Details

Data Science with Raspberry Pi


Data Science with Raspberry Pi

Real-Time Applications Using a Localized Cloud

von: K. Mohaideen Abdul Kadhar, G. Anand

62,99 €

Verlag: Apress
Format: PDF
Veröffentl.: 24.06.2021
ISBN/EAN: 9781484268254
Sprache: englisch

Dieses eBook enthält ein Wasserzeichen.

Beschreibungen

<p>Implement real-time data processing applications on the Raspberry Pi.&nbsp;This book uniquely helps you work with data science concepts as part of real-time applications using the Raspberry Pi as a localized cloud. &nbsp;</p>

<p>You’ll start with a brief introduction to data science followed by a dedicated look at the fundamental concepts of Python programming. Here you’ll install the software needed for Python programming on the Pi, and then review the various data types and modules available. The next steps are to set up your Pis for gathering real-time data and incorporate the basic operations of data science related to real-time applications. You’ll then combine all these new skills to work with machine learning concepts that will enable your Raspberry Pi to learn from the data it gathers. Case studies round out the book to give you an idea of the range of domains where these concepts can be applied.&nbsp;</p>

<p>By the end of Data Science with the Raspberry Pi, you’ll understand that many applications are now dependent upon cloud computing. As Raspberry Pis are cheap, it is easy to use a number of them closer to the sensors gathering the data and restrict the analytics closer to the edge. You’ll find that not only is the Pi an easy entry point to data science, it also provides an elegant solution to cloud computing limitations through localized deployment.</p>

<p><b>What You Will Learn</b></p>

<li>Interface the Raspberry Pi with sensors</li> <li>Set up the Raspberry Pi as a localized cloud</li> Tackle data science concepts with Python on the Pi <p><b>Who This Book Is For</b></p>

<p>Data scientists who are looking to implement real-time applications using the Raspberry Pi as an edge device and localized cloud. Readers should have a basic knowledge in mathematics, computers, and statistics. A working knowledge of Python and the Raspberry Pi is an added advantage.</p>
<p>Chapter 1: Introduction to Data Science.- Chapter 2: Basics of Python Programming.- Chapter 3: Introduction to Raspberry Pi.- Chapter 4: Sensors and Signals.- Chapter 5: Preparing the Data.- Chapter 6: Visualizing the Data.- Chapter 7: Analysing the Data.- Chapter 8: Learning From Data.- Chapter 9: Case Studies.</p>
<b>Dr. K. Mohaideen Abdul Kadhar </b>has an undergraduate degree in electronics and communication engineering and an MTech with a specialization in control and instrumentation. In 2015, he obtained his PhD in control system design using evolutionary algorithms. He has more than 14 years of experience in teaching and research. His area of interest is implementing signal processing and control system concepts with Python programming on the Raspberry Pi. He has conducted many courses and delivered workshops in data science with Python programming. He has also acted as consultant for many industries in developing machine vision systems for industrial applications.<div><br></div><b>Mr. G Anand </b>obtained his BE degree in electronics and communication engineering in 2008, and his ME in communication systems in the year 2011. He has more than nine years of teaching experience with specialization in signal and image processing. He has handled courses and acted as the primary resource personin workshops related to Python programming. His current research focuses on artificial intelligence and machine learning.
Implement real-time data processing applications on the Raspberry Pi.&nbsp;This book uniquely helps you work with data science concepts as part of real-time applications using the Raspberry Pi as a localized cloud.&nbsp;&nbsp;<p>You’ll start with a brief introduction to data science followed by a dedicated look at the fundamental concepts of Python programming. Here you’ll install the software needed for Python programming on the Pi, and then review the various data types and modules available. The next steps are to set up your Pis for gathering real-time data and incorporate the basic operations of data science related to real-time applications. You’ll then combine all these new skills to work with machine learning concepts that will enable your Raspberry Pi to learn from the data it gathers. Case studies round out the book to give you an idea of the range of domains where these concepts can be applied.&nbsp;</p><p>By the end of&nbsp;<i>Data Science with the Raspberry Pi</i>, you’ll understand that&nbsp;many applications are now dependent upon cloud computing. As Raspberry Pis are cheap, it is easy to use a number of them closer to the sensors gathering the data and restrict the analytics closer to the edge. You’ll find that not only is the Pi an easy entry point to data science, it also provides an elegant solution to cloud computing limitations through localized deployment.</p><p>You will:</p><ul><li>Interface the Raspberry Pi with sensors</li><li>Set up the Raspberry Pi as a localized cloud</li><li>Tackle data science concepts with Python on the Pi</li></ul>
Shows how to develop up a Raspberry Pi as a localized cloud in data intensive applications Covers the fundamentals of data science as part of real-time applications rather than as individual concepts Explains the basics of data science concepts into Python programming

Diese Produkte könnten Sie auch interessieren:

Optical Communication Theory and Techniques
Optical Communication Theory and Techniques
von: Enrico Forestieri
PDF ebook
149,79 €
Virtual Organizations
Virtual Organizations
von: Luis M. Camarinha-Matos, Hamideh Afsarmanesh, Martin Ollus
PDF ebook
149,79 €
Quantitative Measure for Discrete Event Supervisory Control
Quantitative Measure for Discrete Event Supervisory Control
von: Asok Ray, Vir V. Phoha, Shashi Phoha
PDF ebook
96,29 €