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Learning Uncertainty from Sequential Internal Dispersion in Large Language Models

Stale8d agoPending verification refs / 4 sources / Verification pending
Viability
0.0/10

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Page Freshness

Signal Canvas proof surface

Canonical route: /signal-canvas/learning-uncertainty-from-sequential-internal-dispersion-in-large-language-models

stale
Proof freshness
stale
Proof status
unverified
Display score
8/10
Last proof check
2026-04-20
Score updated
2026-04-20
Score fresh until
2026-05-20
References
0
Source count
4
Coverage
67%

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

Agent Handoff

Learning Uncertainty from Sequential Internal Dispersion in Large Language Models

Canonical ID learning-uncertainty-from-sequential-internal-dispersion-in-large-language-models | Route /signal-canvas/learning-uncertainty-from-sequential-internal-dispersion-in-large-language-models

REST example

curl https://sciencetostartup.com/api/v1/agent-handoff/signal-canvas/learning-uncertainty-from-sequential-internal-dispersion-in-large-language-models

MCP example

{
  "tool": "search_signal_canvas",
  "arguments": {
    "mode": "paper",
    "paper_ref": "learning-uncertainty-from-sequential-internal-dispersion-in-large-language-models",
    "query_text": "Summarize Learning Uncertainty from Sequential Internal Dispersion in Large Language Models"
  }
}

source_context

{
  "surface": "signal_canvas",
  "mode": "paper",
  "query": "Learning Uncertainty from Sequential Internal Dispersion in Large Language Models",
  "normalized_query": "2604.15741",
  "route": "/signal-canvas/learning-uncertainty-from-sequential-internal-dispersion-in-large-language-models",
  "paper_ref": "learning-uncertainty-from-sequential-internal-dispersion-in-large-language-models",
  "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

Signal Canvas receipt window

Ready for execution: Learning Uncertainty from Sequential Internal Dispersion in Large Language Models

/buildability/learning-uncertainty-from-sequential-internal-dispersion-in-large-language-models

Build Nowready

Subject: Learning Uncertainty from Sequential Internal Dispersion in Large Language Models

Verdict

Build Now

Verdict is Build Now because viability and implementation proof cleared the Wave 1 scaffold thresholds.

Time to first demo

Insufficient data

No first-demo timestamp, owner estimate, or elapsed demo receipt is attached to this surface.

Compute envelope

Structured compute envelope

Insufficient data

No data, compute, hardware, memory, latency, dependency, or serving requirement receipt is attached.

Evidence ids

Receipt path

/buildability/learning-uncertainty-from-sequential-internal-dispersion-in-large-language-models

Paper ref

learning-uncertainty-from-sequential-internal-dispersion-in-large-language-models

arXiv id

2604.15741

Freshness

Generated at

2026-04-20T20:23:08.989Z

Evidence freshness

stale

Last verification

2026-04-20T20:23:08.989Z

Sources

4

References

0

Coverage

67%

Hash state

Lineage hash

bbe69281c4a097655e28d696fb8e2cc39b1d29b62c5df920769f367b4e367588

Canonical opportunity-kernel lineage hash.

Signature state

External signature

unsigned_external

No founder, registry, pilot, or production-adoption signature is attached to this receipt.

Verification

not_verified

Verification is blocked until an external signature is provided.

Blockers

  • Missing: references
  • Missing: proof_status
  • Unknown: proof verification has not been recorded yet

Pending verification refs / 4 sources / Verification pending

references

proof_status

Missing proof, requirement, signature, approval, adoption, or telemetry fields are blockers and must not be inferred.

Paper Conversation

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Paper Mode

Learning Uncertainty from Sequential Internal Dispersion in Large Language Models

Overall score: 8/10
Lineage: bbe69281c4a0

Canonical Paper Receipt

Last verification: 2026-04-20T20:23:08.989Z

Freshness: stale

Proof: unverified

Repo: active

References: 0

Sources: 4

Coverage: 67%

Missingness
  • - references
  • - proof_status
Unknowns
  • - proof verification has not been recorded yet

Preparing verified analysis

Dimensions overall score 8.0

GitHub Code Pulse

Stars
0
Health
C
Last commit
4/21/2026
Forks
0
Open repository

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