Our Customer is a Sweden-based AdTech company specializing in advanced self-serve advertising platforms that automate direct transactions between advertisers and major global publishers. Their technology removes traditional friction in ad sales by enabling automation, transparency, and operational efficiency at scale. Platforms are trusted by internationally recognized publishers including TripAdvisor, Bloomberg, The Washington Post, Opera, and Dow Jones, handling millions of transactions worldwide. The project is a strategic architectural transformation toward a Platform-First approach. The company is transitioning from monolithic, client-specific implementations to a standardized, API-driven, multi-tenant ecosystem of reusable microservices. These services power the entire product suite, remaining independent, scalable, and decoupled from frontend or customer-specific customization.
Senior AI Engineer
Location
Latin America (LATAM) + 1 moreAll locations: Latin America (LATAM) | Europe
Posted
13 days ago
Salary
0
Seniority
Senior
No structured requirement data.
Job Description
Senior AI Engineer
Sigma Software
Role Description Are you a Senior AI Engineer passionate about building scalable AI-driven systems? Join us at Sigma Software to work on a cutting-edge platform that transforms how large-scale engineering organizations manage and analyze complex technical data. This is a remote position with flexible locations across Europe, Ukraine, and LATAM. You will be part of an innovative team leveraging AI, semantic graphs, and distributed processing to deliver impactful solutions. We are developing a next-generation AI-powered Knowledge Base and Gap Analysis platform for SysML-based engineering environments. The system enables large-scale engineering organizations to ingest, structure, analyze, and reason over complex MBSE artifacts and technical documentation. It supports both cloud and secure classified environments, improving traceability, identifying gaps, and enhancing decision-making in mission-critical projects. - Design and develop scalable AI-powered backend systems for SysML-based engineering environments - Build and maintain distributed data ingestion and ETL pipelines for large-scale engineering artifacts and technical documentation - Develop and optimize LLM-powered workflows for metadata extraction, semantic analysis, and entity resolution - Implement AI agents and multi-agent orchestration workflows - Design and improve RAG-based architectures and semantic retrieval pipelines - Develop graph-based knowledge representation and traceability analysis solutions - Work with graph databases, graph processing libraries, and semantic relationship modeling - Build and optimize distributed data processing workflows using Apache Spark - Collaborate with cross-functional engineering teams to integrate AI capabilities into platform services - Design scalable and high-performance APIs and backend services - Improve system reliability, scalability, observability, and performance across distributed environments - Participate in architecture discussions and technical decision-making processes - Contribute to cloud-native infrastructure and deployment workflows - Support deployments in secure, air-gapped, or classified environments when required - Create and maintain technical documentation and engineering best practices Qualifications - At least 5 years of commercial experience in software engineering, Data Engineering, or AI systems development - Experience with Golang - Hands-on experience building distributed and scalable systems - Practical experience with LLM-based applications and AI integrations - Experience building AI agents and multi-agent systems - Strong understanding of RAG architectures and semantic retrieval workflows - Strong understanding of ETL pipelines and large-scale data ingestion workflows - Experience with cloud-native infrastructure and distributed environments - Practical experience with backend platform development and API integrations - Good understanding of semantic search, entity resolution, and metadata extraction - Experience working with highly scalable and high-performance systems - Strong problem-solving and communication skills - Upper-Intermediate level of English Requirements - Background in Data Engineering - Experience with distributed data processing, Apache Spark, or Apache Beam - Experience with Knowledge Graphs and graph-based semantic modeling - Familiarity with MBSE or SysML environments - Experience supporting air-gapped or classified environments - Experience with vector databases and embedding pipelines - Experience with Kubernetes and cloud platforms such as AWS, GCP, or Azure Benefits - Work with advanced technologies - Contribute to mission-critical projects - Be part of a company recognized for excellence and innovation Personal Profile - Analytical mindset with strong problem-solving skills - Ability to work independently and in a distributed team - Adaptability to secure and classified environments - Strong communication and collaboration abilities - Passion for AI-driven engineering solutions
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