Recent advancements in LLM pretraining have featured ever-expanding context windows to process longer sequences. However, our pilot study reveals that models pretrained with shorter context windows consistently outperform their long-context counterparts under a fixed token budget. This finding motivates us to explore an optimal context window scheduling strategy to better balance long-context capability with pretraining efficiency. To this end, we propose SkyLadder, a simple yet effective approach that implements a short-to-long context window transition. SkyLadder preserves strong standard benchmark performance, while matching or exceeding baseline results on long context tasks. Through extensive experiments, we pre-train 1B-parameter models (up to 32K context) and 3B-parameter models (8K context) on 100B tokens, demonstrating that SkyLadder yields consistent gains of up to 3.7% on common benchmarks, while achieving up to 22% faster training speeds compared to baselines. The code is at https://github.com/sail-sg/SkyLadder.
SkyLadder: Better and Faster Pretraining via Context Window Scheduling
SkyLadder, a short-to-long context window transition strategy, enhances LLM pretraining efficiency while maintaining or surpassing long-context performance.
- Year
- 2025
- Venue
- arXiv 2025
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- 7
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2503.15450ARXIV-DEFAULT
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