Shogun¶
Received $9,200 in grants from NumFocus in 2020.
Logo |
|
---|---|
Website |
|
Repository |
|
Byline |
Shogun is an open-source machine learning library that offers a wide range of efficient and unified machine learning methods. |
License |
BSD 3-clause |
Project age |
16 years 6 months |
Backers |
|
Size score (1 to 10, higher is better) |
4.5 |
Trend score (1 to 10, higher is better) |
2.0 |
Education Resources¶
URL |
Resource Type |
Description |
---|---|---|
Documentation |
Official project documentation. |
Git Commit Statistics¶
Statistics computed using Git data through November 30, 2022.
Statistic |
Lifetime |
Last 12 Months |
---|---|---|
Commits |
23,596 |
0 |
Lines committed |
8,372,680 |
0 |
Unique committers |
263 |
0 |
Core committers |
17 |
0 |
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