T-ECD / README.md
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---
license: cc-by-nc-sa-4.0
tags:
- recsys
- e-commerce
- retrieval
- dataset
- ranking
- cross-domain
language:
- ru
- en
size_categories:
- 100B<n<1T
pretty_name: T-ECD
---
# T-ECD: T-Tech E-commerce Cross-Domain Dataset
![image (2)](https://cdn-uploads.huggingface.co/production/uploads/645d4947f5760d1530d55023/t8w2QTQbnH0DhEIbJYCnT.png)
⭐️ **T-ECD** is a large-scale synthetic cross-domain dataset for recommender systems research, created by T-Bank's RecSys R&D team.
It captures real-world e-commerce interaction patterns across multiple domains while ensuring complete anonymity through synthetic generation.
🎯 Overview
T-ECD represents user interactions across five different e-commerce domains within a banking ecosystem:
- **Marketplace** — browsing and interacting with items in an e-commerce marketplace.
- **Retail** — interactions within a retail delivery service, including cart additions and completed orders.
- **Payments** — online and offline financial transactions between users and brands.
- **Offers** — responses to promotional content such as impressions, clicks, and partner transitions.
- **Reviews** — explicit user feedback in the form of ratings and embeddings of textual comments.
**Scale:**
- **~135B** interactions
- ~44M users
- ~30M items
- **1300+ days of temporal coverage**
Additionally, we provide **T-ECD Small** - a compact version containing 1B interactions that excludes the Payments domain.
<div style="font-size: 1.1em;">
| Metric | T-ECD Small | T-ECD Full |
|--------|-------------|------------|
| 🔄 **Interactions** | ~1B | **~135B** |
| 👥 **Users** | ~3.5M | **~44M** |
| 📦 **Items** | ~2.6M | **~30M** |
| 🏪 **Brands** | ~29K | **~1M** |
| 📅 **Temporal Coverage** | 200+ days | **1300+ days** |
| 🌐 **Domains** | 4 (excl. Payments) | **5 (all domains)** |
</div>
<img src="https://cdn-uploads.huggingface.co/production/uploads/645d4947f5760d1530d55023/Y3hHv_cipdq2p4A9jiQoz.png" style="max-width: 80%; height: auto;">
Cross-domain consistency is achieved by aligning identifiers across all domains:
- the same `user_id` always refers to the same individual user, and
- the same `brand_id` always refers to the same brand entity.
This alignment allows researchers to seamlessly link interactions from different services, enabling studies in transfer learning, cross-domain personalization, and multi-task modeling.
<img src="https://cdn-uploads.huggingface.co/production/uploads/645d4947f5760d1530d55023/QG0DavvcvccN1GcN_gRL6.png" style="max-width: 80%; height: auto;">
<img src="https://cdn-uploads.huggingface.co/production/uploads/645d4947f5760d1530d55023/s8a8iC4RmUjsD_hzOVPvD.png" style="max-width: 80%; height: auto;">
---
### 📂 Data Schema
The dataset is stored in **Parquet** format with daily partitions (`{day}`).
The directory structure is as follows:
```
t-ecd/
├── users.pq
├── brands.pq
├── marketplace/
│ ├── events/{day}.pq
│ └── items.pq
├── retail/
│ ├── events/{day}.pq
│ └── items.pq
├── payments/
│ ├── events/{day}.pq
│ └── receipts/{day}.pq
├── offers/
│ ├── events/{day}.pq
│ └── items.pq
└── reviews/{day}.pq
```
#### Data availability
<img src="https://cdn-uploads.huggingface.co/production/uploads/645d4947f5760d1530d55023/c2Clc9bNxL9i7jgGBfBq2.png" style="max-width: 80%; height: auto;" alt="Temporal distribution of events over domains">
*Temporal distribution of events over domains*
In line with real-world industrial environments, domain-specific data availability varies in historical depth.
This reflects practical constraints including data retention policies and product lifecycle stages -
newer e-commerce services naturally have shorter histories compared to established banking domains like payments and transactions.
### ⚙️ Events and Catalogs
- **Events**: Each domain provides logs of user interactions with the following possible columns:
- `action_type` — interaction type (e.g., view, click, add-to-cart, order, transaction).
- `subdomain` — surface where the interaction occurred (recommendations, catalog, search, checkout, campaign); available in Marketplace and Retail.
- `item_id` — present in Marketplace, Retail, and Offers; identifies a specific product or offer.
- `brand_id` — present in all domains; denotes the seller, store, or partner associated with an item, offer, or transaction.
- `price` — represents the monetary value of the interaction.
- `count` — represents the amount of items in single interaction.
- `os` — user operating system, available in Marketplace and Retail.
<img src="https://cdn-uploads.huggingface.co/production/uploads/645d4947f5760d1530d55023/Q7aeb_I-Yf-rcqyPDTOLa.png" style="max-width: 80%; height: auto;" >
- **Item catalogs (`items.pq`)**: Available for Marketplace, Retail, and Offers. Each entry includes:
- `item_id`
- `brand_id`
- category information (if available)
- pretrained embedding (if available)
- **User catalog (`users.pq`)**: Contains anonymized user attributes such as region and socio-demographic cluster.
- **Brand catalog (`brands.pq`)**: Contains `brand_id`, brand-level metadata, and embeddings.
#### 🧾 Special Structures
- **Receipts (`payments/receipts/{day}.pq`)**:
Some transactions include detailed receipts with purchased items, their quantities, and prices.
Items are aligned with Marketplace and Retail catalogs, enabling fine-grained cross-domain linkage at the product level.
- **Reviews (`reviews/{day}.pq`)**:
Provide explicit ratings per brand.
Raw text reviews are not included; instead, we release pretrained text embeddings to preserve privacy while enabling multimodal research.
---
### 🛠️ Data Collection
T-ECD was generated through a multi-step process:
1. **Sampling of event chains**: sequences of interactions were sampled from real logs of T-Bank ecosystem services.
2. **Anonymization**: user and brand identifiers were pseudonymized; sensitive attributes removed.
3. **Synthetic generation**: based on real distributions and event patterns, new synthetic interaction chains were produced, preserving structural properties such as sparsity, heavy tails, cross-domain overlaps, and behavioral contexts.
This process ensures that the dataset is privacy-preserving while remaining representative of industrial recommender system data.
## ⚠️ Important Note on Temporal Data Usage
<img src="https://cdn-uploads.huggingface.co/production/uploads/645d4947f5760d1530d55023/zaPAcuD3CItTzP2PBkErs.png" style="max-width: 80%; height: auto;">
**To prevent data leakage, events from the final 12 hours should not be used for prediction tasks.**
The dataset contains temporal noise that requires maintaining a minimum 12-hour gap between the timestamp of the most recent user event and the prediction timestamp.
This constraint applies to both training and testing scenarios to avoid temporal data leakage.
## Download
#### Basic Download
```python
from huggingface_hub import snapshot_download
snapshot_download(
repo_id="t-tech/T-ECD",
repo_type="dataset",
allow_patterns="dataset/full/",
local_dir="./t_ecd_data",
token="<your_hf_token>"
)
```
#### Selective Download
For advanced usage including selection of domains and date ranges we provide custom downloader [tecd_downloader.py](https://huggingface.co/datasets/t-tech/T-ECD/blob/main/tecd_downloader.py)
Example usage:
```python
from tecd_downloader import download_dataset
download_dataset(
token="<your_hf_token>",
dataset_path="dataset/small",
local_dir="t_ecd_small_partial",
domains=["retail", "marketplace"],
day_begin=1300,
day_end=1308,
max_workers=10
)
```
---
### 🔐 License
This dataset is released under the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License (CC BY-NC-SA 4.0) licence
---