Full-Stack Developer

Clera connects exceptional engineering talent with early-stage startups building AI-native products, scalable SaaS, and consumer applications. We represent engineers who ship quickly, influence product direction, and work directly with founders and product teams. Opportunities are with a cohort of vetted early-stage companies; specific role details and locations vary by client.

We are seeking Full-Stack Developers who deliver end-to-end features and take ownership across the stack. Successful candidates balance pragmatic engineering with product focus, shipping reliable, user-facing functionality that integrates AI where appropriate.

What you will do

  • Own design and delivery of end-to-end features: API design, data modeling, frontend implementation, and production deployment.
  • Ship polished user experiences with attention to usability, performance, and maintainability.
  • Integrate AI capabilities (e.g., LLMs, RAG, embeddings, tool-calling) into product workflows and make intelligence reliable for end users.
  • Design and implement backend services, data schemas, and operational tooling (CI/CD, monitoring, testing).
  • Collaborate closely with founders, product, and design to define success metrics, prioritize work, and iterate based on user feedback and telemetry.
  • Participate in architecture and roadmap discussions and make pragmatic trade-offs appropriate for early-stage growth.

Minimum qualifications

  • 2–8 years of professional software engineering experience with a track record of shipping user-facing or backend products.
  • Proficiency across the stack: TypeScript with React (or similar) on the frontend and Python or Node.js on the backend.
  • Experience with relational or NoSQL databases (e.g., PostgreSQL) and familiarity with cloud platforms (AWS, GCP, or equivalent).
  • Practical, production-level experience deploying or integrating LLMs or other AI services (engineering-focused).
  • Comfort working in small teams with limited process and high ambiguity; ability to move fluidly between frontend, backend, and operations tasks.

Preferred qualifications

  • Experience with retrieval-augmented generation (RAG), vector databases, embeddings, or retrieval pipelines.
  • Familiarity with agent/workflow orchestration frameworks or tools (e.g., Temporal, LangGraph) and multi-agent systems.
  • Experience building automated tests, evaluation pipelines, and monitoring for AI systems to ensure reliability beyond prototypes.
  • Background building multi-tenant or enterprise-ready systems or working in regulated industries (healthcare, fintech, legal).

What successful candidates value

  • Ownership: delivering end-to-end features from data model to production and monitoring.
  • User-centric engineering: building maintainable code that solves measurable user problems.
  • Pragmatic architecture: choosing practical solutions that accelerate impact in an early-stage environment.
  • Continuous learning: adopting tools and practices that improve speed without sacrificing reliability and safety.

Location and role format

  • Opportunities vary by client and may be remote, on-site, or hybrid. Specific location and workplace expectations depend on the hiring company.

Interview process (typical)

  • Screening conversation to assess fit, communication, and interest in AI-driven product work.
  • Technical deep-dive on architecture and system design for real-world AI problems.
  • Coding or pairing session to evaluate practical engineering and product delivery skills.

Clera represents engineers to early-stage startups and prioritizes a candidate-first experience that lets you focus on technical fit and product impact.

Apply
We use cookies to offer you our service. By continuing to use this site, you consent to our use of cookies as described in our policy