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ankitagr01/README.md

Hi there 👋

About Me

I'm Ankit, an Applied Scientist (Generative AI) at SUMM AI, Munich, specializing in Large Language Models (LLMs) and Diffusion Image Models. I’m passionate about building scalable AI solutions, tackling real-world challenges, and pushing the boundaries of Generative AI and advanced ML techniques.

🔹 Core Interests & Expertise

  • Generative AI – Large Language Models (LLMs), Diffusion Models
  • Multimodal AI – Text, image, and video models
  • Model Optimization – Enhancing training and inference efficiency
  • MLOps & Deployment – Scalable AI solutions using Azure ML, MLflow, and cloud services, with a focus on clean and maintainable code
  • Research & Innovation – Implementing state-of-the-art models and cutting-edge AI advancements
  • Analytical & Strategic Thinking – Model evaluation, performance tuning, and optimizing AI workflows

Always open to collaboration—feel free to connect! Reach me at ankitagr.nitb@gmail.com or +49-152-58484978.

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GitHub Stats

Ankit's Programming Language Stats Ankit's GitHub Stats

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  1. llm_topic_modeling Public

    Topic Modeling using fintuned LLMs

    Jupyter Notebook

  2. SUMM-AI-Github/easy-language-images Public

    AI images for easy language texts.

    Jupyter Notebook 2

  3. LLM_RAG_Retrieval_Augmented_Generation Public

    All projects, research and latest implementations related to Retrieval Augment Generation (RAG) for Large Language Models (LLM).

  4. image_retrieval Public

    Image Retrieval System by training SwinV2 Transformer model with triplet loss, leveraging Faiss‐ GPU for indexing‐based cosine similarity search for 8.5x fast image search and retrieval.

    Python 2

  5. Open_Domain_Question_Answering Public

    NLP project to implement a Deep Neural Question Answering System utilizing Knowledge Graphs and Wikipedia Corpus

    Python 2

  6. akshayjoshii/Statistical-NLP-Information-Retrieval-Project Public

    Multi-stage Informational Retrieval & Ranking System developed as part of Statistical Natural Language Processing coursework

    Python 2 1