We help to manage business partner master data powered by #datasharing
Senior Software Developer, AI
Location
Poland
Posted
7 days ago
Salary
0
Seniority
Senior
Job Description
Senior Software Developer, AI
CDQ
• Designing and implementing AI agents with reasoning pipelines (e.g., multi-step workflows, RAG-based decision making) • Integrating AI capabilities such as LLM-powered services, semantic search, and intelligent automation • Contributing to scalable architectures for data- and event-driven systems • Improving, refactoring, and maintaining existing code bases • Designing tasks in collaboration with the Team Lead and Product Owner • Participating in code reviews, architecture discussions, and knowledge sharing
Job Requirements
- 5+ years of professional experience
- Java
- Spring Boot
- Docker
- AI-related: Spring AI
- Experience integrating LLMs into applications (OpenAI API, Anthropic, local inference, etc.)
- Understanding of vector databases (Milvus, Pinecone, Qdrant, Elasticsearch)
- AWS Bedrock
- LangChain4j
- Knowledge of embeddings, prompt engineering basics, and retrieval-augmented generation (RAG)
- Understanding Model Context Protocol
- Polish – C1 (required)
- English – C1/B2+ (required)
Benefits
- Professional development
- Collaboration with the Team Lead and Product Owner
Related Guides
Related Job Pages
More AI Engineer Jobs
• Design, build, and deploy production AI applications, copilots, retrieval systems, and agentic workflows • Translate business problems into scalable technical solutions using modern AI engineering best practices • Develop backend services, APIs, and application architectures that integrate AI capabilities into enterprise systems • Build multi-agent systems, AI agents, workflow automation, and decision-support systems • Deploy AI solutions into production with appropriate security, observability, monitoring, evaluation, and governance • Design AI systems that integrate with enterprise data platforms, APIs, databases, messaging systems, and business applications • Collaborate with cross-functional client teams including engineering, data, product, architecture, security, and business stakeholders • Experience deploying and operating containerized applications on Kubernetes, including scaling, service networking, resource management, and production monitoring • Contribute reusable accelerators, frameworks, technical assets, and thought leadership that strengthen the AI Engineering practice • Stay current with emerging AI technologies and recommend practical approaches that improve client outcomes
• Lead end-to-end architecture for data platforms and pipelines: scraping, data extraction, transformation, storage, serving, and ML/LLM integration, balancing performance, reliability, security, and cost. • Incrementally scale pipelines and systems: design safe rollout plans and north star data-quality metrics to handle customer and traffic growth without impacting production. • Translate business goals into actionable data products: assess high-level requirements, carve clear problem spaces, draft crisp RFCs, and sequence work into deliverable projects for the team. • Establish and enforce engineering standards: testing strategy, evals, observability, data contracts, and security practices across services. Think through short-term and long-term goals to come up with fast go-to-market products, while planning ahead for productization. • Up‑level the org: lead architecture reviews, codify patterns, mentor Senior Engineers, and multiply impact through documentation, code reviews, and pairing. • Startup‑ready: flexible, comfortable with ambiguity and constant change; proactive about process, documentation, and reliability without over‑engineering. • Lead the collaboration and define how AI engineers work cross-functionally with software engineers, devops, product managers and designers, to conceptualize and shape innovative and impactful solutions. Provide mentorship to junior team members and cultivate a culture of collaboration and innovation. • Ship meaningful experiments: prototype data/ML capabilities, evaluate feasibility and ROI, and make pragmatic calls on productionalizing with an eye on operating costs and risk.
GenAI Engineer Intern
Global Quantum Intelligence, LLCThe leading Quantum Tech market & business intelligence provider. Advising leaders, investors and governments globally.
• Help design, build, and ship GenAI features — RAG pipelines, LLM-powered applications, and conversational interfaces — across our products. • Take ambiguous problems, break them into approaches, prototype quickly, and iterate based on what you learn. • Work with LLM APIs and AWS services (Bedrock, Lambda) to wire up prototypes, pipelines, and integrations. • Build and consume APIs to connect models to data, databases, and backend systems. • Test, evaluate, and debug AI behavior — prompts, retrieval quality, edge cases — to make sure things actually work. • Document what you build and share what you learn with the team. • Keep up with a fast-moving field and bring ideas back to us.
Senior ESB Engineer
BlackStone eITA global team who's passionate about transformative enterprise solutions & intelligent design
Role Description - Design, develop, and maintain ESB integration solutions. - Develop and support APIs, web services, and enterprise integrations. - Build and maintain REST and SOAP services. - Integrate enterprise applications, databases, and third-party systems. - Troubleshoot and resolve integration-related issues. - Perform unit testing, system integration testing, and production support. - Collaborate with Business Analysts, Solution Architects, and Development teams to gather integration requirements. - Ensure integration solutions follow security, scalability, and performance best practices. - Prepare technical documentation and integration specifications. - Participate in code reviews and technical design sessions. Qualifications - 5+ years of related experience developing and implementing solutions using Middleware. - In-depth working experience developing applications using different programming languages used in ESB. - In-depth knowledge of standards/technologies (JMS, XML, JSON, WSDL, SOAP, REST, HTTP, and SSL/TLS). - Experience with different types of Integration Patterns. - Sound knowledge of OOP. - Good knowledge of multiple mapping tools. - Stakeholder communication by translating complex technical integration concepts into clear, actionable business insights, and vice versa. Requirements - Define integration test scenarios, facilitate User Acceptance Testing (UAT), and help validate that integrated systems meet business and data integrity standards. - Work alongside Integration Engineers to define API contracts, payload structures (JSON/XML), and endpoints using tools like Postman or Swagger/OpenAPI.




