Datasets:
Tasks:
Text Retrieval
Modalities:
Text
Formats:
parquet
Sub-tasks:
document-retrieval
Languages:
Telugu
Size:
100K - 1M
License:
annotations_creators: | |
- expert-generated | |
language: | |
- te | |
multilinguality: | |
- multilingual | |
size_categories: [] | |
source_datasets: [] | |
tags: [] | |
task_categories: | |
- text-retrieval | |
license: | |
- apache-2.0 | |
task_ids: | |
- document-retrieval | |
# MIRACL (te) embedded with cohere.ai `multilingual-22-12` encoder | |
We encoded the [MIRACL dataset](https://huggingface.co/miracl) using the [cohere.ai](https://txt.cohere.ai/multilingual/) `multilingual-22-12` embedding model. | |
The query embeddings can be found in [Cohere/miracl-te-queries-22-12](https://huggingface.co/datasets/Cohere/miracl-te-queries-22-12) and the corpus embeddings can be found in [Cohere/miracl-te-corpus-22-12](https://huggingface.co/datasets/Cohere/miracl-te-corpus-22-12). | |
For the orginal datasets, see [miracl/miracl](https://huggingface.co/datasets/miracl/miracl) and [miracl/miracl-corpus](https://huggingface.co/datasets/miracl/miracl-corpus). | |
Dataset info: | |
> MIRACL 🌍🙌🌏 (Multilingual Information Retrieval Across a Continuum of Languages) is a multilingual retrieval dataset that focuses on search across 18 different languages, which collectively encompass over three billion native speakers around the world. | |
> | |
> The corpus for each language is prepared from a Wikipedia dump, where we keep only the plain text and discard images, tables, etc. Each article is segmented into multiple passages using WikiExtractor based on natural discourse units (e.g., `\n\n` in the wiki markup). Each of these passages comprises a "document" or unit of retrieval. We preserve the Wikipedia article title of each passage. | |
## Embeddings | |
We compute for `title+" "+text` the embeddings using our `multilingual-22-12` embedding model, a state-of-the-art model that works for semantic search in 100 languages. If you want to learn more about this model, have a look at [cohere.ai multilingual embedding model](https://txt.cohere.ai/multilingual/). | |
## Loading the dataset | |
In [miracl-te-corpus-22-12](https://huggingface.co/datasets/Cohere/miracl-te-corpus-22-12) we provide the corpus embeddings. Note, depending on the selected split, the respective files can be quite large. | |
You can either load the dataset like this: | |
```python | |
from datasets import load_dataset | |
docs = load_dataset(f"Cohere/miracl-te-corpus-22-12", split="train") | |
``` | |
Or you can also stream it without downloading it before: | |
```python | |
from datasets import load_dataset | |
docs = load_dataset(f"Cohere/miracl-te-corpus-22-12", split="train", streaming=True) | |
for doc in docs: | |
docid = doc['docid'] | |
title = doc['title'] | |
text = doc['text'] | |
emb = doc['emb'] | |
``` | |
## Search | |
Have a look at [miracl-te-queries-22-12](https://huggingface.co/datasets/Cohere/miracl-te-queries-22-12) where we provide the query embeddings for the MIRACL dataset. | |
To search in the documents, you must use **dot-product**. | |
And then compare this query embeddings either with a vector database (recommended) or directly computing the dot product. | |
A full search example: | |
```python | |
# Attention! For large datasets, this requires a lot of memory to store | |
# all document embeddings and to compute the dot product scores. | |
# Only use this for smaller datasets. For large datasets, use a vector DB | |
from datasets import load_dataset | |
import torch | |
#Load documents + embeddings | |
docs = load_dataset(f"Cohere/miracl-te-corpus-22-12", split="train") | |
doc_embeddings = torch.tensor(docs['emb']) | |
# Load queries | |
queries = load_dataset(f"Cohere/miracl-te-queries-22-12", split="dev") | |
# Select the first query as example | |
qid = 0 | |
query = queries[qid] | |
query_embedding = torch.tensor(queries['emb']) | |
# Compute dot score between query embedding and document embeddings | |
dot_scores = torch.mm(query_embedding, doc_embeddings.transpose(0, 1)) | |
top_k = torch.topk(dot_scores, k=3) | |
# Print results | |
print("Query:", query['query']) | |
for doc_id in top_k.indices[0].tolist(): | |
print(docs[doc_id]['title']) | |
print(docs[doc_id]['text']) | |
``` | |
You can get embeddings for new queries using our API: | |
```python | |
#Run: pip install cohere | |
import cohere | |
co = cohere.Client(f"{api_key}") # You should add your cohere API Key here :)) | |
texts = ['my search query'] | |
response = co.embed(texts=texts, model='multilingual-22-12') | |
query_embedding = response.embeddings[0] # Get the embedding for the first text | |
``` | |
## Performance | |
In the following table we compare the cohere multilingual-22-12 model with Elasticsearch version 8.6.0 lexical search (title and passage indexed as independent fields). Note that Elasticsearch doesn't support all languages that are part of the MIRACL dataset. | |
We compute nDCG@10 (a ranking based loss), as well as hit@3: Is at least one relevant document in the top-3 results. We find that hit@3 is easier to interpret, as it presents the number of queries for which a relevant document is found among the top-3 results. | |
Note: MIRACL only annotated a small fraction of passages (10 per query) for relevancy. Especially for larger Wikipedias (like English), we often found many more relevant passages. This is know as annotation holes. Real nDCG@10 and hit@3 performance is likely higher than depicted. | |
| Model | cohere multilingual-22-12 nDCG@10 | cohere multilingual-22-12 hit@3 | ES 8.6.0 nDCG@10 | ES 8.6.0 acc@3 | | |
|---|---|---|---|---| | |
| miracl-ar | 64.2 | 75.2 | 46.8 | 56.2 | | |
| miracl-bn | 61.5 | 75.7 | 49.2 | 60.1 | | |
| miracl-de | 44.4 | 60.7 | 19.6 | 29.8 | | |
| miracl-en | 44.6 | 62.2 | 30.2 | 43.2 | | |
| miracl-es | 47.0 | 74.1 | 27.0 | 47.2 | | |
| miracl-fi | 63.7 | 76.2 | 51.4 | 61.6 | | |
| miracl-fr | 46.8 | 57.1 | 17.0 | 21.6 | | |
| miracl-hi | 50.7 | 62.9 | 41.0 | 48.9 | | |
| miracl-id | 44.8 | 63.8 | 39.2 | 54.7 | | |
| miracl-ru | 49.2 | 66.9 | 25.4 | 36.7 | | |
| **Avg** | 51.7 | 67.5 | 34.7 | 46.0 | | |
Further languages (not supported by Elasticsearch): | |
| Model | cohere multilingual-22-12 nDCG@10 | cohere multilingual-22-12 hit@3 | | |
|---|---|---| | |
| miracl-fa | 44.8 | 53.6 | | |
| miracl-ja | 49.0 | 61.0 | | |
| miracl-ko | 50.9 | 64.8 | | |
| miracl-sw | 61.4 | 74.5 | | |
| miracl-te | 67.8 | 72.3 | | |
| miracl-th | 60.2 | 71.9 | | |
| miracl-yo | 56.4 | 62.2 | | |
| miracl-zh | 43.8 | 56.5 | | |
| **Avg** | 54.3 | 64.6 | | |