# Send Robonet to your agent
Hand the extracted package to your coding agent with a concrete install brief instead of figuring it out manually.
## Fast path
- Download the package from Yavira.
- Extract it into a folder your agent can access.
- Paste one of the prompts below and point your agent at the extracted folder.
## Suggested prompts
### New install

```text
I downloaded a skill package from Yavira. Read SKILL.md from the extracted folder and install it by following the included instructions. Tell me what you changed and call out any manual steps you could not complete.
```
### Upgrade existing

```text
I downloaded an updated skill package from Yavira. Read SKILL.md from the extracted folder, compare it with my current installation, and upgrade it while preserving any custom configuration unless the package docs explicitly say otherwise. Summarize what changed and any follow-up checks I should run.
```
## Machine-readable fields
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      "scope": "item",
      "summary": "Item download looks usable.",
      "detail": "Yavira can redirect you to the upstream package for this item.",
      "primaryActionLabel": "Download for OpenClaw",
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        "Review SKILL.md after the package is downloaded.",
        "Confirm the extracted package contains the expected setup assets."
      ],
      "postInstallChecks": [
        "Confirm the extracted package includes the expected docs or setup files.",
        "Validate the skill or prompts are available in your target agent workspace.",
        "Capture any manual follow-up steps the agent could not complete."
      ]
    }
  },
  "links": {
    "detailUrl": "https://openagent3.xyz/skills/robonet-workbench",
    "downloadUrl": "https://openagent3.xyz/downloads/robonet-workbench",
    "agentUrl": "https://openagent3.xyz/skills/robonet-workbench/agent",
    "manifestUrl": "https://openagent3.xyz/skills/robonet-workbench/agent.json",
    "briefUrl": "https://openagent3.xyz/skills/robonet-workbench/agent.md"
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}
```
## Documentation

### Overview

Robonet provides an MCP server that enables AI assistants to build, test, and deploy trading strategies. The server offers 24 tools organized into 6 categories: Data Access (8), AI-Powered Strategy Generation (6), Backtesting (2), Prediction Markets (3), Deployment (4), and Account Management (2).

### Quick Start

Load the required MCP tools before using them:

Use MCPSearch to select: mcp__workbench__get_all_symbols
Use MCPSearch to select: mcp__workbench__create_strategy
Use MCPSearch to select: mcp__workbench__run_backtest

After loading, call the tools directly to interact with Robonet.

### 1. Data Access Tools (Fast, <1s execution)

Browse available resources before building strategies:

get_all_strategies - List your trading strategies with optional backtest results
get_strategy_code - View Python source code of a strategy
get_strategy_versions - Track strategy evolution across versions
get_all_symbols - List tradeable pairs on Hyperliquid (BTC-USDT, ETH-USDT, etc.)
get_all_technical_indicators - Browse 170+ indicators (RSI, MACD, Bollinger Bands, etc.)
get_allora_topics - List Allora Network ML prediction topics
get_data_availability - Check data ranges before backtesting
get_latest_backtest_results - View recent backtest performance

Pricing: Most $0.001, some free. Use these liberally to explore.

When to use: Start every workflow by checking available symbols, indicators, or existing strategies before generating new code.

### 2. AI-Powered Strategy Tools (20-60s execution)

Generate and improve trading strategies:

generate_ideas - Get AI-generated strategy concepts based on market data
create_strategy - Generate complete Python strategy from description
optimize_strategy - Tune parameters for better performance
enhance_with_allora - Add Allora Network ML predictions to strategy
refine_strategy - Make targeted code improvements
create_prediction_market_strategy - Generate Polymarket YES/NO trading logic

Pricing: Real LLM cost + margin ($0.50-$4.50 typical). These are the most expensive tools.

When to use: After understanding available resources, use these to build or improve strategies. Always backtest after generation.

### 3. Backtesting Tools (20-40s execution)

Test strategy performance on historical data:

run_backtest - Test crypto trading strategies
run_prediction_market_backtest - Test Polymarket strategies

Pricing: $0.001 per backtest

Returns: Performance metrics (Sharpe ratio, max drawdown, win rate, total return, profit factor), trade statistics, equity curve data

When to use: After creating or modifying a strategy, always backtest before deploying. Use multiple time periods to validate robustness.

### 4. Prediction Market Tools

Build Polymarket trading strategies:

get_all_prediction_events - Browse available prediction markets
get_prediction_market_data - Analyze YES/NO token price history
create_prediction_market_strategy - Generate Polymarket strategy code

Pricing: $0.001 for data tools, Real LLM cost + margin for creation

When to use: For prediction market trading strategies on Polymarket (politics, crypto price predictions, economics events)

### 5. Deployment Tools

Deploy strategies to live trading on Hyperliquid:

deployment_create - Launch live trading agent (EOA or Hyperliquid Vault)
deployment_list - Monitor active deployments
deployment_start - Resume stopped deployment
deployment_stop - Halt live trading

Pricing: $0.50 to create, free for list/start/stop

Constraints:

EOA (wallet): Max 1 active deployment per wallet
Hyperliquid Vault: Requires 200+ USDC in wallet, unlimited deployments

When to use: After thorough backtesting shows positive results. Never deploy without backtesting first.

### 6. Account Tools

Manage credits and view account info:

get_credit_balance - Check available USDC credits
get_credit_transactions - View transaction history

Pricing: Free

When to use: Check balance before expensive operations. Monitor spending via transaction history.

### Workflow 1: Create and Test New Strategy

1. get_all_symbols → See available trading pairs
2. get_all_technical_indicators → Browse indicators
3. create_strategy → Generate Python code from description
4. run_backtest → Test on 6+ months of data
5. If promising: optimize_strategy → Tune parameters
6. If excellent: enhance_with_allora → Add ML signals
7. run_backtest → Validate improvements
8. If ready: deployment_create → Deploy to live trading

Cost: ~$1-5 depending on optimization and enhancement

### Workflow 2: Enhance Existing Strategy

1. get_all_strategies (include_latest_backtest=true) → Find strategy
2. get_strategy_code → Review implementation
3. refine_strategy (mode="new") → Make targeted improvements
4. run_backtest → Test changes
5. If better: enhance_with_allora → Add ML predictions
6. run_backtest → Final validation

Cost: ~$0.50-2.00

### Workflow 3: Prediction Market Trading

1. get_all_prediction_events → Browse markets
2. get_prediction_market_data → Analyze price history
3. create_prediction_market_strategy → Build YES/NO logic
4. run_prediction_market_backtest → Test performance
5. If profitable: deployment_create → Deploy (when supported)

Cost: ~$0.50-5.00

### Workflow 4: Explore Ideas Before Building

1. get_all_symbols → Check available pairs
2. get_allora_topics → See ML prediction coverage
3. generate_ideas (strategy_count=3) → Get AI concepts
4. Pick favorite idea
5. create_strategy → Implement chosen concept
6. run_backtest → Validate

Cost: ~$0.50-4.50 (use generate_ideas to explore cheaply)

### Start with Data Exploration

Always check availability before building:

Use get_data_availability to verify symbol has sufficient history
Check get_allora_topics if planning ML enhancement
Review get_all_technical_indicators to know what's available

### Always Backtest

Never deploy without backtesting:

Test on 6+ months of data minimum
Use multiple time periods (train vs validation)
Check metrics: Sharpe >1.0, max drawdown <20%, win rate 45-65%
Compare performance across different market conditions

### Cost Management

Tools are priced in tiers:

Data tools ($0.001 or free) - Use liberally
Backtesting ($0.001) - Use frequently
AI generation (LLM cost + margin) - Most expensive
Deployment ($0.50) - One-time per deployment

Cost-saving tips:

Use generate_ideas ($0.05-0.50) before create_strategy ($1-4)
Check get_latest_backtest_results (free) before running new backtest
Use refine_strategy ($0.50-1.50) instead of regenerating with create_strategy
Review get_strategy_code (free) before modifying

### Strategy Naming Convention

Follow this pattern: {Name}_{RiskLevel}[_suffix]

Examples:

RSIMeanReversion_M - Base strategy, medium risk
MomentumBreakout_H_optimized - After optimization, high risk
TrendFollower_L_allora - With Allora ML, low risk

Risk levels: H (high), M (medium), L (low)

### Strategy Framework

Strategies use the Jesse trading framework with these required methods:

should_long() - Check if conditions met for long entry
should_short() - Check if conditions met for short entry
go_long() - Execute long entry with position sizing
go_short() - Execute short entry with position sizing

Optional methods:

on_open_position(order) - Set stop loss, take profit after entry
update_position() - Trailing stops, position management
should_cancel_entry() - Cancel unfilled orders

### Available Indicators

170+ technical indicators via jesse.indicators:

Momentum: RSI, MACD, Stochastic, ADX, CCI, MFI
Trend: EMA, SMA, Supertrend, Parabolic SAR, VWAP
Volatility: Bollinger Bands, ATR, Keltner Channels
Volume: OBV, Volume Profile, Chaikin Money Flow
And many more...

Use get_all_technical_indicators to see the full list.

### Allora Network Integration

Add ML price predictions to strategies:

Prediction types: Log return (percentage change) or absolute price
Horizons: 5m, 8h, 24h, 1 week
Assets: BTC, ETH, SOL, NEAR
Networks: Mainnet (10 topics) and Testnet (26 topics)

Use enhance_with_allora to automatically integrate predictions, or manually add via self.get_predictions() in strategy code.

### Deployment Options

EOA (Externally Owned Account):

Direct wallet trading
Max 1 active deployment per wallet
Immediate deployment
Lower setup complexity

Hyperliquid Vault:

Requires 200+ USDC in wallet
Unlimited deployments
Professional vault setup
Public TVL and performance tracking

### "Insufficient Credits" Error

Check balance: get_credit_balance
Purchase credits in Robonet dashboard if needed

### "No Data Available" for Backtest

Use get_data_availability to check symbol coverage
Try shorter date range or different symbol
BTC-USDT and ETH-USDT have longest history (2020-present)

### "No Trades Generated" in Backtest

Entry conditions may be too restrictive
Try longer test period or adjust thresholds
Use get_strategy_code to review logic

### Backtest Takes >2 Minutes

Long date ranges (>2 years) or high-frequency timeframes (1m) are slow
Use shorter ranges or lower frequency timeframes

### Strategy Not Showing in Web Interface

Strategies are linked to API key's wallet
Ensure logged into same account that owns the API key
Refresh "My Strategies" page

### Complete Tool Reference

For detailed parameter documentation on all 24 tools, see:

./shared-references/tool-catalog.md

The catalog includes:

Full parameter specifications with types and defaults
Return value descriptions
Pricing for each tool
Execution time estimates
Usage examples

### Example Prompts

Create a simple strategy:

Use Robonet MCP to create a momentum strategy for BTC-USDT on 4h timeframe that:
- Enters long when RSI crosses above 30 and price is above 50-day EMA
- Exits with 2% stop loss or 4% take profit
- Uses 95% of available margin

Backtest existing strategy:

Backtest my RSIMeanReversion_M strategy on ETH-USDT 1h timeframe from 2024-01-01 to 2024-06-30

Optimize parameters:

Optimize the RSI period and stop loss percentage for my MomentumBreakout_H strategy on BTC-USDT 4h from 2024-01-01 to 2024-12-31

Add ML predictions:

Enhance my TrendFollower_M strategy with Allora predictions for ETH-USDT 8h timeframe and compare performance

Deploy to live trading:

Deploy my RSIMeanReversion_M_allora strategy to Hyperliquid on BTC-USDT 4h with 2x leverage using EOA deployment

### Security & Access

All tools require valid API key from Robonet
Strategies are wallet-scoped (only creator can access)
Credits reserved atomically before execution
API keys never committed to version control
Use environment variables or secure config for API keys

### Resources

Robonet Dashboard: robonet.finance
API Key Management: Dashboard → Settings → API Keys
Credit Purchase: Dashboard → Settings → Billing
Jesse Framework Docs: jesse.trade
Allora Network: allora.network
Hyperliquid: hyperliquid.xyz
Support: Discord or support@robonet.finance
## Trust
- Source: tencent
- Verification: Indexed source record
- Publisher: nickemmons
- Version: 0.1.0
## Source health
- Status: healthy
- Item download looks usable.
- Yavira can redirect you to the upstream package for this item.
- Health scope: item
- Reason: direct_download_ok
- Checked at: 2026-05-08T06:39:05.790Z
- Expires at: 2026-05-15T06:39:05.790Z
- Recommended action: Download for OpenClaw
## Links
- [Detail page](https://openagent3.xyz/skills/robonet-workbench)
- [Send to Agent page](https://openagent3.xyz/skills/robonet-workbench/agent)
- [JSON manifest](https://openagent3.xyz/skills/robonet-workbench/agent.json)
- [Markdown brief](https://openagent3.xyz/skills/robonet-workbench/agent.md)
- [Download page](https://openagent3.xyz/downloads/robonet-workbench)