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The following steps are for an example to submit a job for neural-net fit to 'N' number of kinematic settings in the data set (where N is an integer reflects to the range of kinematic settings which you will input in the sbatch command to submit the job).


1. Make sure that Prof. Keller has added you to both the spin and spinquest groups in Rivanna.
2. Copy the sample files from the following Rivanna folder "/project/ptgroup/ANN_scripts/Rivanna_test_code_for_ANN"
      $ cd  /project/ptgroup/ANN_scripts/Rivanna_test_code_for_ANN

Here are the list of file that you need to have in your work directory:

Definitions
                      BHDVCStf.py
                      Lorentz_Vector.py
                      TVA1_UU.py
Data file →  dvcs_xs_May-2021_342_sets.csv
Main file → Full_ML_fit_evaluation_Set2.py
Job submission file → Job.slurm

3. Change the path(s) in the following files
    3.1) Highlighted line in "Job.slurm" file (please see below) with the correct path of 'your files'
          
   
   3.2) Similarly update the paths on "Full_ML_fit_evaluation_Set2.py" file
           Line numbers → 22, 31, 154
 

4. (This step is not necessary to check the code running, but to speed up the testing) For a quick test, you can change the "number of samples" to a small number to test (in other words "number of replicas") which is in line number 115: 'numSamples = 1000'

5. Run the following commands on your terminal
       $ module load anaconda/2020.11-py3.8
       $ module load singularity/3.7.1
       $ module load tensorflow/2.1.0-py37
       $ cp $CONTAINERDIR/tensorflow-2.1.0-py37.sif /home/$USER
 (make sure that you have  the same module loads included in your Job.slurm file

6. Run the following command
      $ sbatch --array=0-14 Job.slurm
   Note: Here 0-14 means the number of kinematic settings that you want to run in parallel (this is parallelization of local fits), and as a part of the output you will see Results#.csv (where # is an integer number) files which contain distributions of Compton Form Factors (CFFs) from each (individual) local fit.










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