This website requires JavaScript.
Explore
Help
Sign In
gahow
/
quant
Watch
1
Star
0
Fork
0
You've already forked quant
Code
Issues
Pull Requests
Actions
Packages
Projects
Releases
Wiki
Activity
29
Commits
1
Branch
0
Tags
097131d96280537470f3f8b08f8226622abfc0b5
Go to file
Code
Clone
HTTPS
Tea CLI
Open with VS Code
Open with VSCodium
Open with Intellij IDEA
Download ZIP
Download TAR.GZ
Download BUNDLE
Gahow Wang
097131d962
Add attribution beta semantics metadata
2026-04-07 18:10:21 +08:00
data
Initial commit: quant backtesting framework with daily trading simulator
2026-04-05 00:41:19 +08:00
docs/superpowers
/specs
Add factor attribution design spec
2026-04-07 15:01:57 +08:00
strategies
Initial commit: quant backtesting framework with daily trading simulator
2026-04-05 00:41:19 +08:00
tests
Add attribution beta semantics metadata
2026-04-07 18:10:21 +08:00
.gitignore
auto mode for continuous running
2026-04-05 00:50:26 +08:00
.python-version
Initial commit: quant backtesting framework with daily trading simulator
2026-04-05 00:41:19 +08:00
CLAUDE.md
Single-process monitor for US + CN markets
2026-04-07 00:16:46 +08:00
data_manager.py
Initial commit: quant backtesting framework with daily trading simulator
2026-04-05 00:41:19 +08:00
factor_attribution.py
Add attribution beta semantics metadata
2026-04-07 18:10:21 +08:00
main.py
Integrate factor attribution into backtest CLI
2026-04-07 18:10:21 +08:00
metrics.py
Initial commit: quant backtesting framework with daily trading simulator
2026-04-05 00:41:19 +08:00
pyproject.toml
Initial commit: quant backtesting framework with daily trading simulator
2026-04-05 00:41:19 +08:00
README.md
auto mode for continuous running
2026-04-05 00:50:26 +08:00
trader.py
Single-process monitor for US + CN markets
2026-04-07 00:16:46 +08:00
universe.py
Initial commit: quant backtesting framework with daily trading simulator
2026-04-05 00:41:19 +08:00
uv.lock
Initial commit: quant backtesting framework with daily trading simulator
2026-04-05 00:41:19 +08:00
README.md
The file is empty.
Description
No description provided
Readme
423
KiB
Languages
Python
100%