Studyportals
Specialization Online

Machine Learning for Trading Coursera

Highlights
Tuition fee
Unknown
Tuition fee
Unknown
Duration
1 months
Duration
1 months
Apply date
Anytime
Unknown
Apply date
Anytime
Unknown
Start date
Anytime
Unknown
Start date
Anytime
Unknown
Taught in
English
Taught in
English

About

This Machine Learning for Trading Specialization offered by Coursera in partnership with Google Cloud is intended for those who have an understanding of the foundations of Machine Learning at an intermediate level. 

Overview

This 3-course Specialization from Google Cloud and New York Institute of Finance (NYIF) is for finance professionals, including but not limited to hedge fund traders, analysts, day traders, those involved in investment management or portfolio management, and anyone interested in gaining greater knowledge of how to construct effective trading strategies using Machine Learning (ML) and Python. 

Alternatively, this Machine Learning for Trading Specialization offered by Coursera in partnership with Google Cloud can be for Machine Learning professionals who seek to apply their craft to quantitative trading strategies.  By the end of the Specialization, you'll understand how to use the capabilities of Google Cloud to develop and deploy serverless, scalable, deep learning, and reinforcement learning models to create trading strategies that can update and train themselves. As a challenge, you're invited to apply the concepts of Reinforcement Learning to use cases in Trading.  

To successfully complete the exercises within the program, you should have advanced competency in Python programming and familiarity with pertinent libraries for Machine Learning, such as Scikit-Learn, StatsModels, and Pandas; a solid background in ML and statistics (including regression, classification, and basic statistical concepts) and basic knowledge of financial markets (equities, bonds, derivatives, market structure, and hedging). Experience with SQL is recommended.

Applied Learning Project

The three courses will show you how to create various quantitative and algorithmic trading strategies using Python. By the end of the specialization, you will be able to create and enhance quantitative trading strategies with machine learning that you can train, test, and implement in capital markets. You will also learn how to use deep learning and reinforcement learning strategies to create algorithms that can update and train themselves.

Programme Structure

Courses include:

  • Trading, Machine Learning & GCP
  • Trend, Returns, Stop-loss, and Volatility
  • Exchange Arbitrage, Statistical Arbitrage, and Index Arbitrage
  • Using Machine Learning in Trading and Finance
  • Reinforcement Learning for Trading Strategies
  • Optimize An Rl Trading Strategy

Key information

Duration

  • Part-time
    • 1 months
    • 10 hrs/week

Start dates & application deadlines

You can apply for and start this programme anytime.

Language

English

Delivered

Online
  • Self-paced

Campus Location

  • Mountain View, United States

What students do after studying

Join for free or log in to access our complete career info list.

Academic requirements

We are not aware of any specific GRE, GMAT or GPA grading score requirements for this programme.

English requirements

We are not aware of any English requirements for this programme.

Other requirements

General requirements

  • Intermediate Level
  • Familiarization with basic concepts in Machine Learning and Financial Markets; advanced competency in Python Programming.
  • This specialization is aimed at finance professionals and learners with strong backgrounds in Python, machine learning, and statistics who want to develop and apply quantitative trading strategies using machine learning in financial markets.

Tuition Fees

Additional Details

Course is free for the first 7 days. After 7 days, the course can be accessed with the Coursera Plus Subscription

Funding

Other interesting programmes for you

Our partners

Machine Learning for Trading
Coursera
Machine Learning for Trading
-
Coursera

Wishlist

Go to your profile page to get personalised recommendations!