Application of SuperNNova to DES
-
Visualization of data original_data_visualization.py
-
Testing light-curve skimming options run_skim_and_classification.py (Just the skimming can be done using skim_data_lcs.py)
-
notebooks with data and peak exploration
Beware!!! Skimmed photometry fits tables can't be used as input for SNANA fits the original fits tables have assitional extensions with survey info
#Requirements:
it must be cloned in this repository
git clone https://github.com/supernnova/supernnova.git
cd SuperNNova/env
# Create conda environment
conda create --name <env> --file <conda_file_of_your_choice>
# Activate conda environment
source activate <env>
setup an environment variable where data is. E.g. in bash/mac osx add to your ~/.bashrc or ~/.bash_profile
export DES_DATA=/Users/yourpathto/DES/data/