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Speculative Decoding

Assisted Generation, Draft-and-Verify
Una optimización de velocidad donde un modelo «draft» pequeño y rápido genera varios tokens candidatos, y luego el modelo target grande los verifica todos en una sola forward pass. Si el draft model adivinó correctamente (lo cual pasa a menudo para tokens predecibles), múltiples tokens se aceptan a la vez, saltándose la generación lenta token-por-token del modelo grande. Cuando el draft está equivocado, el modelo grande corrige desde ese punto.

Por qué importa

Speculative decoding puede acelerar la inferencia LLM en 2–3x sin pérdida de calidad de salida — la salida final es matemáticamente idéntica a lo que el modelo grande habría producido solo. Es uno de los pocos almuerzos gratis en optimización de inferencia IA, por eso está siendo ampliamente adoptado por proveedores y frameworks.

Deep Dive

The key insight is that verifying a draft is much faster than generating from scratch. During normal autoregressive generation, each token requires a full serial forward pass through the model. But the model can process multiple tokens in parallel during a single forward pass (like it does with your prompt). So if you have a draft of 5 tokens, the large model can check all 5 in roughly the time it would take to generate 1. If 4 out of 5 are correct, you've generated 4 tokens for the cost of 1+1 (draft generation + verification).

Choosing the Draft Model

The draft model should be much smaller and faster than the target model, but similar enough to agree on most tokens. A common approach: use a model from the same family but smaller (Llama 70B verified by Llama 8B drafts). Some systems use the target model's own early layers as a draft model (self-speculative decoding). The acceptance rate — what fraction of draft tokens the target model agrees with — determines the speedup. Typical acceptance rates of 70–85% yield 2–3x throughput improvements.

When It Helps Most

Speculative decoding helps most when the text is predictable (boilerplate, code with common patterns, structured output) and helps least when every token is surprising (creative writing, complex reasoning). It also helps more when the bottleneck is latency rather than throughput — if you're serving many concurrent requests, the GPU is already busy and the parallelism gains are smaller.

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