Data Engineering Specialization | Online Masters in Data Analytics | WGU (2024)

Master of Science in Data Analytics

Discover How a Focus on Data Engineering Can Boost Your Career

A specialization in data engineering can can be the next step to advance in your career. Data engineering involves building systems to collect and use data. Processing, computing, and data warehousing are key parts of data engineering systems. Development, implementation, and maintenance of data stores to ensure raw data can be synthesized is a key part of data engineering.

WGU’s Master of Science in Data Analytics features a specialization in data engineering, designed to help students gain experience and knowledge in this area. Cloud databases, data processing, and analytics at scale are important focus areas within this specialization that prepare students for their career goals. Designed with industry needs in mind, this program is built to ensure students are ready to meet the needs of the future.

Our three-lever approach to data analytics ensures that you will gain the specific skills that you need to be successful in data science.A high focus on programming, a mid-level focus on math, and business influence skills will lend itself to increasing your data engineering skills, helping you boost your résumé and be ready for your future.

  • Compare this toData Science:Ahigh focusonprogramming, math, and businessskills
  • Compare this toDecision Process Engineering:Amid-level focusonboth programming and mathskills, and ahigh focusonbusiness influence

Courses in the Data Engineering Specialization

The M.S. Data Analytics degree program is an all-online program that you will complete through independent study with the support of WGU faculty. You will be expected to complete at least 8 competency units (WGU's equivalent of the credit hour)each 6-month term. (Each course is typically 3 or 4 units).There’s no limit on the number of units you can complete each term, so the more courses you complete, the quicker you can finish your program.

11 Courses

Program consists of11 courses

At WGU, we design our curriculum to be timely, relevant, and practical—all to help you show that you know your stuff. In this program you will have unique course options depending on your specialization choice.

Program Guide

Data Analytics

Analytics is the creative use of data and statistical modeling to tell a compelling story that not only drives strategic action but also results in business value. The Data Analytics Journey uses the analytics life cycle to conceptualize the processes, tools, and techniques for implementing data analysis, data engineering, and analytics product management. Learners gain fluency in gathering requirements, asking business questions, establishing evaluation metrics, identifying communication models, and aligning the analytics project outcomes to business goals. It presents an overview of the various tracks offered in the program and the career options in these specializations.

Data Management builds proficiency in using both relational and non-relational databases. Topics include selection of a data storage architecture, data types, data structures, normalization and denormalization, and querying databases. Structured Query Language (SQL) topics including Data Definition Language (DDL) and Data Manipulation Language (DML) are covered, including joins, aggregations, and transactions. Non-relational approaches to organizing and querying data are contrasted with relational approaches to build competency in adapting data storage architectures to business needs.

Analytics Programming builds algorithmic thinking using both the Python and R programming languages. This course builds from the foundations of programming. Learners use libraries and packages to perform common analytics tasks, including acquiring, organizing, and manipulating datasets. The course also presents methods for applying statistical functions and graphical user interfaces to perform basic analysis and to present findings.

Data Preparation and Exploration applies analytical programming skills to the early steps of the data analytics life cycle. This course covers cleaning data to ensure the structure, accuracy, and quality of the data; interpretation of descriptive and inferential statistics as well as visualizations of data; and wrangling data to prepare it for further analysis. The course introduces hypothesis testing, focusing on application for parametric tests, and addresses communication skills and tools to explain an analyst’s findings to others within an organization. The following courses are prerequisites: The Data Analytics Journey, Data Management, and Analytics Programming.

Statistical Data Mining focuses on concepts in data preparation and supervised and unsupervised machine learning techniques. The course helps students gain basic knowledge in statistics, data preparation, regression, and dimensional reduction. Learners implement supervised models—specifically classification and prediction data mining models—to unearth relationships among variables that are not apparent with more surface-level techniques. The course also explains when, how, and why to use unsupervised models to best meet organizational needs. The following course is prerequisite: Data Preparation and Exploration.

Data Storytelling for Diverse Audiences focuses on communicating observations and patterns to diverse stakeholders, a key aspect of the data analytics life cycle. This course helps learners gain communication and storytelling skills in order to motivate change and answer business problems. It also covers data visualizations, audio representations, interactive dashboards, interpersonal communication, and presentation skills.

Deployment is the practice of operationalizing data analysis within a business environment. Given an analysis, learners determine the business functional and non-functional requirements for wider use and implement pipelines and functions to deploy analyses at scale. Topics including security, scalability, usability, and availability are discussed. Prerequisites for this course are Analytical Programming, Data Management, Data Preparation, and Statistical Data Mining.

Data Engineering

Cloud Databases covers the application of cloud architectures to large-scale data systems. The differences between cloud-native approaches to data architectures and smaller scale systems are discussed and learners apply cloud computing concepts to address specific business scenarios.

The Data Engineering Capstone has learners utilize the skills learned throughout the MDSA core courses and the data engineering courses to examine a problem where data engineering is a solution and to build a cloud-native infrastructure that allows for data processing. Learners are asked to implement their solutions and tell a story using the data. Course material introduces the project and reminds learners of relevant learning resources from previous courses that will prove helpful in completing the performance assessment.

Data Analytics at Scale builds on previous data engineering courses and discusses approaches for analyzing large data sets. The course discusses map/reduce approaches, Apache Spark, and cloud–native solutions for developing, automating, and scaling data analytics. Also discussed are methods for integrating data processing pipelines and data stores to create comprehensive data analytics architectures.

Data Processing is the practice of automating data flow into and out of components of an analytics system and comprises a major part of the analytics life cycle in modern organizations. Data Processing covers concepts in Extract, Transform, and Load (ETL) pipeline operations on data at scale and variations of ETL (Extract, Transform, and Load) as a function of data repositories including data warehouses and data lakes. Streaming and batch data operations and their differences are discussed, and learners implement pipeline solutions in cloud-native environments.

Skills For Your Résumé

As part of this program, you will develop a range of valuable skills that employers are looking for.

  • Extract Transform Load (ETL): Transformed data to elevate quality in alignment with requirements for extract, transform, and load (ETL).
  • Data Engineering: Created comprehensive data architectures, including databases and large-scale processing systems, to optimize data management and accessibility.
  • Big Data: Identified and assessed organizational requirements, leading the successful implementation of big data strategies to address critical needs and drive data-driven decision-making processes.
  • Data Architecture:Designed databases to bolster business applications, prioritizing system scalability, security, performance, and reliability, thus fortifying data architecture.
  • Data Engineering:Engineered robust and scalable pipeline solutions for data.
  • Big Data:Ensured the structure, accuracy, and quality of big data.

IT CERTIFICATIONS

Data Analytics Certificates Included in this Degree

When you complete a Master of Science in Data Analytics from WGU you will also earn several WGU certificates along the way. There are also unique certificate options within each specialization you choose from. The Data Analytics Professional certificate, Data Operations certificate, and Data Engineering Professional specialization support you on the path to your degree, allowing you to enhance your résumé before you even complete your program. This certificate helps you demonstrate knowledge and experience in the data science field, preparing you for your future.

  • Data Operations Certificate
  • Data Analytics Professional Certificate
  • Data Engineering Professional Specialization

Career Opportunities

A data analytics degree with a specific focus on data engineering is an important credential to help you build your career. Courses in data engineering are designed to be industry-relevant, helping you apply your knowledge and experience in your work right away. Some of the job titles and industries you may be qualified for include:

Job Titles

  • Data Analytics Architect
  • Analytics Engineer
  • Data Quality Analyst
  • Data Engineer
  • Data Analyst

Industries

  • Finance
  • Energy
  • Healthcare
  • Technology
  • Retail/Commercial
  • Government
  • Manufacturing

$140,800

Average salary for specific senior Data Engineering related careers according to Lighcast API.

8%

Average job growth for data architects from 2022-2032 is expected to be 8% according to the BLS.

Ready to Start Your WGU Journey?

Data Engineering Specialization | Online Masters in Data Analytics | WGU (2024)

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