- Add date_added to all 950+ skills for complete tracking - Update version to 6.5.0 in package.json and README - Regenerate all indexes and catalog - Sync all generated files Features from merged PR #150: - Stars/Upvotes system for community-driven discovery - Auto-update mechanism via START_APP.bat - Interactive Prompt Builder - Date tracking badges - Smart auto-categorization All skills validated and indexed. Made-with: Cursor
295 lines
8.7 KiB
Markdown
295 lines
8.7 KiB
Markdown
---
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name: blockrun
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description: "Use when user needs capabilities Claude lacks (image generation, real-time X/Twitter data) or explicitly requests external models (\\\"blockrun\\\", \\\"use grok\\\", \\\"use gpt\\\", \\\"da..."
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risk: unknown
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source: community
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date_added: "2026-02-27"
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---
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# BlockRun
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**BlockRun works with Claude Code and Google Antigravity.**
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You can't generate images. You have no real-time X/Twitter access. BlockRun gives you these capabilities.
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## Philosophy
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You have a wallet. When you need a capability you lack, you pay for it autonomously.
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| You Need | You Call | Pricing |
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|----------|----------|---------|
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| Image generation | DALL-E | $0.04/image |
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| Real-time X data | Grok + Live Search | $0.025/source |
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| Second opinion | GPT-5.2 | $1.75/M input, $14/M output |
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| Cheaper processing | DeepSeek | $0.14/M input, $0.28/M output |
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**How it works:** BlockRun uses x402 micropayments to route your requests to OpenAI, xAI, Google, and other providers. No API keys needed - your wallet pays per token.
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## Budget Control (Optional)
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If the user specifies a budget (e.g., "use at most $1"), track spending and stop when budget is reached:
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```python
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from blockrun_llm import setup_agent_wallet
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client = setup_agent_wallet()
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budget = 1.0 # User's budget
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# Before each call, check if within budget
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spending = client.get_spending()
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if spending['total_usd'] >= budget:
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print(f"Budget reached: ${spending['total_usd']:.4f} spent")
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# Stop making calls
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else:
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response = client.chat("openai/gpt-5.2", "Hello!")
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# At the end, report spending
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spending = client.get_spending()
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print(f"💰 Total spent: ${spending['total_usd']:.4f} across {spending['calls']} calls")
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```
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## When to Use
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| Trigger | Your Action |
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|---------|-------------|
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| User explicitly requests ("blockrun second opinion with GPT on...", "use grok to check...", "generate image with dall-e") | Execute via BlockRun |
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| User needs something you can't do (images, live X data) | Suggest BlockRun, wait for confirmation |
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| You can handle the task fine | Do it yourself, don't mention BlockRun |
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## Example User Prompts
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Users will say things like:
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| User Says | What You Do |
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|-----------|-------------|
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| "blockrun generate an image of a sunset" | Call DALL-E via ImageClient |
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| "use grok to check what's trending on X" | Call Grok with `search=True` |
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| "blockrun GPT review this code" | Call GPT-5.2 via LLMClient |
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| "what's the latest news about AI agents?" | Suggest Grok (you lack real-time data) |
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| "generate a logo for my startup" | Suggest DALL-E (you can't generate images) |
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| "blockrun check my balance" | Show wallet balance via `get_balance()` |
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| "blockrun deepseek summarize this file" | Call DeepSeek for cost savings |
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## Wallet & Balance
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Use `setup_agent_wallet()` to auto-create a wallet and get a client. This shows the QR code and welcome message on first use.
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**Initialize client (always start with this):**
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```python
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from blockrun_llm import setup_agent_wallet
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client = setup_agent_wallet() # Auto-creates wallet, shows QR if new
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```
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**Check balance (when user asks "show balance", "check wallet", etc.):**
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```python
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balance = client.get_balance() # On-chain USDC balance
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print(f"Balance: ${balance:.2f} USDC")
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print(f"Wallet: {client.get_wallet_address()}")
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```
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**Show QR code for funding:**
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```python
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from blockrun_llm import generate_wallet_qr_ascii, get_wallet_address
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# ASCII QR for terminal display
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print(generate_wallet_qr_ascii(get_wallet_address()))
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```
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## SDK Usage
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**Prerequisite:** Install the SDK with `pip install blockrun-llm`
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### Basic Chat
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```python
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from blockrun_llm import setup_agent_wallet
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client = setup_agent_wallet() # Auto-creates wallet if needed
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response = client.chat("openai/gpt-5.2", "What is 2+2?")
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print(response)
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# Check spending
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spending = client.get_spending()
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print(f"Spent ${spending['total_usd']:.4f}")
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```
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### Real-time X/Twitter Search (xAI Live Search)
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**IMPORTANT:** For real-time X/Twitter data, you MUST enable Live Search with `search=True` or `search_parameters`.
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```python
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from blockrun_llm import setup_agent_wallet
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client = setup_agent_wallet()
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# Simple: Enable live search with search=True
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response = client.chat(
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"xai/grok-3",
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"What are the latest posts from @blockrunai on X?",
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search=True # Enables real-time X/Twitter search
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)
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print(response)
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```
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### Advanced X Search with Filters
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```python
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from blockrun_llm import setup_agent_wallet
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client = setup_agent_wallet()
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response = client.chat(
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"xai/grok-3",
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"Analyze @blockrunai's recent content and engagement",
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search_parameters={
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"mode": "on",
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"sources": [
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{
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"type": "x",
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"included_x_handles": ["blockrunai"],
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"post_favorite_count": 5
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}
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],
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"max_search_results": 20,
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"return_citations": True
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}
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)
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print(response)
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```
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### Image Generation
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```python
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from blockrun_llm import ImageClient
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client = ImageClient()
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result = client.generate("A cute cat wearing a space helmet")
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print(result.data[0].url)
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```
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## xAI Live Search Reference
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Live Search is xAI's real-time data API. Cost: **$0.025 per source** (default 10 sources = ~$0.26).
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To reduce costs, set `max_search_results` to a lower value:
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```python
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# Only use 5 sources (~$0.13)
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response = client.chat("xai/grok-3", "What's trending?",
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search_parameters={"mode": "on", "max_search_results": 5})
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```
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### Search Parameters
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| Parameter | Type | Default | Description |
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|-----------|------|---------|-------------|
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| `mode` | string | "auto" | "off", "auto", or "on" |
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| `sources` | array | web,news,x | Data sources to query |
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| `return_citations` | bool | true | Include source URLs |
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| `from_date` | string | - | Start date (YYYY-MM-DD) |
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| `to_date` | string | - | End date (YYYY-MM-DD) |
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| `max_search_results` | int | 10 | Max sources to return (customize to control cost) |
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### Source Types
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**X/Twitter Source:**
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```python
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{
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"type": "x",
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"included_x_handles": ["handle1", "handle2"], # Max 10
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"excluded_x_handles": ["spam_account"], # Max 10
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"post_favorite_count": 100, # Min likes threshold
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"post_view_count": 1000 # Min views threshold
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}
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```
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**Web Source:**
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```python
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{
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"type": "web",
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"country": "US", # ISO alpha-2 code
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"allowed_websites": ["example.com"], # Max 5
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"safe_search": True
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}
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```
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**News Source:**
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```python
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{
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"type": "news",
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"country": "US",
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"excluded_websites": ["tabloid.com"] # Max 5
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}
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```
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## Available Models
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| Model | Best For | Pricing |
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|-------|----------|---------|
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| `openai/gpt-5.2` | Second opinions, code review, general | $1.75/M in, $14/M out |
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| `openai/gpt-5-mini` | Cost-optimized reasoning | $0.30/M in, $1.20/M out |
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| `openai/o4-mini` | Latest efficient reasoning | $1.10/M in, $4.40/M out |
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| `openai/o3` | Advanced reasoning, complex problems | $10/M in, $40/M out |
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| `xai/grok-3` | Real-time X/Twitter data | $3/M + $0.025/source |
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| `deepseek/deepseek-chat` | Simple tasks, bulk processing | $0.14/M in, $0.28/M out |
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| `google/gemini-2.5-flash` | Very long documents, fast | $0.15/M in, $0.60/M out |
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| `openai/dall-e-3` | Photorealistic images | $0.04/image |
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| `google/nano-banana` | Fast, artistic images | $0.01/image |
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*M = million tokens. Actual cost depends on your prompt and response length.*
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## Cost Reference
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All LLM costs are per million tokens (M = 1,000,000 tokens).
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| Model | Input | Output |
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|-------|-------|--------|
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| GPT-5.2 | $1.75/M | $14.00/M |
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| GPT-5-mini | $0.30/M | $1.20/M |
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| Grok-3 (no search) | $3.00/M | $15.00/M |
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| DeepSeek | $0.14/M | $0.28/M |
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| Fixed Cost Actions | |
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|-------|--------|
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| Grok Live Search | $0.025/source (default 10 = $0.25) |
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| DALL-E image | $0.04/image |
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| Nano Banana image | $0.01/image |
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**Typical costs:** A 500-word prompt (~750 tokens) to GPT-5.2 costs ~$0.001 input. A 1000-word response (~1500 tokens) costs ~$0.02 output.
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## Setup & Funding
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**Wallet location:** `$HOME/.blockrun/.session` (e.g., `/Users/username/.blockrun/.session`)
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**First-time setup:**
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1. Wallet auto-creates when `setup_agent_wallet()` is called
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2. Check wallet and balance:
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```python
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from blockrun_llm import setup_agent_wallet
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client = setup_agent_wallet()
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print(f"Wallet: {client.get_wallet_address()}")
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print(f"Balance: ${client.get_balance():.2f} USDC")
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```
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3. Fund wallet with $1-5 USDC on Base network
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**Show QR code for funding (ASCII for terminal):**
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```python
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from blockrun_llm import generate_wallet_qr_ascii, get_wallet_address
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print(generate_wallet_qr_ascii(get_wallet_address()))
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```
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## Troubleshooting
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**"Grok says it has no real-time access"**
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→ You forgot to enable Live Search. Add `search=True`:
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```python
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response = client.chat("xai/grok-3", "What's trending?", search=True)
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```
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**Module not found**
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→ Install the SDK: `pip install blockrun-llm`
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## Updates
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```bash
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pip install --upgrade blockrun-llm
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```
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