Director – Artificial Intelligence
Work Location:
 Hyderabad or Chennai (open to Mumbai, Pune)
Work Arrangement:
 Requires a minimum of 9 working days per month from the Chennai office, with the remaining days flexible to be worked from any of the other listed locations.
About The Role
We are seeking a technically accomplished leader to serve as Director – Artificial Intelligence within Acentra Health’s AI Center of Excellence (COE). This role will provide strategic input into enterprise AI initiatives, working as a core member of the COE while partnering with business lines across the organization. The Director will bring deep expertise across machine learning, generative AI, and agentic AI, with a focus on architectural leadership, model selection, model tuning, and ML Ops.Key ResponsibilitiesAI Strategy & Vision
-  Contribute to the definition of Acentra Health’s AI strategy as a member of the AI Center of Excellence. 
-  Partner with business lines to identify and prioritize high-value AI opportunities across ML, GenAI, and agents. 
 
Team Leadership
-  Lead and mentor AI/ML engineers, Data/BI engineers, and full stack engineers within the COE. 
-  Establish best practices for coding, experimentation, and technical excellence. 
 
AI Solution Development
Direct the design, tuning, and deployment of advanced AI/ML models, including:
-  LLMs & Multimodal Models: Frontier and open-source models, instruction-tuned models, conversational AI, and retrieval-augmented generation (RAG). 
-  AI Agents: Agent-based systems leveraging OpenAI’s Agents SDK and Model Context Protocol (MCP) to support orchestration, task automation, and human-in-the-loop collaboration. 
-  Predictive Modeling & Recommendation Systems. 
 
MLOps & Productionization
-  Implement and support ML pipelines for preprocessing, feature engineering, model training, deployment, and monitoring. 
-  Ensure reproducibility and scalability using cloud-native services and frameworks (e.g., AgentCore with AWS). 
-  Manage CI/CD workflows leveraging Docker, Kubernetes, and AWS-native services. 
 
Platform & Infrastructure
-  Collaborate with data engineering and IT to design scalable AI infrastructure. 
-  Utilize AWS (SageMaker, Bedrock, AgentCore), with additional experience in Azure ML and GCP as beneficial. 
-  Optimize models for performance, latency, and cost efficiency. 
 
Innovation & Applied Research
-  Stay at the forefront of emerging technologies such as generative AI, agent frameworks, and reinforcement learning. 
-  Foster a culture of applied innovation, continuous learning, and responsible AI adoption. 
 
Expanded Technical Responsibilities
-  Collaborate with full stack and UI teams to seamlessly integrate AI features into products. 
-  Provide architectural guidance for AI enablement across applications and workflows. 
-  Define and implement robust testing frameworks for AI models, ensuring accuracy, fairness, and reliability. 
-  Partner with data engineers to design and maintain scalable data pipelines (Airflow, Spark, Kafka, AWS Glue, Azure Data Factory). 
-  Align AI initiatives with product roadmaps and monitor post-deployment performance. 
 
Candidate Profile
Education & Experience
-  Bachelor’s or Master’s degree in AI, Computer Science, Data Science, or related fields. 
-  10–15 years of AI/ML experience, including 3–5 years in leadership roles. 
-  Proven success in deploying AI solutions at scale in production environments. 
 
Technical Expertise
-  Programming: Python (NumPy, Pandas, SciPy, scikit-learn). 
-  AI/ML Frameworks: TensorFlow, PyTorch, Keras, Hugging Face. 
-  Agents & GenAI: OpenAI Agents SDK, Model Context Protocol (MCP), RAG pipelines, multimodal models. 
-  MLOps Tools: AgentCore with AWS, SageMaker, Azure ML. 
-  Data Pipelines: Apache Airflow, Spark, Kafka, AWS Glue, Azure Data Factory. 
-  DevOps & CI/CD: GitHub Actions, Jenkins, Docker, Kubernetes. 
-  Cloud Ecosystems: AWS (priority), with Azure and GCP experience a plus. 
-  Optimization: Quantization, pruning, distributed training. 
 
Soft Skills
-  Excellent communication to translate AI value for technical and executive stakeholders. 
-  Strong leadership built on collaboration, accountability, and innovation. 
-  Passion for ethical AI, responsible adoption, and scaling.