29 lines
1.0 KiB
Python
29 lines
1.0 KiB
Python
from ui.config import state_dict, mechanisms, exogenous_states, env_processes, sim_config
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from engine.configProcessor import generate_config, create_tensor_field
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from engine.mechanismExecutor import simulation
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from engine.utils import flatten
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from tabulate import tabulate
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#from tabulate import tabulate
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import pandas as pd
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def main():
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states_list = [state_dict]
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ep = list(exogenous_states.values())
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configs = generate_config(state_dict, mechanisms, ep)
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print(len(configs))
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print(tabulate(create_tensor_field(mechanisms, ep), headers='keys', tablefmt='psql'))
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print
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# print(configs)
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# print(states_list)
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# print(configs)
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# p = pipeline(states_list, configs, env_processes, range(10))
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T = sim_config['T']
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N = sim_config['N']
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# Dimensions: N x r x mechs
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s = simulation(states_list, configs, env_processes, T, N)
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result = pd.DataFrame(flatten(s))
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# print('Test')
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# print(tabulate(result, headers='keys', tablefmt='psql'))
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# remove print and tabulate functions, so it returns a dataframe
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return result |