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signal-platform/app/config.py
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dennisthiessen e5166ed668
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sentiment: LLM buy/hold/avoid + full analysis, and search-budget scoping
Richer LLM output (same grounded call, ~no extra cost):
- All providers now also return a recommendation (buy/hold/avoid) and a thorough
  reasoning paragraph; Gemini now actually captures reasoning + grounding
  citations (it was dropping them). Stored on sentiment_scores (migration 008),
  exposed in the API; display-only — NOT fed into the composite/EV.
- Ticker Sentiment panel shows an "LLM view" badge and a "Full analysis & sources"
  expander with the complete reasoning + citations.

Search-budget scoping (Gemini grounding free tier = 5000/mo):
- collect_sentiment now targets only watchlist + open paper trades + top-N by
  composite, skips tickers refreshed within sentiment_fresh_hours (72h), and caps
  per run (sentiment_max_per_run). Once the relevant set is fresh, runs spend 0
  searches until it ages out — bounding monthly usage well under the free tier.
- Widened sentiment lookback to 7d (scoring + display) so sparser collection
  still feeds the dimension score.

Deploy: alembic upgrade (sentiment_scores.recommendation). Switch provider to
Gemini Flash in Admin for the cost win (grounded, cheapest).

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
2026-06-16 16:34:19 +02:00

79 lines
2.6 KiB
Python

from pydantic_settings import BaseSettings, SettingsConfigDict
class Settings(BaseSettings):
model_config = SettingsConfigDict(env_file=".env", env_file_encoding="utf-8")
# Database
database_url: str = "postgresql+asyncpg://stock_backend:changeme@localhost:5432/stock_data_backend"
# Auth
jwt_secret: str = "change-this-to-a-random-secret"
jwt_expiry_minutes: int = 60
# OHLCV Provider — Alpaca Markets
alpaca_api_key: str = ""
alpaca_api_secret: str = ""
# Sentiment Provider — Gemini with Search Grounding (legacy)
gemini_api_key: str = ""
gemini_model: str = "gemini-2.0-flash"
# Sentiment Provider — OpenAI
openai_api_key: str = ""
openai_model: str = "gpt-4o-mini"
openai_sentiment_batch_size: int = 5
# Sentiment Provider — DeepSeek / xAI (OpenAI-compatible; optional env fallback)
deepseek_api_key: str = ""
xai_api_key: str = ""
# Fundamentals Provider — Financial Modeling Prep
fmp_api_key: str = ""
# Fundamentals Provider — Finnhub (optional fallback)
finnhub_api_key: str = ""
# Fundamentals Provider — Alpha Vantage (optional fallback)
alpha_vantage_api_key: str = ""
# Alerts — Telegram (optional env fallback; can also be set in Admin)
telegram_bot_token: str = ""
telegram_chat_id: str = ""
# Scheduled Jobs
data_collector_frequency: str = "daily"
sentiment_poll_interval_minutes: int = 30
# Sentiment search-budget controls (Gemini grounding free tier = 5000/month).
# Only fetch sentiment for relevant tickers (watchlist + open trades + top-N by
# composite), skip ones refreshed within fresh_hours, and cap per run.
sentiment_fresh_hours: int = 72
sentiment_max_per_run: int = 25
sentiment_top_composite: int = 30
fundamental_fetch_frequency: str = "daily"
rr_scan_frequency: str = "daily"
alerts_frequency: str = "hourly"
fundamental_rate_limit_retries: int = 3
fundamental_rate_limit_backoff_seconds: int = 15
# Pause between tickers in the bulk fundamentals job. Free tiers throttle
# hard (Finnhub ~60 calls/min, ~3 calls/ticker → ~3s/ticker); without
# spacing the job bursts straight into 429s. 0 disables.
fundamental_request_spacing_seconds: float = 3.0
# Scoring Defaults
default_watchlist_auto_size: int = 10
default_rr_threshold: float = 1.5
# Outcome evaluation: trading days before an undecided setup expires
outcome_evaluation_max_bars: int = 30
# Database Pool
db_pool_size: int = 5
db_pool_timeout: int = 30
# Logging
log_level: str = "INFO"
settings = Settings()