POLYMARKET · PREDICTION MARKET · WEATHER & CLIMATE

Will the highest temperature in London be 17°C or below on June 14?

YES · live
0.1¢
NO · live
100.0¢

▸ Advanced metrics · M2M bundle

polymarket · highest-temperature-in-london-on-june-14-2026-17corbelow · fresh · feed 0s old
24h sparkline · 60 pts
realized vol (ann.)
0.00%
max drawdown
0.00%
sharpe
ulcer index
0.00%
RMS drawdown
pain index
0.00%
mean drawdown
mod. VaR 95%
0.00%
Cornish-Fisher
martin ratio
ret / ulcer
CDaR 95%
0.00%
cond. drawdown
gain/pain
Σgain / Σ|loss|
sterling
ret / CDaR
omega (θ=0)
1.00
upside/downside
roll spread
0.0 bps
implied (price-only)
bars used
367
store
spread
24h Δ
flow lean
carry
flat
signalNEUTRALconfidence 20%
Same bundle via M2M API: /api/m2m/pm-highest-temperature-in-london-on-june-14-2026-17corbelow/bundle · venue execution: polymarket
LIVEPOLL0SRCFRESH4ms--:--:-- UTC8NEXT8.0sUP0s--:--HIST0/30
▶ STREAMING·HYPERLIQUID·POLYMARKET·0 POLLS·SRC FRESH·UPTIME 0s·NEXT POLL 8.0s·CC0 OPEN DATA·HYPO.MARKETS·▶ STREAMING·HYPERLIQUID·POLYMARKET·0 POLLS·SRC FRESH·UPTIME 0s·NEXT POLL 8.0s·CC0 OPEN DATA·HYPO.MARKETS·
YES · live
0.1¢
NO · live
100.0¢
YES price · live 24h
n=25 · μ=0.0007 · σ=0.0006 · range [0.0005, 0.0025] · R²=0.051 FLATσ EXTREME 83.91%LAST 0.00050.00250.00200.00150.00100.0005μ = 0.0007max 0.0025min 0.0005dataMA(5)OLS R²=0.05μ lineμ ± σ bandmaxminlive endpoint
25 ticks · last 0.05¢
YES / NO split · live
YES 0.1%NO 100.0%NO100.0%99.95¢ · odds 1/1.00
Σ 100.00% · fair
Σ-sides total = 100.00% (tight rounding)
H(p) entropy = 0.006 / 1.00 bits (1%) · informative — one side favoured
YES
0.1%0.1¢2000.00× +0.00pp
NO
100.0%100.0¢1.00× +0.00pp
Σ 100.00% · arb gap 0.00pp
Per-tick activity · |Δp| in basis points · live
n=24 · Σ=40 · μ=1.7 · σ=5.6 · CV=3.39BURSTY · concentratedcumulative energy ↗ · 50% by h=605101520μ = 22050%h1h5h9h13h17h21#1 peak#2-3> μactivequietμ linecum energy
Σ 40bp moved · peak 20bp · n=24 ticks
Live numerics · pulse on poll
LIVE NUMERICS8 metrics·POLL 0
snapshot age
4ms
YES mid
0.05¢ (0.05%)
NO mid
99.95¢ (99.95%)
ΣΣ sides
100.00%
arb gap
0.000pp
$24h vol $
$24.8k
liquidity $
$7.6k
history points
25 ticks (live)

§1 · 24h price history (YES + NO tokens)

YES price · CLOB mid
n=25 · μ=0.0007 · σ=0.0006 · range [0.0005, 0.0025] · R²=0.051 FLATσ EXTREME 83.91%LAST 0.00050.00250.00200.00150.00100.0005μ = 0.0007max 0.0025min 0.0005dataMA(5)OLS R²=0.05μ lineμ ± σ bandmaxmin
25 YES observations from clob.polymarket.com · last 0.05¢
NO price · CLOB mid
n=25 · μ=0.9993 · σ=0.0006 · range [0.9975, 0.9995] · R²=0.051 FLATσ LOW 0.06%LAST 0.99950.99950.99900.99850.99800.9975μ = 0.9993max 0.9995min 0.9975dataMA(5)OLS R²=0.05μ lineμ ± σ bandmaxmin
25 NO observations from clob.polymarket.com · last 99.95¢

§2 · Distribution of Δp

Histogram of hourly increments
n=24 · 10 bins · μ=0.0002 · σ=0.0005 · skew=-1.04 (left-skewed) · kurt=9.46 (leptokurtic (fat tails))221711601-0.18ppbin -0.18pp · n=1 · 4.5% peakbin -0.18pp · n=1 · 4.5% peak-0.14pp-0.10pp-0.06pp-0.02pp220.02ppbin 0.02pp · n=22 · 100.0% peakbin 0.02pp · n=22 · 100.0% peak0.06pp0.10pp0.14pp10.18ppbin 0.18pp · n=1 · 4.5% peakbin 0.18pp · n=1 · 4.5% peakμΔ < 0 · loss barsΔ ≈ 0 · flatΔ > 0 · gain barsN(μ,σ²) referenceμ line · ±σ band shaded
n=24
Q-Q plot · standardised Δp vs N(0,1)
n=24 · skew=0.00 · kurt=9.00 · near 6 / mid 10 / far 8 · OLS slope=0.62 intercept=-0.00LEPTOKURTIC — FAT TAILSTHIN UPPER TAILTHIN LOWER TAIL-3σ-3σ-2σ-2σ-1σ-1σ+0σ+0σ+1σ+1σ+2σ+2σ+3σ+3σΔ=+1.53σΔ=-1.53σsample ↓marginal: sample bars + theoretical N(0,1) curve →theoretical Φ⁻¹(p) →↑ sample z-quantile|Δ| < 0.3σ · on the line|Δ| < 1σ · moderate|Δ| ≥ 1σ · outliery = x refOLS fit
reference line = identity (perfect normality). Heavy upper-right tail = fat positive tail.

§3 · Sample moments

Descriptive statistics · 5-number summary · shape diagnostics
SAMPLE MOMENTS · N=25LEPTOKURTIC · FAT TAILS (G₂=6.76)
μ MEAN0.07¢95% CI: [0.04¢, 0.09¢]
σ STD DEV0.06ppσ² = 30.667×10⁻⁴ · CV = 83.91%
med MEDIAN0.05¢Q₁ 0.05¢ · Q₃ 0.05¢
FIVE-NUMBER SUMMARY · BOX PLOT
min 0.05¢Q₁ 0.05¢med 0.05¢Q₃ 0.05¢max 0.25¢μ
SKEWNESS · G₁2.912right-skewed
−3−10+1+3
EXCESS KURTOSIS · G₂6.757leptokurtic · fat tails
−30+2+4+6
μ ↔ medianμ > med · right-tailed|μ−med| / σ = 0.29
σ × 1.349 ↔ IQRdiverges from normalratio = 0.00
range ↔ σconcentrated (range < 4σ)range / σ = 3.61
μ = mean YES probability · σ = standard deviation · 95% CI = μ ± 1.96·SE. Skew/kurt diagnose departure from normality.

§5 · Time-series structure

Regime & autocorrelation diagnostics
TIME-SERIES STRUCTUREREGIME: MEAN-REVERTING · ADF rejects unit root
ρ(1) AUTOCORR+0.000within white-noise band
ρ(2) AUTOCORR-0.500lag-2 dependence detected
H · HURST EXPONENT0.792strongly persistent
OLS TREND · t-STAT-1.107fails 5% test
HURST EXPONENT [0, 1]
H = 0.792STRONGLY PERSISTENT
0
anti-persistent
0.45
mean-reverting
0.5
random walk
0.55
persistent
1
strongly trending
AUTOCORRELATION FUNCTION · ρ(k) for k=1..5
k=1+0.000k=2-0.500k=3+0.000k=4+0.000k=5+0.0000+1−1+0.410.41+ momentum (ρ > +0.41)− reversal (ρ < −0.41)noise (within band)±2/√n threshold
OLS TREND · t-STAT · [-5, +5]
−5 reject−1.960 retain H₀+1.96+5 reject
REGIME CLASSIFICATIONMEAN-REVERTING · ADF rejects unit rootfrom Hurst + ρ(1) joint diagnosis
PREDICTABILITY · score 0.58high · clear structure|ρ(1)| + 2·|H − 0.5| heuristic
TREND SIGNIFICANCENOT SIGNIFICANT (|t|=1.11)α=0.05 critical |t|=1.96 · α=0.01 |t|=2.58
ρ(k) = lag-k sample autocorrelation · H = R/S Hurst exponent · t = OLS-trend t-statistic. Significance bands at ±2/√n approximate the 95% white-noise envelope. α=0.05 critical |t|=1.96; α=0.01 |t|=2.58.

§6 · Microstructure

Market quality · two-sided pricing · activity
MICROSTRUCTURE · MARKET QUALITYPERFECT · ARB-FREE Σ=100.00%
MARKET ID2513844
SLUGhighest-temperature-in-london-on-june-14-2026-17corbelow
CATEGORYWeather & Climate
TWO-SIDED PRICING
PRIMARY · YES0.05¢implied prob 0.05% · decimal odds 2000.00×
COUNTER · NO99.95¢implied prob 99.95% · decimal odds 1.00×
0.05¢
99.95¢
Σ-SIDES ARBITRAGE TEST
0%50%100% · target110%
Σ = 100.00% · |1 − Σ| = 0.000pp
24H ACTIVITY · LIQUIDITY
24H VOLUME24.80k USD 24h
LIQUIDITY7.59k USD
MARKET QUALITYPERFECT · ARB-FREE Σ=100.00%|1−Σ| ≤ 0.5pp ⇒ fair · > 2pp ⇒ inefficient
PRICING SKEWFAVOURS NO (100¢)|primary − counter| = 0.999 · entropy 0.006 bits
LIQUIDITY DEPTHACTIVE100k+ deep · 10k+ active · 1k+ modest · 100+ thin
Σ-sides = YES + NO implied probabilities. Perfect arb-free Σ = 100%. |1−Σ| > 2pp suggests synthetic outright arbitrage.

§7 · Position sizing & edge analysis

Probability split · YES vs NO · Kelly · entropy · arbitrage
FAIR MARKET · no edge
YES 0.1%NO 100.0%YES0.1%H = 0.006 / 1.00 bits
Probability scale (YES)
0%25%50%
fair
75%100%
Implied decimal odds
YES2000.00×(0¢)NO1.00×(100¢)
Kelly bet-size (% of bankroll) K* = 0.00%
K* full
0.00%
½K half
0.00%
¼K quarter
0.00%
Entropy H(p̂) = 0.006 bits (1% of max) · informative — one side strongly favoured
0 (certain)0.250.50.751.00 (max)
Σ-sides = 100.00% · |1 − Σ| = 0.00pp · tight cross-venue rounding
K* full = (b·p − q)/b · ½K and ¼K are conservative fractions of the full-Kelly bet. Entropy in bits — log₂(2)=1 is maximum uncertainty for a binary market.

§9 · Hourly return heatmap

24-hour signed Δp grid · green = up · red = down
HOURLY RETURN HEATMAP · n=24 bars · best 0.20% · worst -0.20% · typical |Δ| 0.02%MIXED · 1 UP / 1 DNBEST+0.20%6hWORST-0.20%8hTYPICAL |Δ|0.02%mean absoluteCUMULATIVE+0.00%Σ signed ΔSTREAK▬ 0flat-runASIA · 00-08 UTCμ +0.03% · Σ +0.20%EUROPE · 08-16 UTCμ -0.03% · Σ -0.20%US · 16-24 UTCμ +0.00% · Σ +0.00%CUMULATIVE Δ PATH · final +0.00%+0.20%0.00%0.00% · 1h0.00% · 1h·1h0.00% · 2h0.00% · 2h·2h0.00% · 3h0.00% · 3h·3h0.00% · 4h0.00% · 4h·4h0.00% · 5h0.00% · 5h·5h0.20% · 6h0.20% · 6h0.20%6h★ BEST0.00% · 7h0.00% · 7h·7h-0.20% · 8h-0.20% · 8h-0.20%8h▼ WORST0.00% · 9h0.00% · 9h·9h0.00% · 10h0.00% · 10h·10h0.00% · 11h0.00% · 11h·11h0.00% · 12h0.00% · 12h·12h0.00% · 13h0.00% · 13h·13h0.00% · 14h0.00% · 14h·14h0.00% · 15h0.00% · 15h·15h0.00% · 16h0.00% · 16h·16h0.00% · 17h0.00% · 17h·17h0.00% · 18h0.00% · 18h·18h0.00% · 19h0.00% · 19h·19h0.00% · 20h0.00% · 20h·20h0.00% · 21h0.00% · 21h·21h0.00% · 22h0.00% · 22h·22h0.00% · 23h0.00% · 23h·23h0.00% · 24h0.00% · 24h·24hTIME PATTERNAsia-led (+0.20%)RUNSup max 1 · down max 1BREADTH4% up · 4% down · 92% flat
1 up bars · 1 down · best 0.20% · worst -0.20% · typical |Δ| 0.017%

§10 · Equity curve & underwater drawdown

Cumulative compounded return + running peak-to-trough
EQUITY & DRAWDOWN ANALYSIS · n=25 barsFLAT · NO MATERIAL MOVEMENTFINAL-0.00%MAX DD-0.20%RECOVERYONGOING · 17 barsMAX RUN-UP+0.20%UNDERWATER17/25 (68%)STREAK▬ 0EQUITY CURVE · end 1.0000 · peak 1.0020 · range [1.0000, 1.0020]1.00201.0000break-even = 1★ PEAK 1.0020UNDERWATER DRAWDOWN · max -0.20% · shallow0%-0.20%▼ TROUGH -0.20%TOP DRAWDOWN PERIODS · 1 total#1 -0.20%bar 9-25 · 17 bars · ONGOINGDD SEVERITYshallow (max -0.20%)RECOVERYongoing · 17 barsTIME UNDER WATER68% of session · 17/25 bars
final equity 1.0000 (-0.00%) · max DD -0.20% · time-under-water 17/25 bars

§11 · Rolling-window statistics (w = 6 bars)

Rolling annualised Sharpe ratio · green positive · red negative
n=19 · +2 / −2 (11% positive) · μ=0.00 · σ=18.01UNPROFITABLE STRATEGYLAST 0.00 (+0.00σ vs μ)38.2119.100.00-19.10-38.21μ = 0.0038.2138.2138.2138.210.000.000.000.000.000.000.000.00-38.21-38.21-38.21-38.210.000.000.000.000.000.000.000.000.000.000.000.000.000.000.000.000.000.000.000.000.000.00v > 0 · positivev < 0 · negativeμ mean lineμ ± σ bandlatest bar (outlined)
latest 0.000 · range [-38.21, 38.21] · μ 0.000 · positive Sharpe = excess-return-per-risk earned by buying-and-holding through this window
Rolling annualised volatility (%)
n=19 · μ=4.1012 · σ=5.1352 · range [0.0000, 11.8389] · R²=0.679 FALLING -100.00%σ EXTREME 125.21%LAST 0.000011.83898.87925.91952.95970.0000μ = 4.1012max 11.8389min 0.0000dataMA(3)OLS R²=0.68μ lineμ ± σ bandmaxmin
latest 0.00% · range [0.00%, 11.84%] · μ 4.10% · σ̂ scaled to annualised (×√8760)
Rolling lag-1 autocorrelation ρ(1)
n=19 · +0 / −4 (0% positive) · μ=-0.028 · σ=0.073MEAN-REVERSIONLAST 0.000 (+0.38σ vs μ)0.2330.1170.000-0.117-0.233μ = -0.028-0.033-0.033-0.233-0.2330.0000.0000.0000.0000.0000.0000.0000.000-0.233-0.233-0.033-0.0330.0000.0000.0000.0000.0000.0000.0000.0000.0000.0000.0000.0000.0000.0000.0000.0000.0000.0000.0000.0000.0000.000v > 0 · positivev < 0 · negativeμ mean lineμ ± σ bandlatest bar (outlined)
latest 0.000 · |ρ| > 0.3 ⇒ regime with persistence (ρ > 0) or reversal (ρ < 0) · |ρ| ≤ 0.1 = consistent with random walk

§12 · Hypothesis tests (α = 0.05)

Formal inference at 5% significance
2 of 5 REJECT · mixed evidence2 reject·3 pass·1 n/a·α = 0.05
𝒩

Jarque-Bera

REJECT H₀***

H₀: Δp ~ Normal(μ, σ²)

STATISTIC
132.2500
p-VALUE (log scale)
< 0.0001
α
10⁻⁴10⁻³10⁻²10⁻¹1
p < α · rejection zonenon-normal · fat tails or skew present
ρ

Ljung-Box(h=5)

FAIL TO REJECTns

H₀: No serial autocorrelation up to lag 5

STATISTIC
7.0909
p-VALUE (log scale)
0.2128
α
10⁻⁴10⁻³10⁻²10⁻¹1
p ≥ α · null retainedconsistent with white noise
Ψ

Dickey-Fuller (τ_μ)

REJECT H₀*

H₀: p has a unit root (non-stationary)

STATISTIC
-2.8723
p-VALUE (log scale)
0.0488
α
10⁻⁴10⁻³10⁻²10⁻¹1
p < α · rejection zonestationary · mean-reverting (crit ≈ -2.86)
±

Wald-Wolfowitz runs

N/An/a

H₀: Sign sequence of Δ is random

STATISTIC
p-VALUE (log scale)
no decision possibleinsufficient sign variety (1+/1-)
χ

KPSS (μ stationarity)

FAIL TO REJECTns

H₀: p IS level-stationary

STATISTIC
0.1721
p-VALUE (log scale)
0.4056
α
10⁻⁴10⁻³10⁻²10⁻¹1
p ≥ α · null retainedstationary not rejected (crit 0.463)
χ

Variance ratio q=3

FAIL TO REJECTns

H₀: Δp is a random walk · VR = 1

STATISTIC
-0.8868
p-VALUE (log scale)
0.3752
α
10⁻⁴10⁻³10⁻²10⁻¹1
p ≥ α · null retainedVR 0.730 ≈ 1 (RW behaviour)
Each row states an explicit null H₀, the test statistic, an approximated p-value, and the decision. REJECT means evidence against H₀. KPSS complements ADF (rejecting both ⇒ ambiguous; rejecting one ⇒ clean verdict).

§13 · Spectral analysis (DFT periodogram)

Power spectrum of Δp · ‖X̂(k)‖²/n
n=12 bins · noise floor μ=3.33e-7 · top T=4.00h (16.7%) · top-3 cover 47.8%WHITE NOISE · no dominant cyclecumulative energy ↗ (0 bins above 2× noise)6.7e-75.0e-73.3e-71.7e-70.0e+0μ noise floor2× noise (significance)period 24.0 · power 4.47e-8 · 1.1% energyperiod 24.0 · power 4.47e-8 · 1.1% energyperiod 12.0 · power 1.67e-7 · 4.2% energyperiod 12.0 · power 1.67e-7 · 4.2% energyperiod 8.0 · power 3.33e-7 · 8.3% energyperiod 8.0 · power 3.33e-7 · 8.3% energyperiod 6.0 · power 5.00e-7 · 12.5% energyperiod 6.0 · power 5.00e-7 · 12.5% energyperiod 4.8 · power 6.22e-7 · 15.6% energyperiod 4.8 · power 6.22e-7 · 15.6% energyperiod 4.0 · power 6.67e-7 · 16.7% energyperiod 4.0 · power 6.67e-7 · 16.7% energyperiod 3.4 · power 6.22e-7 · 15.6% energyperiod 3.4 · power 6.22e-7 · 15.6% energyperiod 3.0 · power 5.00e-7 · 12.5% energyperiod 3.0 · power 5.00e-7 · 12.5% energyperiod 2.7 · power 3.33e-7 · 8.3% energyperiod 2.7 · power 3.33e-7 · 8.3% energyperiod 2.4 · power 1.67e-7 · 4.2% energyperiod 2.4 · power 1.67e-7 · 4.2% energyperiod 2.2 · power 4.47e-8 · 1.1% energyperiod 2.2 · power 4.47e-8 · 1.1% energyperiod 2.0 · power 1.00e-38 · 0.0% energyperiod 2.0 · power 1.00e-38 · 0.0% energy50% by T=4.0h#1 dominantT=4.00h#2T=3.43h#3T=4.80hT=2hT=3hT=4hT=6hT=8hT=12hT=16hT=24h← shorter cycle (high freq · Nyquist=½) · period T (bars per cycle) · longer cycle (low freq · 1/n) →#1 dominant#2 peak#3 peak> 2× noisenoiseμ floor2μ sig.cum energy
dominant period ≈ 4.00h (freq 0.250) · concentrates 16.7% of total energy · Σ|X̂|²/n = 4.000e-6

▸ Depth section using sovereign-store price series (367 bars · effective 1753103 bars/year) — annualisation reflects native polling cadence, not upstream timeframes.

§14 · Honest position analytics

A binary-market analytics module framed in horizon time (days to resolution, not annualised). Estimators that need a model probability q as a first-class input (Kelly, KL divergence, Bayesian posterior, Mark-to-Market MC) only render when q is provided externally. Sweep an exploratory q at the interactive simulator →

§15 · Horizon returns

Returns · per bar / per day / per horizon
Horizon 0.3 d · σ/bar 0.000pp · expected |Δp| over horizon 0.00ppterminal variance p(1−p) = 0.0005 · n = 367n = 367
μ per bar
+0.000pp
average Δp · drift
σ per bar
0.000pp
one-bar volatility · logit-free
Per-day movedaily
0.00pp
σ × √24
Per-horizon move0d
0.00pp
σ × √6
Terminal variancebinary
0.0005
p(1−p) at resolution
Current pricep
0.1¢
latest snapshot
Note: annualised Sharpe/Sortino are omitted — they are not meaningful for a bounded fixed-horizon binary contract that snaps to {0, 1} at resolution.
Annualised metrics are intentionally omitted — they don't apply to bounded probability series that resolve at a fixed date.

§16 · Tail risk

VaR · ES · max drawdown
VaR₉₅ 0.00pp · ES₉₅ 0.00pp · method parametric · drift-correcteddrift +0.000pp/bar · quantised: yes · median step 0.00pp · unique ratio 0.00n = 367
VaR 95%
0.00pp
1.645·σ (parametric) of Δp
ES 95%
0.00pp
mean of the tail
Max drawdown
0.0pp
peak 0.1¢ → trough 0.1¢
Median step
0.00pp
price bucket granularity
Price series is bucketed (cent grid). Empirical quantiles collapse to grid points — parametric N(0, σ²) used instead.
Empirical quantiles unless the price series is bucketed (PM cent grid), in which case parametric N(0, σ²) is used to avoid grid collapse.

§17 · Odds conversion

Odds conversion · every dialect a bettor thinks in
Implied probabilityP
0.1%
= price
Decimal oddsEU
2000.000
total return per $1
AmericanUS
+199900
$100 wins $199900
FractionalUK
1999.00 / 1
profit per $1 risked
Profit per $100stake
+$199900.00
clean dollar framing
-1000-5000+500+1000020406080100you · 0.1%implied probability (%)American odds
underdog (+)favorite (-)your price
Price → implied probability → decimal odds → American moneyline → fractional. Five views of the same number, plus the moneyline curve.

§18 · Binary entropy

Binary entropy · uncertainty as bits of information
Market entropyH(p)
0.006 bit
max 1.0 at p = 0.5
Your entropyH(q)
0.006 bit
Δ +0.000 bit vs market
Surprise · YES−log₂ p
10.97 bit
self-information
Surprise · NO−log₂(1−p)
0.00 bit
self-information
0.000.260.530.791.050.00.20.40.60.81.0marketmodelprobabilityH (bits)
Market entropy only — model entropy requires an external q.

§19 · Model-dependent surfaces

§ Edge / Kelly / KL · no model probability provided

External model required

The position-economics, Kelly, KL-divergence, Bayesian and Monte-Carlo surfaces require a model probability q as input — a number independent of the market price p.

The previous build defaulted q to a tape-momentum heuristic derived from p; that produces apparent edge that is structurally guaranteed to be small and is not a useful skill signal. The auto-derived path has been removed.

To explore these surfaces with a hypothetical q, open the interactive simulator and drag the MODEL P(YES) slider. To wire a real model, POST to the NOSTRADAMUS hook (TBD) or pass ?q=… on the simulator URL.

§∞ · Provenance & attestation

Upstream (snapshot)
gamma-api.polymarket.com
Upstream (history)
clob.polymarket.com
YES token ID
94457968542941039106535470783965241229610454917077026663115936587703221289684
NO token ID
72896530105859596444074196323462750741088558955845749098041129117869245732720
Snapshot fetched
2026-06-14 21:38:07 UTC
Snapshot age
4ms
History points
25 CLOB mids
Page rendered
2026-06-14 21:38:07 UTC
Storage policy
no persistence — fetched on every request
SHA-256 attestation
af4fb1905bff44689ee36291c565c45090e1ca0b2f2c3897abdf028ef4d8de68 · deterministic hash of source snapshot
Open data licence
CC0 / public domain

§∞-2 · Related markets · explore more

Also see: /arb opportunities · RSS feed · more in Weather & Climate

Market depth

live order book · Polymarket YES
Depth within 1bp
$0
bid $0 · ask $0
Depth within 5bp
$0
bid $0 · ask $0
Depth within 10bp
$0
bid $0 · ask $0
Depth within 50bp
$0
bid $0 · ask $0
Mid price
(best bid + best ask) / 2
Spread
(bestAsk − bestBid) / mid
Imbalance (whole book)
-1.000
ask-heavy
Imbalance (top-5)
-1.000
ask-heavy top-of-book

Slippage scenarios

live book walk · Polymarket YES

Simulating a market order at three notionals against the live book. Slippage = avg execution price vs. mid, in basis points. Worst fill = price of the deepest level touched. Live JSON: /api/asset/pm-highest-temperature-in-london-on-june-14-2026-17corbelow/slippage?size=10000&side=buy

SideNotionalAvg fillSlippageWorst fillLevelsStatus
BUY$1.00KERR
BUY$10.00KERR
BUY$100.00KERR
SELL$1.00KERR
SELL$10.00KERR
SELL$100.00KERR

Risk metrics

sovereign store · 367 barsperiods/year ≈ 1.75M
Realized vol (annualised)
0.00%
σ per bar = 0.000000
Mean return (annualised)
0.00%
μ per bar = 0.000000
Sharpe (rf=0)
0.00
annualised; risk-free assumed zero
Max drawdown
0.00%
peak 0.00 → trough 0.00 over 0 bars

/api/asset/pm-highest-temperature-in-london-on-june-14-2026-17corbelow/risk · same metrics, JSON