Symbotic

Senior BI Reporting Developer – Supply Chain, Fulfillment Analytics

Symbotic

full-time

Posted on:

Location Type: Remote

Location: United States

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Tech Stack

About the role

  • Design and maintain pixel-perfect, performance-optimized reports and dashboards using Cognos Analytics and Framework Manager.
  • Build specialized reporting for warehouse labor performance, inventory availability, and end-to-end order fulfillment (picking/packing/shipping).
  • Translate Manhattan Active data structures into analytics-ready models; manage deployment, scheduling, and role-based security.
  • Troubleshoot data integrity issues and apply advanced SQL tuning to ensure high-performance report execution.
  • Maintain logic documentation and manage production enhancements, change requests, and release validation.
  • Support broader BI strategies by developing visualizations in Power BI or Looker Studio as needed.

Requirements

  • Bachelor's degree in marketing, Business Administration, or a related field
  • Minimum 5 years in BI/Analytics development with a focus on IBM Cognos.
  • Direct experience with Manhattan Active (WMS/OMS/TMS) data models and supply chain logistics.
  • Advanced SQL, relational database concepts, and report performance tuning.
  • Preferred Proficiency in Power BI (DAX) or Looker Studio.
  • Knowledge of ETL/ELT processes and data warehousing.
  • Experience in 3PL, e-commerce, or omnichannel fulfillment environments.
Benefits
  • Up to 10% travel may be required
  • Employees must have a valid driver’s license and the ability to drive and/or fly to client and other customer locations.
  • Employee is responsible for owning a credit card and managing expenses personally to be reimbursed on a bi-weekly basis.
Applicant Tracking System Keywords

Tip: use these terms in your resume and cover letter to boost ATS matches.

Hard Skills & Tools
Cognos AnalyticsFramework ManagerSQLPower BILooker StudioETLELTdata warehousingreport performance tuningdata modeling