#llms have made massive progress, but #enterpriseai projects still come down to #data #shorts
Published 4 months ago • 129 plays • Length 0:40Download video MP4
Download video MP3
Similar videos
-
0:25
#llm systems: #rag is just a special case of an #ai system. #enterpriseai #shorts
-
0:26
llm customization made easier with synthetic data sets for specialized domains #shorts
-
0:49
what's the biggest impact of enterprise ai systems this year? snorkel ai ceo: "zero to one" #shorts
-
0:23
document intelligence: #llm #prompting is a great start, but then what? turn to snorkel ai #shorts
-
21:42
rag optimization: a practical overview for improving retrieval augmented generation
-
51:20
revolutionizing data analysis: combining llm, rag, and domain knowledge
-
6:18
4 ways to align llms: rlhf, dpo, kto, and orpo
-
0:42
the secret ingredient to #llms: reinforcement learning with human feedback (#rlhf) #shorts
-
0:36
the llm application iteration loop within snorkel flow #shorts
-
4:58
how to add/remove/manage foundation models (fms) and large language models (llms) in snorkel flow
-
5:34
how large language models work
-
23:22
the art of data development for llms
-
16:49
better not bigger: distilling llms into specialized models
-
0:17
what does #datacentricai mean to #ai development workflows? focus on data, over algorithms. #shorts
-
0:27
a 64-point accuracy boost on an #enterpriseai application? what had the biggest impact? #shorts
-
3:55
build better llms through data slicing
-
0:52
will gemini or similar llms with long context windows make rag obsolete? no. 🤔 #shorts
-
3:18
the iterative llm development loop in snorkel flow