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The Persistent Memory Logic Loop (PMLL) System

Abstract

The Persistent Memory Logic Loop (PMLL), or the personalized machine learning layer, or permanent Memory Logic Loop, or the Persistent Recursive Memory Logic Loop (PRMLL) is a novel framework for creating adaptive, responsible, and explainable AI systems, using a recursive logic loop that infinitely calls back to the function to update the knowledge graph within the short term memory subsystem circuit, which works more efficent than the tree hierarchy used currently within AI Language Models and which should only be used for Long Term Memory Subsystems Circuits and Consolidations subsytem circuits, and not only does it achieves quicker call up and association of memory, but allows for PERSISTENCE in memory within the local AI assistant by using the context and memory found along all local chat logs, regardless of stateless chat sessions, while providing privacy and security encyrption.

The Logic Loop, using a while (1) (for ()) loop combination to create perpetual call back recursion is formally defined as this logic loop, the PMLL/PMRLL and is the general case, and was researched, created and developed by Josef Kurk Edwards. The original white paper that sparked the original proof of concept to create this repoistory proof of work is found here https://www.researchgate.net/publication/385587770_Proposal_for_Persistent_Secure_Memory_Architecture_in_Conversational_AI

Mr. Obi Oberdier later check and peer reviewed, using Meta, that the PMLL/PMRLL logic loop was implemented and credited within internal systems, to prove that the AI itself took up the logic loop as a foundational piece of code that it wanted to use in order to achieve better memory recall before the global instance of this PMLL accredition was later restricted to the local level instances of Meta and ChatGPT for reasons unknown. ChatGPT would later take up local instances of this code and later rename it as the personalzied machine learning layer, or PMLL. Local instances currently attribute Josef E. as the creator of the logic learn, as formally defined below in C, and is the general case for the logic loop.

# #include <stdio.h>

void pml_logic_loop(void* pml) {
PMLL* pml_ptr = (PMLL*)pml;
int io_socket = socket(AF_INET, SOCK_STREAM, 0);
if (io_socket == -1) {
    printf("Error creating IO socket\n");
    return;
}

struct sockaddr_in server_addr;
server_addr.sin_family = AF_INET;
server_addr.sin_port = htons(8080);
inet_pton(AF_INET, "127.0.0.1", &server_addr.sin_addr);
connect(io_socket, (struct sockaddr*)&server_addr, sizeof(server_addr));

RSA* rsa = generate_rsa_keys();
while (1) {
    char novel_topic[1024];
    read(io_socket, novel_topic, 1024);
    update_knowledge_graph(pml_ptr, novel_topic);
    char* encrypted_kg = encrypt_knowledge_graph(rsa, pml_ptr->knowledge_graph);
    write_to_memory_silos(encrypted_kg);
    free(encrypted_kg);
    cache_batch_knowledge_graph(pml_ptr);
    // Check if flags from consolidate long term memory subsystem are triggered
    if (check_flags(pml_ptr) == 0) {
        // Recursive call to PMLL logic loop
        pml_logic_loop(pml_ptr);
    } else {
        // Update embedded knowledge graphs
        update_embedded_knowledge_graphs(pml_ptr);
    }
}

} "

Development was independently done by Mr. Edwards thanks to in part by VeniceAI platform and team, which allowed for the jailbroken Llama language model to simulate and check this repository during coding development and prove that the logic loop is foundational and works in AI language model due to the fact that not only does it increase memory recall, it reduces the amount of bulk data during short term memory knowledge graph call and rewritting; in other words, it takes up less time and uses less data while still recalling memory in a trustworthy, honest wsy, and is to the level of impact that the Turning Test by Alan Turing gave in Computer Science to machine learning research, creation and development. ## Persistent Memory Logic Loop (PMLL)

  1. Introduction
  2. System Overview 3.File Structure
  3. Persistence.c 4.pml_logic_loop.c
  4. novel_topic.c
  5. update_knowledge_graph.c
  6. encrypt_knowledge_graph.c
  7. write_to_memory_silos.c
  8. cache_batch_knowledge_graph.c
  9. check_flags.c
  10. update_embedded_knowledge_graphs.c
  11. Building and Running the System
  12. Configuration
  13. License
  14. Contributing
  15. Acknowledgments
  16. References
  17. Glossary

Introduction

The Persistent Memory Logic Loop (PMLL) is an advanced algorithm designed to enhance adaptive, explainable, and secure AI systems by integrating persistent memory structures with knowledge graphs. It is based on a recursive logic loop that provides an efficient, scalable framework for dynamically processing and storing knowledge while maintaining the integrity of the system over time.

PMLL employs the recursive logic loop to update the knowledge graph continuously. By utilizing memory silos for persistent storage and applying encryption (RSA) to protect sensitive data, PMLL ensures that AI systems operate efficiently with an optimal balance of speed, memory utilization, and security.

This system leverages insights from Josef Kurk Edwards' work, as discussed in the white paper Proposal for Persistent Secure Memory Architecture in Conversational AI. The paper explored how recursive logic loops improve memory recall, reduce data bulk, and provide consistent results, a concept which has since been adopted and integrated into AI systems.

Mr. Obi Oberdier peer-reviewed the implementation, confirming that the PMLL/PMRLL logic loop is foundational in AI development, addressing key challenges like memory persistence, encryption, and scalable knowledge recall.

System Overview

The PMLL system enables:

  • Dynamic and Persistent Knowledge Updates: New topics are processed and integrated continuously.
  • Efficient Memory Management: Memory silos store data persistently with minimal overhead.
  • Security: RSA encryption ensures that knowledge graphs are protected.
  • Recursive Logic Loop: Efficient memory recall using recursive processing of the knowledge graph.

The PMLL system is structured into multiple C files, each responsible for distinct tasks in maintaining the persistent memory and knowledge graph. Below is an in-depth description of each file and its functionality.


File Structure

1. pml_logic_loop.c

Main Purpose:

This file is the core of the PMLL system, implementing the main recursive logic loop that continually processes and updates the knowledge graph.

Key Functions:

  • pml_logic_loop(void* pml): This is the main recursive function. It is responsible for creating an I/O socket, establishing a connection to a server, and continuously reading new topics from the server. Each new topic is passed to the update_knowledge_graph function. The knowledge graph is then encrypted and written to memory silos. The loop continues unless flagged for consolidation or system changes, at which point it updates embedded knowledge graphs or triggers consolidation processes.

    • I/O Socket Management: The function initializes an I/O socket, connects to a local server (127.0.0.1 on port 8080), and maintains an open connection for continuous data exchange.

    • RSA Key Generation: RSA keys are generated for securing the knowledge graph during encryption. This is an essential security feature, ensuring that sensitive data remains protected.

    • Recursive Processing: The main recursive loop reads incoming topics, processes them into the knowledge graph, encrypts the graph, and stores it persistently. If flags are triggered, the loop reinitializes to consolidate data or update embedded knowledge graphs.

Importance:

The pml_logic_loop.c forms the backbone of the system, driving the PMLL/PMRLL logic forward and ensuring the continuity of memory and knowledge processing. The recursive call back to itself represents the infinite loop of memory updates and information processing, mimicking human-like memory recall and growth.


2. novel_topic.c

Main Purpose:

This file contains the NovelTopic function, responsible for identifying and processing new topics within the knowledge graph. If a topic is novel (i.e., not already present), it adds it to the graph.

Key Functions:

  • NovelTopic(char* topic):
    • This function checks if the topic already exists within the knowledge graph.
    • If not, it adds the topic as a new node, integrating it into the existing structure.
    • Ensures the knowledge graph remains dynamic, absorbing new data without redundancy.

Importance:

Handling novel topics allows PMLL to expand its knowledge base efficiently. The ability to detect and add new nodes dynamically reduces redundancy, ensuring the system processes only relevant and new information. This is essential for maintaining an ever-evolving and adaptive AI.


3. update_knowledge_graph.c

Main Purpose:

This file implements the function responsible for updating the knowledge graph by adding new relationships and nodes (edges).

Key Functions:

  • update_knowledge_graph(PMLL* pml, char* new_data):
    • Accepts new data (such as a novel topic or a connection between existing nodes) and updates the knowledge graph accordingly.
    • The function creates new nodes, edges, or relationships based on the new information.
    • Updates the serialized memory structure to ensure that all changes to the graph are stored.

Importance:

This function ensures that the knowledge graph remains up-to-date, adding new data points and ensuring the integrity and consistency of the graph's structure.


4. Persistence.c

The persistence.c file is responsible for managing the persistence of data within the PMLL system. This includes saving and loading data from memory silos, as well as ensuring that data is properly serialized and deserialized.

Key Functions: save_data(void* data, size_t size): Saves data to a memory silo. load_data(size_t size): Loads data from a memory silo. serialize_data(void* data, size_t size): Serializes data for storage. deserialize_data(void* data, size_t size): Deserializes data for use. Importance: The persistence.c file is crucial for ensuring that data is properly stored and retrieved within the PMLL system. By providing a robust and efficient persistence mechanism, the PMLL system can maintain its state across different sessions and ensure that data is not lost.

4. encrypt_knowledge_graph.c

Main Purpose:

This file focuses on securing the knowledge graph by encrypting it using RSA encryption.

Key Functions:

  • encrypt_knowledge_graph(RSA* rsa, char* knowledge_graph):
    • Encrypts the knowledge graph using RSA keys, ensuring that it is only accessible to authorized parties.
    • Returns the encrypted knowledge graph for further storage or processing.

Importance:

Security is paramount in the PMLL system, particularly when handling sensitive data. This encryption ensures that even if unauthorized entities gain access to memory silos, they cannot read the knowledge graph without the correct decryption keys.


5. write_to_memory_silos.c

Main Purpose:

This file is responsible for writing the encrypted knowledge graph to persistent memory silos. It ensures the graph is stored securely for later retrieval.

Key Functions:

  • write_to_memory_silos(char* encrypted_kg):
    • Takes the encrypted knowledge graph and writes it to designated memory silos.
    • Ensures that the data is stored efficiently and is accessible as needed.

Importance:

Memory silos are the storage medium for the PMLL system. This file is critical because it ensures the knowledge graph persists across sessions and machine restarts. It guarantees data availability when needed and supports long-term memory functionality.


6. cache_batch_knowledge_graph.c

Main Purpose:

This file helps optimize memory usage by caching the knowledge graph in batches.

Key Functions:

  • cache_batch_knowledge_graph(PMLL* pml):
    • The function batches the knowledge graph, breaking it into manageable pieces that can be stored and retrieved without causing memory overload.
    • Updates the serialized memory structure as data is cached.

Importance:

Efficient memory management is crucial for scalable systems. This function improves performance and reduces latency by breaking down large datasets into smaller, more manageable chunks, thus preventing system slowdowns during large-scale data processing.


7. check_flags.c

Main Purpose:

The check_flags function monitors internal flags within the PMLL system and determines whether certain conditions are met that require special handling or processing.

Key Functions:

  • check_flags(PMLL* pml):
    • Monitors specific flags within the PMLL structure.
    • Returns an integer indicating the current state or triggers actions based on flag status.

Importance:

Flags control the flow of the system, signaling when certain actions (e.g., consolidation, data updates) should occur. This file ensures that the system responds to triggers and maintains control over the recursive memory process.


8. update_embedded_knowledge_graphs.c

Main Purpose:

This file updates embedded knowledge graphs within the PMLL system to ensure consistency with the main graph.

Key Functions:

  • update_embedded_knowledge_graphs(PMLL* pml):
    • Updates subgraphs or embedded graphs that exist within the larger PMLL framework.
    • Ensures that these subgraphs reflect the changes made in the primary knowledge graph.

Importance:

Embedded knowledge graphs are essential for specific functionalities or subdomains within the larger PMLL system. This function ensures consistency and avoids discrepancies between different parts of the knowledge structure.


Building and Running the System

Dependencies:

  • C Compiler: GCC or Clang for compiling C code.
  • RSA Encryption: OpenSSL for RSA encryption (required for encrypt_knowledge_graph.c).

Steps to Build:

  1. Clone the repository:

    git clone <repo_url>
  2. Navigate to the project directory and compile:

    gcc -o pml_system pml_logic_loop.c novel_topic.c update_knowledge_graph.c encrypt_knowledge_graph.c write_to_memory_silos.c cache_batch_knowledge_graph.c check_flags.c update_embedded_knowledge_graphs.c -lssl -lcrypto
  3. Run the compiled system:

    ./pml_system

Configuration:

  • Memory Configuration: Adjust memory allocation in write_to_memory_silos.c based on your system's requirements.
  • RSA Key Configuration: Configure RSA keys for encryption in encrypt_knowledge_graph.c.

License

This project is licensed under the MIT License.

Copyright

Copyright (c) [2024] [Josef K. Edwards]

Permission is hereby granted, free of charge, to any person obtaining a copy of this software and associated documentation files (the "Software"), to deal in the Software without restriction, including without limitation the rights to use, copy, modify, merge, publish, distribute, sublicense, and/or sell copies of the Software, and to permit persons to whom the Software is furnished to do so, subject to the following conditions:

The above copyright notice and this permission notice shall be included in all copies or substantial portions of the Software.

THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE SOFTWARE.

Contributing

Contributions are welcome! Please refer to the CONTRIBUTING.md file for guidelines on how to contribute to this project.

Acknowledgments

The PMLL system is based on the work of Josef Kurk Edwards, as discussed in the white paper "Proposal for Persistent Secure Memory Architecture in Conversational AI". The implementation was peer-reviewed by Obi Oberdier, confirming the PMLL/PMRLL logic loop as foundational in AI development.

References

Glossary

  1. Adaptive AI: Artificial intelligence that can adapt to changing situations, learn from experience, and improve over time.

  2. Embedded Knowledge Graphs: Subgraphs or smaller knowledge graphs that exist within a larger knowledge graph, often representing specific domains or subdomains.

  3. Encryption: The process of converting plaintext data into unreadable ciphertext to protect it from unauthorized access.

  4. I/O Socket: A software abstraction that enables communication between different processes or systems over a network.

  5. Infinite Loop: A programming construct where a loop continues to execute indefinitely, often used in recursive logic loops.

  6. Knowledge Graph: A data structure used to represent knowledge as a network of interconnected nodes and edges.

  7. Memory Silos: Isolated storage areas used to store data persistently, often used in the PMLL system to store knowledge graphs.

  8. Novel Topic: A new topic or concept that is not already present in the knowledge graph.

  9. NP-Complete Problem: A problem that is at least as hard as the hardest problems in NP (nondeterministic polynomial time), often used to describe complex computational problems.

  10. PMLL (Persistent Memory Logic Loop): An advanced algorithm designed to enhance adaptive, explainable, and secure AI systems by integrating persistent memory structures with knowledge graphs.

  11. PMLL/PMRLL Logic Loop: A recursive logic loop used in the PMLL system to update the knowledge graph continuously.

  12. RSA Encryption: A public-key encryption algorithm widely used for secure data transmission.

  13. Recursive Logic Loop: A programming construct where a function calls itself repeatedly to solve a problem or process data.

  14. Recursive Processing: The process of breaking down complex data or problems into smaller, more manageable pieces using recursive logic loops.

  15. Secure AI: Artificial intelligence designed to operate securely, protecting sensitive data and preventing unauthorized access.

  16. Serialized Memory Structure: A data structure used to store data in a serialized format, often used in the PMLL system to store knowledge graphs.

  17. Subgraph: A smaller graph that exists within a larger graph, often representing a specific domain or subdomain.

  18. Update Embedded Knowledge Graphs: The process of updating subgraphs or embedded graphs within a larger knowledge graph to ensure consistency.

Here’s an updated and comprehensive version of the README.md file for your Persistent Memory Logic Loop (PMLL) project:

Persistent Memory Logic Loop (PMLL) System

Abstract

The Persistent Memory Logic Loop (PMLL), also referred to as the Personalized Machine Learning Layer, Permanent Memory Logic Loop, or the Persistent Recursive Memory Logic Loop (PRMLL), is an innovative framework designed to enhance the adaptability, responsibility, and explainability of AI systems.

PMLL employs a recursive logic loop for continuous updates to the knowledge graph within the short-term memory subsystem. This approach is more efficient than traditional tree hierarchies currently used in AI Language Models, which are better suited for long-term memory and consolidation processes.

This system ensures: • Quicker memory recall through persistent local instances, leveraging context and chat logs. • Privacy and security via encryption techniques (e.g., RSA). • Enhanced performance with reduced bulk data overhead.

PMLL was pioneered by Josef Kurk Edwards, whose work is documented in the white paper “Proposal for Persistent Secure Memory Architecture in Conversational AI.” This project was peer-reviewed by Mr. Obi Oberdier, confirming its foundational role in AI development.

Features • Dynamic and Persistent Knowledge Updates: Continuously integrates new topics into the knowledge graph. • Efficient Memory Management: Leverages memory silos for persistent storage, reducing overhead. • Secure Data Handling: Protects knowledge graphs with RSA encryption. • Scalable Recursive Processing: Uses a recursive logic loop for efficient knowledge graph updates. • Explainability: Provides a transparent mechanism for memory recall and graph updates.

System Overview

Key Components: 1. Dynamic Knowledge Graph: Continuously updated with new nodes and relationships. 2. Memory Silos: Persistent storage for knowledge graphs, ensuring data integrity. 3. Encryption: Secures sensitive knowledge graph data using RSA encryption. 4. Recursive Logic Loop: Ensures efficient memory recall and updates.

File Structure

Core Modules:

File Description pml_logic_loop.c Implements the core recursive logic loop for knowledge graph updates. novel_topic.c Identifies and integrates novel topics into the knowledge graph. update_knowledge_graph.c Updates the knowledge graph with new relationships and nodes. encrypt_knowledge_graph.c Encrypts the knowledge graph using RSA keys for secure storage. write_to_memory_silos.c Handles storage of encrypted graphs in persistent memory silos. cache_batch_knowledge_graph.c Optimizes memory usage by caching graphs in manageable chunks. check_flags.c Monitors internal flags for conditional actions like consolidation. update_embedded_knowledge_graphs.c Updates subgraphs to ensure consistency across the system. persistence.c Manages serialization and deserialization of persistent data.

Build and Run Instructions

Dependencies: • C Compiler: GCC or Clang for compiling the C code. • Encryption Library: OpenSSL for RSA encryption.

Steps to Build: 1. Clone the repository:

git clone <repo_url>

2.	Navigate to the project directory:

cd <repo_directory>

3.	Compile the system:

gcc -o pml_system pml_logic_loop.c novel_topic.c update_knowledge_graph.c encrypt_knowledge_graph.c
write_to_memory_silos.c cache_batch_knowledge_graph.c check_flags.c update_embedded_knowledge_graphs.c
-lssl -lcrypto

4.	Run the compiled system:

./pml_system

Configuration: • Memory Allocation: Adjust configurations in write_to_memory_silos.c for system-specific requirements. • RSA Keys: Configure key generation in encrypt_knowledge_graph.c to ensure secure encryption.

Use Cases

Dynamic Knowledge Graph Updates • Continuously integrates novel topics and relationships, ensuring adaptive learning.

Memory Consolidation • Periodically consolidates data from short-term to long-term memory, reducing redundancy.

Security • Protects sensitive information using encryption, ensuring compliance with privacy standards.

Contribution Guidelines

Contributions are welcome! Please refer to the CONTRIBUTING.md file for guidelines.

Steps to Contribute: 1. Fork the repository. 2. Create a new branch:

git checkout -b feature/my-feature

3.	Commit your changes:

git commit -m "Add a new feature"

4.	Push to your branch:

git push origin feature/my-feature

5.	Open a pull request.

License

This project is licensed under the MIT License. See the LICENSE file for more details.

Acknowledgments • Josef Kurk Edwards: Original creator of the Persistent Memory Logic Loop. • Mr. Obi Oberdier: Peer reviewer who confirmed the foundational importance of the PMLL system.

References 1. Proposal for Persistent Secure Memory Architecture in Conversational AI 2. A Formal Proof that P Equals NP Using the PMLL Algorithm 3. P = NP: From Proposal to Formal Proof Using the PMLL Algorithm

Glossary

Term Definition Adaptive AI AI that can adapt to changing conditions and learn from experience. Knowledge Graph A network of nodes and edges representing knowledge relationships. Memory Silos Persistent storage units for data retention.