Open-Source-Legal/OpenContracts
The open document intelligence platform for builders and hackers - DMS for the agentic world
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The Open Context Layer for Data and AI , OpenMetadata is the open platform for building trusted data context and business semantics for humans, AI assistants, and agents.
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Latest capture 2026-07-15 03:16
5 captures since 2026-05-25
Stars from baseline +465
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Frameworks, package managers, ecosystems, and dependency manifests found during catalog scans.
Scanned 2026-07-15 03:16
package.json
javascript ecosystem,
1 dependency
pom.xml
java ecosystem,
190 dependencies
yarn.lock
javascript ecosystem,
105 dependencies
common/pom.xml
java ecosystem,
14 dependencies
ingestion/pyproject.toml
python ecosystem,
1 dependency
ingestion/setup.py
python ecosystem,
0 dependencies
openmetadata-airflow-apis/pyproject.toml
python ecosystem,
9 dependencies
openmetadata-clients/pom.xml
java ecosystem,
0 dependencies
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The open document intelligence platform for builders and hackers - DMS for the agentic world
Local persistent memory store for LLM applications including claude desktop, github copilot, codex, antigravity, etc.
Ground truth layer for humans and AI agents working together. Version control for knowledge.
An Open Standard for lineage metadata collection
The Context Platform for your Data and AI Stack
TypeScript AI agent orchestration framework with dynamic workflows. Describe the goal, not the graph: a coordinator plans the task DAG at runtime and runs it on any LLM (Claude, ChatGPT, Gemini, DeepSeek, or local models).