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--- |
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language: |
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- fr |
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tags: |
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- france |
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- cnil |
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- loi |
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- deliberations |
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- decisions |
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- embeddings |
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- open-data |
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- government |
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pretty_name: CNIL Deliberations Dataset |
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size_categories: |
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- 10K<n<100K |
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license: etalab-2.0 |
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configs: |
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- config_name: latest |
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data_files: "data/cnil-latest/*.parquet" |
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default: true |
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--- |
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# 🇫🇷 CNIL Deliberations Dataset |
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This dataset is a processed and embedded version of the official deliberations and decisions published by the **CNIL** (Commission Nationale de l’Informatique et des Libertés), the French data protection authority. |
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It includes a variety of legal documents such as opinions, recommendations, simplified norms, general authorizations, and formal decisions. |
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The original data is downloaded from [the dedicated **DILA** open data repository](https://echanges.dila.gouv.fr/OPENDATA/CNIL/) and the dataset is also [available in data.gouv.fr (Les délibérations de la CNIL)](https://www.data.gouv.fr/datasets/les-deliberations-de-la-cnil/) . |
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The dataset provides semantic-ready, structured and chunked data making the dataset suitable for **semantic search**, **AI legal assistants**, or **RAG pipelines** for example. |
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These chunks have then been embedded using the [`BAAI/bge-m3`](https://huggingface.co/BAAI/bge-m3) model. |
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--- |
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## 🗂️ Dataset Contents |
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The dataset is provided in **Parquet format** and includes the following columns: |
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| Column Name | Type | Description | |
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|--------------------|------------------|-----------------------------------------------------------------------------| |
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| `chunk_id` | `str` | Unique identifier for each chunk. | |
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| `doc_id` | `str` | Document identifier of the deliberation. | |
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| `chunk_index` | `int` | Index of the chunk within the same deliberation document. Starting from 1. | |
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| `chunk_xxh64` | `str` | XXH64 hash of the `chunk_text` value. | |
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| `nature` | `str` | Type of act (e.g., deliberation, decision...). | |
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| `status` | `str` | Status of the document (e.g., vigueur, vigueur_diff). | |
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| `nature_delib` | `str` | Specific nature of the deliberation. | |
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| `title` | `str` | Title of the deliberation or decision. | |
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| `full_title` | `str` | Full title of the deliberation or decision. | |
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| `number` | `str` | Official reference number. | |
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| `date` | `str` | Date of publication (format: YYYY-MM-DD). | |
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| `text` | `str` | Raw text content of the chunk extracted from the deliberation or decision | |
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| `chunk_text` | `str` | Formatted text chunk used for embedding (includes title + content). | |
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| `embeddings_bge-m3`| `str` | Embedding vector of `chunk_text` using `BAAI/bge-m3`, stored as JSON string.| |
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--- |
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## 🛠️ Data Processing Methodology |
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### 1. 📥 Field Extraction |
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Data was extracted from the [the dedicated **DILA** open data repository](https://echanges.dila.gouv.fr/OPENDATA/CNIL/). |
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The following transformations were applied: |
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- **Basic fields**: `doc_id` (cid), `title`, `full_title`, `number`, `date`, `nature`, `status`, `nature_delib`, were taken directly from the source XML file. |
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- **Generated fields**: |
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- `chunk_id`: a generated unique identifier combining the `doc_id` and `chunk_index`. |
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- `chunk_index`: is the index of the chunk of a same deliberation document. Each document has an unique `doc_id`. |
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- `chunk_xxh64`: is the xxh64 hash of the `chunk_text` value. It is useful to determine if the `chunk_text` value has changed from a version to another. |
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- **Textual fields**: |
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- `text`: Chunk of the main text content. |
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- `chunk_text`: Combines `title` and the main `text` body to maximize embedding relevance. |
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### 2. ✂️ Text Chunking |
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The value includes the `title` and the textual content chunk `text`. |
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This strategy is designed to improve semantic search for document search use cases on administrative procedures. |
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The Langchain's `RecursiveCharacterTextSplitter` function was used to make these chunks (`text` value). The parameters used are : |
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- `chunk_size` = 1500 (in order to maximize the compability of most LLMs context windows) |
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- `chunk_overlap` = 200 |
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- `length_function` = len |
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### 🧠 3. Embeddings Generation |
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Each `chunk_text` was embedded using the [**`BAAI/bge-m3`**](https://huggingface.co/BAAI/bge-m3) model. The resulting embedding vector is stored in the `embeddings_bge-m3` column as a **string**, but can easily be parsed back into a `list[float]` or NumPy array. |
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## 📌 Embedding Use Notice |
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⚠️ The `embeddings_bge-m3` column is stored as a **stringified list** of floats (e.g., `"[-0.03062629,-0.017049594,...]"`). |
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To use it as a vector, you need to parse it into a list of floats or NumPy array. For example, if you want to load the dataset into a dataframe by using the `datasets` library: |
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```python |
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import pandas as pd |
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import json |
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from datasets import load_dataset |
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# The Pyarrow library must be installed in your Python environment for this example. By doing => pip install pyarrow |
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dataset = load_dataset("AgentPublic/cnil") |
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df = pd.DataFrame(dataset['train']) |
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df["embeddings_bge-m3"] = df["embeddings_bge-m3"].apply(json.loads) |
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``` |
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Otherwise, if you have already downloaded all parquet files from the `data/cnil-latest/` folder : |
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```python |
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import pandas as pd |
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import json |
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# The Pyarrow library must be installed in your Python environment for this example. By doing => pip install pyarrow |
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df = pd.read_parquet(path="cnil-latest/") # Assuming that all parquet files are located into this folder |
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df["embeddings_bge-m3"] = df["embeddings_bge-m3"].apply(json.loads) |
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``` |
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You can then use the dataframe as you wish, such as by inserting the data from the dataframe into the vector database of your choice. |
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## 🐱 GitHub repository : |
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The project MediaTech is open source ! You are free to contribute or see the complete code used to build the dataset by checking the [GitHub repository](https://github.com/etalab-ia/mediatech) |
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## 📚 Source & License |
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### 🔗 Source : |
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- [**DILA** open data repository](https://echanges.dila.gouv.fr/OPENDATA/CNIL) |
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- [Data.gouv.fr : Les délibérations de la CNIL](https://www.data.gouv.fr/datasets/les-deliberations-de-la-cnil/) |
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### 📄 Licence : |
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**Open License (Etalab)** — This dataset is publicly available and can be reused under the conditions of the Etalab open license. |