Universal Filter (Part 2): Time, Akashic Records, Individual Mind-based, Body-based memory

Subscribers:
5,450
Published on ● Video Link: https://www.youtube.com/watch?v=nF-9bu9SIFs



Duration: 0:00
104 views
8


This is Part 2 of Universal Filter, where we talk about time and memory.

Time is necessary for consciousness to learn, since there is a before and an after to learn from. The effect of an action can be analysed.

Time and Memory are very important for learning. Past experiences inform the present. Also, future simulations of what could have happened can serve as intuition to inform the present.

In my opinion, there are a few kinds of memory that can be queried:
Akashic Records - A global consciousness storage of all actions and outcomes (including non-realised outcomes and future outcomes) by all consciousness
Individual Mind-based Memory - Personal Memories of Significant Events in Life
Individual Body-based Memory - Body's Memory to stimuli, e.g. muscle memory

Successful querying of memory and having a good simulator is essential for learning and performing in any environment.

~~~

Resources:

Universal Filter (Part 1):

What are the Akashic Records: https://edgarcayce.org/edgar-cayce/readings/akashic-records/

How filtering is done in Akashic Records (see 22:49 to 30:48):    • Tom Campbell: Intuition in the Big Picture  

Global Consciousness Affecting Reality: https://gcp2.net/research/research-library

~~~

0:00 Introduction
2:10 Recap of Part 1
10:15 Time is necessary for Learning
18:15 Past and Future Possibilities
52:58 Memory and Intuition
54:37 Learning / Given the Simulator
1:10:36 Curse of Memory
1:21:06 Types of Memory
1:29:22 Time as a third-layer filter
1:36:31 Conclusion

~~~

AI and ML enthusiast. Likes to think about the essences behind breakthroughs of AI and explain it in a simple and relatable way. Also, I am an avid game creator.

Discord: https://discord.gg/bzp87AHJy5
LinkedIn: https://www.linkedin.com/in/chong-min-tan-94652288/
Online AI blog: https://delvingintotech.wordpress.com/
Twitter: https://twitter.com/johntanchongmin
Try out my games here: https://simmer.io/@chongmin




Other Videos By John Tan Chong Min


2025-06-16Universal Filter (Part 2): Time, Akashic Records, Individual Mind-based, Body-based memory
2025-06-04Good Vibes Only with Dylan Chia: Lyria (Music), Veo3 (Video), Gamma (Slides), GitHub Copilot (Code)
2025-03-10Memory Meets Psychology - Claude Plays Pokemon: How It works, How to improve it
2025-02-24Vibe Coding: How to use LLM prompts to code effectively!
2025-01-26PhD Thesis Overview (Part 2): LLMs for ARC-AGI, Task-Based Memory-Infused Learning, Plan for AgentJo
2025-01-20PhD Thesis Overview (Part 1): Reward is not enough; Towards Goal-Directed, Memory-based Learning
2024-12-04AgentJo CV Generator: Generate your CV by searching for your profile on the web!
2024-11-11Can LLMs be used in self-driving? CoMAL: Collaborative Multi-Agent LLM for Mixed Autonomy Traffic
2024-10-28From TaskGen to AgentJo: Creating My Life Dream of Fast Learning and Adaptable Agents
2024-10-21Tian Yu X John: Discussing Practical Gen AI Tips for Image Prompting
2024-10-08Jiafei Duan: Uncovering the 'Right' Representations for Multimodal LLMs for Robotics
2024-09-27TaskGen Tutorial 6: Conversation Wrapper
2024-09-26TaskGen Tutorial 5: External Functions & CodeGen
2024-09-24TaskGen Tutorial 4: Hierarchical Agents
2024-09-23TaskGen Tutorial 3: Memory
2024-09-19TaskGen Tutorial 2: Shared Variables and Global Context
2024-09-16Beyond Strawberry: gpt-o1 - Is LLM alone sufficient for reasoning?
2024-09-11TaskGen Tutorial 1: Agents and Equipped Functions
2024-09-11TaskGen Tutorial 0: StrictJSON
2024-09-10LLM-Modulo: Using Critics and Verifiers to Improve Grounding of a Plan - Explanation + Improvements
2024-09-06TaskGen: Co-create the best open-sourced LLM Agentic Framework together!