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Beginnt 4 June 2026 01:26

Endet 4 June 2026

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Data-driven Problem Solving for Data Analysts

Master the complete data analysis workflow, from defining problems to presenting insights, using Excel, Python, and Tableau to deliver actionable recommendations for real-world business challenges.
via Pluralsight

659 Kurse


37 minutes

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Übersicht

Data analysts must handle complex business problems and translate raw data into actionable insights, leveraging multiple tools to implement the complete lifecycle of a data analysis project. In this course, Data-driven Problem Solving for Data Analysts, you'll gain the ability to understand the typical workflow of a data analysis project, from defining problems to presenting it to stakeholders, using tools like Microsoft Excel, Python, and Tableau along the way.

First, you'll explore how to define data-driven business problems and the process of data exploration. Next, you'll discover the process of cleaning and preparing data, and identifying key trends.

Finally, you’ll learn how the data analysis process can culminate in creating compelling visualizations and presenting your findings effectively to stakeholders. When you're finished with this course, you'll have the skills and knowledge of how the end-to-end data analysis workflow is applied to tackle real-world business problems and deliver actionable recommendations backed by data.

Lehrplan

  • Introduction to Data-driven Problem Solving
  • Course Overview and Objectives
    Introduction to the Data Analysis Lifecycle
  • Defining Data-driven Business Problems
  • Understanding Business Needs and Objectives
    Translating Business Problems into Data Questions
    Techniques for Effective Problem Definition
  • Data Exploration
  • Introduction to Data Sources and Data Collection
    Exploring Data with Microsoft Excel
    Data Exploration using Python
  • Data Cleaning and Preparation
  • Importance of Data Cleaning
    Techniques for Data Cleaning in Excel
    Data Cleaning and Preparation in Python
    Handling Missing Data and Outliers
  • Identifying Key Trends and Insights
  • Data Analysis Techniques
    Using Excel for Trend Analysis
    Python for Statistical Analysis
  • Visualization and Insights Communication
  • Principles of Effective Data Visualization
    Creating Visualizations with Tableau
    Advanced Visualization Techniques in Python
  • Presenting Findings to Stakeholders
  • Crafting a Compelling Narrative
    Designing Presentation Materials with Key Insights
    Techniques for Effective Communication
  • Case Study: End-to-end Data Analysis Project
  • Defining the Problem
    Data Exploration and Preparation
    Trend Analysis and Visualization
    Presentation and Recommendations
  • Course Wrap-up and Next Steps
  • Summary of Key Learnings
    Additional Resources and Further Learning
    Final Project Submission and Feedback

Unterrichtet von

Ria Cheruvu


Fachgebiete

Data Science