Metadata-Version: 2.1
Name: Auto-ML-C
Version: 0.0.11
Summary: A small example package
Home-page: https://github.com/SynchronyML/Auto_ML
Author: Cui Zy
Author-email: 1776228595@qq.com
License: UNKNOWN
Project-URL: Bug Tracker, https://github.com/SynchronyML/Auto_ML/issues
Platform: UNKNOWN
Classifier: Programming Language :: Python :: 3
Classifier: License :: OSI Approved :: MIT License
Classifier: Operating System :: OS Independent
Requires-Python: >=3.8.10
Description-Content-Type: text/markdown
License-File: LICENSE

**Auto_ML_C 0.0.10**

# Illustrate：

​	这是崔连山和小伙伴们的机器学习拓展包，代有浓厚的社会主义开源分享精神，极富创造力和战斗力。在这里让我们为他们鼓掌 :clinking_glasses:

## Spend

测试集数据位置：{Example}

配置如下：

|      | Windows     | Windows     | MacOS | Linux        |
| ---- | ----------- | ----------- | ----- | ------------ |
| 型号 | i7-9750H    | i7-9750H    | M1    | E5-2640 V4   |
| 核心 | 6核心12线程 | 6核心12线程 | 8核心 | 20核心40线程 |
| 频率 | 2.67GHz     | 3.2GHz      |       | 2.40GHz      |

运行速度对比结果如下：

| 未集成              | Windows1 | Windows2  | MacOS      | Linux      |
| ------------------- | -------- | --------- | ---------- | ---------- |
| ALL_FUNCTION        | 47.364   | 43.681    | 34.013     | ==27.282== |
| binary_ROC()        | 45.809   | 42.964    | 32.751     | ==32.143== |
| auto_model()        | 53.498   | 48.649    | ==38.267== | 40.794     |
| estimator_violion() | 1.191    | ==1.021== | 1.678      | 2.395      |



| 集成                | Windows1 | Windows2              | MacOS                                                        | Linux                                                        |
| ------------------- | -------- | --------------------- | ------------------------------------------------------------ | ------------------------------------------------------------ |
| binary_ROC()        | 46.2 s   | 43.2 s                | CPU times: user 4.82 s, sys: 365 ms, total: 5.18 s Wall time: ==32.9s== | CPU times: user 9.59 s, sys: 3.89 s, total: 13.5 s Wall time: 33.3 s |
| auto_model()        | 50.4 s   | 47.1 s                | CPU times: user 9.75 s, sys: 247 ms, total: 10 s Wall time: ==38.1 s== | CPU times: user 15.1 s, sys: 1.68 s, total: 16.8 s Wall time: 41.1 s |
| estimator_violion() | 1.16 s   | Wall time: ==1.01 s== | CPU times: user 2.02 s, sys: 70.1 ms, total: 2.09 s Wall time: 1.69 s | CPU times: user 3.85 s, sys: 2.32 s, total: 6.17 s Wall time: 2.23 s |

## Request_install

可以参考学习当前目录下的环境备份：Auto_ML_C.yaml

主要是涉及到的软件如下：

| Package          | 最低版本——待检测 |
| ---------------- | ---------------- |
| python=3.8.10    |                  |
| seaborn=0.11.2   |                  |
| pandas=1.3.3     |                  |
| matplotlib=3.4.2 |                  |
| numpy=1.20.3     |                  |



# Content:

​    该包是基于Sklearn，imblance等机器学习拓展包之上的Package，共计划分为两个部分，

- 分类任务

  1. binary_classfication.py

     内部可用函数如下

     | 函数名                                    | 功能                                    | 返回值                                                |
     | ----------------------------------------- | --------------------------------------- | ----------------------------------------------------- |
     | cal_add_1(num1,num2):wave:                | 简单的欢迎函数                          | num1,num2                                             |
     | LogisticRegressionCV_mdoel(X, Y,cv)       |                                         |                                                       |
     | SGDClassifier_model(X,Y,cv)               |                                         |                                                       |
     | LinearDiscriminantAnalysis_model(X, Y,cv) |                                         |                                                       |
     | LinearSVC_model(X, Y,cv)                  |                                         |                                                       |
     | SVC_model(X, Y,cv)                        |                                         |                                                       |
     | DecisionTreeClassifier_model(X,Y,cv)      |                                         |                                                       |
     | AdaBoostClassifier_model(X,Y,cv)          |                                         |                                                       |
     | BaggingClassifier_model(X, Y,cv)          |                                         |                                                       |
     | GradientBoostingClassifier_model(X, Y,cv) |                                         |                                                       |
     | RandomForestClassifier_model(X, Y,cv)     |                                         |                                                       |
     | KNeighborsClassifier_model(X, Y,cv)       |                                         |                                                       |
     | BernoulliNB_model(X, Y,cv)                |                                         |                                                       |
     | GaussianNB_model(X,Y,cv)                  |                                         |                                                       |
     | 下面是总函数                              |                                         |                                                       |
     | binary_ROC(X,Y,k,fig_name)                | 绘制标量超参数搜索下最佳的ROC           | fig                                                   |
     | auto_model(X, Y, k)                       | 模型的标量超参数搜索结果                | Auc_data, Acc_data, <br />Recall_data, Precision_data |
     | estimator_violion(df1,df2,fig_name)       | 为auto_model结果的Dataframe绘制小提琴图 | fig                                                   |
     
     
     
     
     
  3. 多分类函数
     
     等待
     
  3. 特征筛选函数Feature_struction
  
     
  
  4. waited



# How to Use

## Installation

```python
# Method 1
# Create a new environment, here is conda as an example
conda create --name Auto_ML_C python=3.8.10

# Activate the newly created environment
conda activate Auto_ML_C

# Installation package
pip install Auto_ML_C==0.0.8

# Suggest the pipeline of Jupyter notebook [optional, recommended]
conda install jupyter notebook
conda install ipykernel 
python -m ipykernel install --user --name Auto_ML_C --display-name   "Auto_ML_C"
# Install Sklearn 0.6.  this will fixed next version
conda install -c conda-forge sklearn-contrib-lightning

# Method2
# Use the yaml environment file on the GitHub homepage to directly copy the current environment
conda env create -n Auto_ML_C -f Auto_ML_C.yaml

# Activate the newly created environment
conda activate 

# Suggest the pipeline of Jupyter notebook [optional, recommended]
conda install jupyter notebook
conda install ipykernel 
python -m ipykernel install --user --name Auto_ML_C --display-name   "Auto_ML_C"
```



## Feature_struction

```python
# 
```



## Binary Classication

```python
# Here is an example of the function binary_classfication_ws  
# 这里以函数binary_classfication_ws举例

# 开始加载环境
import pandas as pd
import numpy as np
import auto_ml_c.binary_classfication as abc

# 读取测试数据
df = pd.read_csv("2_data_deal_smote.csv")
X = df.iloc[:,:-1]
Y = df["label"]
score = 'accuracy'

# The first function, draw ROC image
tmp_a = abc.binary_ROC(X,Y,cv,"111","accuracy")

# The second function, get Auc_data, Acc_data, Recall_data, Precision_data
tmp_b1,tmp_b2,tmp_b3,tmp_b4 = abc.auto_model(X,Y,cv,"accuracy")

# The third function, draw the evaluation graph obtained by function 2 auto_model
tmp_c = abc.estimator_violion(tmp_b1,tmp_b2,"Violionplot")
```

<img src="README_1/binary_ROC.png" alt="binary_ROC" style="zoom:50%;" />

![estimator_violion](README_1/estimator_violion.png)



# ConTact

VX：Cuizy13390906310_ic

QQ：1776228595

E-mail：1776228595@qq.com

GitHub：地址待填写



