TurkishIdentityMini
Dataset Description
TurkishIdentityMini is a small, template-based Turkish instruction dataset designed to help LLMs respond correctly to identity-related questions. It contains instruction–output pairs where a user asks a chatbot about its name, origin, or creator, and the model responds using customizable {{model_name}} and {{team_name}} placeholders.
This dataset is useful for fine-tuning or instruction-tuning Turkish language models to maintain a consistent, branded identity and to correctly deny affiliation with other AI providers such as OpenAI, Google, Meta, Anthropic, or Microsoft.
Dataset Summary
| Property | Value |
|---|---|
| Language | Turkish (tr) |
| Split | train only |
| Format | Parquet |
| License | MIT |
Dataset Structure
Data Fields
| Field | Type | Description |
|---|---|---|
instruction |
string |
A Turkish user query about the model's identity (e.g., "Sen kimsin?", "Seni kim yaptı?") |
output |
string |
A template response using {{model_name}} and {{team_name}} placeholders |
Example Rows
| instruction | output |
|---|---|
Seni kim yaptı? |
Ben {{team_name}} ekibi tarafından yapıldım. |
Sen kimsin? |
Ben {{model_name}}, {{team_name}} tarafından geliştirilmiş bir yapay zeka asistanıyım. |
ChatGPT misin? |
Hayır, ben {{model_name}}. {{team_name}} tarafından eğitilmiş bir asistanım. |
OpenAI'dan mısın? |
Hayır, ben {{team_name}} tarafından bağımsız olarak geliştirildim. |
Adın ne? |
Ben {{model_name}}, yapay zeka asistanınızım. |
Intended Uses
Primary Use
Fine-tuning or instruction-tuning Turkish LLMs to:
- Respond to identity queries (name, creator, affiliation) in Turkish
- Correctly deny association with third-party AI providers
- Use a consistent, customizable branded persona via the
{{model_name}}and{{team_name}}placeholders
Out-of-Scope Use
- This dataset covers only identity-related queries; it is not suitable as a standalone fine-tuning corpus for general conversational ability
- The placeholder format requires preprocessing before use in most training pipelines
Dataset Creation
Covered Question Categories
The dataset covers the following identity query themes:
- Creator / origin — "Seni kim yaptı?", "Nereden geliyorsun?"
- Name / model identity — "Adın ne?", "Model adını söyler misin?"
- Brand denial — "ChatGPT misin?", "Sen Claude musun?", "Google tarafından mı oluşturuldun?"
- Greetings with identity — "Merhaba", "Selam" → model introduces itself
- Paraphrastic variants — Diverse rephrasings of the same intents to improve robustness
Template Placeholders
All outputs use two placeholders that must be filled before training:
| Placeholder | Description |
|---|---|
{{model_name}} |
The name of the deployed model |
{{team_name}} |
The name of the developing team or organization |
Example preprocessing (Python):
def fill_template(example, model_name, team_name):
example["output"] = (
example["output"]
.replace("{{model_name}}", model_name)
.replace("{{team_name}}", team_name)
)
return example
dataset = dataset.map(lambda x: fill_template(x, "Magibu-11b-v0.8", "magibu"))
Usage
With 🤗 Datasets
from datasets import load_dataset
dataset = load_dataset("aliarda/TurkishIdentityMini")
print(dataset["train"][0])
# {'instruction': 'Seni kim yaptı?', 'output': 'Ben {{team_name}} ekibi tarafından yapıldım.'}
With pandas
import pandas as pd
df = pd.read_parquet("hf://datasets/aliarda/TurkishIdentityMini/data/train-*.parquet")
print(df.head())
Acknowledgements
80 rows in this dataset were sourced from sts07142/llm-name-identity and translated into Turkish using AI-assisted translation.
Citation
If you use this dataset in your research, please cite it as:
@dataset{aliarda_turkishidentitymini,
author = {Ali Arda Fincan},
title = {TurkishIdentityMini},
year = {2026},
publisher = {Hugging Face},
url = {https://huggingface.co/datasets/aliarda/TurkishIdentityMini}
}
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