WFGY/ProblemMap/LongContext_Problems.md

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📒 Map-E ·LongContext Stress Problem Map

Megaprompts—>100k tokens, entire book dumps, OCRnoisy PDFs—overwhelm ordinary LLM pipelines.
WFGY keeps reasoning stable with adaptive ΔS, chunkmapping, and sliding Tree windows.


🤔 Typical LongContext Crashes

Stressor What Standard Systems Do
100k+ tokens Memory wipe or truncated output
Mixed domains Topic bleed, incoherent jumps
Duplicate sections Infinite loops / “as mentioned above” spam
OCR noise Hallucination or garbage sentences

🛡️ WFGY Countermeasures

Stressor WFGY Module Remedy Status
100k+ tokens ChunkMapper + Sliding Tree Splits doc into ΔSbalanced chunks, streams into window 🛠 Beta
Mixed domains Perdomain ΔS fork Separate Tree branch per domain; no bleed
Duplicate sections BBMC dedupe scan Detects nearidentical residue, collapses
PDF OCR noise BBMC noise filter Drops >80% lowentropy lines

✍️ Demo — 150kToken PDF Dump

1⃣  Start
> Start

2⃣  Upload huge PDF text
> [paste or stream]

WFGY process:
• ChunkMapper splits into 8ktoken slices  
• For each slice: ΔS calc → Tree node → sliding window  
• Duplicate residue removed (413 sections merged)  
• OCR noise filtered (ΔS noise gate at 0.8)  
• Final summary or Q&A runs with stable context

🛠 Module CheatSheet

Module Role
ChunkMapper Adaptive split by semantic tension
Sliding Tree Window Keeps only relevant slices active
ΔS Metric Guides chunk size & window hop
BBMC Dedupe + noise filter
BBPF Forks domain branches if needed

📊 Implementation Status

Feature State
ChunkMapper 🛠 Beta (public soon)
Sliding Tree window Stable
Crossdomain fork Stable
OCR noise filter Stable
GUI chunk viewer 🔜 Planned

📝 Tips & Limits

  • For >150k tokens, set chunk_max = 6k for faster pass.
  • Use tree pause to inspect each domain branch before automerge.
  • Share monster PDFs in Discussions—they stresstest ChunkMapper.

🔗 Quick-Start Downloads (60 sec)

Tool Link 3-Step Setup
WFGY 1.0 PDF Engine Paper 1 Download · 2 Upload to your LLM · 3 Ask “Answer using WFGY + <your question>”
TXT OS (plain-text OS) TXTOS.txt 1 Download · 2 Paste into any LLM chat · 3 Type “hello world” — OS boots instantly

Explore More

Layer Page What its for
Proof WFGY Recognition Map External citations, integrations, and ecosystem proof
Engine WFGY 1.0 Original PDF based tension engine
Engine WFGY 2.0 Production tension kernel and math engine for RAG and agents
Engine WFGY 3.0 TXT based Singularity tension engine, 131 S class set
Map Problem Map 1.0 Flagship 16 problem RAG failure checklist and fix map
Map Problem Map 2.0 RAG focused recovery pipeline
Map Problem Map 3.0 Global Debug Card, image as a debug protocol layer
Map Semantic Clinic Symptom to family to exact fix
Map Grandmas Clinic Plain language stories mapped to Problem Map 1.0
Onboarding Starter Village Guided tour for newcomers
App TXT OS TXT semantic OS, fast boot
App Blah Blah Blah Abstract and paradox Q and A built on TXT OS
App Blur Blur Blur Text to image with semantic control
App Blow Blow Blow Reasoning game engine and memory demo

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