Structured Database Environments with SQL
About this Course
Develop the skills necessary to create structured database environments using a relational database management system (RDBMS), such as MySQL, that incorporates basic processing functionality and allows for data management, data manipulation and data analysis. Learn about types of data and types of databases to store data, as well as design for scalability. You’ll also learn to prepare digital data storage using the relational model, including resolving integrity constraints, and proper assignments of primary and foreign keys. In addition, you’ll construct and analyze queries to address data requirements. By completing this course and the final exam, you will: Demonstrate knowledge of the relational model Build skills in SQL Construct SQL queries Read and develop database schemas Apply the concept of normalization to a dataset or database Understand how to add/export data to existing schemas and SQL joins Learn how to troubleshoot SQL code If you’re looking to advance your career, you should take this course if you’re interested in data analytics, data engineering, database design or business intelligence. Structured query language (SQL) is the fundamental cornerstone to extract, transact and load data necessary for analysis using a relational database. This is the second course in the introductory, undergraduate-level offering that makes up the larger Data Management with Python and SQL MicroBachelors program. We recommend taking them in order, unless you have a background in these areas already and feel comfortable skipping ahead. Scripting with Python - starting February 2021 Structured Database Environments with SQL - starting February 2021 NOTE : While this is generally a non-credit-bearing course, you may be able to use this class with proper completion for 3 credits (1 course) toward a bachelor's degree at Southern New Hampshire University.Created by: Southern New Hampshire University
Level: Introductory

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