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54 results for "regularization"
Technical University of Denmark (DTU)
Skills you'll gain: Computer Programming
CertNexus
Skills you'll gain: Machine Learning, Regression
The University of Chicago
Skills you'll gain: Machine Learning, Regression
University of Washington
Skills you'll gain: Computer Programming, R Programming
Sungkyunkwan University
University of Illinois at Urbana-Champaign
Skills you'll gain: Python Programming
Skills you'll gain: Data Analysis, Python Programming
University of California San Diego
Skills you'll gain: Machine Learning
Imperial College London
Skills you'll gain: Deep Learning, Machine Learning, Artificial Neural Networks, Applied Machine Learning, Python Programming, Tensorflow, Probability & Statistics, Statistical Analysis
Imperial College London
Skills you'll gain: Applied Machine Learning, Artificial Neural Networks, Deep Learning, Machine Learning, Python Programming, Tensorflow
Imperial College London
Skills you'll gain: Deep Learning, Machine Learning, Artificial Neural Networks, Applied Machine Learning, Python Programming, Tensorflow
Google Cloud
Skills you'll gain: Strategy, Communication, Leadership and Management, Business Analysis, Database Administration, Data Analysis, Databases, Market Analysis, Machine Learning
In summary, here are 10 of our most popular regularization courses
- Introduction to advanced tomography:Â Technical University of Denmark (DTU)
- Train Machine Learning Models:Â CertNexus
- Machine Learning: Concepts and Applications:Â The University of Chicago
- Practical Predictive Analytics: Models and Methods:Â University of Washington
- Machine Learning Algorithms:Â Sungkyunkwan University
- Data Analytics Foundations for Accountancy II:Â University of Illinois at Urbana-Champaign
- Using SAS Viya REST APIs with Python and R:Â SAS
- Meaningful Predictive Modeling:Â University of California San Diego
- TensorFlow 2 for Deep Learning:Â Imperial College London
- Getting started with TensorFlow 2:Â Imperial College London