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  • API
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  • examples

examples#

Example datasets for tutorials and testing.

Functions

_get_data_by_filename(fname)

Download file or used cached version.

generate_ar_data([n_series, timesteps, ...])

Generate multivariate data without covariates.

get_stallion_data()

Demand data with covariates.

load_toydata(num_series, seq_length)

previous

TransformMixIn

next

_get_data_by_filename

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