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{{Commands|prompt=(env_gurobi) [name@server ~] $ | {{Commands|prompt=(env_gurobi) [name@server ~] $ | ||
| wget https:// | | wget https://raw.githubusercontent.com/ComputeCanada/wheels_builder/main/unmanylinuxize.sh | ||
| chmod u+rx unmanylinuxize.sh | | chmod u+rx unmanylinuxize.sh | ||
| ./unmanylinuxize.sh --package gurobipy --version 11.0.1 --url | | ./unmanylinuxize.sh --package gurobipy --version 11.0.1 --url |
Revision as of 17:03, 9 May 2024
Gurobi is a commercial software suite for solving complex optimization problems. This wiki page describes the non-commercial use of Gurobi software on our clusters.
License Limitations
We support and provide a free license to use Gurobi on the Graham, Cedar, Béluga and Niagara clusters. The license provides a total number of 4096 simultaneous uses (tokens in use) and permits distributed optimization with up to 100 nodes. A single user can run multiple simultaneous jobs. In order to use Gurobi you must agree to certain conditions. Please contact support and include a copy of the following completed Academic Usage Agreement. You will then be added into our license file as a permitted user within a few days.
Academic Usage Agreement
My Alliance username is "_______" and I am a member of the academic institution "_____________________". This message confirms that I will only use the Gurobi license provided on Digital Research Alliance of Canada systems for the purpose of non-commercial research project(s) to be published in publicly available article(s).
Configuring your account
You do NOT need to create a ~/.licenses/gurobi.lic
file. The required settings to use our Gurobi license are configured by default when you load a Gurobi module on any cluster. To verify your username has been added to our Gurobi license and is working properly, run the following command:
$ module load gurobi $ gurobi_cl 1> /dev/null && echo Success || echo Fail
If it returns "Success" you can begin using Gurobi immediately. If the test returns "Fail" then check whether a file named ~/.license/gurobi exists; if so, rename or remove this file, reload the module and try the test again. If it still returns "Fail", check whether there are any environment variables containing GUROBI defined in either of our your ~/.bashrc or ~/.bash_profile files. If you find any, comment or remove those lines, log out and log in again, reload the Gurobi module and try the test again. If you still get "Fail", contact contact support for help.
Minimizing License Checkouts
Note that all Gurobi license checkouts are handled by a single license server located in Ontario; it is therefore important for you to make sure that your use of Gurobi limits as much as possible license checkout attempts. Rather than checking out a license for each invocation of Gurobi in a job--which may occur dozens or even hundreds of times--you should ensure that your program, whatever the language or computing environment used, only makes a single license checkout and then reuses this license token throughout the lifetime of the job. This will improve your job's performance since contacting a remote license server is very costly in time and will also improve the responsiveness of our license server for everyone who is using Gurobi. Failure to use Gurobi carefully in this regard may ultimately result in random intermittent license checkout failures for all users. If this happens, you will be contacted and asked to kill all your jobs until your program is fixed and tested to ensure the problem is gone. Some documentation on this subject for C++ programs may be found here, explaining how to create a single Gurobi environment which can then be used for all your models. Python users can consult this page, which discusses how to implement this same idea of using a single environment and thus a single license token with multiple models. Other programs when run in parallel that call Gurobi such as R can also easily trigger the problem especially when many simultaneous jobs are submitted and/or run in parallel.
Interactive Allocations
Gurobi Command-Line Tools
[gra-login2:~] salloc --time=1:00:0 --cpus-per-task=8 --mem=1G --account=def-xyz [gra800:~] module load gurobi [gra800:~] gurobi_cl Record=1 Threads=8 Method=2 ResultFile=p0033.sol LogFile=p0033.log $GUROBI_HOME/examples/data/p0033.mps [gra800:~] gurobi_cl --help
Gurobi Interactive Shell
[gra-login2:~] salloc --time=1:00:0 --cpus-per-task=8 --mem=1G --account=def-xyz [gra800:~] module load gurobi [gra800:~] echo "Record 1" > gurobi.env see * [gra800:~] gurobi.sh gurobi> m = read('/cvmfs/restricted.computecanada.ca/easybuild/software/2017/Core/gurobi/8.1.1/examples/data/glass4.mps') gurobi> m.Params.Threads = 8 see ** gurobi> m.Params.Method = 2 gurobi> m.Params.ResultFile = "glass4.sol" gurobi> m.Params.LogFile = "glass4.log" gurobi> m.optimize() gurobi> m.write('glass4.lp') gurobi> m.status see *** gurobi> m.runtime see **** gurobi> help()
where
* https://www.gurobi.com/documentation/8.1/refman/recording_api_calls.html ** https://www.gurobi.com/documentation/8.1/refman/parameter_descriptions.html *** https://www.gurobi.com/documentation/8.1/refman/optimization_status_codes.html **** https://www.gurobi.com/documentation/8.1/refman/attributes.html
Replaying API calls
You can record API calls and repeat them with
[gra800:~] gurobi_cl recording000.grbr
Reference: https://www.gurobi.com/documentation/8.1/refman/recording_api_calls.html
Cluster Batch Job Submission
Once a Slurm script has been prepared for a Gurobi problem, it can be submitted to the queue by running the sbatch script-name.sh
command. The jobs status in the queue can then be checked by running the sq
command. The following Slurm scripts demonstrate solving 2 problems provided in the examples directory of each Gurobi module.
Data Example
The following Slurm script utilizes the Gurobi command-line interface to solve a simple coin production model written in LP format. The last line demonstrates how parameters can be passed directly to the Gurobi command-line tool gurobi_cl
using simple command line arguments. For help selecting which parameters are best used for a particular problem and for choosing optimal values, refer to both the Performance and Parameters and Algorithms and Search sections found in the Gurobi Knowledge Base as well as the extensive online Gurobi documentation.
#!/bin/bash
#SBATCH --account=def-group # some account
#SBATCH --time=0-00:30 # specify time limit (D-HH:MM)
#SBATCH --cpus-per-task=8 # specify number threads
#SBATCH --mem=4G # specify total memory
#SBATCH --nodes=1 # do not change
#module load StdEnv/2016 # for versions < 9.0.3
module load StdEnv/2020 # for versions > 9.0.2
module load gurobi/9.5.0
rm -f coins.sol
gurobi_cl Threads=$SLURM_CPUS_ON_NODE Method=2 ResultFile=coins.sol ${GUROBI_HOME}/examples/data/coins.lp
Python Example
This is an example Slurm script for solving a simple facility location model with Gurobi Python. The example shows how to set the threads parameter with a dynamically created gurobi.env file when using the Gurobi python interface. This must be done in the working directory for each submitted job, otherwise Gurobi will (by default) start as many execute threads as there are physical cores on the compute node, instead of using the number of physical cores allocated to the job by Slurm, potentially slowing down the job and negatively impacting other user jobs running on the same node.
#!/bin/bash
#SBATCH --account=def-group # some account
#SBATCH --time=0-00:30 # specify time limit (D-HH:MM)
#SBATCH --cpus-per-task=4 # specify number threads
#SBATCH --mem=4G # specify total memory
#SBATCH --nodes=1 # do not change
#module load StdEnv/2016 # for versions < 9.0.3
module load StdEnv/2020 # for versions > 9.0.2
module load gurobi/9.5.0
echo "Threads ${SLURM_CPUS_ON_NODE:-1}" > gurobi.env
gurobi.sh ${GUROBI_HOME}/examples/python/facility.py
Using Gurobi in Python virtual environments
Gurobi brings it's own version of Python which does not contain any 3rd-party Python packages except Gurobi. In order to use Gurobi together with popular Python packages like NumPy, Matplotlib, Pandas and others, we need to create a virtual Python environment in which we can install both gurobipy
and for example pandas
. Before we start, we need to decide which combination of versions for Gurobi and Python to use. A listing of the Python version(s) supported by the major gurobi versions installed in the previous through current standard environments (StdEnv) follows:
[name@server ~] module load StdEnv/2016; module load gurobi/8.1.1; cd $EBROOTGUROBI/lib; ls -d python* python2.7 python2.7_utf16 python2.7_utf32 python3.5_utf32 python3.6_utf32 python3.7_utf32 [name@server ~] module load StdEnv/2020; module load gurobi/9.5.2; cd $EBROOTGUROBI/lib; ls -d python* python2.7_utf16 python2.7_utf32 python3.10_utf32 python3.7 python3.7_utf32 python3.8_utf32 python3.9_utf32 [name@server ~] module load StdEnv/2023; module load gurobi/10.0.3; cd $EBROOTGUROBI/lib; ls -d python* python3.10_utf32 python3.11_utf32 python3.7 python3.7_utf32 python3.8_utf32 python3.9_utf32 [name@server ~] module load StdEnv/2023; module load gurobi/11.0.1; cd $EBROOTGUROBI/lib; ls -d python* python3.11
HowTo Install Gurobi for Python
As explained at the bottom of [[1]] the previous recommended approach for installing gurobi for python with setup.py has been deprecated as of version Gurobi 11. For continuity a modified version of the instruction (usable under StdEnv/2023) is provided in the following section for Gurobi 10 and older. Following this a new section is provided showing how to install gurobi for python from a wheel for version Gurobi 11 and greater.
Gurobi Versions 10.0.3 (and older)
The following steps need to be done once per system and are usable with StdEnv/2023 and older. First load the modules to create the virtual environment and activate it:
[name@server ~] $ module load gurobi/10.0.3 python
[name@server ~] $ virtualenv --no-download ~/env_gurobi
[name@server ~] $ source ~/env_gurobi/bin/activate
Now install any Python packages we want to use (in this case pandas
) for example:
(env_gurobi) [name@server ~] $ pip install --no-index pandas
Next install gurobipy into the environment. Note that as of StdEnv/2023 the install can no longer be done under $EBROOTGUROBI as previously documented using the command python setup.py build --build-base /tmp/${USER} install
since a fatal error: could not create 'gurobipy.egg-info': Read-only file system
crash message will occur. Instead the required files need to copied to elsewhere (such as /tmp/$USER) and installed from there, for example:
(env_gurobi) [name@server ~] $ mkdir /tmp/$USER
(env_gurobi) [name@server ~] $ cp -r $EBROOTGUROBI/{lib,setup.py} /tmp/$USER
(env_gurobi) [name@server ~] $ cd /tmp/$USER
(env_gurobi) [name@server ~] $ python setup.py install
(env_gurobi) [roberpj@gra-login1:/tmp/roberpj] python setup.py install
/home/roberpj/env_gurobi/lib/python3.11/site-packages/setuptools/_core_metadata.py:158: SetuptoolsDeprecationWarning: Invalid config.
!!
********************************************************************************
newlines are not allowed in `summary` and will break in the future
********************************************************************************
!!
write_field('Summary', single_line(summary))
removing /tmp/roberpj/build
(env_gurobi) [roberpj@gra-login1:/tmp/roberpj]
Gurobi Versions 11.0.0 (and newer)
Once again, following steps need to be done once per system and are usable with StdEnv/2023 and older. First load the modules to create the virtual environment and activate it. Version 11.0.0 is skipped since it has been observed to seg fault in at least one example versus Version 11.0.1 which runs smoothly.
[name@server ~] $ module load gurobi/11.0.1 python
[name@server ~] $ virtualenv --no-download ~/env_gurobi
[name@server ~] $ source ~/env_gurobi/bin/activate
As before, install any needed Python packages (in this case pandas
) for example:
(env_gurobi) [name@server ~] $ pip install --no-index pandas
Next install gurobipy into the environment. As mentioned above and in [article] the use of setup.py to install Gurobi for python is deprecated starting with Gurobi 11. Both pip and conda are given as alternatives, however since conda should not be used on alliance systems, the pip approach will be demonstrated here.
The installation is slightly complicated since Alliance linux systems are setup with gentoo prefix. As a result neither A) the recommended command to download and install the gurobipy extension from the public PyPI server pip install gurobipy==11.0.1
mentioned in the article line or B) the offline command to install the wheel with python -m pip install --find-links <wheel-dir> --no-index gurobipy
, will work. Instead a script available from the alliance maybe utilized to download and modify the existing wheel into an usable format under a new name. There is one caveat which is for each new Gurobi version the researcher must go into https://pypi.org/project/gurobipy/11.0.1/#history, click on the desired version followed by the Download files
button in the left hand menu and finally copy the https link for the wheel file named gurobipy-11.0.0-cp312-cp312-manylinux2014_x86_64.manylinux_2_17_x86_64.whl in the case of Gurobi 11.0.1 and paste its link as the --url argument as shown in the following:
(env_gurobi) [name@server ~] $ wget https://raw.githubusercontent.com/ComputeCanada/wheels_builder/main/unmanylinuxize.sh
(env_gurobi) [name@server ~] $ chmod u+rx unmanylinuxize.sh
(env_gurobi) [name@server ~] $ ./unmanylinuxize.sh --package gurobipy --version 11.0.1 --url
https://files.pythonhosted.org/packages/c5/c6/7cb959ea454c58169ecc6d165c8e3e915769d963df1bab61f5c5bc0052e6/
gurobipy-11.0.1-cp312-cp312-manylinux2014_x86_64.manylinux_2_17_x86_64.whl
'gurobipy-11.0.1-cp312-cp312-linux_x86_64.whl' -> '../gurobipy-11.0.1-cp312-cp312-linux_x86_64.whl'
(env_gurobi) [name@server ~] $ python -m pip install --find-links ~/pythonwheels --no-index gurobipy
Using the virtual environment
Python scripts can now import both Pandas and Gurobi:
[name@server ~] $ cat my_gurobi_script.py
import pandas as pd
import numpy as np
import gurobipy as gurobi
from gurobipy import *
etc
Once created we can activate our Gurobi environment at any time with
[name@server ~] $ module load gurobi/11.0.1
source ~/env_gurobi/bin/activate
(env_gurobi) python my_gurobi_script.py
Note that we now use python
instead of gurobi.sh
! This is an example job script that we can use:
#!/bin/bash
#SBATCH --time=0-00:30 # time limit (D-HH:MM)
#SBATCH --cpus-per-task=4 # number of CPUs to use
#SBATCH --mem-per-cpu=1000M # memory per CPU (in MB)
module load StdEnv/2023
module load gurobi/11.0.1
source ~/env_gurobi/bin/activate
echo "Threads ${SLURM_CPUS_ON_NODE:-1}" > gurobi.env # set number of threads
python my_gurobi_script.py
Using Gurobi with Java
To use Gurobi with Java, you will also need to load a Java module and add an option to your Java command in order to allow the Java virtual environment to find the Gurobi libraries. A sample job script is below:
#!/bin/bash
#SBATCH --time=0-00:30 # time limit (D-HH:MM)
#SBATCH --cpus-per-task=1 # number of CPUs (threads) to use
#SBATCH --mem=4096M # memory per CPU (in MB)
module load java/14.0.2
module load gurobi/9.1.2
java -Djava.library.path=$EBROOTGUROBI/lib -Xmx4g -jar my_java_file.jar
Using Gurobi with Jupyter notebooks
Various topics can be found by visiting Resources, then clicking Code and Modeling Examples and finally Optimization with Python – Jupyter Notebook Modeling Examples. Alternatively visit support.gurobi.com and search on Jupyter Notebooks.
A demo case of using Gurobi with Jupyter notebooks on our systems can be found in this video recording, i.e. at time 38:28.
Cite Gurobi
Please see How do I cite Gurobi software for an academic publication?