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Data Engineer

Curve Analytics
London
2 days ago
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Role Description

Curve is a next-gen insights, analytics and technology consultancy that leverages digital consumer data and advanced technology to help businesses unlock consumer opportunities. Digital consumer data is powerful; it’s big, it’s real, and it’s always updating. We use a combination of in-house technology and bespoke solutions, powered by AI, to transform data from sources such as Social, Reviews, Search, and broader marketing and sales data. These reveal fresh insights for our clients; helping them to build better products and brands, to deliver effective marketing to consumers.

Our software, machine learning and AI are key to how we deliver impact, centred on:

  • Natural Language Processing, GPT & other LLMs: unearthing trends, themes and other patterns from large text-based data sets, and deploying state-of-the-art AI to automate and empower consumer facing businesses and their insights & analytics functions
  • Marketing Data Science & Personalisation: using first party consumer data to understand each client’s consumer base, building personalisation and other machine learning models to better engage with and excite consumers
  • Data Engineering & Data Architecture: data engineering across a variety of tools to integrate these leading technologies into optimised and efficient data models and ecosystems, feeding into best-in-class analytics dashboards, marketing activation and front-end platforms
  • Software Engineering: full stack expertise to build, maintain and support internal and externally facing Software & Data as a Service solutions, in AWS, that accelerate delivery and unlock deeper insights for our clients

As a start-up, we can move faster than most companies and do things differently. We have experienced rapid growth so far and we’re looking for a Data Engineer to join our growing team.

What You’ll Be Doing

  • Build innovative data solutions in Python, PySpark & SQL across Databricks, Snowflake, AWS and more
  • Support the development and rollout of industry first global analytics programmes
  • Develop and deploy automated code pipelines, from data acquisition, owning transformation and supporting data modelling
  • Help to productionise machine learning models and integrate leading APIs from OpenAI, GCP, Microsoft and other open source solutions
  • Work closely with great programme teams – project lead, data scientists and analysts – and interface with client technology counterparts
  • Identify ways to improve data reliability, processing efficiency and quality of our data output
  • Produce detailed documentation and champion code quality
  • Interrogate rich data sources such as social, search, surveys, reviews, clickstream, sales, connected devices and beyond
  • Identify and explore opportunities to acquire new data sources that deliver innovative perspectives to our clients

What We’re Looking For

  • Bachelor’s degree or higher in an applicable field such as Computer Science, Statistics, Maths or similar Science or Engineering discipline
  • Experience designing, building and maintaining SQL databases (and/or NoSQL)
  • Experience with designing efficient physical data models/schemas and developing ETL/ELT scripts
  • Strong python and other programming skills (Java and/or Scala desirable)
  • Experience developing data solutions in cloud environments such as Azure, AWS or GCP – Azure Databricks & Snowflake experience a bonus
  • Strong SQL background
  • Some exposure to big data technologies (hadoop, spark, presto, etc.)

Nice To Haves Or Excited To Learn

  • Experience with APIs
  • Experience with Data Science and / or NLP
  • Data & Solution Architecture understanding
  • Experience of software development, CI/CD pipelines and/or other DevOps practices and principles
  • Experience utilising social listening tools and / or search / web analytics tools

Interview Process

  • 30 minute video interview with the People & Operations Team
  • 60 minute technical video interview with our Lead Software Engineer
  • Final interview with our Director of Technology

Seniority level

  • Entry level

Employment type

  • Full-time

Job function

  • Information Technology

Industries

  • Business Consulting and Services


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