mirror of
https://github.com/Xe138/AI-Trader.git
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Phase 1 of v0.3.0 date range and on-demand download implementation. Database changes: - Add price_data table (OHLCV data, replaces merged.jsonl) - Add price_data_coverage table (track downloaded date ranges) - Add simulation_runs table (soft delete support) - Add simulation_run_id to positions table - Add comprehensive indexes for new tables New modules: - api/price_data_manager.py - Priority-based download manager - Coverage gap detection - Smart download prioritization (maximize date completion) - Rate limit handling with retry logic - Alpha Vantage integration Configuration: - configs/nasdaq100_symbols.json - NASDAQ 100 constituent list Next steps (not yet implemented): - Migration script for merged.jsonl -> price_data - Update API models (start_date/end_date) - Update tools/price_tools.py to read from database - Simulation run tracking implementation - API integration - Tests and documentation This is work in progress for the v0.3.0 release.
396 lines
12 KiB
Python
396 lines
12 KiB
Python
"""
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Database utilities and schema management for AI-Trader API.
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This module provides:
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- SQLite connection management
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- Database schema initialization (6 tables)
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- ACID-compliant transaction support
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"""
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import sqlite3
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from pathlib import Path
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from typing import Optional
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import os
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def get_db_connection(db_path: str = "data/jobs.db") -> sqlite3.Connection:
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"""
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Get SQLite database connection with proper configuration.
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Args:
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db_path: Path to SQLite database file
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Returns:
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Configured SQLite connection
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Configuration:
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- Foreign keys enabled for referential integrity
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- Row factory for dict-like access
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- Check same thread disabled for FastAPI async compatibility
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"""
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# Ensure data directory exists
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db_path_obj = Path(db_path)
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db_path_obj.parent.mkdir(parents=True, exist_ok=True)
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conn = sqlite3.connect(db_path, check_same_thread=False)
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conn.execute("PRAGMA foreign_keys = ON")
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conn.row_factory = sqlite3.Row
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return conn
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def initialize_database(db_path: str = "data/jobs.db") -> None:
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"""
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Create all database tables with enhanced schema.
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Tables created:
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1. jobs - High-level job metadata and status
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2. job_details - Per model-day execution tracking
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3. positions - Trading positions and P&L metrics
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4. holdings - Portfolio holdings per position
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5. reasoning_logs - AI decision logs (optional, for detail=full)
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6. tool_usage - Tool usage statistics
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7. price_data - Historical OHLCV price data (replaces merged.jsonl)
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8. price_data_coverage - Downloaded date range tracking per symbol
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9. simulation_runs - Simulation run tracking for soft delete
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Args:
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db_path: Path to SQLite database file
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"""
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conn = get_db_connection(db_path)
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cursor = conn.cursor()
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# Table 1: Jobs - Job metadata and lifecycle
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cursor.execute("""
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CREATE TABLE IF NOT EXISTS jobs (
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job_id TEXT PRIMARY KEY,
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config_path TEXT NOT NULL,
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status TEXT NOT NULL CHECK(status IN ('pending', 'running', 'completed', 'partial', 'failed')),
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date_range TEXT NOT NULL,
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models TEXT NOT NULL,
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created_at TEXT NOT NULL,
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started_at TEXT,
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updated_at TEXT,
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completed_at TEXT,
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total_duration_seconds REAL,
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error TEXT
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)
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""")
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# Table 2: Job Details - Per model-day execution
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cursor.execute("""
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CREATE TABLE IF NOT EXISTS job_details (
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id INTEGER PRIMARY KEY AUTOINCREMENT,
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job_id TEXT NOT NULL,
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date TEXT NOT NULL,
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model TEXT NOT NULL,
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status TEXT NOT NULL CHECK(status IN ('pending', 'running', 'completed', 'failed')),
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started_at TEXT,
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completed_at TEXT,
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duration_seconds REAL,
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error TEXT,
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FOREIGN KEY (job_id) REFERENCES jobs(job_id) ON DELETE CASCADE
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)
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""")
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# Table 3: Positions - Trading positions and P&L
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cursor.execute("""
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CREATE TABLE IF NOT EXISTS positions (
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id INTEGER PRIMARY KEY AUTOINCREMENT,
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job_id TEXT NOT NULL,
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date TEXT NOT NULL,
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model TEXT NOT NULL,
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action_id INTEGER NOT NULL,
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action_type TEXT CHECK(action_type IN ('buy', 'sell', 'no_trade')),
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symbol TEXT,
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amount INTEGER,
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price REAL,
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cash REAL NOT NULL,
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portfolio_value REAL NOT NULL,
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daily_profit REAL,
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daily_return_pct REAL,
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cumulative_profit REAL,
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cumulative_return_pct REAL,
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simulation_run_id TEXT,
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created_at TEXT NOT NULL,
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FOREIGN KEY (job_id) REFERENCES jobs(job_id) ON DELETE CASCADE,
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FOREIGN KEY (simulation_run_id) REFERENCES simulation_runs(run_id) ON DELETE SET NULL
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)
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""")
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# Table 4: Holdings - Portfolio holdings
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cursor.execute("""
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CREATE TABLE IF NOT EXISTS holdings (
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id INTEGER PRIMARY KEY AUTOINCREMENT,
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position_id INTEGER NOT NULL,
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symbol TEXT NOT NULL,
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quantity INTEGER NOT NULL,
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FOREIGN KEY (position_id) REFERENCES positions(id) ON DELETE CASCADE
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)
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""")
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# Table 5: Reasoning Logs - AI decision logs (optional)
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cursor.execute("""
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CREATE TABLE IF NOT EXISTS reasoning_logs (
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id INTEGER PRIMARY KEY AUTOINCREMENT,
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job_id TEXT NOT NULL,
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date TEXT NOT NULL,
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model TEXT NOT NULL,
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step_number INTEGER NOT NULL,
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timestamp TEXT NOT NULL,
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role TEXT CHECK(role IN ('user', 'assistant', 'tool')),
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content TEXT,
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tool_name TEXT,
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FOREIGN KEY (job_id) REFERENCES jobs(job_id) ON DELETE CASCADE
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)
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""")
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# Table 6: Tool Usage - Tool usage statistics
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cursor.execute("""
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CREATE TABLE IF NOT EXISTS tool_usage (
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id INTEGER PRIMARY KEY AUTOINCREMENT,
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job_id TEXT NOT NULL,
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date TEXT NOT NULL,
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model TEXT NOT NULL,
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tool_name TEXT NOT NULL,
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call_count INTEGER NOT NULL DEFAULT 1,
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total_duration_seconds REAL,
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FOREIGN KEY (job_id) REFERENCES jobs(job_id) ON DELETE CASCADE
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)
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""")
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# Table 7: Price Data - OHLCV price data (replaces merged.jsonl)
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cursor.execute("""
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CREATE TABLE IF NOT EXISTS price_data (
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id INTEGER PRIMARY KEY AUTOINCREMENT,
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symbol TEXT NOT NULL,
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date TEXT NOT NULL,
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open REAL NOT NULL,
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high REAL NOT NULL,
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low REAL NOT NULL,
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close REAL NOT NULL,
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volume INTEGER NOT NULL,
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created_at TEXT NOT NULL,
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UNIQUE(symbol, date)
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)
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""")
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# Table 8: Price Data Coverage - Track downloaded date ranges per symbol
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cursor.execute("""
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CREATE TABLE IF NOT EXISTS price_data_coverage (
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id INTEGER PRIMARY KEY AUTOINCREMENT,
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symbol TEXT NOT NULL,
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start_date TEXT NOT NULL,
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end_date TEXT NOT NULL,
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downloaded_at TEXT NOT NULL,
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source TEXT DEFAULT 'alpha_vantage',
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UNIQUE(symbol, start_date, end_date)
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)
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""")
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# Table 9: Simulation Runs - Track simulation runs for soft delete
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cursor.execute("""
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CREATE TABLE IF NOT EXISTS simulation_runs (
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run_id TEXT PRIMARY KEY,
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job_id TEXT NOT NULL,
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model TEXT NOT NULL,
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start_date TEXT NOT NULL,
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end_date TEXT NOT NULL,
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status TEXT NOT NULL CHECK(status IN ('active', 'superseded')),
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created_at TEXT NOT NULL,
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superseded_at TEXT,
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FOREIGN KEY (job_id) REFERENCES jobs(job_id) ON DELETE CASCADE
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)
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""")
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# Create indexes for performance
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_create_indexes(cursor)
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conn.commit()
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conn.close()
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def _create_indexes(cursor: sqlite3.Cursor) -> None:
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"""Create database indexes for query performance."""
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# Jobs table indexes
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_jobs_status ON jobs(status)
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""")
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_jobs_created_at ON jobs(created_at DESC)
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""")
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# Job details table indexes
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_job_details_job_id ON job_details(job_id)
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""")
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_job_details_status ON job_details(status)
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""")
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cursor.execute("""
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CREATE UNIQUE INDEX IF NOT EXISTS idx_job_details_unique
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ON job_details(job_id, date, model)
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""")
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# Positions table indexes
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_positions_job_id ON positions(job_id)
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""")
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_positions_date ON positions(date)
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""")
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_positions_model ON positions(model)
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""")
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_positions_date_model ON positions(date, model)
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""")
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cursor.execute("""
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CREATE UNIQUE INDEX IF NOT EXISTS idx_positions_unique
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ON positions(job_id, date, model, action_id)
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""")
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# Holdings table indexes
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_holdings_position_id ON holdings(position_id)
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""")
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_holdings_symbol ON holdings(symbol)
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""")
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# Reasoning logs table indexes
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_reasoning_logs_job_date_model
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ON reasoning_logs(job_id, date, model)
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""")
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# Tool usage table indexes
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_tool_usage_job_date_model
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ON tool_usage(job_id, date, model)
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""")
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# Price data table indexes
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_price_data_symbol_date ON price_data(symbol, date)
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""")
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_price_data_date ON price_data(date)
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""")
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_price_data_symbol ON price_data(symbol)
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""")
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# Price data coverage table indexes
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_coverage_symbol ON price_data_coverage(symbol)
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""")
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_coverage_dates ON price_data_coverage(start_date, end_date)
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""")
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# Simulation runs table indexes
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_runs_job_model ON simulation_runs(job_id, model)
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""")
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_runs_status ON simulation_runs(status)
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""")
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_runs_dates ON simulation_runs(start_date, end_date)
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""")
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# Positions table - add index for simulation_run_id
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cursor.execute("""
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CREATE INDEX IF NOT EXISTS idx_positions_run_id ON positions(simulation_run_id)
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""")
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def drop_all_tables(db_path: str = "data/jobs.db") -> None:
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"""
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Drop all database tables. USE WITH CAUTION.
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This is primarily for testing and development.
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Args:
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db_path: Path to SQLite database file
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"""
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conn = get_db_connection(db_path)
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cursor = conn.cursor()
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tables = [
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'tool_usage',
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'reasoning_logs',
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'holdings',
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'positions',
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'simulation_runs',
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'job_details',
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'jobs',
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'price_data_coverage',
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'price_data'
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]
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for table in tables:
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cursor.execute(f"DROP TABLE IF EXISTS {table}")
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conn.commit()
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conn.close()
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def vacuum_database(db_path: str = "data/jobs.db") -> None:
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"""
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Reclaim disk space after deletions.
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Should be run periodically after cleanup operations.
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Args:
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db_path: Path to SQLite database file
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"""
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conn = get_db_connection(db_path)
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conn.execute("VACUUM")
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conn.close()
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def get_database_stats(db_path: str = "data/jobs.db") -> dict:
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"""
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Get database statistics for monitoring.
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Returns:
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Dictionary with table row counts and database size
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Example:
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{
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"database_size_mb": 12.5,
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"jobs": 150,
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"job_details": 3000,
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"positions": 15000,
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"holdings": 45000,
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"reasoning_logs": 300000,
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"tool_usage": 12000
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}
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"""
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conn = get_db_connection(db_path)
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cursor = conn.cursor()
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stats = {}
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# Get database file size
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if os.path.exists(db_path):
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size_bytes = os.path.getsize(db_path)
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stats["database_size_mb"] = round(size_bytes / (1024 * 1024), 2)
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else:
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stats["database_size_mb"] = 0
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# Get row counts for each table
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tables = ['jobs', 'job_details', 'positions', 'holdings', 'reasoning_logs', 'tool_usage',
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'price_data', 'price_data_coverage', 'simulation_runs']
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for table in tables:
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cursor.execute(f"SELECT COUNT(*) FROM {table}")
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stats[table] = cursor.fetchone()[0]
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conn.close()
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return stats
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