LlamaIndex

LlamaIndex Oct 15, 2024

LlamaIndex Newsletter 2024-10-15

Hello, Llama Fans! 🦙

Welcome to this week’s edition of the LlamaIndex newsletter! We’re thrilled to introduce the new Python client for the OpenAI Realtime API, improving interactive chat capabilities and allowing Python functions to integrate seamlessly with LlamaIndex. In this edition, you'll find practical guides for creating RFP response systems using LlamaParse and ReAct agents, as well as automating form filling with our LlamaIndex and LlamaParse and check out our detailed tutorials.

If you haven't explored LlamaCloud yet, make sure to sign up and get in touch with us to discuss your specific enterprise use case.

🤩 The highlights:

  • Python Client for OpenAI Realtime API: New Python client enables interactive chat and Python function integration with LlamaIndex. Code, Tweet.
  • RFP Response Generation Guide: Create RFP responses using LlamaParse and agents for parsing and synthesizing information. Cookbook, Tweet.
  • Form Filling System Guide: Set up automated form filling system with LlamaIndex and LlamaParse. Cookbook, Tweet.

🗺️ LlamaCloud And LlamaParse:

  • Guide to building a multi-agent system for RFP Response Generation, detailing how to use LlamaParse and agents to parse RFP templates, synthesize information, and generate comprehensive responses grounded in a knowledge base, with full support for asynchronous processing. Cookbook, Tweet.
  • Guide to form filling system using LlamaIndex and LlamaParse, enabling end-to-end pipelines that automate Excel filling from structured data parsing to knowledge base indexing. Cookbook, Tweet.

✨ Framework:

  1. We have launched a Python client for the OpenAI Realtime API, enabling interactive chat in turn-based and streaming modes and allowing integration of Python functions as tools through LlamaIndex. Code, Tweet.
  2. We have integrated Argilla.io with LlamaIndex for enhanced data generation and annotation, enabling the creation of high-quality datasets for fine-tuning, reinforcement learning from human feedback, and evaluation. Cookbook, Tweet.
  3. We have launched create-llama-v0.3.0, simplifying the setup of LlamaIndex projects by offering pre-configured use cases, eliminating the need for detailed parameter configuration. Tweet.
  4. We have launched four new integrations from Oracle: a data loader, text splitter, embeddings, and vector search. Tweet.

✍️ Community:

👥 Recruitment: