FACEIT CS2 Predictor
8 ratings
)Overview
Machine learning based match outcome predictor for CS2 matches on FACEIT
Helps you during map veto by predicting the outcome of your FACEIT matches for each map using AI. ABOUT: FACEIT CS2 Predictor is extension that uses machine learning for predicting the outcome of FACEIT CS2 for each map during map veto. It will help you to maximize your winning chances. State of the art model for predicting FACEIT CS2 match outcome. Trained and optimized on 4.5 milion FACEIT CS2 matches. FACEIT CS2 Predictor allows you to see additional stats for each player for each map up to one month in the past. FACEIT CS2 Predictor allows you to see which servers and maps will be available during map veto. Compatible with every major FACEIT extension. ADVERTISING & AFFILIATE DISCLOSURE This extension may display optional sponsored or affiliate content from third-party partners, such as Clashgg. Interaction with this content may result in affiliate tracking for the developer. Users can choose to disable ads via the extension popup settings. Ads are displayed by default but can be optionally hidden. DISCLAIMER: FACEIT CS2 Predictor has no responsibility for the outcome of any match. FACEIT CS2 Predictor is not affiliated or endorsed by FACEIT. We do not collect any personal information.
4.5 out of 58 ratings
Details
- Version1.0.0.25
- UpdatedFebruary 2, 2026
- Offered byMiloš Brković
- Size59.47KiB
- LanguagesEnglish
- Developer
Email
milosbrkovic2000@gmail.com - Non-traderThis developer has not identified itself as a trader. For consumers in the European Union, please note that consumer rights do not apply to contracts between you and this developer.
Privacy
This developer declares that your data is
- Not being sold to third parties, outside of the approved use cases
- Not being used or transferred for purposes that are unrelated to the item's core functionality
- Not being used or transferred to determine creditworthiness or for lending purposes
Support
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