NP10 Applied AI in Energy Sector

Please register your email, and you will receive an email with a link to open or download the whitepaper PDF. Registration is free, and we will only use your email to send you notifications of similar future whitepapers.

Why AI?

AI is revolutionizing the energy sector by optimizing renewable energy integration, enhancing grid efficiency, and facilitating predictive maintenance. Its urgency stems from the need to meet growing energy demands sustainably, mitigate environmental impacts, and ensure reliable energy distribution in the face of climate change.

For any professional in this sector, this playbook will get you started on this urgent and inevitable journey. Don’t miss out on the AI revolution – download the paper, read and apply.


  1. Personalized Recommendations: Tailoring product suggestions to individual preferences.
  2. Inventory Management: Predictive analytics for stock optimization.
  3. Dynamic Pricing: Real-time price adjustments based on demand and competition.
  4. Customer Service Chatbots: 24/7 AI-powered customer assistance.
  5. Visual Search: Using AI to find products by images.
  6. Fraud Detection: AI algorithms to identify and prevent fraudulent transactions.
  7. Supply Chain Optimization: Enhancing logistics with AI forecasting.
  8. Voice Shopping: AI-driven voice assistants facilitating purchases.
  9. Augmented Reality (AR) Shopping: AI-enhanced AR for virtual try-ons.
  10. Sustainable Practices: AI in reducing waste and improving recycling processes.


(PDF, 24 pages, 10×10) This SoMe flipchart captures the main ideas from the paper, and you can post it to start an online conversation about AI in your industry with your colleagues, customers or partners.

(PDF, 2 pages, A4) This cheat sheet contains the main ideas from the paper, for your easy reference. Print it out on a double sided vertical A4, laminate and keep at hand for daily inspiration on AI.

To get started with AI, first do this:

  1. Invest in AI Talent: Build or hire a team skilled in AI and machine learning.
  2. Focus on Data Quality: Ensure accurate, clean data for AI models.
  3. Start Small: Implement AI in a single area, learn, and scale.
  4. Explore other resources on and check out the book “Explain for me AI”.
  5. Please contact us at for further exploration or inspiration through a talk, workshop or case study. We’d love to help!
Silvija Seres

Silvija Seres

Mathematician & AI Investor
SILVIJA SERES - Mathematician and AI investor
I have worked with AI for more than 30 years in research, development and strategy. I am very interested in helping companies drive successful digital transformation and AI applications. If you find this interesting, please get in touch on

Share this PLAYBOOK