Share
Advanced Analytics With Pyspark: Patterns for Learning From Data at Scale Using Python and Spark (in English)
Sandy Ryza
(Author)
·
Uri Laserson
(Author)
·
Akash Tandon
(Author)
·
O'reilly Media
· Paperback
Advanced Analytics With Pyspark: Patterns for Learning From Data at Scale Using Python and Spark (in English) - Tandon, Akash ; Ryza, Sandy ; Laserson, Uri
$ 56.38
$ 70.48
You save: $ 14.10
Choose the list to add your product or create one New List
✓ Product added successfully to the Wishlist.
Go to My WishlistsIt will be shipped from our warehouse between
Friday, July 19 and
Tuesday, July 23.
You will receive it anywhere in United States between 1 and 3 business days after shipment.
Synopsis "Advanced Analytics With Pyspark: Patterns for Learning From Data at Scale Using Python and Spark (in English)"
The amount of data being generated today is staggering and growing. Apache Spark has emerged as the de facto tool to analyze big data and is now a critical part of the data science toolbox. Updated for Spark 3.0, this practical guide brings together Spark, statistical methods, and real-world datasets to teach you how to approach analytics problems using PySpark, Spark's Python API, and other best practices in Spark programming. Data scientists Akash Tandon, Sandy Ryza, Uri Laserson, Sean Owen, and Josh Wills offer an introduction to the Spark ecosystem, then dive into patterns that apply common techniques-including classification, clustering, collaborative filtering, and anomaly detection, to fields such as genomics, security, and finance. This updated edition also covers NLP and image processing. If you have a basic understanding of machine learning and statistics and you program in Python, this book will get you started with large-scale data analysis. Familiarize yourself with Spark's programming model and ecosystem Learn general approaches in data science Examine complete implementations that analyze large public datasets Discover which machine learning tools make sense for particular problems Explore code that can be adapted to many uses