
AI Builder
Tomoro
full-time
Posted on:
Location Type: Hybrid
Location: London • United Kingdom
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About the role
- AI Builders sit at the intersection of Tomoro's two practices: AI Engineering and Human Productivity.
- Some weeks you're shipping a prototype.
- Other weeks you're embedded with a client team, finding the workflow that AI should own.
- You need to be good at both.
- You are not a software engineer. You are not a management consultant. You are both and neither.
- You use AI agents as your primary tool for building, and you use consulting instincts to work out what's worth building in the first place.
Requirements
- Take a client problem from brief to working prototype, fast — days, not months
- Use AI-assisted development tools (Claude Code, Cursor, Codex) as your default way of building
- Work across modalities: LLMs, image generation, voice, video, and whatever comes next
- Make product and design decisions — what should this be, how should it feel, is it good enough to put in front of a client
- Ship deployed prototypes, not slide decks
- Extract and apply brand identity from public sources and client materials
- Embed with client teams to observe how work actually happens — not how they describe it
- Find high-value workflow opportunities: where AI removes work, improves work, or makes new work possible
- Run discovery conversations that get to the root of how someone spends their time
- Design and ship reusable workflow assets: prompt patterns, templates, Custom GPTs, quality checks
- Coach teams through behaviour change — from 'I should use AI more' to 'I default to AI'
- Know when something should stay as off-the-shelf tooling and when it needs a custom build
- Run client discovery sessions and shape ambiguous problems into clear next steps
- Present to senior stakeholders — marketing directors, heads of people, C-suite
- Build trust quickly with people who may be sceptical, overwhelmed, or both
- Write clearly — briefs, recommendations, async updates
- Work autonomously: find what's needed, go get the information, make it happen
- You default to AI. Not as a novelty, but as how you work. You use agents to research, build, write, analyse, and ship. You know when the agent is helping and when it's hallucinating. You iterate fast, verify intelligently, and treat outputs as drafts to shape — not answers to accept.
- You care about the quality of what you make. Not just whether it works, but whether it's good — whether someone using it would feel something. You make intentional design choices. You know when to stop.
- You can walk into a room where nobody has a clear brief and leave with a plan. You ask sharp questions. You listen for what people aren't saying. You find the highest-value problem, not just the most obvious one.
- You know what's out there. Not just LLMs — image, video, 3D, voice, music, world models. You've tried them. You have opinions. You can connect that knowledge to real applications: not 'I know about Sora' but 'here's what you could build with it for this client.'
- The answer is rarely handed to you. You work it out. You dig, hustle, and figure things out on your own. When you hit a wall, you find another way around it. You don't wait for permission or perfect information.
Benefits
- Holiday entitlement of 25 days + bank holidays
- Aviva Private medical insurance
- Medicash wellness cash plan to help cover the cost of everyday healthcare needs
- Life Policy
- Employee Assistance Programme with access to 24/7 helpline for in-the-moment support from qualified BACP counsellors
- Company pension
- Access to exclusive discount & savings platforms
Applicant Tracking System Keywords
Tip: use these terms in your resume and cover letter to boost ATS matches.
Hard Skills & Tools
AI-assisted developmentprototypingworkflow designLLMsimage generationvoice technologyvideo technologyCustom GPTsquality checksbehaviour change coaching
Soft Skills
client engagementtrust buildingclear writingautonomyproblem-solvingactive listeningdesign decision-makingcommunication with stakeholdersdiscovery conversationsiterative thinking