Process large (e.g. 4GB+) data sets in a spreadsheet.
Load GB/32 million-row files in seconds and use them without any crashes using up to about 500GB RAM.
Load/edit in-place/split/merge/clean CSV/text files with up to 32 million rows and 1 million columns.
Use your Python functions as UDF formulas that can return to GS-Calc images and entire CSV files.
Use a set of statistical pivot data functions.
Solver functions virtually without limits for the number of variables.
Create and display all popular chart types with millions of data points instantly.
Suggestions for improvements are welcome (and often implemented quite quickly).
Comments URL: https://news.ycombinator.com/item?id=43796898
Points: 24
# Comments: 1
Inicia sesión para agregar comentarios
Otros mensajes en este grupo.

Article URL: https://timestripe.com/magazine/blog/timezone/

Article URL: https://arxiv.org/abs/2505.23735
Comments URL: https://news.ycombinator.c

Article URL: https://terrytao.wordpress.com/2025/05/31/a-lean-companion-to-analysis-i/
Comments URL:

After waiting 8 months for a journal response or two months for co-author feedback that consisted of "looks good" and a single comma change, we built an AI-powered peer review system that helps re
Article URL: https://aartaka.me/this-post-is-ed.html
Comments URL: https://news
Article URL: https://susam.net/two-ideals-of-fields.html
Comments URL: http
Hey HN, I've been working on fontofweb.com on and off for the past 4 years, and I'm keen to share it with you. It lets you type in the URL of any website and see exactly how the fonts are used: al