# Titan Robotics Team 2022: Superscript Script # Written by Arthur Lu & Jacob Levine # Notes: # setup: __version__ = "0.0.0.009" # changelog should be viewed using print(analysis.__changelog__) __changelog__ = """changelog: 0.0.0.009: - tested working - prints out stats for the time being, will push to database later 0.0.0.008: - added data import - removed tba import - finished main method 0.0.0.007: - added load_config - optimized simpleloop for readibility - added __all__ entries - added simplestats engine - pending testing 0.0.0.006: - fixes 0.0.0.005: - imported pickle - created custom database object 0.0.0.004: - fixed simpleloop to actually return a vector 0.0.0.003: - added metricsloop which is unfinished 0.0.0.002: - added simpleloop which is untested until data is provided 0.0.0.001: - created script - added analysis, numba, numpy imports """ __author__ = ( "Arthur Lu ", "Jacob Levine ", ) __all__ = [ "main", "load_config", "simpleloop", "simplestats", "metricsloop" ] # imports: from analysis import analysis as an from numba import jit import numpy as np import pickle import data as d try: from analysis import trueskill as Trueskill except: import trueskill as Trueskill def main(): while(True): competition, config = load_config("config.csv") apikey = an.load_csv("keys.txt")[0][0] data = d.get_data_formatted(apikey, competition) results = simpleloop(data, config) print(results) def load_config(file): config_vector = {} file = an.load_csv(file) for line in file[1:]: config_vector[line[0]] = line[1:] return (file[0][0], config_vector) def simpleloop(data, tests): # expects 3D array with [Team][Variable][Match] return_vector = {} for team in data: variable_vector = {} for variable in data[team]: test_vector = {} variable_data = data[team][variable] if(variable in tests): for test in tests[variable]: test_vector[test] = simplestats(variable_data, test) else: pass variable_vector[variable] = test_vector return_vector[team] = variable_vector return return_vector def simplestats(data, test): if(test == "basic_stats"): return an.basic_stats(data) if(test == "historical_analysis"): return an.histo_analysis(data) if(test == "regression_linear"): return an.regression('cpu', list(range(len(data))), data, ['lin']) if(test == "regression_logarithmic"): return an.regression('cpu', list(range(len(data))), data, ['log']) if(test == "regression_exponential"): return an.regression('cpu', list(range(len(data))), data, ['exp']) if(test == "regression_polynomial"): return an.regression('cpu', list(range(len(data))), data, ['ply']) if(test == "regression_sigmoidal"): return an.regression('cpu', list(range(len(data))), data, ['sig']) def metricsloop(group_data, observations, database, tests): # listener based metrics update pass class database: data = {} elo_starting_score = 1500 N = 1500 K = 32 gl2_starting_score = 1500 gl2_starting_rd = 350 gl2_starting_vol = 0.06 def __init__(self, team_lookup): super().__init__() for team in team_lookup: elo = elo_starting_score gl2 = {"score": gl2_starting_score, "rd": gl2_starting_rd, "vol": gl2_starting_vol} ts = Trueskill.Rating() data[str(team)] = {"elo": elo, "gl2": gl2, "ts": ts} def get_team(self, team): return data[team] def get_elo(self, team): return data[team]["elo"] def get_gl2(self, team): return data[team]["gl2"] def get_ts(self, team): return data[team]["ts"] def set_team(self, team, ndata): data[team] = ndata def set_elo(self, team, nelo): data[team]["elo"] = nelo def set_gl2(self, team, ngl2): data[team]["gl2"] = ngl2 def set_ts(self, team, nts): data[team]["ts"] = nts def save_database(self, location): pickle.dump(data, open(location, "wb")) def load_database(self, location): data = pickle.load(open(location, "rb")) main()