

Ahura Workforce Solutions
MLOps Engineer- Healthcare or Life Sciences Sector.
⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for an MLOps Engineer in the Healthcare or Life Sciences sector, offering a remote contract position. Key skills include AWS expertise, data engineering, and compliance knowledge. A Bachelor's degree and experience in productionizing machine learning models are required.
🌎 - Country
United States
💱 - Currency
$ USD
-
💰 - Day rate
Unknown
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🗓️ - Date
April 29, 2026
🕒 - Duration
Unknown
-
🏝️ - Location
Remote
-
📄 - Contract
Unknown
-
🔒 - Security
Unknown
-
📍 - Location detailed
United States
-
🧠 - Skills detailed
#Deployment #ML (Machine Learning) #Monitoring #Lambda (AWS Lambda) #AWS SageMaker #Data Modeling #AI (Artificial Intelligence) #Scala #SaaS (Software as a Service) #Model Deployment #Compliance #Data Engineering #SageMaker #"ETL (Extract #Transform #Load)" #Data Ingestion #AWS (Amazon Web Services) #Data Science #Cloud
Role description
Customer - Our customer is a leader in AI enabled SaaS products and solutions with focus in the life sciences domain
Title – MLOps Engineer- Healthcare or Life Sciences sector.
Type - Contract
Location – Remote
About the Role
Unlike a traditional Data Science role, this position prioritizes the engineering, deployment, and scalability of machine learning systems. You will be responsible for moving models from research to production, ensuring they are robust, integrated into our cloud infrastructure, and compliant with industry standards.
Key Responsibilities
• MLOps on AWS: Lead the end-to-end MLOps lifecycle within the AWS ecosystem, with a focus on CI/CD for machine learning and automated model monitoring.
• Infrastructure & Data Modeling: Design and implement scalable infrastructure architecture, including complex data models specifically structured for ML workloads.
• ML Pipelines: Build and maintain automated pipelines to handle data ingestion, preprocessing, training, and deployment at scale.
• Feature Engineering: Develop and optimize sophisticated feature engineering workflows to enhance model accuracy and operational efficiency.
• Regulatory & Data Engineering: Bridge the gap between data engineering and model deployment while adhering to strict regulatory requirements inherent to the life sciences industry.
Technical Qualifications
Category Requirements
Experience
• Proven track record as an MLE with experience productionizing models (rather than just DS/Analytics).
• Cloud Platform
• Expert knowledge of AWS (SageMaker, Lambda, Glue) for ML applications.
• Data Engineering
• Strong background in data engineering, ETL design, and data modeling.
• Domain Knowledge
• Experience in the Healthcare or Life Sciences sector.
• Compliance
• Understanding of regulatory experience and working within regulated data environments.
Education & Experience
• Bachelor's degree in Business Administration, Information Technology, or a related field.
Customer - Our customer is a leader in AI enabled SaaS products and solutions with focus in the life sciences domain
Title – MLOps Engineer- Healthcare or Life Sciences sector.
Type - Contract
Location – Remote
About the Role
Unlike a traditional Data Science role, this position prioritizes the engineering, deployment, and scalability of machine learning systems. You will be responsible for moving models from research to production, ensuring they are robust, integrated into our cloud infrastructure, and compliant with industry standards.
Key Responsibilities
• MLOps on AWS: Lead the end-to-end MLOps lifecycle within the AWS ecosystem, with a focus on CI/CD for machine learning and automated model monitoring.
• Infrastructure & Data Modeling: Design and implement scalable infrastructure architecture, including complex data models specifically structured for ML workloads.
• ML Pipelines: Build and maintain automated pipelines to handle data ingestion, preprocessing, training, and deployment at scale.
• Feature Engineering: Develop and optimize sophisticated feature engineering workflows to enhance model accuracy and operational efficiency.
• Regulatory & Data Engineering: Bridge the gap between data engineering and model deployment while adhering to strict regulatory requirements inherent to the life sciences industry.
Technical Qualifications
Category Requirements
Experience
• Proven track record as an MLE with experience productionizing models (rather than just DS/Analytics).
• Cloud Platform
• Expert knowledge of AWS (SageMaker, Lambda, Glue) for ML applications.
• Data Engineering
• Strong background in data engineering, ETL design, and data modeling.
• Domain Knowledge
• Experience in the Healthcare or Life Sciences sector.
• Compliance
• Understanding of regulatory experience and working within regulated data environments.
Education & Experience
• Bachelor's degree in Business Administration, Information Technology, or a related field.




