Figures and Axes
Project description
Figures and Axes
Figures and Axes (fanda) is a lightweight Python library designed to streamline the process of extracting experiment data from Weights & Biases (wandb) and generating publication-quality plots.The name is a play on "wandb" (Weights and Biases) $\rightarrow$ "fanda" (Figures and Axes).
Features
- Seamless Extraction: Pull scalar histories, configuration configs, and summary metrics from W&B runs easily.
- Publication Ready: Generate clean, professional figures using matplotlib and seaborn defaults tailored for academic papers.
- Conference Styles: Built-in stylesheets for major conferences (NeurIPS, ICML, ICLR), slides, and posters to automatically handle fonts, sizes, and DPI.
- Transformations: Easily transform your data to accelerate your analysis.
Installation
You can install fanda directly from PyPi:
pip install fanda
Configuration
Ensure you are logged into W&B before using the library:
wandb login
Usage
Here is a simple example of how to pull data from a project and plot the training loss.
import matplotlib.pyplot as plt
import fanda
from fanda.wandb_client import fetch_wandb
from fanda import transforms
from fanda.visualizations import lineplot, add_legend, annotate_axis, decorate_axis
from fanda.utils import save_fig, close_fig
plt.style.use('neurips')
df = (
fetch_wandb("entity", "project", filters={
"state": "finished",
"created_at": {"$gte": "2025-01-01"},
})
.pipe(transforms.exponential_moving_average, column="loss", alpha=0.7)
.pipe(transforms.remove_outliers, column="loss")
)
fanda = (
lineplot(
df=df,
x="_step",
y="loss",
hue="network",
)
.pipe(
annotate_axis,
xlabel="Number of Steps",
ylabel="Loss",
)
.pipe(decorate_axis)
.pipe(add_legend, column="algorithm")
.pipe(save_fig, name="algorithm_comparison")
.pipe(close_fig)
)
License
This project is licensed under the MIT License - see the LICENSE file for details.
Citation
If you find this tool useful for your research, please consider citing it:
@software{fanda2025github,
author = {Noah Farr},
title = {fanda: Figures and Axes for Weights and Biases},
year = {2025},
url = {https://github.com/noahfarr/fanda},
}
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