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IKT437 Knowledge Engineering and Representation

IKT437 Knowledge Engineering and Representation. NoSQL ~ No SQL or Not Only SQL. Jan Pettersen Nytun, UiA. Overview. Introduction and Motivation Categories of NoSQL Examples of NoSQL systems Encodings Querying Examples Summary. NOSQL – Comes in many different variants.

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IKT437 Knowledge Engineering and Representation

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  1. IKT437Knowledge Engineering and Representation NoSQL ~ No SQL or Not Only SQL Jan Pettersen Nytun, UiA

  2. Overview • Introduction and Motivation • CategoriesofNoSQL • ExamplesofNoSQL systems • Encodings • Querying • Examples • Summary

  3. NOSQL – Comes in many different variants Some Possible CharacteristicsAll characteristics may not be supported • Non-relational • Flexible schema • Other or additional query languages than SQL • Distributed – horizontal scaling • Less structured data • Supports big data

  4. The Benefits of NoSQL[https://www.mongodb.com/nosql-explained] When compared to relational databases, NoSQL databases are more scalable and provide superior performance, and their data model addresses several issues that the relational model is not designed to address: • Geographically distributed architecture instead of expensive, monolithic architecture • Large volumes of rapidly changing structured, semi-structured, and unstructured data • Agile sprints, quick schema iteration, and frequent code pushes • Object-oriented programming that is easy to use and flexible

  5. [ref: http://www.cs.tut.fi/~tjm/seminars/nosql2012/NoSQL-Intro.pdf]

  6. Overview • Introduction and Motivation • CategoriesofNoSQL • ExamplesofNoSQL systems • Encodings • Querying • Examples • Summary

  7. NoSQL Database Types[https://www.mongodb.com/nosql-explained] • Graph stores are used to store information about networks of data, such as social connections. Graph stores include Neo4J and triple stores like Fuseki. • Document databases pair each key with a complex data structure known as a document. • Key-value stores are the simplest NoSQL databases. Every single item in the database is stored as an attribute name (or 'key'), together with its value. Examples of key-value stores are Riak and Berkeley DB. • Wide-column stores such as Cassandra and HBase are optimized for queries over large datasets, and store columns of data together, instead of rows.

  8. Document Store • The central concept is the notion of a "document“ which corresponds to a row in RDBMS. • A document comes in some standard formats like JSON (BSON). • Documents are addressed in the database via a unique key that represents that document. • The database offers an API or query language that retrieves documents based on their contents. • Documents are schema free, i.e., different documents can have structures and schema that differ from one another. (An RDBMS requires that each row contain the same columns.)

  9. MongoDB to documents (JSON): { _id: ObjectId("51156a1e056d6f966f268f81"), type: "Article", author: "Derick Rethans", title: "Introduction to Document Databases with MongoDB", date: ISODate("2013-04-24T16:26:31.911Z"), body: "This arti…" }, { _id: ObjectId("51156a1e056d6f966f268f82"), type: "Book", author: "Derick Rethans", title: "php|architect's Guide to Date and Time Programming with PHP", isbn: "978-0-9738621-5-7" }

  10. What's the most popular NoSQL database?[https://www.quora.com/Whats-the-most-popular-NoSQL-database] Vadim Ismakaev, Co-Founder at GraceUpdated Apr 27, 2015 • Asking “what NoSQL database is the most popular” is a bit incorrect since different problems require different types of NoSQL solutions. …focus on solving very specific problems. While this allows to achieve the best possible results in those specific cases, it comes at a cost of some other functionalities.

  11. So - what's the most popular NoSQL database?Top NoSQL Database Enginesbyhttp://www.kdnuggets.com/2016/06/top-nosql-database-engines.htmlNext Two Slides:

  12. Method of calculating the scores of the DB-Engines Ranking [http://db-engines.com/en/ranking_definition] We measure the popularity of a system by using the following parameters: • Number of mentions of the system on websites, … • General interest in the system. For this measurement, we use the frequency of searches in Google Trends. • Frequency of technical discussions about the system...Stack Overflow… • Number of job offers, in which the system is mentioned... • Number of profiles in professional networks, in which the system is mentioned...LinkedIn … • Relevance in social networks. We count the number of Twitter tweets, in which the system is mentioned.

  13. [http://www.kdnuggets.com/2016/06/top-nosql-database-engines.html][http://www.kdnuggets.com/2016/06/top-nosql-database-engines.html] Document databases: MongoDBWide-column stores: Cassandra and Hbasekey-value: RedisGraph database: Neo4j

  14. [http://db-engines.com/en/ranking_trend] The DB-Engines Ranking ranks database management systems according to their popularity – not only NOSQL databases

  15. Neo4J • Graph-oriented • Implemented in Java and accessible from software written in other languages using the Cypher query language through a transactional HTTP endpoint. • ACID-compliant transactional database with native graph storage and processing. • The most popular graph database. • Everything is stored as an edge, a node or an attribute. • Each node and edge can have any number of attributes. • Both the nodes and edges can be labelled. • Labels can be used to narrow searches.

  16. Following Slides are copied from a presentation made byJim WebberNeo4J

  17. stole companion loves from appeared in loves enemy companion appeared in appeared in enemy enemy appeared in appeared in A Good Man Goes to War Victory of the Daleks appeared in

  18. Property Graph Model

  19. Property Graph Model TRAVELS_WITH LOVES TRAVELS_WITH BORROWED year : 1963 TRAVELS_IN

  20. Property Graph Model name: the Doctor age: 907 species: Time Lord TRAVELS_WITH LOVES TRAVELS_WITH BORROWED year: 1963 first name: Rose late name: Tyler TRAVELS_IN vehicle: tardis model: Type 40

  21. Graphs are very whiteboard-friendly

  22. What’s Neo4j? • It’s is a Graph Database • Embeddable and server • Full ACID transactions • don’t mess around with durability, ever. • Schema free

  23. More on Neo4j • Neo4j is stable • In 24/7 operation since 2003 • Neo4j is under active development • High performance graph operations • Traverses 1,000,000+ relationships / second on commodity hardware

  24. Neo4j Logical Architecture … REST API Java Ruby Clojure JVM Language Bindings Graph Matching Core API Traversal Framework Caches Memory-Mapped (N)IO Filesystem

  25. Data access is programmatic • Through the Java APIs • JVM languages have bindings to the same APIs • JRuby, Jython, Clojure, Scala… • Managing nodes and relationships • Indexing • Traversing • Path finding • Pattern matching

  26. Core API • Deals with graphs in terms of their fundamentals: • Nodes • Properties • KV Pairs • Relationships • Start node • End node • Properties • KV Pairs

  27. Creating Nodes GraphDatabaseServicedb = new EmbeddedGraphDatabase("/tmp/neo"); Transaction tx = db.beginTx(); try { Node theDoctor = db.createNode(); theDoctor.setProperty("character", "the Doctor"); tx.success(); } finally { tx.finish(); }

  28. Creating Relationships Transaction tx = db.beginTx(); try { Node theDoctor= db.createNode(); theDoctor.setProperty("character", "The Doctor"); Node susan= db.createNode(); susan.setProperty("firstname", "Susan"); susan.setProperty("lastname", "Campbell"); susan.createRelationshipTo(theDoctor, DynamicRelationshipType.withName("COMPANION_OF")); tx.success(); } finally { tx.finish(); }

  29. Indexing a Graph? • Graphs are their own indexes! • But sometimes we want short-cuts to well-known nodes • Can do this in our own code • Just keep a reference to any interesting nodes

  30. Why graph matching? • It’s super-powerful for looking for patterns in a data set • E.g. retail analytics • Higher-level abstraction than raw traversers • You do less work!

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