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Glosarium AI

Kamus lengkap Kecerdasan Buatan

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Differentiable Model-Based RL

Approach of reinforcement learning where gradients are backpropagated through a differentiable environment model to directly optimize policies.

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Neural Network Dynamics Models

Neural networks trained to predict the evolution of environment states based on actions, enabling differentiable simulation.

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Differentiable Optimization

Technique where optimization layers are differentiable, enabling end-to-end learning of nested optimization processes.

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Imagined Experience Replay

Generation of synthetic trajectories through a differentiable model to enrich the learning experience without real interaction.

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Differentiable Planning

Planning algorithms where each step is differentiable, enabling continuous optimization of plans through gradient descent.

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Differentiable Simulator

Simulation environment implemented with differentiable operations, enabling gradient calculation throughout the entire simulation.

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Policy Gradient Through Model

Method that calculates policy gradients by propagating rewards through a differentiable environment model.

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Differentiable Environment Models

Environment models specifically designed to support gradient backpropagation through their internal operations.

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Differentiable Game Engines

Game engines modified to support differentiation, enabling reinforcement learning in complex environments.

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Neural ODEs in RL

Use of neural ordinary differential equations to model the continuous dynamics of the environment in a differentiable way.

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Differentiable Control Theory

Application of theoretical control principles implemented in a differentiable way for end-to-end learning of controllers.

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