--- language: - he - en license: apache-2.0 library_name: mamba tags: - mamba2 - moe - hebrew - finance - legal - ssm model_name: HEBATRON base_model: nvidia/NVIDIA-Nemotron-3-Nano-30B-A3B-BF16 pipeline_tag: text-generation --- ![image](https://cdn-uploads.huggingface.co/production/uploads/60a75f5523ce37179774a20b/8kpWOrI4PKXZHu-o9ffG0.png) # 🛡️ HEBATRON: Hebrew-Specialized Mamba2-MoE HEBATRON is a state-of-the-art, high-performance language model specialized for the Hebrew language. Developed through a collaboration between **PwC Israel** and **MAFAT** and **AWS**, it introduces a unique hybrid architecture combining **Mamba2** and **Mixture-of-Experts (MoE)**. ## 🚀 Model Summary HEBATRON is designed to handle the structural and morphological complexities of Hebrew while providing linear scaling for long-context tasks. It is a localized and enhanced version of the **Nemotron-3-Nano-30B** framework, optimized for native-level reasoning in Hebrew and English. --- ## 📂 Technical Specifications | Feature | Specification | | :--- | :--- | | **Model Name** | HEBATRON | | **Architecture** | Hybrid **Mamba2** (SSM) + **Sparse MoE** | | **Total Parameters** | 31.6B | | **Active Parameters** | ~3B per token | | **Context Window** | 65,536 (64k) tokens | | **Hardware** | NVIDIA Blackwell (B300) & H200 GPUs | | **Precision** | FP8 Mixed-Precision | --- ## ⚙️ Deployment Configuration To ensure optimal performance in production, the following environment variables and parameters are recommended for the **vLLM** backend: ### **Inference Engine (vLLM)** * **Port:** `8002` (Default for Model B slot) * **Max Model Length:** `65536` tokens * **GPU Memory Utilization:** Recommended `0.90` - `0.95` for Blackwell/H200. ### **Model Parameters** * **Max New Tokens:** `65536` * **Temperature:** `0.7` (Balanced creativity and precision) * **Top-P:** `0.9` ### **Server Settings** * **Max Simultaneous Comparisons:** `1` (Recommended for 30B+ MoE on single node to maintain latency) * **Chat Context Max Turns:** `10` * **Max Prompt Characters:** `10000` --- ## 🧬 Training Curriculum The model was trained using a three-phase **Curriculum Learning** strategy: 1. **Phase 1: Formal Foundation (75.5B tokens)** Focused on high-quality, structured Hebrew (legal, academic, and literary texts) to establish core grammatical rules. 2. **Phase 2: Colloquial Expansion (3.36B tokens)** Integration of social media, forums, and informal web data to handle slang and modern registers. 3. **Phase 3: Long-Context Extension (20.4B tokens)** Fine-tuning on dense, long-form documents to stabilize the 64k context window. 4. **Alignment:** Supervised Fine-Tuning (SFT) was performed on **2 million samples**, including localized knowledge distillation and the **"Hebrew IFEval"** dataset. --- ## 📊 Performance Evaluation ### Hebrew Reasoning Benchmarks * **SNLI (Semantic Reasoning):** 91.2% accuracy * **Israeli Trivia:** 72.1% (+14pt vs base) * **Hebrew Average Reasoning:** 73.8% (Surpassing DictaLM-3.0-Thinking) * **GSM8K (Math):** 83.3% accuracy in native Hebrew ### English Reasoning Benchmarks * **Psychometric Psi (EN):** 91.6% * **English Reasoning Average:** 86.0% --- ## 🎯 Intended Use & Limitations * **Intended Use:** Advanced Hebrew document analysis, long-context summarization (legal/technical), and complex bilingual reasoning. * **Limitations:** Users should verify outputs for factual accuracy as with any Large Language Model. --- ## 🤝 Credits * **Developed by:** PwC Israel & MAFAT * **MAFAT Lead:** Tal Geva [project Lead], Matan Frank * **Technical Lead:** Sarel Weinberger (PwC Next) * **PwC Israel Team:** Noam Kayzer, Dan Revital, Ori Bar Joseph, Smadar Arvatz, Or Levi, Kate Zinkovskaia, Zevi Apini, Omer Baruch (PwC Next) * **MAFAT Team:** Noam Ordan, Nadav Cordova * **Partners:** Amir Nissan Hacohen (Origin.ai) * **Research Collaborators:** Shaltiel Shmidman (Dicta), Mike Erlihson * **AWS Infrastructures:** Ilouz Netanel