Enabling better, smarter, safer healthcare to improve lives.
Data Analytics Data Engineer
Location
United States
Posted
3 days ago
Salary
$107.6K - $148.0K / year
Seniority
Mid Level
Job Description
Data Analytics Data Engineer
Solventum
Role Description At Solventum, we enable better, smarter, safer healthcare to improve lives. As a new company with a long legacy of creating breakthrough solutions for our customers’ toughest challenges, we pioneer game-changing innovations at the intersection of health, material and data science that change patients' lives for the better while enabling healthcare professionals to perform at their best. As a Data Engineer, you will have the opportunity to tap into your curiosity and collaborate with some of the most innovative and diverse people around the world. Here, you will make a significant impact by shaping and delivering robust data analytics solutions. Here, you will make an impact: - Design & Development: Architect, build, and optimize scalable and reliable data pipelines using tools like Fivetran, Informatica, AWS Glue, and custom Python scripts. - Data Modeling & Warehousing: Design and implement data models within our Snowflake data warehouse, ensuring data is accurate, accessible, and optimized for analytics. - System Integration: Lead the integration of complex data sources from various enterprise applications, including ERPs (SAP S/4HANA, MS Dynamics, BPCS) and SaaS platforms (Salesforce, Workday, Concur). - Collaboration: Partner with data analysts, business intelligence developers, and business stakeholders to understand data requirements and deliver effective solutions. - Operational Excellence: Establish and maintain data quality standards, monitor production data pipelines, and troubleshoot complex data issues to ensure high availability and performance. - Strategy & Innovation: Stay current with emerging technologies and industry trends to continuously improve our data infrastructure and capabilities. Qualifications - Bachelor’s Degree or higher AND 7+ years of data analytics experience OR High School Diploma/GED AND 11+ years of Information systems / Analytics application Consulting experience - 6+ years of strong experience with SQL and ability to write efficient code for high volume data processing - 3+ years of strong experience with Snowflake and dbt cloud - 6+ years of hands-on experience with data modeling design and implementation - 3+ years with AWS tools (S3, AWS Glue, Airflow, Lambda, Step function etc.), Informatica IICS or Fivetran/HVR - 3+ years working directly with subject matter experts in both business and technology domains - 2+ years with ERP applications - preferably SAP S4, MS Dynamics, Oracle and or BPCS - 2+ years of hands-on experience with Salesforce, Workday, Ariba, Concur or any other Enterprise application - 2+ years working with business and technical leaders to design, build and implement analytics solutions across a Business Intelligence Stack (Snowflake, SQL, Power BI/Fabric, AWS) Requirements - Snowflake is strongly preferred - Experience with Machine Learning tools and processes - Experience with Infrastructure as Code (IaC) principles and tools (e.g., Terraform, CloudFormation) - Travel: Occasional travel may be required up to 10 Domestic; international travel upon request - Relocation Assistance: is not authorized - Location: Remote - Must be legally authorized to work in the country of employment without sponsorship for employment visa status (e.g., H1B status) Benefits - Competitive pay and benefits - Medical, Dental & Vision - Health Savings Accounts - Health Care & Dependent Care Flexible Spending Accounts - Disability Benefits - Life Insurance - Voluntary Benefits - Paid Absences - Retirement Benefits
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