shisha-07/Llama-3-Indian-Gender-Classifier
Text Classification โข 8B โข Updated
Name stringlengths 1 24 | Label int64 0 2 |
|---|---|
A | 0 |
Abad | 0 |
Ability | 0 |
Abohar | 0 |
About | 0 |
Abouted | 0 |
Abouter | 0 |
Abouting | 0 |
Aboutly | 0 |
Abouts | 0 |
Acha | 0 |
Achalam | 0 |
Achalpur | 0 |
Achi | 0 |
Act | 0 |
Active | 0 |
Actived | 0 |
Actively | 0 |
Activer | 0 |
Actives | 0 |
Activing | 0 |
Ada | 0 |
Adapter | 0 |
Adhikari | 0 |
Adil | 0 |
Adilabad | 0 |
Adun | 0 |
Adurga | 0 |
Agaluru | 0 |
Agar | 0 |
Agaram | 0 |
Agartala | 0 |
Agarwal | 0 |
Agpur | 0 |
Agra | 0 |
Agraj | 0 |
Agrawal | 0 |
Ahluwalia | 0 |
Ahme | 0 |
Ahmed | 0 |
Ahmedabad | 0 |
Ahmednagar | 0 |
Ahuja | 0 |
Aich | 0 |
Air | 0 |
Aizawl | 0 |
Ajmer | 0 |
Akba | 0 |
Akbarpur | 0 |
Akola | 0 |
Akudi | 0 |
Alap | 0 |
Alappuzha | 0 |
Alayam | 0 |
Alexed | 0 |
Alexer | 0 |
Alexing | 0 |
Alexly | 0 |
Alexs | 0 |
Aligarh | 0 |
Alipu | 0 |
Alipurduar | 0 |
All | 0 |
Alla | 0 |
Allahabad | 0 |
Allin | 0 |
Allinagaram | 0 |
Alore | 0 |
Alpur | 0 |
Aluru | 0 |
Alwar | 0 |
Ambadi | 0 |
Ambarnath | 0 |
Ambattur | 0 |
Ambered | 0 |
Amberer | 0 |
Ambering | 0 |
Amberly | 0 |
Ambers | 0 |
Ambikapur | 0 |
Amgram | 0 |
Ampur | 0 |
Amra | 0 |
Amravati | 0 |
Amri | 0 |
Amritsar | 0 |
Amroha | 0 |
An | 0 |
Anad | 0 |
Anagar | 0 |
Anantapur | 0 |
Ance | 0 |
And | 0 |
Anda | 0 |
Andalam | 0 |
Andar | 0 |
Andi | 0 |
Andy | 0 |
Andyed | 0 |
Andyer | 0 |
This dataset contains 42,000 samples designed for training models to identify Indian names and classify their gender. It is perfectly balanced across three categories, making it ideal for training robust classifiers that can distinguish between real names and random text.
| Column | Type | Description |
|---|---|---|
Name |
String | The text string (Name or Random Word). |
Label |
Integer | Class ID representing the category (0, 1, or 2). |
| Label ID | Class | Count | Examples |
|---|---|---|---|
| 0 | Neutral / Non-Name | 14,000 | Ability, About, Agra, Abohar |
| 1 | Male Name | 14,000 | Aabharan, Aabhat, Aadalalagan |
| 2 | Female Name | 14,000 | Aabarana, Aabitha, Aadanya |
This dataset is suitable for:
from datasets import load_dataset
dataset = load_dataset("shisha-07/Indian_Names_with_Gender_Dataset")
# Print first example
print(dataset['train'][0])
# Output: {'Name': 'A', 'Label': 0}
Llama-3-Indian-Gender-Classifier: A fine-tuned Llama-3 model that achieved 86.4% accuracy using this data.
The code used to create and train on this dataset is available here: