--- license: apache-2.0 language: - en tags: - ecommerce - e-commerce - retail - marketplace - shopping - amazon - ebay - alibaba - google - rakuten - bestbuy - walmart - flipkart - wayfair - shein - target - etsy - shopify - taobao - asos - carrefour - costco - overstock - pretraining - encoder - language-modeling - foundation-model pipeline_tag: fill-mask library_name: transformers datasets: - thebajajra/Ecom-niverse --- # RexBERT-mini [![License: Apache2.0](https://img.shields.io/badge/License-Apache2.0-green.svg)](https://www.apache.org/licenses/LICENSE-2.0) [![Models](https://img.shields.io/badge/🤗%20Hugging%20Face-Models-red)](https://huggingface.co/collections/thebajajra/rexbert-68cc4b1b8a272f6beae5ebb8) [![Data](https://img.shields.io/badge/🤗%20Training%20Data-Ecomniverse-yellow)](https://huggingface.co/datasets/thebajajra/Ecom-niverse) [![GitHub](https://img.shields.io/badge/GitHub-Code-blue)](https://github.com/bajajra/RexBERT) > **TL;DR**: An encoder-only transformer (ModernBERT-style) for **e-commerce** applications, trained in three phases—**Pre-training**, **Context Extension**, and **Decay**—to power product search, attribute extraction, classification, and embeddings use cases. The model has been trained on 2.3T+ tokens along with 350B+ e-commerce-specific tokens --- ## Table of Contents - [Quick Start](#quick-start) - [Intended Uses & Limitations](#intended-uses--limitations) - [Model Description](#model-description) - [Training Recipe](#training-recipe) - [Data Overview](#data-overview) - [Evaluation](#evaluation) - [Usage Examples](#usage-examples) - [Masked language modeling](#1-masked-language-modeling) - [Embeddings / feature extraction](#2-embeddings--feature-extraction) - [Text classification fine-tune](#3-text-classification-fine-tune) - [Model Architecture & Compatibility](#model-architecture--compatibility) - [Efficiency & Deployment Tips](#efficiency--deployment-tips) - [Responsible & Safe Use](#responsible--safe-use) - [License](#license) - [Maintainers & Contact](#maintainers--contact) - [Citation](#citation) --- ## Quick Start ```python import torch from transformers import AutoTokenizer, AutoModel, AutoModelForMaskedLM, pipeline MODEL_ID = "thebajajra/RexBERT-mini" # Tokenizer tok = AutoTokenizer.from_pretrained(MODEL_ID, use_fast=True) # 1) Fill-Mask (if MLM head is present) mlm = pipeline("fill-mask", model=MODEL_ID, tokenizer=tok) print(mlm("These running shoes are great for [MASK] training.")) # 2) Feature extraction (CLS or mean-pooled embeddings) enc = AutoModel.from_pretrained(MODEL_ID) inputs = tok(["wireless mouse", "ergonomic mouse pad"], padding=True, truncation=True, return_tensors="pt") with torch.no_grad(): out = enc(**inputs, output_hidden_states=True) # Mean-pool last hidden state for sentence embeddings emb = (out.last_hidden_state * inputs.attention_mask.unsqueeze(-1)).sum(dim=1) / inputs.attention_mask.sum(dim=1, keepdim=True) ``` --- ## Intended Uses & Limitations **Use cases** - Product & query **retrieval/semantic search** (titles, descriptions, attributes) - **Attribute extraction** / slot filling (brand, color, size, material) - **Classification** (category assignment, unsafe/regulated item filtering, review sentiment) - **Reranking** and **query understanding** (spelling/ASR normalization, acronym expansion) **Out of scope** - Long-form **generation** (use a decoder/seq-to-seq LM instead) - High-stakes decisions without human review (pricing, compliance, safety flags) **Target users** - Search/recs engineers, e-commerce data teams, ML researchers working on domain-specific encoders --- ## Model Description RexBERT-mini is an **encoder-only**, 68M parameter transformer trained with a masked-language-modeling objective and optimized for **e-commerce related text**. The three-phase training curriculum improves general language understanding, extends context handling, and then **specializes** on a very large corpus of commerce data to capture domain-specific terminology and entity distributions. --- ## Training Recipe RexBERT-mini was trained in **three phases**: 1) **Pre-training** General-purpose MLM pre-training on diverse English text for robust linguistic representations. 2) **Context Extension** Continued training with **increased max sequence length** to better handle long product pages, concatenated attribute blocks, multi-turn queries, and facet strings. This preserves prior capabilities while expanding context handling. 3) **Decay on 350B+ e-commerce tokens** Final specialization stage on **350B+ domain-specific tokens** (product catalogs, queries, reviews, taxonomy/attributes). Learning rate and sampling weights are annealed (decayed) to consolidate domain knowledge and stabilize performance on commerce tasks. **Training details (fill in):** - Optimizer / LR schedule: TODO - Effective batch size / steps per phase: TODO - Context lengths per phase (e.g., 512 → 1k/2k): TODO - Tokenizer/vocab: TODO - Hardware & wall-clock: TODO - Checkpoint tags: TODO (e.g., `pretrain`, `ext`, `decay`) --- ## Data Overview - **Dataset:** [Ecom-niverse](https://huggingface.co/datasets/thebajajra/Ecom-niverse) - **Domain mix:** We identified 9 E-commerce overlapping domains which have significant amount of relevant tokens but required filteration. Below is the domain list and their filtered size | Domain | Size (GBs) | |---|---| | Hobby | 114 | | News | 66 | | Health | 66 | | Entertainment | 64 | | Travel | 52 | | Food | 22 | | Automotive | 19 | | Sports | 12 | | Music and Dance | 7 | Additionally, there are 6 more domains which had almost complete overlap and were picked directly out of FineFineWeb. | Domain | Size (GBs) | |---|---| | Fashion | 37 | | Beauty | 37 | | Celebrity | 28 | | Movie | 26 | | Photo | 15 | | Painting | 2 | By focusing on these domains, we narrow the search space to parts of the web data where shopping-related text is likely to appear. However, even within a chosen domain, not every item is actually about buying or selling, many may be informational articles, news, or unrelated discussions. Thus, a more fine-grained filtering within each domain is required to extract only the e-commerce-specific lines. We accomplish this by training lightweight classifiers per domain to distinguish e-commerce context vs. non-e-commerce content. --- ## Evaluation ### Token Classification ![image/png](https://cdn-uploads.huggingface.co/production/uploads/6893dd21467f7d2f5f358a95/DuUWO7SyzxJsN53dOSV60.png) > With 2–3x fewer parameters, RexBERT surpasses the performance of the ModernBERT series. ### Semantic Similarity ![image/png](https://cdn-uploads.huggingface.co/production/uploads/6893dd21467f7d2f5f358a95/CPrf6J1ioUGzr6vohJ4xU.png) > RexBERT models outperform all the models in their parameter/size category. --- ## Usage Examples ### 1) Masked language modeling ```python from transformers import AutoModelForMaskedLM, AutoTokenizer, pipeline m = AutoModelForMaskedLM.from_pretrained("thebajajra/RexBERT-mini") t = AutoTokenizer.from_pretrained("thebajajra/RexBERT-mini") fill = pipeline("fill-mask", model=m, tokenizer=t) fill("Best [MASK] headphones under $100.") ``` ### 2) Embeddings / feature extraction ```python import torch from transformers import AutoTokenizer, AutoModel tok = AutoTokenizer.from_pretrained("thebajajra/RexBERT-mini") enc = AutoModel.from_pretrained("thebajajra/RexBERT-mini") texts = ["nike air zoom pegasus 40", "running shoes pegasus zoom nike"] batch = tok(texts, padding=True, truncation=True, return_tensors="pt") with torch.no_grad(): out = enc(**batch) # Mean-pool last hidden state attn = batch["attention_mask"].unsqueeze(-1) emb = (out.last_hidden_state * attn).sum(1) / attn.sum(1) # Normalize for cosine similarity (recommended for retrieval) emb = torch.nn.functional.normalize(emb, p=2, dim=1) ``` ### 3) Text classification fine-tune ```python from transformers import AutoTokenizer, AutoModelForSequenceClassification, TrainingArguments, Trainer tok = AutoTokenizer.from_pretrained("thebajajra/RexBERT-mini") model = AutoModelForSequenceClassification.from_pretrained("thebajajra/RexBERT-mini", num_labels=NUM_LABELS) # Prepare your Dataset objects: train_ds, val_ds (text→label) args = TrainingArguments( per_device_train_batch_size=32, per_device_eval_batch_size=32, learning_rate=3e-5, num_train_epochs=3, evaluation_strategy="steps", fp16=True, report_to="none", load_best_model_at_end=True, ) trainer = Trainer(model=model, args=args, train_dataset=train_ds, eval_dataset=val_ds, tokenizer=tok) trainer.train() ``` --- ## Model Architecture & Compatibility - **Architecture:** Encoder-only, ModernBERT-style **mini** model. - **Libraries:** Works with **🤗 Transformers**; supports **fill-mask** and **feature-extraction** pipelines. - **Context length:** Increased during the **Context Extension** phase—ensure `max_position_embeddings` in `config.json` matches your desired max length. - **Files:** `config.json`, tokenizer files, and (optionally) heads for MLM or classification. - **Export:** Standard PyTorch weights; you can export ONNX / TorchScript for production if needed. --- ## Responsible & Safe Use - **Biases:** Commerce data can encode brand, price, and region biases; audit downstream classifiers/retrievers for disparate error rates across categories/regions. - **Sensitive content:** Add filters for adult/regulated items; document moderation thresholds if you release classifiers. - **Privacy:** Do not expose PII; ensure training data complies with terms and applicable laws. - **Misuse:** This model is **not** a substitute for legal/compliance review for listings. --- ## License - **License:** `apache-2.0`. --- ## Maintainers & Contact - **Author/maintainer:** [Rahul Bajaj](https://huggingface.co/thebajajra) --- ---