• Post category:StudyBullet-20
  • Reading time:3 mins read


Learn Data Analysis Techniques with Python, NumPy, and Pandas: From Data Cleaning to Advanced Visualization

What you will learn

Introduction to Jupyter Notebook

Basic Python programming concepts

Installing NumPy & Pandas

Creating NumPy arrays from Python lists

Mathematical functions in NumPy

Reading and writing files with NumPy

Creating and understanding DataFrames

DataFrame indexing and selection

Adding, removing, and updating data

Data filtering, sorting, and grouping

Time series analysis and manipulation

Identifying and handling missing data

Merging, joining, and concatenating DataFrames

Applying functions to DataFrames

Customizing plots (titles, labels, colors)

Creating complex visualizations (histograms, scatter plots, box plots)

Memory optimization techniques

Add-On Information:


Get Instant Notification of New Courses on our Telegram channel.

Noteβž› Make sure your π”ππžπ¦π² cart has only this course you're going to enroll it now, Remove all other courses from the π”ππžπ¦π² cart before Enrolling!


  • Unlock the power of Python for data analysis, mastering essential libraries that form the backbone of modern data science workflows.
  • Gain a foundational understanding of data manipulation and computation, enabling you to efficiently process and analyze large datasets.
  • Develop proficiency in transforming raw data into actionable insights through a structured and hands-on approach.
  • Acquire the skills to wrangle messy data, a critical step in ensuring the accuracy and reliability of your analyses.
  • Learn to extract meaningful patterns and trends from your datasets, paving the way for informed decision-making.
  • Master the art of data visualization, transforming complex numerical information into clear and compelling graphical representations.
  • Build a robust toolkit for tackling diverse data challenges, from simple data cleaning to sophisticated statistical modeling.
  • Explore efficient methods for optimizing your code and managing memory, crucial for performance when working with extensive datasets.
  • Understand the iterative nature of data analysis, fostering a mindset for exploration, experimentation, and refinement.
  • Acquire the ability to confidently communicate your findings through well-designed visualizations and summarized data.
  • Develop the capacity to perform advanced data transformations and aggregations, unlocking deeper levels of data understanding.
  • Learn to effectively integrate and analyze data from multiple sources, creating a unified view of your information.
  • Cultivate problem-solving skills applicable to a wide range of real-world data analysis scenarios.
  • Become adept at using Python’s ecosystem to streamline your data workflows and boost your productivity.
  • Empower yourself to contribute meaningfully to data-driven projects across various industries.
  • PROS:
  • Comprehensive Skill Set: Covers a broad range of essential data analysis techniques.
  • Practical Application: Focuses on hands-on exercises for immediate skill development.
  • Industry Relevant: Equips learners with tools and knowledge highly sought after in the job market.
  • CONS:
  • Potential for Overwhelm: The breadth of topics may require significant dedication for complete mastery.
English
language
Found It Free? Share It Fast!