21

MongoDB in the Big Data Landscape

  • Upload
    mongodb

  • View
    897

  • Download
    4

Embed Size (px)

Citation preview

Page 1: MongoDB in the Big Data Landscape
Page 2: MongoDB in the Big Data Landscape

MongoDB Inc,

520+ employees 2500+ customers

Offices in NY, London & Palo Alto and across EMEA, and APAC World Class Advisory

Page 3: MongoDB in the Big Data Landscape
Page 4: MongoDB in the Big Data Landscape

Gartner, Inc. recognized

MongoDB as a Leader in the 2015 Magic Quadrant

for Operational Database Management Systems.*

*Gartner, Inc., Magic Quadrant for Operational Database Management Systems by Donald Feinberg, Merv Adrian, Nick Heudecker, Adam M. Ronthal, and Terilyn Palanca, October 12, 2015. *Gartner does not endorse any vendor, product or service depicted in its research publications, and does not advise technology users to select only those vendors with the highest ratings or other designation. Gartner research publications consist of the opinions of Gartner's research organization and should not be construed as statements of fact. Gartner disclaims all warranties, expressed or implied, with respect to this research, including any warranties of merchantability or fitness for a particular purpose. This graphic was published by Gartner, Inc. as part of a larger research document and should be evaluated in the context of the entire document. The Gartner document is available upon request from MongoDB, Inc.

Page 5: MongoDB in the Big Data Landscape

MongoDB ranked 4 in Database Mindshare

http://db-engines.com/en/ranking

RANK% DBMS% %%%%MODEL% SCORE% GROWTH%(20%MO)%

1.# Oracle# Rela+onal#DBMS# 1,442# 55%#

2.# MySQL# Rela+onal#DBMS# 1,294# 2%#

3.# Microso?#SQL#Server# Rela+onal#DBMS# 1,131# 510%#

4.% MongoDB% Document%Store% 277% 172%%

5.# PostgreSQL# Rela+onal#DBMS# 273# 40%#

6.# DB2# Rela+onal#DBMS# 201# 11%#

7.# Microso?#Access# Rela+onal#DBMS# 146# 526%#

8.# Cassandra# Wide#Column# 107# 87%#

9.# SQLite# Rela+onal#DBMS# 105# 19%#

Page 6: MongoDB in the Big Data Landscape

Information Management Has Changed

UPFRONT SUBSCRIBE

Business

YEARS MONTHS Applications

PC MOBILE

Customers

ADS SOCIAL Engagement

SERVERS CLOUD Infrastructure

Page 7: MongoDB in the Big Data Landscape

Your Data Has Changed

•  90% of the world’s data was created in the last two years

•  80% of enterprise data is

unstructured

•  Unstructured data growing 2x faster than structured

Page 8: MongoDB in the Big Data Landscape

Big Data Driving Factors

“Of Gartner's "3Vs" of big data (volume, velocity, variety), the variety of data sources is seen by our clients as both the greatest challenge and the greatest opportunity.”

2014

* From Big Data Executive Summary of 50+ execs from F100, gov orgs

What are the primary data issues driving you to consider Big Data?*

Data Variety (68%)

Data Volume (15%)

Other Data (17%)

Diverse, streaming or new data types

Greater than 100TB

Less than 100TB

Page 9: MongoDB in the Big Data Landscape

MongoDB Point of View

Page 10: MongoDB in the Big Data Landscape

Relational

Expressive Query Language & Secondary Indexes

Strong Consistency

Enterprise Management & Integrations

Page 11: MongoDB in the Big Data Landscape

The World Has Changed

Data Risk

Time Cost

Page 12: MongoDB in the Big Data Landscape

NoSQL

Scalability & Performance

Always On, Global Deployments

Flexibility Expressive Query Language & Secondary Indexes

Strong Consistency

Enterprise Management & Integrations

Page 13: MongoDB in the Big Data Landscape

Nexus Architecture

Scalability & Performance

Always On, Global Deployments

Flexibility Expressive Query Language & Secondary Indexes

Strong Consistency

Enterprise Management & Integrations

Page 14: MongoDB in the Big Data Landscape

Proof Points

Page 15: MongoDB in the Big Data Landscape

Single Platform for Financial Data Quantitative investment manager with over $11B in assets under management invests heavily in new database

Problem% Why%MongoDB% Results%Problem Solution Results

AHL needed new technologies to be more agile and gain competitive advantages in the systematic trading space Proprietary systems in financial services tech, as well as relational databases, were too expensive and/or rigid

Built single platform for all financial data on MongoDB Flexible data model and scalability were core to ability to put all data in single platform Expressive query language, secondary indexes and strong consistency were core to ability to migrate core use cases to new platform

100x faster to retrieve data Tick Data: Quickly scaled to 250M ticks per second, a 25x improvement in tick throughput Cut disk storage 60%, and realized 40% cost savings by using commodity SSDs

Page 16: MongoDB in the Big Data Landscape

Risk Mgt. for the Connected Home Delivering on customer protection mission with MongoDB

Problem% Why%MongoDB% Results%Problem Solution Results

Need to create innovative apps that support corporate mission to protect customers, improve brand perception, and reduce churn Poor view of customers’ behavior at home, which can be used to provide more compelling pricing and better products Unable to offer a new experience around domestic connected objects

Build a scalable mobile app allowing customers to integrate domestic connected objects to detect and prevent risk Leverages flexible data model to support specific APIs with third parties: Philips Hue light bulbs, NEST smoke detection, MyFox cameras, and more in fast evolving market

Prototype built in 2 months; deployed in production in 4 months Able to prevent domestic risks and assist customers in case of incidents. Proactive alerting to customers minimizes their risk, creates customer loyalty Great user experience improves perception of AXA brand

Page 17: MongoDB in the Big Data Landscape

Reference Data Management Major app migrated to MongoDB, saving $40M over 5 years

Problem% Why%MongoDB% Results%Problem Solution Results

Globally distributed app reference data management app did not meet SLAs required in delivering data to traders, resulting in SEC fines and damages to the reputation of firm Complex infrastructure with many components (i.e., ETL, caching, proprietary storage) was expensive and difficult to maintain

Replatformed on MongoDB for a simplified infrastructure Native replication made it easy to replicate to data centers on multiple continents, bringing it closer to stakeholders and reducing the effects of geographic latency

$40M in savings over 5 years with simplified infrastructure and the use of commodity servers Application in compliance with strict SLAs

Page 18: MongoDB in the Big Data Landscape

Content Management Migrates from MySQL to MongoDB on AWS, saving £2M and dramatically cutting project lead time

Problem% Why%MongoDB% Results%Problem Solution Results

Orange Digital web properties have 4.5M users on web and 2.3M users on mobile, across www.orange.co.uk, Orange World, and the Orange Business site, and other digital assets. MySQL reached scale ceiling Metadata management too challenging with relational model – targeting handsets, users, types of data, video, feeds, text and more

Replatformed on MongoDB and migrated to AWS Flexible data model makes it substantially easier and more efficient to manage variety of metadata Sharding enables scalability and unrivaled performance

Supports 115,000+ queries per second Saved £2M+ over 3 yrs. “Lead time for new implementations is cut massively” MongoDB is default choice for all new projects Eliminated 6B+ rows of attributes – instead creates single document per user / piece of content

Page 19: MongoDB in the Big Data Landscape

Problem% Why%MongoDB% Results%Problem Solution Results

Proprietary solution with rigid data model slowed rate of new service introductions, impacting competitiveness Unable to scale as subscriber and service portfolio expanded High TCO incurred from proprietary hardware and software

Built new customer data management platform on MongoDB Flexible data model enables dynamic schema modification to support new service introductions Automatic sharding to scale database as the business grows

MongoDB platform scales to serve 12M customers, with 50% reduced cost per subscriber Streamlined and simplified systems allowing faster innovation and higher agility Migration to MongoDB completed in just 6 months

Customer Data Mgt. Telco leader unifies customer experience, driving 50% lower cost and reduced churn

Page 20: MongoDB in the Big Data Landscape

Personalization Built personalization engine in 25% the time with 50% the team

Problem% Why%MongoDB% Results%Problem Solution Results

Needed personalization server that acts as the master storage for customer data. Originally built on Oracle (over 14 months) but it performed below expectations, did not scale, and cost too much New requirements made Oracle unusable – 40% more data, must reload entire data warehouse (22M customers) daily in small window – could not be met with Oracle

Implemented on MongoDB, using flexible data model to easily bring in data from disparate customer data source systems Expressive query language made it possible to access customer records using any field Consulting and support significantly reduced upfront development and deployment costs

New version of personalization engine was built on MongoDB in 25% the time with 50% the team Led to performance boosts of more than a magnitude Storage requirements decreased by 66%, lowering infrastructure costs

Page 21: MongoDB in the Big Data Landscape