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Had enough centralization? Time to FLock OFF! Introducing FLock OFF - SN96 - Subnet (UID 96) on Bittensor - a permissionless federated learning network optimized for Small Language Models (SLMs) training on edge devices. Made by FLock.io, accelerated by Yuma

97,851 次观看 • 1 年前 •via X (Twitter)

9 条评论

FLock.io 的头像
FLock.io1 年前

2/ Why now? Chips like @Apple M-series, A18 Pro, @Snapdragon 8 Gen3, and Dimensity 9400 are now powerful enough to support Parameter-Efficient Fine-Tuning on edge devices. What they need is good data and data privacy!

FLock.io 的头像
FLock.io1 年前

3/ We’re here to solve a key challenge: 👉 How do we compress large domain datasets into dense, efficient ones, creating a high-quality dataset that maximizes knowledge within a size limit? Our answer is FLock OFF - FLock Open Federated Framework

FLock.io 的头像
FLock.io1 年前

4/ FLock OFF is a subnet on Bittensor where anyone can participate, generate training data, validate models, and coordinate intelligence. a. FLock - Federated intelligence clusters b. Open - Permissionless participation c. Federated - Only nodes collectively coordinate and aggregate computation with data privacy d. Framework - A robust pipeline for efficient and secure decentralized computation

FLock.io 的头像
FLock.io1 年前

5/ With FLock OFF, we aim to build an ultra-high-quality dataset that maximizes knowledge within a fixed size limit, ideal for edge-based training where bandwidth and compute are limted. Our final goal is to develop an open-source SLM that surpasses GPT-4.1-nano and other efficient private models.

FLock.io 的头像
FLock.io1 年前

6/ When centralized servers push you around, show them your federated power! 🖕 Subnet 96 is our way of making it real. Join the FLock OFF movement - Open, Federated, and Fearless. 👉 The Season 1 Mining will start at 9:06 AM EST on this Friday!

Rainmaker 的头像
Rainmaker2 年前

Here I share an XGBoost model that delivers a 25% CAGR with minimal drawdown on Visa stock. In this free Substack post I share code and commentary for a powerful Machine Learning strategy that delivers powerful returns.

gøn 的头像
gøn1 年前

@flock_off_sn96 When is active?

Capitify 的头像
Capitify1 年前

@flock_off_sn96

FLock.io 的头像
FLock.io1 年前

@flock_off_sn96 🤝

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For anyone trying to understand Bittensor from first principles, this lecture is a useful place to start. Presented by Bittensor co-founder const. Learn Bittensor > Start with Bitcoin, distributed systems, incentives, > How Bitcoin leads to Bittensor Subnets coordinating AI infrastructure. Topics: // Start - Bitcoin as more than a digital currency // Risks of AI centralization + closed systems // "The incentive computer" // How Bittensor subnets work (mining, validating) // How distributed AI infrastructure could scale globally // Impact on students, builders & future founders Recorded at the National University of Singapore Computer Science Club. NUS Computing Chapters - Bitcoin, AI, and Bittensor - Bitcoin history and decentralization - AI changes how engineers work - The danger of centralized AI power - Why most crypto visions fail - Bitcoin as the world’s largest compute network - Bitcoin as a market for compute - The idea of an “incentive computer” - Bitcoin compared to Bittensor - Classroom example of decentralized scoring - A simple subnet example - SN62 :: Ridges AI | SN62 SWE agents - SN3 templar :: Distributed AI Training - SN52 lium.io :: GPU rentals on Bittensor 128 subnets, some examples Why this matters for the future of work Q&A Subnet examples mentioned @ SN64 - Serverless + TEE Compute :: Chutes SN8 - Prop firm Vanta Trading SN52 - AutoML :: Gradients SN62 - SWE agents :: Ridges AI | SN62 SN51 - Compute / GPU rental lium.io SN4 - TEE compute for enterprise :: Targon SN3 - 72B Distributed Training run :: templar SN41 - Prediction markets :: Almanac SN44 - Computer Vision Score - Subnet 44 SN68 - Drug discovery :: METANOVA SN18 - Weather Forecasting Zeus | SN 18 SN50 - Bitcoin prediction data :: Synthdata SN61 - Quantum computing :: qBitTensor Labs SN14 - Bitcoin mining pool :: TaoHash SN34 - Perp Dex :: 0xMarkets SN17 - 3D model generation :: 404 SN33 - Data analytics :: ReadyAI SN19 - [Since relaunched] RPC infrastructure :

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Jesus Martinez

26,642 次观看 • 3 个月前