tx · 5hL75pNoL1gvstP4hfntDci61gAiqMQpvbQed8rMW4ds

3N3n75UqB8G1GKmXFr4zPhKCjGcqJPRSuJY:  -0.01000000 Waves

2024.03.07 19:33 [3007867] smart account 3N3n75UqB8G1GKmXFr4zPhKCjGcqJPRSuJY > SELF 0.00000000 Waves

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OldNewDifferences
1-# no script
1+{-# STDLIB_VERSION 5 #-}
2+{-# SCRIPT_TYPE ACCOUNT #-}
3+{-# CONTENT_TYPE DAPP #-}
4+let layer1Weights = [[4051769, 4062273], [-5948515, -6010085]]
5+
6+let layer1Biases = [-6307843, 2229872]
7+
8+let layer2Weights = [[-8372358, -8139317]]
9+
10+let layer2Biases = [4083679]
11+
12+func sigmoid (z) = {
13+ let e = 2718281
14+ let base = 1000000
15+ let negativeZ = (-1 * z)
16+ let expPart = fraction(e, negativeZ, base)
17+ fraction(base, 1000000, (base + expPart))
18+ }
19+
20+
21+func dotProduct (a,b) = {
22+ let product0 = fraction(a[0], b[0], 1000000)
23+ let product1 = fraction(a[1], b[1], 1000000)
24+ (product0 + product1)
25+ }
26+
27+
28+func forwardPass (input,weights,biases) = {
29+ let sum0 = (dotProduct(input, weights[0]) + biases[0])
30+ let sum1 = (dotProduct(input, weights[1]) + biases[1])
31+ let sig0 = sigmoid(sum0)
32+ let sig1 = sigmoid(sum1)
33+[sig0, sig1]
34+ }
35+
36+
37+func xorNeuralNetwork (input1,input2) = {
38+ let input = [input1, input2]
39+ let hiddenLayerOutput = forwardPass(input, layer1Weights, layer1Biases)
40+ let outputLayerSum = (dotProduct(hiddenLayerOutput, layer2Weights[0]) + layer2Biases[0])
41+ let output = sigmoid(outputLayerSum)
42+ output
43+ }
44+
45+
46+@Callable(i)
47+func predict (inputData) = {
48+ let input1 = if (if ((inputData == 0))
49+ then true
50+ else (inputData == 1))
51+ then 0
52+ else 1000000
53+ let input2 = if (if ((inputData == 0))
54+ then true
55+ else (inputData == 2))
56+ then 0
57+ else 1000000
58+ let result = xorNeuralNetwork(input1, input2)
59+[IntegerEntry("result", result)]
60+ }
61+
62+

github/deemru/w8io/6500d08 
62.08 ms