Data Analytics Engineer

Data Analytics Engineer

Freelance 60000 - 80000 £ / year (est.) Home office (partial)
Orbital

At a Glance

  • Tasks: Design and build analytics foundations for a groundbreaking real estate product from scratch.
  • Company: Join Orbital Copilot, an innovative AI-driven company transforming real estate transactions.
  • Benefits: Competitive pay, flexible work options, and a chance to shape the future of real estate.
  • Other info: Dynamic startup culture with opportunities for personal growth and development.
  • Why this job: Be a key player in revolutionising real estate with cutting-edge technology and impactful solutions.
  • Qualifications: Experience in data architecture, cloud environments, and strong SQL skills required.

The predicted salary is between 60000 - 80000 £ per year.

We’re on a mission to make real estate transactions smarter, faster, and friction-free. Real estate is the world’s largest asset class, yet the legal processes and tools behind it remain slow, manual, and underinvested. Lawyers must review dense documents line by line and piece together information across silos, all while clients demand faster, more transparent due diligence. That where we come in. Orbital Copilot is the AI assistant built exclusively for commercial real estate law. Developed with former practicing real estate lawyers, it accelerates complex due diligence by up to 70% while delivering legal-grade precision. We’ve just raised a $60m Series B to accelerate our UK/US expansion. We’re trusted by leading firms like Goodwin and BCLP to remove the busywork so legal teams can focus on what they do best: applying sharp legal judgment, delivering standout client service, and getting deals over the line faster.

Working at Orbital means joining a team that's reimagining how real estate transactions get done - moving fast, working collaboratively, and giving people the ownership to make a real impact from day one.

Role Overview

This is a solo greenfield build… one engineer, Postgres source, 31 July launch. We’re looking for a Senior Data Analytics Engineer (Contract) to design and build the analytics foundations for a new greenfield product. There is no existing infrastructure: no pipelines, no operational data store, no semantic layer. You are starting from zero and leaving behind something clean, well‑documented, and extendable. The core challenge is architectural: taking a live Postgres product database as the source of truth, understanding how to extract from it reliably as its schema evolves, standing up well‑structured operational data stores, and making sound decisions about where data lives, how it flows, and how it is queried. The analytics and visualisation layer, internal dashboards for engineering, product, and CS teams, plus customer‑facing usage reporting for law firm clients, sits on top of those foundations and is equally in scope. This is a Senior role because you are leading this build independently. Ciaran (Head of Product Engineering) is your day‑to‑day contact and sounding board, but he is not a data engineer and will not be directing the technical work. The architecture, the tooling decisions, and the quality of what gets built are yours to own. This is an AI‑first environment. We use Claude Code and coding agents extensively. Good documentation here means documentation written for a coding agent: how to access systems, how to extend pipelines, why decisions were made. That is the handover standard.

What this role is not

We are not looking for someone who will build an overblown lakehouse. We are not looking for a pure analytics or BI engineer who is great at SQL and dashboards but cannot stand up cloud infrastructure independently. And we are not looking for someone who needs a surrounding data team or close technical direction to operate. The right person is a senior builder: self‑sufficient, architecturally minded, and pragmatic enough to build something clean that a coding agent can extend after they leave.

What you will be doing

  • Assess the Postgres product database and design an analytics architecture appropriate for our current scale: operational data stores, extraction strategy, schema isolation, and semantic layer, without over‑engineering.
  • Build reliable extraction pipelines from Postgres and other operational sources that are resilient to schema drift and isolated from the application layer.
  • Design and implement a well‑structured operational data store: clean schemas, stable marts, and a semantic layer that teams across the business can query and trust.
  • Define canonical business metrics: product usage, customer health, LLM token and cost telemetry, document volume, workflow adoption, latency, and engineering KPIs, and make them consistently available across the business.
  • Stand up internal analytics for engineering, product, CS, and leadership, and customer‑facing usage dashboards for law firm clients showing their own usage and cost data.
  • Evaluate and recommend tooling for transformation, the BI and semantic layer (Omni Analytics is being evaluated alongside Metabase), and cloud infrastructure: bring your own experience and opinions.
  • Set up secure data access, scheduled jobs, object storage, secrets management, monitoring, and cost‑aware infrastructure in AWS or Azure independently.
  • Establish data quality checks and pipeline observability from the start.
  • Write documentation for AI coding agents: how to access, understand, and extend the systems you build, with context on the decisions you made.
  • Attend daily standup and work closely with Ciaran throughout, with a clean handover at the end of the engagement.

You should apply if

  • You have led or owned the architecture of a data platform: you have made the decisions on how data flows, where it lives, and how it is accessed, not just executed a design handed to you.
  • You have extracted from a live operational relational database (Postgres is ideal) and dealt with schema drift in production. This is the core of the technical challenge and the experience that matters most here.
  • You can independently set up a cloud data environment in AWS: data access, scheduled jobs, object storage, secrets, monitoring, and cost controls, without needing a platform team around you.
  • You have built a data platform from scratch or near‑scratch before and can describe the decisions you made at the start.
  • You are strong in both data engineering (pipelines, infrastructure, operational data stores) and analytics engineering (semantic layer, metric definitions, clean queryable data models).
  • You have deep SQL and data modelling capability: schema design, mart design, and semantic layer definition from scratch.
  • You understand BI and semantic‑layer tooling (Omni Analytics, Looker, Metabase, Cube, or similar) and can make a justified recommendation.
  • You are pragmatic about tooling: you will not reach for a full lakehouse or managed warehouse when something lighter and more maintainable serves the purpose.
  • You write documentation that a coding agent can act on independently, not just a README for a human.
  • You are available to start by 1 July 2026.

It would also be great if you have

  • Experience building customer‑facing or embedded analytics in a B2B SaaS product.
  • Experience instrumenting AI/LLM usage: token counts, cost tracking, latency, and evaluation datasets.
  • Familiarity with data residency requirements... we have strict UK/EU and US data residency obligations.
  • Experience in ISO 27001 or SOC 2 compliant environments.
  • Experience with multi‑tenant reporting, row‑level security, and customer data isolation.
  • Startup or early‑stage background.
  • Experience with transformation tooling such as dbt or equivalent code‑first approaches.

Security is everyone’s responsibility at Orbital. We ask all team members to follow our security policies, complete regular awareness training, and handle sensitive data with care in line with ISO 27001 standards. Spot something unusual? Reporting risks or incidents quickly helps us maintain the strong culture of security and compliance we all depend on. At Orbital, we’re committed to building a diverse and inclusive team. We especially welcome applications from people who are traditionally underrepresented in tech. Even if you don’t meet every single requirement, or if the right role isn’t listed yet, we’d still love to hear from you.

Data Analytics Engineer employer: Orbital

At Orbital, we pride ourselves on being an innovative employer that empowers our team members to take ownership and make a significant impact from day one. Our collaborative work culture fosters creativity and agility, while our commitment to employee growth ensures that you will have ample opportunities to develop your skills in a cutting-edge AI-first environment. With a focus on diversity and inclusion, we welcome unique perspectives and are dedicated to creating a supportive workplace for all.

Orbital

Contact Details:

Orbital Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Data Analytics Engineer

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We think you need these skills to ace Data Analytics Engineer

Postgres
Data Architecture
Data Extraction Pipelines
Operational Data Stores
Schema Design
Cloud Infrastructure (AWS or Azure)
Data Quality Checks

Some tips for your application 🫡

Showcase Your Projects:When applying for a freelance data science role like Data Analytics Engineer at Orbital, it’s crucial to highlight your projects. Include a portfolio that features at least two or three projects involving data analysis, machine learning, or visualisation. Make sure to describe the tools and methodologies you used, so we can see your skills in action!

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How to prepare for a job interview at Orbital

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