106

Getting the error message when using matplotlib:

Error #15: Initializing libiomp5.dylib, but found libiomp5.dylib already initialized OMP: Hint: This means that multiple copies of the OpenMP runtime have been linked into the program. That is dangerous, since it can degrade performance or cause incorrect results. The best thing to do is to ensure that only a single OpenMP runtime is linked into the process, e.g. by avoiding static linking of the OpenMP runtime in any library. As an unsafe, unsupported, undocumented workaround you can set the environment variable KMP_DUPLICATE_LIB_OK=TRUE to allow the program to continue to execute, but that may cause crashes or silently produce incorrect results. For more information, please see http://www.intel.com/software/products/support/.

6

16 Answers 16

98

Do the following to solve the issue:

import os

os.environ['KMP_DUPLICATE_LIB_OK']='True'

Answer found at: https://github.com/dmlc/xgboost/issues/1715

Be aware of potential side-effects:

but that may cause crashes or silently produce incorrect results.

6
  • 30
    Is there any evidence that doing this on MacOS somehow avoids "silently produc[ing] incorrect results", as the OpenMP devs imply it might?
    – merv
    Jan 20, 2019 at 5:13
  • 6
    This is rather a workaround than a solution and can lead to serious problems. The conda version of tensorflow is broken for macOS. Remove it and reinstall it directly with pip install tensorflow.
    – adroste
    Jun 5, 2020 at 21:02
  • 5
    Definitely not isolated to Macs... I experience this on my windows 10 machine. Nov 12, 2020 at 15:54
  • 1
    @adroste can you expand on what kind of "serious" problems? This was vaguely mentioned on the error logs but I am not exactly sure what it means. Sep 20, 2022 at 0:22
  • can this problem be solved by updating pytorch? Oct 13, 2022 at 18:21
74

This is a better solution, if applicable. Else, anyway gcamargo’s solution is likely to work. However, it comes with a warning "that it may cause crashes or silently produce incorrect results"

I had the same error on my Mac with a python program using numpy, keras, and matplotlib. I solved it with

conda install nomkl

Answer found at: https://github.com/dmlc/xgboost/issues/1715

4
  • a clean lifesaver on MacOS Catalina
    – vwvan
    Jun 10, 2020 at 18:42
  • It worked for me on win 11, but this didn't : os.environ['KMP_DUPLICATE_LIB_OK']='True'
    – zgormez
    Jan 31, 2022 at 16:17
  • can this problem be solved by updating pytorch? Oct 13, 2022 at 18:21
  • pytorch has conflicts with this package, so if your issues are coming from pytorch this may not work.
    – jtb
    Nov 10, 2022 at 19:44
64

I had the same issue on macOS and found the following reasons:

Problem:

I had a conda environment where Numpy, SciPy and TensorFlow were installed.

Conda is using Intel(R) MKL Optimizations, see docs:

Anaconda has packaged MKL-powered binary versions of some of the most popular numerical/scientific Python libraries into MKL Optimizations for improved performance.

The Intel MKL functions (e.g. FFT, LAPACK, BLAS) are threaded with the OpenMP technology.

But on macOS you do not need MKL, because the Accelerate Framework comes with its own optimization algorithms and already uses OpenMP. That is the reason for the error message: OMP Error #15: ...

Workaround:

You should install all packages without MKL support:

conda install nomkl

and then use

conda install numpy scipy pandas tensorflow

followed by

conda remove mkl mkl-service

For more information see conda MKL Optimizations.

7
  • 2
    If you can't install nomkl because of UnsatisfiableError: The following specifications..., you have to uninstall all of these specifications first. A quick solution which uninstalls all of the currently installed packages conda install --revision 0. Then proceed with J.E.K's answer.
    – David
    Nov 26, 2019 at 19:50
  • This was really helpful to me. I had tried everything prior to this! Thank you!
    – Lisa Clark
    Feb 19, 2020 at 19:35
  • 2
    Thank you for this answer, this should be the most upvoted question in the chat because it solves the problem properly and performances are not impacted.
    – Nibor Ndj
    Mar 20, 2020 at 22:47
  • This fixed my issue with the spacyr package for R as well. Rather than letting spacyr create a conda environment and install spacy from R, I had to first create a fresh spacy environment in conda, then install nomkl, then spacy and finally point spacyr at that environment.
    – thimic
    Apr 8, 2020 at 10:10
  • 1
    Worked for me without conda remove mkl mkl-service. This last command removes a bunch of packages like numpy, etc. I found that I can just omit that step. Thanks!
    – Namgyu Ho
    Jul 18, 2022 at 6:35
11

I had the same issue in a conda environment where TensorFlow was installed. After doing

  • pip uninstall tensorflow
  • pip install tensorflow

the problem was gone.

4
  • 3
    I had the same problem but with PyTorch... following this idea solved my problem. Thanks. Oct 4, 2020 at 16:21
  • reinstall pytorch doesn't solve my problem
    – Rafael
    Dec 5, 2020 at 18:27
  • same problem with pytorch, but surprisingly uninstalling and installing tensorflow solved the problem.
    – Rm4n
    Jun 26, 2021 at 15:46
  • can this problem be solved by updating pytorch? Oct 13, 2022 at 18:23
10

For me, this problem came up when I imported pytorch after numpy. Importing them in this order fixed my problem:

import torch
import numpy as np
1
  • install the pytorch from their channel: conda install pytorch torchvision torchaudio -c pytorch Nov 12, 2022 at 9:41
5

Had same issue in OSX when updating tensoflow to 1.13 using conda.

  • Solution 1: /gcamargo worked but 3x slower per training epoch.
  • Solution 2: /sjcoding worked and removed serious warining but also 3x slower in training.
  • Solution 3: that restored performance was: Install pip in new conda env and use pip to install tensorflow. Using conda-forge also worked but version of tf is old.

Apparently the new Intel-MKL optimizations in Anaconda are broken for OSX tensorflow.

6
  • after conda remove tensorflow and pip install tensorflow, conda install keras wanted to reinstall the conda version of tensorflow. Did you use pip to install anything that needed tensorflow to avoid getting the conda version?
    – dgrogan
    May 15, 2019 at 1:56
  • I get this when using pip instead of conda: "Your CPU supports instructions that this TensorFlow binary was not compiled to use: AVX2 FMA". It seems to have fixed the problem too.
    – targetXING
    Dec 1, 2019 at 4:47
  • 1
    For me installing TensorFlow with conda-forge does not solve the issue
    – R. Yang
    Apr 22, 2020 at 2:44
  • This is the right answer. Conda installs a broken tensorflow version. Just use pip to install it.
    – adroste
    Jun 5, 2020 at 21:01
  • Yep using pip3 uninstall tensorflow and pip3 install tensorflow did the trick.
    – strivn
    Jun 27, 2020 at 15:38
2

Check if there's an update for the mkl package in your env (anaconda).

I was able to solve my case simply by updating mkl.

conda install -c intel mkl

(macOS Catalina 10.15.5)

2

I am using Macbook M1 and I faced the same issue. I solved this problem after removing the mkl package from my conda environment using the following command:

conda remove mkl

This issue happens because mkl is developed for Intel users and many of my packages were comming from mkl. After you remove this package, you will be required to reinstall many packages that you use through mkl. Also, in my case, when I tried to install pandas afterwards, there was a dependency issue. I solved this issue as well after updating all conda packages using the following command:

conda update --all

A useful link that helped me figure this out:

1

So, for those of you getting this same issue with lightgbm, I found in the documentation that you can

  1. pip uninstall lightgbm
  2. pip install lightgbm
  3. Run the following in anaconda environmnet (if you're running Conda)
ln -sf `ls -d "$(brew --cellar libomp)"/*/lib`/* $CONDA_PREFIX/lib

These three things worked for me.

1

Try to change the backend of matplotlib.

For example, Tkagg backend causes this problem in my case. I changed it to Qt5Agg

matplotlib.use('Qt5Agg') 

and it helps.

1

Confronted with the same error #15, none of the solutions to-date (5 Feb 2021) fully worked despite being helpful. However, I did manage to solve it while avoiding: dithering with dylib libraries, installing from source, or setting the environment variable KMP_DUPLICATE_LIB_OK=TRUE and its downsides of being an “unsafe, unsupported, undocumented workaround” and its potential “crashes or silently produce incorrect results”.

The trouble was that conda wasn’t picking up the non-mkl builds of tensorflow (v2.0.0) despite loading the nomkl package. What finally made this solution work was to:

  • ensure I was loading packages from the defaults channel (ie. from a channel with a non-mkl version of tensorflow. As of 5 Feb 2021, conda-forge does not have a tensorflow version of 2.0 or greater).
  • specify the precise build of the tensorflow version I wanted: tensorflow>=2.*=eigen_py37h153756e_0. Without this, conda kept loading the mkl_... version of the package despite the nomkl package also being loaded.

I created a conda environment using the following environment.yml file (as per the conda documentation for managing environments) :

name: tf_nomkl
channels:
  - conda-forge
  - defaults
dependencies:
  - nomkl
  - python>=3.7
  - numpy
  - scipy
  - pandas
  - jupyter
  - jupyterlab
  - nb_conda
  - nb_conda_kernels
  - ipykernel
  - pathlib
  - matplotlib
  - seaborn
  - tensorflow>=2.*=eigen_py37h153756e_0

You could try to do the same without an environment.yml file, but it’s better to load all the packages you want in an environment in one go if you can. This solution works on MacOS Big Sur v11.1.

0

conda install --revision 0 doesn't solve UnsatisfiableError: The following specifications... for me. So I manually install nomkl and remove mkl and mil-service in Anaconda-Navigator environment, and it works great for me!

0

I was getting the same error as mentioned in the original question when I ran a code with Tensorflow on my macOS Monterey. I tried installing nomkl and removing mkl as suggested in many of the previous answers. However this gave me trouble on running readcsv module of pandas and many other modules from different packages. A friend told me that newer versions of macOS have trouble with the usual Tensorflow and therefore pypi has launched a special version of TF called tf-nightly.

https://pypi.org/project/tf-nightly/#description

This installation solved the problem for me.

0

I had the same problem. Nothing you suggested solved the issue. I found that a possible cause is that you have multiple OpenMP libraries installed on your machine and they conflict with each other. Plus, I found that the problem was numpy and I did the upgrade (conda update numpy) and FINALLY IT WORKED!!!

0

I have Windows 10, and experienced this issue when trying to use easyocr. After a couple evenings I figured out the issue was that I somehow didn't have numpy installed. That led me to a different error where I needed to reinstall torchvision.

After that, it works great.

0

I had the same error on my Mac. I tried setting KMP_DUPLICATE_LIB_OK to True using: os.environ['KMP_DUPLICATE_LIB_OK']='True'

but it didn't work for me!

I was able to solve it by running this command:

conda install nomkl

If you're using Anaconda. Open it and go to Environments, choose your environment and select open terminal then run the command.

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