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The Great Divergence: Performance Trajectories in Computing
AI032 Lesson 1
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The Great Divergence marks a tectonic shift in microprocessor history. Between 2001 and 2009, the performance trajectories of CPUs and GPUs split into the "opening jaws" of a massive capability gap. While traditional CPUs hit the Power Wall—where increasing clock speeds generated unsustainable heat—GPUs leveraged their massive consumer installation base in gaming to fund a pivot toward extreme parallelism.

The Inflection Point

By 2003, the gap began to widen. CPUs remained optimized for sequential logic and latency, while GPUs dedicated their transistor budget to Arithmetic Logic Units (ALUs). This resulted in a transition from Gigaflops (GFLOPS) to Teraflops throughput for GPUs, while CPUs followed a much shallower growth curve.

Year (2001—2009)GFLOPSIntel CPUNVIDIA/AMD GPUFigure 1.1: The Diverging Performance Jaws

As of 2009, a high-end Intel i7-960 offered ~70 GFLOPS, while the NVIDIA GTX 280 reached nearly ~933 GFLOPS. This was not just a speed increase; it was a fundamental redesign of how we compute, prioritizing throughput over individual instruction speed.

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