Indian Wells MastersRound of 64FinishedHard

Public match archive

Cameron Norrie vs Mackenzie Mcdonald

Cameron Norrie closed this round of 64 at Indian Wells Masters, 6-2 6-3.

Result SnapshotNo Public Model Pick

Public Archive Layer

Cameron Norrie won 6-2 6-3.

This page is intentionally limited to match context, result data, and recent form. Full pre-match probability analysis is available only inside the credit-backed app.

Result

Cameron Norrie won 6-2 6-3.

Recent Form

Cameron Norrie brings the hotter recent run

Credit Boundary

Exact pre-match probabilities stay inside the app

What Stands Out

  • Cameron Norrie is the archived winner for this match.
  • Scoreline: 6-2 6-3.
  • Cameron Norrie is 5-5 in the recent sample.
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Recent Form

How both players were arriving

Short rolling sample built from prior match facts.

Cameron Norrie

#24Seed 23

Last Five

LLWLW

Record

5-5

Win Rate

50%

Streak

Lost 2 straight

Mackenzie Mcdonald

#125

Last Five

WLLLL

Record

2-8

Win Rate

20%

Streak

Won last match

Essentials

Date

March 8, 2026

Round

Round of 64

Status

Finished

Score

6-2 6-3

Winner

Cameron Norrie

Scheduled Start

Not listed

Match Context

Rank

#24 / #125

Seeds

Seed 23

Court

Not listed

Last Update

Apr 19, 2026, 12:12 PM UTC

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