Courses

Embark on a journey of transformation – from novice to skilled AI engineer!

Share this post:

In an era where AI is reshaping industries, the IBM AI Engineering Professional Certificate is tailored to equip you with the cutting-edge skills demanded by today’s data-driven world. As companies scramble to harness the power of AI, the demand for adept AI engineers is skyrocketing. Our carefully crafted curriculum ensures you become proficient in the latest techniques, from machine learning algorithms to deep learning neural networks. These skills will empower you to provide actionable insights to businesses, driving their success in this data-centric landscape.

Over the course of the program, you’ll delve into the core concepts of machine learning and deep learning, embracing supervised and unsupervised learning through the lens of programming languages like Python. Guided by hands-on experience, you’ll command renowned libraries such as SciPy, ScikitLearn, Keras, PyTorch, and TensorFlow, and apply them to tangible industry conundrums. Whether it’s deciphering complex object recognition puzzles, unraveling the mysteries of computer vision, text analytics, natural language processing, or shaping robust recommender systems, you’ll tackle them with confidence.

One of the cornerstones of our program is the mastery of data science skills in scaling machine learning algorithms on expansive datasets, accomplished using the versatile Apache Spark. Your journey will encompass constructing, training, and deploying diverse deep architectures, spanning convolutional neural networks, recurrent networks, and autoencoders.

The program culminates in an applied learning project, an immersive experience through which you’ll build a portfolio of projects showcasing your expertise. These hands-on activities will provide you with a concrete understanding of machine learning libraries and deep learning frameworks. Your proficiency in SciPy, ScikitLearn, Keras, PyTorch, and TensorFlow will shine through as you tackle real-world challenges and present your solutions in the in-depth Capstone Project, a testament to your skill and ability to communicate complex outcomes.

This intermediate-level program welcomes all with Python programming experience. With just 10 hours a week, you’ll be equipped to become an AI Engineer in as little as 2 to 3 months. The flexible schedule empowers you to learn at your own pace, all while earning credit that can be applied to a degree.

Seize this opportunity and enroll in the IBM AI Engineering Professional Certificate today!

More Courses stories
By Rav Ahuja on 22 September 2023

Elevate Your Career: Become a Cybersecurity Analyst!

The cybersecurity industry is booming, offering high-paying roles that don’t always require a traditional degree. A Cybersecurity Analyst is a trained professional responsible for protecting an organization’s computer systems, networks, and data from security threats and breaches. Their primary role is to monitor, analyze, and respond to security incidents, as well as to implement measures […]

Continue reading

By Tonya Teyssier on 22 September 2023

New course: Developing Cloud Native Applications with IBM Liberty

IBM Automation is pleased to announce a new instructor-led course designed for application developers, Developing Cloud Native Applications with IBM Liberty (WA610). This 2-day course teaches you how to develop a microservice application by using IBM Liberty. You learn how to use Liberty, Jakarta EE, and MicroProfile to build a RESTful microservice application and deploy […]

Continue reading

By Tonya Teyssier on 22 September 2023

New course: Transforming Applications with IBM WebSphere Hybrid Edition

IBM Automation is pleased to announce a new self-paced course designed for application developers, Transforming Applications with IBM WebSphere Hybrid Edition (ZA616). This course teaches students how to transform traditional (monolithic) WebSphere applications to run in a containerized environment–Red Hat OpenShift–by using WebSphere Hybrid Edition. It covers two key reference implementations: Operational Modernization and Runtime […]

Continue reading