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Posted on 2026/03/10

AI DevOps Engineer

Booz Allen Hamilton, Inc.

Washington, DC, United States

Full-time

Job highlights Identified by Google from the original job post Qualifications • 3+ years of industry experience in an Applied Scientist, Machine Learning Engineer, or Data Scientist role with focus on data quality, evaluation, or related areas • Proven experience designing, building, and deploying scalable data quality or evaluation systems in production environments • Strong hands-on experience with Large Language Models (LLMs) including prompt engineering, fine-tuning, and applications such as grading, validation, or classification • Proficiency in Python, data science libraries (pandas, NumPy, scikit-learn, PyTorch, TensorFlow), SQL, and distributed computing environments (Spark, Hadoop) • MS in Computer Science, Machine Learning, Statistics, Applied Mathematics, NLP or a related quantitative field with 3+ years of relevant industry experience, OR BS degree in a related quantitative field with 8+ years of relevant industry experience • PhD in Computer Science, Machine Learning, Statistics, Applied Mathematics, NLP or a related quantitative field with 3+ years of relevant industry experience, • Experience with data labeling operations, annotation quality frameworks, or human-in-the-loop systems • Familiarity with prompt optimization frameworks or automated prompt engineering • Experience in natural language processing (NLP) or natural language understanding (NLU) • Experience with MLOps practices and tools for deploying, monitoring, and managing ML models in production • Familiarity with cloud platforms (e.g., AWS, GCP, Azure) or large-scale distributed infrastructure systems • Prior experience contributing to open-source projects or publishing research in relevant academic conferences or journals • 9 more items(s) Responsibilities • This is your opportunity to shape the future of data quality at Apple, working at the intersection of cutting-edge machine learning, large language models, and rigorous scientific methodology • You'll be at the forefront of designing and implementing novel, scalable quality control solutions which ensure our AI-powered services meet Apple's exacting standards for a high-quality user experience • If you're passionate about applying scientific rigor to real-world problems, thrive on innovation, and want your work to impact hundreds of millions of users, this role offers an exceptional opportunity to make a lasting contribution to products people use every day • In this role, you will develop AI or ML solutions for programatically generating gold standard datasets, create anomaly detection systems, and pioneer use of Large Language Models for automated quality control • You will work closely with cross-functional teams to ensure the data powering our AI/ML systems meets the highest standards of accuracy, consistency, and relevance • 2 more items(s) More job highlights Job description Join the Human-centered AI (HAI) organization within Apple Services Engineering as a Senior Applied Scientist on our Data Quality Operations team.

This is your opportunity to shape the future of data quality at Apple, working at the intersection of cutting-edge machine learning, large language models, and rigorous scientific methodology.

You'll be at the forefront of designing and implementing nov...el, scalable quality control solutions which ensure our AI-powered services meet Apple's exacting standards for a high-quality user experience.

If you're passionate about applying scientific rigor to real-world problems, thrive on innovation, and want your work to impact hundreds of millions of users, this role offers an exceptional opportunity to make a lasting contribution to products people use every day.

We are seeking a Senior Applied Scientist to lead the design and implementation of novel, scalable quality control solutions for Apple Services.

In this role, you will develop AI or ML solutions for programatically generating gold standard datasets, create anomaly detection systems, and pioneer use of Large Language Models for automated quality control.

You will work closely with cross-functional teams to ensure the data powering our AI/ML systems meets the highest standards of accuracy, consistency, and relevance.

3+ years of industry experience in an Applied Scientist, Machine Learning Engineer, or Data Scientist role with focus on data quality, evaluation, or related areas.

Proven experience designing, building, and deploying scalable data quality or evaluation systems in production environments.

Strong hands-on experience with Large Language Models (LLMs) including prompt engineering, fine-tuning, and applications such as grading, validation, or classification.

Proficiency in Python, data science libraries (pandas, NumPy, scikit-learn, PyTorch, TensorFlow), SQL, and distributed computing environments (Spark, Hadoop).

MS in Computer Science, Machine Learning, Statistics, Applied Mathematics, NLP or a related quantitative field with 3+ years of relevant industry experience, OR BS degree in a related quantitative field with 8+ years of relevant industry experience.

PhD in Computer Science, Machine Learning, Statistics, Applied Mathematics, NLP or a related quantitative field with 3+ years of relevant industry experience,

Experience with data labeling operations, annotation quality frameworks, or human-in-the-loop systems.

Familiarity with prompt optimization frameworks or automated prompt engineering.

Experience in natural language processing (NLP) or natural language understanding (NLU).

Experience with MLOps practices and tools for deploying, monitoring, and managing ML models in production.

Familiarity with cloud platforms (e.g., AWS, GCP, Azure) or large-scale distributed infrastructure systems.

Prior experience contributing to open-source projects or publishing research in relevant academic conferences or journals.

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