AWSAzureCloudDockerKubernetesMicroservicesAIMLGenerative AILLMLarge Language ModelsMLOpsGoogle CloudRESTfulLeadership
About this role
Role Overview
Design and oversee the development of scalable generative AI systems and enterprise-grade AI platforms. Establish robust architectures that support model training, inference, monitoring, and lifecycle management in production environments.
Direct the selection, customization, and enhancement of state-of-the-art generative AI and large language models.
Develop and execute APIs, microservices, and integration frameworks to incorporate AI capabilities into enterprise applications.
Ensure that AI platforms meet stringent standards for performance, reliability, security, and scalability, while also adhering to data governance and privacy regulations.
Collaborate closely with product, engineering, and business teams to outline technical requirements and approaches to AI architecture.
Architect end-to-end pipelines for deploying and monitoring AI models, ensuring seamless integration with existing systems.
Guide architectural decisions for LLM applications, AI workflows, and distributed AI infrastructure.
Institute best practices for ethical AI development, including strategies to mitigate risks like model hallucinations, bias, and reliability challenges.
Provide technical mentorship and guidance to engineering teams, while contributing to the formulation of long-term technology strategies and the advancement of AI platforms.
Requirements
4+ years of experience in software engineering or architecture roles with strong exposure to AI/ML systems.
Strong knowledge of modern neural network architectures such as Transformers, CNNs, and RNNs.
Experience designing scalable and distributed architectures for AI-powered applications.
Hands-on experience with cloud platforms such as AWS, Azure, or Google Cloud.
Experience with containerization and orchestration technologies including Docker and Kubernetes.
Strong understanding of microservices architecture, RESTful APIs, and distributed system design.
Experience working with MLOps / LLMOps pipelines including model training, deployment, monitoring, and lifecycle management.
Familiarity with large-scale data systems and modern database technologies.
Experience translating business requirements into scalable AI solution architectures.
Strong documentation skills for architecture designs, workflows, and technical decision-making.
Comfortable working in a startup or fast-paced environment with strong ownership and leadership mindset.