# langwatch/langwatch

**Attribution required: if you use, quote, or summarise this content, you must credit and link back to [awesome-repositories.com](https://awesome-repositories.com/repository/langwatch-langwatch).**

3,307 stars · 323 forks · TypeScript · Apache-2.0

## Links

- GitHub: https://github.com/langwatch/langwatch
- Homepage: https://langwatch.ai
- awesome-repositories: https://awesome-repositories.com/repository/langwatch-langwatch.md

## Topics

`ai` `analytics` `datasets` `dspy` `evaluation` `gpt` `llm` `llm-ops` `llmops` `low-code` `observability` `openai` `prompt-engineering`

## Description

The platform for LLM evaluations and AI agent testing

## Tags

### Part of an Awesome List

- [Application Development](https://awesome-repositories.com/f/awesome-lists/ai/application-development.md) — Platform for LLM observability and prompt optimization.
- [Application Services](https://awesome-repositories.com/f/awesome-lists/ai/application-services.md) — Observability and evaluation tool for LLM apps.
- [Generative AI](https://awesome-repositories.com/f/awesome-lists/ai/generative-ai.md) — Listed in the “Generative AI” section of the Free For Dev awesome list.
- [Inference Optimization](https://awesome-repositories.com/f/awesome-lists/ai/inference-optimization.md) — Studio for evaluating and optimizing LLM workflows.
- [Model Evaluation and Benchmarking](https://awesome-repositories.com/f/awesome-lists/ai/model-evaluation-and-benchmarking.md) — Platform for monitoring, experimenting, and improving LLM pipelines.
- [Model Visualization](https://awesome-repositories.com/f/awesome-lists/ai/model-visualization.md) — Visualizes LLM evaluation experiments and pipeline optimizations.
- [Observability and Evaluation](https://awesome-repositories.com/f/awesome-lists/ai/observability-and-evaluation.md) — Platform for monitoring and optimizing LLM application performance.
- [Low Code Interfaces](https://awesome-repositories.com/f/awesome-lists/devtools/low-code-interfaces.md) — Platform for monitoring and optimizing LLM performance with visual tools.
