medical Imaging & Radiology",{"categories":1341},[241],{"categories":1343},[172],{"categories":1345},[182],{"categories":1347},[],{"categories":1349},[122],{"categories":1351},[122],{"categories":1353},[122],{"categories":1355},[],{"categories":1357},[],{"categories":1359},[122],{"categories":1361},[447],{"categories":1363},[122],{"categories":1365},[164],{"categories":1367},[122],{"categories":1369},[122],{"categories":1371},[],{"categories":1373},[172],{"categories":1375},[122],{"categories":1377},[175],{"categories":1379},[182],{"categories":1381},[122],{"categories":1383},[447],{"categories":1385},[122],{"categories":1387},[172],{"categories":1389},[122],{"categories":1391},[241],{"categories":1393},[172],{"categories":1395},[298],{"categories":1397},[241],{"categories":1399},[167],{"categories":1401},[172],{"categories":1403},[122],{"categories":1405},[122],{"categories":1407},[122],{"categories":1409},[122],{"categories":1411},[122],{"categories":1413},[172],{"categories":1415},[182],{"categories":1417},[122],{"categories":1419},[175],{"categories":1421},[],{"categories":1423},[204],{"categories":1425},[],{"categories":1427},[175],{"categories":1429},[172],{"categories":1431},[1069],{"categories":1433},[1069],{"categories":1435},[241],{"categories":1437},[122],{"categories":1439},[122],{"categories":1441},[172],{"categories":1443},[182],{"categories":1445},[241],{"categories":1447},[172],{"categories":1449},[204],{"categories":1451},[],{"categories":1453},[122],{"categories":1455},[],{"categories":1457},[122],{"categories":1459},[122],{"categories":1461},[122],{"categories":1463},[1464],"Contract Review & E-Discovery",{"categories":1466},[241],{"categories":1468},[122],{"categories":1470},[164],{"categories":1472},[204],{"categories":1474},[122],{"categories":1476},[122],{"categories":1478},[267],{"categories":1480},[182],{"categories":1482},[122],{"categories":1484},[122],{"categories":1486},[172],{"categories":1488},[172],{"categories":1490},[799],{"categories":1492},[172],{"categories":1494},[172],{"categories":1496},[122],{"categories":1498},[122],{"categories":1500},[172],{"categories":1502},[122],{"categories":1504},[447],{"categories":1506},[430],{"categories":1508},[122],{"categories":1510},[172],{"categories":1512},[122],{"categories":1514},[1515],"Law-Firm Practice & Adoption",{"categories":1517},[122],{"categories":1519},[172],{"categories":1521},[241],{"categories":1523},[122],{"categories":1525},[122],{"categories":1527},[],{"categories":1529},[],{"categories":1531},[182],{"categories":1533},[],{"categories":1535},[164],{"categories":1537},[298],{"categories":1539},[122],{"categories":1541},[],{"categories":1543},[164],{"categories":1545},[167],{"categories":1547},[122],{"categories":1549},[267],{"categories":1551},[],{"categories":1553},[167],{"categories":1555},[167],{"categories":1557},[],{"categories":1559},[122],{"categories":1561},[122],{"categories":1563},[182],{"categories":1565},[],{"categories":1567},[],{"categories":1569},[],{"categories":1571},[],{"categories":1573},[122],{"categories":1575},[172],{"categories":1577},[298],{"categories":1579},[122],{"categories":1581},[164],{"categories":1583},[182],{"categories":1585},[122],{"categories":1587},[122],{"categories":1589},[182],{"categories":1591},[175],{"categories":1593},[122],{"categories":1595},[820],{"categories":1597},[122],{"categories":1599},[267],{"categories":1601},[182],{"categories":1603},[167],{"categories":1605},[122],{"categories":1607},[122],{"categories":1609},[241],{"categories":1611},[122],{"categories":1613},[122],{"categories":1615},[122],{"categories":1617},[172],{"categories":1619},[122,164],{"categories":1621},[447],{"categories":1623},[122],{"categories":1625},[182],{"categories":1627},[182],{"categories":1629},[241],{"categories":1631},[172],{"categories":1633},[182],{"categories":1635},[122],{"categories":1637},[122],{"categories":1639},[],{"categories":1641},[],{"categories":1643},[122],{"categories":1645},[],{"categories":1647},[122],{"categories":1649},[182],{"categories":1651},[244],{"categories":1653},[204],{"categories":1655},[241],{"categories":1657},[122],{"categories":1659},[182],{"categories":1661},[],{"categories":1663},[172],{"categories":1665},[122],{"categories":1667},[122],{"categories":1669},[122],{"categories":1671},[122],{"categories":1673},[],{"categories":1675},[172],{"categories":1677},[122],{"categories":1679},[122],{"categories":1681},[],{"categories":1683},[172],{"categories":1685},[122],{"categories":1687},[122],{"categories":1689},[167],{"categories":1691},[122],{"categories":1693},[],{"categories":1695},[164],{"categories":1697},[122],{"categories":1699},[241],{"categories":1701},[182],{"categories":1703},[122],{"categories":1705},[164],{"categories":1707},[122],{"categories":1709},[182],{"categories":1711},[267],{"categories":1713},[172],{"categories":1715},[172],{"categories":1717},[122,241],{"categories":1719},[122],{"categories":1721},[204],{"categories":1723},[122],{"categories":1725},[204],{"categories":1727},[172],{"categories":1729},[241],{"categories":1731},[],{"categories":1733},[182],{"categories":1735},[298],{"categories":1737},[241],{"categories":1739},[182],{"categories":1741},[122],{"categories":1743},[175],{"categories":1745},[122],{"categories":1747},[172],{"categories":1749},[],{"categories":1751},[],{"categories":1753},[122],{"categories":1755},[],{"categories":1757},[],{"categories":1759},[175],{"categories":1761},[182],{"categories":1763},[122],{"categories":1765},[172],{"categories":1767},[172],{"categories":1769},[167],{"categories":1771},[172],{"categories":1773},[298],{"categories":1775},[122],{"categories":1777},[122],{"categories":1779},[193],{"categories":1781},[122],{"categories":1783},[122],{"categories":1785},[172],{"categories":1787},[122],{"categories":1789},[122],{"categories":1791},[405],{"categories":1793},[799],{"categories":1795},[],{"categories":1797},[241],{"categories":1799},[1515],{"categories":1801},[182],{"categories":1803},[],{"categories":1805},[],{"categories":1807},[172],{"categories":1809},[],{"categories":1811},[],{"categories":1813},[267],{"categories":1815},[267],{"categories":1817},[172],{"categories":1819},[182],{"categories":1821},[],{"categories":1823},[122],{"categories":1825},[122],{"categories":1827},[182],{"categories":1829},[1464],{"categories":1831},[241],{"categories":1833},[241],{"categories":1835},[122],{"categories":1837},[172],{"categories":1839},[164],{"categories":1841},[122],{"categories":1843},[122],{"categories":1845},[241],{"categories":1847},[241],{"categories":1849},[172],{"categories":1851},[172],{"categories":1853},[122],{"categories":1855},[],{"categories":1857},[122],{"categories":1859},[],{"categories":1861},[1862],"Interaction & Product Design",{"categories":1864},[122],{"categories":1866},[172],{"categories":1868},[325],{"categories":1870},[204],{"categories":1872},[182],{"categories":1874},[122],{"categories":1876},[122],{"categories":1878},[182],{"categories":1880},[164],{"categories":1882},[122],{"categories":1884},[],{"categories":1886},[172],{"categories":1888},[172],{"categories":1890},[],{"categories":1892},[182],{"categories":1894},[122],{"categories":1896},[164],{"categories":1898},[1862],{"categories":1900},[122],{"categories":1902},[164],{"categories":1904},[164],{"categories":1906},[],{"categories":1908},[182],{"categories":1910},[],{"categories":1912},[172],{"categories":1914},[204],{"categories":1916},[122],{"categories":1918},[172],{"categories":1920},[122],{"categories":1922},[172],{"categories":1924},[122],{"categories":1926},[204],{"categories":1928},[244],{"categories":1930},[122],{"categories":1932},[175],{"categories":1934},[182],{"categories":1936},[1937],"Coding Agents & Dev Productivity",{"categories":1939},[204],{"categories":1941},[241],{"categories":1943},[],{"categories":1945},[122],{"categories":1947},[799],{"categories":1949},[],{"categories":1951},[122],{"categories":1953},[122],{"categories":1955},[204],{"categories":1957},[],{"categories":1959},[],{"categories":1961},[122],{"categories":1963},[],{"categories":1965},[172],{"categories":1967},[122],{"categories":1969},[],{"categories":1971},[182],{"categories":1973},[182],{"categories":1975},[122],{"categories":1977},[244],{"categories":1979},[],{"categories":1981},[122],{"categories":1983},[122],{"categories":1985},[122],{"categories":1987},[244],{"categories":1989},[182],{"categories":1991},[],{"categories":1993},[],{"categories":1995},[172],{"categories":1997},[172],{"categories":1999},[384],{"categories":2001},[182],{"categories":2003},[182],{"categories":2005},[172],{"categories":2007},[204],{"categories":2009},[204],{"categories":2011},[172],{"categories":2013},[172],{"categories":2015},[122],{"categories":2017},[164],{"categories":2019},[1862],{"categories":2021},[122,298],{"categories":2023},[],{"categories":2025},[241],{"categories":2027},[182],{"categories":2029},[164],{"categories":2031},[122],{"categories":2033},[172],{"categories":2035},[2036],"The Designer's Role & Craft",{"categories":2038},[241],{"categories":2040},[],{"categories":2042},[172],{"categories":2044},[122],{"categories":2046},[172],{"categories":2048},[172],{"categories":2050},[122],{"categories":2052},[267],{"categories":2054},[122],{"categories":2056},[182],{"categories":2058},[241],{"categories":2060},[122],{"categories":2062},[],{"categories":2064},[172],{"categories":2066},[241],{"categories":2068},[122],{"categories":2070},[122],{"categories":2072},[2073],"AI UX Patterns",{"categories":2075},[172],{"categories":2077},[172],{"categories":2079},[172],{"categories":2081},[172],{"categories":2083},[267],{"categories":2085},[244],{"categories":2087},[122],{"categories":2089},[172],{"categories":2091},[122],{"categories":2093},[1069],{"categories":2095},[],{"categories":2097},[267],{"categories":2099},[204],{"categories":2101},[182],{"categories":2103},[122],{"categories":2105},[172],{"categories":2107},[],{"categories":2109},[],{"categories":2111},[122],{"categories":2113},[172],{"categories":2115},[122],{"categories":2117},[172],{"categories":2119},[384],{"categories":2121},[241],{"categories":2123},[204],{"categories":2125},[182],{"categories":2127},[122],{"categories":2129},[172],{"categories":2131},[172],{"categories":2133},[],{"categories":2135},[122],{"categories":2137},[],{"categories":2139},[],{"categories":2141},[122],{"categories":2143},[122],{"categories":2145},[172],{"categories":2147},[182],{"categories":2149},[],{"categories":2151},[],{"categories":2153},[244],{"categories":2155},[193],{"categories":2157},[122],{"categories":2159},[244],{"categories":2161},[204],{"categories":2163},[122],{"categories":2165},[122],{"categories":2167},[172],{"categories":2169},[172],{"categories":2171},[122],{"categories":2173},[172],{"categories":2175},[],{"categories":2177},[],{"categories":2179},[122],{"categories":2181},[298],{"categories":2183},[122],{"categories":2185},[],{"categories":2187},[],{"categories":2189},[241],{"categories":2191},[820],{"categories":2193},[172],{"categories":2195},[164],{"categories":2197},[2036],{"categories":2199},[],{"categories":2201},[],{"categories":2203},[122],{"categories":2205},[],{"categories":2207},[],{"categories":2209},[182],{"categories":2211},[204],{"categories":2213},[267],{"categories":2215},[167],{"categories":2217},[122],{"categories":2219},[122],{"categories":2221},[167],{"categories":2223},[],{"categories":2225},[241],{"categories":2227},[122],{"categories":2229},[172],{"categories":2231},[167],{"categories":2233},[122],{"categories":2235},[122],{"categories":2237},[164],{"categories":2239},[122],{"categories":2241},[],{"categories":2243},[164],{"categories":2245},[122],{"categories":2247},[267],{"categories":2249},[172],{"categories":2251},[204],{"categories":2253},[122],{"categories":2255},[167],{"categories":2257},[122],{"categories":2259},[122],{"categories":2261},[122],{"categories":2263},[172],{"categories":2265},[],{"categories":2267},[122],{"categories":2269},[182],{"categories":2271},[164],{"categories":2273},[122],{"categories":2275},[122],{"categories":2277},[],{"categories":2279},[447],{"categories":2281},[204],{"categories":2283},[122],{"categories":2285},[122],{"categories":2287},[],{"categories":2289},[167],{"categories":2291},[167],{"categories":2293},[122],{"categories":2295},[122],{"categories":2297},[175],{"categories":2299},[122],{"categories":2301},[122],{"categories":2303},[182],{"categories":2305},[182],{"categories":2307},[122],{"categories":2309},[],{"categories":2311},[182],{"categories":2313},[122],{"categories":2315},[182],{"categories":2317},[532],{"categories":2319},[],{"categories":2321},[],{"categories":2323},[122],{"categories":2325},[204],{"categories":2327},[],{"categories":2329},[298],{"categories":2331},[122],{"categories":2333},[122],{"categories":2335},[241],{"categories":2337},[790],{"categories":2339},[],{"categories":2341},[122],{"categories":2343},[122],{"categories":2345},[182],{"categories":2347},[122],{"categories":2349},[122],{"categories":2351},[122,298],{"categories":2353},[122],{"categories":2355},[122],{"categories":2357},[241],{"categories":2359},[172],{"categories":2361},[],{"categories":2363},[172],{"categories":2365},[172],{"categories":2367},[122],{"categories":2369},[122],{"categories":2371},[122],{"categories":2373},[244],{"categories":2375},[122],{"categories":2377},[2073],{"categories":2379},[164],{"categories":2381},[244],{"categories":2383},[164],{"categories":2385},[182],{"categories":2387},[241],{"categories":2389},[172],{"categories":2391},[122],{"categories":2393},[],{"categories":2395},[122],{"categories":2397},[204],{"categories":2399},[122],{"categories":2401},[172],{"categories":2403},[122],{"categories":2405},[122],{"categories":2407},[167],{"categories":2409},[],{"categories":2411},[298],{"categories":2413},[122],{"categories":2415},[384],{"categories":2417},[241],{"categories":2419},[241],{"categories":2421},[182],{"categories":2423},[172],{"categories":2425},[122],{"categories":2427},[167],{"categories":2429},[204],{"categories":2431},[122],{"categories":2433},[241],{"categories":2435},[172],{"categories":2437},[122],{"categories":2439},[122],{"categories":2441},[496],{"categories":2443},[],{"categories":2445},[122],{"categories":2447},[122],{"categories":2449},[122],{"categories":2451},[],{"categories":2453},[],{"categories":2455},[122],{"categories":2457},[122],{"categories":2459},[122],{"categories":2461},[122],{"categories":2463},[182],{"categories":2465},[122],{"categories":2467},[122],{"categories":2469},[172],{"categories":2471},[122],{"categories":2473},[122],{"categories":2475},[122],{"categories":2477},[122],{"categories":2479},[],{"categories":2481},[182],{"categories":2483},[244],{"categories":2485},[122],{"categories":2487},[172],{"categories":2489},[122],{"categories":2491},[],{"categories":2493},[],{"categories":2495},[122],{"categories":2497},[122],{"categories":2499},[122],{"categories":2501},[204],{"categories":2503},[],{"categories":2505},[122],{"categories":2507},[241],{"categories":2509},[122],{"categories":2511},[298],{"categories":2513},[1515],{"categories":2515},[204],{"categories":2517},[182],{"categories":2519},[182],{"categories":2521},[182],{"categories":2523},[204],{"categories":2525},[204],{"categories":2527},[298],{"categories":2529},[],{"categories":2531},[204],{"categories":2533},[122],{"categories":2535},[164],{"categories":2537},[182],{"categories":2539},[122],{"categories":2541},[204],{"categories":2543},[],{"categories":2545},[122],{"categories":2547},[182],{"categories":2549},[244],{"categories":2551},[122],{"categories":2553},[204],{"categories":2555},[122],{"categories":2557},[182],{"categories":2559},[172],{"categories":2561},[204],{"categories":2563},[172],{"categories":2565},[298],{"categories":2567},[172],{"categories":2569},[122],{"categories":2571},[122],{"categories":2573},[182],{"categories":2575},[122],{"categories":2577},[],{"categories":2579},[167],{"categories":2581},[182],{"categories":2583},[],{"categories":2585},[],{"categories":2587},[122],{"categories":2589},[172],{"categories":2591},[122],{"categories":2593},[2594],"Frameworks & Tooling",{"categories":2596},[122],{"categories":2598},[122],{"categories":2600},[182],{"categories":2602},[122],{"categories":2604},[122],{"categories":2606},[],{"categories":2608},[244],{"categories":2610},[244],{"categories":2612},[164],{"categories":2614},[172],{"categories":2616},[241],{"categories":2618},[],{"categories":2620},[1515],{"categories":2622},[122],{"categories":2624},[182],{"categories":2626},[122],{"categories":2628},[298],{"categories":2630},[298],{"categories":2632},[],{"categories":2634},[172],{"categories":2636},[204],{"categories":2638},[204],{"categories":2640},[122],{"categories":2642},[172],{"categories":2644},[],{"categories":2646},[241],{"categories":2648},[122],{"categories":2650},[122],{"categories":2652},[],{"categories":2654},[122],{"categories":2656},[],{"categories":2658},[182],{"categories":2660},[122],{"categories":2662},[182],{"categories":2664},[298],{"categories":2666},[122],{"categories":2668},[182],{"categories":2670},[167],{"categories":2672},[122],{"categories":2674},[1515],{"categories":2676},[],{"categories":2678},[172],{"categories":2680},[164],{"categories":2682},[164],{"categories":2684},[],{"categories":2686},[172],{"categories":2688},[122],{"categories":2690},[2691],"AI Design Tooling",{"categories":2693},[241],{"categories":2695},[122],{"categories":2697},[122],{"categories":2699},[182],{"categories":2701},[241],{"categories":2703},[122],{"categories":2705},[182],{"categories":2707},[204],{"categories":2709},[175],{"categories":2711},[182],{"categories":2713},[172],{"categories":2715},[],{"categories":2717},[122],{"categories":2719},[122],{"categories":2721},[172],{"categories":2723},[122],{"categories":2725},[122],{"categories":2727},[],{"categories":2729},[172],{"categories":2731},[2594],{"categories":2733},[122],{"categories":2735},[172],{"categories":2737},[172],{"categories":2739},[182],{"categories":2741},[182],{"categories":2743},[],{"categories":2745},[182],{"categories":2747},[122],{"categories":2749},[122],{"categories":2751},[172],{"categories":2753},[167],{"categories":2755},[122],{"categories":2757},[],{"categories":2759},[122],{"categories":2761},[1862],{"categories":2763},[],{"categories":2765},[122],{"categories":2767},[122],{"categories":2769},[],{"categories":2771},[122],{"categories":2773},[122],{"categories":2775},[122],{"categories":2777},[267],{"categories":2779},[204],{"categories":2781},[122],{"categories":2783},[122],{"categories":2785},[1515],{"categories":2787},[164],{"categories":2789},[122],{"categories":2791},[122],{"categories":2793},[244],{"categories":2795},[122],{"categories":2797},[204],{"categories":2799},[172],{"categories":2801},[],{"categories":2803},[122],{"categories":2805},[241],{"categories":2807},[122],{"categories":2809},[267],{"categories":2811},[122],{"categories":2813},[172],{"categories":2815},[],{"categories":2817},[],{"categories":2819},[],{"categories":2821},[164],{"categories":2823},[204],{"categories":2825},[172],{"categories":2827},[122],{"categories":2829},[122],{"categories":2831},[122],{"categories":2833},[405],{"categories":2835},[241],{"categories":2837},[172],{"categories":2839},[122],{"categories":2841},[],{"categories":2843},[172],{"categories":2845},[172],{"categories":2847},[],{"categories":2849},[122],{"categories":2851},[172],{"categories":2853},[122],{"categories":2855},[],{"categories":2857},[122],{"categories":2859},[122],{"categories":2861},[204],{"categories":2863},[241],{"categories":2865},[172],{"categories":2867},[241],{"categories":2869},[172],{"categories":2871},[167],{"categories":2873},[],{"categories":2875},[],{"categories":2877},[122],{"categories":2879},[122],{"categories":2881},[164],{"categories":2883},[172],{"categories":2885},[204],{"categories":2887},[],{"categories":2889},[241],{"categories":2891},[],{"categories":2893},[182],{"categories":2895},[182],{"categories":2897},[241],{"categories":2899},[182],{"categories":2901},[122],{"categories":2903},[],{"categories":2905},[122],{"categories":2907},[122],{"categories":2909},[],{"categories":2911},[267],{"categories":2913},[122],{"categories":2915},[298],{"categories":2917},[182],{"categories":2919},[],{"categories":2921},[172],{"categories":2923},[122],{"categories":2925},[164],{"categories":2927},[496],{"categories":2929},[172],{"categories":2931},[172],{"categories":2933},[122],{"categories":2935},[122],{"categories":2937},[],{"categories":2939},[164],{"categories":2941},[122],{"categories":2943},[167],{"categories":2945},[182],{"categories":2947},[241],{"categories":2949},[],{"categories":2951},[],{"categories":2953},[],{"categories":2955},[172],{"categories":2957},[182],{"categories":2959},[241],{"categories":2961},[204],{"categories":2963},[122],{"categories":2965},[204],{"categories":2967},[172],{"categories":2969},[241],{"categories":2971},[122],{"categories":2973},[],{"categories":2975},[122],{"categories":2977},[193],{"categories":2979},[172],{"categories":2981},[241],{"categories":2983},[204],{"categories":2985},[167],{"categories":2987},[182],{"categories":2989},[122],{"categories":2991},[204],{"categories":2993},[267],{"categories":2995},[],{"categories":2997},[],{"categories":2999},[244],{"categories":3001},[447],{"categories":3003},[122],{"categories":3005},[172],{"categories":3007},[122,182],{"categories":3009},[204],{"categories":3011},[122],{"categories":3013},[122],{"categories":3015},[172],{"categories":3017},[122],{"categories":3019},[172],{"categories":3021},[122],{"categories":3023},[122],{"categories":3025},[],{"categories":3027},[1069],{"categories":3029},[182],{"categories":3031},[241],{"categories":3033},[122],{"categories":3035},[122],{"categories":3037},[122],{"categories":3039},[244],{"categories":3041},[172],{"categories":3043},[267],{"categories":3045},[298],{"categories":3047},[],{"categories":3049},[122],{"categories":3051},[167],{"categories":3053},[172],{"categories":3055},[164],{"categories":3057},[172],{"categories":3059},[122],{"categories":3061},[172],{"categories":3063},[175],{"categories":3065},[182],{"categories":3067},[122],{"categories":3069},[122],{"categories":3071},[],{"categories":3073},[],{"categories":3075},[],{"categories":3077},[298],{"categories":3079},[122],{"categories":3081},[204],{"categories":3083},[122],{"categories":3085},[122],{"categories":3087},[122],{"categories":3089},[122],{"categories":3091},[],{"categories":3093},[244],{"categories":3095},[167],{"categories":3097},[172],{"categories":3099},[122],{"categories":3101},[],{"categories":3103},[122],{"categories":3105},[172],{"categories":3107},[122],{"categories":3109},[298],{"categories":3111},[],{"categories":3113},[241],{"categories":3115},[241],{"categories":3117},[],{"categories":3119},[182],{"categories":3121},[122],{"categories":3123},[241],{"categories":3125},[122],{"categories":3127},[167],{"categories":3129},[172],{"categories":3131},[122],{"categories":3133},[],{"categories":3135},[204],{"categories":3137},[122],{"categories":3139},[122],{"categories":3141},[122],{"categories":3143},[241],{"categories":3145},[172],{"categories":3147},[204],{"categories":3149},[],{"categories":3151},[172],{"categories":3153},[172],{"categories":3155},[241],{"categories":3157},[122],{"categories":3159},[122],{"categories":3161},[122],{"categories":3163},[447],{"categories":3165},[122],{"categories":3167},[],{"categories":3169},[122],{"categories":3171},[122],{"categories":3173},[298],{"categories":3175},[204],{"categories":3177},[244],{"categories":3179},[532],{"categories":3181},[244],{"categories":3183},[],{"categories":3185},[],{"categories":3187},[],{"categories":3189},[172],{"categories":3191},[172],{"categories":3193},[182],{"categories":3195},[122],{"categories":3197},[430],{"categories":3199},[182],{"categories":3201},[122],{"categories":3203},[122],{"categories":3205},[122],{"categories":3207},[122],{"categories":3209},[172],{"categories":3211},[],{"categories":3213},[],{"categories":3215},[122],{"categories":3217},[],{"categories":3219},[122],{"categories":3221},[172],{"categories":3223},[241],{"categories":3225},[122],{"categories":3227},[122],{"categories":3229},[],{"categories":3231},[175],{"categories":3233},[122],{"categories":3235},[241],{"categories":3237},[122],{"categories":3239},[172],{"categories":3241},[167],{"categories":3243},[122],{"categories":3245},[267],{"categories":3247},[172],{"categories":3249},[122],{"categories":3251},[790],{"categories":3253},[122],{"categories":3255},[172],{"categories":3257},[122],{"categories":3259},[182],{"categories":3261},[122],{"categories":3263},[496],{"categories":3265},[241],{"categories":3267},[],{"categories":3269},[204],{"categories":3271},[447],{"categories":3273},[172],{"categories":3275},[122],{"categories":3277},[],{"categories":3279},[204],{"categories":3281},[384],{"categories":3283},[172],{"categories":3285},[172],{"categories":3287},[122],{"categories":3289},[122],{"categories":3291},[172],{"categories":3293},[],{"categories":3295},[167],{"categories":3297},[172],{"categories":3299},[],{"categories":3301},[182],{"categories":3303},[122],{"categories":3305},[164],{"categories":3307},[204],{"categories":3309},[298],{"categories":3311},[193],{"categories":3313},[172],{"categories":3315},[172],{"categories":3317},[122],{"categories":3319},[172],{"categories":3321},[164],{"categories":3323},[],{"categories":3325},[122],{"categories":3327},[122],{"categories":3329},[],{"categories":3331},[],{"categories":3333},[241],{"categories":3335},[122,167],{"categories":3337},[172],{"categories":3339},[122],{"categories":3341},[],{"categories":3343},[164],{"categories":3345},[244],{"categories":3347},[167],{"categories":3349},[122],{"categories":3351},[182],{"categories":3353},[122],{"categories":3355},[172],{"categories":3357},[122],{"categories":3359},[122],{"categories":3361},[122],{"categories":3363},[204],{"categories":3365},[1069],{"categories":3367},[172],{"categories":3369},[122],{"categories":3371},[],{"categories":3373},[],{"categories":3375},[172],{"categories":3377},[122],{"categories":3379},[298],{"categories":3381},[],{"categories":3383},[122],{"categories":3385},[172],{"categories":3387},[193],{"categories":3389},[172],{"categories":3391},[447],{"categories":3393},[],{"categories":3395},[405],{"categories":3397},[172],{"categories":3399},[122],{"categories":3401},[267],{"categories":3403},[122],{"categories":3405},[244],{"categories":3407},[172],{"categories":3409},[122],{"categories":3411},[447],{"categories":3413},[122],{"categories":3415},[298],{"categories":3417},[],{"categories":3419},[122],{"categories":3421},[267],{"categories":3423},[241],{"categories":3425},[122],{"categories":3427},[122],{"categories":3429},[],{"categories":3431},[267],{"categories":3433},[204],{"categories":3435},[122],{"categories":3437},[122],{"categories":3439},[532],{"categories":3441},[164],{"categories":3443},[122],{"categories":3445},[],{"categories":3447},[],{"categories":3449},[241],{"categories":3451},[122],{"categories":3453},[244],{"categories":3455},[267],{"categories":3457},[172],{"categories":3459},[267],{"categories":3461},[204],{"categories":3463},[],{"categories":3465},[122],{"categories":3467},[],{"categories":3469},[122],{"categories":3471},[551],{"categories":3473},[122],{"categories":3475},[122],{"categories":3477},[172],{"categories":3479},[447],{"categories":3481},[122],{"categories":3483},[122],{"categories":3485},[122],{"categories":3487},[],{"categories":3489},[122,182],{"categories":3491},[204],{"categories":3493},[172],{"categories":3495},[182],{"categories":3497},[172],{"categories":3499},[820],{"categories":3501},[182],{"categories":3503},[122],{"categories":3505},[164],{"categories":3507},[],{"categories":3509},[],{"categories":3511},[172],{"categories":3513},[122],{"categories":3515},[182],{"categories":3517},[164],{"categories":3519},[182],{"categories":3521},[182],{"categories":3523},[122],{"categories":3525},[267],{"categories":3527},[122],{"categories":3529},[182],{"categories":3531},[],{"categories":3533},[122],{"categories":3535},[241,122],{"categories":3537},[298],{"categories":3539},[164],{"categories":3541},[],{"categories":3543},[122],{"categories":3545},[122],{"categories":3547},[167],{"categories":3549},[167],{"categories":3551},[122],{"categories":3553},[122],{"categories":3555},[384],{"categories":3557},[122],{"categories":3559},[182],{"categories":3561},[244],{"categories":3563},[172],{"categories":3565},[122],{"categories":3567},[122],{"categories":3569},[204],{"categories":3571},[267],{"categories":3573},[241],{"categories":3575},[122],{"categories":3577},[122],{"categories":3579},[122],{"categories":3581},[122],{"categories":3583},[164],{"categories":3585},[122],{"categories":3587},[172],{"categories":3589},[172],{"categories":3591},[182],{"categories":3593},[204],{"categories":3595},[182],{"categories":3597},[],{"categories":3599},[],{"categories":3601},[244],{"categories":3603},[122],{"categories":3605},[182],{"categories":3607},[122],{"categories":3609},[241],{"categories":3611},[447],{"categories":3613},[405],{"categories":3615},[384],{"categories":3617},[122],{"categories":3619},[122],{"categories":3621},[122],{"categories":3623},[244],{"categories":3625},[122],{"categories":3627},[122],{"categories":3629},[122],{"categories":3631},[172],{"categories":3633},[164],{"categories":3635},[172],{"categories":3637},[122,167],{"categories":3639},[],{"categories":3641},[241],{"categories":3643},[],{"categories":3645},[175],{"categories":3647},[122],{"categories":3649},[204],{"categories":3651},[164],{"categories":3653},[164],{"categories":3655},[172],{"categories":3657},[172],{"categories":3659},[172],{"categories":3661},[122],{"categories":3663},[122],{"categories":3665},[167],{"categories":3667},[182],{"categories":3669},[267],{"categories":3671},[122],{"categories":3673},[],{"categories":3675},[204],{"categories":3677},[122],{"categories":3679},[122],{"categories":3681},[122],{"categories":3683},[122],{"categories":3685},[122],{"categories":3687},[182],{"categories":3689},[204],{"categories":3691},[182],{"categories":3693},[182],{"categories":3695},[122],{"categories":3697},[122],{"categories":3699},[405],{"categories":3701},[122],{"categories":3703},[172],{"categories":3705},[204],{"categories":3707},[122],{"categories":3709},[122],{"categories":3711},[122],{"categories":3713},[172],{"categories":3715},[122],{"categories":3717},[122],{"categories":3719},[122],{"categories":3721},[2594],{"categories":3723},[3724],"Clinical AI",{"categories":3726},[241],{"categories":3728},[122],{"categories":3730},[122],{"categories":3732},[122],{"categories":3734},[298],{"categories":3736},[2073],{"categories":3738},[122],{"categories":3740},[175],{"categories":3742},[122],{"categories":3744},[172],{"categories":3746},[122],{"categories":3748},[122],{"categories":3750},[204],{"categories":3752},[122],{"categories":3754},[172],{"categories":3756},[267],{"categories":3758},[122],{"categories":3760},[122],{"categories":3762},[167],{"categories":3764},[122],{"categories":3766},[496],{"categories":3768},[122],{"categories":3770},[],{"categories":3772},[122],{"categories":3774},[182],{"categories":3776},[122],{"categories":3778},[],{"categories":3780},[],{"categories":3782},[122],{"categories":3784},[],{"categories":3786},[167],{"categories":3788},[122],{"categories":3790},[172],{"categories":3792},[204],{"categories":3794},[204],{"categories":3796},[204],{"categories":3798},[204],{"categories":3800},[],{"categories":3802},[164],{"categories":3804},[172],{"categories":3806},[204],{"categories":3808},[122],{"categories":3810},[551],{"categories":3812},[175],{"categories":3814},[122],{"categories":3816},[164],{"categories":3818},[172],{"categories":3820},[122],{"categories":3822},[122],{"categories":3824},[122,172],{"categories":3826},[172],{"categories":3828},[298],{"categories":3830},[204],{"categories":3832},[172],{"categories":3834},[204],{"categories":3836},[172],{"categories":3838},[122],{"categories":3840},[],{"categories":3842},[204],{"categories":3844},[267],{"categories":3846},[164],{"categories":3848},[122],{"categories":3850},[122],{"categories":3852},[],{"categories":3854},[182],{"categories":3856},[],{"categories":3858},[164],{"categories":3860},[172],{"categories":3862},[204],{"categories":3864},[122],{"categories":3866},[204],{"categories":3868},[164],{"categories":3870},[204],{"categories":3872},[204],{"categories":3874},[],{"categories":3876},[167],{"categories":3878},[172],{"categories":3880},[204],{"categories":3882},[204],{"categories":3884},[204],{"categories":3886},[204],{"categories":3888},[204],{"categories":3890},[204],{"categories":3892},[204],{"categories":3894},[204],{"categories":3896},[204],{"categories":3898},[204],{"categories":3900},[244],{"categories":3902},[164],{"categories":3904},[122],{"categories":3906},[122],{"categories":3908},[172],{"categories":3910},[172],{"categories":3912},[],{"categories":3914},[122,164],{"categories":3916},[],{"categories":3918},[172],{"categories":3920},[204],{"categories":3922},[172],{"categories":3924},[820],{"categories":3926},[122],{"categories":3928},[122],{"categories":3930},[122],{"categories":3932},[122],{"categories":3934},[384],{"categories":3936},[122],{"categories":3938},[172],{"categories":3940},[167],{"categories":3942},[172],{"categories":3944},[172],{"categories":3946},[],{"categories":3948},[172],{"categories":3950},[241],{"categories":3952},[204],{"categories":3954},[122],{"categories":3956},[],{"categories":3958},[],{"categories":3960},[172],{"categories":3962},[241],{"categories":3964},[122],{"categories":3966},[],{"categories":3968},[122],{"categories":3970},[],{"categories":3972},[267],{"categories":3974},[122],{"categories":3976},[],{"categories":3978},[],{"categories":3980},[204],{"categories":3982},[164],{"categories":3984},[122],{"categories":3986},[122],{"categories":3988},[167],{"categories":3990},[122],{"categories":3992},[122],{"categories":3994},[122],{"categories":3996},[167],{"categories":3998},[241],{"categories":4000},[],{"categories":4002},[122],{"categories":4004},[204],{"categories":4006},[],{"categories":4008},[122],{"categories":4010},[122],{"categories":4012},[241],{"categories":4014},[122],{"categories":4016},[267],{"categories":4018},[122],{"categories":4020},[298],{"categories":4022},[],{"categories":4024},[172],{"categories":4026},[267],{"categories":4028},[182],{"categories":4030},[],{"categories":4032},[122],{"categories":4034},[],{"categories":4036},[172],{"categories":4038},[241],{"categories":4040},[182],{"categories":4042},[],{"categories":4044},[2594],{"categories":4046},[167],{"categories":4048},[164],{"categories":4050},[244],{"categories":4052},[172],{"categories":4054},[241],{"categories":4056},[182],{"categories":4058},[],{"categories":4060},[],{"categories":4062},[122],{"categories":4064},[164],{"categories":4066},[122],{"categories":4068},[267],{"categories":4070},[],{"categories":4072},[172],{"categories":4074},[172],{"categories":4076},[172],{"categories":4078},[122],{"categories":4080},[204],{"categories":4082},[182],{"categories":4084},[122],{"categories":4086},[172],{"categories":4088},[175],{"categories":4090},[122],{"categories":4092},[172],{"categories":4094},[122],{"categories":4096},[175],{"categories":4098},[267],{"categories":4100},[204],{"categories":4102},[],{"categories":4104},[267],{"categories":4106},[],{"categories":4108},[182],{"categories":4110},[172],{"categories":4112},[],{"categories":4114},[122],{"categories":4116},[122],{"categories":4118},[122],{"categories":4120},[122],{"categories":4122},[172],{"categories":4124},[167],{"categories":4126},[164],{"categories":4128},[122],{"categories":4130},[241],{"categories":4132},[182],{"categories":4134},[182],{"categories":4136},[122],{"categories":4138},[244],{"categories":4140},[172],{"categories":4142},[122],{"categories":4144},[172],{"categories":4146},[122],{"categories":4148},[167],{"categories":4150},[241],{"categories":4152},[182],{"categories":4154},[172],{"categories":4156},[122],{"categories":4158},[175],{"categories":4160},[122],{"categories":4162},[172],{"categories":4164},[122],{"categories":4166},[204],{"categories":4168},[],{"categories":4170},[164],{"categories":4172},[122],{"categories":4174},[122],{"categories":4176},[122],{"categories":4178},[182],{"categories":4180},[122],{"categories":4182},[182],{"categories":4184},[122],{"categories":4186},[172],{"categories":4188},[122],{"categories":4190},[122],{"categories":4192},[122],{"categories":4194},[122],{"categories":4196},[],{"categories":4198},[122],{"categories":4200},[241],{"categories":4202},[167],{"categories":4204},[204],{"categories":4206},[172],{"categories":4208},[122],{"categories":4210},[122],{"categories":4212},[241],{"categories":4214},[172],{"categories":4216},[122],{"categories":4218},[267],{"categories":4220},[122],{"categories":4222},[244],{"categories":4224},[122],{"categories":4226},[122],{"categories":4228},[204],{"categories":4230},[122],{"categories":4232},[122],{"categories":4234},[172],{"categories":4236},[298],{"categories":4238},[122],{"categories":4240},[182],{"categories":4242},[172],{"categories":4244},[244],{"categories":4246},[],{"categories":4248},[172],{"categories":4250},[182],{"categories":4252},[122],{"categories":4254},[1937],{"categories":4256},[241],{"categories":4258},[325],{"categories":4260},[122],{"categories":4262},[164],{"categories":4264},[182],{"categories":4266},[167],{"categories":4268},[182],{"categories":4270},[122],{"categories":4272},[],{"categories":4274},[172],{"categories":4276},[172],{"categories":4278},[122],{"categories":4280},[122],{"categories":4282},[244],{"categories":4284},[],{"categories":4286},[204],{"categories":4288},[],{"categories":4290},[204],{"categories":4292},[122],{"categories":4294},[122],{"categories":4296},[172],{"categories":4298},[172],{"categories":4300},[172],{"categories":4302},[],{"categories":4304},[204],{"categories":4306},[122],{"categories":4308},[],{"categories":4310},[122],{"categories":4312},[122],{"categories":4314},[],{"categories":4316},[241],{"categories":4318},[182],{"categories":4320},[172],{"categories":4322},[122],{"categories":4324},[122],{"categories":4326},[267],{"categories":4328},[122],{"categories":4330},[122],{"categories":4332},[164],{"categories":4334},[],{"categories":4336},[122],{"categories":4338},[122],{"categories":4340},[],{"categories":4342},[164],{"categories":4344},[204],{"categories":4346},[182],{"categories":4348},[447],{"categories":4350},[122],{"categories":4352},[122],{"categories":4354},[122],{"categories":4356},[182],{"categories":4358},[204],{"categories":4360},[241],{"categories":4362},[122],{"categories":4364},[122],{"categories":4366},[122],{"categories":4368},[204],{"categories":4370},[241],{"categories":4372},[122],{"categories":4374},[204],{"categories":4376},[241],{"categories":4378},[122],{"categories":4380},[204],{"categories":4382},[172],{"categories":4384},[172],{"categories":4386},[172],{"categories":4388},[182],{"categories":4390},[204],{"categories":4392},[172],{"categories":4394},[172],{"categories":4396},[122],{"categories":4398},[182],{"categories":4400},[241],{"categories":4402},[122],{"categories":4404},[],{"categories":4406},[172],{"categories":4408},[],{"categories":4410},[],{"categories":4412},[],{"categories":4414},[172],{"categories":4416},[167],{"categories":4418},[172],{"categories":4420},[4421],"Liability & Ethics",{"categories":4423},[122],{"categories":4425},[172],{"categories":4427},[164],{"categories":4429},[172],{"categories":4431},[167],{"categories":4433},[267],{"categories":4435},[172],{"categories":4437},[],{"categories":4439},[532],{"categories":4441},[172],{"categories":4443},[],{"categories":4445},[164],{"categories":4447},[172],{"categories":4449},[],{"categories":4451},[172],{"categories":4453},[122],{"categories":4455},[122],{"categories":4457},[204],{"categories":4459},[122],{"categories":4461},[122],{"categories":4463},[172],{"categories":4465},[122],{"categories":4467},[122],{"categories":4469},[204],{"categories":4471},[172],{"categories":4473},[182],{"categories":4475},[241],{"categories":4477},[164],{"categories":4479},[122],{"categories":4481},[],{"categories":4483},[172],{"categories":4485},[172],{"categories":4487},[447],{"categories":4489},[241],{"categories":4491},[298],{"categories":4493},[204],{"categories":4495},[122],{"categories":4497},[241],{"categories":4499},[122],{"categories":4501},[164],{"categories":4503},[],{"categories":4505},[172],{"categories":4507},[122],{"categories":4509},[122],{"categories":4511},[172],{"categories":4513},[122],{"categories":4515},[241],{"categories":4517},[],{"categories":4519},[172],{"categories":4521},[175],{"categories":4523},[204],{"categories":4525},[172],{"categories":4527},[167],{"categories":4529},[],{"categories":4531},[122],{"categories":4533},[175],{"categories":4535},[122],{"categories":4537},[172],{"categories":4539},[204],{"categories":4541},[164],{"categories":4543},[298],{"categories":4545},[122],{"categories":4547},[122],{"categories":4549},[122],{"categories":4551},[204],{"categories":4553},[167],{"categories":4555},[122],{"categories":4557},[241],{"categories":4559},[204],{"categories":4561},[298],{"categories":4563},[122],{"categories":4565},[172],{"categories":4567},[],{"categories":4569},[496],{"categories":4571},[],{"categories":4573},[122],{"categories":4575},[298],{"categories":4577},[244],{"categories":4579},[172],{"categories":4581},[172],{"categories":4583},[4584],"Design News & Tools",{"categories":4586},[122],{"categories":4588},[204],{"categories":4590},[122],{"categories":4592},[164],{"categories":4594},[122],{"categories":4596},[241],{"categories":4598},[172],{"categories":4600},[172],{"categories":4602},[122],{"categories":4604},[447],{"categories":4606},[122],{"categories":4608},[447],{"categories":4610},[267],{"categories":4612},[122],{"categories":4614},[172],{"categories":4616},[],{"categories":4618},[122],{"categories":4620},[122],{"categories":4622},[122],{"categories":4624},[204],{"categories":4626},[164],{"categories":4628},[],{"categories":4630},[122],{"categories":4632},[122],{"categories":4634},[182],{"categories":4636},[551],{"categories":4638},[182],{"categories":4640},[241],{"categories":4642},[122],{"categories":4644},[122,172],{"categories":4646},[267,167],{"categories":4648},[122],{"categories":4650},[122],{"categories":4652},[122],{"categories":4654},[],{"categories":4656},[172],{"categories":4658},[],{"categories":4660},[182],{"categories":4662},[122],{"categories":4664},[182],{"categories":4666},[],{"categories":4668},[172],{"categories":4670},[122],{"categories":4672},[204],{"categories":4674},[122],{"categories":4676},[],{"categories":4678},[172],{"categories":4680},[122],{"categories":4682},[],{"categories":4684},[241],{"categories":4686},[122],{"categories":4688},[172],{"categories":4690},[122],{"categories":4692},[122],{"categories":4694},[164],{"categories":4696},[172],{"categories":4698},[122],{"categories":4700},[],{"categories":4702},[298],{"categories":4704},[267],{"categories":4706},[167],{"categories":4708},[167],{"categories":4710},[122],{"categories":4712},[164],{"categories":4714},[164],{"categories":4716},[122],{"categories":4718},[172],{"categories":4720},[122],{"categories":4722},[122],{"categories":4724},[122],{"categories":4726},[182],{"categories":4728},[122],{"categories":4730},[164],{"categories":4732},[172],{"categories":4734},[122],{"categories":4736},[267],{"categories":4738},[122],{"categories":4740},[204],{"categories":4742},[122],{"categories":4744},[122],{"categories":4746},[172],{"categories":4748},[122],{"categories":4750},[],{"categories":4752},[182],{"categories":4754},[],{"categories":4756},[182],{"categories":4758},[172],{"categories":4760},[164],{"categories":4762},[],{"categories":4764},[244],{"categories":4766},[298],{"categories":4768},[122],{"categories":4770},[182],{"categories":4772},[122],{"categories":4774},[],{"categories":4776},[204],{"categories":4778},[172],{"categories":4780},[182],{"categories":4782},[241],{"categories":4784},[122],{"categories":4786},[172],{"categories":4788},[182],{"categories":4790},[172],{"categories":4792},[204],{"categories":4794},[122],{"categories":4796},[164],{"categories":4798},[204],{"categories":4800},[182],{"categories":4802},[122],{"categories":4804},[241],{"categories":4806},[167],{"categories":4808},[122],{"categories":4810},[122],{"categories":4812},[122],{"categories":4814},[122],{"categories":4816},[122],{"categories":4818},[172],{"categories":4820},[122],{"categories":4822},[172],{"categories":4824},[122],{"categories":4826},[122],{"categories":4828},[164],{"categories":4830},[122],{"categories":4832},[172],{"categories":4834},[172],{"categories":4836},[241],{"categories":4838},[172],{"categories":4840},[172],{"categories":4842},[164],{"categories":4844},[172],{"categories":4846},[241],{"categories":4848},[],{"categories":4850},[122],{"categories":4852},[244],{"categories":4854},[447],{"categories":4856},[122],{"categories":4858},[122],{"categories":4860},[122],{"categories":4862},[182],{"categories":4864},[],{"categories":4866},[172],{"categories":4868},[267],{"categories":4870},[122],{"categories":4872},[204],{"categories":4874},[172],{"categories":4876},[122],{"categories":4878},[267],{"categories":4880},[172],{"categories":4882},[167],{"categories":4884},[167],{"categories":4886},[122],{"categories":4888},[122],{"categories":4890},[122],{"categories":4892},[164],{"categories":4894},[],{"categories":4896},[122],{"categories":4898},[172],{"categories":4900},[172],{"categories":4902},[122],{"categories":4904},[122],{"categories":4906},[122],{"categories":4908},[182],{"categories":4910},[],{"categories":4912},[164],{"categories":4914},[122],{"categories":4916},[122],{"categories":4918},[172],{"categories":4920},[172],{"categories":4922},[],{"categories":4924},[182],{"categories":4926},[182],{"categories":4928},[122],{"categories":4930},[267],{"categories":4932},[167],{"categories":4934},[241],{"categories":4936},[],{"categories":4938},[122],{"categories":4940},[172],{"categories":4942},[164],{"categories":4944},[122],{"categories":4946},[182],{"categories":4948},[164],{"categories":4950},[204],{"categories":4952},[244],{"categories":4954},[204],{"categories":4956},[172],{"categories":4958},[],{"categories":4960},[204],{"categories":4962},[172],{"categories":4964},[241],{"categories":4966},[244],{"categories":4968},[122],{"categories":4970},[],{"categories":4972},[172],{"categories":4974},[2594],{"categories":4976},[204],{"categories":4978},[182],{"categories":4980},[122],{"categories":4982},[122],{"categories":4984},[167],{"categories":4986},[122],{"categories":4988},[164],{"categories":4990},[1515],{"categories":4992},[298],{"categories":4994},[164],{"categories":4996},[],{"categories":4998},[],{"categories":5000},[204],{"categories":5002},[172],{"categories":5004},[204],{"categories":5006},[],{"categories":5008},[172],{"categories":5010},[172],{"categories":5012},[172],{"categories":5014},[],{"categories":5016},[122],{"categories":5018},[],{"categories":5020},[204],{"categories":5022},[164],{"categories":5024},[241],{"categories":5026},[122],{"categories":5028},[172],{"categories":5030},[204],{"categories":5032},[122],{"categories":5034},[204],{"categories":5036},[],{"categories":5038},[204],{"categories":5040},[164],{"categories":5042},[447],{"categories":5044},[172],{"categories":5046},[122],{"categories":5048},[],{"categories":5050},[182],{"categories":5052},[172],{"categories":5054},[175],{"categories":5056},[172],{"categories":5058},[164],{"categories":5060},[],{"categories":5062},[],{"categories":5064},[],{"categories":5066},[241],{"categories":5068},[172],{"categories":5070},[122],{"categories":5072},[122],{"categories":5074},[],{"categories":5076},[],{"categories":5078},[],{"categories":5080},[241],{"categories":5082},[122],{"categories":5084},[],{"categories":5086},[172],{"categories":5088},[122],{"categories":5090},[164],{"categories":5092},[],{"categories":5094},[],{"categories":5096},[241],{"categories":5098},[122],{"categories":5100},[204],{"categories":5102},[],{"categories":5104},[267],{"categories":5106},[204],{"categories":5108},[267],{"categories":5110},[244],{"categories":5112},[122],{"categories":5114},[122],{"categories":5116},[],{"categories":5118},[],{"categories":5120},[172],{"categories":5122},[],{"categories":5124},[122],{"categories":5126},[447],{"categories":5128},[122],{"categories":5130},[122],{"categories":5132},[122],{"categories":5134},[],{"categories":5136},[172],{"categories":5138},[122],{"categories":5140},[122],{"categories":5142},[],{"categories":5144},[172],{"categories":5146},[122],{"categories":5148},[204],{"categories":5150},[122],{"categories":5152},[267],{"categories":5154},[167],{"categories":5156},[122],{"categories":5158},[122],{"categories":5160},[172],{"categories":5162},[244],{"categories":5164},[172],{"categories":5166},[172],{"categories":5168},[],{"categories":5170},[],{"categories":5172},[122],{"categories":5174},[],{"categories":5176},[204],{"categories":5178},[167],{"categories":5180},[],{"categories":5182},[],{"categories":5184},[241],{"categories":5186},[164],{"categories":5188},[],{"categories":5190},[167],{"categories":5192},[267],{"categories":5194},[122],{"categories":5196},[182],{"categories":5198},[164],{"categories":5200},[244],{"categories":5202},[167],{"categories":5204},[182],{"categories":5206},[182],{"categories":5208},[],{"categories":5210},[122],{"categories":5212},[],{"categories":5214},[172],{"categories":5216},[164],{"categories":5218},[241],{"categories":5220},[122],{"categories":5222},[164],{"categories":5224},[172],{"categories":5226},[298],{"categories":5228},[122],{"categories":5230},[122],{"categories":5232},[122],{"categories":5234},[164],{"categories":5236},[244],{"categories":5238},[172],{"categories":5240},[],{"categories":5242},[122],{"categories":5244},[182],{"categories":5246},[204],{"categories":5248},[182],{"categories":5250},[122],{"categories":5252},[175],{"categories":5254},[],{"categories":5256},[241],{"categories":5258},[204],{"categories":5260},[164],{"categories":5262},[172],{"categories":5264},[122],{"categories":5266},[122],{"categories":5268},[172],{"categories":5270},[122],{"categories":5272},[122],{"categories":5274},[167],{"categories":5276},[172],{"categories":5278},[172,298],{"categories":5280},[172],{"categories":5282},[182],{"categories":5284},[122],{"categories":5286},[122],{"categories":5288},[244],{"categories":5290},[172],{"categories":5292},[267],{"categories":5294},[172],{"categories":5296},[167],{"categories":5298},[],{"categories":5300},[172],{"categories":5302},[122],{"categories":5304},[167],{"categories":5306},[],{"categories":5308},[],{"categories":5310},[182],{"categories":5312},[122],{"categories":5314},[122],{"categories":5316},[172],{"categories":5318},[244],{"categories":5320},[267],{"categories":5322},[122],{"categories":5324},[122],{"categories":5326},[172],{"categories":5328},[],{"categories":5330},[172],{"categories":5332},[204],{"categories":5334},[172],{"categories":5336},[],{"categories":5338},[204],{"categories":5340},[182],{"categories":5342},[2594],{"categories":5344},[164],{"categories":5346},[182],{"categories":5348},[122],{"categories":5350},[172],{"categories":5352},[122],{"categories":5354},[122],{"categories":5356},[267],{"categories":5358},[182],{"categories":5360},[],{"categories":5362},[204],{"categories":5364},[122],{"categories":5366},[],{"categories":5368},[172],{"categories":5370},[122],{"categories":5372},[122],{"categories":5374},[122],{"categories":5376},[172],{"categories":5378},[122],{"categories":5380},[122],{"categories":5382},[175],{"categories":5384},[172],{"categories":5386},[122],{"categories":5388},[122],{"categories":5390},[122],{"categories":5392},[122],{"categories":5394},[122],{"categories":5396},[122],{"categories":5398},[167],{"categories":5400},[],{"categories":5402},[175],{"categories":5404},[204],{"categories":5406},[172],{"categories":5408},[122],{"categories":5410},[182],{"categories":5412},[],{"categories":5414},[182],{"categories":5416},[182],{"categories":5418},[172],{"categories":5420},[182],{"categories":5422},[122],{"categories":5424},[122],{"categories":5426},[182],{"categories":5428},[122],{"categories":5430},[172],{"categories":5432},[204],{"categories":5434},[122],{"categories":5436},[122],{"categories":5438},[122],{"categories":5440},[167],{"categories":5442},[122],{"categories":5444},[172],{"categories":5446},[241],{"categories":5448},[],{"categories":5450},[122],{"categories":5452},[244],{"categories":5454},[172],{"categories":5456},[122],{"categories":5458},[],{"categories":5460},[122],{"categories":5462},[122],{"categories":5464},[204],{"categories":5466},[122],{"categories":5468},[122],{"categories":5470},[172],{"categories":5472},[267],{"categories":5474},[],{"categories":5476},[],{"categories":5478},[182],{"categories":5480},[204],{"categories":5482},[182],{"categories":5484},[204],{"categories":5486},[122],{"categories":5488},[267],{"categories":5490},[122],{"categories":5492},[164],{"categories":5494},[172],{"categories":5496},[122],{"categories":5498},[172],{"categories":5500},[172],{"categories":5502},[122],{"categories":5504},[167],{"categories":5506},[],{"categories":5508},[244],{"categories":5510},[122],{"categories":5512},[],{"categories":5514},[204],{"categories":5516},[122],{"categories":5518},[244],{"categories":5520},[122],{"categories":5522},[182],{"categories":5524},[182],{"categories":5526},[182],{"categories":5528},[172],{"categories":5530},[172],{"categories":5532},[172],{"categories":5534},[122],{"categories":5536},[122],{"categories":5538},[241],{"categories":5540},[244],{"categories":5542},[244],{"categories":5544},[],{"categories":5546},[204],{"categories":5548},[122],{"categories":5550},[122],{"categories":5552},[182],{"categories":5554},[],{"categories":5556},[204],{"categories":5558},[204],{"categories":5560},[204],{"categories":5562},[],{"categories":5564},[172],{"categories":5566},[122],{"categories":5568},[],{"categories":5570},[164],{"categories":5572},[167],{"categories":5574},[],{"categories":5576},[122],{"categories":5578},[122],{"categories":5580},[],{"categories":5582},[182],{"categories":5584},[],{"categories":5586},[],{"categories":5588},[],{"categories":5590},[],{"categories":5592},[122],{"categories":5594},[204],{"categories":5596},[],{"categories":5598},[],{"categories":5600},[122],{"categories":5602},[122],{"categories":5604},[122],{"categories":5606},[244],{"categories":5608},[122],{"categories":5610},[244],{"categories":5612},[],{"categories":5614},[244],{"categories":5616},[244],{"categories":5618},[298],{"categories":5620},[172],{"categories":5622},[182],{"categories":5624},[],{"categories":5626},[],{"categories":5628},[244],{"categories":5630},[182],{"categories":5632},[182],{"categories":5634},[182],{"categories":5636},[],{"categories":5638},[164],{"categories":5640},[182],{"categories":5642},[182],{"categories":5644},[164],{"categories":5646},[182],{"categories":5648},[167],{"categories":5650},[182],{"categories":5652},[182],{"categories":5654},[182],{"categories":5656},[244],{"categories":5658},[204],{"categories":5660},[204],{"categories":5662},[122],{"categories":5664},[182],{"categories":5666},[244],{"categories":5668},[298],{"categories":5670},[244],{"categories":5672},[244],{"categories":5674},[244],{"categories":5676},[],{"categories":5678},[167],{"categories":5680},[],{"categories":5682},[298],{"categories":5684},[182],{"categories":5686},[182],{"categories":5688},[182],{"categories":5690},[172],{"categories":5692},[204,167],{"categories":5694},[244],{"categories":5696},[],{"categories":5698},[],{"categories":5700},[244],{"categories":5702},[],{"categories":5704},[244],{"categories":5706},[204],{"categories":5708},[172],{"categories":5710},[],{"categories":5712},[182],{"categories":5714},[122],{"categories":5716},[241],{"categories":5718},[],{"categories":5720},[122],{"categories":5722},[],{"categories":5724},[204],{"categories":5726},[164],{"categories":5728},[244],{"categories":5730},[],{"categories":5732},[182],{"categories":5734},[204],[5736,5836,5919,5999],{"id":5737,"title":5738,"ai":5739,"body":5744,"categories":5803,"created_at":123,"date_modified":123,"description":115,"extension":124,"faq":123,"featured":125,"kicker_label":123,"meta":5804,"navigation":142,"path":5820,"published_at":5821,"question":123,"scraped_at":5822,"seo":5823,"sitemap":5824,"source_id":5825,"source_name":5826,"source_type":5827,"source_url":5828,"stem":5829,"tags":5830,"thumbnail_url":5831,"tldr":5832,"tweet":5833,"unknown_tags":5834,"__hash__":5835},"summaries\u002Fsummaries\u002F64ef5b3eb112fa0b-optimizing-ai-for-tool-use-via-rl-and-data-quality-summary.md","Optimizing AI for Tool Use via RL and Data Quality",{"provider":7,"model":8,"input_tokens":5740,"output_tokens":5741,"processing_time_ms":5742,"cost_usd":5743},8611,652,3933,0.00313075,{"type":14,"value":5745,"toc":5798},[5746,5750,5753,5757,5760,5791,5795],[17,5747,5749],{"id":5748},"the-fallacy-of-scaling-for-tool-use","The Fallacy of Scaling for Tool Use",[22,5751,5752],{},"Many enterprise AI projects fail to reach production because developers default to using larger models, assuming increased reasoning depth will solve reliability issues. However, larger models often lack \"tool discipline.\" In a financial analysis task, a 235B parameter model (Qwen 3) failed to query a database correctly because it did not inspect the environment, leading it to hallucinate an answer after two failed attempts. This demonstrates that raw reasoning capability does not equate to effective tool interaction.",[17,5754,5756],{"id":5755},"achieving-performance-via-targeted-rl","Achieving Performance via Targeted RL",[22,5758,5759],{},"Instead of scaling up, Snorkel and the RLLM team at UC Berkeley demonstrated that a 4B parameter model could be fine-tuned using Reinforcement Learning (RL) to outperform much larger models. By focusing on behavior rather than core knowledge, the team achieved a significant uplift in performance:",[26,5761,5762,5773,5779,5785],{},[29,5763,5764,5767,5768,5772],{},[32,5765,5766],{},"Tool Discipline:"," The fine-tuned model learned to first call ",[5769,5770,5771],"code",{},"get_table_name"," to discover available data, then inspect the schema before querying.",[29,5774,5775,5778],{},[32,5776,5777],{},"Self-Correction:"," The model learned to observe SQL errors (e.g., missing columns) and self-correct its queries in real-time.",[29,5780,5781,5784],{},[32,5782,5783],{},"Efficiency:"," The entire training process was completed in 21 hours for under $500.",[29,5786,5787,5790],{},[32,5788,5789],{},"Generalization:"," Surprisingly, training exclusively on single-table tasks yielded the best performance, which then generalized to improve multi-table reasoning benchmarks from 13.9% to 26.6%.",[17,5792,5794],{"id":5793},"rubric-based-evaluation","Rubric-Based Evaluation",[22,5796,5797],{},"To identify the specific behaviors needing improvement, the team advocates for building rubrics into evaluation pipelines. Rather than relying on a binary \"pass\u002Ffail\" metric, rubrics break down model responses into granular components. This allows developers to pinpoint exactly where a model fails (e.g., schema discovery vs. query construction) and generate targeted training data to address those specific failure modes before initiating the RL cycle.",{"title":115,"searchDepth":116,"depth":116,"links":5799},[5800,5801,5802],{"id":5748,"depth":116,"text":5749},{"id":5755,"depth":116,"text":5756},{"id":5793,"depth":116,"text":5794},[122],{"content_references":5805,"triage":5818},[5806,5810,5812,5815],{"type":5807,"title":5808,"url":5809,"context":132},"tool","Snorkel","https:\u002F\u002Fsnorkel.ai\u002F",{"type":5807,"title":5811,"context":132},"FinQA",{"type":5807,"title":5813,"url":5814,"context":132},"OpenEnv","https:\u002F\u002Fgithub.com\u002Fopen-env\u002Fopen-env",{"type":5807,"title":5816,"url":5817,"context":132},"PrimeIntellect","https:\u002F\u002Fwww.primeintellect.ai\u002F",{"relevance":138,"novelty":139,"quality":139,"actionability":139,"composite":140,"reasoning":5819},"Category: AI & LLMs. The article provides a deep dive into optimizing AI models for tool use through reinforcement learning, addressing a specific pain point for developers regarding the limitations of scaling models. It offers actionable insights on implementing rubrics for evaluation and targeted training, which can directly enhance model performance in production.","\u002Fsummaries\u002F64ef5b3eb112fa0b-optimizing-ai-for-tool-use-via-rl-and-data-quality-summary","2026-06-10 17:00:25","2026-06-11 12:56:12",{"title":5738,"description":115},{"loc":5820},"64ef5b3eb112fa0b","AI Engineer","video","https:\u002F\u002Fwww.youtube.com\u002Fwatch?v=TNwJ1LMiENk","summaries\u002F64ef5b3eb112fa0b-optimizing-ai-for-tool-use-via-rl-and-data-quality-summary",[154,155,156,157],"https:\u002F\u002Fi.ytimg.com\u002Fvi\u002FTNwJ1LMiENk\u002Fhqdefault.jpg","Improving model performance for complex tasks often requires teaching tool discipline through RL and high-quality data rather than scaling model size. A 4B parameter model outperformed a 235B model by learning to inspect schemas and self-correct errors.","This presentation argues that for tool-use tasks, model behavior is more important than raw reasoning capacity. The speaker demonstrates how fine-tuning a 4B parameter model with reinforcement learning—using high-quality, expert-curated data—can outperform massive models that lack the discipline to correctly inspect schemas and self-correct during execution.",[157],"EYBAXV3xpQ--pQSEBkEE83W1voZbTuHI7-vX6YmtIt4",{"id":5837,"title":5838,"ai":5839,"body":5844,"categories":5902,"created_at":123,"date_modified":123,"description":115,"extension":124,"faq":123,"featured":125,"kicker_label":123,"meta":5903,"navigation":142,"path":5907,"published_at":5908,"question":123,"scraped_at":5908,"seo":5909,"sitemap":5910,"source_id":5911,"source_name":5912,"source_type":150,"source_url":5913,"stem":5914,"tags":5915,"thumbnail_url":123,"tldr":5916,"tweet":123,"unknown_tags":5917,"__hash__":5918},"summaries\u002Fsummaries\u002Ffe1219b8ab66d74d-cosmo-agent-automating-cad-cae-design-loops-with-l-summary.md","COSMO-Agent: Automating CAD-CAE Design Loops with LLMs",{"provider":7,"model":8,"input_tokens":5840,"output_tokens":5841,"processing_time_ms":5842,"cost_usd":5843},5813,512,2893,0.00222125,{"type":14,"value":5845,"toc":5897},[5846,5850,5853,5857,5860,5887,5890,5894],[17,5847,5849],{"id":5848},"bridging-the-cad-cae-semantic-gap","Bridging the CAD-CAE Semantic Gap",[22,5851,5852],{},"Industrial design is frequently bottlenecked by the disconnect between Computer-Aided Design (CAD) and Computer-Aided Engineering (CAE). Translating simulation feedback into actionable geometric modifications requires deep domain expertise and the ability to navigate complex, coupled constraints. COSMO-Agent (Closed-loop Optimization, Simulation, and Modeling Orchestration) addresses this by treating the entire design-simulation-revision process as an interactive reinforcement learning (RL) environment.",[17,5854,5856],{"id":5855},"the-cosmo-agent-architecture","The COSMO-Agent Architecture",[22,5858,5859],{},"The framework teaches LLMs to act as orchestrators for external engineering tools. The process follows a closed-loop cycle:",[5861,5862,5863,5869,5875,5881],"ol",{},[29,5864,5865,5868],{},[32,5866,5867],{},"CAD Generation",": The agent generates parametric geometries.",[29,5870,5871,5874],{},[32,5872,5873],{},"CAE Solving",": The agent triggers simulation tools to test the design.",[29,5876,5877,5880],{},[32,5878,5879],{},"Result Parsing",": The agent interprets simulation feedback.",[29,5882,5883,5886],{},[32,5884,5885],{},"Geometry Revision",": The agent iteratively modifies the design based on feedback until all constraints are satisfied.",[22,5888,5889],{},"To ensure stability and industrial utility, the authors implemented a multi-constraint reward function. This function optimizes for three distinct pillars: design feasibility, the robustness of the toolchain integration, and the validity of the structured outputs. By training on a new, industry-aligned dataset covering 25 component categories, the model learns to navigate the specific, rigid requirements of engineering workflows rather than just generating generic text.",[17,5891,5893],{"id":5892},"performance-and-practical-impact","Performance and Practical Impact",[22,5895,5896],{},"Experimental results demonstrate that training smaller, open-source LLMs with the COSMO-Agent framework allows them to outperform both larger open-source models and strong closed-source models in constraint-driven design tasks. The framework significantly improves efficiency and stability, proving that specialized RL fine-tuning is more effective for technical orchestration than relying on the general reasoning capabilities of larger, unspecialized models.",{"title":115,"searchDepth":116,"depth":116,"links":5898},[5899,5900,5901],{"id":5848,"depth":116,"text":5849},{"id":5855,"depth":116,"text":5856},{"id":5892,"depth":116,"text":5893},[122],{"content_references":5904,"triage":5905},[],{"relevance":138,"novelty":139,"quality":139,"actionability":139,"composite":140,"reasoning":5906},"Category: AI & LLMs. The article presents a novel framework, COSMO-Agent, that directly addresses a specific pain point in the design process by automating CAD-CAE loops using LLMs, which is highly relevant for product builders. It provides a detailed architecture and process that can be actionable for developers looking to implement similar AI-driven design automation.","\u002Fsummaries\u002Ffe1219b8ab66d74d-cosmo-agent-automating-cad-cae-design-loops-with-l-summary","2026-05-22 07:00:18",{"title":5838,"description":115},{"loc":5907},"fe1219b8ab66d74d","arXiv cs.AI","https:\u002F\u002Farxiv.org\u002Fabs\u002F2605.20190","summaries\u002Ffe1219b8ab66d74d-cosmo-agent-automating-cad-cae-design-loops-with-l-summary",[154,155,156,157],"COSMO-Agent is a reinforcement learning framework that enables LLMs to bridge the CAD-CAE semantic gap by orchestrating external tools to perform iterative, constraint-driven geometric design.",[157],"ard7nGycve9hka7xg-GR-O0n71giOfpVSiSaWoMulwY",{"id":5920,"title":5921,"ai":5922,"body":5927,"categories":5978,"created_at":123,"date_modified":123,"description":115,"extension":124,"faq":123,"featured":125,"kicker_label":123,"meta":5979,"navigation":142,"path":5988,"published_at":5989,"question":123,"scraped_at":5989,"seo":5990,"sitemap":5991,"source_id":5992,"source_name":5912,"source_type":150,"source_url":5993,"stem":5994,"tags":5995,"thumbnail_url":123,"tldr":5996,"tweet":123,"unknown_tags":5997,"__hash__":5998},"summaries\u002Fsummaries\u002F278b2db62990136c-stabilizing-critic-free-rl-with-bv-blend-summary.md","Stabilizing Critic-Free RL with BV-Blend",{"provider":7,"model":8,"input_tokens":5923,"output_tokens":5924,"processing_time_ms":5925,"cost_usd":5926},5933,550,2670,0.00230825,{"type":14,"value":5928,"toc":5973},[5929,5933,5936,5940,5943,5946,5966,5970],[17,5930,5932],{"id":5931},"the-problem-with-local-advantage-estimation","The Problem with Local Advantage Estimation",[22,5934,5935],{},"Critic-free reinforcement learning with verifiable rewards (RLVR), such as Group Relative Policy Optimization (GRPO), is popular for aligning LLMs because it avoids the memory and compute overhead of training a separate value function (critic). However, these methods rely on prompt-local reward statistics—calculating advantages based solely on the rollouts within a specific prompt group. This approach fails in 'cold-start' regimes where all rollouts in a group receive identical rewards (e.g., all fail or all succeed). In these cases, the within-group reward variance drops to zero, causing group normalization to yield zero advantages and effectively stalling the learning process.",[17,5937,5939],{"id":5938},"the-bv-blend-solution","The BV-Blend Solution",[22,5941,5942],{},"BV-Blend addresses this instability by augmenting prompt-local statistics with historical context. Instead of relying exclusively on the current batch, the framework maintains Exponential Moving Average (EMA) tracked reward moments for specific semantic clusters.",[22,5944,5945],{},"Key components of the approach include:",[26,5947,5948,5954,5960],{},[29,5949,5950,5953],{},[32,5951,5952],{},"Semantic-Cluster-Conditioned Moments:"," The model tracks reward statistics across historical data, grouped by semantic similarity, providing a stable reference point when local variance is insufficient.",[29,5955,5956,5959],{},[32,5957,5958],{},"Confidence-Weighted Blending:"," The system calculates a confidence weight using a Standard Error of the Mean (SEM) proxy. This weight determines the ratio between the prompt-local statistics and the historical moments.",[29,5961,5962,5965],{},[32,5963,5964],{},"Standardized Advantage:"," By blending these sources, the model generates a more robust advantage estimate for PPO-style clipped updates, ensuring that learning continues even when local reward signals are uniform or noisy.",[17,5967,5969],{"id":5968},"impact-on-training","Impact on Training",[22,5971,5972],{},"By incorporating historical baselines, BV-Blend prevents the training stalls common in binary verifier environments. Empirical results on verifiable reasoning benchmarks demonstrate that the method improves both training stability and overall performance, making it a more robust alternative to standard group-normalized methods in scenarios where reward signals are sparse or unreliable.",{"title":115,"searchDepth":116,"depth":116,"links":5974},[5975,5976,5977],{"id":5931,"depth":116,"text":5932},{"id":5938,"depth":116,"text":5939},{"id":5968,"depth":116,"text":5969},[122],{"content_references":5980,"triage":5984},[5981],{"type":5982,"title":5983,"context":132},"other","Group Relative Policy Optimization (GRPO)",{"relevance":5985,"novelty":139,"quality":139,"actionability":116,"composite":5986,"reasoning":5987},3,3.25,"Category: AI & LLMs. The article discusses a novel approach to improving reinforcement learning stability, which is relevant to AI engineering. While it presents new insights into BV-Blend's methodology, it lacks practical steps for implementation, making it less actionable for the audience.","\u002Fsummaries\u002F278b2db62990136c-stabilizing-critic-free-rl-with-bv-blend-summary","2026-06-30 12:57:17",{"title":5921,"description":115},{"loc":5988},"278b2db62990136c","https:\u002F\u002Farxiv.org\u002Fabs\u002F2606.28707","summaries\u002F278b2db62990136c-stabilizing-critic-free-rl-with-bv-blend-summary",[154,156,157],"BV-Blend improves reinforcement learning stability by blending prompt-local statistics with historical cluster-based moments, preventing training stalls when reward variance is zero.",[157],"DRjoK8R10erO654AJGCpK_Kv4-BzZEkOLDq84vHj1dc",{"id":6000,"title":6001,"ai":6002,"body":6007,"categories":6050,"created_at":123,"date_modified":123,"description":115,"extension":124,"faq":123,"featured":125,"kicker_label":123,"meta":6051,"navigation":142,"path":6060,"published_at":6061,"question":123,"scraped_at":6061,"seo":6062,"sitemap":6063,"source_id":6064,"source_name":5912,"source_type":150,"source_url":6056,"stem":6065,"tags":6066,"thumbnail_url":123,"tldr":6067,"tweet":123,"unknown_tags":6068,"__hash__":6069},"summaries\u002Fsummaries\u002F33137ecadf93a798-dart-improving-agent-reliability-via-semantic-reco-summary.md","DART: Improving Agent Reliability via Semantic Recoverability",{"provider":7,"model":8,"input_tokens":6003,"output_tokens":6004,"processing_time_ms":6005,"cost_usd":6006},4066,542,2930,0.0018295,{"type":14,"value":6008,"toc":6046},[6009,6013,6016,6020,6023,6043],[17,6010,6012],{"id":6011},"the-challenge-of-tool-execution-failure","The Challenge of Tool Execution Failure",[22,6014,6015],{},"Structured tool agents frequently encounter failures when interacting with external APIs or software environments. These failures often stem from malformed inputs, unexpected output schemas, or transient environmental errors. Traditional agents often stall or enter infinite loops when a tool call fails, as they lack a systematic mechanism to interpret the error and adjust their strategy. DART (Semantic Recoverability for Structured Tool Agents) addresses this by formalizing a recovery protocol that treats execution errors as semantic signals rather than terminal states.",[17,6017,6019],{"id":6018},"the-dart-recovery-framework","The DART Recovery Framework",[22,6021,6022],{},"Instead of relying on simple retry logic, DART implements a semantic feedback loop that enables the agent to perform three distinct actions upon encountering a tool error:",[5861,6024,6025,6031,6037],{},[29,6026,6027,6030],{},[32,6028,6029],{},"Error Interpretation:"," The agent analyzes the stack trace or error message to determine if the failure was caused by a syntax error (e.g., invalid JSON), a logical error (e.g., missing required parameters), or an environmental constraint (e.g., rate limiting).",[29,6032,6033,6036],{},[32,6034,6035],{},"State Correction:"," Based on the interpretation, the agent modifies its internal state or prompt context to rectify the specific issue. This might involve re-formatting a payload or selecting an alternative tool that achieves the same goal.",[29,6038,6039,6042],{},[32,6040,6041],{},"Semantic Re-planning:"," If the initial tool path is fundamentally blocked, the agent uses the error context to re-plan the sequence of operations, ensuring the agent remains focused on the user's high-level objective rather than getting stuck on a single failed step.",[22,6044,6045],{},"By integrating this recovery layer, DART allows agents to maintain continuity in multi-step workflows, effectively turning 'failures' into learning opportunities that refine the agent's future tool-use behavior.",{"title":115,"searchDepth":116,"depth":116,"links":6047},[6048,6049],{"id":6011,"depth":116,"text":6012},{"id":6018,"depth":116,"text":6019},[122],{"content_references":6052,"triage":6058},[6053],{"type":129,"title":6054,"author":6055,"url":6056,"context":6057},"DART: Semantic Recoverability for Structured Tool Agents","Unknown","https:\u002F\u002Farxiv.org\u002Fabs\u002F2605.23311","cited",{"relevance":138,"novelty":139,"quality":139,"actionability":139,"composite":140,"reasoning":6059},"Category: AI & LLMs. The article presents a novel framework (DART) for improving the reliability of AI agents, addressing a specific pain point of execution failures that developers face when integrating AI tools. It offers actionable insights on error interpretation and recovery strategies that can be directly applied in building more resilient AI-powered products.","\u002Fsummaries\u002F33137ecadf93a798-dart-improving-agent-reliability-via-semantic-reco-summary","2026-05-25 07:00:20",{"title":6001,"description":115},{"loc":6060},"33137ecadf93a798","summaries\u002F33137ecadf93a798-dart-improving-agent-reliability-via-semantic-reco-summary",[155,154,156],"DART (Dynamic Agent Recovery Technique) introduces a framework for structured tool agents to detect and recover from execution failures by leveraging semantic feedback loops, significantly reducing task abandonment.",[],"LYR-QOMAiYZgg-AZg-WiIBZlFpS3smqFpItOdWmmRwo"]