Note: This is an experimental model.
EpistemeAI/ReasoningCore-Llama-3.2-3B-r1
ReasoningCore-Llama-3.2-3B-r1 is a multilingual, reasoningโenhanced large language model developed by EpitemeAI. Pretrained on vast amounts of publicly available data and instructionโtuned to excel at nuanced reasoning, dialogue management, retrieval, and summarization tasks, it often outperforms many current open source and proprietary conversational models on a range of industry benchmarks. Fine tuned with reasoning dataset. It has resolve Math-500 problems very well. It is fine tuned with innovative system thinking. The system has own build in thinking logic,
Model Information
- Model Developer: EpitemeAI
- Model Architecture:
ReasoningCoreโ3B is an autoโregressive language model built on an optimized transformer architecture. It incorporates specialized reasoning pathways and has been fineโtuned using Group Robust Preference Optimization(GRPO), and both supervised learning and reinforcement learning with human feedback (RLHF) to align with human expectations for clarity, accuracy, and safety in complex tasks.
Training Data | Params | Input Modalities | Output Modalities | Context Length | GQA | Shared Embeddings | Token Count | Knowledge Cutoff | |
---|---|---|---|---|---|---|---|---|---|
ReasoningCoreโ3B (text only) | A new mix of publicly available online data. | 3B | Multilingual Text | Multilingual Text and code | 128k | Yes | Yes | Up to 9T tokens | December 2023 |
- Supported Languages:
Officially supports English, German, French, Italian, Portuguese, Hindi, Spanish, and Thai. While the pretraining included a broader range of languages, additional languages can be fineโtuned in compliance with the community license and acceptable use policies. - Model Release Date: Feburary 2025
- Status: Static model trained on an offline dataset. Future iterations may further enhance its reasoning capabilities and safety features.
- License: Use is governed by the Llama 3.2 Community License (a custom, commercial license agreement).
- Feedback: For questions or comments, please refer to the GitHub repository README or follow the linked instructions.
Intended Use
Use Cases
- Conversational AI: Assistantโlike interactions.
- Knowledge Retrieval & Summarization: Dynamic extraction and condensation of information.
- Mobile AIโPowered Writing Assistants: Query reformulation and natural language generation.
- General Natural Language Generation: Any application that benefits from advanced reasoning abilities.
Out of Scope
- Deployments that violate applicable laws or trade compliance regulations.
- Use cases that conflict with the Acceptable Use Policy or licensing terms.
- Deployments in languages not explicitly supported (unless additional safety and performance validations are performed).
How to Use
ReasoningCoreโ3B can be integrated using popular machine learning frameworks. Two primary methods are provided:
Use with Transformers
Ensure you have transformers version 4.43.0 or later installed:
pip install --upgrade transformers
import torch
from transformers import pipeline
model_id = "EpistemeAI/ReasoningCore-Llama-3.2-3B-r1-V1.2"
pipe = pipeline(
"text-generation",
model=model_id,
torch_dtype=torch.bfloat16,
device_map="auto"
)
print(pipe("What is larger 9.9 or 9.11? Use nested <think> tags."))
For Mathematical problems
Please use "Please reason step by step, and put your final answer within \boxed{}" in system prompt
Responsibility & Safety
Responsible Deployment
Approach:
- ReasoningCoreโ3B is a foundational technology that includes builtโin safety guardrails. Developers are encouraged to integrate additional safeguards tailored to their specific applications.
SystemโLevel Safety:
- The model is designed to be deployed as part of a broader system that implements safety measures (e.g., Prompt Guard, Code Shield) to ensure outputs remain safe even under adversarial conditions.
Safety FineโTuning & Data Strategy
Objectives:
- Provide a reliable tool for building secure and helpful reasoning systems.
- Mitigate adversarial misuse through advanced data selection and response optimization techniques.
Methodology:
- Incorporate adversarial prompts during training to refine model refusals and response tone.
- Combine humanโcurated data with synthetic data.
- Utilize iterative fineโtuning using supervised learning, rejection sampling, and preference optimization.
Evaluations and Red Teaming
Scaled Evaluations:
- Dedicated adversarial datasets were used to rigorously test the modelโs robustness. Developers should perform contextโspecific evaluations.
Red Teaming:
- Experts in cybersecurity, adversarial machine learning, and responsible AI conducted recurring red team exercises to identify vulnerabilities and improve both performance and safety.
Critical Risk Mitigations
CBRNE:
The model has been evaluated to ensure it does not enhance capabilities for harmful activities involving chemical, biological, radiological, nuclear, or explosive materials.Child Safety:
Expert assessments were conducted to evaluate and mitigate potential child safety risks.Cyber Attacks:
Measures were taken to ensure the model cannot autonomously facilitate cyberโoffensive operations.
Ethical Considerations and Limitations
Core Values:
- ReasoningCoreโ3B is built on the values of openness, inclusivity, and helpfulness. It is designed to respect user autonomy and foster free thought and expression while mitigating potential harm.
Testing and Limitations:
- Despite extensive testing across diverse scenarios, the model may occasionally produce inaccurate, biased, or objectionable outputs. Developers must perform additional safety testing and integrate further safeguards as needed.
Resources for Safe Deployment, with Meta Safety Deployment:
ReasoningCoreโ3B represents a significant advancement in multilingual, reasoningโenhanced language models. Optimized for tasks requiring deep reasoning, contextual understanding, and safe, helpful interactions, it offers a powerful tool for both commercial and research applications. We invite developers and researchers to explore its capabilities and contribute to building secure, innovative AI systems.
For further details, questions, or feedback, please email [email protected]
Uploaded model
- Developed by: EpistemeAI
- License: apache-2.0
- Finetuned from model : EpistemeAI/ReasoningCore-Llama-3.2-3B-r1-V1.1
This llama model was trained 2x faster with Unsloth and Huggingface's TRL library.
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