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Hey there, I'm Shaon 👋 💻

AI Engineer | Ex-Lead Data Scientist | Practitioner | Continuous Learner | Active Researcher

Shaon2221

Summary:

  • 🔭 Experienced AI Engineer (3+ years) specializing in Large Language Models, Machine Learning, and Deep Learning Algorithms.
  • 💫 Crafting ethical and explainable LLMs & AI solutions for real-world impact.
  • 🌱 Prioritizing safety, well-being, and responsible innovation.

💻 Tech Stack:

Python Anaconda Apache Spark Flask Keras PyTorch TensorFlow Matplotlib Plotly NumPy Pandas Scipy scikit-learn Docker

🌐 Socials:

Shaon's LinkedIn Shaon's Medium Shaon's Google Scholar DataDiscoveryBD YouTube Shaon Sikder | Twitter Shaon's GitHub Shaon's Facebook Shaon's Website Shaon's Kaggle

Shaon Sikder's Projects

gaph-data-science-blogs icon gaph-data-science-blogs

Jupyter notebooks that support my graph data science blog posts at https://bratanic-tomaz.medium.com/

gpt4free icon gpt4free

The official gpt4free repository | various collection of powerful language models

guardchain icon guardchain

🛡️Build LLM applications safely and reliably🛡️

homemade-machine-learning icon homemade-machine-learning

🤖 Python examples of popular machine learning algorithms with interactive Jupyter demos and math being explained

housing_prediciton icon housing_prediciton

Welcome to Machine Learning Housing Corporation! The first task you are asked to perform is to build a model of housing prices in California using the California cen‐ sus data. This data has metrics such as the population, median income, median hous‐ ing price, and so on for each block group in California. Block groups are the smallest geographical unit for which the US Census Bureau publishes sample data (a block group typically has a population of 600 to 3,000 people). We will just call them “dis‐ tricts” for short. Your model should learn from this data and be able to predict the median housing price in any district, given all the other metrics.

jupyter-text2code icon jupyter-text2code

A proof-of-concept jupyter extension which converts english queries into relevant python code

llama-gpt icon llama-gpt

A self-hosted, offline, ChatGPT-like chatbot. Powered by Llama 2. 100% private, with no data leaving your device. New: Code Llama support!

llama2-medical-chatbot icon llama2-medical-chatbot

This is a medical bot built using Llama2 and Sentence Transformers. The bot is powered by Langchain and Chainlit. The bot runs on a decent CPU machine with a minimum of 16GB of RAM.

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