aws-samples / build-intelligent-ai-voice-agents-with-pipecat-and-amazon-bedrockLinks
This repository shows you how to build real-time, voice-enabled AI agents with Pipecat and Amazon Bedrock
β32Updated last month
Alternatives and similar repositories for build-intelligent-ai-voice-agents-with-pipecat-and-amazon-bedrock
Users that are interested in build-intelligent-ai-voice-agents-with-pipecat-and-amazon-bedrock are comparing it to the libraries listed below
Sorting:
- π Extract information from your documents with Generative AIβ101Updated last week
- Vector databases for generative AIβ22Updated last year
- Labs for the "Build an agentic LLM assistant on AWS" workshop. A step by step agentic llm assistant development workshop using serverlessβ¦β72Updated 3 weeks ago
- Employee Productivity GenAI Assistant Example is an innovative code sample and architecture pattern designed to enhance writing tasks effβ¦β23Updated last month
- An agent based LLM assistant that extends RAG with batch entity extraction and SQL querying to improve performance on multi-step and analβ¦β91Updated last year
- β49Updated 5 months ago
- β54Updated last month
- β53Updated last year
- 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.β42Updated last year
- β35Updated 6 months ago
- This GitHub repository guides you through building an advanced Conversational AI assistant using AWS services and Anthropic's Claude V2 mβ¦β30Updated last year
- This repository gives sample code for using AI21 Generative AI solutions for industry applicationsβ17Updated 10 months ago
- This repository contains examples for customers to get started using Amazon Bedrock Data Automation. The samples focus mainly on documentβ¦β22Updated 3 months ago
- β28Updated last week
- This repository contains a collection of Generative AI samples and examples using AWS services and AWS partner products.β63Updated last week
- Context is Key: Combining Embedding-based Retrieval with LLMs for Comprehensive Knowledge Enrichmentβ31Updated 2 years ago
- Demonstration application showing how Neo4j works with Amazon Bedrockβ65Updated last year
- β24Updated 10 months ago
- Question Answering Generative AI application with Large Language Models (LLMs) and Amazon OpenSearch Serviceβ27Updated 11 months ago
- Prototyping Generative AI Use Cases with Amazon Bedrock and Langchainβ106Updated last week
- A full-stack serverless RAG workflow. This is thought for running PoCs, prototypes and bootstrap your MVP.β85Updated 11 months ago
- A simple Streamlit application to visualize document chunks and queries in embedding space πΊοΈπβ13Updated 6 months ago
- Code and notebooks associated with my blogpostsβ65Updated last week
- Build Generative AI applications with Langchain on AWSβ182Updated 2 years ago
- Building an AWS Solution Architect Agent with Generative AIβ42Updated 2 years ago
- β34Updated last month
- Build your first LLM powered app with Langchain and Streamlit.β81Updated last year
- Creating Amazon Bedrock agents with Streamlit Frameworkβ129Updated 8 months ago
- Learn how to Quickly build Generative AI applications with Amazon Bedrockβ87Updated last year
- β89Updated 5 months ago