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  1. Gradient descent - Wikipedia

    It is a first-order iterative algorithm for minimizing a differentiable multivariate function. The idea is to take repeated steps in the opposite direction of the gradient (or approximate gradient) of the …

  2. Gradient Descent Algorithm in Machine Learning - GeeksforGeeks

    Jul 11, 2025 · Gradient Descent is used to iteratively update the weights (coefficients) and bias by computing the gradient of the MSE with respect to these parameters. Since MSE is a convex …

  3. The idea of gradient descent is then to move in the direction that minimizes the approximation of the objective above, that is, move a certain amount > 0 in the direction −∇ ( ) of steepest …

  4. What is gradient descent? - IBM

    Gradient descent is an optimization algorithm used to train machine learning models by minimizing errors between predicted and actual results.

  5. Linear regression: Gradient descent - Google Developers

    Dec 3, 2025 · Learn how gradient descent iteratively finds the weight and bias that minimize a model's loss. This page explains how the gradient descent algorithm works, and how to …

  6. Gradient Descent Explained: How It Works & Why It’s Key

    Feb 28, 2025 · Gradient Descent is the core optimization algorithm for machine learning and deep learning models. Almost all modern AI architectures, including GPT-4, ResNet and AlphaGo, …

  7. Gradient Descent: A Beginner-Friendly Guide to How Models Learn

    Dec 9, 2025 · Most modern ML models—from simple regressions to deep neural networks—learn using the core idea i.e. Gradient Descent. It’s an optimization method that adjusts model …

  8. What is the Gradient Descent Algorithm - Analytics Vidhya

    Apr 4, 2025 · Gradient descent is an optimization algorithm used in machine learning to minimize the cost function by iteratively adjusting parameters in the direction of the negative gradient, …

  9. Gradient Descent Unraveled - Towards Data Science

    Nov 14, 2020 · First, let us begin with the concepts of maxima, minima, global and local. I’ll explain these concepts for functions of a single variable because they are easy to visualize. …

  10. Understanding Gradient Descent in AI/ML

    Jan 22, 2025 · Gradient Descent is an iterative optimization algorithm used to minimize a cost (or loss) function. It adjusts model parameters (weights and biases) step-by-step to reduce the …