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gemini-flash-budgetlisted

Run high-volume, low-cost Gemini extraction on a Flash model with thinking_budget=0 so simple, well-scoped prompts skip thinking tokens entirely - cheapest and fastest path for bulk classification and field extraction. Use for cheap gemini extraction, disable gemini thinking, thinking_budget 0, bulk classify with flash, or high volume gemini calls.
barobaonguyen/ai-automation-skills · ★ 0 · AI & Automation · score 75
Install: claude install-skill barobaonguyen/ai-automation-skills
# Gemini Flash Budget Use this skill when you need to run a model over many rows for a simple, well-scoped task - extract a ticker, classify a sentence, pull one field. On those prompts the model's "thinking" adds latency and thinking-token cost for no quality gain. Setting `thinking_budget=0` on a Flash model gives the cheapest, fastest path; the savings compound across thousands of calls. ## When to invoke - User says: "make these gemini calls cheaper" / "disable thinking" / "bulk classify with flash" / "high-volume extraction" - Code in the conversation uses: a loop of many small Gemini calls for extraction or classification. ## When NOT to invoke - The task needs multi-step reasoning, where thinking actually improves accuracy (keep a thinking budget then). - The cost is on the input side from a repeated prefix (use [[gemini-prompt-cache]] instead). ## Concrete example User input: ```text I run 5,000 Gemini calls a day just to map company names to tickers. Cut the cost. ``` Output: ```python # Copy assets/flash_call.py into your project, then: from flash_call import flash_extract_many prompts = [f"Ticker for: {name}?" for name in company_names] tickers = flash_extract_many(prompts) # Flash, temperature 0, no thinking tokens ``` The helper reads `GEMINI_API_KEY` from the environment and requires `google-genai`. ## Pattern to apply 1. Confirm the task is simple and well-scoped - the kind where reasoning adds nothing. 2. Pick a Flash model and set `temperature