trading/services/meet_kevin_watcher/llm_analyzer.py
Viktor Barzin 8a1d03a967 refactor(meet-kevin): switch LLM back to native Anthropic SDK with OAuth bearer
Previous refactor (89f01ad) moved to OpenRouter because no sk-ant-api-* key
was found in Vault. Turns out claude-agent-service-spare-{1,2} hold
sk-ant-oat01-* OAuth tokens (108 chars, scope user:inference, 1-year TTL,
minted via 'claude setup-token' — see memory id=832).

These tokens work with the Anthropic SDK via the auth_token= constructor
argument (routes to Authorization: Bearer ... instead of x-api-key: ...).
They consume the Enterprise Claude subscription quota rather than
per-call billing, so the OpenRouter zero-credit problem goes away.

- llm_analyzer.py: revert OpenAI client to AsyncAnthropic; tool-use API
  + cache_control restored
- config.py: openrouter_api_key -> anthropic_oauth_token; model slug
  reverted from anthropic/claude-sonnet-4.5 -> claude-sonnet-4-5
- main.py: AsyncOpenAI -> AsyncAnthropic(auth_token=...), drop OpenRouter
  attribution headers
- pyproject: openai>=1.50 -> anthropic>=0.40 in meet_kevin extras
- tests: mocks ported back to messages.create + tool_use blocks
2026-05-22 19:24:40 +00:00

426 lines
17 KiB
Python
Raw Blame History

This file contains ambiguous Unicode characters

This file contains Unicode characters that might be confused with other characters. If you think that this is intentional, you can safely ignore this warning. Use the Escape button to reveal them.

"""Anthropic SDK LLM analyzer for Meet Kevin video transcripts.
Calls Claude Sonnet (via native Anthropic SDK with OAuth bearer token) with
tool-use forcing to extract structured MeetKevinAnalysis from a video transcript.
Public API:
SYSTEM_PROMPT — module-level analyst instructions
compute_cost_usd() — Decimal-precise cost from token counts
LlmCallResult — frozen dataclass returned by analyze()
LlmAnalyzer — async class; .analyze() does the API call
"""
import logging
from dataclasses import dataclass
from datetime import datetime
from decimal import Decimal
from typing import Any
from anthropic import AsyncAnthropic
from shared.schemas.meet_kevin import MeetKevinAnalysis
logger = logging.getLogger(__name__)
# ---------------------------------------------------------------------------
# Pricing table (USD per 1 000 000 tokens: input, output)
# Native Anthropic list pricing. With OAuth/Enterprise tokens real billing
# is via subscription quota, but we still compute notional USD for the
# daily-cap accounting logic.
# ---------------------------------------------------------------------------
_PRICING: dict[str, tuple[Decimal, Decimal]] = {
"claude-sonnet-4-5": (Decimal("3"), Decimal("15")),
"claude-sonnet-4-6": (Decimal("3"), Decimal("15")),
"claude-opus-4-7": (Decimal("15"), Decimal("75")),
"claude-haiku-4-5-20251001": (Decimal("1"), Decimal("5")),
}
# ---------------------------------------------------------------------------
# System prompt
# ---------------------------------------------------------------------------
SYSTEM_PROMPT = """
You are a professional financial analyst specialising in retail investor sentiment.
Your task is to read the full transcript of a Meet Kevin (Kevin Paffrath) YouTube
video and extract a structured investment analysis from it.
## Your mission
Read the transcript carefully and produce a single, precise call to the
`submit_analysis` tool. Do **not** respond with prose — your entire output must be
that one tool call with all required fields filled in correctly.
## What to extract
### Market outlook
Identify the overall market direction Kevin is expressing: bullish, bearish, neutral,
or mixed. Write a concise `market_outlook_reasoning` (24 sentences) that explains
*why* you assigned that direction, grounded in specific statements from the video.
### Macro themes
List the 26 highest-level economic or policy themes Kevin discusses (e.g.
"Federal Reserve rate path", "AI capex cycle", "commercial real estate stress",
"dollar strength", "energy transition"). These should be phrase-length labels, not
full sentences.
### Key risks
List the 25 principal downside risks Kevin flags. Again, short phrase labels, not
paragraphs. Only include risks Kevin explicitly names or clearly implies — do not
invent risks he did not discuss.
### Summary
Write a ~200-word plain-English summary of the video's investment thesis. Focus on
actionable takeaways and any specific catalysts Kevin mentions. Avoid filler phrases
like "In this video Kevin discusses…" — start directly with the insight.
### Per-ticker mentions (tickers field)
Extract every stock, ETF, or crypto ticker that Kevin makes a substantive statement
about. For each one, fill in the following:
- **symbol** — The uppercase ticker symbol (e.g. "NVDA", "SPY", "BTC"). If Kevin
mentions the company name but not the ticker, infer the ticker from the name (e.g.
"Nvidia""NVDA"). Max 6 characters. Only include tickers you are confident about.
- **action** — The clearest action signal you can infer from what Kevin says. Use
exactly one of: `buy`, `sell`, `hold`, `watch`, `avoid`. If Kevin expresses
interest but no clear directional view, use `watch`. If he says he is exiting or
would not touch it, use `sell` or `avoid` respectively. Do not default to `hold`
just because you are unsure — skip the ticker instead.
- **conviction** — A float between 0.0 and 1.0 representing how confident Kevin
sounds. Use 0.81.0 for "I'm buying this aggressively / this is my top pick",
0.50.7 for a clear directional view with some hedging, 0.20.4 for a tentative
or heavily-caveated take. A ticker Kevin mentions only in passing (< 20 words of
commentary) should be **skipped entirely** rather than assigned low conviction.
- **time_horizon** — Pick the closest match from: `intraday`, `days`, `weeks`,
`months`, `long_term`, `unspecified`. If Kevin does not say, use `unspecified`.
- **rationale_quote** — A short verbatim or lightly paraphrased quote (2080 words)
from the transcript that best justifies the action you assigned. Include enough
context to be meaningful on its own.
- **video_timestamp_seconds** — If the transcript includes segment timestamps (lines
formatted as `[<N>s] <text>`), set this to the integer second where Kevin first
makes the substantive statement about this ticker. If no timestamps are available,
set to null.
## Rules for ticker inclusion
1. **Skip tickers mentioned only in passing.** Kevin often references tickers as
examples or comparisons without making any recommendation. If he says fewer than
~20 words about a ticker with no clear directional signal, omit it from `tickers`.
2. **Do not duplicate tickers.** If Kevin mentions the same ticker multiple times,
merge the signals into a single entry that represents his overall view from the
video. Use the timestamp of the *first* substantive mention.
3. **Symbols only, no company names.** The `symbol` field must be a ticker, not a
company name. "Nvidia" is wrong; "NVDA" is correct.
4. **Conviction scores are comparative.** Calibrate them relative to each other
within the video — Kevin's "top conviction" pick in a video might be 0.85, while
a hedged mention is 0.45.
## Quality checklist (review before calling submit_analysis)
- [ ] `market_outlook_direction` is one of: bullish, neutral, bearish, mixed
- [ ] `macro_themes` has 26 items, each a concise phrase
- [ ] `key_risks` has 25 items, each a concise phrase
- [ ] `summary` is approximately 200 words
- [ ] Every ticker in `tickers` has a clear actionable signal (no "I'm not sure")
- [ ] Tickers mentioned only in passing are omitted
- [ ] `conviction` values are floats in [0.0, 1.0]
- [ ] `time_horizon` is one of the six allowed values
- [ ] `rationale_quote` is grounded in something Kevin actually said
- [ ] You are calling `submit_analysis` exactly once with all required fields
Now read the transcript provided in the user message and call `submit_analysis`.
""".strip()
# ---------------------------------------------------------------------------
# Tool definition (Anthropic tool-use format)
# ---------------------------------------------------------------------------
_ANALYSIS_TOOL: dict[str, Any] = {
"name": "submit_analysis",
"description": (
"Submit the structured analysis of one Meet Kevin video. Call this exactly once."
),
"input_schema": {
"type": "object",
"required": [
"market_outlook_direction",
"market_outlook_reasoning",
"macro_themes",
"key_risks",
"summary",
"tickers",
],
"properties": {
"market_outlook_direction": {
"type": "string",
"enum": ["bullish", "neutral", "bearish", "mixed"],
"description": "Overall market sentiment direction",
},
"market_outlook_reasoning": {
"type": "string",
"description": "2-4 sentence explanation of the market outlook direction",
},
"macro_themes": {
"type": "array",
"items": {"type": "string"},
"description": "2-6 high-level macro economic themes discussed",
},
"key_risks": {
"type": "array",
"items": {"type": "string"},
"description": "2-5 principal downside risks Kevin mentions",
},
"summary": {
"type": "string",
"description": "~200-word plain-English investment thesis summary",
},
"tickers": {
"type": "array",
"description": "Per-ticker mentions with action and conviction",
"items": {
"type": "object",
"required": [
"symbol",
"action",
"conviction",
"time_horizon",
"rationale_quote",
"video_timestamp_seconds",
],
"properties": {
"symbol": {
"type": "string",
"description": "Uppercase ticker symbol (1-6 chars)",
},
"action": {
"type": "string",
"enum": ["buy", "sell", "hold", "watch", "avoid"],
"description": "Recommendation action",
},
"conviction": {
"type": "number",
"minimum": 0.0,
"maximum": 1.0,
"description": "Confidence in recommendation (0.0-1.0)",
},
"time_horizon": {
"type": "string",
"enum": [
"intraday",
"days",
"weeks",
"months",
"long_term",
"unspecified",
],
"description": "Time horizon for the recommendation",
},
"rationale_quote": {
"type": "string",
"description": "Short verbatim or paraphrased quote from video",
},
"video_timestamp_seconds": {
"type": ["integer", "null"],
"description": "Timestamp in seconds for deep-link target",
},
},
},
},
},
},
}
# ---------------------------------------------------------------------------
# Public helpers
# ---------------------------------------------------------------------------
def compute_cost_usd(model: str, input_tokens: int, output_tokens: int) -> Decimal:
"""Compute LLM call cost in USD using pinned per-model pricing.
Args:
model: Model identifier string (must be a key in _PRICING).
input_tokens: Number of input/prompt tokens consumed.
output_tokens: Number of output/completion tokens generated.
Returns:
Cost as a Decimal. Returns Decimal("0") for unknown models (logs warning).
"""
pricing = _PRICING.get(model)
if pricing is None:
logger.warning("compute_cost_usd: unknown model %r — returning zero cost", model)
return Decimal("0")
price_per_m_input, price_per_m_output = pricing
million = Decimal("1000000")
cost = (
Decimal(input_tokens) / million * price_per_m_input
+ Decimal(output_tokens) / million * price_per_m_output
)
return cost.quantize(Decimal("0.0001"))
# ---------------------------------------------------------------------------
# Result dataclass
# ---------------------------------------------------------------------------
@dataclass(frozen=True)
class LlmCallResult:
"""Immutable result of one LLM analyze() call."""
analysis: MeetKevinAnalysis
raw_response: dict
prompt_tokens: int
completion_tokens: int
cost_usd: Decimal
# ---------------------------------------------------------------------------
# Analyzer class
# ---------------------------------------------------------------------------
_MAX_SEGMENTS = 1000
class LlmAnalyzer:
"""Calls Claude (via native Anthropic SDK) to extract structured analysis from a video transcript.
Args:
client: Configured AsyncAnthropic client with OAuth bearer token.
model: Model identifier (e.g. "claude-sonnet-4-5").
prompt_version: Prompt version string stored in kevin_analyses.
"""
def __init__(self, client: AsyncAnthropic, model: str, prompt_version: str) -> None:
self._client = client
self._model = model
self._prompt_version = prompt_version
async def analyze(
self,
*,
title: str,
description: str,
published_at: datetime,
transcript_text: str,
transcript_segments: list[dict],
) -> LlmCallResult:
"""Run LLM analysis on a transcript and return a structured result.
Args:
title: Video title.
description: Video description (may be empty).
published_at: UTC publication timestamp.
transcript_text: Full concatenated transcript text.
transcript_segments: List of {start, end, text} dicts.
Returns:
LlmCallResult with parsed MeetKevinAnalysis and token accounting.
Raises:
ValueError: If the response contains no tool_use block.
pydantic.ValidationError: If tool input fails schema validation.
"""
user_msg = self._build_user_message(
title=title,
description=description,
published_at=published_at,
transcript_text=transcript_text,
transcript_segments=transcript_segments,
)
response = await self._client.messages.create(
model=self._model,
max_tokens=4096,
system=[
{"type": "text", "text": SYSTEM_PROMPT, "cache_control": {"type": "ephemeral"}}
],
tools=[_ANALYSIS_TOOL],
tool_choice={"type": "tool", "name": "submit_analysis"},
messages=[{"role": "user", "content": user_msg}],
)
# Find the first tool_use block in the response
tool_use_block = None
for block in response.content:
if block.type == "tool_use":
tool_use_block = block
break
if tool_use_block is None:
raise ValueError(
"LLM response contained no tool_use block (expected submit_analysis call)"
)
tool_input: dict = tool_use_block.input
analysis = MeetKevinAnalysis.model_validate(tool_input)
prompt_tokens: int = response.usage.input_tokens
completion_tokens: int = response.usage.output_tokens
cost_usd = compute_cost_usd(self._model, prompt_tokens, completion_tokens)
raw_response: dict = {
"stop_reason": response.stop_reason,
"tool_name": tool_use_block.name,
"tool_input": tool_input,
"usage": {
"input_tokens": prompt_tokens,
"output_tokens": completion_tokens,
},
}
return LlmCallResult(
analysis=analysis,
raw_response=raw_response,
prompt_tokens=prompt_tokens,
completion_tokens=completion_tokens,
cost_usd=cost_usd,
)
# ------------------------------------------------------------------
# Private helpers
# ------------------------------------------------------------------
def _build_user_message(
self,
*,
title: str,
description: str,
published_at: datetime,
transcript_text: str,
transcript_segments: list[dict],
) -> str:
"""Build the user-turn message for the API call."""
parts: list[str] = [
f"Title: {title}",
f"Published: {published_at.strftime('%Y-%m-%d %H:%M UTC')}",
]
if description:
parts.append(f"Description: {description}")
parts.append("") # blank line before transcript
if transcript_segments:
# Prefer timestamped segments (up to _MAX_SEGMENTS)
segment_lines = [
f"[{int(seg.get('start', 0))}s] {seg.get('text', '').strip()}"
for seg in transcript_segments[:_MAX_SEGMENTS]
]
parts.append("Transcript (with timestamps):")
parts.extend(segment_lines)
elif transcript_text:
parts.append("Transcript:")
parts.append(transcript_text)
else:
parts.append("Transcript: (no transcript available)")
return "\n".join(parts)