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TFFold does not install on Tensorflow 1.0

Open shivajid opened this issue 7 years ago • 5 comments

TFFold does not install on Tensorflow 1.0 instead it needs the rc0 mentioned here. I have TF 1.0 and it did not install. It said it is not supported for the environment.

shivajid avatar Mar 06 '17 06:03 shivajid

Thanks for letting us know. Would you mind pasting in the full trace?

On Sun, Mar 5, 2017 at 10:19 PM, Shivaji Dutta [email protected] wrote:

TFFold does not install on Tensorflow 1.0 instead it needs the rc0 mentioned here. I have TF 1.0 and it did not install. It said it is not supported for the environment.

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moshelooks avatar Mar 06 '17 16:03 moshelooks

I installed the tensorflow 1.0.1 version, then install the fold library. Installation was completed without fuss. But when I tried to run the fold code, my ipython says 'dead kernel...' I found that when I downgraded the tensorflow to version 1.0, no problem occurs.

arwhirang avatar Mar 18 '17 15:03 arwhirang

@moshelooks - I have gone past the error, so i cannot give the details. It gave me a warning that the tffold is not compatible.

shivajid avatar Mar 19 '17 11:03 shivajid

I had the same issue as @arwhirang with dying notebooks. In TensorFlow v1.0.1 there is a segmentation fault somewhere in the software stack that goes away when downgrading and using TF v1.0.0.

oychang avatar Mar 27 '17 18:03 oychang

Because TensorFlow does not have a stable ABI you should to run Fold with exactly the same version of TensorFlow that Fold was compiled against or segfaults will happen. There's no way to mix and match different versions.

On Mon, Mar 27, 2017 at 11:59 AM, Oliver Chang [email protected] wrote:

I had the same issue as @arwhirang https://github.com/arwhirang with dying notebooks. In TensorFlow v1.0.1 there is a segmentation fault somewhere in the software stack that goes away when downgrading and using TF v1.0.0.

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moshelooks avatar Mar 29 '17 15:03 moshelooks