Sentence Similarity
sentence-transformers
Safetensors
Japanese
modernbert
feature-extraction
mteb
japanese
retrieval
text-embeddings-inference
Instructions to use sionic-ai/comsat-embed-ja-0.3b-preview with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- sentence-transformers
How to use sionic-ai/comsat-embed-ja-0.3b-preview with sentence-transformers:
from sentence_transformers import SentenceTransformer model = SentenceTransformer("sionic-ai/comsat-embed-ja-0.3b-preview") sentences = [ "The weather is lovely today.", "It's so sunny outside!", "He drove to the stadium." ] embeddings = model.encode(sentences) similarities = model.similarity(embeddings, embeddings) print(similarities.shape) # [3, 3] - Notebooks
- Google Colab
- Kaggle
| license: cc-by-nc-4.0 | |
| base_model: cl-nagoya/ruri-v3-310m | |
| base_model_relation: finetune | |
| language: | |
| - ja | |
| library_name: sentence-transformers | |
| pipeline_tag: sentence-similarity | |
| tags: | |
| - sentence-transformers | |
| - feature-extraction | |
| - sentence-similarity | |
| - mteb | |
| - japanese | |
| - retrieval | |
| <p align="center"> | |
| <img src="assets/sionic_ai.png" alt="Sionic AI" width="480"/> | |
| </p> | |
| # comsat-embed-ja-0.3b-preview | |
| **comsat-embed-ja-0.3b-preview** is an encoder-based embedding model developed by **Sionic AI**, optimized for Japanese semantic retrieval tasks. Trained on **over 1.5M Japanese examples**, it encodes queries and documents into vectors so that the most relevant documents can be found by similarity. The model is designed to provide high-quality text representations for real-world information retrieval scenarios, including document search, question answering, knowledge base retrieval, and enterprise semantic search. At only **0.3B parameters**, it delivers robust performance across Japanese search environments where accurate semantic matching is essential. | |
| ## Highlights | |
| - **Japanese-specialized** — trained on 1.5M+ Japanese examples; achieves **state-of-the-art average NDCG@10 (0.7785)** on the 11-task JMTEB(v2) retrieval benchmark among the compared models with **≤4B parameters**. | |
| - **Compact & efficient** — 0.3B (310M) parameters, well suited to cost-efficient, low-latency deployment. | |
| - **Long context** — handles inputs up to 8,192 tokens. | |
| - **Asymmetric encoding** — queries and documents are encoded with their respective prefixes (`検索クエリ: ` / `検索文書: `). | |
| - **Embeddings** — 768-dimensional, mean-pooled and L2-normalized, compared with cosine similarity. | |
| ## Usage | |
| First install the Sentence Transformers library | |
| ```bash | |
| pip install -U sentence-transformers | |
| ``` | |
| ### Sentence Transformers Usage | |
| > ⚠️ Encode queries with the **query** prompt and documents with the **document** prompt. (Both use their own prefix; skipping the prompt slightly degrades retrieval quality.) | |
| ```python | |
| from sentence_transformers import SentenceTransformer | |
| model = SentenceTransformer("sionic-ai/comsat-embed-ja-0.3b-preview") | |
| queries = ["日本の首都はどこですか?"] | |
| documents = ["日本の首都は東京です。"] | |
| # Prefixes ("検索クエリ: " / "検索文書: ") are applied automatically by prompt_name | |
| q_emb = model.encode(queries, prompt_name="query", normalize_embeddings=True) | |
| d_emb = model.encode(documents, prompt_name="document", normalize_embeddings=True) | |
| # Option: sentence-transformers 5.x helper API (equivalent) | |
| # q_emb = model.encode_query(queries) | |
| # d_emb = model.encode_document(documents) | |
| scores = q_emb @ d_emb.T # cosine similarity | |
| print(scores) | |
| ``` | |
| ### Transformers Usage | |
| ```python | |
| import torch | |
| import torch.nn.functional as F | |
| from torch import Tensor | |
| from transformers import AutoTokenizer, AutoModel | |
| def mean_pool(last_hidden_states: Tensor, attention_mask: Tensor) -> Tensor: | |
| mask = attention_mask.unsqueeze(-1).to(last_hidden_states.dtype) | |
| return (last_hidden_states * mask).sum(dim=1) / mask.sum(dim=1).clamp(min=1e-9) | |
| # Prepend the prefixes manually when using plain Transformers | |
| queries = ["検索クエリ: 日本の首都はどこですか?"] | |
| documents = ["検索文書: 日本の首都は東京です。"] | |
| input_texts = queries + documents | |
| tokenizer = AutoTokenizer.from_pretrained("sionic-ai/comsat-embed-ja-0.3b-preview") | |
| model = AutoModel.from_pretrained("sionic-ai/comsat-embed-ja-0.3b-preview") | |
| batch_dict = tokenizer( | |
| input_texts, | |
| padding=True, | |
| truncation=True, | |
| max_length=8192, | |
| return_tensors="pt", | |
| ) | |
| with torch.no_grad(): | |
| outputs = model(**batch_dict) | |
| embeddings = mean_pool(outputs.last_hidden_state, batch_dict["attention_mask"]) | |
| embeddings = F.normalize(embeddings, p=2, dim=1) | |
| scores = embeddings[:1] @ embeddings[1:].T # cosine similarity | |
| print(scores.tolist()) | |
| ``` | |
| ### JMTEB Retrieval Benchmark | |
| - [NLPJournalTitleAbsRetrieval.V2](https://huggingface.co/datasets/mteb/NLPJournalTitleAbsRetrieval.V2): Japanese **academic paper retrieval** — retrieve the abstract from the paper title. | |
| - [NLPJournalTitleIntroRetrieval.V2](https://huggingface.co/datasets/mteb/NLPJournalTitleIntroRetrieval.V2): Japanese **academic paper retrieval** — retrieve the introduction from the title. | |
| - [NLPJournalAbsIntroRetrieval.V2](https://huggingface.co/datasets/mteb/NLPJournalAbsIntroRetrieval.V2): Japanese **academic paper retrieval** — retrieve the introduction from the abstract. | |
| - [NLPJournalAbsArticleRetrieval.V2](https://huggingface.co/datasets/mteb/NLPJournalAbsArticleRetrieval.V2): Japanese **academic paper retrieval** — retrieve the article body from the abstract. | |
| - [MintakaRetrieval](https://huggingface.co/datasets/mteb/MintakaRetrieval): A **multilingual open-domain QA retrieval dataset** (Japanese subset). | |
| - [JaGovFaqsRetrieval](https://huggingface.co/datasets/mteb/JaGovFaqsRetrieval): A **Japanese government FAQ retrieval dataset**. | |
| - [JaqketRetrieval](https://huggingface.co/datasets/mteb/jaqket): A **Japanese open-domain quiz QA retrieval dataset**. | |
| - [MultiLongDocRetrieval](https://huggingface.co/datasets/mteb/MultiLongDocRetrieval): A **long-document retrieval dataset** (Japanese subset). | |
| - [JaCWIRRetrieval](https://huggingface.co/datasets/mteb/JaCWIRRetrieval): A **Japanese casual web information retrieval dataset**. | |
| - [MIRACLRetrieval](https://huggingface.co/datasets/mteb/MIRACLRetrieval): A **Wikipedia-based retrieval dataset** (Japanese subset). | |
| - [MrTidyRetrieval](https://huggingface.co/datasets/mteb/mrtidy): A **Wikipedia-based Japanese retrieval dataset**. | |
| ## Performance (JMTEB v2 Retrieval, NDCG@10) | |
| Only models with **≤4B parameters** are shown. All scores are NDCG@10; for multilingual tasks the Japanese subset is used (Mintaka/MultiLongDoc/MIRACL=`ja`, MrTidy=`japanese`). | |
| | Model | Avg | NLPJ-TitleAbs | NLPJ-TitleIntro | NLPJ-AbsIntro | NLPJ-AbsArticle | Mintaka | JaGovFaqs | Jaqket | MultiLongDoc | JaCWIR | MIRACL | MrTidy | | |
| |---|---|---|---|---|---|---|---|---|---|---|---|---| | |
| | **comsat-embed-ja-0.3b-preview** | **0.7785** | 0.9807 | 0.9772 | 0.9945 | 0.9951 | 0.3686 | 0.7902 | 0.7617 | 0.4689 | 0.8721 | 0.7143 | 0.6402 | | |
| | Qwen/Qwen3-Embedding-4B | 0.7779 | 0.9753 | 0.9589 | 0.9881 | 0.9959 | 0.5201 | 0.7179 | 0.6136 | 0.5659 | 0.8560 | 0.7244 | 0.6406 | | |
| | codefuse-ai/F2LLM-v2-4B | 0.7705 | 0.9853 | 0.9803 | 0.9937 | 0.9966 | 0.4767 | 0.8064 | 0.6528 | 0.4701 | 0.8166 | 0.6527 | 0.6442 | | |
| | sbintuitions/sarashina-embedding-v2-1b | 0.7659 | 0.9804 | 0.9782 | 0.9954 | 0.9858 | 0.4365 | 0.7561 | 0.7371 | 0.4529 | 0.8552 | 0.6552 | 0.5916 | | |
| | cl-nagoya/ruri-v3-130m | 0.7641 | 0.9807 | 0.9643 | 0.9894 | 0.9959 | 0.3283 | 0.7729 | 0.7514 | 0.4565 | 0.8349 | 0.7157 | 0.6149 | | |
| | cl-nagoya/ruri-v3-310m | 0.7630 | 0.9785 | 0.9653 | 0.9908 | 0.9959 | 0.3353 | 0.7726 | 0.7342 | 0.4393 | 0.8405 | 0.7233 | 0.6168 | | |
| | cl-nagoya/ruri-v3-70m | 0.7473 | 0.9705 | 0.9620 | 0.9862 | 0.9896 | 0.2974 | 0.7461 | 0.7093 | 0.4392 | 0.8201 | 0.7050 | 0.5947 | | |
| | nvidia/llama-nemotron-embed-vl-1b-v2 | 0.7464 | 0.9765 | 0.9669 | 0.9898 | 0.9966 | 0.2949 | 0.7076 | 0.6495 | 0.4257 | 0.8605 | 0.7143 | 0.6277 | | |
| | codefuse-ai/F2LLM-v2-1.7B | 0.7426 | 0.9790 | 0.9699 | 0.9932 | 0.9980 | 0.3584 | 0.7857 | 0.6012 | 0.4597 | 0.8181 | 0.6153 | 0.5897 | | |
| | cl-nagoya/ruri-v3-30m | 0.7330 | 0.9748 | 0.9540 | 0.9910 | 0.9893 | 0.2836 | 0.7236 | 0.6530 | 0.4626 | 0.8193 | 0.6635 | 0.5481 | | |
| | cl-nagoya/ruri-large-v2 | 0.7260 | 0.9750 | 0.8184 | 0.9145 | 0.9083 | 0.3377 | 0.7744 | 0.7336 | 0.3933 | 0.8021 | 0.7136 | 0.6152 | | |
| | Qwen/Qwen3-VL-Embedding-2B | 0.7253 | 0.9644 | 0.9454 | 0.9833 | 0.9946 | 0.3026 | 0.6915 | 0.5605 | 0.4638 | 0.8510 | 0.6402 | 0.5815 | | |
| | BAAI/bge-m3 | 0.7245 | 0.9592 | 0.9164 | 0.9710 | 0.9528 | 0.2145 | 0.7066 | 0.5122 | 0.5034 | 0.8509 | 0.7285 | 0.6545 | | |
| | google/embeddinggemma-300m | 0.7230 | 0.9627 | 0.9231 | 0.9757 | 0.9866 | 0.2683 | 0.7209 | 0.6749 | 0.3852 | 0.8524 | 0.6542 | 0.5490 | | |
| | Snowflake/snowflake-arctic-embed-l-v2.0 | 0.7111 | 0.9727 | 0.9444 | 0.9873 | 0.9643 | 0.2344 | 0.7203 | 0.4328 | 0.4648 | 0.8549 | 0.6608 | 0.5856 | | |
| | sbintuitions/sarashina-embedding-v1-1b | 0.7078 | 0.9688 | 0.9661 | 0.9916 | 0.9920 | 0.4025 | 0.7223 | 0.6412 | 0.3420 | 0.8254 | 0.5124 | 0.4219 | | |
| | codefuse-ai/F2LLM-v2-0.6B | 0.7078 | 0.9671 | 0.9590 | 0.9921 | 0.9966 | 0.2734 | 0.7609 | 0.4896 | 0.4185 | 0.8018 | 0.5723 | 0.5548 | | |
| | cl-nagoya/ruri-base-v2 | 0.7043 | 0.9658 | 0.7821 | 0.8982 | 0.9045 | 0.2997 | 0.7532 | 0.6947 | 0.3675 | 0.8044 | 0.6840 | 0.5928 | | |
| > Avg is the mean over the 11 JMTEB(v2) retrieval tasks (higher is better). | |
| > Reproduction: evaluated with the MTEB/JMTEB retrieval pipeline (NDCG@10, full corpus); the query prompt (`検索クエリ: `) is applied to queries and the document prompt (`検索文書: `) to documents. | |
| ## License | |
| - Model weights: **cc-by-nc-4.0** (non-commercial use). | |