Portfolio Optimization of volatile assets: Efficient Frontier (Python)
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Portfolio Optimization of volatile assets:
Efficient Frontier - Python

  • Dive into the dynamics of portfolio optimization, focusing on volatile
    assets using Python to master the Efficient Frontier technique.

Created by Selva Prabhakaran

  • 13 Video Lessons

  • English

  • English captions

What you will learn

01

Efficient Frontier theory and its application

02

Techniques to assess and manage risk in investment portfolios

03

Techniques to assess and manage risk in investment portfolios

04

Strategies for diversifying investments to maximize returns

05

Hands on reproducible Python Codes

06

Insight into advanced portfolio optimization concepts

Course Curriculum

Requirements

  • Courses Page1 Basics of Python
  • Courses Page1 Foundational knowledge of Data Science
  • Courses Page1 High school maths

Who should attend this course?

  • Data Science Aspirants

  • Data Science Professionals

  • Software/Data engineers interested in quantitative analysis

  • Professionals working with large datasets

  • Data analysts, economists, researchers

Instructor

Selva Prabhakaran Principal Data Scientist

My name is Selva, and I am super excited to mentor you on this project!

I head the Data Science team for a global Fortune 500 company and over the last 10 years of my data science experience I’ve deployed 20+ global products. I’m also the Founder & Chief Author of Machine Learning Plus, which has over 4M annual readers.

I specialize in covering the in-depth intuition and maths of any concept or algorithm. And based on my existing student requests, I’ve put up the series of courses and projects with detailed explanations – just like an on the job experience. Hope you love it!

  • 4.5+Instructor rating

  • 200+ reviews

  • 75K+students

  • 50+ Courses

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