Ice (save) your data and high level objects for use later.
Project description
dataicer -
Ice (save) your data and high level objects for use later.
Do you have complex classes or objects that you want to save to disk and reinstate later? Do you want to use a data structures natural save methods? Do you want it to be easy and manageable, capturing key information so you can come back and load your data again later if you need to?
dataicer
can help you with all this. Build on top of jsonpickle
, dataicer
allows you to create a central handler (just for a directory at the moment) where
Python objects can be saved in json
format. However, while json
format might
be ok for small objects or simple types it is not great for numpy.ndarray
or
pandas.DataFrame
or xarray.Dataset
complex structures. Complex structures also
come with their own way of saving information and dataicer
leverages this on top
of jsonpickle
to create portable and recreatable saved Python state.
Installation
Installation using pip
via the source directory.
pip install .
or install from PyPi
pip install digirock
Usage
First, create a new DirectoryHandler
class. This points at the archive folder
you want to use.
If you have speical classes you need to pickle they need a special handler. Dataicer includes handlers for numpy.ndarray
, xarray.Dataarray
and xarray.Dataset
and pandas.DataFrame
. Handlers are unique to the DirectoryHandler
instance.
from dataicer import DirectoryHandler, get_numpy_handlers, get_pandas_handlers, get_xarray_handlers
handlers = get_pandas_handlers()
handlers.update(get_xarray_handlers())
dh = DirectoryHandler("my_archive", handlers, mode="w")
Numpy arrays can be saved in single column "txt"
, "npy"
binary, or "npz"
compressed.
Xarray structures can only be saved as "nc"
netcdf.
Pandas DataFrames can be saved as "h5"
hdf5 or "csv"
text files.
Objects are then passed to the ice
function of the DirectoryHandler
as keyword arguments.
import numpy as np
import xarry as xr
import pandas as pd
dh.ice(nparr=np.zeros(10), df=pd.DataFrame(data={"a":[1, 2, 3]}), xarrds=xr.tutorial.scatter_example_dataset())
dataicer
will create the directory my_archive
and place three files identified via a uuid
in the directory for each object. There is also a JSON file with the key name containing all
the meta information for the object saved and a meta.json
file which contains information
about the system state at the time the archive was created.
The deice
command can be used to reload all of the arguments into a dictionary.
state = dh.deice()
state["nparr"]
array([0., 0., 0., 0., 0., 0., 0., 0., 0., 0.])
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