DataDog / dd-trace-py
Datadog Python APM Client
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Repository Overview (README excerpt)
Crawler viewThis library powers Distributed Tracing, Continuous Profiling, Error Tracking, Test Optimization, Deployment Tracking, Code Hotspots, Dynamic Instrumentation, and more. To get started with tracing, check out the [product documentation][setup docs] or the [glossary][visualization docs]. For advanced usage and configuration information, check out the [library documentation][api docs]. To get started as a contributor, see the contributing docs first. For information about the bug/security fix and maintenance policy, see the [versioning docs][versioning docs]. [setup docs]: https://docs.datadoghq.com/tracing/setup/python/ [api docs]: https://ddtrace.readthedocs.io/ [visualization docs]: https://docs.datadoghq.com/tracing/visualization/ [versioning docs]: https://github.com/DataDog/dd-trace-py/blob/main/docs/versioning.rst#release-support