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Alpha 策略研究基础库:交易日历、存储引擎、并发框架、ClickHouse 驱动

Project description

Alpha Common

License: MIT Python Ruff

Alpha 策略研究基础设施库,提供量化研究中常用的四个核心模块:

  • xcals — A 股交易日历(交易日查询、日期偏移、报告期计算)
  • blazestore — 本地 Parquet 存储引擎(Hive 分区、SQL 查询、MySQL/ClickHouse 客户端)
  • ygo — 并发任务框架(延迟执行、线程池、进度条)
  • clickhouse_df — ClickHouse 数据库驱动(Polars/Pandas 读写、命令行批量下载)

安装

pip install alpha-common

开发模式(使用 uv):

git clone https://github.com/Aequiludium/alpha-common.git
cd alpha-common
uv sync

使用

xcals — 交易日历

import xcals

# 交易日查询
days = xcals.get_tradingdays("2024-01-01", "2024-12-31")
# -> ['2024-01-02', '2024-01-03', ..., '2024-12-31']

xcals.is_tradeday("2024-12-31")  # True

# 日期偏移(非交易日自动跳到最近交易日)
prev = xcals.shift_tradeday("2024-12-31", -5)
# -> '2024-12-24'

# 最近交易日
xcals.get_last_tradingday("2024-01-01")
# -> '2023-12-29'

# 报告期计算(获取前 2 个季报截止日)
xcals.get_previous_report_dates("2024-10-15", n=2)
# -> ['2024-06-30', '2024-09-30']

# n=1 时返回单个报告期
xcals.get_previous_report_dates("2024-10-15", n=1)
# -> '2024-09-30'

# 更新交易日数据(从远程下载最新日历)
xcals.update()

blazestore — 本地 Parquet 存储引擎

支持三种写入模式和 SQL 查询,配置路径默认为 ~/.blaze/config.toml

模块级 API(推荐)

from blazestore import put, read, sql, list_tables

# 写入:自动识别模式
put(df, "trades")                          # 写入 trades/data.parquet
put(df, "trades/2024.parquet")             # 直接写入文件
put(df, "trades", partitions=["date"])     # Hive 分区写入

# 读取(返回 LazyFrame,自动识别 Hive 分区)
lf = read("trades")
df = lf.filter(pl.col("symbol") == "AAPL").collect()

# 对本地 Parquet 文件执行 SQL 查询
result = sql("SELECT date, count(*) FROM trades GROUP BY date")

类 API

from blazestore import ParquetStore

store = ParquetStore("/data/store")

# 写入
store.put(df, "trades")
store.put(df, "trades", partitions=["date"])

# 读取
lf = store.read("trades")

# 表管理
store.list_tables()              # -> ['trades', 'orders']
store.get_table_info("trades")   # -> {'name': 'trades', 'rows': 1000, ...}
store.optimize_table("trades")   # 合并小文件
store.check_table("trades")      # -> True
store.delete_table("old_table")

数据库客户端

from blazestore import read_ck, read_mysql, write_mysql, download_ck

# 从 ClickHouse 读取
df = read_ck("SELECT * FROM trades WHERE date = '2024-01-01'")

# 从 MySQL 读取
df = read_mysql("SELECT * FROM users WHERE id = 1")

# 写入 MySQL
write_mysql(df, "users")

# ClickHouse 批量下载到文件(使用 clickhouse-client)
download_ck("SELECT * FROM big_table", "output.parquet")

配置示例(~/.blaze/config.toml):

[paths]
store = "/home/user/BlazeStore"

[databases.ck]
urls = ["192.168.1.100:9000"]
user = "default"
password = ""

[databases.mysql]
url = "127.0.0.1:3306"
user = "root"
password = ""

ygo — 并发任务框架

基于 joblib 的并行调度,支持任务分组、进度条。

from ygo import Pool

pool = Pool(n_jobs=4, show_progress=True)

# 方式一:装饰器注册(推荐)
@pool.submit(job_name="download")
def download(date: str) -> dict:
    return {"date": date, "data": fetch_data(date)}

# 调用注册函数会将任务加入池中
download(date="2024-01-01")
download(date="2024-01-02")

# 并行执行所有任务
results = pool.do()  # -> [{"date": "2024-01-01", ...}, {"date": "2024-01-02", ...}]

# 方式二:延迟函数(适用于批量生成)
from ygo import delay

jobs = [delay(fetch_data).bind(day=d) for d in trading_days]
pool.submit_batch(jobs, job_name="batch_download")
pool.do()

Pool 支持上下文管理器:

with Pool(n_jobs=8) as pool:
    for day in trading_days:
        pool.submit(download)(date=day)
    results = pool.do()

clickhouse_df — ClickHouse 数据库驱动

import clickhouse_df

# 连接(随机负载均衡)
conn = clickhouse_df.connect(
    urls=["192.168.1.100:9000", "192.168.1.101:9000"],
    user="default",
    password="",
)

# 查询为 Polars DataFrame
df = clickhouse_df.to_polars("SELECT * FROM trades LIMIT 10")
# shape: (10, 5)

# 查询为 Pandas DataFrame
pdf = clickhouse_df.to_pandas("SELECT * FROM trades LIMIT 10")

# 关闭当前线程所有连接
clickhouse_df.close_all()

# 命令行批量下载(适合大结果集,直接写入 Parquet)
clickhouse_df.raw_download("SELECT * FROM big_table", "output.parquet", settings)

开发

uv sync                    # 安装依赖
uv run pytest tests/       # 运行测试
uv run ruff check .        # 代码检查
uv run ruff format .       # 格式化代码

许可证

MIT

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