Based in India, you will lead the charge in setting up and evolving a robust AI/ML financial operations framework, collaborating closely with engineering, data science, and finance teams. This role is perfect for someone passionate about AI/ML technology and operational excellence, with a strong focus on financial stewardship. If you’re excited by the challenge of combining deep technical expertise with strategic financial planning to create real-world impact, we’d love to have you on board
1. AI/ML Financial Planning and Cost Optimization
Develop and implement strategies to optimize the cost of AI/ML workloads across cloud and on-premise environments.
Analyze and forecast AI/ML resource consumption, creating actionable insights to drive financial efficiency.
Establish KPIs and benchmarks for AI/ML operational costs, ensuring alignment with budgetary goals.
Collaborate with cloud vendors to negotiate contracts and optimize pricing models for AI/ML services.
Identify opportunities for cost reduction through model performance improvements, workload optimizations, and better infrastructure management.
2. Cloud and Infrastructure Cost Management
Lead initiatives to optimize cloud resource allocation for AI/ML workloads, ensuring scalability and efficiency.
Monitor and manage the financial impact of AI/ML resource utilization, leveraging tools like FinOps platforms and custom analytics dashboards.
Drive adoption of cost-aware practices across teams, promoting efficient use of compute, storage, and networking resources.
Establish governance policies to prevent cost overruns and ensure compliance with organizational financial guidelines.
Recommend strategies for multi-cloud and hybrid-cloud deployments to achieve cost and performance objectives.
3. Collaboration and Stakeholder Engagement
Partner with data science, engineering, and product teams to align AI/ML operational goals with business priorities.
Work closely with finance and procurement teams to streamline budgeting, reporting, and approval processes for AI/ML initiatives.
Act as a bridge between technical teams and business leaders, ensuring clear communication of financial trade-offs and benefits.
Build strong relationships with cloud service providers to leverage their expertise and tools for cost optimization.
Advocate for financial best practices within AI/ML operations, fostering a culture of accountability and cost-conscious innovation.
4. AI/ML Workflow and Lifecycle Management
Oversee the end-to-end lifecycle of AI/ML models, focusing on efficient resource usage during development, training, and deployment phases.
Implement cost-aware model retraining schedules based on business needs and performance thresholds.
Collaborate with MLOps teams to streamline model deployment pipelines, reducing operational overheads.
Monitor and analyze the financial impact of different AI/ML use cases to prioritize high-value projects.
Develop processes to decommission obsolete models and infrastructure to avoid unnecessary expenditures.
5. Innovation and Continuous Improvement
Stay updated on emerging technologies and trends in AI/ML FinOps, leveraging innovations to enhance cost efficiency.
Lead the evaluation and adoption of tools and frameworks for AI/ML cost monitoring and optimization.
Promote a mindset of continuous improvement, encouraging teams to experiment with cost-effective methodologies.
Drive internal knowledge-sharing sessions to disseminate best practices in AI/ML financ Official notification
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