2. Agenda Historical Context The Business Case for NoSQL Terminology How NoSQL is Different Key NoSQL Products Call to Action: The NoSQL Pilot Project The Future of NoSQL Copyright Kelly-McCreary & Associates, LLC 2
3. Background for Dan McCreary Bell Labs NeXT Computer (Steve Jobs) Owner of Custom Object-Oriented Software Consultancy Federal data integration (National Information Exchange Model) Native XML/XQuery – 2006 Advocate of NoSQL/XRX systems Copyright Kelly-McCreary & Associates, LLC 3
4. NoSQL Training Areas Copyright Kelly-McCreary & Associates, LLC 4 Track Course You Are Here The CIO's Guide to NoSQL Managers Project Manager's Guide to NoSQL Transitioning to NoSQL Architectural Tradeoff Modeling Architects/Project Managers XQuery MapReduce Hadoop Functional Programming Developer
5. Sample of NoSQL Jargon Document orientation Schema free MapReduce Horizontal scaling Sharding and auto-sharding Brewer's CAP Theorem Consistency Reliability Partition tolerance Single-point-of-failure Object-Relational mapping Key-value stores Column stores Document-stores Memcached 5 Copyright Kelly-McCreary & Associates, LLC Indexing B-Tree Configurable durability Documents for archives Functional programming Document Transformation Document Indexing and Search Alternate Query Languages Aggregates OLAP XQuery MDX RDF SPARQL Architecture Tradeoff Modeling ATAM Note that within the context of NoSQL many of these terms have different meanings!
6. Selecting a Database… "Selecting the right data storage solution is no longer a trivial task." Copyright Kelly-McCreary & Associates, LLC 6 Does it look like document? Use Microsoft Office Yes Start No Use theRDBMS Stop
7. Pressures on SQL Only Systems Copyright Kelly-McCreary & Associates, LLC 7 Scalability Large Data Sets Reliability SQL Social Networks OLAP/BI/DataWarehouse Linked Data Document-Data Agile Schema Free
8. Simplicity is a Virtue Many systems derive their strength by dramatically limiting the features in their system Simplicity allows database designers to focus on the primary business driver Examples: Touch screen interfaces Key/Value data stores Copyright Kelly-McCreary & Associates, LLC 8
9. Historical Context Mainframe Era Commodity Processors 1 CPU COBOL and FORTRAN Punchcards and flat files $10,000 per CPU hour 10,000 CPUs Functional programming MapReduce "farms" Pennies per CPU hour Copyright Kelly-McCreary & Associates, LLC 9
10. Two Approaches to Computation Copyright 2010 Dan McCreary & Associates 1930s and 40s Alonzo Church John Von Neumann Manage state with a program counter. Make computations act like math functions. Which is simpler? Which is cheaper? Which will scale to 10,000 CPUs? 10
11. Standard vs. MapReduce Prices Copyright Kelly-McCreary & Associates, LLC 11 John's Way Alonzo's Way http://aws.amazon.com/elasticmapreduce/#pricing
12. MapReduce CPUs Cost Less! Copyright Kelly-McCreary & Associates, LLC 12 82% Cost Reduction! Cuts cost from 32 to 6 cents per CPU hour! Perhaps Alanzo was right! Why? (hint: how "shareable" is this process) http://aws.amazon.com/elasticmapreduce/#pricing
13. Perspectives Kelly-McCreary & Associates, LLC 13 Object Stores OLAP MDX Native XML NoSQL for Web 2.0 and BigData Graph Stores Perspective depends on your context
14. Architectural Tradeoffs Kelly-McCreary & Associates, LLC 14 "I want a fast car with good mileage." "I want a scaleable database with low cost that runs well on the 1,000 CPUs in our data center."
15. Recent History The term NoSQL became re-popularized around 2009 Used for conferences of advocates of non-relational databases Became a contagious idea "meme" First of many "NoSQL meetups" in San Francisco organized by Jon Oskarsson Conversion from "No SQL" to "Not Only SQL" in recent year 15 Kelly-McCreary & Associates, LLC
17. NoSQL and Web 2.0 Startups Many web 2.0 startups did not use Oracle or MySQL They built their own data stores influenced by Amazon’s Dynamo and Google’s BigTable in order to store and process huge amounts of data In the social community or cloud computing applications, most of these data stores became OpenSource software 17 Kelly-McCreary & Associates, LLC
18. Google MapReduce 2004 paper that had huge impact of functional programming in the entire community Copied by many organizations, including Yahoo Copyright Kelly-McCreary & Associates, LLC 18
19. Google Bigtable Paper 2006 paper that gave focus to scaleable databases designed to reliably scale to petabytes of data and thousands of machines Copyright Kelly-McCreary & Associates, LLC 19
20. Amazon's Dynamo Paper Werner Vogels CTO - Amazon.com October 2, 2007 Used to power Amazon's S3 service One of the most influential papers in the NoSQL movement Copyright Kelly-McCreary & Associates, LLC 20 Giuseppe DeCandia, DenizHastorun, MadanJampani, GunavardhanKakulapati, AvinashLakshman, Alex Pilchin, Swami Sivasubramanian, Peter Vosshall and Werner Vogels, “Dynamo: Amazon's Highly Available Key-Value Store”, in the Proceedings of the 21st ACM Symposium on Operating Systems Principles, Stevenson, WA, October 2007.
21. NoSQL "Meetups" “NoSQLerscame to share how they had overthrown the tyranny of slow, expensive relational databases in favor of more efficient and cheaper ways of managing data.” 21 Kelly-McCreary & Associates, LLC Computerworld magazine, July 1st, 2009
22. Key Motivators Licensing RDBMS on multiple CPUs The Thee "V"s Velocity – lots of data arriving fast Volume – web-scale BigData Variability – many exceptions Desire to escape rigid schema design Avoidance of complex Object-Relational Mapping (the "Vietnam" of computer science) 22 Kelly-McCreary & Associates, LLC
23. Copyright 2008 Dan McCreary & Associates The constraints of yesterday… Challenge: Ask ourselves the question… Do our current method of solving problems with tabular data… Reflect the storage of the 1950s… Or our actual business requirements? What structures best solve the actual business problem? 23 Many Processes Today Are Driven By…
24. Copyright 2008 Dan McCreary & Associates No-Shredding! My Data Relational databases take a single hierarchical document and shred it into many pieces so it will fit in tabular structures Document stores prevent this shredding 24
25. Copyright 2008 Dan McCreary & Associates Is Shredding Really Necessary? Every time you take hierarchical data and put it into a traditional database you have to put repeating groups in separate tables and use SQL “joins” to reassemble the data 25
26. Object Relational Mapping T2 T1 T3 T4 Relational Database Object Middle Tier Web Browser T1 – HTML into Objects T2 –Objects into SQL Tables T3 – Tables into Objects T4 – Objects into HTML 26 Kelly-McCreary & Associates, LLC
27. "The Vietnam of Applications" Object-relational mapping has become one of the most complex components of building applications today A "Quagmire" where many projects get lost Many "heroic efforts" have been made to solve the problem: Hibernate Ruby on Rails But sometimes the way to avoid complexity is to keep your architecture very simple Copyright Kelly-McCreary & Associates, LLC 27
28. Document Stores Need No Translation Copyright 2010 Dan McCreary & Associates Document Document Application Layer Database Documents in the database Documents in the application No object middle tier No "shredding" No reassembly Simple! 28
29. Zero Translation (XML) Copyright 2010 Dan McCreary & Associates REST-Interfaces XForms XML database Web Browser XML lives in the web browser (XForms) REST interfaces XML in the database (Native XML, XQuery) XRX Web Application Architecture No translation! 29
30. "Schema Free" Systems that automatically determine how to index data as the data is loaded into the database No a prioriknowledge of data structure No need for up-front logical data modeling …but some modeling is still critical Adding new data elements or changing data elements is not disruptive Searching millions of records still has sub-second response time 30 Copyright 2010 Dan McCreary & Associates
32. Eric Evans “The whole point of seeking alternatives [to RDBMS systems] is that you need to solve a problem that relational databases are a bad fit for.” Eric Evans Rackspace 32 Kelly-McCreary & Associates, LLC
33. Evolution of Ideas in OpenSource Copyright Kelly-McCreary & Associates, LLC 33 New Products New Database Ideas Proprietary Software Product A OpenSource Schema-free Product B Product B MapReduce Auto-sharding Cloud Computing How quickly can new ideas be recombined into new database products? OpenSource software has proved to be the most efficient way to quickly recombine new ideas into new products
34. 34 Copyright 2010 Dan McCreary & Associates Storage Architectural Patterns Tables Trees Stars Triples
35. Finding the Right Match Schema-Free Standards Compliant Mature Query Language Use CMU's Architectural Tradeoff and Modeling (ATAM) Process 35 Copyright 2010 Dan McCreary & Associates
36. Brewer's CAP Theorem Consistency You can not have all three so pick two! Availability Partition Tolerance 36 Kelly-McCreary & Associates, LLC
37. Avoidance of Unneeded Complexity Relational databases provide a variety of features to ALWAYS support strict data consistency Rich feature set and the ACID properties implemented by RDBMSs might be more than necessary for particular applications and use cases 37 Kelly-McCreary & Associates, LLC
38. High Throughput Some NoSQL databases provide a significantly higher data throughput than traditional RDBMS Hypertable which pursues Google’s Bigtable approach allows the local search engine Zvent to store one billion data cells per day Google is able to process 20 petabytesa day stored in BigTable via it’s MapReduce approach 38 Kelly-McCreary & Associates, LLC
39. Complexity and Cost of Settingup Database Clusters NoSQL databases are designedin a way that “PC clusters can be easily and cheaply expanded without the complexity and cost of ’sharding,’ which involves cutting up databases into multiple tables to run on large clusters or grids”. Nati Shalom, CTO and founder of GigaSpaces 39 Kelly-McCreary & Associates, LLC
40. Compromising Reliability for Better Performance Shalom argues that there are “different scenarios where applications would be willing to compromise reliability for better performance.” Performance over reliability Example: HTTP session data example “needs to be shared between various web servers but since the data is transient in nature (it goes away when the user logs off) there is no need to store it in persistent storage.” 40 Kelly-McCreary & Associates, LLC
41. "Once Size Fits…" "One Size Does Not Fit All" James Hamilton Nov. 3rd, 2009 Kelly-McCreary & Associates, LLC 41 http://perspectives.mvdirona.com/CommentView,guid,afe46691-a293-4f9a-8900-5688a597726a.aspx
42. Different Thinking Sequential Processing Parallel Processing The output of any step can be used in the next step State must be carefully managed Each loop of XQuery FLOWR statements are independent thread (no side-effects) 42 Kelly-McCreary & Associates, LLC
43. Cloud Computing High scalability Especially in the horizontal direction (multi CPUs) Low administration overhead Simple web page administration 43 Kelly-McCreary & Associates, LLC
44. Databases work well in the cloud Data warehousing specific databases for batch data processing and map/reduce operations Simple, scalable and fast key/value-stores Databases containing a richer feature set than key/value-stores fitting the gap with traditional RDBMS while offering good performance and scalability properties (such as document databases). 44 Kelly-McCreary & Associates, LLC
45. Auto-Sharding When one database gets almost full it tells a "coordinator" system and the data automatically gets migrated to other systems Copyright Kelly-McCreary & Associates, LLC 45 After 45% full Before 90% full 45% full
46. Scale Up vs. Scale Out Scale Up Scale Out Make Many CPUs work together Learn how to divide your problems into independent threads Make a single CPU as fast as possible Increase clock speed Add RAM Make disk I/O go faster Copyright Kelly-McCreary & Associates, LLC 46
47. Functional Programming What does it mean to your IT staff? What experience do they have in functional programming? Can they "unlearn" the habits of the procedural world? Copyright Kelly-McCreary & Associates, LLC 47
48. The NO-SQL Universe Copyright 2010 Dan McCreary & Associates Document Stores Key-Value Stores XML Graph Stores Object Stores Column Stores 48
49. Key Value Stores A table with two columns and a simple interface Add a key-value For this key, give me the value Delete a key Blazingly fast and easy to scale Copyright Kelly-McCreary & Associates, LLC 49 Key Value
50. Types of Key-Value Stores Eventually‐consistent Key‐Value store Hierarchical Key-Value Stores Key-Value Stores In RAM Key Value Stores on Disk Ordered Key-Value Stores Copyright Kelly-McCreary & Associates, LLC 50
51. Cassendra Apache open source project Originally developed by Facebook Designed for highly distributed high-reliable systems No single point of failure Column-family data model Copyright Kelly-McCreary & Associates, LLC 51 http://www.cs.cornell.edu/projects/ladis2009/papers/lakshman-ladis2009.pdf
52. Voldomort A distributed key-value system Used at LinkedIn 10K-20K node operations/CPU Auto-sharding Graceful server failure handling Copyright Kelly-McCreary & Associates, LLC 52
53. MongoDB Open Source License Document/Collection centric Sharding built-in, automatic Stores data in JSON format Query language is JSON Can be 10x faster than MySQL Many languages (C++, JavaScript, Java, Perl, Python etc.) Copyright Kelly-McCreary & Associates, LLC 53
54. Hadoop/Hbase Open source implementation of MapReduce algorithm written in Java Initially created by Yahoo 300 person-years development Column-oriented data store Java interface Hbase designed specifically to work with Hadoop Copyright Kelly-McCreary & Associates, LLC 54
55. CouchDB Apache Document Store Written in ERLANG RESTful JSON API Distributed, featuring robust, incremental replication with bi-directional conflict detection and management Copyright Kelly-McCreary & Associates, LLC 55
56. Memcached Free & open source in-memory caching system Designed to speeding up dynamic web applications by alleviating database load RAM resident key-value store for small chunks of arbitrary data (strings, objects) from results of database calls, API calls, or page rendering Simple interface Designed for quick deployment, ease of development APIs in many languages Copyright Kelly-McCreary & Associates, LLC 56
57. MarkLogic Native XML database designed to used by Petabyte data stores ACID compliant Heavy use by federal agencies, document publishers and "high-variability" data Arguably the most successful NoSQL company Copyright Kelly-McCreary & Associates, LLC 57
58. eXist OpenSource native XML database Strong support for XQuery and XQuery extensions Heavily used by the Text Encoding Initiative (TEI) community and XRX/XForms communities Ideal for metadata management Integrated Lucene search and structured search Copyright Kelly-McCreary & Associates, LLC 58
59. Riak Community and Commercial licenses A "Dynamo-inspired" database Written in ERLANG Query JSON or ERLANG Copyright Kelly-McCreary & Associates, LLC 59
60. Hypertable Open Source Closely modeled after Google's Bigtable project High performance distributed data storage system Designed to support applications requiring maximum performance, scalability, and reliability Hypertable Query Language (HQL) that is syntactically similar to SQL Copyright Kelly-McCreary & Associates, LLC 60
61. Selecting a NoSQL Pilot Project The "Goldilocks Pilot Project Strategy" Not to big, not to small, just the right size Duration Sponsorship Importance Skills Mentorship 61 Copyright 2010 Dan McCreary & Associates
62. The Future of the NoSQL Movement Will data sets continue to grow at exponential rates? Will new system options become more diverse? Will new markets have different demands? Will some ideas be "absorbed" into existing RDBMS vendors products? Will the NoSQL community continue to be the place where new database ideas and products are incubated? Will the job of doing high-quality architectural tradeoffs analysis become easier? Copyright Kelly-McCreary & Associates, LLC 62 Growth Diversity
63. Using the Wrong Architecture Start Finish Credit: Isaac Homelund – MN Office of the Revisor
64. Using the Right Architecture Finish Start Find ways to remove barriers to empowering the non programmers on your team.