A Software Services Company
AI Engineer
Location
Europe
Posted
13 days ago
Salary
0
Seniority
Senior
Job Description
AI Engineer
Zartis
• Build and extend multi-agent systems and agentic workflows using frameworks such as AWS Agent Core and AWS Bedrock Flows (or equivalent orchestration tools). • Develop and integrate Retrieval-Augmented Generation (RAG) pipelines for internal tools. • Implement LLM-powered chatbots, assistants, and autonomous agents tailored to specific business use cases. • Collaborate closely with the Team Lead to understand requirements and translate them into reliable, scalable implementations. • Take existing proof-of-concept or in-progress AI systems and harden them to production-grade standards. • Pipeline AI components together within the AWS and Databricks ecosystem, ensuring reliable end-to-end data and model workflows. • Apply best practices in observability, logging, and monitoring for deployed AI systems. • Contribute to CI/CD processes for model and prompt deployment where applicable. • Mentor and support other engineers within AI. • Communicate progress, blockers, and technical decisions clearly to both technical and non-technical stakeholders. • Participate in technical discussions and contribute to architectural decisions for AI systems.
Job Requirements
- Solid background in data science, data engineering, or a related discipline, with practical AI/ML experience.
- Proven, hands-on experience building agentic AI systems, LLM-powered applications, and RAG pipelines — not just training classifiers or regressors.
- Strong working knowledge of the AWS ecosystem, particularly services relevant to AI/ML workloads (e.g. Agent Core, Bedrock, SageMaker, or AWS Runs).
- Experience with Databricks for data engineering, ML pipelines, or model serving.
- Ability to work independently, manage your own delivery, and produce clean, maintainable code.
- Experience with LLM orchestration frameworks such as LangChain, LlamaIndex, or LangGraph (Nice to have).
- Familiarity with vector databases or graph-based retrieval techniques (Nice to have).
- Exposure to Slack API integrations or building knowledge tools on top of internal communication platforms (Nice to have).
- Understanding of prompt engineering, LLM evaluation, or fine-tuning workflows (Nice to have).
- Knowledge of MLOps or LLMOps practices, including model versioning and deployment automation (Nice to have).
- Experience working in regulated or compliance-aware environments (Nice to have).
Benefits
- 100%Remote Work
- WFH allowance: Monthly payment as financial support for remote working.
- Career Growth: We have established a career development program accessible for all employees with a 360º feedback that will help us to guide you in your career progression.
- Training: For Tech training at Zartis, you have time allocated during the week at your disposal. You can request from a variety of options, such as online courses (from Pluralsight and Educative.io, for example), English classes, books, conferences, and events.
- Mentoring Program: You can become a mentor in Zartis or you can receive mentorship, or both.
- Zartis Wellbeing Hub (Kara Connect): A platform that provides sessions with a range of specialists, including mental health professionals, nutritionists, physiotherapists, fitness coaches, and webinars with such professionals as well.
- Multicultural working environment: We organize tech events, webinars, parties, and activities to do online team-building games and contests.
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