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- acaccfdedc90ecbd9cb35c71f09f70aa2916fdce
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Tip revision: acaccfdedc90ecbd9cb35c71f09f70aa2916fdce authored by polaschwoebel on 23 June 2020, 10:52:20 UTC
updated models.gpr docstring (#1511)
updated models.gpr docstring (#1511)
Tip revision: acaccfd
tests_requirements.txt
mypy
black==20.8b1
isort>=5.1
pytest>=3.5.0
pytest-cov
pytest-random-order
pytest-xdist # for local tests only
codecov
types-pkg_resources # for mypy check of gpflow/versions.py
# Notebook tests:
tensorflow-datasets
nbformat
nbconvert
ipykernel
jupyter_client
jupytext
matplotlib
sklearn # for mixture-density-network notebook
ipywidgets # Required by tensorflow-datasets