What You're Actually Looking At
When you open OddsFlow, you see probability estimates—not guarantees. I want to be clear about what that means and how to use these numbers effectively.
Our models output probabilities based on historical patterns, current odds data, and various match features. This guide explains how to interpret those outputs and combine them with your own judgment.
Understanding Confidence Tiers
We categorize predictions into confidence levels not because higher confidence means "definite win," but because it reflects how strongly the model's probability estimate differs from baseline expectations.
| Confidence | Model Probability | What This Actually Means |
| High | 65%+ | Strong divergence from market baseline |
| Medium | 55-65% | Moderate signal, typical range |
| Low | Below 55% | Weaker signal, proceed with caution |
How to Use This in Practice
Step 1: Compare to Market Prices
Our most useful output is the gap between our probability estimate and the implied probability from current odds.
- If we say 62% and the market implies 55%, that's a meaningful difference
- If we say 58% and the market implies 57%, that's essentially noise
Step 2: Check Match Context
Our models don't know about things like:
- Manager just got fired yesterday
- Key player returned from injury 2 days ago
- Local derby with unusual atmosphere
You need to apply this context yourself.
Step 3: Track Over Time
One prediction means nothing. The value of any analytical tool shows up over hundreds of samples. Keep records and evaluate performance over at least a season.
What OddsFlow Is NOT
Let me be direct about limitations:
- We're not a crystal ball. Probabilities are estimates, not certainties.
- We're not replacing your analysis. We're supplementing it with data.
- We're not financial advice. This is sports analytics for informational purposes.
Best Practices I'd Recommend
Do:
- Cross-reference our data with your own research
- Pay attention to confidence levels
- Look for patterns over many matches, not individual results
- Use the data to challenge your assumptions
Don't:
- Treat any single prediction as a sure thing
- Ignore context that our models can't capture
- Use this for purposes beyond education and entertainment
Exploring the Platform
If you're new, here's where to start:
- Predictions Page — Today's match analysis with probability breakdowns
- AI Performance — Our historical accuracy and Brier scores (transparency matters)
- Leagues — Filter by the competitions you follow
📖 Related reading: How We Build Our Models • Understanding Responsible Use
*OddsFlow provides AI-powered sports analysis for educational and informational purposes.*

