Bittensor: The Rise of Decentralized AI
Project Name: Bittensor | Project Type: Artificial Intelligence (AI) | Ticker: $TAO | Cryptocurrency Rank: #30 | Market Cap: $3.3B | FDV: $3.3B | Circulating Supply: 6.23 M (29.69%) | Max Supply: 21M
Opening Remarks
The AI sector, especially with breakthroughs like ChatGPT, has really taken off, attracting $25 billion in investment in 2023 alone—that's five times more than the year before. This huge influx of funds shows how much people believe in AI's potential to become a multi-trillion-dollar industry.
But what indicates to us that the best is still ahead? Here are a few key points:
People are beginning to recognise these opportunities, especially in the AI crypto space, which has recently experienced some exciting successes.
So, we're at a crossroads: we've got a fragmented, resource-hungry AI landscape on one hand, and a clear market opportunity on the other. What we need now is the right fix. And that's where Bittensor comes in, offering a solution that's really worth paying attention to.
Bittensor is changing AI by shifting its control from big corporations to a wider community. Its protocol turns machine learning into a tradable commodity, encouraging the quick spread of knowledge like an ever-growing library.
Project Overview
?Bittensor, founded in 2019 by AI researchers Ala Shaabana and Jacob Steeves, was initially envisioned as a Polkadot parachain, but made a strategic pivot in March 2023 to develop its proprietary blockchain, aiming to leverage cryptocurrency as a mechanism for incentivizing a global network of ML nodes, facilitating a decentralised approach to AI development. By enabling these nodes to collaboratively train and learn, Bittensor introduces a novel paradigm where the integration of incremental resources amplifies the network's collective intelligence, compounding the contributions of individual researchers and models.
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Core Components and Structure
Bittensor’s architecture is designed to support a robust AI ecosystem through a decentralised network:
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The Role of Bittensor as an Oracle
It's also important to note that Bittensor acts as an oracle, connecting blockchain systems with external data. This way, it allows AI and blockchain technologies to come together and create innovative solutions.
Network Dynamics
The Bittensor ecosystem thrives on its unique subnet dynamics, where each subnet offers different rewards made just right for a big variety of AI applications. This setup promotes variety and new ideas, serving areas that might be overlooked by big AI companies. The single TAO token ecosystem supports these activities, giving token owners a big say in how AI grows within the network.
Bittensor Machine Learning Approach and Mechanism
Bittensor connects two critical types of participants in its network:
This bridge enables a secure and efficient collaboration between blockchain operations and AI services.
Decentralised Mixture Of Experts (MoE)
Bittensor employs a MoE model to improve AI predictions by leveraging multiple specialised AI models working in collaboration. This approach enhances accuracy and efficiency by combining the unique strengths of each model to solve complex problems. It results in more precise and comprehensive outcomes, outperforming traditional single-model methods. For example, when generating Python code with Spanish comments, one model's language proficiency and another's coding expertise merge to deliver a superior solution.
Proof Of intelligence
Proof of Intelligence is a way for the Bittensor network to reward nodes for adding useful machine-learning models and results. It's similar to how blockchain networks use PoW and PoS, but instead of solving maths puzzles, nodes perform machine learning tasks to demonstrate their intelligence. If a node's machine learning work is accurate and valuable, it has a better chance of being selected to add a new block to the chain and earn TAO tokens as a reward. To earn rewards within the Bittensor network, servers must not only produce valuable knowledge but also gain approval from a majority of validators. By adopting this consensus mechanism, Bittensor incentivizes valuable contributions, promoting collaboration and securing the blockchain.
Ecosystem
The Bittensor ecosystem, powered by its native $TAO token, represents a novel approach in the decentralised AI field, marked by its unique structure of subnets. These specialised subnets within the neural network are pivotal for the ecosystem's integrity and performance. With 32 slots available for these subnets, Bittensor fosters a competitive yet dynamic environment essential for innovation. It reflects Bittensor's commitment to inclusivity and its strategic focus on quality over quantity. Remember, subnets in Bittensor are where real value is created through competition and collaboration.
The blockchain backbone of this ecosystem ensures transparency and security, while the Bittensor API facilitates participation by providing the necessary tools and guidelines.
Participants can engage as subnet owners, validators, or miners, each playing a crucial role in the ecosystem's health. The Yuma Consensus mechanism, a key feature, rewards contributions with $TAO tokens.
Strategic partnerships, like those between OpSec and Tensorage, are pivotal for advancing decentralised AI technology and offer seamless solutions for data processing and storage.
The integration of platforms such as AITProtocol into the Bittensor network highlights its expanding influence and the diverse applications of its decentralised AI models.
Given the traction Bittensor is gaining because of its potential, we expect these partnerships and integrations to continue to evolve, and perhaps, Bittensor will become a key player in shaping the future of AI.
Tokenomics
TAO Tokenomics Overview
Token Generation and Distribution
Token Utility
Competitors
AI technology has a wide range of uses in the blockchain industry, including machine learning, neural networks, decentralised storage, AI agent training, marketplaces, data processing, and beyond.
Given this variety, comparing Bittensor directly to a project like Akash may not be completely fitting. Akash provides services akin to cloud computing, while Bittensor specialises in specific areas such as AI model training.
Further research has led us to discover Gensyn, an up-and-coming project that seems to be a closer rival to Bittensor. Let's take a closer look at it.
Entering Gensyn
Ben Fielding and Harry Grieve founded Gensyn after meeting at the Entrepreneur First accelerator program in early 2020. They began collaborating on Gensyn that year, focusing on research until the second quarter of 2023. They are expecting the launch of its testnet this year.
In June 2023, Gensyn secured $43 million in Series A funding, with investments from firms like a16z, Protocol Lab, CoinFund, Canonical Crypto, Eden Block, and several angel investors.
Gensyn is building an L1 PoS protocol, utilising the Substrate framework for peer-to-peer communication.
Gensyn aims to create a hyper scalable ML network. It offers a cluster of global computing resources that are accessible to everyone, at any time. The goal is to make AI model training possible on any device around the world by connecting many different computing devices, from idle data centres to personal laptops with GPUs. This initiative is designed to significantly increase the availability of ML compute resources globally.
What sets Gensyn apart from typical computing networks is its unique method for checking computational work. It introduces a new system called "probabilistic proof-of-learning," which uses data from gradient-based optimization, a key method in machine learning. This technique provides a scalable and reliable way to verify work without the need for replication, making machine learning tasks more efficient.
On the other hand, Bittensor offers two key benefits:
But we could also establish a different scenario, one where the adaptability of permissionless blockchains enables various protocols to integrate and enhance the overall decentralised artificial intelligence ecosystem. For instance, Akash, Gensyn, and Bittensor could potentially work together to handle an inference request, showcasing the synergy between different blockchain-based AI solutions.
Bittensor VS Centralised AI models
Comparing Bittensor to centralised AI models, such as OpenAI, which Microsoft recently valued at $29 billion, offers a clear perspective on potential. Bittensor's decentralised approach, aiming for compounded AI intelligence and broader integrations, presents the possibility of surpassing OpenAI's capabilities and value if successful. This opens up a conversation on the vast potential value of Bittensor.?
With its decentralised model approach, Bittensor allows AI models to share insights and build on each other's discoveries, reducing duplicate efforts. According to Bittensor:
“The only thing bigger than Open AI or any other Centralised alternative, it's all of them combined”
Bullish Fundamental Factors
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Bearish Fundamental Factors
Closing Remarks
One of the latest pieces of research from Vaneck, which we suggest reading, identifies Bittensor as “Bitcoin for Machine Intelligence.” It outlines how its network provides economic incentives for AI/ML models, with a system involving “miners,” who develop AI models, and “validators,” who evaluate the models' outputs. But since developers can create dApps on Bittensor, and it is structured as a main network with numerous smaller subnetworks each focusing on specific AI domains, I'd argue that a better comparison would be Bittensor becoming to decentralised AI what Ethereum is to DeFi.
AI holds immense economic promise, expected to reach a market value of $1.8 trillion by 2030, and Bittensor aims to leverage this opportunity by adopting a decentralised approach.
Cardano's market cap hit nearly $100 billion during the DeFi boom. With Bittensor's market cap at $4.2 billion now, the potential for growth, especially if AI trends mirror those of DeFi, remains an exciting prospect.
At Greythorn, we consistently advocate for cautious navigation of these markets. If you found this piece engaging, we invite you to connect with us. You can explore our previous research and visit our website for more information.
Disclaimer
This presentation has been prepared by Greythorn Asset Management Pty Ltd (ABN 96 621 995 659) (Greythorn). The information in this presentation should be regarded as general information only rather than investment advice and financial advice. It is not an advertisement nor is it a solicitation or an offer to buy or sell any financial instruments or to participate in any particular trading strategy. In preparing this document Greythorn did not take into account the investment objectives, financial circumstance or particular needs of any recipient who receives or reads it. Before making any investment decisions, recipients of this presentation should consider their own personal circumstances and seek professional advice from their accountant, lawyer or other professional adviser. This presentation contains statements, opinions, projections, forecasts and other material (forward looking statements), based on various assumptions. Greythorn is not obliged to update the information. Those assumptions may or may not prove to be correct. None of Greythorn, its officers, employees, agents, advisers or any other person named in this presentation makes any representation as to the accuracy or likelihood of fulfilment of any forward looking statements or any of the assumptions upon which they are based. Greythorn and its officers, employees, agents and advisers give no warranty, representation or guarantee as to the accuracy, completeness or reliability of the information contained in this presentation. None of Greythorn and its officers, employees, agents and advisers accept, to the extent permitted by law, responsibility for any loss, claim, damages, costs or expenses arising out of, or in connection with, the information contained in this presentation. This presentation is the property of Greythorn. By receiving this presentation, the recipient agrees to keep its content confidential and agrees not to copy, supply, disseminate or disclose any information in relation to its content without written consent.
Software Engineer
7 个月Great summary!