Nicht aus der Schweiz? Besuchen Sie lehmanns.de

Scikit-learn : Machine Learning Simplified (eBook)

Implement scikit-learn into every step of the data science pipeline
eBook Download: EPUB
2017
530 Seiten
Packt Publishing (Verlag)
978-1-78883-152-9 (ISBN)

Lese- und Medienproben

Scikit-learn : Machine Learning Simplified - Raul Garreta, Guillermo Moncecchi, Trent Hauck, Gavin Hackeling
Systemvoraussetzungen
91,19 inkl. MwSt
(CHF 88,95)
Der eBook-Verkauf erfolgt durch die Lehmanns Media GmbH (Berlin) zum Preis in Euro inkl. MwSt.
  • Download sofort lieferbar
  • Zahlungsarten anzeigen

Implement scikit-learn into every step of the data science pipeline

About This Book

  • Use Python and scikit-learn to create intelligent applications
  • Discover how to apply algorithms in a variety of situations to tackle common and not-so common challenges in the machine learning domain
  • A practical, example-based guide to help you gain expertise in implementing and evaluating machine learning systems using scikit-learn

Who This Book Is For

If you are a programmer and want to explore machine learning and data-based methods to build intelligent applications and enhance your programming skills, this is the course for you. No previous experience with machine-learning algorithms is required.

What You Will Learn

  • Review fundamental concepts including supervised and unsupervised experiences, common tasks, and performance metrics
  • Classify objects (from documents to human faces and flower species) based on some of their features, using a variety of methods from Support Vector Machines to Naive Bayes
  • Use Decision Trees to explain the main causes of certain phenomena such as passenger survival on the Titanic
  • Evaluate the performance of machine learning systems in common tasks
  • Master algorithms of various levels of complexity and learn how to analyze data at the same time
  • Learn just enough math to think about the connections between various algorithms
  • Customize machine learning algorithms to fit your problem, and learn how to modify them when the situation calls for it
  • Incorporate other packages from the Python ecosystem to munge and visualize your dataset
  • Improve the way you build your models using parallelization techniques

In Detail

Machine learning, the art of creating applications that learn from experience and data, has been around for many years. Python is quickly becoming the go-to language for analysts and data scientists due to its simplicity and flexibility; moreover, within the Python data space, scikit-learn is the unequivocal choice for machine learning. The course combines an introduction to some of the main concepts and methods in machine learning with practical, hands-on examples of real-world problems. The course starts by walking through different methods to prepare your data-be it a dataset with missing values or text columns that require the categories to be turned into indicator variables. After the data is ready, you'll learn different techniques aligned with different objectives-be it a dataset with known outcomes such as sales by state, or more complicated problems such as clustering similar customers. Finally, you'll learn how to polish your algorithm to ensure that it's both accurate and resilient to new datasets. You will learn to incorporate machine learning in your applications. Ranging from handwritten digit recognition to document classification, examples are solved step-by-step using scikit-learn and Python. By the end of this course you will have learned how to build applications that learn from experience, by applying the main concepts and techniques of machine learning.

Style and Approach

Implement scikit-learn using engaging examples and fun exercises, and with a gentle and friendly but comprehensive 'learn-by-doing' approach. This is a practical course, which analyzes compelling data about life, health, and death with the help of tutorials. It offers you a useful way of interpreting the data that's specific to this course, but that can also be applied to any other data. This course is designed to be both a guide and a reference for moving beyond the basics of scikit-learn.


Implement scikit-learn into every step of the data science pipelineAbout This BookUse Python and scikit-learn to create intelligent applicationsDiscover how to apply algorithms in a variety of situations to tackle common and not-so common challenges in the machine learning domainA practical, example-based guide to help you gain expertise in implementing and evaluating machine learning systems using scikit-learnWho This Book Is ForIf you are a programmer and want to explore machine learning and data-based methods to build intelligent applications and enhance your programming skills, this is the course for you. No previous experience with machine-learning algorithms is required.What You Will LearnReview fundamental concepts including supervised and unsupervised experiences, common tasks, and performance metricsClassify objects (from documents to human faces and flower species) based on some of their features, using a variety of methods from Support Vector Machines to Naive BayesUse Decision Trees to explain the main causes of certain phenomena such as passenger survival on the TitanicEvaluate the performance of machine learning systems in common tasksMaster algorithms of various levels of complexity and learn how to analyze data at the same timeLearn just enough math to think about the connections between various algorithmsCustomize machine learning algorithms to fit your problem, and learn how to modify them when the situation calls for itIncorporate other packages from the Python ecosystem to munge and visualize your datasetImprove the way you build your models using parallelization techniquesIn DetailMachine learning, the art of creating applications that learn from experience and data, has been around for many years. Python is quickly becoming the go-to language for analysts and data scientists due to its simplicity and flexibility; moreover, within the Python data space, scikit-learn is the unequivocal choice for machine learning. The course combines an introduction to some of the main concepts and methods in machine learning with practical, hands-on examples of real-world problems. The course starts by walking through different methods to prepare your data-be it a dataset with missing values or text columns that require the categories to be turned into indicator variables. After the data is ready, you'll learn different techniques aligned with different objectives-be it a dataset with known outcomes such as sales by state, or more complicated problems such as clustering similar customers. Finally, you'll learn how to polish your algorithm to ensure that it's both accurate and resilient to new datasets. You will learn to incorporate machine learning in your applications. Ranging from handwritten digit recognition to document classification, examples are solved step-by-step using scikit-learn and Python. By the end of this course you will have learned how to build applications that learn from experience, by applying the main concepts and techniques of machine learning.Style and ApproachImplement scikit-learn using engaging examples and fun exercises, and with a gentle and friendly but comprehensive "e;learn-by-doing"e; approach. This is a practical course, which analyzes compelling data about life, health, and death with the help of tutorials. It offers you a useful way of interpreting the data that's specific to this course, but that can also be applied to any other data. This course is designed to be both a guide and a reference for moving beyond the basics of scikit-learn.
Erscheint lt. Verlag 10.11.2017
Sprache englisch
Themenwelt Sachbuch/Ratgeber Freizeit / Hobby Sammeln / Sammlerkataloge
ISBN-10 1-78883-152-7 / 1788831527
ISBN-13 978-1-78883-152-9 / 9781788831529
Haben Sie eine Frage zum Produkt?
EPUBEPUB (Adobe DRM)
Größe: 10,7 MB

Kopierschutz: Adobe-DRM
Adobe-DRM ist ein Kopierschutz, der das eBook vor Mißbrauch schützen soll. Dabei wird das eBook bereits beim Download auf Ihre persönliche Adobe-ID autorisiert. Lesen können Sie das eBook dann nur auf den Geräten, welche ebenfalls auf Ihre Adobe-ID registriert sind.
Details zum Adobe-DRM

Dateiformat: EPUB (Electronic Publication)
EPUB ist ein offener Standard für eBooks und eignet sich besonders zur Darstellung von Belle­tristik und Sach­büchern. Der Fließ­text wird dynamisch an die Display- und Schrift­größe ange­passt. Auch für mobile Lese­geräte ist EPUB daher gut geeignet.

Systemvoraussetzungen:
PC/Mac: Mit einem PC oder Mac können Sie dieses eBook lesen. Sie benötigen eine Adobe-ID und die Software Adobe Digital Editions (kostenlos). Von der Benutzung der OverDrive Media Console raten wir Ihnen ab. Erfahrungsgemäß treten hier gehäuft Probleme mit dem Adobe DRM auf.
eReader: Dieses eBook kann mit (fast) allen eBook-Readern gelesen werden. Mit dem amazon-Kindle ist es aber nicht kompatibel.
Smartphone/Tablet: Egal ob Apple oder Android, dieses eBook können Sie lesen. Sie benötigen eine Adobe-ID sowie eine kostenlose App.
Geräteliste und zusätzliche Hinweise

Buying eBooks from abroad
For tax law reasons we can sell eBooks just within Germany and Switzerland. Regrettably we cannot fulfill eBook-orders from other countries.

Mehr entdecken
aus dem Bereich
The Process of Leading Organizational Change

von Donald L. Anderson

eBook Download (2023)
Sage Publications (Verlag)
CHF 95,70
Exploring the Central Brooks Range, Second Edition

von Robert Marshall; George Marshall

eBook Download (2023)
University of California Press (Verlag)
CHF 37,95
A Translation and Study of the Gukansho, an Interpretative History of …

von Delmer Brown; Ichiro Ishida

eBook Download (2023)
University of California Press (Verlag)
CHF 51,75