SentenceTransformer based on Alibaba-NLP/gte-base-en-v1.5

This is a sentence-transformers model finetuned from Alibaba-NLP/gte-base-en-v1.5. 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-base-en-v1.5
  • Maximum Sequence Length: 8192 tokens
  • Output Dimensionality: 768 dimensions
  • Similarity Function: Cosine Similarity

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})
)

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("philmas/cese5020-contrastive-model")
# Run inference
sentences = [
    'Aluminium alloy wire, 10mm diameter, used in electrical transmission.',
    'Sunnah Dates - High-quality, nutrient-rich dates ideal for religious celebrations and dietary needs.',
    'Cocoa mass, suitable for coating confectioneries.',
]
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 0.8725

Training Details

Training Dataset

Unnamed Dataset

  • Size: 170,845 training samples
  • Columns: text and label
  • Approximate statistics based on the first 1000 samples:
    text label
    type string int
    details
    • min: 5 tokens
    • mean: 15.77 tokens
    • max: 34 tokens
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    • 3637: ~0.10%
    • 3640: ~0.10%
    • 3642: ~0.10%
    • 3644: ~0.10%
    • 3647: ~0.10%
    • 3659: ~0.10%
    • 3666: ~0.10%
    • 3669: ~0.10%
    • 3671: ~0.10%
    • 3685: ~0.10%
    • 3707: ~0.10%
    • 3712: ~0.10%
    • 3722: ~0.10%
    • 3724: ~0.10%
    • 3727: ~0.10%
    • 3728: ~0.10%
    • 3733: ~0.10%
    • 3734: ~0.10%
    • 3741: ~0.10%
    • 3752: ~0.10%
    • 3762: ~0.20%
    • 3766: ~0.10%
    • 3774: ~0.10%
    • 3779: ~0.10%
    • 3781: ~0.10%
    • 3783: ~0.10%
    • 3786: ~0.10%
    • 3793: ~0.10%
    • 3798: ~0.10%
    • 3803: ~0.10%
    • 3804: ~0.10%
    • 3820: ~0.10%
    • 3823: ~0.10%
    • 3828: ~0.10%
    • 3838: ~0.10%
    • 3841: ~0.10%
    • 3851: ~0.10%
    • 3853: ~0.10%
    • 3857: ~0.10%
    • 3866: ~0.20%
    • 3869: ~0.10%
    • 3873: ~0.10%
    • 3874: ~0.10%
    • 3881: ~0.10%
    • 3894: ~0.10%
    • 3901: ~0.10%
    • 3902: ~0.10%
    • 3908: ~0.10%
    • 3912: ~0.10%
    • 3913: ~0.10%
    • 3921: ~0.10%
    • 3922: ~0.10%
    • 3932: ~0.10%
    • 3935: ~0.10%
    • 3949: ~0.10%
    • 3952: ~0.10%
    • 3956: ~0.10%
    • 3963: ~0.20%
    • 3965: ~0.10%
    • 3967: ~0.10%
    • 3984: ~0.10%
    • 4000: ~0.10%
    • 4014: ~0.10%
    • 4015: ~0.10%
    • 4018: ~0.10%
    • 4019: ~0.10%
    • 4023: ~0.10%
    • 4026: ~0.10%
    • 4033: ~0.10%
    • 4034: ~0.10%
    • 4040: ~0.10%
    • 4041: ~0.20%
    • 4072: ~0.10%
    • 4074: ~0.10%
    • 4084: ~0.10%
    • 4086: ~0.10%
    • 4088: ~0.10%
    • 4091: ~0.10%
    • 4092: ~0.10%
    • 4095: ~0.10%
    • 4099: ~0.10%
    • 4108: ~0.10%
    • 4133: ~0.10%
    • 4137: ~0.10%
    • 4145: ~0.20%
    • 4147: ~0.10%
    • 4150: ~0.10%
    • 4151: ~0.10%
    • 4164: ~0.20%
    • 4165: ~0.10%
    • 4166: ~0.10%
    • 4173: ~0.10%
    • 4181: ~0.10%
    • 4193: ~0.10%
    • 4201: ~0.10%
    • 4207: ~0.10%
    • 4208: ~0.10%
    • 4209: ~0.10%
    • 4215: ~0.10%
    • 4233: ~0.20%
    • 4235: ~0.10%
    • 4241: ~0.10%
    • 4242: ~0.10%
    • 4247: ~0.10%
    • 4250: ~0.10%
    • 4259: ~0.10%
    • 4271: ~0.10%
    • 4282: ~0.10%
    • 4290: ~0.10%
    • 4299: ~0.10%
    • 4305: ~0.10%
    • 4306: ~0.10%
    • 4314: ~0.20%
    • 4331: ~0.10%
    • 4341: ~0.10%
    • 4342: ~0.10%
    • 4344: ~0.10%
    • 4348: ~0.10%
    • 4351: ~0.10%
    • 4359: ~0.10%
    • 4379: ~0.10%
    • 4393: ~0.10%
    • 4400: ~0.10%
    • 4411: ~0.10%
    • 4416: ~0.10%
    • 4419: ~0.10%
    • 4425: ~0.10%
    • 4426: ~0.10%
    • 4428: ~0.10%
    • 4431: ~0.10%
    • 4438: ~0.20%
    • 4441: ~0.20%
    • 4442: ~0.10%
    • 4448: ~0.20%
    • 4453: ~0.10%
    • 4455: ~0.10%
    • 4470: ~0.10%
    • 4471: ~0.10%
    • 4482: ~0.10%
    • 4483: ~0.10%
    • 4489: ~0.20%
    • 4490: ~0.10%
    • 4493: ~0.10%
    • 4498: ~0.10%
    • 4501: ~0.10%
    • 4503: ~0.20%
    • 4504: ~0.10%
    • 4523: ~0.20%
    • 4529: ~0.10%
    • 4546: ~0.20%
    • 4549: ~0.10%
    • 4564: ~0.10%
    • 4569: ~0.10%
    • 4572: ~0.10%
    • 4573: ~0.10%
    • 4574: ~0.10%
    • 4575: ~0.10%
    • 4576: ~0.10%
    • 4581: ~0.10%
    • 4582: ~0.10%
    • 4591: ~0.10%
    • 4596: ~0.10%
    • 4602: ~0.10%
    • 4604: ~0.10%
    • 4612: ~0.10%
    • 4613: ~0.20%
    • 4615: ~0.10%
    • 4616: ~0.10%
    • 4617: ~0.10%
    • 4622: ~0.10%
    • 4623: ~0.10%
    • 4625: ~0.10%
    • 4626: ~0.10%
    • 4628: ~0.10%
    • 4633: ~0.10%
    • 4635: ~0.20%
    • 4650: ~0.10%
    • 4651: ~0.10%
    • 4660: ~0.10%
    • 4668: ~0.10%
    • 4680: ~0.10%
    • 4681: ~0.10%
    • 4684: ~0.10%
    • 4686: ~0.10%
    • 4689: ~0.10%
    • 4702: ~0.10%
    • 4703: ~0.10%
    • 4707: ~0.10%
    • 4718: ~0.10%
    • 4719: ~0.10%
    • 4724: ~0.10%
    • 4744: ~0.10%
    • 4753: ~0.10%
    • 4758: ~0.10%
    • 4762: ~0.10%
    • 4766: ~0.10%
    • 4767: ~0.10%
    • 4768: ~0.10%
    • 4778: ~0.10%
    • 4784: ~0.10%
    • 4791: ~0.10%
    • 4792: ~0.10%
    • 4795: ~0.10%
    • 4809: ~0.10%
    • 4814: ~0.10%
    • 4817: ~0.10%
    • 4823: ~0.10%
    • 4828: ~0.10%
    • 4834: ~0.10%
    • 4846: ~0.10%
    • 4849: ~0.10%
    • 4856: ~0.10%
    • 4862: ~0.10%
    • 4864: ~0.10%
    • 4871: ~0.10%
    • 4876: ~0.10%
    • 4880: ~0.10%
    • 4888: ~0.20%
    • 4894: ~0.10%
    • 4899: ~0.10%
    • 4908: ~0.10%
    • 4912: ~0.10%
    • 4917: ~0.10%
    • 4918: ~0.10%
    • 4926: ~0.10%
    • 4931: ~0.10%
    • 4935: ~0.10%
    • 4948: ~0.10%
    • 4960: ~0.10%
    • 4964: ~0.10%
    • 4965: ~0.10%
    • 4968: ~0.10%
    • 4970: ~0.10%
    • 4978: ~0.20%
    • 4982: ~0.10%
    • 4991: ~0.10%
    • 4997: ~0.10%
    • 5004: ~0.10%
    • 5010: ~0.10%
    • 5034: ~0.10%
    • 5038: ~0.10%
    • 5046: ~0.10%
    • 5049: ~0.10%
    • 5052: ~0.10%
    • 5061: ~0.10%
    • 5064: ~0.10%
    • 5077: ~0.10%
    • 5099: ~0.10%
    • 5109: ~0.10%
    • 5114: ~0.10%
    • 5115: ~0.10%
    • 5122: ~0.10%
    • 5126: ~0.10%
    • 5131: ~0.20%
    • 5147: ~0.10%
    • 5152: ~0.10%
    • 5156: ~0.10%
    • 5168: ~0.10%
    • 5187: ~0.10%
    • 5195: ~0.10%
    • 5200: ~0.10%
    • 5202: ~0.30%
    • 5208: ~0.10%
    • 5217: ~0.10%
    • 5220: ~0.10%
    • 5225: ~0.10%
    • 5226: ~0.10%
    • 5229: ~0.10%
    • 5233: ~0.10%
    • 5248: ~0.10%
    • 5257: ~0.10%
    • 5258: ~0.10%
    • 5273: ~0.10%
    • 5277: ~0.10%
    • 5284: ~0.10%
    • 5285: ~0.10%
    • 5289: ~0.10%
    • 5293: ~0.10%
    • 5300: ~0.10%
    • 5310: ~0.20%
    • 5312: ~0.10%
    • 5320: ~0.10%
    • 5321: ~0.10%
    • 5326: ~0.10%
    • 5338: ~0.10%
  • Samples:
    text label
    Continuous Flow Liquid Analyzer 5077
    Spicy chili powder mix with salt and garlic. 535
    Brined and dried fillets of fine fish, suitable for a variety of dishes. 246
  • Loss: BatchHardTripletLoss

Evaluation Dataset

Unnamed Dataset

  • Size: 10,682 evaluation samples
  • Columns: text and label
  • Approximate statistics based on the first 1000 samples:
    text label
    type string int
    details
    • min: 4 tokens
    • mean: 15.63 tokens
    • max: 37 tokens
    • 4: ~0.10%
    • 21: ~0.10%
    • 38: ~0.10%
    • 41: ~0.10%
    • 42: ~0.10%
    • 45: ~0.10%
    • 64: ~0.10%
    • 69: ~0.10%
    • 83: ~0.10%
    • 87: ~0.10%
    • 90: ~0.10%
    • 101: ~0.10%
    • 105: ~0.10%
    • 117: ~0.20%
    • 120: ~0.10%
    • 121: ~0.10%
    • 123: ~0.10%
    • 126: ~0.10%
    • 127: ~0.10%
    • 128: ~0.10%
    • 141: ~0.10%
    • 147: ~0.10%
    • 162: ~0.10%
    • 163: ~0.10%
    • 171: ~0.10%
    • 179: ~0.10%
    • 194: ~0.10%
    • 203: ~0.10%
    • 204: ~0.10%
    • 205: ~0.10%
    • 207: ~0.10%
    • 208: ~0.10%
    • 209: ~0.10%
    • 215: ~0.10%
    • 219: ~0.10%
    • 222: ~0.10%
    • 226: ~0.10%
    • 236: ~0.10%
    • 243: ~0.10%
    • 256: ~0.10%
    • 263: ~0.10%
    • 280: ~0.10%
    • 281: ~0.10%
    • 286: ~0.10%
    • 291: ~0.10%
    • 293: ~0.10%
    • 295: ~0.10%
    • 297: ~0.10%
    • 302: ~0.10%
    • 303: ~0.10%
    • 304: ~0.10%
    • 308: ~0.10%
    • 311: ~0.10%
    • 320: ~0.10%
    • 322: ~0.10%
    • 328: ~0.10%
    • 342: ~0.10%
    • 343: ~0.10%
    • 349: ~0.10%
    • 355: ~0.10%
    • 361: ~0.20%
    • 363: ~0.10%
    • 364: ~0.10%
    • 365: ~0.10%
    • 370: ~0.10%
    • 371: ~0.10%
    • 383: ~0.10%
    • 385: ~0.10%
    • 386: ~0.10%
    • 398: ~0.10%
    • 406: ~0.10%
    • 427: ~0.10%
    • 430: ~0.10%
    • 434: ~0.10%
    • 450: ~0.10%
    • 451: ~0.10%
    • 453: ~0.10%
    • 457: ~0.10%
    • 462: ~0.10%
    • 467: ~0.10%
    • 476: ~0.10%
    • 479: ~0.10%
    • 480: ~0.10%
    • 484: ~0.10%
    • 490: ~0.10%
    • 492: ~0.10%
    • 497: ~0.10%
    • 510: ~0.10%
    • 512: ~0.10%
    • 516: ~0.20%
    • 518: ~0.10%
    • 519: ~0.10%
    • 525: ~0.10%
    • 528: ~0.10%
    • 531: ~0.10%
    • 534: ~0.10%
    • 552: ~0.10%
    • 555: ~0.10%
    • 558: ~0.10%
    • 563: ~0.10%
    • 566: ~0.10%
    • 567: ~0.10%
    • 574: ~0.10%
    • 582: ~0.10%
    • 587: ~0.10%
    • 598: ~0.10%
    • 604: ~0.10%
    • 606: ~0.10%
    • 614: ~0.10%
    • 621: ~0.10%
    • 622: ~0.10%
    • 630: ~0.10%
    • 640: ~0.10%
    • 645: ~0.10%
    • 668: ~0.10%
    • 670: ~0.10%
    • 677: ~0.10%
    • 682: ~0.10%
    • 683: ~0.10%
    • 688: ~0.10%
    • 720: ~0.10%
    • 734: ~0.10%
    • 744: ~0.10%
    • 753: ~0.10%
    • 756: ~0.10%
    • 759: ~0.10%
    • 763: ~0.10%
    • 767: ~0.10%
    • 770: ~0.10%
    • 773: ~0.20%
    • 775: ~0.10%
    • 778: ~0.10%
    • 779: ~0.10%
    • 783: ~0.10%
    • 784: ~0.10%
    • 785: ~0.10%
    • 787: ~0.10%
    • 788: ~0.10%
    • 789: ~0.10%
    • 801: ~0.10%
    • 802: ~0.10%
    • 811: ~0.10%
    • 812: ~0.10%
    • 827: ~0.10%
    • 828: ~0.10%
    • 836: ~0.10%
    • 843: ~0.10%
    • 844: ~0.10%
    • 846: ~0.10%
    • 848: ~0.10%
    • 851: ~0.10%
    • 872: ~0.20%
    • 875: ~0.10%
    • 878: ~0.10%
    • 879: ~0.10%
    • 881: ~0.10%
    • 890: ~0.10%
    • 894: ~0.10%
    • 895: ~0.10%
    • 897: ~0.10%
    • 899: ~0.10%
    • 900: ~0.10%
    • 903: ~0.10%
    • 927: ~0.10%
    • 929: ~0.10%
    • 940: ~0.10%
    • 945: ~0.10%
    • 953: ~0.10%
    • 957: ~0.10%
    • 963: ~0.10%
    • 968: ~0.10%
    • 969: ~0.10%
    • 975: ~0.10%
    • 976: ~0.10%
    • 983: ~0.10%
    • 991: ~0.10%
    • 993: ~0.20%
    • 994: ~0.10%
    • 997: ~0.10%
    • 1001: ~0.10%
    • 1036: ~0.10%
    • 1042: ~0.10%
    • 1074: ~0.10%
    • 1078: ~0.10%
    • 1080: ~0.10%
    • 1085: ~0.10%
    • 1092: ~0.10%
    • 1097: ~0.10%
    • 1104: ~0.10%
    • 1107: ~0.10%
    • 1119: ~0.10%
    • 1124: ~0.10%
    • 1139: ~0.10%
    • 1142: ~0.10%
    • 1181: ~0.10%
    • 1186: ~0.10%
    • 1201: ~0.10%
    • 1206: ~0.10%
    • 1211: ~0.10%
    • 1213: ~0.10%
    • 1225: ~0.10%
    • 1232: ~0.10%
    • 1236: ~0.10%
    • 1237: ~0.10%
    • 1238: ~0.10%
    • 1240: ~0.10%
    • 1256: ~0.10%
    • 1259: ~0.10%
    • 1266: ~0.10%
    • 1273: ~0.10%
    • 1277: ~0.10%
    • 1279: ~0.10%
    • 1280: ~0.10%
    • 1281: ~0.10%
    • 1284: ~0.10%
    • 1286: ~0.10%
    • 1292: ~0.10%
    • 1308: ~0.10%
    • 1321: ~0.10%
    • 1340: ~0.10%
    • 1346: ~0.10%
    • 1348: ~0.10%
    • 1355: ~0.10%
    • 1369: ~0.20%
    • 1370: ~0.10%
    • 1371: ~0.20%
    • 1390: ~0.10%
    • 1391: ~0.10%
    • 1394: ~0.10%
    • 1396: ~0.10%
    • 1403: ~0.10%
    • 1409: ~0.10%
    • 1410: ~0.10%
    • 1412: ~0.10%
    • 1414: ~0.20%
    • 1416: ~0.10%
    • 1420: ~0.10%
    • 1423: ~0.10%
    • 1427: ~0.10%
    • 1430: ~0.10%
    • 1431: ~0.10%
    • 1432: ~0.10%
    • 1437: ~0.10%
    • 1462: ~0.10%
    • 1467: ~0.10%
    • 1472: ~0.10%
    • 1474: ~0.10%
    • 1475: ~0.10%
    • 1479: ~0.10%
    • 1494: ~0.10%
    • 1497: ~0.10%
    • 1503: ~0.10%
    • 1505: ~0.10%
    • 1506: ~0.10%
    • 1507: ~0.10%
    • 1508: ~0.10%
    • 1518: ~0.10%
    • 1523: ~0.10%
    • 1529: ~0.10%
    • 1533: ~0.10%
    • 1543: ~0.10%
    • 1552: ~0.10%
    • 1558: ~0.10%
    • 1569: ~0.10%
    • 1576: ~0.10%
    • 1577: ~0.10%
    • 1578: ~0.10%
    • 1583: ~0.10%
    • 1587: ~0.10%
    • 1589: ~0.10%
    • 1590: ~0.10%
    • 1598: ~0.10%
    • 1611: ~0.10%
    • 1613: ~0.10%
    • 1614: ~0.10%
    • 1621: ~0.10%
    • 1629: ~0.10%
    • 1630: ~0.10%
    • 1631: ~0.10%
    • 1633: ~0.10%
    • 1634: ~0.10%
    • 1646: ~0.10%
    • 1647: ~0.10%
    • 1653: ~0.10%
    • 1670: ~0.10%
    • 1675: ~0.10%
    • 1685: ~0.10%
    • 1697: ~0.10%
    • 1708: ~0.10%
    • 1731: ~0.10%
    • 1740: ~0.10%
    • 1743: ~0.10%
    • 1750: ~0.10%
    • 1752: ~0.10%
    • 1755: ~0.10%
    • 1762: ~0.10%
    • 1768: ~0.10%
    • 1773: ~0.10%
    • 1792: ~0.10%
    • 1795: ~0.10%
    • 1798: ~0.10%
    • 1801: ~0.10%
    • 1807: ~0.10%
    • 1817: ~0.10%
    • 1824: ~0.10%
    • 1825: ~0.20%
    • 1828: ~0.10%
    • 1833: ~0.10%
    • 1852: ~0.10%
    • 1854: ~0.10%
    • 1855: ~0.10%
    • 1856: ~0.10%
    • 1859: ~0.10%
    • 1867: ~0.10%
    • 1869: ~0.10%
    • 1874: ~0.10%
    • 1886: ~0.10%
    • 1889: ~0.10%
    • 1892: ~0.10%
    • 1893: ~0.10%
    • 1894: ~0.10%
    • 1901: ~0.10%
    • 1910: ~0.10%
    • 1911: ~0.10%
    • 1921: ~0.10%
    • 1922: ~0.10%
    • 1925: ~0.10%
    • 1933: ~0.20%
    • 1934: ~0.10%
    • 1937: ~0.10%
    • 1940: ~0.20%
    • 1941: ~0.10%
    • 1954: ~0.10%
    • 1969: ~0.10%
    • 1974: ~0.20%
    • 1986: ~0.10%
    • 1988: ~0.10%
    • 1989: ~0.10%
    • 1993: ~0.10%
    • 1994: ~0.10%
    • 1996: ~0.10%
    • 2013: ~0.10%
    • 2043: ~0.10%
    • 2045: ~0.10%
    • 2054: ~0.10%
    • 2070: ~0.10%
    • 2074: ~0.10%
    • 2076: ~0.10%
    • 2080: ~0.10%
    • 2083: ~0.10%
    • 2084: ~0.10%
    • 2087: ~0.10%
    • 2095: ~0.10%
    • 2116: ~0.10%
    • 2124: ~0.10%
    • 2125: ~0.10%
    • 2126: ~0.10%
    • 2129: ~0.10%
    • 2131: ~0.10%
    • 2133: ~0.10%
    • 2137: ~0.10%
    • 2154: ~0.20%
    • 2157: ~0.10%
    • 2160: ~0.10%
    • 2162: ~0.10%
    • 2168: ~0.10%
    • 2177: ~0.10%
    • 2181: ~0.10%
    • 2184: ~0.10%
    • 2193: ~0.10%
    • 2194: ~0.10%
    • 2195: ~0.10%
    • 2196: ~0.10%
    • 2200: ~0.10%
    • 2201: ~0.10%
    • 2202: ~0.10%
    • 2203: ~0.10%
    • 2215: ~0.10%
    • 2217: ~0.10%
    • 2226: ~0.10%
    • 2228: ~0.10%
    • 2231: ~0.10%
    • 2232: ~0.10%
    • 2235: ~0.10%
    • 2236: ~0.10%
    • 2238: ~0.10%
    • 2242: ~0.10%
    • 2243: ~0.10%
    • 2244: ~0.10%
    • 2246: ~0.10%
    • 2247: ~0.10%
    • 2250: ~0.10%
    • 2253: ~0.10%
    • 2261: ~0.10%
    • 2263: ~0.10%
    • 2272: ~0.10%
    • 2275: ~0.10%
    • 2284: ~0.10%
    • 2292: ~0.10%
    • 2297: ~0.10%
    • 2298: ~0.10%
    • 2299: ~0.10%
    • 2300: ~0.10%
    • 2315: ~0.10%
    • 2316: ~0.10%
    • 2326: ~0.10%
    • 2337: ~0.10%
    • 2341: ~0.10%
    • 2346: ~0.10%
    • 2350: ~0.10%
    • 2353: ~0.10%
    • 2354: ~0.10%
    • 2356: ~0.20%
    • 2357: ~0.10%
    • 2359: ~0.10%
    • 2368: ~0.10%
    • 2377: ~0.10%
    • 2384: ~0.10%
    • 2389: ~0.10%
    • 2390: ~0.10%
    • 2391: ~0.10%
    • 2400: ~0.10%
    • 2408: ~0.10%
    • 2409: ~0.10%
    • 2412: ~0.10%
    • 2420: ~0.10%
    • 2423: ~0.10%
    • 2439: ~0.10%
    • 2442: ~0.10%
    • 2444: ~0.10%
    • 2453: ~0.10%
    • 2454: ~0.10%
    • 2458: ~0.10%
    • 2464: ~0.10%
    • 2475: ~0.10%
    • 2477: ~0.10%
    • 2481: ~0.10%
    • 2482: ~0.10%
    • 2491: ~0.10%
    • 2498: ~0.10%
    • 2500: ~0.20%
    • 2508: ~0.10%
    • 2526: ~0.20%
    • 2529: ~0.10%
    • 2538: ~0.10%
    • 2540: ~0.10%
    • 2544: ~0.20%
    • 2546: ~0.10%
    • 2554: ~0.10%
    • 2555: ~0.10%
    • 2557: ~0.10%
    • 2561: ~0.10%
    • 2562: ~0.10%
    • 2565: ~0.10%
    • 2568: ~0.10%
    • 2572: ~0.10%
    • 2582: ~0.10%
    • 2583: ~0.10%
    • 2586: ~0.10%
    • 2587: ~0.10%
    • 2588: ~0.10%
    • 2597: ~0.10%
    • 2598: ~0.10%
    • 2605: ~0.10%
    • 2616: ~0.10%
    • 2618: ~0.10%
    • 2622: ~0.10%
    • 2637: ~0.10%
    • 2639: ~0.10%
    • 2646: ~0.10%
    • 2647: ~0.10%
    • 2648: ~0.10%
    • 2649: ~0.10%
    • 2654: ~0.20%
    • 2664: ~0.10%
    • 2667: ~0.10%
    • 2668: ~0.10%
    • 2676: ~0.10%
    • 2678: ~0.10%
    • 2679: ~0.10%
    • 2681: ~0.10%
    • 2682: ~0.10%
    • 2688: ~0.10%
    • 2695: ~0.10%
    • 2698: ~0.10%
    • 2708: ~0.10%
    • 2713: ~0.10%
    • 2715: ~0.10%
    • 2718: ~0.10%
    • 2721: ~0.20%
    • 2722: ~0.10%
    • 2730: ~0.10%
    • 2734: ~0.10%
    • 2736: ~0.10%
    • 2737: ~0.10%
    • 2745: ~0.10%
    • 2766: ~0.20%
    • 2788: ~0.10%
    • 2793: ~0.10%
    • 2794: ~0.10%
    • 2796: ~0.10%
    • 2799: ~0.10%
    • 2801: ~0.10%
    • 2813: ~0.10%
    • 2819: ~0.10%
    • 2823: ~0.10%
    • 2827: ~0.10%
    • 2831: ~0.10%
    • 2838: ~0.10%
    • 2846: ~0.10%
    • 2848: ~0.10%
    • 2850: ~0.10%
    • 2852: ~0.10%
    • 2853: ~0.10%
    • 2854: ~0.10%
    • 2861: ~0.10%
    • 2868: ~0.10%
    • 2869: ~0.10%
    • 2872: ~0.10%
    • 2875: ~0.10%
    • 2878: ~0.10%
    • 2880: ~0.10%
    • 2889: ~0.10%
    • 2902: ~0.10%
    • 2904: ~0.10%
    • 2906: ~0.10%
    • 2910: ~0.10%
    • 2914: ~0.10%
    • 2917: ~0.10%
    • 2923: ~0.10%
    • 2930: ~0.10%
    • 2945: ~0.10%
    • 2950: ~0.10%
    • 2951: ~0.10%
    • 2954: ~0.10%
    • 2963: ~0.10%
    • 2968: ~0.10%
    • 2971: ~0.10%
    • 2973: ~0.10%
    • 2974: ~0.10%
    • 3002: ~0.10%
    • 3013: ~0.10%
    • 3014: ~0.10%
    • 3018: ~0.10%
    • 3021: ~0.10%
    • 3027: ~0.10%
    • 3037: ~0.10%
    • 3042: ~0.10%
    • 3048: ~0.10%
    • 3051: ~0.10%
    • 3053: ~0.10%
    • 3060: ~0.10%
    • 3061: ~0.10%
    • 3075: ~0.20%
    • 3080: ~0.10%
    • 3085: ~0.10%
    • 3090: ~0.10%
    • 3092: ~0.10%
    • 3095: ~0.10%
    • 3098: ~0.10%
    • 3106: ~0.10%
    • 3120: ~0.10%
    • 3121: ~0.10%
    • 3123: ~0.10%
    • 3133: ~0.10%
    • 3142: ~0.10%
    • 3144: ~0.20%
    • 3154: ~0.10%
    • 3162: ~0.10%
    • 3163: ~0.10%
    • 3171: ~0.10%
    • 3175: ~0.10%
    • 3178: ~0.10%
    • 3189: ~0.10%
    • 3191: ~0.10%
    • 3196: ~0.10%
    • 3219: ~0.10%
    • 3221: ~0.10%
    • 3228: ~0.10%
    • 3229: ~0.10%
    • 3230: ~0.10%
    • 3233: ~0.10%
    • 3246: ~0.10%
    • 3255: ~0.10%
    • 3257: ~0.10%
    • 3258: ~0.10%
    • 3260: ~0.10%
    • 3261: ~0.10%
    • 3263: ~0.10%
    • 3264: ~0.10%
    • 3267: ~0.10%
    • 3271: ~0.10%
    • 3272: ~0.10%
    • 3285: ~0.10%
    • 3289: ~0.10%
    • 3292: ~0.10%
    • 3306: ~0.10%
    • 3308: ~0.10%
    • 3311: ~0.10%
    • 3343: ~0.10%
    • 3358: ~0.10%
    • 3359: ~0.10%
    • 3376: ~0.10%
    • 3378: ~0.10%
    • 3380: ~0.10%
    • 3381: ~0.10%
    • 3395: ~0.10%
    • 3396: ~0.10%
    • 3397: ~0.10%
    • 3398: ~0.10%
    • 3402: ~0.10%
    • 3406: ~0.10%
    • 3407: ~0.10%
    • 3410: ~0.10%
    • 3424: ~0.10%
    • 3425: ~0.10%
    • 3426: ~0.10%
    • 3427: ~0.10%
    • 3434: ~0.10%
    • 3437: ~0.10%
    • 3442: ~0.10%
    • 3444: ~0.10%
    • 3450: ~0.20%
    • 3458: ~0.10%
    • 3460: ~0.10%
    • 3471: ~0.10%
    • 3480: ~0.10%
    • 3486: ~0.10%
    • 3495: ~0.10%
    • 3505: ~0.10%
    • 3519: ~0.10%
    • 3522: ~0.10%
    • 3523: ~0.10%
    • 3530: ~0.10%
    • 3547: ~0.10%
    • 3548: ~0.10%
    • 3549: ~0.10%
    • 3551: ~0.10%
    • 3560: ~0.10%
    • 3566: ~0.10%
    • 3567: ~0.10%
    • 3571: ~0.10%
    • 3573: ~0.10%
    • 3578: ~0.10%
    • 3585: ~0.10%
    • 3589: ~0.10%
    • 3590: ~0.10%
    • 3594: ~0.10%
    • 3596: ~0.10%
    • 3598: ~0.10%
    • 3605: ~0.10%
    • 3607: ~0.10%
    • 3608: ~0.10%
    • 3619: ~0.10%
    • 3624: ~0.10%
    • 3630: ~0.10%
    • 3632: ~0.20%
    • 3633: ~0.10%
    • 3634: ~0.10%
    • 3637: ~0.10%
    • 3653: ~0.10%
    • 3654: ~0.10%
    • 3656: ~0.10%
    • 3657: ~0.10%
    • 3661: ~0.10%
    • 3668: ~0.10%
    • 3679: ~0.10%
    • 3681: ~0.10%
    • 3687: ~0.10%
    • 3690: ~0.10%
    • 3693: ~0.10%
    • 3695: ~0.10%
    • 3717: ~0.10%
    • 3719: ~0.10%
    • 3725: ~0.10%
    • 3727: ~0.20%
    • 3729: ~0.10%
    • 3735: ~0.10%
    • 3737: ~0.10%
    • 3744: ~0.10%
    • 3745: ~0.10%
    • 3747: ~0.10%
    • 3750: ~0.10%
    • 3756: ~0.10%
    • 3758: ~0.10%
    • 3768: ~0.10%
    • 3773: ~0.10%
    • 3774: ~0.10%
    • 3786: ~0.10%
    • 3793: ~0.20%
    • 3794: ~0.10%
    • 3799: ~0.10%
    • 3800: ~0.10%
    • 3806: ~0.10%
    • 3809: ~0.10%
    • 3814: ~0.20%
    • 3817: ~0.20%
    • 3822: ~0.10%
    • 3826: ~0.10%
    • 3827: ~0.10%
    • 3830: ~0.10%
    • 3835: ~0.10%
    • 3837: ~0.10%
    • 3838: ~0.10%
    • 3839: ~0.10%
    • 3848: ~0.10%
    • 3852: ~0.10%
    • 3853: ~0.10%
    • 3854: ~0.10%
    • 3855: ~0.10%
    • 3860: ~0.10%
    • 3868: ~0.10%
    • 3886: ~0.10%
    • 3887: ~0.10%
    • 3888: ~0.10%
    • 3901: ~0.10%
    • 3904: ~0.10%
    • 3905: ~0.10%
    • 3907: ~0.10%
    • 3916: ~0.10%
    • 3918: ~0.10%
    • 3923: ~0.10%
    • 3928: ~0.10%
    • 3930: ~0.10%
    • 3932: ~0.10%
    • 3934: ~0.10%
    • 3938: ~0.10%
    • 3939: ~0.10%
    • 3943: ~0.10%
    • 3952: ~0.10%
    • 3956: ~0.10%
    • 3961: ~0.10%
    • 3969: ~0.10%
    • 3972: ~0.20%
    • 3977: ~0.10%
    • 3981: ~0.10%
    • 3986: ~0.10%
    • 3998: ~0.10%
    • 4006: ~0.10%
    • 4011: ~0.10%
    • 4024: ~0.10%
    • 4030: ~0.10%
    • 4031: ~0.10%
    • 4032: ~0.10%
    • 4042: ~0.10%
    • 4046: ~0.10%
    • 4062: ~0.20%
    • 4070: ~0.10%
    • 4071: ~0.10%
    • 4074: ~0.10%
    • 4077: ~0.10%
    • 4079: ~0.10%
    • 4080: ~0.10%
    • 4085: ~0.10%
    • 4098: ~0.10%
    • 4109: ~0.10%
    • 4119: ~0.10%
    • 4120: ~0.10%
    • 4124: ~0.10%
    • 4130: ~0.10%
    • 4135: ~0.10%
    • 4139: ~0.10%
    • 4140: ~0.10%
    • 4150: ~0.10%
    • 4158: ~0.10%
    • 4164: ~0.10%
    • 4167: ~0.10%
    • 4169: ~0.10%
    • 4174: ~0.10%
    • 4183: ~0.10%
    • 4184: ~0.10%
    • 4185: ~0.10%
    • 4197: ~0.10%
    • 4202: ~0.10%
    • 4204: ~0.10%
    • 4212: ~0.10%
    • 4220: ~0.10%
    • 4228: ~0.10%
    • 4230: ~0.10%
    • 4234: ~0.10%
    • 4235: ~0.10%
    • 4236: ~0.10%
    • 4238: ~0.10%
    • 4243: ~0.10%
    • 4256: ~0.10%
    • 4257: ~0.10%
    • 4261: ~0.10%
    • 4278: ~0.10%
    • 4282: ~0.10%
    • 4283: ~0.10%
    • 4284: ~0.10%
    • 4290: ~0.10%
    • 4295: ~0.10%
    • 4318: ~0.10%
    • 4323: ~0.10%
    • 4326: ~0.10%
    • 4328: ~0.10%
    • 4341: ~0.10%
    • 4353: ~0.10%
    • 4357: ~0.20%
    • 4371: ~0.20%
    • 4385: ~0.10%
    • 4390: ~0.10%
    • 4395: ~0.10%
    • 4400: ~0.10%
    • 4403: ~0.10%
    • 4409: ~0.10%
    • 4411: ~0.10%
    • 4413: ~0.10%
    • 4423: ~0.10%
    • 4425: ~0.10%
    • 4426: ~0.10%
    • 4431: ~0.10%
    • 4432: ~0.10%
    • 4439: ~0.10%
    • 4444: ~0.10%
    • 4455: ~0.10%
    • 4461: ~0.10%
    • 4468: ~0.10%
    • 4471: ~0.10%
    • 4475: ~0.10%
    • 4493: ~0.10%
    • 4504: ~0.10%
    • 4505: ~0.20%
    • 4513: ~0.10%
    • 4515: ~0.10%
    • 4532: ~0.10%
    • 4552: ~0.10%
    • 4553: ~0.10%
    • 4555: ~0.10%
    • 4564: ~0.10%
    • 4567: ~0.10%
    • 4578: ~0.10%
    • 4580: ~0.10%
    • 4600: ~0.10%
    • 4604: ~0.10%
    • 4616: ~0.10%
    • 4619: ~0.10%
    • 4637: ~0.10%
    • 4638: ~0.10%
    • 4648: ~0.10%
    • 4653: ~0.10%
    • 4665: ~0.10%
    • 4670: ~0.10%
    • 4681: ~0.10%
    • 4685: ~0.20%
    • 4690: ~0.10%
    • 4695: ~0.10%
    • 4696: ~0.10%
    • 4697: ~0.10%
    • 4698: ~0.20%
    • 4699: ~0.10%
    • 4706: ~0.10%
    • 4712: ~0.10%
    • 4720: ~0.10%
    • 4724: ~0.10%
    • 4731: ~0.10%
    • 4733: ~0.10%
    • 4739: ~0.10%
    • 4740: ~0.10%
    • 4747: ~0.10%
    • 4748: ~0.10%
    • 4755: ~0.10%
    • 4766: ~0.10%
    • 4780: ~0.10%
    • 4789: ~0.10%
    • 4792: ~0.10%
    • 4808: ~0.10%
    • 4815: ~0.10%
    • 4817: ~0.10%
    • 4822: ~0.10%
    • 4825: ~0.10%
    • 4838: ~0.10%
    • 4839: ~0.10%
    • 4843: ~0.10%
    • 4858: ~0.10%
    • 4862: ~0.10%
    • 4867: ~0.10%
    • 4869: ~0.10%
    • 4871: ~0.10%
    • 4872: ~0.10%
    • 4877: ~0.10%
    • 4886: ~0.10%
    • 4894: ~0.10%
    • 4898: ~0.10%
    • 4900: ~0.10%
    • 4903: ~0.10%
    • 4904: ~0.10%
    • 4907: ~0.10%
    • 4923: ~0.10%
    • 4930: ~0.10%
    • 4931: ~0.10%
    • 4933: ~0.10%
    • 4940: ~0.10%
    • 4942: ~0.10%
    • 4944: ~0.10%
    • 4946: ~0.10%
    • 4952: ~0.10%
    • 4954: ~0.10%
    • 4957: ~0.10%
    • 4969: ~0.10%
    • 4979: ~0.10%
    • 4982: ~0.10%
    • 4986: ~0.10%
    • 5002: ~0.10%
    • 5005: ~0.10%
    • 5014: ~0.10%
    • 5018: ~0.10%
    • 5020: ~0.10%
    • 5034: ~0.10%
    • 5040: ~0.20%
    • 5043: ~0.10%
    • 5046: ~0.20%
    • 5048: ~0.10%
    • 5051: ~0.10%
    • 5058: ~0.10%
    • 5064: ~0.10%
    • 5066: ~0.10%
    • 5072: ~0.10%
    • 5075: ~0.10%
    • 5076: ~0.10%
    • 5082: ~0.10%
    • 5087: ~0.10%
    • 5101: ~0.10%
    • 5102: ~0.10%
    • 5106: ~0.10%
    • 5110: ~0.10%
    • 5124: ~0.10%
    • 5133: ~0.10%
    • 5135: ~0.20%
    • 5139: ~0.10%
    • 5140: ~0.10%
    • 5170: ~0.20%
    • 5175: ~0.10%
    • 5196: ~0.10%
    • 5204: ~0.10%
    • 5214: ~0.10%
    • 5222: ~0.10%
    • 5229: ~0.10%
    • 5243: ~0.10%
    • 5261: ~0.10%
    • 5265: ~0.10%
    • 5273: ~0.10%
    • 5279: ~0.10%
    • 5280: ~0.10%
    • 5283: ~0.10%
    • 5285: ~0.10%
    • 5286: ~0.10%
    • 5287: ~0.10%
    • 5288: ~0.10%
    • 5311: ~0.10%
    • 5314: ~0.10%
    • 5315: ~0.10%
    • 5318: ~0.10%
    • 5322: ~0.10%
    • 5323: ~0.10%
    • 5329: ~0.10%
    • 5331: ~0.10%
    • 5333: ~0.10%
    • 5334: ~0.10%
  • Samples:
    text label
    Integrated radio receiver with sound recording capabilities, mobile battery-operated system. 4681
    Premium frozen turkey, 7-9 kg, antibiotic-free, processed within 24 hours. 69
    Glittering colored granules, under 7mm, used in cosmetics and decorative arts. 3263
  • Loss: BatchHardTripletLoss

Training Hyperparameters

Non-Default Hyperparameters

  • eval_strategy: epoch
  • per_device_train_batch_size: 64
  • per_device_eval_batch_size: 64
  • learning_rate: 1e-05
  • warmup_ratio: 0.1
  • bf16: True
  • optim: adamw_torch_fused
  • hub_private_repo: True
  • batch_sampler: group_by_label

All Hyperparameters

Click to expand
  • overwrite_output_dir: False
  • do_predict: False
  • eval_strategy: epoch
  • prediction_loss_only: True
  • per_device_train_batch_size: 64
  • per_device_eval_batch_size: 64
  • 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: 1e-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: 3
  • 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_fused
  • 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: True
  • hub_always_push: False
  • gradient_checkpointing: False
  • gradient_checkpointing_kwargs: None
  • include_inputs_for_metrics: False
  • include_for_metrics: []
  • 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
  • use_liger_kernel: False
  • eval_use_gather_object: False
  • average_tokens_across_devices: False
  • prompts: None
  • batch_sampler: group_by_label
  • multi_dataset_batch_sampler: proportional

Training Logs

Click to expand
Epoch Step Training Loss Validation Loss eval_cosine_accuracy
0 0 - - 0.8447
0.0037 10 4.0341 - -
0.0075 20 3.8755 - -
0.0112 30 3.9669 - -
0.0150 40 4.6424 - -
0.0187 50 3.4661 - -
0.0225 60 3.7177 - -
0.0262 70 4.5446 - -
0.0300 80 3.2709 - -
0.0337 90 4.648 - -
0.0375 100 2.4594 - -
0.0412 110 2.4992 - -
0.0449 120 2.381 - -
0.0487 130 2.9117 - -
0.0524 140 2.0562 - -
0.0562 150 2.9831 - -
0.0599 160 3.3428 - -
0.0637 170 3.3217 - -
0.0674 180 3.5566 - -
0.0712 190 3.0018 - -
0.0749 200 2.4643 - -
0.0787 210 2.1375 - -
0.0824 220 2.7643 - -
0.0861 230 2.3066 - -
0.0899 240 2.0659 - -
0.0936 250 1.6675 - -
0.0974 260 2.516 - -
0.1011 270 1.4495 - -
0.1049 280 3.1037 - -
0.1086 290 2.9175 - -
0.1124 300 2.8179 - -
0.1161 310 1.8993 - -
0.1199 320 2.7167 - -
0.1236 330 2.0482 - -
0.1273 340 3.0799 - -
0.1311 350 3.0152 - -
0.1348 360 2.4402 - -
0.1386 370 1.7145 - -
0.1423 380 1.5029 - -
0.1461 390 2.3034 - -
0.1498 400 2.0296 - -
0.1536 410 2.3206 - -
0.1573 420 2.3162 - -
0.1610 430 1.3744 - -
0.1648 440 2.9439 - -
0.1685 450 2.5834 - -
0.1723 460 2.2302 - -
0.1760 470 1.5165 - -
0.1798 480 2.4553 - -
0.1835 490 1.6331 - -
0.1873 500 1.7502 - -
0.1910 510 2.3556 - -
0.1948 520 2.6268 - -
0.1985 530 2.3735 - -
0.2022 540 2.9494 - -
0.2060 550 1.7133 - -
0.2097 560 1.5455 - -
0.2135 570 1.8857 - -
0.2172 580 1.7242 - -
0.2210 590 0.9303 - -
0.2247 600 1.2073 - -
0.2285 610 1.9799 - -
0.2322 620 0.5134 - -
0.2360 630 1.7473 - -
0.2397 640 2.5535 - -
0.2434 650 2.2415 - -
0.2472 660 2.3361 - -
0.2509 670 2.1372 - -
0.2547 680 1.8236 - -
0.2584 690 1.7999 - -
0.2622 700 1.041 - -
0.2659 710 1.5633 - -
0.2697 720 1.475 - -
0.2734 730 2.6768 - -
0.2772 740 2.0162 - -
0.2809 750 2.8179 - -
0.2846 760 2.2107 - -
0.2884 770 1.4401 - -
0.2921 780 1.3463 - -
0.2959 790 1.4704 - -
0.2996 800 2.1911 - -
0.3034 810 1.4399 - -
0.3071 820 1.6818 - -
0.3109 830 1.3086 - -
0.3146 840 3.0084 - -
0.3184 850 1.5507 - -
0.3221 860 1.2379 - -
0.3258 870 1.6205 - -
0.3296 880 1.7312 - -
0.3333 890 1.2205 - -
0.3371 900 2.0977 - -
0.3408 910 2.1105 - -
0.3446 920 1.6375 - -
0.3483 930 1.7065 - -
0.3521 940 1.6578 - -
0.3558 950 1.9871 - -
0.3596 960 2.5589 - -
0.3633 970 1.5536 - -
0.3670 980 1.5662 - -
0.3708 990 2.3202 - -
0.3745 1000 1.6294 - -
0.3783 1010 2.0777 - -
0.3820 1020 1.5202 - -
0.3858 1030 1.8365 - -
0.3895 1040 0.9917 - -
0.3933 1050 1.3668 - -
0.3970 1060 1.0952 - -
0.4007 1070 0.6225 - -
0.4045 1080 0.9056 - -
0.4082 1090 2.5108 - -
0.4120 1100 0.8275 - -
0.4157 1110 0.8328 - -
0.4195 1120 1.6204 - -
0.4232 1130 1.4578 - -
0.4270 1140 0.985 - -
0.4307 1150 1.5583 - -
0.4345 1160 0.797 - -
0.4382 1170 1.2212 - -
0.4419 1180 1.3289 - -
0.4457 1190 1.4719 - -
0.4494 1200 0.9898 - -
0.4532 1210 1.5724 - -
0.4569 1220 2.4698 - -
0.4607 1230 1.7312 - -
0.4644 1240 0.8984 - -
0.4682 1250 1.4435 - -
0.4719 1260 0.4182 - -
0.4757 1270 2.5585 - -
0.4794 1280 2.1777 - -
0.4831 1290 1.8817 - -
0.4869 1300 1.3328 - -
0.4906 1310 1.1548 - -
0.4944 1320 1.8619 - -
0.4981 1330 1.8818 - -
0.5019 1340 1.2547 - -
0.5056 1350 1.1262 - -
0.5094 1360 2.4004 - -
0.5131 1370 0.5397 - -
0.5169 1380 1.1227 - -
0.5206 1390 2.1331 - -
0.5243 1400 0.8593 - -
0.5281 1410 1.7893 - -
0.5318 1420 0.5693 - -
0.5356 1430 1.0304 - -
0.5393 1440 0.7579 - -
0.5431 1450 1.5615 - -
0.5468 1460 0.6529 - -
0.5506 1470 0.5767 - -
0.5543 1480 1.3396 - -
0.5581 1490 1.2152 - -
0.5618 1500 0.8144 - -
0.5655 1510 2.0135 - -
0.5693 1520 2.5916 - -
0.5730 1530 1.553 - -
0.5768 1540 0.6537 - -
0.5805 1550 0.7982 - -
0.5843 1560 1.9476 - -
0.5880 1570 0.6488 - -
0.5918 1580 1.0492 - -
0.5955 1590 1.7359 - -
0.5993 1600 2.0695 - -
0.6030 1610 0.7046 - -
0.6067 1620 1.1444 - -
0.6105 1630 0.9934 - -
0.6142 1640 0.5541 - -
0.6180 1650 0.9048 - -
0.6217 1660 1.9154 - -
0.6255 1670 2.3706 - -
0.6292 1680 0.2856 - -
0.6330 1690 1.0283 - -
0.6367 1700 1.2681 - -
0.6404 1710 0.9028 - -
0.6442 1720 0.9902 - -
0.6479 1730 1.3535 - -
0.6517 1740 0.9419 - -
0.6554 1750 0.9893 - -
0.6592 1760 1.4345 - -
0.6629 1770 2.1841 - -
0.6667 1780 0.7408 - -
0.6704 1790 2.4774 - -
0.6742 1800 0.7757 - -
0.6779 1810 2.0088 - -
0.6816 1820 1.5048 - -
0.6854 1830 0.9138 - -
0.6891 1840 1.403 - -
0.6929 1850 1.5927 - -
0.6966 1860 1.0471 - -
0.7004 1870 1.6628 - -
0.7041 1880 0.6006 - -
0.7079 1890 0.2351 - -
0.7116 1900 0.9406 - -
0.7154 1910 1.5868 - -
0.7191 1920 1.1405 - -
0.7228 1930 0.2823 - -
0.7266 1940 1.7329 - -
0.7303 1950 1.7973 - -
0.7341 1960 0.9928 - -
0.7378 1970 1.8539 - -
0.7416 1980 1.7418 - -
0.7453 1990 1.7236 - -
0.7491 2000 0.7957 - -
0.7528 2010 0.0987 - -
0.7566 2020 1.7363 - -
0.7603 2030 0.8135 - -
0.7640 2040 1.7698 - -
0.7678 2050 1.4394 - -
0.7715 2060 0.7707 - -
0.7753 2070 2.7317 - -
0.7790 2080 0.3891 - -
0.7828 2090 2.6116 - -
0.7865 2100 1.1891 - -
0.7903 2110 1.5366 - -
0.7940 2120 0.4196 - -
0.7978 2130 0.745 - -
0.8015 2140 1.4042 - -
0.8052 2150 2.7567 - -
0.8090 2160 1.9903 - -
0.8127 2170 1.8249 - -
0.8165 2180 2.0049 - -
0.8202 2190 1.6193 - -
0.8240 2200 1.0768 - -
0.8277 2210 1.5331 - -
0.8315 2220 0.8109 - -
0.8352 2230 0.6081 - -
0.8390 2240 1.3533 - -
0.8427 2250 2.0449 - -
0.8464 2260 1.1876 - -
0.8502 2270 0.7197 - -
0.8539 2280 0.9462 - -
0.8577 2290 0.7562 - -
0.8614 2300 0.9699 - -
0.8652 2310 1.115 - -
0.8689 2320 0.9679 - -
0.8727 2330 2.0255 - -
0.8764 2340 0.7457 - -
0.8801 2350 0.7221 - -
0.8839 2360 1.4877 - -
0.8876 2370 1.0071 - -
0.8914 2380 1.0958 - -
0.8951 2390 1.2945 - -
0.8989 2400 1.5245 - -
0.9026 2410 0.7008 - -
0.9064 2420 1.5043 - -
0.9101 2430 1.3202 - -
0.9139 2440 1.2748 - -
0.9176 2450 1.3845 - -
0.9213 2460 1.2619 - -
0.9251 2470 1.1196 - -
0.9288 2480 2.1311 - -
0.9326 2490 1.0909 - -
0.9363 2500 2.2843 - -
0.9401 2510 0.4763 - -
0.9438 2520 1.4252 - -
0.9476 2530 1.6419 - -
0.9513 2540 1.6628 - -
0.9551 2550 1.0937 - -
0.9588 2560 2.9318 - -
0.9625 2570 1.3356 - -
0.9663 2580 1.6431 - -
0.9700 2590 2.4785 - -
0.9738 2600 2.0959 - -
0.9775 2610 1.021 - -
0.9813 2620 1.5177 - -
0.9850 2630 1.1866 - -
0.9888 2640 1.5121 - -
0.9925 2650 0.9855 - -
0.9963 2660 0.9257 - -
1.0 2670 0.9811 1.0522 0.8691
1.0037 2680 0.4769 - -
1.0075 2690 0.0788 - -
1.0112 2700 0.4716 - -
1.0150 2710 0.6434 - -
1.0187 2720 0.3483 - -
1.0225 2730 1.1349 - -
1.0262 2740 1.4718 - -
1.0300 2750 0.6267 - -
1.0337 2760 0.7566 - -
1.0375 2770 0.5439 - -
1.0412 2780 1.3736 - -
1.0449 2790 0.482 - -
1.0487 2800 0.8668 - -
1.0524 2810 1.5906 - -
1.0562 2820 1.5024 - -
1.0599 2830 1.1421 - -
1.0637 2840 0.951 - -
1.0674 2850 1.2362 - -
1.0712 2860 0.9021 - -
1.0749 2870 0.6175 - -
1.0787 2880 0.5354 - -
1.0824 2890 0.8739 - -
1.0861 2900 1.2778 - -
1.0899 2910 1.1148 - -
1.0936 2920 1.2744 - -
1.0974 2930 2.8342 - -
1.1011 2940 0.8226 - -
1.1049 2950 0.7788 - -
1.1086 2960 0.2087 - -
1.1124 2970 2.0295 - -
1.1161 2980 0.7227 - -
1.1199 2990 0.3996 - -
1.1236 3000 1.081 - -
1.1273 3010 1.1544 - -
1.1311 3020 1.4191 - -
1.1348 3030 0.9023 - -
1.1386 3040 1.2946 - -
1.1423 3050 0.7664 - -
1.1461 3060 1.8775 - -
1.1498 3070 1.1414 - -
1.1536 3080 1.4882 - -
1.1573 3090 0.9656 - -
1.1610 3100 0.254 - -
1.1648 3110 2.8362 - -
1.1685 3120 1.5211 - -
1.1723 3130 0.5995 - -
1.1760 3140 1.192 - -
1.1798 3150 0.5996 - -
1.1835 3160 0.9875 - -
1.1873 3170 0.9348 - -
1.1910 3180 0.8946 - -
1.1948 3190 1.2509 - -
1.1985 3200 1.5223 - -
1.2022 3210 1.6398 - -
1.2060 3220 1.2502 - -
1.2097 3230 1.713 - -
1.2135 3240 0.2114 - -
1.2172 3250 0.7086 - -
1.2210 3260 1.3041 - -
1.2247 3270 1.2593 - -
1.2285 3280 0.4046 - -
1.2322 3290 1.2122 - -
1.2360 3300 1.3019 - -
1.2397 3310 0.7197 - -
1.2434 3320 0.6891 - -
1.2472 3330 0.7012 - -
1.2509 3340 1.0261 - -
1.2547 3350 1.2433 - -
1.2584 3360 0.1486 - -
1.2622 3370 0.1235 - -
1.2659 3380 1.5325 - -
1.2697 3390 0.7763 - -
1.2734 3400 1.6514 - -
1.2772 3410 1.3432 - -
1.2809 3420 0.9633 - -
1.2846 3430 0.5197 - -
1.2884 3440 1.5208 - -
1.2921 3450 0.1065 - -
1.2959 3460 1.158 - -
1.2996 3470 0.1859 - -
1.3034 3480 0.5727 - -
1.3071 3490 0.4956 - -
1.3109 3500 1.7412 - -
1.3146 3510 1.0473 - -
1.3184 3520 1.1178 - -
1.3221 3530 2.0815 - -
1.3258 3540 2.2776 - -
1.3296 3550 0.7169 - -
1.3333 3560 1.3027 - -
1.3371 3570 1.7225 - -
1.3408 3580 0.7588 - -
1.3446 3590 0.7847 - -
1.3483 3600 0.9037 - -
1.3521 3610 1.3455 - -
1.3558 3620 0.9022 - -
1.3596 3630 0.1956 - -
1.3633 3640 1.0445 - -
1.3670 3650 0.8999 - -
1.3708 3660 0.439 - -
1.3745 3670 1.1256 - -
1.3783 3680 0.8729 - -
1.3820 3690 2.2068 - -
1.3858 3700 1.6487 - -
1.3895 3710 0.9254 - -
1.3933 3720 0.2883 - -
1.3970 3730 0.8981 - -
1.4007 3740 1.2252 - -
1.4045 3750 0.8682 - -
1.4082 3760 0.8365 - -
1.4120 3770 1.8876 - -
1.4157 3780 0.6073 - -
1.4195 3790 0.9617 - -
1.4232 3800 0.2706 - -
1.4270 3810 0.3518 - -
1.4307 3820 1.1181 - -
1.4345 3830 1.2088 - -
1.4382 3840 0.8219 - -
1.4419 3850 1.0337 - -
1.4457 3860 1.5798 - -
1.4494 3870 0.293 - -
1.4532 3880 0.577 - -
1.4569 3890 1.1591 - -
1.4607 3900 0.677 - -
1.4644 3910 0.2807 - -
1.4682 3920 0.8355 - -
1.4719 3930 1.1842 - -
1.4757 3940 1.1249 - -
1.4794 3950 0.9494 - -
1.4831 3960 0.3435 - -
1.4869 3970 0.491 - -
1.4906 3980 0.024 - -
1.4944 3990 0.4431 - -
1.4981 4000 0.3127 - -
1.5019 4010 1.1624 - -
1.5056 4020 0.7637 - -
1.5094 4030 0.2917 - -
1.5131 4040 0.5337 - -
1.5169 4050 0.4679 - -
1.5206 4060 1.1765 - -
1.5243 4070 1.5454 - -
1.5281 4080 1.1035 - -
1.5318 4090 0.4787 - -
1.5356 4100 1.1475 - -
1.5393 4110 2.5765 - -
1.5431 4120 0.8925 - -
1.5468 4130 1.1461 - -
1.5506 4140 1.0587 - -
1.5543 4150 0.8122 - -
1.5581 4160 1.197 - -
1.5618 4170 1.5496 - -
1.5655 4180 0.5243 - -
1.5693 4190 1.1577 - -
1.5730 4200 0.8121 - -
1.5768 4210 0.623 - -
1.5805 4220 0.7428 - -
1.5843 4230 1.3538 - -
1.5880 4240 0.5452 - -
1.5918 4250 0.6693 - -
1.5955 4260 0.5567 - -
1.5993 4270 1.1811 - -
1.6030 4280 0.5026 - -
1.6067 4290 0.8282 - -
1.6105 4300 1.3515 - -
1.6142 4310 1.0876 - -
1.6180 4320 1.3355 - -
1.6217 4330 0.7432 - -
1.6255 4340 0.7268 - -
1.6292 4350 2.156 - -
1.6330 4360 0.5804 - -
1.6367 4370 0.5645 - -
1.6404 4380 0.3972 - -
1.6442 4390 0.3717 - -
1.6479 4400 0.3682 - -
1.6517 4410 0.8165 - -
1.6554 4420 0.4629 - -
1.6592 4430 0.4669 - -
1.6629 4440 1.4872 - -
1.6667 4450 0.0391 - -
1.6704 4460 0.5723 - -
1.6742 4470 0.1429 - -
1.6779 4480 1.3683 - -
1.6816 4490 0.2154 - -
1.6854 4500 0.486 - -
1.6891 4510 0.57 - -
1.6929 4520 0.4862 - -
1.6966 4530 0.7939 - -
1.7004 4540 1.6848 - -
1.7041 4550 0.7317 - -
1.7079 4560 0.9226 - -
1.7116 4570 0.9461 - -
1.7154 4580 0.5289 - -
1.7191 4590 0.9467 - -
1.7228 4600 0.4374 - -
1.7266 4610 0.8408 - -
1.7303 4620 0.7935 - -
1.7341 4630 0.8529 - -
1.7378 4640 0.9103 - -
1.7416 4650 0.8169 - -
1.7453 4660 0.7316 - -
1.7491 4670 0.3014 - -
1.7528 4680 1.0149 - -
1.7566 4690 1.1554 - -
1.7603 4700 0.9175 - -
1.7640 4710 0.332 - -
1.7678 4720 1.0431 - -
1.7715 4730 0.4539 - -
1.7753 4740 0.3434 - -
1.7790 4750 1.6847 - -
1.7828 4760 0.6125 - -
1.7865 4770 0.6509 - -
1.7903 4780 2.1171 - -
1.7940 4790 0.1296 - -
1.7978 4800 0.8468 - -
1.8015 4810 0.8887 - -
1.8052 4820 0.475 - -
1.8090 4830 1.1306 - -
1.8127 4840 1.56 - -
1.8165 4850 1.446 - -
1.8202 4860 1.1175 - -
1.8240 4870 1.5735 - -
1.8277 4880 1.749 - -
1.8315 4890 0.6597 - -
1.8352 4900 0.8736 - -
1.8390 4910 0.2586 - -
1.8427 4920 1.0175 - -
1.8464 4930 1.0651 - -
1.8502 4940 0.3644 - -
1.8539 4950 0.7849 - -
1.8577 4960 1.4129 - -
1.8614 4970 1.3896 - -
1.8652 4980 0.5037 - -
1.8689 4990 0.2482 - -
1.8727 5000 1.1326 - -
1.8764 5010 0.7214 - -
1.8801 5020 0.7837 - -
1.8839 5030 1.9915 - -
1.8876 5040 1.0516 - -
1.8914 5050 0.8879 - -
1.8951 5060 1.6854 - -
1.8989 5070 1.313 - -
1.9026 5080 0.5719 - -
1.9064 5090 0.2045 - -
1.9101 5100 0.4238 - -
1.9139 5110 0.8916 - -
1.9176 5120 0.9572 - -
1.9213 5130 0.9926 - -
1.9251 5140 1.3111 - -
1.9288 5150 0.7925 - -
1.9326 5160 0.8453 - -
1.9363 5170 0.2731 - -
1.9401 5180 1.3019 - -
1.9438 5190 1.2677 - -
1.9476 5200 1.5136 - -
1.9513 5210 1.4283 - -
1.9551 5220 1.4765 - -
1.9588 5230 0.3049 - -
1.9625 5240 0.988 - -
1.9663 5250 1.7154 - -
1.9700 5260 0.5865 - -
1.9738 5270 0.8685 - -
1.9775 5280 2.1119 - -
1.9813 5290 1.6986 - -
1.9850 5300 0.9968 - -
1.9888 5310 0.6045 - -
1.9925 5320 0.7844 - -
1.9963 5330 0.7483 - -
2.0 5340 2.4421 0.8997 0.8694
2.0037 5350 0.3721 - -
2.0075 5360 0.7311 - -
2.0112 5370 0.4219 - -
2.0150 5380 0.5756 - -
2.0187 5390 0.2848 - -
2.0225 5400 0.7341 - -
2.0262 5410 0.4964 - -
2.0300 5420 0.1535 - -
2.0337 5430 0.4309 - -
2.0375 5440 0.3544 - -
2.0412 5450 0.2336 - -
2.0449 5460 1.212 - -
2.0487 5470 0.5154 - -
2.0524 5480 0.1163 - -
2.0562 5490 0.9765 - -
2.0599 5500 0.2086 - -
2.0637 5510 0.2978 - -
2.0674 5520 1.9357 - -
2.0712 5530 0.6232 - -
2.0749 5540 0.6823 - -
2.0787 5550 0.0296 - -
2.0824 5560 0.9172 - -
2.0861 5570 0.3007 - -
2.0899 5580 0.4675 - -
2.0936 5590 0.1491 - -
2.0974 5600 1.1711 - -
2.1011 5610 0.6131 - -
2.1049 5620 0.0001 - -
2.1086 5630 0.408 - -
2.1124 5640 0.0041 - -
2.1161 5650 0.2059 - -
2.1199 5660 0.675 - -
2.1236 5670 0.6992 - -
2.1273 5680 0.3526 - -
2.1311 5690 0.2875 - -
2.1348 5700 0.6462 - -
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2.9963 8000 1.2176 - -
3.0 8010 1.2772 0.9109 0.8725

Framework Versions

  • Python: 3.11.9
  • Sentence Transformers: 3.3.1
  • Transformers: 4.48.0.dev0
  • PyTorch: 2.5.1+cu124
  • Accelerate: 1.2.1
  • Datasets: 3.1.0
  • Tokenizers: 0.21.0

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",
}

BatchHardTripletLoss

@misc{hermans2017defense,
    title={In Defense of the Triplet Loss for Person Re-Identification},
    author={Alexander Hermans and Lucas Beyer and Bastian Leibe},
    year={2017},
    eprint={1703.07737},
    archivePrefix={arXiv},
    primaryClass={cs.CV}
}
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