4.7. Storage#
4.7.1. Description#
The Storage
is an object that is responsible for storing extracted features
as computed from Marker step of the pipeline. If the pipeline is
provided with a storage-like
object, the extracted features are stored via
that object else they are kept in memory.
Storage is meant to be used inside the datagrabber context but you can operate on them outside the context as long as the processed data is in the memory and the Python runtime has not garbage-collected it.
The Markers are responsible for defining what storage kind
(matrix
, vector
, timeseries
) they support for which
data type by overriding its get_output_type
method. The
storage object in turn declares and provides implementation for specific
storage kind. For example, SQLiteFeatureStorage
supports saving
matrix
, vector
and timeseries
via store_matrix
, store_vector
and store_timeseries
methods respectively.
For storage interfaces not supported by junifer yet, you can either make your
own Storage
by providing a concrete implementation of
BaseFeatureStorage
or open an issue on junifer Github and we can
help you out.
4.7.2. Storage Types#
Storage Type |
Description |
Options |
Reference |
---|---|---|---|
|
A 2D matrix with row and column names |
|
|
|
A 1D row vector of values with column names |
|
|
|
A 2D matrix of values with column names |
|
4.7.3. Storage Interfaces#
Storage class |
File extension |
File type |
Storage kinds |
---|---|---|---|
|
SQLite |
|
|
|
HDF5 |
|