Managing Datasets and Models
Seiten
2023
Mercury Learning & Information (Verlag)
978-1-68392-952-9 (ISBN)
Mercury Learning & Information (Verlag)
978-1-68392-952-9 (ISBN)
- Titel z.Zt. nicht lieferbar
- Versandkostenfrei
- Auch auf Rechnung
- Artikel merken
Offers a fast-paced introduction to data-related tasks in preparation for training models ondatasets. The book presents a step-by-step, Python-based code sample that uses the kNN algorithm to manage a model on a dataset.
This book contains a fast-paced introduction to data-related tasks in preparation for training models on datasets. It presents a step-by-step, Python-based code sample that uses the kNN algorithm to manage a model on a dataset.
Chapter One begins with an introduction to datasets and issues that can arise, followed by Chapter Two on outliers and anomaly detection. The next chapter explores ways for handling missing data and invalid data, and Chapter Four demonstrates how to train models with classification algorithms. Chapter 5 introduces visualization toolkits, such as Sweetviz, Skimpy, Matplotlib, and Seaborn, along with some simple Python-based code samples that render charts and graphs. An appendix includes some basics on using awk. Companion files with code, datasets, and figures are available for downloading.
Features:
Covers extensive topics related to cleaning datasets and working with models
Includes Python-based code samples and a separate chapter on Matplotlib and Seaborn
Features companion files with source code, datasets, and figures from the book
This book contains a fast-paced introduction to data-related tasks in preparation for training models on datasets. It presents a step-by-step, Python-based code sample that uses the kNN algorithm to manage a model on a dataset.
Chapter One begins with an introduction to datasets and issues that can arise, followed by Chapter Two on outliers and anomaly detection. The next chapter explores ways for handling missing data and invalid data, and Chapter Four demonstrates how to train models with classification algorithms. Chapter 5 introduces visualization toolkits, such as Sweetviz, Skimpy, Matplotlib, and Seaborn, along with some simple Python-based code samples that render charts and graphs. An appendix includes some basics on using awk. Companion files with code, datasets, and figures are available for downloading.
Features:
Covers extensive topics related to cleaning datasets and working with models
Includes Python-based code samples and a separate chapter on Matplotlib and Seaborn
Features companion files with source code, datasets, and figures from the book
Campesato Oswald : Oswald Campesato (San Francisco, CA) is an adjunct instructor at UC-Santa Cruz and specializes in Deep Learning, NLP, Android, and Python. He is the author/co-author of over forty-five books including Data Science Fundamentals Pocket Primer, Python 3 for Machine Learning, and the Python Pocket Primer (Mercury Learning and Information).
1: Working with Data
2: Outlier and Anomaly Detection
3: Cleaning Data Sets
4: Working with Models
5: Matplotlib and Seaborn
Appendix: Working with awk
Index
Erscheinungsdatum | 24.03.2023 |
---|---|
Sprache | englisch |
Gewicht | 703 g |
Themenwelt | Informatik ► Datenbanken ► Data Warehouse / Data Mining |
Mathematik / Informatik ► Informatik ► Theorie / Studium | |
Wirtschaft ► Betriebswirtschaft / Management ► Unternehmensführung / Management | |
ISBN-10 | 1-68392-952-7 / 1683929527 |
ISBN-13 | 978-1-68392-952-9 / 9781683929529 |
Zustand | Neuware |
Haben Sie eine Frage zum Produkt? |
Mehr entdecken
aus dem Bereich
aus dem Bereich
Datenanalyse für Künstliche Intelligenz
Buch | Softcover (2024)
De Gruyter Oldenbourg (Verlag)
CHF 104,90
Auswertung von Daten mit pandas, NumPy und IPython
Buch | Softcover (2023)
O'Reilly (Verlag)
CHF 62,85