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Big Data in the Financial Services Industry: 2018 - 2030 - Opportunities, Challenges, Strategies & Forecasts

Published: Jul, 2018 | Pages: 521 | Publisher: SNS Research
Industry: ICT | Report Format: Electronic (PDF)

“Big Data” originally emerged as a term to describe datasets whose size is beyond the ability of traditional databases to capture, store, manage and analyze. However, the scope of the term has significantly expanded over the years. Big Data not only refers to the data itself but also a set of technologies that capture, store, manage and analyze large and variable collections of data, to solve complex problems.

Amid the proliferation of real-time and historical data from sources such as connected devices, web, social media, sensors, log files and transactional applications, Big Data is rapidly gaining traction from a diverse range of vertical sectors. The financial services industry is no exception to this trend, where Big Data has found a host of applications ranging from targeted marketing and credit scoring to usage-based insurance, data-driven trading, fraud detection and beyond.

SNS Telecom & IT estimates that Big Data investments in the financial services industry will account for nearly $9 Billion in 2018 alone. Led by a plethora of business opportunities for banks, insurers, credit card and payment processing specialists, asset and wealth management firms, lenders and other stakeholders, these investments are further expected to grow at a CAGR of approximately 17% over the next three years.

The “Big Data in the Financial Services Industry: 2018 - 2030 - Opportunities, Challenges, Strategies & Forecasts” report presents an in-depth assessment of Big Data in the financial services industry including key market drivers, challenges, investment potential, application areas, use cases, future roadmap, value chain, case studies, vendor profiles and strategies. The report also presents market size forecasts for Big Data hardware, software and professional services investments from 2018 through to 2030. The forecasts are segmented for 8 horizontal submarkets, 6 application areas, 11 use cases, 6 regions and 35 countries.

The report comes with an associated Excel datasheet suite covering quantitative data from all numeric forecasts presented in the report.

Topics Covered
The report covers the following topics: 
 - Big Data ecosystem
 - Market drivers and barriers
 - Enabling technologies, standardization and regulatory initiatives
 - Big Data analytics and implementation models
 - Business case, application areas and use cases in the financial services industry
 - 30 case studies of Big Data investments by banks, insurers, credit card and payment processing specialists, asset and wealth management firms, lenders, and other stakeholders in the financial services industry
 - Future roadmap and value chain
 - Profiles and strategies of over 270 leading and emerging Big Data ecosystem players
 - Strategic recommendations for Big Data vendors and financial services industry stakeholders
 - Market analysis and forecasts from 2018 till 2030

Forecast Segmentation
Market forecasts are provided for each of the following submarkets and their subcategories:

Hardware, Software & Professional Services
 - Hardware
 - Software
 - Professional Services

Horizontal Submarkets
 - Storage & Compute Infrastructure
 - Networking Infrastructure
 - Hadoop & Infrastructure Software
 - SQL
 - NoSQL
 - Analytic Platforms & Applications
 - Cloud Platforms
 - Professional Services

Application Areas
 - Personal & Business Banking
 - Investment Banking & Capital Markets
 - Insurance Services
 - Credit Cards & Payment Processing
 - Lending & Financing
 - Asset & Wealth Management

Use Cases
 - Personalized & Targeted Marketing
 - Customer Service & Experience
 - Product Innovation & Development
 - Risk Modeling, Management & Reporting
 - Fraud Detection & Prevention
 - Robotic & Intelligent Process Automation
 - Usage & Analytics-Based Insurance
 - Credit Scoring & Control
 - Data-Driven Trading & Investment
 - Third Party Data Monetization
 - Other Use Cases

Regional Markets
 - Asia Pacific
 - Eastern Europe
 - Latin & Central America
 - Middle East & Africa
 - North America
 - Western Europe

Country Markets
 - Argentina, Australia, Brazil, Canada, China, Czech Republic, Denmark, Finland, France, Germany,  India, Indonesia, Israel, Italy, Japan, Malaysia, Mexico, Netherlands, Norway, Pakistan, Philippines, Poland, Qatar, Russia, Saudi Arabia, Singapore, South Africa, South Korea, Spain, Sweden, Taiwan, Thailand, UAE, UK,  USA

Key Questions Answered 
The report provides answers to the following key questions:
 - How big is the Big Data opportunity in the financial services industry?
 - How is the market evolving by segment and region?
 - What will the market size be in 2021, and at what rate will it grow?
 - What trends, challenges and barriers are influencing its growth?
 - Who are the key Big Data software, hardware and services vendors, and what are their strategies?
 - How much are banks, insurers, credit card and payment processing specialists, asset and wealth management firms, lenders and other stakeholders investing in Big Data?
 - What opportunities exist for Big Data analytics in the financial services industry?
 - Which countries, application areas and use cases will see the highest percentage of Big Data investments in the financial services industry?

Key Findings 
The report has the following key findings: 
 - In 2018, Big Data vendors will pocket nearly $9 Billion from hardware, software and professional services revenues in the financial services industry. These investments are further expected to grow at a CAGR of approximately 17% over the next three years, eventually accounting for over $14 Billion by the end of 2021.
 - Banks and other traditional financial services institutes are warming to the idea of embracing cloud-based platforms, particularly hybrid-cloud implementations, in a bid to alleviate the technical and scalability challenges associated with on-premise Big Data environments.
 - Big Data technologies are playing a pivotal role in facilitating the creation and success of innovative FinTech (Financial Technology) startups, most notably in the online lending, alterative insurance and money transfer sectors.
 - In addition to utilizing traditional information sources, financial services institutes are increasingly becoming reliant on alternative sources of data - ranging from social media to satellite imagery - that can provide previously hidden insights for multiple application areas including data-driven trading and investments, and credit scoring.

List of Companies Mentioned

•	1010data
•	Absolutdata
•	Acadian Asset Management
•	Accenture
•	Actian Corporation
•	Adaptive Insights
•	Adobe Systems
•	Advizor Solutions
•	AeroSpike
•	AFS Technologies
•	Alation
•	Algorithmia
•	Alluxio
•	Alphabet
•	ALTEN
•	Alteryx
•	AMD (Advanced Micro Devices)
•	American Express
•	Anaconda
•	Apixio
•	AQR Capital Management
•	Arcadia Data
•	Arimo
•	ARM
•	ASF (Apache Software Foundation)
•	AtScale
•	Attivio
•	Attunity
•	Automated Insights
•	Avant
•	AVORA
•	AWS (Amazon Web Services)
•	AXA
•	Axiomatics
•	Ayasdi
•	BackOffice Associates
•	Basho Technologies
•	BCG (Boston Consulting Group)
•	Bedrock Data
•	BetterWorks
•	Big Panda
•	BigML
•	Birst
•	Bitam
•	BlackRock
•	Bloomberg
•	Blue Medora
•	BlueData Software
•	BlueTalon
•	BMC Software
•	BOARD International
•	Booz Allen Hamilton
•	Boxever
•	CACI International
•	Cambridge Semantics
•	Capgemini
•	Capital One
•	Cazena
•	CBA/CommBank (Commonwealth Bank of Australia)
•	Centrifuge Systems
•	CenturyLink
•	Chartio
•	Cigna
•	Cisco Systems
•	Civis Analytics
•	ClearStory Data
•	Cloudability
•	Cloudera
•	Cloudian
•	Clustrix
•	CognitiveScale
•	Collibra
•	Concurrent Technology
•	Confluent
•	Contexti
•	Couchbase
•	Crate.io
•	Cray
•	Credit Suisse
•	CSA (Cloud Security Alliance)
•	CSCC (Cloud Standards Customer Council)
•	Databricks
•	Dataiku
•	Datalytyx
•	Datameer
•	DataRobot
•	DataStax
•	Datawatch Corporation
•	Datos IO
•	DDN (DataDirect Networks)
•	Decisyon
•	Dell Technologies
•	Deloitte
•	Demandbase
•	Denodo Technologies
•	Deutsche Bank
•	Dianomic Systems
•	Digital Reasoning Systems
•	Dimensional Insight
•	DMG  (Data Mining Group)
•	Dolphin Enterprise Solutions Corporation
•	Domino Data Lab
•	Domo
•	Dremio
•	DriveScale
•	Druva
•	Dun and Bradstreet
•	Dundas Data Visualization
•	DXC Technology
•	Eagle Alpha
•	Elastic
•	Engineering Group (Engineering Ingegneria Informatica)
•	EnterpriseDB Corporation
•	eQ Technologic
•	Equifax
•	Ericsson
•	Erwin
•	EVŌ (Big Cloud Analytics)
•	EXASOL
•	EXL (ExlService Holdings)
•	Facebook
•	Factset
•	FICO (Fair Isaac Corporation)
•	Figure Eight
•	FogHorn Systems
•	Fractal Analytics
•	Franz
•	Fujitsu
•	Fuzzy Logix
•	Gainsight
•	GE (General Electric)
•	Glassbeam
•	GoodData Corporation
•	Google
•	Grakn Labs
•	Greenwave Systems
•	GridGain Systems
•	Guavus
•	GuidePoint
•	H2O.ai
•	Hanse Orga Group
•	HarperDB
•	HCL Technologies
•	Hedvig
•	Hitachi Vantara
•	Hortonworks
•	HPE (Hewlett Packard Enterprise)
•	HSBC Group
•	Huawei
•	HVR
•	HyperScience
•	HyTrust
•	IBM Corporation
•	iDashboards
•	IDERA
•	IEC (International Electrotechnical Commission)
•	IEEE (Institute of Electrical and Electronics Engineers)
•	Ignite Technologies
•	Imanis Data
•	Impetus Technologies
•	INCITS (InterNational Committee for Information Technology Standards)
•	Incorta
•	InetSoft Technology Corporation
•	InfluxData
•	Infogix
•	Infor
•	Informatica
•	Information Builders
•	Infosys
•	Infoworks
•	Insightsoftware.com
•	InsightSquared
•	Intel Corporation
•	Interana
•	InterSystems Corporation
•	ISO (International Organization for Standardization)
•	ITU (International Telecommunication Union)
•	Jedox
•	Jethro
•	Jinfonet Software
•	JNB (Japan Net Bank)
•	JPMorgan Chase & Co.
•	Juniper Networks
•	Kabbage
•	KALEAO
•	Keen IO
•	Keyrus
•	Kinetica
•	KNIME
•	Kognitio
•	Kyvos Insights
•	LeanXcale
•	LenddoEFL
•	Lexalytics
•	Lexmark International
•	Lightbend
•	Linux Foundation
•	Logi Analytics
•	Logical Clocks
•	Longview Solutions
•	Looker Data Sciences
•	LucidWorks
•	Luminoso Technologies
•	Maana
•	Man Group
•	Manthan Software Services
•	MapD Technologies
•	MapR Technologies
•	MariaDB Corporation
•	MarkLogic Corporation
•	Mastercard
•	Mathworks
•	Melissa
•	MemSQL
•	Metric Insights
•	Microsoft Corporation
•	MicroStrategy
•	Minitab
•	MongoDB
•	Mu Sigma
•	NEC Corporation
•	Neo4j
•	NetApp
•	Nimbix
•	Nokia
•	NTT Data Corporation
•	Numerify
•	NuoDB
•	NVIDIA Corporation
•	OASIS (Organization for the Advancement of Structured Information Standards)
•	Objectivity
•	Oblong Industries
•	ODaF (Open Data Foundation)
•	ODCA (Open Data Center Alliance)
•	OGC (Open Geospatial Consortium)
•	OpenText Corporation
•	Opera Solutions
•	Optimal Plus
•	Oracle Corporation
•	OTP Bank
•	Palantir Technologies
•	Panasonic Corporation
•	Panorama Software
•	Paxata
•	Pepperdata
•	Phocas Software
•	Pivotal Software
•	Prognoz
•	Progress Software Corporation
•	Progressive Corporation
•	Provalis Research
•	Pure Storage
•	PwC (PricewaterhouseCoopers International)
•	Pyramid Analytics
•	Qlik
•	qplum
•	Qrama/Tengu
•	Quandl
•	Quantum Corporation
•	Qubole
•	Rackspace
•	Radius Intelligence
•	RapidMiner
•	RavenPack
•	Recorded Future
•	Red Hat
•	Redis Labs
•	RedPoint Global
•	Reltio
•	RStudio
•	Rubrik
•	Ryft
•	S&P's (Standard & Poor's)
•	Sailthru
•	Salesforce.com
•	Salient Management Company
•	Samsung Fire & Marine Insurance
•	Samsung Group
•	SAP
•	SAS Institute
•	ScaleOut Software
•	Seagate Technology
•	Shinhan Card
•	Sinequa
•	SiSense
•	Sizmek
•	SnapLogic
•	Snowflake Computing
•	Software AG
•	Splice Machine
•	Splunk
•	Strategy Companion Corporation
•	Stratio
•	Streamlio
•	StreamSets
•	Striim
•	Sumo Logic
•	Supermicro (Super Micro Computer)
•	Syncsort
•	SynerScope
•	SYNTASA
•	Tableau Software
•	Talend
•	Tamr
•	TARGIT
•	TCS (Tata Consultancy Services)
•	Teradata Corporation
•	Thales
•	Thomson Reuters
•	ThoughtSpot
•	TIBCO Software
•	Tidemark
•	TM Forum
•	Toshiba Corporation
•	TPC (Transaction Processing Performance Council)
•	TransferWise
•	Transwarp
•	Trifacta
•	Two Sigma Investments
•	U.S. NIST (National Institute of Standards and Technology)
•	Unifi Software
•	UnitedHealth Group
•	Unravel Data
•	Upstart
•	VANTIQ
•	Vecima Networks
•	Visa
•	VMware
•	VoltDB
•	W3C (World Wide Web Consortium)
•	WANdisco
•	Waterline Data
•	Western Digital Corporation
•	Western Union
•	WhereScape
•	WiPro
•	Wolfram Research
•	Workday
•	Xplenty
•	Yellowfin BI
•	Yseop
•	Zendesk
•	Zoomdata
•	Zucchetti
•	Zurich Insurance Group
 Table of Contents

Chapter 1: Introduction	22
1.1	Executive Summary	22
1.2	Topics Covered	24
1.3	Forecast Segmentation	25
1.4	Key Questions Answered	28
1.5	Key Findings	29
1.6	Methodology	30
1.7	Target Audience	31
1.8	Companies & Organizations Mentioned	32
		
Chapter 2: An Overview of Big Data	35
2.1	What is Big Data?	35
2.2	Key Approaches to Big Data Processing	35
2.2.1	Hadoop	36
2.2.2	NoSQL	38
2.2.3	MPAD (Massively Parallel Analytic Databases)	38
2.2.4	In-Memory Processing	39
2.2.5	Stream Processing Technologies	39
2.2.6	Spark	40
2.2.7	Other Databases & Analytic Technologies	40
2.3	Key Characteristics of Big Data	41
2.3.1	Volume	41
2.3.2	Velocity	41
2.3.3	Variety	41
2.3.4	Value	42
2.4	Market Growth Drivers	42
2.4.1	Awareness of Benefits	42
2.4.2	Maturation of Big Data Platforms	42
2.4.3	Continued Investments by Web Giants, Governments & Enterprises	43
2.4.4	Growth of Data Volume, Velocity & Variety	43
2.4.5	Vendor Commitments & Partnerships	43
2.4.6	Technology Trends Lowering Entry Barriers	44
2.5	Market Barriers	44
2.5.1	Lack of Analytic Specialists	44
2.5.2	Uncertain Big Data Strategies	44
2.5.3	Organizational Resistance to Big Data Adoption	45
2.5.4	Technical Challenges: Scalability & Maintenance	45
2.5.5	Security & Privacy Concerns	45
		
Chapter 3: Big Data Analytics	46
3.1	What are Big Data Analytics?	46
3.2	The Importance of Analytics	46
3.3	Reactive vs. Proactive Analytics	47
3.4	Customer vs. Operational Analytics	47
3.5	Technology & Implementation Approaches	48
3.5.1	Grid Computing	48
3.5.2	In-Database Processing	48
3.5.3	In-Memory Analytics	49
3.5.4	Machine Learning & Data Mining	49
3.5.5	Predictive Analytics	50
3.5.6	NLP (Natural Language Processing)	50
3.5.7	Text Analytics	51
3.5.8	Visual Analytics	51
3.5.9	Graph Analytics	52
3.5.10	Social Media, IT & Telco Network Analytics	52
		
Chapter 4: Business Case & Applications in the Financial Services Industry	54
4.1	Overview & Investment Potential	54
4.2	Industry Specific Market Growth Drivers	55
4.3	Industry Specific Market Barriers	56
4.4	Key Application Areas	58
4.4.1	Personal & Business Banking	58
4.4.2	Investment Banking & Capital Markets	59
4.4.3	Insurance Services	59
4.4.4	Credit Cards & Payments Processing	60
4.4.5	Lending & Financing	60
4.4.6	Asset & Wealth Management	61
4.5	Use Cases	62
4.5.1	Personalized & Targeted Marketing	62
4.5.2	Customer Service & Experience	63
4.5.3	Product Innovation & Development	64
4.5.4	Risk Modeling, Management & Reporting	64
4.5.5	Fraud Detection & Prevention	65
4.5.6	Robotic & Intelligent Process Automation	66
4.5.7	Usage & Analytics-Based Insurance	67
4.5.8	Credit Scoring & Control	67
4.5.9	Data-Driven Trading & Investment	68
4.5.10	Third Party Data Monetization	68
4.5.11	Other Use Cases	69
		
Chapter 5: Financial Services Industry Case Studies	70
5.1	Banks	70
5.1.1	CBA/CommBank (Commonwealth Bank of Australia): Driving Customer Engagement with Big Data	70
5.1.2	Credit Suisse: Enhancing Regulatory Compliance with Big Data	72
5.1.3	Deutsche Bank: Quantifying the Importance of Intangible Assets with Big Data	74
5.1.4	HSBC Group: Combating Money Laundering & Financial Crime with Big Data	77
5.1.5	JPMorgan Chase & Co.: Enabling Responsible Prospecting with Big Data	79
5.1.6	OTP Bank: Reducing Loan Defaults with Big Data	81
5.2	Insurers	83
5.2.1	AXA: Simplifying Customer Interaction with Big Data	83
5.2.2	Cigna: Streamlining Health Insurance Claims with Big Data	87
5.2.3	Progressive Corporation: Rewarding Safe Drivers & Improving Traffic Safety with Big Data	89
5.2.4	Samsung Fire & Marine Insurance: Transforming Insurance Underwriting with Big Data	92
5.2.5	UnitedHealth Group: Enhancing Patient Care & Value with Big Data	94
5.2.6	Zurich Insurance Group: Improving Risk Management with Big Data	96
5.3	Credit Card & Payment Processing Specialists	98
5.3.1	American Express: Enabling Real-Time Targeting Marketing with Big Data	98
5.3.2	Capital One: Enriching Cybersecurity with Big Data	100
5.3.3	Mastercard: Predictively Combating Account Related Fraud with Big Data	103
5.3.4	TransferWise: Simplifying International Money Transfers With Big Data	105
5.3.5	Visa: Saving Billions of Dollars with Big Data	107
5.3.6	Western Union: Personalizing Customer Experience with Big Data	109
5.4	Asset & Wealth Management Firms	111
5.4.1	Acadian Asset Management: Exploiting Market Inefficiencies with Big Data	111
5.4.2	AQR Capital Management: Finding Profitable Trading Patterns with Big Data	113
5.4.3	BlackRock: Gleaning Economic Clues with Big Data	115
5.4.4	Man Group: Accelerating Trades & Investment Modeling with Big Data	118
5.4.5	qplum: Optimizing Client Portfolios with Big Data	120
5.4.6	Two Sigma Investments: Making Systematic Trades with Big Data	122
5.5	Lenders & Other Stakeholders	124
5.5.1	Avant: Streamlining Borrowing with Big Data	124
5.5.2	Equifax: Helping Make Informed Credit Decisions with Big Data	126
5.5.3	FICO (Fair Isaac Corporation): Expanding Access to Credit with Big Data	128
5.5.4	Kabbage: Empowering Small Business Lending with Big Data	131
5.5.5	LenddoEFL: Increasing Access to Financial Services in Emerging Economies with Big Data	133
5.5.6	Upstart: Facilitating Smarter Loans with Big Data	135
		
Chapter 6: Future Roadmap & Value Chain	137
6.1	Future Roadmap	137
6.1.1	Pre-2020: Investments in Advanced Analytics & AI (Artificial Intelligence)	137
6.1.2	2020 – 2025: Large-Scale Adoption of Cloud-Based Big Data Platforms	138
6.1.3	2025 – 2030: Towards the Digitization of Financial Services	139
6.2	The Big Data Value Chain	140
6.2.1	Hardware Providers	140
6.2.1.1	Storage & Compute Infrastructure Providers	140
6.2.1.2	Networking Infrastructure Providers	141
6.2.2	Software Providers	141
6.2.2.1	Hadoop & Infrastructure Software Providers	142
6.2.2.2	SQL & NoSQL Providers	142
6.2.2.3	Analytic Platform & Application Software Providers	142
6.2.2.4	Cloud Platform Providers	142
6.2.3	Professional Services Providers	143
6.2.4	End-to-End Solution Providers	143
6.2.5	Financial Services Industry	143
		
Chapter 7: Standardization & Regulatory Initiatives	144
7.1	ASF (Apache Software Foundation)	144
7.1.1	Management of Hadoop	144
7.1.2	Big Data Projects Beyond Hadoop	144
7.2	CSA (Cloud Security Alliance)	148
7.2.1	BDWG (Big Data Working Group)	148
7.3	CSCC (Cloud Standards Customer Council)	149
7.3.1	Big Data Working Group	149
7.4	DMG  (Data Mining Group)	150
7.4.1	PMML (Predictive Model Markup Language) Working Group	150
7.4.2	PFA (Portable Format for Analytics) Working Group	150
7.5	IEEE (Institute of Electrical and Electronics Engineers)	150
7.5.1	Big Data Initiative	151
7.6	INCITS (InterNational Committee for Information Technology Standards)	152
7.6.1	Big Data Technical Committee	152
7.7	ISO (International Organization for Standardization)	153
7.7.1	ISO/IEC JTC 1/SC 32: Data Management and Interchange	153
7.7.2	ISO/IEC JTC 1/SC 38: Cloud Computing and Distributed Platforms	154
7.7.3	ISO/IEC JTC 1/SC 27: IT Security Techniques	154
7.7.4	ISO/IEC JTC 1/WG 9: Big Data	154
7.7.5	Collaborations with Other ISO Work Groups	155
7.8	ITU (International Telecommunication Union)	156
7.8.1	ITU-T Y.3600: Big Data – Cloud Computing Based Requirements and Capabilities	156
7.8.2	Other Deliverables Through SG (Study Group) 13 on Future Networks	157
7.8.3	Other Relevant Work	157
7.9	Linux Foundation	158
7.9.1	ODPi (Open Ecosystem of Big Data)	158
7.10	NIST (National Institute of Standards and Technology)	158
7.10.1	NBD-PWG (NIST Big Data Public Working Group)	158
7.11	OASIS (Organization for the Advancement of Structured Information Standards)	159
7.11.1	Technical Committees	159
7.12	ODaF (Open Data Foundation)	160
7.12.1	Big Data Accessibility	160
7.13	ODCA (Open Data Center Alliance)	160
7.13.1	Work on Big Data	161
7.14	OGC (Open Geospatial Consortium)	161
7.14.1	Big Data DWG (Domain Working Group)	161
7.15	TM Forum	161
7.15.1	Big Data Analytics Strategic Program	162
7.16	TPC (Transaction Processing Performance Council)	162
7.16.1	TPC-BDWG (TPC Big Data Working Group)	162
7.17	W3C (World Wide Web Consortium)	162
7.17.1	Big Data Community Group	163
7.17.2	Open Government Community Group	163
		
Chapter 8: Market Sizing & Forecasts	164
8.1	Global Outlook for the Big Data in the Financial Services Industry	164
8.2	Hardware, Software & Professional Services Segmentation	165
8.3	Horizontal Submarket Segmentation	166
8.4	Hardware Submarkets	167
8.4.1	Storage and Compute Infrastructure	167
8.4.2	Networking Infrastructure	167
8.5	Software Submarkets	168
8.5.1	Hadoop & Infrastructure Software	168
8.5.2	SQL	168
8.5.3	NoSQL	169
8.5.4	Analytic Platforms & Applications	169
8.5.5	Cloud Platforms	170
8.6	Professional Services Submarket	170
8.6.1	Professional Services	170
8.7	Application Area Segmentation	171
8.7.1	Personal & Business Banking	172
8.7.2	Investment Banking & Capital Markets	172
8.7.3	Insurance Services	173
8.7.4	Credit Cards & Payment Processing	173
8.7.5	Lending & Financing	174
8.7.6	Asset & Wealth Management	174
8.8	Use Case Segmentation	175
8.8.1	Personalized & Targeted Marketing	176
8.8.2	Customer Service & Experience	176
8.8.3	Product Innovation & Development	177
8.8.4	Risk Modeling, Management & Reporting	177
8.8.5	Fraud Detection & Prevention	178
8.8.6	Robotic & Intelligent Process Automation	178
8.8.7	Usage & Analytics-Based Insurance	179
8.8.8	Credit Scoring & Control	179
8.8.9	Data-Driven Trading & Investment	180
8.8.10	Third Party Data Monetization	180
8.8.11	Other Use Cases	181
8.9	Regional Outlook	182
8.10	Asia Pacific	183
8.10.1	Country Level Segmentation	183
8.10.2	Australia	184
8.10.3	China	184
8.10.4	India	185
8.10.5	Indonesia	185
8.10.6	Japan	186
8.10.7	Malaysia	186
8.10.8	Pakistan	187
8.10.9	Philippines	187
8.10.10	Singapore	188
8.10.11	South Korea	188
8.10.12	Taiwan	189
8.10.13	Thailand	189
8.10.14	Rest of Asia Pacific	190
8.11	Eastern Europe	191
8.11.1	Country Level Segmentation	191
8.11.2	Czech Republic	192
8.11.3	Poland	192
8.11.4	Russia	193
8.11.5	Rest of Eastern Europe	193
8.12	Latin & Central America	194
8.12.1	Country Level Segmentation	194
8.12.2	Argentina	195
8.12.3	Brazil	195
8.12.4	Mexico	196
8.12.5	Rest of Latin & Central America	196
8.13	Middle East & Africa	197
8.13.1	Country Level Segmentation	197
8.13.2	Israel	198
8.13.3	Qatar	198
8.13.4	Saudi Arabia	199
8.13.5	South Africa	199
8.13.6	UAE	200
8.13.7	Rest of the Middle East & Africa	200
8.14	North America	201
8.14.1	Country Level Segmentation	201
8.14.2	Canada	202
8.14.3	USA	202
8.15	Western Europe	203
8.15.1	Country Level Segmentation	203
8.15.2	Denmark	204
8.15.3	Finland	204
8.15.4	France	205
8.15.5	Germany	205
8.15.6	Italy	206
8.15.7	Netherlands	206
8.15.8	Norway	207
8.15.9	Spain	207
8.15.10	Sweden	208
8.15.11	UK	208
8.15.12	Rest of Western Europe	209
		
Chapter 9: Vendor Landscape	210
9.1	1010data	210
9.2	Absolutdata	211
9.3	Accenture	212
9.4	Actian Corporation/HCL Technologies	213
9.5	Adaptive Insights	215
9.6	Adobe Systems	216
9.7	Advizor Solutions	218
9.8	AeroSpike	219
9.9	AFS Technologies	220
9.10	Alation	221
9.11	Algorithmia	222
9.12	Alluxio	223
9.13	ALTEN	224
9.14	Alteryx	225
9.15	AMD (Advanced Micro Devices)	226
9.16	Anaconda	227
9.17	Apixio	228
9.18	Arcadia Data	229
9.19	ARM	230
9.20	AtScale	231
9.21	Attivio	232
9.22	Attunity	233
9.23	Automated Insights	234
9.24	AVORA	235
9.25	AWS (Amazon Web Services)	236
9.26	Axiomatics	238
9.27	Ayasdi	239
9.28	BackOffice Associates	240
9.29	Basho Technologies	241
9.30	BCG (Boston Consulting Group)	242
9.31	Bedrock Data	243
9.32	BetterWorks	244
9.33	Big Panda	245
9.34	BigML	246
9.35	Bitam	247
9.36	Blue Medora	248
9.37	BlueData Software	249
9.38	BlueTalon	250
9.39	BMC Software	251
9.40	BOARD International	252
9.41	Booz Allen Hamilton	253
9.42	Boxever	254
9.43	CACI International	255
9.44	Cambridge Semantics	256
9.45	Capgemini	257
9.46	Cazena	258
9.47	Centrifuge Systems	259
9.48	CenturyLink	260
9.49	Chartio	261
9.50	Cisco Systems	262
9.51	Civis Analytics	263
9.52	ClearStory Data	264
9.53	Cloudability	265
9.54	Cloudera	266
9.55	Cloudian	267
9.56	Clustrix	268
9.57	CognitiveScale	269
9.58	Collibra	270
9.59	Concurrent Technology/Vecima Networks	271
9.60	Confluent	272
9.61	Contexti	273
9.62	Couchbase	274
9.63	Crate.io	275
9.64	Cray	276
9.65	Databricks	277
9.66	Dataiku	278
9.67	Datalytyx	279
9.68	Datameer	280
9.69	DataRobot	281
9.70	DataStax	282
9.71	Datawatch Corporation	283
9.72	DDN (DataDirect Networks)	284
9.73	Decisyon	285
9.74	Dell Technologies	286
9.75	Deloitte	287
9.76	Demandbase	288
9.77	Denodo Technologies	289
9.78	Dianomic Systems	290
9.79	Digital Reasoning Systems	291
9.80	Dimensional Insight	292
9.81	Dolphin Enterprise Solutions Corporation/Hanse Orga Group	293
9.82	Domino Data Lab	294
9.83	Domo	295
9.84	Dremio	296
9.85	DriveScale	297
9.86	Druva	298
9.87	Dundas Data Visualization	299
9.88	DXC Technology	300
9.89	Elastic	301
9.90	Engineering Group (Engineering Ingegneria Informatica)	302
9.91	EnterpriseDB Corporation	303
9.92	eQ Technologic	304
9.93	Ericsson	305
9.94	Erwin	306
9.95	EVŌ (Big Cloud Analytics)	307
9.96	EXASOL	308
9.97	EXL (ExlService Holdings)	309
9.98	Facebook	310
9.99	FICO (Fair Isaac Corporation)	311
9.100	Figure Eight	312
9.101	FogHorn Systems	313
9.102	Fractal Analytics	314
9.103	Franz	315
9.104	Fujitsu	316
9.105	Fuzzy Logix	318
9.106	Gainsight	319
9.107	GE (General Electric)	320
9.108	Glassbeam	321
9.109	GoodData Corporation	322
9.110	Google/Alphabet	323
9.111	Grakn Labs	325
9.112	Greenwave Systems	326
9.113	GridGain Systems	327
9.114	H2O.ai	328
9.115	HarperDB	329
9.116	Hedvig	330
9.117	Hitachi Vantara	331
9.118	Hortonworks	332
9.119	HPE (Hewlett Packard Enterprise)	333
9.120	Huawei	335
9.121	HVR	336
9.122	HyperScience	337
9.123	HyTrust	338
9.124	IBM Corporation	340
9.125	iDashboards	342
9.126	IDERA	343
9.127	Ignite Technologies	344
9.128	Imanis Data	346
9.129	Impetus Technologies	347
9.130	Incorta	348
9.131	InetSoft Technology Corporation	349
9.132	InfluxData	350
9.133	Infogix	351
9.134	Infor/Birst	352
9.135	Informatica	354
9.136	Information Builders	355
9.137	Infosys	356
9.138	Infoworks	357
9.139	Insightsoftware.com	358
9.140	InsightSquared	359
9.141	Intel Corporation	360
9.142	Interana	361
9.143	InterSystems Corporation	362
9.144	Jedox	363
9.145	Jethro	364
9.146	Jinfonet Software	365
9.147	Juniper Networks	366
9.148	KALEAO	367
9.149	Keen IO	368
9.150	Keyrus	369
9.151	Kinetica	370
9.152	KNIME	371
9.153	Kognitio	372
9.154	Kyvos Insights	373
9.155	LeanXcale	374
9.156	Lexalytics	375
9.157	Lexmark International	377
9.158	Lightbend	378
9.159	Logi Analytics	379
9.160	Logical Clocks	380
9.161	Longview Solutions/Tidemark	381
9.162	Looker Data Sciences	383
9.163	LucidWorks	384
9.164	Luminoso Technologies	385
9.165	Maana	386
9.166	Manthan Software Services	387
9.167	MapD Technologies	388
9.168	MapR Technologies	389
9.169	MariaDB Corporation	390
9.170	MarkLogic Corporation	391
9.171	Mathworks	392
9.172	Melissa	393
9.173	MemSQL	394
9.174	Metric Insights	395
9.175	Microsoft Corporation	396
9.176	MicroStrategy	398
9.177	Minitab	399
9.178	MongoDB	400
9.179	Mu Sigma	401
9.180	NEC Corporation	402
9.181	Neo4j	403
9.182	NetApp	404
9.183	Nimbix	405
9.184	Nokia	406
9.185	NTT Data Corporation	407
9.186	Numerify	408
9.187	NuoDB	409
9.188	NVIDIA Corporation	410
9.189	Objectivity	411
9.190	Oblong Industries	412
9.191	OpenText Corporation	413
9.192	Opera Solutions	415
9.193	Optimal Plus	416
9.194	Oracle Corporation	417
9.195	Palantir Technologies	420
9.196	Panasonic Corporation/Arimo	422
9.197	Panorama Software	423
9.198	Paxata	424
9.199	Pepperdata	425
9.200	Phocas Software	426
9.201	Pivotal Software	427
9.202	Prognoz	429
9.203	Progress Software Corporation	430
9.204	Provalis Research	431
9.205	Pure Storage	432
9.206	PwC (PricewaterhouseCoopers International)	433
9.207	Pyramid Analytics	434
9.208	Qlik	435
9.209	Qrama/Tengu	436
9.210	Quantum Corporation	437
9.211	Qubole	438
9.212	Rackspace	439
9.213	Radius Intelligence	440
9.214	RapidMiner	441
9.215	Recorded Future	442
9.216	Red Hat	443
9.217	Redis Labs	444
9.218	RedPoint Global	445
9.219	Reltio	446
9.220	RStudio	447
9.221	Rubrik/Datos IO	448
9.222	Ryft	449
9.223	Sailthru	450
9.224	Salesforce.com	451
9.225	Salient Management Company	452
9.226	Samsung Group	453
9.227	SAP	454
9.228	SAS Institute	455
9.229	ScaleOut Software	456
9.230	Seagate Technology	457
9.231	Sinequa	458
9.232	SiSense	459
9.233	Sizmek	460
9.234	SnapLogic	461
9.235	Snowflake Computing	462
9.236	Software AG	463
9.237	Splice Machine	464
9.238	Splunk	465
9.239	Strategy Companion Corporation	467
9.240	Stratio	468
9.241	Streamlio	469
9.242	StreamSets	470
9.243	Striim	471
9.244	Sumo Logic	472
9.245	Supermicro (Super Micro Computer)	473
9.246	Syncsort	474
9.247	SynerScope	476
9.248	SYNTASA	477
9.249	Tableau Software	478
9.250	Talend	479
9.251	Tamr	480
9.252	TARGIT	481
9.253	TCS (Tata Consultancy Services)	482
9.254	Teradata Corporation	483
9.255	Thales/Guavus	485
9.256	ThoughtSpot	486
9.257	TIBCO Software	487
9.258	Toshiba Corporation	489
9.259	Transwarp	490
9.260	Trifacta	491
9.261	Unifi Software	492
9.262	Unravel Data	493
9.263	VANTIQ	494
9.264	VMware	495
9.265	VoltDB	496
9.266	WANdisco	497
9.267	Waterline Data	498
9.268	Western Digital Corporation	499
9.269	WhereScape	500
9.270	WiPro	501
9.271	Wolfram Research	502
9.272	Workday	504
9.273	Xplenty	506
9.274	Yellowfin BI	507
9.275	Yseop	508
9.276	Zendesk	509
9.277	Zoomdata	510
9.278	Zucchetti	511
		
Chapter 10: Conclusion & Strategic Recommendations	512
10.1	Why is the Market Poised to Grow?	512
10.2	Geographic Outlook: Which Countries Offer the Highest Growth Potential?	513
10.3	Big Data is for Everyone	513
10.4	Addressing Customer Expectations with Data-Driven Financial Services	514
10.5	The Importance of AI (Artificial Intelligence) & Machine Learning	514
10.6	Impact of Blockchain on Big Data Processing	515
10.7	Growing Use of Alternative Data Sources	515
10.8	Adoption of Cloud Platforms to Address On-Premise System Limitations	516
10.9	Data Security & Privacy Concerns	517
10.10	Emergence of Data-Driven Cybersecurity for Financial Services	518
10.11	Recommendations	518
10.11.1	Big Data Hardware, Software & Professional Services Providers	519
10.11.2	Financial Services Industry Stakeholders	519
List of Figures	
	
	Figure 1: Hadoop Architecture	39
	Figure 2: Reactive vs. Proactive Analytics	50
	Figure 3: Distribution of Big Data Investments in the Financial Services Industry, by Application Area: 2018 (%)	57
	Figure 4: Progressive Corporation's Use of Big Data for Auto Insurance	93
	Figure 5: Capital One's Purple Rain Framework	104
	Figure 6: TransferWise's Money Transfer Platform	108
	Figure 7: qplum's HFT (High Frequency Trading) Architecture	124
	Figure 8: Use of Alternative Data Sources in FICO Score XD 2	132
	Figure 9: Kabbage's Data-Driven Decision Engine	134
	Figure 10: Digital & Alternative Data Sources for LenddoEFL's Credit Scoring Platform	137
	Figure 11: Comparison of Data Sources Between Upstart & Traditional Lenders	138
	Figure 12: Big Data Roadmap in the Financial Services Industry: 2018 - 2030	140
	Figure 13: Big Data Value Chain in the Financial Services Industry	143
	Figure 14: Key Aspects of Big Data Standardization	154
	Figure 15: Global Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	167
	Figure 16: Global Big Data Revenue in the Financial Services Industry, by Hardware, Software & Professional Services: 2018 - 2030 ($ Million)	168
	Figure 17: Global Big Data Revenue in the Financial Services Industry, by Submarket: 2018 - 2030 ($ Million)	169
	Figure 18: Global Big Data Storage and Compute Infrastructure Submarket Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	170
	Figure 19: Global Big Data Networking Infrastructure Submarket Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	170
	Figure 20: Global Big Data Hadoop & Infrastructure Software Submarket Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	171
	Figure 21: Global Big Data SQL Submarket Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	171
	Figure 22: Global Big Data NoSQL Submarket Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	172
	Figure 23: Global Big Data Analytic Platforms & Applications Submarket Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	172
	Figure 24: Global Big Data Cloud Platforms Submarket Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	173
	Figure 25: Global Big Data Professional Services Submarket Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	173
	Figure 26: Global Big Data Revenue in the Financial Services Industry, by Application Area: 2018 - 2030 ($ Million)	174
	Figure 27: Global Big Data Revenue in Personal & Business Banking: 2018 - 2030 ($ Million)	175
	Figure 28: Global Big Data Revenue in Investment Banking & Capital Markets: 2018 - 2030 ($ Million)	175
	Figure 29: Global Big Data Revenue in Insurance Services: 2018 - 2030 ($ Million)	176
	Figure 30: Global Big Data Revenue in Credit Cards & Payment Processing: 2018 - 2030 ($ Million)	176
	Figure 31: Global Big Data Revenue in Lending & Financing: 2018 - 2030 ($ Million)	177
	Figure 32: Global Big Data Revenue in Asset & Wealth Management: 2018 - 2030 ($ Million)	177
	Figure 33: Global Big Data Revenue in the Financial Services Industry, by Use Case: 2018 - 2030 ($ Million)	178
	Figure 34: Global Big Data Revenue in Personalized & Targeted Marketing for Financial Services: 2018 - 2030 ($ Million)	179
	Figure 35: Global Big Data Revenue in Customer Service & Experience for Financial Services: 2018 - 2030 ($ Million)	179
	Figure 36: Global Big Data Revenue in Product Innovation & Development for Financial Services: 2018 - 2030 ($ Million)	180
	Figure 37: Global Big Data Revenue in Risk Modeling, Management & Reporting for Financial Services: 2018 - 2030 ($ Million)	180
	Figure 38: Global Big Data Revenue in Fraud Detection & Prevention for Financial Services: 2018 - 2030 ($ Million)	181
	Figure 39: Global Big Data Revenue in Robotic & Intelligent Process Automation for Financial Services: 2018 - 2030 ($ Million)	181
	Figure 40: Global Big Data Revenue in Usage & Analytics-Based Insurance: 2018 - 2030 ($ Million)	182
	Figure 41: Global Big Data Revenue in Credit Scoring & Control: 2018 - 2030 ($ Million)	182
	Figure 42: Global Big Data Revenue in Data-Driven Trading & Investment: 2018 - 2030 ($ Million)	183
	Figure 43: Global Big Data Revenue in Third Party Data Monetization for Financial Services: 2018 - 2030 ($ Million)	183
	Figure 44: Global Big Data Revenue in Other Use Cases for Financial Services: 2018 - 2030 ($ Million)	184
	Figure 45: Big Data Revenue in the Financial Services Industry, by Region: 2018 - 2030 ($ Million)	185
	Figure 46: Asia Pacific Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	186
	Figure 47: Asia Pacific Big Data Revenue in the Financial Services Industry, by Country: 2018 - 2030 ($ Million)	186
	Figure 48: Australia Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	187
	Figure 49: China Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	187
	Figure 50: India Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	188
	Figure 51: Indonesia Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	188
	Figure 52: Japan Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	189
	Figure 53: Malaysia Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	189
	Figure 54: Pakistan Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	190
	Figure 55: Philippines Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	190
	Figure 56: Singapore Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	191
	Figure 57: South Korea Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	191
	Figure 58: Taiwan Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	192
	Figure 59: Thailand Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	192
	Figure 60: Rest of Asia Pacific Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	193
	Figure 61: Eastern Europe Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	194
	Figure 62: Eastern Europe Big Data Revenue in the Financial Services Industry, by Country: 2018 - 2030 ($ Million)	194
	Figure 63: Czech Republic Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	195
	Figure 64: Poland Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	195
	Figure 65: Russia Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	196
	Figure 66: Rest of Eastern Europe Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	196
	Figure 67: Latin & Central America Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	197
	Figure 68: Latin & Central America Big Data Revenue in the Financial Services Industry, by Country: 2018 - 2030 ($ Million)	197
	Figure 69: Argentina Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	198
	Figure 70: Brazil Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	198
	Figure 71: Mexico Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	199
	Figure 72: Rest of Latin & Central America Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	199
	Figure 73: Middle East & Africa Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	200
	Figure 74: Middle East & Africa Big Data Revenue in the Financial Services Industry, by Country: 2018 - 2030 ($ Million)	200
	Figure 75: Israel Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	201
	Figure 76: Qatar Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	201
	Figure 77: Saudi Arabia Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	202
	Figure 78: South Africa Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	202
	Figure 79: UAE Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	203
	Figure 80: Rest of the Middle East & Africa Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	203
	Figure 81: North America Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	204
	Figure 82: North America Big Data Revenue in the Financial Services Industry, by Country: 2018 - 2030 ($ Million)	204
	Figure 83: Canada Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	205
	Figure 84: USA Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	205
	Figure 85: Western Europe Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	206
	Figure 86: Western Europe Big Data Revenue in the Financial Services Industry, by Country: 2018 - 2030 ($ Million)	206
	Figure 87: Denmark Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	207
	Figure 88: Finland Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	207
	Figure 89: France Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	208
	Figure 90: Germany Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	208
	Figure 91: Italy Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	209
	Figure 92: Netherlands Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	209
	Figure 93: Norway Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	210
	Figure 94: Spain Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	210
	Figure 95: Sweden Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	211
	Figure 96: UK Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	211
	Figure 97: Rest of Western Europe Big Data Revenue in the Financial Services Industry: 2018 - 2030 ($ Million)	212 



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