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Remote Full Stack Machine Learning Engineer Jobs in Tennessee

... based learning, code reviews, and incremental application building to support students from HTML beginners through advanced developers building production-ready full-stack web applications.

... based learning, code reviews, and incremental application building to support students from HTML beginners through advanced developers building production-ready full-stack web applications.

... based learning, code reviews, and incremental application building to support students from HTML beginners through advanced developers building production-ready full-stack web applications.

... based learning, code reviews, and incremental application building to support students from HTML beginners through advanced developers building production-ready full-stack web applications.

... based learning, code reviews, and incremental application building to support students from HTML beginners through advanced developers building production-ready full-stack web applications.

... based learning, code reviews, and incremental application building to support students from HTML beginners through advanced developers building production-ready full-stack web applications.

Its platform supports a broad range of healthcare applications, including machine learning, medical ... Experience across the full software development lifecycle, including design, development, testing ...

As a Development Manager will lead a team of full-stack engineers building and maintaining ... Foster a culture of technical excellence, accountability, and continuous learning. Qualifications

As a Development Manager will lead a team of full-stack engineers building and maintaining ... Foster a culture of technical excellence, accountability, and continuous learning. Qualifications

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Remote Full Stack Machine Learning Engineer information

What is a Remote Full Stack Machine Learning Engineer?

A Remote Full Stack Machine Learning Engineer is a professional who designs, develops, and deploys machine learning solutions while working remotely. They handle both the front-end and back-end aspects of machine learning projects, including data preprocessing, model building, API development, and integration with user interfaces or cloud platforms. This role requires expertise in programming, machine learning frameworks, cloud services, and web technologies, allowing them to build end-to-end AI-driven applications from anywhere in the world.

What are some common challenges faced by remote Full Stack Machine Learning Engineers, and how can they be addressed?

Remote Full Stack Machine Learning Engineers often encounter challenges such as managing effective collaboration with cross-functional teams and ensuring smooth deployment of machine learning models into production environments. To address these, it's important to establish clear communication channels, regularly participate in virtual stand-ups, and use collaborative platforms such as GitHub and Slack. Additionally, staying organized with version control and thorough documentation helps maintain project transparency and ensures seamless handoffs between backend and frontend development. Proactively seeking feedback and scheduling regular check-ins with team members can further enhance productivity and integration within the team.

What is the difference between Remote Full Stack Machine Learning Engineer vs Remote Data Scientist?

AspectRemote Full Stack Machine Learning EngineerRemote Data Scientist
Primary FocusDeveloping end-to-end machine learning applications, including backend, frontend, and model deploymentAnalyzing data, creating models, and generating insights without necessarily building full applications
Skills RequiredProgramming (Python, JavaScript), ML frameworks, web development, deployment toolsStatistics, data analysis, visualization, Python/R, SQL
Work EnvironmentCollaborates with developers, data engineers, and product teams in tech-driven companiesWorks with data teams, analysts, and business units in various industries

While both roles involve working with data and machine learning, a Remote Full Stack Machine Learning Engineer builds complete applications with integrated ML models, whereas a Remote Data Scientist focuses on data analysis and model creation without necessarily developing full applications.

What are the key skills and qualifications needed to thrive as a Remote Full Stack Machine Learning Engineer, and why are they important?

To thrive as a Remote Full Stack Machine Learning Engineer, you need proficiency in programming languages (such as Python or JavaScript), a solid understanding of machine learning algorithms, experience with web development frameworks, and typically a degree in computer science or a related field. Familiarity with tools like TensorFlow, PyTorch, Docker, cloud computing platforms (AWS, GCP), and version control systems (Git) is essential. Strong problem-solving skills, self-motivation, and clear communication are crucial soft skills, especially in remote and cross-functional team environments. These combined skills ensure effective design, deployment, and integration of machine learning solutions in scalable web applications while maintaining productivity in a remote setting.
What are the most commonly searched types of Full Stack Machine Learning Engineer jobs in Tennessee? The most popular types of Full Stack Machine Learning Engineer jobs in Tennessee are:
What are popular job titles related to Remote Full Stack Machine Learning Engineer jobs in Tennessee? For Remote Full Stack Machine Learning Engineer jobs in Tennessee, the most frequently searched job titles are:
What job categories do people searching Remote Full Stack Machine Learning Engineer jobs in Tennessee look for? The top searched job categories for Remote Full Stack Machine Learning Engineer jobs in Tennessee are:
What cities in Tennessee are hiring for Remote Full Stack Machine Learning Engineer jobs? Cities in Tennessee with the most Remote Full Stack Machine Learning Engineer job openings:
Senior Data Scientist / AI Engineer (3878)

Senior Data Scientist / AI Engineer (3878)

Navarro Inc.

Oak Ridge, TN โ€ข Remote

Full-time

Medical, Dental, Vision, Life, Retirement, PTO

This job post hasย expired today.ย Applications are no longer accepted.


Job description

Navarro Research and Engineering is recruiting a Senior Data Scientist / AI Engineer (3878). This is a remote position. Citizenship is required.

Navarro Research & Engineering is an award-winning federal contractor dedicated to partnering with clients to advance clean energy and deliver effective solutions for complex challenges in the nuclear and environmental fields. Joining Navarro means being a part of an exceptional team committed to quality and safety while also looking for innovative strategies to create value for the client's success. Headquartered in Oak Ridge, Tennessee, Navarro has active programs in place across the nation for DOE/NNSA, NASA, and the Department of Defense.

We are seeking a Senior Data Scientist / AI Engineer to design, develop, deploy, and maintain machine learning and generative AI solutions within a government environment. This role will support both locally hosted AI systems and cloud-based AI services within Microsoft Azure Government, including Azure AI Foundry and related Azure AI services.

The ideal candidate has hands-on experience building production AI systems, deploying and operating open-source large language models (LLMs), implementing secure MLOps practices, and developing AI applications that meet government security and compliance requirements.

Key Responsibilities

AI/ML Solution Development

  • Design, build, train, evaluate, and deploy machine learning and generative AI solutions.
  • Develop and maintain predictive analytics, NLP, computer vision, and LLM-based applications.
  • Implement Retrieval-Augmented Generation (RAG), agentic workflows, and knowledge management solutions.
  • Evaluate commercial, open-source, and custom AI models for mission-specific use cases.

Local and On-Premises AI Infrastructure

  • Deploy and operate local/open-source models in secure environments.
  • Configure and optimize inference environments using GPUs and containerized deployments.
  • Manage model serving platforms and inference frameworks.
  • Implement monitoring, performance tuning, and lifecycle management for locally hosted models.
  • Support disconnected, restricted, or air-gapped operational environments.

Azure Government AI Platforms

  • Design and deploy AI solutions within Azure Government.
  • Build and manage solutions using Azure AI Foundry, Azure OpenAI, Azure Machine Learning, Azure Kubernetes Service (AKS), and related services.
  • Implement secure model deployment, monitoring, and governance controls.
  • Integrate AI services with enterprise systems and data platforms.

Data Engineering and Analytics

  • Develop data pipelines supporting AI and analytics workloads.
  • Perform data exploration, feature engineering, model evaluation, and performance analysis.
  • Work with structured, semi-structured, and unstructured data sources.
  • Ensure data quality, lineage, and governance standards are maintained.

MLOps and DevSecOps

  • Implement CI/CD pipelines for machine learning and AI workloads.
  • Develop automated testing, validation, and deployment processes.
  • Establish model monitoring, drift detection, and performance reporting.
  • Apply security controls and compliance requirements throughout the AI lifecycle.

Stakeholder Support

  • Collaborate with mission owners, analysts, engineers, cybersecurity personnel, and leadership.
  • Translate operational requirements into technical AI solutions.
  • Prepare technical documentation, architecture diagrams, and presentations.

Requirements

Education

  • Bachelor's degree in Data Science, Computer Science, Engineering, Mathematics, Statistics, or related field.
  • Master's degree preferred.

Professional Experience

  • 5+ years of experience in data science, machine learning, AI engineering, or related fields.
  • 2+ years of experience deploying and operating production AI/ML systems.
  • Experience supporting secure government, defense, or regulated environments preferred.

Technical Skills

Machine Learning & Data Science

  • Strong knowledge of supervised and unsupervised learning techniques.
  • Experience with model development, evaluation, and optimization.
  • Statistical analysis and experimental design experience.
  • Proficiency in Python and common ML frameworks.

Generative AI & LLMs

  • Experience deploying and operating open-source LLMs.
  • Experience with:
    • Llama family models
    • Mistral models
    • Hugging Face models
  • Knowledge of:
    • RAG architectures
    • Agent frameworks
    • Prompt engineering
    • Model evaluation methodologies
    • Fine-tuning approaches

Azure Government and Cloud AI

  • Experience with:
    • Azure AI Foundry
    • Azure Machine Learning
    • Azure OpenAI
    • Azure Kubernetes Service (AKS)
    • Azure Storage and Data Services
    • Azure Identity and Access Management
  • Experience deploying AI workloads in Azure Government environments preferred.

Local AI Infrastructure

  • Experience with:
    • Docker
    • Kubernetes
    • GPU-based inference systems
    • vLLM, Ollama, TGI, or similar inference platforms
    • Linux administration
  • Understanding of model quantization and performance optimization techniques.

Data Platforms

  • SQL and relational databases
  • Data warehousing concepts
  • ETL/ELT pipeline development
  • Vector databases and semantic search platforms

Software Engineering

  • Git-based development workflows
  • REST APIs and microservices
  • CI/CD pipelines
  • Infrastructure-as-Code concepts

Preferred Qualifications

  • Active security clearance or ability to obtain one.
  • Experience with NIST AI Risk Management Framework.
  • Experience with FedRAMP, RMF, or government cybersecurity compliance frameworks.
  • Experience supporting classified or controlled environments.
  • Azure certifications.
  • Experience with distributed GPU environments.
  • Experience implementing AI governance and responsible AI controls.

Desired Technologies

Candidates should have experience with several of the following:

Programming

  • Python
  • SQL
  • PowerShell
  • Bash

AI/ML Frameworks

  • PyTorch
  • TensorFlow
  • Scikit-learn
  • Hugging Face Transformers

LLM Ecosystem

  • LangChain
  • LlamaIndex
  • Semantic Kernel
  • OpenAI APIs
  • Azure OpenAI APIs

Infrastructure

  • Docker
  • Kubernetes
  • AKS
  • Linux
  • GitHub Actions
  • Azure DevOps

Databases

  • PostgreSQL
  • SQL Server
  • Vector databases
  • Azure Data Services

Security Requirements

  • U.S. citizenship required.
  • Ability to pass government background investigation.
  • Ability to comply with all applicable government security and information assurance requirements.

Success Criteria

Within the first 12 months, the selected candidate will:

  • Deploy and support production AI solutions in Azure Government.
  • Establish repeatable MLOps processes for AI model deployment and maintenance.
  • Deploy and manage secure local/open-source LLM environments.
  • Develop mission-focused AI applications leveraging RAG and agentic workflows.
  • Improve operational efficiency through automation and advanced analytics.

Due to the nature of the government contract requirements and/or clearances requirements, US citizenship is required.

Navarro is an equal-opportunity employer. All qualified applicants will receive consideration for employment without regard to sex, race, religion, color, national origin, age, disability, veteran's status, or any classification protected by applicable state or local law.

EEO Employer/Vet/Disabled

Benefits

  • Health Care Plan (Medical, Dental & Vision)
  • Retirement Plan (401k,)
  • Life Insurance (Basic, Voluntary & AD&D)
  • Paid Time Off (Vacation & Public Holidays)
  • Short Term & Long Term Disability