Easygraph-py

Latest version: v1.4.0

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1.2.1

I am thrilled to unveil **EasyGraph v1.2.1**, the latest iteration of our user-friendly Python package designed to elevate your data visualization journey. This version marks the introduction of Time Series Analysis and enhanced error handling across all charts, graphs, and plots. Here’s a quick rundown of what’s new in v1.2.1:

🌟 New Features

**Time Series Analysis**
- **Unleash the Power of Time**: With our new Time Series Analysis feature, delve into trends, patterns, and seasonality in your time series data, making it easier to forecast and analyze temporal data structures.
- **Dynamic Visualizations**: View your time series data in interactive and insightful plots, aiding in more accurate decision-making and predictions.
- **Frequency Domain Representations**: Explore various aspects of time series data including trends, seasonality, and noise in a more structured way.

**Enhanced Error Handling**
- **Robust and Reliable**: Experience a significant boost in reliability with our comprehensive error handling for all charts, graphs, and plots, ensuring smoother visualization processes and minimizing disruptions.
- **User-Friendly Error Messages**: Receive clear and informative error messages, guiding you to troubleshoot effectively and continue with your data visualization seamlessly.
- **Preventive Measures**: Our improved error handling not only addresses issues but helps in identifying potential pitfalls before they occur, making your experience more stable and enjoyable.

✨ Improvements

**Code Base**
- Optimized code structure for better performance and readability, ensuring an enjoyable and efficient development experience.
- Refined integration of libraries, harnessing the combined power of Matplotlib, Plotly, and now, Pandas for time series analysis.

πŸš€ Getting Started

Dive into the world of enhanced data visualization with EasyGraph v1.2.1! Clone the repository and follow the instructions in the README to install the necessary dependencies. Embark on a more insightful and error-free graphing experience!

🀝 Contributions

We are always open to contributions! If you have ideas, improvements, or fixes, please review our contributing guidelines and feel free to open a pull request.

πŸ—£οΈ Feedback

Your feedback is our stepping stone to improvement. We encourage you to open issues, provide suggestions, and share your experiences to help us refine EasyGraph.

1.0.1

We are excited to introduce **EasyGraph v1.0.1**, a Python package built to simplify and enhance your data visualization experience. In this release, we are bringing a plethora of new features including a range of graph and chart functionalities, interactive mode, and theming. Below are the highlights of this release:

🌟 New Features

**Twelve Different Graphs and Charts**
- **Bar Chart**: Visualize your data in a bar format, both in grouped and stacked manner.
- **Line Chart**: Ideal for displaying data points over a continuous interval or time span.
- **Scatter Plot**: Perfect for showcasing relationships between two variables.
- **Histogram**: Best suited for representing the frequency distributions of variables.
- **Box Plot**: Great for displaying the distribution and central tendency of a dataset.
- **Pie Chart**: Visualize categorical data as a proportion of a whole.
- **Stacked Bar Chart**: Showcase the total amounts across different groups, as well as the individual sub-groups.
- **Area Chart**: Illustrate quantitative data graphically by plotting individual data points.
- **Hexbin Plot**: Useful for representing the relationship of two numerical variables in the form of a hexbin plot.
- **Violin Plot**: Combine the benefits of a box plot and a kernel density plot into one.
- **Correlation Matrix**: Visualize the correlation between multiple variables at once.
- **Pair Plot**: Perfect for visualizing the relationship between multiple pairings of variables.

**Interactive Mode**
- Leverage `plotly` to generate interactive plots that enhance the user experience, allowing for deeper data exploration through zoom, pan, and hover functionalities.

**Theming**
- Customize your plots with different themes to suit your presentation style and audience.
- Support for both Matplotlib and Seaborn styles for static plots, ensuring a seamless styling experience.

✨ Improvements

**Code Base**
- Enhanced code structure and organization, providing a clean and easy-to-navigate code base.
- Utilization of both Matplotlib and Plotly, bringing together the best of both libraries to offer a rich plotting experience.

πŸš€ Getting Started

To get started with EasyGraph, simply clone the repository and follow the instructions in the README to install the necessary dependencies and start visualizing your data in no time!

🀝 Contributions

We welcome contributions to EasyGraph! If you're interested in contributing, please take a look at our contributing guidelines and feel free to open a pull request.

πŸ—£οΈ Feedback

We value your feedback and encourage you to open issues or provide suggestions to help us improve EasyGraph.

**Thank you for supporting EasyGraph! We look forward to growing and improving with your feedback and contributions.**

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