Python interface to the Apache Arrow-based Feather File Format
Project description
## Python interface to the Apache Arrow-based Feather File Format
Feather efficiently stores pandas DataFrame objects on disk.
## Installing
```shell
pip install feather-format
```
#### Mac notes
Anaconda uses a default 10.5 deployment target which does not have C++11
properly available. This can be fixed by setting:
```
export MACOSX_DEPLOYMENT_TARGET=10.10
```
This may be necessary in some other OS X environments.
## Build
Building Feather requires a C++11 compiler. We've simplified the PyPI packaging
to include libfeather (the C++ core library) to be built statically as part of
the Python extension build, but this may change in the future.
### Static builds for easier packaging
At the moment, the libfeather sources are being built and linked with the
Cython extension, rather than building the `libfeather` shared library and
linking to that.
While we continue to do this, building from source requires you to symlink (or
copy) the C++ sources. See:
```shell
# Symlink the C++ library for the static build
ln -s ../cpp/src src
python setup.py build
# To install it locally
python setup.py install
# Source distribution
python setup.py sdist
```
To change this and instead link to an installed `libfeather.so`, look in
`setup.py` and make the following change:
```python
FEATHER_STATIC_BUILD = False
```
## Limitations
Some features of pandas are not supported in Feather:
* Non-string column names
* Row indexes
* Object-type columns with non-homogeneous data
Feather efficiently stores pandas DataFrame objects on disk.
## Installing
```shell
pip install feather-format
```
#### Mac notes
Anaconda uses a default 10.5 deployment target which does not have C++11
properly available. This can be fixed by setting:
```
export MACOSX_DEPLOYMENT_TARGET=10.10
```
This may be necessary in some other OS X environments.
## Build
Building Feather requires a C++11 compiler. We've simplified the PyPI packaging
to include libfeather (the C++ core library) to be built statically as part of
the Python extension build, but this may change in the future.
### Static builds for easier packaging
At the moment, the libfeather sources are being built and linked with the
Cython extension, rather than building the `libfeather` shared library and
linking to that.
While we continue to do this, building from source requires you to symlink (or
copy) the C++ sources. See:
```shell
# Symlink the C++ library for the static build
ln -s ../cpp/src src
python setup.py build
# To install it locally
python setup.py install
# Source distribution
python setup.py sdist
```
To change this and instead link to an installed `libfeather.so`, look in
`setup.py` and make the following change:
```python
FEATHER_STATIC_BUILD = False
```
## Limitations
Some features of pandas are not supported in Feather:
* Non-string column names
* Row indexes
* Object-type columns with non-homogeneous data
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
feather-format-0.2.0.tar.gz
(98.7 kB
view details)
File details
Details for the file feather-format-0.2.0.tar.gz
.
File metadata
- Download URL: feather-format-0.2.0.tar.gz
- Upload date:
- Size: 98.7 kB
- Tags: Source
- Uploaded using Trusted Publishing? No
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | 28f83f3e02eb5b9ff32cea8a8b49905a65e6c1468b78f8a765efcb9fde047472 |
|
MD5 | 2a66efc5ec856624bc8c66389578a14b |
|
BLAKE2b-256 | 06bb072a00246f235df6a902dbaf4cb10d687ea5b3a199f786dd99c23cd08cf8 |