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Gemma 2: Improving Open Language Models at a Practical Size

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301 Pith papers citing it
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abstract

In this work, we introduce Gemma 2, a new addition to the Gemma family of lightweight, state-of-the-art open models, ranging in scale from 2 billion to 27 billion parameters. In this new version, we apply several known technical modifications to the Transformer architecture, such as interleaving local-global attentions (Beltagy et al., 2020a) and group-query attention (Ainslie et al., 2023). We also train the 2B and 9B models with knowledge distillation (Hinton et al., 2015) instead of next token prediction. The resulting models deliver the best performance for their size, and even offer competitive alternatives to models that are 2-3 times bigger. We release all our models to the community.

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  • abstract In this work, we introduce Gemma 2, a new addition to the Gemma family of lightweight, state-of-the-art open models, ranging in scale from 2 billion to 27 billion parameters. In this new version, we apply several known technical modifications to the Transformer architecture, such as interleaving local-global attentions (Beltagy et al., 2020a) and group-query attention (Ainslie et al., 2023). We also train the 2B and 9B models with knowledge distillation (Hinton et al., 2015) instead of next token prediction. The resulting models deliver the best performance for their size, and even offer compe

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Acceptance Cards:A Four-Diagnostic Standard for Safe Fine-Tuning Defense Claims

cs.CR · 2026-05-11 · unverdicted · novelty 8.0

Acceptance Cards is a new four-diagnostic standard for safe fine-tuning defense claims that requires statistical reliability, fresh semantic generalization, mechanism alignment, and cross-task transfer; under this protocol SafeLoRA fails the full-card pass on Gemma-2-2B-it.

Probing Memorization of Tabular In-Context Learning

cs.LG · 2026-06-30 · unverdicted · novelty 7.0

A new probing framework detects moderate parametric memorization signals in tabular in-context learning models under single-task fine-tuning, strongest on low-cardinality tasks, but signals largely disappear under realistic training.

RogueMerge: Robust and Unified Attacks against LLM Model Merging

cs.CR · 2026-06-02 · unverdicted · novelty 7.0

RogueMerge is a unified attack method that jointly optimizes task vectors to succeed after merging, using stochastic min-max simulation for unknown merging settings and a Taylor-approximated DRO for prompt generalization on generative LLMs.

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Showing 4 of 4 citing papers after filters.

  • SLAM: Structural Linguistic Activation Marking for Language Models cs.CL · 2026-05-06 · unverdicted · none · ref 6 · 2 links · internal anchor

    SLAM achieves 100% detection on Gemma-2 models with only 1-2 point quality cost by causally steering SAE-identified residual-stream directions for linguistic structure.

  • SimCT: Recovering Lost Supervision for Cross-Tokenizer On-Policy Distillation cs.CL · 2026-05-08 · unverdicted · none · ref 47 · 2 links · internal anchor

    SimCT enlarges the supervision space in cross-tokenizer on-policy distillation using short jointly tokenizable multi-token continuations, producing consistent gains over shared-token baselines on math and code benchmarks.

  • Extracting memorized pieces of (copyrighted) books from open-weight language models cs.CL · 2025-05-18 · conditional · none · ref 261 · internal anchor

    A new extraction technique applied to 200 books and 14 LLMs finds that memorization of full books is rare except in specific high-capacity models where entire texts can be recovered verbatim.

  • A Survey of Large Language Models cs.CL · 2023-03-31 · accept · none · ref 142 · internal anchor

    This survey reviews the background, key techniques, and evaluation methods for large language models, emphasizing emergent abilities that appear at large scales.