Contenu connexe Plus de Amazon Web Services (20) Machine Learning in Financial Services: Real-World Use Cases1. © 2019, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Amazon Confidential and Trademark
John Kain, AWS FSI Business Development Capital Markets
SIBOS 2019
Machine learning in Financial Services
Real-world use case
2. © 2019 Amazon Web Services, Inc. or its affiliates. All rights reserved
Please remember that past performance may
not be indicative of future results
3. © 2019 Amazon Web Services, Inc. or its affiliates. All rights reserved
Data
every 5 years
There is more data than
people think
15
years
live for
Data platforms need to
1,000x
scale
>10x
grows
4. © 2019 Amazon Web Services, Inc. or its affiliates. All rights reserved
40% of digital transformation initiatives
supported by AI in 2019
—IDC 2018
InnovationDecision
making
Customer
experience
Business
operations
Competitive
advantage
Data is the centerpiece for Digital Transformation
5. © 2019 Amazon Web Services, Inc. or its affiliates. All rights reserved
More (and better) customer data
Ideation and
experimentation
Rapid product developmentContinuous deployment
Enhanced customer
experience
Easy provisioning of resources
Cloud technologies are accelerating this transformation
6. © 2019 Amazon Web Services, Inc. or its affiliates. All rights reserved
conversational chat bots | call transcription | intelligent routing | sentiment analysis
VoC analytics | text-to speech | multilingual omni-channel communication
P O L L Y T R A N S C R I B E T R A N S L A T E C O M P R E H E N D L E X
recommendation technology used by Amazon.com | context-aware recommendations
sentiment analysis | VoC analytics | predict business outcomes
P E R S O N A L I Z E C O M P R E H E N DR E K O G N I T I O N
I M A G E
R E K O G N I T I O N
V I D E O
Making machine learning accessible without data scientists
F O R E C A S T
7. © 2019 Amazon Web Services, Inc. or its affiliates. All rights reserved
One-click
model training
and deployment
Train once
run anywhere
10x
better algorithm
performance
2x
performance increases from
model optimization with Neo
70%
cost reduction for data
labeling using Ground Truth
75%
cost reduction for inference
with Elastic Inference
REDUCE COSTS IN C R E A SE P E R F O R M A N C E IMPROVE EASE OF
USE
AMAZON SAGEMAKER
And increasing the effectiveness of data science teams
8. © 2019 Amazon Web Services, Inc. or its affiliates. All rights reserved
We’re on the cusp of a new age in Financial Services
Streamlined payments
What consumers see:
9. © 2019 Amazon Web Services, Inc. or its affiliates. All rights reserved
Compliance, surveillance,
and fraud detection
Document
processing
Pricing and product
recommendation
Trading and
analytics
AI/ML creates the next edge for Financial Institutions
Customer
experience
• Account opening/
fraud detection
• Sales practices/
transaction surveillance
• AML/Sanctions
• Investigations
optimization
• Regulatory mapping
• Common financial
instrument
taxonomy
• Contract ingestion
and analytics
• Financial
information
extraction
• Corporate actions
• Loan/Insurance
underwriting
• Sales/recommendations
of financial products
• Credit assessments
• Portfolio management/
robo-advising
• Algorithmic trading
• Sentiment/news
analysis
• Image analysis
• Grid computing
scheduling
• Enhanced customer
service through
mobile apps and
chatbots
• Call center
optimization
• Personal financial
management
10. © 2019 Amazon Web Services, Inc. or its affiliates. All rights reserved
Accelerating
investigation timelines
FINRA uses Amazon Comprehend to process and review millions of
documents with unstructured data, helping flag records of interest that
should be reviewed by human investigators.
11. © 2019 Amazon Web Services, Inc. or its affiliates. All rights reserved
Preventing fraudulent
attacks in real-time
Using Amazon SageMaker, NuData Security prevents credit card fraud by
analyzing anonymized user data to detect anomalous activity before a
fraudulent transaction occurs. With SageMaker, NuData reduced machine
learning development time by 60%, simplified their machine learning
architecture by 95%, and worked with a large bank to passively block
nearly 100% of fraudulent attempt traffic within the bank’s consumer
friction tolerance.
12. © 2019 Amazon Web Services, Inc. or its affiliates. All rights reserved
Enforcing
compliance at scale
Coinbase uses machine learning models on Amazon SageMaker to help
with fraud prevention, identity verification, and large-scale compliance.
Using Amazon SageMaker reduced model training times from 20 hours
to 10 minutes.
13. © 2019 Amazon Web Services, Inc. or its affiliates. All rights reserved
Fueling product
innovation
Using Amazon SageMaker, Intuit developed machine learning models
that can pull a year’s worth of bank transactions to find deductible
business expenses for customers. Using SageMaker, Intuit reduced
machine learning deployment time by 90%, from 6 months to 1 week.
14. © 2019 Amazon Web Services, Inc. or its affiliates. All rights reserved
Improving customer
communications
FICO uses Amazon Polly to power a range of voice applications that
improve the customer experience.
15. © 2019 Amazon Web Services, Inc. or its affiliates. All rights reserved
“Go as far as you can see;
when you get there,
you’ll be able to see
farther.”
J.P. Morgan