stock-liquidity
Analyze stock liquidity using bid-ask spreads, volume profiles, order book depth, market impact estimates, and turnover ratios via Yahoo Finance data. Use this skill whenever the user asks about liquidity, trading costs, bid-ask spread, market depth, volume analysis, slippage, market impact, turnover ratio, or how easy/hard it is to trade a stock without moving the price. Triggers: "how liquid is AAPL", "bid-ask spread", "volume analysis", "order book depth", "market impact of a large order", "turnover ratio", "slippage estimate", "can I trade 100k shares without moving the price", "liquidity comparison", "spread analysis", "ADTV", "Amihud illiquidity", "dollar volume", "execution cost estimate", "liquidity score", penny stocks, small caps, or thinly traded securities.
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Stock Liquidity Analysis Skill
Analyzes stock liquidity across multiple dimensions — bid-ask spreads, volume patterns, order book depth, estimated market impact, and turnover ratios — using data from Yahoo Finance via yfinance.
Liquidity matters because it determines the real cost of trading. The quoted price is not what you actually pay — spreads, slippage, and market impact all eat into returns, especially for larger positions or less liquid names.
Important: This is for research and educational purposes only. Not financial advice. yfinance is not affiliated with Yahoo, Inc.
Step 1: Ensure Dependencies Are Available
Current environment status:
!`python3 -c "import yfinance, pandas, numpy; print(f'yfinance={yfinance.__version__} pandas={pandas.__version__} numpy={numpy.__version__}')" 2>/dev/null || echo "DEPS_MISSING"`If DEPS_MISSING, install required packages:
import subprocess, sys
subprocess.check_call([sys.executable, "-m", "pip", "install", "-q", "yfinance", "pandas", "numpy"])If already installed, skip and proceed.
Step 2: Route to the Correct Sub-Skill
Classify the user's request and jump to the matching section. If the user asks for a general liquidity assessment without specifying a particular metric, run Sub-Skill A (Liquidity Dashboard) which computes all key metrics together.
| User Request | Route To | Examples |
|---|---|---|
| General liquidity check, "how liquid is X" | Sub-Skill A: Liquidity Dashboard | "how liquid is AAPL", "liquidity analysis for TSLA", "is this stock liquid enough" |
| Bid-ask spread, trading costs, effective spread | Sub-Skill B: Spread Analysis | "bid-ask spread for AMD", "what's the spread on NVDA options", "trading cost estimate" |
| Volume, ADTV, dollar volume, volume profile | Sub-Skill C: Volume Analysis | "volume analysis MSFT", "average daily volume", "volume profile for SPY" |
| Order book depth, market depth, level 2 | Sub-Skill D: Order Book Depth | "order book depth for AAPL", "market depth", "show me the book" |
| Market impact, slippage, execution cost for large orders | Sub-Skill E: Market Impact | "how much would 50k shares move the price", "slippage estimate", "market impact of $1M order" |
| Turnover ratio, trading activity relative to float | Sub-Skill F: Turnover Ratio | "turnover ratio for GME", "float turnover", "how actively traded is this" |
| Compare liquidity across multiple stocks | Sub-Skill A (multi-ticker mode) | "compare liquidity AAPL vs TSLA", "which is more liquid AMD or INTC" |
Defaults
| Parameter | Default |
|---|---|
| Lookback period | 3mo (3 months) |
| Data interval | 1d (daily) |
| Market impact model | Square-root model |
| Intraday interval (when needed) | 5m |
Sub-Skill A: Liquidity Dashboard
Goal: Produce a comprehensive liquidity snapshot combining all key metrics for one or more tickers.
A1: Fetch data and compute all metrics
import yfinance as yf
import pandas as pd
import numpy as np
def liquidity_dashboard(ticker_symbol, period="3mo"):
ticker = yf.Ticker(ticker_symbol)
info = ticker.info
hist = ticker.history(period=period)
if hist.empty:
return None
# --- Spread metrics (from current quote) ---
bid = info.get("bid", None)
ask = info.get("ask", None)
current_price = info.get("currentPrice") or info.get("regularMarketPrice") or hist["Close"].iloc[-1]
spread = None
spread_pct = None
if bid and ask and bid > 0 and ask > 0:
spread = round(ask - bid, 4)
midpoint = (ask + bid) / 2
spread_pct = round((spread / midpoint) * 100, 4)
# --- Volume metrics ---
avg_volume = hist["Volume"].mean()
median_volume = hist["Volume"].median()
avg_dollar_volume = (hist["Close"] * hist["Volume"]).mean()
volume_std = hist["Volume"].std()
volume_cv = volume_std / avg_volume if avg_volume > 0 else None # coefficient of variation
# --- Turnover ratio ---
shares_outstanding = info.get("sharesOutstanding", None)
float_shares = info.get("floatShares", None)
base_shares = float_shares or shares_outstanding
turnover_ratio = round(avg_volume / base_shares, 6) if base_shares else None
# --- Amihud illiquidity ratio ---
# Average of |daily return| / daily dollar volume
returns = hist["Close"].pct_change().dropna()
dollar_volume = (hist["Close"] * hist["Volume"]).iloc[1:] # align with returns
amihud_values = returns.abs() / dollar_volume
amihud = amihud_values[amihud_values.replace([np.inf, -np.inf], np.nan).notna()].mean()
# --- Market impact estimate (square-root model) ---
# For a hypothetical order of 1% of ADV
adv = avg_volume
order_size = adv * 0.01
daily_volatility = returns.std()
sigma = daily_volatility
participation_rate = order_size / adv if adv > 0 else 0
impact_bps = sigma * np.sqrt(participation_rate) * 10000 # in basis points
return {
"ticker": ticker_symbol,
"current_price": round(current_price, 2),
"bid": bid,
"ask": ask,
"spread": spread,
"spread_pct": spread_pct,
"avg_daily_volume": int(avg_volume),
"median_daily_volume": int(median_volume),
"avg_dollar_volume": round(avg_dollar_volume, 0),
"volume_cv": round(volume_cv, 3) if volume_cv else None,
"shares_outstanding": shares_outstanding,
"float_shares": float_shares,
"turnover_ratio": turnover_ratio,
"amihud_illiquidity": round(amihud * 1e9, 4) if not np.isnan(amihud) else None,
"daily_volatility": round(daily_volatility * 100, 2),
"impact_1pct_adv_bps": round(impact_bps, 2),
"observations": len(hist),
}A2: Interpret and present
Present as a summary card. For the Amihud illiquidity ratio, multiply by 1e9 for readability (standard convention).
Liquidity grade (use these rough thresholds for US equities):
| Grade | Avg Dollar Volume | Spread (%) | Amihud (×10⁹) |
|---|---|---|---|
| Very High | > $500M/day | < 0.03% | < 0.01 |
| High | $50M–$500M/day | 0.03–0.10% | 0.01–0.1 |
| Moderate | $5M–$50M/day | 0.10–0.50% | 0.1–1.0 |
| Low | $500K–$5M/day | 0.50–2.00% | 1.0–10 |
| Very Low | < $500K/day | > 2.00% | > 10 |
When comparing multiple tickers, show a side-by-side table and highlight which is more liquid and why.
Sub-Skill B: Spread Analysis
Goal: Detailed bid-ask spread analysis including current spread, historical context from options data, and effective spread estimates.
B1: Current spread from quote
import yfinance as yf
def spread_analysis(ticker_symbol):
ticker = yf.Ticker(ticker_symbol)
info = ticker.info
bid = info.get("bid", 0)
ask = info.get("ask", 0)
bid_size = info.get("bidSize", None)
ask_size = info.get("askSize", None)
current_price = info.get("currentPrice") or info.get("regularMarketPrice", 0)
result = {"bid": bid, "ask": ask, "bid_size": bid_size, "ask_size": ask_size}
if bid > 0 and ask > 0:
midpoint = (bid + ask) / 2
result["absolute_spread"] = round(ask - bid, 4)
result["relative_spread_pct"] = round((ask - bid) / midpoint * 100, 4)
result["relative_spread_bps"] = round((ask - bid) / midpoint * 10000, 2)
return resultB2: Options spread context
Options data from yfinance includes bid/ask for each strike, which gives a sense of derivatives liquidity:
def options_spread_analysis(ticker_symbol):
ticker = yf.Ticker(ticker_symbol)
expirations = ticker.options
if not expirations:
return None
# Use nearest expiration
chain = ticker.option_chain(expirations[0])
for label, df in [("Calls", chain.calls), ("Puts", chain.puts)]:
atm = df[df["inTheMoney"]].tail(3).append(df[~df["inTheMoney"]].head(3))
atm = pd.concat([df[df["inTheMoney"]].tail(3), df[~df["inTheMoney"]].head(3)])
atm["spread"] = atm["ask"] - atm["bid"]
atm["spread_pct"] = (atm["spread"] / ((atm["ask"] + atm["bid"]) / 2) * 100).round(2)
return chainB3: Present results
Show:
Sub-Skill C: Volume Analysis
Goal: Analyze trading volume patterns — averages, trends, relative volume, and dollar volume.
C1: Compute volume metrics
import yfinance as yf
import pandas as pd
import numpy as np
def volume_analysis(ticker_symbol, period="3mo"):
ticker = yf.Ticker(ticker_symbol)
hist = ticker.history(period=period)
if hist.empty:
return None
vol = hist["Volume"]
close = hist["Close"]
dollar_vol = vol * close
# Relative volume (today vs average)
rvol = vol.iloc[-1] / vol.mean() if vol.mean() > 0 else None
# Volume trend (linear regression slope over the period)
x = np.arange(len(vol))
slope, _ = np.polyfit(x, vol.values, 1) if len(vol) > 1 else (0, 0)
trend_pct = (slope * len(vol)) / vol.mean() * 100 # % change over period
# Volume profile by day of week
hist_copy = hist.copy()
hist_copy["DayOfWeek"] = hist_copy.index.dayofweek
day_names = {0: "Mon", 1: "Tue", 2: "Wed", 3: "Thu", 4: "Fri"}
vol_by_day = hist_copy.groupby("DayOfWeek")["Volume"].mean()
vol_by_day.index = vol_by_day.index.map(day_names)
# High/low volume days
high_vol_days = hist.nlargest(5, "Volume")[["Close", "Volume"]]
low_vol_days = hist.nsmallest(5, "Volume")[["Close", "Volume"]]
return {
"avg_volume": int(vol.mean()),
"median_volume": int(vol.median()),
"avg_dollar_volume": round(dollar_vol.mean(), 0),
"current_volume": int(vol.iloc[-1]),
"relative_volume": round(rvol, 2) if rvol else None,
"volume_trend_pct": round(trend_pct, 1),
"volume_by_day": vol_by_day.to_dict(),
"high_vol_days": high_vol_days,
"low_vol_days": low_vol_days,
"max_volume": int(vol.max()),
"min_volume": int(vol.min()),
}C2: Present results
Show:
Sub-Skill D: Order Book Depth
Goal: Estimate order book depth using available bid/ask data from the equity quote and options chain.
Yahoo Finance does not provide full Level 2 / order book data. Be upfront about this limitation. What we can do:
D1: Gather available depth data
import yfinance as yf
import pandas as pd
import numpy as np
def order_book_proxy(ticker_symbol):
ticker = yf.Ticker(ticker_symbol)
info = ticker.info
# Top of book
top_of_book = {
"bid": info.get("bid"),
"ask": info.get("ask"),
"bid_size": info.get("bidSize"),
"ask_size": info.get("askSize"),
}
# Intraday volume distribution (5-min bars, last 5 days)
intraday = ticker.history(period="5d", interval="5m")
if not intraday.empty:
intraday_copy = intraday.copy()
intraday_copy["time"] = intraday_copy.index.time
vol_by_time = intraday_copy.groupby("time")["Volume"].mean()
# Normalize to percentage of daily volume
total = vol_by_time.sum()
vol_pct = (vol_by_time / total * 100).round(2) if total > 0 else vol_by_time
# Options open interest as depth proxy
expirations = ticker.options
if expirations:
chain = ticker.option_chain(expirations[0])
total_call_oi = chain.calls["openInterest"].sum()
total_put_oi = chain.puts["openInterest"].sum()
total_call_volume = chain.calls["volume"].sum()
total_put_volume = chain.puts["volume"].sum()
return top_of_book, vol_pct if not intraday.empty else NoneD2: Present results
Show:
Sub-Skill E: Market Impact
Goal: Estimate how much a given order size would move the price, using the square-root market impact model.
The standard model in practice is: Impact (%) = σ × √(Q / V) where σ is daily volatility, Q is order size in shares, and V is average daily volume. This is a simplified version of the Almgren-Chriss framework used by institutional traders.
E1: Compute market impact estimate
import yfinance as yf
import numpy as np
def market_impact(ticker_symbol, order_shares=None, order_dollars=None, period="3mo"):
ticker = yf.Ticker(ticker_symbol)
hist = ticker.history(period=period)
info = ticker.info
if hist.empty:
return None
current_price = info.get("currentPrice") or hist["Close"].iloc[-1]
avg_volume = hist["Volume"].mean()
daily_volatility = hist["Close"].pct_change().dropna().std()
# Determine order size in shares
if order_dollars and not order_shares:
order_shares = order_dollars / current_price
elif not order_shares:
# Default: estimate for various sizes
order_shares = avg_volume * 0.01 # 1% of ADV
participation_rate = order_shares / avg_volume if avg_volume > 0 else 0
pct_adv = (order_shares / avg_volume * 100) if avg_volume > 0 else 0
# Square-root impact model
impact_pct = daily_volatility * np.sqrt(participation_rate) * 100
impact_bps = impact_pct * 100
impact_dollars = impact_pct / 100 * current_price * order_shares
# Generate impact curve for multiple order sizes
sizes = [0.001, 0.005, 0.01, 0.02, 0.05, 0.10, 0.20, 0.50] # as fraction of ADV
curve = []
for s in sizes:
q = avg_volume * s
imp = daily_volatility * np.sqrt(s) * 100
curve.append({
"pct_adv": round(s * 100, 1),
"shares": int(q),
"dollars": round(q * current_price, 0),
"impact_bps": round(imp * 100, 1),
"impact_dollars_per_share": round(imp / 100 * current_price, 4),
})
return {
"ticker": ticker_symbol,
"current_price": round(current_price, 2),
"avg_daily_volume": int(avg_volume),
"daily_volatility_pct": round(daily_volatility * 100, 2),
"order_shares": int(order_shares),
"order_dollars": round(order_shares * current_price, 0),
"pct_of_adv": round(pct_adv, 2),
"estimated_impact_bps": round(impact_bps, 1),
"estimated_impact_pct": round(impact_pct, 4),
"estimated_impact_total_dollars": round(impact_dollars, 2),
"impact_curve": curve,
}E2: Present results
Show:
Sub-Skill F: Turnover Ratio
Goal: Measure how actively a stock trades relative to its shares outstanding and free float.
F1: Compute turnover metrics
import yfinance as yf
import pandas as pd
import numpy as np
def turnover_analysis(ticker_symbol, period="3mo"):
ticker = yf.Ticker(ticker_symbol)
hist = ticker.history(period=period)
info = ticker.info
if hist.empty:
return None
avg_volume = hist["Volume"].mean()
shares_outstanding = info.get("sharesOutstanding")
float_shares = info.get("floatShares")
result = {
"avg_daily_volume": int(avg_volume),
"shares_outstanding": shares_outstanding,
"float_shares": float_shares,
}
if shares_outstanding:
daily_turnover = avg_volume / shares_outstanding
result["daily_turnover_ratio"] = round(daily_turnover, 6)
result["annualized_turnover"] = round(daily_turnover * 252, 2)
result["days_to_trade_float"] = round(
(float_shares or shares_outstanding) / avg_volume, 1
) if avg_volume > 0 else None
if float_shares:
float_turnover = avg_volume / float_shares
result["float_turnover_daily"] = round(float_turnover, 6)
result["float_turnover_annualized"] = round(float_turnover * 252, 2)
# Turnover trend
vol = hist["Volume"]
base = float_shares or shares_outstanding
if base:
hist_copy = hist.copy()
hist_copy["turnover"] = hist_copy["Volume"] / base
recent_turnover = hist_copy["turnover"].tail(20).mean()
older_turnover = hist_copy["turnover"].head(20).mean()
if older_turnover > 0:
result["turnover_trend_pct"] = round(
(recent_turnover - older_turnover) / older_turnover * 100, 1
)
return resultF2: Present results
Show:
| Turnover (Annualized) | Interpretation |
|---|---|
| > 500% | Extremely active — likely speculative or momentum-driven |
| 100–500% | Actively traded |
| 30–100% | Moderate activity |
| < 30% | Thinly traded — likely institutional buy-and-hold or neglected |
Step 3: Respond to the User
After running the appropriate sub-skill:
Always include
Always caveat
Practical guidance (mention when relevant)
Important: Never recommend specific trades. Present liquidity data and let the user make their own decisions.
Reference Files
references/liquidity_reference.md — Detailed formulas, extended code templates, metric interpretation guides, and academic references for all liquidity measuresRead the reference file when you need exact formulas, edge case handling, or deeper background on liquidity metrics.