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metadata
library_name: transformers
tags:
  - text-classification
  - modernbert
  - generated-data
base_model: PeterPanecillo/PlanTL-GOB-ES-roberta-base-bne-copy
metrics:
  - name: loss
    type: loss
    value: 0.42353931069374084
  - name: accuracy
    type: accuracy
    value: 0.905
  - name: f1
    type: f1
    value: 0.9049896921601716
  - name: precision
    type: precision
    value: 0.9049971109583139
  - name: recall
    type: recall
    value: 0.9049918871427097
  - name: runtime
    type: runtime
    value: 2.153
  - name: samples_per_second
    type: samples_per_second
    value: 2786.842
  - name: steps_per_second
    type: steps_per_second
    value: 43.661
  - name: epoch
    type: epoch
    value: 3

Gender Classifier (Fine-tuned PeterPanecillo/PlanTL-GOB-ES-roberta-base-bne-copy)

This model was fine-tuned to classify text into: male, female, neutral

Performance Metrics

Metric Value
loss 0.4235
accuracy 0.9050
f1 0.9050
precision 0.9050
recall 0.9050
runtime 2.1530
samples_per_second 2786.8420
steps_per_second 43.6610
epoch 3.0000

Hyperparameters

  • Batch Size: 64
  • Learning Rate: 5e-05
  • Epochs: 3
  • Weight Decay: 0.01
  • Mixed Precision (FP16): True

Quick Usage

from transformers import pipeline

# Load the model directly from this folder or HF Hub
classifier = pipeline('text-classification', model='.')
print(classifier('She is a great engineer.'))