# Python으로 배우는 실험 설계
This is a DataCamp course: 실험 설계를 구현하고 견고한 통계 분석을 수행하여 정확하고 타당한 결론을 도출하세요!
## Course Details
- **Duration:** ~4h
- **Level:** Intermediate
- **Instructor:** James Chapman
- **Students:** ~19,440,000 learners
- **Subjects:** Python, Probability & Statistics, Data Science and Analytics
- **Content brand:** DataCamp
- **Practice:** Hands-on practice included
- **Prerequisites:** Hypothesis Testing in Python
## Learning Outcomes
- Python
- Probability & Statistics
- Data Science and Analytics
- Python으로 배우는 실험 설계
## Traditional Course Outline
1. Experimental Design Preliminaries - Building knowledge in experimental design allows you to test hypotheses with best-practice analytical tools and quantify the risk of your work. You’ll begin your journey by setting the foundations of what experimental design is and different experimental design setups such as blocking and stratification. You’ll then learn and apply visual and analytical tests for normality in experimental data.
2. Experimental Design Techniques - You'll delve into sophisticated experimental design techniques, focusing on factorial designs, randomized block designs, and covariate adjustments. These methodologies are instrumental in enhancing the accuracy, efficiency, and interpretability of experimental results. Through a combination of theoretical insights and practical applications, you'll acquire the skills needed to design, implement, and analyze complex experiments in various fields of research.
3. Analyzing Experimental Data: Statistical Tests and Power - Master statistical tests like t-tests, ANOVA, and Chi-Square, and dive deep into post-hoc analyses and power analysis essentials. Learn to select the right test, interpret p-values and errors, and skillfully conduct power analysis to determine sample and effect sizes, all while leveraging Python's powerful libraries to bring your data insights to life.
4. Advanced Insights from Experimental Complexity - Hop into the complexities of experimental data analysis. Learn to synthesize insights using pandas, address data issues like heteroscedasticity with scipy.stats, and apply nonparametric tests like Mann-Whitney U. Learn additional techniques for transforming, visualizing, and interpreting complex data, enhancing your ability to conduct robust analyses in various experimental settings.
## Resources and Related Learning
**Resources:** HR Wellness (dataset), Chemical Reactions (dataset), Investment Returns (dataset), Chick Weights (dataset), Marketing Campaign Conversation (dataset), Athletic Performance (dataset), Customer Satisfaction (dataset), Loan Approval Yield (dataset)
**Related tracks:** 준데이터 과학자 파이썬에서, 응용 통계학 파이썬에서
## Attribution & Usage Guidelines
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Hypothesis Testing in Python1
Experimental Design Preliminaries
Building knowledge in experimental design allows you to test hypotheses with best-practice analytical tools and quantify the risk of your work. You’ll begin your journey by setting the foundations of what experimental design is and different experimental design setups such as blocking and stratification. You’ll then learn and apply visual and analytical tests for normality in experimental data.
2
Experimental Design Techniques
You'll delve into sophisticated experimental design techniques, focusing on factorial designs, randomized block designs, and covariate adjustments. These methodologies are instrumental in enhancing the accuracy, efficiency, and interpretability of experimental results. Through a combination of theoretical insights and practical applications, you'll acquire the skills needed to design, implement, and analyze complex experiments in various fields of research.
3
Analyzing Experimental Data: Statistical Tests and Power
Master statistical tests like t-tests, ANOVA, and Chi-Square, and dive deep into post-hoc analyses and power analysis essentials. Learn to select the right test, interpret p-values and errors, and skillfully conduct power analysis to determine sample and effect sizes, all while leveraging Python's powerful libraries to bring your data insights to life.
4
Advanced Insights from Experimental Complexity
Hop into the complexities of experimental data analysis. Learn to synthesize insights using pandas, address data issues like heteroscedasticity with scipy.stats, and apply nonparametric tests like Mann-Whitney U. Learn additional techniques for transforming, visualizing, and interpreting complex data, enhancing your ability to conduct robust analyses in various experimental settings.
Python으로 배우는 실험 설계
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