python-fastparquet/python-fastparquet.spec
Matej Cepl 4cca0bf52a Accepting request 910725 from home:bnavigator:branches:devel:languages:python:numeric
- Update to version 0.7.1
  * Back compile for older versions of numpy
  * Make pandas nullable types opt-out. The old behaviour (casting
    to float) is still available with ParquetFile(...,
    pandas_nulls=False).
  * Fix time field regression: IsAdjustedToUTC will be False when
    there is no timezone
  * Micro improvements to the speed of ParquetFile creation by
    using simple simple string ops instead of regex and
    regularising filenames once at the start. Effects datasets with
    many files.
- Release 0.7.0
  * This version institutes major, breaking changes, listed here,
    and incremental fixes and additions.
  * Reading a directory without a _metadata summary file now works
    by providing only the directory, instead of a list of
    constituent files. This change also makes direct of use of
    fsspec filesystems, if given, to be able to load the footer
    metadata areas of the files concurrently, if the storage
    backend supports it, and not directly instantiating
    intermediate ParquetFile instances
  * row-level filtering of the data. Whereas previously, only full 
    row-groups could be excluded on the basis of their parquet 
    metadata statistics (if present), filtering can now be done 
    within row-groups too. The syntax is the same as before, 
    allowing for multiple column expressions to be combined with 
    AND|OR, depending on the list structure. This mechanism 
    requires two passes: one to load the columns needed to create 
    the boolean mask, and another to load the columns actually 
    needed in the output. This will not be faster, and may be 
    slower, but in some cases can save significant memory 
    footprint, if a small fraction of rows are considered good and 
    the columns for the filter expression are not in the output. 
    Not currently supported for reading with DataPageV2.
  * DELTA integer encoding (read-only): experimentally working, 
    but we only have one test file to verify against, since it is 
    not trivial to persuade Spark to produce files encoded this 
    way. DELTA can be extremely compact a representation for 
    slowly varying and/or monotonically increasing integers.
  * nanosecond resolution times: the new extended "logical" types 
    system supports nanoseconds alongside the previous millis and 
    micros. We now emit these for the default pandas time type, 
    and produce full parquet schema including both "converted" and 
    "logical" type information. Note that all output has 
    isAdjustedToUTC=True, i.e., these are timestamps rather than 
    local time. The time-zone is stored in the metadata, as 
    before, and will be successfully recreated only in fastparquet 
    and (py)arrow. Otherwise, the times will appear to be UTC. For 
    compatibility with Spark, you may still want to use 
    times="int96" when writing.
  * DataPageV2 writing: now we support both reading and writing. 
    For writing, can be enabled with the environment variable 
    FASTPARQUET_DATAPAGE_V2, or module global fastparquet.writer.
    DATAPAGE_VERSION and is off by default. It will become on by 
    default in the future. In many cases, V2 will result in better 
    read performance, because the data and page headers are 
    encoded separately, so data can be directly read into the 
    output without addition allocation/copies. This feature is 
    considered experimental, but we believe it working well for 
    most use cases (i.e., our test suite) and should be readable 
    by all modern parquet frameworks including arrow and spark.
  * pandas nullable types: pandas supports "masked" extension 
    arrays for types that previously could not support NULL at 
    all: ints and bools. Fastparquet used to cast such columns to 
    float, so that we could represent NULLs as NaN; now we use the 
    new(er) masked types by default. This means faster reading of 
    such columns, as there is no conversion. If the metadata 
    guarantees that there are no nulls, we still use the 
    non-nullable variant unless the data was written with 
    fastparquet/pyarrow, and the metadata indicates that the 
    original datatype was nullable. We already handled writing of 
    nullable columns.

OBS-URL: https://build.opensuse.org/request/show/910725
OBS-URL: https://build.opensuse.org/package/show/devel:languages:python:numeric/python-fastparquet?expand=0&rev=34
2021-08-09 13:21:06 +00:00

88 lines
3.1 KiB
RPMSpec

#
# spec file for package python-fastparquet
#
# Copyright (c) 2021 SUSE LLC
#
# All modifications and additions to the file contributed by third parties
# remain the property of their copyright owners, unless otherwise agreed
# upon. The license for this file, and modifications and additions to the
# file, is the same license as for the pristine package itself (unless the
# license for the pristine package is not an Open Source License, in which
# case the license is the MIT License). An "Open Source License" is a
# license that conforms to the Open Source Definition (Version 1.9)
# published by the Open Source Initiative.
# Please submit bugfixes or comments via https://bugs.opensuse.org/
#
%define _buildshell /bin/bash
%{?!python_module:%define python_module() python-%{**} python3-%{**}}
%define skip_python2 1
%define skip_python36 1
Name: python-fastparquet
Version: 0.7.1
Release: 0
Summary: Python support for Parquet file format
License: Apache-2.0
URL: https://github.com/dask/fastparquet/
Source: https://github.com/dask/fastparquet/archive/%{version}.tar.gz#/fastparquet-%{version}.tar.gz
BuildRequires: %{python_module Cython}
BuildRequires: %{python_module cramjam >= 2.3.0}
# version requirement not declared for runtime, but necessary for tests.
BuildRequires: %{python_module fsspec >= 2021.6.0}
BuildRequires: %{python_module numpy-devel >= 1.18}
BuildRequires: %{python_module pandas >= 1.1.0}
BuildRequires: %{python_module pytest}
BuildRequires: %{python_module python-lzo}
BuildRequires: %{python_module setuptools}
BuildRequires: %{python_module thrift >= 0.11.0}
BuildRequires: fdupes
BuildRequires: python-rpm-macros
Requires: python-cramjam >= 2.3.0
Requires: python-fsspec
Requires: python-numpy >= 1.18
Requires: python-pandas >= 1.1.0
Requires: python-thrift >= 0.11.0
Recommends: python-python-lzo
%python_subpackages
%description
This is a Python implementation of the parquet format
for integrating it into python-based Big Data workflows.
%prep
%setup -q -n fastparquet-%{version}
# remove pytest-runner from setup_requires
sed -i "s/'pytest-runner',//" setup.py
# this is not meant for setup.py
sed -i "s/oldest-supported-numpy/numpy/" setup.py
# the tests import the fastparquet.test module and we need to import from sitearch, so install it.
sed -i -e "s/^\s*packages=\[/&'fastparquet.test', /" -e "/exclude_package_data/ d" setup.py
%build
export CFLAGS="%{optflags}"
%python_build
%install
%python_install
%python_expand rm -v %{buildroot}%{$python_sitearch}/fastparquet/{speedups,cencoding}.c
%python_expand %fdupes %{buildroot}%{$python_sitearch}
%check
# newer packaging package creates false DeprecationWarning gh#dask/fastparquet#558
donttest+=" or test_import_without_warning"
# Test test_time_millis has the wrong reference type for 32-bit
%if 0%{?__isa_bits} != 64
donttest+=" or test_time_millis"
%endif
%pytest_arch --pyargs fastparquet --import-mode append -k "not (${donttest:4})"
%files %{python_files}
%doc README.rst
%license LICENSE
%{python_sitearch}/fastparquet
%{python_sitearch}/fastparquet-%{version}*-info
%changelog