MCPNew: now works with Claude & AI assistants
parser

parser

Senior Analytics Engineer

Company

parser

Role

Senior Analytics Engineer

Job type

Full-time

Found on Mokaru

2 days ago

Share this job

Salary

Not disclosed by employer

Job description

Who is Parser?

Technology alone does not create impact—the right teams do. Founded in 2018, Parser is a boutique technology services and consulting firm helping global organisations solve complex business challenges through digital transformation, product development and AI enablement.

We are a fast-growing team of 340+ engineers and consultants across Europe (UK, Spain, Portugal), the Americas (US, Argentina, Uruguay, Colombia), and the Middle East. We combine global reach with a mindset focused on agility, senior expertise, and close collaboration.

We work as an extension of our clients’ teams, helping them define the right problems, shape solutions, and deliver technology-driven outcomes that create measurable business value. Our expertise spans software engineering, AI & data, product development, and customer experience, delivered by teams that combine strong technical depth with a consulting mindset.

Why Join Us?

If you are looking for a place where you can think beyond execution, take true ownership of outcomes, influence decisions, and continuously learn alongside top-tier specialists in a truly global environment, we’d love to meet you .

How will you impact?

You’ll be working at the intersection of data engineering and analytics. Where data engineers move and store data, you turn it into trusted, well-modelled, reusable data products. You’ll build and own the governed reporting and semantic layer that underpins decision-making across one of our enterprise client's Engineering functions - designing data so that anyone can self-serve reliable answers.

Key Responsibilities

  • Translate business problems into well-structured data models -conformed dimensions, facts and metric definitions that become the single source of truth for a domain.
  • Design, build and maintain transformation pipelines in dbt on Snowflake, orchestrated with Airflow, following clear layering. Ensure robust testing and monitoring.
  • Create and own semantic layers and semantic models, so each metric is defined once and consumed consistently across BI tools, applications and AI agents.
  • Partner directly with stakeholders to understand the decisions they’re trying to make and shape the data products that let them self-serve.
  • Make data consumable not only by people but by AI -building the clean models, governed metric definitions, documentation and data contracts that let LLMs and agents query data reliably and safely.
  • Rationalise and migrate legacy reporting (bespoke SQL and logic embedded in dashboards or applications) onto the governed layer.

Essential Requirements

  • Excellent SQL, with strong data-modelling experience — dimensional / Kimball-style design: star schemas, facts and dimensions, and slowly-changing dimensions.
  • Hands-on experience building and maintaining dbt models on Snowflake (sources, staging, marts, tests, documentation, exposures).
  • Experience orchestrating data pipelines with Airflow (or a comparable workflow orchestrator).
  • Experience creating semantic layers and semantic models (e.g. dbt Semantic Layer /MetricFlow, Cube, LookML, AtScale or similar), so metrics are defined once and reused.
  • A track record of modelling data to enable self-service analytics for non-technical users.
  • Experience designing data for consumption by AI / LLMs — clear semantic models, governed metric definitions, documentation and data contracts.
  • Demonstrable use of AI tools in your day-to-day work (e.g. AI coding assistants and LLMs for SQL, modelling, testing and documentation).
  • Strong testing, version control (Git) and CI/CD practice.

Desirable Requirements

  • Experience with BI tools (Tableau, Power BI) and migrating embedded BI logic into a governed layer.
  • Experience serving data to web applications (e.g. via a serving database such as Aurora) and to AI agents (e.g. tool / function calling, retrieval over governed data, MCP).
  • Familiarity with data cataloguing, lineage and governance.
  • Exposure to AWS and modern cloud data tooling.
  • Location: Hybrid. Office located in London. (Hayes area).
  • Frequency: 2-3 times a week at the office

Some of the benefits you'll enjoy working with us

  • The chance to join an organization with triple-digit growth that is changing the paradigm on how software products are built.
  • The opportunity to form part of an amazing, multicultural community of tech experts.
  • A highly competitive compensation package.
  • Medical insurance.

Come and join our #ParserCommunity

Follow us on Linkedin

Resume ExampleCover Letter Example

Explore more