Skip to content
Hoodie for your thoughts: take the Developer Skills Survey for a chance to win free merch Start survey
69% of tech leaders are preparing their teams for GenAI. Uncover more insights in the AI Skills Report. Read now
Adapt your hiring strategy for an AI-powered future. Uncover more insights in our latest whitepaper. Read now
Artificial Intelligence

What Does a Deep Learning Engineer Do? Role Overview & Skill Expectations

Written By April Bohnert | May 8, 2023

Abstract, futuristic image of a computer generated by AI

In the vast and rapidly-evolving world of artificial intelligence, there is a group of professionals who possess a unique blend of technical prowess and creative ingenuity. These individuals are known as deep learning engineers, and they are at the forefront of designing and implementing cutting-edge machine learning algorithms that power everything from autonomous robots to voice recognition software.

Deep learning engineers must possess a keen eye for detail and an unwavering dedication to uncovering novel solutions to complex problems. Their work requires not only a mastery of the mathematical underpinnings of deep learning but also a creative approach to designing models that can learn from vast quantities of data.

At its core, the work of a deep learning engineer is about pushing the boundaries of what is possible with artificial intelligence, and helping to shape a world that is smarter, more efficient and more interconnected than ever before. But what exactly does a deep learning engineer do, and what skills do they need to thrive on the job? Let’s find out. 

What is Deep Learning?

Before diving into the role of a deep learning engineer, let’s first define what deep learning is. Simply put, deep learning is a subset of machine learning that uses neural networks to simulate human decision-making. These neural networks are comprised of layers of interconnected nodes that work together to analyze data, identify patterns, and make predictions.

Deep learning is a critical tool, driving advances in fields such as image and speech recognition, natural language processing, and even self-driving vehicles. It’s a powerful approach that allows machines to learn and improve from experience, making it an ideal solution for complex, data-intensive problems.

What Are a Deep Learning Engineer’s Responsibilities?

The primary responsibility of a deep learning engineer is to design and implement deep learning models that are effective and efficient. They work to create algorithms that can process large amounts of data and learn from it to make predictions or identify patterns. Some of the specific tasks a deep learning engineer might undertake include:

  • Data Preparation: One of the most important tasks of a deep learning engineer is preparing the data that the model will learn from. This involves gathering, cleaning, and organizing large amounts of data in a way that is useful for the algorithm. 
  • Algorithm Design: Deep learning engineers must design algorithms that can learn from the data provided. They must choose the right neural network architecture and select appropriate activation functions, loss functions, and optimization algorithms.
  • Training and Evaluation: Once the algorithm is designed, the deep learning engineer must train the model using the prepared data. They will evaluate the model’s performance and make adjustments to the algorithm as needed.
  • Deployment: Finally, the deep learning engineer must deploy the model in a production environment, ensuring that it can handle real-world data and that it is integrated into the larger system.

What Kinds of Companies Hire Deep Learning Engineers?

In 2017, the deep learning market was worth $2.28 billion, but by the end of 2023, that number is expected to grow to $18.16 billion. This growth has been driven largely by the increasing adoption of cloud-based services and large-scale generation of unstructured data, creating a surge in demand for deep learning solutions — and the talented engineers who know how to develop them. While companies across a range of industries are now exploring the opportunities deep learning can unlock, these are some of the most notable industries hiring for these roles.

  • Technology Companies: Technology companies of all shapes and sizes are investing heavily in deep learning. They hire deep learning engineers to develop algorithms for image and speech recognition, natural language processing, and other applications.
  • Finance and Healthcare Companies: Companies in the finance and healthcare industries are also investing in deep learning. They hire deep learning engineers to develop predictive models for fraud detection, credit risk analysis, and disease diagnosis.
  • Transportation Companies: Transportation companies are investing in deep learning to develop autonomous vehicles. They hire deep learning engineers to develop algorithms for object detection, path planning, and decision-making.

Skills Needed to Excel in Deep Learning

To be successful as a deep learning engineer, one must have a combination of technical and soft skills. Some of the essential skills required to excel in this field are:

  • Mathematics: Deep learning algorithms rely heavily on advanced mathematics, including linear algebra, calculus and probability theory. A deep learning engineer must have a strong understanding of these concepts.
  • Programming: Deep learning engineers must be proficient in programming languages such as Python, Java, and C++. They must also be familiar with deep learning frameworks such as TensorFlow, PyTorch, and Keras.
  • Data Handling: A deep learning engineer must be proficient in handling large datasets. They should know how to preprocess data, perform data augmentation, and use data visualization techniques. Deep learning engineers should be familiar with tools like Power BI, Tableauand Alteryx.
  • Neural Networks: Deep learning engineers must have a strong understanding of neural networks and their architectures. They must know how to choose the right network for a particular task, select appropriate activation functions and understand backpropagation.
  • Problem Solving: Deep learning engineers must be adept at solving complex problems. They must be able to break down problems into smaller components and develop solutions to each component.

As you can see, the role of a deep learning engineer is complex and multifaceted, requiring a unique blend of technical and creative skills. These techies play a crucial role in developing cutting-edge machine learning algorithms that power many of the advanced technologies we see today, and with the growing demand for deep learning solutions across a range of industries, the need for talented deep learning engineers is only set to increase. Whether you’re looking to hire great tech talent or land your next role, it’s important to have a solid understanding of the expertise and experience required for the job.

Explore HackerRank’s roles directory to uncover key skills for a variety of technical roles and gain access to a library of resources designed to keep you up to date on the ever-changing tech hiring landscape.

This article was written with the help of AI. Can you tell which parts?