aws-samples / build-an-agentic-llm-assistant
Labs for the "Build an agentic LLM assistant on AWS" workshop. A step by step agentic llm assistant development workshop using serverless three-tier architecture.
☆62Updated last month
Alternatives and similar repositories for build-an-agentic-llm-assistant:
Users that are interested in build-an-agentic-llm-assistant are comparing it to the libraries listed below
- ☆50Updated last week
- Creating Amazon Bedrock agents with Streamlit Framework☆110Updated 2 months ago
- This repository is intended for those looking to dive deep on advanced Text-to-SQL concepts.☆112Updated 2 months ago
- ☆26Updated 3 weeks ago
- Use natural language to Generate Amazon Athena SQL queries to fetch data.☆74Updated 5 months ago
- Learn how to Quickly build Generative AI applications with Amazon Bedrock☆86Updated last year
- Learn how to quickly build Agents with Amazon Bedrock☆86Updated last year
- Generative AI on AWS Immersion Day☆49Updated 2 months ago
- An agent based LLM assistant that extends RAG with batch entity extraction and SQL querying to improve performance on multi-step and anal…☆81Updated 10 months ago
- Repository for training and deploying Generative AI models, including text-text, text-to-image generation and prompt engineering playgrou…☆145Updated this week
- Workshop Studio☆153Updated last year
- Explore sample applications and tutorials demonstrating the prowess of Amazon Bedrock with Python. Learn to integrate Bedrock with databa…☆139Updated last month
- AWS Generative AI Conversational RAG Reference (Galileo)☆74Updated 2 weeks ago
- Bedrock Knowledge Base and Agents for Retrieval Augmented Generation (RAG)☆59Updated last year
- Generative AI Application Builder on AWS facilitates the development, rapid experimentation, and deployment of generative artificial inte…☆222Updated 2 weeks ago
- ☆55Updated last week
- Mistral on AWS examples for Bedrock & SageMaker☆66Updated last week
- ☆17Updated last year
- How to build an advanced RAG router based assistant with Amazon Bedrock using LLMs, Embeddings model, and Knowledge Bases for Amazon Bedr…☆17Updated 4 months ago
- Fully managed RAG solution implemented using Knowledge Bases for Amazon Bedrock☆125Updated last week
- ☆50Updated 11 months ago
- Leverage pgvector and Amazon Aurora PostgreSQL for Natural Language Processing, Chatbots and Sentiment Analysis☆60Updated last week
- Advanced RAG patterns on Amazon SageMaker☆14Updated 10 months ago
- ☆81Updated last year
- ☆80Updated last week
- ☆23Updated 4 months ago
- Learn to build custom prompts and tools for LangChain agents☆35Updated last year
- ☆23Updated 6 months ago
- aws-solutions-library-samples / guidance-for-conversational-chatbots-using-retrieval-augmented-generation-on-awsThis Guidance demonstrates how to combine Retrieval Augmented Generation (RAG) with AWS services to build generative AI applications.☆40Updated 6 months ago
- A full-stack serverless RAG workflow. This is thought for running PoCs, prototypes and bootstrap your MVP.☆70Updated 5 months ago