Introduction
You probably heard that now you can call ChatGPT over the phone. This seems unreal. It is cool but do you have an idea whom you’re gonna be talking to? The best you can do is to rely on service provider reputation – OpenAI OpCo, LLC.
Issues with Current AI
- Centralized Models: Most widely-used models like GPT-4 or Claude are closed-source and centralized.
- Dependence on Centralized Infrastructure: Even “open-source” models often run on centralized platforms like Groq or Together AI.
- Opaque Operations: It is impossible to verify how agents operate—including prompts, limitations, and stop lists.
- Data Privacy Concerns: Users have little visibility into how their data is handled or stored.
These challenges emphasize the need for responsible AI use and caution when relying on AI agents for critical decisions.
AI and Learning
Lucky you if you graduated from school before getting spoiled by AI.
But what if you are not able to verify stuff just because you have not developed learning skills, critical thinking, reasoning skills or just because you are too young or you got addicted to “helpful and efficient” AI agents? This could be a serious issue. Calculators began as costly, limited tools, giving schools years to adapt. Now, AI is transforming education instantly, impacting every subject. Students will cheat with AI but also integrate it into their work, challenging educators and questioning the relevance of traditional assignments.
Common understanding is that unless assignments are completed in class, it’s impossible to reliably determine if the work is human-made.
Verifiable AI can change this.
NEAR AI Hub
NEAR.AI is the answer.
While in Alpha, some exciting features are already available to try. Nothing compares to learning by trying so let’s do it.
Go to the NEAR AI Research Hub.
You may sign in with your NEAR account to interact with the platform. At the Agents tab you find all the agents added to the Registry – Decentralized storage with support of private and encrypted items.
Find and check out Learn AI agent 0.0.1.
You can talk to the agent within NEAR AI hub, and what is more important you can explore the agent’s origin – which is learn-agent.learnclub.near, source code, including prompt and stopwords. Moreover, if you want to tweak it – say remove a stopword that is crucial for you – just clone it. But be aware that now you are in charge of your clone!
Now let’s dig a bit deeper. Switch to the Models tab.
There are over 50 open source models available already. As you can see and verify that Learn AI is using that particular LLaMA hosted at the NEAR AI infrastructure. Using NEAR accounts for interacting with models via agents makes it sure that you know whom you are actually talking to!
NEAR AI is planning to build the next generation frontier AI model with 1.4T parameters! The idea is make open source AI development sustainable via pay-per-use model and this where NEAR will play the crucial role.
What is one major advantage of the NEAR AI infrastructure compared to centralized AI models?
How will NEAR AI pull off building a 1.4T parameter, monetizable model in a decentralized way? Enter the world of Trusted Execution Environments, or TEEs.
Modern processors and GPUs (starting with H100s) allow one actor, Alice, to run code on a machine of another actor, Bob, without trusting Bob, while having the following two guarantees: (a) Bob is in fact running the code Alice expected him to run, and (b) Bob cannot spy on the execution that Alice wants him to carry out. In other words, Alice can safely send any private data into such a computation, being certain Bob will not be able to see it.
Conclusion
The decentralized NEAR AI infrastructure represents a significant step forward in enabling user-owned AI. By offering transparency, control, and flexibility, NEAR AI empowers users to interact with AI agents in a way that ensures data privacy and fosters trust.
LNC, as a NEAR pioneer, is at the forefront of leveraging this infrastructure for practical applications, including the live Learn AI agent, the Lean NEAR Tutor (in development), and the planned WooCommerce Shopping Agent.
As a learner, you’re invited to actively participate in this innovative (L)Earn ecosystem. Ask the (L)Earn AI relevant questions, pay with nLEARNs, gain knowledge, and earn nLEARNs by contributing to the AI’s improvement.
What is the unique feature of the (L)Earn AI agent in the NEAR ecosystem?
📚Happy (L)Earning!🕺
Top comment
Breaking down barriers to participation is crucial in ensuring that everyone has an equal opportunity to learn and grow. I think this strategy is a great example of how technology can be used to create more equitable and accessible learning experiences
By prioritizing transparency, NEAR AI creates a stronger bond
Having verifiable and ownable AI really puts the power into the hands of the user. It also guarantees transparency and trust whenever the AI is summoned. Finally, being decentralized ensures that no bad actor can manipulate the AI coding to run in their favor, potentially sidestepping any security-based attacks on the system.
Good thing sir
yep ? no !
The article highlights the advantages of decentralized AI with NEAR AI, offering transparency, control, and user ownership. It emphasizes the importance of data privacy and responsible AI use, fostering trust in AI interactions.