curiousily/AI-Bootcamp
Self-paced bootcamp on Generative AI. Tutorials on ML fundamentals, Ollama, LLMs, RAGs, LangChain, LangGraph, Fine-tuning, DSPy & AI Agents (CrewAI), (Using ChatGPT, gpt-oss, Claude, Qwen, Gemma, Llama, Gemini)
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🐫 CAMEL: The first and the best multi-agent framework. Finding the Scaling Law of Agents. https://www.camel-ai.org
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Latest capture 2026-07-15 03:06
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pyproject.toml
python ecosystem,
172 dependencies
uv.lock
python ecosystem,
0 dependencies
apps/dilemma/requirements.txt
python ecosystem,
2 dependencies
camel/benchmarks/mock_website/requirements.txt
python ecosystem,
3 dependencies
examples/usecases/airbnb_mcp/requirements.txt
python ecosystem,
3 dependencies
examples/usecases/chat_with_github/requirements.txt
python ecosystem,
3 dependencies
examples/usecases/chat_with_youtube/requirements.txt
python ecosystem,
3 dependencies
examples/usecases/cloudfare_mcp_camel/requirements.txt
python ecosystem,
3 dependencies
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Self-paced bootcamp on Generative AI. Tutorials on ML fundamentals, Ollama, LLMs, RAGs, LangChain, LangGraph, Fine-tuning, DSPy & AI Agents (CrewAI), (Using ChatGPT, gpt-oss, Claude, Qwen, Gemma, Llama, Gemini)
PraisonAI 🦞 — Hire a 24/7 AI Workforce. Stop writing boilerplate and start shipping autonomous self-improving agents that research, plan, code, and execute tasks. Deployed in 5 lines of code with built-in memory, RAG, and support for 100+ LLMs.
A simple yet powerful agent framework that delivers with open-source models
Official Implementation of "O-Researcher: An Open Ended Deep Research Model via Multi-Agent Distillation and Agentic RL"
Python SDK for AI agent monitoring, LLM cost tracking, benchmarking, and more. Integrates with most LLMs and agent frameworks including CrewAI, Agno, OpenAI Agents SDK, Langchain, Autogen, AG2, and CamelAI
Build, run and scale AI agents like API and microservices - observable,auditable and identity-aware from day one.