Staff Machine Learning Engineer
Company: Abbott Laboratories
Location: Chicago
Posted on: November 13, 2024
Job Description:
Our medical devices, with revenue of > $14B in 2021, is a
global leader and help more than 10,000 people have healthier
hearts, improve the quality of life for thousands of people living
with chronic pain and movement disorders, and liberate more than
500,000 people with diabetes from routine ---ngersticks.Working at
AbbottAt Abbott, you can do work that matters, grow, and learn,
care for yourself and family, be your true self and live a full
life. You'll also have access to:
- Career development with an international company where you can
grow the career you dream of.
- Free medical coverage for employees* via the Health Investment
Plan (HIP) PPO.
- An excellent retirement savings plan with high employer
contribution.
- Tuition reimbursement, the student debt program and education
benefit - an affordable and convenient path to getting a bachelor's
degree.
- A company recognized as a great place to work in dozens of
countries around the world and named one of the most admired
companies in the world by Fortune.
- A company that is recognized as one of the best big companies
to work for as well as a best place to work for diversity, working
mothers, female executives, and scientists.The OpportunityThis
Staff Data Engineer position works out of the Chicago, IL office in
the Medical Devices Digital Solutions organization.The Staff Data
Engineer role will work closely with cross-functional product teams
and be responsible for designing, developing, and deploying
state-of-the-art data engineering techniques and streamlined data
ingestion processes to extract valuable insights and intelligence
from large and complex medical datasets (structured and
unstructured data). The Staff Data Engineer will develop standards,
guidelines, and direction for data modeling and standardization
that will directly contribute to enhancing the quality of patient
care and developing innovative medical devices and therapy
solutions.WHAT YOU'LL DO
- Analyze data to identify trends and insights.
- Collaborate with product and engineering teams to define data
requirements and drive data-driven decision-making.
- Design and implement data models to effectively support various
product use cases.
- Design, implement, and maintain scalable and optimized data
architectures that meet evolving business needs.
- Evaluate and recommend appropriate data storage solutions,
ensuring data accessibility and integrity.
- Develop and continuously optimize data ingestion processes for
improved reliability and performance.
- Design, build, and maintain robust data pipelines and
platforms.
- Establish monitoring and alerting systems to proactively
identify and address potential data pipeline issues.
- Support data infrastructure needs such as cluster management
and permission.
- Develop and maintain internal tools to streamline data access
and analysis for all teams.
- Create and deliver documentation to educate product teams on
data best practices and tools.
- Communicate technical concepts effectively to both technical
and non-technical audiences.EDUCATION AND EXPERIENCE YOU'LL
BRINGRequired:
- Master's Degree in Data Science, Computer Science, Statistics,
or a related field plus 5 years of experience in data engineering
with a strong focus on data architecture and data ingestion.
- Experience in the Life Science Industry.
- Strong understanding of data modeling (conceptual, logical, and
physical) using different data modeling methodologies and analytics
concepts.
- Proven experience designing, building, and maintaining data
pipelines and platforms.
- Expertise in data integration, ETL tools, and data engineering
programming/scripting languages (Python, Scala, SQL) for data
preparation and analysis.
- Experience with Data Ops (VPCs, cluster management,
permissions, Databricks configurations, Terraform) in Cloud
Computing environments (e.g., AWS, Azure, GCP) and associated cloud
data platforms, cloud data warehouse technologies
(Snowflake/Redshift), and Advanced Analytical platforms (e.g.,
Dataiku and Databricks).
- Familiarity with data streaming technologies like Kafka and
Debezium.
- Proven expertise with data visualization tools (e.g., Tableau,
Power BI).
- Strong understanding of data security principles and best
practices.
- Experience with CI/CD pipelines and automation tools.
- Strong problem-solving and critical thinking skills.
- Excellent written and verbal communication skills to convey
complex technical concepts and findings to non-technical
stakeholders and collaborate effectively across teams.Preferred:
- Prior experience with healthcare domain data, including
Electronic Health Records (EHR).
- Experience with triple stores or graph databases (e.g.,
GraphDB, Stardog, Jena Fuseki).
- Proficient with building domain ontologies and relevant W3C
standards - RDF, RDFS, OWL, SKOS, SPARQL and associated Ontology
Editors (e.g., TopBraid Composer, Prot--g--).
- Experience with semantic validation languages (e.g. SHACL,
SPIN) and associated semantic software packages and frameworks
(e.g., Jena, Sesame, RDF4J, RDFLib).
- Knowledge of data governance and compliance policies.*
Participants who complete a short wellness assessment qualify for
FREE coverage in our HIP PPO medical plan. Free coverage applies in
the next calendar year.Learn more about our health and wellness
benefits, which provide the security to help you and your family
live full lives: Follow your career aspirations to Abbott for
diverse opportunities with a company that can help you build your
future and live your best life. Abbott is an Equal Opportunity
Employer, committed to employee diversity.Connect with us at , on
Facebook at and on Twitter @AbbottNews and @AbbottGlobal.The base
pay for this position is $95,000.00 - $190,000.00. In specific
locations, the pay range may vary from the range posted.
#J-18808-Ljbffr
Keywords: Abbott Laboratories, Chicago , Staff Machine Learning Engineer, Engineering , Chicago, Illinois
Didn't find what you're looking for? Search again!
Loading more jobs...