FIFA World Cup 2026

Powered by365Scores.com
http://creator.themasoftware.com/
https://bc.game/i-4cyp45osg-n//
Movieblogarea
hostingpanel
Topliste Download Suche ebook-hell archivx.to warezload.net - Topliste http://bestoflinks.synology.me szene.link LinkBase http://poster.themasoftware crawli download suchmaschine byte

Official Partners

Warez-DDL
ebook-hell
ebook-land
katzdownload
Warez & Scene Links
downtopc
Thread Rating:
  • 0 Vote(s) - 0 Average
  • 1
  • 2
  • 3
  • 4
  • 5
DevOps for Data Science (Chapman & Hall/CRC Data Science Series)
#1
[Image: fa9e60b04cec6fb7b94af81c8c4416b1.jpg]
DevOps for Data Science (Chapman & Hall/CRC Data Science Series)

English | 2024 | ISBN: 1032100346 | 274 pages | True PDF | 16.19 MB

Data Scientists are experts at analyzing, modelling and visualizing data but, at one point or another, have all encountered difficulties in collaborating with or delivering their work to the people and systems that matter. Born out of the agile software movement, DevOps is a set of practices, principles and tools that help software engineers reliably deploy work to production. This book takes the lessons of DevOps and aplies them to creating and delivering production-grade data science projects in Python and R.

This book's first section explores how to build data science projects that deploy to production with no frills or fuss. Its second section covers the rudiments of administering a server, including Linux, application, and network administration before concluding with a demystification of the concerns of enterprise IT/Administration in its final section, making it possible for data scientists to communicate and collaborate with their organization's security, networking, and administration teams.

Key Features
• Start-to-finish labs take readers through creating projects that meet DevOps best practices and creating a server-based environment to work on and deploy them.
• Provides an appendix of cheatsheets so that readers will never be without the reference they need to remember a Git, Docker, or Command Line command.
• Distills what a data scientist needs to know about Docker, APIs, CI/CD, Linux, DNS, SSL, HTTP, Auth, and more.
• Written specifically to address the concern of a data scientist who wants to take their Python or R work to production.

There are countless books on creating data science work that is correct. This book, on the otherhand, aims to go beyond this, targeted at data scientists who want their work to be than merely accurate and deliver work that matters.

[Image: url.png]

https://rapidgator.net/file/0129d52bd99e...7fd7063cd8
Reply
Thanks given by:


Possibly Related Threads…
Thread Author Replies Views Last Post
  Utility - Based Learning from Data Emperor2011 0 16 07-03-2026, 04:18 PM
Last Post: Emperor2011
  Popularizing Science The Life and Work of JBS Haldane Emperor2011 0 19 07-02-2026, 01:25 PM
Last Post: Emperor2011
  Advanced SQL Implementing Modern Data Solutions and ML Applications Emperor2011 0 18 07-02-2026, 12:55 PM
Last Post: Emperor2011
  Science of Microscopy Emperor2011 0 30 06-28-2026, 11:31 AM
Last Post: Emperor2011
  Science at the Nanoscale An Introductory Textbook Emperor2011 0 32 06-28-2026, 11:29 AM
Last Post: Emperor2011
  Dictionary of Food Science And Nutrition Emperor2011 0 31 06-28-2026, 10:27 AM
Last Post: Emperor2011
  Fractional Quantum Hall Effects New Developments Emperor2011 0 30 06-27-2026, 09:45 AM
Last Post: Emperor2011
  Data Management and Digital Infrastructure in Social Sciences Emperor2011 0 36 06-27-2026, 09:38 AM
Last Post: Emperor2011
  Welcome to Mars Politics, Pop Culture, and Weird Science in 1950s America Emperor2011 0 37 06-26-2026, 01:03 PM
Last Post: Emperor2011
  To Kokoda (Australian Army Campaigns Series) Emperor2011 0 39 06-26-2026, 01:02 PM
Last Post: Emperor2011

Forum Jump:


Users browsing this thread: 1 Guest(s)