Improve offline coverage for data boundaries

This commit is contained in:
Yuxuan Yan
2026-06-16 17:42:20 +08:00
parent 31baa18ce5
commit b5c8c0b8da
5 changed files with 587 additions and 0 deletions
+118
View File
@@ -425,3 +425,121 @@ def test_cli_error_paths_are_clear_for_bad_user_inputs(tmp_path):
"--symbol", "sh999999", "--symbol", "sh999999",
]) ])
assert "Symbol 'sh999999' not found" in alphaview_missing_symbol.output assert "Symbol 'sh999999' not found" in alphaview_missing_symbol.output
def test_cli_list_and_legacy_feature_paths(tmp_path):
runner = CliRunner()
daily_bars = make_generated_daily_bars(n_sessions=3, include_missing=False)
minute_bars = make_generated_minute_bars(daily_bars)
daily_path = tmp_path / "daily_bars.pq"
minute_path = tmp_path / "minute_bars.pq"
daily_bars.to_parquet(daily_path, index=False)
minute_bars.to_parquet(minute_path, index=False)
derived_list = _invoke_ok(runner, ["derived", "list"])
feature_list = _invoke_ok(runner, ["feature", "list"])
assert "minute_daily_summary" in derived_list.output
assert "minute_daily_summary" in feature_list.output
feature_dir = tmp_path / "features"
feature_compute = _invoke_ok(runner, [
"feature",
"compute",
"--minute-path",
str(minute_path),
"--daily-path",
str(daily_path),
"--feature-type",
"minute_daily_summary",
"--feature-name",
"legacy_summary",
"--output-dir",
str(feature_dir),
])
feature_path = feature_dir / "legacy_summary.pq"
assert "Loaded minute bars:" in feature_compute.output
assert "Loaded daily data:" in feature_compute.output
assert "Saved feature:" in feature_compute.output
assert feature_path.exists()
no_input = _invoke_error(runner, [
"derived",
"compute",
"--derived-type",
"minute_daily_summary",
"--derived-name",
"missing_inputs",
"--output-dir",
str(tmp_path / "derived"),
])
assert "At least one of --daily-path or --minute-path is required" in no_input.output
missing_minute = _invoke_error(runner, [
"derived",
"compute",
"--daily-path",
str(daily_path),
"--derived-type",
"minute_daily_summary",
"--derived-name",
"daily_only",
"--output-dir",
str(tmp_path / "derived"),
])
assert "minute_daily_summary requires minute input" in missing_minute.output
malformed_feature_param = _invoke_error(runner, [
"feature",
"compute",
"--minute-path",
str(minute_path),
"--feature-type",
"minute_daily_summary",
"--feature-name",
"bad_param",
"--param",
"not-an-assignment",
"--output-dir",
str(tmp_path / "features_bad"),
])
assert "--param must be name=value" in malformed_feature_param.output
unknown_feature = _invoke_error(runner, [
"feature",
"compute",
"--minute-path",
str(minute_path),
"--feature-type",
"does_not_exist",
"--feature-name",
"bad_feature",
"--output-dir",
str(tmp_path / "features_unknown"),
])
assert "Unknown feature-type" in unknown_feature.output
def test_cli_pqcat_row_modes(tmp_path):
runner = CliRunner()
daily_bars = make_generated_daily_bars(n_sessions=3, include_missing=False)
daily_path = tmp_path / "daily_bars.pq"
daily_bars.to_parquet(daily_path, index=False)
head_result = _invoke_ok(runner, [
"pqcat",
str(daily_path),
"--head",
"2",
"--columns",
"symbol_id,close",
])
tail_result = _invoke_ok(runner, [
"pqcat",
str(daily_path),
"--tail",
"1",
])
assert "symbol_id" in head_result.output
assert "close" in head_result.output
assert "date" in tail_result.output
+148
View File
@@ -0,0 +1,148 @@
"""Offline coverage for data CLI and universe resolution glue."""
from __future__ import annotations
import pandas as pd
from click.testing import CliRunner
from cli import cli
import pipeline.data.cli as data_cli
import pipeline.data.downloader as pipeline_downloader
def test_resolve_universe_handles_named_file_all_and_symbol_list(tmp_path, monkeypatch):
hs300_raw = pd.DataFrame({
"updateDate": ["2024-01-12", "2024-01-12"],
"stockName": ["浦发银行", "平安银行"],
"stockCode": ["sh.600000", "sz.000001"],
})
zz500_raw = pd.DataFrame({
"name": ["东风汽车"],
"code": ["sh.600006"],
"date": ["2024-01-12"],
})
monkeypatch.setattr(pipeline_downloader, "get_hs300_stocks", lambda: hs300_raw)
monkeypatch.setattr(pipeline_downloader, "get_zz500_stocks", lambda: zz500_raw)
monkeypatch.setattr(
pipeline_downloader,
"get_all_stocks",
lambda: pd.DataFrame({
"code": ["sh600000", "sz000001", "sh600519"],
"name": ["浦发银行", "平安银行", "贵州茅台"],
}),
)
symbol_file = tmp_path / "symbols.txt"
symbol_file.write_text("sh600000\n\nsz000001\n")
hs300 = pipeline_downloader._resolve_universe("hs300")
zz500 = pipeline_downloader._resolve_universe("csi500")
all_capped = pipeline_downloader._resolve_universe("all", max_symbols=2)
from_file = pipeline_downloader._resolve_universe(str(symbol_file))
from_list = pipeline_downloader._resolve_universe("sh600000, sz000001")
assert hs300.to_dict("list") == {
"symbol_name": ["浦发银行", "平安银行"],
"symbol_id": ["sh600000", "sz000001"],
}
assert zz500.to_dict("list") == {
"symbol_name": ["东风汽车"],
"symbol_id": ["sh600006"],
}
assert all_capped["symbol_id"].tolist() == ["sh600000", "sz000001"]
assert from_file["symbol_id"].tolist() == ["sh600000", "sz000001"]
assert from_file["symbol_name"].tolist() == ["sh600000", "sz000001"]
assert from_list["symbol_id"].tolist() == ["sh600000", "sz000001"]
def test_data_cli_download_commands_print_summaries_without_network(monkeypatch, tmp_path):
runner = CliRunner()
daily_calls: list[dict] = []
minute_calls: list[dict] = []
def fake_daily(**kwargs):
daily_calls.append(kwargs)
return {
"dataset_path": str(tmp_path / "daily" / kwargs["universe"]),
"n_symbols": 2,
"n_requested": 3,
"n_rows": 18,
"date_min": "2024-01-02",
"date_max": "2024-01-12",
}
def fake_minute(**kwargs):
minute_calls.append(kwargs)
return {
"dataset_path": str(tmp_path / "minute" / kwargs["universe"]),
"frequency": "15m",
"n_symbols": 1,
"n_requested": 1,
"n_rows": 32,
"date_min": "2024-01-02",
"date_max": "2024-01-03",
}
monkeypatch.setattr(data_cli, "download_universe", fake_daily)
monkeypatch.setattr(data_cli, "download_minute_universe", fake_minute)
daily_result = runner.invoke(cli, [
"data",
"download",
"--universe",
"sh600000,sz000001",
"--start-date",
"2024-01-02",
"--end-date",
"2024-01-12",
"--output-dir",
str(tmp_path / "daily"),
"--symbols",
"3",
"--chunk-size",
"2",
"--adjust",
"none",
])
minute_result = runner.invoke(cli, [
"data",
"download-minute",
"--universe",
"toy",
"--start-date",
"2024-01-02",
"--end-date",
"2024-01-03",
"--output-dir",
str(tmp_path / "minute"),
"--symbols",
"1",
"--chunk-size",
"1",
"--frequency",
"15",
])
assert daily_result.exit_code == 0, daily_result.output
assert "Summary: 2/3 symbols, 18 bars" in daily_result.output
assert daily_calls == [{
"universe": "sh600000,sz000001",
"start_date": "2024-01-02",
"end_date": "2024-01-12",
"output_dir": str(tmp_path / "daily"),
"max_symbols": 3,
"chunk_size": 2,
"adjust": "none",
}]
assert minute_result.exit_code == 0, minute_result.output
assert "frequency=15m" in minute_result.output
assert minute_calls == [{
"universe": "toy",
"start_date": "2024-01-02",
"end_date": "2024-01-03",
"output_dir": str(tmp_path / "minute"),
"max_symbols": 1,
"chunk_size": 1,
"frequency": "15",
}]
+156
View File
@@ -4,6 +4,7 @@ from __future__ import annotations
import numpy as np import numpy as np
import pandas as pd import pandas as pd
import pytest
import data.downloader as downloader import data.downloader as downloader
import pipeline.data.downloader as pipeline_downloader import pipeline.data.downloader as pipeline_downloader
@@ -119,6 +120,121 @@ def test_download_daily_falls_back_to_akshare_when_baostock_empty(monkeypatch):
assert result["date"].tolist() == [pd.Timestamp("2024-01-02")] assert result["date"].tolist() == [pd.Timestamp("2024-01-02")]
def test_download_daily_raises_when_requested_source_has_no_data(monkeypatch):
monkeypatch.setattr(downloader, "_download_baostock", lambda *args: None)
with pytest.raises(RuntimeError, match="Failed to download data for sh600000"):
download_daily(
"sh600000",
"2024-01-02",
"2024-01-02",
source="baostock",
)
def test_akshare_daily_downloader_maps_columns_and_failures(monkeypatch):
calls: list[dict] = []
raw = pd.DataFrame({
"日期": ["2024-01-02"],
"开盘": [10.0],
"最高": [11.0],
"最低": [9.0],
"收盘": [10.5],
"成交量": [1000.0],
"成交额": [10500.0],
"换手率": [1.2],
})
def fake_hist(**kwargs):
calls.append(kwargs)
return raw.copy()
monkeypatch.setattr(downloader.ak, "stock_zh_a_hist", fake_hist)
result = downloader._download_akshare(
"sh600000",
"20240102",
"20240102",
adjust="",
)
assert calls == [{
"symbol": "600000",
"period": "daily",
"start_date": "20240102",
"end_date": "20240102",
"adjust": "",
}]
assert result is not None
assert result.columns.tolist() == [
"symbol", "date", "open", "high", "low", "close", "volume", "amount",
]
assert result["symbol"].tolist() == ["sh600000"]
monkeypatch.setattr(downloader.ak, "stock_zh_a_hist", lambda **kwargs: pd.DataFrame())
assert downloader._download_akshare("sh600000", "20240102", "20240102") is None
monkeypatch.setattr(
downloader.ak,
"stock_zh_a_hist",
lambda **kwargs: (_ for _ in ()).throw(RuntimeError("provider down")),
)
assert downloader._download_akshare("sh600000", "20240102", "20240102") is None
def test_baostock_daily_downloader_maps_errors_and_logout_failures(monkeypatch):
query_calls: list[dict] = []
row = ["2024-01-02", "10", "11", "9", "10.5", "1000", "10500"]
monkeypatch.setattr(downloader.bs, "login", lambda: None)
monkeypatch.setattr(
downloader.bs,
"logout",
lambda: (_ for _ in ()).throw(RuntimeError("logout failed")),
)
def fake_query(**kwargs):
query_calls.append(kwargs)
return _FakeResult([row])
monkeypatch.setattr(downloader.bs, "query_history_k_data_plus", fake_query)
result = downloader._download_baostock(
"sz000001",
"2024-01-02",
"2024-01-02",
adjust="none",
)
assert query_calls[0]["code"] == "sz.000001"
assert query_calls[0]["adjustflag"] == "3"
assert result is not None
assert result["symbol"].tolist() == ["sz000001"]
assert pd.api.types.is_numeric_dtype(result["close"])
monkeypatch.setattr(downloader.bs, "logout", lambda: None)
monkeypatch.setattr(
downloader.bs,
"query_history_k_data_plus",
lambda **kwargs: _FakeResult([], error_code="1", error_msg="bad symbol"),
)
assert downloader._download_baostock("sz000001", "2024-01-02", "2024-01-02") is None
monkeypatch.setattr(
downloader.bs,
"query_history_k_data_plus",
lambda **kwargs: _FakeResult([]),
)
assert downloader._download_baostock("sz000001", "2024-01-02", "2024-01-02") is None
monkeypatch.setattr(
downloader.bs,
"query_history_k_data_plus",
lambda **kwargs: (_ for _ in ()).throw(RuntimeError("query failed")),
)
assert downloader._download_baostock("sz000001", "2024-01-02", "2024-01-02") is None
def test_download_daily_batch_maps_rich_schema_and_vwap(monkeypatch): def test_download_daily_batch_maps_rich_schema_and_vwap(monkeypatch):
query_calls: list[dict] = [] query_calls: list[dict] = []
login_count = 0 login_count = 0
@@ -170,6 +286,46 @@ def test_download_daily_batch_maps_rich_schema_and_vwap(monkeypatch):
assert pd.api.types.is_numeric_dtype(frame["tradestatus"]) assert pd.api.types.is_numeric_dtype(frame["tradestatus"])
def test_download_daily_batch_periodic_relogin_and_none_result(monkeypatch):
responses = [
_FakeResult([], error_code="1", error_msg="bad symbol"),
_FakeResult([_daily_batch_row(date="2024-01-03")]),
]
login_count = 0
logout_count = 0
def fake_login():
nonlocal login_count
login_count += 1
def fake_logout():
nonlocal logout_count
logout_count += 1
monkeypatch.setattr(downloader.bs, "login", fake_login)
monkeypatch.setattr(downloader.bs, "logout", fake_logout)
monkeypatch.setattr(
downloader.bs,
"query_history_k_data_plus",
lambda **kwargs: responses.pop(0),
)
results = list(
download_daily_batch(
["sh600000", "sz000001"],
"2024-01-02",
"2024-01-03",
relogin_every=1,
)
)
assert results[0] == ("sh600000", None)
assert results[1][0] == "sz000001"
assert results[1][1] is not None
assert login_count == 2
assert logout_count == 2
def test_download_daily_batch_relogs_and_retries_session_loss(monkeypatch): def test_download_daily_batch_relogs_and_retries_session_loss(monkeypatch):
responses = [ responses = [
_FakeResult([], error_code="10002007", error_msg="用户未登录"), _FakeResult([], error_code="10002007", error_msg="用户未登录"),
+73
View File
@@ -91,6 +91,24 @@ def test_download_minute_batch_maps_and_parses_baostock_rows(monkeypatch):
assert pd.api.types.is_numeric_dtype(df["volume"]) assert pd.api.types.is_numeric_dtype(df["volume"])
def test_minute_frequency_and_timestamp_parsing_edge_cases():
frequency, label = low_level_downloader._normalize_minute_frequency("15m")
assert (frequency, label) == ("15", "15m")
with pytest.raises(ValueError, match="Unsupported minute frequency"):
low_level_downloader._normalize_minute_frequency("1m")
parsed = low_level_downloader._parse_minute_datetime(
pd.Series(["2024-01-02", "2024-01-02"]),
pd.Series(["0935", "09:40:00"]),
)
assert parsed.tolist() == [
pd.Timestamp("2024-01-02 09:35:00"),
pd.Timestamp("2024-01-02 09:40:00"),
]
def test_download_minute_batch_empty_result_yields_none(monkeypatch): def test_download_minute_batch_empty_result_yields_none(monkeypatch):
monkeypatch.setattr(low_level_downloader.bs, "login", lambda: None) monkeypatch.setattr(low_level_downloader.bs, "login", lambda: None)
monkeypatch.setattr(low_level_downloader.bs, "logout", lambda: None) monkeypatch.setattr(low_level_downloader.bs, "logout", lambda: None)
@@ -105,6 +123,61 @@ def test_download_minute_batch_empty_result_yields_none(monkeypatch):
] ]
def test_download_minute_batch_non_login_error_and_periodic_relogin(monkeypatch):
responses = [
_FakeResult([], error_code="1", error_msg="bad symbol"),
_FakeResult([]),
]
login_count = 0
logout_count = 0
def fake_login():
nonlocal login_count
login_count += 1
def fake_logout():
nonlocal logout_count
logout_count += 1
monkeypatch.setattr(low_level_downloader.bs, "login", fake_login)
monkeypatch.setattr(low_level_downloader.bs, "logout", fake_logout)
monkeypatch.setattr(
low_level_downloader.bs,
"query_history_k_data_plus",
lambda **kwargs: responses.pop(0),
)
assert list(
download_minute_batch(
["sh600000", "sz000001"],
"2024-01-02",
"2024-01-02",
relogin_every=1,
)
) == [("sh600000", None), ("sz000001", None)]
assert login_count == 2
assert logout_count == 2
def test_download_minute_batch_second_session_loss_yields_none(monkeypatch):
responses = [
_FakeResult([], error_code="10002007", error_msg="用户未登录"),
_FakeResult([], error_code="10002007", error_msg="用户未登录"),
]
monkeypatch.setattr(low_level_downloader.bs, "login", lambda: None)
monkeypatch.setattr(low_level_downloader.bs, "logout", lambda: None)
monkeypatch.setattr(
low_level_downloader.bs,
"query_history_k_data_plus",
lambda **kwargs: responses.pop(0),
)
assert list(download_minute_batch(["sh600000"], "2024-01-02", "2024-01-02")) == [
("sh600000", None)
]
def test_download_minute_batch_rejects_unparsed_timestamps(monkeypatch): def test_download_minute_batch_rejects_unparsed_timestamps(monkeypatch):
bad_rows = [[ bad_rows = [[
"2024-01-02", "2024-01-02",
+92
View File
@@ -0,0 +1,92 @@
"""Offline tests for baostock-backed universe helpers."""
from __future__ import annotations
import pandas as pd
import data.universe as universe
class _FakeResult:
def __init__(self, rows, fields=None):
self.rows = rows
self.fields = fields or ["code", "name", "date"]
self._idx = -1
def next(self):
self._idx += 1
return self._idx < len(self.rows)
def get_row_data(self):
return self.rows[self._idx]
def test_index_constituent_helpers_normalize_dotted_codes(monkeypatch):
calls: list[str] = []
monkeypatch.setattr(universe.bs, "login", lambda: calls.append("login"))
monkeypatch.setattr(universe.bs, "logout", lambda: calls.append("logout"))
monkeypatch.setattr(
universe.bs,
"query_hs300_stocks",
lambda: _FakeResult([
["sh.600000", "浦发银行", "2024-01-12"],
["sz.000001", "平安银行", "2024-01-12"],
]),
)
monkeypatch.setattr(
universe.bs,
"query_zz500_stocks",
lambda: _FakeResult([
["sh.600006", "东风汽车", "2024-01-12"],
]),
)
hs300 = universe.get_hs300_stocks()
zz500 = universe.get_zz500_stocks()
assert calls == ["login", "logout", "login", "logout"]
assert hs300["code"].tolist() == ["sh600000", "sz000001"]
assert zz500["code"].tolist() == ["sh600006"]
assert hs300["name"].tolist() == ["浦发银行", "平安银行"]
def test_get_all_stocks_walks_back_and_filters_to_listed_a_shares(monkeypatch):
fields = ["code", "tradeStatus", "code_name"]
responses = [
_FakeResult([], fields=fields),
_FakeResult(
[
["sh.600000", "1", "浦发银行"],
["sh.688001", "1", "华兴源创"],
["sz.000001", "1", "平安银行"],
["sz.300750", "1", "宁德时代"],
["sz.399001", "1", "深证成指"],
["sz.200001", "1", "深物业B"],
["bj.430047", "1", "北交所样本"],
],
fields=fields,
),
]
query_days: list[str] = []
monkeypatch.setattr(universe.bs, "login", lambda: None)
monkeypatch.setattr(universe.bs, "logout", lambda: None)
def fake_query_all_stock(day):
query_days.append(day)
return responses.pop(0)
monkeypatch.setattr(universe.bs, "query_all_stock", fake_query_all_stock)
result = universe.get_all_stocks("2024-01-07")
assert query_days == ["2024-01-07", "2024-01-06"]
assert result.columns.tolist() == ["code", "name"]
assert result["code"].tolist() == [
"sh600000",
"sh688001",
"sz000001",
"sz300750",
]
assert result["name"].tolist() == ["浦发银行", "华兴源创", "平安银行", "宁德时代"]