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精通 Pandas 和 Python 进行回归与预测视频教程 [2024] (英文)

精通 Pandas 和 Python 进行回归与预测视频教程 [2024]

发布于 2024年5月 MP4 | 视频: h264, 1920×1080 | 音频: AAC, 44.1 KHz 语言: 英语 | 大小: 13.44 GB | 时长: 32小时6分钟

学习如何使用 Pandas 和 Python 精通回归与预测,适用于数据科学和机器学习

学习内容

  • 理论与实践相结合,精通回归与预测
  • 掌握从简单回归模型到多项式多元回归模型及高级多元多项式回归模型的回归模型
  • 使用机器学习自动模型创建和特征选择
  • 使用套索回归(Lasso Regression)和岭回归(Ridge Regression)对回归模型进行正则化
  • 使用决策树、随机森林和投票回归模型
  • 使用前馈多层网络和高级回归模型结构
  • 使用有效的高级残差分析和工具评估模型的拟合优度及残差分布
  • 使用 Statsmodels 和 Scikit-learn 库进行回归,支持 Matplotlib、Seaborn、Pandas 和 Python
  • 精通 Python 3 编程,掌握 Python 的原生数据结构、数据转换器、函数、面向对象和逻辑
  • 使用并设计高级 Python 构造,执行详细的数据处理任务,包括文件处理
  • 使用 Python 的高级面向对象编程,创建自定义对象和函数,并学会泛化函数
  • 操作数据并使用高级多维不均匀数据结构
  • 精通 Pandas 2 和 3 库进行高级数据处理
  • 使用 Pandas 库的语言和基本概念,处理创建、修改和选择数据的各个方面
  • 使用 Pandas 进行文件处理,并学会结合 Pandas 数据框架的 concat、join 和 merge 函数/方法
  • 执行高级数据准备,包括基于模型的高级数据插补以及数据的缩放和标准化
  • 使用 Pandas 进行高级数据描述和统计。排名、排序、交叉制表、数据透视、熔融、转置和分组数据
  • [额外] 使用 Pandas、Matplotlib 和 Seaborn 进行高级数据可视化
  • 云计算:使用 Anaconda Cloud Notebook(基于云的 Jupyter Notebook)。学习使用云计算资源
  • 选项:使用 Anaconda 发行版(适用于 Windows、Mac、Linux)
  • 选项:使用 Conda 包管理系统和命令行安装/更新库和软件包的 Python 环境基础知识

要求

  • 推荐有日常使用 Windows、MacOS、iOS、Android、ChromeOS 或 Linux 计算机的经验
  • 需要访问具有互联网连接的计算机
  • 无需编程经验,课程将教授所需的一切
  • 课程仅使用免费的软件
  • 包含云计算和 Windows 10/11 的安装和设置视频

描述

欢迎参加《精通 Pandas 和 Python 进行回归与预测》课程!这个三合一大师班视频课程将教你精通回归、预测、Python 3、Pandas 2 和 3 及高级数据处理。你将学习如何使用大量高级回归技术来实现预测和自动模型创建,或称为真正的机器智能或 AI。你将学习处理用于预测任务的高级模型结构。

Python 3 是世界上最流行和有用的编程语言之一,Pandas 2 和未来的 3 版本是现存最强大、高效和有用的数据处理库。你将学习精通 Python 的原生构建块和强大的面向对象编程。你将设计自己的高级 Python 构建块,并执行详细的数据处理任务。

你将学习精通 Pandas 库,并使用其强大的数据处理技术进行高级数据科学和机器学习数据处理任务。Pandas 库是一个快速、强大、灵活且易于使用的开源数据分析和数据操作工具,可直接与 Python 编程语言结合使用。

Master Regression & Prediction With Pandas And Python [2024]

Published 5/2024
MP4 | Video: h264, 1920×1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 13.44 GB | Duration: 32h 6m

Learn to Master Regression and Prediction with Pandas and Python for Data Science and Machine Learning

What you’ll learn
Master Regression and Prediction both in theory and practice
Master Regression models from simple Regression models to Polynomial Multiple Regression models and advanced Multivariate Polynomial Multiple Regression models
Use Machine Learning Automatic Model Creation and Feature Selection
Use Regularization of Regression models with Lasso Regression and Ridge Regression
Use Decision Tree, Random Forest, and Voting Regression models
Use Feedforward Multilayer Networks and Advanced Regression model Structures
Use effective advanced Residual analysis and tools to judge models goodness-of-fit plus residual distributions
Use the Statsmodels and Scikit-learn libraries for Regression supported by Matplotlib, Seaborn, Pandas, and Python
Master Python 3 programming with Python’s native data structures, data transformers, functions, object orientation, and logic
Use and design advanced Python constructions and execute detailed Data Handling tasks with Python incl. File Handling
Use Python’s advanced object-oriented programming and make your own custom objects, functions and how to generalize functions
Manipulate data and use advanced multi-dimensional uneven data structures
Master the Pandas 2 and 3 library for Advanced Data Handling
Use the language and fundamental concepts of the Pandas library and to handle all aspects of creating, changing, modifying, and selecting Data from a Pandas D
Use file handling with Pandas and how to combine Pandas DataFrames with Pandas concat, join, and merge functions/methods
Perform advanced data preparation including advanced model-based imputation of missing data and the scaling and standardizing of data
Make advanced data descriptions and statistics with Pandas. Rank, sort, cross-tabulate, pivot, melt, transpose, and group data
[Bonus] Make advanced Data Visualizations with Pandas, Matplotlib, and Seaborn
Cloud computing: Use the Anaconda Cloud Notebook (Cloud-based Jupyter Notebook). Learn to use Cloud computing resources
Option: To use the Anaconda Distribution (for Windows, Mac, Linux)
Option: Use Python environment fundamentals with the Conda package management system and command line installing/updating of libraries and packages

Requirements
Everyday experience using a computer with either Windows, MacOS, iOS, Android, ChromeOS, or Linux is recommended
Access to a computer with an internet connection
Programming experience is not needed and you will be taught everything you need
The course only uses costless software
Walk-you-through installation and setup videos for Cloud computing and Windows 10/11 is included

Description
Welcome to the course Master Regression & Prediction with Pandas and Python!This three-in-one master class video course will teach you to master Regression, Prediction, Python 3, Pandas 2 + 3, and advanced Data Handling.You will learn to master Regression and Prediction with a large number of advanced Regression techniques for purposes of Prediction and Automatic Model Creation or so-called true machine intelligence or AI. You will learn to handle advanced model structures for prediction tasks.Python 3 is one of the most popular and useful programming languages in the world, and Pandas 2 and future version 3 is the most powerful, efficient, and useful Data Handling library in existence.You will learn to master Python’s native building blocks and powerful object-oriented programming. You will design your own advanced constructions of Python’s building blocks and execute detailed Data Handling tasks with Python.You will learn to master the Pandas library and to use its powerful Data Handling techniques for advanced Data Science and Machine Learning Data Handling tasks. The Pandas library is a fast, powerful, flexible, and easy-to-use open-source data analysis and data manipulation tool, which is directly usable with the Python programming language.You will learn to:Master Regression and Prediction both in theory and practiceMaster Regression models from simple linear Regression models to Polynomial Multiple Regression models and advanced Multivariate Polynomial Multiple Regression modelsUse Machine Learning Automatic Model Creation and Feature SelectionUse Regularization of Regression models with Lasso Regression and Ridge RegressionUse Decision Tree, Random Forest, and Voting Regression modelsUse Feedforward Multilayer Networks and Advanced Regression model StructuresUse effective advanced Residual analysis and tools to judge models goodness-of-fit plus residual distributions.Use the Statsmodels and Scikit-learn libraries for Regression supported by Matplotlib, Seaborn, Pandas, and PythonMaster Python 3 programming with Python’s native data structures, data transformers, functions, object orientation, and logicUse and design advanced Python constructions and execute detailed Data Handling tasks with Python incl. File HandlingUse Python’s advanced object-oriented programming and make your own custom objects, functions and how to generalize functionsManipulate data and use advanced multi-dimensional uneven data structuresMaster the Pandas 2 and 3 library for Advanced Data HandlingUse the language and fundamental concepts of the Pandas library and to handle all aspects of creating, changing, modifying, and selecting Data from a Pandas DataFrame objectUse file handling with Pandas and how to combine Pandas DataFrames with Pandas concat, join, and merge functions/methodsPerform advanced data preparation including advanced model-based imputation of missing data and the scaling and standardizing of dataMake advanced data descriptions and statistics with Pandas. Rank, sort, cross-tabulate, pivot, melt, transpose, and group data[Bonus] Make advanced Data Visualizations with Pandas, Matplotlib, and SeabornCloud computing: Use the Anaconda Cloud Notebook (Cloud-based Jupyter Notebook). Learn to use Cloud computing resources.Option: To use the Anaconda Distribution (for Windows, Mac, Linux)Option: Use Python environment fundamentals with the Conda package management system and command line installing/updating of libraries and packages – golden nuggets to improve your quality of work life.And much more…This course is an excellent way to learn to master Regression, Prediction, Python, Pandas and Data Handling!Regression and Prediction are the most important and used tools for modeling, AI, and forecasting. Data Handling is the process of making data useful and usable for regression, prediction, and data analysis.Most Data Scientists and Machine Learning Engineers spends about 80% of their working efforts and time on Data Handling tasks. Being good at Python, Pandas, and Data Handling are extremely useful and time-saving skills that functions as a force multiplier for productivity.This course is designed for everyone who wants tolearn to master Regression and Predictionlearn to Master Python 3 from scratch or the beginner levellearn to Master Python 3 and knows another programming languagereach the Master – intermediate Python programmer level as required by many advanced Udemy courses in Python, Data Science, or Machine Learninglearn to Master the Pandas librarylearn Data Handling skills that work as a force multiplier and that they will have use of in their entire careerlearn advanced Data Handling and improve their capabilities and productivityRequirements:Everyday experience using a computer with either Windows, MacOS, iOS, Android, ChromeOS, or Linux is recommendedAccess to a computer with an internet connectionProgramming experience is not needed and you will be taught everything you needThe course only uses costless softwareWalk-you-through installation and setup videos for Cloud computing and Windows 10/11 is includedThis course is the course we ourselves would want to be able to enroll in if we could time-travel and become new students. In our opinion, this course is the best course to learn to Master Regression, Prediction, Python, Pandas, and Data Handling.Enroll now to receive 30+ hours of video tutorials with manually edited English captions, and a certificate of completion after completing the course!

Overview
Section 1: Introduction

Lecture 1 Introduction

Lecture 2 Setup of the Anaconda Cloud Notebook

Lecture 3 Download and installation of the Anaconda Distribution (optional)

Lecture 4 The Conda Package Management System (optional)

Section 2: Master Python for Data Handling

Lecture 5 Overview of Python for Data Handling

Lecture 6 Python Integer

Lecture 7 Python Float

Lecture 8 Python Strings I

Lecture 9 Python Strings II: Intermediate String Methods

Lecture 10 Python Strings III: DateTime Objects and Strings

Lecture 11 Overview of Python Native Data Storage Structures

Lecture 12 Python Set

Lecture 13 Python Tuple

Lecture 14 Python Dictionary

Lecture 15 Python List

Lecture 16 Overview of Python Data Transformers and Functions

Lecture 17 Python While-loop

Lecture 18 Python For-loop

Lecture 19 Python Logic Operators and conditional code branching

Lecture 20 Python Functions I: Some theory

Lecture 21 Python Functions II: create your own functions

Lecture 22 Python Object Oriented Programming I: Some theory

Lecture 23 Python Object Oriented Programming II: create your own custom objects

Lecture 24 Python Object Oriented Programming III: Files and Tables

Lecture 25 Python Object Oriented Programming IV: Recap and More

Section 3: Master Pandas for Data Handling

Lecture 26 Master Pandas for Data Handling: Overview

Lecture 27 Pandas theory and terminology

Lecture 28 Creating a Pandas DataFrame from scratch

Lecture 29 Pandas File Handling: Overview

Lecture 30 Pandas File Handling: The .csv file format

Lecture 31 Pandas File Handling: The .xlsx file format

Lecture 32 Pandas File Handling: SQL-database files and Pandas DataFrame

Lecture 33 Pandas Operations & Techniques: Overview

Lecture 34 Pandas Operations & Techniques: Object Inspection

Lecture 35 Pandas Operations & Techniques: DataFrame Inspection

Lecture 36 Pandas Operations & Techniques: Column Selections

Lecture 37 Pandas Operations & Techniques: Row Selections

Lecture 38 Pandas Operations & Techniques: Conditional Selections

Lecture 39 Pandas Operations & Techniques: Scalers and Standardization

Lecture 40 Pandas Operations & Techniques: Concatenate DataFrames

Lecture 41 Pandas Operations & Techniques: Joining DataFrames

Lecture 42 Pandas Operations & Techniques: Merging DataFrames

Lecture 43 Pandas Operations & Techniques: Transpose & Pivot Functions

Lecture 44 Pandas Data Preparation I: Overview & workflow

Lecture 45 Pandas Data Preparation II: Edit DataFrame labels

Lecture 46 Pandas Data Preparation III: Duplicates

Lecture 47 Pandas Data Preparation IV: Missing Data & Imputation

Lecture 48 Pandas Data Preparation V: Data Binnings[Extra Video]

Lecture 49 Pandas Data Preparation VI: Indicator 资源特色[Extra Video]

Lecture 50 Pandas Data Description I: Overview

Lecture 51 Pandas Data Description II: Sorting and Ranking

Lecture 52 Pandas Data Description III: Descriptive Statistics

Lecture 53 Pandas Data Description IV: Crosstabulations & Groupings

Lecture 54 Pandas Data Visualization I: Overview

Lecture 55 Pandas Data Visualization II: Histograms

Lecture 56 Pandas Data Visualization III: Boxplots

Lecture 57 Pandas Data Visualization IV: Scatterplots

Lecture 58 Pandas Data Visualization V: Pie Charts

Lecture 59 Pandas Data Visualization VI: Line plots

Section 4: Master Regression Models for Prediction

Lecture 60 Regression, Prediction, and Supervised Learning. Section Overview (I)

Lecture 61 The Traditional Simple Regression Model (II)

Lecture 62 The Traditional Simple Regression Model (III)

Lecture 63 Some practical and useful modelling concepts (IV)

Lecture 64 Some practical and useful modelling concepts (V)

Lecture 65 Linear Multiple Regression model (VI)

Lecture 66 Linear Multiple Regression model (VII)

Lecture 67 Multivariate Polynomial Multiple Regression models (VIII)

Lecture 68 Multivariate Polynomial Multiple Regression models (VIIII)

Lecture 69 Regression Regularization, Lasso and Ridge models (X)

Lecture 70 Decision Tree Regression models

Lecture 71 Random Forest Regression

Lecture 72 Voting Regression

Section 5: Feedforward Networks and Advanced Regression Models

Lecture 73 Overview

Lecture 74 Artificial Neural Networks, Feedforward Networks, and the Multi-Layer Perceptron

Lecture 75 Feedforward Multi-Layer Perceptrons for Prediction tasks

anyone who wants to learn to master Regression and Prediction,anyone who wants to learn to Master Python 3 from scratch or the beginner level,anyone who wants to learn to Master Python 3 and knows another programming language,anyone who wants to reach the Master/intermediate Python programmer level as required by many advanced Udemy courses in Python, Data Science, or Machine Learning,anyone who wants to learn to Master the Pandas library,anyone who wants to learn Data Handling skills that work as a force multiplier and that they will have use of in their entire career,anyone who wants to learn advanced Data Handling and improve their capabilities and productivity


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