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Benchmarks: thin evidence
Time to repro: a few days
1 risk flag

Results & Benchmarks

Freshness tier: cold
Direct + Inferred Evidence

Some benchmark signal exists in the extracted evidence, but it is not structured strongly enough yet for a confident benchmark decision.

Inspired by the long-range modeling ability of ViTs, large-kernel convolutions are widely studied and adopted recently to enlarge the receptive field and improve model performance, like the remarkable work ConvNeXt which employs 7 × 7 depthwise convolution.

Implementation Evidence Summary

Confidence: low

leondgarse/keras_cv_attention_models is the closest maintained adjacent implementation (Strong overlap with paper title keywords). It is not paper-verified; validate algorithm and evaluation setup against the paper before trusting reported metrics. Community adoption signal: 627 GitHub stars.

Reproduction Risks

  • Adjacent implementations are not paper-verified
  • Recommended repository is adjacent and not paper-verified.
  • Adjacent implementation match confidence is low.

Hardware Notes

For example, ConvNeXt-T has similar FLOPs with ResNet-50 but only achieves ~60% throughputs when trained on A100 GPUs with full precision.

Evidence disclosure

Evidence graph: 3 refs, 3 links.

Utility signals: depth 90/100, grounding 75/100, status high.

Implementation Status

No verified maintained repo

There is no verified maintained implementation yet. Use this baseline plan to decide whether to prototype now or defer.

  • No maintained paper-verified implementation was found; start with the closest related repositories below.
  • Compare repo methods against the paper equations/algorithm before trusting metrics.
  • Create a minimal baseline implementation from the paper and use adjacent repos as references.
Time to first repro: a few days

Reproduction readiness

No Repo
Time to first repro: days
Last checked: Jun 17, 2026

Hardware requirements

  • For example, ConvNeXt-T has similar FLOPs with ResNet-50 but only achieves ~60% throughputs when trained on A100 GPUs with full precision.

No verified implementation available

  • · No maintained repository has been identified for this paper. Check adjacent implementations or HF artifacts below.

Closest related implementations

These are not paper-verified. Use them as reference points when no direct implementation is available.

Hugging Face artifacts

No trustworthy direct or curated related Hugging Face artifacts were found yet.

Continue with targeted Hugging Face searches derived from the paper title and method context:

Tip: start with models, then check datasets/spaces if you need evaluation data or demos.

Direct artifact matches are currently sparse. Use targeted Hugging Face searches to quickly locate candidate models, datasets, and demos.

Research context

338

Citations

100

References

Tasks

Computer science, Decision Sciences, Information Systems and Management, Social Sciences

Methods

None detected

Domains

None detected

Evaluation & Human Feedback Data

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