Edit model card

base_model: Alibaba-NLP/gte-multilingual-base language:

  • hu library_name: sentence-transformers license: apache-2.0

gte-multilingual-base-hu

This is a sentence-transformers model finetuned from Alibaba-NLP/gte-multilingual-base on the train dataset. It maps sentences & paragraphs to a 768-dimensional dense vector space and can be used for semantic textual similarity, semantic search, paraphrase mining, text classification, clustering, and more.

Model Details

Model Description

  • Model Type: Sentence Transformer
  • Base model: Alibaba-NLP/gte-multilingual-base
  • Maximum Sequence Length: 8192 tokens
  • Output Dimensionality: 768 tokens
  • Similarity Function: Cosine Similarity
  • Training Dataset:
    • train
  • Language: hu
  • License: apache-2.0

Model Sources

Full Model Architecture

SentenceTransformer(
  (0): Transformer({'max_seq_length': 8192, 'do_lower_case': False}) with Transformer model: NewModel 
  (1): Pooling({'word_embedding_dimension': 768, 'pooling_mode_cls_token': True, 'pooling_mode_mean_tokens': False, 'pooling_mode_max_tokens': False, 'pooling_mode_mean_sqrt_len_tokens': False, 'pooling_mode_weightedmean_tokens': False, 'pooling_mode_lasttoken': False, 'include_prompt': True})
  (2): Normalize()
)

Usage

Direct Usage (Sentence Transformers)

First install the Sentence Transformers library:

pip install -U sentence-transformers

Then you can load this model and run inference.

from sentence_transformers import SentenceTransformer

# Download from the 🤗 Hub
model = SentenceTransformer("karsar/gte-multilingual-base-hu")
# Run inference
sentences = [
    'Az emberek alszanak.',
    'Egy apa és a fia ölelgeti alvás közben.',
    'Egy csoport ember ül egy nyitott, térszerű területen, mögötte nagy bokrok és egy sor viktoriánus stílusú épület, melyek közül sokat a kép jobb oldalán lévő erős elmosódás tesz kivehetetlenné.',
]
embeddings = model.encode(sentences)
print(embeddings.shape)
# [3, 768]

# Get the similarity scores for the embeddings
similarities = model.similarity(embeddings, embeddings)
print(similarities.shape)
# [3, 3]

Evaluation

Metrics

Triplet

Metric Value
cosine_accuracy 0.9676
dot_accuracy 0.0324
manhattan_accuracy 0.9688
euclidean_accuracy 0.9676
max_accuracy 0.9688

Triplet

Metric Value
cosine_accuracy 0.9718
dot_accuracy 0.0282
manhattan_accuracy 0.9726
euclidean_accuracy 0.9718
max_accuracy 0.9726

Training Details

Training Dataset

train

  • Dataset: train
  • Size: 1,044,013 training samples
  • Columns: anchor, positive, and negative
  • Approximate statistics based on the first 1000 samples:
    anchor positive negative
    type string string string
    details
    • min: 7 tokens
    • mean: 11.73 tokens
    • max: 56 tokens
    • min: 6 tokens
    • mean: 15.24 tokens
    • max: 47 tokens
    • min: 7 tokens
    • mean: 16.07 tokens
    • max: 53 tokens
  • Samples:
    anchor positive negative
    Egy lóháton ülő ember átugrik egy lerombolt repülőgép felett. Egy ember a szabadban, lóháton. Egy ember egy étteremben van, és omlettet rendel.
    Gyerekek mosolyogva és integetett a kamera Gyermekek vannak jelen A gyerekek homlokot rántanak
    Egy fiú ugrál a gördeszkát a közepén egy piros híd. A fiú gördeszkás trükköt csinál. A fiú korcsolyázik a járdán.
  • Loss: MultipleNegativesRankingLoss with these parameters:
    {
        "scale": 20.0,
        "similarity_fct": "cos_sim"
    }
    

Evaluation Dataset

train

  • Dataset: train
  • Size: 5,000 evaluation samples
  • Columns: anchor, positive, and negative
  • Approximate statistics based on the first 1000 samples:
    anchor positive negative
    type string string string
    details
    • min: 7 tokens
    • mean: 11.73 tokens
    • max: 56 tokens
    • min: 6 tokens
    • mean: 15.24 tokens
    • max: 47 tokens
    • min: 7 tokens
    • mean: 16.07 tokens
    • max: 53 tokens
  • Samples:
    anchor positive negative
    Egy lóháton ülő ember átugrik egy lerombolt repülőgép felett. Egy ember a szabadban, lóháton. Egy ember egy étteremben van, és omlettet rendel.
    Gyerekek mosolyogva és integetett a kamera Gyermekek vannak jelen A gyerekek homlokot rántanak
    Egy fiú ugrál a gördeszkát a közepén egy piros híd. A fiú gördeszkás trükköt csinál. A fiú korcsolyázik a járdán.
  • Loss: MultipleNegativesRankingLoss with these parameters:
    {
        "scale": 20.0,
        "similarity_fct": "cos_sim"
    }
    

Training Hyperparameters

Non-Default Hyperparameters

  • eval_strategy: steps
  • num_train_epochs: 1
  • warmup_ratio: 0.1
  • bf16: True
  • batch_sampler: no_duplicates

All Hyperparameters

Click to expand
  • overwrite_output_dir: False
  • do_predict: False
  • eval_strategy: steps
  • prediction_loss_only: True
  • per_device_train_batch_size: 8
  • per_device_eval_batch_size: 8
  • per_gpu_train_batch_size: None
  • per_gpu_eval_batch_size: None
  • gradient_accumulation_steps: 1
  • eval_accumulation_steps: None
  • torch_empty_cache_steps: None
  • learning_rate: 5e-05
  • weight_decay: 0.0
  • adam_beta1: 0.9
  • adam_beta2: 0.999
  • adam_epsilon: 1e-08
  • max_grad_norm: 1.0
  • num_train_epochs: 1
  • max_steps: -1
  • lr_scheduler_type: linear
  • lr_scheduler_kwargs: {}
  • warmup_ratio: 0.1
  • warmup_steps: 0
  • log_level: passive
  • log_level_replica: warning
  • log_on_each_node: True
  • logging_nan_inf_filter: True
  • save_safetensors: True
  • save_on_each_node: False
  • save_only_model: False
  • restore_callback_states_from_checkpoint: False
  • no_cuda: False
  • use_cpu: False
  • use_mps_device: False
  • seed: 42
  • data_seed: None
  • jit_mode_eval: False
  • use_ipex: False
  • bf16: True
  • fp16: False
  • fp16_opt_level: O1
  • half_precision_backend: auto
  • bf16_full_eval: False
  • fp16_full_eval: False
  • tf32: None
  • local_rank: 0
  • ddp_backend: None
  • tpu_num_cores: None
  • tpu_metrics_debug: False
  • debug: []
  • dataloader_drop_last: False
  • dataloader_num_workers: 0
  • dataloader_prefetch_factor: None
  • past_index: -1
  • disable_tqdm: False
  • remove_unused_columns: True
  • label_names: None
  • load_best_model_at_end: False
  • ignore_data_skip: False
  • fsdp: []
  • fsdp_min_num_params: 0
  • fsdp_config: {'min_num_params': 0, 'xla': False, 'xla_fsdp_v2': False, 'xla_fsdp_grad_ckpt': False}
  • fsdp_transformer_layer_cls_to_wrap: None
  • accelerator_config: {'split_batches': False, 'dispatch_batches': None, 'even_batches': True, 'use_seedable_sampler': True, 'non_blocking': False, 'gradient_accumulation_kwargs': None}
  • deepspeed: None
  • label_smoothing_factor: 0.0
  • optim: adamw_torch
  • optim_args: None
  • adafactor: False
  • group_by_length: False
  • length_column_name: length
  • ddp_find_unused_parameters: None
  • ddp_bucket_cap_mb: None
  • ddp_broadcast_buffers: False
  • dataloader_pin_memory: True
  • dataloader_persistent_workers: False
  • skip_memory_metrics: True
  • use_legacy_prediction_loop: False
  • push_to_hub: False
  • resume_from_checkpoint: None
  • hub_model_id: None
  • hub_strategy: every_save
  • hub_private_repo: False
  • hub_always_push: False
  • gradient_checkpointing: False
  • gradient_checkpointing_kwargs: None
  • include_inputs_for_metrics: False
  • eval_do_concat_batches: True
  • fp16_backend: auto
  • push_to_hub_model_id: None
  • push_to_hub_organization: None
  • mp_parameters:
  • auto_find_batch_size: False
  • full_determinism: False
  • torchdynamo: None
  • ray_scope: last
  • ddp_timeout: 1800
  • torch_compile: False
  • torch_compile_backend: None
  • torch_compile_mode: None
  • dispatch_batches: None
  • split_batches: None
  • include_tokens_per_second: False
  • include_num_input_tokens_seen: False
  • neftune_noise_alpha: None
  • optim_target_modules: None
  • batch_eval_metrics: False
  • eval_on_start: False
  • eval_use_gather_object: False
  • batch_sampler: no_duplicates
  • multi_dataset_batch_sampler: proportional

Training Logs

Click to expand
Epoch Step Training Loss train loss all-nli-dev_max_accuracy all-nli-test_max_accuracy
0 0 - - 0.7578 -
0.0008 100 0.8531 - - -
0.0015 200 0.938 - - -
0.0023 300 0.8788 - - -
0.0031 400 0.9619 - - -
0.0038 500 0.9634 - - -
0.0046 600 1.0995 - - -
0.0054 700 0.8266 - - -
0.0061 800 0.8647 - - -
0.0069 900 0.8123 - - -
0.0077 1000 0.7149 - - -
0.0084 1100 0.8852 - - -
0.0092 1200 0.9001 - - -
0.0100 1300 0.8113 - - -
0.0107 1400 0.756 - - -
0.0115 1500 0.6729 - - -
0.0123 1600 0.5763 - - -
0.0130 1700 0.6413 - - -
0.0138 1800 1.0721 - - -
0.0146 1900 0.9248 - - -
0.0153 2000 0.9313 0.1873 0.9518 -
0.0161 2100 0.8165 - - -
0.0169 2200 0.7051 - - -
0.0176 2300 0.8373 - - -
0.0184 2400 0.8337 - - -
0.0192 2500 0.6224 - - -
0.0199 2600 0.4977 - - -
0.0207 2700 0.6843 - - -
0.0215 2800 0.4773 - - -
0.0222 2900 0.5113 - - -
0.0230 3000 0.2415 - - -
0.0238 3100 0.2441 - - -
0.0245 3200 0.3309 - - -
0.0253 3300 0.4765 - - -
0.0261 3400 0.4781 - - -
0.0268 3500 0.2184 - - -
0.0276 3600 0.3596 - - -
0.0284 3700 0.655 - - -
0.0291 3800 0.6108 - - -
0.0299 3900 0.4897 - - -
0.0307 4000 0.3217 0.3629 0.9146 -
0.0314 4100 0.2678 - - -
0.0322 4200 0.4772 - - -
0.0329 4300 0.46 - - -
0.0337 4400 0.3363 - - -
0.0345 4500 0.2244 - - -
0.0352 4600 0.2708 - - -
0.0360 4700 0.288 - - -
0.0368 4800 0.4095 - - -
0.0375 4900 0.3836 - - -
0.0383 5000 0.3999 - - -
0.0391 5100 0.2303 - - -
0.0398 5200 0.232 - - -
0.0406 5300 0.2001 - - -
0.0414 5400 0.2552 - - -
0.0421 5500 0.2658 - - -
0.0429 5600 0.3652 - - -
0.0437 5700 0.6644 - - -
0.0444 5800 0.4616 - - -
0.0452 5900 0.459 - - -
0.0460 6000 0.4053 0.6328 0.8806 -
0.0467 6100 0.3715 - - -
0.0475 6200 0.5301 - - -
0.0483 6300 0.4412 - - -
0.0490 6400 0.3733 - - -
0.0498 6500 0.4258 - - -
0.0506 6600 0.4896 - - -
0.0513 6700 0.4275 - - -
0.0521 6800 0.4419 - - -
0.0529 6900 0.4671 - - -
0.0536 7000 0.4209 - - -
0.0544 7100 0.406 - - -
0.0552 7200 0.3265 - - -
0.0559 7300 0.2712 - - -
0.0567 7400 0.3408 - - -
0.0575 7500 0.4078 - - -
0.0582 7600 0.3304 - - -
0.0590 7700 0.2874 - - -
0.0598 7800 0.357 - - -
0.0605 7900 0.3936 - - -
0.0613 8000 0.3239 0.5266 0.8706 -
0.0621 8100 0.3486 - - -
0.0628 8200 0.4123 - - -
0.0636 8300 0.7267 - - -
0.0644 8400 0.6765 - - -
0.0651 8500 0.7502 - - -
0.0659 8600 0.8435 - - -
0.0667 8700 0.4286 - - -
0.0674 8800 0.2898 - - -
0.0682 8900 0.4943 - - -
0.0690 9000 0.3998 - - -
0.0697 9100 0.4484 - - -
0.0705 9200 0.4421 - - -
0.0713 9300 0.3331 - - -
0.0720 9400 0.3354 - - -
0.0728 9500 0.5536 - - -
0.0736 9600 0.4695 - - -
0.0743 9700 0.4275 - - -
0.0751 9800 0.4075 - - -
0.0759 9900 0.5394 - - -
0.0766 10000 0.4852 0.4733 0.9202 -
0.0774 10100 0.3679 - - -
0.0782 10200 0.4251 - - -
0.0789 10300 0.262 - - -
0.0797 10400 0.384 - - -
0.0805 10500 0.3438 - - -
0.0812 10600 0.3618 - - -
0.0820 10700 0.4057 - - -
0.0828 10800 0.5303 - - -
0.0835 10900 0.5121 - - -
0.0843 11000 0.4173 - - -
0.0851 11100 0.409 - - -
0.0858 11200 0.6285 - - -
0.0866 11300 0.5373 - - -
0.0874 11400 0.3423 - - -
0.0881 11500 0.5681 - - -
0.0889 11600 0.4172 - - -
0.0897 11700 0.5511 - - -
0.0904 11800 0.4482 - - -
0.0912 11900 0.5888 - - -
0.0920 12000 0.4315 0.8177 0.8496 -
0.0927 12100 0.5085 - - -
0.0935 12200 0.7179 - - -
0.0943 12300 0.72 - - -
0.0950 12400 0.4522 - - -
0.0958 12500 0.6524 - - -
0.0966 12600 0.5518 - - -
0.0973 12700 0.5112 - - -
0.0981 12800 0.4752 - - -
0.0988 12900 0.4075 - - -
0.0996 13000 0.7106 - - -
0.1004 13100 0.7369 - - -
0.1011 13200 0.6002 - - -
0.1019 13300 0.3983 - - -
0.1027 13400 0.4522 - - -
0.1034 13500 0.5373 - - -
0.1042 13600 0.6317 - - -
0.1050 13700 0.4904 - - -
0.1057 13800 0.5027 - - -
0.1065 13900 0.4386 - - -
0.1073 14000 0.571 0.4533 0.9182 -
0.1080 14100 0.4935 - - -
0.1088 14200 0.494 - - -
0.1096 14300 0.7545 - - -
0.1103 14400 0.64 - - -
0.1111 14500 0.7364 - - -
0.1119 14600 0.5552 - - -
0.1126 14700 0.4282 - - -
0.1134 14800 0.8343 - - -
0.1142 14900 0.5264 - - -
0.1149 15000 0.2682 - - -
0.1157 15100 0.4011 - - -
0.1165 15200 0.39 - - -
0.1172 15300 0.2813 - - -
0.1180 15400 0.3316 - - -
0.1188 15500 0.2424 - - -
0.1195 15600 0.3001 - - -
0.1203 15700 0.2728 - - -
0.1211 15800 0.366 - - -
0.1218 15900 0.4103 - - -
0.1226 16000 0.1548 0.7131 0.876 -
0.1234 16100 0.3768 - - -
0.1241 16200 0.6659 - - -
0.1249 16300 0.5738 - - -
0.1257 16400 0.4899 - - -
0.1264 16500 0.2281 - - -
0.1272 16600 0.2406 - - -
0.1280 16700 0.3569 - - -
0.1287 16800 0.3862 - - -
0.1295 16900 0.3531 - - -
0.1303 17000 0.1497 - - -
0.1310 17100 0.2125 - - -
0.1318 17200 0.3563 - - -
0.1326 17300 0.4138 - - -
0.1333 17400 0.3434 - - -
0.1341 17500 0.351 - - -
0.1349 17600 0.1777 - - -
0.1356 17700 0.2335 - - -
0.1364 17800 0.1479 - - -
0.1372 17900 0.2382 - - -
0.1379 18000 0.2306 0.5838 0.898 -
0.1387 18100 0.3028 - - -
0.1395 18200 0.6886 - - -
0.1402 18300 0.4118 - - -
0.1410 18400 0.463 - - -
0.1418 18500 0.3672 - - -
0.1425 18600 0.2931 - - -
0.1433 18700 0.4141 - - -
0.1441 18800 0.3775 - - -
0.1448 18900 0.297 - - -
0.1456 19000 0.3659 - - -
0.1464 19100 0.4638 - - -
0.1471 19200 0.4008 - - -
0.1479 19300 0.344 - - -
0.1487 19400 0.3902 - - -
0.1494 19500 0.3392 - - -
0.1502 19600 0.4313 - - -
0.1510 19700 0.2827 - - -
0.1517 19800 0.2602 - - -
0.1525 19900 0.2954 - - -
0.1533 20000 0.3626 0.3532 0.9126 -
0.1540 20100 0.3205 - - -
0.1548 20200 0.2095 - - -
0.1556 20300 0.2758 - - -
0.1563 20400 0.3855 - - -
0.1571 20500 0.3173 - - -
0.1579 20600 0.2858 - - -
0.1586 20700 0.3655 - - -
0.1594 20800 0.5513 - - -
0.1602 20900 0.4995 - - -
0.1609 21000 0.5949 - - -
0.1617 21100 0.7629 - - -
0.1624 21200 0.3139 - - -
0.1632 21300 0.1827 - - -
0.1640 21400 0.4238 - - -
0.1647 21500 0.311 - - -
0.1655 21600 0.3881 - - -
0.1663 21700 0.4073 - - -
0.1670 21800 0.2609 - - -
0.1678 21900 0.2442 - - -
0.1686 22000 0.4434 0.3622 0.9238 -
0.1693 22100 0.3899 - - -
0.1701 22200 0.3822 - - -
0.1709 22300 0.2892 - - -
0.1716 22400 0.4078 - - -
0.1724 22500 0.3758 - - -
0.1732 22600 0.2714 - - -
0.1739 22700 0.304 - - -
0.1747 22800 0.2074 - - -
0.1755 22900 0.2447 - - -
0.1762 23000 0.2148 - - -
0.1770 23100 0.2565 - - -
0.1778 23200 0.3164 - - -
0.1785 23300 0.4486 - - -
0.1793 23400 0.4001 - - -
0.1801 23500 0.3374 - - -
0.1808 23600 0.2576 - - -
0.1816 23700 0.4531 - - -
0.1824 23800 0.3501 - - -
0.1831 23900 0.2755 - - -
0.1839 24000 0.4571 0.5006 0.9296 -
0.1847 24100 0.3371 - - -
0.1854 24200 0.4287 - - -
0.1862 24300 0.3217 - - -
0.1870 24400 0.3464 - - -
0.1877 24500 0.3257 - - -
0.1885 24600 0.3412 - - -
0.1893 24700 0.569 - - -
0.1900 24800 0.4851 - - -
0.1908 24900 0.2667 - - -
0.1916 25000 0.5093 - - -
0.1923 25100 0.3305 - - -
0.1931 25200 0.3199 - - -
0.1939 25300 0.3103 - - -
0.1946 25400 0.3189 - - -
0.1954 25500 0.6199 - - -
0.1962 25600 0.6001 - - -
0.1969 25700 0.416 - - -
0.1977 25800 0.2765 - - -
0.1985 25900 0.3523 - - -
0.1992 26000 0.4098 0.3070 0.961 -
0.2000 26100 0.3526 - - -
0.2008 26200 0.3409 - - -
0.2015 26300 0.2826 - - -
0.2023 26400 0.3161 - - -
0.2031 26500 0.3768 - - -
0.2038 26600 0.2398 - - -
0.2046 26700 0.3281 - - -
0.2054 26800 0.5103 - - -
0.2061 26900 0.3619 - - -
0.2069 27000 0.4818 - - -
0.2077 27100 0.3793 - - -
0.2084 27200 0.3713 - - -
0.2092 27300 0.5628 - - -
0.2100 27400 0.4162 - - -
0.2107 27500 0.1791 - - -
0.2115 27600 0.2212 - - -
0.2123 27700 0.227 - - -
0.2130 27800 0.1547 - - -
0.2138 27900 0.1532 - - -
0.2146 28000 0.1684 0.2016 0.9732 -
0.2153 28100 0.1512 - - -
0.2161 28200 0.1525 - - -
0.2169 28300 0.2272 - - -
0.2176 28400 0.3624 - - -
0.2184 28500 0.1039 - - -
0.2192 28600 0.2833 - - -
0.2199 28700 0.5507 - - -
0.2207 28800 0.3969 - - -
0.2215 28900 0.3477 - - -
0.2222 29000 0.135 - - -
0.2230 29100 0.1454 - - -
0.2238 29200 0.2475 - - -
0.2245 29300 0.2538 - - -
0.2253 29400 0.2197 - - -
0.2261 29500 0.057 - - -
0.2268 29600 0.1312 - - -
0.2276 29700 0.213 - - -
0.2283 29800 0.3195 - - -
0.2291 29900 0.2358 - - -
0.2299 30000 0.273 0.2934 0.9392 -
0.2306 30100 0.1181 - - -
0.2314 30200 0.1874 - - -
0.2322 30300 0.0743 - - -
0.2329 30400 0.1617 - - -
0.2337 30500 0.1573 - - -
0.2345 30600 0.141 - - -
0.2352 30700 0.4947 - - -
0.2360 30800 0.2698 - - -
0.2368 30900 0.2668 - - -
0.2375 31000 0.1834 - - -
0.2383 31100 0.1813 - - -
0.2391 31200 0.2274 - - -
0.2398 31300 0.2553 - - -
0.2406 31400 0.2441 - - -
0.2414 31500 0.2376 - - -
0.2421 31600 0.366 - - -
0.2429 31700 0.3248 - - -
0.2437 31800 0.2314 - - -
0.2444 31900 0.2665 - - -
0.2452 32000 0.2388 0.1915 0.9654 -
0.2460 32100 0.2911 - - -
0.2467 32200 0.1602 - - -
0.2475 32300 0.1294 - - -
0.2483 32400 0.2687 - - -
0.2490 32500 0.2579 - - -
0.2498 32600 0.1988 - - -
0.2506 32700 0.1212 - - -
0.2513 32800 0.2145 - - -
0.2521 32900 0.2485 - - -
0.2529 33000 0.2353 - - -
0.2536 33100 0.1729 - - -
0.2544 33200 0.2498 - - -
0.2552 33300 0.3091 - - -
0.2559 33400 0.252 - - -
0.2567 33500 0.3321 - - -
0.2575 33600 0.5145 - - -
0.2582 33700 0.2102 - - -
0.2590 33800 0.0869 - - -
0.2598 33900 0.2779 - - -
0.2605 34000 0.1935 0.1556 0.9716 -
0.2613 34100 0.2646 - - -
0.2621 34200 0.2464 - - -
0.2628 34300 0.214 - - -
0.2636 34400 0.1875 - - -
0.2644 34500 0.3016 - - -
0.2651 34600 0.2721 - - -
0.2659 34700 0.215 - - -
0.2667 34800 0.1895 - - -
0.2674 34900 0.2684 - - -
0.2682 35000 0.2721 - - -
0.2690 35100 0.1945 - - -
0.2697 35200 0.1581 - - -
0.2705 35300 0.1269 - - -
0.2713 35400 0.2101 - - -
0.2720 35500 0.1388 - - -
0.2728 35600 0.1664 - - -
0.2736 35700 0.1861 - - -
0.2743 35800 0.3073 - - -
0.2751 35900 0.2723 - - -
0.2759 36000 0.2002 0.1500 0.9746 -
0.2766 36100 0.1583 - - -
0.2774 36200 0.2918 - - -
0.2782 36300 0.1913 - - -
0.2789 36400 0.1701 - - -
0.2797 36500 0.3122 - - -
0.2805 36600 0.2068 - - -
0.2812 36700 0.2807 - - -
0.2820 36800 0.2398 - - -
0.2828 36900 0.2264 - - -
0.2835 37000 0.1756 - - -
0.2843 37100 0.2027 - - -
0.2851 37200 0.4277 - - -
0.2858 37300 0.3126 - - -
0.2866 37400 0.1836 - - -
0.2874 37500 0.3447 - - -
0.2881 37600 0.1742 - - -
0.2889 37700 0.2391 - - -
0.2897 37800 0.1672 - - -
0.2904 37900 0.2821 - - -
0.2912 38000 0.3924 0.2273 0.9704 -
0.2919 38100 0.3842 - - -
0.2927 38200 0.3022 - - -
0.2935 38300 0.0748 - - -
0.2942 38400 0.2131 - - -
0.2950 38500 0.1604 - - -
0.2958 38600 0.1645 - - -
0.2965 38700 0.1753 - - -
0.2973 38800 0.0634 - - -
0.2981 38900 0.1199 - - -
0.2988 39000 0.1586 - - -
0.2996 39100 0.1119 - - -
0.3004 39200 0.106 - - -
0.3011 39300 0.2754 - - -
0.3019 39400 0.2172 - - -
0.3027 39500 0.2081 - - -
0.3034 39600 0.1237 - - -
0.3042 39700 0.1699 - - -
0.3050 39800 0.3101 - - -
0.3057 39900 0.2217 - - -
0.3065 40000 0.0641 0.1541 0.9764 -
0.3073 40100 0.1466 - - -
0.3080 40200 0.1468 - - -
0.3088 40300 0.0891 - - -
0.3096 40400 0.0694 - - -
0.3103 40500 0.0993 - - -
0.3111 40600 0.0895 - - -
0.3119 40700 0.1036 - - -
0.3126 40800 0.1358 - - -
0.3134 40900 0.1809 - - -
0.3142 41000 0.0739 - - -
0.3149 41100 0.1942 - - -
0.3157 41200 0.5035 - - -
0.3165 41300 0.1967 - - -
0.3172 41400 0.2337 - - -
0.3180 41500 0.0589 - - -
0.3188 41600 0.0559 - - -
0.3195 41700 0.1349 - - -
0.3203 41800 0.1641 - - -
0.3211 41900 0.1014 - - -
0.3218 42000 0.0307 0.1494 0.9808 -
0.3226 42100 0.0804 - - -
0.3234 42200 0.1525 - - -
0.3241 42300 0.217 - - -
0.3249 42400 0.1217 - - -
0.3257 42500 0.1793 - - -
0.3264 42600 0.0749 - - -
0.3272 42700 0.1164 - - -
0.3280 42800 0.0354 - - -
0.3287 42900 0.0907 - - -
0.3295 43000 0.0859 - - -
0.3303 43100 0.0452 - - -
0.3310 43200 0.2408 - - -
0.3318 43300 0.1326 - - -
0.3326 43400 0.1982 - - -
0.3333 43500 0.0987 - - -
0.3341 43600 0.1097 - - -
0.3349 43700 0.1461 - - -
0.3356 43800 0.1902 - - -
0.3364 43900 0.1091 - - -
0.3372 44000 0.1655 0.2016 0.9634 -
0.3379 44100 0.2503 - - -
0.3387 44200 0.2033 - - -
0.3395 44300 0.1312 - - -
0.3402 44400 0.175 - - -
0.3410 44500 0.1357 - - -
0.3418 44600 0.1589 - - -
0.3425 44700 0.1093 - - -
0.3433 44800 0.0593 - - -
0.3441 44900 0.14 - - -
0.3448 45000 0.1669 - - -
0.3456 45100 0.0919 - - -
0.3464 45200 0.0479 - - -
0.3471 45300 0.1151 - - -
0.3479 45400 0.1353 - - -
0.3487 45500 0.1457 - - -
0.3494 45600 0.0952 - - -
0.3502 45700 0.149 - - -
0.3510 45800 0.1253 - - -
0.3517 45900 0.1249 - - -
0.3525 46000 0.1592 0.1187 0.98 -
0.3533 46100 0.3452 - - -
0.3540 46200 0.1351 - - -
0.3548 46300 0.0551 - - -
0.3556 46400 0.1676 - - -
0.3563 46500 0.1227 - - -
0.3571 46600 0.1381 - - -
0.3578 46700 0.177 - - -
0.3586 46800 0.1239 - - -
0.3594 46900 0.1014 - - -
0.3601 47000 0.1724 - - -
0.3609 47100 0.1838 - - -
0.3617 47200 0.1259 - - -
0.3624 47300 0.1161 - - -
0.3632 47400 0.1746 - - -
0.3640 47500 0.1764 - - -
0.3647 47600 0.1176 - - -
0.3655 47700 0.1461 - - -
0.3663 47800 0.0837 - - -
0.3670 47900 0.0984 - - -
0.3678 48000 0.0783 0.1882 0.9822 -
0.3686 48100 0.1031 - - -
0.3693 48200 0.1257 - - -
0.3701 48300 0.1874 - - -
0.3709 48400 0.1645 - - -
0.3716 48500 0.1352 - - -
0.3724 48600 0.1158 - - -
0.3732 48700 0.1724 - - -
0.3739 48800 0.0974 - - -
0.3747 48900 0.0827 - - -
0.3755 49000 0.2194 - - -
0.3762 49100 0.1576 - - -
0.3770 49200 0.1702 - - -
0.3778 49300 0.151 - - -
0.3785 49400 0.1416 - - -
0.3793 49500 0.1263 - - -
0.3801 49600 0.1186 - - -
0.3808 49700 0.241 - - -
0.3816 49800 0.1737 - - -
0.3824 49900 0.122 - - -
0.3831 50000 0.2243 0.0826 0.986 -
0.3839 50100 0.077 - - -
0.3847 50200 0.1728 - - -
0.3854 50300 0.0942 - - -
0.3862 50400 0.1689 - - -
0.3870 50500 0.2525 - - -
0.3877 50600 0.2081 - - -
0.3885 50700 0.0778 - - -
0.3893 50800 0.0302 - - -
0.3900 50900 0.0821 - - -
0.3908 51000 0.0442 - - -
0.3916 51100 0.0426 - - -
0.3923 51200 0.0611 - - -
0.3931 51300 0.0078 - - -
0.3939 51400 0.0823 - - -
0.3946 51500 0.1089 - - -
0.3954 51600 0.0427 - - -
0.3962 51700 0.0808 - - -
0.3969 51800 0.1833 - - -
0.3977 51900 0.1553 - - -
0.3985 52000 0.1002 0.2288 0.9742 -
0.3992 52100 0.0833 - - -
0.4000 52200 0.1126 - - -
0.4008 52300 0.1907 - - -
0.4015 52400 0.1434 - - -
0.4023 52500 0.0357 - - -
0.4031 52600 0.1061 - - -
0.4038 52700 0.0674 - - -
0.4046 52800 0.056 - - -
0.4054 52900 0.0328 - - -
0.4061 53000 0.0457 - - -
0.4069 53100 0.0608 - - -
0.4077 53200 0.0311 - - -
0.4084 53300 0.0597 - - -
0.4092 53400 0.0809 - - -
0.4100 53500 0.0371 - - -
0.4107 53600 0.1224 - - -
0.4115 53700 0.3256 - - -
0.4123 53800 0.1202 - - -
0.4130 53900 0.1193 - - -
0.4138 54000 0.0382 0.1721 0.9852 -
0.4146 54100 0.0395 - - -
0.4153 54200 0.1023 - - -
0.4161 54300 0.0929 - - -
0.4169 54400 0.0419 - - -
0.4176 54500 0.0178 - - -
0.4184 54600 0.0398 - - -
0.4192 54700 0.0949 - - -
0.4199 54800 0.1276 - - -
0.4207 54900 0.0598 - - -
0.4214 55000 0.1563 - - -
0.4222 55100 0.0404 - - -
0.4230 55200 0.0684 - - -
0.4237 55300 0.0203 - - -
0.4245 55400 0.0499 - - -
0.4253 55500 0.0574 - - -
0.4260 55600 0.0175 - - -
0.4268 55700 0.1218 - - -
0.4276 55800 0.0674 - - -
0.4283 55900 0.0784 - - -
0.4291 56000 0.0509 2.1277 0.861 -
0.4299 56100 0.0557 - - -
0.4306 56200 0.0875 - - -
0.4314 56300 0.089 - - -
0.4322 56400 0.081 - - -
0.4329 56500 0.051 - - -
0.4337 56600 0.1965 - - -
0.4345 56700 0.1703 - - -
0.4352 56800 1.0721 - - -
0.4360 56900 0.9794 - - -
0.4368 57000 1.0224 - - -
0.4375 57100 1.0802 - - -
0.4383 57200 1.0966 - - -
0.4391 57300 1.0528 - - -
0.4398 57400 1.0647 - - -
0.4406 57500 0.9738 - - -
0.4414 57600 1.0226 - - -
0.4421 57700 1.0012 - - -
0.4429 57800 1.0331 - - -
0.4437 57900 0.9854 - - -
0.4444 58000 1.0047 0.0744 0.9918 -
0.4452 58100 0.9554 - - -
0.4460 58200 0.9855 - - -
0.4467 58300 0.9454 - - -
0.4475 58400 0.9855 - - -
0.4483 58500 0.9331 - - -
0.4490 58600 0.933 - - -
0.4498 58700 0.9431 - - -
0.4506 58800 0.9434 - - -
0.4513 58900 0.9583 - - -
0.4521 59000 0.9204 - - -
0.4529 59100 0.9574 - - -
0.4536 59200 0.9714 - - -
0.4544 59300 0.9263 - - -
0.4552 59400 0.8828 - - -
0.4559 59500 0.9343 - - -
0.4567 59600 0.8743 - - -
0.4575 59700 0.9266 - - -
0.4582 59800 0.9097 - - -
0.4590 59900 0.9303 - - -
0.4598 60000 0.9452 0.1016 0.988 -
0.4605 60100 0.9241 - - -
0.4613 60200 0.8899 - - -
0.4621 60300 0.9122 - - -
0.4628 60400 0.8831 - - -
0.4636 60500 0.8785 - - -
0.4644 60600 0.9588 - - -
0.4651 60700 0.9349 - - -
0.4659 60800 1.0211 - - -
0.4667 60900 1.0755 - - -
0.4674 61000 1.0176 - - -
0.4682 61100 1.0608 - - -
0.4690 61200 1.0493 - - -
0.4697 61300 1.0761 - - -
0.4705 61400 1.0182 - - -
0.4713 61500 1.0641 - - -
0.4720 61600 1.0029 - - -
0.4728 61700 1.0532 - - -
0.4736 61800 0.9898 - - -
0.4743 61900 1.0159 - - -
0.4751 62000 1.0474 0.1205 0.9816 -
0.4759 62100 1.0041 - - -
0.4766 62200 1.0088 - - -
0.4774 62300 0.9934 - - -
0.4782 62400 0.9959 - - -
0.4789 62500 1.0032 - - -
0.4797 62600 1.0464 - - -
0.4805 62700 0.9998 - - -
0.4812 62800 1.0052 - - -
0.4820 62900 1.0199 - - -
0.4828 63000 1.0047 - - -
0.4835 63100 1.0236 - - -
0.4843 63200 1.0041 - - -
0.4851 63300 1.0608 - - -
0.4858 63400 1.0167 - - -
0.4866 63500 0.9983 - - -
0.4873 63600 1.0408 - - -
0.4881 63700 1.0163 - - -
0.4889 63800 0.9447 - - -
0.4896 63900 1.0192 - - -
0.4904 64000 1.0316 0.1436 0.9766 -
0.4912 64100 1.0069 - - -
0.4919 64200 0.9909 - - -
0.4927 64300 1.0286 - - -
0.4935 64400 1.0212 - - -
0.4942 64500 1.0155 - - -
0.4950 64600 0.9988 - - -
0.4958 64700 0.9923 - - -
0.4965 64800 0.9713 - - -
0.4973 64900 1.0062 - - -
0.4981 65000 1.013 - - -
0.4988 65100 1.0055 - - -
0.4996 65200 0.9807 - - -
0.5004 65300 0.9428 - - -
0.5011 65400 0.9476 - - -
0.5019 65500 0.9222 - - -
0.5027 65600 0.9663 - - -
0.5034 65700 0.9706 - - -
0.5042 65800 0.9639 - - -
0.5050 65900 0.963 - - -
0.5057 66000 0.9782 0.1326 0.9764 -
0.5065 66100 0.9537 - - -
0.5073 66200 1.0072 - - -
0.5080 66300 0.9767 - - -
0.5088 66400 0.9792 - - -
0.5096 66500 0.9615 - - -
0.5103 66600 0.983 - - -
0.5111 66700 0.9542 - - -
0.5119 66800 0.9687 - - -
0.5126 66900 0.9659 - - -
0.5134 67000 0.973 - - -
0.5142 67100 0.9895 - - -
0.5149 67200 0.9716 - - -
0.5157 67300 0.9161 - - -
0.5165 67400 0.9851 - - -
0.5172 67500 1.0032 - - -
0.5180 67600 0.9414 - - -
0.5188 67700 0.9801 - - -
0.5195 67800 0.9798 - - -
0.5203 67900 0.9632 - - -
0.5211 68000 0.9715 0.1746 0.9674 -
0.5218 68100 0.9983 - - -
0.5226 68200 0.9747 - - -
0.5234 68300 0.9685 - - -
0.5241 68400 1.011 - - -
0.5249 68500 0.9542 - - -
0.5257 68600 0.9662 - - -
0.5264 68700 0.9838 - - -
0.5272 68800 0.9755 - - -
0.5280 68900 0.9346 - - -
0.5287 69000 0.9348 - - -
0.5295 69100 0.9252 - - -
0.5303 69200 0.9931 - - -
0.5310 69300 0.9877 - - -
0.5318 69400 0.9594 - - -
0.5326 69500 0.9569 - - -
0.5333 69600 0.9564 - - -
0.5341 69700 0.9692 - - -
0.5349 69800 0.9106 - - -
0.5356 69900 0.8954 - - -
0.5364 70000 1.0045 0.1596 0.9648 -
0.5372 70100 0.933 - - -
0.5379 70200 0.9637 - - -
0.5387 70300 0.924 - - -
0.5395 70400 0.9435 - - -
0.5402 70500 0.9692 - - -
0.5410 70600 0.9407 - - -
0.5418 70700 0.9437 - - -
0.5425 70800 0.9417 - - -
0.5433 70900 0.9367 - - -
0.5441 71000 0.9473 - - -
0.5448 71100 0.9482 - - -
0.5456 71200 0.9312 - - -
0.5464 71300 0.976 - - -
0.5471 71400 0.9542 - - -
0.5479 71500 0.9748 - - -
0.5487 71600 0.9263 - - -
0.5494 71700 0.9636 - - -
0.5502 71800 0.9603 - - -
0.5509 71900 0.9328 - - -
0.5517 72000 0.9588 0.1310 0.9752 -
0.5525 72100 0.9288 - - -
0.5532 72200 0.972 - - -
0.5540 72300 0.9276 - - -
0.5548 72400 0.9752 - - -
0.5555 72500 0.9437 - - -
0.5563 72600 0.9527 - - -
0.5571 72700 0.9365 - - -
0.5578 72800 0.9536 - - -
0.5586 72900 0.9111 - - -
0.5594 73000 0.9425 - - -
0.5601 73100 0.9342 - - -
0.5609 73200 0.9278 - - -
0.5617 73300 0.9335 - - -
0.5624 73400 0.9231 - - -
0.5632 73500 0.87 - - -
0.5640 73600 0.8865 - - -
0.5647 73700 0.927 - - -
0.5655 73800 0.8853 - - -
0.5663 73900 0.9467 - - -
0.5670 74000 0.9527 0.1750 0.965 -
0.5678 74100 0.9256 - - -
0.5686 74200 0.9032 - - -
0.5693 74300 0.9575 - - -
0.5701 74400 0.9578 - - -
0.5709 74500 0.8954 - - -
0.5716 74600 0.9007 - - -
0.5724 74700 0.9442 - - -
0.5732 74800 0.9296 - - -
0.5739 74900 0.8952 - - -
0.5747 75000 0.9135 - - -
0.5755 75100 0.9241 - - -
0.5762 75200 0.93 - - -
0.5770 75300 0.9438 - - -
0.5778 75400 0.9254 - - -
0.5785 75500 0.9127 - - -
0.5793 75600 0.9173 - - -
0.5801 75700 0.9779 - - -
0.5808 75800 0.9122 - - -
0.5816 75900 0.9286 - - -
0.5824 76000 0.9472 0.1710 0.9656 -
0.5831 76100 0.8931 - - -
0.5839 76200 0.9503 - - -
0.5847 76300 0.9395 - - -
0.5854 76400 0.9381 - - -
0.5862 76500 0.9208 - - -
0.5870 76600 0.9093 - - -
0.5877 76700 0.9175 - - -
0.5885 76800 0.9083 - - -
0.5893 76900 0.9291 - - -
0.5900 77000 0.954 - - -
0.5908 77100 0.8821 - - -
0.5916 77200 0.9228 - - -
0.5923 77300 0.938 - - -
0.5931 77400 0.975 - - -
0.5939 77500 0.8982 - - -
0.5946 77600 0.873 - - -
0.5954 77700 0.9226 - - -
0.5962 77800 0.9702 - - -
0.5969 77900 0.9134 - - -
0.5977 78000 0.9628 0.1979 0.9582 -
0.5985 78100 0.941 - - -
0.5992 78200 0.8893 - - -
0.6000 78300 0.9149 - - -
0.6008 78400 0.8923 - - -
0.6015 78500 0.9461 - - -
0.6023 78600 0.9059 - - -
0.6031 78700 0.8814 - - -
0.6038 78800 0.9173 - - -
0.6046 78900 0.9058 - - -
0.6054 79000 0.9053 - - -
0.6061 79100 0.9056 - - -
0.6069 79200 0.9078 - - -
0.6077 79300 0.9398 - - -
0.6084 79400 0.9458 - - -
0.6092 79500 0.9185 - - -
0.6100 79600 0.9493 - - -
0.6107 79700 0.9118 - - -
0.6115 79800 0.9426 - - -
0.6123 79900 0.8789 - - -
0.6130 80000 0.9457 0.1657 0.9666 -
0.6138 80100 0.9108 - - -
0.6145 80200 0.922 - - -
0.6153 80300 0.9139 - - -
0.6161 80400 0.8739 - - -
0.6168 80500 0.8914 - - -
0.6176 80600 0.9097 - - -
0.6184 80700 0.924 - - -
0.6191 80800 0.9178 - - -
0.6199 80900 0.885 - - -
0.6207 81000 0.9363 - - -
0.6214 81100 0.8954 - - -
0.6222 81200 0.8906 - - -
0.6230 81300 0.925 - - -
0.6237 81400 0.9083 - - -
0.6245 81500 0.9257 - - -
0.6253 81600 0.9054 - - -
0.6260 81700 0.8708 - - -
0.6268 81800 0.9376 - - -
0.6276 81900 0.8871 - - -
0.6283 82000 0.933 0.1743 0.9618 -
0.6291 82100 0.8358 - - -
0.6299 82200 0.8587 - - -
0.6306 82300 0.8752 - - -
0.6314 82400 0.8764 - - -
0.6322 82500 0.8677 - - -
0.6329 82600 0.894 - - -
0.6337 82700 0.8629 - - -
0.6345 82800 0.8981 - - -
0.6352 82900 0.8667 - - -
0.6360 83000 0.8082 - - -
0.6368 83100 0.843 - - -
0.6375 83200 0.9289 - - -
0.6383 83300 0.8797 - - -
0.6391 83400 0.844 - - -
0.6398 83500 0.8413 - - -
0.6406 83600 0.8655 - - -
0.6414 83700 0.8996 - - -
0.6421 83800 0.8182 - - -
0.6429 83900 0.8272 - - -
0.6437 84000 0.8596 0.1347 0.976 -
0.6444 84100 0.8392 - - -
0.6452 84200 0.8569 - - -
0.6460 84300 0.8441 - - -
0.6467 84400 0.8873 - - -
0.6475 84500 0.8965 - - -
0.6483 84600 0.8632 - - -
0.6490 84700 0.8183 - - -
0.6498 84800 0.8385 - - -
0.6506 84900 0.8123 - - -
0.6513 85000 0.8792 - - -
0.6521 85100 0.8762 - - -
0.6529 85200 0.7932 - - -
0.6536 85300 0.863 - - -
0.6544 85400 0.8714 - - -
0.6552 85500 0.7889 - - -
0.6559 85600 0.8466 - - -
0.6567 85700 0.8376 - - -
0.6575 85800 0.7704 - - -
0.6582 85900 0.829 - - -
0.6590 86000 0.8084 0.1359 0.9734 -
0.6598 86100 0.8495 - - -
0.6605 86200 0.8245 - - -
0.6613 86300 0.9183 - - -
0.6621 86400 0.8138 - - -
0.6628 86500 0.8572 - - -
0.6636 86600 0.8141 - - -
0.6644 86700 0.8724 - - -
0.6651 86800 0.8274 - - -
0.6659 86900 0.8455 - - -
0.6667 87000 0.8331 - - -
0.6674 87100 0.8653 - - -
0.6682 87200 0.7822 - - -
0.6690 87300 0.8233 - - -
0.6697 87400 0.811 - - -
0.6705 87500 0.813 - - -
0.6713 87600 0.8329 - - -
0.6720 87700 0.8006 - - -
0.6728 87800 0.8273 - - -
0.6736 87900 0.8308 - - -
0.6743 88000 0.8365 0.1680 0.9652 -
0.6751 88100 0.8167 - - -
0.6759 88200 0.8097 - - -
0.6766 88300 0.8065 - - -
0.6774 88400 0.858 - - -
0.6782 88500 0.832 - - -
0.6789 88600 0.8155 - - -
0.6797 88700 0.8127 - - -
0.6804 88800 0.7509 - - -
0.6812 88900 0.8078 - - -
0.6820 89000 0.874 - - -
0.6827 89100 0.8026 - - -
0.6835 89200 0.7962 - - -
0.6843 89300 0.8145 - - -
0.6850 89400 0.8691 - - -
0.6858 89500 0.8038 - - -
0.6866 89600 0.8424 - - -
0.6873 89700 0.8351 - - -
0.6881 89800 0.7891 - - -
0.6889 89900 0.8335 - - -
0.6896 90000 0.8108 0.1562 0.9648 -
0.6904 90100 0.8334 - - -
0.6912 90200 0.8095 - - -
0.6919 90300 0.8269 - - -
0.6927 90400 0.7553 - - -
0.6935 90500 0.7848 - - -
0.6942 90600 0.7454 - - -
0.6950 90700 0.7806 - - -
0.6958 90800 0.8073 - - -
0.6965 90900 0.8025 - - -
0.6973 91000 0.792 - - -
0.6981 91100 0.8019 - - -
0.6988 91200 0.7974 - - -
0.6996 91300 0.7981 - - -
0.7004 91400 0.7415 - - -
0.7011 91500 0.7934 - - -
0.7019 91600 0.7888 - - -
0.7027 91700 0.8012 - - -
0.7034 91800 0.8016 - - -
0.7042 91900 0.8099 - - -
0.7050 92000 0.8047 0.1948 0.9554 -
0.7057 92100 0.7944 - - -
0.7065 92200 0.834 - - -
0.7073 92300 0.797 - - -
0.7080 92400 0.789 - - -
0.7088 92500 0.7801 - - -
0.7096 92600 0.7613 - - -
0.7103 92700 0.7977 - - -
0.7111 92800 0.788 - - -
0.7119 92900 0.7751 - - -
0.7126 93000 0.7972 - - -
0.7134 93100 0.8149 - - -
0.7142 93200 0.7724 - - -
0.7149 93300 0.7962 - - -
0.7157 93400 0.8016 - - -
0.7165 93500 0.8238 - - -
0.7172 93600 0.8118 - - -
0.7180 93700 0.7519 - - -
0.7188 93800 0.7949 - - -
0.7195 93900 0.8123 - - -
0.7203 94000 0.8212 0.1774 0.9622 -
0.7211 94100 0.7563 - - -
0.7218 94200 0.8104 - - -
0.7226 94300 0.7946 - - -
0.7234 94400 0.7583 - - -
0.7241 94500 0.8039 - - -
0.7249 94600 0.7892 - - -
0.7257 94700 0.8001 - - -
0.7264 94800 0.7612 - - -
0.7272 94900 0.7363 - - -
0.7280 95000 0.8314 - - -
0.7287 95100 0.7611 - - -
0.7295 95200 0.78 - - -
0.7303 95300 0.7524 - - -
0.7310 95400 0.7708 - - -
0.7318 95500 0.8096 - - -
0.7326 95600 0.7839 - - -
0.7333 95700 0.7585 - - -
0.7341 95800 0.7316 - - -
0.7349 95900 0.7924 - - -
0.7356 96000 0.7869 0.1820 0.9574 -
0.7364 96100 0.7748 - - -
0.7372 96200 0.7863 - - -
0.7379 96300 0.7749 - - -
0.7387 96400 0.7627 - - -
0.7395 96500 0.7809 - - -
0.7402 96600 0.7733 - - -
0.7410 96700 0.7898 - - -
0.7418 96800 0.7804 - - -
0.7425 96900 0.7812 - - -
0.7433 97000 0.8134 - - -
0.7440 97100 0.7542 - - -
0.7448 97200 0.8209 - - -
0.7456 97300 0.7689 - - -
0.7463 97400 0.8095 - - -
0.7471 97500 0.7806 - - -
0.7479 97600 0.7757 - - -
0.7486 97700 0.7941 - - -
0.7494 97800 0.8171 - - -
0.7502 97900 0.7946 - - -
0.7509 98000 0.7825 0.1815 0.9586 -
0.7517 98100 0.7709 - - -
0.7525 98200 0.7646 - - -
0.7532 98300 0.765 - - -
0.7540 98400 0.7812 - - -
0.7548 98500 0.7277 - - -
0.7555 98600 0.7471 - - -
0.7563 98700 0.8027 - - -
0.7571 98800 0.7509 - - -
0.7578 98900 0.7898 - - -
0.7586 99000 0.8319 - - -
0.7594 99100 0.7737 - - -
0.7601 99200 0.7546 - - -
0.7609 99300 0.7669 - - -
0.7617 99400 0.7928 - - -
0.7624 99500 0.735 - - -
0.7632 99600 0.7852 - - -
0.7640 99700 0.7827 - - -
0.7647 99800 0.7933 - - -
0.7655 99900 0.7767 - - -
0.7663 100000 0.7515 0.1655 0.9632 -
0.7670 100100 0.7787 - - -
0.7678 100200 0.7528 - - -
0.7686 100300 0.7858 - - -
0.7693 100400 0.7492 - - -
0.7701 100500 0.7622 - - -
0.7709 100600 0.7647 - - -
0.7716 100700 0.7822 - - -
0.7724 100800 0.7673 - - -
0.7732 100900 0.774 - - -
0.7739 101000 0.7627 - - -
0.7747 101100 0.7456 - - -
0.7755 101200 0.8082 - - -
0.7762 101300 0.773 - - -
0.7770 101400 0.779 - - -
0.7778 101500 0.7946 - - -
0.7785 101600 0.7823 - - -
0.7793 101700 0.7499 - - -
0.7801 101800 0.8175 - - -
0.7808 101900 0.8097 - - -
0.7816 102000 0.7561 0.1779 0.963 -
0.7824 102100 0.7691 - - -
0.7831 102200 0.784 - - -
0.7839 102300 0.7468 - - -
0.7847 102400 0.8237 - - -
0.7854 102500 0.7578 - - -
0.7862 102600 0.7622 - - -
0.7870 102700 0.844 - - -
0.7877 102800 0.8233 - - -
0.7885 102900 0.7852 - - -
0.7893 103000 0.8253 - - -
0.7900 103100 0.7684 - - -
0.7908 103200 0.7489 - - -
0.7916 103300 0.7767 - - -
0.7923 103400 0.7859 - - -
0.7931 103500 0.7739 - - -
0.7939 103600 0.7303 - - -
0.7946 103700 0.7546 - - -
0.7954 103800 0.7719 - - -
0.7962 103900 0.7511 - - -
0.7969 104000 0.7531 0.1643 0.9646 -
0.7977 104100 0.7297 - - -
0.7985 104200 0.7698 - - -
0.7992 104300 0.774 - - -
0.8000 104400 0.8124 - - -
0.8008 104500 0.8012 - - -
0.8015 104600 0.8163 - - -
0.8023 104700 0.7677 - - -
0.8031 104800 0.8017 - - -
0.8038 104900 0.7194 - - -
0.8046 105000 0.7623 - - -
0.8054 105100 0.7559 - - -
0.8061 105200 0.7735 - - -
0.8069 105300 0.7338 - - -
0.8077 105400 0.7104 - - -
0.8084 105500 0.7607 - - -
0.8092 105600 0.823 - - -
0.8099 105700 0.8029 - - -
0.8107 105800 0.7811 - - -
0.8115 105900 0.7794 - - -
0.8122 106000 0.7782 0.1784 0.961 -
0.8130 106100 0.7459 - - -
0.8138 106200 0.744 - - -
0.8145 106300 0.7681 - - -
0.8153 106400 0.7698 - - -
0.8161 106500 0.7359 - - -
0.8168 106600 0.781 - - -
0.8176 106700 0.7251 - - -
0.8184 106800 0.7478 - - -
0.8191 106900 0.7782 - - -
0.8199 107000 0.7464 - - -
0.8207 107100 0.6965 - - -
0.8214 107200 0.7368 - - -
0.8222 107300 0.7081 - - -
0.8230 107400 0.7037 - - -
0.8237 107500 0.6953 - - -
0.8245 107600 0.7169 - - -
0.8253 107700 0.7177 - - -
0.8260 107800 0.6925 - - -
0.8268 107900 0.6474 - - -
0.8276 108000 0.6675 0.1514 0.9684 -
0.8283 108100 0.6432 - - -
0.8291 108200 0.7523 - - -
0.8299 108300 0.6864 - - -
0.8306 108400 0.7036 - - -
0.8314 108500 0.6708 - - -
0.8322 108600 0.6739 - - -
0.8329 108700 0.6925 - - -
0.8337 108800 0.6101 - - -
0.8345 108900 0.653 - - -
0.8352 109000 0.664 - - -
0.8360 109100 0.6638 - - -
0.8368 109200 0.6587 - - -
0.8375 109300 0.6837 - - -
0.8383 109400 0.6813 - - -
0.8391 109500 0.6678 - - -
0.8398 109600 0.6601 - - -
0.8406 109700 0.61 - - -
0.8414 109800 0.6185 - - -
0.8421 109900 0.5919 - - -
0.8429 110000 0.6647 0.1559 0.9656 -
0.8437 110100 0.6891 - - -
0.8444 110200 0.652 - - -
0.8452 110300 0.6482 - - -
0.8460 110400 0.6493 - - -
0.8467 110500 0.5998 - - -
0.8475 110600 0.665 - - -
0.8483 110700 0.6228 - - -
0.8490 110800 0.6149 - - -
0.8498 110900 0.6488 - - -
0.8506 111000 0.61 - - -
0.8513 111100 0.657 - - -
0.8521 111200 0.638 - - -
0.8529 111300 0.6588 - - -
0.8536 111400 0.6086 - - -
0.8544 111500 0.6365 - - -
0.8552 111600 0.6066 - - -
0.8559 111700 0.663 - - -
0.8567 111800 0.5876 - - -
0.8575 111900 0.6153 - - -
0.8582 112000 0.6502 0.1445 0.9698 -
0.8590 112100 0.6061 - - -
0.8598 112200 0.6064 - - -
0.8605 112300 0.5988 - - -
0.8613 112400 0.5941 - - -
0.8621 112500 0.6372 - - -
0.8628 112600 0.652 - - -
0.8636 112700 0.5988 - - -
0.8644 112800 0.5789 - - -
0.8651 112900 0.5987 - - -
0.8659 113000 0.6204 - - -
0.8667 113100 0.6054 - - -
0.8674 113200 0.5752 - - -
0.8682 113300 0.6005 - - -
0.8690 113400 0.6158 - - -
0.8697 113500 0.6136 - - -
0.8705 113600 0.6227 - - -
0.8713 113700 0.6229 - - -
0.8720 113800 0.539 - - -
0.8728 113900 0.606 - - -
0.8735 114000 0.6278 0.1484 0.9696 -
0.8743 114100 0.595 - - -
0.8751 114200 0.5903 - - -
0.8758 114300 0.6173 - - -
0.8766 114400 0.6345 - - -
0.8774 114500 0.6205 - - -
0.8781 114600 0.5783 - - -
0.8789 114700 0.5859 - - -
0.8797 114800 0.588 - - -
0.8804 114900 0.601 - - -
0.8812 115000 0.5924 - - -
0.8820 115100 0.6528 - - -
0.8827 115200 0.6359 - - -
0.8835 115300 0.5895 - - -
0.8843 115400 0.5417 - - -
0.8850 115500 0.5728 - - -
0.8858 115600 0.5493 - - -
0.8866 115700 0.5687 - - -
0.8873 115800 0.5954 - - -
0.8881 115900 0.5786 - - -
0.8889 116000 0.6036 0.1424 0.9698 -
0.8896 116100 0.5575 - - -
0.8904 116200 0.5787 - - -
0.8912 116300 0.6071 - - -
0.8919 116400 0.5871 - - -
0.8927 116500 0.5929 - - -
0.8935 116600 0.5926 - - -
0.8942 116700 0.6003 - - -
0.8950 116800 0.5767 - - -
0.8958 116900 0.59 - - -
0.8965 117000 0.5877 - - -
0.8973 117100 0.5613 - - -
0.8981 117200 0.5706 - - -
0.8988 117300 0.5777 - - -
0.8996 117400 0.5986 - - -
0.9004 117500 0.611 - - -
0.9011 117600 0.5516 - - -
0.9019 117700 0.6038 - - -
0.9027 117800 0.5589 - - -
0.9034 117900 0.5935 - - -
0.9042 118000 0.5896 0.1477 0.9696 -
0.9050 118100 0.5737 - - -
0.9057 118200 0.5562 - - -
0.9065 118300 0.5624 - - -
0.9073 118400 0.6038 - - -
0.9080 118500 0.5552 - - -
0.9088 118600 0.5646 - - -
0.9096 118700 0.5629 - - -
0.9103 118800 0.5674 - - -
0.9111 118900 0.5716 - - -
0.9119 119000 0.5767 - - -
0.9126 119100 0.5352 - - -
0.9134 119200 0.59 - - -
0.9142 119300 0.5584 - - -
0.9149 119400 0.5769 - - -
0.9157 119500 0.5906 - - -
0.9165 119600 0.5807 - - -
0.9172 119700 0.5469 - - -
0.9180 119800 0.9169 - - -
0.9188 119900 0.9665 - - -
0.9195 120000 1.0132 0.1389 0.9704 -
0.9203 120100 0.9572 - - -
0.9211 120200 0.9023 - - -
0.9218 120300 0.6828 - - -
0.9226 120400 0.7277 - - -
0.9234 120500 0.7439 - - -
0.9241 120600 0.7554 - - -
0.9249 120700 0.7376 - - -
0.9257 120800 0.6783 - - -
0.9264 120900 0.7071 - - -
0.9272 121000 0.7251 - - -
0.9280 121100 0.7385 - - -
0.9287 121200 0.7207 - - -
0.9295 121300 0.7903 - - -
0.9303 121400 0.7863 - - -
0.9310 121500 0.7672 - - -
0.9318 121600 0.6873 - - -
0.9326 121700 0.7526 - - -
0.9333 121800 0.764 - - -
0.9341 121900 0.7827 - - -
0.9349 122000 0.8713 0.1329 0.9706 -
0.9356 122100 0.7872 - - -
0.9364 122200 0.6837 - - -
0.9372 122300 0.6017 - - -
0.9379 122400 0.6283 - - -
0.9387 122500 0.758 - - -
0.9394 122600 0.694 - - -
0.9402 122700 0.7112 - - -
0.9410 122800 0.7566 - - -
0.9417 122900 0.7118 - - -
0.9425 123000 0.6594 - - -
0.9433 123100 0.678 - - -
0.9440 123200 0.6626 - - -
0.9448 123300 0.6724 - - -
0.9456 123400 0.7042 - - -
0.9463 123500 0.6526 - - -
0.9471 123600 0.7039 - - -
0.9479 123700 0.6459 - - -
0.9486 123800 0.5759 - - -
0.9494 123900 0.6211 - - -
0.9502 124000 0.6905 0.1363 0.9698 -
0.9509 124100 0.6422 - - -
0.9517 124200 0.668 - - -
0.9525 124300 0.5819 - - -
0.9532 124400 0.661 - - -
0.9540 124500 0.6243 - - -
0.9548 124600 0.5936 - - -
0.9555 124700 0.5736 - - -
0.9563 124800 0.5955 - - -
0.9571 124900 0.5115 - - -
0.9578 125000 0.5495 - - -
0.9586 125100 0.5858 - - -
0.9594 125200 0.5644 - - -
0.9601 125300 0.5262 - - -
0.9609 125400 0.5588 - - -
0.9617 125500 0.7303 - - -
0.9624 125600 0.6894 - - -
0.9632 125700 0.5998 - - -
0.9640 125800 0.6216 - - -
0.9647 125900 0.5922 - - -
0.9655 126000 0.6121 0.1362 0.9694 -
0.9663 126100 0.5996 - - -
0.9670 126200 0.5894 - - -
0.9678 126300 0.5347 - - -
0.9686 126400 0.5803 - - -
0.9693 126500 0.6104 - - -
0.9701 126600 0.7723 - - -
0.9709 126700 0.7577 - - -
0.9716 126800 0.7315 - - -
0.9724 126900 0.7341 - - -
0.9732 127000 0.7652 - - -
0.9739 127100 0.6364 - - -
0.9747 127200 0.7246 - - -
0.9755 127300 1.2764 - - -
0.9762 127400 1.0487 - - -
0.9770 127500 0.9892 - - -
0.9778 127600 0.767 - - -
0.9785 127700 0.7633 - - -
0.9793 127800 0.8695 - - -
0.9801 127900 0.648 - - -
0.9808 128000 0.6227 0.1418 0.97 -
0.9816 128100 0.5542 - - -
0.9824 128200 0.5535 - - -
0.9831 128300 0.7327 - - -
0.9839 128400 0.6541 - - -
0.9847 128500 0.6697 - - -
0.9854 128600 0.5708 - - -
0.9862 128700 0.6833 - - -
0.9870 128800 0.6328 - - -
0.9877 128900 0.7026 - - -
0.9885 129000 0.5497 - - -
0.9893 129100 0.5846 - - -
0.9900 129200 0.5708 - - -
0.9908 129300 0.7514 - - -
0.9916 129400 0.5386 - - -
0.9923 129500 0.7419 - - -
0.9931 129600 0.8613 - - -
0.9939 129700 0.8322 - - -
0.9946 129800 0.7606 - - -
0.9954 129900 0.7086 - - -
0.9962 130000 0.6828 0.1488 0.9688 -
0.9969 130100 0.8267 - - -
0.9977 130200 0.8491 - - -
0.9985 130300 1.0619 - - -
0.9992 130400 0.8276 - - -
1.0000 130500 0.8043 - - -
1.0 130502 - - - 0.9726

Framework Versions

  • Python: 3.11.8
  • Sentence Transformers: 3.1.1
  • Transformers: 4.44.0
  • PyTorch: 2.3.0.post101
  • Accelerate: 0.33.0
  • Datasets: 3.0.2
  • Tokenizers: 0.19.0

Citation

BibTeX

Sentence Transformers

@inproceedings{reimers-2019-sentence-bert,
    title = "Sentence-BERT: Sentence Embeddings using Siamese BERT-Networks",
    author = "Reimers, Nils and Gurevych, Iryna",
    booktitle = "Proceedings of the 2019 Conference on Empirical Methods in Natural Language Processing",
    month = "11",
    year = "2019",
    publisher = "Association for Computational Linguistics",
    url = "https://arxiv.org/abs/1908.10084",
}

MultipleNegativesRankingLoss

@misc{henderson2017efficient,
    title={Efficient Natural Language Response Suggestion for Smart Reply},
    author={Matthew Henderson and Rami Al-Rfou and Brian Strope and Yun-hsuan Sung and Laszlo Lukacs and Ruiqi Guo and Sanjiv Kumar and Balint Miklos and Ray Kurzweil},
    year={2017},
    eprint={1705.00652},
    archivePrefix={arXiv},
    primaryClass={cs.CL}
}
Downloads last month
159
Safetensors
Model size
305M params
Tensor type
F32
·
Inference API
Unable to determine this model's library. Check the docs .

Evaluation results