SlideShare a Scribd company logo
1 of 5
Banking : Design your APIs to be Context aware
Success in today’s data-oriented business environment requires being able to think about how
API, Data & Analytic concepts apply to particular business problems. Data and data science can
provide value in the context of Bank’s business & competitor strategy and to meet demands of
customer experience.
Google Finance Australia reported that majority of Internet users in Australia start their search
looking for a mortgage online, and spend between six and 11 hours researching the mortgage
before they select a potential provider and reach out to them. When they do contact a mortgage
provider, increasingly it will be via the website, rather than by walking into a branch or phoning
the call center. The myth that customers require a branch to buy a mortgage is just that, a
myth. It is more than likely that the majority of mortgages sold today were actually selected by
the customer online, and the branch was just a step in the application process.
It has become clear that Bill Gates’ quote of old about us needing banking, but not banks, has
never been more likely an outcome of the technology and behavioral-led disruption we find
ourselves in today. Banking was no longer defined or hemmed in by a physical distribution
network, or physical artifacts. The banking system emerging out of the global crisis would be
one that was highly utilitarian, pervasive, mobile, and seamlessly engineered to work when and
where we needed it.
In the end, many of the banks that were household names during the 20th century will simply
cease to exist as they are displaced or consolidated in the system-wide disruption that is soon
coming. New players are emerging now that are taking ownership of the customer experience
through revolutionary new techniques that attack the fringes of “banking” and payments.
The new value is not being a “bank”. The new value is understanding the context banking
products and services play in the life of the consumer, and delivering those products and
services on that basis. The customer will expect and demand this type of integration. The
customer will have no patience for a bank that insists he comes to its “place” before he can have
access to banking. Mobile payment is one of the most disruptive areas in the Banking segment.
Whatever bank or company operates the mobile-money system will be able to leverage the data
for its own purposes (with the right partner, a bank, for example, could offer consumers
discounts on a vacation to a favorite destination in addition to offering a savings account to let
consumers hoard money for the trip).
There are a bunch of start-ups emerging right now that use such context data to target
consumers with ads that are highly relevant. However, matching this to previous card usage data
or to purchases such as an airline ticket for future travel makes the pool of data available from
within a bank highly sought after.
Cardlytics is a well-known provider in the space. Cardlytics essentially provides an offer-matching
capability and mines card data on an aggregated basis to match merchant codes with offers that
might be of interest to the bank customer. This, of course, requires that the bank have a
relationship with multiple merchants so that offers can be successfully served to a customer.
Some banking products are highly contextual. In fact, many day-to-day banking products are.
Here are some examples of the context of core retail banking products:
1. Mortgage (at a potential home or with a realtor)
2. Car lease or loan (at a car dealership or when purchasing a car)
3. Credit card (potentially at a mall, or getting ready for a trip overseas)
4. Travel insurance (when booking a holiday, or at the airport)
5. Student loan (when enrolling at college or university)
The opportunity lies in using this data and extrapolating a customer opportunity with respect to
banking. This requires you to know your customers well enough at a minimum to know what
offers are relevant to them, and what merchants, locations, etc., their frequency. This data can,
of course, be gleaned from existing card usage analytics, and cross-referencing with mobile data.
Say a customer has previously used his credit card to shop at Myer’s. A bank might pitch him a
discount on his next purchase at David Jones instead. He won’t need to print a coupon to
redeem an offer, he’d just swipe his existing credit or debit card , and receive the discounts as a
statement credit after he makes a purchase.
Predictive & Cognitive selling, Triggered offers
Distributed point of impact
As technology continues to progress, point-of-sale equipment will also continue to migrate to the
cloud, Internet of Things devices or integrate with our app phone’s capabilities. So the point of
impact goes beyond simply the point of sale or a Branch. It includes wherever the sales journey
might be initiated with a possibility of closure.
A classic example would be CBA’s Albert which runs on open Pi android platform which will have
an open architecture, giving you the opportunity to develop new and innovative apps for
businesses, across a range of industries.
With respect to new Banking principles, push based marketing needs to change to pull based,
point of impact and service selling. Segmentation and customer intelligence through behavioral
analytic is the key to this type of messaging capability. More than simply segmenting customers,
banks will need to understand how customers behave, what they do, how often, and through
which channels. Currently banks don’t even understand which transactions go through which
channel for existing customers. Marketing must understand the why and how, and ask
customers what they want. Some banks probably imagine that they do this already, but most of
them certainly don’t use that data effectively to sell or match offers to individual customers.
Design & Model your APIs to be Context aware
Under the umbrella of big analytics, context analytics denotes the incremental context
accumulators that can detect like and related entities cross large, sparse, and disparate
collections of data. The data collection includes both current and historical data. The
completeness of the data context enables analytics to correctly assess entities of interest.
Creating data within the appropriate context delivers higher quality models. Higher quality
models applied to contextually-correct data can lead to better mission decisions and better
outcomes.
>>> Understand the API value chain & identify APIs
What business assets are going to be provided through the API? What information, services, and
products will be available? Of what potential value could these assets be to others? How will the
owner of the business assets benefit from the API? For a mortgage API, the assets are the
mortgage data and the points of interest and impact.
>>> Identify channel centric attributes to build the context
For example geographical location information could be an attribute for mobile advertisement
context
>>> Identify attributes which can provide individualized customer experience
>>> Identify at-risk customer behavioral patterns & attributes before they are likely to churn
>>> Identify influencing factors in a time-sequenced historical data at scale. Simple
classification techniques doesn’t solve all business problems.
>>> Group and classify of products as they pertain to multi channel interactions
Simple Products – No advice required – Credit Card, Current/Savings Account, Personal Loan,
General Insurance etc.
Informed Purchase – Advice sometimes required – Mortgage, Life insurance, Overdraft etc.
Complex Products – Specialist advice required – Securities, Investment Funds, Mutual Funds,
Deriatives, Structured Products etc.
>>> Build Machine learning and analytic capabilities at API layer and leverage classification
techniques to identify and build patterns. Build your own prediction APIs
General concepts for actually extracting knowledge from APIs, which undergird the vast array of
data science techniques and predictive analytic tools.
—- Identify informative attributes — those that correlate with or give us information about an
unknown quantity of interest
—- Fitting a numeric function model to data by choosing an objective and finding a set of
parameters based on that objective
—- Controlling complexity is necessary to find a good trade-off between generalization and over-
fitting (Try to identify a data set, leverage existing models like IFW or IFX), Nobel Laureate
Ronald Coase said, “If you torture the data long enough, it will confess.”
—- Calculating similarity between objects described by data
>>> Design & expose prediction APIs for App builders. Ultimately the prediction APIs needs to
be exposed to API developer to build smarter and predictive apps.
Attracting new customers is much more expensive than retaining existing ones, so a good deal
of marketing budget should be allocated to prevent churn. It is easier to engineer the API data
to apply the existing data mining tools than to match existing tools.
Opportunities
Cross-sell to existing customers
Create point of impact marketing campaigns & personalized experiences based on context
Predictive & Cognitive selling e.g. simple event triggered offers
>>> Significant Balance change (Investment Needs) : Customer’s account holdings increased by
large or significant amount ($ 200k to $ 500k, $ 500k +). Lead delivered to banker next day who
contacts customer with offer e.g. a financial planning appointment.
>>> Large Transactions (Withdrawals/Deposits) : A transaction out of the ordinary for that
customer, e.g. greater than average for last three months.
>>> Term Deposits (Renewals/ Upgrades) : Relationship Manager contacts customer to renew
or increase deposit, perhaps offering better rate through a structured product or something
similar.
- See more at: http://blog.nexright.com/api-management/banking-design-apis-context-aware/
Visit: http://nexright.com/

More Related Content

What's hot

Adtelligence best practise use case guide for automated customer lifecycle ma...
Adtelligence best practise use case guide for automated customer lifecycle ma...Adtelligence best practise use case guide for automated customer lifecycle ma...
Adtelligence best practise use case guide for automated customer lifecycle ma...ADTELLIGENCE GmbH
 
AI-empowered Omnichannel Digital Banking Platform
AI-empowered Omnichannel Digital Banking PlatformAI-empowered Omnichannel Digital Banking Platform
AI-empowered Omnichannel Digital Banking PlatformBanQ Systems
 
Trends In Interactive Banking by Michael Horne
Trends In Interactive Banking by Michael HorneTrends In Interactive Banking by Michael Horne
Trends In Interactive Banking by Michael HorneBackbase
 
Bank 2.0 -- Making It Happen
Bank 2.0 -- Making It HappenBank 2.0 -- Making It Happen
Bank 2.0 -- Making It HappenBackbase
 
Centre for Disruptive Technologies Mobile Money & Payments Presentation
Centre for Disruptive Technologies Mobile Money & Payments PresentationCentre for Disruptive Technologies Mobile Money & Payments Presentation
Centre for Disruptive Technologies Mobile Money & Payments PresentationSharron L McPherson
 
Five FinTech Trends in 2018
Five FinTech Trends in 2018Five FinTech Trends in 2018
Five FinTech Trends in 2018PortfolioQuest
 
Designing the future bank for the digital era
Designing the future bank for the digital eraDesigning the future bank for the digital era
Designing the future bank for the digital eraPol Navarro
 
Banking with Conversational AI and Case Studies
Banking with Conversational AI and Case StudiesBanking with Conversational AI and Case Studies
Banking with Conversational AI and Case StudiesYellow Messenger
 
Hip Digital Banking Facts
Hip Digital Banking FactsHip Digital Banking Facts
Hip Digital Banking FactsHip Brand Group
 
SapientNitro: Multi-channel and the Convergence of Marketing, Commerce & Cust...
SapientNitro: Multi-channel and the Convergence of Marketing, Commerce & Cust...SapientNitro: Multi-channel and the Convergence of Marketing, Commerce & Cust...
SapientNitro: Multi-channel and the Convergence of Marketing, Commerce & Cust...Day Software
 
10 Things Banks Should be Doing in 2018
10 Things Banks Should be Doing in 201810 Things Banks Should be Doing in 2018
10 Things Banks Should be Doing in 2018Miguel Mello
 
Shaping the future of insurance with IBM Watson
Shaping the future of insurance with IBM WatsonShaping the future of insurance with IBM Watson
Shaping the future of insurance with IBM WatsonJohn Root
 
Keynote de Ron Shevlin en Next Bank Madrid 2013
Keynote de Ron Shevlin en Next Bank Madrid 2013Keynote de Ron Shevlin en Next Bank Madrid 2013
Keynote de Ron Shevlin en Next Bank Madrid 2013finnovar
 
Mobile payments - Future is Mobile Wallet
Mobile payments -  Future is Mobile WalletMobile payments -  Future is Mobile Wallet
Mobile payments - Future is Mobile WalletAbhishek Chatterjee
 
MY DIGITAL BANKING NIRVANA - JIM MAROUS
MY DIGITAL BANKING NIRVANA - JIM MAROUSMY DIGITAL BANKING NIRVANA - JIM MAROUS
MY DIGITAL BANKING NIRVANA - JIM MAROUSJim Marous
 
Digital [Banking] Transformation in the Era of Customer Engagement
Digital [Banking] Transformation in the Era of Customer EngagementDigital [Banking] Transformation in the Era of Customer Engagement
Digital [Banking] Transformation in the Era of Customer EngagementAli Hussain
 
Backbase Webinar: The Adjacent Possible for Banks
Backbase Webinar: The Adjacent Possible for Banks Backbase Webinar: The Adjacent Possible for Banks
Backbase Webinar: The Adjacent Possible for Banks Backbase
 
A Multi-Channel Strategy for Banks
A Multi-Channel Strategy for BanksA Multi-Channel Strategy for Banks
A Multi-Channel Strategy for BanksYaël Levey
 

What's hot (20)

Adtelligence best practise use case guide for automated customer lifecycle ma...
Adtelligence best practise use case guide for automated customer lifecycle ma...Adtelligence best practise use case guide for automated customer lifecycle ma...
Adtelligence best practise use case guide for automated customer lifecycle ma...
 
AI-empowered Omnichannel Digital Banking Platform
AI-empowered Omnichannel Digital Banking PlatformAI-empowered Omnichannel Digital Banking Platform
AI-empowered Omnichannel Digital Banking Platform
 
Trends In Interactive Banking by Michael Horne
Trends In Interactive Banking by Michael HorneTrends In Interactive Banking by Michael Horne
Trends In Interactive Banking by Michael Horne
 
Bank 2.0 -- Making It Happen
Bank 2.0 -- Making It HappenBank 2.0 -- Making It Happen
Bank 2.0 -- Making It Happen
 
MTBiz July 2018
MTBiz July 2018MTBiz July 2018
MTBiz July 2018
 
Centre for Disruptive Technologies Mobile Money & Payments Presentation
Centre for Disruptive Technologies Mobile Money & Payments PresentationCentre for Disruptive Technologies Mobile Money & Payments Presentation
Centre for Disruptive Technologies Mobile Money & Payments Presentation
 
Five FinTech Trends in 2018
Five FinTech Trends in 2018Five FinTech Trends in 2018
Five FinTech Trends in 2018
 
Designing the future bank for the digital era
Designing the future bank for the digital eraDesigning the future bank for the digital era
Designing the future bank for the digital era
 
Banking with Conversational AI and Case Studies
Banking with Conversational AI and Case StudiesBanking with Conversational AI and Case Studies
Banking with Conversational AI and Case Studies
 
Hip Digital Banking Facts
Hip Digital Banking FactsHip Digital Banking Facts
Hip Digital Banking Facts
 
SapientNitro: Multi-channel and the Convergence of Marketing, Commerce & Cust...
SapientNitro: Multi-channel and the Convergence of Marketing, Commerce & Cust...SapientNitro: Multi-channel and the Convergence of Marketing, Commerce & Cust...
SapientNitro: Multi-channel and the Convergence of Marketing, Commerce & Cust...
 
10 Things Banks Should be Doing in 2018
10 Things Banks Should be Doing in 201810 Things Banks Should be Doing in 2018
10 Things Banks Should be Doing in 2018
 
Shaping the future of insurance with IBM Watson
Shaping the future of insurance with IBM WatsonShaping the future of insurance with IBM Watson
Shaping the future of insurance with IBM Watson
 
Keynote de Ron Shevlin en Next Bank Madrid 2013
Keynote de Ron Shevlin en Next Bank Madrid 2013Keynote de Ron Shevlin en Next Bank Madrid 2013
Keynote de Ron Shevlin en Next Bank Madrid 2013
 
Mobile payments - Future is Mobile Wallet
Mobile payments -  Future is Mobile WalletMobile payments -  Future is Mobile Wallet
Mobile payments - Future is Mobile Wallet
 
The Future or Everyday Banking
The Future or Everyday BankingThe Future or Everyday Banking
The Future or Everyday Banking
 
MY DIGITAL BANKING NIRVANA - JIM MAROUS
MY DIGITAL BANKING NIRVANA - JIM MAROUSMY DIGITAL BANKING NIRVANA - JIM MAROUS
MY DIGITAL BANKING NIRVANA - JIM MAROUS
 
Digital [Banking] Transformation in the Era of Customer Engagement
Digital [Banking] Transformation in the Era of Customer EngagementDigital [Banking] Transformation in the Era of Customer Engagement
Digital [Banking] Transformation in the Era of Customer Engagement
 
Backbase Webinar: The Adjacent Possible for Banks
Backbase Webinar: The Adjacent Possible for Banks Backbase Webinar: The Adjacent Possible for Banks
Backbase Webinar: The Adjacent Possible for Banks
 
A Multi-Channel Strategy for Banks
A Multi-Channel Strategy for BanksA Multi-Channel Strategy for Banks
A Multi-Channel Strategy for Banks
 

Viewers also liked

ICAA-ACCA assessed1
ICAA-ACCA assessed1ICAA-ACCA assessed1
ICAA-ACCA assessed1Danny Lim
 
Investment administrator performance appraisal
Investment administrator performance appraisalInvestment administrator performance appraisal
Investment administrator performance appraisallucastorres040
 
New Trail Consulting - Channel partnership initiatives
New Trail Consulting - Channel partnership initiativesNew Trail Consulting - Channel partnership initiatives
New Trail Consulting - Channel partnership initiativesvinayars
 
Kelas iii sd ipa_priyono
Kelas iii sd ipa_priyonoKelas iii sd ipa_priyono
Kelas iii sd ipa_priyonoMuzahimah
 
RFID in the world of Printed Electronics
RFID in the world of Printed ElectronicsRFID in the world of Printed Electronics
RFID in the world of Printed ElectronicsAndreas Schaller
 
De thi-thu-thpt-quoc-gia-2015-mon-tieng-anh-truong-thpt-chuyen-nguyen-binh-kh...
De thi-thu-thpt-quoc-gia-2015-mon-tieng-anh-truong-thpt-chuyen-nguyen-binh-kh...De thi-thu-thpt-quoc-gia-2015-mon-tieng-anh-truong-thpt-chuyen-nguyen-binh-kh...
De thi-thu-thpt-quoc-gia-2015-mon-tieng-anh-truong-thpt-chuyen-nguyen-binh-kh...Hồng Nguyễn
 
Dibujo arquitectónico orientado a trabajos sociales primera parte
Dibujo arquitectónico orientado a trabajos sociales primera parteDibujo arquitectónico orientado a trabajos sociales primera parte
Dibujo arquitectónico orientado a trabajos sociales primera parteMagdys Escobar
 

Viewers also liked (14)

ICAA-ACCA assessed1
ICAA-ACCA assessed1ICAA-ACCA assessed1
ICAA-ACCA assessed1
 
Sample module plan
Sample module planSample module plan
Sample module plan
 
Журнал о грузовиках и спецтехнике «Автосила» №5 (108) 2015
Журнал о грузовиках и спецтехнике «Автосила» №5 (108) 2015Журнал о грузовиках и спецтехнике «Автосила» №5 (108) 2015
Журнал о грузовиках и спецтехнике «Автосила» №5 (108) 2015
 
Rubrica de blog
Rubrica de blogRubrica de blog
Rubrica de blog
 
Mood board
Mood boardMood board
Mood board
 
Investment administrator performance appraisal
Investment administrator performance appraisalInvestment administrator performance appraisal
Investment administrator performance appraisal
 
Lógica inss gabaritado
Lógica inss gabaritadoLógica inss gabaritado
Lógica inss gabaritado
 
New Trail Consulting - Channel partnership initiatives
New Trail Consulting - Channel partnership initiativesNew Trail Consulting - Channel partnership initiatives
New Trail Consulting - Channel partnership initiatives
 
Kelas iii sd ipa_priyono
Kelas iii sd ipa_priyonoKelas iii sd ipa_priyono
Kelas iii sd ipa_priyono
 
Alat ucap manusia
Alat ucap manusiaAlat ucap manusia
Alat ucap manusia
 
RFID in the world of Printed Electronics
RFID in the world of Printed ElectronicsRFID in the world of Printed Electronics
RFID in the world of Printed Electronics
 
De thi-thu-thpt-quoc-gia-2015-mon-tieng-anh-truong-thpt-chuyen-nguyen-binh-kh...
De thi-thu-thpt-quoc-gia-2015-mon-tieng-anh-truong-thpt-chuyen-nguyen-binh-kh...De thi-thu-thpt-quoc-gia-2015-mon-tieng-anh-truong-thpt-chuyen-nguyen-binh-kh...
De thi-thu-thpt-quoc-gia-2015-mon-tieng-anh-truong-thpt-chuyen-nguyen-binh-kh...
 
Dibujo arquitectónico orientado a trabajos sociales primera parte
Dibujo arquitectónico orientado a trabajos sociales primera parteDibujo arquitectónico orientado a trabajos sociales primera parte
Dibujo arquitectónico orientado a trabajos sociales primera parte
 
Presentasi Sanitasi INDII
Presentasi Sanitasi INDIIPresentasi Sanitasi INDII
Presentasi Sanitasi INDII
 

Similar to Banking

The digital edge in financial services
The digital edge in financial servicesThe digital edge in financial services
The digital edge in financial servicesOgilvyOne Worldwide
 
Big data in fintech ecosystem
Big data in fintech ecosystemBig data in fintech ecosystem
Big data in fintech ecosystemBBVA API Market
 
AI & Data Analytics: 3 Ways They Can Improve Customer Experience And Engagement
AI & Data Analytics: 3 Ways They Can Improve Customer Experience And EngagementAI & Data Analytics: 3 Ways They Can Improve Customer Experience And Engagement
AI & Data Analytics: 3 Ways They Can Improve Customer Experience And EngagementQuekelsBaro
 
4 Trends that Define the Future of Banking.pdf
4 Trends that Define the Future of Banking.pdf4 Trends that Define the Future of Banking.pdf
4 Trends that Define the Future of Banking.pdfNovoPay
 
More Personalized Banking Through Big Data and Analytics
More Personalized Banking Through Big Data and AnalyticsMore Personalized Banking Through Big Data and Analytics
More Personalized Banking Through Big Data and AnalyticsSAP Analytics
 
Behind the ABM Curtain with Oracle Data Cloud
Behind the ABM Curtain with Oracle Data CloudBehind the ABM Curtain with Oracle Data Cloud
Behind the ABM Curtain with Oracle Data CloudKwanzoo Inc
 
Personalization - Whitepaper
Personalization - WhitepaperPersonalization - Whitepaper
Personalization - WhitepaperTony Shrader
 
7 Trends That BFSI Industry Cannot Ignore Anymore- Get Ready for 2023
7 Trends That BFSI Industry Cannot Ignore Anymore- Get Ready for 20237 Trends That BFSI Industry Cannot Ignore Anymore- Get Ready for 2023
7 Trends That BFSI Industry Cannot Ignore Anymore- Get Ready for 2023SG Analytics
 
Early Stage Fintech Investment Thesis (Sept 2016)
Early Stage Fintech Investment Thesis (Sept 2016)Early Stage Fintech Investment Thesis (Sept 2016)
Early Stage Fintech Investment Thesis (Sept 2016)Earnest Sweat
 
Relation of Big Data and E-Commerce
Relation of Big Data and E-CommerceRelation of Big Data and E-Commerce
Relation of Big Data and E-CommerceAnkita Tiwari
 
Financial wellness 20201 sanjeet nandi
Financial wellness 20201   sanjeet nandiFinancial wellness 20201   sanjeet nandi
Financial wellness 20201 sanjeet nandisanjeetnandi
 
Top 8 Mobile Finance Trends 2015
Top 8 Mobile Finance Trends 2015Top 8 Mobile Finance Trends 2015
Top 8 Mobile Finance Trends 2015DMI
 
Enhancing Customer Experience through Loan Origination System (1).pdf
Enhancing Customer Experience through Loan Origination System (1).pdfEnhancing Customer Experience through Loan Origination System (1).pdf
Enhancing Customer Experience through Loan Origination System (1).pdfHabile Technologies
 
For Effective Digital Banking Channels, Put Customers First (Part II of III)
For Effective Digital Banking Channels, Put Customers First (Part II of III)For Effective Digital Banking Channels, Put Customers First (Part II of III)
For Effective Digital Banking Channels, Put Customers First (Part II of III)Cognizant
 
Financial services use cases
Financial services use casesFinancial services use cases
Financial services use casesErni Susanti
 
Webcast Presentation - What's in your (e) Wallet? Transforming payments and t...
Webcast Presentation - What's in your (e) Wallet? Transforming payments and t...Webcast Presentation - What's in your (e) Wallet? Transforming payments and t...
Webcast Presentation - What's in your (e) Wallet? Transforming payments and t...GRUC
 
Designing a Results Driven Digital Strategy: Customers and Corporations’ Digi...
Designing a Results Driven Digital Strategy: Customers and Corporations’ Digi...Designing a Results Driven Digital Strategy: Customers and Corporations’ Digi...
Designing a Results Driven Digital Strategy: Customers and Corporations’ Digi...Fabio Mittelstaedt
 

Similar to Banking (20)

The digital edge in financial services
The digital edge in financial servicesThe digital edge in financial services
The digital edge in financial services
 
Big data in fintech ecosystem
Big data in fintech ecosystemBig data in fintech ecosystem
Big data in fintech ecosystem
 
AI & Data Analytics: 3 Ways They Can Improve Customer Experience And Engagement
AI & Data Analytics: 3 Ways They Can Improve Customer Experience And EngagementAI & Data Analytics: 3 Ways They Can Improve Customer Experience And Engagement
AI & Data Analytics: 3 Ways They Can Improve Customer Experience And Engagement
 
4 Trends that Define the Future of Banking.pdf
4 Trends that Define the Future of Banking.pdf4 Trends that Define the Future of Banking.pdf
4 Trends that Define the Future of Banking.pdf
 
More Personalized Banking Through Big Data and Analytics
More Personalized Banking Through Big Data and AnalyticsMore Personalized Banking Through Big Data and Analytics
More Personalized Banking Through Big Data and Analytics
 
Behind the ABM Curtain with Oracle Data Cloud
Behind the ABM Curtain with Oracle Data CloudBehind the ABM Curtain with Oracle Data Cloud
Behind the ABM Curtain with Oracle Data Cloud
 
Personalization - Whitepaper
Personalization - WhitepaperPersonalization - Whitepaper
Personalization - Whitepaper
 
Designing A Better Bank
Designing A Better BankDesigning A Better Bank
Designing A Better Bank
 
7 Trends That BFSI Industry Cannot Ignore Anymore- Get Ready for 2023
7 Trends That BFSI Industry Cannot Ignore Anymore- Get Ready for 20237 Trends That BFSI Industry Cannot Ignore Anymore- Get Ready for 2023
7 Trends That BFSI Industry Cannot Ignore Anymore- Get Ready for 2023
 
Early Stage Fintech Investment Thesis (Sept 2016)
Early Stage Fintech Investment Thesis (Sept 2016)Early Stage Fintech Investment Thesis (Sept 2016)
Early Stage Fintech Investment Thesis (Sept 2016)
 
Smart CRM through Smart Internet of Things
Smart CRM through Smart Internet of ThingsSmart CRM through Smart Internet of Things
Smart CRM through Smart Internet of Things
 
Relation of Big Data and E-Commerce
Relation of Big Data and E-CommerceRelation of Big Data and E-Commerce
Relation of Big Data and E-Commerce
 
Financial wellness 20201 sanjeet nandi
Financial wellness 20201   sanjeet nandiFinancial wellness 20201   sanjeet nandi
Financial wellness 20201 sanjeet nandi
 
Top 8 Mobile Finance Trends 2015
Top 8 Mobile Finance Trends 2015Top 8 Mobile Finance Trends 2015
Top 8 Mobile Finance Trends 2015
 
Solving Big Data Industry Use Cases with AWS Cloud Computing
Solving Big Data Industry Use Cases with AWS Cloud ComputingSolving Big Data Industry Use Cases with AWS Cloud Computing
Solving Big Data Industry Use Cases with AWS Cloud Computing
 
Enhancing Customer Experience through Loan Origination System (1).pdf
Enhancing Customer Experience through Loan Origination System (1).pdfEnhancing Customer Experience through Loan Origination System (1).pdf
Enhancing Customer Experience through Loan Origination System (1).pdf
 
For Effective Digital Banking Channels, Put Customers First (Part II of III)
For Effective Digital Banking Channels, Put Customers First (Part II of III)For Effective Digital Banking Channels, Put Customers First (Part II of III)
For Effective Digital Banking Channels, Put Customers First (Part II of III)
 
Financial services use cases
Financial services use casesFinancial services use cases
Financial services use cases
 
Webcast Presentation - What's in your (e) Wallet? Transforming payments and t...
Webcast Presentation - What's in your (e) Wallet? Transforming payments and t...Webcast Presentation - What's in your (e) Wallet? Transforming payments and t...
Webcast Presentation - What's in your (e) Wallet? Transforming payments and t...
 
Designing a Results Driven Digital Strategy: Customers and Corporations’ Digi...
Designing a Results Driven Digital Strategy: Customers and Corporations’ Digi...Designing a Results Driven Digital Strategy: Customers and Corporations’ Digi...
Designing a Results Driven Digital Strategy: Customers and Corporations’ Digi...
 

Recently uploaded

FULL ENJOY Call Girls In Mayur Vihar Delhi Contact Us 8377087607
FULL ENJOY Call Girls In Mayur Vihar Delhi Contact Us 8377087607FULL ENJOY Call Girls In Mayur Vihar Delhi Contact Us 8377087607
FULL ENJOY Call Girls In Mayur Vihar Delhi Contact Us 8377087607dollysharma2066
 
Low Rate Call Girls Kolkata Avani 🤌 8250192130 🚀 Vip Call Girls Kolkata
Low Rate Call Girls Kolkata Avani 🤌  8250192130 🚀 Vip Call Girls KolkataLow Rate Call Girls Kolkata Avani 🤌  8250192130 🚀 Vip Call Girls Kolkata
Low Rate Call Girls Kolkata Avani 🤌 8250192130 🚀 Vip Call Girls Kolkataanamikaraghav4
 
VIP Call Girls Kolkata Ananya 🤌 8250192130 🚀 Vip Call Girls Kolkata
VIP Call Girls Kolkata Ananya 🤌  8250192130 🚀 Vip Call Girls KolkataVIP Call Girls Kolkata Ananya 🤌  8250192130 🚀 Vip Call Girls Kolkata
VIP Call Girls Kolkata Ananya 🤌 8250192130 🚀 Vip Call Girls Kolkataanamikaraghav4
 
定制(AUT毕业证书)新西兰奥克兰理工大学毕业证成绩单原版一比一
定制(AUT毕业证书)新西兰奥克兰理工大学毕业证成绩单原版一比一定制(AUT毕业证书)新西兰奥克兰理工大学毕业证成绩单原版一比一
定制(AUT毕业证书)新西兰奥克兰理工大学毕业证成绩单原版一比一Fs
 
VIP Kolkata Call Girls Salt Lake 8250192130 Available With Room
VIP Kolkata Call Girls Salt Lake 8250192130 Available With RoomVIP Kolkata Call Girls Salt Lake 8250192130 Available With Room
VIP Kolkata Call Girls Salt Lake 8250192130 Available With Roomgirls4nights
 
Chennai Call Girls Porur Phone 🍆 8250192130 👅 celebrity escorts service
Chennai Call Girls Porur Phone 🍆 8250192130 👅 celebrity escorts serviceChennai Call Girls Porur Phone 🍆 8250192130 👅 celebrity escorts service
Chennai Call Girls Porur Phone 🍆 8250192130 👅 celebrity escorts servicesonalikaur4
 
定制(Lincoln毕业证书)新西兰林肯大学毕业证成绩单原版一比一
定制(Lincoln毕业证书)新西兰林肯大学毕业证成绩单原版一比一定制(Lincoln毕业证书)新西兰林肯大学毕业证成绩单原版一比一
定制(Lincoln毕业证书)新西兰林肯大学毕业证成绩单原版一比一Fs
 
VIP Kolkata Call Girl Dum Dum 👉 8250192130 Available With Room
VIP Kolkata Call Girl Dum Dum 👉 8250192130  Available With RoomVIP Kolkata Call Girl Dum Dum 👉 8250192130  Available With Room
VIP Kolkata Call Girl Dum Dum 👉 8250192130 Available With Roomdivyansh0kumar0
 
Git and Github workshop GDSC MLRITM
Git and Github  workshop GDSC MLRITMGit and Github  workshop GDSC MLRITM
Git and Github workshop GDSC MLRITMgdsc13
 
Russian Call Girls in Kolkata Samaira 🤌 8250192130 🚀 Vip Call Girls Kolkata
Russian Call Girls in Kolkata Samaira 🤌  8250192130 🚀 Vip Call Girls KolkataRussian Call Girls in Kolkata Samaira 🤌  8250192130 🚀 Vip Call Girls Kolkata
Russian Call Girls in Kolkata Samaira 🤌 8250192130 🚀 Vip Call Girls Kolkataanamikaraghav4
 
Sushant Golf City / best call girls in Lucknow | Service-oriented sexy call g...
Sushant Golf City / best call girls in Lucknow | Service-oriented sexy call g...Sushant Golf City / best call girls in Lucknow | Service-oriented sexy call g...
Sushant Golf City / best call girls in Lucknow | Service-oriented sexy call g...akbard9823
 
定制(UAL学位证)英国伦敦艺术大学毕业证成绩单原版一比一
定制(UAL学位证)英国伦敦艺术大学毕业证成绩单原版一比一定制(UAL学位证)英国伦敦艺术大学毕业证成绩单原版一比一
定制(UAL学位证)英国伦敦艺术大学毕业证成绩单原版一比一Fs
 
定制(Management毕业证书)新加坡管理大学毕业证成绩单原版一比一
定制(Management毕业证书)新加坡管理大学毕业证成绩单原版一比一定制(Management毕业证书)新加坡管理大学毕业证成绩单原版一比一
定制(Management毕业证书)新加坡管理大学毕业证成绩单原版一比一Fs
 
定制(CC毕业证书)美国美国社区大学毕业证成绩单原版一比一
定制(CC毕业证书)美国美国社区大学毕业证成绩单原版一比一定制(CC毕业证书)美国美国社区大学毕业证成绩单原版一比一
定制(CC毕业证书)美国美国社区大学毕业证成绩单原版一比一3sw2qly1
 
Gram Darshan PPT cyber rural in villages of india
Gram Darshan PPT cyber rural  in villages of indiaGram Darshan PPT cyber rural  in villages of india
Gram Darshan PPT cyber rural in villages of indiaimessage0108
 
VIP Kolkata Call Girl Alambazar 👉 8250192130 Available With Room
VIP Kolkata Call Girl Alambazar 👉 8250192130  Available With RoomVIP Kolkata Call Girl Alambazar 👉 8250192130  Available With Room
VIP Kolkata Call Girl Alambazar 👉 8250192130 Available With Roomdivyansh0kumar0
 
Complet Documnetation for Smart Assistant Application for Disabled Person
Complet Documnetation   for Smart Assistant Application for Disabled PersonComplet Documnetation   for Smart Assistant Application for Disabled Person
Complet Documnetation for Smart Assistant Application for Disabled Personfurqan222004
 

Recently uploaded (20)

FULL ENJOY Call Girls In Mayur Vihar Delhi Contact Us 8377087607
FULL ENJOY Call Girls In Mayur Vihar Delhi Contact Us 8377087607FULL ENJOY Call Girls In Mayur Vihar Delhi Contact Us 8377087607
FULL ENJOY Call Girls In Mayur Vihar Delhi Contact Us 8377087607
 
Low Rate Call Girls Kolkata Avani 🤌 8250192130 🚀 Vip Call Girls Kolkata
Low Rate Call Girls Kolkata Avani 🤌  8250192130 🚀 Vip Call Girls KolkataLow Rate Call Girls Kolkata Avani 🤌  8250192130 🚀 Vip Call Girls Kolkata
Low Rate Call Girls Kolkata Avani 🤌 8250192130 🚀 Vip Call Girls Kolkata
 
VIP Call Girls Kolkata Ananya 🤌 8250192130 🚀 Vip Call Girls Kolkata
VIP Call Girls Kolkata Ananya 🤌  8250192130 🚀 Vip Call Girls KolkataVIP Call Girls Kolkata Ananya 🤌  8250192130 🚀 Vip Call Girls Kolkata
VIP Call Girls Kolkata Ananya 🤌 8250192130 🚀 Vip Call Girls Kolkata
 
定制(AUT毕业证书)新西兰奥克兰理工大学毕业证成绩单原版一比一
定制(AUT毕业证书)新西兰奥克兰理工大学毕业证成绩单原版一比一定制(AUT毕业证书)新西兰奥克兰理工大学毕业证成绩单原版一比一
定制(AUT毕业证书)新西兰奥克兰理工大学毕业证成绩单原版一比一
 
VIP Kolkata Call Girls Salt Lake 8250192130 Available With Room
VIP Kolkata Call Girls Salt Lake 8250192130 Available With RoomVIP Kolkata Call Girls Salt Lake 8250192130 Available With Room
VIP Kolkata Call Girls Salt Lake 8250192130 Available With Room
 
Chennai Call Girls Porur Phone 🍆 8250192130 👅 celebrity escorts service
Chennai Call Girls Porur Phone 🍆 8250192130 👅 celebrity escorts serviceChennai Call Girls Porur Phone 🍆 8250192130 👅 celebrity escorts service
Chennai Call Girls Porur Phone 🍆 8250192130 👅 celebrity escorts service
 
定制(Lincoln毕业证书)新西兰林肯大学毕业证成绩单原版一比一
定制(Lincoln毕业证书)新西兰林肯大学毕业证成绩单原版一比一定制(Lincoln毕业证书)新西兰林肯大学毕业证成绩单原版一比一
定制(Lincoln毕业证书)新西兰林肯大学毕业证成绩单原版一比一
 
VIP Kolkata Call Girl Dum Dum 👉 8250192130 Available With Room
VIP Kolkata Call Girl Dum Dum 👉 8250192130  Available With RoomVIP Kolkata Call Girl Dum Dum 👉 8250192130  Available With Room
VIP Kolkata Call Girl Dum Dum 👉 8250192130 Available With Room
 
Git and Github workshop GDSC MLRITM
Git and Github  workshop GDSC MLRITMGit and Github  workshop GDSC MLRITM
Git and Github workshop GDSC MLRITM
 
Hot Sexy call girls in Rk Puram 🔝 9953056974 🔝 Delhi escort Service
Hot Sexy call girls in  Rk Puram 🔝 9953056974 🔝 Delhi escort ServiceHot Sexy call girls in  Rk Puram 🔝 9953056974 🔝 Delhi escort Service
Hot Sexy call girls in Rk Puram 🔝 9953056974 🔝 Delhi escort Service
 
Russian Call Girls in Kolkata Samaira 🤌 8250192130 🚀 Vip Call Girls Kolkata
Russian Call Girls in Kolkata Samaira 🤌  8250192130 🚀 Vip Call Girls KolkataRussian Call Girls in Kolkata Samaira 🤌  8250192130 🚀 Vip Call Girls Kolkata
Russian Call Girls in Kolkata Samaira 🤌 8250192130 🚀 Vip Call Girls Kolkata
 
Sushant Golf City / best call girls in Lucknow | Service-oriented sexy call g...
Sushant Golf City / best call girls in Lucknow | Service-oriented sexy call g...Sushant Golf City / best call girls in Lucknow | Service-oriented sexy call g...
Sushant Golf City / best call girls in Lucknow | Service-oriented sexy call g...
 
定制(UAL学位证)英国伦敦艺术大学毕业证成绩单原版一比一
定制(UAL学位证)英国伦敦艺术大学毕业证成绩单原版一比一定制(UAL学位证)英国伦敦艺术大学毕业证成绩单原版一比一
定制(UAL学位证)英国伦敦艺术大学毕业证成绩单原版一比一
 
定制(Management毕业证书)新加坡管理大学毕业证成绩单原版一比一
定制(Management毕业证书)新加坡管理大学毕业证成绩单原版一比一定制(Management毕业证书)新加坡管理大学毕业证成绩单原版一比一
定制(Management毕业证书)新加坡管理大学毕业证成绩单原版一比一
 
Call Girls In South Ex 📱 9999965857 🤩 Delhi 🫦 HOT AND SEXY VVIP 🍎 SERVICE
Call Girls In South Ex 📱  9999965857  🤩 Delhi 🫦 HOT AND SEXY VVIP 🍎 SERVICECall Girls In South Ex 📱  9999965857  🤩 Delhi 🫦 HOT AND SEXY VVIP 🍎 SERVICE
Call Girls In South Ex 📱 9999965857 🤩 Delhi 🫦 HOT AND SEXY VVIP 🍎 SERVICE
 
定制(CC毕业证书)美国美国社区大学毕业证成绩单原版一比一
定制(CC毕业证书)美国美国社区大学毕业证成绩单原版一比一定制(CC毕业证书)美国美国社区大学毕业证成绩单原版一比一
定制(CC毕业证书)美国美国社区大学毕业证成绩单原版一比一
 
Gram Darshan PPT cyber rural in villages of india
Gram Darshan PPT cyber rural  in villages of indiaGram Darshan PPT cyber rural  in villages of india
Gram Darshan PPT cyber rural in villages of india
 
VIP Kolkata Call Girl Alambazar 👉 8250192130 Available With Room
VIP Kolkata Call Girl Alambazar 👉 8250192130  Available With RoomVIP Kolkata Call Girl Alambazar 👉 8250192130  Available With Room
VIP Kolkata Call Girl Alambazar 👉 8250192130 Available With Room
 
Complet Documnetation for Smart Assistant Application for Disabled Person
Complet Documnetation   for Smart Assistant Application for Disabled PersonComplet Documnetation   for Smart Assistant Application for Disabled Person
Complet Documnetation for Smart Assistant Application for Disabled Person
 
Model Call Girl in Jamuna Vihar Delhi reach out to us at 🔝9953056974🔝
Model Call Girl in  Jamuna Vihar Delhi reach out to us at 🔝9953056974🔝Model Call Girl in  Jamuna Vihar Delhi reach out to us at 🔝9953056974🔝
Model Call Girl in Jamuna Vihar Delhi reach out to us at 🔝9953056974🔝
 

Banking

  • 1. Banking : Design your APIs to be Context aware Success in today’s data-oriented business environment requires being able to think about how API, Data & Analytic concepts apply to particular business problems. Data and data science can provide value in the context of Bank’s business & competitor strategy and to meet demands of customer experience. Google Finance Australia reported that majority of Internet users in Australia start their search looking for a mortgage online, and spend between six and 11 hours researching the mortgage before they select a potential provider and reach out to them. When they do contact a mortgage provider, increasingly it will be via the website, rather than by walking into a branch or phoning the call center. The myth that customers require a branch to buy a mortgage is just that, a myth. It is more than likely that the majority of mortgages sold today were actually selected by the customer online, and the branch was just a step in the application process. It has become clear that Bill Gates’ quote of old about us needing banking, but not banks, has never been more likely an outcome of the technology and behavioral-led disruption we find ourselves in today. Banking was no longer defined or hemmed in by a physical distribution network, or physical artifacts. The banking system emerging out of the global crisis would be one that was highly utilitarian, pervasive, mobile, and seamlessly engineered to work when and where we needed it. In the end, many of the banks that were household names during the 20th century will simply cease to exist as they are displaced or consolidated in the system-wide disruption that is soon coming. New players are emerging now that are taking ownership of the customer experience through revolutionary new techniques that attack the fringes of “banking” and payments. The new value is not being a “bank”. The new value is understanding the context banking products and services play in the life of the consumer, and delivering those products and services on that basis. The customer will expect and demand this type of integration. The customer will have no patience for a bank that insists he comes to its “place” before he can have access to banking. Mobile payment is one of the most disruptive areas in the Banking segment. Whatever bank or company operates the mobile-money system will be able to leverage the data for its own purposes (with the right partner, a bank, for example, could offer consumers discounts on a vacation to a favorite destination in addition to offering a savings account to let consumers hoard money for the trip). There are a bunch of start-ups emerging right now that use such context data to target consumers with ads that are highly relevant. However, matching this to previous card usage data or to purchases such as an airline ticket for future travel makes the pool of data available from within a bank highly sought after. Cardlytics is a well-known provider in the space. Cardlytics essentially provides an offer-matching capability and mines card data on an aggregated basis to match merchant codes with offers that
  • 2. might be of interest to the bank customer. This, of course, requires that the bank have a relationship with multiple merchants so that offers can be successfully served to a customer. Some banking products are highly contextual. In fact, many day-to-day banking products are. Here are some examples of the context of core retail banking products: 1. Mortgage (at a potential home or with a realtor) 2. Car lease or loan (at a car dealership or when purchasing a car) 3. Credit card (potentially at a mall, or getting ready for a trip overseas) 4. Travel insurance (when booking a holiday, or at the airport) 5. Student loan (when enrolling at college or university) The opportunity lies in using this data and extrapolating a customer opportunity with respect to banking. This requires you to know your customers well enough at a minimum to know what offers are relevant to them, and what merchants, locations, etc., their frequency. This data can, of course, be gleaned from existing card usage analytics, and cross-referencing with mobile data.
  • 3. Say a customer has previously used his credit card to shop at Myer’s. A bank might pitch him a discount on his next purchase at David Jones instead. He won’t need to print a coupon to redeem an offer, he’d just swipe his existing credit or debit card , and receive the discounts as a statement credit after he makes a purchase. Predictive & Cognitive selling, Triggered offers Distributed point of impact As technology continues to progress, point-of-sale equipment will also continue to migrate to the cloud, Internet of Things devices or integrate with our app phone’s capabilities. So the point of impact goes beyond simply the point of sale or a Branch. It includes wherever the sales journey might be initiated with a possibility of closure. A classic example would be CBA’s Albert which runs on open Pi android platform which will have an open architecture, giving you the opportunity to develop new and innovative apps for businesses, across a range of industries. With respect to new Banking principles, push based marketing needs to change to pull based, point of impact and service selling. Segmentation and customer intelligence through behavioral analytic is the key to this type of messaging capability. More than simply segmenting customers, banks will need to understand how customers behave, what they do, how often, and through which channels. Currently banks don’t even understand which transactions go through which channel for existing customers. Marketing must understand the why and how, and ask customers what they want. Some banks probably imagine that they do this already, but most of them certainly don’t use that data effectively to sell or match offers to individual customers. Design & Model your APIs to be Context aware Under the umbrella of big analytics, context analytics denotes the incremental context accumulators that can detect like and related entities cross large, sparse, and disparate collections of data. The data collection includes both current and historical data. The completeness of the data context enables analytics to correctly assess entities of interest. Creating data within the appropriate context delivers higher quality models. Higher quality
  • 4. models applied to contextually-correct data can lead to better mission decisions and better outcomes. >>> Understand the API value chain & identify APIs What business assets are going to be provided through the API? What information, services, and products will be available? Of what potential value could these assets be to others? How will the owner of the business assets benefit from the API? For a mortgage API, the assets are the mortgage data and the points of interest and impact. >>> Identify channel centric attributes to build the context For example geographical location information could be an attribute for mobile advertisement context >>> Identify attributes which can provide individualized customer experience >>> Identify at-risk customer behavioral patterns & attributes before they are likely to churn >>> Identify influencing factors in a time-sequenced historical data at scale. Simple classification techniques doesn’t solve all business problems. >>> Group and classify of products as they pertain to multi channel interactions Simple Products – No advice required – Credit Card, Current/Savings Account, Personal Loan, General Insurance etc. Informed Purchase – Advice sometimes required – Mortgage, Life insurance, Overdraft etc. Complex Products – Specialist advice required – Securities, Investment Funds, Mutual Funds, Deriatives, Structured Products etc. >>> Build Machine learning and analytic capabilities at API layer and leverage classification techniques to identify and build patterns. Build your own prediction APIs General concepts for actually extracting knowledge from APIs, which undergird the vast array of data science techniques and predictive analytic tools. —- Identify informative attributes — those that correlate with or give us information about an unknown quantity of interest —- Fitting a numeric function model to data by choosing an objective and finding a set of parameters based on that objective —- Controlling complexity is necessary to find a good trade-off between generalization and over- fitting (Try to identify a data set, leverage existing models like IFW or IFX), Nobel Laureate Ronald Coase said, “If you torture the data long enough, it will confess.” —- Calculating similarity between objects described by data >>> Design & expose prediction APIs for App builders. Ultimately the prediction APIs needs to be exposed to API developer to build smarter and predictive apps. Attracting new customers is much more expensive than retaining existing ones, so a good deal of marketing budget should be allocated to prevent churn. It is easier to engineer the API data to apply the existing data mining tools than to match existing tools.
  • 5. Opportunities Cross-sell to existing customers Create point of impact marketing campaigns & personalized experiences based on context Predictive & Cognitive selling e.g. simple event triggered offers >>> Significant Balance change (Investment Needs) : Customer’s account holdings increased by large or significant amount ($ 200k to $ 500k, $ 500k +). Lead delivered to banker next day who contacts customer with offer e.g. a financial planning appointment. >>> Large Transactions (Withdrawals/Deposits) : A transaction out of the ordinary for that customer, e.g. greater than average for last three months. >>> Term Deposits (Renewals/ Upgrades) : Relationship Manager contacts customer to renew or increase deposit, perhaps offering better rate through a structured product or something similar. - See more at: http://blog.nexright.com/api-management/banking-design-apis-context-aware/ Visit: http://nexright.com/