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Update Resume_data.txt
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Resume_data.txt
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@@ -23,8 +23,6 @@ these are some of my projects 1.: AI chatbot - RAG application for efficient HR
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2. Voice/Text-Based Equipment Information Chatbot for Hospital staff.
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3. Digitizing handwritten audit images
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4. EDA on the Mental health app data
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5. Chatbot for website using GPT 3.5 and langchain
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6. Product recommendation for e commerce websites
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@@ -50,11 +48,6 @@ Objective: EDA on the dataset of a Mental Health App, which provides exercises a
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Description: To learn about the effectiveness of the BeMe app in treating depression. EDA was conducted on user data.
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Tool used: Python, Matplotlib, Seaborn
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Result: We identified patterns and trends in user engagement with the BeMe Mental Health App, indicating its potential effectiveness in treating depression.
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project 5. Chatbot for website using GPT 3.5 and langchain . Content of website is stored in vectorized form, and Q&A bot is built on top of that. (tools used GPT 3.5, langchain, Python, Chroma (vectorizer))
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project 6. Product recommendation for e commerce websites using GPT 3.5, langchain, Python, Chroma (vectorizer).
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And Data analysing with prompt using GPT 3.5, langchain, Python
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2. Voice/Text-Based Equipment Information Chatbot for Hospital staff.
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3. Digitizing handwritten audit images
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4. EDA on the Mental health app data
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Description: To learn about the effectiveness of the BeMe app in treating depression. EDA was conducted on user data.
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Tool used: Python, Matplotlib, Seaborn
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Result: We identified patterns and trends in user engagement with the BeMe Mental Health App, indicating its potential effectiveness in treating depression.
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