SlideShare ist ein Scribd-Unternehmen logo
1 von 27
BIG DATA ANALYTICS
REFERENCE ARCHITECTURES AND
CASE STUDIES
BY SERHIY HAZIYEV AND OLHA HRYTSAY
Agenda
2
Big Data
Challenges
Big Data
Reference
Architectures
Case
Studies
10 tips for
Designing
Big Data
Solutions
Big Data Challenges
3
UNSTRUCTURED
STRUCTURED
HIGH
MEDIUM
LOW
Archives Docs Business
Apps
Media Social
Networks
Public
Web
Data
Storages
Machine
Log Data
Sensor
Data
Data Storages
RDBMS, NoSQL, Hadoop, file systems
etc.
Machine Log Data
Application logs, event logs, server
data, CDRs, clickstream data etc.
Sensor Data
Smart electric meters, medical
devices, car sensors, road cameras
etc.
Archives
Scanned documents, statements,
medical records, e-mails etc..
Docs
XLS, PDF, CSV, HTML, JSON etc.
Business Apps
CRM, ERP systems, HR, project
management etc.
Social Networks
Twitter, Facebook, Google+,
LinkedIn etc.
Public Web
Wikipedia, news, weather, public
finance etc
Media
Images, video, audio etc.
Velocity Variety VolumeComplexity
Big Data Analytics
4
Traditional Analytics (BI) Big Data Analytics
Focus on
Data Sets
Supports
• Descriptive analytics
• Diagnosis analytics
• Limited data sets
• Cleansed data
• Simple models
• Large scale data sets
• More types of data
• Raw data
• Complex data models
• Predictive analytics
• Data Science
Causation: what happened,
and why?
Correlation: new insight
More accurate answers
vs
Big Data Analytics Use Cases
5
Data
Discovery
Business
Reporting
Real Time
Intelligence
Data Quality
Self Service
Business Users
Intelligent AgentsConsumers
Low Latency
Reliability
Volume
Performance
Data Scientists/
Analysts
Big Data Analytics Reference Architectures
6
Architecture Drivers: Reference Architectures:
▪ Volume
▪ Sources
▪ Throughput
▪ Latency
▪ Extensibility
▪ Data Quality
▪ Reliability
▪ Security
▪ Self-Service
▪ Cost
▪ Extended Relational
▪ Non-Relational
▪ Hybrid
Relational Reference Architecture
7
Web Services
Mobile
Devices
Native
Desktop
Web
Browsers
Advanced
Analytics
OLAP Cubes
Query &
Reporting
Operational
Data Stores
Data Marts
Data
Warehouses
Replication
API/ODBC
Messaging
ETL
Unstructured
Semi-
Structured
Data Sources Integration Data Storages Analytics Presentation
Structured
8
Extended Relational
Reference Architecture
Web Services
Mobile
Devices
Native
Desktop
Web
Browsers
Advanced
Analytics
OLAP Cubes
Query &
Reporting
Operational
Data Stores
Data Marts
Data
Warehouses
Replication
API/ODBC
Messaging
ETL
Unstructured
Semi-
Structured
Data Sources Integration Data Storages Analytics Presentation
Structured
Key components affected with Big Data challenges
Non-Relational Reference Architecture
9
Web Services
Mobile
Devices
Native
Desktop
Web
Browsers
Advanced
Analytics
Map Reduce
Query &
Reporting
Search Engines
Distributed File
Systems
NoSQL
Databases
API
Messaging
ETL
Unstructured
Semi-
Structured
Data Sources Integration Data Storages Analytics Presentation
Structured
Key components introduced with non-relational movement
Extended Relational vs. Non-Relational Architecture
10
Architecture Drivers
Extended
Relational
Non-Relational
Large data volume
Self-service (ad-hoc reporting)
Unstructured data processing
High data model extensibility
High data quality and consistency
Extensive security
Reliability and fault-tolerance
Low latency (near-real time)
Low cost
Skills availability
Extended Relational vs. Non-Relational Architecture
11
Architecture Drivers
Extended
Relational
Non-Relational
Large data volume
Self-service (ad-hoc reporting)
Unstructured data processing
High data model extensibility
High data quality and consistency
Extensive security
Reliability and fault-tolerance
Low latency (near-real time)
Low cost
Skills availability
Relational vs. Non-Relational Architecture
12
Relational Non-Relational
• Rational
• Predictable
• Traditional
• Agile
• Flexible
• Modern
Data
Discovery
Business
Reporting
Real Time
Intelligence
Big Data Analytics Use Cases
13
Business Users
Intelligent AgentsConsumers
Performance
Volume
Data Scientists
Data Discovery: Non-Relational Architecture
14
Web Services
Mobile
Devices
Native
Desktop
Web
Browsers
Advanced
Analytics
Map Reduce
Query &
Reporting
Search Engines
Distributed File
Systems
NoSQL
Databases
API
Messaging
ETL
Unstructured
Semi-
Structured
Data Sources Integration Data Storages Analytics Presentation
Structured
Data
Discovery
Business
Reporting
Real Time
Intelligence
Big Data Analytics Use Cases
15
Intelligent AgentsConsumers
Data Scientists
Data Quality
Self Service
Business Users
Business Reporting: Hybrid Architecture
16
Web Services
Mobile
Devices
Native
Desktop
Web
Browsers
Map Reduce
SQL Query &
Reporting
Distributed File
Systems
API
Messaging
ETL
Unstructured
Semi-
Structured
Data Sources Integration Data Storages Analytics Presentation
Structured
Relational
DWH/DM
Advanced
Analytics
Search Engines
Extended Relational components Non-relational components
Data
Discovery
Business
Reporting
Real Time
Intelligence
Big Data Analytics Use Cases
17
Data Scientists Business Users
Intelligent AgentsConsumers
Low Latency
Reliability
Lambda Architecture
18
Source:
19
Business Goals:
 Provide development environment
for building custom mobile applications
 Charge customers for the platform they
use with pay-as-you-go model
Business Area:
Cloud based platform for building, deploying,
hosting and managing mobile applications
Case Study #1: Usage & Billing Analysis
Architectural Decisions
20
▪ Volume (> 10 TB)
▪ Sources (Semi-structured - JSON)
▪ Throughput (> 10K/sec)
▪ Latency (2 min)
▪ Extensibility (Custom metrics)
▪ Data Quality (Consistency)
▪ Reliability (24/7)
▪ Security (Multitenancy)
▪ Self-Service (Ad-Hoc reports)
▪ Cost (The less the better )
▪ Constraints (Public Cloud)
Architecture Drivers:
Trade-off:
//
Extended
Relational
Non-Relational
Extensibility - +
Data Quality + -
Self-Service + -
 Extended Relational Architecture
 Extensibility via Pre-allocated
Fields pattern
Solution Architecture
21
Technologies:
• Amazon Redshift
• Amazon SQS
• Amazon S3
• Elastic Beanstalk
• Jaspersoft BI Professional
• Python
22
Business Goals:
 Build in-house Analytics Platform for ROI measurement
and performance analysis of every product and feature
delivered by the e-commerce platform;
 Provide the ability to understand how end-users are
interacting with service content, products, and features on
sites;
 Do clickstream analysis;
 Perform A/B Testing
Business Area:
Retail. A platform for e-commerce and
collecting feedbacks from customers
Case Study #2: Clickstream for retail website
//
Extended
Relational
Non-
Relational
Volume/Scalability +/- +
Throughput + +
Self-Service + +/-
Extensibility - +
Architectural Decisions
23
▪ Volume (45 TB)
▪ Sources (Semi-structured - JSON)
▪ Throughput (> 20K/sec)
▪ Latency (1 hour)
▪ Extensibility (Custom tags)
▪ Data Quality (Not critical)
▪ Reliability (24/7)
▪ Security (Multitenancy)
▪ Self-Service (Canned reports, Data
science)
▪ Cost (The less the better )
▪ Constraints (Public Cloud)
Architecture Drivers:
Trade-off:
 Non-Relational Architecture
 Reporting via Materialized View
pattern
Solution Architecture
24
Technologies:
• Amazon S3
• Flume
• Hadoop/HDFS, MapReduce
• HBase
• Oozie
• Hive
Node 1
Node 2
Node N
10 Tips for Designing Big Data Solutions
25
 Understand data users and sources
 Discover architecture drivers
 Select proper reference architecture
 Do trade-off analysis, address cons
 Map reference architecture to technology stack
 Prototype, re-evaluate architecture
 Estimate implementation efforts
 Set up devops practices from the very beginning
 Advance in solution development through “small wins”
 Be ready for changes, big data technologies are evolving
rapidly
26
▪ Leading global Product and
Application Development partner
founded in 1993
▪ 3,300+ employees across North
America, Ukraine and Western
Europe
▪ Thousands of successful outsourcing
projects!
SaaS/Cloud Solutions . Mobility Solutions . UX/UI
BI/Analytics/Big Data . Software Architecture . Security
Clients include:
Thank You!
27
SoftServe US Office
One Congress Plaza,
111 Congress Avenue, Suite 2700 Austin, TX
78701
Tel: 512.516.8880
Contacts
Serhiy Haziyev: shaziyev@softserveinc.com
Olha Hrytsay: ohrytsay@softserveinc.com

Weitere ähnliche Inhalte

Kürzlich hochgeladen

TECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service providerTECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service providermohitmore19
 
Diamond Application Development Crafting Solutions with Precision
Diamond Application Development Crafting Solutions with PrecisionDiamond Application Development Crafting Solutions with Precision
Diamond Application Development Crafting Solutions with PrecisionSolGuruz
 
HR Software Buyers Guide in 2024 - HRSoftware.com
HR Software Buyers Guide in 2024 - HRSoftware.comHR Software Buyers Guide in 2024 - HRSoftware.com
HR Software Buyers Guide in 2024 - HRSoftware.comFatema Valibhai
 
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdf
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdfLearn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdf
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdfkalichargn70th171
 
The Ultimate Test Automation Guide_ Best Practices and Tips.pdf
The Ultimate Test Automation Guide_ Best Practices and Tips.pdfThe Ultimate Test Automation Guide_ Best Practices and Tips.pdf
The Ultimate Test Automation Guide_ Best Practices and Tips.pdfkalichargn70th171
 
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...panagenda
 
SyndBuddy AI 2k Review 2024: Revolutionizing Content Syndication with AI
SyndBuddy AI 2k Review 2024: Revolutionizing Content Syndication with AISyndBuddy AI 2k Review 2024: Revolutionizing Content Syndication with AI
SyndBuddy AI 2k Review 2024: Revolutionizing Content Syndication with AIABDERRAOUF MEHENNI
 
Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...
Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...
Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...harshavardhanraghave
 
A Secure and Reliable Document Management System is Essential.docx
A Secure and Reliable Document Management System is Essential.docxA Secure and Reliable Document Management System is Essential.docx
A Secure and Reliable Document Management System is Essential.docxComplianceQuest1
 
why an Opensea Clone Script might be your perfect match.pdf
why an Opensea Clone Script might be your perfect match.pdfwhy an Opensea Clone Script might be your perfect match.pdf
why an Opensea Clone Script might be your perfect match.pdfjoe51371421
 
The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...
The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...
The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...ICS
 
Unveiling the Tech Salsa of LAMs with Janus in Real-Time Applications
Unveiling the Tech Salsa of LAMs with Janus in Real-Time ApplicationsUnveiling the Tech Salsa of LAMs with Janus in Real-Time Applications
Unveiling the Tech Salsa of LAMs with Janus in Real-Time ApplicationsAlberto González Trastoy
 
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...Steffen Staab
 
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️Delhi Call girls
 
Unlocking the Future of AI Agents with Large Language Models
Unlocking the Future of AI Agents with Large Language ModelsUnlocking the Future of AI Agents with Large Language Models
Unlocking the Future of AI Agents with Large Language Modelsaagamshah0812
 
(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...
(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...
(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...gurkirankumar98700
 

Kürzlich hochgeladen (20)

TECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service providerTECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service provider
 
Diamond Application Development Crafting Solutions with Precision
Diamond Application Development Crafting Solutions with PrecisionDiamond Application Development Crafting Solutions with Precision
Diamond Application Development Crafting Solutions with Precision
 
HR Software Buyers Guide in 2024 - HRSoftware.com
HR Software Buyers Guide in 2024 - HRSoftware.comHR Software Buyers Guide in 2024 - HRSoftware.com
HR Software Buyers Guide in 2024 - HRSoftware.com
 
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdf
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdfLearn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdf
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdf
 
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICECHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
 
The Ultimate Test Automation Guide_ Best Practices and Tips.pdf
The Ultimate Test Automation Guide_ Best Practices and Tips.pdfThe Ultimate Test Automation Guide_ Best Practices and Tips.pdf
The Ultimate Test Automation Guide_ Best Practices and Tips.pdf
 
Exploring iOS App Development: Simplifying the Process
Exploring iOS App Development: Simplifying the ProcessExploring iOS App Development: Simplifying the Process
Exploring iOS App Development: Simplifying the Process
 
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...
 
SyndBuddy AI 2k Review 2024: Revolutionizing Content Syndication with AI
SyndBuddy AI 2k Review 2024: Revolutionizing Content Syndication with AISyndBuddy AI 2k Review 2024: Revolutionizing Content Syndication with AI
SyndBuddy AI 2k Review 2024: Revolutionizing Content Syndication with AI
 
Microsoft AI Transformation Partner Playbook.pdf
Microsoft AI Transformation Partner Playbook.pdfMicrosoft AI Transformation Partner Playbook.pdf
Microsoft AI Transformation Partner Playbook.pdf
 
Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...
Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...
Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...
 
Vip Call Girls Noida ➡️ Delhi ➡️ 9999965857 No Advance 24HRS Live
Vip Call Girls Noida ➡️ Delhi ➡️ 9999965857 No Advance 24HRS LiveVip Call Girls Noida ➡️ Delhi ➡️ 9999965857 No Advance 24HRS Live
Vip Call Girls Noida ➡️ Delhi ➡️ 9999965857 No Advance 24HRS Live
 
A Secure and Reliable Document Management System is Essential.docx
A Secure and Reliable Document Management System is Essential.docxA Secure and Reliable Document Management System is Essential.docx
A Secure and Reliable Document Management System is Essential.docx
 
why an Opensea Clone Script might be your perfect match.pdf
why an Opensea Clone Script might be your perfect match.pdfwhy an Opensea Clone Script might be your perfect match.pdf
why an Opensea Clone Script might be your perfect match.pdf
 
The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...
The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...
The Real-World Challenges of Medical Device Cybersecurity- Mitigating Vulnera...
 
Unveiling the Tech Salsa of LAMs with Janus in Real-Time Applications
Unveiling the Tech Salsa of LAMs with Janus in Real-Time ApplicationsUnveiling the Tech Salsa of LAMs with Janus in Real-Time Applications
Unveiling the Tech Salsa of LAMs with Janus in Real-Time Applications
 
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
 
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
 
Unlocking the Future of AI Agents with Large Language Models
Unlocking the Future of AI Agents with Large Language ModelsUnlocking the Future of AI Agents with Large Language Models
Unlocking the Future of AI Agents with Large Language Models
 
(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...
(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...
(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...
 

Empfohlen

How Race, Age and Gender Shape Attitudes Towards Mental Health
How Race, Age and Gender Shape Attitudes Towards Mental HealthHow Race, Age and Gender Shape Attitudes Towards Mental Health
How Race, Age and Gender Shape Attitudes Towards Mental HealthThinkNow
 
AI Trends in Creative Operations 2024 by Artwork Flow.pdf
AI Trends in Creative Operations 2024 by Artwork Flow.pdfAI Trends in Creative Operations 2024 by Artwork Flow.pdf
AI Trends in Creative Operations 2024 by Artwork Flow.pdfmarketingartwork
 
PEPSICO Presentation to CAGNY Conference Feb 2024
PEPSICO Presentation to CAGNY Conference Feb 2024PEPSICO Presentation to CAGNY Conference Feb 2024
PEPSICO Presentation to CAGNY Conference Feb 2024Neil Kimberley
 
Content Methodology: A Best Practices Report (Webinar)
Content Methodology: A Best Practices Report (Webinar)Content Methodology: A Best Practices Report (Webinar)
Content Methodology: A Best Practices Report (Webinar)contently
 
How to Prepare For a Successful Job Search for 2024
How to Prepare For a Successful Job Search for 2024How to Prepare For a Successful Job Search for 2024
How to Prepare For a Successful Job Search for 2024Albert Qian
 
Social Media Marketing Trends 2024 // The Global Indie Insights
Social Media Marketing Trends 2024 // The Global Indie InsightsSocial Media Marketing Trends 2024 // The Global Indie Insights
Social Media Marketing Trends 2024 // The Global Indie InsightsKurio // The Social Media Age(ncy)
 
Trends In Paid Search: Navigating The Digital Landscape In 2024
Trends In Paid Search: Navigating The Digital Landscape In 2024Trends In Paid Search: Navigating The Digital Landscape In 2024
Trends In Paid Search: Navigating The Digital Landscape In 2024Search Engine Journal
 
5 Public speaking tips from TED - Visualized summary
5 Public speaking tips from TED - Visualized summary5 Public speaking tips from TED - Visualized summary
5 Public speaking tips from TED - Visualized summarySpeakerHub
 
ChatGPT and the Future of Work - Clark Boyd
ChatGPT and the Future of Work - Clark Boyd ChatGPT and the Future of Work - Clark Boyd
ChatGPT and the Future of Work - Clark Boyd Clark Boyd
 
Getting into the tech field. what next
Getting into the tech field. what next Getting into the tech field. what next
Getting into the tech field. what next Tessa Mero
 
Google's Just Not That Into You: Understanding Core Updates & Search Intent
Google's Just Not That Into You: Understanding Core Updates & Search IntentGoogle's Just Not That Into You: Understanding Core Updates & Search Intent
Google's Just Not That Into You: Understanding Core Updates & Search IntentLily Ray
 
Time Management & Productivity - Best Practices
Time Management & Productivity -  Best PracticesTime Management & Productivity -  Best Practices
Time Management & Productivity - Best PracticesVit Horky
 
The six step guide to practical project management
The six step guide to practical project managementThe six step guide to practical project management
The six step guide to practical project managementMindGenius
 
Beginners Guide to TikTok for Search - Rachel Pearson - We are Tilt __ Bright...
Beginners Guide to TikTok for Search - Rachel Pearson - We are Tilt __ Bright...Beginners Guide to TikTok for Search - Rachel Pearson - We are Tilt __ Bright...
Beginners Guide to TikTok for Search - Rachel Pearson - We are Tilt __ Bright...RachelPearson36
 
Unlocking the Power of ChatGPT and AI in Testing - A Real-World Look, present...
Unlocking the Power of ChatGPT and AI in Testing - A Real-World Look, present...Unlocking the Power of ChatGPT and AI in Testing - A Real-World Look, present...
Unlocking the Power of ChatGPT and AI in Testing - A Real-World Look, present...Applitools
 
12 Ways to Increase Your Influence at Work
12 Ways to Increase Your Influence at Work12 Ways to Increase Your Influence at Work
12 Ways to Increase Your Influence at WorkGetSmarter
 

Empfohlen (20)

How Race, Age and Gender Shape Attitudes Towards Mental Health
How Race, Age and Gender Shape Attitudes Towards Mental HealthHow Race, Age and Gender Shape Attitudes Towards Mental Health
How Race, Age and Gender Shape Attitudes Towards Mental Health
 
AI Trends in Creative Operations 2024 by Artwork Flow.pdf
AI Trends in Creative Operations 2024 by Artwork Flow.pdfAI Trends in Creative Operations 2024 by Artwork Flow.pdf
AI Trends in Creative Operations 2024 by Artwork Flow.pdf
 
Skeleton Culture Code
Skeleton Culture CodeSkeleton Culture Code
Skeleton Culture Code
 
PEPSICO Presentation to CAGNY Conference Feb 2024
PEPSICO Presentation to CAGNY Conference Feb 2024PEPSICO Presentation to CAGNY Conference Feb 2024
PEPSICO Presentation to CAGNY Conference Feb 2024
 
Content Methodology: A Best Practices Report (Webinar)
Content Methodology: A Best Practices Report (Webinar)Content Methodology: A Best Practices Report (Webinar)
Content Methodology: A Best Practices Report (Webinar)
 
How to Prepare For a Successful Job Search for 2024
How to Prepare For a Successful Job Search for 2024How to Prepare For a Successful Job Search for 2024
How to Prepare For a Successful Job Search for 2024
 
Social Media Marketing Trends 2024 // The Global Indie Insights
Social Media Marketing Trends 2024 // The Global Indie InsightsSocial Media Marketing Trends 2024 // The Global Indie Insights
Social Media Marketing Trends 2024 // The Global Indie Insights
 
Trends In Paid Search: Navigating The Digital Landscape In 2024
Trends In Paid Search: Navigating The Digital Landscape In 2024Trends In Paid Search: Navigating The Digital Landscape In 2024
Trends In Paid Search: Navigating The Digital Landscape In 2024
 
5 Public speaking tips from TED - Visualized summary
5 Public speaking tips from TED - Visualized summary5 Public speaking tips from TED - Visualized summary
5 Public speaking tips from TED - Visualized summary
 
ChatGPT and the Future of Work - Clark Boyd
ChatGPT and the Future of Work - Clark Boyd ChatGPT and the Future of Work - Clark Boyd
ChatGPT and the Future of Work - Clark Boyd
 
Getting into the tech field. what next
Getting into the tech field. what next Getting into the tech field. what next
Getting into the tech field. what next
 
Google's Just Not That Into You: Understanding Core Updates & Search Intent
Google's Just Not That Into You: Understanding Core Updates & Search IntentGoogle's Just Not That Into You: Understanding Core Updates & Search Intent
Google's Just Not That Into You: Understanding Core Updates & Search Intent
 
How to have difficult conversations
How to have difficult conversations How to have difficult conversations
How to have difficult conversations
 
Introduction to Data Science
Introduction to Data ScienceIntroduction to Data Science
Introduction to Data Science
 
Time Management & Productivity - Best Practices
Time Management & Productivity -  Best PracticesTime Management & Productivity -  Best Practices
Time Management & Productivity - Best Practices
 
The six step guide to practical project management
The six step guide to practical project managementThe six step guide to practical project management
The six step guide to practical project management
 
Beginners Guide to TikTok for Search - Rachel Pearson - We are Tilt __ Bright...
Beginners Guide to TikTok for Search - Rachel Pearson - We are Tilt __ Bright...Beginners Guide to TikTok for Search - Rachel Pearson - We are Tilt __ Bright...
Beginners Guide to TikTok for Search - Rachel Pearson - We are Tilt __ Bright...
 
Unlocking the Power of ChatGPT and AI in Testing - A Real-World Look, present...
Unlocking the Power of ChatGPT and AI in Testing - A Real-World Look, present...Unlocking the Power of ChatGPT and AI in Testing - A Real-World Look, present...
Unlocking the Power of ChatGPT and AI in Testing - A Real-World Look, present...
 
12 Ways to Increase Your Influence at Work
12 Ways to Increase Your Influence at Work12 Ways to Increase Your Influence at Work
12 Ways to Increase Your Influence at Work
 
ChatGPT webinar slides
ChatGPT webinar slidesChatGPT webinar slides
ChatGPT webinar slides
 

SEI Carnegie-Mellon SATURN 2014 Conference: Big Data Analytics Reference Architectures - by Serhiy Haziyev and Olha Hrytsay

  • 1. BIG DATA ANALYTICS REFERENCE ARCHITECTURES AND CASE STUDIES BY SERHIY HAZIYEV AND OLHA HRYTSAY
  • 3. Big Data Challenges 3 UNSTRUCTURED STRUCTURED HIGH MEDIUM LOW Archives Docs Business Apps Media Social Networks Public Web Data Storages Machine Log Data Sensor Data Data Storages RDBMS, NoSQL, Hadoop, file systems etc. Machine Log Data Application logs, event logs, server data, CDRs, clickstream data etc. Sensor Data Smart electric meters, medical devices, car sensors, road cameras etc. Archives Scanned documents, statements, medical records, e-mails etc.. Docs XLS, PDF, CSV, HTML, JSON etc. Business Apps CRM, ERP systems, HR, project management etc. Social Networks Twitter, Facebook, Google+, LinkedIn etc. Public Web Wikipedia, news, weather, public finance etc Media Images, video, audio etc. Velocity Variety VolumeComplexity
  • 4. Big Data Analytics 4 Traditional Analytics (BI) Big Data Analytics Focus on Data Sets Supports • Descriptive analytics • Diagnosis analytics • Limited data sets • Cleansed data • Simple models • Large scale data sets • More types of data • Raw data • Complex data models • Predictive analytics • Data Science Causation: what happened, and why? Correlation: new insight More accurate answers vs
  • 5. Big Data Analytics Use Cases 5 Data Discovery Business Reporting Real Time Intelligence Data Quality Self Service Business Users Intelligent AgentsConsumers Low Latency Reliability Volume Performance Data Scientists/ Analysts
  • 6. Big Data Analytics Reference Architectures 6 Architecture Drivers: Reference Architectures: ▪ Volume ▪ Sources ▪ Throughput ▪ Latency ▪ Extensibility ▪ Data Quality ▪ Reliability ▪ Security ▪ Self-Service ▪ Cost ▪ Extended Relational ▪ Non-Relational ▪ Hybrid
  • 7. Relational Reference Architecture 7 Web Services Mobile Devices Native Desktop Web Browsers Advanced Analytics OLAP Cubes Query & Reporting Operational Data Stores Data Marts Data Warehouses Replication API/ODBC Messaging ETL Unstructured Semi- Structured Data Sources Integration Data Storages Analytics Presentation Structured
  • 8. 8 Extended Relational Reference Architecture Web Services Mobile Devices Native Desktop Web Browsers Advanced Analytics OLAP Cubes Query & Reporting Operational Data Stores Data Marts Data Warehouses Replication API/ODBC Messaging ETL Unstructured Semi- Structured Data Sources Integration Data Storages Analytics Presentation Structured Key components affected with Big Data challenges
  • 9. Non-Relational Reference Architecture 9 Web Services Mobile Devices Native Desktop Web Browsers Advanced Analytics Map Reduce Query & Reporting Search Engines Distributed File Systems NoSQL Databases API Messaging ETL Unstructured Semi- Structured Data Sources Integration Data Storages Analytics Presentation Structured Key components introduced with non-relational movement
  • 10. Extended Relational vs. Non-Relational Architecture 10 Architecture Drivers Extended Relational Non-Relational Large data volume Self-service (ad-hoc reporting) Unstructured data processing High data model extensibility High data quality and consistency Extensive security Reliability and fault-tolerance Low latency (near-real time) Low cost Skills availability
  • 11. Extended Relational vs. Non-Relational Architecture 11 Architecture Drivers Extended Relational Non-Relational Large data volume Self-service (ad-hoc reporting) Unstructured data processing High data model extensibility High data quality and consistency Extensive security Reliability and fault-tolerance Low latency (near-real time) Low cost Skills availability
  • 12. Relational vs. Non-Relational Architecture 12 Relational Non-Relational • Rational • Predictable • Traditional • Agile • Flexible • Modern
  • 13. Data Discovery Business Reporting Real Time Intelligence Big Data Analytics Use Cases 13 Business Users Intelligent AgentsConsumers Performance Volume Data Scientists
  • 14. Data Discovery: Non-Relational Architecture 14 Web Services Mobile Devices Native Desktop Web Browsers Advanced Analytics Map Reduce Query & Reporting Search Engines Distributed File Systems NoSQL Databases API Messaging ETL Unstructured Semi- Structured Data Sources Integration Data Storages Analytics Presentation Structured
  • 15. Data Discovery Business Reporting Real Time Intelligence Big Data Analytics Use Cases 15 Intelligent AgentsConsumers Data Scientists Data Quality Self Service Business Users
  • 16. Business Reporting: Hybrid Architecture 16 Web Services Mobile Devices Native Desktop Web Browsers Map Reduce SQL Query & Reporting Distributed File Systems API Messaging ETL Unstructured Semi- Structured Data Sources Integration Data Storages Analytics Presentation Structured Relational DWH/DM Advanced Analytics Search Engines Extended Relational components Non-relational components
  • 17. Data Discovery Business Reporting Real Time Intelligence Big Data Analytics Use Cases 17 Data Scientists Business Users Intelligent AgentsConsumers Low Latency Reliability
  • 19. 19 Business Goals:  Provide development environment for building custom mobile applications  Charge customers for the platform they use with pay-as-you-go model Business Area: Cloud based platform for building, deploying, hosting and managing mobile applications Case Study #1: Usage & Billing Analysis
  • 20. Architectural Decisions 20 ▪ Volume (> 10 TB) ▪ Sources (Semi-structured - JSON) ▪ Throughput (> 10K/sec) ▪ Latency (2 min) ▪ Extensibility (Custom metrics) ▪ Data Quality (Consistency) ▪ Reliability (24/7) ▪ Security (Multitenancy) ▪ Self-Service (Ad-Hoc reports) ▪ Cost (The less the better ) ▪ Constraints (Public Cloud) Architecture Drivers: Trade-off: // Extended Relational Non-Relational Extensibility - + Data Quality + - Self-Service + -  Extended Relational Architecture  Extensibility via Pre-allocated Fields pattern
  • 21. Solution Architecture 21 Technologies: • Amazon Redshift • Amazon SQS • Amazon S3 • Elastic Beanstalk • Jaspersoft BI Professional • Python
  • 22. 22 Business Goals:  Build in-house Analytics Platform for ROI measurement and performance analysis of every product and feature delivered by the e-commerce platform;  Provide the ability to understand how end-users are interacting with service content, products, and features on sites;  Do clickstream analysis;  Perform A/B Testing Business Area: Retail. A platform for e-commerce and collecting feedbacks from customers Case Study #2: Clickstream for retail website
  • 23. // Extended Relational Non- Relational Volume/Scalability +/- + Throughput + + Self-Service + +/- Extensibility - + Architectural Decisions 23 ▪ Volume (45 TB) ▪ Sources (Semi-structured - JSON) ▪ Throughput (> 20K/sec) ▪ Latency (1 hour) ▪ Extensibility (Custom tags) ▪ Data Quality (Not critical) ▪ Reliability (24/7) ▪ Security (Multitenancy) ▪ Self-Service (Canned reports, Data science) ▪ Cost (The less the better ) ▪ Constraints (Public Cloud) Architecture Drivers: Trade-off:  Non-Relational Architecture  Reporting via Materialized View pattern
  • 24. Solution Architecture 24 Technologies: • Amazon S3 • Flume • Hadoop/HDFS, MapReduce • HBase • Oozie • Hive Node 1 Node 2 Node N
  • 25. 10 Tips for Designing Big Data Solutions 25  Understand data users and sources  Discover architecture drivers  Select proper reference architecture  Do trade-off analysis, address cons  Map reference architecture to technology stack  Prototype, re-evaluate architecture  Estimate implementation efforts  Set up devops practices from the very beginning  Advance in solution development through “small wins”  Be ready for changes, big data technologies are evolving rapidly
  • 26. 26 ▪ Leading global Product and Application Development partner founded in 1993 ▪ 3,300+ employees across North America, Ukraine and Western Europe ▪ Thousands of successful outsourcing projects! SaaS/Cloud Solutions . Mobility Solutions . UX/UI BI/Analytics/Big Data . Software Architecture . Security Clients include:
  • 27. Thank You! 27 SoftServe US Office One Congress Plaza, 111 Congress Avenue, Suite 2700 Austin, TX 78701 Tel: 512.516.8880 Contacts Serhiy Haziyev: shaziyev@softserveinc.com Olha Hrytsay: ohrytsay@softserveinc.com

Hinweis der Redaktion

  1. Big Data – data that is too large complex and dynamic for any conventional data tools to capture, store, manage and analyze.
  2. More details can be found here: link to our case study