Machine Learning Engineer
Leidos
Job Description
Description Leidosâ Security Enterprise Solutions (SES) operation is seeking a Machine Learning Engineer to support our data science and AI initiatives. You will help build and maintain ML models and pipelines, collaborate with crossâfunctional teams, and contribute to deploying scalable machine learning solutions in production. You will be developing new capabilities and intellectual property including (but not limited to) the detection of prohibited concealed items on passengers or in their baggage.
Weâre building intelligent systems that drive realâworld impact, pushing the limits of what is possible with automated security solutions, and weâre looking for passionate, curious, and collaborative individuals to join our team. Primary Responsibilities: Assist in designing, developing, testing, and deploying machine learning models. Work with large datasets: cleaning, preprocessing, feature engineering.
Collaborate with data scientists, engineers, and product managers to integrate ML models into applications. Help monitor model performance and retrain/update models as needed. Contribute to documentation and best practices.
Stay up to date with the latest ML research, tools, and technologies. May require occasional travel (10%), domestic or international. Requirements: Bachelorâs degree in Computer Science, Engineering, Mathematics, or a related field and 2+ years of work experience or Masterâs degree with less than 2 years of work experience.
May consider additional work experience in lieu of a degree. Must have the ability to obtain a Public Trust clearance (US citizenship required). Solid understanding of machine learning fundamentals (e.g., supervised/unsupervised learning, model evaluation).
Proficiency in Python and common ML libraries (e.g., scikit-learn, pandas, NumPy). Proficiency in Objectâoriented software design. Familiarity with PyTorch, or similar frameworks.
Familiarity with cloud platforms (e.g., AWS, GCP, or Azure). Experience with version control tools (e.g., Git). Exposure to MLOps concepts or tools (e.g., MLflow, Docker, CI/CD).
Basic knowledge of SQL and data querying. Strong problemâsolving and communication skills. Eagerness to learn and adapt in a fastâpaced environment.
Preferred Qualifications: Masterâs degree and 1â2 years of handsâon experience in a machine learning or data science role (including internships, research, or fullâtime industry experience). Proven experience building, validating, and deploying machine learning models in realâworld scenarios. Completed academic or industry projects that demonstrate the application of ML techniques to solve complex problems.
Cloud platform certifications , such as: Microsoft Certified: Azure AI Engineer Associate, AWS Certified Machine Learning â Specialty, Google Cloud Professional Machine Learning Engineer Experience using MLOps tools and workflows , including MLflow, Docker, CI/CD pipelines, and model monitoring. Familiarity with deep learning frameworks , especially PyTorch, and the ability to build and fineâtune neural network models. Exposure to data engineering workflows , such as data pipelines (e.g., Airflow), distributed processing (e.g., Spark), or data lake architectures.
Strong documentation skills and the ability to clearly communicate technical details to both technical and nonâtechnical audiences. Contributions to openâsource ML projects , participation in Kaggle competitions, or relevant publications (a plus). Commitment to NonâDiscrimination All qualified applicants will receive consideration for employment without regard to sex, race, ethnicity, age, national origin, citizenship, religion, physical or mental disability, medical condition, genetic information, pregnancy, family structure, marital status, ancestry, domestic partner status, sexual orientation, gender identity or expression, veteran or military status, or any other basis prohibited by law.
Leidos will also consider for employment qualified applicants with criminal histories consistent with relevant laws. #J-18808-Ljbffr