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# Copyright 2017 Google Inc. All Rights Reserved. | |
# | |
# Licensed under the Apache License, Version 2.0 (the "License"); | |
# you may not use this file except in compliance with the License. | |
# You may obtain a copy of the License at | |
# | |
# http://www.apache.org/licenses/LICENSE-2.0 | |
# | |
# Unless required by applicable law or agreed to in writing, software | |
# distributed under the License is distributed on an "AS IS" BASIS, | |
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. | |
# See the License for the specific language governing permissions and | |
# limitations under the License. | |
# | |
# ============================================================================== | |
SYNTH_PATH=/tmp/rnn_synth_data_v1.0/ | |
echo "Generating chaotic rnn data with no input pulses (g=1.5) with spiking noise" | |
python generate_chaotic_rnn_data.py --save_dir=$SYNTH_PATH --datafile_name=chaotic_rnn_no_inputs --synth_data_seed=5 --T=1.0 --C=400 --N=50 --S=50 --train_percentage=0.8 --nreplications=10 --g=1.5 --x0_std=1.0 --tau=0.025 --dt=0.01 --input_magnitude=0.0 --max_firing_rate=30.0 --noise_type='poisson' | |
echo "Generating chaotic rnn data with no input pulses (g=1.5) with Gaussian noise" | |
python generate_chaotic_rnn_data.py --save_dir=$SYNTH_PATH --datafile_name=gaussian_chaotic_rnn_no_inputs --synth_data_seed=5 --T=1.0 --C=400 --N=50 --S=50 --train_percentage=0.8 --nreplications=10 --g=1.5 --x0_std=1.0 --tau=0.025 --dt=0.01 --input_magnitude=0.0 --max_firing_rate=30.0 --noise_type='gaussian' | |
echo "Generating chaotic rnn data with input pulses (g=1.5)" | |
python generate_chaotic_rnn_data.py --save_dir=$SYNTH_PATH --datafile_name=chaotic_rnn_inputs_g1p5 --synth_data_seed=5 --T=1.0 --C=400 --N=50 --S=50 --train_percentage=0.8 --nreplications=10 --g=1.5 --x0_std=1.0 --tau=0.025 --dt=0.01 --input_magnitude=20.0 --max_firing_rate=30.0 --noise_type='poisson' | |
echo "Generating chaotic rnn data with input pulses (g=2.5)" | |
python generate_chaotic_rnn_data.py --save_dir=$SYNTH_PATH --datafile_name=chaotic_rnn_inputs_g2p5 --synth_data_seed=5 --T=1.0 --C=400 --N=50 --S=50 --train_percentage=0.8 --nreplications=10 --g=2.5 --x0_std=1.0 --tau=0.025 --dt=0.01 --input_magnitude=20.0 --max_firing_rate=30.0 --noise_type='poisson' | |
echo "Generate the multi-session RNN data (no multi-session synth example in paper)" | |
python generate_chaotic_rnn_data.py --save_dir=$SYNTH_PATH --datafile_name=chaotic_rnn_multisession --synth_data_seed=5 --T=1.0 --C=150 --N=100 --S=20 --npcs=10 --train_percentage=0.8 --nreplications=40 --g=1.5 --x0_std=1.0 --tau=0.025 --dt=0.01 --input_magnitude=0.0 --max_firing_rate=30.0 --noise_type='poisson' | |
echo "Generating Integration-to-bound RNN data" | |
python generate_itb_data.py --save_dir=$SYNTH_PATH --datafile_name=itb_rnn --u_std=0.25 --checkpoint_path=SAMPLE_CHECKPOINT --synth_data_seed=5 --T=1.0 --C=800 --N=50 --train_percentage=0.8 --nreplications=5 --tau=0.025 --dt=0.01 --max_firing_rate=30.0 | |
echo "Generating chaotic rnn data with external input labels (no external input labels example in paper)" | |
python generate_labeled_rnn_data.py --save_dir=$SYNTH_PATH --datafile_name=chaotic_rnns_labeled --synth_data_seed=5 --T=1.0 --C=400 --N=50 --train_percentage=0.8 --nreplications=10 --g=1.5 --x0_std=1.0 --tau=0.025 --dt=0.01 --max_firing_rate=30.0 | |