Hands-on Python for Finance
Hands-on Python for Finance, available at $44.99, has an average rating of 4.05, with 36 lectures, based on 65 reviews, and has 369 subscribers.
You will learn about General programing skills in Python and working with common Python interfaces Using Numpy, Pandas and matplotlib to manipulate, analyze and visualize data Understand the Time value of money applications and project selection Getting and with working data, time series forecasting methods and linear models Understand Correlation and portfolio construction Be comfortable with Monte Carlo Simulation, Value at Risk and Options Valuation This course is ideal for individuals who are This course is for developers and analysts with some background in programming language and are interested in a concrete framework for using Python to augment or replace spreadsheet applications for financial tasks. It is particularly useful for This course is for developers and analysts with some background in programming language and are interested in a concrete framework for using Python to augment or replace spreadsheet applications for financial tasks.
Enroll now: Hands-on Python for Finance
Summary
Title: Hands-on Python for Finance
Price: $44.99
Average Rating: 4.05
Number of Lectures: 36
Number of Published Lectures: 36
Number of Curriculum Items: 36
Number of Published Curriculum Objects: 36
Original Price: $109.99
Quality Status: approved
Status: Live
What You Will Learn
- General programing skills in Python and working with common Python interfaces
- Using Numpy, Pandas and matplotlib to manipulate, analyze and visualize data
- Understand the Time value of money applications and project selection
- Getting and with working data, time series forecasting methods and linear models
- Understand Correlation and portfolio construction
- Be comfortable with Monte Carlo Simulation, Value at Risk and Options Valuation
Who Should Attend
- This course is for developers and analysts with some background in programming language and are interested in a concrete framework for using Python to augment or replace spreadsheet applications for financial tasks.
Target Audiences
- This course is for developers and analysts with some background in programming language and are interested in a concrete framework for using Python to augment or replace spreadsheet applications for financial tasks.
Did you know Python is the one of the best solution to quantitatively analyse your finances by taking an overview of your timeline? This hands-on course helps both developers and quantitative analysts to get started with Python, and guides you through the most important aspects of using Python for quantitative finance.
You will begin with a primer to Python and its various data structures.Then you will dive into third party libraries. You will work with Python libraries and tools designed specifically for analytical and visualization purposes. Then you will get an overview of cash flow across the timeline. You will also learn concepts like Time Series Evaluation, Forecasting, Linear Regression and also look at crucial aspects like Linear Models, Correlation and portfolio construction. Finally, you will compute Value at Risk (VaR) and simulate portfolio values using Monte Carlo Simulation which is a broader class of computational algorithms.
With numerous practical examples through the course, you will develop a full-fledged framework for Monte Carlo, which is a class of computational algorithms and simulation-based derivatives and risk analytics.
About the Author
Matthew Macarty has taught graduate and undergraduate business school students for over 15 years and currently teaches at Bentley University. He has taught courses in statistics, quantitative methods, information systems and database design.
Course Curriculum
Chapter 1: Python Programming Primer
Lecture 1: The Course Overview
Lecture 2: Installing the Anaconda Platform
Lecture 3: Launching the Python Environment
Lecture 4: String and Number Objects
Lecture 5: Python Lists
Lecture 6: Python Dictionaries (Dicts)
Lecture 7: Repetition in Python (For Loops)
Lecture 8: Branching Logic in Python (If Blocks)
Lecture 9: Introduction to Functions in Python
Chapter 2: The Python Data Environment
Lecture 1: Introduction to NumPy Arrays
Lecture 2: NumPy – A Deeper Dive
Lecture 3: Pandas – Part I
Lecture 4: Pandas – Part II
Lecture 5: Introduction to Scipy.stats
Lecture 6: Matplotlib – Part I
Lecture 7: Matplotlib – Part II
Chapter 3: Time Value of Money
Lecture 1: Present Value of a Stream of Cash Flows
Lecture 2: Future Value of Single and Multiple Cash Flows
Lecture 3: Net Present Value of a Project
Lecture 4: Internal Rate of Return
Lecture 5: Introduction to Amortization
Lecture 6: Creating an Amortization Application
Chapter 4: Time Series Evaluation and Forecasting
Lecture 1: Opening and Reading a .CSV File
Lecture 2: Getting and Evaluating Data
Lecture 3: Moving Average Forecasting
Lecture 4: Forecasting with Single Exponential Smoothing
Lecture 5: Creating and Testing a Simple Trading System
Chapter 5: Linear Models, Correlation, and Valuation
Lecture 1: Valuing Securities with Pricing Models
Lecture 2: Finding Correlations Between Securities
Lecture 3: Linear Regression
Lecture 4: Calculating Beta and Expected Return
Lecture 5: Constructing Portfolios Along the Efficient Frontier
Chapter 6: Build a Monte Carlo Simulation App
Lecture 1: Introduction to Monte Carlo
Lecture 2: Monte Carlo Simulation
Lecture 3: Using Monte Carlo Technique to Calculate Value at Risk
Lecture 4: Putting It All Together – Monte Simulation Application
Instructors
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Packt Publishing
Tech Knowledge in Motion
Rating Distribution
- 1 stars: 5 votes
- 2 stars: 2 votes
- 3 stars: 10 votes
- 4 stars: 24 votes
- 5 stars: 24 votes
Frequently Asked Questions
How long do I have access to the course materials?
You can view and review the lecture materials indefinitely, like an on-demand channel.
Can I take my courses with me wherever I go?
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