The course "Applied Machine Learning: Techniques and Applications" focuses on the practical use of machine learning across various domains, particularly in computer vision, data feature analysis, and model evaluation. Learners will gain hands-on experience with key techniques, such as image processing and supervised learning methods while mastering essential skills in data pre-processing and model evaluation.

Applied Machine Learning: Techniques and Applications
本课程是 Applied Machine Learning 专项课程 的一部分

位教师:Erhan Guven
访问权限由 Coursera Learning Team 提供
2,146 人已注册
您将学到什么
Understand and implement machine learning techniques for computer vision tasks, including image recognition and object detection.
Analyze data features and evaluate machine learning model performance using appropriate metrics and evaluation techniques.
Apply data pre-processing methods to clean, transform, and prepare data for effective machine learning model training.
Implement and optimize supervised learning algorithms for classification and regression tasks.
您将获得的技能
- Machine Learning Algorithms
- Classification Algorithms
- Scikit Learn (Machine Learning Library)
- Data Integration
- Supervised Learning
- Feature Engineering
- Data Preprocessing
- Predictive Modeling
- Image Analysis
- Machine Learning
- Model Evaluation
- Data Cleansing
- Computer Vision
- Data Transformation
- Applied Machine Learning
- 技能部分已折叠。显示 7 项技能,共 15 项。
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12 项作业
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该课程共有4个模块
Discover the foundational principles and practical applications of machine learning as you delve into specialized topics such as computer vision. This course combines theoretical insights with practical lab activities through hands-on modules, covering essential concepts including data pre-processing, feature extraction, dataset management, supervised learning and classification techniques, and model evaluation. You will learn to implement and assess various machine learning models, providing a comprehensive introduction that will equip you with the essential skills to apply machine learning to visual data.
涵盖的内容
5个视频4篇阅读材料3个作业1个非评分实验室
Explore essential techniques in data feature analysis and model evaluation critical to effective machine learning applications. Learn to identify, preprocess, and integrate datasets from diverse sources like UCI KDD and Kaggle. Gain hands-on experience with the Weka framework for data preprocessing and classification, and understand evaluation metrics including Receiver Operating Characteristic curves. By the end of this module, you'll grasp the nuances of model overfitting and strategies to optimize model performance.
涵盖的内容
7个视频2篇阅读材料3个作业1个非评分实验室
Master the essential techniques of data pre-processing to enhance machine learning model performance. This module covers the foundational aspects of data cleaning, various data formats, and processing methods. You'll delve into advanced topics like discretization, data transformation, and reduction techniques. By the end of this module, you'll be adept at engineering data features, applying feature selection, and refining datasets for optimal machine learning outcomes.
涵盖的内容
5个视频1篇阅读材料3个作业1个非评分实验室
Delve into the core principles and mathematical foundations of supervised learning algorithms. This module covers essential techniques, including the Perceptron algorithm, Naive Bayes classifier, and Linear Regression methods. You'll gain practical experience implementing and visualizing these algorithms, and explore how classifier decision boundaries shift with parameter changes. Additionally, learn to apply text classification using real-world datasets for hands-on understanding of supervised learning applications.
涵盖的内容
6个视频2篇阅读材料3个作业1个编程作业
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学生评论
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已于 Jan 25, 2025审阅
Brilliant course for learning advanced machine learning !
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