Data decompression chain

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This article defines a novel term (that is hopefully sensibly chosen). The term is introduced to make a concept more concrete and understand its interrelationship with other topics related to atomically precise manufacturing. For details go to the page: Neologism.

The "data decompression chain" is the sequence of expansion steps from

  • very compact highest level abstract blueprints of technical systems to
  • discrete and simple lowest level instances that are much larger in size.

3D modeling

Constructive solid geometry graph (CSG graph). Today (2017) often still at the top of the chain.

(TODO: add details)

  • high language 1: functional, logical, connection to computer algebra system
  • high language 2: imperative, functional
  • Volume based modeling with "level set method" or even "signed distance fields"
    (organized in CSG graphs which reduce to the three operations: sign-flip, sum and maximum)
  • Surface based modeling with parametric surfaces (organized in CSG graphs)
  • quadric nets C1 (rarely employed today 2017)
  • triangle nets C0
  • tool-paths
  • Primitive signals: step-signals, rail-switch-states, clutch-states, ...

Targets

  • physical object
  • virtual simulation

Maybe useful for compiling the same code to different targets (as present in this context): Compiling to categories (Conal Elliott)

3D modeling & functional programming

Modeling of static 3D models is purely declarative.

  • example: OpenSCAD

...

Similar situations in today's computer architectures

  • high level language ->
  • compiler infrastructure (e.g. llvm) ->
  • assembler language ->
  • actual actions of the target data processing machine

Bootstrapping of the decompression chain

One of the concerns regarding the feasibility of advanced productive nanosystems is the worry that that all the necessary data cannot be fed to

The former are mostly hard coded and don't need much data by the way.

For example this size comparison in E. Drexlers TEDx talk (2015) 13:35 can (if taken to literally)
lead to the misjudgment that there is an fundamentally insurmountable data bottleneck.
Of course trying to feed yotabits per second over those few pins would be ridiculous and impossible, but that is not what is planned.
(wiki-TODO: move this topic to Data IO bottleneck)

We already know how to avoid such a bottleneck.
Albeit we program computers with our fingers delivering just a few bits per second
computers now perform petabit per second internally.

The goal is reachable by gradually building up a hierarchy of decompression steps.
The most low level most high volume data is generated internally and locally very near to where it's finally "consumed".

Related

External Links

Wikipedia