Wages
- Data via Capology.
Player | Nation | Pos | Age | Weekly Wages | Annual Wages | Notes |
---|---|---|---|---|---|---|
Pablo Armero | co COL | MF | 28 | € 40,192 (£ 34,912, $44,050) | € 2,090,000 (£ 1,815,425, $2,290,594) | Unverified estimation |
Antonio Di Natale | it ITA | FW | 37 | € 21,346 (£ 18,542, $23,395) | € 1,110,000 (£ 964,173, $1,216,536) | Unverified estimation |
Danilo Larangeira | br BRA | DF | 31 | € 20,000 (£ 17,373, $21,920) | € 1,040,000 (£ 903,370, $1,139,817) | Unverified estimation |
Guilherme | br BRA | MF | 24 | € 18,846 (£ 16,370, $20,655) | € 980,000 (£ 851,252, $1,074,059) | Unverified estimation |
Cyril Théréau | fr FRA | FW | 32 | € 18,846 (£ 16,370, $20,655) | € 980,000 (£ 851,252, $1,074,059) | Unverified estimation |
Iván Piris | py PAR | DF | 26 | € 17,500 (£ 15,201, $19,180) | € 910,000 (£ 790,448, $997,340) | Unverified estimation |
Orestis Karnezis | gr GRE | GK | 30 | € 15,962 (£ 13,865, $17,494) | € 830,000 (£ 720,958, $909,662) | Unverified estimation |
Giampiero Pinzi | it ITA | MF | 34 | € 15,962 (£ 13,865, $17,494) | € 830,000 (£ 720,958, $909,662) | Unverified estimation |
Emmanuel Agyemang-Badu | gh GHA | MF | 24 | € 15,962 (£ 13,865, $17,494) | € 830,000 (£ 720,958, $909,662) | Unverified estimation |
Silvan Widmer | ch SUI | MF | 22 | € 15,962 (£ 13,865, $17,494) | € 830,000 (£ 720,958, $909,662) | Unverified estimation |
Duván Zapata | co COL | FW | 24 | € 15,962 (£ 13,865, $17,494) | € 830,000 (£ 720,958, $909,662) | Unverified estimation |
Thomas Heurtaux | fr FRA | DF | 27 | € 15,962 (£ 13,865, $17,494) | € 830,000 (£ 720,958, $909,662) | Unverified estimation |
Bruno Fernandes | pt POR | MF,FW | 20 | € 14,615 (£ 12,695, $16,018) | € 760,000 (£ 660,155, $832,943) | Unverified estimation |
Ali Adnan Kadhim | iq IRQ | MF,DF | 21 | € 14,615 (£ 12,695, $16,018) | € 760,000 (£ 660,155, $832,943) | Unverified estimation |
Maurizio Domizzi | it ITA | DF | 35 | € 13,462 (£ 11,693, $14,754) | € 700,000 (£ 608,037, $767,185) | Unverified estimation |
Panagiotis Kone | gr GRE | MF | 28 | € 13,462 (£ 11,693, $14,754) | € 700,000 (£ 608,037, $767,185) | Unverified estimation |
Francesco Lodi | it ITA | MF | 31 | € 11,346 (£ 9,856, $12,435) | € 590,000 (£ 512,489, $646,627) | Unverified estimation |
Giovanni Pasquale | it ITA | MF | 33 | € 10,769 (£ 9,354, $11,803) | € 560,000 (£ 486,430, $613,748) | Unverified estimation |
Ryder Matos | br BRA | FW | 22 | € 8,269 (£ 7,183, $9,063) | € 430,000 (£ 373,509, $471,271) | Unverified estimation |
Alexander Merkel | kz KAZ | MF | 23 | € 5,385 (£ 4,677, $5,901) | € 280,000 (£ 243,215, $306,874) | Unverified estimation |
Rafael Romo | ve VEN | GK | 25 | € 5,385 (£ 4,677, $5,901) | € 280,000 (£ 243,215, $306,874) | Unverified estimation |
Stipe Perica | hr CRO | FW | 20 | € 3,846 (£ 3,341, $4,215) | € 200,000 (£ 173,725, $219,196) | Unverified estimation |
Andrija Balić | hr CRO | MF | 17 | € 3,846 (£ 3,341, $4,215) | € 200,000 (£ 173,725, $219,196) | Unverified estimation |
Felipe dal Belo | br BRA | DF | 31 | € 3,846 (£ 3,341, $4,215) | € 200,000 (£ 173,725, $219,196) | Unverified estimation |
Alex Meret | it ITA | GK | 18 | € 3,846 (£ 3,341, $4,215) | € 200,000 (£ 173,725, $219,196) | Unverified estimation |
Mauro Coppolaro | it ITA | DF | 18 | € 712 (£ 618, $780) | € 37,000 (£ 32,139, $40,551) | Unverified estimation |
Samuele Perisan | it ITA | GK | 17 | € 712 (£ 618, $780) | € 37,000 (£ 32,139, $40,551) | Unverified estimation |
Simone Pontisso | it ITA | MF | 18 | € 712 (£ 618, $780) | € 37,000 (£ 32,139, $40,551) | Unverified estimation |
Rodrigo Aguirre | uy URU | FW | 20 | |||
Zdravko Kuzmanović | rs SRB | MF | 27 | |||
Agostino Camigliano | it ITA | DF | 21 | |||
Neuton | br BRA | DF | 25 | |||
Molla Wagué | ml MLI | DF | 24 | |||
Marquinho | br BRA | MF | 29 | |||
Manuel Iturra | cl CHI | MF | 31 | |||
Lucas Evangelista | br BRA | MF | 20 | |||
Gaspar Iñíguez | ar ARG | MF | 21 | |||
Emil Hallfreðsson | is ISL | MF | 31 | |||
Emanuel Insúa | ar ARG | DF | 24 | |||
Edenílson | br BRA | MF | 25 | |||
Davide Faraoni | it ITA | 23 | ||||
Daniele Mori | it ITA | 25 | ||||
Alexandre Geijo | es ESP | 33 | ||||
43 Players |
About FBref.com
FBref.com launched (June 13, 2018) with domestic league coverage for England, France, Germany, Italy, Spain, and United States. Since then we have been steadily expanding our coverage to include domestic leagues from over 40 countries as well as domestic cup, super cup and youth leagues from top European countries. We have also added coverage for major international cups such as the UEFA Champions League and Copa Libertadores.
FBref is the most complete sources for women's football data on the internet. This includes the entire history of the FIFA Women's World Cup as well as recent domestic league seasons from nine countries, including advanced stats like xG for most of those nine.
In collaboration with Opta, we are including advanced analytical data such as xG, xA, progressive passing, duels and more for over twenty competitions. For more information on the expected goals model and which competitions have advanced data, see our xG explainer.
Note that player records are likely not complete for their careers. Players may come from or move to leagues we don't currently cover. This issue will go down over time, as we add new leagues and seasons. We will never in the future have less data than we do today.
You can sign up to receive an e-mail when new countries and features launch.
For more information, see our Launch Blog Post, the overall leagues/competition page with details on leagues and seasons we include, or our About Page. Let us know if you find an issue or have a suggestion.
FBref is one of seven Sports-Reference.com sites.
We're Social...for Statheads
Every Sports Reference Social Media Account
Site Last Updated: Thursday, December 19, 1:57PM
Question, Comment, Feedback, or Correction?
Subscribe to our Free Email Newsletter
Subscribe to Stathead FBref: Get your first month FREE
Your All-Access Ticket to the FBref Database
Do you have a sports website? Or write about sports? We have tools and resources that can help you use sports data. Find out more.