Enable job alerts via email!

Senior Data Platforms Engineer

Simple Machines

London

On-site

GBP 70,000 - 90,000

Full time

5 days ago
Be an early applicant

Job summary

A leading independent technology firm in London seeks a Senior Data Platforms Engineer to build real-time data pipelines and implement data mesh architectures. The role requires proficiency in modern data engineering tools and a client-facing approach. Ideal candidates will have over 5 years of experience in data engineering and a strong background in consulting. This position offers an opportunity to enhance client data interactions and develop innovative data solutions.

Qualifications

  • 5+ years of experience in data engineering or equivalent.
  • Consulting experience in a technology consultancy is beneficial.
  • Demonstrated experience applying data engineering skills commercially.

Responsibilities

  • Build real-time data pipelines and implement data mesh architectures.
  • Develop and optimize high-performance data pipelines.
  • Provide expert advice to clients on optimal data practices.

Skills

SQL
Spark
Databricks
Snowflake
AWS S3
Google Cloud BigQuery
Kafka
Python
CI/CD practices

Education

Degree in computer science or related field

Tools

Apache Airflow
Terraform
Job description
Overview

Simple Machines UK - Job Ad - Senior Data Platforms Engineer
Position: Senior Data Engineer
Location: London, United Kingdom

Simple Machines is a leading independent boutique technology firm with a global presence, including teams in London, Sydney, San Francisco, and New Zealand. We specialise in creating technology solutions at the intersection of data, AI, machine learning, data engineering, and software engineering. Our mission is to help enterprises, technology companies, and governments better connect with and understand their organisations, their people, their customers, and citizens. We are a team of creative engineers and technologists dedicated to unleashing the potential of data in new and impactful ways. We design and build bespoke data platforms and unique software products, create and deploy intelligent systems, and bring engineering expertise to life by transforming data into actionable insights and tangible outcomes.

We engineer data to life.

Requirements

The Role:

The Senior Data Platforms Engineer at Simple Machines is a dynamic, hands-on role focused on building real-time data pipelines and implementing data mesh architectures to enhance client data interactions. This position blends deep technical expertise in modern data engineering methods with a client-facing consulting approach, enabling clients to effectively manage and utilise their data. Within a team of top-tier engineers, the role involves developing greenfield data solutions that deliver tangible business outcomes across various environments.

Technical Responsibilities

  • Developing Data Solutions: Implement and enhance data-driven solutions integrating with clients\' systems using state-of-the-art tools such as Databricks, Snowflake, Google Cloud, and AWS. Embrace modern data architecture philosophies including data products, data contracts, and data mesh to ensure a decentralized and consumer-oriented approach to data management.
  • Data Pipeline Development: Develop and optimise high-performance, batch and real-time data pipelines employing advanced streaming technologies like Kafka, and Flink. Utilise workflow orchestration tools such as Dataflow and Airflow.
  • Database and Storage Optimization: Optimize and manage a broad array of database technologies, from traditional relational databases (e.g., PostgreSQL, MySQL) to modern NoSQL solutions (e.g., MongoDB, Cassandra). Focus on strategies that enhance data accessibility, integrity, and performance.
  • Big Data Processing & Analytics: Utilise big data frameworks such as Apache Spark and Apache Flink to address challenges associated with large-scale data processing and analysis. These technologies are crucial for managing vast datasets and performing complex data transformations and aggregations.
  • Cloud Data Management: Implement and oversee cloud-specific data services including AWS Redshift, S3, Google BigQuery, and Google Cloud Storage. Leverage cloud architectures to improve data sharing and interoperability across different business units.
  • Security and Compliance: Ensure all data practices comply with security policies and regulations, embedding security by design in the data infrastructure. Incorporate tools and methodologies recommended for data security and compliance, ensuring robust protection and governance of data assets.

Consulting Responsibilities

  • Client Advisory: Provide expert advice to clients on optimal data practices that align with their business requirements and project goals.
  • Training and Empowerment: Educate client teams on the latest technologies and data management strategies, enabling them to efficiently utilise and maintain the solutions we have developed.
  • Professional Development: Keep up with the latest industry trends and technological advancements, continually upgrading skills and achieving certifications in the technologies Simple Machines implements across its client base.

Ideal Skills and Experience

  • Core Data Engineering Tools & Technologies: Demonstrates proficiency in SQL and Spark, and familiarity with platforms such as Databricks and Snowflake. Well-versed in various storage technologies including AWS S3, Google Cloud BigQuery, Cassandra, MongoDB, Neo4J, and HDFS. Adept in pipeline orchestration tools like AWS Glue, Apache Airflow, and dbt, as well as streaming technologies like Kafka, AWS Kinesis, Google Cloud Pub/Sub, and Azure Event Hubs.
  • Data Storage Expertise: Knowledgeable in data warehousing technologies like BigQuery, Snowflake, and Databricks, proficient in managing various data storage formats including Parquet, Delta, ORC, Avro, and JSON to optimise data storage and retrieval.
  • Building and Managing Large-scale Data Systems: Experienced in developing and overseeing large-scale data pipelines and data-intensive applications within production environments.
  • Data Modelling Expertise: Proficient in data modelling, understanding the implications and trade-offs of various methodologies and approaches.
  • Infrastructure Configuration for Data Systems: Competent in setting up data system infrastructures, favouring infrastructure-as-code practices using tools such as Terraform and Pulumi.
  • Programming Languages: Proficient in Python and SQL, with additional experience in programming languages like Java, Scala, GoLang, and Rust considered advantageous.
  • CI/CD Implementation: Knowledgeable about continuous integration and continuous deployment practices using tools like GitHub Actions and ArgoCD, enhancing software development and quality assurance.
  • Testing Tools and Frameworks: Experienced with data quality and testing frameworks such as DBT, Great Expectations, and Soda, ensuring the reliability of complex data systems.
  • Commercial Application of Data Engineering Expertise: Demonstrated experience in applying data engineering skills across various industries and organisations in a commercial context.
  • Agile Delivery and Project Management: Skilled in agile, scrum, and kanban project delivery methods, ensuring efficient and effective solution development.
  • Consulting and Advisory Skills: Experienced in a consultancy or professional services setting, offering expert advice and crafting customised solutions that address client needs. Effective in engaging stakeholders and translating business requirements into practical data engineering strategies.

Professional Experience and Qualifications

  • Professional Experience: At least 5+ years of data engineering or equivalent experience in a commercial, enterprise, or start-up environment. Consulting experience within a technology consultancy or professional services firm is highly beneficial.
  • Educational Background: Degree or equivalent experience in computer science or a related field.
Get your free, confidential resume review.
or drag and drop a PDF, DOC, DOCX, ODT, or PAGES file up to 5MB.