Logo for Gather AI

Principal Data Engineer

Role overview

Qualifications

  • 10+ years in data engineering, with 3+ years architecting data platforms for data products, analytics, or AI-driven products.
  • Proven experience building a greenfield data warehouse and leading an OLTP to OLAP transition, not just maintaining an existing one.
  • Deep expertise designing multi-layer transformation architectures and reusable frameworks that scale across multiple product areas.
  • Expert SQL and dbt, hands-on ELT and orchestration, and large-scale or streaming data experience.

Responsibilities

  • Architect a greenfield, multi-layer data warehouse that separates analytical workloads from production OLTP traffic.
  • Deliver a governed, self-service data-access layer for internal consumers.
  • Build a semantic and metrics layer to ensure metrics remain consistent across dashboards and products.
  • Own the quality bar, ensuring high availability, traceability, and data integrity.

About the company

Gather AI logo

Gather AI

Transportation, Logistics & Supply Chain

Gather AI is a warehouse automation company that has created the world's first drone-powered inventory monitoring solution. Cutting-edge warehouses use Gather AI’s solution to decrease the cost of inventory accuracy, improve productivity and boost revenue. The Gather AI solution creates a digital representation of the warehouse. Warehouse managers are able to take inventory and view the results (including pictures) from a dashboard. Managers can quickly identify inventory inaccuracies and fix them. They’re also able to trace the history of a pallet or location. Because warehouse inventory is more accurate than traditional cycle counting, warehouses can improve on-time order fulfillment, reduce shrinkage and better utilize their teams. Additionally, warehouses are able to improve safety as workers are no longer climbing on lift trucks to scan inventory. With Gather AI’s solution, warehouses in third-party logistics, retail distribution, manufacturing and food & beverage have seen an 8% inventory accuracy increase, an increase in putaway efficiency resulting in savings of over $250K and a doubling of sales. With no infrastructure changes, Gather AI makes overcoming inventory challenges easy. Learn more at www.gather.ai.

Company details

Company typeStartup
IndustryTransportation, Logistics & Supply Chain
Company size11 - 50

Your match analysis

See how your profile stacks up against this role.

We compared the job requirements to your profile to show where you're strong and where you fall short.

Job description

About Us

Are you ready to build the future of the supply chain? At Gather AI, we're not just creating software; we're pioneering a new era of warehouse intelligence. We've developed a groundbreaking, vision-powered platform that uses autonomous drones and existing equipment to capture real-time data, completely digitizing workflows that have historically been manual and error-prone. This means facilities operate smarter, safer, and more efficiently, ultimately redefining "on-time, in full" delivery.

If you're looking for an opportunity to contribute to truly transformative technology and make a significant impact in a vital industry, Gather AI is the place for you. We're leading the charge in the rapidly evolving robotics industry, and we invite you to join us in reshaping the global supply chain, one intelligent warehouse at a time.

About the Team

You'll join the Data Platform team at its inception, helping establish the foundation from day one . Today, production and analytical workloads share a single database, and every product team defines its own metrics. This team exists to fix that: designing the warehouse, the transformation layers, and the semantic model that every product and dashboard will build on going forward, in close partnership with product, engineering, and security.

About the Role

Most data platform roles ask you to extend something someone else has already built. This one starts with a blank canvas.

As Principal Data Engineer, you'll architect Gather AI's data foundation from the ground up: separating analytical workloads from live production traffic, building a semantic layer so metrics are defined once and stay consistent everywhere, and linking structured records to real drone imagery and video with full traceability. You'll prove the model end to end on Gather's drone product, then generalize it so every new product extends the foundation instead of rebuilding it, all while working as a Principal-level individual contributor with real influence across engineering, product, and leadership.

What You'll Do

  • Architect a greenfield, multi-layer data warehouse (raw, refined, serving) that separates analytical workloads from production OLTP traffic.
  • Deliver a governed, self-service data-access layer for internal consumers first (Product, CSM, Deployment/Operations, and Leadership) as Phase 1, ahead of customer-facing conversational analytics.
  • Build a semantic and metrics layer so every metric, such as "scan accuracy by site," is defined once in code and stays identical across every dashboard and product, making self-service safe from metric drift.
  • Own the quality bar: 99%+ availability SLA with freshness guarantees, 100% traceability, zero cross-tenant leakage, 99.5%+ pipeline success, and no data loss. 
  • Design tenant isolation, per-tenant cost attribution, and schema and row-level RBAC to scale toward hundreds of tenants (300+ target), not today's fleet size.
  • Own data-ingestion correctness at the boundary with the integration/backend team, covering data contracts, schema validation, and pipeline quality, so WMS data lands in the right place, shape, and time across WMS versions.
  • Stand up a data catalog and lineage layer (Purview as the Azure-native fit, DataHub as the open-source alternative) so every consumer can find data, see ownership, and trace lineage when a metric looks wrong.
  • Prove the foundation end to end on Gather's drone product, then generalize it so each new product extends the model instead of rebuilding it
  • Act as the connective tissue between product and ML (3DCC, damage detection). Link structured records to unstructured drone imagery and video with full traceability, and stand up the data-infra readiness for feature stores and annotation pipelines on one trusted foundation.

What You'll Need

  • 10+ years in data engineering, with 3+ years architecting data platforms for data products, analytics, or AI-driven products.
  • Proven experience building a greenfield data warehouse and leading an OLTP to OLAP transition, not just maintaining an existing one.
  • Deep expertise designing multi-layer transformation architectures and reusable frameworks that scale across multiple product areas.
  • Expert SQL and dbt, hands-on ELT and orchestration, and large-scale or streaming data experience.
  • Production experience on a major cloud (Azure preferred, AWS or GCP acceptable), plus infrastructure as code and CI/CD.
  • Track record with data quality, security, governance, and multi-tenancy in production environments.
  • Data transformation and modeling that turns raw multi-source data into refined, serving-ready datasets (raw to refined to serving).
  • Pipeline orchestration and workflow automation for scheduling, dependency management, and reliable execution across data flows.
  • Large-scale and distributed processing of high-volume batch data.
  • Real-time and streaming ingestion that captures and processes event data as it arrives.
  • Semantic and metrics-layer design that defines business metrics once and serves them consistently to every consumer.
  • Serving-layer optimization for fast, low-latency consumption through wide and flattened tables and pre-computed metrics.
  • Cloud data engineering and infrastructure automation that provisions, deploys, and operates the platform reproducibly (cloud-native, infrastructure as code, CI/CD).
  • Data quality, observability, and lineage that ensure trust, freshness, and end-to-end traceability.
  • Security, governance, and multi-tenancy including tenant isolation, access control, and resiliency.
  • Multimodal data integration that links structured records to unstructured image and video (drone captures) with traceability.

Ways of Working

  • Treats data as a product for internal consumers, not just a pipeline feeding dashboards.
  • Comfortable making long-lead architecture calls (platform, isolation model) with incomplete consensus.
  • Strong cross-functional collaborator, works closely with integration/backend, ML, product, customer success teams and internal analytics consumers.

Nice to Have

  • Experience modeling structured data linked to unstructured or blob data such as images, video, or sensor files
  • Experience with feature stores, annotation pipelines, or ML data infrastructure supporting computer vision products.
  • IoT, edge, or device-telemetry background
  • BI or presentation-layer and dashboard design experience
  • Warehousing, logistics, or supply-chain domain knowledge

Apply once. Then go straight to the hiring manager.

After you apply, unlock the direct contact details of the people who actually make the call. A quick follow-up makes you 5x more likely to land an interview.

MR

Marcus Rivera

Chief Revenue Officer

m.rivera@company.com
linkedin.com/in/marcusrivera
Unlocked after you apply
Β·

Data Engineer Related jobs

Other jobs at Gather AI

Premium

Reach out to the hiring manager directly.

Gain access to the contact details of the hiring managers who actually decide, and reach out to network with them directly. That, plus more when you upgrade:

  • Full match report with fit score and gaps
  • Career diagnostics on how recruiters read you
  • Curated company matches and warm intros
  • 48h early access to new roles

Cancel anytime.