学生对 EDUCBA 提供的 Bayesian Statistics: Excel to Python A/B Testing 的评价和反馈
课程概述
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SJ
Feb 3, 2026
It transformed my understanding of uncertainty in experiments. Moving from Excel tables to PyMC models felt like a natural, powerful progression for me.
KN
Feb 15, 2026
The transition from spreadsheets to Python coding is seamless, making Bayesian A/B testing accessible and highly practical.
1 - Bayesian Statistics: Excel to Python A/B Testing 的 18 个评论(共 18 个)
创建者 Trisha P
•Feb 24, 2026
This course makes Bayesian analysis approachable and practical. From spreadsheet calculations to Python automation, everything is explained with clarity and precision. It significantly improved my confidence in running data-driven experiments and interpreting results professionally.
创建者 Shantunu K
•Feb 20, 2026
It combines conceptual clarity with hands-on implementation. The Bayesian approach to A/B testing is presented in a practical, decision-focused way. Transitioning from Excel to Python was seamless and empowering for real-world analytics applications.
创建者 priyal T
•Feb 21, 2026
I particularly enjoyed the structured explanation of prior and posterior probabilities. The Excel exercises are beginner-friendly, and the Python section is well-paced. A highly recommended course for experimentation and analytics professionals.
创建者 Sanjay S
•Feb 26, 2026
One of the best courses for understanding Bayesian statistics in a business context. The structured path from Excel to Python coding builds confidence. The A/B testing lessons are practical and industry-relevant.
创建者 Pranvika S
•Feb 12, 2026
The instructor explains complex ideas in a straightforward way. This course truly elevates experimentation skills.
创建者 Gitanjali S
•Feb 23, 2026
A perfect blend of statistical theory and practical coding. The Bayesian approach is explained in a way that feels intuitive. Excel examples clarify concepts, and Python implementation enhances real-world usability. Great investment for career growth.
创建者 Aarav R
•Feb 19, 2026
The instructor simplifies Bayesian thinking without oversimplifying the math. I loved the structured exercises and real-world A/B testing case studies. Moving from Excel models to Python code felt smooth and rewarding.
创建者 snehalata s
•Feb 17, 2026
I appreciated the clear progression from spreadsheet intuition to Python automation. The course demystifies Bayesian inference and makes A/B testing more strategic and data-driven rather than guesswork-based.
创建者 Sanjana S
•Feb 10, 2026
A professionally designed course that delivers real value. Bayesian concepts are explained clearly, and the Excel-to-Python A/B testing workflow feels intuitive and industry-relevant.
创建者 Vaidehi D
•Feb 15, 2026
An impressive course that balances theory and application, empowering learners to confidently perform Bayesian A/B testing from spreadsheets to Python scripts.
创建者 Ravi P
•Feb 7, 2026
Mastering Bayesian methods here gave me the edge in my senior analyst interview. The focus on real-world uncertainty is a game-changer for business strategy.
创建者 Meera S
•Feb 6, 2026
This course transformed my understanding of A/B testing by introducing Bayesian methods through simple Excel models before advancing into Python analysis.
创建者 Saavi J
•Feb 4, 2026
It transformed my understanding of uncertainty in experiments. Moving from Excel tables to PyMC models felt like a natural, powerful progression for me.
创建者 Harshad S
•Feb 9, 2026
It transforms complex Bayesian ideas into actionable insights and smoothly guides learners from spreadsheet analysis to Python-based experimentation.
创建者 jasmin a
•Feb 13, 2026
A transformative course for analysts seeking modern experimentation techniques. Bayesian thinking feels intuitive after this training.
创建者 Santosh D
•Feb 3, 2026
The transition into Python for hierarchical modeling is exactly what is needed for modern, scalable healthcare data science projects.
创建者 Kanha N
•Feb 16, 2026
The transition from spreadsheets to Python coding is seamless, making Bayesian A/B testing accessible and highly practical.
创建者 A A
•Nov 13, 2025
Good course to understand theory intuitively, but Pymc package being used is outdated , so commands won't work with new Pymc package