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kanaria007 
posted an update 5 days ago
Post
137
✅ Article highlight: *Mega-Parse Bridge: Large Context Compression Without Losing Governance Semantics* (art-60-190, v0.1)

TL;DR:
This article argues that summarizing a huge input is not the same as parsing it.

Large documents, evidence bundles, long histories, multimodal case packets, and world-state slices cannot be treated as one vague “context.” 190 turns large-input handling into a governed mega-parse: shard, parse, retain semantics, declare loss, preserve re-expandability, and decide what the compressed artifact can honestly support.

Read:
kanaria007/agi-structural-intelligence-protocols

Why it matters:
• prevents “I read the whole thing” from becoming an overclaim
• keeps shard-level provenance instead of trusting a summary blob
• makes compression loss explicit and reviewable
• protects contradictions, authority-sensitive clauses, and protected-subject distinctions
• lets reviewers re-expand compressed claims back to source structure

What’s inside:
• mega-parse intake envelopes for large text, multimodal batches, and long-running packets
• shard-parse receipts for local grounded structure
• semantic-retention policies for what must survive compression
• compression artifacts with declared retention and bounded loss
• loss-declaration receipts for dropped, blurred, or unavailable surfaces
• re-expandability maps linking compressed claims back to recoverable shards
• admissibility and reentry artifacts for deciding where compressed outputs may be used

Key idea:
Do not say:

*“the system summarized the context.”*

Say:

*“this large input was sharded, locally parsed, compressed under this retention policy, loss-declared, re-expandable through these refs, and admitted only for these effect surfaces.”*

Compression is allowed.

Unreceipted semantic loss is not.
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