Udemy

Python Bootcamp for Data Analysis #5: Pandas

立即報名
  • 2,073 名學生
  • 更新於 1/2025
4.5
(32 個評分)
CTgoodjobs 嚴選優質課程,為職場人士提升競爭力。透過本站連結購買Udemy課程,本站將獲得推廣佣金,有助未來提供更多實用進修課程資訊給讀者。

課程資料

報名日期
全年招生
課程級別
學習模式
修業期
1 小時 36 分鐘
教學語言
英語
授課導師
Miuul Data Science & Deep Learning
評分
4.5
(32 個評分)
3次瀏覽

課程簡介

Python Bootcamp for Data Analysis #5: Pandas

From Zero to Hero: The Fifth Module of Miuul's Python Bootcamp

Welcome to the fifth module of Miuul's Python Bootcamp for Data Analysis!

This module is a crucial step in your journey as it introduces you to Pandas, an essential library for data manipulation and analysis in Python. We are excited to guide you through the foundational and advanced skills needed to effectively use Pandas for your data tasks.

In this module, you'll start by understanding what Pandas is and the importance of this powerful library. You'll learn about Pandas Series, how to read data, and quickly inspect it to gain insights. We will cover how to select data within Pandas, perform operations on variables, and use loc and iloc for precise data manipulation. You'll also explore conditional selection to filter data efficiently.

As you progress, you'll dive into aggregation and grouping techniques to summarize data, and learn how to create pivot tables for multidimensional data analysis. Finally, we'll cover how to apply functions using apply and lambda, and how to join datasets to merge information effectively.

This comprehensive exploration of Pandas will prepare you for more advanced topics in future courses and enhance your ability to tackle data analysis challenges with confidence.

Join us at Miuul's Python Bootcamp for Data Analysis, where learning to code becomes an adventure, empowering you to write, analyze, and innovate. Each line of code you write brings you one step closer to mastering the art of Python programming.

課程章節

  • 1 個章節
  • 13 堂課
  • 第 1 章 Pandas

課程內容

  • Understand the core functionalities of the Pandas library and its importance in data analysis
  • Create and manipulate Pandas Series and DataFrames to efficiently handle data
  • Perform data selection, conditional filtering, and various operations on variables within Pandas
  • Utilize advanced data aggregation, grouping, and pivot table techniques for comprehensive data analysis


評價

  • D
    Diksha Mehta
    5.0

    Loved this course.

  • U
    Umang Mathur
    4.5

    Thank you

  • M
    Maxim Bojic
    5.0

    Excellent course! I liked the author's comprehensive approach. The material is quite clear and well explained

  • M
    May Carmel
    3.5

    The course covered a wide range of topics and explained them clearly. However, it lacked exercises and assessments to ensure that learners fully understood and practiced the material.

立即關注瀏覽更多

本網站使用Cookies來改善您的瀏覽體驗,請確定您同意及接受我們的私隱政策使用條款才繼續瀏覽。

我已閱讀及同意