s
someone548

Hamza Jadoon

@someone548

Machine Learning Engineer

Paquistão
Inglês
Algumas informações são exibidas no idioma inglês.
Sobre mim
I am a machine learning engineer with experience in LLM-based solutions, vision-language model fine-tuning, and multimodal KVP detection. I have experience with Python, PyTorch, TensorFlow, and cloud deployment.... Saiba mais

Habilidades

s
someone548
Hamza Jadoon
offline • 
Tempo médio de resposta: 1 hora

Conheça meus serviços

Software e Sites de IA
I will do ai website, ai chatbot, full stack web application frontend backend developer
Data Scraping
I will do web scraping, data scraping, PDF extraction, and data automation in python

Experiência profissional

Machine Learning Engineer

PackageX • Período integral

Nov 2025 - Present6 mos

• Vision-Language Model Fine-tuning: Fine-tuned open-source VLMs (InternVL, Qwen-VL) on logistics document images for end-to-end structured JSON extraction. Constructed supervised training pipeline with image-prompt-JSON triplet datasets; leveraged H100 GPU infrastructure on Vast.ai for distributed training with LoRA/QLoRA parameter-efficient adapters. Implemented instruction-following optimization via supervised fine-tuning (SFT) with contrastive loss objectives to align model outputs with schema-constrained JSON generation • Multimodal KVP Detection: Designed and implemented token-level sequence labeling framework using LayoutLMv3 for automated key-value pair extraction from logistics documents. Conducted comparative analysis between region-based detection (YOLOv8) and vision-language transformer approaches, optimizing for both spatial accuracy and semantic understanding of document context • Agentic Email Processing System: (POC) Architected multi-agent orchestration framework with supervisor-routing mechanism for hierarchical task decomposition. Implemented intent classification layer using prompt-engineered LLM chains with tool-use capabilities, enabling dynamic agent selection for document parsing, text extraction, and structured information retrieval from unstructured email streams • Edge Deployment Pipeline (HP Warehouse): (POC) Developed end-to-end object detection workflow with YOLOv8 for real-time drawer localization in warehouse environments. Implemented post-training quantization using Hailo8 SDK with mixed-precision optimization, achieving inference acceleration while maintaining model fidelity across diverse deployment environments