- Level Professional
- المدة 12 ساعات hours
- الطبع بواسطة Alberta Machine Intelligence Institute
-
Offered by
عن
This course is all about data and how it is critical to the success of your applied machine learning model. Completing this course will give learners the skills to: Understand the critical elements of data in the learning, training and operation phases Understand biases and sources of data Implement techniques to improve the generality of your model Explain the consequences of overfitting and identify mitigation measures Implement appropriate test and validation measures. Demonstrate how the accuracy of your model can be improved with thoughtful feature engineering. Explore the impact of the algorithm parameters on model strength To be successful in this course, you should have at least beginner-level background in Python programming (e.g., be able to read and code trace existing code, be comfortable with conditionals, loops, variables, lists, dictionaries and arrays). You should have a basic understanding of linear algebra (vector notation) and statistics (probability distributions and mean/median/mode). This is the third course of the Applied Machine Learning Specialization brought to you by Coursera and the Alberta Machine Intelligence Institute.الوحدات
Know Your Problem
1
Assignment
- Business Understanding and Problem Discovery (BUPD) Review
4
Videos
- Introduction to the Course
- Business Understanding and Problem Discovery
- No Free Lunch Theorem
- Exploring the process of problem definition
1
Readings
- Machine Learning Process Lifecycle Review
Know Your Data
1
Assignment
- Data Acquisition and Understanding Review
4
Videos
- Data Acquisition and Understanding
- Metadata Matters
- Dealing with Multimodal Data
- Features and transformations of raw data
Matchmaking
1
Assignment
- Module 1 Quiz
3
Videos
- Identifying Data from Problem
- Case Study: Problem from Data
- Weekly Summary What does good data look like?
1
Readings
- Match Data to the needs of the learning Algorithm
Consolidate Sources
1
Assignment
- Data Warehousing Review
4
Videos
- Data Warehousing
- Converting to Useful Forms
- Data Quality
- How Much Data Do I Need?
Coordinate
2
Assignment
- Everything has to be Numbers Review
- Types of Data Review
3
Videos
- Everything has to be Numbers
- Types of Data
- Aligning Similar Data
Clean & Complete
1
Assignment
- Module 2 Quiz
4
Videos
- Imputing Missing Values
- Data Transformations
- Weekly Summary: Preparing your Data for Machine Learning Success
- Data Cleaning: Everybody's favourite task
Understanding Features
1
Assignment
- Understanding Features
3
Videos
- What are the simplest Features to try
- Useful/Useless Features
- How Many Features?
Building Good Features
1
Assignment
- Building Good Features
3
Videos
- What is Unsupervised Learning
- Feature Selection
- Feature Extraction
1
Readings
- Possibilities for Text Features
Transfer Learning
- Preparing Data: Grader
1
Assignment
- Understanding Transfer Learning
1
Labs
- Preparing Data
2
Videos
- Transfer Learning
- Weekly Summary: Feature Engineering for MORE Fun & Profit
1
Readings
- Word Embeddings
Accept Limitations
1
Assignment
- Mistakes Computers Make
4
Videos
- Imbalanced Data
- Generalization and how machines actually learn
- Bias in Data Sources
- Bias and variance tradeoff
Statistical Nuance
1
Assignment
- Data: Skewed Distributions
2
Videos
- Outliers
- Skewed Distributions
Consequences of Bad Data
2
Assignment
- Live Data Dangers
- Module 4 Quiz
3
Videos
- Badness Multipliers
- Live Data Danger
- Weekly Summary: Bad Data
Auto Summary
Unlock the power of data with the "Data for Machine Learning" course, an in-depth exploration of how crucial data is to the success of applied machine learning models. Designed for those with a beginner-level grasp of Python, linear algebra, and statistics, this course will elevate your understanding and skills in data science and AI. Guided by the expertise of the Coursera and the Alberta Machine Intelligence Institute, learners will delve into: - The pivotal role of data throughout the learning, training, and operational phases of machine learning. - Identifying and mitigating biases and understanding diverse data sources. - Techniques to enhance the generality and accuracy of models through feature engineering and algorithm parameter tuning. - Addressing overfitting and implementing robust test and validation measures. Spanning 720 minutes, this professional-level course is part of the Applied Machine Learning Specialization, offering comprehensive insights to refine your machine learning prowess. Flexible subscription options, including Starter and Professional tiers, ensure you can learn at your own pace and convenience. Perfect for aspiring data scientists and AI enthusiasts ready to deepen their knowledge and application of machine learning.

Anna Koop