
Ativa os alertas de emprego por e-mail!
Cria um currículo personalizado em poucos minutos
Consegue uma entrevista e ganha mais. Sabe mais
A leading AI-driven construction platform in São Paulo is looking for a highly experienced Staff Machine Learning Engineer to focus on LLM and GenAI systems. The ideal candidate will have over 8 years of experience in machine learning and will thrive in ambiguous environments, driving technological direction and excellence across the team. You'll collaborate with product and engineering stakeholders to deliver impactful ML-driven solutions while maintaining strong technical standards. This role offers an exciting opportunity to leverage your expertise in a fast-paced startup environment.
Handoff is the AI agent that runs a construction company. We help remodelers automate estimating, streamline operations, and win more work - backed by real-time cost data, intuitive design, and workflows that “speak contractor.” With over 10,000 monthly active users and $6B in annualized project volume already flowing through our platform, we’re becoming the trusted partner for the people who build our homes.
We are backed by $25M+ raised from Y Combinator, Initialized, and Greycroft. Our team is distributed across hubs in Austin, São Paulo, and Buenos Aires, and we are deeply focused on building intuitive, high-impact solutions that make a real difference for our users.
As a Staff engineer, you will focus primarily on GenAI and LLM-based systems, while maintaining a strong generalist foundation across machine learning, data, and production systems. This role is ideal for a highly experienced, hands‑on engineer who thrives in ambiguous problem spaces and enjoys shaping technical direction through influence rather than formal management. Your impact will come from setting standards, unblocking complex problems, guiding architectural decisions, and elevating the overall quality and velocity of ML work across the team.
If you enjoy shaping the technical direction of AI systems, tackling ambiguous problems, and using GenAI to deliver meaningful user and business impact, we’d love to hear from you!