Data Engineer

London
3 weeks ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

6-Month Contract Opportunity: Senior Analytics Engineer (Outside IR35, Fully Remote)

About the Role

We are looking for a Senior Analytics Engineer for a 6-month fully remote contract to lead a critical technology migration project within the fintech sector. This role focuses on transitioning from a legacy system to a modern, innovative tech stack that supports our blockchain and cryptocurrency services.

Key Responsibilities

Tech Stack Migration Leadership: Guide the migration to a new data stack, including Airbyte, Airflow, Snowflake, dbt, and Quicksight, drawing on proven experience in handling similar high-stakes migrations.
Advanced Data Modelling and Processing: Utilise expert skills in Python and SQL to develop and optimise data models and processes. Experience with data management platforms such as Snowflake, BigQuery, MongoDB, DynamoDB, Redshift, and PostgreSQL will be crucial.
Blockchain Solutions Engineering: Apply knowledge from previous engagements where blockchain technology, particularly in data handling and staking mechanisms, was a core component.
Development and Automation of Data Pipelines: Leverage experience with Apache Kafka, Apache Airflow, and AWS Glue to build robust data pipelines that support the migration and ongoing data operations.
Collaborative Project Execution: Work remotely with cross-functional teams, ensuring alignment with business objectives and seamless integration of the new tech stack.

Required Skills and Experience

Strong Programming and System Design: Demonstrated proficiency in programming languages, especially Python, and experience designing and deploying applications using NodeJS.
Expertise in Modern Data Technologies: Hands-on experience with modern data technologies and tools, including data processing and web development frameworks like Django, Flask, FastAPI, and SpringBoot.
Blockchain and Crypto Industry Experience: Prior experience or a strong interest in blockchain and cryptocurrency, with a focus on data-driven applications in these sectors.
DevOps and Cloud Proficiency: Experience with Docker, Terraform, CI/CD, GitHub Actions, and cloud platforms like AWS and Azure to maintain and scale infrastructures.
Testing and Quality Assurance: Ability to implement testing frameworks like Pytest and Great Expectations to ensure data integrity and quality throughout the migration process.

What We Offer

Cutting-Edge Technology Exposure: Opportunity to work with advanced blockchain technologies and contribute to significant tech stack transformation projects.
Competitive Contract Rate: Reflective of the high-impact nature of the role and the specialist skills required.
Work Flexibility: Fully remote work setup, allowing flexibility and convenience for the right candidate.
Professional Development: Chance to expand expertise in blockchain technology and modern data stack applications in a dynamic fintech environment

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