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शुरू होता है 5 June 2026 00:52

समाप्त होता है 5 June 2026

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From Linear Algebra to Machine Learning

Explore the mathematical foundations of machine learning, from linear algebra to optimization, with practical Python implementations using NumPy, SciPy, and TensorFlow.
EuroPython Conference via YouTube

EuroPython Conference

6076 कोर्स


33 minutes

वैकल्पिक अपग्रेड उपलब्ध है

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अपनी गति से आगे बढ़ें

Conference Talk

वैकल्पिक अपग्रेड उपलब्ध है

अवलोकन

Explore the mathematical foundations of machine learning, from linear algebra to optimization, with practical Python implementations using NumPy, SciPy, and TensorFlow.

पाठ्यक्रम

  • Introduction to Linear Algebra
  • Vectors and Matrices
    Matrix Operations and Properties
    Determinants and Inverse Matrices
    Eigenvalues and Eigenvectors
    Practical Implementation with NumPy
  • Linear Algebra in Machine Learning
  • Linear Transformations
    Principal Component Analysis (PCA)
    Singular Value Decomposition (SVD)
  • Introduction to Optimization
  • Gradient Descent and Its Variants
    Convex vs. Non-Convex Optimization
    Practical Implementation with SciPy
  • Probability and Statistics in Machine Learning
  • Probability Distributions and Properties
    Bayes' Theorem and Applications
    Linear Regression: Theory and Practice
  • Fundamentals of Machine Learning
  • Decision Trees and Random Forests
    Support Vector Machines (SVM)
    Neural Networks and Deep Learning
  • Introduction to TensorFlow
  • TensorFlow Basics and Computational Graphs
    Building and Training a Feedforward Neural Network
    Implementing CNNs and RNNs in TensorFlow
  • Advanced Topics
  • Regularization Techniques: L1, L2, and Dropout
    Hyperparameter Tuning and Model Selection
    Introduction to Transfer Learning and Pre-trained Models
  • Final Project
  • Define and Implement a Machine Learning Model
    Demonstrate Understanding of Linear Algebra Applications
    Present Results and Reflect on Learning

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