AI Data Engineer Visa Sponsorship Jobs in Tennessee
Tennessee's AI data engineer job market centers on Nashville's growing tech sector, with employers like Nissan's North American headquarters, HCA Healthcare, and Asurion actively building data teams. Oak Ridge National Laboratory near Knoxville draws additional demand for advanced AI and data engineering talent, making the state a growing destination for sponsored roles.
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INTRODUCTION
St. Jude is where those with a passion for making a difference come to break new ground. Located in Memphis, Tennessee, the mission of St. Jude Children’s Research Hospital is to advance cures, and means of prevention, for pediatric catastrophic diseases through research and treatment. We are leading the way the world understands, treats and defeats childhood cancer and other life-threatening diseases. We are looking for a Lead AI Engineer to join our Analytics Services team in supporting this incredible work.
The Lead AI Engineer will play a pivotal role in advancing healthcare artificial intelligence (AI) initiatives by developing and training AI tools aimed at automating and optimizing clinical workflows, operational efficiencies, and administrative tasks. As part of our dynamic team, your expertise in AI and other cognitive computing methodologies, such as but not limited to machine learning (ML), large language models (LLMs), small language models (SLMs), natural language processing (NLP), Generative AI, and Agentic AI, will help revolutionize pediatric healthcare. This is your opportunity to design, build, deploy, and operate production-grade AI systems that automate and optimize clinical, operational, and administrative workflows across the institution.
A day in the life of the Lead AI Engineer includes working with institutional stakeholders to deploy and integrate sophisticated AI systems, rigorously testing, validating, and tracking learning models, and troubleshooting issues to ensure system accuracy and reliability. A core objective of this role is to implement AI solutions that are reliable, explainable, auditable, and safe to operate in real-world clinical and operational environments, with clear performance metrics, monitoring, and human-in-the-loop controls. These solutions should enable resource optimization and enhance decision-making, ultimately to support driving fulfillment of the St. Jude mission. As a leader, you will collaborate with analytics, data scientists, IT, informatics, and business stakeholders to ensure AI systems are scalable, secure, and seamlessly integrated into existing workflows.
This position may be eligible for the possibility of remote work.
Responsibilities
Production AI Engineering & Architecture
- Lead the design and engineering of production-grade AI systems, including LLM-based and agentic solutions, that integrate with clinical, operational, and administrative platforms.
- Translate institutional goals and use cases into deployable AI architectures, defining system boundaries, APIs, infrastructure components, and operational dependencies.
- Ensure AI systems are designed for reliability, security, scalability, and maintainability within St. Jude’s enterprise architecture.
Deployment, Operations, and Lifecycle Ownership
- Own the end-to-end lifecycle of AI systems from initial deployment through ongoing operation, optimization, and retirement.
- Lead production deployments and ensure AI solutions are safely integrated into existing workflows without disrupting clinical or operational processes.
- Establish and maintain monitoring, logging, and alerting to track system performance, usage, data drift, and failure modes.
- Diagnose and resolve production issues, working closely with IT, informatics, and platform teams to maintain uptime and trust.
Responsible AI, Governance, and Reliability
- Implement technical controls that support responsible AI practices, including auditability, access controls, versioning, and human-in-the-loop safeguards.
- Partner with analytics, information security, and governance teams to ensure AI systems align with institutional AI governance standards and regulatory expectations.
- Document system behavior, deployment patterns, and operational procedures to support transparency, audit readiness, and long-term sustainability.
Collaboration, Enablement, and Technical Leadership
- Collaborate closely with data scientists, clinicians, informaticists, and business stakeholders to translate needs into robust, operational AI solutions.
- Serve as a technical mentor within Analytics Services, helping establish engineering standards, patterns, and best practices for enterprise AI.
- Stay current on emerging AI technologies, platforms, and engineering approaches, evaluating their applicability to healthcare and enterprise operations.
MINIMUM EDUCATION AND/OR TRAINING
- Master’s degree in Computer Science, Computer Engineering, Data Science, Information Technology, or related field required.
- PhD in a related field preferred, especially where accompanied by demonstrated delivery of production AI systems.
MINIMUM EXPERIENCE
- Minimum Requirement: 5 years in designing high level architectures and developing solutions for large scale AI/ML systems and/or building solutions for a product on AI/ML features and capabilities.
- Highly prefer 5+ years of experience designing architectures and building production-grade AI/ML systems (not just prototypes), including deployment, monitoring, and ongoing operations in a regulated or high-availability environment.
- 5+ years experience developing and deploying AI solutions using modern techniques (e.g., ML, NLP, LLM-based systems), with demonstrated ability to integrate solutions into enterprise workflows and platforms.
- Proven experience with MLOps / LLMOps practices: CI/CD for models/prompts, model/version management, evaluation, drift monitoring, observability, incident response, and rollback strategies highly preferred.
- Experience implementing monitoring, logging, and alerting for AI systems (quality, latency, cost, safety signals), and driving reliability improvements over time highly preferred.
- Previous experience in process/workflow analysis and implementing AI solutions that measurably improve operational performance highly preferred.
- Proficiency in AI technologies, machine learning, data analytics, and project management tools highly preferred.
- Strong technical acumen to translate needs into engineering requirements, including APIs, integration patterns, infrastructure dependencies, and operational runbooks highly preferred.
- Strong background building and deploying ML systems using supervised and unsupervised approaches OR LLM-based approaches, including evaluation and safety considerations highly preferred.
- Strong background in industry use cases built on deep learning and machine learning (unsupervised and supervised techniques) is a must.
- Deep learning frameworks such as TensorFlow, Keras, PyTorch, Time series analysis, anomaly detection, forecasting, predictive modeling, graph-based neural networks, Bayesian statistics, and text analytics are a must.
NICE TO HAVE
- Experience with time series analysis, anomaly detection, forecasting, predictive modeling, NLP/text analytics, or related applied methods preferred.
- Experience developing and integrating APIs for healthcare systems to ensure seamless interaction with AI models preferred.
- Experience with agentic AI patterns (tool use, orchestration, human-in-the-loop controls, policy enforcement) and maintaining those systems over time preferred.
- Experience with computer vision in healthcare contexts (classification, segmentation, CNNs) and advanced generative methods (GANs) — as needed by use cases preferred.
KNOWLEDGE AND SKILLS
- Expertise in Python and modern ML/AI frameworks (e.g., PyTorch or TensorFlow).
- Experience with MLOps or similar tools for managing the lifecycle of machine learning models in healthcare applications.
- Experience deploying AI systems in cloud or enterprise environments with attention to security, privacy, and compliance expectations.
- Experience working with Epic electronic health records, including Cogito and Nebula.
- Advanced knowledge in Machine Learning models and Natural Language Processing (NLP) techniques for healthcare data, including word embeddings and named entity recognition.
- Implementing and fine-tuning Large Language Models (LLMs) using vector bases and Retrieval-Augmented Generation (RAG) for healthcare insights.
- Ability to validate solution architectures for LLMs within healthcare systems, ensuring scalability and reliability.
- Experience in deploying Generative AI (GenAI) models in production environments and providing ongoing support.
- Familiarity with cloud platforms like Azure for deploying and scaling healthcare AI models.
- Writing clean, efficient, and reusable code for healthcare machine learning applications.
- Strong analytical mindset to analyze complex healthcare data, derive actionable insights, and solve problems effectively.
- Proven ability to collaborate effectively with cross-functional teams, explain complex concepts to non-technical collaborators, and contribute to a positive team environment.
COMPENSATION
In recognition of certain U.S. state and municipal pay transparency laws, St. Jude is including a reasonable estimate of the compensation range for this role. This is an estimate offered in good faith and a specific salary offer takes into account factors that are considered in making compensation decisions including but not limited to skill sets, experience and training, licensure and certifications, and other business and organizational needs. It is not typical for an individual to be hired at or near the top of the salary range and compensation decisions are dependent on the facts and circumstances of each case. A reasonable estimate of the current salary range is $94,640 - $169,520 per year for the role of Lead AI Engineer.
Explore our exceptional benefits!
St. Jude is an Equal Opportunity Employer
No Search Firms
St. Jude Children's Research Hospital does not accept unsolicited assistance from search firms for employment opportunities. Please do not call or email. All resumes submitted by search firms to any employee or other representative at St. Jude via email, the internet or in any form and/or method without a valid written search agreement in place and approved by HR will result in no fee being paid in the event the candidate is hired by St. Jude.

INTRODUCTION
St. Jude is where those with a passion for making a difference come to break new ground. Located in Memphis, Tennessee, the mission of St. Jude Children’s Research Hospital is to advance cures, and means of prevention, for pediatric catastrophic diseases through research and treatment. We are leading the way the world understands, treats and defeats childhood cancer and other life-threatening diseases. We are looking for a Lead AI Engineer to join our Analytics Services team in supporting this incredible work.
The Lead AI Engineer will play a pivotal role in advancing healthcare artificial intelligence (AI) initiatives by developing and training AI tools aimed at automating and optimizing clinical workflows, operational efficiencies, and administrative tasks. As part of our dynamic team, your expertise in AI and other cognitive computing methodologies, such as but not limited to machine learning (ML), large language models (LLMs), small language models (SLMs), natural language processing (NLP), Generative AI, and Agentic AI, will help revolutionize pediatric healthcare. This is your opportunity to design, build, deploy, and operate production-grade AI systems that automate and optimize clinical, operational, and administrative workflows across the institution.
A day in the life of the Lead AI Engineer includes working with institutional stakeholders to deploy and integrate sophisticated AI systems, rigorously testing, validating, and tracking learning models, and troubleshooting issues to ensure system accuracy and reliability. A core objective of this role is to implement AI solutions that are reliable, explainable, auditable, and safe to operate in real-world clinical and operational environments, with clear performance metrics, monitoring, and human-in-the-loop controls. These solutions should enable resource optimization and enhance decision-making, ultimately to support driving fulfillment of the St. Jude mission. As a leader, you will collaborate with analytics, data scientists, IT, informatics, and business stakeholders to ensure AI systems are scalable, secure, and seamlessly integrated into existing workflows.
This position may be eligible for the possibility of remote work.
Responsibilities
Production AI Engineering & Architecture
- Lead the design and engineering of production-grade AI systems, including LLM-based and agentic solutions, that integrate with clinical, operational, and administrative platforms.
- Translate institutional goals and use cases into deployable AI architectures, defining system boundaries, APIs, infrastructure components, and operational dependencies.
- Ensure AI systems are designed for reliability, security, scalability, and maintainability within St. Jude’s enterprise architecture.
Deployment, Operations, and Lifecycle Ownership
- Own the end-to-end lifecycle of AI systems from initial deployment through ongoing operation, optimization, and retirement.
- Lead production deployments and ensure AI solutions are safely integrated into existing workflows without disrupting clinical or operational processes.
- Establish and maintain monitoring, logging, and alerting to track system performance, usage, data drift, and failure modes.
- Diagnose and resolve production issues, working closely with IT, informatics, and platform teams to maintain uptime and trust.
Responsible AI, Governance, and Reliability
- Implement technical controls that support responsible AI practices, including auditability, access controls, versioning, and human-in-the-loop safeguards.
- Partner with analytics, information security, and governance teams to ensure AI systems align with institutional AI governance standards and regulatory expectations.
- Document system behavior, deployment patterns, and operational procedures to support transparency, audit readiness, and long-term sustainability.
Collaboration, Enablement, and Technical Leadership
- Collaborate closely with data scientists, clinicians, informaticists, and business stakeholders to translate needs into robust, operational AI solutions.
- Serve as a technical mentor within Analytics Services, helping establish engineering standards, patterns, and best practices for enterprise AI.
- Stay current on emerging AI technologies, platforms, and engineering approaches, evaluating their applicability to healthcare and enterprise operations.
MINIMUM EDUCATION AND/OR TRAINING
- Master’s degree in Computer Science, Computer Engineering, Data Science, Information Technology, or related field required.
- PhD in a related field preferred, especially where accompanied by demonstrated delivery of production AI systems.
MINIMUM EXPERIENCE
- Minimum Requirement: 5 years in designing high level architectures and developing solutions for large scale AI/ML systems and/or building solutions for a product on AI/ML features and capabilities.
- Highly prefer 5+ years of experience designing architectures and building production-grade AI/ML systems (not just prototypes), including deployment, monitoring, and ongoing operations in a regulated or high-availability environment.
- 5+ years experience developing and deploying AI solutions using modern techniques (e.g., ML, NLP, LLM-based systems), with demonstrated ability to integrate solutions into enterprise workflows and platforms.
- Proven experience with MLOps / LLMOps practices: CI/CD for models/prompts, model/version management, evaluation, drift monitoring, observability, incident response, and rollback strategies highly preferred.
- Experience implementing monitoring, logging, and alerting for AI systems (quality, latency, cost, safety signals), and driving reliability improvements over time highly preferred.
- Previous experience in process/workflow analysis and implementing AI solutions that measurably improve operational performance highly preferred.
- Proficiency in AI technologies, machine learning, data analytics, and project management tools highly preferred.
- Strong technical acumen to translate needs into engineering requirements, including APIs, integration patterns, infrastructure dependencies, and operational runbooks highly preferred.
- Strong background building and deploying ML systems using supervised and unsupervised approaches OR LLM-based approaches, including evaluation and safety considerations highly preferred.
- Strong background in industry use cases built on deep learning and machine learning (unsupervised and supervised techniques) is a must.
- Deep learning frameworks such as TensorFlow, Keras, PyTorch, Time series analysis, anomaly detection, forecasting, predictive modeling, graph-based neural networks, Bayesian statistics, and text analytics are a must.
NICE TO HAVE
- Experience with time series analysis, anomaly detection, forecasting, predictive modeling, NLP/text analytics, or related applied methods preferred.
- Experience developing and integrating APIs for healthcare systems to ensure seamless interaction with AI models preferred.
- Experience with agentic AI patterns (tool use, orchestration, human-in-the-loop controls, policy enforcement) and maintaining those systems over time preferred.
- Experience with computer vision in healthcare contexts (classification, segmentation, CNNs) and advanced generative methods (GANs) — as needed by use cases preferred.
KNOWLEDGE AND SKILLS
- Expertise in Python and modern ML/AI frameworks (e.g., PyTorch or TensorFlow).
- Experience with MLOps or similar tools for managing the lifecycle of machine learning models in healthcare applications.
- Experience deploying AI systems in cloud or enterprise environments with attention to security, privacy, and compliance expectations.
- Experience working with Epic electronic health records, including Cogito and Nebula.
- Advanced knowledge in Machine Learning models and Natural Language Processing (NLP) techniques for healthcare data, including word embeddings and named entity recognition.
- Implementing and fine-tuning Large Language Models (LLMs) using vector bases and Retrieval-Augmented Generation (RAG) for healthcare insights.
- Ability to validate solution architectures for LLMs within healthcare systems, ensuring scalability and reliability.
- Experience in deploying Generative AI (GenAI) models in production environments and providing ongoing support.
- Familiarity with cloud platforms like Azure for deploying and scaling healthcare AI models.
- Writing clean, efficient, and reusable code for healthcare machine learning applications.
- Strong analytical mindset to analyze complex healthcare data, derive actionable insights, and solve problems effectively.
- Proven ability to collaborate effectively with cross-functional teams, explain complex concepts to non-technical collaborators, and contribute to a positive team environment.
COMPENSATION
In recognition of certain U.S. state and municipal pay transparency laws, St. Jude is including a reasonable estimate of the compensation range for this role. This is an estimate offered in good faith and a specific salary offer takes into account factors that are considered in making compensation decisions including but not limited to skill sets, experience and training, licensure and certifications, and other business and organizational needs. It is not typical for an individual to be hired at or near the top of the salary range and compensation decisions are dependent on the facts and circumstances of each case. A reasonable estimate of the current salary range is $94,640 - $169,520 per year for the role of Lead AI Engineer.
Explore our exceptional benefits!
St. Jude is an Equal Opportunity Employer
No Search Firms
St. Jude Children's Research Hospital does not accept unsolicited assistance from search firms for employment opportunities. Please do not call or email. All resumes submitted by search firms to any employee or other representative at St. Jude via email, the internet or in any form and/or method without a valid written search agreement in place and approved by HR will result in no fee being paid in the event the candidate is hired by St. Jude.
AI Data Engineer Job Roles in Tennessee
See all 38+ AI Data Engineer Jobs in Tennessee
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Search AI Data Engineer Jobs in TennesseeAI Data Engineer Jobs in Tennessee: Frequently Asked Questions
Which companies sponsor visas for AI data engineers in Tennessee?
Companies with established visa sponsorship histories in Tennessee's AI data engineering space include HCA Healthcare, Nissan North America, Asurion, and consulting firms such as Deloitte and Accenture operating out of Nashville. Oak Ridge National Laboratory near Knoxville also sponsors foreign national researchers and engineers. Mid-size fintech and healthtech startups in Nashville have increasingly added data engineering roles with H-1B sponsorship as the city's tech presence has expanded.
Which visa types are most common for AI data engineer roles in Tennessee?
The H-1B is the most common visa category for AI data engineer positions in Tennessee, as the role typically qualifies as a specialty occupation requiring at least a bachelor's degree in computer science, data science, or a related field. Candidates already holding O-1A visas or those transferring on L-1B intracompany petitions also appear in this market. TN visa classification is available to Canadian and Mexican nationals whose job duties align with qualifying computer-related occupations.
How to find ai data engineer visa sponsorship jobs in Tennessee?
Migrate Mate is a focused job board for international candidates and filters specifically for visa sponsorship, making it practical for finding AI data engineer roles in Tennessee without sifting through listings that don't offer sponsorship. You can filter by state and role type to surface employers in Nashville, Knoxville, and Memphis who have demonstrated willingness to sponsor. Checking employer H-1B disclosure data through the Department of Labor's OFLC portal can help verify sponsorship history before applying.
Which cities in Tennessee have the most AI data engineer sponsorship jobs?
Nashville concentrates the largest share of AI data engineer sponsorship activity in Tennessee, driven by its healthcare technology corridor, insurance sector, and a growing fintech scene. Knoxville follows, largely due to proximity to Oak Ridge National Laboratory and the University of Tennessee's research pipelines. Memphis has a smaller but present market tied to logistics technology and supply chain analytics companies, including FedEx's technology division.
Are there state-specific factors that affect AI data engineer visa sponsorship in Tennessee?
Tennessee has no state income tax, which affects prevailing wage comparisons since DOL wage determinations are based on federal and local occupational data rather than tax environment. Oak Ridge's presence creates demand for AI and data engineering talent with security clearance compatibility, which can narrow the sponsorable candidate pool. The University of Tennessee and Vanderbilt University supply OPT-eligible graduates annually, and employers familiar with sponsoring these candidates tend to be more experienced with the H-1B process overall.
What is the prevailing wage for sponsored ai data engineer jobs in Tennessee?
U.S. employers sponsoring a visa must pay at least the prevailing wage, which is what workers in the same role, area, and experience level typically earn. The Department of Labor sets this rate to make sure companies aren't hiring foreign workers simply because they'd accept lower pay than a U.S. worker. It varies by job title, location, and experience. You can look up current prevailing wage rates for any occupation and location using the OFLC Wage Search page.
See which ai data engineer employers are hiring and sponsoring visas in Tennessee right now.
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