Statistics and Calculus Methods for Data Analysis
This program focuses on the practical application of essential mathematical, statistical, and analytical techniques vital for advanced data science studies....
By Morgan Frank on Coursera
About This Course
This program focuses on the practical application of essential mathematical, statistical, and analytical techniques vital for advanced data science studies. Learn to calculate expected values, understand the normal distribution, perform derivative calculations, and solve complex integrals, all demonstrated with Python. Start with the concept of expected values and explore their relationship to the normal distribution, laying the groundwork for statistical analysis and predictive modeling. Move on to calculus, mastering derivatives and their applications in tasks like optimization and rate of change analysis. Advance further into solving integrals, including techniques for handling complex integrations and their significance in continuous data analysis. By the end of the course, you will possess a strong mathematical foundation to tackle more advanced data science topics. Engage in practical assignments and real-world projects to apply these methods in solving complex data problems. By leveraging tools like Python, you will gain hands-on understanding of these critical concepts.
Topics Covered
Frequently Asked Questions
How much does Statistics and Calculus Methods for Data Analysis cost?
Visit the Statistics and Calculus Methods for Data Analysis course page for current pricing and available discounts.
Who teaches Statistics and Calculus Methods for Data Analysis?
Statistics and Calculus Methods for Data Analysis is taught by Morgan Frank, University of Pittsburgh.
What skill level is Statistics and Calculus Methods for Data Analysis for?
This course is designed for advanced learners.
Similar Courses
TensorFlow: Advanced Techniques
DeepLearning.AI
Microsoft Azure AI Fundamentals AI-900 Exam Prep
Microsoft
Data Analysts' Toolbox - Excel, Power BI, Python, & Tableau
Packt
Data Literacy: Exploring and Visualizing Data
SAS