Germany
- Coach
- Julian Nagelsmann home · German
- Elo (model)
- 1,932 world 10th
- Squad value
- €1114M
- Power → Reality
- 9th 9th −0.01 pp · neutral draw
§ 01
The forecast
How far Germany goes — the survival probability at each stage of the bracket, from the tournament Monte-Carlo simulation. Each bar carries its ±1.96·MC-SE interval.
Fig. D1 Fixture-aware · 100k sims
Germany — stage progression
On the central forecast, Germany more likely than not reaches the Round of 16 (62%). Champion probability is 3.9% ± 0.06 pts.
§ 02
The group & the path
Group E advancement odds, the bracket half Germany sits in, and the earliest round they could meet each leading side.
| Group E | Confed | Advance (top 2) | Reach R32 | |
|---|---|---|---|---|
| 1 | 🇩🇪Germany | UEFA | 62.5% | 98.1% |
| 2 | 🇪🇨Ecuador | CONMEBOL | 50.7% | 93.3% |
| 3 | 🇨🇮Côte d'Ivoire | CAF | 31.8% | 80.2% |
| 4 | 🇨🇼Curaçao | CONCACAF | 0.4% | 5.2% |
Source · Oxford Football Forecasting model
Earliest possible meetings
No collision rows recorded for this team.
Collision = the earliest round the bracket wiring could pit Germany against that side. Full bracket & collision matrix →
§ 03
Match by match
Germany's three group fixtures, each with the predicted win / draw / loss split and the single most-likely scoreline. Probabilities are this team's own orientation; they sum to 100%.
How a match forecast is built
Each pairing is scored by the ensemble (Dixon-Coles bivariate-Poisson, the Bayesian hierarchical model and the global LightGBM-Poisson, log-pooled), producing an 11×11 scoreline grid that is marginalised into win/draw/loss, expected goals (λ), over/under 2.5 and both-teams-to-score. These are the same distributions the tournament simulator consumes, oriented here to Germany. Knockout fixtures are not shown — their occupants are still probabilistic, so there is no single pairing to forecast yet.
§ 04
Strength profile
Where Germany stands against the median of the 48-team field, metric by metric. The dot is Germany; the dashed line is the field median (1.0×).
Fig. D2 Relative to the 48-team median
Germany vs the field
Read each row as a multiple of the field median: dots to the right of the dashed line are above-field, to the left below. Raw values are labelled on the right so the comparison is transparent.
§ 05
History vs squad
The decoupling residual g — whether the squad’s market value sits above, or below, what the team’s record predicts.
Fig. D3 Bayesian projection residual g
Germany on the decoupling axis
g = +0.16 ± 0.07: the squad is valued above its record — the transfer market rates this side above what its results have earned.
What g means — and its limits
g is the residual from regressing a team’s current squad market value on its
history-based strength in the Bayesian hierarchical model. Positive g
means the squad is valued above what the team’s record predicts; negative means the
record outruns the squad’s price (the side achieves more than its market value implies).
Regressed on out-of-sample success the slope is positive — squad-rich sides go a touch
further — but not statistically significant at n = 3 tournaments, so treat
a single team’s g as a descriptive read, not a hard prediction.
The full decoupling essay →
§ 06
The squad
All 26 selected players — club, league (with relative strength), club-season minutes and goals, caps. Sort any column.
| # | Player | Pos | Club | League | Club min | Gls | Caps | NT gls |
|---|---|---|---|---|---|---|---|---|
| 1 | Manuel Neuer | GK | Bayern Munich | Bundesliga +1.84z | 3,930 | 0 | 124 | 0 |
| 2 | Antonio Rüdiger | DF | Real Madrid | La Liga +2.13z | 2,540 | 1 | 82 | 3 |
| 3 | Waldemar Anton | DF | Borussia Dortmund | Bundesliga +1.84z | 4,827 | 3 | 13 | 0 |
| 4 | Jonathan Tah | DF | Bayern Munich | Friendlies Clubs −0.05z | 27 | 1 | 47 | 1 |
| 5 | Aleksandar Pavlović | MF | Bayern Munich | Bundesliga +1.84z | 3,362 | 4 | 11 | 1 |
| 6 | Joshua Kimmich (captain) | DF | Bayern Munich | Bundesliga +1.84z | 4,448 | 3 | 110 | 10 |
| 7 | Kai Havertz | FW | Arsenal | Premier League +2.21z | 1,128 | 7 | 58 | 22 |
| 8 | Leon Goretzka | MF | Bayern Munich | Bundesliga +1.84z | 2,524 | 6 | 70 | 15 |
| 9 | Jamie Leweling | MF | VfB Stuttgart | Bundesliga +1.84z | 3,558 | 11 | 5 | 1 |
| 10 | Jamal Musiala | MF | Bayern Munich | Bundesliga +1.84z | 1,269 | 5 | 42 | 9 |
| 11 | Nick Woltemade | FW | Newcastle United | Premier League +2.21z | 3,057 | 11 | 11 | 4 |
| 12 | Oliver Baumann | GK | TSG Hoffenheim | Bundesliga +1.84z | 3,270 | 0 | 13 | 0 |
| 13 | Pascal Groß | MF | Brighton & Hove Albion | — | — no club data | — | 18 | 1 |
| 14 | Maximilian Beier | FW | Borussia Dortmund | Bundesliga +1.84z | 2,916 | 12 | 9 | 0 |
| 15 | Nico Schlotterbeck | DF | Borussia Dortmund | Bundesliga +1.84z | 3,500 | 5 | 27 | 0 |
| 16 | Angelo Stiller | MF | VfB Stuttgart | Bundesliga +1.84z | 4,322 | 3 | 8 | 0 |
| 17 | Florian Wirtz | MF | Liverpool | Premier League +2.21z | 3,513 | 7 | 41 | 11 |
| 18 | Nathaniel Brown | DF | Eintracht Frankfurt | Bundesliga +1.84z | 3,460 | 4 | 5 | 0 |
| 19 | Leroy Sané | MF | Galatasaray | Süper Lig +0.49z | 3,083 | 7 | 76 | 17 |
| 20 | Nadiem Amiri | MF | Mainz 05 | Bundesliga +1.84z | 2,838 | 17 | 11 | 1 |
| 21 | Alexander Nübel | GK | VfB Stuttgart | Bundesliga +1.84z | 4,551 | 0 | 3 | 0 |
| 22 | David Raum | DF | RB Leipzig | Bundesliga +1.84z | 2,923 | 3 | 37 | 1 |
| 23 | Felix Nmecha | MF | Borussia Dortmund | Bundesliga +1.84z | 3,667 | 7 | 8 | 1 |
| 24 | Malick Thiaw | DF | Newcastle United | Premier League +2.21z | 4,684 | 5 | 5 | 0 |
| 25 | Assan Ouédraogo | MF | RB Leipzig | Bundesliga +1.84z | 986 | 4 | 1 | 1 |
| 26 | Deniz Undav | FW | VfB Stuttgart | Bundesliga +1.84z | 3,643 | 25 | 9 | 6 |
Source · Official squad announcements · API-Football (global club coverage). 1 of 26 players have no club season matched in API-Football — shown as “— no club data”, not imputed. Form coverage for this squad: 96%.
§ 07
Tournament context
The host-nation environment this team meets — diaspora support, climate and altitude exposure at their venues, language familiarity.
Diaspora in the hosts
698,534
8.0 per 1,000 of home population
Host-language familiarity
Foreign
primary language German
Climate adaptation gap
+4.2°C
home-vs-venue heat differential
Venue extremes
47°C
peak heat index · altitude up to 81 m
Travel
7h
max time-zone shift · nearest venue 6,113 km
Source · UN DESA international migrant stock · US Census Bureau · Open-Meteo & venue records
§ 08
Elo trajectory
Germany's long-run strength against the qualified-field median, 1950–2026.
Fig. D4 eloratings.net method · year-end values
Germany — Elo since 1950
Germany ends the series at 2004 Elo, the world’s 10th-ranked side — above the qualified-field median.
Which Elo is this?
This line is the public eloratings.net series (year-end ratings), which terminates exactly at the current rating and world rank shown on the marker. It is a different number from the Elo shown in the header band (a panel-normalised rating used inside the forecast); the two are ~0.99 correlated but on different scales. We keep them distinct rather than blend them.
§ 09
Data coverage
Validated on n=3 held-out tournaments; coverage below 1.0 means part of this squad's club-form/fitness is imputed (the global de-biasing layer). For Germany, 1 of 26 players are shown as “— no club data”. Full validation, calibration & conformal coverage →