CrawlJobs Logo
Briefcase Icon
Category Icon

Machine Learning Engineering Intern United States Jobs

3 Job Offers

Filters
Intern, Machine Learning Engineering
Save Icon
Join ITHAKA's AI/ML team as a Machine Learning Engineering Intern in the United States. Apply your skills in Python, NLP, and LLMs to build and deploy real-world solutions. This role offers hands-on experience with TensorFlow/PyTorch while collaborating with cross-functional experts.
Location Icon
Location
United States
Salary Icon
Salary
25.00 USD / Hour
portico.org Logo
Portico
Expiration Date
Until further notice
Undergraduate Machine Learning / Artificial Intelligence Engineering Co-Op/ Intern
Save Icon
Join AMD's ML/AI team in San Jose/Santa Clara for a hands-on co-op/internship. Develop next-gen AI features using Python, PyTorch, and cloud platforms. Gain real-world experience on projects impacting millions of users worldwide.
Location Icon
Location
United States , San Jose; Santa Clara
Salary Icon
Salary
64064.00 - 96096.00 USD / Year
amd.com Logo
AMD
Expiration Date
Until further notice
Machine Learning Engineering Intern
Save Icon
Join Viant as a Machine Learning Engineering Intern in Irvine. Gain hands-on experience developing AI-powered solutions for our advertising platform. Work with real-world models, utilizing Python, ML frameworks, and cloud platforms. Receive mentorship while contributing to impactful projects in a...
Location Icon
Location
United States , Irvine
Salary Icon
Salary
40.00 - 50.00 USD / Hour
viantinc.com Logo
Viant
Expiration Date
Until further notice
Launch your career at the intersection of innovation and practical application by exploring Machine Learning Engineering Intern jobs. This pivotal internship role serves as a foundational bridge between academic theory and the fast-paced world of production AI systems. As a Machine Learning Engineering Intern, you will immerse yourself in the end-to-end lifecycle of intelligent systems, gaining hands-on experience that defines the modern tech landscape. This position is ideal for students and recent graduates eager to translate complex algorithms into scalable, real-world solutions. Typically, professionals in this intern capacity engage in a variety of core responsibilities central to the ML engineering workflow. A primary focus is on designing, developing, and deploying machine learning models. This involves taking prototypes from data scientists or research papers and robustly implementing them into software systems. Interns often contribute to data pipeline construction, ensuring large volumes of data are efficiently processed for training and inference. A significant part of the role includes model evaluation and optimization, where you would perform statistical analysis, stress testing, and fine-tuning to enhance accuracy, performance, and reliability. Furthermore, you might collaborate with cross-functional teams, including software engineers and product managers, to integrate AI capabilities into larger applications, ensuring seamless functionality and user value. To succeed in Machine Learning Engineering Intern jobs, a specific skill set is commonly required. Strong programming proficiency, particularly in Python, is essential, along with familiarity with deep learning frameworks like PyTorch or TensorFlow. A solid grasp of machine learning fundamentals—including supervised/unsupervised learning, neural networks, and evaluation metrics—is expected. Understanding software engineering principles such as version control (Git), code modularity, and basic system design is crucial for building maintainable systems. Problem-solving aptitude and the ability to work with multi-layered datasets are key, as is effective communication to document processes and collaborate within a team. Candidates are usually pursuing a degree in Computer Science, Data Science, Artificial Intelligence, or a related quantitative field, with a keen interest in staying current with the latest AI research and trends. Ultimately, Machine Learning Engineering Intern jobs offer an unparalleled opportunity to contribute to cutting-edge technology, from natural language processing and computer vision to recommendation systems and predictive analytics. It is a role that demands both analytical rigor and creative engineering, preparing you for a full-time career as an ML engineer by building, scaling, and operationalizing the intelligent systems of tomorrow.

Filters

×
Countries
Category
Location
Work Mode
Salary