Software Engineer - RAG, Knowledge Graphs & Agentic Systems

Riverty GmbH
2 days ago

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English

Job location

Tech stack

Java
Artificial Intelligence
Python
Performance Tuning
Software Engineering
TypeScript
Large Language Models

Job description

You will work embedded in our product and domain teams, building the AI-driven features that directly reach users. Your focus lies on RAG pipelines, knowledge graphs, context engineering, and multi-step agentic workflows. You translate AI capabilities into practical, reliable, and scalable product functionality. You will play a key role in developing Riverty's AI platform to accelerate software engineering productivity. You will design and implement AI-driven solutions based on Large Language Models, agentic architectures, and knowledge graphs - building the foundation for automation and intelligent developer workflows across our tech organization., * Build and optimize RAG pipelines, including retrievers, embeddings, indexing workflows, and evaluation logic.

  • Integrate and leverage knowledge graphs to provide structured context for AI systems and agents.
  • Implement agentic multi-step workflows using MCP clients, orchestration logic, and supporting tooling.
  • Develop prompting strategies, chunking logic, and context preparation aligned with real product requirements.
  • Integrate AI models into existing Riverty platforms.
  • Conduct performance tuning, benchmarking, and cost optimization for RAG and agentic patterns.
  • Work closely with Platform Engineers to adopt shared SDKs, gateway patterns, and architectural standards.
  • Maintain clear documentation and contribute to a shared understanding of best practices in context engineering.

Requirements

  • Strong software engineering fundamentals in Java, Python, or TypeScript.
  • Experience or strong motivation to work with RAG pipelines, retrieval systems, vector stores, or graph technologies.
  • Ability to translate AI capabilities into real, user-facing product features.
  • Structured, reliable working style with strong ownership and focus on delivery.
  • High affinity for data-driven systems, search logic, and context architectures.
  • Collaborative mindset and clear communication in cross-functional environments.
  • Fluent in written and spoken English.

Apply for this position