
Invictus Strategy Solutions LLC is hiring: Machine Learning Ops Lead in Fort Wor
Invictus Strategy Solutions LLC, Fort Worth, TX, United States
Invictus Strategy & Solutions is a Service-Disabled Veteran-Owned Small Business (SDVOSB) providing strategic workforce solutions to mission-critical government and commercial operations. From cleared federal programs to complex industrial projects, we deliver top-tier professionals who drive performance, safety, and results. Our commitment to operational excellence and customer alignment makes us the partner of choice for organizations seeking agile and reliable talent solutions.
Summary
Invictus Strategy & Solutions is seeking a Senior Machine Learning Engineer and MLOps POD Lead to join our growing technical delivery team in Fort Worth, Texas. This on-site role requires strong hands‑on experience designing, deploying, and operating production grade machine learning systems integrated with enterprise data platforms.
The selected candidate will lead a small delivery pod of three to five engineers and data scientists responsible for building and operating scalable machine learning pipelines. This role combines hands‑on MLOps execution with technical leadership, ensuring machine learning systems operate reliably across commercial and government environments with varying regulatory, security, and operational requirements.
This role requires an engineer who remains directly involved in architecture, pipeline design, and production operations while guiding a small team responsible for delivery outcomes.
Key Responsibilities
MLOps Architecture and Execution
Design, deploy, and operate end‑to‑end machine learning pipelines supporting large‑scale datasets integrated with enterprise data lakes and data warehouses
Build and maintain production‑grade MLOps systems across cloud platforms including Azure, AWS, and GCP with primary emphasis on Microsoft Azure
Implement CI and CD pipelines supporting model training, versioning, deployment, and lifecycle management
Utilize MLflow for experiment tracking, model registry management, and model lifecycle governance
Monitor model performance, data drift, and system reliability across production environments
Ensure machine learning services meet defined reliability and SLA expectations
Collaborate with Data Engineering teams to integrate ML pipelines with ETL workflows, feature engineering pipelines, and enterprise data platforms
Deploy and manage ML workloads on Kubernetes‑based environments
Technical Leadership and Delivery
Lead a delivery pod of three to five engineers and data scientists responsible for building and operating ML systems
Provide technical guidance, mentorship, and code review support to team members
Translate business, operational, and regulatory requirements into scalable ML system architectures
Own delivery outcomes across commercial and public sector engagements while maintaining quality, security, and compliance requirements
Security, Compliance, and Responsible AI
Support machine learning implementations aligned with applicable standards including the NIST AI Risk Management Framework
Ensure secure handling of sensitive data including healthcare, bioscience, or government datasets
Support governance and operational oversight for machine learning lifecycle management
Qualifications
Bachelor’s degree in Computer Science, Data Science, Engineering, or a related discipline, or equivalent professional experience
U.S. Citizenship with the ability to obtain and maintain a government security clearance
Minimum seven years of experience in machine learning engineering or MLOps supporting production systems
Strong proficiency in Python and experience with modern ML frameworks such as PyTorch, TensorFlow, or similar tools
Hands‑on experience designing and deploying machine learning systems in cloud environments including Azure, AWS, or GCP, with demonstrated depth in Microsoft Azure environments
Experience implementing CI and CD pipelines for machine learning workflows
Hands‑on experience supporting enterprise data platforms including data lakes, data warehouses, and ETL pipelines
Experience deploying or operating workloads on Kubernetes‑based platforms
Strong foundation in software engineering best practices including version control, automated testing, and documentation
Preferred
Experience supporting machine learning systems for commercial clients or federal or state government programs
Prior technical leadership experience guiding small engineering teams
Experience deploying or operating ML systems in regulated cloud environments including Azure Government
Familiarity with infrastructure as code tools such as Terraform
Experience with AI governance frameworks, model risk management, or ethical AI practices
Relevant certifications may include: Microsoft Azure AI Engineer Associate, Microsoft Azure Data Scientist Associate, AWS Certified Machine Learning Specialty, or TensorFlow Developer Certificate
Compensation and Benefits
Employer‑paid medical, dental, and vision insurance
401(k) with company match
Paid time off and holidays
Professional development and certification reimbursement
Sponsorship
Invictus Strategy & Solutions is unable to provide sponsorship at this time. All applicants must be legally authorized to work in the United States without current or future sponsorship requirements.
EEO Statement
Invictus Strategy & Solutions is an equal opportunity employer. All qualified applicants will receive consideration without regard to any protected characteristic.
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Summary
Invictus Strategy & Solutions is seeking a Senior Machine Learning Engineer and MLOps POD Lead to join our growing technical delivery team in Fort Worth, Texas. This on-site role requires strong hands‑on experience designing, deploying, and operating production grade machine learning systems integrated with enterprise data platforms.
The selected candidate will lead a small delivery pod of three to five engineers and data scientists responsible for building and operating scalable machine learning pipelines. This role combines hands‑on MLOps execution with technical leadership, ensuring machine learning systems operate reliably across commercial and government environments with varying regulatory, security, and operational requirements.
This role requires an engineer who remains directly involved in architecture, pipeline design, and production operations while guiding a small team responsible for delivery outcomes.
Key Responsibilities
MLOps Architecture and Execution
Design, deploy, and operate end‑to‑end machine learning pipelines supporting large‑scale datasets integrated with enterprise data lakes and data warehouses
Build and maintain production‑grade MLOps systems across cloud platforms including Azure, AWS, and GCP with primary emphasis on Microsoft Azure
Implement CI and CD pipelines supporting model training, versioning, deployment, and lifecycle management
Utilize MLflow for experiment tracking, model registry management, and model lifecycle governance
Monitor model performance, data drift, and system reliability across production environments
Ensure machine learning services meet defined reliability and SLA expectations
Collaborate with Data Engineering teams to integrate ML pipelines with ETL workflows, feature engineering pipelines, and enterprise data platforms
Deploy and manage ML workloads on Kubernetes‑based environments
Technical Leadership and Delivery
Lead a delivery pod of three to five engineers and data scientists responsible for building and operating ML systems
Provide technical guidance, mentorship, and code review support to team members
Translate business, operational, and regulatory requirements into scalable ML system architectures
Own delivery outcomes across commercial and public sector engagements while maintaining quality, security, and compliance requirements
Security, Compliance, and Responsible AI
Support machine learning implementations aligned with applicable standards including the NIST AI Risk Management Framework
Ensure secure handling of sensitive data including healthcare, bioscience, or government datasets
Support governance and operational oversight for machine learning lifecycle management
Qualifications
Bachelor’s degree in Computer Science, Data Science, Engineering, or a related discipline, or equivalent professional experience
U.S. Citizenship with the ability to obtain and maintain a government security clearance
Minimum seven years of experience in machine learning engineering or MLOps supporting production systems
Strong proficiency in Python and experience with modern ML frameworks such as PyTorch, TensorFlow, or similar tools
Hands‑on experience designing and deploying machine learning systems in cloud environments including Azure, AWS, or GCP, with demonstrated depth in Microsoft Azure environments
Experience implementing CI and CD pipelines for machine learning workflows
Hands‑on experience supporting enterprise data platforms including data lakes, data warehouses, and ETL pipelines
Experience deploying or operating workloads on Kubernetes‑based platforms
Strong foundation in software engineering best practices including version control, automated testing, and documentation
Preferred
Experience supporting machine learning systems for commercial clients or federal or state government programs
Prior technical leadership experience guiding small engineering teams
Experience deploying or operating ML systems in regulated cloud environments including Azure Government
Familiarity with infrastructure as code tools such as Terraform
Experience with AI governance frameworks, model risk management, or ethical AI practices
Relevant certifications may include: Microsoft Azure AI Engineer Associate, Microsoft Azure Data Scientist Associate, AWS Certified Machine Learning Specialty, or TensorFlow Developer Certificate
Compensation and Benefits
Employer‑paid medical, dental, and vision insurance
401(k) with company match
Paid time off and holidays
Professional development and certification reimbursement
Sponsorship
Invictus Strategy & Solutions is unable to provide sponsorship at this time. All applicants must be legally authorized to work in the United States without current or future sponsorship requirements.
EEO Statement
Invictus Strategy & Solutions is an equal opportunity employer. All qualified applicants will receive consideration without regard to any protected characteristic.
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