Chief Technical Officer - Energy Sector

Inspiring Interns
London
5 months ago
Applications closed

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Responsibilities



Strategic and Operational Leadership
• Define and execute a technology roadmap and system architecture aligned with our growth objectives.
• Shape business decisions by providing a technology perspective to senior leadership and ensuring the tech strategy is integrated into overall business strategy.
• Balance high-level strategy with hands-on project involvement, contributing directly to the development process while mentoring a skilled, resilient tech team.
• Drive technology initiatives that establish us as a leader in renewable energy management, focusing on scalable and efficient solutions.
• Establish our presence in the industry by showcasing our energy data solutions to clients and partners.

• Architect and oversee the development of a robust data infrastructure for:
o Real-time on-site monitoring and data collection.
o Integration of third-party systems to leverage existing technologies.
o Delivery of high-value data services and analytics for optimised decision making.

• Lead the development of data pipelines and architectures to enable:
o Real-time data insights and reporting.
o Advanced analytics (predictive analytics, machine learning models) to drive customer value.
o Scalable data solutions that support our energy management platforms.
o Implement strategies for data governance, security, and compliance, ensuring the integrity and confidentiality of customer data.

Technical Expertise in Energy Management Systems (EMS)
• Lead the design, implementation, and optimisation of Energy Management Systems (EMS) and Battery Management Systems (BMS).

• Develop solutions to address the challenges of renewable energy, including:
• Large-scale data acquisition and processing.
• Optimisation of energy storage and deployment.
• Integration with distributed energy resources (DERs), solar, and grid systems. • Ensure that technology solutions are scalable, efficient, and sustainable, supporting our mission to deliver impactful, customer-focused products.
• Prioritize the development of user-friendly, customer-facing applications that provide real-time data insights and control over energy assets.

Multi-Team and Offshore Development Oversight
• Lead the alignment and management of third-party and offshore development teams to deliver high-quality, scalable technology solutions.
• Establish and enforce coding standards, workflows and documentation practices to ensure consistency and quality.
• Implement robust communication channels and collaboration tools to facilitate seamless integration between internal teams and external partners.
• Oversee quality assurance (QA) processes to ensure that deliverables meet our standards for performance, security, and reliability.

Organisational and Financial Leadership
• Optimise multi-team budgets, ensuring that resources are strategically allocated to maximize ROI.
• Lead disaster recovery and business continuity planning, safeguarding our digital assets and critical infrastructure.
• Foster a culture of efficiency, innovation and continuous learning - promoting transparency and accountability across all levels of the organisation.
• Leverage technology to drive cost optimisation and streamline operations, aligning resources with business needs.

Stakeholder Engagement and Partnership Management
•Develop and maintain strong relationships with both internal stakeholders and external partners, aligning technology initiatives with business goals.
• Translate complex technical insights into clear, actionable recommendations for non-technical business leaders.
• Lead negotiations and management of strategic partnerships with technology vendors and service providers, ensuring that collaborations enhance our capabilities.
• Identify opportunities to form alliances that accelerate the company’s growth in the renewable energy industry.

Requirements & Must-Haves Technical Skills & Experience
• 10+ years of experience in technology leadership roles, with at least 5 years in the renewable energy sector or a related industry.
• Proven track record in building scalable energy management systems (EMS/BMS), including integration with IoT devices, sensors, and real-time data systems.
• Hands-on experience with:
o Data engineering (SQL, NoSQL, data lakes, ETL pipelines).
o Cloud infrastructure (AWS, Azure, Google Cloud).
o Microservices architecture and APIs for seamless integration.
o DevOps and CI/CD pipelines for rapid, reliable deployment. o Proficiency in programming languages such as Python, Java, or C++, with the ability to guide teams in best coding practices.

Leadership & Management
• Experience leading cross-functional, geographically distributed teams, including offshore development units.
• Demonstrated ability to mentor and develop technical talent, fostering a collaborative and high-performance culture.
• Strong financial acumen, with experience in budgeting and cost management. • Experience in establishing KPIs and metrics for monitoring technology performance and alignment with business objectives.

Strategic Vision & Industry Knowledge
• Deep understanding of renewable energy technologies, including solar, battery storage and grid integration.
• Strong data analytics background, with experience leveraging data for strategic insights and customer solutions.
• Ability to align technology strategy with regulatory requirements and industry standards.
• Proven ability to drive technology innovation that delivers competitive advantages in the renewable energy market.

Soft Skills & Interpersonal Abilities
• Excellent communication skills, with the ability to articulate complex technology concepts to diverse stakeholders.
• A hands-on approach, with a willingness to dive into the technical details as needed.
• Strong negotiation skills for managing partnerships and vendor relationships.
• A problem-solving mindset, able to thrive in a fast-paced, dynamic startup environment.

Why work for us?
Ideal for a strategic, hands-on leader with both deep technical expertise and the ability to build and drive a high-performance technology culture, We offer an exciting opportunity to drive the next generation of renewable energy solutions within a dynamic, mission-driven company.

As CTO, you will help us navigate the complex technology landscape, innovate within the renewable energy space and position the business for long-term success. You’ll be part of a collaborative environment that values innovation, technical expertise, and commitment to excellence, with the potential to shape the future of renewable energy. Join us, and let’s build a greener future together

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