Python Mastery for Data, Statistics & Statistical Modeling
Python Mastery for Data Science & Statistical Modeling: Basics to Advanced Applications in Data Analysis, Visualization
Description
Unlock the world of data science and statistical modeling with our comprehensive course, Python for Data Science & Statistical Modeling.
Whether you're a novice or looking to enhance your skills, this course provides a structured pathway to mastering Python for data science and delving into the fascinating world of statistical modeling.
Module 1: Python Fundamentals for Data Science
Dive into the foundations of Python for data science, where you'll learn the essentials that form the basis of your data journey.
Session 1: Introduction to Python & Data Science
Session 2: Python Syntax & Control Flow
Session 3: Data Structures in Python
Session 4: Introduction to Numpy & Pandas for Data Manipulation
Module 2: Data Science Essentials with Python
Explore the core components of data science using Python, including exploratory data analysis, visualization, and machine learning.
Session 5: Exploratory Data Analysis with Pandas & Numpy
Session 6: Data Visualization with Matplotlib, Seaborn & Bokeh
Session 7: Introduction to Scikit-Learn for Machine Learning in Python
Module 3: Mastering Probability, Statistics & Machine Learning
Gain in-depth knowledge of probability, statistics, and their seamless integration with Python's powerful machine learning capabilities.
Session 8: Difference between Probability and Statistics
Session 9: Set Theory and Probability Models
Session 10: Random Variables and Distributions
Session 11: Expectation, Variance, and Moments
Module 4: Practical Statistical Modeling with Python
Apply your understanding of probability and statistics to build statistical models and explore their real-world applications.
Session 12: Probability and Statistical Modeling in Python
Session 13: Estimation Techniques & Maximum Likelihood Estimate
Session 14: Logistic Regression and KL-Divergence
Session 15: Connecting Probability, Statistics & Machine Learning in Python
Module 5: Statistical Modeling Made Easy
Simplify statistical modeling with Python, covering summary statistics, hypothesis testing, correlation, and more.
Session 16: Overview of Summary Statistics in Python
Session 17: Introduction to Hypothesis Testing
Session 18: Null and Alternate Hypothesis with Python
Session 19: Correlation and Covariance in Python
Module 6: Implementing Statistical Models
Delve deeper into implementing statistical models with Python, including linear regression, multiple regression, and custom models.
Session 20: Linear Regression and Coefficients
Session 21: Testing for Correlation in Python
Session 22: Multiple Regression and F-Test
Session 23: Building Custom Statistical Models with Python Algorithms
Module 7: Capstone Projects & Real-World Applications
Put your skills to the test with hands-on projects, case studies, and real-world applications.
Session 24: Mini-projects integrating Python, Data Science & Statistics
Session 25: Case Study 1: Real-world applications of Statistical Models
Session 26: Case Study 2: Python-based Data Analysis & Visualization
Module 8: Conclusion & Next Steps
Wrap up your journey with a recap of key concepts and guidance on advancing your data science career.
Session 27: Recap & Summary of Key Concepts
Session 28: Continuing Your Learning Path in Data Science & Python
Join us on this transformative learning adventure, where you'll gain the skills and knowledge to excel in data science, statistical modeling, and Python. Enroll now and embark on your path to data-driven success!
Who Should Take This Course?
Aspiring Data Scientists
Data Analysts
Business Analysts
Students pursuing a career in data-related fields
Anyone interested in harnessing Python for data insights
Why This Course?
In today's data-driven world, proficiency in Python and statistical modeling is a highly sought-after skillset. This course empowers you with the knowledge and practical experience needed to excel in data analysis, visualization, and modeling using Python. Whether you're aiming to kickstart your career, enhance your current role, or simply explore the world of data, this course provides the foundation you need.
What You Will Learn:
This course is structured to take you from Python fundamentals to advanced statistical modeling, equipping you with the skills to:
Master Python syntax and data structures for effective data manipulation
Explore exploratory data analysis techniques using Pandas and Numpy
Create compelling data visualizations using Matplotlib, Seaborn, and Bokeh
Dive into Scikit-Learn for machine learning in Python
Understand key concepts in probability and statistics
Apply statistical modeling techniques in real-world scenarios
Build custom statistical models using Python algorithms
Perform hypothesis testing and correlation analysis
Implement linear and multiple regression models
Work on hands-on projects and real-world case studies
Keywords:
Python for Data Science, Statistical Modeling, Data Analysis, Data Visualization, Machine Learning, Pandas, Numpy, Matplotlib, Seaborn, Bokeh, Scikit-Learn, Probability, Statistics, Hypothesis Testing, Regression Analysis, Data Insights, Python Syntax, Data Manipulation
What You Will Learn!
- Solid grasp of Python programming for Data Science & Statistics
- Practical experience through hands-on projects and case studies
- Ability to apply Statistical Modeling techniques using Python
- Understanding of real-world applications in Data Analysis and Machine Learning
Who Should Attend!
- Beginners in Python and Data Science
- Python Enthusiasts looking to apply skills in Data Analysis
- Aspiring Data Scientists seeking a strong foundation
- Professionals aiming to enhance their statistical modeling skills