Secure ML

SecureML is a cloud-based application that allows enterprises to securely perform machine learning inference directly on encrypted datasets without ever decrypting the data.

How SecureML Works

Using cutting-edge fully homomorphic encryption (FHE) technology, SecureML enables enterprises to monetize their proprietary machine learning models by providing secure insights to external parties or other business units in your company.

Use SecureML for extracting insights

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Fraud
Detection

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Client Behavior
Analytics

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Machine-Learning-as-a-Service (MLaaS)

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Use SecureML with classification and regression models

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Binary Classification (Logistic Regression)

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Convolutional Neural Networks (CNN)

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Recurrent Neural
Networks (RNN)

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The Need

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    Data breaches can destroy business and government reputations and severely damage financial returns, especially in highly regulated fields.
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    Businesses and governments wishing to leverage private data to inform decisions face challenges in creating the compute infrastructure needed to run machine learning algorithms.
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    Cloud computing infrastructure offers global reach and major cost advantages but data in conventional machine learning is not fully secure during computation.

The Challenge

Current encryption technology offers security only during transport and storage; data is vulnerable during machine learning computations, adding risk to cloud computing opportunities.

If machine learning computation is performed in the cloud then security keys are also required in the cloud, creating an additional security vulnerability.

The Future of Encryption

  • Fully homomorphic encryption (FHE) is a breakthrough mathematical technology that allows computations to be performed directly on encrypted data without the need to access keys.
  • SHIELD has patented GPU algorithms that greatly speed up the mathematical computations required to perform inferences directly on encrypted data.
  • GPUs are now available in virtually all major cloud service providers, offering an immediate multi-region corporate global footprint for SHIELD’s SecureML technology.

The SHIELD Difference

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Secure

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Versatile
Functions

Affordable

Affordable

Minimal Downtime

Minimal
Downtime

High Performance

High
Performance

Frictionless

Frictionless