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Muhammad Ahad Hassan Khan

NUST · 2026
Email
ahadhassankhakwani@gmail.com
Phone
03156186222
LinkedIn
https://www.linkedin.com/in/muhammad-ahad-hassan-khan-57051a24b/
GitHub

Academic

Program
BSCS
CGPA
3.57
Year
2026
Education
SEECS
Address
Multan, Pakistan
DOB

Career

Current role
Target role
Skills
Machine Learning, Computer Vision, LLM-based systems, AI Pipelines, Model Design, Dataset Preparation, Deployment, Precision Agriculture, Real-time Analytics, Policy-aware Information Systems, Multispectral Vision, Retrieval-Augmented Generation (RAG), Generative Models, BlenderProc, Diffusion Models, Stable Diffusion, LoRA, DreamBooth, Fine-tuning, ALPR, YOLOv11, NVIDIA DeepStream, LangChain, Streamlit, Stereo Depth Estimation, Epipolar Geometry, KITTI Dataset, Multi-agent LLM Workflows, LangGraph, AWS, Cloud-based AI Pipelines, Agri-Drone Vision Pipeline, Crop Localization, Growth Stage Prediction, RGB Imagery, Multispectral Imagery, Ultralytics YOLOv11, RGB+NDVI Input, Multi-task Learning, Maturity Estimation, UNet, CNN, NDVI Estimation, FastAPI, GSNR Prediction, Optical Network Performance Modeling, Regression, Tree-based Methods, Neural Networks, Regularization, Grid Search, Early Stopping, Dropout, Transfer Learning, Active Learning, Knowledge Distillation, Model Compression, Federated Learning, Explainable AI, SHAP, LIME, PDP, Feature Importance
Interests / quote
I am a Computer Science undergraduate at NUST with strong research and applied experience in machine learning, computer vision, and LLM-based systems. My work spans end-to-end AI pipelines, including model design, dataset preparation, rigorous evaluation, and deployment, with applications in precision agriculture, real-time analytics, and policy-aware information systems. I have contributed to research projects involving multispectral vision, retrieval-augmented generation, and generative models, and I am particularly interested in developing reliable, interpretable, and scalable AI systems for real-world use. I aim to continue learning, enhance my technical skills, collaborate on impactful projects, and build robust, industry-ready AI systems, while also pursuing graduate studies to deepen my knowledge and expertise in artificial intelligence and computer science.

Verbatim text

The exact text the LLM saw on the page (or the booklet text from the old import). This is what powers semantic search.
Muhammad Ahad Hassan Khan
Cell: 03156186222 |  Email: ahadhassankhakwani@gmail.com
LinkedIn: https://www.linkedin.com/in/muhammad-ahad-hassan-khan-57051a24b/
Address: , Khayaban-e-abid, multan public school road, opposite dha main office, , Multan , Pakistan
PROFESSIONAL PROFILE
I am a Computer Science undergraduate at NUST with strong research and applied experience in machine learning, computer vision,
and LLM-based systems. My work spans end-to-end AI pipelines, including model design, dataset preparation, rigorous evaluation,
and deployment, with applications in precision agriculture, real-time analytics, and policy-aware information systems. I have
contributed to research projects involving multispectral vision, retrieval-augmented generation, and generative models, and I am
particularly interested in developing reliable, interpretable, and scalable AI systems for real-world use. I aim to continue learning,
enhance my technical skills, collaborate on impactful projects, and build robust, industry-ready AI systems, while also pursuing
graduate studies to deepen my knowledge and expertise in artificial intelligence and computer science.
EDUCATION
Computer Science
SEECS , Islamabad , 3.57 (2026)
INTERNSHIP EXPERIENCE
Siber Koza - CENTAIC (Centre of Artificial Intelligence and Computing)
23-Jun-2025 - 23-Aug-2025
Computer Vision & NLP Intern, Siber Koza — CENTAIC, NUST Gained hands-on experience across computer vision, generative AI,
and NLP systems through applied research and prototyping. Worked with synthetic data generation using BlenderProc, explored
diffusion models including Stable Diffusion with LoRA/DreamBooth fine-tuning, and designed an ALPR system for Pakistani license
plates using YOLOv11 optimized with NVIDIA DeepStream for real-time analytics. Built retrieval-augmented generation (RAG)
applications using LangChain and Streamlit for structured and unstructured data, and implemented stereo depth estimation using
epipolar geometry on the KITTI dataset. Developed multi-agent LLM workflows using LangGraph and gained practical exposure to
cloud-based AI pipelines on AWS.
School of Electrical Engineering & Computer Science - SEECS
20-Mar-2025 - 19-Jun-2025
Research Assistant (Computer Vision), Agri-Drone Project — SEECS, NUST Worked on an end-to-end agri-drone vision pipeline for
crop localization and growth stage prediction using RGB and multispectral imagery. Modified the Ultralytics YOLOv11 framework to
support 4-channel RGB+NDVI input and multi-task learning, enabling simultaneous crop detection and maturity estimation.
Developed a UNet-based CNN to approximate NDVI from RGB drone images and validated it against multispectral ground truth. Led
dataset annotation and preprocessing for 1,500+ drone images, including multispectral band alignment and expert-verified growth
stage labeling. Deployed a real-time inference pipeline via a FastAPI service integrating NDVI estimation, detection and
visualization, optimized for efficient deployment.
Optical Networks & Technologies Lab - NUST
10-Jun-2024 - 03-Sep-2024
Deep Learning Intern, Optical Networks and Technologies Lab — SEECS, NUST Conducted applied research in supervised and
deep learning for optical network performance modeling. Developed GSNR prediction models using regression, tree-based methods,
and neural networks, optimized through regularization, grid search, early stopping, and dropout. Applied transfer learning across
geographically distinct datasets and leveraged active learning to reduce labeling costs. Implemented knowledge distillation for
efficient model compression and explored federated learning for privacy-preserving training across distributed data sources.
Employed explainable AI techniques (SHAP, LIME, PDP) to interpret model behavior and analyze feature importance, strengthening
experimental rigor and evaluation practices.

AI enrichment

Muhammad Ahad Hassan Khan is a Computer Science undergraduate at NUST with a 3.57 CGPA, specializing in machine learning, computer vision, and LLM-based systems. He has gained practical experience through internships and research roles involving model design, dataset preparation, and deployment for applications in agriculture and real-time analytics.
Skills (AI)
["Computer Vision", "Machine Learning", "Deep Learning", "Natural Language Processing", "LLM-based Systems", "RAG", "YOLOv11", "Stable Diffusion", "LangChain", "AWS", "FastAPI", "PyTorch", "Data Annotation", "Model Deployment"]
Status: ai_done
Provenance
Source file: SEECS - Computer Science-2026.pdf
From job #258 page 52
Created: 1778167261