AI transformation and modern software delivery for regulated industries
Zartis is a technology consulting firm helping organizations implement AI at scale, with a particular focus on regulated sectors like financial services, energy, and healthcare. The stack reveals a dual-track engineering model: Java/Spring/Kafka for enterprise systems, and Python/FastAPI/LangChain for AI workloads—an architectural split that mirrors their consulting positioning around both legacy modernization and generative AI integration. Active adoption of Claude, Cursor, and GitHub Copilot alongside LangChain/LangGraph signals they're building hands-on expertise in LLM systems, not just selling strategy.
Zartis, founded in 2009 and based in Cork, Ireland, operates as a global technology consulting partner with 201–500 employees distributed across Bulgaria, Portugal, Poland, and Indonesia. The firm specializes in AI transformation, modern software delivery, and compliance automation, working with enterprises in financial services, energy, healthcare, and other highly-regulated industries. Their engagement model spans strategy and enablement through to implementation and ongoing operations, covering AI-enabled SDLC, agentic systems, enterprise software architecture, and cloud platforms. Recent project work includes compliance automation platforms, entity resolution systems, AI supplier-matching infrastructure, and digital transformation initiatives across fashion and energy sectors.
Zartis uses Java, Kotlin, Spring Boot for enterprise backend; Python, FastAPI, Django for AI systems; Vue and React for frontend; Kafka for streaming; Azure and AWS for cloud; Kubernetes and Terraform for infrastructure; and LangChain, LangGraph, and Claude for generative AI workloads.
Yes. Zartis is an Anthropic partner supporting teams building with Claude and Claude Code. Claude appears in both their active tech stack and adopting list, alongside Cursor and GitHub Copilot, indicating production use in client engagements.
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