WashingtonRound of 32FinishedHard

Public match archive

Seongchan Hong vs Karen Khachanov

Seongchan Hong closed this round of 32 at Washington.

Result SnapshotNo Public Model Pick

Public Archive Layer

Seongchan Hong is listed as the winner.

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

Seongchan Hong is listed as the winner.

Recent Form

Recent form looks close

Credit Boundary

Exact pre-match probabilities stay inside the app

What Stands Out

  • Seongchan Hong is the archived winner for this match.
  • Seongchan Hong is 1-2 in the recent sample.
  • Karen Khachanov is 4-6 in the recent sample.
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Recent Form

How both players were arriving

Short rolling sample built from prior match facts.

Seongchan Hong

Last Five

WLL

Record

1-2

Win Rate

33%

Streak

Won last match

Karen Khachanov

Last Five

LLLLW

Record

4-6

Win Rate

40%

Streak

Lost 4 straight

Essentials

Date

July 31, 2024

Round

Round of 32

Status

Finished

Score

Not listed

Winner

Seongchan Hong

Scheduled Start

Not listed

Match Context

Rank

Not listed

Seeds

Not listed

Court

Not listed

Last Update

Apr 11, 2026, 08:11 PM UTC

Before You Go

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