SlideShare uma empresa Scribd logo
1 de 15
Introducing Snowflake
Data warehousing for everyone
2
Current realities
Complex Data Infrastructure
Complex systems, data pipelines,
data silos
EDW Datamarts
Hadoop
/ noSQL
Data Diversity Challenges
External data, multi-structured data,
machine-generated data
Barriers to Analysis
Analysis limited by incomplete data,
delays in access, performance
limitations
3
Our vision:
Reinvent the data warehouse
Data warehousing for everyone
Data warehouse
performance &
enterprise capabilities
Cloud elasticity &
agility
Big data flexibility &
scalability
4
Our product:
The Snowflake Elastic Data Warehouse
All-new SQL data
warehouse
No legacy code or
constraints
Delivered as a service
No infrastructure, knobs or
tuning to manage
Designed for the cloud
Running in Amazon Web
Services
5
A team of data experts
Expert team
• Experts in databases and data
processing from leading companies
• >100 years collective experience
building databases
• >120 patents
Leading investors
Bob Muglia, CEO
Former President of Microsoft’s Server and
Tools Business
Benoit Dageville, Founder & CTO
Lead architect of Oracle parallel execution and
a key manageability architect
Marcin Zukowski, Founder & VP of
Engineering
Inventor of vectorized query execution in
databases
Thierry Cruanes, Founder Architect
Leading expert in query optimization and
parallel execution at Oracle
6
Our value proposition
Bring together diverse
data and workloads in
one system
Simplify and accelerate
path from data to
analytics
Remove the cost and
complexity of
conventional solutions
7
A new architecture:
Multi-cluster, shared data
• Standard interfaces
• Cloud services layer
coordinates across service
• Independent compute
clusters access data
• Data centralized in enterprise-
class cloud storage
8
Scale using multi-dimensional elasticity
• Elastic scaling for storage
Low-cost cloud storage, fully
replicated and resilient
• Elastic scaling for compute
Virtual warehouses scale up &
down on the fly to support
workload needs
• Elastic scaling for concurrency
Scale concurrency using
independent virtual warehouses
Data
Science
Reporting
Marketing
Loading /
ETL
Test
Development
9
Bringing together structured & semi-
structured data
> SELECT … FROM …
Semi-structured data
(e.g. JSON, Avro, XML)
Structured data
(e.g. CSV, TSV, …)
Direct ingestion
Load in raw form (e.g.
JSON, Avro, XML)
Optimized storage
Optimized data type,
no fixed schema or
transformation required
Optimized SQL querying
Full benefit of database
optimizations (pruning, filtering, …)
10
Data warehouse as a service
Hardware infrastructure
Software infrastructure
Data modeling
Data analysis
Customer
Index
management
Data
partitioning
Metadata
updates
Dataprotection
Availability&
DR
Security
implementation
Query
optimization
11
No infrastructure, knobs, or tuning
Infrastructure
management
Virtual hardware and
software managed by
Snowflake
Metadata
management
Automatic statistics
collection, scaling, and
redundancy
**..
**..
Manual query
optimization
Dynamic optimization,
parallelization, and
concurrency management
Data storage
management
Adaptive data distribution,
automatic compression,
automatic optimization
12
Customers
“Snowflake is faster, more flexible,
and more scalable than the
alternatives on the market. The fact
that we don’t need to do any
configuration or tuning is great
because we can focus on analyzing
data instead of on managing and
tuning a data warehouse.”
Craig Lancaster, CTO
13
Customer results
Gaming company
Replace noSQL data store with Snowflake
for storing & transforming event data
Snowflake: 1.5 minutes
noSQL data store:
8 hours
Snowflake: 26 minutes
Data warehouse appliance:
7 hours
Market research company
Replace on-premises data warehouse with
Snowflake for analytics workload
Telco
Improved performance while adding new
workloads at a fraction of the cost Snowflake: added 2 new workloads for $50K
Data warehouse appliance:
$5M + to expand
14
Customer example
Before
• Fragile data pipeline
• Delays in getting updated data
• High cost and complexity
• Limited data granularity
After
• >50x faster data updates
• Reduced costs by >50%
• Nearly eliminated pipeline failures
• Able to retain full data granularity
Introducing the Snowflake Computing Cloud Data Warehouse

Mais conteúdo relacionado

Mais procurados

Mais procurados (20)

Snowflake Datawarehouse Architecturing
Snowflake Datawarehouse ArchitecturingSnowflake Datawarehouse Architecturing
Snowflake Datawarehouse Architecturing
 
Snowflake: Your Data. No Limits (Session sponsored by Snowflake) - AWS Summit...
Snowflake: Your Data. No Limits (Session sponsored by Snowflake) - AWS Summit...Snowflake: Your Data. No Limits (Session sponsored by Snowflake) - AWS Summit...
Snowflake: Your Data. No Limits (Session sponsored by Snowflake) - AWS Summit...
 
A 30 day plan to start ending your data struggle with Snowflake
A 30 day plan to start ending your data struggle with SnowflakeA 30 day plan to start ending your data struggle with Snowflake
A 30 day plan to start ending your data struggle with Snowflake
 
Actionable Insights with AI - Snowflake for Data Science
Actionable Insights with AI - Snowflake for Data ScienceActionable Insights with AI - Snowflake for Data Science
Actionable Insights with AI - Snowflake for Data Science
 
Demystifying Data Warehouse as a Service
Demystifying Data Warehouse as a ServiceDemystifying Data Warehouse as a Service
Demystifying Data Warehouse as a Service
 
Data Lake Overview
Data Lake OverviewData Lake Overview
Data Lake Overview
 
How to Take Advantage of an Enterprise Data Warehouse in the Cloud
How to Take Advantage of an Enterprise Data Warehouse in the CloudHow to Take Advantage of an Enterprise Data Warehouse in the Cloud
How to Take Advantage of an Enterprise Data Warehouse in the Cloud
 
Let’s get to know Snowflake
Let’s get to know SnowflakeLet’s get to know Snowflake
Let’s get to know Snowflake
 
Get Savvy with Snowflake
Get Savvy with SnowflakeGet Savvy with Snowflake
Get Savvy with Snowflake
 
Building a modern data warehouse
Building a modern data warehouseBuilding a modern data warehouse
Building a modern data warehouse
 
Snowflake Data Science and AI/ML at Scale
Snowflake Data Science and AI/ML at ScaleSnowflake Data Science and AI/ML at Scale
Snowflake Data Science and AI/ML at Scale
 
KSnow: Getting started with Snowflake
KSnow: Getting started with SnowflakeKSnow: Getting started with Snowflake
KSnow: Getting started with Snowflake
 
Accelerate and modernize your data pipelines
Accelerate and modernize your data pipelinesAccelerate and modernize your data pipelines
Accelerate and modernize your data pipelines
 
Snowflake Data Loading.pptx
Snowflake Data Loading.pptxSnowflake Data Loading.pptx
Snowflake Data Loading.pptx
 
Azure Synapse Analytics
Azure Synapse AnalyticsAzure Synapse Analytics
Azure Synapse Analytics
 
DW Migration Webinar-March 2022.pptx
DW Migration Webinar-March 2022.pptxDW Migration Webinar-March 2022.pptx
DW Migration Webinar-March 2022.pptx
 
Snowflake Company Presentation
Snowflake Company PresentationSnowflake Company Presentation
Snowflake Company Presentation
 
Snowflake Best Practices for Elastic Data Warehousing
Snowflake Best Practices for Elastic Data WarehousingSnowflake Best Practices for Elastic Data Warehousing
Snowflake Best Practices for Elastic Data Warehousing
 
Master the Multi-Clustered Data Warehouse - Snowflake
Master the Multi-Clustered Data Warehouse - SnowflakeMaster the Multi-Clustered Data Warehouse - Snowflake
Master the Multi-Clustered Data Warehouse - Snowflake
 
Changing the game with cloud dw
Changing the game with cloud dwChanging the game with cloud dw
Changing the game with cloud dw
 

Destaque

Benchmarking data warehouse systems in the cloud: new requirements & new metrics
Benchmarking data warehouse systems in the cloud: new requirements & new metricsBenchmarking data warehouse systems in the cloud: new requirements & new metrics
Benchmarking data warehouse systems in the cloud: new requirements & new metrics
Rim Moussa
 
The Snowflake Effect: open learning without barriers
The Snowflake Effect: open learning without barriersThe Snowflake Effect: open learning without barriers
The Snowflake Effect: open learning without barriers
Erik Duval
 
AWS Summit 2011: Big Data Analytics in the AWS cloud
AWS Summit 2011: Big Data Analytics in the AWS cloudAWS Summit 2011: Big Data Analytics in the AWS cloud
AWS Summit 2011: Big Data Analytics in the AWS cloud
Amazon Web Services
 
SendGrid Improves Email Delivery with Hybrid Data Warehousing
SendGrid Improves Email Delivery with Hybrid Data WarehousingSendGrid Improves Email Delivery with Hybrid Data Warehousing
SendGrid Improves Email Delivery with Hybrid Data Warehousing
Amazon Web Services
 

Destaque (20)

Data Warehousing 2016
Data Warehousing 2016Data Warehousing 2016
Data Warehousing 2016
 
Self-serve analytics journey at Celtra: Snowflake, Spark, and Databricks
Self-serve analytics journey at Celtra: Snowflake, Spark, and DatabricksSelf-serve analytics journey at Celtra: Snowflake, Spark, and Databricks
Self-serve analytics journey at Celtra: Snowflake, Spark, and Databricks
 
Analyzing Semi-Structured Data At Volume In The Cloud
Analyzing Semi-Structured Data At Volume In The CloudAnalyzing Semi-Structured Data At Volume In The Cloud
Analyzing Semi-Structured Data At Volume In The Cloud
 
Cloud Computing and your Data Warehouse
Cloud Computing and your Data WarehouseCloud Computing and your Data Warehouse
Cloud Computing and your Data Warehouse
 
Demystifying Data Warehouse as a Service (DWaaS)
Demystifying Data Warehouse as a Service (DWaaS)Demystifying Data Warehouse as a Service (DWaaS)
Demystifying Data Warehouse as a Service (DWaaS)
 
Play’n’Learn: A Continuous KM Improvement Approach using FSM methods
Play’n’Learn: A Continuous KM Improvement Approach using FSM methodsPlay’n’Learn: A Continuous KM Improvement Approach using FSM methods
Play’n’Learn: A Continuous KM Improvement Approach using FSM methods
 
Benchmarking data warehouse systems in the cloud: new requirements & new metrics
Benchmarking data warehouse systems in the cloud: new requirements & new metricsBenchmarking data warehouse systems in the cloud: new requirements & new metrics
Benchmarking data warehouse systems in the cloud: new requirements & new metrics
 
The Snowflake Effect: open learning without barriers
The Snowflake Effect: open learning without barriersThe Snowflake Effect: open learning without barriers
The Snowflake Effect: open learning without barriers
 
AWS Summit 2011: Big Data Analytics in the AWS cloud
AWS Summit 2011: Big Data Analytics in the AWS cloudAWS Summit 2011: Big Data Analytics in the AWS cloud
AWS Summit 2011: Big Data Analytics in the AWS cloud
 
Data Warehousing Infrastructure on Cloud
Data Warehousing Infrastructure on CloudData Warehousing Infrastructure on Cloud
Data Warehousing Infrastructure on Cloud
 
Difference between data warehouse and data mining
Difference between data warehouse and data miningDifference between data warehouse and data mining
Difference between data warehouse and data mining
 
Real-Time Analytics and Visualization of Streaming Big Data with JReport & Sc...
Real-Time Analytics and Visualization of Streaming Big Data with JReport & Sc...Real-Time Analytics and Visualization of Streaming Big Data with JReport & Sc...
Real-Time Analytics and Visualization of Streaming Big Data with JReport & Sc...
 
eCloud newspapers
eCloud newspaperseCloud newspapers
eCloud newspapers
 
SendGrid Improves Email Delivery with Hybrid Data Warehousing
SendGrid Improves Email Delivery with Hybrid Data WarehousingSendGrid Improves Email Delivery with Hybrid Data Warehousing
SendGrid Improves Email Delivery with Hybrid Data Warehousing
 
Deep Dive on Amazon Redshift
Deep Dive on Amazon RedshiftDeep Dive on Amazon Redshift
Deep Dive on Amazon Redshift
 
Greenplum Architecture
Greenplum ArchitectureGreenplum Architecture
Greenplum Architecture
 
AWS Summit 2013 | India - Petabyte Scale Data Warehousing at Low Cost, Abhish...
AWS Summit 2013 | India - Petabyte Scale Data Warehousing at Low Cost, Abhish...AWS Summit 2013 | India - Petabyte Scale Data Warehousing at Low Cost, Abhish...
AWS Summit 2013 | India - Petabyte Scale Data Warehousing at Low Cost, Abhish...
 
Amazon Redshift Masterclass
Amazon Redshift MasterclassAmazon Redshift Masterclass
Amazon Redshift Masterclass
 
Life of data from generation to visualization using big data
Life of data from generation to visualization using big dataLife of data from generation to visualization using big data
Life of data from generation to visualization using big data
 
Introduction Of Artificial neural network
Introduction Of Artificial neural networkIntroduction Of Artificial neural network
Introduction Of Artificial neural network
 

Semelhante a Introducing the Snowflake Computing Cloud Data Warehouse

Modern Analytics Academy - Data Modeling (1).pptx
Modern Analytics Academy - Data Modeling (1).pptxModern Analytics Academy - Data Modeling (1).pptx
Modern Analytics Academy - Data Modeling (1).pptx
ssuser290967
 
AnalysisServices
AnalysisServicesAnalysisServices
AnalysisServices
webuploader
 

Semelhante a Introducing the Snowflake Computing Cloud Data Warehouse (20)

ADV Slides: The Evolution of the Data Platform and What It Means to Enterpris...
ADV Slides: The Evolution of the Data Platform and What It Means to Enterpris...ADV Slides: The Evolution of the Data Platform and What It Means to Enterpris...
ADV Slides: The Evolution of the Data Platform and What It Means to Enterpris...
 
Data Lakehouse, Data Mesh, and Data Fabric (r2)
Data Lakehouse, Data Mesh, and Data Fabric (r2)Data Lakehouse, Data Mesh, and Data Fabric (r2)
Data Lakehouse, Data Mesh, and Data Fabric (r2)
 
ADV Slides: Platforming Your Data for Success – Databases, Hadoop, Managed Ha...
ADV Slides: Platforming Your Data for Success – Databases, Hadoop, Managed Ha...ADV Slides: Platforming Your Data for Success – Databases, Hadoop, Managed Ha...
ADV Slides: Platforming Your Data for Success – Databases, Hadoop, Managed Ha...
 
What's new in SQL Server 2016
What's new in SQL Server 2016What's new in SQL Server 2016
What's new in SQL Server 2016
 
Datawarehousing & DSS
Datawarehousing & DSSDatawarehousing & DSS
Datawarehousing & DSS
 
How to boost your datamanagement with Dremio ?
How to boost your datamanagement with Dremio ?How to boost your datamanagement with Dremio ?
How to boost your datamanagement with Dremio ?
 
Modern Analytics Academy - Data Modeling (1).pptx
Modern Analytics Academy - Data Modeling (1).pptxModern Analytics Academy - Data Modeling (1).pptx
Modern Analytics Academy - Data Modeling (1).pptx
 
Expert summit SQL Server 2016
Expert summit   SQL Server 2016Expert summit   SQL Server 2016
Expert summit SQL Server 2016
 
Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...
Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...
Webinar - Accelerating Hadoop Success with Rapid Data Integration for the Mod...
 
What_to_expect_from_oracle_database_12c
What_to_expect_from_oracle_database_12cWhat_to_expect_from_oracle_database_12c
What_to_expect_from_oracle_database_12c
 
Prague data management meetup 2018-03-27
Prague data management meetup 2018-03-27Prague data management meetup 2018-03-27
Prague data management meetup 2018-03-27
 
Manage your Datasets
Manage your DatasetsManage your Datasets
Manage your Datasets
 
Smarter Management for Your Data Growth
Smarter Management for Your Data GrowthSmarter Management for Your Data Growth
Smarter Management for Your Data Growth
 
Analytics and Lakehouse Integration Options for Oracle Applications
Analytics and Lakehouse Integration Options for Oracle ApplicationsAnalytics and Lakehouse Integration Options for Oracle Applications
Analytics and Lakehouse Integration Options for Oracle Applications
 
IBM Pure Data System for Analytics (Netezza)
IBM Pure Data System for Analytics (Netezza)IBM Pure Data System for Analytics (Netezza)
IBM Pure Data System for Analytics (Netezza)
 
Best-Practices-for-Using-Tableau-With-Snowflake.pdf
Best-Practices-for-Using-Tableau-With-Snowflake.pdfBest-Practices-for-Using-Tableau-With-Snowflake.pdf
Best-Practices-for-Using-Tableau-With-Snowflake.pdf
 
AnalysisServices
AnalysisServicesAnalysisServices
AnalysisServices
 
Building an Effective Data Warehouse Architecture
Building an Effective Data Warehouse ArchitectureBuilding an Effective Data Warehouse Architecture
Building an Effective Data Warehouse Architecture
 
ADV Slides: Comparing the Enterprise Analytic Solutions
ADV Slides: Comparing the Enterprise Analytic SolutionsADV Slides: Comparing the Enterprise Analytic Solutions
ADV Slides: Comparing the Enterprise Analytic Solutions
 
Designing modern dw and data lake
Designing modern dw and data lakeDesigning modern dw and data lake
Designing modern dw and data lake
 

Último

Abortion Pills In Pretoria ](+27832195400*)[ 🏥 Women's Abortion Clinic In Pre...
Abortion Pills In Pretoria ](+27832195400*)[ 🏥 Women's Abortion Clinic In Pre...Abortion Pills In Pretoria ](+27832195400*)[ 🏥 Women's Abortion Clinic In Pre...
Abortion Pills In Pretoria ](+27832195400*)[ 🏥 Women's Abortion Clinic In Pre...
Medical / Health Care (+971588192166) Mifepristone and Misoprostol tablets 200mg
 
%+27788225528 love spells in Toronto Psychic Readings, Attraction spells,Brin...
%+27788225528 love spells in Toronto Psychic Readings, Attraction spells,Brin...%+27788225528 love spells in Toronto Psychic Readings, Attraction spells,Brin...
%+27788225528 love spells in Toronto Psychic Readings, Attraction spells,Brin...
masabamasaba
 
%+27788225528 love spells in Knoxville Psychic Readings, Attraction spells,Br...
%+27788225528 love spells in Knoxville Psychic Readings, Attraction spells,Br...%+27788225528 love spells in Knoxville Psychic Readings, Attraction spells,Br...
%+27788225528 love spells in Knoxville Psychic Readings, Attraction spells,Br...
masabamasaba
 
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
Health
 
Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...
Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...
Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...
Medical / Health Care (+971588192166) Mifepristone and Misoprostol tablets 200mg
 

Último (20)

%in kaalfontein+277-882-255-28 abortion pills for sale in kaalfontein
%in kaalfontein+277-882-255-28 abortion pills for sale in kaalfontein%in kaalfontein+277-882-255-28 abortion pills for sale in kaalfontein
%in kaalfontein+277-882-255-28 abortion pills for sale in kaalfontein
 
WSO2CON2024 - It's time to go Platformless
WSO2CON2024 - It's time to go PlatformlessWSO2CON2024 - It's time to go Platformless
WSO2CON2024 - It's time to go Platformless
 
Direct Style Effect Systems - The Print[A] Example - A Comprehension Aid
Direct Style Effect Systems -The Print[A] Example- A Comprehension AidDirect Style Effect Systems -The Print[A] Example- A Comprehension Aid
Direct Style Effect Systems - The Print[A] Example - A Comprehension Aid
 
VTU technical seminar 8Th Sem on Scikit-learn
VTU technical seminar 8Th Sem on Scikit-learnVTU technical seminar 8Th Sem on Scikit-learn
VTU technical seminar 8Th Sem on Scikit-learn
 
WSO2Con204 - Hard Rock Presentation - Keynote
WSO2Con204 - Hard Rock Presentation - KeynoteWSO2Con204 - Hard Rock Presentation - Keynote
WSO2Con204 - Hard Rock Presentation - Keynote
 
Abortion Pills In Pretoria ](+27832195400*)[ 🏥 Women's Abortion Clinic In Pre...
Abortion Pills In Pretoria ](+27832195400*)[ 🏥 Women's Abortion Clinic In Pre...Abortion Pills In Pretoria ](+27832195400*)[ 🏥 Women's Abortion Clinic In Pre...
Abortion Pills In Pretoria ](+27832195400*)[ 🏥 Women's Abortion Clinic In Pre...
 
%+27788225528 love spells in Toronto Psychic Readings, Attraction spells,Brin...
%+27788225528 love spells in Toronto Psychic Readings, Attraction spells,Brin...%+27788225528 love spells in Toronto Psychic Readings, Attraction spells,Brin...
%+27788225528 love spells in Toronto Psychic Readings, Attraction spells,Brin...
 
WSO2CON 2024 - Cloud Native Middleware: Domain-Driven Design, Cell-Based Arch...
WSO2CON 2024 - Cloud Native Middleware: Domain-Driven Design, Cell-Based Arch...WSO2CON 2024 - Cloud Native Middleware: Domain-Driven Design, Cell-Based Arch...
WSO2CON 2024 - Cloud Native Middleware: Domain-Driven Design, Cell-Based Arch...
 
%+27788225528 love spells in Knoxville Psychic Readings, Attraction spells,Br...
%+27788225528 love spells in Knoxville Psychic Readings, Attraction spells,Br...%+27788225528 love spells in Knoxville Psychic Readings, Attraction spells,Br...
%+27788225528 love spells in Knoxville Psychic Readings, Attraction spells,Br...
 
WSO2CON 2024 - API Management Usage at La Poste and Its Impact on Business an...
WSO2CON 2024 - API Management Usage at La Poste and Its Impact on Business an...WSO2CON 2024 - API Management Usage at La Poste and Its Impact on Business an...
WSO2CON 2024 - API Management Usage at La Poste and Its Impact on Business an...
 
WSO2Con2024 - From Code To Cloud: Fast Track Your Cloud Native Journey with C...
WSO2Con2024 - From Code To Cloud: Fast Track Your Cloud Native Journey with C...WSO2Con2024 - From Code To Cloud: Fast Track Your Cloud Native Journey with C...
WSO2Con2024 - From Code To Cloud: Fast Track Your Cloud Native Journey with C...
 
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
 
Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...
Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...
Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...
 
Crypto Cloud Review - How To Earn Up To $500 Per DAY Of Bitcoin 100% On AutoP...
Crypto Cloud Review - How To Earn Up To $500 Per DAY Of Bitcoin 100% On AutoP...Crypto Cloud Review - How To Earn Up To $500 Per DAY Of Bitcoin 100% On AutoP...
Crypto Cloud Review - How To Earn Up To $500 Per DAY Of Bitcoin 100% On AutoP...
 
WSO2Con2024 - Enabling Transactional System's Exponential Growth With Simplicity
WSO2Con2024 - Enabling Transactional System's Exponential Growth With SimplicityWSO2Con2024 - Enabling Transactional System's Exponential Growth With Simplicity
WSO2Con2024 - Enabling Transactional System's Exponential Growth With Simplicity
 
OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...
OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...
OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...
 
What Goes Wrong with Language Definitions and How to Improve the Situation
What Goes Wrong with Language Definitions and How to Improve the SituationWhat Goes Wrong with Language Definitions and How to Improve the Situation
What Goes Wrong with Language Definitions and How to Improve the Situation
 
Devoxx UK 2024 - Going serverless with Quarkus, GraalVM native images and AWS...
Devoxx UK 2024 - Going serverless with Quarkus, GraalVM native images and AWS...Devoxx UK 2024 - Going serverless with Quarkus, GraalVM native images and AWS...
Devoxx UK 2024 - Going serverless with Quarkus, GraalVM native images and AWS...
 
WSO2CON 2024 - Building the API First Enterprise – Running an API Program, fr...
WSO2CON 2024 - Building the API First Enterprise – Running an API Program, fr...WSO2CON 2024 - Building the API First Enterprise – Running an API Program, fr...
WSO2CON 2024 - Building the API First Enterprise – Running an API Program, fr...
 
%in Soweto+277-882-255-28 abortion pills for sale in soweto
%in Soweto+277-882-255-28 abortion pills for sale in soweto%in Soweto+277-882-255-28 abortion pills for sale in soweto
%in Soweto+277-882-255-28 abortion pills for sale in soweto
 

Introducing the Snowflake Computing Cloud Data Warehouse

  • 2. 2 Current realities Complex Data Infrastructure Complex systems, data pipelines, data silos EDW Datamarts Hadoop / noSQL Data Diversity Challenges External data, multi-structured data, machine-generated data Barriers to Analysis Analysis limited by incomplete data, delays in access, performance limitations
  • 3. 3 Our vision: Reinvent the data warehouse Data warehousing for everyone Data warehouse performance & enterprise capabilities Cloud elasticity & agility Big data flexibility & scalability
  • 4. 4 Our product: The Snowflake Elastic Data Warehouse All-new SQL data warehouse No legacy code or constraints Delivered as a service No infrastructure, knobs or tuning to manage Designed for the cloud Running in Amazon Web Services
  • 5. 5 A team of data experts Expert team • Experts in databases and data processing from leading companies • >100 years collective experience building databases • >120 patents Leading investors Bob Muglia, CEO Former President of Microsoft’s Server and Tools Business Benoit Dageville, Founder & CTO Lead architect of Oracle parallel execution and a key manageability architect Marcin Zukowski, Founder & VP of Engineering Inventor of vectorized query execution in databases Thierry Cruanes, Founder Architect Leading expert in query optimization and parallel execution at Oracle
  • 6. 6 Our value proposition Bring together diverse data and workloads in one system Simplify and accelerate path from data to analytics Remove the cost and complexity of conventional solutions
  • 7. 7 A new architecture: Multi-cluster, shared data • Standard interfaces • Cloud services layer coordinates across service • Independent compute clusters access data • Data centralized in enterprise- class cloud storage
  • 8. 8 Scale using multi-dimensional elasticity • Elastic scaling for storage Low-cost cloud storage, fully replicated and resilient • Elastic scaling for compute Virtual warehouses scale up & down on the fly to support workload needs • Elastic scaling for concurrency Scale concurrency using independent virtual warehouses Data Science Reporting Marketing Loading / ETL Test Development
  • 9. 9 Bringing together structured & semi- structured data > SELECT … FROM … Semi-structured data (e.g. JSON, Avro, XML) Structured data (e.g. CSV, TSV, …) Direct ingestion Load in raw form (e.g. JSON, Avro, XML) Optimized storage Optimized data type, no fixed schema or transformation required Optimized SQL querying Full benefit of database optimizations (pruning, filtering, …)
  • 10. 10 Data warehouse as a service Hardware infrastructure Software infrastructure Data modeling Data analysis Customer Index management Data partitioning Metadata updates Dataprotection Availability& DR Security implementation Query optimization
  • 11. 11 No infrastructure, knobs, or tuning Infrastructure management Virtual hardware and software managed by Snowflake Metadata management Automatic statistics collection, scaling, and redundancy **.. **.. Manual query optimization Dynamic optimization, parallelization, and concurrency management Data storage management Adaptive data distribution, automatic compression, automatic optimization
  • 12. 12 Customers “Snowflake is faster, more flexible, and more scalable than the alternatives on the market. The fact that we don’t need to do any configuration or tuning is great because we can focus on analyzing data instead of on managing and tuning a data warehouse.” Craig Lancaster, CTO
  • 13. 13 Customer results Gaming company Replace noSQL data store with Snowflake for storing & transforming event data Snowflake: 1.5 minutes noSQL data store: 8 hours Snowflake: 26 minutes Data warehouse appliance: 7 hours Market research company Replace on-premises data warehouse with Snowflake for analytics workload Telco Improved performance while adding new workloads at a fraction of the cost Snowflake: added 2 new workloads for $50K Data warehouse appliance: $5M + to expand
  • 14. 14 Customer example Before • Fragile data pipeline • Delays in getting updated data • High cost and complexity • Limited data granularity After • >50x faster data updates • Reduced costs by >50% • Nearly eliminated pipeline failures • Able to retain full data granularity