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FEAT-modin-project#2479: integrate asv
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Signed-off-by: Anatoly Myachev <[email protected]>
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anmyachev committed Nov 28, 2020
1 parent 0aada32 commit 69252cd
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3 changes: 3 additions & 0 deletions .gitignore
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Expand Up @@ -172,3 +172,6 @@ cscope.out
# Dask workspace
dask-worker-space/
node_modules

# Asv stuff
.asv/
159 changes: 159 additions & 0 deletions asv_bench/asv.conf.json
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{
// The version of the config file format. Do not change, unless
// you know what you are doing.
"version": 1,

// The name of the project being benchmarked
"project": "modin",

// The project's homepage
"project_url": "https://modin.readthedocs.io/",

// The URL or local path of the source code repository for the
// project being benchmarked
"repo": "..",

// The Python project's subdirectory in your repo. If missing or
// the empty string, the project is assumed to be located at the root
// of the repository.
// "repo_subdir": "",

// Customizable commands for building, installing, and
// uninstalling the project. See asv.conf.json documentation.
//
// "install_command": ["in-dir={env_dir} python -mpip install {wheel_file}"],
// "uninstall_command": ["return-code=any python -mpip uninstall -y {project}"],
// "build_command": [
// "python setup.py build",
// "PIP_NO_BUILD_ISOLATION=false python -mpip wheel --no-deps --no-index -w {build_cache_dir} {build_dir}"
// ],

// List of branches to benchmark. If not provided, defaults to "master"
// (for git) or "default" (for mercurial).
// "branches": ["master"], // for git
// "branches": ["default"], // for mercurial

// The DVCS being used. If not set, it will be automatically
// determined from "repo" by looking at the protocol in the URL
// (if remote), or by looking for special directories, such as
// ".git" (if local).
// "dvcs": "git",

// The tool to use to create environments. May be "conda",
// "virtualenv" or other value depending on the plugins in use.
// If missing or the empty string, the tool will be automatically
// determined by looking for tools on the PATH environment
// variable.
"environment_type": "conda",

// timeout in seconds for installing any dependencies in environment
// defaults to 10 min
//"install_timeout": 600,

// the base URL to show a commit for the project.
"show_commit_url": "https://github.com/modin-project/modin/commit/",

// The Pythons you'd like to test against. If not provided, defaults
// to the current version of Python used to run `asv`.
// "pythons": ["3.7"],

// The list of conda channel names to be searched for benchmark
// dependency packages in the specified order
"conda_channels": ["conda-forge", "defaults"],

// The matrix of dependencies to test. Each key is the name of a
// package (in PyPI) and the values are version numbers. An empty
// list or empty string indicates to just test against the default
// (latest) version. null indicates that the package is to not be
// installed. If the package to be tested is only available from
// PyPi, and the 'environment_type' is conda, then you can preface
// the package name by 'pip+', and the package will be installed via
// pip (with all the conda available packages installed first,
// followed by the pip installed packages).
"matrix": {
"pandas": ["1.1.4"],
"packaging": [""],
"pip+ray": ["1.0.1"],
"pyarrow": ["1.0"]
},
// Combinations of libraries/python versions can be excluded/included
// from the set to test. Each entry is a dictionary containing additional
// key-value pairs to include/exclude.
//
// An exclude entry excludes entries where all values match. The
// values are regexps that should match the whole string.
//
// An include entry adds an environment. Only the packages listed
// are installed. The 'python' key is required. The exclude rules
// do not apply to includes.
//
// In addition to package names, the following keys are available:
//
// - python
// Python version, as in the *pythons* variable above.
// - environment_type
// Environment type, as above.
// - sys_platform
// Platform, as in sys.platform. Possible values for the common
// cases: 'linux2', 'win32', 'cygwin', 'darwin'.
//
// "exclude": [
// {"python": "3.2", "sys_platform": "win32"}, // skip py3.2 on windows
// {"environment_type": "conda", "six": null}, // don't run without six on conda
// ],
//
// "include": [
// // additional env for python2.7
// {"python": "2.7", "numpy": "1.8"},
// // additional env if run on windows+conda
// {"platform": "win32", "environment_type": "conda", "python": "2.7", "libpython": ""},
// ],

// The directory (relative to the current directory) that benchmarks are
// stored in. If not provided, defaults to "benchmarks"
// "benchmark_dir": "benchmarks",

// The directory (relative to the current directory) to cache the Python
// environments in. If not provided, defaults to "env"
"env_dir": ".asv/env",

// The directory (relative to the current directory) that raw benchmark
// results are stored in. If not provided, defaults to "results".
"results_dir": ".asv/results",

// The directory (relative to the current directory) that the html tree
// should be written to. If not provided, defaults to "html".
"html_dir": ".asv/html",

// The number of characters to retain in the commit hashes.
// "hash_length": 8,

// `asv` will cache results of the recent builds in each
// environment, making them faster to install next time. This is
// the number of builds to keep, per environment.
// "build_cache_size": 2,

// The commits after which the regression search in `asv publish`
// should start looking for regressions. Dictionary whose keys are
// regexps matching to benchmark names, and values corresponding to
// the commit (exclusive) after which to start looking for
// regressions. The default is to start from the first commit
// with results. If the commit is `null`, regression detection is
// skipped for the matching benchmark.
//
// "regressions_first_commits": {
// "some_benchmark": "352cdf", // Consider regressions only after this commit
// "another_benchmark": null, // Skip regression detection altogether
// },

// The thresholds for relative change in results, after which `asv
// publish` starts reporting regressions. Dictionary of the same
// form as in ``regressions_first_commits``, with values
// indicating the thresholds. If multiple entries match, the
// maximum is taken. If no entry matches, the default is 5%.
//
// "regressions_thresholds": {
// "some_benchmark": 0.01, // Threshold of 1%
// "another_benchmark": 0.5, // Threshold of 50%
// },
}
1 change: 1 addition & 0 deletions asv_bench/benchmarks/__init__.py
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"""Modin benchmarks"""
126 changes: 126 additions & 0 deletions asv_bench/benchmarks/benchmarks.py
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# Write the benchmarking functions here.
# See "Writing benchmarks" in the asv docs for more information.
import modin.pandas as pd
import numpy as np

pd.DEFAULT_NPARTITIONS = 4


class TimeGroupBy:
param_names = ["rows_cols"]
params = [
[
(100, 1000),
(10000, 1000),
]
]

def setup(self, rows_cols):
rows, cols = rows_cols
# workaround for #2482
columns = [str(x) for x in range(cols)]
self.df = pd.DataFrame(
np.random.randint(0, 100, size=(rows, cols)), columns=columns
)

# add case for multiple by
def time_groupby_sum(self, rows_cols):
self.df.groupby(by="1").sum()

def time_groupby_mean(self, rows_cols):
self.df.groupby(by="1").mean()

def time_groupby_count(self, rows_cols):
self.df.groupby(by="1").count()


class TimeJoin:
param_names = ["rows_cols", "how"]
params = [
[
(100, 1000),
(10000, 1000),
],
["outer", "inner", "left", "right"],
]

def setup(self, rows_cols, how):
rows, cols = rows_cols
# workaround for #2482
columns = [str(x) for x in range(cols)]
numpy_data = np.random.randint(0, 100, size=(rows, cols)), columns=columns
self.df_left = pd.DataFrame(numpy_data)
self.df_right = pd.DataFrame(numpy_data)

def time_join(self, rows_cols, how):
self.df_left.join(self.df_right, how=how, lsuffix="left_")


class TimeMerge:
param_names = ["rows_cols", "how"]
params = [
[
(100, 1000),
(10000, 1000),
],
["outer", "inner", "left", "right"],
]

def setup(self, rows_cols, how):
rows, cols = rows_cols
# workaround for #2482
columns = [str(x) for x in range(cols)]
numpy_data = np.random.randint(0, 100, size=(rows, cols)), columns=columns
self.df_left = pd.DataFrame(numpy_data)
self.df_right = pd.DataFrame(numpy_data)

def time_merge(self, rows_cols, how):
self.df_left.merge(self.df_right, how=how, left_index=True, right_index=True)


class TimeArithmetic:
param_names = ["rows_cols"]
params = [
[
(100, 1000),
(10000, 1000),
]
]

def setup(self, rows_cols):
rows, cols = rows_cols
# workaround for #2482
columns = [str(x) for x in range(cols)]
self.df = pd.DataFrame(
np.random.randint(0, 100, size=(rows, cols)), columns=columns
)

def time_transpose_lazy(self, rows_cols):
self.df.T

def time_transpose(self, rows_cols):
repr(self.df.T)

def time_sum(self, rows_cols):
self.df.sum()

def time_sum_axis_1(self, rows_cols):
self.df.sum(axis=1)

def time_median(self, rows_cols):
self.df.median()

def time_median_axis_1(self, rows_cols):
self.df.median(axis=1)

def time_nunique(self, rows_cols):
self.df.nunique()

def time_nunique_axis_1(self, rows_cols):
self.df.nunique(axis=1)

def time_apply(self, rows_cols):
self.df.apply(lambda df: df.sum())

def time_apply(self, rows_cols):
self.df.apply(lambda df: df.sum(), axis=1)

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