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We are looking for a highly skilled AI Product Native Architect to design and implement end-to-end AI-native product architectures. This role demands strong technical expertise in AI/ML frameworks, data engineering, cloud-native systems, and scalable distributed architecture, with hands-on experience building and deploying AI-powered products. The ideal candidate is a practitioner-architect who can move seamlessly from designing high-level architecture to rolling up their sleeves and prototyping solutions. We are seeking a candidate specializing in technology division to lead both business process solutions and IT side of business to join our dynamic team at NTT DATA. As an SME (subject matter expert), you will closely work with NTT DATA's customers to understand their business problems and engage with them to provide consulting and solutioning for solving their business problems using AI ML and Automation related technologies. Design and implement effective AI technologies and methods to address clients' business problems and needs, while complying with company's strategies, business goals, and key ethical considerations. Your engagement with the customer should give the customer confidence that NTT DATA is the right business and technology partner for their operation.
Job Responsibility:
Define and own the technical architecture of AI-native products, ensuring high availability, performance, and security
Architect scalable data pipelines, model training, inference services, and orchestration frameworks
Design cloud-native, containerized architectures (Kubernetes, microservices, serverless functions) optimized for AI workloads
Create reference architectures and reusable design patterns for AI-first product development
Build PoCs, prototypes, and reference implementations to validate architecture decisions
Develop and optimize APIs, vector databases, and real-time inference pipelines for LLMs and ML models
Implement MLOps pipelines for continuous integration, delivery, monitoring, and retraining of models
Ensure observability with logging, monitoring, and tracing for data and AI services