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Brochure

More information from http://www.researchandmarkets.com/reports/3006484/

Big Data in Financial Services Industry: Market Trends, Challenges, and

Prospects 2014 - 2019

Description: Big Data and predictive analytics solutions are poised to optimize the value of data within the financial services sector. Banks, investment firms, insurance companies and other service providers are learning to leverage the value of data and gain competitive advantage, minimize costs, convert challenges to

opportunities, and minimize risk in real-time.

Big Data technologies and related business intelligence solutions provide financial services firms with the capability to capture and analyze data, build predictive models, back-test and simulate scenarios. Through iteration, firms will determine the most important variables and also key predictive models.

There is a huge opportunity for financial services firms to apply new data sets and new algorithms to optimize capital allocation, cash management, and currency processing. The financial implications are manifest in improved capital flows and profitability for many firms within the ecosystem.

Big Data in Financial Services Industry: Market Trends, Challenges, and Prospects 2014 - 2019 evaluates Big Data prospects and opportunities within the financial services sector and answers the following key questions:

- How is Big Data expected to impact the financial services industry?

- What are the Big Data players financial management solutions and their impact? - What are the Big Data financial management models and how are they applied? - What are the near-term and long-term benefits to the financial services industry? - What are the specific challenges that the financial services industry faces with Big Data?

All purchases of this report includes time with an expert analyst who will help you link key findings in the report to the business issues you're addressing. This needs to be used within three months of purchasing the report.

Target Audience: - Big Data companies - Telecom service providers - Financial services companies - Regulatory and policy makers

- Data services and analytics companies - Cloud and telecom infrastructure providers Report Benefits:

- Big Data in financial services forecasting through 2019 - Identify leading companies and solutions for financial sector

- Understand the role and importance of Big Data in financial services - Recognize the future prospects for Big Data in financial services industry - Identify initial and ongoing implementation areas for Big Data and analytics

Contents: 1.0 Executive Summary

2.0 Big Data In Financial Services 2.1 Financial Services Industry

2.2 Financial Services: An Industry In Transformation 2.3 Role Of Big Data In Financial Services

2.4 Big Data To Become Essential Component For Financial Service Sector 2.5 A Three-Way Big Data Approach Towards Financial Services

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2.5.2 Information Based Brokering 2.5.3 Information Based Delivery

2.6 Steps For Big Data Functioning In Financial Services 2.6.1 Data Acquisition, Collection And Detection 2.6.2 Data Management And Integration 2.6.3 Data Analysis

2.7 Big Data As Competitive Differentiator For Financial Services 2.8 Financial Big Data Management: Reference Data

2.9 Future Of Big Data In Financial Sector

3.0 Big Data Initiatives Of Financial Services Providers

3.1 Current Stage Of The Big Data Implementation In Financial Services 3.1.1 Financial Service Provider Big Data Initiatives

3.2 Top Big Data Initiatives In Financial Services Sector 3.2.1 Provide Real-Time Response To Consumer Queries

3.2.2 Assess Customer Behavioral And Tendency Data Using Predictive Analytics 3.2.3 Measure Customer Sentiments And Take Appropriate Action

3.2.4 Mass Customization Data Remodeling 3.2.5 Big Data For Big Revenue

3.2.6 Big Data For Predicting Fraud And Other Financial Crimes 4.0 Big Data In Financial Services: Global Markets 2014 - 2019 4.1 The Global Big Data Market

4.1.1 The Unstructured Data Market 4.1.2 The Third Platform Perspective 4.1.3 Data Process Magnitude 4.1.4 Towards The Zettabytes Market

4.1.5 Global Markets For Big Data 2014 - 2019

4.1.6 Data Analytics Is The Battleground For Competition 4.2 Learning From Big Data In Financial Services Sector In 2013 4.3 Global Market For Big Data In Financial Sector 2014 - 2019 4.4 Focus Areas For Financial Services Sector Investment 2014 - 2019 5.0 Companies And Solutions

6.1 Big Data Financial Management Solutions 6.2 Companies And Solutions

6.2.1 1010Data 6.2.2 10Gen 6.2.3 Actian 6.2.4 Alteryx 6.2.5 Amazon 6.2.6 Attivio

6.2.7 Booz Allen Hamilton 6.2.8 Capgemini 6.2.9 Cisco Systems 6.2.10 Cloudera 6.2.11 Csc 6.2.12 Dell 6.2.13 Emc 6.2.14 Fusion-Io 6.2.15 Gooddata 6.2.16 Google 6.2.17 Guavus 6.2.18 Hp 6.2.19 Hitachi 6.2.20 Ibm 6.2.21 Informatica 6.2.22 Intel 6.2.23 Marklogic 6.2.24 Microsoft 6.2.25 Mu Sigma 6.2.26 Netapp

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6.2.27 Opera Solutions 6.2.28 Oracle 6.2.29 Paraccel 6.2.30 Qliktech 6.2.31 Sap 6.2.32 Sgi 6.2.33 Splunk 6.2.34 Teradata 6.2.35 Tibco Software 6.2.36 Vmware

7.0 Conclusions And Recommendations List of Figures:

Figure 1: Big Data Approaches for Financial Services Figure 2: Big Data Functional Levels

Figure 3: Big Data as Competitive Differentiator for Financial Services Figure 4: Financial Big data Management Paradigm

Figure 5: Big Data for Predicting Financial Crimes Figure 6: Big Data Paradigm

Figure 7: Migration Process of Platform Technology Figure 8: Data Universe Zettabytes Generation 2013 - 2020 Figure 9: Global Big Data Market Forecast 2014 – 2019

Figure 10: Global Big Data Markets by H/W, S/W, and Services 2014 – 2019 Figure 11: Big Data in Financial Services by Components 2014 - 2019 Figure 12: Big Data Revenue Share by Vendor Solutions

Figure 13: Hadoop and NoSQL Vendor Revenue Share List of Tables:

Table 1: Global Big Data Market 2014 – 2019 Table 2: Global Big Data Markets by Components Table 3: Global Markets for Big Data in Financial Sector Table 4: 1010data Big Data Financial Management Solutions Table 5: 10gen Big Data Financial Management Solutions Table 6: Actian Big Data Financial Management Solutions Table 7: Alteryx Big Data Financial Management Solutions Table 8: Amazon Big Data Financial Management Solutions Table 9: Attiivio Big Data Financial Management Solutions

Table: 10 Booz Allen Hamilton Big Data Financial Management Solutions Table 11: Capgemini Big Data Financial Management Solutions

Table 12: Cisco Big Data Financial Management Solutions Table 13: Cloudera Big Data Financial Management Solutions Table 14: CSC Big Data Financial Management Solutions Table 15: Dell Big Data Financial Management Solutions Table 16: EMC Big Data Financial Management Solutions Table 17: Fusion-IO Big Data Financial Management Solutions Table 18: GoodData Big Data Financial Management Solutions Table 19: Google Big Data Financial Management Solutions Table 20: Guavus Big Data Financial Management Solutions Table 21: HP Big Data Financial Management Solutions Table 22: Hitachi Big Data Financial Management Solutions Table 23: IBM Big Data Financial Management Solutions Table 24: Informatica Big Data Financial Management Solutions Table 25: Intel Big Data Financial Management Solutions Table 26: MarkLogic Big Data Financial Management Solutions Table 27: Microsoft Big Data Financial Management Solutions Table 28: Mu Sigma Big Data Platforms

Table 29: MuSigma Big Data Financial Management Solutions Table 30: NetApp Big Data Financial Management Solutions

Table 31: Opera Solutions Big Data Financial Management Solutions Table 32: Oracle Big Data Financial Management Solutions

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Table 33: ParAccel Big Data Financial Management Solutions Table 34: Qlick Tech Big Data Financial Management Solutions Table 35: SAP Big Data Financial Management Solutions Table 36: SGI Big Data Financial Management Solutions Table 37: Splunk Big Data Financial Management Solutions Table 38: Teradata Big Data Financial Management Solutions Table 39: Tibco Software Big Data Financial Management Solutions Table 40: VMware Big Data Financial Management Solutions

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