Machine Learning Engineer Jobs

Discover the latest remote and onsite Machine Learning Engineer roles across top active AI companies. Updated hourly.

Check out 1962 new Machine Learning Engineer opportunities posted on AI Chopping Block

Machine Learning Engineer

New
Top rated
HappyRobot
Full-time
Full-time
Posted

Design, build, and maintain scalable machine learning systems including data ingestion, preprocessing, training, testing, and deployment. Develop and optimize end-to-end ML pipelines encompassing data collection, labeling, training, validation, and monitoring to ensure reliability and reproducibility. Implement robust MLOps practices such as model versioning, experiment tracking, CI/CD for machine learning, and continuous monitoring in production environments. Collaborate with product and engineering teams to integrate and deploy models into real-time products with a focus on efficiency and scalability. Ensure data quality, observability, and performance across all AI systems. Stay current with the latest AI infrastructure, tooling, and research to support ongoing innovation.

Undisclosed

()

Spain
Maybe global
Remote

AI/ML Engineer

New
Top rated
Air Apps
Full-time
Full-time
Posted

Develop, train, and optimize machine learning models for various mobile app features. Research and implement state-of-the-art AI techniques to improve user engagement and app performance. Collaborate with cross-functional teams to integrate AI-driven solutions into applications. Design and maintain scalable ML pipelines, ensuring efficient model deployment and monitoring. Analyze large datasets to derive insights and drive data-driven decision-making. Stay updated with the latest AI trends and best practices and incorporate them into development processes. Optimize AI models for mobile environments to ensure high performance and low latency.

€60,000 – €76,000
Undisclosed
YEAR

(EUR)

Barcelona, Spain
Maybe global
Remote

Machine Learning Enginer, Core Evaluations

New
Top rated
Cantina Labs
Full-time
Full-time
Posted

The responsibilities include designing model evaluation pipelines for models in both development and production environments, designing user studies for subjective model evaluations, converting requirements into measurable metrics, and designing and developing automated evaluation dashboards to monitor and compare model performance. It also involves training new models to capture various evaluation metrics, communicating with the model team to help design improved models based on evaluation results, coordinating with the data team to determine necessary data for enhancing model performance, collaborating with the product manager to ensure product requirements are accurately measured, helping to grow the evaluation team as the founding member, and leading the evaluation team in the future.

Undisclosed

()

San Francisco, United States
Maybe global
Remote

AI/ML Engineer

New
Top rated
Air Apps
Full-time
Full-time
Posted

Develop, train, and optimize machine learning models for various mobile app features. Research and implement state-of-the-art AI techniques to improve user engagement and app performance. Collaborate with cross-functional teams to integrate AI-driven solutions into applications. Design and maintain scalable ML pipelines, ensuring efficient model deployment and monitoring. Analyze large datasets to derive insights and drive data-driven decision-making. Stay updated with the latest AI trends and best practices, incorporating them into development processes. Optimize AI models for mobile environments to ensure high performance and low latency.

€60,000 – €76,000
Undisclosed
YEAR

(EUR)

Helsinki, Finland
Maybe global
Remote

AI/ML Engineer

New
Top rated
Air Apps
Full-time
Full-time
Posted

Develop, train, and optimize machine learning models for various mobile app features. Research and implement state-of-the-art AI techniques to improve user engagement and app performance. Collaborate with cross-functional teams to integrate AI-driven solutions into applications. Design and maintain scalable ML pipelines, ensuring efficient model deployment and monitoring. Analyze large datasets to derive insights and drive data-driven decision-making. Stay updated with the latest AI trends and best practices, incorporating them into development processes. Optimize AI models for mobile environments to ensure high performance and low latency.

€60,000 – €76,000
Undisclosed
YEAR

(EUR)

Munich, Germany
Maybe global
Remote

Member of Engineering (Reinforcement Learning Infrastructure)

New
Top rated
Poolside
Full-time
Full-time
Posted

Keep up with the latest research, and be familiar with the state of the art in LLMs, RL, and code generation. Develop methods for tuning training and inference end-to-end for high throughput. Design data control systems in an RL pipeline that govern what the model sees and when. Debug cases where infrastructure decisions are silently degrading learning dynamics. Build observability tooling that surfaces when a system-level issue is the root cause of a training regression. Help build robust, flexible and scalable RL pipelines. Optimize performance across the stack — networking, memory, compute scheduling, and I/O. Write high-quality, pragmatic code. Work in the team: plan future steps, discuss, and always stay in touch.

Undisclosed

()

United Kingdom
Maybe global
Remote

Member of Engineering (Reinforcement Learning)

New
Top rated
Poolside
Full-time
Full-time
Posted

Research and experiment on ways to improve reasoning and code generation for LLMs. Own the full experiment life cycle from idea to experimentation and integration. Keep up with the latest research, and be familiar with the state of the art in LLMs, RL, and code generation. Translate research ideas into clean, reusable codebases that other researchers can build on. Design, analyze, and iterate on data generation and training of LLMs. Implement and iterate on RL training pipelines that scale reliably across domains. Diagnose training instabilities and failures, debug RL runs and propose mitigation methods. Write high-quality, reproducible and maintainable code.

Undisclosed

()

United Kingdom
Maybe global
Remote

Research Infrastructure Engineer, Training Systems

New
Top rated
OpenAI
Full-time
Full-time
Posted

Build and maintain infrastructure for large-scale model training and experimentation. Design APIs and interfaces to simplify complex training workflows and prevent misuse. Improve reliability, debuggability, and performance of training and data pipelines. Debug issues across technologies including Python, PyTorch, distributed systems, GPUs, networking, and storage. Write tests, benchmarks, and diagnostics to detect significant regressions.

$295,000 – $380,000
Undisclosed
YEAR

(USD)

San Francisco, United States
Maybe global
Remote

AI/ML Engineer

New
Top rated
Air Apps
Full-time
Full-time
Posted

Develop, train, and optimize machine learning models for various mobile app features. Research and implement state-of-the-art AI techniques to improve user engagement and app performance. Collaborate with cross-functional teams to integrate AI-driven solutions into applications. Design and maintain scalable ML pipelines, ensuring efficient model deployment and monitoring. Analyze large datasets to derive insights and drive data-driven decision-making. Stay updated with the latest AI trends and best practices, incorporating them into development processes. Optimize AI models for mobile environments to ensure high performance and low latency.

€60,000 – €76,000
Undisclosed
YEAR

(EUR)

Amsterdam, Netherlands
Maybe global
Remote

Engineering Manager, AI & Data Infrastructure

New
Top rated
Decagon
Full-time
Full-time
Posted

The Engineering Manager, AI & Data Infrastructure leads the AI & Data Infrastructure team responsible for the data and inference systems that support agent interactions, including streaming and batch pipelines for analytics and customer telemetry, realtime databases for low-latency behavior, and GPU and model-serving platforms for LLM inference. This role involves building, leading, and developing a high-performing team of data and ML infrastructure engineers through hiring, coaching, and performance management. Responsibilities include owning the technical strategy and roadmap for AI & Data Infrastructure, staying hands-on with design and code reviews, leading architecture for high-throughput data systems and low-latency inference, setting reliability, quality, and cost standards, investing in developer and analyst experience, raising standards on AI-assisted engineering practices, and partnering with Research, Product Engineering, Platform, and customer-facing teams to deliver data and inference capabilities, including enterprise deployments.

$280,000 – $430,000
Undisclosed
YEAR

(USD)

San Francisco, United States
Maybe global
Onsite

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Frequently Asked Questions

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[{"question":"What does a Machine Learning Engineer do?","answer":"Machine Learning Engineers design, build, and deploy AI systems that solve real-world problems. They transform research prototypes into production-ready solutions by creating scalable ML pipelines, optimizing model performance, and handling data preprocessing workflows. They integrate models with applications via APIs, implement monitoring systems, and ensure models perform reliably in production environments. Daily tasks include collaborating with data scientists, fine-tuning algorithms, building deployment infrastructure, and maintaining data privacy. They work across diverse applications like recommendation engines, fraud detection systems, and computer vision tools while ensuring models remain accurate and efficient."},{"question":"What skills are required for Machine Learning Engineer jobs?","answer":"Strong programming skills in Python are fundamental, alongside proficiency with ML frameworks like TensorFlow and PyTorch. Machine Learning Engineers need solid mathematics and statistics knowledge, particularly in linear algebra, calculus, and probability theory. Experience with cloud platforms (AWS, GCP, Azure) is essential for deploying models at scale. Skills in data preprocessing, feature engineering, and model evaluation are critical for building effective systems. Engineers should understand MLOps practices, RESTful APIs, containerization tools like Docker, and version control systems. Practical experience with deep learning architectures and natural language processing is valuable for specialized roles."},{"question":"What qualifications are needed for Machine Learning Engineer jobs?","answer":"Most Machine Learning Engineer positions require a bachelor's degree in computer science, mathematics, or related field, with many employers preferring advanced degrees for senior roles. Beyond formal education, employers value demonstrated experience building and deploying machine learning models. A strong portfolio showcasing completed projects is often more important than academic credentials alone. Relevant certifications from cloud providers or in specific ML frameworks can strengthen applications. Employers look for candidates with verifiable experience in model deployment, optimization, and maintenance. Knowledge of software engineering best practices like testing, version control, and documentation is increasingly essential in this hybrid role."},{"question":"What is the salary range for Machine Learning Engineer jobs?","answer":"Machine Learning Engineer salaries vary based on several key factors. Geographic location significantly impacts compensation, with tech hubs like San Francisco, Seattle, and New York typically offering higher wages. Experience level creates substantial differences, with senior engineers earning considerably more than entry-level positions. Specialized expertise in areas like computer vision, reinforcement learning, or NLP can command premium compensation. Company size and industry also influence pay scales, with large tech companies and finance firms often offering higher salaries than startups or non-profits. Educational background, portfolio quality, and demonstrated impact on previous business outcomes further affect earning potential."},{"question":"How long does it take to get hired as a Machine Learning Engineer?","answer":"The hiring timeline for Machine Learning Engineer positions typically ranges from 4-12 weeks, depending on the company's hiring process and your qualifications. The interview process often includes technical screenings, coding challenges, system design discussions, and model implementation exercises. Candidates with strong portfolios demonstrating deployed ML projects may progress more quickly through initial screens. Specialized roles requiring expertise in deep learning or specific domain knowledge might have longer evaluation periods. Companies often test both theoretical understanding and practical implementation skills through multi-stage interviews. Building relationships with hiring managers through professional networks can sometimes accelerate the process."},{"question":"Are Machine Learning Engineer jobs in demand?","answer":"Machine Learning Engineer jobs remain in high demand across industries as organizations implement AI solutions to solve complex problems. Companies actively recruit ML Engineers for applications in recommendation systems, fraud detection, computer vision, natural language processing, and autonomous technologies. The role's hybrid nature—combining software engineering and data science expertise—makes qualified candidates particularly valuable. Organizations need specialists who can both develop models and deploy them in production environments. While the field is competitive, professionals with demonstrated experience building and maintaining ML systems at scale continue to find strong opportunities, especially those with specialized knowledge in emerging areas like reinforcement learning."},{"question":"What is the difference between Machine Learning Engineer and Data Scientist?","answer":"Machine Learning Engineers focus on implementing and deploying models in production environments, while Data Scientists concentrate on research, analysis, and prototype development. ML Engineers build scalable pipelines, optimize model performance, and create deployment infrastructure using software engineering practices. Data Scientists explore data, develop statistical insights, and experiment with algorithms to solve business problems. ML Engineers work extensively with frameworks like TensorFlow and deployment tools, whereas Data Scientists may spend more time with analytical tools and statistical methods. While Data Scientists uncover patterns and build proofs of concept, ML Engineers transform these prototypes into robust, production-ready systems that can operate at scale."}]