Machine Learning Engineer at McKesson
Richmond, VA 23233, USA -
Full Time


Start Date

Immediate

Expiry Date

30 Jun, 25

Salary

199400.0

Posted On

01 Apr, 25

Experience

4 year(s) or above

Remote Job

Yes

Telecommute

Yes

Sponsor Visa

No

Skills

Spark, Teams, Interpersonal Skills, Data Science, Information Technology, Github, Agility, Infrastructure, R, Machine Learning, Kubernetes, Supply Chain, Airflow, Computer Science, Programming Languages, Tableau, Operations, Shell Scripting

Industry

Information Technology/IT

Description

McKesson is an impact-driven, Fortune 10 company that touches virtually every aspect of healthcare. We are known for delivering insights, products, and services that make quality care more accessible and affordable. Here, we focus on the health, happiness, and well-being of you and those we serve – we care.
What you do at McKesson matters. We foster a culture where you can grow, make an impact, and are empowered to bring new ideas. Together, we thrive as we shape the future of health for patients, our communities, and our people. If you want to be part of tomorrow’s health today, we want to hear from you.

MINIMUM REQUIREMENTS

Degree or equivalent and typically requires 4+ years of relevant experience.

CRITICAL SKILLS

  • Ability to work across the full stack and move fluidly between programming languages and MLOps technologies (e.g.: Python, Spark, R, DataBricks, Github, MLFlow, Airflow)
  • Understanding of Azure stack like Azure Machine Learning, Azure Data Factory, Azure Databricks, Azure Kubernetes Service, Azure Monitor etc.
  • Experience with cloud-based ML services like AutoML
  • Experience with visualization technologies (e.g.: RShiny, Python DASH, Tableau, PowerBI) and familiarity with data privacy standards, methodologies, and best practices
  • Experience in developing and maintaining APIs (e.g.: REST)
  • Experience in development, deployment and operations of AI/ML modelling of complex datasets
  • Expertise in Unix Shell scripting and Dependency driven job schedulers.

ADDITIONAL SKILLS

  • Excellent communication and interpersonal skills, with the ability to engage and influence with technical teams, business leaders, and external partners.
  • Positive and flexible attitude to enable adjusting to different needs in an ever-changing environment
  • Demonstrated expertise in building and deploying AI/Machine Learning solutions at scale.
  • Experience specifying infrastructure and Infrastructure as a code (e.g.: docker, Kubernetes, Terraform)
  • Experience with data in the drug supply chain and commercial domain within healthcare, pharma is a plus
  • Teams up and collaborates for speed, agility, delivery excellence and innovation
  • Strong negotiation and decision-making skills
    Education:
    Bachelor’s or master’s degree in computer science, Data Science, Information Technology, or a related field OR equivalent experience
Responsibilities
  • Implement scalable and reliable systems to handle model inference at scale.
  • Deploy and manage machine learning models in production environments.
  • Work on containerization and orchestration solutions for model deployment.
  • Participate in fast iteration cycles, and adapting to evolving project requirements
  • Collaborate with ML scientists, software engineers, data engineers and other stakeholders to develop and implement best practices for MLOps, including CI/CD pipelines, version control, model versioning, and automated model deployment
  • Collaborate with Engineering/DevOps teams to optimize infrastructure for machine learning workloads.
  • Manage and monitor machine learning infrastructure, ensuring high availability and performance.
  • Implement robust monitoring and logging solutions for tracking model performance and system health.
  • Monitor real-time performance of deployed models, analyze performance data, and proactively identify and address performance issues to ensure optimal model performance.
  • Troubleshoot and resolve production issues related to ML model deployment, performance, and scalability in a timely and efficient manner.
  • Implement security best practices for machine learning systems.
  • Ensure compliance with data protection and privacy regulations.
  • Collaborate with DevOps engineers to effectively manage cloud compute resources for ML model deployment, monitoring, and performance optimization.
  • Participate in the development of documentation, standard operating procedures, and guidelines related to MLOps processes, tools, and best practices
Loading...