R for Data Science: Implementing Machine Learning Models
Uitgelicht
|
79,90 |
Naar shop
|
|
79,99 |
Naar shop
|
Beschrijving
Bol
Unlock the power of machine learning in R with R for Data Science: Implementing Machine Learning Models. This comprehensive guide equips data scientists, analysts, and R enthusiasts with the practical skills needed to build, evaluate, and deploy advanced machine learning solutions across domains. Covering both fundamental and advanced topics, this book blends theory, hands-on examples, and real-world workflows to empower readers to harness R's full capabilities.Learn how to:¿ Preprocess, clean, and transform data for robust analysis.¿ Build predictive models with regression, classification, and time series techniques.¿ Apply natural language processing and text analytics to extract insights from unstructured data.¿ Explore clustering, dimensionality reduction, and anomaly detection in unsupervised learning.¿ Optimize models through hyperparameter tuning, ensemble methods, and stacking strategies.¿ Develop reproducible workflows, pipelines, and deployment-ready solutions in R.
Unlock the power of machine learning in R with R for Data Science: Implementing Machine Learning Models. This comprehensive guide equips data scientists, analysts, and R enthusiasts with the practical skills needed to build, evaluate, and deploy advanced machine learning solutions across domains. Covering both fundamental and advanced topics, this book blends theory, hands-on examples, and real-world workflows to empower readers to harness R's full capabilities.Learn how to:¿ Preprocess, clean, and transform data for robust analysis.¿ Build predictive models with regression, classification, and time series techniques.¿ Apply natural language processing and text analytics to extract insights from unstructured data.¿ Explore clustering, dimensionality reduction, and anomaly detection in unsupervised learning.¿ Optimize models through hyperparameter tuning, ensemble methods, and stacking strategies.¿ Develop reproducible workflows, pipelines, and deployment-ready solutions in R.
AmazonPages: 164, Paperback, LAP Lambert Academic Publishing
Prijzen voor het laatst bijgewerkt op: