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You will be part of a team designing and building a Gen AI virtual agent to support customers and employees across multiple channels. You will build and run LLM-powered agentic experiences, owning the design, orchestration, MLOps, and continuous improvement.
Responsibilities
* Design & build client-specific GenAI/LLM virtual agents
* Enable the orchestration, management, and execution of AI-powered interactions through purpose-built AI agents
* Design, build, and maintain robust LLM-powered processing workflows
* Develop cutting-edge testing suites related to bespoke LLM performance metrics
* Implement CI/CD pipelines for ML/LLM: automated build/train/validate/deploy for chatbots and agent services
* Utilize Infrastructure as Code (Terraform/CloudFormation) to provision scalable cloud environments for training and real-time inference
* Implement observability practices: monitoring, drift detection, hallucination mitigation, SLOs, and alerting for model and service health
* Serve models at scale: containerized, auto-scaling environments (e.g., Kubernetes) with low-latency inference
* Manage data & model versioning; maintain a central model registry with lineage and rollback capabilities
* Deliver a live performance dashboard (intent accuracy, latency, error rates) and establish a retraining strategy
* Collaborate closely with product, engineering, and client stakeholders to foster innovation around frameworks and models
Qualifications / Experience
* Relevant primary level degree, ideally MSc or PhD
* Proven expertise in mathematics, classical ML algorithms, and deep knowledge of LLMs (prompting, fine-tuning, RAG/tool use, evaluation)
* Hands-on experience with AWS and Azure data/ML services (e.g., Bedrock, SageMaker, Azure OpenAI, Azure ML)
* Strong engineering skills: Python, APIs, containers, Git; CI/CD (GitHub Actions, Azure DevOps); IaC (Terraform, CloudFormation)
* Experience with scalable serving infrastructure: containerized, auto-scaling environments (e.g., Kubernetes) for low-latency model serving
* Workflow automation across the machine learning lifecycle: data ingestion, preprocessing, model retraining, deployment
* Development of live performance dashboards displaying key metrics such as intent accuracy, response latency, and error rates
* Management of a centralized model registry with versioning, lineage, and rollback capabilities
* Automated retraining workflows and documentation for model updates
* Experience with Kubernetes, inference optimization, caching, vector stores, and model registries
* Strong communication skills, stakeholder management, and ability to produce clear technical documentation and runbooks
Personal Attributes
* Integrity, stakeholder management, project management, familiarity with Agile methodologies, automation skills, data visualization and analysis capabilities
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