I’m spark-submitting a python file that imports numpy but I’m getting a no module named numpy error.

$ spark-submit --py-files projects/other_requirements.egg projects/jobs/my_numpy_als.py
Traceback (most recent call last):
  File "/usr/local/www/my_numpy_als.py", line 13, in <module>
    from pyspark.mllib.recommendation import ALS
  File "/usr/lib/spark/python/pyspark/mllib/__init__.py", line 24, in <module>
    import numpy
ImportError: No module named numpy

I was thinking I would pull in an egg for numpy —python-files, but I'm having trouble figuring out how to build that egg. But then it occurred to me that pyspark itself uses numpy. It would be silly to pull in my own version of numpy.

Any idea on the appropriate thing to do here?


It looks like Spark is using a version of Python that does not have numpy installed. It could be because you are working inside a virtual environment.

Try this:

# The following is for specifying a Python version for PySpark. Here we
# use the currently calling Python version.
# This is handy for when we are using a virtualenv, for example, because
# otherwise Spark would choose the default system Python version.
os.environ['PYSPARK_PYTHON'] = sys.executable
| improve this answer | |

I got this to work by installing numpy on all the emr-nodes by configuring a small bootstrapping script that contains the following (among other things).

#!/bin/bash -xe sudo yum install python-numpy python-scipy -y

Then configure the bootstrap script to be executed when you start your cluster by adding the following option to the aws emr command (the following example gives an argument to the bootstrap script)

--bootstrap-actions Path=s3://some-bucket/keylocation/bootstrap.sh,Name=setup_dependencies,Args=[s3://some-bucket]

This can be used when setting up a cluster automatically from DataPipeline as well.

| improve this answer | |

Sometimes, when you import certain libraries, your namespace is polluted with numpy functions. Functions such as min, max and sum are especially prone to this pollution. Whenever in doubt, locate calls to these functions and replace these calls with __builtin__.sum etc. Doing so will sometimes be faster than locating the pollution source.

| improve this answer | |

Make sure your spark-env.sh has PYSPARK_PATH pointing to the correct Python release. Add export PYSPARK_PATH=/your_python_exe_path to /conf/spark-env.sh file.

| improve this answer | |

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