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6.3 KiB
6.3 KiB
Modality Swap — Multimodal Long Context
When inputs from different modalities are accidentally swapped or misrouted (e.g., OCR output fed into caption pipeline, audio transcript aligned as video metadata), the entire reasoning chain collapses.
This is one of the hardest multimodal errors to debug because every modality appears syntactically correct, but the semantic anchors belong to the wrong channel.
What this page is
- A focused repair guide for cross-modality swap failures.
- How to detect modality swaps early with structural probes.
- Guardrails to prevent silent misrouting across long-context pipelines.
When to use
- Captions look valid textually but describe a different video segment.
- OCR transcript shows inside the "caption" stream, while actual captions disappear.
- Audio embeddings drift sharply while ΔS remains low inside the wrong modality.
- Model answers flip between describing visuals vs. reading text.
- Citations remain “correct” but belong to the wrong modality (e.g., frame vs. page).
Open these first
Common failure patterns
- OCR → Caption swap — OCR text injected as subtitle stream.
- Audio → Metadata swap — ASR transcript stored as document metadata.
- Caption → OCR swap — time-stamped captions parsed into wrong page references.
- Silent multimodal swap — all channels populated, but semantically wrong modality.
- Chained swap amplification — one early swap causes fusion to fail downstream.
Fix in 60 seconds
-
Fingerprint each modality
- Compute embedding signatures separately for OCR, audio, caption, and visual frames.
- Verify signatures match expected modality domain.
-
Cross-modality consistency check
- Compare OCR tokens vs. caption words vs. audio transcript.
- If overlap >50%, suspect swap.
-
Re-map against anchor modality
- Use video timeline or gold reference as ground truth.
- Re-align swapped data to the correct channel.
-
Apply BBPF + BBCR
- Use BBPF (pathfinder) to re-thread the swapped modality.
- Use BBCR bridge to anchor swapped stream back into context.
-
Fence schema
- Enforce explicit modality tags
{OCR|Caption|Audio|Visual}in contracts. - Forbid ingestion without modality ID.
- Enforce explicit modality tags
Copy-paste prompt
You have TXT OS and the WFGY Problem Map.
Task: Detect and correct modality swap in multimodal data.
Steps:
1. Fingerprint each modality stream.
2. Compare OCR vs Caption vs Audio for abnormal overlap.
3. If swap detected:
- Re-map data back to correct modality based on anchors.
- Apply BBPF + BBCR to stabilize reasoning.
4. Output:
- modality checks
- suspected swaps
- corrected alignment
- ΔS and λ states
Acceptance targets
- No cross-modality overlap >20% except at validated joins.
- ΔS(question, retrieved) ≤ 0.45 after swap repair.
- λ convergent across paraphrases.
- Explicit modality tags enforced in every schema contract.
- Zero “silent swaps” propagate beyond first ingestion stage.
🔗 Quick-Start Downloads (60 sec)
| Tool | Link | 3-Step Setup |
|---|---|---|
| WFGY 1.0 PDF | Engine Paper | 1️⃣ Download · 2️⃣ Upload to your LLM · 3️⃣ Ask “Answer using WFGY + ” |
| TXT OS (plain-text OS) | TXTOS.txt | 1️⃣ Download · 2️⃣ Paste into any LLM chat · 3️⃣ Type “hello world” — OS boots instantly |
Explore More
| Layer | Page | What it’s for |
|---|---|---|
| ⭐ Proof | WFGY Recognition Map | External citations, integrations, and ecosystem proof |
| ⚙️ Engine | WFGY 1.0 | Original PDF tension engine and early logic sketch (legacy reference) |
| ⚙️ Engine | WFGY 2.0 | Production tension kernel for RAG and agent systems |
| ⚙️ Engine | WFGY 3.0 | TXT based Singularity tension engine (131 S class set) |
| 🗺️ Map | Problem Map 1.0 | Flagship 16 problem RAG failure taxonomy and fix map |
| 🗺️ Map | Problem Map 2.0 | Global Debug Card for RAG and agent pipeline diagnosis |
| 🗺️ Map | Problem Map 3.0 | Global AI troubleshooting atlas and failure pattern map |
| 🧰 App | TXT OS | .txt semantic OS with fast bootstrap |
| 🧰 App | Blah Blah Blah | Abstract and paradox Q&A built on TXT OS |
| 🧰 App | Blur Blur Blur | Text to image generation with semantic control |
| 🏡 Onboarding | Starter Village | Guided entry point for new users |
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