

ML Ops Engineer
⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for an MLOps Engineer with a contract length of over 6 months, offering a pay rate of $60.00 - $70.00/hr. Key skills include Python, Google Cloud, Vertex AI, and experience in MLOps, with a focus on model deployment and collaboration with data science teams.
🌎 - Country
United States
💱 - Currency
$ USD
-
💰 - Day rate
560
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🗓️ - Date discovered
September 18, 2025
🕒 - Project duration
More than 6 months
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🏝️ - Location type
Unknown
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📄 - Contract type
Unknown
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🔒 - Security clearance
Unknown
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📍 - Location detailed
Blue Ash, OH
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🧠 - Skills detailed
#Monitoring #Data Engineering #AI (Artificial Intelligence) #Leadership #Consulting #Containers #Scala #Automation #Deployment #Observability #Base #ML Ops (Machine Learning Operations) #TensorFlow #Python #Azure #ML (Machine Learning) #Cloud #Model Deployment #Microsoft Azure #Data Science #PyTorch #Data Pipeline #Computer Science
Role description
Payrate: $60.00 - $70.00/hr.
Summary:
We are seeking a highly skilled MLOps Engineer to build, scale, and support our Google Vertex machine learning platform to enable a multi-model serving environment. This role is central to building reusable infrastructure components (i.e., infra as code), model deployment pipelines, and provide a collection of templates that accelerate model deployment, monitoring, and support for domain teams. This work will empower domain teams to independently run, support, and monitor their models using platform-provided tools and best practices. This role is part of a larger ML platform team that supports Company’s product recommendation capabilities.
Responsibilities:
• Design and implement reusable modules and templates for model training, deployment, and monitoring across Vertex AI and other cloud platforms.
• Build and maintain scalable CI/CD pipelines for ML workflows, enabling rapid iteration and safe promotion across environments.
• Develop tooling and automation to support overall platform observability, including drift detection, performance tracking, request latency, and alerting.
• Partner with domain teams to onboard models into the platform, ensuring alignment with operational standards and SLAs.
• Maintain and evolve the feature store, model registry, and endpoint management systems to support high-throughput, low-latency inference.
• Collaborate with leadership to define and enforce governance policies, including versioning, rollback strategies, and access controls.
• Provide technical guidance and support to domain teams, enabling self-service capabilities and reducing operational bottlenecks.
• Work closely with data scientists to understand their needs and efficiently integrate their models into production systems.
• This contractor will collaborate closely with data scientists, other MLOps engineers, and product teams to ensure that models are deployed efficiently that are observable, maintainable, and aligned with business goals.
• This role will work alongside Data Scientist, Data Engineers, Machine Learning Engineers, and software engineers to build, test, maintain, and support data pipelines, ML Models, and back-end services that make up our product recommender platform.
Qualifications:
• Bachelor’s or Master’s degree in computer science, Engineering, or related field.
• Minimum of 4 years of experience in MLOps, with a demonstrated ability to work with various ML platforms.
• Strong proficiency in Python and familiarity with data science methodologies.
• Experience with cloud technologies, particularly Google Cloud and Vertex AI, and adaptability to technologies like Microsoft Azure or open-source tools.
• Maintain expertise in a range of ML technologies and platforms, with a preference for Google Vertex AI, but open to other systems as needed.
• Leverage support for open-source frameworks like TensorFlow, PyTorch, scikit-learn, and integrate them with ML frameworks via custom containers.
• Excellent communication skills, capable of bridging technical and business domains.
Desired Skills:
• Experience working collaboratively with data science teams, understanding their needs and challenges.
• Ability to lead initiatives and communicate effectively with technical teams and senior leadership.
• Familiarity with a broad range of ML tools and frameworks, and openness to adapting to emerging technologies.
Pay Transparency: The typical base pay for this role across the U.S. is: $60.00 - $70.00/hr. Final offer amounts, within the base pay set forth above, are determined by factors including your relevant skills, education and experience and the benefits package you select. Full-time employees are eligible tselect from different benefits packages. Packages may include medical, dental, and vision benefits, 10 paid days off, 401(k) plan participation, commuter benefits and life and disability insurance.
For information about our collection, use, and disclosure of applicant's personal information as well as applicants' rights over their personal information, please see our Privacy Policy (https://www.aditiconsulting.com/privacy-polic).
Aditi Consulting LLC uses AI technology tengage candidates during the sourcing process. AI technology is used tgather data only and does not replace human-based decision making in employment decisions. By applying for this position, you agree tAditi’s use of AI technology, including calls from an AI Voice Recruiter.
#AditiConsulting
# 25 - 22515
Payrate: $60.00 - $70.00/hr.
Summary:
We are seeking a highly skilled MLOps Engineer to build, scale, and support our Google Vertex machine learning platform to enable a multi-model serving environment. This role is central to building reusable infrastructure components (i.e., infra as code), model deployment pipelines, and provide a collection of templates that accelerate model deployment, monitoring, and support for domain teams. This work will empower domain teams to independently run, support, and monitor their models using platform-provided tools and best practices. This role is part of a larger ML platform team that supports Company’s product recommendation capabilities.
Responsibilities:
• Design and implement reusable modules and templates for model training, deployment, and monitoring across Vertex AI and other cloud platforms.
• Build and maintain scalable CI/CD pipelines for ML workflows, enabling rapid iteration and safe promotion across environments.
• Develop tooling and automation to support overall platform observability, including drift detection, performance tracking, request latency, and alerting.
• Partner with domain teams to onboard models into the platform, ensuring alignment with operational standards and SLAs.
• Maintain and evolve the feature store, model registry, and endpoint management systems to support high-throughput, low-latency inference.
• Collaborate with leadership to define and enforce governance policies, including versioning, rollback strategies, and access controls.
• Provide technical guidance and support to domain teams, enabling self-service capabilities and reducing operational bottlenecks.
• Work closely with data scientists to understand their needs and efficiently integrate their models into production systems.
• This contractor will collaborate closely with data scientists, other MLOps engineers, and product teams to ensure that models are deployed efficiently that are observable, maintainable, and aligned with business goals.
• This role will work alongside Data Scientist, Data Engineers, Machine Learning Engineers, and software engineers to build, test, maintain, and support data pipelines, ML Models, and back-end services that make up our product recommender platform.
Qualifications:
• Bachelor’s or Master’s degree in computer science, Engineering, or related field.
• Minimum of 4 years of experience in MLOps, with a demonstrated ability to work with various ML platforms.
• Strong proficiency in Python and familiarity with data science methodologies.
• Experience with cloud technologies, particularly Google Cloud and Vertex AI, and adaptability to technologies like Microsoft Azure or open-source tools.
• Maintain expertise in a range of ML technologies and platforms, with a preference for Google Vertex AI, but open to other systems as needed.
• Leverage support for open-source frameworks like TensorFlow, PyTorch, scikit-learn, and integrate them with ML frameworks via custom containers.
• Excellent communication skills, capable of bridging technical and business domains.
Desired Skills:
• Experience working collaboratively with data science teams, understanding their needs and challenges.
• Ability to lead initiatives and communicate effectively with technical teams and senior leadership.
• Familiarity with a broad range of ML tools and frameworks, and openness to adapting to emerging technologies.
Pay Transparency: The typical base pay for this role across the U.S. is: $60.00 - $70.00/hr. Final offer amounts, within the base pay set forth above, are determined by factors including your relevant skills, education and experience and the benefits package you select. Full-time employees are eligible tselect from different benefits packages. Packages may include medical, dental, and vision benefits, 10 paid days off, 401(k) plan participation, commuter benefits and life and disability insurance.
For information about our collection, use, and disclosure of applicant's personal information as well as applicants' rights over their personal information, please see our Privacy Policy (https://www.aditiconsulting.com/privacy-polic).
Aditi Consulting LLC uses AI technology tengage candidates during the sourcing process. AI technology is used tgather data only and does not replace human-based decision making in employment decisions. By applying for this position, you agree tAditi’s use of AI technology, including calls from an AI Voice Recruiter.
#AditiConsulting
# 25 - 22515