Lead ML/AI Operations Engineer - Evinova

US - Gaithersburg - MD, United States

AstraZeneca

AstraZeneca is a global, science-led biopharmaceutical business and our innovative medicines are used by millions of patients worldwide.

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Job Title: Lead Machine Learning/Artificial Intelligence Operations Engineer - Evinova
Location: Gaithersburg, MD

At AstraZeneca, we pride ourselves on crafting a collaborative culture that champions knowledge-sharing, ambitious thinking and innovation – ultimately providing employees with the opportunity to work across teams, functions and even the globe. 

Recognizing the importance of individualized flexibility, our ways of working allow employees to balance personal and work commitments while ensuring we continue to create a strong culture of collaboration and teamwork by engaging face-to-face in our offices 3 days a week. Our head is purposely designed with collaboration in mind, providing space where teams can come together to strategize, brainstorm and connect on key projects. 

Are you ready to be part of the future of healthcare? Are you able to think big, be bold and harness the power of digital and AI to tackle longstanding life sciences challenges?  Then Evinova, a new healthtech business part of the AstraZeneca Group might be for you! 

Evinova delivers market-leading digital health solutions that are science-based, evidence-led and human experience-driven. Smart risks and quick decisions come together to accelerate innovation across the life sciences sector. Be part of a diverse team that pushes the boundaries of science by digitally empowering a deeper understanding of the patients we’re helping. Launch innovative digital solutions that improve the patient experience and deliver better health outcomes. Together, we have the opportunity to combine deep scientific expertise with digital and artificial intelligence to serve the wider healthcare community and create new standards across the sector.

Introduction to Role:

The Machine Learning and Artificial Intelligence Operations team (ML/AI Ops) is a newly formed team of battle-tested and proven SaaS ML/AI developers and operators that will spearhead the design, creation, and operational excellence of our entire ML/AI data and computational AWS ecosystem to catalyze and accelerate science led innovations through our pharmaceutical clinical SaaS products.

This team is responsible and accountable for the design, implementation, deployment, health and performance of all algorithms, models, ML/AI operations (MLOps, AIOps, and LLMOps) and Data Science Platform. We manage ML/AI and broader cloud resources, automating operations through infrastructure-as-code and CI/CD pipelines, and ensure best-in-class operations – striving to push even beyond mere compliance with industry standards such as Good Clinical Practices (GCP) and Good Machine Learning Practice (GMLP).

On the human side of the equation, our team forges deep relationships across broader engineering, design, product and science organizations and are quintessential and consummate interdisciplinary teammates and collaborators that can build on our deep heritage within global pharmaceutical clinical trials to drive State-of-the-art (SOTA) AI product experiences with tangible and quantifiable product and business operations impact.

As a Lead ML/AI Operations Engineer for Study Design, Planning and Operations Optimization on our team, you will lead the development and management of MLOps systems for our trial management and optimization SaaS product. You will collaborate closely with data scientists to transition projects from embryonic research into production-grade AI capabilities, applying advanced tools and frameworks to optimize model deployment, governance, and infrastructure performance.

This position requires a deep understanding of cloud-native ML/AI Ops methodologies and technologies, AWS infrastructure, and the unique demands of regulated industries, making it a cornerstone of our success in delivering impactful solutions to the pharmaceutical industry.

Accountabilities:

Operational Excellence

  • Lead by example in creating high-performance, mission-focused and interdisciplinary teams/culture founded on trust, mutual respect, growth mindsets, and an obsession for building extraordinary products with extraordinary people.
  • Lead by example in using reactive firefighting to drive the creation of proactive capability and process enhancements that ensures enduring value creation and analytic compounding interest.
  • Design and implement resilient cloud ML/AI operational capabilities to improve our system A-bilities (Learnability, Flexibility, Extendibility, Interoperability, Scalability).
  • Drive precision and systemic cost efficiency, optimized system performance, and risk mitigation with a data-driven strategy, comprehensive analytics, and predictive capabilities at the tree-and-forest level of our ML/AI systems, workloads and processes.

ML/AI Cloud Operations and Engineering

  • Develop and manage MLOps/AIOps/LLMOps systems for Study Insights, Optimization and Milestone forecasting.
  • Partner closely with data scientists to shepherd projects from embryonic research stages into production-grade ML/AI capabilities.
  • Leverage and teach modern tools, libraries, frameworks and standard processes to design, validate, deploy and monitor data pipelines and models in production (examples include, but are not limited to AWS Sagemaker, MLflow, CML, Airflow, DVC, Weights and Biases, FastAPI, Litserve, Deepchecks, Evidently, Fiddler, Manifold)
  • Establish systems and protocols for entire model development lifecycle across a diverse set of algorithms, conventional statistical models, ML and AI/GenAI models to ensure best-in-class Machine Learning Practice (MLP).
  • Enhance system scalability, reliability, and performance through effective infrastructure and process management.
  • Ensure that any prediction we make is backed by deep exploratory data analysis and evidence, interpretable, explainable, safe, and actionable.

Essential Skills/Experience:

  • Minimum of 5 years in ML/AI operations engineering roles.
  • HS Diploma and 8 years of experience in Engineering/IT solutions OR BA/BS Degree and 5 years of experience or equivalent capabilities.
  • Proven track record of deploying algorithms and machine learning models into production environments.
  • Demonstrated ability to work closely with multi-functional teams, particularly data scientists.
  • Deep understanding of the Data Science Lifecycle (DSLC) and the ability to shepherd data science projects from inception to production within the platform architecture.
  • Expert in MLflow, SageMaker, Kubeflow or Argo, DVC, Weights and Biases, and other relevant platforms.
  • Strong coding abilities in Python/JavaScript/TypeScript and familiarity with FastAPI and Litserve.
  • Expert in AWS services and containerization technologies like Docker and Kubernetes.
  • Experience with LLMOps frameworks such as LlamaIndex and LangChain.
  • Ability to collaborate effectively with engineering, design, product, and science teams.
  • Strong written and verbal communication skills for reporting and documentation.
  • Customer-obsessed and passionate about building products that solve real-world problems.
  • Highly organized and meticulous, with the ability to manage multiple initiatives and deadlines.
  • Collaborative and inclusive, fostering a positive team culture where creativity and innovation thrive.

Desirable Skills/Experience:

  • 7+ years in ML/AI operations engineering roles.

Evinova draws on AstraZeneca’s deep experience developing novel therapeutics, informed by insights from thousands of patients and clinical researchers. Together, we can accelerate the delivery of life-changing medicines, improve the design and delivery of clinical trials for better patient experiences and outcomes, and think more holistically about patient care before, during and after treatment.  We know that regulators, healthcare professionals and care teams at clinical trial sites do not want a fragmented approach. They do not want a future where every pharmaceutical company provides their own, different digital solutions. They want solutions that work across the sector, simplify their workload and benefit patients broadly. By bringing our solutions to the wider healthcare community, we can help build more unified approaches to how we all develop and deploy digital technologies, better serving our teams, physicians and ultimately patients.  Evinova represents a unique opportunity to deliver meaningful outcomes with digital and AI to serve the wider healthcare community and create new standards for the sector.  Join us on our journey of building a new kind of healttech business to reset expectations of what a bio-pharmaceutical company can be. This means we’re opening new ways to work, pioneering cutting edge methods and bringing unexpected teams together. Interested? Come and join our journey.

Where can I find out more?

Total Rewards:

The annual base pay for this position ranges from $119,628.00to $179,442.00. Hourly and salaried non-exempt employees will also be paid overtime pay when working qualifying overtime hours. Base pay offered may vary depending on multiple individualized factors, including market location, job-related knowledge, skills, and experience.  In addition, our positions offer a short-term incentive bonus opportunity; eligibility to participate in our equity-based long-term incentive program (salaried roles), to receive a retirement contribution (hourly roles), and commission payment eligibility (sales roles). Benefits offered included a qualified retirement program [401(k) plan]; paid vacation and holidays; paid leaves; and, health benefits including medical, prescription drug, dental, and vision coverage in accordance with the terms and conditions of the applicable plans. Additional details of participation in these benefit plans will be provided if an employee receives an offer of employment. If hired, employee will be in an “at-will position” and the Company reserves the right to modify base pay (as well as any other discretionary payment or compensation program) at any time, including for reasons related to individual performance, Company or individual department/team performance, and market factors. 

AstraZeneca is an equal opportunity employer that is committed to diversity and inclusion and providing a workplace that is free from discrimination. AstraZeneca is committed to accommodating persons with disabilities. Such accommodation is available on request in respect of all aspects of the recruitment, assessment and selection process and may be requested by emailing AZCHumanResources@astrazeneca.com.

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Date Posted

19-Dec-2024

Closing Date

05-Jan-2025Our mission is to build an inclusive and equitable environment. We want people to feel they belong at AstraZeneca and Alexion, starting with our recruitment process. We welcome and consider applications from all qualified candidates, regardless of characteristics. We offer reasonable adjustments/accommodations to help all candidates to perform at their best. If you have a need for any adjustments/accommodations, please complete the section in the application form.
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Tags: AIOps Airflow Architecture AWS CI/CD Data analysis Data pipelines Docker EDA Engineering FastAPI GCP Generative AI JavaScript Kubeflow Kubernetes LangChain LLMOps Machine Learning MLFlow ML models MLOps Model deployment Pharma Pipelines Python Research SageMaker Statistics TypeScript

Perks/benefits: Career development Equity / stock options Health care Salary bonus Startup environment

Region: North America
Country: United States

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