32

I am trying to use the multilayer perceptron from scikit-learn in python. My problem is, that the import is not working. All other modules from scikit-learn are working fine.

from sklearn.neural_network import MLPClassifier

Import Error: cannot import name MLPClassifier

I'm using the Python Environment Python64-bit 3.4 in Visual Studio 2015. I installed sklearn over the console with: conda install scikit-learn I also installed numpy and pandas. After I had the error above I also installed scikit-neuralnetwork with: pip install scikit-neuralnetwork The installed scikit-learn version is 0.17.

What have I done wrong? Am I missing an installation?

----- EDIT ----

In addition to the answer of tttthomasssss, I found the solution on how to install the sknn library for neuronal networks. I followed this tutorial. Do the following steps:

  • pip install scikit-neuralnetwork
  • download and install the GCC compiler
  • install mingw with conda install mingw libpython

You can use the sknn library after.

33

MLPClassifier is not yet available in scikit-learn v0.17 (as of 1 Dec 2015). If you really want to use it you could clone 0.18dev (however, I don't know how stable this branch currently is).

3
6

from shell/ terminal

conda update scikit-learn
5

I arrived here with the v0.17 problem too. I found a solution using pip here, namely

    pip install git+https://github.com/scikit-learn/scikit-learn.git

I had to execute pip install cython first though.

However, that installs 0.19.dev0 (currently), but pip list indicates that the latest is 0.18rc2. Rather

    pip install scikit-learn==0.18.rc2

resolved the issue more satisfactorily.

1
apt-get update; \
apt-get install -y python python-pip \
                    python-numpy \
                    python-scipy \
                    build-essential \
                    python-dev \
                    python-setuptools \
                    libatlas-dev \
                    libatlas3gf-base

update-alternatives --set libblas.so.3 /usr/lib/atlas-base/atlas/libblas.so.3; update-alternatives --set liblapack.so.3 /usr/lib/atlas-base/atlas/liblapack.so.3

pip install -U scikit-learn

I have imported MLPClassifier from sklearn.neural_network and it does seem to work.

You could also handle this issues by using docker images. This allows any developer to recreate the environment in any server within a single minute. You can pull the image from here

This can also be performed very easily using the datmo-cli tool. We faced these problems ourselves and decided to build it.

You could also solve this with one click using Datmo Disclaimer: I work at Datmo

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.