Director, Autonomous AI and Analytics
About the Role
• The Director of Autonomous AI & Analytics Orchestration is responsible for architecting and operationalizing the next generation of intelligent, autonomous agents across the organization.
• This role integrates multi-modal data, real-time market signals, and advanced modeling outputs to deliver continuous, self-updating insights that scale decision quality and operational efficiency.
Responsibilities and Impact:
• Lead enterprise-wide adoption of AI-driven analytics and autonomous agent systems, transforming decision-making processes across the Energy division while establishing the technical foundation for scalable, self-improving analytical workflows that adapt to changing market conditions.
• Architect and deploy sophisticated agentic systems that seamlessly integrate multi-modal data sources, real-time market signals, and advanced modelling outputs to deliver continuous, self-updating insights at enterprise scale, enabling proactive rather than reactive business strategies.
• Drive strategic alignment of autonomous workflow programs with commercial strategy and product roadmaps, ensuring automated insights directly support revenue growth, operational efficiency, and competitive advantage while maintaining clear ROI metrics and business value demonstration.
• Establish comprehensive technical governance frameworks for autonomous systems, including robust auditability mechanisms, regulatory compliance protocols, security standards, and ethical AI practices that meet both corporate requirements and evolving industry regulations.
• Scope, design, and deliver complex end-to-end autonomous analytics initiatives from initial exploration through production deployment, with measurable business impact including significant cycle-time reduction, enhanced decision quality, and operational cost optimization across multiple business units.
• Collaborate extensively with cross-functional teams, external technology partners, and academic institutions to advance cutting-edge capabilities in real-time data integration, knowledge-graph enrichment, autonomous agent design, and emerging AI technologies that position the organization as an industry leader.
What We’re Looking For:
• Advanced degree in Computer Science, Engineering, or related technical field, with 8+ years of progressive experience leading AI/ML architecture and strategy in enterprise environments, including 3+ years in senior technical leadership roles.
• Proven expertise in designing and implementing enterprise-scale AI/ML architectures using cloud platforms such as AWS, Azure, or Google Cloud Platform, with deep understanding of distributed systems, microservices, and scalable data infrastructure design patterns.
• Strong technical leadership experience managing cross-functional engineering teams and driving architectural decisions for complex AI systems, with demonstrated ability to mentor senior developers and establish technical standards across multiple projects.
• Extensive experience architecting data ecosystems and analytics platforms using technologies such as Snowflake, Databricks, or similar enterprise data platforms, with a focus on system integration, performance optimization, and enterprise security frameworks.
• Demonstrated success in translating business strategy into technical roadmaps and leading large-scale digital transformation initiatives, with proven ability to collaborate with C-level executives and drive consensus across multiple stakeholder groups.
• Strong foundation in programming languages such as Python, Java, or Scala, with hands-on experience in AI/ML frameworks like TensorFlow or PyTorch to effectively guide technical teams and validate architectural approaches.