Overview
Key facts
However, and perhaps surprisingly to many, the day-to-day of a data science project involves very little machine learning. It is often said, anecdotally, that data scientists spend 80% of their time cleaning and pre-processing data and only 20% building or deploying machine learning models. Therefore, whether you want to pursue a career in data science or to experience the data science way of doing things, it is crucial that you first learn how to handle data.
A person proficient at collecting, storing, and adequately pre-processing data is more likely to extract interesting insights from their data even before applying complex algorithms to a data set. This process is part of a data science and analytics subfield called data engineering.
London School of Economics and Political Science's Data Engineering for the Social World course will teach you to reason about data and how to collect real data from websites, APIs or other sources. It will also teach you the best practices for efficient data storage, the basics of SQL language, and the tools available in R to pre-process and reshape data. You will learn to put data in a "tidy" format, allowing you to re-purpose it for future analysis, be it for exploratory data analysis, visualisation or machine learning. You will also be free to choose the data sources that align the most with your interests.
Programme Structure
Courses include:
- Data types and common data formats
- Structured Query Language (SQL)
- Data wrangling with tidyverse (R programming language)
- Building websites using Markdown
- HTML, CSS
- Web Scraping
Key information
Duration
- Full-time
- 19 days
Start dates & application deadlines
- StartingApplication deadline not specified.
- Visit the website for full details.
Language
Credits
- 3-4 credits (US)
- 7.5 ECTS points (EU)
Delivered
Campus Location
- London, United Kingdom
Disciplines
Social Work General Engineering & Technology Data Science & Big Data View 65 other Short Courses in Data Science & Big Data in United KingdomWhat students do after studying
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
This course is ideal for those seeking a hands-on experience with a data science project, whether you want to pursue a career in data science or to experience the data science way of doing things. It is also recommended if you want to strengthen your programming skills. This course will also be relevant if you are starting an MSc or MBA programme of study and wish to learn introductory concepts in the area.
Tuition Fees
-
International Applies to you
Applies to youNon-residents4150 GBP / full≈ 4150 GBP / full -
Domestic Applies to you
Applies to youCitizens or residents4150 GBP / full≈ 4150 GBP / full
Additional Details
- One Session - £4,150
- Two sessions - £7,300
- Three sessions - £9,000
Living costs
London
The living costs include the total expenses per month, covering accommodation, public transportation, utilities (electricity, internet), books and groceries.