.AI/ML Architecture & Strategy
Define and evolve the long-term AI/ML architecture roadmap, ensuring scalability, maintainability, and integration with existing systems.
Conduct thorough technology evaluations and vendor assessments to identify and select the most suitable AI/ML tools, platforms, and technologies.
Develop and implement best practices, guidelines, and standards for AI/ML development and deployment across the organization.
Collaborate with business stakeholders to understand their needs and translate them into clear and actionable AI/ML strategies.
Drive innovation by exploring and evaluating emerging AI/ML technologies and their potential applications within the media and entertainment domain.
2. AI/ML Platform & Infrastructure
Design, build, and maintain a robust and scalable AI/ML platform that supports the entire lifecycle of AI/ML model development, from data ingestion and feature engineering to model training, deployment, and monitoring.
Ensure the security, reliability, and performance of the AI/ML infrastructure, including data privacy, compliance, and disaster recovery.
Optimize resource utilization and cost-effectiveness of the AI/ML platform through efficient resource allocation and infrastructure management.
Collaborate with IT and cloud operations teams to ensure seamless integration and smooth operation of the AI/ML platform.
Monitor and analyze platform performance, identify bottlenecks, and implement necessary improvements to enhance efficiency and scalability.
3. AI/ML Model Development & Deployment
Oversee the development and deployment of high-quality and impactful AI/ML models across various domains, such as content recommendation, personalization, content creation, and fraud detection.
Ensure the quality, accuracy, and fairness of AI/ML models through rigorous testing, validation, and monitoring.
Develop and implement MLOps best practices, including CI/CD pipelines, automated testing, and model monitoring, to streamline the model development and deployment process.
Collaborate with data scientists and engineers to ensure efficient and effective model training, deployment, and maintenance.
Drive the adoption of AI/ML models across the organization through clear communication, training, and support.
4. Team Leadership & Management
Lead and mentor a high-performing team of AI/ML engineers and architects.
Foster a collaborative and innovative team culture that encourages experimentation, learning, and growth.
Recruit, hire, and onboard top talent in the field of AI/ML.
Provide guidance and support to team members on technical challenges and career development.
Track team performance, identify areas for improvement, and implement necessary changes to enhance team effectiveness.
5. Governance and Compliance
Ensure all AI/ML initiatives adhere to regulatory requirements, ethical guidelines, and company policies.
Define processes for monitoring, auditing, and improving AI models in production.
Advocate for responsible AI practices within the organization.
Any question or remark? just write us a message
If you would like to discuss anything related to payment, account, licensing,
partnerships, or have pre-sales questions, you’re at the right place.