المشاريع الواعدة

تتضمن هذه الصفحة قائمة بالمشاريع المعتمدة رسميًا ضمن البطولة، وتُتاح للاطلاع من قبل الشركات والمؤسسات وحاضنات الأعمال بهدف دراسة فرص الاحتضان أو الدعم أو الشراكة.

للاهتمام بالاحتضان أو التعاون: يمكن التواصل مع المشرف أو أعضاء الفريق عبر بيانات الاتصال المرفقة داخل كل مشروع.
النتائج: 71 — صفحة: 6/6
🧹 مسح

Cyber AI

الجامعة: جامعة النسور — بغداد (أهلية)
المسار: مسار خدمة المجتمع
✅ معتمد
كود الفريق -
المشرف م.م هاجر علاء الدين
✉️ hajer.a.med@nuc.edu.iq
تاريخ التسجيل 2026-04-22 11:16:53
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📌 تفاصيل المشروع
عنوان المشروع:
الوصف:
تاريخ رفع الملفات:
👥 أعضاء الفريق (5)
ايوب علي حسين
✉️ a6872156@gmail.com
🎯 الدور: Programmer
🎓 المستوى: Bachelor
علي صلاح محسن
✉️ rns652400@gmail.com
🎯 الدور: Programmer
🎓 المستوى: Bachelor
علي لؤي حازم الجبوري
✉️ aliloay1999@gmail.com
🎯 الدور: Leader
🎓 المستوى: Bachelor
منيب احمد حبيب
✉️ 1muneebahmed1400@gmail.com
🎯 الدور: Programmer
🎓 المستوى: Bachelor
مرتضى نبيل نور
✉️ mort.nbel2003@gmail.com
📞 +9647722624798
🎯 الدور:
🎓 المستوى:

فرسان المدينة | Urban Knights

الجامعة: جامعة النسور — بغداد (أهلية)
المسار: مسار خدمة المجتمع
✅ معتمد
كود الفريق -
المشرف م.م. ريام زيد صطام
✉️ Riyam@nuc.edu.iq
تاريخ التسجيل 2026-04-22 11:16:53
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📌 تفاصيل المشروع
عنوان المشروع:
الوصف:
تاريخ رفع الملفات:
👥 أعضاء الفريق (5)
اسامة مكي مهدي
✉️ osamamaki33@gmail.com
🎯 الدور: AI/Control
🎓 المستوى: Bachelor
عبدالله محمد عبد
✉️ 4bdullahmo@gmail.com
🎯 الدور: Programmer
🎓 المستوى: Bachelor
علي عقيل عارف
✉️ aakeelu16@gmail.com
🎯 الدور: Other
🎓 المستوى: Bachelor
لينا زياد صبحي
✉️ linaziad325@gmail.com
🎯 الدور: Other
🎓 المستوى: Bachelor
محمد نهاد عبد الجبار
✉️ mohammedaldory80@gmail.com
🎯 الدور: Leader
🎓 المستوى: Bachelor

فريق الرؤية

الجامعة: جامعة الزهراء (ع) للبنات — كربلاء (أهلية)
المسار: مسار خدمة المجتمع
✅ معتمد
كود الفريق -
المشرف محمد جاسم عبد إبراهيم
✉️ mohmmed.jassem@alzahraa.edu.iq
تاريخ التسجيل 2026-04-22 11:16:53
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📌 تفاصيل المشروع
عنوان المشروع:
الوصف:
تاريخ رفع الملفات:
👥 أعضاء الفريق (5)
آية حسين كريم خضر
✉️ survey.317.team.385.member@nurai.local
🎯 الدور: Electronics
🎓 المستوى: Bachelor
زينب سامي مهدي رباط
✉️ survey.318.team.385.member@nurai.local
🎯 الدور: Other
🎓 المستوى: Bachelor
فاطمة حميد عبد علي جاسم
✉️ survey.398.team.385.member@nurai.local
🎯 الدور: Programmer
🎓 المستوى: Bachelor
نرجس حيدر محمد نور
✉️ survey.411.team.385.member@nurai.local
🎯 الدور: Programmer
🎓 المستوى: Bachelor
نورا علاء حميد كريم
✉️ survey.323.team.385.member@nurai.local
🎯 الدور: Leader
🎓 المستوى: Bachelor

Rift

الجامعة: جامعة ذي قار — ذي قار (حكومية)
المسار: المسار الصناعي
✅ معتمد
كود الفريق -
المشرف د. أحمد فاظل
✉️ almusawiaf@utq.edu.iq
تاريخ التسجيل 2026-04-22 10:35:42
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📌 تفاصيل المشروع
عنوان المشروع:
الوصف:
تاريخ رفع الملفات:
👥 أعضاء الفريق (5)
زهراء أحمد كاظم
✉️ csmit22m11@utq.edu.iq
🎯 الدور: Programmer
🎓 المستوى: Bachelor
زهراء محمد سعيد
✉️ csmit22m3@utq.edu.iq
🎯 الدور: AI/Control
🎓 المستوى: Bachelor
زينب أسامة رشيد
✉️ csmit22m5@utq.edu.iq
🎯 الدور: Programmer
🎓 المستوى: Bachelor
مصطفى حيدر حسن
✉️ csmit23m7@utq.edu.iq
🎯 الدور: Leader
🎓 المستوى: Bachelor
هبه نعيم عبد الحسن صالح
✉️ csmco22m9@utq.edu.iq
🎯 الدور: Programmer
🎓 المستوى: Bachelor

Cyber Mind

الجامعة: جامعة الشعب — بغداد (أهلية)
المسار: المسار الزراعي
✅ معتمد
كود الفريق DAMZRP
المشرف م.م زينب حيدر إبراهيم
✉️ zainab.haider@alshaab.edu.iq
📞 07711497459
تاريخ التسجيل 2026-04-21 16:45:24
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📌 تفاصيل المشروع
عنوان المشروع: Image processing platform
الوصف:
CyberMind is a comprehensive "virtual laboratory" platform that operates directly within the user's browser to perform digital image processing and spatial data analysis. Specifically tailored for civil engineering, geomatics, and urban planning, the platform integrates surveying concepts with advanced computer science. By leveraging Edge Computing, all processing occurs locally on the user's device via the HTML5 Canvas API, ensuring exceptional speed and "Privacy by Design" for sensitive military or governmental data. 
Key Features:
• Advanced Spectral Analysis: Utilizes a custom HSV-based algorithm to classify land features (vegetation, roads, water) with up to 99% accuracy. 
• Digital Image Processing (DIP) Lab: Provides tools for edge detection, thresholding, and feature enhancement. 
• Geomatics Calculator: A built-in mathematical engine to solve surveying problems, such as coordinate-based area calculations and slope analysis, in real-time.
تاريخ رفع الملفات: 2026-04-21 16:45:24
👥 أعضاء الفريق (3)
حسين علي سرحان
✉️ es24465@alshaab.edu.iq
📞 07766662161
🎯 الدور: Leader
🎓 المستوى: Bachelor
فاطمة حيدر يونس
✉️ eai24001@alshaab.edu.iq
🎯 الدور: AI/Control
🎓 المستوى: Bachelor
علي حيدر عجاج
✉️ es24415@alshaab.edu.iq
🎯 الدور: Programmer
🎓 المستوى: Bachelor

NISABA

الجامعة: جامعة الشعب — بغداد (أهلية)
المسار: مسار التربية والتعليم
✅ معتمد
كود الفريق WD4LHZ
المشرف ARWA SAHIB
✉️ arwasahib9@gmail.com
تاريخ التسجيل 2026-04-13 16:31:42
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📌 تفاصيل المشروع
عنوان المشروع: Integrated AI Platform for Academic Writing Analysis and Integrity AssuranceWrite the project title here clearly and concisely, reflecting the core idea of the project
الوصف:
Problem Statement
Higher education institutions face increasing challenges in maintaining academic quality and integrity, especially with the rapid adoption of AI writing tools.
Students often struggle with structuring academic reports, maintaining formal writing standards, and ensuring originality. At the same time, professors face heavy workloads in reviewing multiple submissions and identifying issues such as plagiarism, AI overuse, and weak logical structure.
Existing tools are either limited to plagiarism detection or lack comprehensive academic evaluation capabilities. Therefore, there is a need for an integrated system that supports both students and faculty in improving and evaluating academic work.
Proposed Solution / Innovation
This project introduces an integrated AI-powered academic platform designed for students and professors.
The system combines multiple functionalities in one environment, including plagiarism detection, AI-content estimation, structural evaluation, readability analysis, and automated academic rewriting.
The innovation lies in providing a complete academic workflow, where the system not only detects problems but also suggests improvements and enhances the content automatically.
Method / Implementation
The system is implemented using a modular architecture.
First, the user uploads a document (text, PDF, or DOCX). The system extracts the content and processes it using Natural Language Processing techniques.
Then, the platform performs multiple analyses:
plagiarism detection using similarity comparison
AI usage estimation based on linguistic patterns
structural and readability evaluation
keyword and pattern detection
Finally, the system generates results, highlights problematic sections, and provides an improved academic rewrite of the content.
For professors, the system supports batch file uploads and generates structured reports for each submission.
Key Components (HW / SW / AI)
Software:
Python-based backend
Flask web framework
File processing libraries (PDF, DOCX)
NLP libraries for text analysis
AI Components:
Natural Language Processing (NLP)
Rule-based evaluation models
Readability analysis
Pattern detection algorithms
Hardware:
Standard computing device (laptop/server)
No specialized hardware required
Results / Impact
The system provides several key benefits:
Improves academic writing quality for students
Detects plagiarism and AI overuse efficiently
Reduces workload for professors
Provides clear, structured evaluation reports
Enhances academic integrity and originality
Supports better decision-making in evaluation
Demo Summary
The demo demonstrates how a student uploads a report and receives a full analysis, including plagiarism percentage, AI usage estimation, readability score, and structural evaluation.
The system highlights problematic sections and generates an improved academic version of the text.
It also shows the professor interface, where multiple files can be uploaded and analyzed, with clear reports generated for each submission.
تاريخ رفع الملفات: 2026-04-13 16:31:42
👥 أعضاء الفريق (3)
zahraa faris saad
✉️ es24259@alshaab.edu.iq
📞 07727259004
🎯 الدور: Leader
🎓 المستوى: Bachelor
aya arsihad qasim
✉️ ayaalbydhani@gmail.com
📞 07901183898
🎯 الدور: Leader
🎓 المستوى: Bachelor
yaqeen baseem hasan
✉️ ec24165@alshaab.edu.iq
📞 07712518991
🎯 الدور: Other
🎓 المستوى: Bachelor

تجريب

الجامعة: جامعة ذي قار — ذي قار (حكومية)
المسار: المسار البيئي
✅ معتمد
كود الفريق AR9JQS
المشرف مشرف تجريبي
✉️ ahmed.alisiehood@gmail.com
📞 55555
تاريخ التسجيل 2026-03-25 19:12:20
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📌 تفاصيل المشروع
عنوان المشروع: yyyyyyyyyyyyyyyyyyyyyyyyyyy
الوصف:
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تاريخ رفع الملفات: 2026-03-25 19:12:20
👥 أعضاء الفريق (3)
aaa
✉️ res_plan@utq.edu.iq
📞 222
🎯 الدور: Leader
🎓 المستوى: Bachelor
tttt
✉️ tttt@cc.ccddddd
📞 222
🎯 الدور: Programmer
🎓 المستوى: Bachelor
uuuuu
✉️ ooo@oo.comdddd
📞 0000
🎯 الدور: AI/Control
🎓 المستوى: Bachelor

Anunnaki team

الجامعة: جامعة المستقبل — بابل (أهلية)
المسار: مسار خدمة المجتمع
✅ معتمد
كود الفريق E7TRMW
المشرف د.عبدالكاظم عبدالكريم عبدالكاظم
✉️ a.abdulkadhem@uomus.edu.iq
📞 07814114023
تاريخ التسجيل 2026-03-23 04:11:40
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📌 تفاصيل المشروع
عنوان المشروع: Ishtar Guardian Eye: A Multi-Modal Sensor Fusion Platform for Autonomous Drone Detection and Tracking
الوصف:
Problem Statement:
The rapid proliferation of low-cost drones poses significant security risks for sensitive areas, including airports, industrial facilities, and critical infrastructure. Conventional surveillance systems, relying on single-sensor modalities like cameras or radar, often fail to detect small, agile UAVs, especially in low-light, occluded, or noisy environments. High false-positive rates, limited coverage, and susceptibility to mechanical or environmental interference highlight the urgent need for a robust, real-time, and accurate detection system.

Proposed Solution / Innovation:
The Ishtar Guardian Eye introduces a multi-modal sensor fusion platform, integrating computer vision (YOLOv8), 24 GHz mmWave radar, RF scanning, and directional acoustic sensing. By combining complementary sensing modalities, the system achieves early target detection, continuous tracking, and significantly reduced false positives. A decentralized architecture separates AI computation on an NVIDIA RTX 4060 GPU from real-time mechanical control via an ESP32 microcontroller and high-torque Pan-Tilt servos. This hybrid design enables cost-effective, high-performance surveillance comparable to military-grade systems, while remaining scalable and deployable on consumer-grade hardware.

Method / Implementation:
The system operates in a layered process: radar and acoustic sensors detect potential targets, which are validated by AI-based visual detection. Detected drones are continuously tracked using a CSRT algorithm, while positional errors are corrected via a closed-loop control system that drives the Pan-Tilt mechanism. Software is developed in Python for AI and sensor fusion tasks, and C++ for embedded control on the ESP32. Real-time communication between components is maintained through serial protocols, ensuring stable and responsive tracking.

Key Components (HW/SW/AI):

Hardware: NVIDIA RTX 4060 GPU, ESP32 microcontroller, HLK-LD2410 mmWave radar, MG996R Pan-Tilt servos, Directional Shotgun Microphone.
Software: Python 3.10, C++ firmware, OpenCV, PySerial, CUDA-enabled deep learning libraries.
AI Models: YOLOv8 for drone detection, CSRT for persistent tracking, FFT-based acoustic signal processing.

Results / Impact:
The system achieves real-time drone detection with <30 ms latency, maintains a tracking error margin of ±5 cm, and significantly reduces false-positive rates compared to single-sensor systems. Its multi-modal approach ensures reliable operation in low-light, occluded, and noisy environments. The platform provides scalable, cost-effective protection for airports, industrial sites, and urban infrastructure, improving situational awareness and response time.

Demo Summary (60s Video):
The video introduces the Ishtar Guardian Eye, an autonomous multi-sensor fusion system designed for advanced drone defense
. The system addresses evolving invisible aerial threats by providing a hybrid surveillance solution that merges computer vision, high-precision radar, and RF scanning into a single unified perimeter.
Key technical highlights of the demonstration include:
Processing Power: The system is fueled by the RTX 4060 and utilizes YOLO V8 algorithms to analyze thousands of data points in milliseconds.
Tracking Capabilities: It offers instant detection and persistent trajectory tracking, maintaining a complete target lock even during high-speed or complex maneuvers.
Situational Awareness: The suite provides situational awareness and is designed to operate flawlessly in the most challenging environments where traditional surveillance might fail.
تاريخ رفع الملفات: 2026-03-23 04:11:40
👥 أعضاء الفريق (4)
زين العابدين احسان فاضل محمد حسين
✉️ std24381501@uomus.edu.iq
📞 07862312106
🎯 الدور: Leader
🎓 المستوى: Bachelor
محمد صلاح سلمان جواد
✉️ danyalvis764@gmail.com
📞 0783872069
🎯 الدور: AI/Control
🎓 المستوى: Bachelor
رانيا وضاح محمدعلي ابراهيم
✉️ std24391025@uomus.edu.iq
🎯 الدور: AI/Control
🎓 المستوى: Bachelor
كميل زياد فيصل
✉️ std24391027@uomus.edu.iq
🎯 الدور: Other
🎓 المستوى: Bachelor

EyeQ

الجامعة: جامعة المستقبل — بابل (أهلية)
المسار: المسار الطبي
✅ معتمد
كود الفريق YDZN4X
المشرف مهيمن سمير عارف
✉️ mohaemn.samir@uomus.edu.iq
📞 07717107894
تاريخ التسجيل 2026-02-18 07:33:59
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📌 تفاصيل المشروع
عنوان المشروع: EyeQ platform
الوصف:
EyeQ is an innovative software platform designed to revolutionize early eye diagnosis by transforming smart devices into comprehensive vision testing tools. It combines standard Visual Acuity testing with advanced neuro-optical analysis to detect both refractive errors and complex eye movement disorders simultaneously. By utilizing computer vision technology, EyeQ offers a precise, non-invasive, and accessible solution for identifying conditions ranging from simple nearsightedness to subtle issues like convergence insufficiency and strabismus, making professional eye care available to everyone.
تاريخ رفع الملفات: 2026-02-18 07:33:59
👥 أعضاء الفريق (3)
سجاد عباس عبدالله
✉️ std23311393@uomus.edu.iq
📞 07825874852
🎯 الدور: Leader
🎓 المستوى: Bachelor
رسول حيدر كاظم
✉️ std23311397@uomus.edu.iq
📞 +9647865851524
🎯 الدور: Electronics
🎓 المستوى: Bachelor
حسين طالب عبدالحمزة
✉️ std23311372@uomus.edu.iq
📞 +9647866006699
🎯 الدور: Other
🎓 المستوى: Bachelor

مطورين برامج طبية

الجامعة: جامعة المستقبل — بابل (أهلية)
المسار: المسار الطبي
✅ معتمد
كود الفريق 7B6WPJ
المشرف د.مهدي عبادي مانع
✉️ mahdi.ebadi@uomus.edu.iq
📞 07812131448
تاريخ التسجيل 2026-02-16 14:08:12
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📌 تفاصيل المشروع
عنوان المشروع: Predictive System for Diabetes and Heart Diseases Using Explainable AI (XAI)
الوصف:
Predictive System for Diabetes and Heart Diseases Using Explainable AI (XAI)
Project Description
The Predictive System for Diabetes and Heart Diseases Using Explainable AI (XAI) is an intelligent healthcare solution that leverages Machine Learning and Explainable Artificial Intelligence to support early disease prediction and clinical decision-making.
The platform analyzes patient medical data to estimate the probability of Diabetes and Heart Diseases using trained predictive models. In addition to generating diagnostic predictions, the system integrates Explainable AI techniques to provide transparent and interpretable results, enabling healthcare professionals to better understand the reasoning behind each prediction.
The project aims to improve healthcare efficiency, enhance diagnostic accuracy, and support early disease detection through intelligent and trustworthy medical analysis.

Project Idea
The main idea of the project is to develop a smart medical prediction platform capable of automatically analyzing patient clinical information and estimating disease risk levels using Artificial Intelligence algorithms.
Unlike conventional predictive systems, this project focuses on transparency and interpretability through the integration of advanced Explainable AI techniques, including:
1. SHAP (SHapley Additive Explanations)
2. LIME (Local Interpretable Model-agnostic Explanations)
3. DiCE Counterfactual Explanations
These technologies allow healthcare professionals to identify the medical factors that most influence prediction outcomes and improve confidence in AI-assisted diagnosis.

Working Mechanism
1. Patient medical data is entered into the system.
2. The trained Machine Learning models analyze the clinical data.
3. The platform predicts the probability of disease occurrence.
4. Explainable AI methods clarify the factors influencing the prediction results.
5. The diagnostic results are stored for future monitoring and analysis.

Technologies Used
1. Python
2. Machine Learning
3. Scikit-learn
4. PyQt5
5. Pandas
6. NumPy
7. SHAP
8. LIME
9. DiCE

Expected Results
The project is expected to provide:
1. Early detection of chronic diseases
2. Faster medical data analysis
3. Improved diagnostic accuracy
4. Enhanced clinical decision support
5. Transparent AI-driven predictions
6. Efficient patient data management
7. Scalable healthcare system architecture

Project Features
1. Intelligent disease prediction platform
2. Explainable AI integration
3. Professional graphical user interface
4. Real-time diagnostic analysis
5. Batch patient processing
6. Interactive dashboard and medical statistics
7. Patient history management
8. Scalable and expandable system architecture

Project Objectives
The primary objective of the project is to develop an intelligent and explainable healthcare platform capable of assisting healthcare professionals in the early detection of Diabetes and Heart Diseases through advanced Machine Learning technologies while improving transparency, diagnostic reliability, and healthcare efficiency.
تاريخ رفع الملفات: 2026-02-16 14:08:12
👥 أعضاء الفريق (3)
محمد باسم مجدي
✉️ std22331376@mustaqbal-college.edu.iq
📞 07805316978
🎯 الدور: Leader
🎓 المستوى: Bachelor
صبحي انور
✉️ std22331405@mustaqbal-college.edu.iq
📞 07846445533
🎯 الدور: Programmer
🎓 المستوى: Bachelor
حسنين نعمة
✉️ std22331387@mustaqbal-college.edu.iq
📞 07804575790
🎯 الدور: Programmer
🎓 المستوى: Bachelor

التحدي

الجامعة: جامعة ذي قار — ذي قار (حكومية)
المسار: المسار الزراعي
✅ معتمد
كود الفريق N54M7D
المشرف مشرف تجريبي
✉️ ahmed.alisiehood@gmail.com
تاريخ التسجيل 2026-02-16 13:36:38
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📌 تفاصيل المشروع
عنوان المشروع: test project
الوصف:
test projecttest projecttest projecttest projecttest projecttest projecttest projecttest projecttest project
تاريخ رفع الملفات: 2026-02-16 13:36:38
👥 أعضاء الفريق (1)
طالب تجريبي
✉️ res_plan@utq.edu.iq
📞 0000
🎯 الدور: Electronics
🎓 المستوى: Bachelor
⬅ السابق 13456 التالي ➡