Reader small image

You're reading from  Julia Cookbook

Product typeBook
Published inSep 2016
Reading LevelBeginner
Publisher
ISBN-139781785882012
Edition1st Edition
Languages
Concepts
Right arrow
Authors (2):
Jalem Raj Rohit
Jalem Raj Rohit
author image
Jalem Raj Rohit

Jalem Raj Rohit is an IIT Jodhpur graduate with a keen interest in recommender systems, machine learning, and serverless and distributed systems. Raj currently works as a senior consultantdata scienceand NLP at Episource, before which he worked at Zomato and Kayako. He contributes to open source projects in Python, Go, and Julia. He also speaks at tech conferences about serverless engineering and machine learning.
Read more about Jalem Raj Rohit

View More author details
Right arrow

Time series analysis


Time series is another very important form of data. It is more widely used in stock markets, market analysis, and signal processing. The data has a time dimension, which makes it look like a signal. So, in most cases, signal analysis techniques and formulae are applicable for time series data, such as autocorrelation, crosscorrelation, and so on, which we have already dealt with in the previous chapters. In this recipe, we will deal with methods to get around and work with datasets with the time series format.

Getting ready

To get ready for the recipe, the TimeSeries and MarketData libraries have to be installed and imported. We install them using the Pkg.add() function, as follows:

Pkg.add("TimeSeries")
Pkg.add("MarketData")

Then the package has to be imported for use in the session. It can be imported through the using ... command, as follows:

using TimeSeries
using MarketData

How to do it...

  1. The TimeArray format from the TimeSeries package makes it easy to interpret...

lock icon
The rest of the page is locked
Previous PageNext Chapter
You have been reading a chapter from
Julia Cookbook
Published in: Sep 2016Publisher: ISBN-13: 9781785882012

Authors (2)

author image
Jalem Raj Rohit

Jalem Raj Rohit is an IIT Jodhpur graduate with a keen interest in recommender systems, machine learning, and serverless and distributed systems. Raj currently works as a senior consultantdata scienceand NLP at Episource, before which he worked at Zomato and Kayako. He contributes to open source projects in Python, Go, and Julia. He also speaks at tech conferences about serverless engineering and machine learning.
Read more about Jalem Raj Rohit