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Senior Cloud Data Engineer

LSEG
Nottingham
1 week ago
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LSEG (London Stock Exchange Group) is a world‑leading financial markets infrastructure and data business. We are dedicated, open‑access partners with a commitment to excellence in delivering services across Data & Analytics, Capital Markets, and Post‑Trade.


Backed by three hundred years of experience, innovative technologies, and a team of over 23,000 people in 70 countries, our purpose is driving financial stability, empowering economies, and enabling customers to create sustainable growth.


Role Description

As a Senior Cloud Data Engineer, you’ll design and implement functionalities, focusing on Data Engineering tasks. You’ll work with semi‑structured and non‑structured data to ingest and distribute in cloud environments to modernize data products and distribution channels. You’ll drive the software development lifecycle for continuous data delivery and lead the evaluation and adoption of emerging technologies.


Key Responsibilities

  • Create and maintain optimal data pipeline architecture
  • Assemble large, complex data sets that meet functional / non‑functional business requirements
  • Identify, design, and implement internal process improvements: automating manual processes, optimizing data delivery, re‑designing infrastructure for greater scalability, etc.
  • Build analytics tools that utilize the data pipeline to provide actionable insights into customer acquisition, operational efficiency and other key business performance metrics
  • Work with stakeholders, including the Executive, Product, Data and Design teams to assist with data‑related technical issues and support their data infrastructure needs
  • Keep our data separated and secure across national boundaries through multiple data centers and Azure regions
  • Create data tools for analytics and data scientist team members that assist them in building and optimizing our product into an innovative industry leader
  • Work with data and analytics experts to strive for greater functionality in our data systems

Skills and Experience

  • Depending on seniority relevant experience in Data Platforms (in Financial Services industry), Azure’s PaaS/SaaS offerings (Fabric, Synapse, Purview, ADF, Azure Data Lake Storage etc.)
  • Demonstrable experience in a similar role, with a focus on cloud distributed data processing platform for spark
  • Solid experience with Azure: Synapse Analytics, Data Factory, Data Lake, Databricks, Microsoft Purview, Monitor, SQL Database, SQL Managed Instance, Stream Analytics, Cosmos DB, Storage Services, Azure Functions, Log Analytics, Serverless Architecture
  • Strong proficiency in Spark, SQL, and Python/scala/Java
  • Knowledge and understanding of Snowflake
  • Knowledge of security best practices (e.g., using Azure Key Vault, IAM, RBAC, Monitor etc.)
  • Proficient in integrating, transforming, and consolidating data from various structured and unstructured data systems into a structure that is suitable for building analytics solutions
  • Understand the data through exploration, experience with processes related to data retention, validation, visualization, preparation, matching, fragmentation, segmentation, and enhancement
  • Demonstrates ability to understand business requirements and the implications of those requirements on current and future roadmaps

Join us and be part of a team that values innovation, quality, and continuous improvement. If you're ready to take your career to the next level and make a significant impact, we'd love to hear from you.


LSEG offers a range of tailored benefits and support, including healthcare, retirement planning, paid volunteering days and wellbeing initiatives.


You are proud to be an equal opportunities employer. This means that we do not discriminate on the basis of anyone’s race, religion, colour, national origin, gender, sexual orientation, gender identity, gender expression, age, marital status, veteran status, pregnancy or disability, or any other basis protected under applicable law. We can reasonably accommodate applicants' and employees' religious practices and beliefs, as well as mental health or physical disability needs.


LSEG is a leading global financial markets infrastructure and data provider. Our purpose is driving financial stability, empowering economies and enabling customers to create sustainable growth.


Our values are Integrity, Partnership, Excellence and Change.


We are a global organisation of 25,000 people across 65 countries. We value your individuality and enable you to bring your true self to work so you can help enrich our diverse workforce.


Please take a moment to read this privacy notice carefully, as it describes what personal information London Stock Exchange Group (LSEG) (we) may hold about you, what it’s used for, and how it’s obtained, your rights and how to contact us as a data subject.


If you are submitting as a Recruitment Agency Partner, it is essential and your responsibility to ensure that candidates applying to LSEG are aware of this privacy notice.


Seniority Level

  • Mid‑Senior level

Employment Type

  • Full‑time

Job Function

  • Information Technology

Industries

  • IT Services and IT Consulting and Financial Services


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