Data Engineer II, Data & AI, Customer EngagementTechnology ...

Amazon
London
3 days ago
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As a Data Engineer on the Data and AI team, you willdesign and implement robust data pipelines and infrastructure thatpower our organization's data-driven decisions and AI capabilities.This role is critical in developing and maintaining ourenterprise-scale data processing systems that handle high-volumetransactions while ensuring data security, privacy compliance, andoptimal performance. You'll be part of a dynamic team that designsand implements comprehensive data solutions, from real-timeprocessing architectures to secure storage solutions andprivacy-compliant data access layers. The role involves closecollaboration with cross-functional teams, including softwaredevelopment engineers, product managers, and scientists, to createdata products that power critical business capabilities. You'llhave the opportunity to work with leading technologies in cloudcomputing, big data processing, and machine learninginfrastructure, while contributing to the development of robustdata governance frameworks. If you're passionate about solvingcomplex technical challenges in high-scale environments, thrive ina collaborative team setting, and want to make a lasting impact onour organization's data infrastructure, this role offers anexciting opportunity to shape the future of our data and AIcapabilities. Key job responsibilities - Design and implementETL/ELT frameworks that handle large-scale data operations, whilebuilding reusable components for data ingestion, transformation,and orchestration while ensuring data quality and reliability. -Establish and maintain robust data governance standards byimplementing comprehensive security controls, access managementframeworks, and privacy-compliant architectures that safeguardsensitive information. - Drive the implementation of datasolutions, both real-time and batch, optimizing them for bothanalytical workloads and AI/ML applications. - Lead technicaldesign reviews and provide mentorship on data engineering bestpractices, identifying opportunities for architectural improvementsand guiding the implementation of enhanced solutions. - Build dataquality frameworks with robust monitoring systems and validationprocesses to ensure data accuracy and reliability throughout thedata lifecycle. - Drive continuous improvement initiatives byevaluating and implementing new technologies and methodologies thatenhance data infrastructure capabilities and operationalefficiency. A day in the life The day often begins with a teamstand-up to align priorities, followed by a review of data pipelinemonitoring alarms to address any processing issues and ensure dataquality standards are maintained across systems. Throughout theday, you'll find yourself immersed in various technical tasks,including developing and optimizing ETL/ELT processes, implementingdata governance controls, and reviewing code for data processingsystems. You'll work closely with software engineers, scientists,and product managers, participating in technical design discussionsand sharing your expertise in data architecture and engineeringbest practices. Your responsibilities extend to communicating withnon-technical stakeholders, explaining data-related projects andtheir business impact. You'll also mentor junior engineers andcontribute to maintaining comprehensive technical documentation.You'll troubleshoot issues that arise in the data infrastructure,optimize the performance of data pipelines, and ensure datasecurity and compliance with relevant regulations. Staying updatedon the latest data engineering technologies and best practices iscrucial, as you'll be expected to incorporate new learnings intoyour work. By the end of a typical day, you'll have advanced keydata infrastructure initiatives, solved complex technicalchallenges, and improved the reliability, efficiency, and securityof data systems. Whether it's implementing new data governancecontrols, optimizing data processing workflows, or enhancing dataplatforms to support new AI models, your work directly impacts theorganization's ability to leverage data for critical businessdecisions and AI capabilities. If you are not sure that everyqualification on the list above describes you exactly, we'd stilllove to hear from you! At Amazon, we value people with uniquebackgrounds, experiences, and skillsets. If you’re passionate aboutthis role and want to make an impact on a global scale, pleaseapply! About the team The Data and Artificial Intelligence (AI)team is a new function within Customer Engagement Technology. Weown the end-to-end process of defining, building, implementing, andmonitoring a comprehensive data strategy. We also develop and applyGenerative Artificial Intelligence (GenAI), Machine Learning (ML),Ontology, and Natural Language Processing (NLP) to customer andassociate experiences. BASIC QUALIFICATIONS - 3+ years of dataengineering experience - Bachelor’s degree in Computer Science,Engineering, or a related technical discipline PREFERREDQUALIFICATIONS - Experience with AWS data services (Redshift, S3,Glue, EMR, Kinesis, Lambda, RDS) and understanding of IAM securityframeworks - Proficiency in designing and implementing logical datamodels that drive physical designs - Hands-on experience workingwith large language models, including understanding of datainfrastructure requirements for AI model training Our inclusiveculture empowers Amazonians to deliver the best results for ourcustomers. If you have a disability and need a workplaceaccommodation or adjustment during the application and hiringprocess, including support for the interview or onboarding process,please visithttps://amazon.jobs/content/en/how-we-hire/accommodations for moreinformation. If the country/region you’re applying in isn’t listed,please contact your Recruiting Partner. Posted: May 5, 2025(Updated 10 days ago) Posted: May 5, 2025 (Updated 10 days ago)Posted: May 5, 2025 (Updated 10 days ago) Amazon is an equalopportunity employer and does not discriminate on the basis ofprotected veteran status, disability, or other legally protectedstatus. #J-18808-Ljbffr

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