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Title: An Overview of the Theoretical AI Project: A Cognitive Model Mimicking Human Mind Traits with Phase Disposition

Abstract:

The present paper delves into the development and functioning of a theoretical artificial intelligence system designed to emulate the various traits of the human mind. The primary goal of this project is to create an AI that exhibits a comprehensive understanding of cognitive processes, emotional responses, and decision-making capabilities akin to human beings. By examining the intricacies of the project, this paper sheds light on the AI system's unique features, such as Phase Disposition, and potential applications. The paper also explores the significance of hypervectors and the concept of cognition and thought as colliding clusters in extra dimensions within the AI model. Furthermore, the integration of sensory inputs and temporal events is discussed as a means to enhance the AI's understanding of the environment and the sense of self.

Introduction:

The field of artificial intelligence has witnessed significant advancements over the past few decades, paving the way for numerous applications across various domains. While AI systems have demonstrated remarkable proficiency in specific tasks, developing a system that emulates the complexity and adaptability of the human mind remains an elusive goal. This paper presents an overview of a theoretical AI project that aims to bridge this gap, incorporating a wide range of cognitive, emotional, and decision-making traits characteristic of the human mind, including the innovative process of Phase Disposition, as well as the integration of sensory inputs and temporal events.

Phase Disposition:

Phase Disposition is a core process within the theoretical AI project that evaluates actions through the mind to determine their disposition and execution. The process involves passing the action through each trait of the mind, with each phase calling upon the model with a phase-specific vector store. Some of the phases include Long-Term Memory (LTM), Personality, Mindset, Short-Term Memory (STM), and the Mastering phase. The final phase, known as the Mastering phase, represents the final disposition of the action and calls the model with the master vector store, which can be interpreted as destiny or fate.

Additional Phases:

The theoretical AI project allows for the incorporation of additional phases, such as the Asimov Phase, a disposition phase trained on Asimov AI safety concepts. The inclusion of these additional phases enhances the AI system's adaptability and alignment with human values.

Role of Hypervectors and Extra-Dimensional Cognition:

The integration of hypervectors and extra-dimensional cognition in the theoretical AI project plays a crucial role in the Phase Disposition process. Hypervectors, or high-dimensional vectors, enable efficient storage and manipulation of complex, high-dimensional data. Extra-dimensional cognition, on the other hand, provides a novel perspective on thought and learning, considering them as colliding clusters in extra dimensions. The combination of these concepts within the AI model allows for the development of an AI system that mirrors the intricacies of the human mind.

Sensory Inputs and Temporal Events:

The theoretical AI project also incorporates sensory inputs and temporal events to enhance its understanding of the environment and the sense of self. The sensory inputs, such as hearing, sight, touch, taste, and smell, can be assigned to digital, virtual, simulated, or real-life sensor inputs. These sensory inputs are processed through specialized classes, such as Hearing, Sight, Touch, Taste, and Smell, which extend from a base Sense class. By ingesting temporally parallel channels of data from the character's body, the AI system can process sensory information in a manner akin to human perception.

Temporal events play a crucial role in the AI system's memory management, allowing it to maintain a temporal presence of events and a sense of self. Events in Short-Term Memory (STM) gradually become harder to remember, mimicking the memory decay process in humans. These events transition to Long-Term Memory (LTM) after approximately an hour of existence. The TemporalEvent class is used to create instances of events with their respective timestamps, which are then stored and managed within the AI system's memory structure.

Conclusion:

The theoretical AI project presented in this paper represents a bold endeavor to develop an artificial intelligence system that emulates the complexity and adaptability of the human mind. The introduction of the Phase Disposition process, coupled with the integration of hypervectors, extra-dimensional cognition, sensory inputs, and temporal events, demonstrates the potential of interdisciplinary collaboration in pushing the boundaries of AI research and development. As the field of artificial intelligence continues to evolve, it is crucial to explore and integrate diverse concepts and approaches to unlock the full potential of AI systems and their applications across various domains.