The Open-Source AI Stack by Alex
Referred Link - https://www.linkedin.com/feed/update/urn:li:activity:7305904274570362881/
The Open-Source AI Stack (Full Video Explanation Available at the End)
You don’t need to spend a fortune to build an AI application. The best AI developer tools are open-source, and an excellent ecosystem is evolving that can make AI accessible to everyone.
The key components of this open-source AI stack are as follows:
1 - Frontend
To build beautiful AI UIs, frameworks like NextJS and Streamlit are extremely useful. Also, Vercel can help with deployment.
2 - Embeddings and RAG libraries
Embedding models and RAG libraries like Nomic, JinaAI, Cognito, and LLMAware help developers build accurate search and RAG features.
3 - Backend and Model Access
For backend development, developers can rely on frameworks like FastAPI, Langchain, and Netflix Metaflow. Options like Ollama and Huggingface are available for model access.
4 - Data and Retrieval
For data storage and retrieval, several options like Postgres, Milvus, Weaviate, PGVector, and FAISS are available.
5 - Large-Language Models
Based on performance benchmarks, open-source models like Llama, Mistral, Qwen, Phi, and Gemma are great alternatives to proprietary LLMs like GPT and Claude.
Watch the full video here: https://lnkd.in/e-zqnuuF
Tags:
#ArtificialIntelligence, #AIDevelopment, #OpenSource
0 comments