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Positional Embeddings

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Saturday, 18 July 2026

Sakana AI

Sakana AI

Sakana AI introduced DroPE, a method that extends the context length of pretrained large language models by removing positional embeddings after training, eliminating the need for expensive fine-tuning. The approach requires less than 1% of the original pretraining compute budget while outperforming established methods on benchmarks like LongBench and RULER. This allows models to handle longer sequences in real-world applications such as reviewing code diffs or analyzing legal documents without additional computational overhead.