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Machine Learning Engineer

This role is for a Machine Learning Engineer with 3+ years of experience, a Bachelor's in computer science or related field, and healthcare expertise. Contract length is "unknown," with a pay rate of "unknown." Key skills include scalable ML infrastructures and CI/CD pipelines.
🌎 - Country
United States
💱 - Currency
$ USD
💰 - Day rate
Unknown
Unknown
🗓️ - Date discovered
March 12, 2025
🕒 - Project duration
Unknown
🏝️ - Location type
Unknown
📄 - Contract type
Unknown
🔒 - Security clearance
Unknown
📍 - Location detailed
Los Angeles, CA
🧠 - Skills detailed
#Continuous Deployment #Web Services #Azure #Data Science #GCP (Google Cloud Platform) #Compliance #Cloud #Data Processing #Deployment #Leadership #DevOps #Documentation #Docker #Data Ingestion #Computer Science #Scala #Logging #AWS (Amazon Web Services) #ML (Machine Learning) #Kubernetes #Version Control #ML Ops (Machine Learning Operations) #AI (Artificial Intelligence) #Data Engineering #Monitoring #Security
Role description
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Requirements:

   • 3 or more years relevant Machine Learning Engineer Experience

   • Bachelor’s Degree computer science, artificial intelligence, informatics or closely related field

   • Masters preferred

   • Healthcare Expertise: Understanding of healthcare regulations and standards, and familiarity with Electronic Health Records (EHR) systems, including integrating machine learning models with these systems.

Job Description:

   • Production Deployment and Model Engineering: Proven experience in deploying and maintaining production-grade machine learning models, with real-time inference, scalability, and reliability.

   • Scalable ML Infrastructures: Proficiency in developing end-to-end scalable ML infrastructures using on-premise cloud platforms such as Amazon Web Services (AWS), Google Cloud Platform (GCP), or Azure.

   • Engineering Leadership: Ability to lead engineering efforts in creating and implementing methods and workflows for ML/GenAI model engineering, LLM advancements, and optimizing deployment frameworks while aligning with business strategic directions.

   • AI Pipeline Development: Experience in developing AI pipelines for various data processing needs, including data ingestion, preprocessing, and search and retrieval, ensuring solutions meet all technical and business requirements.

   • Collaboration: Demonstrated ability to collaborate with data scientists, data engineers, analytics teams, and DevOps teams to design and implement robust deployment pipelines for continuous improvement of machine learning models.

   • Continuous Integration/Continuous Deployment (CI/CD) Pipelines: Expertise in implementing and optimizing CI/CD pipelines for machine learning models, automating testing and deployment processes.

   • Monitoring and Logging: Competence in setting up monitoring and logging solutions to track model performance, system health, and anomalies, allowing for timely intervention and proactive maintenance.

   • Version Control: Experience implementing version control systems for machine learning models and associated code to track changes and facilitate collaboration.

   • Security and Compliance: Knowledge of ensuring machine learning systems meet security and compliance standards, including data protection and privacy regulations.

   • Documentation: Skill in maintaining clear and comprehensive documentation of ML Ops processes and configurations.

Preferred:

   • Proficiency in Containerization Technologies: Experience with Docker, Kubernetes, or similar tools.

   • Certification(s) in Machine Learning a plus