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Statistical Learning for Engineering Part 1
Coursera
Course
Unknown

Statistical Learning for Engineering Part 1

Northeastern University

Explore practical algorithms and theory of supervised learning including parametric and non-parametric models with Python and PyTorch implementations.

Unknown7 weeksKK, Arabic, German, UZ

About this Course

This course covers practical algorithms and the theory for machine learning from a variety of perspectives. Topics include supervised learning (generative, discriminative learning, parametric, non-parametric learning, deep neural networks, support vector Machines), unsupervised learning (clustering, dimensionality reduction, kernel methods). The course will also discuss recent applications of machine learning, such as computer vision, data mining, natural language processing, speech recognition and robotics. Students will learn the implementation of selected machine learning algorithms via python and PyTorch

What You'll Learn

  • Understand supervised learning algorithms and models
  • Apply unsupervised learning techniques like clustering and dimensionality reduction
  • Implement machine learning algorithms using Python and PyTorch

Prerequisites

  • Basic familiarity with machine learning terminology
  • Willingness to practice through applied exercises or case studies

Instructors

Q

Qurat-ul-Ain Azim

Mechanical and Industrial Engineering

S

Sivarit Sultornsanee

Topics

Probability and Statistics
Data Science
Machine Learning
PyTorch (Machine Learning Library)
Statistical Methods
Predictive Modeling
Applied Machine Learning
Supervised Learning
Classification Algorithms
Machine Learning Software

Course Info

PlatformCoursera
LevelUnknown
PacingUnknown
PriceFree

Skills

الاحتمالات والإحصاء
علوم البيانات
التعلم الآلي
PyTorch
الأساليب الإحصائية
نمذجة تنبؤية
التعلم التطبيقي
التعلم الموجه
Classification Algorithms
Machine Learning Software

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