शुरू करने से पहले आपको क्या जानना चाहिए
आप शुरू करें

शुरू होता है 5 June 2026 01:57

समाप्त होता है 5 June 2026

00 दिन
00 घंटे
00 मिनट
00 सेकंड
course image

A/B Testing in Python

Learn How To Define, Start, And Analyze The Results Of An A/B Test. Improve Business Performance Through A/B Testing
via Udemy

4160 कोर्स


2 hours 57 minutes

वैकल्पिक अपग्रेड उपलब्ध है

Not Specified

अपनी गति से आगे बढ़ें

Paid Course

वैकल्पिक अपग्रेड उपलब्ध है

अवलोकन

Learn How To Define, Start, And Analyze The Results Of An A/B Test. Improve Business Performance Through A/B Testing What you'll learn:

How to use A/B tests to improve business performanceDefine A/B testsStart A/B testsAnalyze the results of A/B testsMeasure the success of A/B testsHow to define a hypothesisDesign tracking for the metricsHow to prepare for a data science interview (when you get asked about A/B tests)How to design A/B tests for digital productsAdvanced considerations when you run multiple A/B tests at the same time A/B testing is a tool that helps companies make reliable decisions based on data.This is one of the fundamental skills you need to land a job as a data scientist or data analyst.Do you want to become a data scientist or a data analyst?If you do, this is the perfect course for you!Your instructor Anastasia is a senior data scientist working at a Stockholm-based music streaming startup.

She has earned two Master's degrees in Business Intelligence and Computer Science, and grown from a recent graduate to a Senior role in just 3 years. Anastasia has performed a significant number of A/B tests for large tech companies with hundreds of millions monthly users.By taking this course, you will learn how to:

· Define an A/B test· Start an A/B test· Analyse the results of an A/B test on your ownAlong your learning journey Anastasia will walk you through an A/B testing process for a fictional company with a digital product.

This case study unfolds throughout the course and touches on everything from the very beginning of the A/B testing process to the very end including some advanced considerations. Moreover, Anastasia takes some time to share with you her advice on how to prepare for the questions on the A/B test interview for a data scientist or data analyst position.One strong point of differentiation from statistical textbooks and theoretical trainings is that the A/B Testing in Python course will teach you how to design A/B tests for digital products that have millions or hundreds of millions of users.

It is a rare overview of the A/B testing process from a business, technical, and data analysis perspective.This is the perfect course for you if you are:

- a data science student who wants to learn one of the fundamental skills needed on the job- junior data scientists with no experience with A/B testing- software developers and product managers who want to learn how to run A/B tests in their company to improve the product they are buildingYou will learn an invaluable skill that can transform a company’s business (and your career along the way).So, what are you waiting for?Click the ‘Buy now’ button and let’s begin this journey today!

पाठ्यक्रम

  • Introduction to A/B Testing
  • Definition and Purpose
    Historical Context and Applications
    Importance in Data-Driven Decision Making
  • Fundamental Concepts of A/B Testing
  • Control and Treatment Groups
    Randomization and Bias Reduction
    Key Metrics and KPIs
  • Designing an A/B Test
  • Hypothesis Formulation
    Sample Size Determination
    Test Duration and Run-Time Considerations
  • Conducting A/B Tests with Python
  • Introduction to Python Libraries: NumPy, Pandas, SciPy
    Loading and Preparing Data
    Exploratory Data Analysis for A/B Testing
  • Statistical Analysis in A/B Testing
  • Descriptive vs. Inferential Statistics
    Significance Testing: p-value and Confidence Intervals
    Types of Statistical Tests: t-Tests, Chi-Square Tests
  • Implementing A/B Tests in Python
  • Writing Code for Test Execution
    Handling Data Inconsistencies and Anomalies
    Interpreting Test Results
  • Advanced Techniques in A/B Testing
  • Multi-armed Bandit Approach
    Sequential Testing Methods
    Bayesian A/B Testing
  • Case Studies and Real-World Applications
  • E-commerce and Conversion Rate Optimization
    Product Feature Testing
    Marketing Campaign Evaluation
  • Best Practices and Ethical Considerations
  • Avoiding Common Pitfalls and Misinterpretations
    Ensuring Statistical Power and Validity
    Ethical Implications in Experimentation
  • Tools and Resources for A/B Testing
  • Overview of Industry Tools and Platforms
    Open-source Libraries and Community Resources
    Further Reading and Research Papers
  • Final Project
  • Design, Conduct, and Present an A/B Test
    Peer Reviews and Feedback
    Discussion and Insights on Learning Outcomes

द्वारा पढ़ाया गया

365 Careers and Anastasia K


विषय

Data Science