@ai_explorer25: Confused by all the AI hype? These people make it easy to understand and they teach you how to actually build your own …
Summary
A curated list of X/Twitter accounts that explain AI concepts and teach how to build tools, agents, and frameworks, covering retrieval, testing, fine-tuning, and more.
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Cached at: 06/17/26, 08:03 PM
Confused by all the AI hype?
These people make it easy to understand and they teach you how to actually build your own AI tools
Agents & frameworks
@hwchase17 — LangChain founder; agents nonstop
@jerryjliu0 — LlamaIndex founder; data + agents
@ai_explorer25 — ai tools and resources
RAG & retrieval (making AI use your own data)
@jobergum — the go-to for search tradeoffs
@virattt — practical RAG on real apps
@_philschmid — clear, hands-on LLM guides
Testing & reliability
@HamelHusain — the “test it before you ship” guy
@sh_reya — evals + ML engineering
@eugeneyan — applied ML, easy to follow
Fine-tuning (training your own model)
@rasbt — LLMs from scratch
@danielhanchen — fast, cheap fine-tuning
@winglian — practical training setups
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