import data as d import signal import numpy as np import tra_analysis as an class Module: config = None data = None results = None def __init__(self, config, apikey, tbakey, timestamp): pass def validate_config(self): pass def load_data(self): pass def process_data(self, exec_threads): pass def push_results(self): pass class Match: config = None apikey = None tbakey = None timestamp = None teams = None data = [] results = [] def __init__(self, config, apikey, tbakey, timestamp, teams): self.config = config self.apikey = apikey self.tbakey = tbakey self.timestamp = timestamp self.teams = teams def validate_config(self): return True, "" """ if self.config == None: return False, "config cannot be empty" elif self.apikey == None or self.apikey == "": return False, "apikey cannot be empty" elif self.tbakey == None or self.tbakey == "": return False, "tbakey cannot be empty" elif not(self.config["scope"] in ["competition", "season", "none"]): return False, "scope must be one of: (competition, season, none)" elif not(self.config["agglomeration"] in ["none", "mean"]): return False, "agglomeration must be one of: (none, mean)" else: return True, "" """ def load_data(self): scope = self.config["scope"] for team in self.teams: competitions = d.get_team_conpetitions(self.apikey, team, scope) # unimplemented for competition in competitions: for variable in self.config["tests"]: match_data = d.get_team_match_data(self.apikey, competition, team, variable) # needs modified implementation variable_tests = self.config["tests"][variable] self.data.append({"team": team, "competition": competition, "variable": variable, "tests": variable_tests, "data": match_data}) def tests(test_data): signal.signal(signal.SIGINT, signal.SIG_IGN) if(test_data["data"] == None): return None data = np.array(test_data["data"]) data = data[np.isfinite(data)] ranges = list(range(len(data))) tests = test_data["tests"] results = {} if "basic_stats" in tests: results["basic_stats"] = an.basic_stats(data) if "historical_analysis" in tests: results["historical_analysis"] = an.histo_analysis([ranges, data]) if "regression_linear" in tests: results["regression_linear"] = an.regression(ranges, data, ['lin']) if "regression_logarithmic" in tests: results["regression_logarithmic"] = an.regression(ranges, data, ['log']) if "regression_exponential" in tests: results["regression_exponential"] = an.regression(ranges, data, ['exp']) if "regression_polynomial" in tests: results["regression_polynomial"] = an.regression(ranges, data, ['ply']) if "regression_sigmoidal" in tests: results["regression_sigmoidal"] = an.regression(ranges, data, ['sig']) return results def process_data(self, exec_threads): self.results = list(exec_threads.map(self.tests, self.data)) def push_results(self): short_mapping = {"regression_linear": "lin", "regression_logarithmic": "log", "regression_exponential": "exp", "regression_polynomial": "ply", "regression_sigmoidal": "sig"} i = 0 for result in self.results: for variable in result: if variable in short_mapping: short = short_mapping[variable] else: short = variable d.push_team_match_results(self.data[i]["team"], self.data[i]["competition"], self.data[i]["variable"], short, result[variable]) # needs implementation i+=1