Logo
bungalow

AI Applications Engineer

bungalow, San Francisco, California, United States, 94199

Save Job

Context

At Landmark, we believe better living starts with exceptional experiences for owners, residents, and our operating teams. Born out of the engineering labs at co-living leader Bungalow, Landmark is reimagining property management from the ground up. Landmark is building a future where AI and human expertise work together to deliver responsive service, smart operations, and vibrant communities that people are proud to call home. As we scale, we're seeking a forward-thinking AI Applications Engineer to help bring this vision to life. The AI Applications Engineer is at the core of our mission: building intelligent solutions that automate and enhance property management workflows. You\'ll design and implement AI-driven features, ensuring our solutions are scalable, reliable, and impactful on day-to-day operations. We\'ll work together to build and you might own: semantic search spanning multiple systems automatic support request triaging and classification for owners and residents interactive communications with owners and residents translating natural-language inquiries into concrete data visualizations image content classification multi-agent systems supporting end-to-end maintenance workflow automations and more… If you\'re passionate about pushing the AI frontier to solve real-world challenges and fundamentally shape automation in one of the world\'s most essential industries, then let\'s connect! Your Mission

AI Feature Development:

Design and develop AI-driven applications and features that automate and augment property management processes across multiple systems [e.g. automating customer inquiry handling, maintenance request coordination, labor dispatching, leasing and marketing optimizations, and internal reporting]. Semantic Search:

Develop semantic search capabilities [e.g. RAG - leveraging embeddings and vector databases] to enable intelligent querying of both structured and unstructured data, so users can quickly find relevant information across our platform. Agentic AI Solutions:

Build agent-based AI workflows [using frameworks like LangGraph] that can interact with tools and databases to perform multi-step tasks autonomously, with appropriate human-in-the-loop oversight for critical decisions. Tuning + Optimization:

Fine-tune and customize AI/ML models [using techniques such as LoRA] to improve performance on domain-specific problems and continuously evaluate their effectiveness. Integration + Deployment:

Own your software end-to-end from initial development to deployment. Containerize and deploy AI services using Docker and cloud infrastructure. Ensure these systems are configurable, scalable, secure, reliable, observable, and maintainable. Cross-Functional Collaboration:

Work closely with Operations and Data teams to identify opportunities for new automations and optimizations. Translate real-world property management challenges into effective AI-powered solutions, and iterate based on feedback. Frontier Exploration:

Stay up-to-date with the latest advancements in AI [LLMs, tools, frameworks] and proactively bring new ideas and experimental prototypes to the team. We encourage following your curiosity to keep Landmark at the cutting edge of AI-powered automations. Minimum Viable Skillset

Experience: 2+ years with a strong focus on Python and AI applications Tools: LangChain, LangGraph, HuggingFace, MCP, or similar Core Skills: Strong software engineering skills. Proficiency with Linux environments and software integration/deployment, including containerization, RESTful API usage, dependency management, and working with databases [SQL or NoSQL]. Hands On, All In: Thrives in lean, high-impact startup teams. Owns and creates systems end-to-end with minimal oversight. Perks + Parameters

Salary: $160K – $190K [depending on experience] Equity: Competitive Location: Presidio, San Francisco, CA [hybrid - 3 days/week] Benefits: Health, dental, and vision The Stack

AI: LangChain, Pinecone, PyTorch, Gradio Backend: Python, Django, GraphQL, REST APIs, FastAPI Data: PostgreSQL, Redshift, Metabase Infrastructure: AWS, Airflow, Vercel Observability: Sentry, AWS Cloudwatch, Slack Frontend: Vue, Vuetify, TypeScript

#J-18808-Ljbffr