Pre-screened and vetted.
Junior Machine Learning Engineer specializing in AI automation and LLM workflows
Junior Software Engineer specializing in APIs, data pipelines, and LLM/RAG systems
Senior Full-Stack Software Engineer specializing in AI/ML and LLM automation
Junior Full-Stack & ML Engineer specializing in AI-powered web products
Mid-level AI & Data Engineer specializing in RAG and analytics platforms
Senior Full-Stack Python Engineer specializing in SaaS, cloud, and microservices
Junior Full-Stack Python Developer specializing in cloud-native web applications
Mid-Level Full-Stack Software Engineer specializing in cloud-native microservices and FinTech
Junior Machine Learning Engineer specializing in deep learning and healthcare AI
Mid-Level Full-Stack Software Engineer specializing in cloud microservices and mobile apps
Junior AI/ML Engineer specializing in RAG and multi-agent LLM systems
Mid-level AI/ML Engineer specializing in MLOps, streaming data, and NLP/CV
Mid-level Backend Software Engineer specializing in AI-powered microservices and cloud infrastructure
Mid-Level Full-Stack Java Developer specializing in React, Spring Boot, and cloud microservices
Senior AI/Software Engineer specializing in cloud security and AI-powered applications
Mid-level AI Engineer specializing in Generative AI, LLMs, and RAG on AWS
“Built and deployed an LLM-powered clinical decision support and risk monitoring platform for mental health at Valuai.io, emphasizing low-latency, evidence-grounded responses and crisis-safe behavior with clinician escalation. Strong production agent-orchestration background (LangChain/CrewAI) plus rigorous evaluation (clinician-in-the-loop + evaluator agent) and large-scale synthetic testing; also applied multi-agent workflows to document verification and fraud detection during an AI internship at Nixacom.”
Junior AI/ML Software Engineer specializing in LLM agents and RAG systems
“AI/back-end engineer at Canon who helped build and operate an internal production LLM platform that acts as a secure middle layer between users and models, defending against jailbreaks/prompt injection while enabling RAG, memory, and grounded responses over company data. Experienced with LangChain/LangGraph orchestration, vector DB retrieval, and reliability practices (testing, monitoring, adversarial prompts) to run high-throughput, low-latency AI workflows in production.”
Junior AI Integration Engineer specializing in LLM agents and RAG on cloud platforms
“Built and deployed LLM-powered features for a startup organizational management application, focusing on real-world deployment constraints like latency and cost. Implemented RAG with FAISS and improved retrieval quality by switching embedding models (OpenAI/Hugging Face) and fine-tuning embeddings on medical corpora for a medical-report UI feature. Uses LangChain and LangGraph to orchestrate multi-node LLM API workflows and evaluates systems with metrics like latency, cost per request, and error taxonomy.”
Mid-Level Full-Stack Engineer specializing in real-time systems and FinTech
“Backend engineer with hands-on experience modernizing a real-time logistics/tracking platform from a tightly coupled polling architecture to a service-oriented/microservices design using Node.js and WebSockets. Emphasizes contract-first FastAPI development, defense-in-depth security (JWT/OAuth, RLS/Supabase), and safe incremental migrations with feature flags and strong observability, delivering sub-second updates and improved performance under peak load.”
Mid-level AI Engineer and Data Scientist specializing in LLM agents and RAG systems
“Built a production-grade LLM evaluation and regression system that stress-tests models across hundreds of iterations, combining LLM-as-judge, semantic similarity, statistical metrics, and rule-based checks, with results delivered via stakeholder-friendly HTML reports and dashboards. Experienced orchestrating multi-agent RAG workflows using LangChain/LangGraph and event-driven GenAI pipelines in n8n integrating OCR, speech-to-text, and external APIs, with strong emphasis on reliability, observability, and explainable failures.”