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Is AI research ditching heavy math for quick wins?

Is AI research ditching heavy math for quick wins?

AI 研究社群正在放棄數學嗎?

The AI community seems to be shifting away from math-heavy theoretical work, even before LLMs took over. More papers now focus on empirical experiments, novel architectures, and tweaking loss functions rather than rigorous mathematical foundations. Don't get me wrong—there's still math involved, but it's not the main event anymore. And since LLMs exploded, a lot of papers are just combining existing systems with minimal novel mathematics. Some areas like reinforcement learning and optimization still care about the math, but they're becoming the exception. What's your take—is this a healthy pragmatism or are we losing something important?

Keywords

mathematicsempirical researcharchitecture designloss functionsreinforcement learningoptimizationLLM papersresearch trends