Data & Applied M/L Engineer
Listed on 2026-01-25
-
IT/Tech
Data Engineer, Data Analyst, Data Science Manager
Overview
At Gatekeeper Systems, we’re revolutionizing retail loss prevention and customer safety through a powerful combination of physical deterrents and cutting-edge technology—including AI, computer vision, and facial recognition. As a global leader with over 25 years of industry excellence and a growing, diverse team of 500 employees across offices in North America, Europe, Australia, and Asia, we’re driven by innovation, integrity, and impact.
Join us and be part of a mission-focused team that’s making a real difference in the future of retail, providing innovative solutions and services that redefine industry standards.
Join the team at Gatekeeper Systems and watch your career grow! We offer competitive compensation and benefits packages that include:
- Attractive Total Compensation Package, including annual bonus
- Comprehensive healthcare benefits including medical, dental, and vision coverage;
Life/ADD/LTD insurance; FSA/HSA options. - 401(k) Plan with Employer Match
- Generous Paid Time Off (PTO) policy
- Observance of 11 paid company holidays
- Various Employee Engagement Events
- Exciting Growth Opportunities
- Positive Company Culture
This role bridges the gap between core data engineering and practical machine learning applications. Primarily, you will be a data platform engineer responsible for owning core data pipelines, data models, and quality controls that power Gatekeeper analytics and future data products. Secondarily, you will drive the production lifecycle of our shopping cart computer-vision feature. You will orchestrate the data workflows that interface with our Machine Learned models to ensure accurate cart classification, while leveraging the Face First ML team for deeper capacity.
You will collaborate with BI Analysts, software engineers, and product teams to transform raw data into actionable insights.
- Pipeline Design & Operation:
Design, build, and operate scalable ELT/ETL pipelines that ingest data from IoT/smart-cart telemetry, video events, operational systems, and external partners into our cloud data lake/warehouse. - Infrastructure Management:
Build and maintain robust data infrastructure, including databases (SQL and No
SQL), data warehouses, and data integration solutions. - Data Modeling:
Establish canonical data models and definitions (schemas, event taxonomy, metrics) so teams can trust and reuse the same data across products, BI, and analytics. - Data Quality Assurance:
Own data quality end-to-end by implementing validation rules, automated tests, anomaly detection, and monitoring/alerting to prevent and quickly detect regressions. - Consistency & Governance:
Drive data consistency improvements across systems (naming, identifiers, timestamps, joins, deduplication) and document data contract expectations with producing teams. - Root Cause Analysis:
Troubleshoot pipeline and data issues, perform root-cause analysis, and implement durable fixes that improve reliability and reduce operational load. - Collaboration & Analytics:
Partner with BI Analysts and Product teams to create curated datasets and self-serve analytics foundations (e.g., marts/semantic layer), as well as support internally facing dashboards to communicate system health.
- Lifecycle Management:
Own the production lifecycle for the cart classification capability, including data collection/labeling workflows, evaluation, threshold tuning, and safe release/rollback processes. - Pipeline Implementation:
Implement and optimize machine learning pipelines, from feature engineering and model training to deployment and monitoring in production. - Evaluation & Monitoring:
Build and maintain an evaluation harness (offline metrics + repeatable test sets) and ongoing monitoring (accuracy drift, data drift, false positive/negative analysis). - Cross-Team
Collaboration:
Collaborate with the Face First ML team to incorporate improvements (model updates, feature changes) while keeping Gatekeeper’s production integration stable. - Integration:
Work with software engineers to ensure…
(If this job is in fact in your jurisdiction, then you may be using a Proxy or VPN to access this site, and to progress further, you should change your connectivity to another mobile device or PC).