Work on fine-tuning and Important Feature selections

This commit is contained in:
2026-02-18 22:34:59 -08:00
parent 7a4fc2cda4
commit 5ff63df387
2 changed files with 60 additions and 31 deletions
+24 -14
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@@ -8,6 +8,7 @@ import os
os.environ["CUDA_VISIBLE_DEVICES"] = "-1" os.environ["CUDA_VISIBLE_DEVICES"] = "-1"
from sklearn.model_selection import train_test_split from sklearn.model_selection import train_test_split
from keras import Sequential, layers, optimizers, losses from keras import Sequential, layers, optimizers, losses
from keras.callbacks import ReduceLROnPlateau
def TrainAI(include_pull): def TrainAI(include_pull):
@@ -35,36 +36,43 @@ def TrainAI(include_pull):
# Split out the test and train # Split out the test and train
train_features, test_features, train_labels, test_labels = train_test_split(X, Y, test_size=0.2) train_features, test_features, train_labels, test_labels = train_test_split(X, Y, test_size=0.2)
# Create a normalizer to nomralize the data
normalizer = layers.Normalization(axis=-1)
normalizer.adapt(np.array(train_features))
# Create the DNN # Create the DNN
dnn_model = Sequential([ dnn_model = Sequential([
layers.Input(shape=(train_features.shape[1],)), # Load the feature count dynamically layers.Input(shape=(train_features.shape[1],)), # Load the feature count dynamically
normalizer, layers.Dense(256, activation='elu'),
layers.Dense(64, activation='elu'), layers.Dropout(0.1), # Small dropout to prevent it from memorizing noise
layers.Dense(64, activation='elu'), layers.Dense(128, activation='elu'),
layers.Dense(1) layers.Dropout(0.1), # Small dropout to prevent it from memorizing noise
layers.Dense(24, activation='elu'),
layers.Dense(1, activation='linear')
]) ])
# Allow negative numbers
dnn_model.add(layers.LeakyReLU(alpha=0.01))
# Configure the model # Configure the model
dnn_model.compile( dnn_model.compile(
optimizer=optimizers.Adam(learning_rate=0.00001, clipvalue=1.0), optimizer=optimizers.Adam(learning_rate=0.0001, clipvalue=1.0),
loss=losses.Huber() loss="mse",
metrics=['mae'] # See it train while it runs
) )
# Show the summary before training the model # Show the summary before training the model
dnn_model.summary() dnn_model.summary()
# Learning rate reducer
reduce_lr = ReduceLROnPlateau(monitor='val_loss', factor=0.5, patience=5, min_lr=0.0000001)
# Train the model # Train the model
Training_Data = dnn_model.fit( Training_Data = dnn_model.fit(
train_features, train_features,
train_labels, train_labels,
batch_size=64, batch_size=64,
epochs=39, # Tuned to the point before overfitting epochs=50, # Tuned to the point before overfitting
verbose=1, # Show progress verbose=1, # Show progress
validation_split = 0.2 # Calculate validation results on 20% of the training data. validation_split = 0.2, # Calculate validation results on 20% of the training data.
shuffle=True,
callbacks=[reduce_lr] # Reduce the learning_rate every run
) )
# Predict # Predict
@@ -79,7 +87,7 @@ def TrainAI(include_pull):
_ = plt.plot(lims, lims) _ = plt.plot(lims, lims)
# Current Test Results: 1.221876300405711e-05 # Current Test Results: 0.3382711112499237
test_results = dnn_model.evaluate( test_results = dnn_model.evaluate(
test_features, test_labels, verbose=0 test_features, test_labels, verbose=0
) )
@@ -89,4 +97,6 @@ def TrainAI(include_pull):
dnn_model.save(os.path.join(DATA_DIR, "model.keras")) dnn_model.save(os.path.join(DATA_DIR, "model.keras"))
if __name__ == "__main__": if __name__ == "__main__":
TrainAI(False) TrainAI(True)
# Last train Predicted Target_Close: [0.0022113274317234755, 0.0021446370519697666, 0.0022628342267125845, 0.002175702480599284, 0.0021452796645462513, 0.0020838389173150063, 0.0017336219316348433, 0.002210840117186308, 0.0021144403144717216, 0.0021278387866914272, 0.0021266420371830463, 0.002261851681396365, 0.002108299173414707, 0.002121902070939541, 0.0022294146474450827]
+36 -17
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@@ -1,4 +1,4 @@
from sklearn.preprocessing import StandardScaler from sklearn.preprocessing import MinMaxScaler
import pandas as pd import pandas as pd
import numpy as np import numpy as np
@@ -10,18 +10,13 @@ def MakeFeatures(df, i):
df = df.reset_index() df = df.reset_index()
df['Date'] = pd.to_numeric(pd.to_datetime(df['Date'])) df['Date'] = pd.to_numeric(pd.to_datetime(df['Date']))
# Add the Symbol column for tracking | as an int 1 hot encoded
df['Symbol'] = i
# Add feature Spread
df['Spread'] = abs( df['High'] - df['Low'] )
# Add feature for Returns # Add feature for Returns
df['Return'] = df['Close'].pct_change() df['Return'] = df['Close'].pct_change()
# Log Returns (Better for AI than pct_change for statistical normality)
df['Log_Return'] = np.log(df['Close'] / df['Close'].shift(1))
# Add feature for volitility last 5 # Add feature for volitility last 5
df['Volatility_5'] = df['Return'].transform(lambda x: x.rolling(5).std()) df['Volatility_5'] = df['Return'].transform(lambda x: x.rolling(5).std())
# Add feature for volitility last 20 # Add feature for volitility last 20
df['Volatility_20'] = df['Return'].transform(lambda x: x.rolling(20).std()) df['Volatility_20'] = df['Return'].transform(lambda x: x.rolling(20).std())
@@ -33,11 +28,10 @@ def MakeFeatures(df, i):
df['RSI'] = 100 - (100 / (1 + rs)) df['RSI'] = 100 - (100 / (1 + rs))
# Moving Average Crossover (Golden/Death Cross logic) # Moving Average Crossover (Golden/Death Cross logic)
df['Moving_Average_5'] = df['Close'].rolling(window=5).mean() df['Moving_Average_5'] = df['Close'].rolling(window=20).mean()
df['Moving_Average_20'] = df['Close'].rolling(window=20).mean() df['Moving_Average_20'] = df['Close'].rolling(window=20).mean()
# if short term > long term (bullish), else 0 # if short term > long term (bullish), else 0
df['Trend_Signal'] = (df['Moving_Average_5'] > df['Moving_Average_20']).astype(int) df['Trend_Signal'] = (df['Moving_Average_5'] > df['Moving_Average_20']).astype(int)
# Distance from MA (How overextended are we?) # Distance from MA (How overextended are we?)
df['Dist_From_MA20'] = (df['Close'] / df['Moving_Average_20']) - 1 df['Dist_From_MA20'] = (df['Close'] / df['Moving_Average_20']) - 1
@@ -47,30 +41,52 @@ def MakeFeatures(df, i):
lower_band = df['Moving_Average_20'] - (std_20 * 2) lower_band = df['Moving_Average_20'] - (std_20 * 2)
df['BB_Pos'] = (df['Close'] - lower_band) / (upper_band - lower_band) df['BB_Pos'] = (df['Close'] - lower_band) / (upper_band - lower_band)
# Log Returns (Better for AI than pct_change for statistical normality) # Candle Wick's
df['Log_Return'] = np.log(df['Close'] / df['Close'].shift(1)) df['Spread'] = (df['High'] - df['Low']) / df['Close'] # in percentage of price
candle_top = df[['Open', 'Close']].max(axis=1)
# This is our training metric of 5 days ahead df['Body_Size'] = (df['Close'] - df['Open']).abs() / (df['High'] - df['Low'])
df['Target_Close'] = df['Close'].shift(-5).pct_change() df['Upper_Shadow'] = (df['High'] - candle_top) / (df['High'] - df['Low'])
# Is volume 2x higher than the 20-day average?
df['Vol_Intensity'] = df['Volume'] / df['Volume'].rolling(20).mean()
# Volume Change # Volume Change
df['Volume_Chg'] = df['Volume'].pct_change() df['Volume_Chg'] = df['Volume'].pct_change()
# Return lagged
for lag in range(1, 4):
df[f'Return_Lag_{lag}'] = df['Return'].shift(lag)
df[f'Vol_Lag_{lag}'] = df['Volume_Chg'].shift(lag)
# This is our training metric of price difference 5 days ahead
df['Target_Close'] = np.log(df['Close'].shift(-5) / df['Close'])
df['Target_Close'] = np.log(df['Close'].shift(-5) / df['Close']) / df['Volatility_20']
# Remove noise data from the model to really focus on percent changes
df.drop('Open', axis=1)
df.drop('High', axis=1)
df.drop('Low', axis=1)
df.drop('Close', axis=1)
df.drop('Volume', axis=1)
df.drop('Moving_Average_5', axis=1)
df.drop('Moving_Average_20', axis=1)
# Return new df with new features # Return new df with new features
return df return df
def Prepare(df): def Prepare(df):
df = df.replace([np.inf, -np.inf], 0)
# Remove indicators and set the target # Remove indicators and set the target
X = df.drop('Target_Close', axis=1) X = df.drop('Target_Close', axis=1)
Y = df['Target_Close'] Y = df['Target_Close']
# Scale the features to the same size # Scale the features to the same size
feature_scaler = StandardScaler() feature_scaler = MinMaxScaler()
X_scaled = feature_scaler.fit_transform(X) X_scaled = feature_scaler.fit_transform(X)
# Safe for the Y # Safe for the Y
target_scaler = StandardScaler() target_scaler = MinMaxScaler()
y_scaled = target_scaler.fit_transform(Y.values.reshape(-1, 1)) y_scaled = target_scaler.fit_transform(Y.values.reshape(-1, 1))
return X_scaled, y_scaled, feature_scaler, target_scaler return X_scaled, y_scaled, feature_scaler, target_scaler
@@ -82,6 +98,9 @@ def CleanDF(df):
# Drop rows with null values # Drop rows with null values
df.dropna(inplace=True) df.dropna(inplace=True)
# Replace Infinity with 0 -> This fixes the AI mental breakdown
df = df.replace([np.inf, -np.inf], 0)
# Replace Infinity with 0 -> This fixes the AI mental breakdown # Replace Infinity with 0 -> This fixes the AI mental breakdown
df['Volume_Chg'] = df['Volume_Chg'].replace([np.inf, -np.inf], 0) df['Volume_Chg'] = df['Volume_Chg'].replace([np.inf, -np.inf], 0)