IBM
IBM Data Engineering Professional Certificate
IBM

IBM Data Engineering Professional Certificate

Prepare for a career as a Data Engineer. Build job-ready skills – and must-have AI skills – for an in-demand career. Earn a credential from IBM. No prior experience required.

IBM Skills Network Team
Muhammad Yahya
Abhishek Gagneja

Instructors: IBM Skills Network Team +17 more

125,065 already enrolled

Included with Coursera Plus

Earn a career credential that demonstrates your expertise
4.7

(5,934 reviews)

Beginner level

Recommended experience

Flexible schedule
6 months at 10 hours a week
Learn at your own pace
Build toward a degree
Earn a career credential that demonstrates your expertise
4.7

(5,934 reviews)

Beginner level

Recommended experience

Flexible schedule
6 months at 10 hours a week
Learn at your own pace
Build toward a degree

What you'll learn

  • Master the most up-to-date practical skills and knowledge data engineers use in their daily roles

  • Learn to create, design, & manage relational databases & apply database administration (DBA) concepts to RDBMSs such as MySQL, PostgreSQL, & IBM Db2 

  • Develop working knowledge of NoSQL & Big Data using MongoDB, Cassandra, Cloudant, Hadoop, Apache Spark, Spark SQL, Spark ML, and Spark Streaming 

  • Implement ETL & Data Pipelines with Bash, Airflow & Kafka; architect, populate, deploy Data Warehouses; create BI reports & interactive dashboards

Skills you'll gain

  • Category: MySQL
  • Category: Extract, Transform, Load
  • Category: Apache Hadoop
  • Category: Web Scraping
  • Category: Data Warehousing
  • Category: Linux Commands
  • Category: IBM Cognos Analytics
  • Category: Database Design
  • Category: Professional Networking
  • Category: Jupyter
  • Category: Apache Kafka
  • Category: Data Pipelines

Details to know

Shareable certificate

Add to your LinkedIn profile

Taught in English

Advance your career with in-demand skills

  • Receive professional-level training from IBM
  • Demonstrate your technical proficiency
  • Earn an employer-recognized certificate from IBM
$132,000+
median U.S. salary for Data Engineering
¹
59,000+
U.S. job openings in Data Engineering
¹

Professional Certificate - 16 course series

What you'll learn

  • List basic skills required for an entry-level data engineering role.

  • Discuss various stages and concepts in the data engineering lifecycle.

  • Describe data engineering technologies such as Relational Databases, NoSQL Data Stores, and Big Data Engines.

  • Summarize concepts in data security, governance, and compliance.

Skills you'll gain

Category: Data Pipelines
Category: Extract, Transform, Load
Category: Data Warehousing
Category: Data Security
Category: Data Architecture
Category: Data Governance
Category: Relational Databases
Category: Data Store
Category: Apache Spark
Category: NoSQL
Category: SQL
Category: Big Data
Category: Data Lakes
Category: Apache Hadoop
Category: Databases

What you'll learn

  • Develop a foundational understanding of Python programming by learning basic syntax, data types, expressions, variables, and string operations.

  • Apply Python programming logic using data structures, conditions and branching, loops, functions, exception handling, objects, and classes.

  • Demonstrate proficiency in using Python libraries such as Pandas and Numpy and developing code using Jupyter Notebooks.

  • Access and extract web-based data by working with REST APIs using requests and performing web scraping with BeautifulSoup.

Skills you'll gain

Category: Object Oriented Programming (OOP)
Category: Python Programming
Category: Data Structures
Category: Pandas (Python Package)
Category: Web Scraping
Category: NumPy
Category: File Management
Category: Data Manipulation
Category: Data Import/Export
Category: Application Programming Interface (API)
Category: Jupyter
Category: Restful API
Category: Data Analysis
Category: Computer Programming
Category: Programming Principles

What you'll learn

  • Demonstrate your skills in Python for working with and manipulating data

  • Implement webscraping and use APIs to extract data with Python

  • Play the role of a Data Engineer working on a real project to extract, transform, and load data

  • Use Jupyter notebooks and IDEs to complete your project

Skills you'll gain

Category: Data Manipulation
Category: Web Scraping
Category: Extract, Transform, Load
Category: Python Programming
Category: Application Programming Interface (API)
Category: Data Processing
Category: SQL
Category: Style Guides
Category: Restful API
Category: Databases
Category: Unit Testing
Category: Integrated Development Environments
Category: Data Transformation
Category: Code Review

What you'll learn

  • Describe data, databases, relational databases, and cloud databases.

  • Describe information and data models, relational databases, and relational model concepts (including schemas and tables). 

  • Explain an Entity Relationship Diagram and design a relational database for a specific use case.

  • Develop a working knowledge of popular DBMSes including MySQL, PostgreSQL, and IBM DB2

Skills you'll gain

Category: Relational Databases
Category: Database Design
Category: SQL
Category: MySQL
Category: PostgreSQL
Category: Database Architecture and Administration
Category: Data Manipulation
Category: Databases
Category: Database Management Systems
Category: Command-Line Interface
Category: Data Integrity
Category: Data Modeling
Category: IBM DB2
Category: Data Management

What you'll learn

  • Analyze data within a database using SQL and Python.

  • Create a relational database and work with multiple tables using DDL commands.

  • Construct basic to intermediate level SQL queries using DML commands.

  • Compose more powerful queries with advanced SQL techniques like views, transactions, stored procedures, and joins.

Skills you'll gain

Category: SQL
Category: Pandas (Python Package)
Category: Jupyter
Category: Relational Databases
Category: Databases
Category: Data Analysis
Category: Data Manipulation
Category: Database Management
Category: Query Languages
Category: Database Design
Category: Stored Procedure
Category: Transaction Processing

What you'll learn

  • Describe the Linux architecture and common Linux distributions and update and install software on a Linux system.

  • Perform common informational, file, content, navigational, compression, and networking commands in Bash shell.

  • Develop shell scripts using Linux commands, environment variables, pipes, and filters.

  • Schedule cron jobs in Linux with crontab and explain the cron syntax. 

Skills you'll gain

Category: Linux Commands
Category: Shell Script
Category: File Management
Category: Linux
Category: Automation
Category: Unix
Category: Network Protocols
Category: Linux Servers
Category: OS Process Management
Category: Operating Systems
Category: Command-Line Interface
Category: Bash (Scripting Language)
Category: Software Installation
Category: Unix Shell
Category: Unix Commands
Category: Scripting Languages

What you'll learn

  • Create, query, and configure databases and access and build system objects such as tables.

  • Perform basic database management including backing up and restoring databases as well as managing user roles and permissions. 

  • Monitor and optimize important aspects of database performance. 

  • Troubleshoot database issues such as connectivity, login, and configuration and automate functions such as reports, notifications, and alerts. 

Skills you'll gain

Category: Database Management
Category: Database Architecture and Administration
Category: Disaster Recovery
Category: Database Design
Category: MySQL
Category: Database Systems
Category: Relational Databases
Category: Encryption
Category: System Monitoring
Category: Operational Databases
Category: Performance Tuning
Category: User Accounts
Category: Role-Based Access Control (RBAC)
Category: PostgreSQL
Category: Data Storage Technologies
Category: IBM DB2

What you'll learn

  • Describe and contrast Extract, Transform, Load (ETL) processes and Extract, Load, Transform (ELT) processes.

  • Explain batch vs concurrent modes of execution.

  • Implement ETL workflow through bash and Python functions.

  • Describe data pipeline components, processes, tools, and technologies.

Skills you'll gain

Category: Extract, Transform, Load
Category: Data Pipelines
Category: Apache Airflow
Category: Apache Kafka
Category: Shell Script
Category: Data Transformation
Category: Web Scraping
Category: Data Cleansing
Category: Performance Tuning
Category: Data Processing
Category: Data Warehousing
Category: Data Migration
Category: Big Data
Category: Real Time Data
Category: Scalability
Category: Data Integration
Data Warehouse Fundamentals

Data Warehouse Fundamentals

Course 915 hours

What you'll learn

  • Job-ready data warehousing skills in just 6 weeks, supported by practical experience and an IBM credential.

  • Design and populate a data warehouse, and model and query data using CUBE, ROLLUP, and materialized views.

  • Identify popular data analytics and business intelligence tools and vendors and create data visualizations using IBM Cognos Analytics.

  • How to design and load data into a data warehouse, write aggregation queries, create materialized query tables, and create an analytics dashboard.

Skills you'll gain

Category: Data Warehousing
Category: Data Mart
Category: Data Lakes
Category: Star Schema
Category: Snowflake Schema
Category: IBM DB2
Category: Data Cleansing
Category: PostgreSQL
Category: Data Modeling
Category: Extract, Transform, Load
Category: Database Design
Category: Data Architecture
Category: SQL
Category: Database Systems
Category: Data Integration
Category: Data Validation
Category: Data Quality
Category: Query Languages

What you'll learn

  • Explore the purpose of analytics and Business Intelligence (BI) tools

  • Discover the capabilities of IBM Cognos Analytics and Google Looker Studio

  • Showcase your proficiency in analyzing DB2 data with IBM Cognos Analytics

  • Create and share interactive dashboards using IBM Cognos Analytics and Google Looker Studio

Skills you'll gain

Category: IBM Cognos Analytics
Category: Looker (Software)
Category: Interactive Data Visualization
Category: Dashboard
Category: Data Visualization Software
Category: Business Intelligence
Category: Analytics
Category: Data Presentation
Category: Business Intelligence Software

What you'll learn

  • Differentiate among the four main categories of NoSQL repositories.

  • Describe the characteristics, features, benefits, limitations, and applications of the more popular Big Data processing tools.

  • Perform common tasks using MongoDB tasks including create, read, update, and delete (CRUD) operations.

  • Execute keyspace, table, and CRUD operations in Cassandra.

Skills you'll gain

Category: NoSQL
Category: Apache Cassandra
Category: MongoDB
Category: Data Modeling
Category: Distributed Computing
Category: Query Languages
Category: Scalability
Category: Database Management
Category: Database Architecture and Administration
Category: Databases
Category: IBM Cloud
Category: JSON
Category: Data Manipulation

What you'll learn

  • Explain the impact of big data, including use cases, tools, and processing methods.

  • Describe Apache Hadoop architecture, ecosystem, practices, and user-related applications, including Hive, HDFS, HBase, Spark, and MapReduce.

  • Apply Spark programming basics, including parallel programming basics for DataFrames, data sets, and Spark SQL.

  • Use Spark’s RDDs and data sets, optimize Spark SQL using Catalyst and Tungsten, and use Spark’s development and runtime environment options.

Skills you'll gain

Category: Apache Spark
Category: Big Data
Category: Distributed Computing
Category: Apache Hadoop
Category: Apache Hive
Category: Debugging
Category: IBM Cloud
Category: Scalability
Category: Data Processing
Category: Docker (Software)
Category: Data Transformation
Category: PySpark
Category: Kubernetes
Category: Performance Tuning

What you'll learn

  • Describe ML, explain its role in data engineering, summarize generative AI, discuss Spark's uses, and analyze ML pipelines and model persistence.

  • Evaluate ML models, distinguish between regression, classification, and clustering models, and compare data engineering pipelines with ML pipelines.

  • Construct the data analysis processes using Spark SQL, and perform regression, classification, and clustering using SparkML.

  • Demonstrate connecting to Spark clusters, build ML pipelines, perform feature extraction and transformation, and model persistence.

Skills you'll gain

Category: Apache Spark
Category: Machine Learning
Category: Extract, Transform, Load
Category: Regression Analysis
Category: Data Transformation
Category: Supervised Learning
Category: PySpark
Category: Predictive Modeling
Category: Unsupervised Learning
Category: Data Pipelines
Category: Generative AI
Category: Classification And Regression Tree (CART)
Category: Applied Machine Learning
Category: Apache Hadoop
Category: Data Processing

What you'll learn

  • Demonstrate proficiency in skills required for an entry-level data engineering role.

  • Design and implement various concepts and components in the data engineering lifecycle such as data repositories.

  • Showcase working knowledge with relational databases, NoSQL data stores, big data engines, data warehouses, and data pipelines.

  • Apply skills in Linux shell scripting, SQL, and Python programming languages to Data Engineering problems.

Skills you'll gain

Category: Data Warehousing
Category: Extract, Transform, Load
Category: Dashboard
Category: Big Data
Category: Apache Spark
Category: MySQL
Category: Data Pipelines
Category: Data Analysis
Category: MongoDB
Category: PostgreSQL
Category: Predictive Modeling
Category: Applied Machine Learning
Category: IBM Cognos Analytics
Category: Databases
Category: Data Infrastructure
Category: IBM DB2
Category: Data Architecture

What you'll learn

  • Leverage various generative AI tools and techniques in data engineering processes across industries

  • Implement various data engineering processes such as data generation, augmentation, and anonymization using generative AI tools

  • Practice generative AI skills in hands-on labs and projects for data warehouse schema design and infrastructure setup

  • Evaluate real-world case studies showcasing the successful application of Generative AI for ETL and data repositories

Skills you'll gain

Category: Generative AI
Category: Data Synthesis
Category: Extract, Transform, Load
Category: Data Analysis
Category: Data Mining
Category: Database Design
Category: Data Ethics
Category: Query Languages
Category: Data Warehousing
Category: Data Infrastructure
Category: Data Quality
Category: Data Pipelines
Category: Snowflake Schema
Category: Star Schema
Category: Artificial Intelligence
Category: Data Architecture

What you'll learn

  • Describe the role of a data engineer and some career path options as well as the prospective opportunities in the field.

  • Explain how to build a foundation for a job search, including researching job listings, writing a resume, and making a portfolio of work.

  • Summarize what a candidate can expect during a typical job interview cycle, different types of interviews, and how to prepare for interviews.

  • Explain how to give an effective interview, including techniques for answering questions and how to make a professional personal presentation.

Skills you'll gain

Category: Interviewing Skills
Category: Data Pipelines
Category: Professional Networking
Category: Data Strategy
Category: LinkedIn
Category: Communication Strategies
Category: Data Ethics
Category: Verbal Communication Skills
Category: Professional Development
Category: Data Infrastructure
Category: Technical Communication

Earn a career certificate

Add this credential to your LinkedIn profile, resume, or CV. Share it on social media and in your performance review.

Build toward a degree

When you complete this Professional Certificate, you may be able to have your learning recognized for credit if you are admitted and enroll in one of the following online degree programs.¹

 
ACE Logo

This Professional Certificate has ACE® recommendation. It is eligible for college credit at participating U.S. colleges and universities. Note: The decision to accept specific credit recommendations is up to each institution. 

Instructors

IBM Skills Network Team
IBM Skills Network Team
IBM
84 Courses1,342,601 learners
Muhammad Yahya
Muhammad Yahya
IBM
5 Courses83,300 learners
Abhishek Gagneja
Abhishek Gagneja
IBM
6 Courses206,882 learners

Offered by

IBM

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¹Lightcast™ Job Postings Report, United States, 7/1/22-6/30/23. ²Based on program graduate survey responses, United States 2021.