m
md_naim_mia

Naim

@md_naim_mia
5,0(1)

AI Research Engineer

Bangladesch
Englisch, Bengalisch
Einige Informationen werden in englischer Sprache angezeigt.
Über mich
Hi, I’m Naim. I am an AI Research Engineer bridging the gap between complex research and real-world software. My work on Drone-Assisted AI was recently accepted at the IEOM Conference. I don't just train models; I build deployable systems. My Expertise: 1. Computer Vision: Real-time Face Recognition, YOLO, InsightFace, YuNet, DeepSORT & Edge AI. 2. Generative AI: Privacy-first Local LLMs (RAG) & Chatbots. 3. Full-Stack AI: From Python scripts to interactive Streamlit dashboards. If you need robust, research-grade AI solutions—not just basic scripts—let’s connect.... Mehr lesen

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md_naim_mia
Naim
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Durchschnittliche Antwortzeit: 1 Stunde

Meine Dienstleistungen

Entwicklung von KI-Chatbots
I will build a generative ai rag app using local llms and streamlit
5,0(1)
KI-Websites & -Software
I will develop custom computer vision and object detection in python for real world use

Arbeitserfahrung

Portfolio Project

Selbstständig • 5 mos

Lead AI & Computer Vision Engineer

Sep 2025 - Dec 20253 mos

Architected "Advanced Security & Attendance Ecosystem": A Real-Time Computer Vision Suite I designed a production-grade surveillance and management system aimed at automating physical security, identity management, and HR operations. This full-stack application integrates state-of-the-art computer vision models with complex backend logic. What I Built: Dynamic Real-Time Recognition: Developed 'Verify Mode' (Face/QR/RFID) and 'Watch Mode' (YOLO+DeepSORT). Engineered a dynamic update engine where transferring IDs between tabs (e.g., Unknown → Personnel) results in instant recognition updates across live cameras without system downtime. Smart Vault & History Recovery: Built a robust Identity Vault system capable of restoring deleted users. The system automatically retrieves and re-links complete historical data (attendance logs, previous metadata) from the vault upon recovery, ensuring zero data loss. Automated Operations Engine: Engineered complex backend logic for Smart Payroll (calculating Net Pay/OT/Fines) and included 'Manual Override' tools for admins to correct incomplete attendance logs with audit trails. Proactive Threat Intelligence: Integrated an SMTP alert system that triggers instant emails with high-res snapshot evidence when "Suspicious" blacklist targets or "Unknown" faces are detected in restricted zones. System Health & Analytics: Designed a live dashboard monitoring Hardware stats (CPU/FPS) and implemented an Auto Daily Digest that compiles and emails a comprehensive summary of daily logs at a scheduled time. Project Verdict: This ecosystem bridges the gap between raw AI models and actionable business logic. It demonstrates my ability to build end-to-end secure systems where real-time biometric tracking seamlessly integrates with GDPR-compliant data management and automated HR workflows.

AI Engineer (RAG & Local LLMs)

Jul 2025 - Sep 20252 mos

Engineered "Smart Document Analyst": An Offline AI for Secure Document Intelligence I architected a production-ready, privacy-first RAG application designed for high-stakes analysis without cloud dependencies. Unlike standard wrappers, this system runs 100% offline on consumer hardware (Intel i5/12GB RAM), ensuring zero data leakage for sensitive legal or research documents. What I Built & Optimized: Resource-Efficient Architecture: Successfully deployed Mistral-7B-Instruct-v0.1 (Q5_K_M) for reasoning and all-MiniLM-L6-v2 for semantic retrieval. Optimized the entire pipeline to function smoothly on limited hardware without requiring high-end GPUs. Hallucination-Free Q&A: Implemented a strict "retrieval-only" mechanism where the AI answers solely based on provided documents, supporting every claim with verifiable inline page citations. Smart Analysis & Translation: Deep Reasoning Engine: Engineered a multi-step "Chain-of-Thought" logic for Novelty Detection and Critical Reviews. This allows the AI to "think" in stages before generating an output, ensuring human-level analytical depth. Offline Translation: Integrated M2M100-418M to provide secure translations across 10+ languages directly within the analysis pipeline. Rigorous "LLM-as-a-Judge" Audit: I subjected the system to a transparent audit by ChatGPT-5 and Gemini 2.5 Pro. The verdict? It achieved 9.0/10 in Q&A Accuracy and 9.2/10 in Critical Review, validating that optimized local models can rival cloud APIs. Performance Note: Please note that inference speed is limited as the system runs entirely on a local CPU (Intel i5) to guarantee 100% air-gapped privacy. While slower than GPU-based cloud APIs, this architectural trade-off ensures zero data leakage while maintaining deep, multi-step analytical precision.

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    chantalsara

    CH

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    5

    I hired Naim to build a local knowledge base (RAG) for my business, and working with him has been an outstanding experience. From the very beginning, his communication was clear, professional, and always timely. He was consistently available, asked the right questions, and made sure he fully understood...

    400 $-600 $

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    Entwicklung von KI-Chatbots

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