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Non Existant Time Theory

Observations

  1. Time does not exist.

  2. Time is an artifact of motion in space dimension.

    • eg) in Nth dimension, the motion of an object in space creates an illustration of time.
  3. One should not use time as a point of reference in space dimension.

  4. With an instrument in Nth dimension space, One can create a zero-time gap between dimension-location A1 and A2, without a space travel.

    • eg) let t1 is observed at a1, and let t2 is observed at a2.
    • eg) with any instrument at a2, a1 @ t1 can be observed by a2 @ t2.
  5. The zero-time gap seems uni-directional.

    • Q1: Can a1 @ t1 observe a2 @ t2 with an instrument of t2 in a2 space dimension?
    • Q2: How does the a2 instrument allows the direct link between a2 and a2 space, without space travel?
  6. Given: t2 is later time than t1.

    • Observation:
    • T2 isn't observed yet.
    • T1 is observed, or happened.
    • At T2, an event is injected at T1 by observation.
    • Then, T1' is observed.
    • T1 no longer exists.
    • T1 != T1'
    • Summary: Future A2 can change the past A1, by observation.
    • Sideline: A2 observation in N-dimension does not remember t1, but t1'.
  7. A1 @ t1 can participate in the observation made by A2 @ t2.

    • Q: An object in A1 can be a non-living thing, by our normal definition?

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