Intellectsoft logo
Intellectsoft

Engineering Your Vision

Native AI Engineer

AI EngineerMachine Learning EngineerFull TimeRemoteMid LevelTeam 51-200H1B No SponsorCompany SiteLinkedIn

Location

Northern America + 4 moreAll locations: Northern America | Latin America (LATAM) | Nordic countries | Northern Europe | Western Europe

Posted

6 days ago

Salary

0

Seniority

Mid Level

No structured requirement data.

Job Description

Native AI Engineer

Intellectsoft

Role Description Our client is a rapidly scaling, remote-first software provider specializing in governance technology. They streamline mission-critical decision-making and meeting workflows for high-level corporate leadership. Their diverse client base features leading European industrial groups, major media conglomerates, and energy giants, including several Tier-1 publicly traded corporations. - Tech stack: ASP.NET Core, React.js, F#, functional programming, event-driven architectures, AI, Azure. - AI & Agentic Frameworks: Proven experience building AI features into production SaaS products, including Agentic tools, RAG pipelines, and Model Context Protocol (MCP). - Vector Infrastructure: Deep understanding of vector databases and semantic search optimization. - Backend Engineering: Strong proficiency in ASP.NET Core and F# (or a deep commitment to Functional Programming paradigms). - Architecture: Experience designing and maintaining scalable, event-driven architectures. - Cloud Ecosystem: Hands-on experience with Azure deployments, specifically leveraging Azure AI infrastructure. - Frontend Integration: Experience working with React.js to deliver seamless, intuitive AI-driven user experiences. Nice to have: - Familiarity with benchmarking and evaluating different LLM providers and models' unique capabilities to optimize cost and latency. - Experience with advanced prompt engineering, fine-tuning workflows, or guardrail implementation. - Knowledge of modern CI/CD practices for AI/MLOps in an Azure environment. Responsibilities - AI Feature Development: Design, build, and deploy production-grade AI capabilities into our SaaS product, utilizing RAG pipelines, autonomous agentic tools, and Model Context Protocol (MCP). - Architectural Engineering: Architect and maintain highly scalable, reliable backend solutions using ASP.NET Core and F#, strictly adhering to functional programming principles and event-driven architectures. - Vector & Data Management: Implement and optimize vector databases to ensure ultra-low latency, highly accurate semantic search and contextual data retrieval. - Model Selection & Evaluation: Evaluate, benchmark, and integrate diverse LLMs and foundation models, matching their unique capabilities to specific product requirements for optimal cost, speed, and accuracy. - Cloud & AI Infrastructure: Orchestrate and manage secure, scalable workloads within the Azure ecosystem, specifically leveraging Azure AI deployments. Benefits - Udemy courses of your choice. - Team-buildings, events, marathons & charity activities to connect and recharge. - Workshops, trainings, expert knowledge-sharing that keep you growing. - Clear career path. - Absence days for work-life balance. - Flexible hours & work setup - work from any of listed locations and organize your day your way.

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