Summary
Overview
Education
Work History
Projects
Skills
Certification
Contact
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Muhammad Owais

Muhammad Owais

Karachi,Sindh

Summary

I'm a recent graduate in Artificial Intelligence with a strong foundation in machine learning, deep learning, and data science. I'm eager to leverage my skills and knowledge to solve real-world problems and make a meaningful impact.

Respectful self-motivator gifted at finding reliable solutions for software issues. Experienced in data analysis and model development and offering skills in Python and TensorFlow. Fluent in English and accustomed to working with cross-cultural, global teams.

Hardworking and passionate job seeker with strong organizational skills eager to secure an entry-level Data Scientist position. Ready to help the team achieve company goals.

Overview

3
3

Python Experience (years)

2
2

Machine Learning Experience (years)

Education

Bachelor of Science - Artificial Intelligence

Ghulam Ishaq Khan Institute of Engineering Science
Topi, Swabi.
09.2020 - 07.2024

Work History

Intern

HQ Pak Civil Aviation Authority (PCAA), IT Dept
Karachi, Sindh
06.2023 - 07.2023

Developed Python-based automated system to download and organize email attachments from Microsoft Outlook. System retrieves emails, downloads attachments, and sorts them into folders based on file types. Implemented logging for attachment tracking and integrated solution to run as background process with system tray notifications. (available on my GitHub)

Technologies Used: Python, pandas, win32com.client, openpyxl.


Gained valuable experience working within specific industry, applying learned concepts directly into relevant work situations.
Contributed to positive team environment by collaborating with fellow interns on group projects and presentations.

Projects

LegalBot FYP RAG: Developed a Legal AI chatbot as a final year project, designed to assist users with legal queries by providing relevant legal information and documents. Implemented Retrieval-Augmented Generation (RAG) using OpenAI's GPT model to enhance the chatbot's ability to provide accurate and contextually relevant responses. Optimized the chatbot for better user experience by incorporating NLP techniques for intent recognition and response generation. Also worked with hugging face and lamma on prototypes.

  • Technologies Used: Python, GPT, OpenAI API, RAG, NLP, Pandas.

Customer Churn Prediction: Developed a predictive model to identify customer churn using the "Telco Customer Churn" dataset from Kaggle. The project involved data cleaning, handling missing values, and encoding categorical variables. I engineered features and selected the most relevant ones using RFE and ensemble model importance. Various models were tested, with LightGBM achieving the best results (precision: 65%, recall: 55%, AUC: 0.85). The final model was deployed in a Streamlit app for interactive churn predictions.

  • Technologies used: Python, Pandas, Scikit-learn, LightGBM, SHAP, and Streamlit.

Deep Learning for Medical Image Processing (MIP): Developed advanced deep learning models to analyze and interpret medical images for early detection and diagnosis. The project involved designing and implementing Convolutional Neural Networks (CNNs) to classify and segment medical images, with a focus on enhancing diagnostic accuracy. Conducted a comprehensive review of deep learning techniques in medical imaging and contributed to optimizing algorithms for improved performance in clinical settings.

  • Technologies Used: Python, TensorFlow, Keras, OpenCV.

Malaria Detection Using Faster R-CNN: Developed a machine learning model to detect malaria from blood smear images using Faster R-CNN. The project included data preprocessing, exploratory data analysis (EDA), model training, and prediction. Implemented Faster R-CNN for accurate detection and classification of malaria-infected cells, enhancing diagnostic accuracy.

  • Technologies Used: Python, TensorFlow, Keras, Pandas, NumPy, Matplotlib, OpenCV

Natural Language Processing (NLP): Engaged in multiple NLP projects focusing on text preprocessing, vectorization, sentiment analysis, and text classification. Developed and implemented various models and techniques using Python to process and analyze large datasets of text. Conducted experiments with different algorithms for tasks such as named entity recognition (NER) and text normalization, enhancing the understanding and application of NLP in real-world scenarios.

  • Technologies Used: Python, NLTK, SpaCy, Scikit-learn, TensorFlow, Pandas, NumPy.

Internship Project:

  • Developed a Python-based automated system to download and organize email attachments from Microsoft Outlook. The system retrieves emails, downloads attachments, and sorts them into folders based on file types.
  • Implemented logging for attachment tracking and integrated the solution to run as a background process with system tray notifications.

Technologies Used: Python, pandas, win32com.client, openpyxl

all above mentioned projects are available on given GitHub Repository. (https://github.com/MuhammadOwais02)

Skills

  • Programming Languages: Python, C/C
  • Machine Learning Libraries: TensorFlow, Keras, Scikit-learn, LightGBM
  • Data Manipulation and Visualization: Pandas, NumPy, Matplotlib, Seaborn
  • Deep Learning & AI: , NLP, LangChain, RAG, Exploratory Data Analysis
  • Tools & Platforms: Git, Streamlit, OpenCV, Linux

Certification

  • Machine Learning Specialization - Coursera (KJPRKQDM9LDP)
  • Unsupervised Learning, Reinforcement Learning - Coursera (M3SBNPUE2EAW)
  • Supervised Machine Learning: Regression and Classification - Coursera (NRUGSN47DV5A)
  • Advanced Learning Algorithms - Coursera (ME4547UFA2A3)
  • Google Advanced Data Analytics Specialization – Coursera (H5MD8HGJ1ZWZ)

Contact

+923202057469

owais.sajid002@gmail.com

Muhammad Owais