Comments (6)
@Saduf2019 ,
I was able to reproduce the issue in tf v2.6.0-rc0, v2.6 and nightly and whereas with TF v2.5 code executed without error.
from decision-forests.
This is an issue in decision forests, not TF. There is a need to do a release against the newly released TF due to ABI issues.
from decision-forests.
Thanks for reporting @lukebor . We are aware of the issue and working on the ABI issues to prepare the new release of TF-DF for TF 2.6.
from decision-forests.
Just an update: we have a wheel working for TF 2.6. Fixing some minor things, and we will likely upload it to MyPI early next week.
from decision-forests.
We have released a version of TF-DF compatible with TF 2.6, see https://github.com/tensorflow/decision-forests/releases/tag/0.1.9rc1 -- unfortunately we are still testing this release and will upload it to PyPi soon. In the meantime, if you urgently need the fix, please install the wheels manually.
We will close this issue when the latest version on PyPi is TF 2.6 compatible.
from decision-forests.
The v0.1.9 was released. It is compatible with TF2.6.
from decision-forests.
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from decision-forests.