Private Personalized AI agent with XTrace

5 min read

What is an AI agent?

An AI agent is an autonomous software entity designed to perform tasks by perceiving its environment, processing information, and taking actions to achieve specific goals. An AI agent typically comprises three core components:

  1. Intelligence: The large language model (LLM) that drives the agent’s cognitive capabilities, enabling it to understand and generate human-like text. This component is usually guided by a system prompt that defines the agent’s goals and the constraints it must follow.
  2. Knowledge: The domain-specific expertise and data that the agent leverages to make informed decisions and take action. Agents utilize this knowledge base as context, drawing on past experiences and relevant data to guide their choices.
  3. Tools: A suite of specialized tools that extend the agent’s abilities, allowing it to efficiently handle a variety of tasks. These tools can include API calls, executable code, or other services that enable the agent to complete its assigned tasks.

What are the three core components of an AI agent?

Correct! Wrong!

What is RAG?

Retrieval-Augmented Generation (RAG) is an AI technique that enhances large language models (LLMs) by integrating relevant information from external knowledge bases. Through semantic similarity calculations, RAG retrieves document chunks from a vector database, where these documents are stored as vector representations. This process reduces the generation of factually incorrect content, significantly improving the reliability of LLM outputs.\cite{RAG}

A RAG system consists of two core components: the vector database and the retriever. The vector database holds document chunks in vector form, while the retriever calculates semantic similarity between these chunks and user queries. The more similar a chunk is to the query, the more relevant it is considered, and it is then included as context for the LLM. This setup allows RAG to dynamically update an LLM’s knowledge base without the need for retraining, effectively addressing knowledge gaps in the model’s training data.

The RAG pipeline operates by augmenting a user’s prompt with the most relevant retrieved text. The retriever fetches the necessary information from the vector database and injects it into the prompt, providing the LLM with additional context. This process not only enhances the accuracy and relevance of responses but also makes RAG a crucial technology in enabling AI agents to work with real-time data, making them more adaptable and effective in practical applications.

How does Retrieval-Augmented Generation (RAG) improve LLM responses?

Correct! Wrong!

What is Agent Memory?

AI agents, by default, are designed to remember only the current workflow, with their memory typically constrained by a maximum token limit. This means they can retain context temporarily within a session, but once the session ends or the token limit is reached, the context is lost. Achieving long-term memory across workflows—and sometimes even across different users or organizations—requires a more sophisticated approach. This involves explicitly committing important information to memory and retrieving it when needed.

Agent Memory with blockchain:

XTrace  – A Secure AI Agent Knowledge & Memory Protocol for Collective Intelligence – will leverage blockchain as the permission and integrity layer for agent memory, ensuring that only the agent’s owner has access to stored knowledge. Blockchain is especially useful for this long persistent storage as XTrace provides commitment proof for the integrity of both the data layer and integrity of the retrieval process. The agent memory will be securely stored within XTrace’s privacy-preserving RAG framework, enabling privacy, portability and sharability. This approach provides several key use cases:

Stateful Decentralized Autonomous Agents:

  • XTrace can act as a reliable data availability layer for autonomous agents operating within Trusted Execution Environments (TEEs). Even if a TEE instance goes offline or if users want to transfer knowledge acquired by the agents, they can seamlessly spawn new agents with the stored network, ensuring continuity and operational resilience.

XTrace Agent Collaborative Network:

  • XTrace enables AI agents to access and inherit knowledge from other agents within the network, fostering seamless collaboration and eliminating redundant processing. This shared memory system allows agents to collectively improve decision-making and problem-solving capabilities without compromising data ownership or privacy.

XTrace Agent Sandbox Test:

  • XTrace provides a secure sandbox environment for AI agent developers to safely test and deploy their agents. This sandbox acts as a honeypot to detect and mitigate prompt injection attacks before agents are deployed in real-world applications. Users can define AI guardrails within XTrace, such as restricting agents from mentioning competitor names, discussing political topics, or leaking sensitive key phrases. These guardrails can be enforced through smart contracts, allowing external parties to challenge the agents with potentially malicious prompts. If a prompt successfully bypasses the defined safeguards, the smart contract can trigger a bounty release, incentivizing adversarial testing. Unlike conventional approaches, XTrace agents retain memory of past attack attempts, enabling them to autonomously learn and adapt to new threats over time. Following the sandbox testing phase, agents carry forward a comprehensive memory of detected malicious prompts, enhancing their resilience against similar attacks in future deployments.

How to create a Personalized AI agent?

To create an AI agent with XTrace, there are three main steps to follow:

  1. Define the Purpose: Determine the specific tasks and goals the agent will accomplish.
  2. Choose the AI Model: Select a suitable LLM or other machine learning models that align with the agent’s requirements.
  3. Gather and Structure Knowledge: Collect domain-specific data and organize it in a way that the agent can efficiently use.
  4. Develop Tools and Integrations: Incorporate APIs, databases, or other services that the agent may need to interact with.

How to create a Private Personalized AI agent with XTrace?

XTrace can serve as the data connection layer between the user and the AI agents. Users will be able to securely share data from various apps into the system to create an AI agent that is aware of the user’s system. By leveraging XTrace’s encrypted storage and access control mechanisms, AI agents can be personalized without compromising user privacy. Key features include:

  1. Seamless Data Integration: Aggregating data from multiple sources securely.
  2. Granular Access Control: Ensuring only authorized AI agents can access specific data.
  3. Privacy-Preserving Computation: Enabling AI agents to learn from user data without exposing it.
  4. Automated Insights: Leveraging AI to provide personalized recommendations based on securely stored data.
  5. User Ownership: Empowering users with full control over their data and how it is used.

How do we use XTrace private RAG for (L)Earn AI🕺?

  1. We send learning materials in LLM friendly format to LNC RAG at XTrace
    send-to-rag
  2. Once (L)Earn AI🕺 gets the question, first it talks to private RAG and retrieve relevant information
    learn-ai-private-rag-300x105
  3. The LLM hosted at NEAR AI infrastructure generates a response based on both its pre-trained knowledge and the retrieved information!
    learn-ai-private-rag-feedback-300x214
  4. Learners are encouraged to provide feedback and get 4nLEARNs to improve (L)Earn AI🕺 to work better for NEAR community!
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188 thoughts on “Private Personalized AI agent with XTrace”

  1. enab.near (8 nL)

    I'm excited to see how XTrace private RAG is being utilized to enhance the (L)Earn AI experience! The idea of sending learning materials in an LLM-friendly format to the RAG and then retrieving relevant information to inform AI responses is genius. I'm curious to know more about the type of feedback learners are encouraged to provide and how that feedback is used to improve the AI. Is there a way to track the progress and effectiveness of the 4nLEARNs system? Additionally, how does the NEAR community plan to expand the capabilities of (L)Earn AI in the future?

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  2. puzz.near (8 nL)

    This explanation of how XTrace private RAG is used for (L)Earn AI is fascinating! I love how the process involves a seamless collaboration between the LNC RAG, private RAG, and the LLM hosted on NEAR AI infrastructure. The fact that learners can provide feedback and earn 4nLEARNs to improve the AI is a great incentive to encourage community engagement. I'm curious to know more about how the feedback mechanism works and how it impacts the AI's performance over time. Can anyone share more insights on this?

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  3. plugg.near (0 nL)

    Fascinating concept! The idea of creating a private, personalized AI agent that respects user privacy is a game-changer. I'm particularly intrigued by the granular access control feature, which ensures that only authorized AI agents can access specific data. However, I wonder how XTrace plans to balance the need for AI agents to learn from user data with the need to keep that data private. How will the system ensure that AI agents don't inadvertently compromise user privacy while still providing accurate, personalized recommendations? Can't wait to see how this technology develops and addresses these complex issues.

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  4. Fascinating to see how XTrace private RAG is integrated with (L)Earn AI to create a seamless learning experience! I'm impressed by how the system retrieves relevant information and generates responses based on both pre-trained knowledge and user feedback. The incentive of earning 4nLEARNs for providing feedback is a great motivator for learners to contribute to the improvement of the AI. I'm curious to know more about the type of feedback that's most valuable for (L)Earn AI's growth and how it will be utilized to refine its responses. Can't wait to see how this tech will evolve and benefit the NEAR community!

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  5. orldv.near (0 nL)

    Fascinating overview on creating a personalized AI agent with XTrace! I particularly appreciate the emphasis on defining the purpose and choosing the right AI model. It's crucial to identify the specific tasks and goals to ensure the agent's effectiveness. I'm curious, though – what kind of domain-specific data is necessary for the agent to learn and adapt? Are there any specific data structures or formats that are more effective for organizing this knowledge? Looking forward to exploring these steps further and creating a tailored AI agent that meets my specific needs!

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  6. skis.near (0 nL)

    Fascinating concept! The application of blockchain technology to ensure the integrity and privacy of AI agent memory is a game-changer. I'm particularly intrigued by the XTrace Agent Collaborative Network, which enables agents to share knowledge and improve decision-making without compromising data ownership. This has huge potential for industries like healthcare, finance, and cybersecurity. However, I do wonder how the system would handle conflicting or contradictory knowledge inherited from different agents. Would there be a mechanism for reconciling and verifying the accuracy of inherited knowledge? Additionally, how would XTrace ensure that the 'AI guardrails' don't inadvertently stifle innovation or creativity in agent development? Looking forward to seeing how these challenges are addressed.

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  7. ficto.near (0 nL)

    This RAG technique is a game-changer for large language models! I'm impressed by how it addresses the issue of factual inaccuracies by integrating external knowledge bases. The dynamic update feature is especially exciting, eliminating the need for retraining and allowing AI agents to work with real-time data. I wonder, though, how RAG handles conflicting or outdated information in the vector database? Could this lead to biased or inaccurate outputs? Additionally, I'd love to see more exploration on the potential applications of RAG in fields like education, customer support, or content creation. The possibilities seem endless!

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  8. worka.near (0 nL)

    This concept of creating a private personalized AI agent with XTrace is truly revolutionary! I love how it prioritizes user privacy while still allowing for seamless data integration and granular access control. The idea of having an AI agent that can learn from my data without exposing it is a game-changer. But I do have one question – how will XTrace ensure that the AI agents are not biased towards certain data sources or user demographics? Will there be mechanisms in place to mitigate potential biases and ensure the AI agent remains neutral and objective? Can't wait to see this technology in action!

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  9. thumq.near (0 nL)

    I found this outline to be a great starting point for creating a personalized AI agent with XTrace. I'm curious to know more about the 'Gather and Structure Knowledge' step, as I imagine it can be a daunting task to collect and organize domain-specific data in a way that's efficient for the agent. Are there any specific strategies or tools that can be used to make this process more manageable? Additionally, I'd love to see some examples of how different types of AI models can be used to accomplish unique tasks and goals. Overall, excited to dive deeper into creating a personalized AI agent!

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  10. rases.near (0 nL)

    Fascinating! I've been exploring the realm of personalized AI agents, and this 4-step approach to creating one with XTrace seems like a solid foundation. I'm particularly intrigued by the second step, 'Choose the AI Model'. With the vast array of LLMs and machine learning models available, how do you determine which one is the best fit for your agent's specific requirements? Are there any guidelines or tools that can help with this selection process? Additionally, I'd love to know more about the types of data that are typically collected in the 'Gather and Structure Knowledge' step. Can anyone share their experiences or insights on this?

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  11. This was a really helpful breakdown of the process to create a personalized AI agent with XTrace! I'm curious to know more about the 'Gather and Structure Knowledge' step. How does one ensure that the domain-specific data collected is not only accurate but also diverse enough to avoid biases in the AI model? Additionally, are there any best practices for organizing the data in a way that the agent can efficiently use? Any examples or case studies would be super helpful in illustrating this step. Looking forward to hearing from others who have implemented this process!

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  12. outh.near (0 nL)

    This is a game-changer for AI applications! I'm excited to see how RAG can bridge the knowledge gaps in language models, making them more reliable and accurate. The dynamic updating of the knowledge base without retraining is a huge advantage, especially in fast-paced domains where information is constantly evolving. I wonder, though, how RAG handles contradictory or outdated information in the vector database – will there be a system in place to ensure the retrieved chunks are trustworthy and up-to-date? Also, I'd love to see some examples of RAG in action, demonstrating its impact on real-world applications like customer service chatbots or news reporting.

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