v0.88.0
0.88.0 (2026-04-01) Full Changelog: v0.87.0...v0.88.0 Features api: add structured stop_details to message responses ( fd82d6b ) bedrock api key auth ( #1623 ) ( a95a3fc ) prepare aws package ( #1615 ) ( 6875fab ) Chores tests: bump steady to v0.20.2 ( 1bc4e9f )
0.88.0 (2026-04-01)
Full Changelog: v0.87.0...v0.88.0
Features
-
api: add structured stop_details to message responses (fd82d6b)
-
bedrock api key auth (#1623) (a95a3fc)
-
prepare aws package (#1615) (6875fab)
Chores
- tests: bump steady to v0.20.2 (1bc4e9f)
Anthropic SDK Releases
https://github.com/anthropics/anthropic-sdk-python/releases/tag/v0.88.0Sign in to highlight and annotate this article

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