Aphex
See how your profile stacks up against this role.
We compared the job requirements to your profile to show where you're strong and where you fall short.
We're the construction execution platform replacing outdated spreadsheets with multiplayer tools that delivery teams love. Major contractors like Acciona, CPB Contractors, John Holland, and McConnell Dowell use Aphex to deliver projects from Β£50 million to multi-billion pound mega projects.
We're market-leading in Australia and the UK, supporting teams building the roads, rail, tunnels, and hospitals that millions use every day. We're leaning further into AI as a core part of where the product goes next, and we've started building the foundational pieces.
Construction has been underserved by technology for decades, and it's now at real risk of being left behind by AI. We don't intend to let that happen. Aphex builds the orchestration layer the world's major construction projects run on, and AI is central to where we take it next. This role is for someone who wants to be at the heart of that, not just shipping AI features, but helping shape how an entire industry puts AI to work.
You'll start hands-on, building and shipping our AI features in the real product. From there it grows. As you learn what works, you'll help set the standard for how we build, evaluate and monitor AI across Aphex. Practical first, then broadening into the bigger picture.
Translate briefs into working AI features, selecting the right model and implementation approach for the use case
Test inputs and outputs before shipping
Ship AI features into the real product
Monitor and evaluate AI feature performance in production
Dig into real inputs and outputs to find where prompts or implementations can be better
Keep every AI feature across the platform accurate and reliable over time
Build the evaluation coverage that catches regressions before users do
Refine prompts and implementations based on how features actually behave in the wild
Research evaluation and implementation techniques, and bring recommendations, not just problems
Decide what good looks like and measure it systematically
Essential:
You can explain technical concepts, tradeoffs, and constraints clearly in close 1-on-1 work
You take ownership of what you build and keep it working over time, rather than shipping and moving on
Strong written and verbal communication for async, cross-timezone collaboration
Highly valued:
Hands-on experience building LLM-based features and evaluating them in production: LLM APIs, prompt engineering, handling AI outputs, iterating on real results
Shipped AI features to real users and handled the monitoring, debugging, and iteration that follows
Familiarity with LLM evaluation frameworks and tooling such as LangSmith or equivalent
Familiarity with RAG, vector databases, or similar techniques (or the fundamentals to pick them up fast)
Full-stack TypeScript/React (the role may grow to include implementation over time)
A habit of staying current with AI and judging when a new technique is actually worth adopting
Not looking for:
Build-and-forget engineers who ship AI features and never check whether they're working
People who want to work in isolation rather than in close daily partnership
Candidates targeting senior architect, pure research, or team-lead roles. This is a hands-on, mid-level role
The people using Aphex are time-poor. They're planners, engineers, and project managers running billion-pound projects, and every minute our AI saves them is time back in their day. The AI we're building needs to be accurate and reliable, every day, on real project data. Building AI features is one thing. Keeping them genuinely working once real users depend on them is what turns a valuable feature into something construction teams rely on every day.
Remote-first role with a thriving Philippines-based engineering team
Annual team offsite, all expenses paid, to connect in person
Online socials with an Airwallex card for team lunches and activities
20 days PTO + Philippine public holidays (all paid)
5 days sick leave (plus discretionary extra as needed, we're humans, not machines)
Comprehensive private healthcare with family plan option
β±2,000 monthly rice allowance
A few stages to make sure it's a great fit on both sides: a brief one-way video screening on Willo (a few minutes), a coding challenge, then two Google Meet conversations with the team. We'll guide you through each step.
After you apply, unlock the direct contact details of the people who actually make the call. A quick follow-up makes you 5x more likely to land an interview.
Marcus Rivera
Chief Revenue Officer

Welo Global

Welo Global

Aphex

Welo Global

Welo Global

Aphex