metadata
dataset_info:
features:
- name: text
dtype: string
- name: embedding
list: float32
splits:
- name: go
num_bytes: 317366334
num_examples: 100000
- name: java
num_bytes: 314926494
num_examples: 100000
- name: javascript
num_bytes: 317426884
num_examples: 100000
- name: php
num_bytes: 314068096
num_examples: 100000
- name: python
num_bytes: 316272611
num_examples: 100000
- name: ruby
num_bytes: 316742292
num_examples: 100000
download_size: 1870580252
dataset_size: 1896802711
configs:
- config_name: default
data_files:
- split: go
path: data/go-*
- split: java
path: data/java-*
- split: javascript
path: data/javascript-*
- split: php
path: data/php-*
- split: python
path: data/python-*
- split: ruby
path: data/ruby-*
minishlab/tokenlearn-cornstack-queries-coderankembed-v2 Dataset Card
This dataset was created with Tokenlearn for training Model2Vec models on code retrieval. It contains mean token embeddings produced by nomic-ai/CodeRankEmbed, used as training targets for static embedding distillation.
The dataset contains code documents from CornStack across 6 programming languages (100,000 rows per language, 600,000 total).
Dataset Details
| Field | Value |
|---|---|
| Source | CornStack (nomic-ai) |
| Embedding model | nomic-ai/CodeRankEmbed |
| Embedding dimension | 768 |
| Languages | Python, Java, PHP, Go, JavaScript, Ruby |
| Rows per language | 100,000 |
| Total rows | 600,000 |
| Field | query |
Source Datasets
| Language | Source |
|---|---|
python |
nomic-ai/cornstack-python-v1 |
java |
nomic-ai/cornstack-java-v1 |
php |
nomic-ai/cornstack-php-v1 |
go |
nomic-ai/cornstack-go-v1 |
javascript |
nomic-ai/cornstack-javascript-v1 |
ruby |
nomic-ai/cornstack-ruby-v1 |
Dataset Structure
| Column | Type | Description |
|---|---|---|
text |
string |
Truncated input text (tokenizer max length 512) |
embedding |
list[float32] |
Mean token embedding from nomic-ai/CodeRankEmbed, excluding BOS/EOS tokens |
Usage
Load a single language config:
from datasets import load_dataset
# Load Python code documents
dataset = load_dataset("minishlab/tokenlearn-cornstack-docs-coderankembed", name="python")
# Load all languages and concatenate
from datasets import concatenate_datasets
all_langs = concatenate_datasets([
load_dataset("minishlab/tokenlearn-cornstack-docs-coderankembed", name=lang)["train"]
for lang in ["python", "java", "php", "go", "javascript", "ruby"]
])
Creation
Featurized from CornStack using nomic-ai/CodeRankEmbed with mean token pooling (BOS/EOS excluded). Two sampling seeds (42 and 100) were used with a 10k streaming shuffle buffer to maximise diversity. Texts are truncated to 512 tokens.
Library Authors
Tokenlearn was developed by the Minish team consisting of Stephan Tulkens and Thomas van Dongen.
Citation
@software{minishlab2024model2vec,
author = {Stephan Tulkens and {van Dongen}, Thomas},
title = {Model2Vec: Fast State-of-the-Art Static Embeddings},
year = {2024},
publisher = {Zenodo},
doi = {10.5281/zenodo.17270888},
url = {https://github.com/MinishLab/model2vec},
license = {MIT}
}