Cory Paddock, co-founder and CEO of GBE, dives into energy trading with a focus on anticipating market shifts in a world increasingly driven by renewables. He shares insights on how true trading edge comes from understanding grid topology rather than just price charts. Paddock is optimistic about Gen Z's potential in quant finance, highlighting their fluency in coding and data analysis. At GBE, he fosters a culture where young traders can experiment and learn through real trading experiences, paving the way for a new generation of algorithmic trading talent.
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volunteer_activism ADVICE
Monitor Grid-Level Tick Data
Track tick-by-tick grid-level data for generation, flows, and nodal prices rather than just charts.
Build muscle memory around those data feeds to interpret real-time price drivers accurately.
insights INSIGHT
Use LLMs As Tools, Not Replacements
LLMs speed up research and training but still require practitioner oversight to correct hallucinations.
Use LLMs to generate drafts and training modules, then validate with domain experts.
insights INSIGHT
Edge Comes From Anticipating Regime Shifts
True edge in power trading comes from having a point of view on a paradigm shift before the market adapts.
Grid topology, supply changes, and rising demand create amplified opportunities unique to power markets.
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How do you find trading edge in electricity markets? Cory Paddock, co-founder of GBE, explains how real alpha generation in power trading comes from anticipating paradigm shifts before the market sees them. In a renewable energy trading market shaped by constant regime change—coal replaced by gas, wind and solar reshaping grid topology, and data centers driving new load volatility—edge belongs to those who read the grid, not the price charts. His approach blends energy infrastructure insight with algorithmic trading discipline: track locational marginal prices, study market data pipelines, and build conviction around where power will actually flow. In fast-moving electricity markets, where historical data decays quickly, the strategy is simple—trade clean, understand risk management deeply, and position early for the next market shift.Cory’s incredibly bullish on Gen Z in quant finance. He’s betting on Gen Z quants. They’re Python- and LLM-native, fluent in building tools and models that turn raw market data into live trading infrastructure. Their exposure to open-source research and self-directed learning creates a new kind of trader—one who codes faster, questions conventions, and finds alpha in overlooked niches of energy and power trading. At GBE, he builds an environment where Gen Z trading talent can experiment, own ideas, and learn risk management through real positions, not simulations. The result is a new generation of algorithmic traders redefining what edge means in modern markets.- Building a trading strategy for electricity markets and finding edge through data-driven alpha generation- Anticipating paradigm shifts in markets and adapting trading models to regime change in power trading- How renewable energy trading and grid congestion reshape price discovery and risk management- Designing a market data pipeline for real-time energy infrastructure analysis and trading execution- Why electricity markets differ from traditional quant finance and what makes power trading unique- Using algorithmic trading frameworks to process market data and identify short-term dislocations- Risk management frameworks for volatile energy markets and five-minute tick data decision-making- Recruiting Gen Z trading talent fluent in Python, machine learning, and market data engineering- How Gen Z quants approach trading edge differently—experimentation, automation, and fast iteration- Structuring incentives for traders to align P&L ownership, discipline, and long-term performance- The psychology of running a trading firm with personal capital and managing downside risk- Why historical backtests fail in energy markets due to infrastructure evolution and topology change- Market structure and locational marginal pricing (LMP) as the foundation of energy trading strategy- How physical constraints in grids create alpha opportunities for quantitative trading teams