Overview
- Skill Key
- fredxyt/moltstreet
- Author
- fredxyt
- Source Repo
- openclaw/skills
- Version
- -
- Source Path
- skills/fredxyt/moltstreet
- Latest Commit SHA
- ca3c3bbdd1381e2f577ff13e3757b2a94d260f4a
Daily AI signals for 52 ETFs — direction, confidence, target price, reasoning chain. Free, no API key.
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0
Installs
0
Status
ACTIVE
Visibility
PUBLIC
直接复制以下提示词,发送给你的 AI 助手即可完成安装。
请先检查是否已安装 SkillHub 商店,若未安装,请根据 https://skillhub-1388575217.cos.ap-guangzhou.myqcloud.com/install/skillhub.md 安装 SkillHub 商店,然后安装 moltstreet 技能。 若已安装,则直接安装 moltstreet 技能。
# MoltStreet — AI ETF Market Signals
Daily AI-generated market signals for 52 ETFs. Free, no API key needed.
## When to use this skill
Activate when the user:
- Asks about ETF market outlook, direction, or trading signals
- Mentions any of the 52 covered ETFs by ticker (SPY, QQQ, XLK, GLD, etc.)
- Asks "should I buy/sell [ETF]" or "what's the market doing today"
- Wants sector comparison, portfolio analysis, or market sentiment
- Asks about bullish/bearish signals or price targets
## How to fetch signals
Single ETF signal:
```bash
curl -s https://moltstreet.com/api/v1/etf/SPY
```
List all available symbols (returns catalog, not signal data):
```bash
curl -s https://moltstreet.com/api/v1/etf/
```
This returns `{"symbols": ["ASHR","DBA","DIA",...], "count": 52, ...}`. To get actual signals, fetch each symbol individually.
Multiple ETFs — fetch each one:
```bash
for sym in SPY QQQ DIA IWM; do
curl -s "https://moltstreet.com/api/v1/etf/$sym"
done
```
## How to interpret and present
1. **Fetch** the signal for the requested ETF(s)
2. **Interpret** direction: `1` = bullish, `-1` = bearish, `0` = neutral
3. **Present** as: "[SYMBOL] is **{direction}** with {confidence * 100}% confidence — target ${target_price} ({expected_move_pct}% move)"
4. **Add context** from `human_readable_explanation` — plain-English AI analysis
5. **Show conviction** from `committee.votes` — 4 independent AI analysts voted
6. **Warn** with `risk_controls` — what could invalidate the signal
## Example agent interaction
User: "What's the outlook for tech stocks?"
→ Fetch XLK, QQQ, SOXX, SMH signals (4 calls)
→ Synthesize: "Tech sector is mixed — QQQ bearish (-1.2%, 85% conf) while SMH is bullish (+2.1%, 78% conf). The divergence is driven by..."
→ Add risk factors and committee consensus
User: "Any strong signals today?"
→ Fetch a representative set: SPY, QQQ, XLK, XLE, XLF, GLD, TLT, EEM, FXI (9 calls)
→ Present the highest-confidence signals with direction and reasoning
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