refactor: migrate AI tree generator to provider abstraction

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
This commit is contained in:
chihlasm
2026-02-26 17:20:48 -05:00
parent 55be033ecb
commit eb7ea7ddd9
3 changed files with 76 additions and 106 deletions

View File

@@ -10,7 +10,6 @@
import logging
from typing import Annotated
import anthropic
from fastapi import APIRouter, Depends, HTTPException, Request, status
from sqlalchemy.ext.asyncio import AsyncSession
@@ -52,7 +51,7 @@ def _require_ai_enabled() -> None:
if not settings.ai_enabled:
raise HTTPException(
status_code=status.HTTP_503_SERVICE_UNAVAILABLE,
detail="AI flow builder is not configured. Set ANTHROPIC_API_KEY.",
detail="AI flow builder is not configured. Set GOOGLE_AI_API_KEY or ANTHROPIC_API_KEY.",
)
@@ -174,27 +173,6 @@ async def scaffold(
branches, input_tokens, output_tokens, cost = await scaffold_branches(
conversation.wizard_state,
)
except anthropic.APIError as e:
await record_ai_usage(
user_id=current_user.id,
account_id=current_user.account_id,
conversation_id=conversation.id,
generation_type="scaffold",
tier=plan,
input_tokens=0,
output_tokens=0,
estimated_cost=0,
succeeded=False,
counts_toward_quota=False,
error_code=type(e).__name__,
extra_data={"error": str(e)},
db=db,
)
await db.commit()
raise HTTPException(
status_code=status.HTTP_502_BAD_GATEWAY,
detail="AI provider error. Please try again.",
)
except ValueError as e:
await record_ai_usage(
user_id=current_user.id,
@@ -216,6 +194,27 @@ async def scaffold(
status_code=status.HTTP_422_UNPROCESSABLE_ENTITY,
detail=f"AI returned invalid output: {e}",
)
except Exception as e:
await record_ai_usage(
user_id=current_user.id,
account_id=current_user.account_id,
conversation_id=conversation.id,
generation_type="scaffold",
tier=plan,
input_tokens=0,
output_tokens=0,
estimated_cost=0,
succeeded=False,
counts_toward_quota=False,
error_code=type(e).__name__,
extra_data={"error": str(e)},
db=db,
)
await db.commit()
raise HTTPException(
status_code=status.HTTP_502_BAD_GATEWAY,
detail="AI provider error. Please try again.",
)
# Record successful usage
await record_ai_usage(
@@ -293,27 +292,6 @@ async def branch_detail(
existing_branches,
)
)
except anthropic.APIError as e:
await record_ai_usage(
user_id=current_user.id,
account_id=current_user.account_id,
conversation_id=conversation.id,
generation_type="branch_detail",
tier=plan,
input_tokens=0,
output_tokens=0,
estimated_cost=0,
succeeded=False,
counts_toward_quota=False,
error_code=type(e).__name__,
extra_data={"error": str(e), "branch_name": data.branch_name},
db=db,
)
await db.commit()
raise HTTPException(
status_code=status.HTTP_502_BAD_GATEWAY,
detail="AI provider error. Please try again.",
)
except ValueError as e:
await record_ai_usage(
user_id=current_user.id,
@@ -335,6 +313,27 @@ async def branch_detail(
status_code=status.HTTP_422_UNPROCESSABLE_ENTITY,
detail=f"AI returned invalid output: {e}",
)
except Exception as e:
await record_ai_usage(
user_id=current_user.id,
account_id=current_user.account_id,
conversation_id=conversation.id,
generation_type="branch_detail",
tier=plan,
input_tokens=0,
output_tokens=0,
estimated_cost=0,
succeeded=False,
counts_toward_quota=False,
error_code=type(e).__name__,
extra_data={"error": str(e), "branch_name": data.branch_name},
db=db,
)
await db.commit()
raise HTTPException(
status_code=status.HTTP_502_BAD_GATEWAY,
detail="AI provider error. Please try again.",
)
# Record successful usage
await record_ai_usage(

View File

@@ -1,11 +1,11 @@
"""AI-powered tree generation service using Anthropic Claude API.
"""AI-powered tree generation service.
Implements the 4-stage wizard flow:
Stage 2 (scaffold): AI suggests 4-7 top-level branches
Stage 3 (branch_detail): AI generates detailed nodes per branch
Stage 4 (assemble): Pure assembly logic — zero AI calls
System prompts are static constants to enable Anthropic prompt caching.
Uses the provider abstraction from ai_provider.py (supports Gemini + Anthropic).
"""
import json
import logging
@@ -13,8 +13,7 @@ import re
import uuid
from typing import Any
import anthropic
from app.core.ai_provider import get_ai_provider
from app.core.config import settings
from app.core.ai_tree_validator import validate_generated_tree, count_tree_stats
@@ -121,15 +120,6 @@ def _strip_markdown_fences(text: str) -> str:
return text
def _get_client() -> anthropic.AsyncAnthropic:
"""Get configured async Anthropic client."""
if not settings.ANTHROPIC_API_KEY:
raise RuntimeError("ANTHROPIC_API_KEY not configured")
return anthropic.AsyncAnthropic(
api_key=settings.ANTHROPIC_API_KEY,
timeout=settings.AI_REQUEST_TIMEOUT_SECONDS,
)
def _estimate_cost(input_tokens: int, output_tokens: int) -> float:
"""Estimate USD cost from token counts."""
@@ -146,7 +136,7 @@ async def scaffold_branches(
Returns (branches, input_tokens, output_tokens, estimated_cost).
Raises ValueError on invalid response.
"""
client = _get_client()
provider = get_ai_provider()
flow_type = wizard_state.get("flow_type", "troubleshooting")
name = wizard_state.get("name", "")
@@ -161,16 +151,13 @@ async def scaffold_branches(
if tags:
user_message += f"Environment: {', '.join(tags)}\n"
response = await client.messages.create(
model=settings.AI_MODEL,
max_tokens=1024,
system=SCAFFOLD_SYSTEM_PROMPT,
raw_text, input_tokens, output_tokens = await provider.generate_json(
system_prompt=SCAFFOLD_SYSTEM_PROMPT,
messages=[{"role": "user", "content": user_message}],
max_tokens=1024,
)
raw_text = _strip_markdown_fences(response.content[0].text)
input_tokens = response.usage.input_tokens
output_tokens = response.usage.output_tokens
raw_text = _strip_markdown_fences(raw_text)
cost = _estimate_cost(input_tokens, output_tokens)
try:
@@ -196,7 +183,7 @@ async def generate_branch_detail(
On validation failure, retries once with corrective prompt.
Raises ValueError if both attempts fail.
"""
client = _get_client()
provider = get_ai_provider()
flow_type = wizard_state.get("flow_type", "troubleshooting")
name = wizard_state.get("name", "")
@@ -217,31 +204,22 @@ async def generate_branch_detail(
total_output = 0
for attempt in range(3):
response = await client.messages.create(
model=settings.AI_MODEL,
max_tokens=8192,
system=BRANCH_DETAIL_SYSTEM_PROMPT,
raw_text, input_tokens, output_tokens = await provider.generate_json(
system_prompt=BRANCH_DETAIL_SYSTEM_PROMPT,
messages=messages,
max_tokens=8192,
)
total_input += response.usage.input_tokens
total_output += response.usage.output_tokens
total_input += input_tokens
total_output += output_tokens
logger.debug(
"branch_detail attempt=%d stop_reason=%s content_blocks=%d output_tokens=%d",
"branch_detail attempt=%d output_tokens=%d",
attempt,
response.stop_reason,
len(response.content),
response.usage.output_tokens,
output_tokens,
)
if response.stop_reason == "max_tokens":
logger.warning(
"branch_detail attempt=%d hit max_tokens limit (%d output tokens) — response may be truncated",
attempt,
response.usage.output_tokens,
)
raw_text = _strip_markdown_fences(response.content[0].text) if response.content else ""
raw_text = _strip_markdown_fences(raw_text) if raw_text else ""
if not raw_text:
logger.warning("branch_detail attempt=%d returned empty text, stop_reason=%s", attempt, response.stop_reason)
logger.warning("branch_detail attempt=%d returned empty text", attempt)
try:
branch_tree = json.loads(raw_text)

View File

@@ -1,6 +1,6 @@
"""Integration tests for AI Flow Builder endpoints.
All Anthropic API calls are mocked — zero real API spend.
All AI provider calls are mocked — zero real API spend.
"""
import json
from unittest.mock import AsyncMock, patch, MagicMock
@@ -64,12 +64,11 @@ BRANCH_DETAIL_JSON = json.dumps({
})
def _mock_anthropic_response(text: str, input_tokens: int = 100, output_tokens: int = 200):
"""Create a mock Anthropic API response."""
response = MagicMock()
response.content = [MagicMock(text=text)]
response.usage = MagicMock(input_tokens=input_tokens, output_tokens=output_tokens)
return response
def _mock_ai_provider(text: str, input_tokens: int = 100, output_tokens: int = 200):
"""Create a mock AI provider whose generate_json returns the given text and token counts."""
provider = MagicMock()
provider.generate_json = AsyncMock(return_value=(text, input_tokens, output_tokens))
return provider
@pytest.fixture
@@ -194,11 +193,9 @@ async def test_scaffold_success(client, auth_headers, enable_ai):
)
conversation_id = start_resp.json()["conversation_id"]
# Mock Anthropic
mock_response = _mock_anthropic_response(SCAFFOLD_RESPONSE_JSON)
with patch("app.core.ai_tree_generator_service._get_client") as mock_client:
mock_client.return_value.messages.create = AsyncMock(return_value=mock_response)
# Mock AI provider
mock_provider = _mock_ai_provider(SCAFFOLD_RESPONSE_JSON)
with patch("app.core.ai_tree_generator_service.get_ai_provider", return_value=mock_provider):
response = await client.post(
"/api/v1/ai/scaffold",
json={"conversation_id": conversation_id},
@@ -241,9 +238,8 @@ async def test_branch_detail_success(client, auth_headers, enable_ai):
)
conversation_id = start_resp.json()["conversation_id"]
scaffold_mock = _mock_anthropic_response(SCAFFOLD_RESPONSE_JSON)
with patch("app.core.ai_tree_generator_service._get_client") as mock_client:
mock_client.return_value.messages.create = AsyncMock(return_value=scaffold_mock)
scaffold_provider = _mock_ai_provider(SCAFFOLD_RESPONSE_JSON)
with patch("app.core.ai_tree_generator_service.get_ai_provider", return_value=scaffold_provider):
await client.post(
"/api/v1/ai/scaffold",
json={"conversation_id": conversation_id},
@@ -251,10 +247,8 @@ async def test_branch_detail_success(client, auth_headers, enable_ai):
)
# Now generate branch detail
detail_mock = _mock_anthropic_response(BRANCH_DETAIL_JSON)
with patch("app.core.ai_tree_generator_service._get_client") as mock_client:
mock_client.return_value.messages.create = AsyncMock(return_value=detail_mock)
detail_provider = _mock_ai_provider(BRANCH_DETAIL_JSON)
with patch("app.core.ai_tree_generator_service.get_ai_provider", return_value=detail_provider):
response = await client.post(
"/api/v1/ai/branch-detail",
json={
@@ -290,9 +284,8 @@ async def test_assemble_success(client, auth_headers, enable_ai):
conversation_id = start_resp.json()["conversation_id"]
# Scaffold
scaffold_mock = _mock_anthropic_response(SCAFFOLD_RESPONSE_JSON)
with patch("app.core.ai_tree_generator_service._get_client") as mock_client:
mock_client.return_value.messages.create = AsyncMock(return_value=scaffold_mock)
scaffold_provider = _mock_ai_provider(SCAFFOLD_RESPONSE_JSON)
with patch("app.core.ai_tree_generator_service.get_ai_provider", return_value=scaffold_provider):
await client.post(
"/api/v1/ai/scaffold",
json={"conversation_id": conversation_id},