msal

PyPI v1.36.0

39,371,856 weekly downloads · MIT · 3 Dependencies

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Summary

The Microsoft Authentication Library (MSAL) for Python library enables your app to access the Microsoft Cloud by supporting authentication of users with Microsoft Azure Active Directory accounts (AAD) and Microsoft Accounts (MSA) using industry standard OAuth2 and OpenID Connect.

Install pip install msal

Registry values

Reproduced verbatim from the official registry, with the source named on each value.

Weekly downloads 39,371,856 Source: PyPI (Python Package Index)
Releases 70 Last release: 2026-04-09 Source: PyPI (Python Package Index)
Dependencies 3 Source: PyPI (Python Package Index)

Description

The Microsoft Authentication Library (MSAL) for Python library enables your app to access the Microsoft Cloud by supporting authentication of users with Microsoft Azure Active Directory accounts (AAD) and Microsoft Accounts (MSA) using industry standard OAuth2 and OpenID Connect.

Registry-supplied description, cleaned to plain text. Source: PyPI (Python Package Index).

Package details

Package
msal
Registry
PyPI
Version
1.36.0
Weekly downloads
39,371,856 (weekly)
License
MIT
Dependencies
3: requests, PyJWT, cryptography
Releases
70
Last release
2026-04-09
First published
2018-12-12
Homepage
https://github.com/AzureAD/microsoft-authentication-library-for-python
Repository
https://github.com/AzureAD/microsoft-authentication-library-for-python

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Derived indices (computation method published)

Quanteta-computed from the registry values below. This is a derived index, not a measured registry metric. See the formula on the Data & Sources page.

Q-Vitality Quanteta 78.8 / 100 Maintenance activity index (release cadence + download level).
Q-Trust Quanteta 10.0 / 100 Adoption / stability index (community size + download stability + age).
Q-Risk Quanteta 31.4 / 100 Dependency-surface index. Higher = more risk factors detected.

Data & Sources