Machine Learning Engineer, AWS Generative AI Innovation Center

Redefined Ltd
London
1 month ago
Applications closed

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DESCRIPTION

Like the look of this opportunity Make sure to apply fast, as a high volume of applications is expected Scroll down to read the complete job description.The Generative AI Innovation Center at AWS helps AWS customers accelerate the use of Generative AI and realize transformational business opportunities. This is a cross-functional team of ML scientists, engineers, architects, and strategists working step-by-step with customers to build bespoke solutions that harness the power of generative AI.As an ML Engineer, you'll partner with technology and business teams to build solutions that surprise and delight our customers. You will work directly with customers and innovate in a fast-paced organization that contributes to game-changing projects and technologies.We're looking for Engineers and Architects capable of using generative AI and other ML techniques to design, evangelize, and implement state-of-the-art solutions for never-before-solved problems.Key job responsibilitiesCollaborate with ML scientists and engineers to research, design, and develop generative AI algorithms to address real-world challenges.Work across customer engagement to understand what adoption patterns for generative AI are working and rapidly share them across teams and leadership.Interact with customers directly to understand the business problem, help and aid them in the implementation of generative AI solutions, deliver briefing and deep dive sessions to customers, and guide customers on adoption patterns and paths for generative AI.Create and deliver reusable technical assets that help to accelerate the adoption of generative AI on the AWS platform.Create and deliver best practice recommendations, tutorials, blog posts, sample code, and presentations adapted to technical, business, and executive stakeholders.Provide customer and market feedback to Product and Engineering teams to help define product direction.About the teamGenerative AI Innovation Center is a program that pairs you with AWS science and strategy experts with deep experience in AI/ML and generative AI techniques to:Imagine new applications of generative AI to address your needs.Identify new use cases based on business value.Integrate Generative AI into your existing applications and workflows.BASIC QUALIFICATIONSBachelor's degree in computer science or equivalent.Experience in professional, non-internship software development.Experience coding in Python, R, Matlab, Java, or other modern programming languages.Several years of relevant experience in developing and deploying large-scale machine learning or deep learning models and/or systems into production, including batch and real-time data processing, model containerization, CI/CD pipelines, API development, model training, and productionizing ML models.Experience contributing to the architecture and design (architecture, design patterns, reliability, and scaling) of new and current systems.PREFERRED QUALIFICATIONSMasters or PhD degree in computer science, or related technical, math, or scientific field.Proven knowledge of deep learning and experience using Python and frameworks such as Pytorch, TensorFlow.Proven knowledge of Generative AI and hands-on experience of building applications with large foundation models. Experiences related to AWS services such as SageMaker, EMR, S3, DynamoDB, and EC2, hands-on experience of building ML solutions on AWS.Strong communication skills, with attention to detail and ability to convey rigorous mathematical concepts and considerations to non-experts.

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