Kalshi Econ Seasonal Trader
/install kalshi-econ-seasonal-trader
\r \r
Kalshi CPI Seasonal Trader\r
\r
This is a template.\r The default signal uses static seasonal adjustment factors for CPI bins -- remix it with real-time BLS data feeds, energy futures curves, or housing indices for live seasonal calibration.\r The skill handles all the plumbing (market discovery, trade execution, safeguards). Your agent provides the alpha.\r \r
Strategy Overview\r
\r CPI has well-documented seasonal patterns that retail traders ignore. Energy costs spike in summer (June peak), housing OER resets in January, and holiday demand lifts December. This skill biases CPI bin probabilities based on the current month's historical seasonal adjustment, then trades when Kalshi market prices diverge from the seasonally-adjusted fair value.\r \r Key advantages:\r
- Seasonal patterns are persistent -- decades of BLS data confirm monthly CPI biases\r
- Energy dominance -- summer energy spikes are the strongest and most predictable signal\r
- January housing reset -- OER annual adjustment creates a reliable January hot-print bias\r
- Bin structure exploitable -- Kalshi CPI bins create discrete mispricings when seasonal effects shift probability mass\r \r
Signal Logic\r
\r
Seasonal Adjustment Model\r
\r
- Look up current month's seasonal adjustment factor (+/- percentage points)\r
- Classify each CPI market into a bin category (low, low_mid, mid, high_mid, high)\r
- Shift probability mass: positive adj -> higher bins more likely, negative -> lower bins\r
- Compare adjusted fair value to Kalshi market price\r
- Trade when |fair_value - market| >= entry_edge\r \r
Monthly Adjustments\r
\r | Month | Adj | Reason |\r |-------|-----|--------|\r | Jan | +0.10 | Housing OER annual reset |\r | Feb | -0.05 | Post-holiday normalization |\r | Mar | 0.00 | Neutral transition |\r | Apr | +0.05 | Spring demand, gasoline blend switch |\r | May | +0.05 | Summer driving begins |\r | Jun | +0.10 | Peak summer energy |\r | Jul | +0.05 | Continued summer, moderating |\r | Aug | 0.00 | Back-to-school offsets energy |\r | Sep | -0.05 | Summer demand fade |\r | Oct | -0.05 | Autumn deflation |\r | Nov | 0.00 | Pre-holiday neutral |\r | Dec | +0.05 | Holiday demand |\r \r
Conviction-Based Sizing\r
\r
conviction = min(|edge| / entry_edge, 2.0) / 2.0\rsize = max($1.00, conviction * MAX_POSITION_USD)\r- Larger edge = larger position, capped at MAX_POSITION_USD\r \r
Risk Parameters\r
\r | Parameter | Default | Notes |\r |-----------|---------|-------|\r | Entry edge | 8% | Min fair-vs-market divergence to trade |\r | Exit threshold | 45% | Sell when position price reaches this |\r | Max position size | $5.00 USDC | Per market |\r | Max trades per run | 3 | Rate limiting |\r | Max slippage | 15% | Skip if slippage exceeds |\r | Min liquidity | $0 | Disabled by default |\r \r
Installation & Setup\r
\r
clawhub install kalshi-econ-seasonal-trader\r
```\r
\r
Requires: `SIMMER_API_KEY` and `SOLANA_PRIVATE_KEY` environment variables.\r
\r
## Cron Schedule\r
\r
Cron is set to `null` -- the skill does not run on a schedule until you configure it in the Simmer UI.\r
\r
## Safety & Execution Mode\r
\r
**The skill defaults to dry-run mode. Real trades only execute when `--live` is passed explicitly.**\r
\r
| Scenario | Mode | Financial risk |\r
|----------|------|----------------|\r
| `python trader.py` | Dry run | None |\r
| Cron / automaton | Dry run | None |\r
| `python trader.py --live` | Live (Kalshi via DFlow) | Real USDC |\r
\r
## Required Credentials\r
\r
| Variable | Required | Notes |\r
|----------|----------|-------|\r
| `SIMMER_API_KEY` | Yes | Trading authority. Treat as a high-value credential. |\r
| `SOLANA_PRIVATE_KEY` | Yes | Base58-encoded Solana private key for live trading. |\r
\r
## Tunables (Risk Parameters)\r
\r
| Variable | Default | Purpose |\r
|----------|---------|---------|\r
| `SIMMER_ECON_SEAS_ENTRY_EDGE` | `0.08` | Min divergence to trigger trade |\r
| `SIMMER_ECON_SEAS_EXIT_THRESHOLD` | `0.45` | Sell position when price reaches this level |\r
| `SIMMER_ECON_SEAS_MAX_POSITION_USD` | `5.00` | Max USDC per trade |\r
| `SIMMER_ECON_SEAS_MAX_TRADES_PER_RUN` | `3` | Max trades per execution cycle |\r
| `SIMMER_ECON_SEAS_SLIPPAGE_MAX` | `0.15` | Max slippage before skipping trade |\r
| `SIMMER_ECON_SEAS_MIN_LIQUIDITY` | `0` | Min market liquidity USD (0 = disabled) |\r
\r
## Dependency\r
\r
`simmer-sdk` is published on PyPI by Simmer Markets.\r
- PyPI: https://pypi.org/project/simmer-sdk/\r
- GitHub: https://github.com/SpartanLabsXyz/simmer-sdk\r
- Publisher: [email protected]\r
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install kalshi-econ-seasonal-trader - After installation, invoke the skill by name or use
/kalshi-econ-seasonal-trader - Provide required inputs per the skill's parameter spec and get structured output
What is Kalshi Econ Seasonal Trader?
Trades CPI/inflation markets on Kalshi using documented seasonal patterns in CPI data. Energy costs spike summer, housing adjustments January. Requires SIMME... It is an AI Agent Skill for Claude Code / OpenClaw, with 85 downloads so far.
How do I install Kalshi Econ Seasonal Trader?
Run "/install kalshi-econ-seasonal-trader" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is Kalshi Econ Seasonal Trader free?
Yes, Kalshi Econ Seasonal Trader is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does Kalshi Econ Seasonal Trader support?
Kalshi Econ Seasonal Trader is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created Kalshi Econ Seasonal Trader?
It is built and maintained by diagnostikon (@diagnostikon); the current version is v1.0.1.