This is the repository of the code for DynProfiler: A Python package to analyze and interpret the entire signaling dynamics leveraged by deep learn-ing techniques
- Python (version not specified)
- Pytorch (version not specified)
- Captum (version not specified)
git clone https://github.com/okadalabipr/DynProfiler.gitPlease set the path so that this package can be imported.
import sys
sys.path.append( )Please define the model configuration and prepare input data. After running dynpro.embed(), you can check the embedding result file as npy.
import dynprofiler as dynpro
## Please configure the model by refferring to data/inputs
import yaml
train_params = yaml.safe_load(open("data/inputs/train_params.yml"))
model_params = yaml.safe_load(open("data/inputs/model_params.yml"))
dataset_params = yaml.safe_load(open("data/inputs/dataset_params.yml"))
outdir = "data/outputs"
## If you train the model using random sampling, please specify the mean and std.
import numpy as np
inp_mean = np.load("data/inputs/input_mean.npy")
inp_std = np.load("data/inputs/input_std.npy")
## Run
dynpro.embed({"mean": inp_mean, "std": inp_std},
outdir,
**train_params, **model_params, **dataset_params)Please define the model configuration and prepare input data and labels.
You can run Step2 alone without having executed the self-supervised pre-training in Step1.
After running dynpro.interpret(), you can check the resulting npy file that represent the time-dependent attributions of each variable.
import dynprofiler as dynpro
## Please configure the model by refferring to data/inputs
import yaml
train_params = yaml.safe_load(open("data/inputs/train_params.yml"))
model_params = yaml.safe_load(open("data/inputs/model_params.yml"))
dataset_params = yaml.safe_load(open("data/inputs/dataset_params.yml"))
outdir = "data/outputs"
## Load Data
import numpy as np
inp_mean = np.load("data/inputs/input_mean.npy")
labels = np.load("data/inputs/labels.npy")
## Run
dynpro.interpret({"mean": inp_mean}, outdir, labels,
**train_params, **model_params, **dataset_params)Tutorial Jupyter Notebook is provided as Tutorial.ipynb (You can run in )
This includes:
- Embed the dynamics
- Perform Classification from the dynamics
- Extracting important dynamics
- Reproduction codes for Fig. 2
- Large files, such as input simulated dynamics and model weights, are not stored here. If needed, please contact the author.