Machine Learning Jobs in Washington DC

25,833 open positions · Updated daily

Looking for Machine Learning jobs in Washington DC? Browse our curated listings with transparent salary information to find the perfect Machine Learning position in the Washington DC area.

Data Scientist

Company: NT Concepts

Location: Washington DC

Posted May 03, 2023

None Found

Business Analyst

Company: Dev Technology Group, Inc.

Location: Washington DC

Posted May 06, 2023

None Found

Senior Software Engineer

Company: Two Six Technologies

Location: Washington DC

Posted May 01, 2023

None Found

Economist, IDA Strategy and Operations

Company: World Bank Group

Location: Washington DC

Posted May 06, 2023

None Found

Senior Application Developer

Company: American Psychological Association

Location: Washington DC

Posted May 03, 2023

The job posting is for a Senior Application Developer position at the American Psychological Association. The role requires designing, developing, and maintaining web-based Java applications. The candidate should have a Bachelor's or Master's degree in computer science, 7+ years of related experience, and strong skills in application development, software design/development, and web platforms. The position also requires experience in Agile development methodology, DevOps, and project management. The candidate should be able to work independently, communicate effectively, and provide production support as needed.

GOES-R Algorithm Configuration Management Lead

Company: a.i. solutions

Location: Washington DC

Posted May 05, 2023

None Found

IT Technical Support Specialist

Company: Dev Technology Group, Inc.

Location: Washington DC

Posted May 04, 2023

None Found

Manager, Pass Through Consulting/WNT

Company: RSM US LLP

Location: Washington DC

Posted Apr 30, 2023

None Found

Product Owner - Service Experience

Company: 2U, Inc.

Location: Washington DC

Posted May 01, 2023

None Found

Statistical Analyst

Company: World Bank Group

Location: Washington DC

Posted May 06, 2023

None Found

Machine Learning Engineer

Company: Two Six Technologies

Location: Washington DC

Posted May 06, 2023

None Found

Account Executive (B2B SaaS Sales)

Company: Quorum

Location: Washington DC

Posted Apr 30, 2023

None Found

Frequently Asked Questions

What are typical salary ranges for ML roles at different seniority levels?
Junior ML Engineers earn $90k–$120k annually, mid‑level engineers $120k–$160k, senior engineers $160k–$220k, and lead or principal ML roles can reach $220k–$300k+. In large tech firms, the upper end can exceed $350k when including equity, while early‑stage startups may offer lower base but higher stock options.
What skills and certifications are required for ML positions?
Core expertise includes Python, Jupyter, TensorFlow, PyTorch, scikit‑learn, and SQL. MLOps proficiency with Docker, Kubernetes, and cloud services (AWS SageMaker, GCP AI Platform, Azure ML) is essential for production roles. Certifications such as TensorFlow Developer, AWS Certified Machine Learning – Specialty, and Google Cloud Professional Machine Learning Engineer can validate knowledge and accelerate hiring.
Are ML jobs available for remote work?
Yes, many ML positions are fully remote or hybrid. Companies like Scale AI, Databricks, and Cohere offer remote‑first policies. Remote work requires high‑speed internet, secure VPN access, and collaboration via tools like JupyterHub, Slack, and Asana, but it also expands the geographic talent pool.
What career progression paths exist in ML?
Typical paths start as ML Engineer or Data Scientist, advance to Senior ML Engineer, Lead Data Scientist, or Research Scientist, then transition into managerial roles such as ML Manager, Director of AI, or VP of Data & AI. Progression hinges on building a strong portfolio, publishing research, mentoring junior teammates, and mastering cross‑functional skills like product strategy and ethics.
What are current industry trends shaping ML careers?
Edge AI and federated learning are driving demand for on‑device models; AutoML platforms reduce time to deployment; responsible AI frameworks (e.g., IBM AI Fairness 360) shape compliance roles; reinforcement learning is expanding into robotics; and interpretability tools like SHAP and LIME are becoming standard in regulated sectors such as finance and healthcare.

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