Altair in Python Applications
ebook ∣ Definitive Reference for Developers and Engineers
By Richard Johnson
Sign up to save your library
With an OverDrive account, you can save your favorite libraries for at-a-glance information about availability. Find out more about OverDrive accounts.
Find this title in Libby, the library reading app by OverDrive.

Search for a digital library with this title
Title found at these libraries:
Library Name | Distance |
---|---|
Loading... |
"Altair in Python Applications"
"Altair in Python Applications" is a comprehensive guide for practitioners, researchers, and analysts seeking to master declarative data visualization in the Python ecosystem. The book begins by establishing a strong foundation in the principles of declarative visualization and the grammar of graphics, showcasing Altair's philosophy and technical underpinnings in relation to the broader Vega-Lite ecosystem. Readers are introduced to best practices for installation and environment management, as well as a thoughtful comparison with other major visualization libraries, empowering users to make informed choices for diverse analytical tasks.
Building on these fundamentals, the book delves into advanced visualization techniques, including complex data transformations, encoding strategies, and interactive data exploration. Readers learn to construct multilayered, custom, and high-performance visualizations, apply responsive analytics, and design robust dashboards. Special emphasis is placed on interactivity—guiding users through selections, parameterization, cross-filtering, and the integration of user controls and widgets for a truly dynamic analytic experience. Integration with Python's broader data science and web application patterns is explored in detail, covering workflows within Jupyter, deployment in modern frameworks, and strategies for collaboration and reproducibility.
The later chapters take the reader further, demonstrating how to extend and customize Altair with plugins, renderers, and schema modifications. Real-world case studies—spanning scientific research, business intelligence, financial analytics, machine learning, and geospatial domains—illustrate Altair's practical applications and communicative power. The book concludes by addressing crucial topics such as performance, scalability, and security, as well as exploring emerging trends in declarative visualization, interoperability, AI integration, and open-source extensibility. Altogether, "Altair in Python Applications" is an indispensable resource for creating insightful, interactive, and scalable visual analytics with confidence and precision.