Skip to main content

spinesTS, a powerful timeseries toolsets.

Project description

spinesTS

Time Series forecasting toolsets

Install

pip install spinesTS

spinesTS Modules

  • base: Model base class
  • data: Built-in datasets and data wrapper classes
  • feature_generator: Feature generation functions
  • metrics: Model performance measurement function
  • ml_model: Machine learning models
  • nn: neural network models
  • pipeline: Model fitting and prediction pipeline
  • plotting: Visualization of model prediction results
  • preprocessing: data preprocessing
  • utils: Tool functions set
  • layers: Neural network layer

Tutorials

Getting started

# simple demo to predict Electric data
from sklearn.preprocessing import StandardScaler
from lightgbm import LGBMRegressor
import matplotlib.pyplot as plt

from spinesTS.pipeline import Pipeline
from spinesTS.data import LoadElectricDataSets
from spinesTS.ml_model import MultiOutputRegressor
from spinesTS.preprocessing import split_series
from spinesTS.plotting import plot2d


# load data
df = LoadElectricDataSets()

# split data
x_train, x_test, y_train, y_test = split_series(
    x_seq=df['value'], 
    y_seq=df['value'],  # The sequence of parameter y_seq is cut based on parameter x_seq
    # sliding window size, every 30 before days to predict after days
    window_size=30, 
    # predict after 30 days
    pred_steps=30, 
    train_size=0.8
)

print(f"x_train shape is {x_train.shape}, "
      f"x_test shape is {x_test.shape}," 
      f"y_train shape is {y_train.shape},"
      f"y_test shape is {y_test.shape}")

# Assemble the model using Pipeline class
model = Pipeline([
    ('sc', StandardScaler()),
    ('model', MultiOutputRegressor(LGBMRegressor(random_state=2022)))
])
print("Model successfully initialization...")

# fitting model
model.fit(x_train, y_train, eval_set=(x_test, y_test), verbose=0)
print(f"r2_score is {model.score(x_test, y_test)}")

# plot the predicted results
fig = plot2d(y_test, model.predict(x_test), figsize=(20, 10), 
       eval_slices='[:30]', labels=['y_test', 'y_pred'])
plt.show()
[output]:
x_train shape is (270, 30), x_test shape is (68, 30),y_train shape is (270, 30),y_test shape is (68, 30)
Model successfully initialization...
r2_score is 0.8186046606725977

model prediction image

Using nn module

StackingRNN

import matplotlib.pyplot as plt

from spinesTS.data import LoadElectricDataSets
from spinesTS.preprocessing import split_series
from spinesTS.plotting import plot2d
from spinesTS.nn import StackingRNN
from spinesTS.metrics import r2_score, mean_absolute_error, mean_absolute_percentage_error


# load data
df = LoadElectricDataSets()

# split data
x_train, x_test, y_train, y_test = split_series(
    x_seq=df['value'], 
    y_seq=df['value'],
    # sliding window size, every 128 before days to predict after days
    window_size=128, 
    # predict after 24 days goods incoming
    pred_steps=24, 
    train_size=0.8
)

print(f"x_train shape is {x_train.shape}, "
      f"x_test shape is {x_test.shape}," 
      f"y_train shape is {y_train.shape},"
      f"y_test shape is {y_test.shape}")

# model initialization
model = StackingRNN(in_features=128, out_features=24, 
                    random_seed=42, loss_fn='mae', 
                    learning_rate=0.001, dropout=0.1, diff_n=1, 
                    stack_num=2, bidirectional=True, device='cpu')

model.fit(x_train, y_train, eval_set=(x_test[:-2], y_test[:-2]), batch_size=32,
             min_delta=0, patience=100, epochs=3000, verbose=False, lr_scheduler=None)
y_pred_cs = model.predict(x_test[-2:])
print(f"r2: {r2_score(y_test[-2:].T, y_pred_cs.T)}")
print(f"mae: {mean_absolute_error(y_test[-2:], y_pred_cs)}")
print(f"mape: {mean_absolute_percentage_error(y_test[-2:], y_pred_cs)}")
a = plot2d(y_test[-2:], y_pred_cs, eval_slices='[-1]', labels=['y_test', 'y_pred'], figsize=(20, 6))
plt.show()

GAUNet

import matplotlib.pyplot as plt

from spinesTS.data import LoadElectricDataSets
from spinesTS.preprocessing import split_series
from spinesTS.plotting import plot2d
from spinesTS.nn import GAUNet
from spinesTS.metrics import r2_score, mean_absolute_error, mean_absolute_percentage_error


# load data
df = LoadElectricDataSets()

# split data
x_train, x_test, y_train, y_test = split_series(
    x_seq=df['value'], 
    y_seq=df['value'],
    # sliding window size, every 128 before days to predict after days
    window_size=128, 
    # predict after 24 days 
    pred_steps=24, 
    train_size=0.8
)

print(f"x_train shape is {x_train.shape}, "
      f"x_test shape is {x_test.shape}," 
      f"y_train shape is {y_train.shape},"
      f"y_test shape is {y_test.shape}")

# model initialization
model = GAUNet(in_features=128, out_features=24, 
               random_seed=42, flip_features=False, 
               learning_rate=0.001, level=5, device='cpu')

model.fit(x_train, y_train, eval_set=(x_test[:-2], y_test[:-2]), batch_size=32,
             min_delta=0, patience=100, epochs=3000, verbose=False, lr_scheduler='ReduceLROnPlateau')
y_pred_cs = model.predict(x_test[-2:])
print(f"r2: {r2_score(y_test[-2:].T, y_pred_cs.T)}")
print(f"mae: {mean_absolute_error(y_test[-2:], y_pred_cs)}")
print(f"mape: {mean_absolute_percentage_error(y_test[-2:], y_pred_cs)}")
a = plot2d(y_test[-2:], y_pred_cs, eval_slices='[-1]', labels=['y_test', 'y_pred'], figsize=(20, 6))
plt.show()

Time2VecNet

import matplotlib.pyplot as plt

from spinesTS.data import LoadElectricDataSets
from spinesTS.preprocessing import split_series
from spinesTS.plotting import plot2d
from spinesTS.nn import Time2VecNet
from spinesTS.metrics import r2_score, mean_absolute_error, mean_absolute_percentage_error


# load data
df = LoadElectricDataSets()

# split data
x_train, x_test, y_train, y_test = split_series(
    x_seq=df['value'], 
    y_seq=df['value'],
    # sliding window size, every 128 before days to predict after days
    window_size=128, 
    # predict after 24 days 
    pred_steps=24, 
    train_size=0.8
)

print(f"x_train shape is {x_train.shape}, "
      f"x_test shape is {x_test.shape}," 
      f"y_train shape is {y_train.shape},"
      f"y_test shape is {y_test.shape}")

# model initialization
model = Time2VecNet(in_features=128, out_features=24, 
               random_seed=42, flip_features=False, 
               learning_rate=0.001, device='cpu')

model.fit(x_train, y_train, eval_set=(x_test[:-2], y_test[:-2]), batch_size=32,
             min_delta=0, patience=100, epochs=3000, verbose=False, lr_scheduler='CosineAnnealingLR')
y_pred_cs = model.predict(x_test[-2:])
print(f"r2: {r2_score(y_test[-2:].T, y_pred_cs.T)}")
print(f"mae: {mean_absolute_error(y_test[-2:], y_pred_cs)}")
print(f"mape: {mean_absolute_percentage_error(y_test[-2:], y_pred_cs)}")
a = plot2d(y_test[-2:], y_pred_cs, eval_slices='[-1]', labels=['y_test', 'y_pred'], figsize=(20, 6))
plt.show()

Using ml_model module

MultiStepRegressor

from lightgbm import LGBMRegressor
import matplotlib.pyplot as plt

from spinesTS.data import LoadElectricDataSets
from spinesTS.ml_model import MultiStepRegressor
from spinesTS.preprocessing import split_series
from spinesTS.plotting import plot2d


# load data
df = LoadElectricDataSets()

# split data
x_train, x_test, y_train, y_test = split_series(
    df['value'], 
    df['value'],
    # sliding window size, every 30 before days to predict after days
    window_size=30, 
    # predict after 30 days 
    pred_steps=30, 
    train_size=0.8
)

print(f"x_train shape is {x_train.shape}, "
      f"x_test shape is {x_test.shape}," 
      f"y_train shape is {y_train.shape},"
      f"y_test shape is {y_test.shape}")

# model initialization
model = MultiStepRegressor(LGBMRegressor(random_state=2022))
print("Model successfully initialization...")

# fitting model
model.fit(x_train, y_train, eval_set=(x_test, y_test), verbose=0)
print(f"r2_score is {model.score(x_test, y_test)}")

# plot the predicted results
fig = plot2d(y_test, model.predict(x_test), figsize=(20, 10), 
       eval_slices='[:30]', labels=['y_test', 'y_pred'])
plt.show()

MultiOutputRegressor

from lightgbm import LGBMRegressor
import matplotlib.pyplot as plt

from spinesTS.data import LoadElectricDataSets
from spinesTS.ml_model import MultiOutputRegressor
from spinesTS.preprocessing import split_series
from spinesTS.plotting import plot2d


# load data
df = LoadElectricDataSets()

# split data
x_train, x_test, y_train, y_test = split_series(
    df['value'], 
    df['value'],
    # sliding window size, every 30 before days to predict after days
    window_size=30, 
    # predict after 30 days 
    pred_steps=30, 
    train_size=0.8
)

print(f"x_train shape is {x_train.shape}, "
      f"x_test shape is {x_test.shape}," 
      f"y_train shape is {y_train.shape},"
      f"y_test shape is {y_test.shape}")

# model initialization
model = MultiOutputRegressor(LGBMRegressor(random_state=2022))
print("Model successfully initialization...")

# fitting model
model.fit(x_train, y_train, eval_set=(x_test, y_test), verbose=0)
print(f"r2_score is {model.score(x_test, y_test)}")

# plot the predicted results
fig = plot2d(y_test, model.predict(x_test), figsize=(20, 10), 
       eval_slices='[:30]', labels=['y_test', 'y_pred'])
plt.show()

WideGBRT

from lightgbm import LGBMRegressor
import matplotlib.pyplot as plt

from spinesTS.data import LoadElectricDataSets
from spinesTS.ml_model import GBRTPreprocessing, WideGBRT
from spinesTS.plotting import plot2d


# load data
df = LoadElectricDataSets()

# split data and generate new features
gbrt_processor = GBRTPreprocessing(in_features=128, out_features=30, 
                                   target_col='value', train_size=0.8, date_col='date',
                                   differential_n=1  # The order of data differentiation.
                                   )
gbrt_processor.fit(df)

x_train, x_test, y_train, y_test = gbrt_processor.transform(df)

print(f"x_train shape is {x_train.shape}, "
      f"x_test shape is {x_test.shape}," 
      f"y_train shape is {y_train.shape},"
      f"y_test shape is {y_test.shape}")

# model initialization
model = WideGBRT(model=LGBMRegressor(random_state=2022))
print("Model successfully initialization...")

# fitting model
model.fit(x_train, y_train, eval_set=(x_test, y_test), verbose=0)
print(f"r2_score is {model.score(x_test, y_test)}")

# plot the predicted results
fig = plot2d(y_test, model.predict(x_test), figsize=(20, 10), 
       eval_slices='[:30]', labels=['y_test', 'y_pred'])
plt.show()

Using Data module

from spinesTS.data import *
series_data = BuiltInSeriesData(print_file_list=True)
+---+----------------------+----------------------------------------------+
|   | ds name              | columns                                      |
+---+----------------------+----------------------------------------------+
| 0 | ETTh1                | date, HUFL, HULL, MUFL, MULL, LUFL, LULL, OT |
| 1 | ETTh2                | date, HUFL, HULL, MUFL, MULL, LUFL, LULL, OT |
| 2 | ETTm1                | date, HUFL, HULL, MUFL, MULL, LUFL, LULL, OT |
| 3 | ETTm2                | date, HUFL, HULL, MUFL, MULL, LUFL, LULL, OT |
| 4 | Electric_Production  | date, value                                  |
| 5 | Messages_Sent        | date, ta, tb, tc                             |
| 6 | Messages_Sent_Hour   | date, hour, ta, tb, tc                       |
| 7 | Supermarket_Incoming | date, goods_cnt                              |
| 8 | Web_Sales            | date, type_a, type_b, sales_cnt              |
+---+----------------------+----------------------------------------------+
# select one dataset
df_a = series_data['ETTh1']  # series_data[0], it works, too
print(type(df_a))  # <class 'spinesTS.data._data_base.DataTS'>

# Because DataTS inherit from pandas DataFrame, it has all the functionality of pandas DataFrame
df_a.head() ,df_a.tail(), df_a.shape

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

spinesTS-0.3.12.tar.gz (8.8 MB view details)

Uploaded Source

Built Distribution

spinesTS-0.3.12-py3-none-any.whl (8.9 MB view details)

Uploaded Python 3

File details

Details for the file spinesTS-0.3.12.tar.gz.

File metadata

  • Download URL: spinesTS-0.3.12.tar.gz
  • Upload date:
  • Size: 8.8 MB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.2 CPython/3.11.5

File hashes

Hashes for spinesTS-0.3.12.tar.gz
Algorithm Hash digest
SHA256 0ca749da64891a3cb5b3d55f930976959533935d5458468f6cc4cec603c6a642
MD5 2e68e3a89d4fbe5818f58c395633703c
BLAKE2b-256 54410cc3011f3f3f0cb23fb21c5c965a148a65439447b8fd75b84e71304ef28d

See more details on using hashes here.

File details

Details for the file spinesTS-0.3.12-py3-none-any.whl.

File metadata

  • Download URL: spinesTS-0.3.12-py3-none-any.whl
  • Upload date:
  • Size: 8.9 MB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.2 CPython/3.11.5

File hashes

Hashes for spinesTS-0.3.12-py3-none-any.whl
Algorithm Hash digest
SHA256 74d87b5e0b0c7627cd335abd2ca8bc3f6aa6c89077951a6135460cb338c38459
MD5 fe2631d3be383607ec4a79d767c4acd7
BLAKE2b-256 622abe5763cda41cf96aed3c522f48d64f96beef9040b812d56aba24198f3b24

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page