feat: add Meet Kevin pydantic schemas (analysis + API shapes)
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shared/schemas/meet_kevin.py
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318
shared/schemas/meet_kevin.py
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"""Meet Kevin pipeline Pydantic schemas.
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Includes LLM tool-input schemas (MeetKevinTickerMention, MeetKevinAnalysis)
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and API response shapes (TranscriptSegment, VideoSummary, VideoDetail, StockSummary,
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StockMention, StockTimeline, TimelineBucket, PipelineHealth).
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"""
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from datetime import datetime
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from enum import Enum
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from typing import Literal
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from pydantic import BaseModel, Field, field_validator
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# =============================================================================
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# Enums
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# =============================================================================
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class TickerAction(str, Enum):
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"""Action recommendation for a stock ticker."""
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BUY = "buy"
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SELL = "sell"
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HOLD = "hold"
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WATCH = "watch"
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AVOID = "avoid"
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class TimeHorizon(str, Enum):
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"""Time horizon for an investment recommendation."""
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INTRADAY = "intraday"
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DAYS = "days"
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WEEKS = "weeks"
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MONTHS = "months"
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LONG_TERM = "long_term"
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UNSPECIFIED = "unspecified"
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class MarketOutlook(str, Enum):
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"""Overall market sentiment direction."""
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BULLISH = "bullish"
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NEUTRAL = "neutral"
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BEARISH = "bearish"
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MIXED = "mixed"
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class VideoStatus(str, Enum):
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"""Status of a video in the processing pipeline."""
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DISCOVERED = "discovered"
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CAPTIONED = "captioned"
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ANALYZED = "analyzed"
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FAILED = "failed"
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SKIPPED = "skipped"
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class TranscriptSource(str, Enum):
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"""Source of transcript captions."""
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CAPTIONS_MANUAL = "captions_manual"
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CAPTIONS_AUTO = "captions_auto"
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NONE = "none"
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# =============================================================================
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# LLM Tool-Input Schemas
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# =============================================================================
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class MeetKevinTickerMention(BaseModel):
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"""Single stock ticker mention extracted by Claude from a video transcript.
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Used as tool-input for the LLM analyzer and persisted as kevin_stock_mentions.
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"""
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symbol: str = Field(
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..., description="Stock ticker symbol (A-Z, 1-6 chars, auto-uppercased)"
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)
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action: Literal["buy", "sell", "hold", "watch", "avoid"] = Field(
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..., description="Recommendation action"
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)
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conviction: float = Field(
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..., ge=0.0, le=1.0, description="Confidence in recommendation (0.0-1.0)"
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)
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time_horizon: Literal[
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"intraday", "days", "weeks", "months", "long_term", "unspecified"
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] = Field(..., description="Time horizon for the recommendation")
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rationale_quote: str = Field(
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..., description="Short verbatim or paraphrased quote from video"
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)
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video_timestamp_seconds: int | None = Field(
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default=None, description="Timestamp for deep-link target"
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)
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@field_validator("symbol")
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@classmethod
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def uppercase_symbol(cls, v: str) -> str:
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"""Auto-uppercase the ticker symbol."""
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return v.upper()
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model_config = {"from_attributes": True}
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class MeetKevinAnalysis(BaseModel):
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"""Complete analysis output from Claude for a single video transcript.
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Used as tool-input for the LLM analyzer and persisted as kevin_analyses.
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"""
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market_outlook_direction: Literal["bullish", "neutral", "bearish", "mixed"] = (
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Field(..., description="Overall market sentiment direction")
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)
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market_outlook_reasoning: str = Field(
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..., description="Explanation of market outlook"
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)
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macro_themes: list[str] = Field(
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default_factory=list, description="Macro economic themes discussed"
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)
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key_risks: list[str] = Field(
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default_factory=list, description="Key risks identified"
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)
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summary: str = Field(..., description="~200-word summary of analysis")
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tickers: list[MeetKevinTickerMention] = Field(
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default_factory=list, description="List of ticker mentions"
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)
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model_config = {"from_attributes": True}
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# =============================================================================
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# API Response Schemas
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# =============================================================================
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class TranscriptSegment(BaseModel):
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"""Single segment from a video transcript with timing."""
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start_seconds: float = Field(..., description="Segment start time in seconds")
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end_seconds: float = Field(..., description="Segment end time in seconds")
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text: str = Field(..., description="Segment text content")
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model_config = {"from_attributes": True}
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class VideoSummary(BaseModel):
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"""Summary view of a video in the feed."""
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id: int = Field(..., description="Database ID")
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youtube_video_id: str = Field(..., description="YouTube video ID")
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title: str = Field(..., description="Video title")
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published_at: datetime = Field(..., description="Publication timestamp")
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thumbnail_url: str = Field(..., description="Thumbnail image URL")
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status: Literal["discovered", "captioned", "analyzed", "failed", "skipped"] = (
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Field(..., description="Processing status")
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)
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failure_reason: str | None = Field(
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default=None, description="Failure reason if status=failed"
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)
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ticker_count: int = Field(
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default=0, description="Number of ticker mentions analyzed"
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)
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model_config = {"from_attributes": True}
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class VideoDetail(BaseModel):
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"""Full details of a single video including analysis."""
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id: int = Field(..., description="Database ID")
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youtube_video_id: str = Field(..., description="YouTube video ID")
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title: str = Field(..., description="Video title")
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description: str | None = Field(default=None, description="Video description")
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published_at: datetime = Field(..., description="Publication timestamp")
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duration_seconds: int | None = Field(default=None, description="Video duration")
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thumbnail_url: str = Field(..., description="Thumbnail image URL")
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status: Literal["discovered", "captioned", "analyzed", "failed", "skipped"] = (
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Field(..., description="Processing status")
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)
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failure_reason: str | None = Field(
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default=None, description="Failure reason if status=failed"
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)
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transcript_source: Literal["captions_manual", "captions_auto", "none"] | None = (
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Field(default=None, description="Source of captions")
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)
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transcript_segments: list[TranscriptSegment] = Field(
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default_factory=list, description="Transcript segments with timing"
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)
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transcript_raw: str | None = Field(
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default=None, description="Full raw transcript text"
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)
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analysis: MeetKevinAnalysis | None = Field(
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default=None, description="LLM analysis if status=analyzed"
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)
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model_config = {"from_attributes": True}
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class StockMention(BaseModel):
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"""Single mention of a stock ticker in a video."""
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video_id: int = Field(..., description="Database ID of video")
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youtube_video_id: str = Field(..., description="YouTube video ID for linking")
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published_at: datetime = Field(..., description="Video publication date")
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action: Literal["buy", "sell", "hold", "watch", "avoid"] = Field(
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..., description="Recommendation action"
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)
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conviction: float = Field(
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..., ge=0.0, le=1.0, description="Confidence in recommendation"
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)
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time_horizon: Literal[
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"intraday", "days", "weeks", "months", "long_term", "unspecified"
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] = Field(..., description="Time horizon for recommendation")
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rationale_quote: str = Field(
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..., description="Quote or summary of rationale"
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)
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video_timestamp_seconds: int | None = Field(
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default=None, description="Deep-link timestamp"
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)
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model_config = {"from_attributes": True}
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class StockSummary(BaseModel):
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"""Summary of a stock across all mentions."""
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symbol: str = Field(..., description="Stock ticker")
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mention_count: int = Field(..., description="Total mention count")
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last_mentioned_at: datetime = Field(
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..., description="Timestamp of last mention"
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)
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latest_action: Literal["buy", "sell", "hold", "watch", "avoid"] = Field(
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..., description="Most recent recommendation"
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)
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avg_conviction: float = Field(
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..., ge=0.0, le=1.0, description="Average conviction across mentions"
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)
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bullish_count: int = Field(
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default=0, description="Buy + watch count"
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)
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bearish_count: int = Field(
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default=0, description="Sell + avoid count"
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)
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neutral_count: int = Field(
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default=0, description="Hold count"
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)
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model_config = {"from_attributes": True}
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class TimelineBucket(BaseModel):
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"""Single time bucket in a sentiment timeline."""
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bucket_date: str = Field(..., description="Date string (YYYY-MM-DD or YYYY-Www)")
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action: Literal["buy", "sell", "hold", "watch", "avoid"] | None = Field(
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default=None, description="Most common action in bucket"
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)
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avg_conviction: float = Field(
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default=0.0, ge=0.0, le=1.0, description="Average conviction"
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)
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mention_count: int = Field(
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default=0, description="Count of mentions in bucket"
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)
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model_config = {"from_attributes": True}
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class StockTimeline(BaseModel):
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"""Timeline of mentions for a single stock ticker."""
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symbol: str = Field(..., description="Stock ticker")
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buckets: list[TimelineBucket] = Field(
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default_factory=list, description="Time-bucketed data"
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)
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mentions: list[StockMention] = Field(
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default_factory=list, description="Chronological mentions (newest first)"
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)
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model_config = {"from_attributes": True}
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class PipelineHealth(BaseModel):
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"""Health status of the Meet Kevin pipeline."""
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last_poll_at: datetime | None = Field(
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default=None, description="Timestamp of last RSS poll"
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)
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last_poll_age_seconds: int | None = Field(
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default=None, description="Seconds since last poll"
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)
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videos_discovered_today: int = Field(
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default=0, description="Videos found in last 24h"
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)
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videos_captioned_today: int = Field(
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default=0, description="Videos with captions processed"
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)
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videos_analyzed_today: int = Field(
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default=0, description="Videos analyzed with LLM"
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)
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llm_cost_today_usd: float = Field(
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default=0.0, description="Total LLM cost today"
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)
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daily_cost_cap_usd: float = Field(
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default=5.0, description="Daily cost limit"
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)
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cost_capped: bool = Field(
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default=False, description="True if cost cap hit today"
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)
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pipeline_status: Literal["ok", "warning", "error"] = Field(
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default="ok", description="Overall health status"
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)
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status_message: str | None = Field(
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default=None, description="Optional status details"
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)
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model_config = {"from_attributes": True}
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@ -584,3 +584,197 @@ class TestTokenResponse:
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)
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)
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restored = TokenResponse.model_validate_json(t.model_dump_json())
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restored = TokenResponse.model_validate_json(t.model_dump_json())
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assert restored == t
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assert restored == t
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# ---------------------------------------------------------------------------
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# --- Meet Kevin schemas ---
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# ---------------------------------------------------------------------------
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class TestMeetKevinTickerMention:
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def test_valid_ticker_mention(self) -> None:
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from shared.schemas.meet_kevin import MeetKevinTickerMention
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mention = MeetKevinTickerMention(
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symbol="AAPL",
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action="buy",
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conviction=0.85,
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time_horizon="months",
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rationale_quote="Strong earnings growth expected",
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video_timestamp_seconds=120,
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)
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assert mention.symbol == "AAPL"
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assert mention.conviction == 0.85
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def test_symbol_auto_uppercases(self) -> None:
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from shared.schemas.meet_kevin import MeetKevinTickerMention
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mention = MeetKevinTickerMention(
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symbol="tsla",
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action="hold",
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conviction=0.5,
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time_horizon="weeks",
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rationale_quote="Neutral outlook",
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)
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assert mention.symbol == "TSLA"
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def test_conviction_out_of_range_high(self) -> None:
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from shared.schemas.meet_kevin import MeetKevinTickerMention
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with pytest.raises(ValidationError):
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MeetKevinTickerMention(
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symbol="AAPL",
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action="buy",
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conviction=1.5,
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time_horizon="months",
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rationale_quote="Too confident",
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)
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def test_conviction_out_of_range_low(self) -> None:
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from shared.schemas.meet_kevin import MeetKevinTickerMention
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with pytest.raises(ValidationError):
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MeetKevinTickerMention(
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symbol="AAPL",
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action="sell",
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conviction=-0.1,
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time_horizon="days",
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rationale_quote="Negative conviction",
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)
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def test_conviction_edge_cases(self) -> None:
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from shared.schemas.meet_kevin import MeetKevinTickerMention
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# Test 0.0
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m1 = MeetKevinTickerMention(
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symbol="GOOG",
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action="avoid",
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conviction=0.0,
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time_horizon="unspecified",
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rationale_quote="No confidence",
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)
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assert m1.conviction == 0.0
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# Test 1.0
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m2 = MeetKevinTickerMention(
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symbol="MSFT",
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action="buy",
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conviction=1.0,
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time_horizon="long_term",
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rationale_quote="Maximum confidence",
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)
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|
assert m2.conviction == 1.0
|
||||||
|
|
||||||
|
def test_timestamp_optional(self) -> None:
|
||||||
|
from shared.schemas.meet_kevin import MeetKevinTickerMention
|
||||||
|
|
||||||
|
mention = MeetKevinTickerMention(
|
||||||
|
symbol="NVDA",
|
||||||
|
action="watch",
|
||||||
|
conviction=0.6,
|
||||||
|
time_horizon="intraday",
|
||||||
|
rationale_quote="Monitoring closely",
|
||||||
|
)
|
||||||
|
assert mention.video_timestamp_seconds is None
|
||||||
|
|
||||||
|
|
||||||
|
class TestMeetKevinAnalysis:
|
||||||
|
def test_valid_analysis(self) -> None:
|
||||||
|
from shared.schemas.meet_kevin import (
|
||||||
|
MeetKevinAnalysis,
|
||||||
|
MeetKevinTickerMention,
|
||||||
|
)
|
||||||
|
|
||||||
|
analysis = MeetKevinAnalysis(
|
||||||
|
market_outlook_direction="bullish",
|
||||||
|
market_outlook_reasoning="Strong macro tailwinds",
|
||||||
|
macro_themes=["inflation_easing", "ai_acceleration"],
|
||||||
|
key_risks=["geopolitical_uncertainty", "rate_volatility"],
|
||||||
|
summary="Overall positive outlook for tech sector",
|
||||||
|
tickers=[
|
||||||
|
MeetKevinTickerMention(
|
||||||
|
symbol="AAPL",
|
||||||
|
action="buy",
|
||||||
|
conviction=0.85,
|
||||||
|
time_horizon="months",
|
||||||
|
rationale_quote="Strong earnings expected",
|
||||||
|
)
|
||||||
|
],
|
||||||
|
)
|
||||||
|
assert analysis.market_outlook_direction == "bullish"
|
||||||
|
assert len(analysis.tickers) == 1
|
||||||
|
assert analysis.tickers[0].symbol == "AAPL"
|
||||||
|
|
||||||
|
def test_multiple_tickers(self) -> None:
|
||||||
|
from shared.schemas.meet_kevin import (
|
||||||
|
MeetKevinAnalysis,
|
||||||
|
MeetKevinTickerMention,
|
||||||
|
)
|
||||||
|
|
||||||
|
analysis = MeetKevinAnalysis(
|
||||||
|
market_outlook_direction="neutral",
|
||||||
|
market_outlook_reasoning="Mixed signals",
|
||||||
|
macro_themes=["earnings_season"],
|
||||||
|
key_risks=["fed_decisions"],
|
||||||
|
summary="Cautious outlook",
|
||||||
|
tickers=[
|
||||||
|
MeetKevinTickerMention(
|
||||||
|
symbol="TSLA",
|
||||||
|
action="buy",
|
||||||
|
conviction=0.7,
|
||||||
|
time_horizon="weeks",
|
||||||
|
rationale_quote="Breakout expected",
|
||||||
|
),
|
||||||
|
MeetKevinTickerMention(
|
||||||
|
symbol="GOOG",
|
||||||
|
action="hold",
|
||||||
|
conviction=0.5,
|
||||||
|
time_horizon="months",
|
||||||
|
rationale_quote="Wait for clarity",
|
||||||
|
),
|
||||||
|
],
|
||||||
|
)
|
||||||
|
assert len(analysis.tickers) == 2
|
||||||
|
assert analysis.tickers[0].symbol == "TSLA"
|
||||||
|
assert analysis.tickers[1].symbol == "GOOG"
|
||||||
|
|
||||||
|
def test_empty_tickers_list(self) -> None:
|
||||||
|
from shared.schemas.meet_kevin import MeetKevinAnalysis
|
||||||
|
|
||||||
|
analysis = MeetKevinAnalysis(
|
||||||
|
market_outlook_direction="bearish",
|
||||||
|
market_outlook_reasoning="Recession risk",
|
||||||
|
macro_themes=["inflation"],
|
||||||
|
key_risks=["unemployment"],
|
||||||
|
summary="Negative outlook",
|
||||||
|
tickers=[],
|
||||||
|
)
|
||||||
|
assert len(analysis.tickers) == 0
|
||||||
|
|
||||||
|
def test_json_round_trip(self) -> None:
|
||||||
|
from shared.schemas.meet_kevin import (
|
||||||
|
MeetKevinAnalysis,
|
||||||
|
MeetKevinTickerMention,
|
||||||
|
)
|
||||||
|
|
||||||
|
analysis = MeetKevinAnalysis(
|
||||||
|
market_outlook_direction="mixed",
|
||||||
|
market_outlook_reasoning="Divergent sector performance",
|
||||||
|
macro_themes=["rate_peak", "ai_growth"],
|
||||||
|
key_risks=["credit_stress"],
|
||||||
|
summary="Selective opportunities",
|
||||||
|
tickers=[
|
||||||
|
MeetKevinTickerMention(
|
||||||
|
symbol="NVIDIA",
|
||||||
|
action="buy",
|
||||||
|
conviction=0.95,
|
||||||
|
time_horizon="long_term",
|
||||||
|
rationale_quote="AI leader",
|
||||||
|
video_timestamp_seconds=300,
|
||||||
|
)
|
||||||
|
],
|
||||||
|
)
|
||||||
|
json_str = analysis.model_dump_json()
|
||||||
|
restored = MeetKevinAnalysis.model_validate_json(json_str)
|
||||||
|
assert restored == analysis
|
||||||
|
assert restored.tickers[0].symbol == "NVIDIA"
|
||||||
|
|
|
||||||
Loading…
Add table
Add a link
Reference in a new issue