AlekSystem Workflow Detail

AI-Powered institutional-style stock price targets and BUY/HOLD/SELL alerts with ChatGPT and Gemini Generation

Generate institutional-style stock price targets and BUY/HOLD/SELL alerts with ChatGPT and Gemini

AI Institutional Stock Valuation Engine with Risk Scoring & Scenario Targets A professional-grade AI equity analysis automation built on AlekSystem that inge...

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Workflow overview

Why this workflow matters

Supports knowledge capture and document intelligence use cases.

AI Institutional Stock Valuation Engine with Risk Scoring & Scenario Targets A professional-grade AI equity analysis automation built on AlekSystem that ingests live financial data and news, runs it through a dual-LLM valuation engine with a built-in tiebreaker, and delivers disciplined Bear/Base/Bull price targets, BUY/HOLD/SELL verdicts, and risk-adjusted confidence scores — stored in Google Sheets and pushed via Telegram. Key Features Dual-Model Parallel Analysis (ChatGPT + Gemini 2.5 Pro): Both models independently analyze each stock as senior equity analysts — conservative, risk-first, and evidence-based — then their outputs are compared for agreement. Intelligent Tiebreaker System: When models disagree on verdict or their base price targets diverge by more than 20%, a dedicated tiebreaker round activates: ChatGPT takes the bull case, Gemini takes the bear case, and the final output is averaged — eliminating coin-flip results. Live Financial Data Pipeline (Alpha Vantage): Automatically fetches balance sheet, income statement, cash flow, company profile, and real-time price — rate-limited with Wait nodes to respect API quotas across batch runs. News Sentiment Ingestion (Seeking Alpha): Parses article feeds (XML/JSON), cleans and normalizes news text, and feeds it into the valuation prompt as qualitative context alongside hard financials. Smart Caching Layer: Checks for valid cached financial data before hitting APIs — reduces redundant calls, speeds up batch processing, and cuts API costs for unchanged fundamentals. Piotroski F-Score Integration: Calculates a fundamental quality score from balance sheet signals to separate financially strong companies from deteriorating ones — feeds directly into the confidence index. Bear / Base / Bull Scenario Targets: Every stock receives three price targets with full institutional logic: sector-aware multiples, phase recognition (growth vs. mature), implied P/E sanity checks, and discount rate tiering. Confidence Scoring (20–90): Combines F-Score, model agreement gap, news sentiment, and financial health into a single index — giving you a read on how conviction-worthy the output is. Google Sheets I/O: Reads a watchlist of tickers from a sheet, upserts results (insert or update by row), and maintains a full historical log of valuations per stock per date. Telegram Delivery: Pushes formatted valuation summaries directly to a Telegram channel or group after each batch cycle completes. Ideal For Portfolio managers and analysts running nightly watchlist reviews Retail investors who want institutional-grade structure, not chatbot guesses Fintech builders integrating a structured valuation API into their stack Educators and research teams studying systematic equity valuation frameworks Technical Notes Rate Limiting: Wait nodes are placed before each Alpha Vantage API call to prevent throttling during multi-ticker batch runs. Adjust wait durations based on your API plan tier. API Requirements: Alpha Vantage (financial data), OpenAI (ChatGPT), Google Gemini, Seeking Alpha (news), Google Sheets OAuth. Caching: Financial fundamentals are cached and validated before fetching — cache TTL logic is handled via a dedicated cache lookup and validity check branch. Tiebreaker Logic: Triggered when BUY/SELL/HOLD verdicts differ OR when pt_base gap exceeds 20% of current price — ensures no ambiguous output reaches the sheet without resolution. Use Cases Nightly Watchlist Runner — Schedule daily runs across a portfolio, log targets and verdicts to Sheets, alert via Telegram when signals shift. Confidence Threshold Alerts — Trigger notifications only when confidence drops below a threshold or a new BUY signal appears. API Backend — Expose results via webhook for downstream dashboards, apps, or research tools. Backtesting Feed — Build a historical record of AI-generated targets vs. actual price movement over time. Why This Is Different Most AI stock tools are wrappers around a single prompt. This workflow encodes a full institutional valuation pipeline: dual-model consensus, a structured tiebreaker, scenario banding, F-Score filtering, and news-aware risk extraction — all running automatically on a schedule with no manual input required. The output isn't a narrative guess. It's a structured, defensible JSON record designed to be acted on.

Best fit

Categories

AI/MLCommunication

Services

Google SheetsTelegramOpenAIGoogle Gemini

Use cases

business process automation