About this role
Our client is a fast growing Property Tech AI company
About the Role
They are seeking a versatile Data & AI Engineer to build, deploy & maintain end-to-end data pipelines for downstream Gen AI applications. You'll design data models and transformations, build scalable ETL/ELT workflows, while learning fast and working on the AI agent space.
Key Responsibilities
Data Modeling & Pipeline development - Automate data ingestion from diverse sources (Databases, APIs, files, Sharepoint/ document management tools, URLs). Most files are expected to be unstructured documents with different file formats, tables, charts, process flows, schedules, construction layouts/drawings, etc. - Own chunking strategy, embedding, indexing all unstructured & structured data for efficient retrieval by downstream RAG/agent systems - Build, test, and maintain robust ETL/ELT workflows using Spark (batch & streaming) - Define and implement logical/physical data models and schemas. Develop schema mapping and data dictionary artifacts for cross-system consistency Gen AI Integration - Instrument data pipelines to surface real-time context into LLM prompts - Implement prompt engineering and RAG for varied workflows within the RE/Construction industry vertical Observability & Governance - Implement monitoring, alerting, and logging (data quality, latency, errors) - Apply access controls and data privacy safeguards (e.g., Unity Catalog, IAM) CI/CD & Automation - Develop automated testing, versioning, and deployment (Azure DevOps, GitHub Actions, Prefect/Airflow) - Maintain reproducible environments with infrastructure as code (Terraform, ARM templates) Required Skills & Experience - 5 years in Data Engineering or similar role, with at least 12-24 months of exposure to building pipelines for unstructured data extraction including document processing with OCR, cloud-native solutions and chunking, indexing etc. for downstream consumption by RAG/ Gen AI applications. - Proficiency in Python, dlt for ETL/ELT pipeline, duckDB or equivalent tools for analytical in-process analysis, dvc for managing large files efficiently. - Solid SQL skills and experience designing and scaling relational databases.
Familiarity with non-relational column based databases is preferred. - Familiarity with Prefect is preferred or others (e.g. Azure Data Factory) - Proficiency with the Azure ecosystem. Should have worked on Azure services in production. - Familiarity with RAG indexing, chunking and storage across file types for efficient retrieval. - Strong Dev Ops/Git workflows and CI/CD (CircleCI / Azure DevOps) - Experience deploying ML artifacts using MLflow, Docker, or Kubernetes is good to have.
Bonus skillsets: - Experience with Computer vision based extraction or experience in building ML models for production - Knowledge of agentic AI system design - memory, tools, context, orchestration - Knowledge of data governance, privacy laws (GDPR) and enterprise security patterns They are an early-stage startup, so you are expected to wear many hats, working with things out of your comfort zone, but with real and direct impact in production. Why our client? - Fast-growing, revenue-generating proptech startup - Flat, no BS environment, high autonomy for the right talent - Steep learning opportunities in real world enterprise production use-cases - Remote work with quarterly meet-ups - Multi-market, multi-cultural client exposure Apply directly on RemoteJobs.org: https://remotejobs.org/remote-jobs/data-engineer-data-pipelines-rag-hyred