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Counter-Strike 2 Intelligence

Real-time CS2 match data, event highlights and AI predictions.

UK-based analytics built for serious CS2 teams, content creators and quant traders. Live scores, historic match features, and data-driven insight from an independent Counter-Strike research platform.

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CCT South America Series 6ยท T3 ONLINE BO3
FINAL 29 Mar 2023 21:34 UTC
HY
Hype
Elo 1518
0 โ€“ 2
Winner: CARECAS
CA
CARECAS
Elo 1472
CQ-GESUS CS2-APEX SHAP
AUC 0.702 58% CONF CORRECT
Hype 42.5% 57.5% CARECAS
Why this prediction?
โˆ’100.0 Elo advantage
+84.2 Elo implied probability
+75.5 Elo win probability
โˆ’46.2 Schedule difficulty edge
โˆ’37.7 Avg opponent quality diff
+32.5 Consensus Win Prob Team1
+29.3 Days since last match (T1)
+26.6 Glicko2 rating (T2)
+25.2 Elo (T1)
+24.7 Glicko2 rating (T1)
inferno
14 โ€“ 16
CARECAS
anubis
6 โ€“ 16
CARECAS
de_inferno
inferno
14 โ€“ 16
CARECAS WON
Round timeline loading โ€” available after demo parsing
Round โ€” Player Stats
Player K D A HS ADR KAST
Player Rating K D A HS% ADR KAST
CARECAS โ˜… won this map
saadzin BR
1.33 27 19 0 0% 92.8 73.3%
zede BR
1.10 22 20 0 0% 74.1 70.0%
Hype
0.93 21 24 0 0% 72.5 56.7%
CARECAS โ˜… won this map
0.91 17 23 0 0% 69.4 73.3%
Highlights available for subscribers Sign in
de_anubis
anubis
6 โ€“ 16
CARECAS WON
Round timeline loading โ€” available after demo parsing
Round โ€” Player Stats
Player K D A HS ADR KAST
Player Rating K D A HS% ADR KAST
CARECAS โ˜… won this map
zede BR
1.38 18 11 0 0% 74.8 81.8%
saadzin BR
1.34 18 13 0 0% 82.2 77.3%
1.09 13 14 0 0% 67.1 68.2%
Hype
0.67 10 14 0 0% 43.5 63.6%
Highlights available for subscribers Sign in
๐Ÿ’ฐ
Economy data not yet available
Available after demo parsing completes
๐Ÿ“Š
Advanced stats require demo parsing
Available after the demo pipeline processes this match
Quantum Locked

Quantum signals require Uranium-tier data: <10% null features.