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学生对 University of Glasgow 提供的 Machine Learning and its Applications 的评价和反馈

5.0
47 个评分

课程概述

One of the most important applications of AI in engineering is classification and regression using machine learning. After taking this course, students will have a clear understanding of essential concepts in machine learning, and be able to fluently use popular machine learning techniques in science and engineering problems via MATLAB. Among the many machine learning methods, only those with the best performance and are widely used in science and engineering are carefully selected and taught. To avoid students getting lost in details, in contrast to teaching machine learning methods one by one, the first two lectures display the global picture of machine learning, making students clearly understand essential concepts and the working principle of machine learning. Data preparation is then introduced, followed by two popular machine learning methods, support vector machines and artificial neural networks. Practical cases in science and engineering are provided, making sure students have the ability to apply what they have learned in real practice. In addition, MATLAB classification and regression apps, which allow easy access to many machine learning methods, are introduced. In partnership with MathWorks, enrolled students have access to MATLAB for the duration of the course....

热门审阅

JJ

Nov 20, 2025

The instructor’s deep understanding of supervised and unsupervised learning techniques transformed abstract concepts like SVMs and clustering into practical tools I can apply daily.

SS

Nov 21, 2025

The instructor’s emphasis on reproducibility and version control in ML workflows has transformed how I manage collaborative projects in research and industry settings.

筛选依据:

1 - Machine Learning and its Applications 的 25 个评论(共 34 个)

创建者 Yi

Nov 21, 2025

This course delivers a perfect balance between foundational machine learning theory and hands-on implementation using Python, empowering engineers to tackle real-world data challenges confidently.

创建者 WEINI

Nov 21, 2025

From linear regression to deep neural networks, the course structure ensures smooth progression for learners at all levels—highly recommended for both beginners and experienced professionals.

创建者 XinD

Nov 21, 2025

This course’s emphasis on practical machine learning pipelines—from data preprocessing to model deployment—has made me a more efficient and confident engineer in AI-driven projects.

创建者 June

Nov 21, 2025

The instructor’s deep understanding of supervised and unsupervised learning techniques transformed abstract concepts like SVMs and clustering into practical tools I can apply daily.

创建者 Sixchen

Nov 21, 2025

The instructor’s emphasis on reproducibility and version control in ML workflows has transformed how I manage collaborative projects in research and industry settings.

创建者 CE

Nov 21, 2025

Interactive Jupyter Notebook exercises with real-world datasets made complex topics like reinforcement learning and computer vision feel approachable and engaging.

创建者 CC

Nov 21, 2025

This course is a game-changer for professionals seeking to transition into data science—equipping you with both technical depth and industry-ready applications.

创建者 Coy

Nov 21, 2025

The course’s focus on interpretability tools has equipped me to explain ML models to non-technical stakeholders—a critical skill in industrial AI adoption.

创建者 Kkuai

Nov 21, 2025

This course is a must for professionals seeking to leverage machine learning for innovation—in fields ranging from autonomous systems to climate modeling.

创建者 Sylvie

Nov 22, 2025

By the end I could reproduce a published paper's result in half a day; the course genuinely bridged the gap between theory and publishable practice.

创建者 Wren

Nov 22, 2025

The data-preparation module alone saved me weeks of trial-and-error; I finally understand why "garbage in, garbage out" is 80 % of the battle.

创建者 WangRg

Nov 21, 2025

The Kaggle-based projects and model deployment workshops gave me tangible skills to build end-to-end ML pipelines in production environments.

创建者 Clementine

Nov 22, 2025

Quizzes are woven into the labs, so I got instant feedback on whether my model was actually converging or just looking pretty.

创建者 Maren

Nov 22, 2025

The pacing is perfect: conceptual overview first, then data prep, then deep dives—no cognitive overload at any point.

创建者 Calla

Nov 22, 2025

Finally, a class that teaches only the ML tools you’ll actually use in research.

创建者 Catherine

Nov 22, 2025

One sentence from the prof saved me three months of literature digging.

创建者 Elizabeth

Nov 22, 2025

The selected algorithms are highly relevant to engineering problems.

创建者 Isabella

Nov 22, 2025

The pace is suitable for students with limited coding background.

创建者 Jasper

Nov 22, 2025

Data prep section alone rescued countless hours of my lab life.

创建者 Gabriella

Nov 22, 2025

The course improves both understanding and practical skills.

创建者 Elara

Nov 22, 2025

Perfect balance of theory, coding, and real-world examples.

创建者 Benjamin

Nov 22, 2025

Labs give instant results—achievement unlocked every time.

创建者 Rhys

Dec 2, 2025

Best educational tech experience I’ve had in grad school.

创建者 Harrison

Nov 22, 2025

Real-world examples help connect theory to application.

创建者 Cassian

Nov 22, 2025

Finished feeling confident to put “ML skills” on my CV.