Главная
Study mode:
on
1
Introduction
2
Agenda
3
AI Impacts Every Industry
4
Challenges in AI Adoption
5
Ideal AI Stage
6
Real World Use Cases
7
Other Use Cases
8
Customer Use Case
9
How Open Source Helps
10
AI Life Cycle
11
AI Modeling
12
Data Source
13
Deploy
14
TensorFlow Model
15
Deep Learning Compiler
16
Swagger API
17
Data Security
18
Data Protection
19
IBM Cloud
20
Model Deployment
21
Machine Learning Models
22
Open Source Models
23
Cloud Object Storage
24
Data Mapping
25
Testing
26
Summary
27
Open Source in 10 years
Description:
Explore real-time fraud analysis in a hybrid cloud environment through this conference talk. Discover how open source and closed source technologies can be combined to build and train AI models for fraud detection in the cloud, then deploy them for real-time analysis on mainframes. Learn about using TensorFlow for model training, persisting models in ONNX format, and leveraging IBM's Telum AI Accelerator for high-scale, in-transaction inference. Gain insights into overcoming challenges in AI adoption, securing data in compliance with financial industry regulations, and applying this hybrid approach to various use cases beyond fraud detection. Understand the AI lifecycle, from data sourcing to deployment, and explore the role of open source technologies in solving real-world problems across industries in a hybrid multi-cloud environment.

Open Source Powered Real-Time Fraud Analysis in a Hybrid Cloud Environment

Linux Foundation
Add to list