Software Engineer, Enterprise Engineering London, UK

Scale AI, Inc.
London
4 days ago
Applications closed

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At Scale AI, we’re not just building AI tools—we’repioneering the next era of enterprise AI. As businesses race toharness the power of Generative AI, Scale is at the forefront,delivering cutting-edge solutions that transform workflows,automate complex processes, and drive unparalleled efficiency forthe largest enterprises. Our Scale Generative AI Platform (SGP)provides foundational services and APIs, enabling businesses toseamlessly integrate AI into their operations at production scale.We’re looking for a Software Engineer (Product) to help shape thefuture of AI-powered applications. In this role, you’ll bridge thegap between AI research and production, turning innovativeprototypes into scalable, high-performance enterprise solutions.You’ll build interactive AI applications, enterprise SaaS products,and platform capabilities that redefine how businesses leverage AI.This is a rare opportunity to be at the center of the GenAIrevolution, working on products that impact millions of users whiledeveloping core AI infrastructure for some of the world’s largestcompanies. If you're excited about pushing the boundaries ofAI-driven product development, we want to hear from you. At Scale,we don’t just follow AI advancements — we lead them. Backed by deepexpertise in data, infrastructure, and model deployment, we areuniquely positioned to solve the hardest problems in AI adoption.Join us in shaping the future of enterprise AI, where your workwill directly impact how businesses operate, innovate, and grow inthe age of GenAI. You Will: - Design, build, and optimize backendservices for advanced AI-driven applications, focusing on AIagents, evaluation tooling, and automation. - Develop and refinefeatures for Scale’s GenAI Platform, enabling businesses to build,deploy, and manage AI-driven agents with robust backendcapabilities. - Implement scalable APIs and services in Python,leveraging frameworks like FastAPI, to support real-time AIapplications and large-scale data processing. - Build and maintainfull stack web applications using modern frameworks andtechnologies Next.js, React, TypeScript, and Tailwind. - IntegrateAI models and evaluation systems, working closely with ML teams toenhance agent reasoning, response quality, and decision-making. -Manage and optimize cloud infrastructure, ensuring highavailability, performance, and security in AWS, Azure, or GCPenvironments. - Ship features at a rapid pace, maintaining highcode quality, observability, and performance across backendsystems. Ideally, You Have: - 5+ years of experience developingbackend or full-stack applications, with a strong emphasis onbackend engineering. - Strong proficiency in Python and backendframeworks such as FastAPI or Flask. - Familiarity with frontendtechnologies (Next.js, React, TypeScript, Tailwind) with an eye forbuilding polished, user-friendly interfaces. - Experience makingtrade-offs between speed and quality in fast-paced environments. -A passion for AI and experience working on AI-first applications,agent-based systems, or data-rich web platforms. - Strong cloudexperience (AWS, Azure, GCP), including containerized deployments(Docker, Kubernetes) and cloud services (AWS Lambda, S3, DynamoDB,etc.). - A track record of collaborating cross-functionally withdesign, product, and ML teams to bring AI-powered applications tolife. #J-18808-Ljbffr

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