SlideShare une entreprise Scribd logo
1  sur  48
Télécharger pour lire hors ligne
Transforming Financial Services with Event
Streaming Data
Ananda Bose - Solution Engineering Head - Asia
Ananda Bose - Solutions Engineering
Head - Confluent, Asia
● 20+ years of providing consulting, advisory
services to financial institutions in emerging
markets.
● Confluent, Pivotal, Accenture, Oracle & IBM
● Specialise in application modernization
techniques and getting better at database
modernisation 😁.
● Current role - Manage a team of extraordinary
solutions engineers across Asia
About me
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc.
Banks Have Become Software
3
And the adoption trajectory is exponential….
4
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc.
Biggest Inhibitor to this adoption is that
Enterprise Data Architecture Is A GIANT MESS
5
LINE OF BUSINESSES ECOSYSTEM PUBLIC CLOUD
Let’s rewind a bit and find out
how we got there …..
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc.
Mainframe
3270
7
1960s - 1990
Your Legacy Infrastructure Is Not Fit For The
Future
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc.
3270
Branch
Teller
System
Branch
Server
ATM
Tandem - Base24
Website
Mainframe MQ
ISO 8583
60’s - 90s
Your Legacy Infrastructure Is Not Fit For The
Future
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. 9
ATM
Tandem - Base24
Contact
Center
Core
enabled
branches
Internet
Banking
Mobile
Banking
Account Origination Enterprise Data Warehousing
Liquidity Management Customer 360 CRM
Doc Mgmt. Campaign Mgmt. Business Analytics
ESB/Integration Layer
Databases Mainframes MQs
SOA
Layer
First decade of 2000s
...
Your Legacy Infrastructure Is Not Fit For The
Future
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc.
Second decade of 2000s
10
ATM
Tandem - Base24
Contact
Center
Core
enabled
branches
Internet
Banking
Mobile
Banking
Microservices
Ecosystem
External API layer
Customer
microservice
Product
Notification
Cross-Sell
Payment
Personalisation
Customer
360
Gov
Services
...
ESB Layer Streaming Caching NoSQL
Databases Mainframes MQs Data Lake
...
Your Legacy Infrastructure Is Not Fit For The
Future
A quick segway….. Intro to
event streaming
Old world: Two popular locations for data
Operational databases Relational data warehouse
DB
DB
DB
DB DWH
App App App App
search
Hadoop
DWH
monitoring security
MQ MQ
cache
cache
Old world: scale or timely data, pick one
real-time
scale
batch
EAI
ETL
real-time BUT
not scalable
scalable BUT
batch
new world: streaming, real-time and scalable
real-time
scale
EAI
ETL
Streaming
Platform
real-time BUT
not scalable
real-time
AND scalable
scalable BUT
batch
batch
app logs app logs
app logs
app logs
#1: Extract as
unstructured text
#2: Transform1 = data cleansing
= “what is a product view”
#4: Transform2 =
drop PII fields”
#3: Load into DWH
DWH
An example
#1: Extract as
unstructured text
#2: Transform1 = data cleansing =
“what is a product view”
#4: Transform2 =
drop PII fields”
DWH
#2: Transform1 =
data cleansing =
“what is a product view”
#4: Transform2 = drop PII fields”
Cassandra
#1: Extract as
unstructured text
again
#3: Load cleansed data
#3: Load cleansed data
Introducing a change
#1: Extract as
structured product
view events
#2: Transforms = drop
PII fields”
#4:.1 Load product
view stream
#4: Load
filtered product
View stream
DWH
Cassandra
Streaming
Platform
#4.2 Load
filtered product
view stream
With Confluent ….
How Confluent Event Streaming Works
Datastores
Business
/ Custom Apps
PoS Systems
SaaS Apps
ERP Systems
Middleware
Systems
Machine data
ML Engines
Ingest and
aggregate events
from everywhere
Join, enrich, transform and
analyze data in real-time
Store and persist events in a
highly available and scalable
platform
BI Tools
Standardize schemas to
ensure data compatibility
to all downstream apps
SIEM and
Observability
tools
Data lakes &
warehouses
Real-time alerts
and dashboards
Convert raw events into clean, usable data Unlock value
Bring all your data together
in real-time
Integrate with 100+
pre-built connectors
Applications
Confluent Completes Apache Kafka
Freedom of choice to deploy
how and where you want —
cloud, on-prem, hybrid, or
multi-cloud
Connect across key data
sources, sinks, and apps
Elastically scale to store
and process massive
amounts of data
Easiest way to build stream
processing applications
Secure sensitive events
to keep your business
processes and apps
compliant
Increase operational
efficiency while keeping
costs as low as possible
20
Top 6 Financial Services Use
Cases
Top 6 Financial Services Use Cases for Event
Streaming
Better Customer
Experiences
Unlocking the Value
in your Mainframes
and Core Systems
Payments
Everywhere
Open
Banking
Security
and Fraud
Regulatory
Compliance
...
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc.
Businesses Have Transformed With Confluent
23
Drive personalized
experience through
data while staying
compliant with
industry regulations
Reimagine Customer
Experiences
Enable big data analytics
for real-time credit
scoring, fraud detection,
and merchant
assessment services
Secure the
Enterprise
Power a real-time
automated intelligent
system to enable a unified
digital experience across
discrete lines of business
Democratize
Data Access
Build a more complete
trading platform meeting
stringent response times
and regulatory
compliance
Innovate
with Speed
Creating unique customer
experiences
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc.
Integrate All Your Data For 360o
View And
Personalized Engagement
Downstream
datastores
Ecosystem
integrations
Customer
segmentation
CUSTOMER
BEHAVIOR
CORE
SYSTEMS
Social
ATM
Call Center
Website
Mobile
Payments
Wealth
Management
Retail
Events
Wholesale
Events
Market Data
Trade Data
Customer
Com
Real Time Offers in Retail/Consumer Banking - Sample examples
Line of Business Types of Offers Generalised benefits
Credit Card Business 1. Real-time location based offers
2. Real-time increase in credit limit
3. EPP plans at POS or e-POS
4. E-commerce tranx and payment plan
1. Increase in uptake of merchant offers.
2. Increase in revenue from merchant promos
3. Increase in revenues from more activity on
credit cards
4. Increase in revenue from merchant fees.
5. Increase in NII
Assets 1. Pre-login loan/mortgage pages to
actual conversion
2. Open API based bundled offers on
lending plus insurance
1. Telesales gets to work on hot leads and
higher conversion %.
2. Higher fee based income due to insurance
bundling.
3. Unsecured lending marketplace participation
especially for e-commerce transactions.
4. Increase in NII
Liabilities 1. Real time fee based income from
upsell/cross-sell offers on mobile and
internet channels.
2. Increase loyalty based transactions
3. Capture brokerage and FX drop-offs
in real-time and leverage other
channels to capture opportunity
1. Increase in fee based income
2. Higher NPS and also better engagement
scores.
3. Covid allowed for higher FX and brokerage
fees
4. Lower account origination charges
High level logical design for real time offers (Illustrative)
Core Banking Systems
Credit Card Systems
CIF
Wealth mgmt systems
MQ/CDC
MQ/CDC
MQ/CDC
REST/json
Data Lake/ Data
Warehouse
Merchant System/Static
Data
Model build &
analytics system
Marketing system -
Hosting the offer
palate
Microservices
Consumer Banking
Apps
Digital Services
APIs
Analytics
Data Platform
POS machines
Transaction
event capture
Create Offer
Update Offer
take-up/ failure
Cache/ Persistent Store - Capture
timestamp, privacy, identify customer segment,
identify earlier offer given, identifity location
KSQL
REST/json
28
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc.
“We need to shift
our thinking from
everything-at-rest to
everything-in-motion.”
Director of Citi
Rewriting customer experiences
Challenge
Improve the customer experience through data while
staying compliant with industry regulations.
Solution
Implemented Confluent to stream data in real-time,
migrate to an event-based architecture and embark on a
microservices transformation.
Results
● Greatly reduced costs
● Increased efficiency in application building
● Lowered anomaly detection time from weeks to
seconds
● Implemented data reuse across teams for relevant
business insights
● Higher quality, faster and scalable customer services
“There isn't another product that competes with Confluent
Platform. Streaming data as events enables completely new
ways for solving problems at scale.”
— Mike Krolnik, Head of Engineering, Enterprise Cloud
Unlocking the value of
mainframes and Core Systems
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc.
Current Core integration architectures
App App App
!
! Outdated technologies
! Expensive to maintain
! No clear path to migration
Mainframe Oracle SQL
! Built for low volume high value
trnx
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc.
A different way to integrate Core Systems
App App App
!
1
1 Send events from applications
directly to Kafka using JMS
connectors.
Mainframe Oracle SQL
1
2 For applications which allow
use out of the box supported
connectors - MQ, Qlik CDC,
Oracle CDC and IIDR to convert
data at rest to data at motion.
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc.
Migrate Over Time With Our Support
App App App
1
1 Send events from applications
directly to Kafka
2 Eliminate legacy data
infrastructure & make your data
architecture modern.
Unify and simplify
✓ Lower TCO
✓ Future-proof architecture
✓
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc.
Payment
Gateway
Instant Payments Anywhere, Anytime: Clearing &
Settlement
Branch
Mobile
Phone
Internet
Service
App
Channels
Settlement Service
Payment Gateway
Clearing
Clearing Request
Clearing Notification
Settlement Request
Settlement Notification
Balance Report
Settlement Notification
Balance Report
Payer Payee
Payment
Gateway
Branch
Mobile
Phone
Internet
Service
App
Channels
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc.
Adjustments
Instant Payments Anywhere, Anytime:
Reconciliation
Customer makes
payment
1
Calculate Differences
3
Update Balance
4
5
Bank File
APP
Bank statement
2
Cash book
2
Challenge
Rapidly transform digital services to meet customers’ rising
expectations for highly secure, personalized and valuable
experiences.
Solution
With the ability to combine real-time results with historical
events, Confluent is leading the charge in helping enterprises
discover new services and modernize existing ones with the
power of event streaming.
Results
● Credit Suisse Names Confluent a Disruptive Technology
Award Winner
“Enterprise IT is under immense pressure to rapidly transform
digital services to meet customers’ rising expectations for highly
secure, personalized and valuable experiences. With the ability to
combine real-time results with historical events, Confluent is
leading the charge in helping enterprises discover new services
and modernize existing ones with the power of event streaming.”
— David Patten, CIO of Investment Banking Capital Markets 37
Security & Fraud Management
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc.
Enable Real-time Fraud Scoring And Detection
Payments
Credit Card
Transactions
Debit Card
Transactions
Credit Card
Applications
Mortgage
Applications
Real-time
Fraud Scoring
ML Model
Enhancement
Fraud Case
Management
Historical
Analysis
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc.
Deliver Contextually Rich Data To Your Security
Tools To Reduce False Positives And Costs
40
Application Logs
Network Logs
Database logs
OS Logs
Collect all data sources
into Confluent Platform
Filter events streams
and only send priority
events to SIEM
Shorten SIEM retention
window
Offload fast query
and search
Send high
priority data
to SIEM
Send all data
to S3/HDFS for
cold storage
Open up data access
to new use cases
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc.
Build Real-time Dashboard And Reports For
Compliance, Audit And Monitoring
41
Messaging
Systems
Mainframe
Databases
Big Data / Analytics Systems
SQL & NoSQL
Databases
Visualization
Tools
Regulatory
reporting
Real-time
dashboards
In-flight stream
processing
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc.
“We look at events as running our
business. Business people within
our organization want to be able to
react to events—and oftentimes it's
a combination of events.”
VP of Streaming Data Engineering
Powering real-time analytics for credit
scoring, fraud detection, and merchant
assessment services
Challenge
Drive a digital transformation at the largest bank in Indonesia to
improve the bank’s market position and increase financial inclusion
across the country.
Solution
Use Confluent Platform and Apache Kafka to deploy an
event-driven microservices architecture that powers big data
analytics for real-time credit scoring, fraud detection, and merchant
assessment services.
Results
● Fraud detection performed in real-time
● Loan disbursement times cut from two weeks to two minutes
● ISO-certified open API created
● Loan defaults predicted proactively; NPL at 0%
“Confluent Platform and Apache Kafka, by enabling us to build and
deploy real-time event-driven systems for credit scoring, have
helped BRI become the most profitable bank in Indonesia.”
— Kaspar Situmorang, Executive Vice President
43
Solace Environment OATS Reporting Layer
Tibco Environment
Challenge
Provide a reliable, robust and
scalable solution to migrate from
legacy systems and OATS
reporting, while handling high
throughput from trading
systems
Solution
Use Confluent Platform to
modernize messaging platform,
ingest high-volume trade data,
filter and enrich in-flight and
integrate with Spark, Elastic,
HDFS and JDBC for real-time
reports
Top 5 US
Global Bank
Solace Queue (N)
Qlik
HTML
Frontend
tool
Tibco EMS
Solace Topics (100s)
Confluent
JMS Connector
Confluent Kafka
Confluent
HDFS Connector
In-flight stream
processing
Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc.
I N V E S T M E N T & T I M E
V
A
L
U
E
3
4
5
1
2
Event Streaming is a Journey...
Early Interest
Central Nervous
System
Mission critical,
but disparate
LOBs
Identify a project
Mission-critical,
connected LOBs
Projects Platform
Summary
46
Event Streaming is
a new category of
data infrastructure
Event Streaming
is a competitive
requirement
Confluent is
your partner for
success
Win US$ 100 Amazon Vouchers
47
Complete a 2 minute survey and 3 winners will
receive AMAZON Vouchers @ US $100
Announcement to all respondents will be done on
Monday, March 1st.
Click here :
https://www.surveymonkey.com/r/Confluent_FSI
or scan the code ! THANK YOU
Transforming Financial Services with Event Streaming Data

Contenu connexe

Tendances

Streamline Data Governance with Egeria: The Industry's First Open Metadata St...
Streamline Data Governance with Egeria: The Industry's First Open Metadata St...Streamline Data Governance with Egeria: The Industry's First Open Metadata St...
Streamline Data Governance with Egeria: The Industry's First Open Metadata St...
DataWorks Summit
 

Tendances (20)

Exposing and Controlling Kafka Event Streaming with Kong Konnect Enterprise |...
Exposing and Controlling Kafka Event Streaming with Kong Konnect Enterprise |...Exposing and Controlling Kafka Event Streaming with Kong Konnect Enterprise |...
Exposing and Controlling Kafka Event Streaming with Kong Konnect Enterprise |...
 
Temenos Architecture for Armenia
Temenos Architecture for ArmeniaTemenos Architecture for Armenia
Temenos Architecture for Armenia
 
Stream Processing with Apache Kafka and .NET
Stream Processing with Apache Kafka and .NETStream Processing with Apache Kafka and .NET
Stream Processing with Apache Kafka and .NET
 
Benefits of Stream Processing and Apache Kafka Use Cases
Benefits of Stream Processing and Apache Kafka Use CasesBenefits of Stream Processing and Apache Kafka Use Cases
Benefits of Stream Processing and Apache Kafka Use Cases
 
Top 5 Event Streaming Use Cases for 2021 with Apache Kafka
Top 5 Event Streaming Use Cases for 2021 with Apache KafkaTop 5 Event Streaming Use Cases for 2021 with Apache Kafka
Top 5 Event Streaming Use Cases for 2021 with Apache Kafka
 
Choreo - Build unique digital experiences on WSO2's platform, secured by Etho...
Choreo - Build unique digital experiences on WSO2's platform, secured by Etho...Choreo - Build unique digital experiences on WSO2's platform, secured by Etho...
Choreo - Build unique digital experiences on WSO2's platform, secured by Etho...
 
MuleSoft Online Meetup - MuleSoft integration with snowflake and kafka
MuleSoft Online Meetup - MuleSoft integration with snowflake and kafkaMuleSoft Online Meetup - MuleSoft integration with snowflake and kafka
MuleSoft Online Meetup - MuleSoft integration with snowflake and kafka
 
Service Mesh - Observability
Service Mesh - ObservabilityService Mesh - Observability
Service Mesh - Observability
 
Kafka Tutorial - introduction to the Kafka streaming platform
Kafka Tutorial - introduction to the Kafka streaming platformKafka Tutorial - introduction to the Kafka streaming platform
Kafka Tutorial - introduction to the Kafka streaming platform
 
Cloud-Native Observability
Cloud-Native ObservabilityCloud-Native Observability
Cloud-Native Observability
 
When NOT to use Apache Kafka?
When NOT to use Apache Kafka?When NOT to use Apache Kafka?
When NOT to use Apache Kafka?
 
Microservices Architecture - Cloud Native Apps
Microservices Architecture - Cloud Native AppsMicroservices Architecture - Cloud Native Apps
Microservices Architecture - Cloud Native Apps
 
eKYC POC on Azure
eKYC POC on Azure eKYC POC on Azure
eKYC POC on Azure
 
Real-Life Use Cases & Architectures for Event Streaming with Apache Kafka
Real-Life Use Cases & Architectures for Event Streaming with Apache KafkaReal-Life Use Cases & Architectures for Event Streaming with Apache Kafka
Real-Life Use Cases & Architectures for Event Streaming with Apache Kafka
 
Observability – the good, the bad, and the ugly
Observability – the good, the bad, and the uglyObservability – the good, the bad, and the ugly
Observability – the good, the bad, and the ugly
 
Microservices Technology Stack
Microservices Technology StackMicroservices Technology Stack
Microservices Technology Stack
 
Service Mesh with Apache Kafka, Kubernetes, Envoy, Istio and Linkerd
Service Mesh with Apache Kafka, Kubernetes, Envoy, Istio and LinkerdService Mesh with Apache Kafka, Kubernetes, Envoy, Istio and Linkerd
Service Mesh with Apache Kafka, Kubernetes, Envoy, Istio and Linkerd
 
Streamline Data Governance with Egeria: The Industry's First Open Metadata St...
Streamline Data Governance with Egeria: The Industry's First Open Metadata St...Streamline Data Governance with Egeria: The Industry's First Open Metadata St...
Streamline Data Governance with Egeria: The Industry's First Open Metadata St...
 
Apache Kafka vs. Cloud-native iPaaS Integration Platform Middleware
Apache Kafka vs. Cloud-native iPaaS Integration Platform MiddlewareApache Kafka vs. Cloud-native iPaaS Integration Platform Middleware
Apache Kafka vs. Cloud-native iPaaS Integration Platform Middleware
 
CQRS and Event Sourcing
CQRS and Event Sourcing CQRS and Event Sourcing
CQRS and Event Sourcing
 

Similaire à Transforming Financial Services with Event Streaming Data

EVAM_Streaming Analytics_v1.5
EVAM_Streaming Analytics_v1.5EVAM_Streaming Analytics_v1.5
EVAM_Streaming Analytics_v1.5
John Nikolaidis
 
Artificial intelligence capabilities overview yashowardhan sowale cwin18-india
Artificial intelligence capabilities overview yashowardhan sowale cwin18-indiaArtificial intelligence capabilities overview yashowardhan sowale cwin18-india
Artificial intelligence capabilities overview yashowardhan sowale cwin18-india
Capgemini
 
IEEE-SCCPresentation.290214544
IEEE-SCCPresentation.290214544IEEE-SCCPresentation.290214544
IEEE-SCCPresentation.290214544
ypai
 

Similaire à Transforming Financial Services with Event Streaming Data (20)

Confluent & GSI Webinars series: Session 2
Confluent & GSI Webinars series: Session 2Confluent & GSI Webinars series: Session 2
Confluent & GSI Webinars series: Session 2
 
Confluent & GSI Webinars series - Session 3
Confluent & GSI Webinars series - Session 3Confluent & GSI Webinars series - Session 3
Confluent & GSI Webinars series - Session 3
 
Resume 2021 - Allen Davis - Information Tech
Resume 2021 - Allen Davis - Information TechResume 2021 - Allen Davis - Information Tech
Resume 2021 - Allen Davis - Information Tech
 
Building Serverless EDA w_ AWS Lambda (1).pptx
Building Serverless EDA w_ AWS Lambda (1).pptxBuilding Serverless EDA w_ AWS Lambda (1).pptx
Building Serverless EDA w_ AWS Lambda (1).pptx
 
EVAM_Streaming Analytics_v1.5
EVAM_Streaming Analytics_v1.5EVAM_Streaming Analytics_v1.5
EVAM_Streaming Analytics_v1.5
 
Cloud Reshaping Banking
Cloud Reshaping BankingCloud Reshaping Banking
Cloud Reshaping Banking
 
Take Action: The New Reality of Data-Driven Business
Take Action: The New Reality of Data-Driven BusinessTake Action: The New Reality of Data-Driven Business
Take Action: The New Reality of Data-Driven Business
 
Confluent Partner Tech Talk with BearingPoint
Confluent Partner Tech Talk with BearingPointConfluent Partner Tech Talk with BearingPoint
Confluent Partner Tech Talk with BearingPoint
 
Big Data Paris - A Modern Enterprise Architecture
Big Data Paris - A Modern Enterprise ArchitectureBig Data Paris - A Modern Enterprise Architecture
Big Data Paris - A Modern Enterprise Architecture
 
BSFI Technology Offerings by Value Innovation Labs
BSFI Technology Offerings by Value Innovation LabsBSFI Technology Offerings by Value Innovation Labs
BSFI Technology Offerings by Value Innovation Labs
 
Future Trends in FSI
Future Trends in FSIFuture Trends in FSI
Future Trends in FSI
 
Artificial intelligence capabilities overview yashowardhan sowale cwin18-india
Artificial intelligence capabilities overview yashowardhan sowale cwin18-indiaArtificial intelligence capabilities overview yashowardhan sowale cwin18-india
Artificial intelligence capabilities overview yashowardhan sowale cwin18-india
 
20110514 PMI San Diego Keynote
20110514 PMI San Diego Keynote20110514 PMI San Diego Keynote
20110514 PMI San Diego Keynote
 
Webinar-Reihe: Realtime Retail SnackDCCS & Confluent 6. Oktober 2022
Webinar-Reihe: Realtime Retail SnackDCCS & Confluent 6. Oktober 2022Webinar-Reihe: Realtime Retail SnackDCCS & Confluent 6. Oktober 2022
Webinar-Reihe: Realtime Retail SnackDCCS & Confluent 6. Oktober 2022
 
IEEE-SCCPresentation.290214544
IEEE-SCCPresentation.290214544IEEE-SCCPresentation.290214544
IEEE-SCCPresentation.290214544
 
Azure Biz
Azure BizAzure Biz
Azure Biz
 
DFS21_Main Stage_Steve Butcher_Microsoft_211130
DFS21_Main Stage_Steve Butcher_Microsoft_211130DFS21_Main Stage_Steve Butcher_Microsoft_211130
DFS21_Main Stage_Steve Butcher_Microsoft_211130
 
APAC Exec Roundtable
APAC Exec Roundtable APAC Exec Roundtable
APAC Exec Roundtable
 
Cloud computing pioneers - remarkable examples 2010-11-05
Cloud computing pioneers - remarkable examples 2010-11-05Cloud computing pioneers - remarkable examples 2010-11-05
Cloud computing pioneers - remarkable examples 2010-11-05
 
ANZ C-Level Roundtable
ANZ C-Level RoundtableANZ C-Level Roundtable
ANZ C-Level Roundtable
 

Plus de confluent

Plus de confluent (20)

Catch the Wave: SAP Event-Driven and Data Streaming for the Intelligence Ente...
Catch the Wave: SAP Event-Driven and Data Streaming for the Intelligence Ente...Catch the Wave: SAP Event-Driven and Data Streaming for the Intelligence Ente...
Catch the Wave: SAP Event-Driven and Data Streaming for the Intelligence Ente...
 
Santander Stream Processing with Apache Flink
Santander Stream Processing with Apache FlinkSantander Stream Processing with Apache Flink
Santander Stream Processing with Apache Flink
 
Unlocking the Power of IoT: A comprehensive approach to real-time insights
Unlocking the Power of IoT: A comprehensive approach to real-time insightsUnlocking the Power of IoT: A comprehensive approach to real-time insights
Unlocking the Power of IoT: A comprehensive approach to real-time insights
 
Workshop híbrido: Stream Processing con Flink
Workshop híbrido: Stream Processing con FlinkWorkshop híbrido: Stream Processing con Flink
Workshop híbrido: Stream Processing con Flink
 
Industry 4.0: Building the Unified Namespace with Confluent, HiveMQ and Spark...
Industry 4.0: Building the Unified Namespace with Confluent, HiveMQ and Spark...Industry 4.0: Building the Unified Namespace with Confluent, HiveMQ and Spark...
Industry 4.0: Building the Unified Namespace with Confluent, HiveMQ and Spark...
 
AWS Immersion Day Mapfre - Confluent
AWS Immersion Day Mapfre   -   ConfluentAWS Immersion Day Mapfre   -   Confluent
AWS Immersion Day Mapfre - Confluent
 
Eventos y Microservicios - Santander TechTalk
Eventos y Microservicios - Santander TechTalkEventos y Microservicios - Santander TechTalk
Eventos y Microservicios - Santander TechTalk
 
Q&A with Confluent Experts: Navigating Networking in Confluent Cloud
Q&A with Confluent Experts: Navigating Networking in Confluent CloudQ&A with Confluent Experts: Navigating Networking in Confluent Cloud
Q&A with Confluent Experts: Navigating Networking in Confluent Cloud
 
Citi TechTalk Session 2: Kafka Deep Dive
Citi TechTalk Session 2: Kafka Deep DiveCiti TechTalk Session 2: Kafka Deep Dive
Citi TechTalk Session 2: Kafka Deep Dive
 
Build real-time streaming data pipelines to AWS with Confluent
Build real-time streaming data pipelines to AWS with ConfluentBuild real-time streaming data pipelines to AWS with Confluent
Build real-time streaming data pipelines to AWS with Confluent
 
Q&A with Confluent Professional Services: Confluent Service Mesh
Q&A with Confluent Professional Services: Confluent Service MeshQ&A with Confluent Professional Services: Confluent Service Mesh
Q&A with Confluent Professional Services: Confluent Service Mesh
 
Citi Tech Talk: Event Driven Kafka Microservices
Citi Tech Talk: Event Driven Kafka MicroservicesCiti Tech Talk: Event Driven Kafka Microservices
Citi Tech Talk: Event Driven Kafka Microservices
 
Citi Tech Talk: Messaging Modernization
Citi Tech Talk: Messaging ModernizationCiti Tech Talk: Messaging Modernization
Citi Tech Talk: Messaging Modernization
 
Citi Tech Talk: Data Governance for streaming and real time data
Citi Tech Talk: Data Governance for streaming and real time dataCiti Tech Talk: Data Governance for streaming and real time data
Citi Tech Talk: Data Governance for streaming and real time data
 
Data In Motion Paris 2023
Data In Motion Paris 2023Data In Motion Paris 2023
Data In Motion Paris 2023
 
Confluent Partner Tech Talk with Synthesis
Confluent Partner Tech Talk with SynthesisConfluent Partner Tech Talk with Synthesis
Confluent Partner Tech Talk with Synthesis
 
The Future of Application Development - API Days - Melbourne 2023
The Future of Application Development - API Days - Melbourne 2023The Future of Application Development - API Days - Melbourne 2023
The Future of Application Development - API Days - Melbourne 2023
 
The Playful Bond Between REST And Data Streams
The Playful Bond Between REST And Data StreamsThe Playful Bond Between REST And Data Streams
The Playful Bond Between REST And Data Streams
 
The Journey to Data Mesh with Confluent
The Journey to Data Mesh with ConfluentThe Journey to Data Mesh with Confluent
The Journey to Data Mesh with Confluent
 
Citi Tech Talk: Monitoring and Performance
Citi Tech Talk: Monitoring and PerformanceCiti Tech Talk: Monitoring and Performance
Citi Tech Talk: Monitoring and Performance
 

Dernier

Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native Applications
WSO2
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Safe Software
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
panagenda
 
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Victor Rentea
 

Dernier (20)

Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native Applications
 
[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf
 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
 
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
 
MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectorsMS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectors
 
presentation ICT roal in 21st century education
presentation ICT roal in 21st century educationpresentation ICT roal in 21st century education
presentation ICT roal in 21st century education
 
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ..."I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
 
Elevate Developer Efficiency & build GenAI Application with Amazon Q​
Elevate Developer Efficiency & build GenAI Application with Amazon Q​Elevate Developer Efficiency & build GenAI Application with Amazon Q​
Elevate Developer Efficiency & build GenAI Application with Amazon Q​
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 
Platformless Horizons for Digital Adaptability
Platformless Horizons for Digital AdaptabilityPlatformless Horizons for Digital Adaptability
Platformless Horizons for Digital Adaptability
 
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
 
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
 

Transforming Financial Services with Event Streaming Data

  • 1. Transforming Financial Services with Event Streaming Data Ananda Bose - Solution Engineering Head - Asia
  • 2. Ananda Bose - Solutions Engineering Head - Confluent, Asia ● 20+ years of providing consulting, advisory services to financial institutions in emerging markets. ● Confluent, Pivotal, Accenture, Oracle & IBM ● Specialise in application modernization techniques and getting better at database modernisation 😁. ● Current role - Manage a team of extraordinary solutions engineers across Asia About me
  • 3. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. Banks Have Become Software 3
  • 4. And the adoption trajectory is exponential…. 4
  • 5. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. Biggest Inhibitor to this adoption is that Enterprise Data Architecture Is A GIANT MESS 5 LINE OF BUSINESSES ECOSYSTEM PUBLIC CLOUD
  • 6. Let’s rewind a bit and find out how we got there …..
  • 7. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. Mainframe 3270 7 1960s - 1990 Your Legacy Infrastructure Is Not Fit For The Future
  • 8. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. 3270 Branch Teller System Branch Server ATM Tandem - Base24 Website Mainframe MQ ISO 8583 60’s - 90s Your Legacy Infrastructure Is Not Fit For The Future
  • 9. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. 9 ATM Tandem - Base24 Contact Center Core enabled branches Internet Banking Mobile Banking Account Origination Enterprise Data Warehousing Liquidity Management Customer 360 CRM Doc Mgmt. Campaign Mgmt. Business Analytics ESB/Integration Layer Databases Mainframes MQs SOA Layer First decade of 2000s ... Your Legacy Infrastructure Is Not Fit For The Future
  • 10. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. Second decade of 2000s 10 ATM Tandem - Base24 Contact Center Core enabled branches Internet Banking Mobile Banking Microservices Ecosystem External API layer Customer microservice Product Notification Cross-Sell Payment Personalisation Customer 360 Gov Services ... ESB Layer Streaming Caching NoSQL Databases Mainframes MQs Data Lake ... Your Legacy Infrastructure Is Not Fit For The Future
  • 11. A quick segway….. Intro to event streaming
  • 12. Old world: Two popular locations for data Operational databases Relational data warehouse DB DB DB DB DWH
  • 13. App App App App search Hadoop DWH monitoring security MQ MQ cache cache
  • 14. Old world: scale or timely data, pick one real-time scale batch EAI ETL real-time BUT not scalable scalable BUT batch
  • 15. new world: streaming, real-time and scalable real-time scale EAI ETL Streaming Platform real-time BUT not scalable real-time AND scalable scalable BUT batch batch
  • 16. app logs app logs app logs app logs #1: Extract as unstructured text #2: Transform1 = data cleansing = “what is a product view” #4: Transform2 = drop PII fields” #3: Load into DWH DWH An example
  • 17. #1: Extract as unstructured text #2: Transform1 = data cleansing = “what is a product view” #4: Transform2 = drop PII fields” DWH #2: Transform1 = data cleansing = “what is a product view” #4: Transform2 = drop PII fields” Cassandra #1: Extract as unstructured text again #3: Load cleansed data #3: Load cleansed data Introducing a change
  • 18. #1: Extract as structured product view events #2: Transforms = drop PII fields” #4:.1 Load product view stream #4: Load filtered product View stream DWH Cassandra Streaming Platform #4.2 Load filtered product view stream With Confluent ….
  • 19. How Confluent Event Streaming Works Datastores Business / Custom Apps PoS Systems SaaS Apps ERP Systems Middleware Systems Machine data ML Engines Ingest and aggregate events from everywhere Join, enrich, transform and analyze data in real-time Store and persist events in a highly available and scalable platform BI Tools Standardize schemas to ensure data compatibility to all downstream apps SIEM and Observability tools Data lakes & warehouses Real-time alerts and dashboards Convert raw events into clean, usable data Unlock value Bring all your data together in real-time Integrate with 100+ pre-built connectors Applications
  • 20. Confluent Completes Apache Kafka Freedom of choice to deploy how and where you want — cloud, on-prem, hybrid, or multi-cloud Connect across key data sources, sinks, and apps Elastically scale to store and process massive amounts of data Easiest way to build stream processing applications Secure sensitive events to keep your business processes and apps compliant Increase operational efficiency while keeping costs as low as possible 20
  • 21. Top 6 Financial Services Use Cases
  • 22. Top 6 Financial Services Use Cases for Event Streaming Better Customer Experiences Unlocking the Value in your Mainframes and Core Systems Payments Everywhere Open Banking Security and Fraud Regulatory Compliance ...
  • 23. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. Businesses Have Transformed With Confluent 23 Drive personalized experience through data while staying compliant with industry regulations Reimagine Customer Experiences Enable big data analytics for real-time credit scoring, fraud detection, and merchant assessment services Secure the Enterprise Power a real-time automated intelligent system to enable a unified digital experience across discrete lines of business Democratize Data Access Build a more complete trading platform meeting stringent response times and regulatory compliance Innovate with Speed
  • 25. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. Integrate All Your Data For 360o View And Personalized Engagement Downstream datastores Ecosystem integrations Customer segmentation CUSTOMER BEHAVIOR CORE SYSTEMS Social ATM Call Center Website Mobile Payments Wealth Management Retail Events Wholesale Events Market Data Trade Data Customer Com
  • 26. Real Time Offers in Retail/Consumer Banking - Sample examples Line of Business Types of Offers Generalised benefits Credit Card Business 1. Real-time location based offers 2. Real-time increase in credit limit 3. EPP plans at POS or e-POS 4. E-commerce tranx and payment plan 1. Increase in uptake of merchant offers. 2. Increase in revenue from merchant promos 3. Increase in revenues from more activity on credit cards 4. Increase in revenue from merchant fees. 5. Increase in NII Assets 1. Pre-login loan/mortgage pages to actual conversion 2. Open API based bundled offers on lending plus insurance 1. Telesales gets to work on hot leads and higher conversion %. 2. Higher fee based income due to insurance bundling. 3. Unsecured lending marketplace participation especially for e-commerce transactions. 4. Increase in NII Liabilities 1. Real time fee based income from upsell/cross-sell offers on mobile and internet channels. 2. Increase loyalty based transactions 3. Capture brokerage and FX drop-offs in real-time and leverage other channels to capture opportunity 1. Increase in fee based income 2. Higher NPS and also better engagement scores. 3. Covid allowed for higher FX and brokerage fees 4. Lower account origination charges
  • 27. High level logical design for real time offers (Illustrative) Core Banking Systems Credit Card Systems CIF Wealth mgmt systems MQ/CDC MQ/CDC MQ/CDC REST/json Data Lake/ Data Warehouse Merchant System/Static Data Model build & analytics system Marketing system - Hosting the offer palate Microservices Consumer Banking Apps Digital Services APIs Analytics Data Platform POS machines Transaction event capture Create Offer Update Offer take-up/ failure Cache/ Persistent Store - Capture timestamp, privacy, identify customer segment, identify earlier offer given, identifity location KSQL REST/json
  • 28. 28
  • 29. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. “We need to shift our thinking from everything-at-rest to everything-in-motion.” Director of Citi
  • 30. Rewriting customer experiences Challenge Improve the customer experience through data while staying compliant with industry regulations. Solution Implemented Confluent to stream data in real-time, migrate to an event-based architecture and embark on a microservices transformation. Results ● Greatly reduced costs ● Increased efficiency in application building ● Lowered anomaly detection time from weeks to seconds ● Implemented data reuse across teams for relevant business insights ● Higher quality, faster and scalable customer services “There isn't another product that competes with Confluent Platform. Streaming data as events enables completely new ways for solving problems at scale.” — Mike Krolnik, Head of Engineering, Enterprise Cloud
  • 31. Unlocking the value of mainframes and Core Systems
  • 32. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. Current Core integration architectures App App App ! ! Outdated technologies ! Expensive to maintain ! No clear path to migration Mainframe Oracle SQL ! Built for low volume high value trnx
  • 33. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. A different way to integrate Core Systems App App App ! 1 1 Send events from applications directly to Kafka using JMS connectors. Mainframe Oracle SQL 1 2 For applications which allow use out of the box supported connectors - MQ, Qlik CDC, Oracle CDC and IIDR to convert data at rest to data at motion.
  • 34. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. Migrate Over Time With Our Support App App App 1 1 Send events from applications directly to Kafka 2 Eliminate legacy data infrastructure & make your data architecture modern. Unify and simplify ✓ Lower TCO ✓ Future-proof architecture ✓
  • 35. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. Payment Gateway Instant Payments Anywhere, Anytime: Clearing & Settlement Branch Mobile Phone Internet Service App Channels Settlement Service Payment Gateway Clearing Clearing Request Clearing Notification Settlement Request Settlement Notification Balance Report Settlement Notification Balance Report Payer Payee Payment Gateway Branch Mobile Phone Internet Service App Channels
  • 36. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. Adjustments Instant Payments Anywhere, Anytime: Reconciliation Customer makes payment 1 Calculate Differences 3 Update Balance 4 5 Bank File APP Bank statement 2 Cash book 2
  • 37. Challenge Rapidly transform digital services to meet customers’ rising expectations for highly secure, personalized and valuable experiences. Solution With the ability to combine real-time results with historical events, Confluent is leading the charge in helping enterprises discover new services and modernize existing ones with the power of event streaming. Results ● Credit Suisse Names Confluent a Disruptive Technology Award Winner “Enterprise IT is under immense pressure to rapidly transform digital services to meet customers’ rising expectations for highly secure, personalized and valuable experiences. With the ability to combine real-time results with historical events, Confluent is leading the charge in helping enterprises discover new services and modernize existing ones with the power of event streaming.” — David Patten, CIO of Investment Banking Capital Markets 37
  • 38. Security & Fraud Management
  • 39. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. Enable Real-time Fraud Scoring And Detection Payments Credit Card Transactions Debit Card Transactions Credit Card Applications Mortgage Applications Real-time Fraud Scoring ML Model Enhancement Fraud Case Management Historical Analysis
  • 40. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. Deliver Contextually Rich Data To Your Security Tools To Reduce False Positives And Costs 40 Application Logs Network Logs Database logs OS Logs Collect all data sources into Confluent Platform Filter events streams and only send priority events to SIEM Shorten SIEM retention window Offload fast query and search Send high priority data to SIEM Send all data to S3/HDFS for cold storage Open up data access to new use cases
  • 41. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. Build Real-time Dashboard And Reports For Compliance, Audit And Monitoring 41 Messaging Systems Mainframe Databases Big Data / Analytics Systems SQL & NoSQL Databases Visualization Tools Regulatory reporting Real-time dashboards In-flight stream processing
  • 42. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. “We look at events as running our business. Business people within our organization want to be able to react to events—and oftentimes it's a combination of events.” VP of Streaming Data Engineering
  • 43. Powering real-time analytics for credit scoring, fraud detection, and merchant assessment services Challenge Drive a digital transformation at the largest bank in Indonesia to improve the bank’s market position and increase financial inclusion across the country. Solution Use Confluent Platform and Apache Kafka to deploy an event-driven microservices architecture that powers big data analytics for real-time credit scoring, fraud detection, and merchant assessment services. Results ● Fraud detection performed in real-time ● Loan disbursement times cut from two weeks to two minutes ● ISO-certified open API created ● Loan defaults predicted proactively; NPL at 0% “Confluent Platform and Apache Kafka, by enabling us to build and deploy real-time event-driven systems for credit scoring, have helped BRI become the most profitable bank in Indonesia.” — Kaspar Situmorang, Executive Vice President 43
  • 44. Solace Environment OATS Reporting Layer Tibco Environment Challenge Provide a reliable, robust and scalable solution to migrate from legacy systems and OATS reporting, while handling high throughput from trading systems Solution Use Confluent Platform to modernize messaging platform, ingest high-volume trade data, filter and enrich in-flight and integrate with Spark, Elastic, HDFS and JDBC for real-time reports Top 5 US Global Bank Solace Queue (N) Qlik HTML Frontend tool Tibco EMS Solace Topics (100s) Confluent JMS Connector Confluent Kafka Confluent HDFS Connector In-flight stream processing
  • 45. Copyright 2021, Confluent, Inc. All rights reserved. This document may not be reproduced in any manner without the express written permission of Confluent, Inc. I N V E S T M E N T & T I M E V A L U E 3 4 5 1 2 Event Streaming is a Journey... Early Interest Central Nervous System Mission critical, but disparate LOBs Identify a project Mission-critical, connected LOBs Projects Platform
  • 46. Summary 46 Event Streaming is a new category of data infrastructure Event Streaming is a competitive requirement Confluent is your partner for success
  • 47. Win US$ 100 Amazon Vouchers 47 Complete a 2 minute survey and 3 winners will receive AMAZON Vouchers @ US $100 Announcement to all respondents will be done on Monday, March 1st. Click here : https://www.surveymonkey.com/r/Confluent_FSI or scan the code ! THANK YOU