We Ran DeepSWE at 1M Context vs 262K. The Results Surprised Us.
27d agoen
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FlowtivityWe Ran DeepSWE at 1M Context vs 262K. The Results Surprised Us.flowtivity.aiReal-world A/B benchmark running DeepSWE tasks on DeepSeek V4 Flash at 1M vs 262K context. The 1M run was 3x faster but produced identical results. Here is what we learned about local LLM agent benchmarks.
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