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@vanshikwaghela

Vanshik Waghela

@vanshikwaghela

Skill iconPython
Skill iconC++
Machine Learning
Deep Learning
Computer Vision

Growth & AIML intern, Yocket

Mumbai, India

I am deeply passionate about the dynamic realms of Machine Learning and Artificial Intelligence, constantly fueled by
my unwavering dedication to the ever-evolving landscape of Data Science. My fascination with technology and
innovation drives me to explore the limitless possibilities these fields have to offer. I am committed to an ongoing
journey of learning and experiencing the transformative potential of technology.

Recent Projects:
Project Title: Gemini Pro API Integration for Chatbots and Multimodal Applications

Description:
Integrated the newly released Gemini Pro API with LangChain to develop advanced chatbots and multimodal applications. Leveraged the RAG (Retrieval-Augmented Generation) pipeline for enhanced conversational experiences.

Key Contributions:

  • Implemented Gemini Pro API functionalities within LangChain framework to enable seamless communication and data exchange.
  • Developed chatbot modules incorporating multimodal capabilities, allowing users to interact through text and image inputs.
  • Designed and implemented RAG pipeline to enhance conversational responses by retrieving relevant information from diverse sources.

Technologies Used:

  • Gemini Pro API
  • LangChain
  • RAG Pipeline

Achievements:

  • Successfully integrated Gemini Pro API, expanding the capabilities of LangChain-powered applications.
  • Received positive feedback from users for the improved conversational experiences and multimodal interactions.

Project Title: YouTube Video to Notes Converter

Description:
Developed a web application using Streamlit to convert YouTube video transcripts into summarized notes. Leveraged Google's generative AI model to generate concise notes from the video transcript.

Features:

Extracts transcript from YouTube videos.
Generates summarized notes from the transcript.
Converts notes into downloadable PDF format.