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MLB Batting Splits 2025

Performance splits by handedness, home/away, and situational categories.

Batting splits break down a hitter's performance across different game situations. Platoon splits (vs LHP/RHP) are the most predictive for DFS and prop betting. Minimum 10 at-bats displayed.
Cal Raleigh headshot
Cincinnati Reds
1.179 OPS
AVG .267
OBP .313
SLG .867
HR 3
AB 15
H 4
RBI 4
Nick Kurtz headshot
Detroit Tigers
1.178 OPS
AVG .400
OBP .478
SLG .700
HR 2
AB 20
H 8
RBI 5
Willi Castro headshot
Oakland Athletics
1.178 OPS
AVG .333
OBP .444
SLG .733
HR 2
AB 15
H 5
RBI 3
Nolan Schanuel headshot
Oakland Athletics
1.176 OPS
AVG .457
OBP .548
SLG .629
HR 1
AB 35
H 16
RBI 3
Brent Rooker headshot
Chicago White Sox
1.176 OPS
AVG .435
OBP .480
SLG .696
HR 1
AB 23
H 10
RBI 4
Davis Schneider headshot
New York Yankees
1.176 OPS
AVG .333
OBP .462
SLG .714
HR 2
AB 21
H 7
RBI 4
Jeremy Pena headshot
Kansas City Royals
1.176 OPS
AVG .478
OBP .480
SLG .696
HR 1
AB 23
H 11
RBI 7
Brandon Nimmo headshot
Chicago Cubs
1.176 OPS
AVG .435
OBP .480
SLG .696
HR 2
AB 23
H 10
RBI 6
Spencer Horwitz headshot
Detroit Tigers
1.176 OPS
AVG .450
OBP .476
SLG .700
HR 1
AB 20
H 9
RBI 7
Maikel Garcia headshot
Atlanta Braves
1.175 OPS
AVG .455
OBP .538
SLG .636
HR 0
AB 11
H 5
RBI 1
Mike Trout headshot
Cleveland Indians
1.173 OPS
AVG .381
OBP .458
SLG .714
HR 2
AB 21
H 8
RBI 5
Jordan Westburg headshot
Toronto Blue Jays
1.173 OPS
AVG .395
OBP .410
SLG .763
HR 4
AB 38
H 15
RBI 6
Jake Meyers headshot
Minnesota Twins
1.171 OPS
AVG .400
OBP .571
SLG .600
HR 0
AB 15
H 6
RBI 0
Giancarlo Stanton headshot
Minnesota Twins
1.171 OPS
AVG .429
OBP .409
SLG .762
HR 2
AB 21
H 9
RBI 6
Brice Turang headshot
New York Mets
1.171 OPS
AVG .313
OBP .421
SLG .750
HR 2
AB 16
H 5
RBI 4
Junior Caminero headshot
Oakland Athletics
1.170 OPS
AVG .320
OBP .370
SLG .800
HR 3
AB 25
H 8
RBI 6
Yandy Diaz headshot
Kansas City Royals
1.170 OPS
AVG .400
OBP .520
SLG .650
HR 1
AB 20
H 8
RBI 1
Kebryan Hayes headshot
New York Mets
1.170 OPS
AVG .462
OBP .516
SLG .654
HR 0
AB 26
H 12
RBI 7
Miguel Vargas headshot
Pittsburgh Pirates
1.169 OPS
AVG .308
OBP .400
SLG .769
HR 1
AB 13
H 4
RBI 3
Jeremiah Jackson headshot
San Diego Padres
1.169 OPS
AVG .308
OBP .400
SLG .769
HR 2
AB 13
H 4
RBI 3
Zach Neto headshot
Arizona Diamondbacks
1.167 OPS
AVG .417
OBP .500
SLG .667
HR 1
AB 12
H 5
RBI 2
Joey Loperfido headshot
Detroit Tigers
1.167 OPS
AVG .417
OBP .500
SLG .667
HR 1
AB 12
H 5
RBI 1
JJ Bleday headshot
Washington Nationals
1.167 OPS
AVG .417
OBP .417
SLG .750
HR 1
AB 12
H 5
RBI 6
Brent Rooker headshot
Philadelphia Phillies
1.167 OPS
AVG .417
OBP .500
SLG .667
HR 1
AB 12
H 5
RBI 1
Jackson Chourio headshot
Washington Nationals
1.167 OPS
AVG .417
OBP .417
SLG .750
HR 1
AB 12
H 5
RBI 6
Spencer Torkelson headshot
Chicago Cubs
1.167 OPS
AVG .417
OBP .417
SLG .750
HR 1
AB 12
H 5
RBI 3
Gavin Sheets headshot
Toronto Blue Jays
1.167 OPS
AVG .333
OBP .333
SLG .833
HR 2
AB 12
H 4
RBI 5
Nick Loftin headshot
Pittsburgh Pirates
1.167 OPS
AVG .333
OBP .333
SLG .833
HR 2
AB 12
H 4
RBI 4
Taylor Ward headshot
Milwaukee Brewers
1.167 OPS
AVG .333
OBP .333
SLG .833
HR 2
AB 12
H 4
RBI 2
Kyle Higashioka headshot
San Diego Padres
1.164 OPS
AVG .400
OBP .364
SLG .800
HR 1
AB 10
H 4
RBI 5
Jorge Soler headshot
Seattle Mariners
1.162 OPS
AVG .300
OBP .462
SLG .700
HR 1
AB 10
H 3
RBI 2
Edouard Julien headshot
Detroit Tigers
1.162 OPS
AVG .409
OBP .435
SLG .727
HR 2
AB 22
H 9
RBI 3
Chandler Simpson headshot
San Diego Padres
1.161 OPS
AVG .545
OBP .615
SLG .545
HR 0
AB 11
H 6
RBI 1
Riley Greene headshot
Los Angeles Angels
1.159 OPS
AVG .385
OBP .429
SLG .731
HR 3
AB 26
H 10
RBI 8
JO Adell headshot
Kansas City Royals
1.158 OPS
AVG .348
OBP .375
SLG .783
HR 3
AB 23
H 8
RBI 7
JO Adell headshot
Toronto Blue Jays
1.157 OPS
AVG .235
OBP .333
SLG .824
HR 3
AB 17
H 4
RBI 7
Junior Caminero headshot
Los Angeles Angels
1.157 OPS
AVG .333
OBP .348
SLG .810
HR 3
AB 21
H 7
RBI 5
Bryan Reynolds headshot
Philadelphia Phillies
1.156 OPS
AVG .353
OBP .450
SLG .706
HR 2
AB 17
H 6
RBI 4
Andrew Vaughn headshot
Washington Nationals
1.156 OPS
AVG .391
OBP .417
SLG .739
HR 2
AB 23
H 9
RBI 8
Lawrence Butler headshot
Cincinnati Reds
1.155 OPS
AVG .400
OBP .455
SLG .700
HR 1
AB 10
H 4
RBI 2
Nolan Schanuel headshot
Arizona Diamondbacks
1.155 OPS
AVG .500
OBP .571
SLG .583
HR 0
AB 12
H 6
RBI 1
Jacob Wilson headshot
Baltimore Orioles
1.154 OPS
AVG .538
OBP .538
SLG .615
HR 0
AB 13
H 7
RBI 4
Jackson Chourio headshot
Kansas City Royals
1.154 OPS
AVG .385
OBP .385
SLG .769
HR 1
AB 13
H 5
RBI 3
Steven Kwan headshot
Oakland Athletics
1.154 OPS
AVG .462
OBP .462
SLG .692
HR 0
AB 13
H 6
RBI 1
Jeremy Pena headshot
Pittsburgh Pirates
1.154 OPS
AVG .462
OBP .462
SLG .692
HR 0
AB 13
H 6
RBI 1
Lawrence Butler headshot
Philadelphia Phillies
1.154 OPS
AVG .385
OBP .385
SLG .769
HR 0
AB 13
H 5
RBI 1
Luis Arraez headshot
Toronto Blue Jays
1.154 OPS
AVG .385
OBP .385
SLG .769
HR 0
AB 13
H 5
RBI 1
Christian Walker headshot
Atlanta Braves
1.154 OPS
AVG .462
OBP .462
SLG .692
HR 1
AB 13
H 6
RBI 5
Mickey Moniak headshot
Houston Astros
1.154 OPS
AVG .385
OBP .385
SLG .769
HR 1
AB 13
H 5
RBI 6
Riley Greene headshot
Arizona Diamondbacks
1.154 OPS
AVG .385
OBP .385
SLG .769
HR 1
AB 13
H 5
RBI 3

Understanding Opponent Splits

Opponent splits reveal how a hitter performs against each MLB team. These splits capture the combined effect of a team's pitching staff, defensive alignment, and park factors. Some hitters consistently dominate certain teams due to favorable pitching matchups.

Team-Specific Matchups

Some hitters own certain teams. This often reflects favorable matchups against that team's pitching staff — handedness advantages, pitch-type weaknesses, or familiarity from division play. Division rivals face each other 13+ times per season, creating larger sample sizes.

Stacking by Opponent

For DFS, opponent splits help identify entire lineups to stack. If multiple hitters on a team have strong splits against today's opponent, that's a high-correlation stack. Combine with the opposing starter's recent form for maximum edge.

Sample Size Caution

Opponent splits against non-division teams can be small (3-4 games per season). Weight division matchups more heavily since they have 13+ games of data. A .400 AVG in 10 at-bats against a team is interesting but not predictive on its own.

Data Source & Methodology

Batting splits sourced from MLB Stats API. Stats reflect current season data and update daily as games are played.

Frequently Asked Questions

How reliable are opponent batting splits?
Division opponent splits are the most reliable since hitters face those teams 13+ times per season. Interleague and non-division splits have smaller sample sizes (3-7 games) and should be weighted less heavily. Always check the at-bat count before drawing conclusions.
How do I use opponent splits for DFS stacks?
Find teams where multiple hitters have strong splits against today's opponent. Stack 3-4 hitters from that team in your DFS lineup for high correlation. This works especially well when the opposing starter is also weak against that lineup's handedness profile.
Why do some hitters crush certain teams?
It usually comes down to pitching staff matchups. A hitter might face favorable pitch types, have platoon advantages against most of a team's rotation, or thrive at that team's home park. Division familiarity also plays a role — hitters see the same pitchers repeatedly.
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