stable diffusion between the results of one and all the # results from each test.# “”” # Compute the number of differences, aka difference in if len(data) == 0: raise Exception(‘Test did not have any data’) self._differences += np.mean(np.abs((data – Y).T @ (Y – data))) return sum([self._differences for _ in range(len(data))]) def _split_train_test(self, X): idx = list() while True: start = np.random.randint(low=X.shape[1], high=X.shape[0]-50), np.random.randint(low=0, high=X.shape[0]-len(idx)*50), np.random.randint(low=X.shape[1]//2, high=X.shape[0]), np.random.randint(low=-60, high=(X.shape[1]*4-5*5)//4+ 3, ) end = np.floor(start + X.shape[0]).astype(int)+
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