FundamentalAGI Blueprint

fundamentalAGI

funAGI

Objective: Develop a comprehensive Autonomous General Intelligence (AGI) system named FundamentalAGI (funAGI). This system integrates various advanced AI components to achieve autonomous general intelligence, leveraging multiple frameworks, real-time data processing, advanced reasoning, and a sophisticated memory system. Design will be modular for dynamic adaptation using modern object oriented programming technique primary in the Python language.

Components of funAGI: the big picture

  1. Mastermind Controller of Agency (MCA)
    • Central control unit managing various AGI functions.
    • Ensures coordination and execution of tasks across different modules.
  2. OpenMind Multi-Model Integration (OMMI)
    • Integrates various AI models for multi-modal processing.
    • Facilitates seamless communication between models for enhanced understanding and decision-making.
  3. WebMind Information Parser (WIP)
    • Parses and integrates information from the web and network resources.
    • Ensures real-time updates and knowledge acquisition from external sources.
  4. AutoMind Reasoning Environment (ARE)
    • Comprised of logic.py, reasoning.py, SocraticReasoning.py, and bdi.py.
    • Provides advanced reasoning capabilities, including logical reasoning, Socratic questioning, and belief-desire-intention (BDI) modeling.
  5. SimpleMind Neural Network (SMNN)
    • Utilizes JAX for creating and training neural network models.
    • Focuses on efficient learning and adaptability.
  6. AutoMindX Executable Folder (AMX)
    • Dynamic build environment located in the mindx rwx folder.
    • Allows for on-the-fly creation and execution of AI models and scripts.
  7. AGLM (Autonomous General Learning Model)
    • Built from memory.py parser and memory folder.
    • Central to the system’s learning capabilities, enabling autonomous general learning and continuous improvement.
  8. Memory System
    • Short-Term Memory (STM)
      • RAM-based memory for immediate data processing and tasks.
      • storage of each input response as timestamp.json
      • ./memory/stm
    • Long-Term Memory (LTM)
      • Database and ROM for storing and retrieving long-term knowledge.
      • ./memory/ltm
      • ./memory/context
      • ./memory/truth
      • ./memory/agents
      • ./memory/prompts
    • RAGE (Retrieval Augmented Generative Engine)
      • Uses AGLM to enhance learning by creating memory contexts from the context folder.

Detailed Architecture and Implementation Plan

1. Cognitive Architecture

  • Central Processing:
    • Implement the Mastermind Controller of Agency (MCA) to oversee and manage the entire system.
    • Ensure efficient task execution and coordination among different components.

2. Multi-Modal and Multi-Model Integration

  • OpenMind Multi-Model Integration (OMMI):
    • Develop a framework to integrate models for various tasks such as image recognition, speech processing, and natural language understanding.
    • Ensure seamless data flow and communication between these models to leverage their strengths.

3. Information Parsing and Real-Time Data Integration

  • WebMind Information Parser (WIP):
    • Develop robust parsing algorithms to gather information from the web and other network resources.
    • Ensure real-time data updates and integration into the system’s knowledge base.

4. Advanced Reasoning Environment

  • AutoMind Reasoning Environment (ARE):
    • Implement logic.py, reasoning.py, SocraticReasoning.py, and bdi.py to provide comprehensive reasoning capabilities.
    • Enable logical reasoning, advanced questioning, and belief-desire-intention modeling for complex problem-solving.

5. Neural Network Learning

  • SimpleMind Neural Network (SMNN):
    • Utilize JAX to create efficient and adaptable neural network models.
    • Focus on deep learning, reinforcement learning, and meta-learning for skill acquisition and adaptation.

6. Dynamic Build Environment

  • AutoMindX Executable Folder (AMX):
    • Set up a dynamic build environment for on-the-fly model creation and execution.
    • Ensure flexibility and adaptability in developing and deploying new AI models.

7. Autonomous General Learning Model

  • AGLM and Memory System:
    • Develop the AGLM using memory.py and the memory folder for autonomous learning capabilities.
    • Implement a dual memory system (STM and LTM) for efficient data processing and knowledge retention.
    • Integrate RAGE to enhance learning by creating contextual memories for improved performance.

Continuous Learning and Improvement

  • Online and Self-Supervised Learning:
    • Implement algorithms for continuous learning from new data without the need for complete retraining.
    • Utilize self-supervised learning techniques to generate training data and enhance decision-making.
  • Feedback Loops:
    • Establish continuous feedback loops for performance evaluation and strategy adjustment.
    • Incorporate human oversight and expert feedback to align with human values and ethical considerations.

Ethical Considerations

  • Safety and Robustness:
    • Ensure the system adheres to strict safety protocols, including fail-safes and error detection mechanisms.
  • Transparency and Accountability:
    • Design the system to be transparent in its decision-making processes.
  • Alignment with Human Values:
    • Implement ethical reasoning frameworks to ensure actions align with human values and ethical standards.

Implementation Phases

  1. Research and Development:
    • Conduct thorough research to identify the latest advancements in relevant fields.
    • Develop prototypes and conduct iterative testing to refine capabilities.
  2. Collaboration and Integration:
    • Collaborate with domain experts to integrate technologies and frameworks.
    • Ensure the system remains at the forefront of innovation.
  3. Deployment and Monitoring:
    • Deploy the system in controlled environments initially.
    • Gradually expand operational scope with continuous improvement and monitoring.

Conclusion

Creating funAGI requires integrating advanced AI techniques, robust memory systems, and ethical frameworks. By leveraging multi-modal integration, continuous learning, and adaptive reasoning, funAGI aims to achieve autonomous general intelligence capable of independent operation, continuous self-improvement, and adaptive interaction across diverse environments.


This blueprint outlines the fundamental components and implementation strategies necessary to develop the funAGI system, aiming to achieve a sophisticated level of autonomous general intelligence. More information and the first “working” SocraticReasoning environment is available at

https://github.com/autoGLM/funAGI

Related articles

fundamental AGI

putting the fun into a fundamental augmented general intelligence framework as funAGI funAGI is a development branch of easyAGI. easyAGI was not being easy and SimpleMind neural network was proving to not be simple. For that reason is was necessary to remove reasoning.py and take easyAGI back to its roots of BDI Socratic Reasoning from belief, desire and intention. So this back to basics release should be taken as a verbose logging audit of SocraticReasoning […]

Learn More

easyAGI: Augmenting the Intelligence of Large Language Models

easy augmented general intelligence In the rapidly evolving field of artificial intelligence, the concept of Autonomous General Intelligence (AGI) represents a significant milestone. However, the journey towards AGI is complex and requires innovative approaches to streamline and simplify the development process. Enter easyAGI, a transformative framework designed to augment the intelligence of existing Large Language Models (LLMs). This article explores the core aspects of easyAGI and its impact on the landscape of AGI and LLMs. […]

Learn More

MASTERMIND aGLM with RAGE

Building a rational Autonomous General Learning Model with Retrieval Augmented Generative Engine to create a dynamic learning loop with machine.dreaming for machine.learning as a self-healing architecture. MASTERMIND uses the Autonomous General Learning Model (aGLM) enhanced by the Retrieval Augmented Generative Engine (RAGE) to create a sophisticated AI system capable of intelligent decision-making and dynamic adaptation to real-time data. This combination leverages the strengths of both components to ensure that responses are not only based on […]

Learn More