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Embedded Machine Learning Internship Jobs in New York

From computer vision models that understand what is happening inside an oven to embedded AI systems that make real-time cooking decisions, you will help define how machine learning is applied within ...

Expert level coding skills (Python, C++ at minimum) * 3+ years' experience working with machine learning in embedded applications: model quantization, fixed point neural networks (CNN and RNN)

Internship Program

New York, NY ยท On-site

$18.25 - $23.75/hr

Machine Learning: PyTorch, TensorFlow, or JAX * Hardware: Arduino, PCB design, or embedded systems ... Availability for an internship in New York City. Preferred Qualifications: * Prior experience with ...

Internship Program

New York, NY

$18.25 - $23.75/hr

Machine Learning: PyTorch, TensorFlow, or JAX * Hardware: Arduino, PCB design, or embedded systems ... Availability for an internship in New York City. Preferred Qualifications: * Prior experience with ...

Internship Program

New York, NY

$18.25 - $23.75/hr

Machine Learning: PyTorch, TensorFlow, or JAX * Hardware: Arduino, PCB design, or embedded systems ... Availability for an internship in New York City. Preferred Qualifications: * Prior experience with ...

Lead Machine Learning Engineer

New York, NY ยท On-site +1

$112K - $147K/yr

Lead Machine Learning Engineer As a Capital One Machine Learning Engineer (MLE), you'll be part of ... Internship experience does not apply) * At least 4 years of experience programming with Python ...

Lead Machine Learning Engineer

New York, NY ยท On-site

$112K - $147K/yr

Lead Machine Learning Engineer As a Capital One Machine Learning Engineer (MLE), you'll be part of ... Internship experience does not apply) * At least 4 years of experience programming with Python ...

Lead Machine Learning Engineer

Manhattan, NY ยท On-site +1

$112K - $148K/yr

Lead Machine Learning Engineer As a Capital One Machine Learning Engineer (MLE), you'll be part of ... Internship experience does not apply) * At least 4 years of experience programming with Python ...

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Embedded Machine Learning Internship information

What is an Embedded Machine Learning Internship?

An Embedded Machine Learning Internship is a temporary position designed for students or recent graduates to gain hands-on experience in developing and deploying machine learning algorithms on embedded systems. These internships typically involve working with hardware such as microcontrollers, sensors, or edge devices, and using specialized tools to optimize machine learning models for low-power and resource-constrained environments. Interns collaborate with engineers and data scientists to create efficient, real-world AI solutions that run directly on devices rather than relying on cloud computing. This role helps bridge the gap between theoretical machine learning concepts and practical implementation on embedded platforms.

What are some typical projects or tasks I might work on during an Embedded Machine Learning Internship?

During an Embedded Machine Learning Internship, you can expect to work on projects such as optimizing machine learning models to run efficiently on hardware with limited resources, integrating AI algorithms into embedded systems (like microcontrollers or IoT devices), and performing real-time data processing. You'll likely collaborate closely with software engineers and hardware designers to test models on physical devices, debug performance issues, and contribute to documentation. These experiences provide practical exposure to the challenges of deploying AI in real-world, resource-constrained environments and help build skills valuable for a future career in embedded AI.

What are the key skills and qualifications needed to thrive as an Embedded Machine Learning Intern, and why are they important?

To thrive as an Embedded Machine Learning Intern, you need a background in computer science, electrical engineering, or a related field with strong programming skills in C/C++ and Python, as well as foundational knowledge of machine learning algorithms. Experience with embedded systems development tools (such as ARM Cortex, Raspberry Pi, or Arduino), version control systems, and familiarity with ML frameworks like TensorFlow Lite or Edge Impulse is often required. Analytical thinking, problem-solving ability, and effective teamwork are vital soft skills for success in this role. These skills and qualities are crucial for efficiently developing, optimizing, and deploying machine learning solutions on resource-constrained embedded platforms.
What are the most commonly searched types of Embedded Machine Learning jobs in New York? The most popular types of Embedded Machine Learning jobs in New York are:
What job categories do people searching Embedded Machine Learning Internship jobs in New York look for? The top searched job categories for Embedded Machine Learning Internship jobs in New York are:
What cities in New York are hiring for Embedded Machine Learning Internship jobs? Cities in New York with the most Embedded Machine Learning Internship job openings:
Machine Learning Engineer

Machine Learning Engineer

Chefman

Mahwah, NJ โ€ข On-site

Other

Re-posted 3 days ago


Job description

About CHEF iQ

In 2020, we launched CHEF iQ, an ecosystem of connected kitchen appliances designed to transform how people cook and connect through food. Our mission is to make great cooking effortless through intelligent technology, guided experiences, and seamless integration between hardware, software, and AI.

As a Machine Learning Engineer, you will play a critical role in shaping the future of cooking. Working on a small, high-impact team, you will have significant ownership over the strategy, research, development, and deployment of AI capabilities that power next-generation kitchen products. From computer vision models that understand what is happening inside an oven to embedded AI systems that make real-time cooking decisions, you will help define how machine learning is applied within consumer appliances.

This is an opportunity to work at the intersection of machine learning, embedded systems, computer vision, and smart consumer technology, bringing cutting-edge AI from research into products used by millions of home cooks.

Role and Responsibilities

Design, train, and deploy machine learning and computer vision models that power autonomous cooking experiences within CHEF iQ products.
Develop image classification, object detection, and state-recognition models that identify food types, cooking progress, doneness levels, and other key inputs used to guide cooking decisions.
Build and manage datasets, including data collection, labeling, preparation, augmentation, and validation.
Own the full machine learning lifecycle, from data preparation and model training through deployment, monitoring, and continuous improvement.
Research, evaluate, and apply emerging machine learning techniques, including computer vision, generative AI, large language models (LLMs), vision-language models (VLMs), multimodal AI, and academic research, to improve product performance and customer experiences.
Deploy and optimize models for cloud and edge devices, balancing accuracy, latency, memory usage, power consumption, and overall system performance.
Collaborate with firmware, software, hardware, and product teams to integrate machine learning capabilities into consumer products.
Develop systems that combine vision, sensor, and contextual data to enable intelligent recommendations and autonomous next-step actions.
Design and develop AI-driven systems that combine perception, reasoning, and decision-making capabilities to enable intelligent and autonomous cooking experiences.
Establish testing methodologies and performance metrics to validate models across real-world usage scenarios.
Document model architectures, experiments, and deployment approaches.

Qualifications

Experience developing and deploying machine learning models in production environments.
Strong experience with computer vision, image classification, object detection, deep learning, or related machine learning applications.
Proficiency in Python and machine learning frameworks such as PyTorch, TensorFlow, or similar technologies.
Experience building and managing datasets used for machine learning model development.
Experience deploying or optimizing models for embedded systems, edge devices, or resource-constrained environments.
Experience working with public cloud platforms such as AWS, Google Cloud Platform, or Microsoft Azure, including their machine learning and AI services.
Experience with multimodal foundation models, vision-language models (VLMs), or other AI systems that combine vision, language, and contextual understanding.
Experience with MLOps practices including model lifecycle management, experiment tracking, model monitoring, and CI/CD pipelines for machine learning systems.
Understanding of model optimization techniques such as quantization, pruning, and inference acceleration.
Ability to independently evaluate new technologies, research, and model architectures.
Strong analytical, problem-solving, and debugging skills.
Excellent communication and cross-functional collaboration skills.

Preferred Qualifications

Experience with embedded Linux, ARM-based platforms, or edge AI hardware.
Experience with TensorFlow Lite, ONNX Runtime, OpenVINO, TensorRT, or similar deployment frameworks.
Experience with connected consumer products, IoT devices, robotics, or embedded vision systems.
Experience with large language models (LLMs), small language models (SLMs), vision-language models (VLMs), generative AI, recommendation systems, agentic AI systems, or AI-powered user experiences.
Experience with retrieval-augmented generation (RAG), vector databases, embeddings, semantic search, or knowledge retrieval systems.
Experience designing AI agents capable of monitoring, planning, reasoning, and decision-making using vision, sensor, and contextual data.
Experience with AWS machine learning and AI services preferred.

This position requires U.S. work authorization. We are not able to provide visa sponsorship at this time.