Riverflex
AI

[Permanent] AI Engineer

Riverflex · Amsterdam, NH, NL

Actively hiring Posted 4 months ago

Role overview

As a hands-on lead engineer, you’ll design and build AI-powered services using LLMs, modern orchestration frameworks, and robust engineering practices. You’ll partner closely with data, product, and software teams to integrate these systems into real-world applications. You’ll also play a key role in growing our AI expertise & capability, developing frameworks/accelerators/best practices/etc. and mentoring our AI engineers.

Responsibilities

  • Build scalable AI and GenAI systems using transformer-based models (e.g. GPT, Mistral, Claude) and RAG architectures
  • Design and implement ML/AI pipelines including model training, evaluation,prompt chaining, embedding retrieval, and context management (MCP protocols)
  • Engineer modular, well-tested Python code for AI agents, APIs, and microservices
  • Apply ML Ops practices for reproducible training, deployment, and monitoring of models in production
  • Use orchestration tools (LangChain, Semantic Kernel, n8n) to implement agent workflows and end-to-end AI experiences
  • Collaborate with product and engineering teams to integrate AI into user-facing applications
  • Partner with data engineering to build feature stores, vector search capabilities, and serve curated data
  • Optimize AI systems for cost, latency, and scalability across Azure infrastructure (e.g., Azure ML, Azure AI Services)
  • Lead on best practices around prompt evaluation, testing, model performance monitoring, and human-in-the-loop feedback
  • Mentor and guide teammates (internally and at clients) on AI Engineering
  • Champion responsible AI design, including bias mitigation and data privacy safeguards

Basic qualifications

  • 7+ years of software or ML engineering experience, including 2+ years working on GenAI/LLM-based products
  • Strong Python engineering skills (typing, testing, packaging, dependency management)
  • Solid understanding of ML and NLP/LLM fundamentals—tokenization, attention, transformers, embeddings, supervised/unsupervised learning, etc.
  • Hands-on experience building with LLMs, prompt chaining, and retrieval-augmented generation (RAG)
  • Familiarity with Model Context Protocol (MCP) standards: schema design, context injection, context window management
  • Experience with orchestration and agentic frameworks (LangChain, Semantic Kernel, GPT agents)
  • Experience working in CI/CD environments with ML Ops tooling (e.g., MLflow, AzureML, Kubeflow)
  • Deep understanding of API design, microservices, and distributed system architecture
  • Experience deploying scalable workloads on cloud platforms (Azure preferred) using Docker/Kubernetes
  • Proven experience mentoring engineers and leading technical workstreams
  • Experience with vector databases (e.g., Pinecone, FAISS, Weaviate)
  • Familiarity with serverless deployment patterns and infrastructure-as-code (e.g., Terraform, CDK)
  • Exposure to human-in-the-loop feedback systems and ethical AI design
  • Experience in AI governance, risk mitigation, and AI performance tuning
  • Consulting or client-facing delivery experience in data/AI-driven environments

Benefits

  • 25 days off per year plus closure between Christmas and New Year's.
  • Flexible remote work from abroad options for up to 6 weeks per year.
  • Learning & Development budget, including full access to Udemy courses.
  • Classpass membership to support well-being.
  • Latest tech & tools, including home office budget and professional software subscriptions.
  • Equity share scheme to give long-term team members ownership in Riverflex.
  • Be a Pioneer: Contribute to the development of Riverflex’s Software Engineering domain.
  • Impactful Work: Work on high-profile projects with major clients like IKEA and deliver tangible results.
  • Growth Opportunities: Gain exposure to advanced AI tools, machine learning, and enterprise-level software solutions in a dynamic environment.
  • Supportive Culture: Work in a team that values innovation, creativity, and continuous learning.

Tags & focus areas

Used for matching and alerts on DevFound
Fulltime Remote Ai Ai Engineer Machine Learning Generative Ai
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