Breezy | AI Product Engineer (Mid–Senior) | Remote (US) | Full-time | $120k–150k + Equity | https://www.getbreezyapp.com
Remote (Anywhere)
Accepting Applications
Full-time
Remote
Posted 1 week, 3 days ago
4 views
0 applications
Job Description
Breezy | AI Product Engineer (Mid–Senior) | Remote (US) | Full-time | $120k–150k + Equity | https://www.getbreezyapp.com
Breezy builds modern field service software for residential HVAC companies. The industry still runs on legacy systems like ServiceTitan and Housecall Pro. We’re replacing them with a modern platform that combines strong product design, practical automation, and applied AI.
We’re a small, senior team building quickly with real customers. We value engineers who like owning problems end-to-end and shipping thoughtful software.
We’re hiring an AI Product Engineer to help build new product capabilities across the platform. You’ll work across the stack (TypeScript, React, Node.js, PostgreSQL) and contribute to features that incorporate LLMs and automation where they meaningfully improve the product.
Engineers on our team regularly use modern development tools such as Claude Code, Codex, and Cursor as part of their workflow.
This role is well suited for engineers who enjoy building real products, working across the stack, and having meaningful ownership in an early-stage startup.
What we’re looking for
• Strong full-stack engineering skills
• Comfort working with LLMs and AI-assisted development tools
• Product-minded engineers who like shipping quickly
• Builders who want large ownership and impact in a small team
Tech stack: TypeScript, React, Node.js, PostgreSQL, Kubernetes, AWS
Comp: $120k–150k + equity, health benefits, 401(k), remote-first with periodic team offsites
To apply: Email jobs+mar26@getbreezyapp.com with your resume and links to your work (GitHub, LinkedIn, personal projects).
More jobs from Unknown Company
Hey all, Cassidy (https://cassidyai.com, Series A, ONSITE: New York City) is growing fast and we're hiring across a few critical roles in NYC.
8 hours, 31 minutes agoThis is a classic example of why generic ATS filters and keyword-based AI fail both candidates and EMs. When the screening process is a black box, you lose high-signal candidates before a human even sees their CV.
8 hours, 32 minutes agoSenior Python Backend Engineer | REMOTE
8 hours, 31 minutes ago
Login to Apply
Don't have an account? Register