Back to Introduction to Trading, Machine Learning & GCP
Google Cloud

Introduction to Trading, Machine Learning & GCP

In this course, you’ll learn about the fundamentals of trading, including the concept of trend, returns, stop-loss, and volatility. You will learn how to identify the profit source and structure of basic quantitative trading strategies. This course will help you gauge how well the model generalizes its learning, explain the differences between regression and forecasting, and identify the steps needed to create development and implementation backtesters. By the end of the course, you will be able to use Google Cloud Platform to build basic machine learning models in Jupyter Notebooks. To be successful in this course, you should have advanced competency in Python programming and familiarity with pertinent libraries for machine learning, such as Scikit-Learn, StatsModels, and Pandas. Experience with SQL is recommended. You should have a background in statistics (expected values and standard deviation, Gaussian distributions, higher moments, probability, linear regressions) and foundational knowledge of financial markets (equities, bonds, derivatives, market structure, hedging).

Status: Financial Trading
Status: Statistical Machine Learning
IntermediateCourse5 hours

Featured reviews

LA

4.0Reviewed Jun 2, 2020

Good introduction to quant theory and ML, labs could be a lot better though, they lack proper explanations and don't cover some of the basics necessary to complete them.

RR

5.0Reviewed Feb 2, 2021

Exactly what I was looking for and at the adequate level. I'm a trader and a machine learning developer, and this course helped me in both topics

MA

4.0Reviewed Dec 25, 2019

Would be nice to have some extra step at the end of the lad to actually build a trading strategy instead of stopping at the fitting of the model

GM

4.0Reviewed Feb 1, 2020

Giving 4 stars as there were some technical problems with AI Platform in week 3 and could not access the lab work, which is pretty disappointing.

DG

4.0Reviewed May 4, 2020

The lectures appear to jump around a bit. Looks like it was stitched together from different places. So the course lacks a continuity I have seen in other courses.

LU

4.0Reviewed Jul 10, 2024

Not as prominent or important as the Finance specialization but important factor more so in the lifestyle factor of classification and could be useful to other fortune 500 companies.

BY

5.0Reviewed Oct 18, 2020

1. Excellent experience in AI lab; 2. Straightforward introduction of the Models; 3. Exercise also has inspiration

AB

5.0Reviewed Mar 15, 2020

Very good course us introduction to Trading, ML models for trading, ML, Neural networks concept and approaches, Google cloud platform.

PR

4.0Reviewed May 11, 2020

It's a good course, but the volume is TOO LOW, and they don't go into detail in the programming phase for python. but it's good overall.

ST

4.0Reviewed Jan 14, 2020

Some of the content in Week 4, might be better placed earlier in the course. Other than that it was a great learning experience.

AJ

5.0Reviewed May 1, 2020

This is a very good course because it tuned my already forecasting knowledge to look more into machine learning

AJ

5.0Reviewed Nov 20, 2020

I thought this was excellent. Some familiarity with standard SQL is needed to get the most benefit from the materials, and the course is clearly aimed at GCP users.

All reviews

Showing: 20 of 246

Carlo Rivas Castagnino
1.0
Reviewed Jan 3, 2020
Ricardo Cocoma
1.0
Reviewed Dec 26, 2019
Ruedi Gygax
1.0
Reviewed Dec 25, 2019
Gavin Heale
1.0
Reviewed Jan 15, 2020
Krzysztof Pieranski
3.0
Reviewed Dec 25, 2019
Laurent Pataillot
1.0
Reviewed Dec 26, 2019
Saulo D. S. Reis
1.0
Reviewed Jan 9, 2020
Saeed
2.0
Reviewed Jun 12, 2020
Gerardo Gutierrez
2.0
Reviewed Jan 10, 2020
Yun Zhi Lin
5.0
Reviewed Dec 29, 2019
Himalay Oza
4.0
Reviewed Dec 30, 2019
Carlos F. Pavon
5.0
Reviewed Feb 29, 2020
René Rivero
5.0
Reviewed Feb 3, 2021
Carson Rodrigues
5.0
Reviewed Jan 2, 2020
Marc Assouline
4.0
Reviewed Dec 25, 2019
David Gilbertson
3.0
Reviewed Jun 9, 2022
Vincent Hui
5.0
Reviewed Dec 25, 2019
Gehad Wahgdy
5.0
Reviewed Jan 3, 2020
Ali Belachkar
5.0
Reviewed Mar 16, 2020
Dan Tsz Kin
5.0
Reviewed Jan 5, 2020