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Machine learning engineer Jobs in Alexandria, VA
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Machine learning engineer • alexandria va
Machine Learning Engineer
eTeam IncWashington, District of Columbia, United StatesAutonomous Systems Machine Learning Engineer
Blue SignalArlington, VA- Promoted
Senior Data Scientist - Python & Machine Learning
Castellum IncWashington, District Of Columbia, United States- Promoted
- New!
Coordinator Clinical Learning Operations - Clinical Education
CHRISTUS HealthAlexandria, VA, United States- Promoted
- New!
Learning Coordinator
Stand TogetherArlington, VA, United States- New!
Senior Machine Learning Scientist (USA Remote)
Turnitin, LLCWashington, District of Columbia, United StatesDish Machine Operator
IHOPWashington, DC, US- Promoted
Adjunct Faculty, Teaching and Learning
American College of EducationWashington, DC, United States- Promoted
Transfer Machine Operator
Longhorn Energy and Transportation LLCClinton, MD, United States- Promoted
Learning & Business Partner Specialist
Howard University HospitalWashington, DC, United States- Promoted
Applied Researcher I
Capital One Financial CorpWashington, DC, United StatesData Science/Machine Learning Engineer (Remote, Continental United States)
ICA.aiArlington, Virginia, United States- Promoted
Part-Time Lecturer - Applied Machine Intelligence (Arlington)
Northeastern UniversityArlington, VA, United States- Promoted
BRIDGE Organizational Development and Learning Undergraduate Intern
Worldwide Fund for NatureWashington, DC, United StatesMachine Learning Engineer - Autonomy Lab
Carnegie Mellon UniversityArlington, VA- Promoted
Learning Specialist
InsideHigherEdWashington D.C., United StatesSenior Front-end Engineer, WWPS ProServe Data and Machine Learning
Amazon Web Services, Inc.Arlington, Virginia, USA- Promoted
Summer Learning Principal, HS Credit Recovery Academy
Fairfax County Public SchoolsFalls Church, VA, United States- Promoted
IBM Consulting Americas Learning and Knowledge Leader
IBMWashington, DC, United StatesThe average salary range is between $ 119,550 and $ 176,325 year , with the average salary hovering around $ 135,000 year .
- lead software engineer (from $ 139,375 to $ 245,700 year)
- database engineer (from $ 124,197 to $ 245,700 year)
- senior database administrator (from $ 118,500 to $ 245,700 year)
- psychiatrist (from $ 200,000 to $ 242,500 year)
- oracle database administrator (from $ 195,750 to $ 236,925 year)
- business operations manager (from $ 70,000 to $ 234,900 year)
- inspection (from $ 65,000 to $ 234,900 year)
- associate dentist (from $ 25,000 to $ 230,000 year)
- software engineering manager (from $ 195,000 to $ 226,156 year)
- emergency medicine physician assistant (from $ 200,000 to $ 225,000 year)
- Lansing, MI (from $ 114,400 to $ 241,000 year)
- Cedar Rapids, IA (from $ 131,250 to $ 240,706 year)
- Grand Rapids, MI (from $ 133,750 to $ 240,706 year)
- Kent, WA (from $ 109,500 to $ 238,773 year)
- Simi Valley, CA (from $ 145,000 to $ 235,450 year)
- Spokane Valley, WA (from $ 145,000 to $ 235,450 year)
- Sunnyvale, CA (from $ 154,550 to $ 230,000 year)
- Bellevue, WA (from $ 140,000 to $ 229,250 year)
- Wichita Falls, TX (from $ 159,200 to $ 226,625 year)
- Austin, TX (from $ 144,900 to $ 225,000 year)
The average salary range is between $ 124,693 and $ 200,000 year , with the average salary hovering around $ 154,997 year .
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Machine Learning Engineer
eTeam IncWashington, District of Columbia, United States- Full-time
- Quick Apply
Pay Rate: $60 - $65/Hour
Overview:
We are seeking a skilled and experienced Machine Learning (ML) Engineer to join our team in a customer-facing role. You will architect and implement innovative ML solutions, working closely with data scientists and engineers to put algorithms and models into practice to solve our customers' most challenging problems. You will take the lead in planning, designing, and running experiments, while researching new algorithms to deliver impactful solutions.
Key Responsibilities:
- Design, build, and deploy machine learning models within the proposed platform, ensuring they are optimized for performance and scalability.
- Collaborate with Data Scientists and Data Engineers to implement feature stores, model management (MLOps), and Explainable AI (XAI) capabilities.
- Monitor and optimize the performance of deployed models, ensuring they meet business requirements and performance standards.
- Support model management, versioning, and deployment workflows to streamline the operationalization of machine learning models.
- Engage directly with customers to understand their business problems and help implement tailored ML solutions.
- Deliver Machine Learning projects end-to-end, including understanding business needs, planning projects, aggregating & exploring data, building & validating predictive models, and deploying completed ML capabilities on the AWS Cloud to deliver business impact.
- Utilize deep learning frameworks like PyTorch and TensorFlow to build computer vision models for versatile applications.
- Work on large-scale datasets, creating scalable, robust, and accurate computer vision systems.
- Collaborate with Cloud Architects to build secure, robust, and easy-to-deploy cloud-native machine learning solutions.
- Work closely with customer account teams and product engineering teams to optimize model implementations and deploy cutting-edge algorithms.
- Assist customers with Machine Learning Operations (MLOps) workflows such as model deployment, retraining, testing, and performance monitoring.
- Apply best practices from core Software Development activities to Machine Learning, including deplorability, unit testing, and structured, extensible software development.
Preferred Qualifications:
- Proven experience in building and deploying machine learning models at scale.
- Proficiency with deep learning frameworks like PyTorch and TensorFlow.
- Experience with cloud-native machine learning solutions, preferably on AWS.
- Experience with Databricks
- Experience with Agile Methodology
- Strong understanding of MLOps workflows, including model management.
- Ability to work independently and collaboratively with cross-functional teams.