{ "test_set": "FLORES-200 devtest", "source": "https://github.com/facebookresearch/flores", "n_pairs": 1012, "checkpoint": "final_v2.3.pt", "model": "ControlMT v2.3 (139M)", "decoding": { "method": "beam_search", "num_beams": 6, "length_penalty": 1.2, "no_repeat_ngram_size": 3, "anti_lm_alpha": 0.5, "max_length": 256 }, "scoring_models": { "comet_kiwi": "Unbabel/wmt22-cometkiwi-da", "comet_da": "Unbabel/wmt22-comet-da", "surface": "sacrebleu (default tokenization)" }, "scores": { "kn2en": { "kiwi": 0.8437, "comet": 0.8459, "bleu": 27.20, "chrf": 55.84 }, "en2kn": { "kiwi": 0.8663, "comet": 0.8443, "bleu": 18.50, "chrf": 56.12 } }, "ship_floor_verdict": { "comet_kn2en": "PASS (>= 0.82); 0.0059 above floor", "comet_en2kn": "PASS (>= 0.82); 0.0043 above floor", "kiwi_kn2en": "PASS (>= 0.80 aspirational)", "kiwi_en2kn": "ASPIRATIONAL (>= 0.85 mark — above)" }, "contamination_disclosure": "FLORES-200 was created by Meta in 2022 from Wikipedia by human translators. Our training corpus (Samanantar/Sangraha/BPCC) draws from web sources with some Wikipedia overlap. The model has not seen FLORES devtest sentences specifically, but may share subject matter / entity coverage. Same risk applies to every MT model published on this benchmark." }