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Flow Matching

Continuous Normalizing Flows, Rectified Flow
Una técnica de modelado generativo que aprende a transformar ruido en datos siguiendo caminos suaves y directos entre la distribución de ruido y la distribución de datos. A diferencia de los modelos de difusión que agregan y remueven ruido a través de un proceso ruidoso fijo en muchos pasos, flow matching aprende trayectorias en línea recta que se pueden recorrer en menos pasos, haciendo la generación más rápida.

Por qué importa

Flow matching está reemplazando rápidamente la difusión tradicional para generación de imágenes y video de punta. Flux (de Black Forest Labs), Stable Diffusion 3 y varios modelos de video usan flow matching. El beneficio práctico: calidad comparable o mejor en menos pasos de generación, lo que se traduce directamente en inferencia más rápida y costos más bajos.

Deep Dive

The intuition: imagine every point in "noise space" connected to a point in "image space" by a straight line. Flow matching trains a neural network to predict the velocity (direction and speed) along these paths at any point. To generate an image, you start from a random noise point and follow the velocity field to arrive at a clean image. The straighter the paths, the fewer steps you need — this is why "rectified flows" (which straighten the paths) are important.

Diffusion vs. Flow Matching

Traditional diffusion models define a fixed forward process (gradually adding Gaussian noise) and learn the reverse process (denoising). The forward process is curved through high-dimensional space, requiring many small steps to reverse accurately (typically 20–50 steps). Flow matching learns more direct paths, often achieving equivalent quality in 4–10 steps. Some formulations (like consistency models) push this to a single step, though with some quality trade-off.

The Unified View

Mathematically, diffusion models and flow matching are both instances of continuous-time generative models — they differ in the probability paths they define between noise and data. This unified perspective is helping researchers design better training objectives and architectures that combine insights from both. The practical implication: the distinction between "diffusion model" and "flow matching model" is becoming more about training methodology than fundamental architecture.

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