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---
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# π©Ί Recurv AI
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> We are Revolutionizing Healthcare with AI and Machine Learning.
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π¬ **Focus Area**: Medical AI, Healthcare Innovations, Clinical NLP, Imaging Diagnostics, and Personalized Medicine.
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---
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## π **About Us**
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Recurv AI is dedicated to advancing the healthcare industry through cutting-edge artificial intelligence. Our mission is to empower clinicians, researchers, and patients by developing robust AI models that enhance diagnostics, streamline workflows, and improve patient outcomes.
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---
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## π‘ **Key Projects**
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### π©Ί **Recurv-Medical-Dataset**
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- **Description**: A comprehensive dataset comprising question-and-answer pairs from the anamnesis process.
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- **Purpose**:
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- To support the development of AI systems capable of understanding and generating context-aware responses during patient interviews.
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- To serve as a resource for training and evaluating medical NLP models.
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- **Features**:
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- Focused on real-world medical scenarios.
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- Structured to ensure data quality and relevance.
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### π€ **Recurv-Medical-Llama**
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- **Description**: A fine-tuned version of Llama 3, trained using the Recurv-Medical-Dataset.
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- **Purpose**:
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- To provide state-of-the-art conversational AI for the medical field.
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- To assist healthcare professionals by generating accurate, context-aware responses during anamnesis and diagnostic processes.
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- **Capabilities**:
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- Medical question answering.
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- Contextual reasoning and patient-specific suggestions.
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- Support for multi-turn conversations.
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---
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## π οΈ **Our Tools & Technologies**
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- Hugging Face Transformers: NLP models tailored for clinical and biomedical text.
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- PyTorch and TensorFlow: Building and training state-of-the-art AI models.
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- DICOM Processing: Specialized libraries for medical imaging workflows.
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---
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## π’ **Get Involved**
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- **Join Us**: We're always looking for collaborators and researchers!
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- **Follow**: Stay updated on our [Twitter](https://twitter.com/recurvai)
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---
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## π€ **Contact Us**
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π§ Email: [contact@recurvai.org](mailto:contact@recurvai.org)
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π Website: [recurvai.org](https://recurvai.org)
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---
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Powered by Hugging Face π
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