Data Engineer - Python & Rust

Fourier Ltd
London
1 year ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Posted bySenior ConsultantData Engineering role within Trading. Tech Stack: - Python - Rust - AWS - Terraform

As a Data Engineer, you will collaborate with a team of experienced developers to design and develop data services across various business functions. Your responsibilities will include:

Developing data pipelines for extracting, transforming, and loading data into storage systems. Creating data tools and services to enable easy data discovery and utilization. Implementing dataernance and management practices. Working closely with Operations, Pricing, Trading, and Finance teams to understand their requirements and deliver effective data solutions.

What We're Looking For:

Required:3+ years of data engineering experience, preferably in investment banking or insurance. Expertise in data integration, modelling, optimization, and data quality. Experience with AWS-based development and platform building. Familiarity with Software Development Life Cycle (SDLC) and best practices. Excellentmunication and teamwork skills.Desirable:Experience with big data solutions like Snowflake or Databricks. Knowledge of SQL Server, PostgreSQL, and NoSQL database technologies. Experience using Terraform.

If you are an original thinker with a passion for data engineering and a drive to make an impact, apply now!

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