Senior Data Engineer.

BI:PROCSI
London
1 year ago
Applications closed

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Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

BI:PROCSI is a customer-focused, data-driven, highly experienced, and dedicated team of consultants delivering world-class solutions. We form strong partnerships with our customers across all sectors, ranging from high-profile start-ups to FTSE100 businesses, delivering impactful and business-critical data projects.

We leverage advanced AI and ML technologies to build products that help our customers optimise value from data. Our goal is to understand our clients' objectives and work with them to evaluate, develop, and deploy end-to-end data solutions across Business Intelligence, Analytics, Data Warehousing, Data Science, ETL/ELT, and more.

Our team of subject matter experts provides guidance throughout the entire data journey by collaborating closely with your existing teams. With PRINCE2 and Agile-certified project management, certified training, and enablement sessions, we ensure you have full control of a data solution that delivers tangible value to your business.

  • Permanent
  • Location Mostly Remote, with a requirement to work from London once every two weeks
  • Must have a Right to Work in the UK

Overview

As a Senior Data Engineer at BI:PROCSI, you'll play a crucial role in storing, processing, modelling, and applying data science to make data and insights available for analytics and business intelligence (BI) systems. This position offers a unique opportunity to work with cutting-edge products and world-class clients in a remote-first environment.

Key Responsibilities

  • Architect and build robust data systems and pipelines
  • Analyse, organise, and prepare raw data for modelling and analytics
  • Evaluate business needs and objectives
  • Combine raw information from diverse sources
  • Enhance data quality and reliability
  • Identify opportunities for data acquisition
  • Develop analytical reports using data science techniques

Required Skills

Data Engineering Expertise

  • Strong data modelling and SQL/database design skills
  • Proficiency in ETL/ELT processes
  • Expert-level SQL and Python programming
  • Understanding of different data modelling techniques (e.g Kimban, star and snowflake schemas etc)
  • Data quality techniques
  • Data normalisation

Cloud and Big Data Technologies

  • Familiarity with cloud data warehouses (AWS, Azure, GCP, or Snowflake)

MLOps

  • Proficiency in MLOps practices, including model deployment, monitoring, and management
  • Familiarity with tools and frameworks for MLOps, such as MLflow or similar

Additional Desirable Skills

  • CI/CD knowledge
  • Experience with JIRA/Asana for project management
  • Familiarity with Airflow, Fivetran, Matillion, or other ETL/ELT tools
  • Agile working methodology

Why Choose BI:PROCSI?

BI:PROCSI offers a unique work environment focused on innovation and personal growth. As a rapidly expanding company, we provide:

  • A phenomenal company culture that values diversity and work-life balance
  • Opportunities for continuous learning and career advancement
  • Comprehensive benefits package, including Vitality Health, Perkbox, and Nest Pension

Join our team of passionate innovators and contribute to our mission of being the benchmark for excellence and quality of service in everything we do.

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