Senior Data Platform Engineer
ARCHIVED
We can't find an active application page for this role right now. It may reopen or be listed elsewhere. Use Next Steps to search for an active apply link and similar live jobs.
Government-backed Abu Dhabi organization focused on advanced technology R&D (est. 2020), defining strategy, funding, and policies across AI, robotics, and emerging technologies. Oversees the full innovation lifecycle - from research and programs to commercialization - through dedicated applied research, innovation, and venture entities.
The first production system is an AI-enabled operational platform that gives a senior leadership team a shared situational picture, an AI-classified signal feed, a daily AI-generated briefing, and an action accountability tracker. MVP target: operational within two weeks of team formation. The platform is also the technical foundation for all subsequent Data & AI systems across the organization.
Responsibilities
Build and operate the data platform that powers the DAIO's (Data & AI Office) production systems and the long-term data estate. In the immediate term: the signal ingestion pipeline, data quality layer, and observability for all data flows. In the medium term: the enterprise data warehouse on Azure and sovereign compute, the metadata catalog, and the governed data access layer for AI agents.
WHAT THIS ROLE BUILDS & OWNS
Signal ingestion pipeline — 30-minute polling job across all defined open-source feeds (news wires, maritime AIS, financial feeds, social/keyword feeds)
Deduplication and normalization layer — common signal schema across all sources
Ingestion observability — every item logged with source, timestamp, processing status, and failure reason; no silent drops
PostgreSQL schema deployment and migration scripts (Alembic)
Azure Redis Cache — session management and ingestion queue configuration
Phase2 data warehouse: ADLS + Synapse/Fabric, data ingestion from SAP, M365, and ATRC enterprise systems
Data quality monitoring — automated checks on signal completeness, classification coverage, and freshness
KEY DECISIONS THIS ROLE OWNS
Polling frequency, retry logic, and backoff strategy for each signal source
Deduplication key design — what makes a signal unique across sources
Whether a data quality failure is a warning (flag it) or a stop (pause ingestion)
Schema migration approach — blue-green, Alembic auto-migrate, or manual rollout
Data retention schedule — what is archived, what is purged, and when
WHAT THIS ROLE DOES NOT DO
Define the data model or classification schema — that is the Head of Data Architecture
Build the application API endpoints — that is the Backend/Systems Engineers
Write AI prompts or tune classification outputs
Manage cloud infrastructure provisioning — that is a DevOps/infra function
Skills Required
Microsoft data stack - Fabric or Synapse;
Building and supporting data pipelines(Airflow or similar);
Observability and monitoring(prometheus/grafana/etc)
Engagement Model: Direct Independent Contractor (Please read carefully)
This is an independent contractor opportunity based on a direct contractual relationship between Zoolatech and the individual service provider.
To facilitate this direct partnership, we engage with professionals who are registered and operate as a sole proprietorship, private entrepreneur, or an equivalent self-employment status in your country.
Please note, our model does not accommodate contracts through third-party intermediaries such as agencies, incubators, or umbrella companies. The essential requirement is your ability to enter into a service agreement and invoice Zoolatech directly. This is not an offer of direct employment
Please note that only candidates whose profiles closely match our requirements will be contacted.
J-18808-Ljbffr