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import h5py |
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import numpy as np |
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import os |
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def calculate_statistics(hdf5_path): |
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actions = [] |
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ee_states = [] |
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gripper_states = [] |
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joint_states = [] |
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with h5py.File(hdf5_path, 'r') as f: |
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for demo in f['data']: |
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actions.append(f[f'data/{demo}/actions'][:]) |
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ee_states.append(f[f'data/{demo}/obs/ee_states'][:]) |
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gripper_states.append(f[f'data/{demo}/obs/gripper_states'][:]) |
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joint_states.append(f[f'data/{demo}/obs/joint_states'][:]) |
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actions = np.concatenate(actions, axis=0) |
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ee_states = np.concatenate(ee_states, axis=0) |
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gripper_states = np.concatenate(gripper_states, axis=0) |
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joint_states = np.concatenate(joint_states, axis=0) |
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stats = { |
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'actions': { |
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'mean': np.mean(actions, axis=0), |
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'std': np.std(actions, axis=0), |
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'min': np.min(actions, axis=0), |
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'max': np.max(actions, axis=0), |
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'q01': np.percentile(actions, 1, axis=0), |
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'q99': np.percentile(actions, 99, axis=0) |
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}, |
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'ee_states': { |
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'mean': np.mean(ee_states, axis=0), |
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'std': np.std(ee_states, axis=0), |
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'min': np.min(ee_states, axis=0), |
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'max': np.max(ee_states, axis=0), |
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'q01': np.percentile(ee_states, 1, axis=0), |
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'q99': np.percentile(ee_states, 99, axis=0) |
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}, |
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'gripper_states': { |
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'mean': np.mean(gripper_states, axis=0), |
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'std': np.std(gripper_states, axis=0), |
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'min': np.min(gripper_states, axis=0), |
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'max': np.max(gripper_states, axis=0), |
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'q01': np.percentile(gripper_states, 1, axis=0), |
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'q99': np.percentile(gripper_states, 99, axis=0) |
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}, |
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'joint_states': { |
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'mean': np.mean(joint_states, axis=0), |
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'std': np.std(joint_states, axis=0), |
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'min': np.min(joint_states, axis=0), |
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'max': np.max(joint_states, axis=0), |
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'q01': np.percentile(joint_states, 1, axis=0), |
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'q99': np.percentile(joint_states, 99, axis=0) |
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} |
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} |
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return stats |
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def process_directory(directory): |
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all_stats = { |
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'actions': [], |
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'ee_states': [], |
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'gripper_states': [], |
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'joint_states': [] |
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} |
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for filename in os.listdir(directory): |
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if filename.endswith('.hdf5'): |
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hdf5_path = os.path.join(directory, filename) |
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stats = calculate_statistics(hdf5_path) |
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for key in all_stats: |
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all_stats[key].append(stats[key]) |
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overall_stats = {} |
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for key, values in all_stats.items(): |
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means = np.array([v['mean'] for v in values]) |
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stds = np.array([v['std'] for v in values]) |
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mins = np.array([v['min'] for v in values]) |
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maxs = np.array([v['max'] for v in values]) |
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q01s = np.array([v['q01'] for v in values]) |
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q99s = np.array([v['q99'] for v in values]) |
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overall_stats[key] = { |
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'mean': np.mean(means, axis=0), |
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'std': np.mean(stds, axis=0), |
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'min': np.min(mins, axis=0), |
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'max': np.max(maxs, axis=0), |
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'q01': np.mean(q01s, axis=0), |
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'q99': np.mean(q99s, axis=0) |
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} |
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return overall_stats |
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if __name__ == "__main__": |
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directory = '/home2/czhang/datasets/LIBERO/libero_spatial' |
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stats = process_directory(directory) |
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for key, value in stats.items(): |
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print(f"{key}:") |
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for stat_name, stat_value in value.items(): |
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print(f" {stat_name}: {stat_value}") |
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print("Statistics calculated successfully.") |