Free football Over Under predictions and tips for Philippines PFL

09:0029.04
Mendiola
Philippine Army
Under 2.5
12:0029.04
Taguig
Manila Digger
Over 2.5

Best and Worst Teams Wins

Philippines
  • More Wins
Taguig
17
Manila Digger
14
Kaya
13
Dynamic Herb Cebu
13
Davao Aguilas
10
Philippines
  • Less Wins
Philippine Army
0
Mendiola
1
Tuloy
3
Garelli United
4
Maharlika
9

Best and Worst Teams Draws

Philippines
  • More Draws
Stallion
5
Manila Digger
3
Dynamic Herb Cebu
3
Tuloy
2
Philippine Army
2
Philippines
  • Less Draws
Garelli United
0
Taguig
0
Mendiola
1
Davao Aguilas
2
Kaya
2

Best and Worst Teams Losses

Philippines
  • More Losses
Mendiola
17
Philippine Army
16
Tuloy
15
Garelli United
15
Maharlika
9
Philippines
  • Less Losses
Manila Digger
0
Taguig
1
Dynamic Herb Cebu
3
Stallion
4
Kaya
5

Best and Worst Attacking Teams

Philippines
  • Best Attacking Teams
Manila Digger
91
Taguig
83
Dynamic Herb Cebu
70
Kaya
68
Stallion
56
Philippines
  • Worst Attacking Teams
Mendiola
9
Philippine Army
11
Garelli United
23
Tuloy
27
Maharlika
43

Best and Worst Defending Teams

Philippines
  • Best Defending Teams
Taguig
5
Manila Digger
12
Kaya
13
Stallion
16
Dynamic Herb Cebu
17
Philippines
  • Worst Defending Teams
Tuloy
119
Philippine Army
111
Mendiola
97
Garelli United
73
Maharlika
35

Philippines PFL Last Results and Predictions

Philippines PFL Standings

# Name P W D L Goals Last 5 Pts
1
Taguig
18 17 0 1 83:5
WWWWW
51
2
Manila Digger
17 14 3 0 91:12
WWWWW
45
3
Dynamic Herb Cebu
19 13 3 3 70:17
DLWWD
42
4
Kaya
20 13 2 5 68:13
DLWDD
41
5
Stallion
18 9 5 4 56:16
DWWLD
32
6
Davao Aguilas
20 10 2 8 45:28
LWLLL
32
7
Maharlika
20 9 2 9 43:35
LWWWD
29
8
Garelli United
19 4 0 15 23:73
WLLLW
12
9
Tuloy
20 3 2 15 27:119
LLLLD
11
10
Mendiola
19 1 1 17 9:97
DLLDL
4
11
Philippine Army
18 0 2 16 11:111
LLLLL
2

When are the Over/Under 2.5 Philippines PFL Predictions available?

You can track down our Over/Under 2.5 goals PFL tips and predictions on this page, predictions are posted 4 days before any PFL event. Using artificial intelligence on football predictions help users predict outcomes for Over/Under 2.5 goals in a given event.

What is Over/Under 2.5 Predictions?

Over 2.5 is when three or more goals are scored in a match, regardless of which team scores, Under 2.5 example if the match produced no goals, one goal, or two goals, the final outcome is under 2.5 goals
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Odd:1.38