tidyexplain
tidyquery
tidyexplain | tidyquery | |
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1 | 2 | |
774 | 167 | |
- | - | |
1.8 | 0.0 | |
about 3 years ago | about 2 years ago | |
R | R | |
Creative Commons Zero v1.0 Universal | Apache License 2.0 |
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tidyexplain
tidyquery
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Can "dplyr" code automatically be converted to SQL code?
tidyquery
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ClickHouse as an alternative to Elasticsearch for log storage and analysis
> SQL is a perfect language for analytics.
Slightly off topic, but I strongly agree with this statement and wonder why the languages used for a lot of data science work (R, Python) don't have such a strong focus on SQL.
It might just be my brain, but SQL makes so much logical sense as a query language and, with small variances, is used to directly query so many databases.
In R, why learn the data.tables (OK, speed) or dplyr paradigms, when SQL can be easily applied directly to dataframes? There are libraries to support this like sqldf[1], tidyquery[2] and duckdf[3] (author). And I'm sure the situation is similar in Python.
This is not a post against great libraries like data.table and dplyr, which I do use from time to time. It's more of a question about why SQL is not more popular as the query language de jour for data science.
[1] https://cran.r-project.org/web/packages/sqldf/index.html
[2] https://github.com/ianmcook/tidyquery
[3] https://github.com/phillc73/duckdf
What are some alternatives?
gpx-viz - Personal project to visualize gpx tracks
duckdf - ๐ฆ SQL for R dataframes, with ducks
ggsignif - Easily add significance brackets to your ggplots
tidylog - Tidylog provides feedback about dplyr and tidyr operations. It provides wrapper functions for the most common functions, such as filter, mutate, select, and group_by, and provides detailed output for joins.
dtplyr - Data table backend for dplyr
tidyverse - Easily install and load packages from the tidyverse
ganttrify - Create beautiful Gantt charts with ggplot2
janitor - simple tools for data cleaning in R
RdplyrSelects
cloki-go-legacy - Clickhouse Loki API in GO (WIP)
gganimate - A Grammar of Animated Graphics
tidyquant - Bringing financial analysis to the tidyverse