Pre-screened and vetted in the Bay Area.
Senior Full-Stack Developer specializing in Azure cloud-native microservices
Mid-level Full-Stack Engineer specializing in AI-powered marketplace and SaaS platforms
“Engineer focused on real-time collaborative canvas products and AI-assisted design workflows, with hands-on ownership of both multiplayer infrastructure and LLM-powered generation systems. They combine strong TypeScript/full-stack architecture with production-grade AI evals and observability, and cite meaningful outcomes including zero sync-conflict bugs, rollout to 50,000+ DAUs, and major gains in onboarding speed and engagement.”
Mid-level Software Engineer specializing in backend systems and AI-powered platforms
“Backend engineer who built a production retrieval-augmented narrative analysis platform for 100-page screenplays using a Node/Express orchestrator and a Python/FastAPI AI engine, including a key redesign from disk-based uploads to in-memory streaming to eliminate Windows file-lock failures. Also led a refactor of a municipal vehicle tracking system into a C-based distributed engine handling 4M+ daily packets with 99.99% data integrity and automation that reduced manual ops by 50%.”
Mid-Level Software & Machine Learning Engineer specializing in cloud-native microservices and LLMs
“Backend engineer who owned the API layer for an AI trust/analytics dashboard (trust scores, stability checks, public verification endpoints) using Python/FastAPI and Postgres. Has hands-on DevOps experience deploying FastAPI and Node.js services to AWS Kubernetes with GitHub Actions + ArgoCD GitOps, plus Kafka-based real-time event streaming and careful staged migration practices (shadow traffic/dual writes, rollback planning).”
Junior Full-Stack/AI Engineer specializing in web platforms and LLM applications
“Backend engineer from FoodSupply.ai who built and evolved a scalable restaurant/supplier product and order management platform using Node.js and REST APIs. Implemented a hybrid MySQL+MongoDB data architecture, optimized performance with Redis/Prisma, and led a phased migration with feature flags and a temporary sync layer to maintain data consistency. Strong focus on production security (OAuth2, RBAC, row-level security, AWS IAM) and reliability practices (testing with Pytest, Docker/AWS pipelines).”
Junior Full-Stack Java Developer specializing in Spring Boot microservices and cloud DevOps
“Software engineer with hands-on production experience deploying Spring Boot services to AWS using Docker and Jenkins CI/CD, focused on stable releases, easy rollback, and performance improvements through monitoring/logging and query optimization. Has proven cross-layer troubleshooting skills (identified packet loss causing intermittent timeouts via network traces) and experience collaborating on-site with operators in industrial/IoT-style environments, including working alongside robotics/PLC teams.”
Junior Full-Stack Software Engineer specializing in Java/Spring Boot, React, and cloud microservices
Junior Software Engineer specializing in backend systems and RAG applications
Mid-level Software Developer specializing in Java, APIs, and Android
Mid-level Full-Stack Developer specializing in cloud-native microservices and React
Mid-level Frontend/Full-Stack Engineer specializing in React, Angular, and AI-driven apps
Junior AI/ML Engineer specializing in LLMs, recommender systems, and computer vision
Mid-level Software Engineer specializing in Cloud, DevOps, and Generative AI
Mid-level Software Engineer specializing in distributed systems and high-performance networking
Mid-level Full-Stack Developer specializing in scalable web apps and cloud-native APIs
Junior AI Software Engineer specializing in full-stack LLM applications
“Early-stage product engineer who built an AI persona chat system end to end at Super Intro, spanning Next.js frontend, GraphQL/real-time backend, retrieval memory, and LLM-based matching. They combine strong TypeScript rigor with practical AI systems design, and cite measurable impact including ~40% engagement growth, ~30% recall improvement, and lower LLM costs in production.”