awesome-artificial-intelligence-guidelines
blindai
awesome-artificial-intelligence-guidelines | blindai | |
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1 | 6 | |
1,205 | 494 | |
1.1% | 0.8% | |
3.5 | 8.0 | |
4 months ago | 3 months ago | |
Rust | ||
MIT License | Apache License 2.0 |
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awesome-artificial-intelligence-guidelines
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[D] How to compare ML platforms?
Once you have figured it out, go into the market to compare platforms that aligns to your working. Here is a good link, https://github.com/EthicalML/awesome-artificial-intelligence-guidelines
blindai
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[D] Any options for using GPT models using proprietary data ?
We are working on an open-source project, BlindAI (https://github.com/mithril-security/blindai) to answer exactly that: privacy when sending data to remote AI models.
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[P] Secret Whisper: Deploy OpenAI Whisper model with privacy using BlindAI
BlindAI (https://github.com/mithril-security/blindai) is an open-source confidential AI deployment. By using secure enclaves (Intel SGX for now, soon AMD SEV and Nvidia Confidential Computing), we provide end-to-end protection for users’ data, even when sending it to the Cloud for AI inference. You can see the gains of BlindAI on the scheme below:
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[P] Introducing BlindAI, an Open-source, fast and privacy-friendly AI deployment solution. Benefit from state-of-the-art AI without ever revealing your data!
Good thing with enclave is that the hardware protection enable us to use regular AES to secure communication with the enclave, which means no ciphertext expansion and lightweight client side. We do not need to have a complicated client side, we just need a slightly modified TLS client with additional security checks, like remote attestation but you can have a look on our client side it's light (https://github.com/mithril-security/blindai/tree/master/client).
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BlindAI: fast and privacy-friendly AI deployment solution in Rust
I am glad to introduce BlindAI, an AI deployment solution, leveraging secure enclaves, to make remotely hosted AI models privacy friendly. We leverage the tract project as our inference engine to serve AI models in ONNX format inside an enclave. We also use the Rust SGX SDK to use Rust for our secure enclave for AI.
- BlindAI: Open-source, fast and privacy-friendly AI deployment solution in Rust
What are some alternatives?
incubator-teaclave-sgx-sdk - Apache Teaclave (incubating) SGX SDK helps developers to write Intel SGX applications in the Rust programming language, and also known as Rust SGX SDK.
onnxruntime-rs - Rust wrapper for Microsoft's ONNX Runtime (version 1.8)
ire - I2P router implementation in Rust
rsrl - A fast, safe and easy to use reinforcement learning framework in Rust.
steelix - Your one stop CLI for ONNX model analysis.
whatlang-rs - Natural language detection library for Rust. Try demo online: https://whatlang.org/
L2 - l2 is a fast, Pytorch-style Tensor+Autograd library written in Rust
incubator-teaclave-trustzone-sdk - Teaclave TrustZone SDK enables safe, functional, and ergonomic development of trustlets.
blind_chat - A fully in-browser privacy solution to make Conversational AI privacy-friendly
tract - Tiny, no-nonsense, self-contained, Tensorflow and ONNX inference
cipher-paratime - Official Oasis Protocol Foundation's ParaTime.