At a Glance
- Tasks: Design and build our in-house AI environment using cutting-edge technologies.
- Company: Ambitious tech company focused on next-gen AI products.
- Benefits: Competitive salary, flexible working, and professional growth opportunities.
- Why this job: Lead the future of AI infrastructure and make a real impact.
- Qualifications: 5+ years in machine learning or AI system design required.
- Other info: Opportunity to mentor and build your own AI engineering team.
The predicted salary is between 72000 - 84000 ÂŁ per year.
We're an ambitious technology company using advanced Machine Learning (ML) and Natural Language Processing (NLP) to power next-generation products. Until now, our AI projects have relied on third-party engines deployed via Docker - but it's time to take the next step. We're ready to build our own in-house AI environment, giving us full control over our models, data, and innovation pipeline.
To make that happen, we're looking for an AI Infrastructure Lead - someone with the technical depth and vision to architect, implement, and scale an environment capable of supporting multiple ML and NLP initiatives across the business.
As our first senior AI hire, you'll take ownership of designing and building the foundation of our AI ecosystem. You'll shape the infrastructure strategy, establish our MLOps pipelines, and work closely with product and data teams to enable seamless model development and deployment. Once the environment is established, you'll play a key role in recruiting and mentoring two mid-level AI engineers who will join your team.
Responsibilities
- Architect, build, and maintain an in-house AI environment (on-prem or hybrid cloud).
- Design MLOps workflows for training, deploying, and monitoring models.
- Integrate and manage containerized AI engines (Docker/Kubernetes).
- Establish best practices for model versioning, data pipelines, and reproducibility.
- Collaborate with ML and NLP researchers to optimize infrastructure for experimentation.
- Set up CI/CD pipelines, monitoring tools, and scalable compute infrastructure.
- Lead future recruitment and mentoring of additional AI engineers.
Required
- 5+ years of experience in machine learning, data science, or AI system design.
- Proven track record of deploying ML models or LLM-based applications to production.
- Strong programming fundamentals, including data structures and algorithms.
- Handsâon experience with transformers, embeddings, and vector databases.
- Experience running AI workloads on offline or onâpremise platforms (non-cloud environments).
- Solid understanding of data pipelines, APIs, and scalable system architecture.
Preferred
- Experience leading small teams or mentoring other engineers.
- Familiarity with MLOps tools and best practices.
- Background in integrating AI solutions into enterprise products.
- Awareness of privacy, bias mitigation, and model explainability techniques.
What We Offer
- Opportunity to design and own the company's AI infrastructure from the ground up.
- Work with cuttingâedge AI technologies in a handsâon, highâimpact role.
- Leadership path - build your own AI engineering team.
- Competitive salary (up to ÂŁ120k), flexible working, and professional growth opportunities.
Ready to build the foundation of our AI future? Apply now and help us shape an intelligent, scalable, and independent AI ecosystem.
AI Solutions Architect in London employer: Digital Waffle
Contact Detail:
Digital Waffle Recruiting Team
StudySmarter Expert Advice đ¤Ť
We think this is how you could land AI Solutions Architect in London
â¨Network Like a Pro
Get out there and connect with people in the AI field! Attend meetups, conferences, or even online webinars. You never know who might have a lead on that perfect AI Solutions Architect role.
â¨Show Off Your Skills
Create a portfolio showcasing your projects and achievements in machine learning and AI. This is your chance to demonstrate your technical depth and vision, so make it shine!
â¨Ace the Interview
Prepare for technical interviews by brushing up on your programming fundamentals and MLOps workflows. Be ready to discuss your experience with deploying ML models and how you can contribute to building our in-house AI environment.
â¨Apply Through Our Website
Donât forget to apply directly through our website! Itâs the best way to ensure your application gets noticed and shows us youâre serious about joining our ambitious team.
We think you need these skills to ace AI Solutions Architect in London
Some tips for your application đŤĄ
Tailor Your CV: Make sure your CV reflects the skills and experiences that align with the AI Solutions Architect role. Highlight your experience in machine learning, data science, and any relevant projects you've worked on. We want to see how you can contribute to building our in-house AI environment!
Craft a Compelling Cover Letter: Your cover letter is your chance to shine! Use it to explain why you're passionate about AI and how your vision aligns with our goals at StudySmarter. Be sure to mention specific experiences that demonstrate your ability to lead and innovate in AI infrastructure.
Showcase Your Technical Skills: Since this role requires strong programming fundamentals and hands-on experience with AI technologies, make sure to include relevant technical skills in your application. Mention any experience with MLOps tools, Docker, or Kubernetes, as these are key to our projects.
Apply Through Our Website: We encourage you to apply directly through our website for the best chance of getting noticed. It helps us keep track of applications and ensures youâre considered for the role. Plus, itâs super easy to do!
How to prepare for a job interview at Digital Waffle
â¨Know Your AI Stuff
Make sure you brush up on your machine learning and natural language processing knowledge. Be ready to discuss specific projects you've worked on, especially those involving MLOps and deploying models. This is your chance to show off your technical depth!
â¨Show Your Vision
Since this role involves building an in-house AI environment, think about how you would approach this task. Prepare to share your ideas on infrastructure strategy and best practices for model versioning and data pipelines. Companies love candidates who can think ahead!
â¨Collaboration is Key
This position requires working closely with product and data teams. Be prepared to discuss how you've successfully collaborated in the past, and maybe even share examples of how youâve mentored others. Highlighting your teamwork skills will set you apart!
â¨Ask Smart Questions
At the end of the interview, donât forget to ask insightful questions about the companyâs AI initiatives and future plans. This shows your genuine interest in the role and helps you gauge if itâs the right fit for you. Plus, it makes a great impression!