Comments (1)
this was flakey when I wrote the test so I brought the tolerance way way down and I guess it's still not enough. It might be good to think of a different approach for testing linalg functions with lots of numbers, because it seems like just "generate some random values and compare" is error prone for larger matrices
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Related Issues (20)
- Reshape should take each shape dimension as a separate input
- Implement more meaningful `Reshape` operation
- Should Alloc be pushed downstream of expand_dims
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from pytensor.