Professional Laravel Crowdfunding Platform

GetFund is an innovative crowdfunding application that empowers users to create and manage crowdfunding campaigns with ease. Whether you have a creative project, a charitable cause, or a business idea, GetFund provides a platform for you to share your story, gather support from the community, and raise funds to bring your dreams to life.

With GetFund, creating a crowdfunding campaign is simple and user-friendly. Users can easily create a campaign by providing a compelling description of their project or cause, setting a fundraising goal, and uploading relevant images to showcase their vision.

GetFund offers two types of campaigns, donation-based and reward-based crowdfunding, allowing users to choose the model that best aligns with their funding needs. Campaign creators can also set deadlines and milestones to create a sense of urgency and motivate supporters to contribute.

GetFund prioritizes security and trust, ensuring that all transactions are encrypted and securely processed. Users can contribute to campaigns using various payment methods, including credit cards (Stripe), PayPal, and other popular payment gateways, with peace of mind.

Whether you are a creative individual, a passionate advocate for a cause, or an aspiring entrepreneur, GetFund provides a seamless and efficient way to raise funds and turn your dreams into reality. Join the vibrant community of campaigners and supporters on GetFund and experience the power of crowdfunding like never before!

Features

  1. Latest Laravel v.10.x
  2. Bootstrap css
  3. Powerfull user friendly admin panel
  4. Stripe Payment Gateway
  5. PayPal Payment Gateway
  6. Bank Transfer Payment Gateway
  7. Reward options
  8. Campaign end method
  9. Social Login
  10. Password retrieval module
  11. FontAwesome
  12. Social Share
  13. Secure Password Hashing
  14. Unlimited campaigns
  15. Staff picks section
  16. Recently funded campaigns
  17. Currencies changing options
  18. Ajax loading campaign in home
  19. Payment tracking
  20. Rewards tracking
  21. Auto campaign end
  22. User profile picture
  23. SMTP email Support
  24. Translation ready
  25. SEO friendly url
  26. reCAPtCHA everywhere
  27. Contact Form
  28. Free and continues updates

For Live Demo & Enquiry  :

Call/WhatsApp : +916263056779

Email : official@projectworlds.in

Script Come With :

  • Free Installation support
  • Free technical support
  • Future product updates
  • Quality checked by PROJECTWORLDS
  • Lowest price guarantee
  • 3 months support included

Website, Service & Server Monitoring PHP

enables you to easily monitor the status and health of Linux and Windows servers, websites, services, IP Blacklists and more. Customizable and reliable alerts keeps you up to date with the status off all you monitors.

MAIN FEATURES

  1. Dashboard
    Overview of all your assets with open incidents.
  2. Server Monitoring
    Easily monitor Linux and Windows server metrics like CPU usage, disk, RAM, network and other with our one line install nMon agent.nMon supports the following Linux distributions CentOS, Red Hat, Cloudlinux, Scientific Linux, Debian, Ubuntu, Fedora, SuSe, Slackware, Gentoo Linux, Arch Linux.

    nMon supports the following Windows versions 7, 8, 8.1, 10, Server 2008, Server 2008 R2, Server 2012, Server 2012 R2, Server 2016.

    Windows support is in BETA phase.

  3. Website Monitoring
    Monitor your websites with nMon to find out whet it is down or loading slow.
  4. Service Monitoring
    Easily monitor the status of any TCP or UDP service (eg. FTP, SMTP, HTTP, etc.) with checks.
    Furthermore you can test if your server’s IP address gets blacklisted or your DNS server is not working as expected.
    If PHP’s exec() function is allowed on your hosting server you can also monitor hosts with ICMP Ping.
  5. Alerting & Incidents
    Highly customizable alerts are available for all checks and metrics.
    If an alert is triggered an incident will be created and you will get notified instantly.
    Incidents are closed automatically if the problems resolves itself.
  6. Notifications
    Receive notifications via email, SMS Messages, Pushbullet, Pushover or Twitter direct messages.
    Supported SMS Gateways: Clickatell, SMS Global, Twilio.
  7. Pages
    Use public pages to display your network status without the need for authentications.
  8. Multiple Users and Roles
    Multiple user accounts and roles are supported.
  9. Multi Language Support
    System can be easily translated to any language.
  10. Customizable & Responsive
    Multiple color schemes and layouts to select from.
    nMon is 100% responsive.
  11. Quick and Easy Installation, Gravatar support, and many more…

REQUIREMENTS

To run  your hosting server must support the following:

  1. PHP version 7.3>
  2. MySQL version 5.x or greater(MariaDB 10 recommended for best performance)
  3. PHP PDO MYSQL extension
  4. PHP FSOCKOPEN enabled
  5. PHP EXEC enabled (optional for ping checks)
  6. Cronjobs

For Live Demo & Enquiry  :

Call/WhatsApp : +916263056779

Email : official@projectworlds.in

Script Come With :

  • Free Installation support
  • Free technical support
  • Future product updates
  • Quality checked by PROJECTWORLDS
  • Lowest price guarantee
  • 3 months support included

Online Betting Platform PHP Script

is a betting management system. It can be used to guess the result of WorldCup / Tournament matches in a kind of prediction. The players compete in guessing the correct result of some kind of match. Soccer, Cricket, Baseball, Basketball, or even Yes/No questions like: will Brazil win the next WorldCup. At first User need to deposit for predicting. User will get interest followed by ratio. Admin can control match lock/unlock, ratio update, question , option add instantly where user doesn’t need to website reload

User Features

  1. Bet History
  2. 36+ automated payment method
  3. 7+ automated withdrawal method
  4. Transaction Log
  5. Deposit Money
  6. Deposit Log
  7. Withdraw/Payout History
  8. Email + SMS + Push Notification
  9. Profile & Password Updaten
  10. Referral Commission
  11. Support Ticket

Admin Features

  1. Financial Statistics & Information
  2. KYC Management
  3. Role Permission Management
  4. Manage Game Category
  5. Manage Game Tournament
  6. Manage Team
  7. Manage Match
  8. Real Time Match, question, option Add / Update
  9. Real Time Match, question lock/ Unlock
  10. Prediction Result Manage
  11. Make winner
  12. Refund Prediction Amount
  13. User Management
  14. User Statistics & Reports
  15. 36+ Automated Payment Method
  16. Manual Payment/ Bank deposit System Added
  17. Complete Payment History
  18. Withdraw Request Log
  19. Withdraw Report
  20. Support Ticket
  21. Website Basic Controls
  22. Email Configuration
  23. Email Template Management
  24. SMS Configuration
  25. SMS Template Management
  26. Push Notification
  27. Logo & SEO Management
  28. All Content Management
  29. Profile & Password Update

For Live Demo & Enquiry  :

Call/WhatsApp : +916263056779

Email : official@projectworlds.in

Script Come With :

  • Free Installation support
  • Free technical support
  • Future product updates
  • Quality checked by PROJECTWORLDS
  • Lowest price guarantee
  • 3 months support included

Student Project Allocation System using PHP with Source Code

https://youtu.be/vnsZ99GBGKM

The Student Project Allocation System is a web-based application that allows students to choose their projects and supervisors. It is a system that is used by universities and colleges to allocate projects to students. The system stores the list of projects, students, and system users. The source code is easy to understand which would be a lot easier for the newbies to learn with. The system uses CRUD (Create, Read, Update, and Delete) Operations which is the common operation that is used when developing a web application that uses databases.

Existing system

In the present Student Project Allocation system, each institute maintains information manually into the register. Storing the information manually in the register required a high amount of time and if the information is stored, then accessing that information is a time taking process as one need to search for the required information in each register. Where to store the information is time taking process it also increases the possibility of error in the data writing in registers. The information can be misplaced after some time as there are a lot of other registers are kept in the same place.

Proposed system

The proposed Student Project Allocation system is based on the internet so that data can be accessed by any system and from any place. The institute will need to enter the student information into the system so that whenever they require the information they can access by simply entering the student id or name into the system. The Student Project Allocation system will contain all the information of students such as academic, address, phone number etc. It will also take the test of student and will make a list of students who all pass in the exam so that it will be easy for any institute to keep records while at the a student can check their results and class rank.

Student Project Allocation Module

The system is made of several modules in which some important modules are:

Admin

In the admin module the overall control will have the institute administrator and by using this module an institute can give access to any person by providing an ID and password to those while it can also check the information that who had access to the system with date and time.

User

In the user module, a person can only view the details by login to the system with their Unique ID provided by the system.

Brief overview of the technology:

Front end: HTML, CSS, JavaScript

  1. HTML: HTML is used to create and save web document. E.g. Notepad/Notepad++
  2. CSS : (Cascading Style Sheets) Create attractive Layout
  3. Bootstrap : responsive design mobile freindly site
  4. JavaScript: it is a programming language, commonly use with web browsers.

Back end: PHP, MySQL

  1. PHP: Hypertext Preprocessor (PHP) is a technology that allows software developers to create dynamically generated web pages, in HTML, XML, or other document types, as per client request. PHP is open source software.
  2. MySQL: MySql is a database, widely used for accessing querying, updating, and managing data in databases.

Software Requirement(any one)

  1. WAMP Server
  2. XAMPP Server
  3. MAMP Server
  4. LAMP Server

Installation Steps

1. Download zip file and Unzip file on your local server.
2. Put this file inside "c:/wamp/www/" .
3. Database Configuration
Open phpmyadmin
Create Database named .
Import database .sql from downloaded folder(inside database)
4. Open Your browser put inside "http://localhost/project folder name/"

Download Here

 

 

Cat Vs Dog Image Classification CNN Project Source Code

Image classification is a fundamental problem in computer vision, and distinguishing between cats and dogs is a classic example. In this project, we aim to develop an accurate cat vs dog image classification system using Convolutional Neural Networks (CNNs). We collect a large dataset of labeled images containing cats and dogs, preprocess the data, design and train a CNN model, evaluate its performance, and deploy the model for real-world use.

Introduction :

Image classification plays a crucial role in various domains, including object recognition, medical imaging, and autonomous systems. In this project, we focus on the task of classifying images of cats and dogs. This problem presents challenges due to the high variability in appearance and poses of cats and dogs. CNNs have shown remarkable success in image classification tasks, making them a suitable choice for this project.

Dataset :- We collect a diverse dataset consisting of thousands of labeled images of cats and dogs. The dataset is split into three subsets: training, validation, and testing. The training set is used to train the CNN model, while the validation set helps tune hyperparameters and monitor the model’s performance. The testing set provides an unbiased evaluation of the final model.

Preprocessing :- Before training the CNN model, we preprocess the dataset to ensure its suitability for learning. Preprocessing steps include resizing all images to a consistent resolution, normalizing pixel values, and augmenting the training data. Data augmentation techniques such as rotation, flipping, and zooming are employed to increase the variability and robustness of the training data.

CNN Architecture We design a CNN architecture tailored for the cat vs dog image classification task. The architecture typically consists of several convolutional layers for feature extraction, followed by pooling layers to downsample the feature maps. Fully connected layers are then employed to perform classification based on the learned features. The exact configuration of the CNN, including the number of layers, filter sizes, and activation functions, is determined through experimentation and optimization.

Training The CNN model is trained using the prepared dataset. We employ a suitable optimization algorithm, such as stochastic gradient descent (SGD), and a loss function, typically categorical cross-entropy, to update the model’s parameters during training. The training process involves forward propagation, backward propagation, and gradient updates. We monitor the model’s performance on the validation set and employ techniques like early stopping to prevent overfitting.

Evaluation After training, we evaluate the performance of the CNN model using the testing set. We measure various metrics, including accuracy, precision, recall, and F1 score, to assess the model’s ability to correctly classify cat and dog images. We also analyze the model’s confusion matrix to identify specific areas where the model may struggle.

Deployment Once the model achieves satisfactory performance, we deploy it for real-world use. This can be done through various means, such as building a web application or creating an API. Users can then upload images of cats or dogs, and the deployed model will classify them accordingly. We consider scalability, performance, and user experience during the deployment process.

Conclusion In conclusion, we have successfully developed a cat vs dog image classification system using CNNs. Through careful dataset collection, preprocessing, and model training, we achieved a high level of accuracy in distinguishing between cats and dogs. The deployed system provides a practical solution for image classification tasks involving cats and dogs, and it can be further improved by considering additional datasets, advanced CNN architectures, or transfer learning techniques.

Hardware and Software Requirements:

  1. Hardware Requirements:
    1. CPU: A multi-core processor (e.g., Intel Core i5 or higher) is recommended for faster training and inference.
    2. GPU (Optional): A dedicated graphics card, such as NVIDIA GeForce or AMD Radeon, with CUDA support can significantly accelerate the training process.
    3. RAM: Sufficient RAM (at least 8GB or higher) to handle the dataset and model computations efficiently.
    4. Storage: Adequate storage space to store the dataset, trained models, and any additional resources.
  2. Software Requirements:
    1. Operating System: Most popular operating systems, including Windows, macOS, or Linux distributions, can be used.
    2. Python: Install Python programming language (version 3.6 or higher) as a prerequisite for running deep learning frameworks and libraries.
    3. Deep Learning Framework: Install TensorFlow, Keras, or PyTorch, depending on your preference, to build and train CNN models. These frameworks can be installed using Python package managers like pip or Anaconda.
    4. Image Processing Libraries: Install libraries like OpenCV or PIL (Python Imaging Library) for image loading, preprocessing, and augmentation.
    5. Development Environment: Choose a preferred Integrated Development Environment (IDE) such as Jupyter Notebook, PyCharm, or Visual Studio Code to write and run Python code efficiently.
  3. Dataset:
    1. Collect or acquire a dataset of labeled cat and dog images. The dataset should be organized into separate folders for training, validation, and testing.
    2. Ensure that the dataset has a sufficient number of images for each class and covers a wide range of variations in cat and dog appearances.
  4. GPU Acceleration (Optional):
    1. If GPU acceleration is desired for faster training, install the appropriate GPU drivers and CUDA Toolkit provided by the GPU manufacturer (e.g., NVIDIA) according to the specific hardware and software compatibility.
  5. Additional Libraries:
    1. Depending on the specific requirements of the project, additional Python libraries may be needed, such as pandas for data manipulation, scikit-learn for evaluation metrics, and matplotlib or seaborn for data visualization.

Technology Used in the project :-

  1. We have developed this project using the below technology
  2. HTML : Page layout has been designed in HTML
  3. CSS : CSS has been used for all the desigining part
  4. JavaScript : All the validation task and animations has been developed by JavaScript
  5. Python : All the business logic has been implemented in Python
  6. Flask: Project has been developed over the Flask Framework

Supported Operating System :-

  1. We can configure this project on following operating system.
  2. Windows : This project can easily be configured on windows operating system. For running this project on Windows system, you will have to install
  3. Python 3.6.10, PIP, Django.
  4. Linux : We can run this project also on all versions of Linux operating systemMac : We can also easily configured this project on Mac operating system.

Installation Step : –

  1. python 3.6.8
  2. command 1 – python -m pip install –user -r requirements.txt
  3. command 2 – python app.py

Download Link