The goal of CLAIMED is to enable low-code/no-code rapid prototyping
LLM application development framework for Go with agents and flows
SQL-native memory layer enabling persistent context for AI agents
Rust native ready-to-use NLP pipelines and transformer-based models
Jupyter notebook tutorials for OpenVINO
HeavyDB (formerly MapD/OmniSciDB)
The fastest way to build data pipelines
Netflix’s Workflow Orchestrator
Faster and easier training and deployments
Python HTTP client with TLS and HTTP/2 fingerprint emulation support
Running large language models on a single GPU
HivisionIDPhotos: a lightweight and efficient AI ID photos tools
The open source post-building layer for agents
Agent framework that enables tool-use agent tasks
A @ClickHouse fork that supports high-performance vector search
An orchestration framework for agentic AI and LLM applications
Evaluate your LLM's response with Prometheus and GPT4
Alibaba's high-performance LLM inference engine for diverse apps
Fetch source code for npm packages
A large-scale model of medical consultation in Chinese
On the Structural Pruning of Large Language Models
SQL-Driven RAG Engine
Uncertainty Quantification for Language Models, is a Python package
Hypernetworks that adapt LLMs for specific benchmark tasks
MemoryOS is designed to provide a memory operating system