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---
license: bsd-3-clause
base_model: Salesforce/codet5p-770m-py
tags:
- generated_from_trainer
datasets:
- mbpp
model-index:
- name: codet5p-770m-py-sanitized-codebleu-1-True-5e-05-0.1-lora-layer_14
  results: []
---

<!-- This model card has been generated automatically according to the information the Trainer had access to. You
should probably proofread and complete it, then remove this comment. -->

# codet5p-770m-py-sanitized-codebleu-1-True-5e-05-0.1-lora-layer_14

This model is a fine-tuned version of [Salesforce/codet5p-770m-py](https://huggingface.co/Salesforce/codet5p-770m-py) on the mbpp dataset.
It achieves the following results on the evaluation set:
- Loss: 0.7195
- Codebleu: 0.1029
- Ngram Match Score: 0.0205
- Weighted Ngram Match Score: 0.0424
- Syntax Match Score: 0.1230
- Dataflow Match Score: 0.1185

## Model description

More information needed

## Intended uses & limitations

More information needed

## Training and evaluation data

More information needed

## Training procedure

### Training hyperparameters

The following hyperparameters were used during training:
- learning_rate: 5e-05
- train_batch_size: 8
- eval_batch_size: 8
- seed: 42
- optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
- lr_scheduler_type: linear
- lr_scheduler_warmup_steps: 100
- num_epochs: 64

### Training results

| Training Loss | Epoch | Step | Validation Loss | Codebleu | Ngram Match Score | Weighted Ngram Match Score | Syntax Match Score | Dataflow Match Score |
|:-------------:|:-----:|:----:|:---------------:|:--------:|:-----------------:|:--------------------------:|:------------------:|:--------------------:|
| 0.9766        | 1.0   | 15   | 0.9244          | 0.0072   | 0.0000            | 0.0000                     | 0.0079             | 0.0100               |
| 0.965         | 2.0   | 30   | 0.9226          | 0.0072   | 0.0000            | 0.0000                     | 0.0079             | 0.0100               |
| 0.9762        | 3.0   | 45   | 0.9181          | 0.0080   | 0.0000            | 0.0000                     | 0.0079             | 0.0120               |
| 0.9451        | 4.0   | 60   | 0.9083          | 0.0096   | 0.0000            | 0.0001                     | 0.0079             | 0.0161               |
| 0.9517        | 5.0   | 75   | 0.8892          | 0.0444   | 0.0014            | 0.0239                     | 0.0423             | 0.0622               |
| 0.9375        | 6.0   | 90   | 0.8647          | 0.0894   | 0.0218            | 0.0480                     | 0.1098             | 0.0964               |
| 0.9163        | 7.0   | 105  | 0.8474          | 0.0990   | 0.0226            | 0.0521                     | 0.1243             | 0.1044               |
| 0.8645        | 8.0   | 120  | 0.8333          | 0.0991   | 0.0239            | 0.0522                     | 0.1243             | 0.1044               |
| 0.855         | 9.0   | 135  | 0.8221          | 0.0996   | 0.0169            | 0.0398                     | 0.1243             | 0.1104               |
| 0.8493        | 10.0  | 150  | 0.8122          | 0.1011   | 0.0182            | 0.0428                     | 0.1270             | 0.1104               |
| 0.8388        | 11.0  | 165  | 0.8030          | 0.1054   | 0.0158            | 0.0403                     | 0.1270             | 0.1225               |
| 0.8374        | 12.0  | 180  | 0.7955          | 0.1073   | 0.0165            | 0.0450                     | 0.1283             | 0.1245               |
| 0.816         | 13.0  | 195  | 0.7893          | 0.1092   | 0.0161            | 0.0436                     | 0.1296             | 0.1285               |
| 0.7974        | 14.0  | 210  | 0.7820          | 0.1092   | 0.0158            | 0.0436                     | 0.1296             | 0.1285               |
| 0.804         | 15.0  | 225  | 0.7744          | 0.1080   | 0.0165            | 0.0439                     | 0.1283             | 0.1265               |
| 0.8055        | 16.0  | 240  | 0.7697          | 0.1005   | 0.0155            | 0.0417                     | 0.1204             | 0.1165               |
| 0.7875        | 17.0  | 255  | 0.7646          | 0.1021   | 0.0155            | 0.0418                     | 0.1204             | 0.1205               |
| 0.7592        | 18.0  | 270  | 0.7602          | 0.1060   | 0.0170            | 0.0421                     | 0.1217             | 0.1285               |
| 0.7714        | 19.0  | 285  | 0.7550          | 0.1037   | 0.0170            | 0.0431                     | 0.1217             | 0.1225               |
| 0.7613        | 20.0  | 300  | 0.7515          | 0.1080   | 0.0218            | 0.0496                     | 0.1257             | 0.1265               |
| 0.7469        | 21.0  | 315  | 0.7490          | 0.1042   | 0.0169            | 0.0372                     | 0.1204             | 0.1265               |
| 0.7363        | 22.0  | 330  | 0.7458          | 0.1045   | 0.0213            | 0.0439                     | 0.1164             | 0.1285               |
| 0.7404        | 23.0  | 345  | 0.7436          | 0.1060   | 0.0209            | 0.0437                     | 0.1243             | 0.1245               |
| 0.74          | 24.0  | 360  | 0.7411          | 0.1122   | 0.0240            | 0.0499                     | 0.1296             | 0.1325               |
| 0.7588        | 25.0  | 375  | 0.7380          | 0.1093   | 0.0239            | 0.0503                     | 0.1283             | 0.1265               |
| 0.7315        | 26.0  | 390  | 0.7370          | 0.1063   | 0.0221            | 0.0455                     | 0.1283             | 0.1205               |
| 0.7152        | 27.0  | 405  | 0.7342          | 0.1095   | 0.0257            | 0.0527                     | 0.1296             | 0.1245               |
| 0.7183        | 28.0  | 420  | 0.7335          | 0.1060   | 0.0236            | 0.0491                     | 0.1243             | 0.1225               |
| 0.7037        | 29.0  | 435  | 0.7327          | 0.1095   | 0.0256            | 0.0529                     | 0.1296             | 0.1245               |
| 0.706         | 30.0  | 450  | 0.7315          | 0.1108   | 0.0266            | 0.0544                     | 0.1323             | 0.1245               |
| 0.7004        | 31.0  | 465  | 0.7302          | 0.1131   | 0.0254            | 0.0541                     | 0.1362             | 0.1265               |
| 0.7049        | 32.0  | 480  | 0.7294          | 0.1083   | 0.0233            | 0.0489                     | 0.1283             | 0.1245               |
| 0.6944        | 33.0  | 495  | 0.7295          | 0.1101   | 0.0230            | 0.0483                     | 0.1310             | 0.1265               |
| 0.7039        | 34.0  | 510  | 0.7283          | 0.1023   | 0.0197            | 0.0403                     | 0.1204             | 0.1205               |
| 0.6837        | 35.0  | 525  | 0.7275          | 0.1014   | 0.0191            | 0.0400                     | 0.1204             | 0.1185               |
| 0.706         | 36.0  | 540  | 0.7270          | 0.1023   | 0.0197            | 0.0403                     | 0.1204             | 0.1205               |
| 0.6997        | 37.0  | 555  | 0.7267          | 0.1005   | 0.0199            | 0.0403                     | 0.1177             | 0.1185               |
| 0.7007        | 38.0  | 570  | 0.7268          | 0.1026   | 0.0210            | 0.0419                     | 0.1204             | 0.1205               |
| 0.6893        | 39.0  | 585  | 0.7252          | 0.1055   | 0.0242            | 0.0488                     | 0.1230             | 0.1225               |
| 0.7017        | 40.0  | 600  | 0.7242          | 0.1005   | 0.0199            | 0.0403                     | 0.1177             | 0.1185               |
| 0.6847        | 41.0  | 615  | 0.7238          | 0.1083   | 0.0257            | 0.0515                     | 0.1230             | 0.1285               |
| 0.6803        | 42.0  | 630  | 0.7233          | 0.1020   | 0.0207            | 0.0414                     | 0.1190             | 0.1205               |
| 0.6827        | 43.0  | 645  | 0.7232          | 0.1078   | 0.0268            | 0.0531                     | 0.1230             | 0.1265               |
| 0.6888        | 44.0  | 660  | 0.7230          | 0.1000   | 0.0213            | 0.0419                     | 0.1177             | 0.1165               |
| 0.6792        | 45.0  | 675  | 0.7229          | 0.1000   | 0.0213            | 0.0419                     | 0.1177             | 0.1165               |
| 0.6761        | 46.0  | 690  | 0.7230          | 0.1005   | 0.0204            | 0.0403                     | 0.1177             | 0.1185               |
| 0.6844        | 47.0  | 705  | 0.7226          | 0.1013   | 0.0202            | 0.0403                     | 0.1177             | 0.1205               |
| 0.6799        | 48.0  | 720  | 0.7226          | 0.1008   | 0.0212            | 0.0419                     | 0.1177             | 0.1185               |
| 0.6884        | 49.0  | 735  | 0.7218          | 0.1008   | 0.0212            | 0.0419                     | 0.1177             | 0.1185               |
| 0.6694        | 50.0  | 750  | 0.7216          | 0.1034   | 0.0196            | 0.0403                     | 0.1230             | 0.1205               |
| 0.6934        | 51.0  | 765  | 0.7214          | 0.1112   | 0.0254            | 0.0515                     | 0.1283             | 0.1305               |
| 0.6902        | 52.0  | 780  | 0.7209          | 0.1008   | 0.0211            | 0.0424                     | 0.1177             | 0.1185               |
| 0.6845        | 53.0  | 795  | 0.7206          | 0.1008   | 0.0211            | 0.0424                     | 0.1177             | 0.1185               |
| 0.6517        | 54.0  | 810  | 0.7206          | 0.1008   | 0.0211            | 0.0424                     | 0.1177             | 0.1185               |
| 0.6741        | 55.0  | 825  | 0.7204          | 0.0978   | 0.0218            | 0.0433                     | 0.1177             | 0.1104               |
| 0.6805        | 56.0  | 840  | 0.7202          | 0.0978   | 0.0218            | 0.0433                     | 0.1177             | 0.1104               |
| 0.6829        | 57.0  | 855  | 0.7199          | 0.0978   | 0.0218            | 0.0433                     | 0.1177             | 0.1104               |
| 0.6693        | 58.0  | 870  | 0.7198          | 0.1029   | 0.0205            | 0.0424                     | 0.1230             | 0.1185               |
| 0.6898        | 59.0  | 885  | 0.7196          | 0.1029   | 0.0205            | 0.0424                     | 0.1230             | 0.1185               |
| 0.6658        | 60.0  | 900  | 0.7195          | 0.1029   | 0.0205            | 0.0424                     | 0.1230             | 0.1185               |
| 0.6818        | 61.0  | 915  | 0.7195          | 0.0978   | 0.0218            | 0.0433                     | 0.1177             | 0.1104               |
| 0.673         | 62.0  | 930  | 0.7195          | 0.1029   | 0.0205            | 0.0424                     | 0.1230             | 0.1185               |
| 0.6703        | 63.0  | 945  | 0.7195          | 0.1008   | 0.0211            | 0.0424                     | 0.1177             | 0.1185               |
| 0.6609        | 64.0  | 960  | 0.7195          | 0.1029   | 0.0205            | 0.0424                     | 0.1230             | 0.1185               |


### Framework versions

- Transformers 4.31.0
- Pytorch 2.0.1
- Datasets 2.14.4
- Tokenizers 0.13.3