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![image/png](https://cdn-uploads.huggingface.co/production/uploads/68205a944ab07873c714ab38/7j7jBsq0R9s9Zp_6el5UR.png)
# Welcome to My Hugging Face AI Hub
Hello! I'm a **DevOps + Full Stack Engineer** with a deep passion and expertise in **Artificial Intelligence**. This repository is my central hub on [Hugging Face](https://huggingface.co/) β€” a platform I use to explore, deploy, and scale AI models, datasets, and applications.
---
## πŸš€ About Hugging Face

**Hugging Face** is the leading open platform for sharing machine learning models, datasets, and interactive applications.

It offers:

- **πŸ€— Transformers**: Pretrained state-of-the-art models for NLP, vision, audio, and more.
- **πŸ“Š Datasets**: Thousands of curated, ready-to-use datasets.
- **πŸ§ͺ Spaces**: Deploy interactive demos using Gradio, Streamlit, or custom UIs.
- **πŸ€– Model Hub**: Browse and publish AI models.
- **πŸ” Inference API**: Hosted model inference at scale.
- **πŸ› οΈ AutoTrain**: Low-code training and fine-tuning platform.
- **πŸ“‘ Hub API**: CLI and Python SDK for seamless DevOps integration.

---

## βš™οΈ DevOps + Full Stack Meets Hugging Face

As a developer and MLOps enthusiast, I leverage Hugging Face for:

- **CI/CD integration** with model versioning and deployment workflows.
- **Custom Spaces** to prototype and launch AI apps using Gradio or React + FastAPI.
- **Scalable Inference** using Hugging Face Inference Endpoints or local Dockerized APIs.
- **Monitoring & Observability** of deployed models.
- **Custom Datasets + Preprocessing** pipelines using `datasets` and `datasets.load_dataset`.

---

## πŸ”§ Tools & Stack I Work With

- **DevOps**: GitHub Actions, Docker, Terraform, AWS, Kubernetes
- **Full Stack**: React, Next.js, FastAPI, Flask, Node.js
- **AI/ML**: PyTorch, Transformers, LangChain, OpenAI API, Weights & Biases
- **Hugging Face Libraries**: `transformers`, `datasets`, `accelerate`, `evaluate`

---

## πŸ“š Learning Resources

Here’s where I recommend starting with Hugging Face:

- [Hugging Face Course](https://huggingface.co/course) – Free course for all experience levels.
- [Transformers Docs](https://huggingface.co/docs/transformers)
- [Spaces Guide](https://huggingface.co/docs/hub/spaces)
- [AutoTrain](https://huggingface.co/autotrain) – Train and fine-tune models in minutes.
- [Inference API](https://huggingface.co/inference-api) – Deploy models without backend setup.

---

## 🧠 Featured Projects

| Project | Description | Tech Stack |
|--------|-------------|------------|
| `TextGPT-AI` | ChatGPT-style chatbot powered by Transformers | FastAPI, Transformers, Gradio |
| `VisionDemo` | Real-time image classification using ViT | Streamlit, PyTorch, Hugging Face |
| `LangChainGPT` | Document Q&A app with Hugging Face and LangChain | LangChain, Transformers, ChromaDB |

---

## 🀝 Let's Collaborate

If you're building something cool with Hugging Face, AI, or dev tooling β€” I'd love to connect!

- **GitHub**: [github.com/yourhandle](https://github.com/yourhandle)
- **LinkedIn**: [linkedin.com/in/yourprofile](https://linkedin.com/in/yourprofile)
- **Email**: [youremail@domain.com](mailto:youremail@domain.com)

> *β€œOpen-source AI is the new full stack β€” from model to UX to deployment.”*

---

Thanks for stopping by!  
Stay tuned for more open-source projects and tutorials.