def run_XOR(): network = FFBPNetwork(2, 1) network.add_hidden_layer(3) XORx = [[0, 0], [1, 0], [0, 1], [1, 1]] XORy = [[0], [1], [1], [0]] data = NNData(XORx, XORy, 100) network.train(data, 1001) network.test(data, one_hot=1)
def nn_data_decoder(dct): """ Takes in a json file and outputs a NNData object Args: dct: json object to decode Returns: NNData object with all attributes initialized""" if "__NNData__" not in dct: return dct data = dct['__NNData__'] new_data = NNData(data['x'], data['y'], data['train_percentage']) new_data.train_indices = data['train_indices'] new_data.test_indices = data['test_indices'] test_pool = data['test_pool'] train_pool = data['train_pool'] new_data.test_pool = deque(test_pool['__deque__']) new_data.train_pool = deque(train_pool['__deque__']) new_data.train_data = (new_data.train_indices, new_data.train_pool) new_data.test_data = (new_data.test_indices, new_data.test_pool) return new_data
def run_iris(): network = FFBPNetwork(4, 3) network.add_hidden_layer(6) Iris_X = [[5.1, 3.5, 1.4, 0.2], [4.9, 3, 1.4, 0.2], [4.7, 3.2, 1.3, 0.2], [4.6, 3.1, 1.5, 0.2], [5, 3.6, 1.4, 0.2], [5.4, 3.9, 1.7, 0.4], [4.6, 3.4, 1.4, 0.3], [5, 3.4, 1.5, 0.2], [4.4, 2.9, 1.4, 0.2], [4.9, 3.1, 1.5, 0.1], [5.4, 3.7, 1.5, 0.2], [4.8, 3.4, 1.6, 0.2], [4.8, 3, 1.4, 0.1], [4.3, 3, 1.1, 0.1], [5.8, 4, 1.2, 0.2], [5.7, 4.4, 1.5, 0.4], [5.4, 3.9, 1.3, 0.4], [5.1, 3.5, 1.4, 0.3], [5.7, 3.8, 1.7, 0.3], [5.1, 3.8, 1.5, 0.3], [5.4, 3.4, 1.7, 0.2], [5.1, 3.7, 1.5, 0.4], [4.6, 3.6, 1, 0.2], [5.1, 3.3, 1.7, 0.5], [4.8, 3.4, 1.9, 0.2], [5, 3, 1.6, 0.2], [5, 3.4, 1.6, 0.4], [5.2, 3.5, 1.5, 0.2], [5.2, 3.4, 1.4, 0.2], [4.7, 3.2, 1.6, 0.2], [4.8, 3.1, 1.6, 0.2], [5.4, 3.4, 1.5, 0.4], [5.2, 4.1, 1.5, 0.1], [5.5, 4.2, 1.4, 0.2], [4.9, 3.1, 1.5, 0.1], [5, 3.2, 1.2, 0.2], [5.5, 3.5, 1.3, 0.2], [4.9, 3.1, 1.5, 0.1], [4.4, 3, 1.3, 0.2], [5.1, 3.4, 1.5, 0.2], [5, 3.5, 1.3, 0.3], [4.5, 2.3, 1.3, 0.3], [4.4, 3.2, 1.3, 0.2], [5, 3.5, 1.6, 0.6], [5.1, 3.8, 1.9, 0.4], [4.8, 3, 1.4, 0.3], [5.1, 3.8, 1.6, 0.2], [4.6, 3.2, 1.4, 0.2], [5.3, 3.7, 1.5, 0.2], [5, 3.3, 1.4, 0.2], [7, 3.2, 4.7, 1.4], [6.4, 3.2, 4.5, 1.5], [6.9, 3.1, 4.9, 1.5], [5.5, 2.3, 4, 1.3], [6.5, 2.8, 4.6, 1.5], [5.7, 2.8, 4.5, 1.3], [6.3, 3.3, 4.7, 1.6], [4.9, 2.4, 3.3, 1], [6.6, 2.9, 4.6, 1.3], [5.2, 2.7, 3.9, 1.4], [5, 2, 3.5, 1], [5.9, 3, 4.2, 1.5], [6, 2.2, 4, 1], [6.1, 2.9, 4.7, 1.4], [5.6, 2.9, 3.6, 1.3], [6.7, 3.1, 4.4, 1.4], [5.6, 3, 4.5, 1.5], [5.8, 2.7, 4.1, 1], [6.2, 2.2, 4.5, 1.5], [5.6, 2.5, 3.9, 1.1], [5.9, 3.2, 4.8, 1.8], [6.1, 2.8, 4, 1.3], [6.3, 2.5, 4.9, 1.5], [6.1, 2.8, 4.7, 1.2], [6.4, 2.9, 4.3, 1.3], [6.6, 3, 4.4, 1.4], [6.8, 2.8, 4.8, 1.4], [6.7, 3, 5, 1.7], [6, 2.9, 4.5, 1.5], [5.7, 2.6, 3.5, 1], [5.5, 2.4, 3.8, 1.1], [5.5, 2.4, 3.7, 1], [5.8, 2.7, 3.9, 1.2], [6, 2.7, 5.1, 1.6], [5.4, 3, 4.5, 1.5], [6, 3.4, 4.5, 1.6], [6.7, 3.1, 4.7, 1.5], [6.3, 2.3, 4.4, 1.3], [5.6, 3, 4.1, 1.3], [5.5, 2.5, 4, 1.3], [5.5, 2.6, 4.4, 1.2], [6.1, 3, 4.6, 1.4], [5.8, 2.6, 4, 1.2], [5, 2.3, 3.3, 1], [5.6, 2.7, 4.2, 1.3], [5.7, 3, 4.2, 1.2], [5.7, 2.9, 4.2, 1.3], [6.2, 2.9, 4.3, 1.3], [5.1, 2.5, 3, 1.1], [5.7, 2.8, 4.1, 1.3], [6.3, 3.3, 6, 2.5], [5.8, 2.7, 5.1, 1.9], [7.1, 3, 5.9, 2.1], [6.3, 2.9, 5.6, 1.8], [6.5, 3, 5.8, 2.2], [7.6, 3, 6.6, 2.1], [4.9, 2.5, 4.5, 1.7], [7.3, 2.9, 6.3, 1.8], [6.7, 2.5, 5.8, 1.8], [7.2, 3.6, 6.1, 2.5], [6.5, 3.2, 5.1, 2], [6.4, 2.7, 5.3, 1.9], [6.8, 3, 5.5, 2.1], [5.7, 2.5, 5, 2], [5.8, 2.8, 5.1, 2.4], [6.4, 3.2, 5.3, 2.3], [6.5, 3, 5.5, 1.8], [7.7, 3.8, 6.7, 2.2], [7.7, 2.6, 6.9, 2.3], [6, 2.2, 5, 1.5], [6.9, 3.2, 5.7, 2.3], [5.6, 2.8, 4.9, 2], [7.7, 2.8, 6.7, 2], [6.3, 2.7, 4.9, 1.8], [6.7, 3.3, 5.7, 2.1], [7.2, 3.2, 6, 1.8], [6.2, 2.8, 4.8, 1.8], [6.1, 3, 4.9, 1.8], [6.4, 2.8, 5.6, 2.1], [7.2, 3, 5.8, 1.6], [7.4, 2.8, 6.1, 1.9], [7.9, 3.8, 6.4, 2], [6.4, 2.8, 5.6, 2.2], [6.3, 2.8, 5.1, 1.5], [6.1, 2.6, 5.6, 1.4], [7.7, 3, 6.1, 2.3], [6.3, 3.4, 5.6, 2.4], [6.4, 3.1, 5.5, 1.8], [6, 3, 4.8, 1.8], [6.9, 3.1, 5.4, 2.1], [6.7, 3.1, 5.6, 2.4], [6.9, 3.1, 5.1, 2.3], [5.8, 2.7, 5.1, 1.9], [6.8, 3.2, 5.9, 2.3], [6.7, 3.3, 5.7, 2.5], [6.7, 3, 5.2, 2.3], [6.3, 2.5, 5, 1.9], [6.5, 3, 5.2, 2], [6.2, 3.4, 5.4, 2.3], [5.9, 3, 5.1, 1.8]] Iris_Y = [[ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 1, 0, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 1, 0, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ], [ 0, 0, 1, ]] data = NNData(Iris_X, Iris_Y, 45) network.train(data, 1001, verbosity=0) network.test(data, one_hot=1)
def run_sin(): network = FFBPNetwork(1, 1) network.add_hidden_layer(25) sin_X = [[0], [0.01], [0.02], [0.03], [0.04], [0.05], [0.06], [0.07], [0.08], [0.09], [0.1], [0.11], [0.12], [0.13], [0.14], [0.15], [0.16], [0.17], [0.18], [0.19], [0.2], [0.21], [0.22], [0.23], [0.24], [0.25], [0.26], [0.27], [0.28], [0.29], [0.3], [0.31], [0.32], [0.33], [0.34], [0.35], [0.36], [0.37], [0.38 ], [0.39], [0.4], [0.41], [0.42], [0.43], [0.44], [0.45], [0.46], [0.47], [0.48], [0.49], [0.5], [0.51], [0.52], [0.53], [0.54], [0.55], [0.56], [0.57], [0.58], [0.59], [0.6], [0.61], [0.62], [0.63], [0.64], [0.65], [0.66], [0.67], [0.68], [0.69], [0.7], [0.71], [0.72], [0.73], [0.74], [0.75], [0.76], [0.77], [0.78], [0.79], [0.8], [0.81], [0.82], [0.83], [0.84], [0.85], [0.86], [0.87], [0.88], [0.89], [0.9], [0.91], [0.92], [0.93], [0.94], [0.95], [0.96], [0.97], [0.98], [0.99], [1], [1.01], [1.02], [1.03], [1.04], [1.05], [1.06], [1.07], [1.08], [1.09], [1.1], [1.11], [1.12], [1.13], [1.14], [1.15], [1.16], [1.17 ], [1.18], [1.19], [1.2], [1.21], [1.22], [1.23], [1.24], [1.25], [1.26], [1.27], [1.28], [1.29], [1.3], [1.31], [1.32], [1.33], [1.34], [1.35], [1.36], [1.37], [1.38], [1.39], [1.4], [1.41], [1.42], [1.43], [1.44], [1.45], [1.46], [1.47], [1.48], [1.49], [1.5], [1.51], [1.52], [1.53], [1.54], [1.55], [1.56], [1.57]] sin_Y = [[0], [0.00999983333416666], [0.0199986666933331], [0.0299955002024957], [0.0399893341866342], [0.0499791692706783], [0.0599640064794446], [0.0699428473375328], [0.0799146939691727], [0.089878549198011], [0.0998334166468282], [0.109778300837175], [0.119712207288919], [0.129634142619695], [0.139543114644236], [0.149438132473599], [0.159318206614246], [0.169182349066996], [0.179029573425824], [0.188858894976501], [0.198669330795061], [0.2084598998461], [0.218229623080869], [0.227977523535188], [0.237702626427135], [0.247403959254523], [0.257080551892155], [0.266731436688831], [0.276355648564114], [0.285952225104836], [0.29552020666134], [0.305058636443443], [0.314566560616118], [0.324043028394868], [0.333487092140814], [0.342897807455451], [0.35227423327509], [0.361615431964962], [0.370920469412983], [0.380188415123161], [0.389418342308651], [0.398609327984423], [0.40776045305957], [0.416870802429211], [0.425939465066], [0.43496553411123], [0.44394810696552], [0.452886285379068], [0.461779175541483], [0.470625888171158], [0.479425538604203], [0.488177246882907], [0.496880137843737], [0.505533341204847], [0.514135991653113], [0.522687228930659], [0.531186197920883], [0.539632048733969], [0.548023936791874], [0.556361022912784], [0.564642473395035], [0.572867460100481], [0.581035160537305], [0.58914475794227], [0.597195441362392], [0.60518640573604], [0.613116851973434], [0.62098598703656], [0.628793024018469], [0.636537182221968], [0.644217687237691], [0.651833771021537], [0.659384671971473], [0.666869635003698], [0.674287911628145], [0.681638760023334], [0.688921445110551], [0.696135238627357], [0.70327941920041], [0.710353272417608], [0.717356090899523], [0.724287174370143], [0.731145829726896], [0.737931371109963], [0.744643119970859], [0.751280405140293], [0.757842562895277], [0.764328937025505], [0.770738878898969], [0.777071747526824], [0.783326909627483], [0.78950373968995], [0.795601620036366], [0.801619940883777], [0.807558100405114], [0.813415504789374], [0.819191568300998], [0.82488571333845], [0.83049737049197], [0.836025978600521], [0.841470984807897], [0.846831844618015], [0.852108021949363], [0.857298989188603], [0.862404227243338], [0.867423225594017], [0.872355482344986], [0.877200504274682], [0.881957806884948], [0.886626914449487], [0.891207360061435], [0.895698685680048], [0.900100442176505], [0.904412189378826], [0.908633496115883], [0.912763940260521], [0.916803108771767], [0.920750597736136], [0.92460601240802], [0.928368967249167], [0.932039085967226], [0.935616001553386], [0.939099356319068], [0.942488801931697], [0.945783999449539], [0.948984619355586], [0.952090341590516], [0.955100855584692], [0.958015860289225], [0.960835064206073], [0.963558185417193], [0.966184951612734], [0.968715100118265], [0.971148377921045], [0.973484541695319], [0.975723357826659], [0.977864602435316], [0.979908061398614], [0.98185353037236], [0.983700814811277], [0.98544972998846], [0.98710010101385], [0.98865176285172], [0.990104560337178], [0.991458348191686], [0.992712991037588], [0.993868363411645], [0.994924349777581], [0.99588084453764], [0.996737752043143], [0.997494986604054], [0.998152472497548], [0.998710143975583], [0.999167945271476], [0.999525830605479], [0.999783764189357], [0.999941720229966], [0.999999682931835]] data = NNData(sin_X, sin_Y, 45) network.train(data, 1, verbosity=1) network.test(data) network.plot_output_comparison()
def main(): """Main Unit test for module""" xor_x = [[0, 0], [1, 0], [0, 1], [1, 1]] xor_y = [[0], [1], [1], [0]] xor_data = NNData(xor_x, xor_y, 90) xor_data_encoded = json.dumps(xor_data, cls=NNDataJson) xor_data_decoded = json.loads(xor_data_encoded, object_hook=nn_data_decoder) network = FFBPNetwork(2, 1) network.add_hidden_layer(3) network.train(xor_data_decoded, 1001) network.test(xor_data_decoded, one_hot=1) sin_json = """{"__NNData__": {"train_percentage": 10, "x": [[0.0], [0.01], [0.02], [0.03], [0.04], [0.05], [0.06], [0.07], [0.08], [0.09], [0.1], [0.11], [0.12], [0.13], [0.14], [0.15], [0.16], [0.17], [0.18], [0.19], [0.2], [0.21], [0.22], [0.23], [0.24], [0.25], [0.26], [0.27], [0.28], [0.29], [0.3], [0.31], [0.32], [0.33], [0.34], [0.35], [0.36], [0.37], [0.38], [0.39], [0.4], [0.41], [0.42], [0.43], [0.44], [0.45], [0.46], [0.47], [0.48], [0.49], [0.5], [0.51], [0.52], [0.53], [0.54], [0.55], [0.56], [0.57], [0.58], [0.59], [0.6], [0.61], [0.62], [0.63], [0.64], [0.65], [0.66], [0.67], [0.68], [0.69], [0.7], [0.71], [0.72], [0.73], [0.74], [0.75], [0.76], [0.77], [0.78], [0.79], [0.8], [0.81], [0.82], [0.83], [0.84], [0.85], [0.86], [0.87], [0.88], [0.89], [0.9], [0.91], [0.92], [0.93], [0.94], [0.95], [0.96], [0.97], [0.98], [0.99], [1.0], [1.01], [1.02], [1.03], [1.04], [1.05], [1.06], [1.07], [1.08], [1.09], [1.1], [1.11], [1.12], [1.13], [1.14], [1.15], [1.16], [1.17], [1.18], [1.19], [1.2], [1.21], [1.22], [1.23], [1.24], [1.25], [1.26], [1.27], [1.28], [1.29], [1.3], [1.31], [1.32], [1.33], [1.34], [1.35], [1.36], [1.37], [1.38], [1.39], [1.4], [1.41], [1.42], [1.43], [1.44], [1.45], [1.46], [1.47], [1.48], [1.49], [1.5], [1.51], [1.52], [1.53], [1.54], [1.55], [1.56], [1.57], [1.58], [1.59], [1.6], [1.61], [1.62], [1.63], [1.64], [1.65], [1.66], [1.67], [1.68], [1.69], [1.7], [1.71], [1.72], [1.73], [1.74], [1.75], [1.76], [1.77], [1.78], [1.79], [1.8], [1.81], [1.82], [1.83], [1.84], [1.85], [1.86], [1.87], [1.88], [1.89], [1.9], [1.91], 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[0.277885925816587], [0.268266050929618], [0.258619349661111], [0.248946786673153], [0.239249329213982], [0.229527947021264], [0.219783612225117], [0.210017299250899], [0.200229984721771], [0.190422647361027], [0.180596267894233], [0.170751828951145], [0.160890314967456], [0.151012712086344], [0.141120008059867], [0.131213192150184], [0.12129325503063], [0.11136118868665], [0.101417986316602], [0.0914646422324372], [0.0815021517602691], [0.0715315111408437], [0.0615537174299131], [0.0515697683985346], [0.0415806624332905], [0.0315873984364539], [0.021590975726096], [0.0115923939361583], [0.00159265291648683]], "train_indices": [8, 13, 44, 48, 58, 67, 69, 70, 71, 75, 77, 83, 102, 112, 127, 130, 143, 164, 166, 188, 214, 219, 223, 228, 240, 243, 257, 260, 286, 301, 308], "test_indices": [0, 1, 2, 3, 4, 5, 6, 7, 9, 10, 11, 12, 14, 15, 16, 17, 18, 19, 20, 21, 22, 23, 24, 25, 26, 27, 28, 29, 30, 31, 32, 33, 34, 35, 36, 37, 38, 39, 40, 41, 42, 43, 45, 46, 47, 49, 50, 51, 52, 53, 54, 55, 56, 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289, 290, 291, 292, 293, 294, 295, 296, 297, 298, 299, 300, 302, 303, 304, 305, 306, 307, 309, 310, 311, 312, 313, 314], "train_pool": { "__deque__": [8, 13, 44, 48, 58, 67, 69, 70, 71, 75, 77, 83, 102, 112, 127, 130, 143, 164, 166, 188, 214, 219, 223, 228, 240, 243, 257, 260, 286, 301, 308]}, "test_pool": { "__deque__": [0, 1, 2, 3, 4, 5, 6, 7, 9, 10, 11, 12, 14, 15, 16, 17, 18, 19, 20, 21, 22, 23, 24, 25, 26, 27, 28, 29, 30, 31, 32, 33, 34, 35, 36, 37, 38, 39, 40, 41, 42, 43, 45, 46, 47, 49, 50, 51, 52, 53, 54, 55, 56, 57, 59, 60, 61, 62, 63, 64, 65, 66, 68, 72, 73, 74, 76, 78, 79, 80, 81, 82, 84, 85, 86, 87, 88, 89, 90, 91, 92, 93, 94, 95, 96, 97, 98, 99, 100, 101, 103, 104, 105, 106, 107, 108, 109, 110, 111, 113, 114, 115, 116, 117, 118, 119, 120, 121, 122, 123, 124, 125, 126, 128, 129, 131, 132, 133, 134, 135, 136, 137, 138, 139, 140, 141, 142, 144, 145, 146, 147, 148, 149, 150, 151, 152, 153, 154, 155, 156, 157, 158, 159, 160, 161, 162, 163, 165, 167, 168, 169, 170, 171, 172, 173, 174, 175, 176, 177, 178, 179, 180, 181, 182, 183, 184, 185, 186, 187, 189, 190, 191, 192, 193, 194, 195, 196, 197, 198, 199, 200, 201, 202, 203, 204, 205, 206, 207, 208, 209, 210, 211, 212, 213, 215, 216, 217, 218, 220, 221, 222, 224, 225, 226, 227, 229, 230, 231, 232, 233, 234, 235, 236, 237, 238, 239, 241, 242, 244, 245, 246, 247, 248, 249, 250, 251, 252, 253, 254, 255, 256, 258, 259, 261, 262, 263, 264, 265, 266, 267, 268, 269, 270, 271, 272, 273, 274, 275, 276, 277, 278, 279, 280, 281, 282, 283, 284, 285, 287, 288, 289, 290, 291, 292, 293, 294, 295, 296, 297, 298, 299, 300, 302, 303, 304, 305, 306, 307, 309, 310, 311, 312, 313, 314]}}} """ network = FFBPNetwork(1, 1) sin_encoded = json.loads(sin_json, object_hook=nn_data_decoder) network.train(sin_encoded, 3001, verbosity=0) network.test(sin_encoded)