Weaviate 1.23 Release

📰 Weaviate Blog

Weaviate 1.23 introduces AutoPQ, flat indexing, Binary Quantization, and OSS LLM support

intermediate Published 19 Dec 2023
Action Steps
  1. Explore Weaviate 1.23 features
  2. Implement AutoPQ for efficient data retrieval
  3. Utilize flat indexing and Binary Quantization for improved performance
  4. Integrate OSS LLM support through Anyscale
Who Needs to Know This

Data scientists and software engineers on a team can benefit from this release as it provides new features for efficient data indexing and support for open-source large language models, enhancing their workflow and productivity

Key Insight

💡 Weaviate 1.23 enhances data indexing and retrieval with new features and supports open-source large language models

Share This
🚀 Weaviate 1.23 is out! AutoPQ, flat indexing & Binary Quantization boost performance

Key Takeaways

Weaviate 1.23 introduces AutoPQ, flat indexing, Binary Quantization, and OSS LLM support

Full Article

Weaviate 1.23 released with AutoPQ, flat indexing + Binary Quantization, OSS LLM support through Anyscale, and more!
Read full article → ← Back to Reads

Related Videos

5 Levels of AI Agents - From Simple LLM Calls to Multi-Agent Systems
5 Levels of AI Agents - From Simple LLM Calls to Multi-Agent Systems
Dave Ebbelaar (LLM Eng)
How ChatGPT Works in the Backend | Step-by-Step AI Architecture Explained
How ChatGPT Works in the Backend | Step-by-Step AI Architecture Explained
Pavithra’s Podcast
Exploring NotebookLM in Unexpected Ways 🤯 | Hidden AI Use Cases You Should Try
Exploring NotebookLM in Unexpected Ways 🤯 | Hidden AI Use Cases You Should Try
Pavithra’s Podcast
CLI vs API vs MCP Explained | Key Differences for AI Engineers
CLI vs API vs MCP Explained | Key Differences for AI Engineers
Pavithra’s Podcast
How I Build Classification Models Using LLMs | Modern AI Workflow
How I Build Classification Models Using LLMs | Modern AI Workflow
Pavithra’s Podcast
LLM Wiki vs RAG Explained | Complete LLM Wiki Implementation Guide
LLM Wiki vs RAG Explained | Complete LLM Wiki Implementation Guide
Pavithra’s Podcast