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Wiinte
Gameplay Summary
Passive early game, rarely rushes in Feudal (60%). Frequently employs FC into Unique Units and Monk plays.
Passive early game, rarely rushes in Feudal (60%). Frequently employs FC into Unique Units and Monk plays.
Elo
602
Bottom 20%
Rank
#41,262
1v1 RM
Games
201
7W /
8L
Steam
12 years
Unverified
No risk factors detected
Player Analysis
5 gamesEarly Game
Quick Facts
Favorite Openings
No Rush
60%
Monk Rush
20%
Overall Behavior
Phosphoru (40%)
Monk rush (20%)
Walling Style: Standard
Balances defense with map control. (40% of games)
Opening Success Rates
No Rush
3 games
33%
Loses to
Ram Push
77.8%
Steppe Lancer Rush
72.2%
Monk Rush
65.5%
Beats
Skirmisher Rush
55.1%
Early-Game Strengths
No dominant matchups found
Early-Game Weaknesses
Not enough data to identify weaknesses
How to Beat This Player
Early Game
If they open No Rush (60%), often loses to:
BEST
Scout Rush
65% WR
Men at Arms
63.4% WR
Mid & Late Game
No clear weakness
No significant weaknesses detected
No dominant strengths detected
Quick tips:
Predictable opener
Heavy waller - bring siege
Tendencies & Patterns
Civ. Stats
Civ Playstyle Analysis
Chinese
2
50%
Monk Rush
Top Opening:
Monk Rush
Insufficient data for detailed analysis.
Bulgarians
1
0%
No Rush
Top Opening:
No Rush
Insufficient data for detailed analysis.
Bohemians
1
0%
No Rush
Top Opening:
No Rush
Insufficient data for detailed analysis.
Dravidians
1
100%
No Rush
Top Opening:
No Rush
Insufficient data for detailed analysis.
Performance
Performance by Time of Day
Night
00:00 - 06:00
0%
3 games
Morning
06:00 - 12:00
No games
-
Afternoon
12:00 - 18:00
100%
1 games
Evening
18:00 - 00:00
54.5%
11 games
Consistent performance across all time periods.
Based on 15 matches • Times in UTC
Win Rate by Game Length
Avg. Win
49 min
Avg. Loss
24
min
Games
5
Age Stats vs Below 1000 Elo Winners (Avg)
II
Feudal Age
(-00:09)
11:03
/ 11:12 target
III
Castle Age
(-01:14)
19:44
/ 20:58 target
IV
Imperial Age
(-03:49)
32:49
/ 36:38 target
Economy Profile
Dark Age Idle TC (Avg.)
00:34
Average
Reaches Imperial
40%
Balanced
Win Rates vs Opponent Civ Type
Best Matchups
—
Worst Matchups
—
Cavalry (0%)
Gunpowder (100%)
Elephant (0%)
Archer (0%)
Defensive (100%)
Most Faced Civs
1
Japanese
50%
2 games
1W - 1L
2
Khmer
50%
2 games
1W - 1L
3
Magyars
50%
2 games
1W - 1L
Koreans
0%
1 games
0W - 1L
Persians
100%
1 games
1W - 0L
Vietnamese
0%
1 games
0W - 1L
Top 6 of 9 tracked opponent picks
Rating History (Last 60 days)
+15 Elo
8 games
Current
602
Peak
602
Low
587
Record (W:L)
0
-
0
Recent Match History (5 games analyzed)
| Result | Map | Civ | Opponent | Duration | Date / Actions |
|---|---|---|---|---|---|
|
VICTORY
602
(+15)
|
MegaRandom
#461668682
|
Bulgarians
|
|
01:01:31 |
Mar 08, 2026
|
|
VICTORY
587
(+16)
|
Arena
#450633052
|
Dravidians
No Rush
|
|
00:51:27 |
Jan 23, 2026
|
|
DEFEAT
571
(-18)
|
Lowland
#445935739
|
Bohemians
No Rush
|
|
00:21:07 |
Jan 05, 2026
|
|
DEFEAT
589
(-16)
|
Graveyards
#445414998
|
Bulgarians
No Rush
|
|
00:24:26 |
Jan 04, 2026
|
|
VICTORY
605
(+16)
|
Glade
#442311964
|
Chinese
Monk Rush
|
|
00:45:43 |
Dec 23, 2025
|
|
DEFEAT
931
(-14)
|
Frigid Lake
#442105275
|
Berbers
|
|
00:05:33 |
Dec 23, 2025
|
|
VICTORY
945
(+15)
|
Kawasan
#442029755
|
Magyars
|
|
00:35:12 |
Dec 22, 2025
|
|
DEFEAT
589
(-14)
|
Haboob
#441040380
|
Chinese
|
|
00:25:18 |
Dec 18, 2025
|
|
DEFEAT
603
(-19)
|
MegaRandom
#439923755
|
Burgundians
|
|
00:01:48 |
Dec 14, 2025
|
|
DEFEAT
622
(-17)
|
MegaRandom
#439385440
|
Byzantines
|
|
00:44:46 |
Dec 11, 2025
|
|
VICTORY
639
(+16)
|
Yucatan
#438089138
|
Lithuanians
|
|
00:25:27 |
Dec 06, 2025
|
|
VICTORY
623
(+15)
|
African Clearing
#437497946
|
Burgundians
|
|
00:34:33 |
Dec 03, 2025
|
|
VICTORY
608
(+18)
|
Fortress
#437267460
|
Cumans
|
|
00:23:33 |
Dec 02, 2025
|
|
DEFEAT
590
(-17)
|
Fortress
#436576768
|
Spanish
|
|
00:21:00 |
Nov 29, 2025
|
|
DEFEAT
607
(-18)
|
MegaRandom
#436576076
|
Turks
|
|
00:01:18 |
Nov 29, 2025
|
No matches found with the selected filters.