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Results for "mixed+model"
Stanford University
Skills you'll gain: Bayesian Network, Machine Learning, Probability & Statistics, Human Learning, Algorithms
University of Colorado Boulder
Skills you'll gain: General Statistics, Statistical Analysis, Probability & Statistics, Regression, R Programming
Johns Hopkins University
Skills you'll gain: General Statistics, Probability & Statistics, Linear Algebra, Mathematics, Algebra, Regression
Wesleyan University
Skills you'll gain: Regression
Coursera Project Network
Skills you'll gain: Big Data, Data Analysis, Machine Learning, Regression
Coursera Project Network
University of Colorado Boulder
Skills you'll gain: General Statistics, Probability & Statistics, Experiment, Statistical Tests, Calculus, Linear Algebra
- Status: Free
Coursera Project Network
Skills you'll gain: Data Analysis, Data Visualization, Machine Learning, Python Programming, R Programming
Coursera Project Network
Skills you'll gain: Computer Vision, Deep Learning, Machine Learning, Tensorflow
- Status: Free
The Chinese University of Hong Kong
Skills you'll gain: Leadership and Management
Google Cloud
Skills you'll gain: Looker (Software)
LearnKartS
In summary, here are 10 of our most popular mixed+model courses
- Probabilistic Graphical Models 3: Learning:Â Stanford University
- Modern Regression Analysis in R:Â University of Colorado Boulder
- Advanced Linear Models for Data Science 2: Statistical Linear Models:Â Johns Hopkins University
- Regression Modeling in Practice:Â Wesleyan University
- Graduate Admission Prediction with Pyspark ML:Â Coursera Project Network
- FEM - Linear, Nonlinear Analysis & Post-Processing:Â Coursera Project Network
- ANOVA and Experimental Design:Â University of Colorado Boulder
- Build and deploy a stroke prediction model using R:Â Coursera Project Network
- Creating Multi Task Models With Keras:Â Coursera Project Network
- 离散优化建模基础篇 Basic Modeling for Discrete Optimization: The Chinese University of Hong Kong