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Data Engineer

ONMO
City of London
2 weeks ago
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Overview

As a Data Engineer at Onmo, you will play a key role in developing and maintaining our data platform to support the company’s data strategy. You will ensure internal and external stakeholders have access to reliable and timely data and collaborate closely with the BI and analytics team to support business goals.

We have a solid data framework in place, but we’re nimble enough to explore new ideas and innovative ways of working. In this role, you’ll take on a diverse set of responsibilities with a strong focus on building and expanding our data platform and capabilities.

Responsibilities
  • Build and maintain self-serve data capabilities to support data literacy and empower non-technical teams
  • Develop and implement components of the data platform to ensure high-quality, consistent, and timely access to data
  • Collaborate with stakeholders to understand business requirements and translate them into effective technical solutions
  • Support the creation and maintenance of datamarts and integrations with business systems
  • Monitor and improve data quality, consistency, and security across the platform
  • Support the development and implementation of data models, data pipelines, and data warehouses
  • Stay up-to-date with the latest industry trends and technologies
FCA Compliance & Consumer Duty

At Onmo we all take collective responsibility for our individual roles in creating the best outcomes for our customers. In this role that involves following the FCA Conduct Rules:

  • You must act with integrity
  • You must act with due skill, care and diligence
  • You must be open and cooperative with the FCA, PRA and other regulators
  • You must pay due regard to the interests of customers and treat them fairly
  • You must observe proper standards of market conduct
About YouWays of Working
  • Ability to work well collaboratively in a fast-paced, dynamic environment
  • Proactive automation of work, to allow more time for improvements
  • Keep updated documentation, to allow sharing of work and knowledge
  • Use checks and balances to make sure outputs are correct
Qualifications and Experience
  • Proven experience in a data engineering or data platform development role
  • Proficiency in programming languages (e.g. Python & SQL)
  • Experience with data integration tools and technologies (e.g. DLT, Meltano, APIs, Kafka)
  • Knowledge of cloud platforms (e.g. AWS)
  • Experience with modern data platforms (e.g. Databricks, Snowflake, or Big Query)
  • Excellent communication and collaboration skills
Your Approach
  • Self-motivating, with a natural interest in understanding how things work and fit together
  • Happy to work at a growing company, where one day does not always look the same as the next and everyone rolls up their sleeves to help make things happen
Seniority level
  • Not Applicable
Employment type
  • Full-time
Job function
  • Information Technology


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