condensed-analytic-stacks
Scholze-Clausen condensed mathematics bridge to sheaf neural networks
Packaged view
This page reorganizes the original catalog entry around fit, installability, and workflow context first. The original raw source lives below.
Install command
npx @skill-hub/cli install plurigrid-asi-condensed-analytic-stacks
Repository
Skill path: skills/condensed-analytic-stacks
Scholze-Clausen condensed mathematics bridge to sheaf neural networks
Open repositoryBest for
Primary workflow: Ship Full Stack.
Technical facets: Full Stack.
Target audience: everyone.
License: Unknown.
Original source
Catalog source: SkillHub Club.
Repository owner: plurigrid.
This is still a mirrored public skill entry. Review the repository before installing into production workflows.
What it helps with
- Install condensed-analytic-stacks into Claude Code, Codex CLI, Gemini CLI, or OpenCode workflows
- Review https://github.com/plurigrid/asi before adding condensed-analytic-stacks to shared team environments
- Use condensed-analytic-stacks for development workflows
Works across
Favorites: 0.
Sub-skills: 0.
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Original source / Raw SKILL.md
---
name: condensed-analytic-stacks
description: Scholze-Clausen condensed mathematics bridge to sheaf neural networks
version: 1.0.0
---
# condensed-analytic-stacks Skill
## Overview
Saturates the intersection of **Scholze-Clausen condensed mathematics**, **analytic stacks**, and **sheaf neural networks**. Bridges pyknotic/condensed objects to computational learning systems via 6-functor formalisms.
## Key Papers & Sources
| Paper | Authors | arXiv | Key Contribution |
|-------|---------|-------|------------------|
| Lectures on Condensed Mathematics | Scholze, Clausen | [PDF](https://www.math.uni-bonn.de/people/scholze/Condensed.pdf) | Foundation: condensed sets, solid/liquid modules |
| Condensed Mathematics and Complex Geometry | Clausen, Scholze | [PDF](https://people.mpim-bonn.mpg.de/scholze/Complex.pdf) | Nuclear modules, GAGA |
| Pyknotic Objects, I. Basic notions | Barwick, Haine | [1904.09966](https://arxiv.org/abs/1904.09966) | Hypersheaves on compacta |
| Categorical Künneth formulas for analytic stacks | Kesting | [2507.08566](https://arxiv.org/abs/2507.08566) | 6-functor Künneth, Tannakian reconstruction |
| Infinitary combinatorics in condensed math | Bergfalk, Lambie-Hanson | [2412.19605](https://arxiv.org/abs/2412.19605) | Higher derived limits, pyknotic connections |
## Architecture: Condensed → Sheaf NN Bridge
```
┌─────────────────────────────────────────────────────────────────────────────┐
│ Condensed Analytic Stacks Architecture │
├─────────────────────────────────────────────────────────────────────────────┤
│ │
│ Condensed Sets 6-Functor Formalism Sheaf Neural Nets │
│ (Scholze) (Künneth) (Fairbanks) │
│ │ │ │ │
│ ▼ ▼ ▼ │
│ ┌──────────┐ ┌───────────┐ ┌──────────────┐ │
│ │ Cond(Ab) │─────────────▶│ f_*, f^*, │─────────────▶│ Sheaf │ │
│ │ Sheaves │ Tannakian │ f_!, f^!, │ Harmonic │ Laplacian │ │
│ │ on CHaus │ Reconstruct│ Hom,⊗ │ Inference │ Diffusion │ │
│ └──────────┘ └───────────┘ └──────────────┘ │
│ │ │ │ │
│ │ Profinite │ Descent │ Cellular │
│ │ Approximation │ Data │ Sheaves │
│ ▼ ▼ ▼ │
│ ┌──────────┐ ┌───────────┐ ┌──────────────┐ │
│ │ Liquid │ │ Analytic │ │ Cooperative │ │
│ │ Vector │───solid──────│ Stacks │───consensus──│ Sheaf NNs │ │
│ │ Spaces │ │ QCoh(X) │ │ (Bodnar) │ │
│ └──────────┘ └───────────┘ └──────────────┘ │
│ │ │ │ │
│ └───────────────────────────┴───────────────────────────┘ │
│ │ │
│ Music-Topos ACSet │
│ Parallel Rewriting │
│ │
└─────────────────────────────────────────────────────────────────────────────┘
```
## Core Concepts
### 1. Condensed Sets (Cond)
**Definition**: Sheaves on the site of compact Hausdorff spaces with finite jointly surjective covers.
```julia
# ACSet schema for condensed structures
@present CondensedSchema(FreeSchema) begin
# Objects
CompactSpace::Ob
CondensedSet::Ob
ProfiniteSet::Ob
# Morphisms
sheaf::Hom(CondensedSet, CompactSpace) # Evaluation at compacta
limit::Hom(ProfiniteSet, CondensedSet) # Profinite = lim finite sets
# Key insight: Topology lives in test objects, not the space itself
end
```
### 2. Liquid Vector Spaces
**Definition**: For 0 < r < 1, the liquid norm:
$$|x|_r = \sum_{n=0}^{\infty} |c_n| \cdot r^n$$
```ruby
# From world_broadcast.rb - SATURATED implementation
module CondensedAnima
# Liquid vector space: l^r completion
# Clausen-Scholze: Analytic ring = (ℤ((T)), ⟨T⟩_r)
def self.liquid_norm(coefficients, r: 0.5)
# Convergent for r < 1 (contractivity)
coefficients.each_with_index.sum do |c, n|
c.abs * (r ** n)
end
end
# The r-liquid norm defines a complete bornology
# Key: r→1 gives solid modules (maximally complete)
def self.solid_completion(sequence)
# Solid = lim_{r→1} liquid_r
# Completion is the uniform limit
sequence.sum.to_f / sequence.size
end
# Analytic ring structure:
# A complete Huber pair (A, A⁺) with bornology
def self.analytic_ring(base_ring, positive_part)
{
ring: base_ring,
positive: positive_part,
bornology: :liquid,
solid_closure: true
}
end
end
```
### 3. 6-Functor Formalism (Categorical Künneth)
From [2507.08566]:
```
For analytic stacks X, Y:
QCoh(X × Y) ≃ QCoh(X) ⊗ QCoh(Y) # Künneth
6 functors: f_*, f^*, f_!, f^!, Hom, ⊗
satisfying base change and projection formulas
```
```julia
# 6-functor ACSet
@present SixFunctorSchema(FreeSchema) begin
Stack::Ob
Category::Ob
# The 6 functors
pushforward::Hom(Category, Category) # f_*
pullback::Hom(Category, Category) # f^*
shriek_push::Hom(Category, Category) # f_!
shriek_pull::Hom(Category, Category) # f^!
internal_hom::Hom(Category, Category) # Hom
tensor::Hom(Category, Category) # ⊗
# Adjunctions
# (f^*, f_*), (f_!, f^!)
# Hom(A⊗B, C) ≃ Hom(A, Hom(B,C))
end
```
### 4. Analytic Stack ↔ Sheaf NN Connection
**Key Insight**: The descent condition in analytic stacks parallels the consistency condition in cellular sheaves.
```ruby
# Analytic stack satisfies descent
def self.analytic_stack(objects)
{
objects: objects,
descent_data: objects.combination(2).map { |a, b| [a, b, a ^ b] },
coherence: true, # Higher coherence from infinity-category
# Bridge to sheaf NNs
laplacian_compatible: true,
# The sheaf Laplacian L = δᵀδ + δδᵀ
# measures failure of local-to-global consistency
}
end
# Sheaf neural network connection
# From async-sheaf-diffusion skill
def analytic_to_cellular_sheaf(analytic_stack)
{
vertices: analytic_stack[:objects],
# Restriction maps from stack structure
restriction_maps: analytic_stack[:descent_data].map { |d|
{ source: d[0], target: d[1], map: d[2] }
},
# Cohomology detects obstructions
cohomology: compute_sheaf_cohomology(analytic_stack)
}
end
```
### 5. Pyknotic vs Condensed
| Aspect | Pyknotic | Condensed |
|--------|----------|-----------|
| Site | CHaus (small) | CHaus (large) |
| Sheaves | Hypersheaves | Sheaves |
| Universe | Fixed | Depends on κ |
| Derived cats | Hypercomplete | Not necessarily |
```julia
# Pyknotic spectrum (Barwick-Haine)
@present PyknoticSchema(FreeSchema) begin
CondensedAb::Ob
PycknoticAb::Ob
# Inclusion (pyknotic ⊂ condensed for hypercompleteness)
include::Hom(PycknoticAb, CondensedAb)
# Both give derived category of local field
derived_cat::Hom(CondensedAb, DerivedCat)
end
```
## Integration with Existing Skills
### sheaf-laplacian-coordination
```ruby
# Condensed structure enhances sheaf coordination
class CondensedSheafCoordinator
def initialize(graph, sheaf)
@graph = graph
@sheaf = sheaf
@liquid_param = 0.5 # r in (0,1)
end
# Liquid-weighted Laplacian
def liquid_laplacian
L = @sheaf.laplacian
# Weight by liquid norm decay
L.map_with_index { |row, i|
row.map_with_index { |val, j|
distance = graph_distance(i, j)
val * (@liquid_param ** distance)
}
}
end
# Solid consensus = limit as r→1
def solid_consensus(initial_states, iterations: 100)
states = initial_states
(0.99 - @liquid_param).step(0.01, 0.99) do |r|
@liquid_param = r
states = diffuse(states, liquid_laplacian)
end
states
end
end
```
### async-sheaf-diffusion
```julia
# From arXiv:2411.XXXXX - Asynchronous diffusion with condensed structure
struct CondensedAsyncDiffusion
base_diffusion::SheafDiffusion
liquid_r::Float64
solid_threshold::Float64
end
function step!(cad::CondensedAsyncDiffusion, states)
# Profinite approximation for async updates
levels = [3, 9, 27] # 3^1, 3^2, 3^3
for level in levels
# Approximate by finite quotient
approx_states = states .% level
# Local liquid diffusion
local_update = cad.base_diffusion(approx_states)
# Weight by liquid norm
states .+= cad.liquid_r^log(level) .* local_update
end
states
end
```
### acsets-algebraic-databases
```julia
# Condensed ACSet: sheaves valued in ACSets
@acset_type CondensedACSet(CondensedSchema, index=[:sheaf]) begin
# Objects carry condensed structure
compact_probe::Attr(CompactSpace, Symbol) # Test compactum
section_data::Attr(CondensedSet, Vector) # Sections over probes
# Descent gluing
gluing_data::Attr(CondensedSet, Matrix)
end
```
## Provenance Integration
Uses `ananas_provenance_schema.sql`:
```sql
-- Register condensed paper extraction
INSERT INTO artifact_provenance (
artifact_id, artifact_type, content_hash, gayseed_index
) VALUES (
'condensed-scholze-2024',
'analysis',
SHA3-256(content),
5 -- BLUE (Scholze agent color)
);
-- Track 6-functor diagrams extracted
INSERT INTO provenance_nodes (
artifact_id, node_type, sequence_order, node_data
) VALUES (
'condensed-scholze-2024',
'Doc',
1,
'{"diagrams": 42, "equations": 137, "theorems": 23}'
);
```
## World Integration
```ruby
# justfile target
world-condensed:
@ruby -I lib -r world_broadcast -e "WorldBroadcast.world(
mathematicians: [:scholze, :grothendieck, :noether],
modules: [CondensedAnima, SixFunctor, AnalyticStack]
)"
```
## MCP Tools
| Tool | Description |
|------|-------------|
| `condensed_probe` | Test condensed structure with compact probe |
| `liquid_norm` | Compute liquid norm for coefficient sequence |
| `solid_complete` | Take solid completion (r→1 limit) |
| `kunneth_check` | Verify Künneth formula for stack product |
| `descent_verify` | Check descent condition for analytic stack |
| `sheaf_bridge` | Bridge condensed stack to cellular sheaf |
## Commands
```bash
just world-condensed # Run condensed anima world
just condensed-test # Test liquid/solid modules
just kunneth-verify # Verify Künneth for example stacks
just sheaf-bridge-demo # Demo condensed→sheaf NN bridge
```
## See Also
- `sheaf-laplacian-coordination/SKILL.md` - Sheaf neural coordination
- `async-sheaf-diffusion/SKILL.md` - Asynchronous sheaf diffusion
- `acsets-algebraic-databases/SKILL.md` - ACSet foundations
- `lispsyntax-acset/SKILL.md` - S-expression ↔ ACSet bridge (OCaml ppx_sexp_conv style)
- `lib/world_broadcast.rb` - CondensedAnima module (lines 348-389)
- `lib/lispsyntax_acset_bridge.jl` - LispSyntax.jl ↔ ACSet.jl bridge
- `PONTRYAGIN_DUALITY_COMPREHENSIVE_ANALYSIS.md` - Condensed extension (lines 844-860)
- `LISPSYNTAX_ACSET_BRIDGE_COMPLETE.md` - Integration summary
## Scientific Skill Interleaving
This skill connects to the K-Dense-AI/claude-scientific-skills ecosystem:
### Graph Theory
- **networkx** [○] via bicomodule
- Universal graph hub
### Bibliography References
- `general`: 734 citations in bib.duckdb
## Cat# Integration
This skill maps to **Cat# = Comod(P)** as a bicomodule in the equipment structure:
```
Trit: 0 (ERGODIC)
Home: Prof
Poly Op: ⊗
Kan Role: Adj
Color: #26D826
```
### GF(3) Naturality
The skill participates in triads satisfying:
```
(-1) + (0) + (+1) ≡ 0 (mod 3)
```
This ensures compositional coherence in the Cat# equipment structure.