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Class Optimization | |
# ... | |
def forecast_with_lag_features(self, test_loader, batch_size=1, n_features=1, n_steps=100): | |
test_loader_iter = iter(test_loader) | |
predictions = [] | |
*_, (X, y) = test_loader_iter | |
y = y.to(device).detach().numpy() |
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def plot_dataset_with_forecast(df, df_forecast, title): | |
data = [] | |
value = go.Scatter( | |
x=df.index, | |
y=df.value, | |
mode="lines", | |
name="values", | |
marker=dict(), | |
text=df.index, |
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def format_forecasts(forecasts, index, scaler): | |
preds = np.concatenate(forecasts, axis=0).ravel() | |
df_forecast = pd.DataFrame(data={"prediction": preds}, index=index) | |
df_result = df_forecast.sort_index() | |
df_result = inverse_transform(scaler, df_result, [["prediction"]]) | |
return df_result | |
df_forecast = format_forecasts(forecasts, index, scaler) |
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forecasts = opt.forecast_with_predictors(forecast_loader, | |
batch_size=1, | |
n_features=input_dim, | |
n_steps=100) |
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X_forecast, y_forecast = feature_label_split(df_forecast, 'value') | |
scaler = get_scaler('minmax') | |
X_train_arr = scaler.fit_transform(X_train) | |
X_forecast_arr = scaler.transform(X_forecast) | |
y_train_arr = scaler.fit_transform(y_train) | |
y_forecast_arr = scaler.transform(y_forecast) | |
forecast_dataset = TensorDataset(torch.Tensor(X_forecast_arr), | |
torch.Tensor(y_forecast_arr)) |
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df_forecast['value'] = 0 | |
df_forecast= (df_forecast | |
.assign(hour = df_forecast.index.hour) | |
.assign(day = df_forecast.index.day) | |
.assign(month = df_forecast.index.month) | |
.assign(day_of_week = df_forecast.index.dayofweek) | |
.assign(week_of_year = df_forecast.index.week) | |
) | |
df_forecast = onehot_encode_pd(df_forecast, ['month','day','day_of_week','week_of_year']) |
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def get_datetime_index(df): | |
return ( | |
pd.to_datetime(df.index[-1]) | |
+ (pd.to_datetime(df.index[-1]) - pd.to_datetime(df.index[-2])), | |
pd.to_datetime(df.index[-1]) - pd.to_datetime(df.index[-2]), | |
) | |
start_date, freq = get_datetime_index(y_test) | |
index = pd.date_range(start=start_date, freq=freq, periods=100) | |
df_forecast = pd.DataFrame(index=index) |
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class Optimization: | |
# ... | |
def forecast_with_predictors( | |
self, forecast_loader, batch_size=1, n_features=1, n_steps=100 | |
): | |
"""Forecasts values for RNNs with predictors and one-dimensional output | |
The method takes DataLoader for the test dataset, batch size for mini-batch testing, | |
number of features and number of steps to predict as inputs. Then it generates the |
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from sklearn.linear_model import LinearRegression | |
def build_baseline_model(df, test_ratio, target_col): | |
X, y = feature_label_split(df, target_col) | |
X_train, X_test, y_train, y_test = train_test_split( | |
X, y, test_size=test_ratio, shuffle=False | |
) | |
model = LinearRegression() | |
model.fit(X_train, y_train) | |
prediction = model.predict(X_test) |
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import plotly.offline as pyo | |
def plot_predictions(df_result, df_baseline): | |
data = [] | |
value = go.Scatter( | |
x=df_result.index, | |
y=df_result.value, | |
mode="lines", | |
name="values", |
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