
Power markets are entering a new era of increased load and transmission demand. Artificial intelligence can help you navigate these markets faster than before, especially when paired with datasets that are clean, accurate and complete.
Combining human and artificial intelligence
Human expertise and artificial intelligence are complementary forces: AI can help accelerate insights, uncover patterns and reduce repetitive work, while human intelligence ensures decisions are accurate, strategic and aligned with market realities.
The future of AI in the energy sector isn’t just about technology. It’s about the intersection of trusted data and expert insight.
Trust before speed
Power markets are among the world’s most complex and data-rich commodity markets, making them ideal for AI and algorithmic decision-making but only when datasets are ready. Studies show that nearly half of enterprise AI projects fail due to inadequate data preparation.
The convergence of AI and energy markets presents unprecedented opportunities to transform how decisions are made and value created, but only for those who build on a foundation of trusted, AI-ready data.
What makes data truly “AI-ready”?
The term “AI-ready” is buzzing about, but how do you know if your organization is truly prepared to deploy models into decision-making workflows?
Start by asking these questions:
- Can you recreate what you knew at the time of a decision? AI models trained on overwritten or backfilled historical data may perform well in testing but fail in production because they rely on information that wouldn’t have been available when your team made a decision. Point-in-time snapshots and clear handling of late or revised values are essential to avoid misleading results.
- Is the dataset meaningfully documented? Teams should be able to quickly answer: What does each field mean? What are the units? What changed over time? If teams can’t confidently explain what a field represents, how it is calculated or whether its meaning changed over time, models will still learn from it–often in unintended ways. Ambiguity doesn’t disappear when data enters an algorithm.
- Can the data scale with model complexity and usage? AI workloads are fundamentally different from traditional analytics. Training models, running simulations and supporting various teams often requires large-volume, high-performance data access.
- How easily can the data integrate across teams and tools? Successful AI initiatives are rarely isolated efforts. Data must flow across engineering, analytics, product and business teams, often using different tools and platforms.
AI as a force multiplier
AI amplifies human expertise—it does not replace it. The most effective teams learn the fastest from their data, applying judgment and experience alongside AI-driven insights.
That’s why our approach emphasizes the human-in-the-loop philosophy. Every dataset and model we deliver reflects the experience of experts who live and breathe power markets, empowering you to make faster, smarter decisions without sacrificing accuracy or control.
Ultimately, we aim to blend human intelligence with artificial intelligence by providing high-quality data that accelerates insights without compromising accuracy or trust, enabling you to focus on strategy rather than data collection and preparation.
Contact our team of experts to learn more.





















