Python and Statistics for Financial Analysis

  • 4.4
Approx. 13 hours to complete

Course Summary

This course teaches Python programming, statistical analysis, and financial concepts to help you make informed financial decisions. You will learn how to analyze financial data, create visualizations, and build financial models using Python.

Key Learning Points

  • Learn Python programming for financial analysis
  • Understand statistical analysis and visualization techniques
  • Apply financial concepts to make informed decisions

Related Topics for further study


Learning Outcomes

  • Use Python programming for financial analysis
  • Analyze financial data and create visualizations
  • Apply financial concepts to make informed decisions

Prerequisites or good to have knowledge before taking this course

  • Basic knowledge of Python programming
  • Basic understanding of financial concepts

Course Difficulty Level

Intermediate

Course Format

  • Online self-paced course
  • Video lectures
  • Hands-on exercises
  • Real-world case studies

Similar Courses

  • Financial Markets
  • Introduction to Corporate Finance
  • Data Analysis and Presentation Skills: the PwC Approach

Related Education Paths


Related Books

Description

Course Overview: https://youtu.be/JgFV5qzAYno

Outline

  • Visualizing and Munging Stock Data
  • Course overview
  • 1.0 Module Introduction
  • 1.1 Packages for Data Analysis
  • 1.2 Importing data
  • 1.3 Basics of Dataframe
  • 1.4 Generate new variables in Dataframe
  • 1.5 Trading Strategy
  • Grading Criteria
  • Getting started with Jupyter Notebook
  • pd.read_csv or pd.DataFrame.from_csv
  • Quiz 1
  • Random variables and distribution
  • 2.0 Module Introduction
  • 2.1 Outcomes and Random Variables
  • 2.2 Frequency and Distributions
  • 2.3 Models of Distribution
  • Quiz 2
  • Sampling and Inference
  • 3.0 Introduction
  • 3.1 Population and Sample
  • 3.2 Variation of Sample
  • 3.3 Confidence Interval
  • 3.4 Hypothesis Testing
  • P-value
  • Quiz 3
  • Linear Regression Models for Financial Analysis
  • 4.0 Introduction
  • 4.1 Association of random variables
  • 4.2 Simple linear regression model
  • 4.3 Diagnostic of linear regression model
  • 4.4 Multiple linear regression model
  • 4.5 Evaluate the strategy
  • Please rate this course!
  • Quiz 4
  • Post-course survey

Summary of User Reviews

Discover the power of Python and statistics for financial analysis with this highly-rated course on Coursera. Learn how to apply statistical techniques to real-world financial data and make informed decisions. Users rave about the hands-on approach and practical examples provided throughout the course.

Key Aspect Users Liked About This Course

The practical examples and hands-on approach were highly praised by many users.

Pros from User Reviews

  • The course content is well-structured and easy to follow.
  • The instructors are knowledgeable and engaging.
  • The practical examples and exercises help reinforce learning.
  • The course is suitable for beginners and experienced users alike.
  • The skills learned in this course are highly applicable in the finance industry.

Cons from User Reviews

  • Some users found the pace of the course to be too slow.
  • A few users felt that the course could benefit from more advanced topics.
  • The course does not cover all aspects of financial analysis.
  • The examples provided are somewhat simplistic and may not reflect real-world scenarios.
  • The course may be too basic for those with prior experience in Python or statistics.
English
Available now
Approx. 13 hours to complete
Xuhu Wan
The Hong Kong University of Science and Technology
Coursera

Instructor

Xuhu Wan

  • 4.4 Raiting
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