At a Glance
- Tasks: Design and build AI platform capabilities on Azure, focusing on agentic AI patterns.
- Company: Join ASOS, a leading fashion retailer with a dynamic tech team.
- Benefits: Enjoy employee discounts, flexible benefits, and 25 days paid leave plus a celebration day.
- Other info: Great opportunities for personal growth and learning in a fast-paced tech landscape.
- Why this job: Make an impact in AI while working with cutting-edge technology in a collaborative environment.
- Qualifications: Experience in AI systems, strong Python skills, and familiarity with cloud environments required.
The predicted salary is between 70000 - 90000 £ per year.
As a Senior AI Engineer, you will be part of the AI Platform team, helping to build and scale the shared foundations that enable AI capabilities across ASOS. The primary focus of this role will be contributing to the Agentic AI Platform initiative, alongside other core AI platform capabilities as the platform evolves. This role is focused on the platform layer, rather than individual business use cases. You will design and implement shared standards, templates and reference implementations for agentic AI on Azure, enabling application teams to safely design, deploy and operate AI agents at enterprise scale. Working closely with Product teams, Cloud Infrastructure, Security and partners, you will help ensure AI capabilities are secure, observable, reusable and governed by default. You will also contribute to the production foundations needed to operate AI capabilities reliably, including LLMOps, model access patterns, prompt and agent lifecycle practices, observability and secure enterprise integration.
Responsibilities
- Designing and building AI platform capabilities on Azure, with a strong focus on agentic AI patterns such as agent runtimes, orchestration and tool integration.
- Contributing to the Agentic AI Platform initiative, helping define how agents are built, integrated and operated across the organisation.
- Designing and maintaining standardised templates and reference implementations for LLM and Generative AI workflows, enabling teams to adopt consistent patterns for prompt design, tool calling, multi step agent flows, retries and failure handling.
- Implementing secure, governed access patterns for LLMs and enterprise tools using APIM, platform gateways, Entra ID, RBAC and managed identities.
- Contributing to LLMOps and model runtime patterns, including standard approaches for model access, routing, caching, token optimisation and cost aware usage controls.
- Supporting lifecycle and evaluation practices for agent configurations, prompts and AI workflows, including testing, controlled change and release readiness.
- Designing secure tool-access patterns for agents, including MCP/tool abstraction, credential management and enterprise API integration.
- Contributing to AgentOps and GenAIOps capabilities, including telemetry, run history, task outcomes, error analysis and feedback loops.
- Contributing to reliability patterns for production AI systems, including latency monitoring, alerting, scaling considerations and operational readiness.
- Applying CI/CD and software engineering best practices to AI platform and agentic components.
- Embedding observability by default, ensuring AI systems are measurable, debuggable and auditable through logs, metrics and traces.
- Partnering with Cloud Infrastructure and Security teams to design secure, scalable and cost effective Azure environments.
Qualifications
- Significant experience as an AI Engineer, AI Platform Engineer or similar, delivering production grade AI systems.
- Hands on experience with LLMs, Generative AI and agent based systems in real world environments.
- Strong understanding of the end to end AI lifecycle, from experimentation through deployment and operation.
- Practical understanding of production LLM or GenAI runtime concerns, such as model access, routing, caching, token usage, cost optimisation and reliability.
- High proficiency in Python, with experience building APIs and service oriented systems.
- Experience working with CI/CD pipelines, automated testing and versioned deployments for AI or platform components.
- Practical experience with observability tooling (logging, metrics, tracing and alerting) and using telemetry to improve reliability and performance.
- Comfortable working in cloud environments, preferably Azure.
- Experience with Azure AI Foundry is preferred, but we are equally open to candidates with hands on experience using comparable GenAI or agent platforms, and a strong understanding of how to apply those patterns within Azure.
- Experience with Azure API Management (APIM) is preferred, especially as a governance or integration boundary.
- Familiarity with AgentOps, MLOps or GenAIOps concepts, including monitoring, evaluation and feedback loops.
- Strong collaboration skills, with the ability to influence platform standards and enable other engineering teams.
- A pragmatic, engineering led approach to responsible and ethical AI, with a focus on safety, reliability and trust.
Benefits
- Employee discount (hello ASOS discount!).
- Employee sample sales.
- 25 days paid annual leave + an extra celebration day for a special moment.
- Discretionary bonus scheme.
- Private medical care scheme.
- Flexible benefits allowance - which you can choose to take as extra cash, or use towards other benefits.
- Opportunity for personalised learning and in-the-moment experiences that enable you to thrive and excel in your role.
AI Engineer (AI Platform) employer: We're Asos
ASOS is an exceptional employer, offering a dynamic work culture that fosters innovation and collaboration within the AI Platform team. With a strong focus on employee growth, ASOS provides personalised learning opportunities and a flexible benefits allowance, ensuring that you can thrive in your role while enjoying perks like a generous employee discount and private medical care. Located in a vibrant environment, ASOS encourages a pragmatic approach to responsible AI, making it an ideal place for those looking to make a meaningful impact in the tech industry.
StudySmarter Expert Advice🤫
We think this is how you could land AI Engineer (AI Platform)
✨Join Local Tech Meetups
Get out there and mingle with fellow developers by joining local tech meetups. It’s a fantastic way to meet people who might be working at We're Asos or know someone who does. Plus, you can pick up some trendy tech skills and trends while you're at it!
✨Contribute to Open Source Projects
Show off your coding chops by jumping into open-source projects. Not only does this give you practical experience, but it also gets you noticed in the dev community. You'll create a killer portfolio that speaks volumes about your skills to We're Asos.
✨Tap into Online Developer Communities
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✨Explore Job Boards Specifically for Tech Roles
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We think you need these skills to ace AI Engineer (AI Platform)
Some tips for your application 🫡
Show off your coding skills:When applying for a software engineering role, it's super important to showcase your coding skills. Make sure your CV includes your tech stack, any relevant programming languages you’re comfortable with, and examples of projects you've worked on. If you have a GitHub profile, link it up! We love to see code in action.
Tailor your portfolio:For a full-time role, we’d expect to see some solid examples of your work in your portfolio. Make sure to include at least two or three projects that highlight your problem-solving skills and your ability to work with different technologies. Focus on the projects that are most relevant to the position at We're Asos.
Craft a killer cover letter:Your cover letter is your chance to stand out—make it personal! Explain why you want to work at We're Asos and how your skills align with the role. Show us your passion for software development. We dig enthusiastic candidates who understand the value of collaboration and continuous learning!
Be clear and concise:When it comes to writing your CV and cover letter, clarity is key. Avoid jargon that could confuse us and stick to simple, direct language. Highlight your achievements with quantifiable results where possible, and keep everything easy to read. A well-organised application goes a long way!
How to prepare for a job interview at We're Asos
✨Brush Up on Your Coding Skills
For a full-time software engineering role, it's crucial that we stay sharp with our coding abilities. Expect technical questions that might involve solving problems on the spot or discussing algorithms. Practise on platforms like LeetCode or HackerRank to get comfortable with the types of questions that often come up.
✨Know Your Tools and Frameworks
Make sure we’re well-acquainted with the tools and technologies listed in the job description. Familiarise ourselves with any specific frameworks or programming languages mentioned. If We're Asos uses React or Node.js, for instance, be ready to discuss how we’ve used them in previous projects or coursework.
✨Showcase Your Projects
Bring along a portfolio that highlights our best work. This could be code samples, GitHub repositories, or any side projects we’ve built. Make sure we can talk through our thought process for each project, especially the challenges we faced and how we solved them—this shows our problem-solving skills in action.
✨Prepare for Behavioural Questions
While technical skills are key, full-time positions also require cultural fit. Be ready to discuss our previous experiences and how we handle teamwork, conflict, and deadlines. Brush up on the STAR method—Situation, Task, Action, Result—to clearly articulate our past experiences when discussing how we've contributed to a team.