Collection of my machine-learning stuff.
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import numpy as np
class AIlib:
def sigmoid(x):
return 1/(1 + np.exp(-x))
def sigmoid_der(x):
return AIlib.sigmoid(x) * (1 - AIlib.sigmoid(x))
def correctFunc(inp:np.array): # generates the correct answer for the AI
return np.array( [inp[2], inp[1], inp[0]] ) # basically invert the rgb values
def calcCost( predicted:np.array, correct:np.array ): # cost function, lower -> good, higher -> bad, bad bot, bad
return (predicted - correct)**2
def calcCost_derv( predicted:np.array, correct:np.array ):
return (predicted - correct)*2
def genRandomMatrix( x:int, y:int, min: float=0.0, max: float=1.0 ): # generate a matrix with x, y dimensions with random values from min-max in it
# apply ranger with * and -
mat = np.random.rand(x, y) - 0.25
return mat
def think( inp:np.array, weights:list, bias:list, layerIndex: int=0 ): # recursive thinking, hehe
maxLayer = len(weights) - 1
weightedLayer = np.dot( inp, weights[layerIndex] ) # dot multiply the input and the weights
layer = AIlib.sigmoid( np.add(weightedLayer, bias[layerIndex]) ) # add the biases
if( layerIndex < maxLayer ):
return AIlib.think( layer, weights, bias, layerIndex + 1 )
else:
out = np.squeeze(np.asarray(layer))
print("-Result-")
print(out)
print("\n")
return out
def gradient( prop, cost:float, inp:np.array, predicted:np.array, correct:np.array ):
# Calculate the gradient
# i.e. : W' = W - lr * gradient (respect to W) = W - lr*[ dC / dW[i] ... ]
# So if we change all the weights with i.e. 0.01 = theta, then we can derive the gradient with math and stuff
return gradient
def mutateProp( prop:list, lr:float, gradient ):
newProp = [None] * len(prop)
for i in range(len(prop)):
newProp[i] = prop[i] - (lr*gradient)
return newProp
def learn( inp:np.array, obj, theta:float ):
# Calculate the derivative for:
# Cost in respect to weights
# Cost in respect to biases