Newsletter

Artificial intelligence in the energy sector: new solutions for production and distribution

Siemens Energy: -30% downtime. GE: $1 billion saved per year. Iberdrola: -25% waste in renewables. AI is transforming energy management: weather forecasting to optimize solar and wind, predictive maintenance, smart grids that anticipate problems. But there's a paradox: AI data centers consume hundreds of kilowatt-hours per individual training. The solution? A virtuous cycle-AI manages the renewables that power AI systems.

AI changes energy management through optimization of renewables and smart grids. Algorithms help power companies to:

  • Reducing CO2 emissions
  • Improving the reliability of renewables
  • Predicting demand
  • Preventing interruptions
  • Optimize distribution

Impact

  1. Power generation:

Predictive algorithms improve reliability of renewables by anticipating weather conditions for solar and wind. Predictive maintenance reduces downtime and operating costs for power plants.

  1. Energy consumption:

Users can shift consumption to off-peak hours, reducing Costs and load on the grid.Smart home systems automatically adjust thermostats, Lighting and appliances

  1. Network management

Modern digital technologies are revolutionizing the way we manage energy infrastructure. In particular, artificialintelligence is proving to be an invaluable tool for electric distribution companies. These advanced systems continuously analyze huge amounts of data from sensors distributed throughout the grid, from transmission lines to transformer stations.

Thanks to sophisticated machine learning algorithms, it is now possible to identify potential problems before they cause service disruptions. This preventive approach, known as predictive maintenance, is producing remarkable results: several companies in the industry have seen a dramatic decrease in disruptions, resulting in a significant improvement in the quality of service provided to citizens and businesses.

The impact of this technological transformation goes beyond simply reducing outages. The ability to predict and prevent problems enables more efficient management of resources, better planning of interventions, and, ultimately, more reliable and sustainable electric service for the entire community.

Examples of impact:

  • Siemens Energy: -30% downtime
  • General Electric: $1 billion annual savings
  • Iberdrola: -25% energy waste in renewables

Applications tested:

  • Shell and BP: operational optimization and emissions reduction
  • Tesla: energy storage and clean solutions
  • Duke Energy and National Grid: grid modernization

AI improves energy management by making it:

  • More efficient
  • More reliable
  • More sustainable
  • Cheaper

These developments support the transition to a more sustainable energy system through technological solutions that are already applicable in the field.

Conclusions

Artificial intelligence is revolutionizing the energy sector, offering innovative solutions to optimize energy production, distribution and consumption. However, AI itself has its own energy impact. The computing centers required to train and run AI models require significant amounts of energy, with estimates suggesting consumption can reach several hundred kilowatt hours for a single training of complex models.

To maximize the net benefit of AI in the energy sector, companies are taking a comprehensive approach. On the one hand, using more efficient architectures and specialized hardware. On the other, by powering data centers with renewable energy, creating a virtuous cycle in which AI helps better manage renewable sources that, in turn, power AI systems.

Innovations in computational efficiency and data center cooling technologies, along with the use of renewable energy or, where permitted, atomic energy, will be crucial to ensuring that AI remains a sustainable tool for the energy transition.

The long-term success of this approach will depend on its ability to balance the operational benefits of the system with its own energy sustainability, thus contributing to a truly clean and efficient future. I will write something even more specific on the topic later.

Resources for business growth

November 9, 2025

Regulating what is not created: does Europe risk technological irrelevance?

Europe attracts only one-tenth of global investment in artificial intelligence but claims to dictate global rules. This is the "Brussels Effect"-imposing regulations on a planetary scale through market power without driving innovation. The AI Act goes into effect on a staggered timetable until 2027, but multinational tech companies respond with creative evasion strategies: invoking trade secrets to avoid revealing training data, producing technically compliant but incomprehensible summaries, using self-assessment to downgrade systems from "high risk" to "minimal risk," forum shopping by choosing member states with less stringent controls. The extraterritorial copyright paradox: EU demands that OpenAI comply with European laws even for training outside Europe-principle never before seen in international law. The "dual model" emerges: limited European versions vs. advanced global versions of the same AI products. Real risk: Europe becomes "digital fortress" isolated from global innovation, with European citizens accessing inferior technologies. The Court of Justice in the credit scoring case has already rejected the "trade secrets" defense, but interpretive uncertainty remains huge-what exactly does "sufficiently detailed summary" mean? No one knows. Final unresolved question: is the EU creating an ethical third way between U.S. capitalism and Chinese state control, or simply exporting bureaucracy to an industry where it does not compete? For now: world leader in AI regulation, marginal in its development. Vaste program.
November 9, 2025

Outliers: Where Data Science Meets Success Stories.

Data science has turned the paradigm on its head: outliers are no longer "errors to be eliminated" but valuable information to be understood. A single outlier can completely distort a linear regression model-change the slope from 2 to 10-but eliminating it could mean losing the most important signal in the dataset. Machine learning introduces sophisticated tools: Isolation Forest isolates outliers by building random decision trees, Local Outlier Factor analyzes local density, Autoencoders reconstruct normal data and report what they cannot reproduce. There are global outliers (temperature -10°C in tropics), contextual outliers (spending €1,000 in poor neighborhood), collective outliers (synchronized spikes traffic network indicating attack). Parallel with Gladwell: the "10,000 hour rule" is disputed-Paul McCartney dixit "many bands have done 10,000 hours in Hamburg without success, theory not infallible." Asian math success is not genetic but cultural: Chinese number system more intuitive, rice cultivation requires constant improvement vs Western agriculture territorial expansion. Real applications: UK banks recover 18% potential losses via real-time anomaly detection, manufacturing detects microscopic defects that human inspection would miss, healthcare valid clinical trials data with 85%+ sensitivity anomaly detection. Final lesson: as data science moves from eliminating outliers to understanding them, we must see unconventional careers not as anomalies to be corrected but as valuable trajectories to be studied.