Compare commits

...

2 Commits

Author SHA1 Message Date
28a1308fbc Fix port mismatch: align Flask server to port 5000
web/app.py was hardcoded to port 7070, causing Docker port forwarding
(5000:5000) and the Dockerfile HEALTHCHECK to fail. Changed to port 5000
to match docker-compose.yml and Dockerfile configuration.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-02-20 23:40:24 -05:00
db70ad81f7 Blueprint v1.0.4: Implemented AI Context Optimization & Token Management
- core/utils.py: Added estimate_tokens(), truncate_to_tokens(), get_ai_cache(), set_ai_cache(), make_cache_key() utilities
- story/writer.py: Applied truncate_to_tokens() to prev_content (2000 tokens) and prev_sum (600 tokens) context injections
- story/editor.py: Applied truncate_to_tokens() to summary (1000t), last_chapter_text (800t), eval text (7500t), propagation contexts (2500t/3000t)
- web/routes/persona.py: Added MD5-keyed in-memory cache for persona analyze endpoint; truncated sample_text to 750 tokens
- ai/models.py: Added pre-dispatch payload size estimation with 30k-token warning threshold

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-02-20 23:30:39 -05:00
7 changed files with 80 additions and 10 deletions

View File

@@ -125,6 +125,12 @@ Open `http://localhost:5000`.
- **Resilient Model Wrapper:** Wraps every Gemini API call with up to 3 retries and exponential backoff, handles quota errors and rate limits, and can switch to an alternative model mid-stream.
- **Auto Model Selection:** On startup, a bootstrapper model queries the Gemini API and selects the optimal models for Logic, Writer, Artist, and Image roles. Selection is cached for 24 hours.
- **Vertex AI Support:** If `GCP_PROJECT` is set and OAuth credentials are present, initializes Vertex AI automatically for Imagen image generation.
- **Payload Guardrails:** Every generation call estimates the prompt token count before dispatch. If the payload exceeds 30,000 tokens, a warning is logged so runaway context injection is surfaced immediately.
### AI Context Optimization (`core/utils.py`)
- **Token Estimation:** `estimate_tokens(text)` provides a fast character-based token count approximation (`len(text) / 4`) without requiring external tokenizer libraries.
- **Context Truncation:** `truncate_to_tokens(text, max_tokens)` enforces hard caps on large context variables — previous chapter text, story summaries, and character data — before they are injected into prompts, preventing token overflows on large manuscripts.
- **AI Response Cache:** An in-memory cache (`_AI_CACHE`) keyed by MD5 hash of inputs prevents redundant API calls for deterministic tasks such as persona analysis. Results are reused for identical inputs within the same session.
### Cost Tracking
Every AI call logs input/output token counts and estimated USD cost (using cached pricing per model). Cumulative project cost is stored in the database and displayed per user and per run.

View File

@@ -45,7 +45,21 @@ class ResilientModel:
self.name = name
self.model = genai.GenerativeModel(name, safety_settings=self.safety_settings)
_TOKEN_WARN_LIMIT = 30_000
def generate_content(self, *args, **kwargs):
# Estimate payload size and warn if it exceeds the safe limit
if args:
payload = args[0]
if isinstance(payload, str):
est = utils.estimate_tokens(payload)
elif isinstance(payload, list):
est = sum(utils.estimate_tokens(p) if isinstance(p, str) else 0 for p in payload)
else:
est = 0
if est > self._TOKEN_WARN_LIMIT:
utils.log("SYSTEM", f"⚠️ Payload warning: ~{est:,} tokens for {self.role} ({self.name}). Consider reducing context.")
retries = 0
max_retries = 3
base_delay = 5

View File

@@ -2,6 +2,7 @@ import os
import json
import datetime
import time
import hashlib
from core import config
import threading
import re
@@ -19,6 +20,40 @@ _log_context = threading.local()
# Cache for dynamic pricing from AI model selection
PRICING_CACHE = {}
# --- Token Estimation & Truncation Utilities ---
def estimate_tokens(text):
"""Estimate token count using a 4-chars-per-token heuristic (no external libs required)."""
if not text:
return 0
return max(1, len(text) // 4)
def truncate_to_tokens(text, max_tokens):
"""Truncate text to approximately max_tokens, keeping the most recent (tail) content."""
if not text:
return text
max_chars = max_tokens * 4
if len(text) <= max_chars:
return text
return text[-max_chars:]
# --- In-Memory AI Response Cache ---
_AI_CACHE = {}
def get_ai_cache(key):
"""Retrieve a cached AI response by key. Returns None if not cached."""
return _AI_CACHE.get(key)
def set_ai_cache(key, value):
"""Store an AI response in the in-memory cache keyed by a hash string."""
_AI_CACHE[key] = value
def make_cache_key(prefix, *parts):
"""Build a stable MD5 cache key from a prefix and variable string parts."""
raw = "|".join(str(p) for p in parts)
return f"{prefix}:{hashlib.md5(raw.encode('utf-8', errors='replace')).hexdigest()}"
def set_log_file(filepath):
_log_context.log_file = filepath

View File

@@ -59,7 +59,7 @@ def evaluate_chapter_quality(text, chapter_title, genre, model, folder):
}}
"""
try:
response = model.generate_content([prompt, text[:30000]])
response = model.generate_content([prompt, utils.truncate_to_tokens(text, 7500)])
model_name = getattr(model, 'name', ai_models.logic_model_name)
utils.log_usage(folder, model_name, response.usage_metadata)
data = json.loads(utils.clean_json(response.text))
@@ -86,8 +86,8 @@ def check_pacing(bp, summary, last_chapter_text, last_chapter_data, remaining_ch
TASK: Analyze pacing.
CONTEXT:
- PREVIOUS_SUMMARY: {summary[-3000:]}
- CURRENT_CHAPTER: {last_chapter_text[-2000:]}
- PREVIOUS_SUMMARY: {utils.truncate_to_tokens(summary, 1000)}
- CURRENT_CHAPTER: {utils.truncate_to_tokens(last_chapter_text, 800)}
- UPCOMING: {json.dumps([c['title'] for c in remaining_chapters[:3]])}
- REMAINING_COUNT: {len(remaining_chapters)}
@@ -254,7 +254,7 @@ def check_and_propagate(bp, manuscript, changed_chap_num, folder, change_summary
TASK: Summarize the key events and ending state of this chapter for continuity tracking.
TEXT:
{changed_chap.get('content', '')[:10000]}
{utils.truncate_to_tokens(changed_chap.get('content', ''), 2500)}
FOCUS:
- Major plot points.
@@ -350,7 +350,7 @@ def check_and_propagate(bp, manuscript, changed_chap_num, folder, change_summary
CHANGE_SUMMARY: {current_context}
CHAPTER_TO_CHECK (Ch {target_chap['num']}):
{target_chap['content'][:12000]}
{utils.truncate_to_tokens(target_chap['content'], 3000)}
DECISION_LOGIC:
- If the chapter directly contradicts the change (references dead characters, items that no longer exist, events that didn't happen), status = REWRITE.

View File

@@ -71,7 +71,7 @@ def write_chapter(chap, bp, folder, prev_sum, tracking=None, prev_content=None,
prev_context_block = ""
if prev_content:
trunc_content = prev_content[-3000:] if len(prev_content) > 3000 else prev_content
trunc_content = utils.truncate_to_tokens(prev_content, 2000)
prev_context_block = f"\nPREVIOUS CHAPTER TEXT (For Tone & Continuity):\n{trunc_content}\n"
chars_for_writer = [
@@ -238,7 +238,7 @@ def write_chapter(chap, bp, folder, prev_sum, tracking=None, prev_content=None,
HARD_CONSTRAINTS:
- TARGET_WORDS: ~{est_words} words (aim for this; ±20% is acceptable if the scene genuinely demands it — but do not condense beats to save space)
- BEATS MUST BE COVERED: {json.dumps(chap.get('beats', []))}
- SUMMARY CONTEXT: {prev_sum[:1500]}
- SUMMARY CONTEXT: {utils.truncate_to_tokens(prev_sum, 600)}
AUTHOR_VOICE:
{persona_info}

View File

@@ -103,4 +103,4 @@ if __name__ == "__main__":
t = threading.Thread(target=run_huey, daemon=True)
t.start()
app.run(host='0.0.0.0', port=7070, debug=False)
app.run(host='0.0.0.0', port=5000, debug=False)

View File

@@ -112,6 +112,19 @@ def analyze_persona():
data = request.json
sample = data.get('sample_text', '')
# Cache by a hash of the inputs to avoid redundant API calls for unchanged data
cache_key = utils.make_cache_key(
"persona_analyze",
data.get('name', ''),
data.get('age', ''),
data.get('gender', ''),
data.get('nationality', ''),
sample[:500]
)
cached = utils.get_ai_cache(cache_key)
if cached:
return cached
prompt = f"""
ROLE: Literary Analyst
TASK: Create or analyze an Author Persona profile.
@@ -119,7 +132,7 @@ def analyze_persona():
INPUT_DATA:
- NAME: {data.get('name')}
- DEMOGRAPHICS: Age: {data.get('age')} | Gender: {data.get('gender')} | Nationality: {data.get('nationality')}
- SAMPLE_TEXT: {sample[:3000]}
- SAMPLE_TEXT: {utils.truncate_to_tokens(sample, 750)}
INSTRUCTIONS:
1. BIO: Write a 2-3 sentence description of the writing style. If sample is provided, analyze it. If not, invent a style that fits the demographics/name.
@@ -130,6 +143,8 @@ def analyze_persona():
"""
try:
response = ai_models.model_logic.generate_content(prompt)
return json.loads(utils.clean_json(response.text))
result = json.loads(utils.clean_json(response.text))
utils.set_ai_cache(cache_key, result)
return result
except Exception as e:
return {"error": str(e)}, 500