
26 에피소드
1. The Course Overview

1. The Course Overview
This video gives an overview of the entire course.
2. Sourcing Airfare Pricing Data

2. Sourcing Airfare Pricing Data
We need the air pricing data from a website to work with. You will learn to do that in this section.
3. Retrieving the Fare Data with Advanced Web Scraping Techniques

3. Retrieving the Fare Data with Advanced Web Scraping Techniques
After determining the source of the data, we need to retrieve the data.
4. Parsing the DOM to Extract Pricing Data

4. Parsing the DOM to Extract Pricing Data
DOM is the structure of elements that form the web page. We need to get some details of the structure by parsing it.
5. Sending Real-Time Alerts Using IFTTT

5. Sending Real-Time Alerts Using IFTTT
To get real-time alerts when a particular event occurs, we need to use IFTTT.
6. Putting It All Together

6. Putting It All Together
To deploy our app, we'll move on to working in a text editor. You will put together the entire code to get the final result.
7. The IPO Market

7. The IPO Market
Before deciding strategies for the IPO market, we need to study the IPO market and derive inferences from it.
8. Feature Engineering

8. Feature Engineering
The consideration and inclusion of all factors affecting the market is called feature engineering. Modeling this is as important as the data used in building the model.
9. Binary Classification

9. Binary Classification
Instead of giving the value of the return, you can predict the IPO for a trade you will buy or not buy. The model used is logistic regression.
10. Feature Importance

10. Feature Importance
It is important to know which features will make the offering successful. You can find that out in this section.
11. Creating a Supervised Training Set with the Pocket App

11. Creating a Supervised Training Set with the Pocket App
To create a model, we have to first have a training dataset. We will use the pocket app for this.
12. Using the embed.ly API to Download Story Bodies

12. Using the embed.ly API to Download Story Bodies
You can't move forward with just the URLs of the stories. You would need the full article. So let's check out how to do that in this video.
13. Natural Language Processing Basics

13. Natural Language Processing Basics
Machine learning models work on numerical data. So we will need to transform our text into numerical data using NLP.
14. Support Vector Machines

14. Support Vector Machines
You will learn about the linear support vector machine in this video. The SVM algorithm separates data points linearly into classes.
15. IFTTT Integration with Feeds, Google Sheets, and E-mail

15. IFTTT Integration with Feeds, Google Sheets, and E-mail
We have provided a training dataset. But we also need a stream of articles as a testing dataset to run our model against.
16. Setting Up Your Daily Personal Newsletter

16. Setting Up Your Daily Personal Newsletter
It would make life easier if you get a personalized e-mail of your stories, right? So you will learn how to do that in this video.
17. What Does Research Tell Us about the Stock Market?

17. What Does Research Tell Us about the Stock Market?
Research is the most important thing before we start working on designing a strategy.
18. Developing a Trading Strategy

18. Developing a Trading Strategy
Once you have studied the various aspects of the market, it is time to develop a trading strategy. You will learn it in this video.
19. Building a Model and Evaluating Its Performance

19. Building a Model and Evaluating Its Performance
Now that we have our baseline, we will build our first regression model for prediction of stocks.
20. Modeling with Dynamic Time Warping

20. Modeling with Dynamic Time Warping
Another algorithm to work with is dynamic time warping. It provides us a metric which will inform us about the similarity between two time series.
21. Machine Learning on Images

21. Machine Learning on Images
It is very important to understand machine learning's concepts before working with it.
22. Working with Images

22. Working with Images
In order to work with images, we need to transform them into a matrix form, that is, numerical form.
23. Finding Similar Images

23. Finding Similar Images
We will use algorithms to find similar images in the database.
24. Building an Image Similarity Engine

24. Building an Image Similarity Engine
We will combine what we have studied so far to build an image similarity engine.












