Data Visualization
Natural Language Database Queries
★ 3.8
Statistical Data Visualization
★ 4.7
pip install querygptpip install seabornpip install querygptpip install seabornPython data engineers use QueryGPT to accelerate exploratory analysis — describing a business question in plain English and getting a SQL query to run against the warehouse. Engineers also use it to quickly generate boilerplate SQL for common patterns (date spine generation, cohort analysis, funnel queries) that are then embedded and refined in Python dbt models or pipeline scripts.
Python data engineers use Seaborn to quickly visualize relationships in pipeline data during EDA. A single `sns.heatmap(df.corr())` or `sns.pairplot(df)` call reveals correlation structure and feature distributions that guide transformation decisions — making Seaborn the standard for exploratory data analysis in Jupyter notebooks.
Individual Tool Pages