Universal Filter (Part 4 - Finale): Knowledge/Memory, Reflection, Communication between Individuals

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A lot of learning is done via our interpretation of the world.

What if this interpretation can be shifted using intent as a filter?

Applied on our five senses and beyond, filters can help us to filter what is necessary for our learning based on our goal.

We can then store this knowledge as filter (biased) knowledge in our own individual database, or as unfiltered (unbiased) knowledge in a central database (Universal Information).

Communication between individuals can be done either through a common language, or through conversion into a central database (Universal Information) and then converted back to each receiving individual via their own personalised filters.

Filter-based learning, and universal information-based consolidation has a lot of implications for AI-based learning, and could pave the way towards self-learning and adaptable systems.

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References:
Gorilla Illusion:    • The Monkey Business Illusion  

Slides: https://github.com/tanchongmin/john-youtube/blob/main/Universal Filter.pdf

Universal Filter (Part 1):    • Universal Filter (Part 1): A New Approach ...  
Universal Filter (Part 2):    • Universal Filter (Part 2): Time, Akashic R...  
Universal Filter (Part 3):    • Universal Filter (Part 3): Learning the Fi...  
Universal Filter (Part 4):    • Universal Filter (Part 4 - Finale): Knowle...  

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0:00 Introduction and Recap
2:03 Learning the Filters
12:13 Experience to Knowledge/Memory
40:19 Structured and Constrained Reflection
1:00:07 Knowledge Gain in Text-based RPG
1:14:37 How to learn new filters?
1:25:03 Deep Research and Universal Filters
1:30:05 Learning latent space for filters
1:34:14 Communication between individuals
1:46:35 Universal Intention (sequel to Universal Filter)
1:48:14 Discussion

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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




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