# Smart Money Profile — Behavior Analysis Workflow When a user wants to understand a wallet's trading behavior in depth: what style they trade, when they take profit, when they cut losses, and whether copying them would be profitable. Use this workflow when: - "is this wallet a long-term holder or a short-term trader?" - "what is this wallet's win rate, when does it take profit or cut losses?" - "if I copied this wallet, what would my return be?" - "smart money leaderboard, which wallets are most worth following?" - User provides a wallet address and asks about trading style or copy-trade potential > For basic "is this wallet worth following" analysis, see [`workflow-wallet-analysis.md`](workflow-wallet-analysis.md). This workflow goes deeper into behavior patterns and copy-trade estimation. --- ## Step 1 — Trading Stats (Both Periods) Run stats for both 7d and 30d to detect performance trends: ```bash gmgn-cli portfolio stats --chain --wallet
--period 7d gmgn-cli portfolio stats --chain --wallet
--period 30d ``` Key metrics: | Field | Meaning | Threshold | |-------|---------|-----------| | `winrate` | % of profitable trades (0–1) | > 0.6 strong, > 0.5 acceptable | | `pnl` | realized_profit / total_cost multiplier | > 1.0 = net positive | | `realized_profit` | USD profit locked in | context-dependent | | `buy_count` / `sell_count` | trading frequency | high = active trader | | `token_num` | number of distinct tokens traded | high = diversified | **Trend signal:** If 7d `winrate` is significantly higher than 30d, performance is improving. If lower, recent form is declining. --- ## Step 2 — Activity Analysis (Style Inference) ```bash gmgn-cli portfolio activity --chain --wallet
--limit 100 ``` For each token that appears in both a buy and a sell event, compute holding duration: - `sell.timestamp - buy.timestamp` in hours **Style classification:** | Holding Duration | Style Label | |-----------------|-------------| | < 1 hour | Scalper | | 1h – 24h | Day trader | | 1d – 7d | Swing trader | | > 7d | Position / long-term holder | Also check: - **Position sizing consistency** — are buy amounts roughly similar (disciplined) or highly variable? - **Token concentration** — does the wallet repeatedly trade the same tokens (specialist) or always new ones (trend chaser)? - **Sell behavior** — do sells follow a pattern (e.g., always sells after 2–3x, or cuts at -30%)? --- ## Step 3 — Take-Profit and Stop-Loss Pattern From `portfolio activity`, cross-reference buy price vs sell price for completed round trips: - For each token: find a `buy` event followed by a `sell` event - Compute approximate return: `(sell_total_usd - buy_total_usd) / buy_total_usd` - Group outcomes: wins vs losses Look for: - **Typical gain at exit** — does the wallet consistently take profit at ~2x, ~5x, or higher? - **Typical loss at cut** — does the wallet cut quickly at -20% or hold through large drawdowns? - **Asymmetry** — wins larger than losses = positive expected value. Reverse = risk. --- ## Step 4 — Copy-Trade ROI Estimation (Approximate) > **Note:** This is an approximation based on historical activity data, not a precise backtest. For the wallet's last 20–30 completed trades (round-trip buys + sells): 1. List all buy events: token, amount_usd, timestamp 2. List all sell events for the same tokens 3. Compute per-trade return: `(sell_usd - buy_usd) / buy_usd` 4. Average the returns **If you want to estimate "if I had followed today":** For still-open positions (buy with no matching sell), use `portfolio holdings` to get current `usd_value` vs `cost`, computing unrealized return. Present as: ``` Copy-trade estimate (last 30d completed trades): Avg return per trade: +X% Win rate: X / Y trades profitable Best trade: +X% on TOKEN Worst trade: -X% on TOKEN Approximate 30d return if equal-weight copy: ~X% ⚠️ This is an approximation. Actual results depend on entry timing, slippage, and fees. ``` --- ## Step 5 — Smart Money Leaderboard (Multi-Wallet Comparison) When the user wants to compare multiple smart money wallets: ```bash # Batch stats — compare up to 10 wallets at once gmgn-cli portfolio stats --chain \ --wallet --wallet --wallet \ --period 30d ``` Rank wallets by composite score. Suggested weights: - `winrate` × 40% - `pnl` × 40% - `token_num` (diversity) × 10% - Recency (7d winrate vs 30d winrate improvement) × 10% To discover active smart money wallets to compare, first run: ```bash gmgn-cli track smartmoney --chain ``` Extract unique wallet addresses from the results, then batch-query their stats. --- ## Output Template ``` Smart Money Profile: {short_address} Chain: {chain} | Data: 7d + 30d ─── Performance ──────────────────────────── Win Rate (7d / 30d): {X}% / {X}% [trend: ↑ improving / ↓ declining / → stable] PnL Ratio (30d): {X}x Realized Profit (30d): ${X} ─── Trading Style ────────────────────────── Style: Scalper / Day trader / Swing trader / Long-term holder Avg Hold Time: ~{X} hours / days Position Size: Consistent (disciplined) / Variable (opportunistic) Token Focus: Specialist (repeats tokens) / Trend chaser (always new) ─── Exit Behavior ────────────────────────── Typical take-profit: ~+{X}% gain Typical stop-loss: ~-{X}% loss Win/loss ratio: {avg_win}x / {avg_loss}x ─── Copy-Trade Estimate ──────────────────── Approx. 30d return if copied: ~{X}% Based on {N} completed trades ⚠️ Approximation only ─── Verdict ──────────────────────────────── 🟢 High-conviction follow — strong stats, consistent style, favorable exit pattern 🟡 Selective follow — good stats but inconsistent or high-risk behavior 🔴 Avoid copying — low win rate, poor exit discipline, or declining form ``` --- ## Related Workflows - [`workflow-wallet-analysis.md`](workflow-wallet-analysis.md) — general wallet quality assessment - [`workflow-token-research.md`](workflow-token-research.md) — deep dive on tokens this wallet holds