SQL for Data Science

External: Coursera Courses ↗ · Coursera

Open Course on External: Coursera

Free to audit · Opens on External: Coursera

SQL for Data Science

Coursera · Beginner ·📊 Data Analytics & Business Intelligence ·3mo ago

Key Takeaways

Uses SQL for data science to interact with data and provide insights

Original Description

As data collection has increased exponentially, so has the need for people skilled at using and interacting with data; to be able to think critically, and provide insights to make better decisions and optimize their businesses. This is a data scientist, “part mathematician, part computer scientist, and part trend spotter” (SAS Institute, Inc.). According to Glassdoor, being a data scientist is the best job in America; with a median base salary of $110,000 and thousands of job openings at a time. The skills necessary to be a good data scientist include being able to retrieve and work with data, and to do that you need to be well versed in SQL, the standard language for communicating with database systems. This course is designed to give you a primer in the fundamentals of SQL and working with data so that you can begin analyzing it for data science purposes. You will begin to ask the right questions and come up with good answers to deliver valuable insights for your organization. This course starts with the basics and assumes you do not have any knowledge or skills in SQL. It will build on that foundation and gradually have you write both simple and complex queries to help you select data from tables. You'll start to work with different types of data like strings and numbers and discuss methods to filter and pare down your results. You will create new tables and be able to move data into them. You will learn common operators and how to combine the data. You will use case statements and concepts like data governance and profiling. You will discuss topics on data, and practice using real-world programming assignments. You will interpret the structure, meaning, and relationships in source data and use SQL as a professional to shape your data for targeted analysis purposes. Although we do not have any specific prerequisites or software requirements to take this course, a simple text editor is recommended for the final project. So what are you waiting for? This is y
Watch on External: Coursera ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Related Reads

📰
The Ultimate Step-by-Step Guide: Connecting Power BI to Cloud-Based & Local PostgreSQL
Learn to connect Power BI to PostgreSQL databases, both cloud-based and local, to unlock powerful data analysis and visualization capabilities
Dev.to · michael imani
📰
Understanding Data Warehousing: The Complete Beginner’s Guide for Data Engineering
Learn the basics of data warehousing and its importance in data engineering
Medium · Data Science
📰
Job Hunting? Free Data Tools for Salary, Certification, and Visa Research
Boost your job hunt with free data tools for salary, certification, and visa research to make informed decisions
Dev.to · datapeek
📰
Python for Data Science — Sampling and Why Your Conclusions Can Be Wrong
Learn how sampling affects data science conclusions and why understanding probability distributions is crucial
Medium · Data Science
Up next
This AI Read a Real Estate Lease in Minutes
AI for CRE
Watch →