aops-apollo-toolaarch6421ccaeae6016c3d71c0e90c83c4b9238d57c986e69d0cbf6658d3d34c4bb29dfSmall tools for aops-apollo, e.g. updateinfo.xml generatersmalltools for aops-apollo, e.g.updateinfo.xml generaterhttps://gitee.com/openeuler/aops-apolloMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843837-20251014-0127aops-apollo-v2.2.0-1.src.rpm/etc/aops_apollo_tool/updateinfo_config.ini/usr/bin/gen-updateinfoaops-apolloaarch64aa133fe2d1f2c08848e3f11c6de90508a5044c23080b90ef47cc6c7384690f4dCve management service, monitor machine vulnerabilities and provide fix functions.Cve management service, monitor machine vulnerabilities and provide fix functions.https://gitee.com/openeuler/aops-apolloMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843837-20251014-0127aops-apollo-v2.2.0-1.src.rpm/etc/aops/conf.d/aops-apollo.ymlaops-apollosrc3814e6c53215b07423bea27522624a9f86d9ce882c625d2cb4457742e20a7288Cve management service, monitor machine vulnerabilities and provide fix functions.Cve management service, monitor machine vulnerabilities and provide fix functions.https://gitee.com/openeuler/aops-apolloMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843837-20251014-0127aops-ceresaarch64cb904f9d32d62865cd3f2dc7044ddd6b7c9dbd31976381fa84e4f71bb9e16078An agent which needs to be adopted in client, it managers some plugins, such as gala-gopher(kpi collection), fluentd(log collection) and so on.An agent which needs to be adopted in client, it managers some plugins, such as gala-gopher(kpi collection), fluentd(log collection) and so on.https://gitee.com/openeuler/aops-ceresMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843835-20251014-0126aops-ceres-v2.2.0-1.src.rpm/etc/aops/ceres.conf/usr/bin/aops-ceresaops-ceressrc4a524dbf99ebba9eec62a38f4d5d3f23b482f7e1e22d8af0b548bae4070b721eAn agent which needs to be adopted in client, it managers some plugins, such as gala-gopher(kpi collection), fluentd(log collection) and so on.An agent which needs to be adopted in client, it managers some plugins, such as gala-gopher(kpi collection), fluentd(log collection) and so on.https://gitee.com/openeuler/aops-ceresMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843835-20251014-0126aops-hermesaarch644275e9892534e67102b10cc7d457887037d168fd465d05fe6929d3827b3308a9Web for an intelligent diagnose frameWeb for an intelligent diagnose framehttps://gitee.com/openeuler/aops-hermesMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843835-20251014-0126aops-hermes-v2.2.0-1.src.rpmaops-hermessrc5f2824cccc4a2afbb94f3ac2d627a43b73149ef7a5ccb95e2f4c70455399cc8bWeb for an intelligent diagnose frameWeb for an intelligent diagnose framehttps://gitee.com/openeuler/aops-hermesMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843835-20251014-0126aops-toolsaarch64aa6a983f69fe5459a40cbf46f0c1ff7896c1f8bc0a5ac2c9efc1dc4342b02511aops scriptstools for aops, it's about aops deployhttps://gitee.com/openeuler/aops-vulcanusMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843835-20251014-0126aops-vulcanus-v2.2.0-1.src.rpmaops-vulcanusaarch64d015ebdd94196f42e5e13ff60522093b98280fa78750e5c85c5b93987f45aab9A basic tool libraries of aops, including logging, configure and response, etc.A basic tool libraries of aops, including logging, configure and response, etc.https://gitee.com/openeuler/aops-vulcanusMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843835-20251014-0126aops-vulcanus-v2.2.0-1.src.rpm/etc/aops/aops-config.ymlaops-vulcanussrcb9046b75f238fbbc82c21ec68806748addac2957e69a6fbc1892e2149a566bbdA basic tool libraries of aops, including logging, configure and response, etc.A basic tool libraries of aops, including logging, configure and response, etc.https://gitee.com/openeuler/aops-vulcanusMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843835-20251014-0126aops-zeusaarch641827536619634c84f92804134e1826e85c668c719ad6eb3b1669f33439a4cc59A service which is the foundation of aops.Provide one-click aops deployment, service start and stop, hot loading of
configuration files, and database initialization.
Provides: aops-zeushttps://gitee.com/openeuler/aops-zeusMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843849-20251014-0204aops-zeus-v2.2.0-1.src.rpm/usr/bin/aops-cliaops-zeussrc8e39be8ac34cf20f772aa5aa0a786e88f901d05e9ff80c17df8a64973b9e9654A service which is the foundation of aops.Provide one-click aops deployment, service start and stop, hot loading of
configuration files, and database initialization.
Provides: aops-zeushttps://gitee.com/openeuler/aops-zeusMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843849-20251014-0204async-taskaarch647b7d399609813a0fe77262879d5ec453937baa96bf7ec149ccd4fd5fe3560ebfA async task of aops.A async task of aops.https://gitee.com/openeuler/aops-zeusMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843849-20251014-0204aops-zeus-v2.2.0-1.src.rpm/etc/aops/crontab.yml/etc/aops/sync-conf.d/instance.properties/etc/aops/sync-conf.d/rdb/cve_fix_task.yml/etc/aops/sync-conf.d/rdb/cve_host_match.yml/etc/aops/sync-conf.d/rdb/cve_rollback_task.yml/etc/aops/sync-conf.d/rdb/domain.yml/etc/aops/sync-conf.d/rdb/domain_conf_info.yml/etc/aops/sync-conf.d/rdb/domain_host.yml/etc/aops/sync-conf.d/rdb/host.yml/etc/aops/sync-conf.d/rdb/host_conf_sync_status.yml/etc/aops/sync-conf.d/rdb/host_group.yml/etc/aops/sync-conf.d/rdb/hotpatch_remove_task.yml/etc/aops/sync-conf.d/rdb/repo.yml/etc/aops/sync-conf.d/rdb/task_host_repo.yml/etc/aops/sync-conf.d/rdb/vul_task.yml/usr/bin/async-taskauthHubaarch64814d12ebb4b6a101441995015bfea7c3b2acbe58d4eb51b61409290de936b6f5Authentication authority based on oauth2authhub is a specialized authentication center built on OAuth2, providing robust authentication and authorization capabilities for secure user access control in your applications..https://gitee.com/openeuler/authHubMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843843-20251014-0129authHub-v2.2.0-3.src.rpm/etc/aops/conf.d/authhub.yml/etc/nginx/conf.d/authhub.nginx.confauthHubsrc3ebb517d69392fe09703d9d551ddf28f2214b3a583982e70d6919dd2fe895d72Authentication authority based on oauth2authhub is a specialized authentication center built on OAuth2, providing robust authentication and authorization capabilities for secure user access control in your applications..https://gitee.com/openeuler/authHubMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843843-20251014-0129authhub-webaarch64bc91e4677de7bef05424a97328bf1dd62027c8e86669cc597f0e7ed486e9b133Authentication authority web based on oauth2Authentication authority web based on oauth2https://gitee.com/openeuler/authHubMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843843-20251014-0129authHub-v2.2.0-3.src.rpmdnf-hotpatch-pluginaarch64bf2a7e056f85ed372e77247389c694cba148ecb00d6e4c8906e5a8784142594ednf hotpatch plugindnf hotpatch plugin, it's about hotpatch query and fixhttps://gitee.com/openeuler/aops-ceresMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843835-20251014-0126aops-ceres-v2.2.0-1.src.rpmgala-anteateraarch64dbafe5937fcbd6bf3989f5db34e7348fdc5b4ff99738b1084147010fe5e1e13cA time-series anomaly detection platform for operating system.Abnormal detection module for A-Ops projecthttps://gitee.com/openeuler/gala-anteaterMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843846-20251014-0156gala-anteater-3.0.1-1.src.rpm/etc/gala-anteater/config/gala-anteater.yaml/etc/gala-anteater/config/log.settings.ini/etc/gala-anteater/config/metricinfo.json/etc/gala-anteater/entity/app_entity.json/etc/gala-anteater/entity/pod_entity.json/etc/gala-anteater/entity/vm_entity.json/etc/gala-anteater/module/app_sli_rtt.job.json/etc/gala-anteater/module/container_disruption.job.json/etc/gala-anteater/module/disk_throughput.job.json/etc/gala-anteater/module/jvm_oom.job.json/etc/gala-anteater/module/proc_io_latency.job.json/etc/gala-anteater/module/rca.job.json/etc/gala-anteater/module/slow_node_detection.job.json/etc/gala-anteater/module/sys_io_latency.job.json/etc/gala-anteater/module/sys_nic_loss.job.json/etc/gala-anteater/module/sys_tcp_establish.job.json/etc/gala-anteater/module/sys_tcp_transmission_latency.job.json/etc/gala-anteater/module/usad_model.job.json/usr/bin/gala-anteatergala-anteatersrc1f627fdcc15b80bb6d19370a69a3967b50de5d571a2e2975f4778d067cc47a95A time-series anomaly detection platform for operating system.Abnormal detection module for A-Ops projecthttps://gitee.com/openeuler/gala-anteaterMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843846-20251014-0156gala-gopheraarch64a8988c6e993cf3198abd90f29260c66a91676a3bf7096b772f3023c7cac60a40Intelligent ops toolkit for openEulergala-gopher is a low-overhead eBPF-based probes frameworkhttps://gitee.com/openeuler/gala-gopherMulan PSL v2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843824-20251013-0914gala-gopher-2.0.2-2.src.rpm/etc/gala-gopher/extend_probes/cadvisor_probe.conf/etc/gala-gopher/extend_probes/pg_stat_probe.conf/etc/gala-gopher/gala-gopher-custom.json/etc/gala-gopher/gala-gopher.conf/etc/gala-gopher/probes.init/usr/bin/gala-gopher/usr/bin/gopher-ctlgala-gophersrcbcf20a55fc11f8fda668c2087eefe6e4c8adde92bafc9ddc6d4446e5f84c3404Intelligent ops toolkit for openEulergala-gopher is a low-overhead eBPF-based probes frameworkhttps://gitee.com/openeuler/gala-gopherMulan PSL v2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843824-20251013-0914gala-gopher-debuginfoaarch64617f61f40cda5d2cc6cbee07120ab2fac43c9f65e7da59df8f8ba6f40ce8ba15Debug information for package gala-gopherThis package provides debug information for package gala-gopher.
Debug information is useful when developing applications that use this
package or when debugging this package.https://gitee.com/openeuler/gala-gopherMulan PSL v2openEuler Copr - user HLG523653667Development/Debugeur-prod-workerlocal-aarch64-normal-prod-00843824-20251013-0914gala-gopher-2.0.2-2.src.rpm/usr/lib/debug/usr/bin/gala-gopher-2.0.2-2.aarch64.debug/usr/lib/debug/usr/bin/gopher-ctl-2.0.2-2.aarch64.debuggala-gopher-debugsourceaarch644dd8f099d3a9b337130cdf71e979dfa52c93ee270d134f3075af219a09744208Debug sources for package gala-gopherThis package provides debug sources for package gala-gopher.
Debug sources are useful when developing applications that use this
package or when debugging this package.https://gitee.com/openeuler/gala-gopherMulan PSL v2openEuler Copr - user HLG523653667Development/Debugeur-prod-workerlocal-aarch64-normal-prod-00843824-20251013-0914gala-gopher-2.0.2-2.src.rpmgala-inferenceaarch648464756c98b4f5118c75a709f7daa90de68524dd6b4e91925e720e3394164d08Cause inference module for gala-ops projectCause inference module for A-Ops projecthttps://gitee.com/openeuler/gala-spiderMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843824-20251013-0914gala-spider-2.0.1-1.src.rpm/etc/gala-inference/cause-keyword.yaml/etc/gala-inference/ext-observe-meta.yaml/etc/gala-inference/gala-inference.yaml/etc/gala-inference/infer-rule.yaml/usr/bin/gala-inferencegala-opsaarch64389b2aeb77ceb5f71f80e7e4f7cd4b7f7237382aee9686b146665dc95a91255cgala-anteater/spider/inference installation packageThis package requires gala-anteater/spider/inference, allowing users to install them all at oncehttps://gitee.com/openeuler/gala-spiderMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843824-20251013-0914gala-spider-2.0.1-1.src.rpmgala-spideraarch6422b1721cc451d5dab0de453ccf3f49589ffa5464116a4651521b9150bcb124f6OS topological graph storage service and cause inference service for gala-ops projectOS topological graph storage service for gala-ops projecthttps://gitee.com/openeuler/gala-spiderMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843824-20251013-0914gala-spider-2.0.1-1.src.rpm/etc/gala-spider/ext-observe-meta.yaml/etc/gala-spider/gala-spider.yaml/etc/gala-spider/topo-relation.yaml/usr/bin/spider-storagegala-spidersrc118ec08fbd2af52d64a60c82f52b965a366d6acad622d02604fd2b33d3b36fa6OS topological graph storage service and cause inference service for gala-ops projectOS topological graph storage service for gala-ops projecthttps://gitee.com/openeuler/gala-spiderMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843824-20251013-0914python-pandas-flavorsrcbfd48aa116b68c954eedb06b36f5cdece385db0c398d12d0f956e2994f9b53d0The easy way to write your own Pandas flavor.
**The easy way to write your own flavor of Pandas**
Pandas 0.23 added a (simple) API for registering accessors with Pandas objects.
Pandas-flavor extends Pandas' extension API by:
1. adding support for registering methods as well.
2. making each of these functions backwards compatible with older versions of Pandas.
***What does this mean?***
It is now simpler to add custom functionality to Pandas DataFrames and Series.
Import this package. Write a simple python function. Register the function using one of the following decorators.
***Why?***
Pandas is super handy. Its general purpose is to be a "flexible and powerful data analysis/manipulation library".
**Pandas Flavor** allows you add functionality that tailors Pandas to specific fields or use cases.
Maybe you want to add new write methods to the Pandas DataFrame? Maybe you want custom plot functionality? Maybe something else?
Accessors (in pandas) are objects attached to a attribute on the Pandas DataFrame/Series
that provide extra, specific functionality. For example, `pandas.DataFrame.plot` is an
accessor that provides plotting functionality.
Add an accessor by registering the function with the following decorator
and passing the decorator an accessor name.
```python
import pandas_flavor as pf
@pf.register_dataframe_accessor('my_flavor')
class MyFlavor(object):
def __init__(self, data):
self._data = data
def row_by_value(self, col, value):
"""Slice out row from DataFrame by a value."""
return self._data[self._data[col] == value].squeeze()
```
Every dataframe now has this accessor as an attribute.
```python
import my_flavor
df = pd.DataFrame(data={
"x": [10, 20, 25],
"y": [0, 2, 5]
})
print(df)
df.my_flavor.row_by_value('x', 10)
```
To see this in action, check out [pdvega](https://github.com/jakevdp/pdvega),
[PhyloPandas](https://github.com/Zsailer/phylopandas), and [pyjanitor](https://github.com/ericmjl/pyjanitor)!
Using this package, you can attach functions directly to Pandas objects. No
intermediate accessor is needed.
```python
import pandas_flavor as pf
@pf.register_dataframe_method
def row_by_value(df, col, value):
"""Slice out row from DataFrame by a value."""
return df[df[col] == value].squeeze()
```
```python
import pandas as pd
import my_flavor
df = pd.DataFrame(data={
"x": [10, 20, 25],
"y": [0, 2, 5]
})
print(df)
df.row_by_value('x', 10)
```
The pandas_flavor 0.5.0 release introduced [tracing of the registered method calls](/docs/tracing_ext.md). Now it is possible to add additional run-time logic around registered method execution which can be used for some support tasks. This extension was introduced
to allow visualization of [pyjanitor](https://github.com/pyjanitor-devs/pyjanitor) method chains as implemented in [pyjviz](https://github.com/pyjanitor-devs/pyjviz)
- **register_dataframe_method**: register a method directly with a pandas DataFrame.
- **register_dataframe_accessor**: register an accessor (and it's methods) with a pandas DataFrame.
- **register_series_method**: register a methods directly with a pandas Series.
- **register_series_accessor**: register an accessor (and it's methods) with a pandas Series.
You can install using **pip**:
```
pip install pandas_flavor
```
or conda (thanks @ericmjl)!
```
conda install -c conda-forge pandas-flavor
```
Pull requests are always welcome! If you find a bug, don't hestitate to open an issue or submit a PR. If you're not sure how to do that, check out this [simple guide](https://github.com/Zsailer/guide-to-working-as-team-on-github).
If you have a feature request, please open an issue or submit a PR!
Pandas 0.23 introduced a simpler API for [extending Pandas](https://pandas.pydata.org/pandas-docs/stable/development/extending.html#extending-pandas). This API provided two key decorators, `register_dataframe_accessor` and `register_series_accessor`, that enable users to register **accessors** with Pandas DataFrames and Series.
Pandas Flavor originated as a library to backport these decorators to older versions of Pandas (<0.23). While doing the backporting, it became clear that registering **methods** directly to Pandas objects might be a desired feature as well.[*](#footnote)
<a name="footnote">*</a>*It is likely that Pandas deliberately chose not implement to this feature. If everyone starts monkeypatching DataFrames with their custom methods, it could lead to confusion in the Pandas community. The preferred Pandas approach is to namespace your methods by registering an accessor that contains your custom methods.*
**So how does method registration work?**
When you register a method, Pandas flavor actually creates and registers a (this is subtle, but important) **custom accessor class that mimics** the behavior of a method by:
1. inheriting the docstring of your function
2. overriding the `__call__` method to call your function.https://github.com/Zsailer/pandas_flavorMITopenEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843831-20251014-0124python-pandas-flavor-helpnoarch39dc1bc6c70e2115c654b17c1a6ce970c3ffc0f2aba180f310aebf2092ebec14Development documents and examples for pandas-flavor
**The easy way to write your own flavor of Pandas**
Pandas 0.23 added a (simple) API for registering accessors with Pandas objects.
Pandas-flavor extends Pandas' extension API by:
1. adding support for registering methods as well.
2. making each of these functions backwards compatible with older versions of Pandas.
***What does this mean?***
It is now simpler to add custom functionality to Pandas DataFrames and Series.
Import this package. Write a simple python function. Register the function using one of the following decorators.
***Why?***
Pandas is super handy. Its general purpose is to be a "flexible and powerful data analysis/manipulation library".
**Pandas Flavor** allows you add functionality that tailors Pandas to specific fields or use cases.
Maybe you want to add new write methods to the Pandas DataFrame? Maybe you want custom plot functionality? Maybe something else?
Accessors (in pandas) are objects attached to a attribute on the Pandas DataFrame/Series
that provide extra, specific functionality. For example, `pandas.DataFrame.plot` is an
accessor that provides plotting functionality.
Add an accessor by registering the function with the following decorator
and passing the decorator an accessor name.
```python
import pandas_flavor as pf
@pf.register_dataframe_accessor('my_flavor')
class MyFlavor(object):
def __init__(self, data):
self._data = data
def row_by_value(self, col, value):
"""Slice out row from DataFrame by a value."""
return self._data[self._data[col] == value].squeeze()
```
Every dataframe now has this accessor as an attribute.
```python
import my_flavor
df = pd.DataFrame(data={
"x": [10, 20, 25],
"y": [0, 2, 5]
})
print(df)
df.my_flavor.row_by_value('x', 10)
```
To see this in action, check out [pdvega](https://github.com/jakevdp/pdvega),
[PhyloPandas](https://github.com/Zsailer/phylopandas), and [pyjanitor](https://github.com/ericmjl/pyjanitor)!
Using this package, you can attach functions directly to Pandas objects. No
intermediate accessor is needed.
```python
import pandas_flavor as pf
@pf.register_dataframe_method
def row_by_value(df, col, value):
"""Slice out row from DataFrame by a value."""
return df[df[col] == value].squeeze()
```
```python
import pandas as pd
import my_flavor
df = pd.DataFrame(data={
"x": [10, 20, 25],
"y": [0, 2, 5]
})
print(df)
df.row_by_value('x', 10)
```
The pandas_flavor 0.5.0 release introduced [tracing of the registered method calls](/docs/tracing_ext.md). Now it is possible to add additional run-time logic around registered method execution which can be used for some support tasks. This extension was introduced
to allow visualization of [pyjanitor](https://github.com/pyjanitor-devs/pyjanitor) method chains as implemented in [pyjviz](https://github.com/pyjanitor-devs/pyjviz)
- **register_dataframe_method**: register a method directly with a pandas DataFrame.
- **register_dataframe_accessor**: register an accessor (and it's methods) with a pandas DataFrame.
- **register_series_method**: register a methods directly with a pandas Series.
- **register_series_accessor**: register an accessor (and it's methods) with a pandas Series.
You can install using **pip**:
```
pip install pandas_flavor
```
or conda (thanks @ericmjl)!
```
conda install -c conda-forge pandas-flavor
```
Pull requests are always welcome! If you find a bug, don't hestitate to open an issue or submit a PR. If you're not sure how to do that, check out this [simple guide](https://github.com/Zsailer/guide-to-working-as-team-on-github).
If you have a feature request, please open an issue or submit a PR!
Pandas 0.23 introduced a simpler API for [extending Pandas](https://pandas.pydata.org/pandas-docs/stable/development/extending.html#extending-pandas). This API provided two key decorators, `register_dataframe_accessor` and `register_series_accessor`, that enable users to register **accessors** with Pandas DataFrames and Series.
Pandas Flavor originated as a library to backport these decorators to older versions of Pandas (<0.23). While doing the backporting, it became clear that registering **methods** directly to Pandas objects might be a desired feature as well.[*](#footnote)
<a name="footnote">*</a>*It is likely that Pandas deliberately chose not implement to this feature. If everyone starts monkeypatching DataFrames with their custom methods, it could lead to confusion in the Pandas community. The preferred Pandas approach is to namespace your methods by registering an accessor that contains your custom methods.*
**So how does method registration work?**
When you register a method, Pandas flavor actually creates and registers a (this is subtle, but important) **custom accessor class that mimics** the behavior of a method by:
1. inheriting the docstring of your function
2. overriding the `__call__` method to call your function.https://github.com/Zsailer/pandas_flavorMITopenEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843831-20251014-0124python-pandas-flavor-0.6.0-1.src.rpmpython-pingouinsrca55cfc640cd16536408150a538a8ab8f26a9a7cfcb3db4c55c256f69a769a1c7Pingouin: statistical package for Python**Pingouin** is an open-source statistical package written in Python 3 and based mostly on Pandas and NumPy. Some of its main features are listed below. For a full list of available functions, please refer to the `API documentation <https://pingouin-stats.org/build/html/api.html#>`_.
1. ANOVAs: N-ways, repeated measures, mixed, ancova
2. Pairwise post-hocs tests (parametric and non-parametric) and pairwise correlations
3. Robust, partial, distance and repeated measures correlations
4. Linear/logistic regression and mediation analysis
5. Bayes Factors
6. Multivariate tests
7. Reliability and consistency
8. Effect sizes and power analysis
9. Parametric/bootstrapped confidence intervals around an effect size or a correlation coefficient
10. Circular statistics
11. Chi-squared tests
12. Plotting: Bland-Altman plot, Q-Q plot, paired plot, robust correlation...
Pingouin is designed for users who want **simple yet exhaustive statistical functions**.
For example, the :code:`ttest_ind` function of SciPy returns only the T-value and the p-value. By contrast,
the :code:`ttest` function of Pingouin returns the T-value, the p-value, the degrees of freedom, the effect size (Cohen's d), the 95% confidence intervals of the difference in means, the statistical power and the Bayes Factor (BF10) of the test.https://pingouin-stats.org/index.htmlGPL-3.0openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843846-20251014-0156python-pingouin-helpnoarcha4e2f327f585641918b7d7ae9286dcdaefc05a2dbe69a865e6972195b92aa9c6Development documents and examples for pingouin**Pingouin** is an open-source statistical package written in Python 3 and based mostly on Pandas and NumPy. Some of its main features are listed below. For a full list of available functions, please refer to the `API documentation <https://pingouin-stats.org/build/html/api.html#>`_.
1. ANOVAs: N-ways, repeated measures, mixed, ancova
2. Pairwise post-hocs tests (parametric and non-parametric) and pairwise correlations
3. Robust, partial, distance and repeated measures correlations
4. Linear/logistic regression and mediation analysis
5. Bayes Factors
6. Multivariate tests
7. Reliability and consistency
8. Effect sizes and power analysis
9. Parametric/bootstrapped confidence intervals around an effect size or a correlation coefficient
10. Circular statistics
11. Chi-squared tests
12. Plotting: Bland-Altman plot, Q-Q plot, paired plot, robust correlation...
Pingouin is designed for users who want **simple yet exhaustive statistical functions**.
For example, the :code:`ttest_ind` function of SciPy returns only the T-value and the p-value. By contrast,
the :code:`ttest` function of Pingouin returns the T-value, the p-value, the degrees of freedom, the effect size (Cohen's d), the 95% confidence intervals of the difference in means, the statistical power and the Bayes Factor (BF10) of the test.https://pingouin-stats.org/index.htmlGPL-3.0openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843846-20251014-0156python-pingouin-0.5.5-1.src.rpmpython-seabornsrcc398f525f916201db3c84e7698b9766c91e31d016c7b26b3bcfe773f343cfa38Statistical data visualizationhttps://pypi.org/project/seaborn/NoneopenEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843846-20251014-0156python-seaborn-helpnoarch14be71117b89f6a5c9c99b9b5aefe9361409e35d4c0dc3f4ff70502b30204db5Development documents and examples for seabornhttps://pypi.org/project/seaborn/NoneopenEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843846-20251014-0156python-seaborn-0.13.2-1.src.rpmpython3-gala-anteateraarch649cdbc9518cb5f524d8e1e21741dda2ee770896e7ab76b17e3364a6f9a127b3efPython3 package of gala-anteaterPython3 package of gala-anteaterhttps://gitee.com/openeuler/gala-anteaterMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843846-20251014-0156gala-anteater-3.0.1-1.src.rpmpython3-gala-inferenceaarch64e39c3e9b946a9d147b9c95985768dbb0c701deb9d121a3f77afb51c396854d6fPython3 package of gala-inferencePython3 package of gala-inferencehttps://gitee.com/openeuler/gala-spiderMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843824-20251013-0914gala-spider-2.0.1-1.src.rpmpython3-gala-spideraarch648f4703d91d288498ce3a1c05c0b0d5d5931e3b97ff37f07097a441326133aae5Python3 package of gala-spiderPython3 package of gala-spiderhttps://gitee.com/openeuler/gala-spiderMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843824-20251013-0914gala-spider-2.0.1-1.src.rpmpython3-pandas-flavornoarchbda087cd6ed5c9eb2829edad3c49ec5c29ae9e9feb04f8753e38fc280c4eefa6The easy way to write your own Pandas flavor.
**The easy way to write your own flavor of Pandas**
Pandas 0.23 added a (simple) API for registering accessors with Pandas objects.
Pandas-flavor extends Pandas' extension API by:
1. adding support for registering methods as well.
2. making each of these functions backwards compatible with older versions of Pandas.
***What does this mean?***
It is now simpler to add custom functionality to Pandas DataFrames and Series.
Import this package. Write a simple python function. Register the function using one of the following decorators.
***Why?***
Pandas is super handy. Its general purpose is to be a "flexible and powerful data analysis/manipulation library".
**Pandas Flavor** allows you add functionality that tailors Pandas to specific fields or use cases.
Maybe you want to add new write methods to the Pandas DataFrame? Maybe you want custom plot functionality? Maybe something else?
Accessors (in pandas) are objects attached to a attribute on the Pandas DataFrame/Series
that provide extra, specific functionality. For example, `pandas.DataFrame.plot` is an
accessor that provides plotting functionality.
Add an accessor by registering the function with the following decorator
and passing the decorator an accessor name.
```python
import pandas_flavor as pf
@pf.register_dataframe_accessor('my_flavor')
class MyFlavor(object):
def __init__(self, data):
self._data = data
def row_by_value(self, col, value):
"""Slice out row from DataFrame by a value."""
return self._data[self._data[col] == value].squeeze()
```
Every dataframe now has this accessor as an attribute.
```python
import my_flavor
df = pd.DataFrame(data={
"x": [10, 20, 25],
"y": [0, 2, 5]
})
print(df)
df.my_flavor.row_by_value('x', 10)
```
To see this in action, check out [pdvega](https://github.com/jakevdp/pdvega),
[PhyloPandas](https://github.com/Zsailer/phylopandas), and [pyjanitor](https://github.com/ericmjl/pyjanitor)!
Using this package, you can attach functions directly to Pandas objects. No
intermediate accessor is needed.
```python
import pandas_flavor as pf
@pf.register_dataframe_method
def row_by_value(df, col, value):
"""Slice out row from DataFrame by a value."""
return df[df[col] == value].squeeze()
```
```python
import pandas as pd
import my_flavor
df = pd.DataFrame(data={
"x": [10, 20, 25],
"y": [0, 2, 5]
})
print(df)
df.row_by_value('x', 10)
```
The pandas_flavor 0.5.0 release introduced [tracing of the registered method calls](/docs/tracing_ext.md). Now it is possible to add additional run-time logic around registered method execution which can be used for some support tasks. This extension was introduced
to allow visualization of [pyjanitor](https://github.com/pyjanitor-devs/pyjanitor) method chains as implemented in [pyjviz](https://github.com/pyjanitor-devs/pyjviz)
- **register_dataframe_method**: register a method directly with a pandas DataFrame.
- **register_dataframe_accessor**: register an accessor (and it's methods) with a pandas DataFrame.
- **register_series_method**: register a methods directly with a pandas Series.
- **register_series_accessor**: register an accessor (and it's methods) with a pandas Series.
You can install using **pip**:
```
pip install pandas_flavor
```
or conda (thanks @ericmjl)!
```
conda install -c conda-forge pandas-flavor
```
Pull requests are always welcome! If you find a bug, don't hestitate to open an issue or submit a PR. If you're not sure how to do that, check out this [simple guide](https://github.com/Zsailer/guide-to-working-as-team-on-github).
If you have a feature request, please open an issue or submit a PR!
Pandas 0.23 introduced a simpler API for [extending Pandas](https://pandas.pydata.org/pandas-docs/stable/development/extending.html#extending-pandas). This API provided two key decorators, `register_dataframe_accessor` and `register_series_accessor`, that enable users to register **accessors** with Pandas DataFrames and Series.
Pandas Flavor originated as a library to backport these decorators to older versions of Pandas (<0.23). While doing the backporting, it became clear that registering **methods** directly to Pandas objects might be a desired feature as well.[*](#footnote)
<a name="footnote">*</a>*It is likely that Pandas deliberately chose not implement to this feature. If everyone starts monkeypatching DataFrames with their custom methods, it could lead to confusion in the Pandas community. The preferred Pandas approach is to namespace your methods by registering an accessor that contains your custom methods.*
**So how does method registration work?**
When you register a method, Pandas flavor actually creates and registers a (this is subtle, but important) **custom accessor class that mimics** the behavior of a method by:
1. inheriting the docstring of your function
2. overriding the `__call__` method to call your function.https://github.com/Zsailer/pandas_flavorMITopenEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843831-20251014-0124python-pandas-flavor-0.6.0-1.src.rpmpython3-pingouinnoarchbcc8a428a5b07711a72609c9edafd3e4d4c45c543cec727f8c5d72a43573a35aPingouin: statistical package for Python**Pingouin** is an open-source statistical package written in Python 3 and based mostly on Pandas and NumPy. Some of its main features are listed below. For a full list of available functions, please refer to the `API documentation <https://pingouin-stats.org/build/html/api.html#>`_.
1. ANOVAs: N-ways, repeated measures, mixed, ancova
2. Pairwise post-hocs tests (parametric and non-parametric) and pairwise correlations
3. Robust, partial, distance and repeated measures correlations
4. Linear/logistic regression and mediation analysis
5. Bayes Factors
6. Multivariate tests
7. Reliability and consistency
8. Effect sizes and power analysis
9. Parametric/bootstrapped confidence intervals around an effect size or a correlation coefficient
10. Circular statistics
11. Chi-squared tests
12. Plotting: Bland-Altman plot, Q-Q plot, paired plot, robust correlation...
Pingouin is designed for users who want **simple yet exhaustive statistical functions**.
For example, the :code:`ttest_ind` function of SciPy returns only the T-value and the p-value. By contrast,
the :code:`ttest` function of Pingouin returns the T-value, the p-value, the degrees of freedom, the effect size (Cohen's d), the 95% confidence intervals of the difference in means, the statistical power and the Bayes Factor (BF10) of the test.https://pingouin-stats.org/index.htmlGPL-3.0openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843846-20251014-0156python-pingouin-0.5.5-1.src.rpmpython3-seabornnoarch8024e146611866680663052a7a33dd73558aa6ed7e15119aa0b713be84d2d0a0Statistical data visualizationhttps://pypi.org/project/seaborn/NoneopenEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843846-20251014-0156python-seaborn-0.13.2-1.src.rpmzeus-distributeaarch64d35876cb0ba3cd16ef2446a2b87bbdae91c057d508e871a3cafc825b9f2fab50A distributed service of aops.A distributed service of aops.https://gitee.com/openeuler/aops-zeusMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843849-20251014-0204aops-zeus-v2.2.0-1.src.rpm/etc/aops/conf.d/zeus-distribute.ymlzeus-host-informationaarch648ae9de9f17af70703a856062f8801739d000b712bc9ab611c43894ac3db13c35A host manager service which is the foundation of aops.A host manager service which is the foundation of aops.https://gitee.com/openeuler/aops-zeusMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843849-20251014-0204aops-zeus-v2.2.0-1.src.rpm/etc/aops/conf.d/zeus-host-information.ymlzeus-operationaarch64050de2d8dfc8ca857b3c24b56248ccc4139cfc5932d7e7dc82e9758b4bdb9440A operation manager service which is the foundation of aops.A operation manager of aops.https://gitee.com/openeuler/aops-zeusMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843849-20251014-0204aops-zeus-v2.2.0-1.src.rpm/etc/aops/conf.d/zeus-operation.ymlzeus-user-accessaarch64763810e59d18ffa6a412c73be7b3e14c2ae169a652f1a2c6fd81fe2d87506a68A user manager service which is the foundation of aops.A user manager service which is the foundation of aops.https://gitee.com/openeuler/aops-zeusMulanPSL2openEuler Copr - user HLG523653667Unspecifiedeur-prod-workerlocal-aarch64-normal-prod-00843849-20251014-0204aops-zeus-v2.2.0-1.src.rpm/etc/aops/conf.d/zeus-user-access.yml