Hewlett Packard Enterprise Ushers in Next Era in AI Innovation with Swarm Learning Solution Built for the Edge and Distributed Sites
Hewlett Packard Enterprise (NYSE: HPE) introduced HPE Swarm Learning, a decentralized machine learning solution designed to enhance data privacy and reduce biases in AI training. This innovative approach allows organizations to share AI model learnings without compromising sensitive data, thereby boosting model accuracy through larger dataset access. Key applications include improving diagnostics in healthcare and combating credit card fraud, with potential losses of
- Launch of HPE Swarm Learning, enhancing AI model training accuracy.
- Supports data privacy while enabling collaboration across industries.
- Addresses critical issues like disease diagnosis and fraud detection.
- None.
News Highlights
- HPE Swarm Learning, a privacy-preserving, decentralized machine learning solution, allows users to share learnings at the edge, or distributed sites, without compromising data privacy
- The solution increases accuracy and reduces biases in AI model training by enabling access to larger datasets
- New solution delivers AI for greater good by fostering collaboration across organizations, worldwide
HPE Swarm Learning, which was developed by
“Swarm learning is a new, powerful approach to AI that has already made progress in addressing global challenges such as advancing patient healthcare and improving anomaly detection that aid efforts in fraud detection and predictive maintenance,” said
VIDEO: The Big Shift: What is Swarm Learning?
Introducing a new AI approach to securely harness insights at the edge
Today, the majority of AI model training occurs at a central location, which relies on centralized merged datasets. However, this approach can be inefficient and costly due to having to move large volumes of data back to the same source. It can also be constrained by data privacy and data ownership rules and regulations that limit data sharing and movement, which can potentially lead to inaccurate and biased models. By training models and harnessing insights at the edge, businesses can make decisions faster, at the point of impact, leading to better experiences and outcomes. Additionally, by sharing learnings from one organization to another at the data source, various industries across the world can unite and further improve intelligence that can lead to tremendous business and societal outcomes.
However, sharing data externally may raise a challenge for organizations that are required to meet data governance, regulatory or compliance requirements, mandating that data stay at its location. HPE Swarm Learning uniquely enables organizations to use distributed data at its source, which increases the dataset size for training, to build machine learning models to learn in an equitable way, while preserving data governance and privacy. To ensure that only learnings captured from the edge are shared, and not the data itself, HPE Swarm Learning uses blockchain technology to securely onboard members, dynamically elect a leader, and merge model parameters to provide resilience and security to the swarm network. Additionally, by only sharing the learnings, HPE Swarm Learning allows users to leverage large training datasets, without compromising privacy, and helps remove biases to increase accuracy in models.
“Swarmifying” data to empower AI for the greater good
HPE Swarm Learning can help a range of organizations to collaborate and improve insights:
- Hospitals can derive learnings from imaging records, CT and MRI scans, and gene expression data to be shared from one hospital to another to improve diagnostics of diseases and other ailments, while protecting patient information.
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Banking and financial services can fight the expected global loss of more than
in credit card fraud over the next decade2, by sharing fraud-related learnings with more than one financial institution at a time.$400 billion - Manufacturing sites can benefit from predictive maintenance to gain insight into equipment repairing needs and address them before they fail and cause unwanted downtime. By leveraging swarm learning, maintenance managers can gain better insight by collecting learnings from sensor data across multiple manufacturing sites.
Example use cases of early HPE Swarm Learning adopters include:
A team of cancer researchers at
The researchers trained AI models using HPE Swarm Learning on three groups of patients from
TigerGraph advances anomaly detection to help banks fight credit card fraud
TigerGraph, provider of a leading graph analytics platform, combines HPE Swarm Learning with its data analytics offering running on HPE ProLiant servers using
Blog: Fight fraud with precision and security using HPE Swarm Learning
Availability
HPE Swarm Learning is available now in most countries. For more information, please visit: hpe.com/info/swarm-learning
HPE delivers a complete, ready-to-use machine learning development solution
HPE also announced today that it is removing barriers for enterprises to easily build and train machine learning models at scale, to realize value faster, with the new HPE Machine Learning Development System. The new system, which is purpose-built for AI, is an end-to-end solution that integrates a machine learning software platform, compute, accelerators, and networking to develop and train more accurate AI models faster, and at scale.
To learn more about HPE’s AI solutions, please visit: https://www.hpe.com/us/en/solutions/artificial-intelligence.html
About
1. An analysis as of
2. Expected global loss of
View source version on businesswire.com: https://www.businesswire.com/news/home/20220427005046/en/
Nahren Khizeran
Nahren.Khizeran@hpe.com
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