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  3. AXELRAM: Quantize Once, Never Dequantize
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AXELRAM: Quantize Once, Never Dequantize

Stale15d agoVerification pending / evidence receipt incomplete
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Page Freshness

Signal Canvas proof surface

Canonical route: /signal-canvas/axelram-quantize-once-never-dequantize

stale
Proof freshness
fresh
Proof status
unverified
Display score
7/10
Last proof check
2026-04-06
Score updated
2026-04-06
Score fresh until
2026-05-06
References
0
Source count
0
Coverage
0%

This page is showing the last landed evidence receipt and score bundle because the latest proof data is outside the freshness window.

Agent Handoff

AXELRAM: Quantize Once, Never Dequantize

Canonical ID axelram-quantize-once-never-dequantize | Route /signal-canvas/axelram-quantize-once-never-dequantize

REST example

curl https://sciencetostartup.com/api/v1/agent-handoff/signal-canvas/axelram-quantize-once-never-dequantize

MCP example

{
  "tool": "search_signal_canvas",
  "arguments": {
    "mode": "paper",
    "paper_ref": "axelram-quantize-once-never-dequantize",
    "query_text": "Summarize AXELRAM: Quantize Once, Never Dequantize"
  }
}

source_context

{
  "surface": "signal_canvas",
  "mode": "paper",
  "query": "AXELRAM: Quantize Once, Never Dequantize",
  "normalized_query": "2604.02638",
  "route": "/signal-canvas/axelram-quantize-once-never-dequantize",
  "paper_ref": "axelram-quantize-once-never-dequantize",
  "topic_slug": null,
  "benchmark_ref": null,
  "dataset_ref": null
}

Evidence Receipt

Route status: building

Claims: 0

References: Pending verification

Proof: Verification pending

Freshness state: computing

Source paper: AXELRAM: Quantize Once, Never Dequantize

PDF: https://arxiv.org/pdf/2604.02638v1

Repository: https://github.com/Axelidea/AXELRAM

Source count: Pending verification

Coverage: 0%

Last proof check: 2026-04-06T20:15:10.035Z

Paper Conversation

Citation-first answers with explicit evidence receipts, disagreement handling, commercialization framing, and next actions.

Paper Mode

AXELRAM: Quantize Once, Never Dequantize

Overall score: 7/10
Lineage: 6c2a2198fd05…
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Canonical Paper Receipt

Last verification: 2026-04-06T20:15:10.035Z

Freshness: fresh

Proof: unverified

Repo: unknown

References: 0

Sources: 0

Coverage: 0%

Missingness
  • - paper_evidence_receipts.references_count
  • - paper_evidence_receipts.coverage
Unknowns
  • - Canonical evidence receipt has not been materialized yet.

Mode Notes

  • Corpus mode searches the research corpus broadly.
  • Paper mode pins trust state to the canonical paper kernel.
  • Workspace mode blends saved sources, prior evidence queries, and linked papers.

Preparing verified analysis

Dimensions overall score 7.0

GitHub Code Pulse

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Health
C
Last commit
4/6/2026
Forks
0
Open repository

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Keep exploring

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