- Taschenbuch: 226 Seiten
- Verlag: Technics Publications; Auflage: First (8. Juni 2014)
- Sprache: Englisch
- ISBN-10: 1935504703
- ISBN-13: 978-1935504702
- Größe und/oder Gewicht: 19 x 1,3 x 23,5 cm
- Durchschnittliche Kundenbewertung: Schreiben Sie die erste Bewertung
- Amazon Bestseller-Rang: Nr. 412.322 in Fremdsprachige Bücher (Siehe Top 100 in Fremdsprachige Bücher)
Data Modeling for MongoDB: Building Well-Designed and Supportable MongoDB Databases (Englisch) Taschenbuch – 8. Juni 2014
|Neu ab||Gebraucht ab|
Kunden, die diesen Artikel gekauft haben, kauften auch
Es wird kein Kindle Gerät benötigt. Laden Sie eine der kostenlosen Kindle Apps herunter und beginnen Sie, Kindle-Bücher auf Ihrem Smartphone, Tablet und Computer zu lesen.
Geben Sie Ihre Mobiltelefonnummer ein, um die kostenfreie App zu beziehen.
Wenn Sie dieses Produkt verkaufen, möchten Sie über Seller Support Updates vorschlagen?
Congratulations! You completed the MongoDB application within the given tight timeframe and there is a party to celebrate your application's release into production. Although people are congratulating you at the celebration, you are feeling some uneasiness inside. To complete the project on time required making a lot of assumptions about the data, such as what terms meant and how calculations are derived. In addition, the poor documentation about the application will be of limited use to the support team, and not investigating all of the inherent rules in the data may eventually lead to poorly-performing structures in the not-so-distant future. Now, what if you had a time machine and could go back and read this book. You would learn that even NoSQL databases like MongoDB require some level of data modeling. Data modeling is the process of learning about the data, and regardless of technology, this process must be performed for a successful application. You would learn the value of conceptual, logical, and physical data modeling and how each stage increases our knowledge of the data and reduces assumptions and poor design decisions.Read this book to learn how to do data modeling for MongoDB applications, and accomplish these five objectives: 1. Understand how data modeling contributes to the process of learning about the data, and is, therefore, a required technique, even when the resulting database is not relational. That is, NoSQL does not mean NoDataModeling! 2. Know how NoSQL databases differ from traditional relational databases, and where MongoDB fits.3. Explore each MongoDB object and comprehend how each compares to their data modeling and traditional relational database counterparts, and learn the basics of adding, querying, updating, and deleting data in MongoDB.4. Practice a streamlined, template-driven approach to performing conceptual, logical, and physical data modeling. Recognize that data modeling does not always have to lead to traditional data models! 5. Distinguish top-down from bottom-up development approaches and complete a top-down case study which ties all of the modeling techniques together.
Über den Autor und weitere Mitwirkende
Steve Hoberman is the most requested data modeling instructor in the world. In his consulting and teaching, he focuses on templates, tools, and guidelines to reap the benefits of data modeling with minimal investment. He taught his first data modeling class in 1992 and has educated more than 10,000 people about data modeling and business intelligence techniques since then. Steve is the author of seven books on data modeling, the founder of the Design Challenges group, inventor of the Data Model Scorecard, Conference Chair of the Data Modeling Zone conference, and recipient of the 2012 Data Administration Management Association (DAMA) International Professional Achievement Award. Steve can be reached at email@example.com, @DataMdlRockStar on Twitter, or through Steve Hoberman on Linked-In.
|5 Sterne (0%)|
|4 Sterne (0%)|
|3 Sterne (0%)|
|2 Sterne (0%)|
|1 Stern (0%)|
Die hilfreichsten Kundenrezensionen auf Amazon.com
This book is a quick read, but it provides you with a framework and step by step guidelines on how to design your data model, what questions to ask and how to document your model.