Pratik Barjatiya
2 min readNov 23, 2024

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Subnets

- SN1(Apex): Trains agentic systems to outperform proprietary LLMs

- SN2(Omron): Verifies AI model outputs using ZK proofs for authenticity

- SN3(Templar): Incentivizes wide-internet training

- SN4(Targon): Delivering accurate and rapid responses for LLMs

- SN5(Open Kaito): Develops and rewards high-performance text embedding models

- SN6(Infinite Games): Incentivizes accurate prediction of binary outcomes using LLMs

- SN7(Subvortex: Incentivizes running Bittensor blockchain nodes

- SN8(Taoshi): Rewards contributors for profitable trading signals and strategies.

- SN9(Pre-training): Incentivizes development of high-performing pretrained foundation models

- SN10(Sturdy): Incentivizes autonomous DeFi yield optimization algorithms

- SN11(Dippy): Incentivizes development of roleplay-focused LLMs

- SN12(Horde): Incentivizes distributed GPU compute sharing and optimization

- SN13(Dataverse): Incentivizes distributed data collection and storage

- SN14(Palaidn): Incentivizes AI-powered blockchain fraud detection

- SN15(De-Val): Evaluates LLM outputs for accuracy and quality

- SN16(BitAds): Incentivizes performance-based online advertising

- SN17(Three Gen): Incentivizes AI-powered 3D asset generation for gaming

- SN18(Cortex.t): Provides decentralized API access for text and image generation.

- SN19(Nineteen): Provides distributed high-speed inference for various AI models.

- SN20(BitAgent): Incentivizes development of AI agents for task automation.

- SN21(Any-to-any): Incentivizes multimodal AI model development.

- SN22(Metasearch): Analyzes social media data for sentiment and insights.

- SN23(SocialTensor): Incentivizes distributed text, image, and meme generation

- SN24(Omega): Incentivizes collection of multimodal data for AGI research.

- SN25(Protein Folding): Incentivizes efficient protein folding simulations.

- SN26(Tensor Alchemy): Combines human scoring with decentralized image generation.

- SN27(Compute): Unifies diverse cloud platforms for seamless compute integration.

- SN28(S&P 500 Oracle): Incentivizes real-time S&P 500 price predictions.

- SN29(Coldint): Incentivizes collaborative AI model training.

- SN30(Bettensor): Incentivizes accurate sports event predictions.

- SN31(NAS Chain): Incentivizes neural architecture search optimization.

- SN32(It’s AI): Detects AI-generated content.

- SN33(ReadyAI): Incentivizes transforming unstructured data into structured formats.

- SN34(BitMind): Detects AI-generated media.

- SN35(LogicNet): Develops AI models for mathematics and data analysis.

- SN36(Pyramid Scheme): Studies emergent complexity from simple computational rules.

- SN37(Finetuning): Incentivizes LLM fine-tuning.

- SN38(Distributed Training): Incentivizes distributed training of a single LLM.

- SN39(EdgeMaxxing): Optimizes AI models for consumer device deployment.

- SN40(Chunking): Incentivizes advanced RAG chunking solutions.

- SN41(Sportstensor): Incentivizes accurate sports prediction models.

- SN42(Masa): Provides decentralized data scraping services.

- SN43(Graphite): Solves graph optimization problems through decentralized computation.

- SN44(Score Predict): Incentivizes accurate soccer match predictions.

- SN45(Gen42): Provides decentralized AI code generation services.

- SN46(NeuralAI): Generates 3D models using neural networks.

- SN47(Condense AI): Compresses language tokens to optimize AI inference speed.

- SN48(Nextplace AI): Provides housing market price predictions.

- SN49(Hivetrain AutoML): Automates discovery of novel neural network components.

- SN50(BittAudio): Generates AI audio content and music.

- SN51(Compute Subnet): Provides decentralized GPU rental services.

- SN52(Dojo): Crowdsources high-quality human-labeled data.

- SN53(Efficient Frontier): Identifies optimal trading strategies using machine learning.

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Pratik Barjatiya
Pratik Barjatiya

Written by Pratik Barjatiya

Data Engineer | Big Data Analytics | Data Science Practitioner | MLE | Disciplined Investor | Fitness & Traveller

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