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udacity/machine-learningArchived

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4,027 نجوم·6,239 تفرعات·Jupyter Notebook·4 مشاهدات

Machine Learning

هذا المشروع عبارة عن منهج للتعلم الآلي ومورد تعليمي لعلوم البيانات. يوفر مجموعة منظمة من المواد التعليمية والمشاريع العملية المصممة لتعلم مفاهيم التعلم الآلي وتنفيذ النماذج التنبؤية.

يعمل المورد كدليل تدريب للتعلم الخاضع للإشراف، مع التركيز على تطوير نماذج لتصنيف الصور والتعرف على الأرقام. يستخدم نهج تدريب قائماً على المشاريع يزاوج بين الدروس النظرية وتدريب النماذج القائم على مجموعات البيانات والتقييم.

يغطي المنهج الأسس الرياضية للتعلم الآلي، ومعالجة البيانات، وتنفيذ خوارزميات التعلم الخاضع للإشراف. وينظم المحتوى في وحدات معيارية ومسارات متسلسلة تنتقل من الدراسة النظرية إلى التطبيق العملي للنماذج باستخدام مجموعات بيانات العالم الحقيقي.

Features

  • Machine Learning Education - Provides a comprehensive instructional resource for teaching the concepts, algorithms, and implementation of machine learning.
  • Structured Curricula - Offers a structured machine learning curriculum focused on supervised learning algorithms for classification and digit recognition.
  • Data Science Training Programs - Offers an end-to-end educational path for mastering data analysis and predictive modeling.
  • Machine Learning Education - Focuses on teaching the mathematical and theoretical foundations of machine learning through a structured curriculum.
  • Learning Paths - Organizes the curriculum into structured sequences that pair theoretical foundations with practical data-driven training.
  • Project-Based Model Assessments - Validates conceptual understanding by requiring model implementation on real-world datasets for specific classification tasks.
  • Machine Learning Concepts - Teaches the fundamental mathematical and structural principles that define how machine learning models function.
  • Pedagogical Exercises - Implements a project-based approach pairing theoretical lessons with hands-on, dataset-driven model training exercises.
  • Predictive Model Implementations - Provides coded examples and exercises for implementing predictive models for classification and recognition tasks.
  • Predictive Model Development - Guides the process of designing, training, and testing models for image classification and digit recognition.
  • Pedagogical Frameworks - Implements a pedagogical workflow that transitions from mathematical foundations to practical model evaluation.
  • Sequential Learning Paths - Organizes material into a linear path of theoretical lessons and practical projects.
  • Curriculum Structures - Provides a structured sequential path of concepts and projects to guide learners through the material.
  • Machine Learning Curricula - Provides a structured learning path specifically designed for mastering machine learning concepts and algorithms.
  • Data Science Curricula - Serves as an educational resource providing learning paths for data science and predictive modeling.
  • Model Training Guides - Provides a comprehensive guide and step-by-step tutorials for training image classification and digit recognition models.
  • Project-Based Learning - Uses the construction of functional machine learning models as the primary vehicle for teaching and validation.
  • Project-Based Mastery Validations - Confirms student mastery by requiring the implementation of a functioning model on a real-world dataset.
  • Dataset-to-Lesson Mappings - Links conceptual educational lessons directly to specific datasets for immediate practical application in model training.
  • Modular Course Architectures - Separates learning objectives into independent units focused on distinct machine learning techniques.
  • Modular Learning Units - Organizes complex technical subjects into independent, self-contained instructional blocks for easier study.
  • Supervised Learning Tutorials - Provides guided tutorials on implementing various supervised learning models to analyze patterns in data.
  • Technical Learning Paths - Connects theoretical content with external datasets and code templates to facilitate technical training.
  • Learning and Reference - Listed in the “Learning and Reference” section of the TopDeepLearning awesome list.

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مجموعات مختارة تضم Machine Learning

مجموعات منسقة بعناية يظهر فيها Machine Learning.
  • كتب وأدلة تعلم الآلة
  • منهج تعليمي مجاني لتعلم تعلم الآلة
  • خرائط طريق هندسة تعلم الآلة

بدائل مفتوحة المصدر لـ Machine Learning

مشاريع مفتوحة المصدر مشابهة، مرتبة حسب عدد الميزات المشتركة مع Machine Learning.
  • afshinea/stanford-cs-229-machine-learningالصورة الرمزية لـ afshinea

    afshinea/stanford-cs-229-machine-learning

    19,270عرض على GitHub↗

    This repository serves as a comprehensive educational resource for machine learning, providing a structured collection of lecture notes and reference materials. It covers the fundamental mathematical and statistical principles required to build, evaluate, and optimize predictive models, ranging from basic probability and linear algebra to advanced algorithmic implementations. The content is organized through a hierarchical mapping of concepts that connects mathematical prerequisites to specific machine learning theories. It features a modular design that segments complex topics into discrete,

    cheatsheetcs229data-science
    عرض على GitHub↗19,270
  • mrdbourke/zero-to-mastery-mlالصورة الرمزية لـ mrdbourke

    mrdbourke/zero-to-mastery-ml

    5,839عرض على GitHub↗

    This project is a machine learning educational curriculum and learning platform delivered through interactive Jupyter Notebooks. It serves as a comprehensive guide for mastering the Python data science toolkit, providing structured tutorials for numerical computing, tabular data manipulation, and statistical visualization. The curriculum includes specific implementation guides for Scikit-Learn and a practical course on TensorFlow for constructing, training, and deploying neural networks and computer vision models. It covers the end-to-end process of building predictive models, from initial pr

    Jupyter Notebookdata-sciencedeep-learningmachine-learning
    عرض على GitHub↗5,839
  • yorko/mlcourse.aiY

    Yorko/mlcourse.ai

    10,639عرض على GitHub↗

    This project is a structured machine learning course and educational program designed to teach data analysis and gradient boosting. It consists of a ten-week curriculum that combines theoretical readings and videos with an interactive learning path. The material is delivered through a searchable documentation site and a course generator that produces book-formatted content for offline study. The curriculum integrates interactive notebooks, demo assignments, and competitive challenges to provide a practice environment for applying concepts to real-world datasets. The project utilizes a markdo

    Python
    عرض على GitHub↗10,639
  • datatalksclub/machine-learning-zoomcampالصورة الرمزية لـ DataTalksClub

    DataTalksClub/machine-learning-zoomcamp

    13,318عرض على GitHub↗

    This project is a structured educational program and machine learning engineering course. It provides a comprehensive curriculum and learning path focused on data science, the development of predictive models, and the operational aspects of MLOps. The instructional material covers the full machine learning lifecycle, moving from basic data engineering to production deployment. This includes guides on wrapping models in APIs, utilizing container-based packaging, and implementing serverless architectures to host models in cloud environments. The program encompasses technical training in predic

    Jupyter Notebook
    عرض على GitHub↗13,318
عرض جميع البدائل الـ 30 لـ Machine Learning→

الأسئلة الشائعة

ما هي وظيفة udacity/machine-learning؟

هذا المشروع عبارة عن منهج للتعلم الآلي ومورد تعليمي لعلوم البيانات. يوفر مجموعة منظمة من المواد التعليمية والمشاريع العملية المصممة لتعلم مفاهيم التعلم الآلي وتنفيذ النماذج التنبؤية.

ما هي الميزات الرئيسية لـ udacity/machine-learning؟

الميزات الرئيسية لـ udacity/machine-learning هي: Machine Learning Education, Structured Curricula, Data Science Training Programs, Learning Paths, Project-Based Model Assessments, Machine Learning Concepts, Pedagogical Exercises, Predictive Model Implementations.

ما هي البدائل مفتوحة المصدر لـ udacity/machine-learning؟

تشمل البدائل مفتوحة المصدر لـ udacity/machine-learning: afshinea/stanford-cs-229-machine-learning — This repository serves as a comprehensive educational resource for machine learning, providing a structured collection… mrdbourke/zero-to-mastery-ml — This project is a machine learning educational curriculum and learning platform delivered through interactive Jupyter… yorko/mlcourse.ai — This project is a structured machine learning course and educational program designed to teach data analysis and… datatalksclub/machine-learning-zoomcamp — This project is a structured educational program and machine learning engineering course. It provides a comprehensive… girafe-ai/ml-course — This repository provides a comprehensive educational framework for mastering machine learning and deep learning… mrdbourke/machine-learning-roadmap — This project is a technical curriculum and learning path for machine learning, providing a structured sequence of…