icône_installation_ios_web icône_installation_ios_web icône_installation_android_web

Une analyse détaillée du dernier investissement d'a16zs dans PIN AI : utiliser le Web3 pour réécrire le paysage de l'IA et créer l'avenir

AnalyseIl y a 3 moisUpdate 6086cf...
40 0

I am honored to complete this research under the guidance of Meteorite Labs, based on the experience exchanges of hundreds of Web2 AI applications.

PIN AI is a selected project of the a16z Crypto Startup Accelerator Fall Program, with a seed round of financing of $10 million. In addition to a16z Crypto, well-known VCs include Stanford Blockchain Accelerator, Hack VC, and Foresight Ventures. Angel investors include NEAR Protocol founder Illia Polosukhin, Gitcoin co-founder Scott Moore, Solana Foundation Chairman Lily Liu, SUI/Mysten Labs CEO Evan Cheng, Worldcoin research engineer DCBuilder, etc.

I just finished reading the article co-written by the three co-founders of PIN AI, and found that it is the most attractive Web3 AI project besides Sahara recently, and the application scenarios are very interesting. (Article link: https://www.pinai.io/post/pin-ai-the-open-platform-for-personal-ai )

PIN AI is an open AI network where developers can build useful AI applications. Useful AI Applications is the core of its products. It is similar to AI Agents such as MultiOn and Jace.ai of Web2, which is committed to providing users with applications that are useful in daily life and realizing the intentions proposed by users, such as online purchase of goods, travel planning, and investment planning.

Une analyse détaillée du dernier investissement d'a16zs dans PIN AI : utiliser le Web3 pour réécrire le paysage de l'IA et créer l'avenir

A brief introduction to Jace.ai , an AI Agent that can autonomously complete browser tasks, is based on LLM and its proprietary model AWA-1 (Autonomous Web Agent-1), which supports AI to perform operations on web pages.

Jaces greatest ability is that it can plan tasks autonomously and perform operations in the browser on behalf of the user.

Let’s take an example to understand the application scenario. Tell Jace, “I plan to travel to Beijing for a week on September 20th, with a budget of 5,000 yuan. Please help me plan it.” Jace will automatically plan a travel plan, including the attractions to visit, the hotels to stay in, and the food to eat. If I agree to this travel plan, it will help me book all the scenic spots, find the most cost-effective hotel on Meituan, and place an order. I only need to enter my personal information and pay with one click.

In fact, what PIN AI does is very similar. The biggest difference from generative AI is that this type of AI project focuses on the users daily life rather than work.

1. Deconstructing the design ideas of PIN AI

In simple terms, PIN AI = AI + DePIN

The PIN AI network consists of two types of AI:

  • Personal AI : A personalized AI agent that adapts to user preferences in real time. It is the connection point between the user and the agent service, a bit like a coordinator. Users can download it to their mobile phone or computer device for use.

  • Agentic Services : AI Agents built on-chain for Web2 platforms that can perform tasks on some of the top Web2 platforms, with the execution process and completion status recorded on the blockchain

  • The official also mentioned external AI, which may support interaction with other LLM or Web2 AI Agent in the future.

PIN AI architecture core:

PIN Protocol, a DePIN distributed data storage network, allows anyone to connect their devices to the network and share data. It integrates a BERT-based model to anonymize data at all stages of processing user data, ensuring privacy and compliance with data protection regulations.

Personal AI is built into it. On one hand, it provides personalized data for personal AI, and on the other hand, it provides the most relevant data for agent services.

The PIN Protocol is built from three components:

1. Private storage and computing layer : Distributed storage data, securely storing device data shared by users (including photos, videos, etc.), and making the most relevant data readily available for personal AI and proxy services. Users can connect their devices to the network, provide device data, and receive native token $PIN rewards.

2. Data connector : Use zk technology to track and verify user data connected to the network. I think it is equivalent to the node of the PIN network. The node operator needs to stake $PIN tokens to do verification, and some token holders can stake tokens to the node, and both can get token staking rewards.

3. Agent Linking : Aims to match personal AI with agent services. Consists of an agent registry and a transaction mechanism, the former is used to track performance indicators, while the latter thinks about how to match personal AI with agent services (based on the cost, performance, and completion quality of each agent service)

User usage pattern/business logic:

When a user makes a specific request, PIN AI will follow the steps below:

Step 1: Personal AI – Collecting user requirements

The user makes a request to the personal AI, and the personal AI forwards the request to the PIN Protocol

Step 2: PIN Protocol – Preparation before task execution

Break down user intent into specific steps, find the most suitable and cost-effective proxy service, retrieve the most relevant data, and provide it to the proxy service. (If multiple Web2 platforms are involved, the intent needs to be split into different proxy services)

Step 3: Proxy service – Execute specific steps

Step 4: PIN Protocol – Feedback to the User

After all, most of the daily life needs require money transactions. In PIN AI, the flow of funds should be:

The user pays the Gas fee to the PIN Protocol (I guess it is to activate this intention transaction). Since the PIN Protocol first disassembles the users intention, and then indexes and sends the data most relevant to the intention to the proxy service, the proxy service will return part of the service fee to the PIN Protocol as a tip after completing the task.

Therefore, both PIN Protocol and proxy services can earn commissions from the service fees given by users.

Une analyse détaillée du dernier investissement d'a16zs dans PIN AI : utiliser le Web3 pour réécrire le paysage de l'IA et créer l'avenir

Par exemple:

Users can download personal AI to their computers or mobile phones, make requests to personal AI, such as buy the cheapest GTX 3080 graphics card on Amazon, and pay fees (purchase fee + service fee + PIN Protocol Gas fee).

Personal AI communicates this requirement to PIN Protocol.

After understanding and deconstructing the users intent, PIN Protocol will break down the users intent into specific task steps and send them to the proxy service along with the most relevant data. There may be dozens of proxy services dedicated to Amazon shopping at the same time, so PIN Protocol needs to comprehensively consider their costs, performance, and past completion records and select the most suitable one.

The proxy service finds the most cost-effective GTX 3080 graphics card on Amazon and places an order. After completion, the intention disassembly fee and data call fee will be paid to PIN Protocol. PIN Protocol and personal AI feedback the results to the user and send the user PIN tokens as a reward.

Network Participants

Personal AI users : Install personal AI on a computer or mobile phone, connect personal data to PIN Protocol, and receive PIN token rewards.

Une analyse détaillée du dernier investissement d'a16zs dans PIN AI : utiliser le Web3 pour réécrire le paysage de l'IA et créer l'avenir

Value transfer users : Like the above usage model, users who conduct valuable transactions will also receive PIN token rewards.

PIN Protocol Node : Tracks and verifies user data connected to the network. Operators need to stake, and token holders can stake tokens to nodes, and both can receive staking rewards.

Agency services : Developers can earn service fees.

2. Core Development Team

Davide Crapis – Co-founder

Background in blockchain protocol design, with some AI background

He worked as a senior data scientist at Lyft, where he designed and implemented an incentive allocation algorithm that issued $xx in growth incentives to passengers and drivers each year. After resigning, he worked as an independent researcher for a while, studying incentive schemes and token allocation. Before founding PIN AI, he worked as a research scientist in the Ethereum Foundation’s “robust incentives” direction.

He has developed a machine learning model for consumer sensitivity to investment/credit product interest rates and worked as a researcher and mentor in machine learning at Columbia Business School for four years. He has joined the Web2 developer community South Park to explore the intersection of large language models and blockchain.

Ben Wu – Co-founder

Operational background, may provide strategic direction and AI product ideas

Graduated from MIT and a Y Combinator alumnus. Before founding PIN AI, he worked as the Director of Database and Operations in Yahoos Strategic Data Solutions Department, responsible for the operation and management of large-scale data projects.

Bill Sun – Co-founder, Chief Scientist

Quantitative Trading and AI Background

A PhD in Mathematics from Stanford University, he worked on AI research at Google DeepMind. He worked as an AI/quantitative trading stock investment manager at a Wall Street asset management company. He founded the AI research organization AI+Club and the AI technology community AGI House. He is an angel investor of the a16z scout fund. He is also the founder of Generative Alpha, which provides enterprise-level AI solutions.

3. Thoughts and Conclusions

In the first industrial revolution, machinery freed our hands;

The second industrial revolution, electricity broke the boundary between day and night;

In the third industrial revolution, the Internet merges the boundaries between the virtual and the real.

The emergence of AI is generally considered to be a sign of the Fourth Industrial Revolution, and AI Agent is the ticket for this journey of exploration. Each of us can board this ship heading for the future of human-computer interaction.

Over the past few decades, a large amount of activities have taken place on the Internet every day and massive amounts of data have been generated. However, users do not have ownership of this data.

iPhone 16 has just been released, bringing Apple Intelligence, but PIN AI has the opportunity to build an AI Agent ecosystem that is more open than Apple Intelligence.

Among them, developers can get rewards by developing innovative Web2 platform agent services, which will give birth to AI agents with higher and higher performance and quality, triggering a wave of innovation.

Billions of mobile phone users can not only use personalized personal AI, but also share device data to earn rewards.

User data supports the entire PIN AI ecosystem. This is the power of users and the starting point of Web3 – decentralization and ownership.

I hope to see the implementation of the PIN AI network as soon as possible and whether the incentive mechanism it brings can play an effective role, so that a large number of open source contributors can flock to it and then create a larger wave of innovation. The test network may be launched in October, and the main network and TGE will be launched in January next year, which is worth looking forward to.

This article is sourced from the internet: A detailed analysis of a16zs latest investment in PIN AI: Using Web3 to rewrite the AI landscape and create the future of human-computer interaction

Related: Bitget Research Institute: BTC briefly broke through $68,000, and Solanas ecological wealth-creating effect is significa

In the past 24 hours, many new popular currencies and topics have appeared in the market. It is very likely that they will be the next opportunity to make money . Currently: Sectors with relatively strong wealth effects: blue chip public chain sector, Ethereum Layer 2 sector, ETH ecological projects Hot search tokens and topics among users are: Particle Network, Helium; Potential airdrop opportunities include: Particle Network, Movement; Data statistics time: July 22, 2024 4: 00 (UTC + 0) 1. Market environment BTC briefly rose above $68,000, with a 0.8% increase in the past 24 hours. The U.S. Bitcoin spot ETF achieved a net inflow of $1.196 billion last week, which was also its third consecutive week of net inflow. Among them, the U.S. Bitcoin spot ETF received inflows of…

© Copyright Notice

Related articles