blockprint
0xDeCA10B
blockprint | 0xDeCA10B | |
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2 | 3 | |
85 | 550 | |
- | 1.5% | |
6.1 | 0.0 | |
4 months ago | 10 months ago | |
Python | Python | |
Apache License 2.0 | MIT License |
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blockprint
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client distribution
The blockprint tool by Michael Sproul is our best source of information. It uses machine learning to guess what client made the block proposal based on the order that transactions are packed in the block. Graffiti is a good fallback, many people include their client name in their graffiti and it's a good way to verify the blockprint guess.
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A [hopefully] brief history of client diversity on the beacon chain
Michael Sproul from the Lighthouse team really helped us to get things moving. He realized that he could identify the block proposer client by fingerprinting the order that attestations were packed into block proposals and identify the proposing client with a high degree of certainty (this is now available as blockprint). A few months later, I noticed that Invisible Symbol from the Rocket Pool #Trading discord was posting some really interesting operator data, specifically, he had data that linked many more validators to their operators than anyone else, notably, he had developed an accurate list of Coinbase's validators which had previously been hiding.
0xDeCA10B
- A Better Mastodon Client
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Discussion Thread
Between this, their blockchain-based machine learning sharing system and their recent patent for a cryptocurrency mined using your brain activity, it seems like Microsoft is really going hard on crypto lately.
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Integration test: Complexity of privacy-preserving bird call bio-sensor for distributed ecological monitoring?
Some of the technologies which could be integrated include differential privacy, distributed online machine learning, misinformation resilience and multi-party computation, all within the context of smart contracts and bioinformatics.
What are some alternatives?
Crypto-Signal - Github.com/CryptoSignal - Trading & Technical Analysis Bot - 4,100+ stars, 1,100+ forks
pyteal - Algorand Smart Contracts in Python
vyper - Pythonic Smart Contract Language for the EVM [Moved to: https://github.com/vyperlang/vyper]
PySyft - Perform data science on data that remains in someone else's server
ccxt - A JavaScript / TypeScript / Python / C# / PHP cryptocurrency trading API with support for more than 100 bitcoin/altcoin exchanges
typedb-ml - TypeDB-ML is the Machine Learning integrations library for TypeDB
vyper - Pythonic Smart Contract Language for the EVM
Lixur - Lixur is an open-sourced project that seeks to build a scalable, feeless, decentralized, quantum-secure, and easy-to-use blockchain with smart, and intelligent (A.I.) contract functionality.
clientdiversity-org - This is the source code for https://clientdiversity.org, a resource site to assist client diversity efforts.
river - 🌊 Online machine learning in Python
GPT2-api - 🤖 (Easily) run your own GPT-2 API. Post writing prompts, get AI-generated responses
AugLy - A data augmentations library for audio, image, text, and video.