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Summary
Fixed a ValueError in keras.ops.quantile when running under TensorFlow graph execution (@tf.function).
The issue was caused by passing a collections.deque object as the perm argument to tf.transpose.

Fix
Fixes #21781
Convert perm to a list before passing it to TensorFlow:
result = tf.transpose(result, perm=list(perm))

Test
Added a regression test verifying correct behavior under tf.function.
CC: @keras-team

deque bug and add regression test
@google-cla
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google-cla bot commented Oct 26, 2025

Thanks for your pull request! It looks like this may be your first contribution to a Google open source project. Before we can look at your pull request, you'll need to sign a Contributor License Agreement (CLA).

View this failed invocation of the CLA check for more information.

For the most up to date status, view the checks section at the bottom of the pull request.

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Summary of Changes

Hello @Junead04, I'm Gemini Code Assist1! I'm currently reviewing this pull request and will post my feedback shortly. In the meantime, here's a summary to help you and other reviewers quickly get up to speed!

This pull request resolves a critical bug affecting the keras.ops.quantile function when used within TensorFlow's graph execution mode (@tf.function). The issue stemmed from an incompatibility between tf.transpose and collections.deque objects. The fix ensures proper operation by explicitly converting the permutation argument to a list, and a new test case has been introduced to prevent future regressions.

Highlights

  • Bug Fix: Addresses a ValueError that occurred in keras.ops.quantile when executed within a TensorFlow graph (@tf.function).
  • Root Cause: The error was caused by passing a collections.deque object as the perm argument to tf.transpose, which is not supported in TensorFlow's graph execution mode.
  • Solution: The perm argument is now explicitly converted to a standard Python list before being passed to tf.transpose, resolving the compatibility issue.
  • Testing: A new regression test, test_quantile_graph_mode, has been added to verify the correct behavior of keras.ops.quantile when running under tf.function.
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Code Review

This pull request addresses a ValueError in keras.ops.quantile when used within a @tf.function in TensorFlow. The fix correctly converts a collections.deque object to a list before passing it to tf.transpose, which resolves the graph execution issue. A new regression test is also added to ensure this behavior is correct and prevent future regressions. The changes are accurate and well-tested. The pull request is well-structured and ready to be merged.

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codecov-commenter commented Oct 26, 2025

Codecov Report

✅ All modified and coverable lines are covered by tests.
✅ Project coverage is 79.38%. Comparing base (c2bc6cf) to head (8c02193).

Additional details and impacted files
@@            Coverage Diff             @@
##           master   #21784      +/-   ##
==========================================
- Coverage   82.63%   79.38%   -3.26%     
==========================================
  Files         577      577              
  Lines       59316    59316              
  Branches     9300     9300              
==========================================
- Hits        49018    47087    -1931     
- Misses       7910     9944    +2034     
+ Partials     2388     2285     -103     
Flag Coverage Δ
keras 79.21% <100.00%> (-3.25%) ⬇️
keras-jax 63.32% <0.00%> (ø)
keras-numpy 57.55% <0.00%> (ø)
keras-openvino ?
keras-tensorflow 64.11% <100.00%> (ø)
keras-torch 63.62% <0.00%> (ø)

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📢 Have feedback on the report? Share it here.

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@keerthanakadiri
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Hi @Junead04, Can you please sign the CLA? Thank you!

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@hertschuh hertschuh left a comment

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Thanks for the fix!

import tensorflow as tf
from keras import ops

def test_quantile_graph_mode():
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This test already exists:

def test_quantile_in_tf_function(self):

Can you remove this file and modify the existing test to cover the case that was not working?

@hertschuh
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You'll also need to accept the CLA.

@Junead04
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Okk I will sign into the CLA.This is my first contribution so I don't know about this.Thank you for guiding me @keerthanakadiri @hertschuh

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Bug in keras.ops.quantile when running with tensorflow graph execution (tf.function)

5 participants