Data Engineering Architect

Company: Mphasis
Apply for the Data Engineering Architect
Location: London
Job Description:

About the Role


As a Data Engineering Architect, you will be responsible for designing and governing end-to-end data architectures that support business intelligence, advanced analytics, machine learning, and AI initiatives.


You will work closely with business leaders, data scientists, architects, and engineering teams to build scalable data solutions that transform raw data into actionable insights.


Responsibilities



  • Define and implement enterprise-wide data architecture and engineering strategies

  • Design scalable, secure, and high-performance data platforms across cloud and hybrid environments

  • Build modern data ecosystems that support analytics, reporting, AI, and machine learning workloads

  • Design, develop, and optimize batch and real-time data pipelines

  • Build robust ETL/ELT frameworks for data ingestion, transformation, and processing

  • Integrate structured, semi-structured, and unstructured data from multiple enterprise sources

  • Architect scalable data lake, data warehouse, and lakehouse solutions

  • Ensure data reliability, quality, governance, and security across platforms


Cloud & Big Data Solutions



  • Lead cloud-native data platform implementations across AWS, Azure, and GCP

  • Design architectures supporting real-time analytics and event-driven data processing

  • Source technologies: Spark, Hadoop, Kafka, Kinesis, Streaming Technologies


AI & Advanced Data Enablement



  • Build AI-ready data foundations supporting predictive analytics and machine learning initiatives

  • Work with Graph Databases and Vector Databases to enable next-generation AI and knowledge-driven applications

  • Collaborate with Data Science and AI teams to accelerate enterprise AI adoption


Leadership & Governance



  • Drive best practices in Data Engineering, Data Governance, Security, and DevOps

  • Lead architecture reviews, technology evaluations, and strategic initiatives

  • Mentor engineering teams and influence enterprise data standards

  • Partner with stakeholders to translate business requirements into scalable technical solutions


What We’re Looking For


Core Experience



  • 15+ years of experience in Data Engineering, Data Architecture, or Enterprise Data Management

  • Proven track record of designing and implementing large-scale enterprise data platforms

  • Strong leadership, stakeholder management, and solution architecture experience


Technical Expertise


Programming



  • Python, Java, Spark, ETL/ELT Frameworks, Data Lakes, Data Warehouses


Databases



  • SQL & NoSQL, Redshift, DynamoDB, MongoDB, Synapse, BigQuery, RDS, AWS, GCP, Hadoop, Kafka, Kinesis


Data Warehousing



  • Snowflake, Redshift, BigQuery


DevOps & Automation



  • CI/CD, Docker, Infrastructure Automation


APIs & Integration



  • REST APIs, Messaging Platforms


Graph Databases



  • Amazon Neptune, RDF4J, Neo4j


Vector Databases



  • Pinecone, FAISS


Experience with



  • Informatica, Talend, dbt


Exposure to



  • NLP Solutions, AI/ML Platforms, Customer Segmentation & Advanced Analytics, Banking, Insurance, Mortgage


Shape the Future of Cloud, Analytics, and AI Architecture


Work on cutting-edge technologies including Big Data, Real-Time Analytics, Graph Databases, and AI-ready platforms.


Collaborate with senior technology leaders and business stakeholders.


Influence strategic technology decisions across the organization.


Build platforms that power data-driven innovation at scale.


Ready to architect the future of enterprise data?


If you’re passionate about Data Engineering, Cloud Architecture, Big Data, Analytics, and AI-driven innovation, we’d love to connect with you.

#J-18808-Ljbffr…

Posted: June 6th, 2026