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Data Engineer

TapTap Send
London
1 week ago
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Overview

As a Senior Data Engineer, you will create components of a modern data platform that will be the foundation of Taptap Send's decision‑making ability. The systems you help create and the problems you help solve will be pivotal to the success of TTS. This role is key to the success of TTS. You will play a critical part in the functioning of every team, with stakeholders ranging from customer success, growth, markets, product, and finance. The Data Engineer will be implementing critical data pipelines, and innovating and improving infrastructure to support these pipelines while advancing best practices in privacy and data and information security.


Responsibilities

  • Apply automation mindset and DevSecOps principles to data systems and architectures
  • Integrate with APIs of 3rd party data sets to enable data pipelines and reporting use cases
  • Build data systems and pipelines using SaaS systems like AWS and DBT Cloud
  • Build solutions to various business objectives using your technical skills and your extensive understanding of the TTS data landscape
  • Collaborate with the product engineering team and the data analytics team, serving as a bridge between the two.
  • Analyse and organise raw data
  • Prepare data for prescriptive and predictive modelling
  • Explore ways to enhance data quality and reliability
  • Collaborate with data scientists and analysts on several projects

Qualifications

  • Knowledge of programming languages (e.g. Java, Python)
  • Hands‑on experience with relational databases (like PostgreSQL) and data warehouses (like AWS Redshift)
  • Familiar with data modeling and data governance concepts, and agile methodologies
  • Familiar with industry toolsets: Stitch, DMS, etc
  • Statistics knowledge, analytical skills, and an understanding of big data technologies
  • Previous experience as a data engineer or in a similar role
  • Technical expertise with data models
  • Great numerical and analytical skills
  • Experience with event‑driven and streaming data architectures (using technologies such as Apache Spark, Flink or similar)
  • Degree in Computer Science, IT, or similar field; a Master’s is a plus or four years' equivalent experience

Values & Mission

Taptap Values: Impact first, Team next, Accept reality, Propose solutions, Win with grit, Be proactively candid, with yourself and others.


Our Mission: Reduce inequity by helping immigrants move money home, and become the leading cross‑border fintech for emerging markets. Taptap Send is backed by top VCs and is rapidly growing, offering a great place for those looking for both impact and a fast‑paced tech startup environment.


Benefits

Competitive salary, equity, comprehensive benefits, and a culture that encourages learning, ownership, and impact.”


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