Skip to content

Latest commit

 

History

History
89 lines (56 loc) · 5.65 KB

README.md

File metadata and controls

89 lines (56 loc) · 5.65 KB

🚀 ProGains: Profit Prediction 📊

Introduction
ProGains is a web-based application that predicts the profits of startups by utilizing machine learning models trained on historical startup data. 💼

Technologies Used

  1. Python: Python 🐍 is a versatile programming language widely used in various fields, including web development and machine learning.

  2. Flask: Flask 🍶 is a lightweight web framework for Python, used for building web applications. It provides tools and libraries for handling HTTP requests, routing, and rendering templates.

  3. pandas: pandas 🐼 is a powerful data manipulation and analysis library for Python. It offers data structures and functions for handling structured data, such as tabular data.

  4. scikit-learn: scikit-learn 🧠 is a popular machine learning library for Python. It provides a wide range of algorithms and tools for tasks such as classification, regression, clustering, and dimensionality reduction.

  5. Linear Regression: Linear regression ➖➗ is a statistical method used for modeling the relationship between a dependent variable and one or more independent variables. In the context of ProGains, linear regression models are utilized to predict startup profits based on various input features.

  6. matplotlib: matplotlib 📊 is a plotting library for Python, used for creating static, interactive, and animated visualizations. It is employed in ProGains for visualizing data and model results.

  7. IO: Input/output (IO) 📥📤 operations are essential for reading and writing data to files or streams. In ProGains, IO operations are employed for handling data input and output, such as reading startup data and saving model predictions.

  8. base64: Base64 🆎 is a binary-to-text encoding scheme that converts binary data into ASCII characters. It is utilized in ProGains for encoding and decoding data, such as converting images into a format suitable for web display.

  9. logger: Logging 📝 is the process of recording events and messages during the execution of a program. The logger module in Python is used in ProGains for tracking and debugging purposes, helping developers identify and troubleshoot issues.

Methodology

  1. Data Collection: Historical startup data is collected from various sources, including public datasets and proprietary databases. This data includes features such as startup location, industry, funding rounds, and revenue.

  2. Data Preprocessing: The collected data is preprocessed to handle missing values, encode categorical variables, and scale numerical features. This ensures that the data is suitable for training machine learning models.

  3. Model Training: Machine learning models, particularly linear regression models, are trained on the preprocessed data. The models learn the relationship between input features (e.g., startup characteristics) and the target variable (profit).

  4. Model Evaluation: The trained models are evaluated using performance metrics such as mean squared error (MSE) and R-squared. These metrics assess the accuracy and goodness of fit of the models.

  5. Web Application Development: Using Flask, a web application is developed to provide a user-friendly interface for users to input startup features and obtain profit predictions. The application also integrates visualizations generated using matplotlib to enhance data exploration.

  6. Deployment: The web application is deployed on a server to make it accessible to users over the internet. Deployment considerations include scalability, security, and performance optimization.

Conclusion
ProGains is a promising project that leverages machine learning and web development technologies to provide profit predictions for startups. By combining data analysis, modeling, and web application development, ProGains offers a valuable tool for entrepreneurs and investors seeking insights into the potential profitability of startups. With further refinement and expansion, ProGains has the potential to become a valuable resource in the startup ecosystem. 🌟

How to Use ProGains

  1. Clone the Repository:

    • Clone the ProGains repository from GitHub to your local machine using the following command:
      git clone https://github.com/codeasarjun/ProGains.git
      
  2. Install Dependencies:

    • Navigate to the cloned repository directory and install the required Python dependencies using pip:
      pip install -r requirements.txt
      
  3. Run the Application:

    • Execute the following command to start the ProGains web application:
      python app.py
      
  4. Access the Web Application:

    • Open your web browser and go to http://127.0.0.1:5000/ to access the ProGains web interface.
  5. Select Model:

    • Choose the desired machine learning model from the radio button on the UI. (Highlighted)
  6. Input Startup Features:

    • Enter startup information into the input fields provided.
  7. Get Profit Prediction:

    • Click on the "Predict Profit" button to obtain profit predictions based on the input features.
  8. Explore Visualizations:

    • Explore visualizations generated by the application to gain insights into the data and model results.
  9. Interpret Results:

    • Interpret the prediction results to make informed decisions about the potential profitability of the startup.

Sample Ouptput