iot and big data - iot asia 2014
DESCRIPTION
Presented at IoT Asia 2014 WorkshopTRANSCRIPT
© 2014 MapR Technologies 1© 2014 MapR Technologies
The Internet of Things and Big Data: IntroJohn Berns, Solutions Architect, APAC - MapR TechnologiesApril 22nd, 2014
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What This Is; What This Is Not• It’s not specific to IoT
– It’s not about any specific type of data or protocol– It’s not specific to any particular industry
• It’s about processing big data– IoT data can be big data– IoT might be the biggest data of the coming decade– But it’s just big data– Same strategies & technologies apply
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When Does Data Become “Big?”• When the size of the data, itself, becomes a problem• When the “old way” of processing data just doesn’t work
effectively• It’s “big” when we have to rethink:
– How we store that much data– How we move that much data– How we extract, load & transform that much data– How we explore and analyze that much data– How we process and get meaningful insights from that much data
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C’mon! What does that mean in size?• Not gigabytes• Most likely not a few terabytes• Possibly not 10’s of terabytes• Probably 100’s of terabytes• Definitely petabytes
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So How Do We Handle Big Data?• Distribute & parallelize!
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MPP Analytic Databases or Hadoop
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Big Data AnalyticsBridging classic & big data worlds
“Capture only what’s needed”
SQL performance and structure
Hadoop scale and flexibility
IT delivers a platform for storing, refining, and analyzing all data
sourcesBusiness explores data for questions worth answering
Big Data MethodMulti-structured & iterative analysis
IT structures the data to answer those questions
Business determines what questions to ask
Classic MethodStructured & Repeatable Analysis
“Capture in case it’s needed”
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Philosophical DifferencesTraditional Methods• More power • Summarize data• Transform and store• Pre-defined schema• Move data -> compute• Less data / more complex
algorithms
Big Data• More machines• Keep all data • Transform on demand• Flexible / no schema• Move compute -> data• Mode data / simple
algorithms
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answer = f(all data)• Save all raw data• Data immutability• Transform as needed• Result is based on the raw data
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Q & A@mapr maprtech
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Iot and Big Data: Hadoop as a Data PlatformJohn Berns, Solutions Architect, APAC - MapR TechnologiesApril 22nd, 2014
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Hadoop: The Disruptive Technology at the Core of Big Data
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Forces of AdoptionHadoop TAM comes from disrupting enterprise data warehouse and storage spending
Data IT Budgets
• Gartner, "Forecast Analysis: Enterprise IT Spending by Vertical Industry Market, Worldwide, 2010-2016, 3Q12 Update.“• Wall Street Journal, “Financial Services Companies Firms See Results from Big Data Push”, Jan. 27, 2014
$9,000
$40,000
<$1,000
2013 ENTERPRISE STORAGE
IT BUDGETS GROWING AT 2.5%
2014 2015 2016 2017 DATABASE WAREHOUSE
DATA GROWING AT 40% $ PER TERABYTE
HADOOP
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Hadoop 101 (External Presentation)
http://www.slideshare.net/jfxberns/hadoop-101-v2
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Hadoop Hardware
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Typical Compute Node
• Two CPUs, each with 4-8 cores per CPU• 32-128 GB Memory• 6-24 hard disks• 2-4 10GB Network cards
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Hadoop Ecosystem
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Ecosystem of Projects Built of Hadoop
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SQL On Hadoop
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SQL on Hadoop• Generally data has no inherent “schema”• Schema is defined by user / interpreted from structure• Schema is applied during processing• One file can have many schemas applied• Works for many kinds of data—but not all
– Temperature sensor data? Sure– Video feeds? Not really
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Key Use Cases
• Exploratory analysis on large scale raw data
• Unknown value• No defined schema• Variety of data types
• Large-scale SQL queries on long history
• Well defined schema• Known value, but high cost in
existing systems
2Big Data Analysis Big Data Exploration
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What is Driving the Need for SQL-on-Hadoop?Organizations are looking for• Reuse existing tools and skills to unlock Hadoop data to broader
audience
• Analysis on new types of data
• More complete data analysis
• More up-to-date and real-time data analysis (not just “after the fact”)
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Drill 1.0 Hive 0.13 with Tez Impala 1.x Presto 0.56 Shark 0.8 Vertica
Latency Low Medium Low Low Medium Low
Files Yes (all Hive file formats)
Yes (all Hive file formats)
Yes (Parquet, Sequence, …)
Yes (RC, Sequence, Text)
Yes (all Hive file formats)
Yes (all Hive file formats)
HBase/M7 Yes Yes Various issues No Yes No
Schema Hive or schema-less
Hive Hive Hive Hive Proprietary or Hive
SQL support ANSI SQL HiveQL HiveQL (subset) ANSI SQL HiveQL ANSI SQL + advanced analytics
Client support ODBC/JDBC ODBC/JDBC ODBC/JDBC ODBC/JDBC ODBC/JDBC ODBC/JDBC, ADO.NET, …
Large joins Yes Yes No No No Yes
Nested data Yes Limited No Limited Limited Limited
Hive UDFs Yes Yes Limited No Yes No
Transactions No No No No No Yes
Optimizer Limited Limited Limited Limited Limited Yes
Concurrency Limited Limited Limited Limited Limited Yes
SQL on Hadoop: Many OptionsFlexibility to choose when to use which based on use case
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ENTERPRISE DATA HUB
MARKETINGANALYTICS
RISKANALYTICS
OPERATIONS INTELLIGENCE
• Multi-structured data staging & archive
• ETL / DW optimization• Mainframe optimization
• Data exploration
• Recommendation engines & targeting
• Ad optimization• Pricing analysis• Lead scoring
• Network security monitoring
• Security information & event management
• Fraudulent behavioral analysis
• Supply chain & logistics• System log analysis• Manufacturing quality assurance
• Preventative maintenance
• Sensor analysis
Proven Hadoop Production Success
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Other Tools & Frameworks of Note
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Pig
• Procedural Language• Loops, if-then statements
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• Map Reduce Framwork• Lingual: SQL-like operations• Pattern: Machine Learning Applications• Scalding: Cascading for Scala• Cascalog: Cascading for Clojure
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• Python, Scala and Java• Spark powers a stack of high-level tools including
– Shark for SQL, – MLlib for machine learning, – GraphX, and – Spark Streaming.
• You can combine these frameworks seamlessly in the same application.
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• Machine Learning / Predictive Analytics– Collaborative Filtering– Linear / Logistic Regression– Naïve Bayes– Random Forests– K-Mean Clustering– Canopy Clustering– Principal Component Analysis
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• Database on Hadoop• Highly scalable• Columnar – Flexible schema• Data source for Map Reduce and Spark jobs
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Iot and Big Data: Architectures & Use CasesJohn Berns, Solutions Architect, APAC - MapR TechnologiesApril 22nd, 2014
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NoSQL
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NoSQL Databases• No-SQL or “Not only” SQL• Give up some of the functionality of traditional relational
databases for speed and scalability• Types
– Key-Value – Columnar– Document– Graph
• NoSQL databases favor flexible schemas
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HBase
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Queues
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Queues• Just like a queue at an amusement park • First-in-first out• Queues messages or events
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Message Queue
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Stream Processing
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Stream Processing• Handles data at high velocity• If Hadoop is the ocean, streams are the firehose• Processing in near real-time
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Storm
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Batch Processing
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Combination Architectures
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Lambda Architecture
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Complex Architectures Using Many Big Data Technologies
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Wanna Play?
• http://www.mapr.com/products/mapr-sandbox-hadoop
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