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OddsFlow Dashboard (Premier League example)


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Start here:

The 3 dashboard blocks:

Context + verification:


30-second reading

  1. Choose a league tab (EPL / LaLiga / Serie A / Bundesliga / Ligue 1 / UCL)
  2. Read Market Trends first (league “weather”)
  3. Check Probability Analysis (Market vs Model)
  4. Open Value Detection only after context
  5. Verify post-match (logs + timestamps)

Principle: No hype. Just logs.


Key idea: Market vs Model

  • Market = probability implied by bookmaker pricing (odds/lines)
  • Model = AI-estimated probability
  • Edge = meaningful disagreement between Model and Market (above threshold)

If you want term definitions:


A) Probability Analysis (Left)

Question it answers:
“What does the AI estimate vs what does the market price?”

What you see:
Semi-circular gauges for selected outcomes (e.g., Over 2.5, Draw) showing:

  • Market (implied probability)
  • Model (AI probability)

How to interpret:

  • Model > Market → AI thinks it’s more likely than priced
  • Model < Market → AI thinks it’s less likely than priced

B) Market Trends (Center)

Question it answers:
“What is the league environment right now vs market expectations?”

B1) Market Volatility / Deviation

A drift meter between:

  • Implied (market expected rate)
  • Actual (observed rate in sample window)
  • Deviation (Actual − Implied)

Positive deviation → happening more than priced
Negative deviation → happening less than priced

B2) Home Advantage / awayLean

Shows whether home teams are over/under performing vs market assumptions in the current window. awayLean indicates whether the league is leaning away relative to market assumptions.


C) Value Detection (Right)

Question it answers:
“Which matches show meaningful mispricing after filters?”

Common elements:

  • Edge Found = number of candidates where Model vs Market exceeds threshold
  • Filtered = candidates remaining after applying filters
  • Efficiency = quality indicator for the current shortlist (implementation-specific)

Use this as a research shortlist, then verify via logs.


Why league tabs matter

Leagues differ in:

  • scoring distribution / tempo
  • home advantage strength
  • market bias patterns

So a rule that feels true in one league can fail in another. OddsFlow makes league context explicit before interpreting edge.


Verification-first workflow (recommended)

  1. Read league context (Market Trends)
  2. Inspect shortlist (Value Detection)
  3. Verify using:

Limitations (read this)

  • Edge is a pricing disagreement, not certainty
  • Markets reprice quickly (snapshots ≠ closing line)
  • Sample window size affects drift indicators
  • Injuries/rotation/news can change dynamics

FAQ (Common misunderstandings)

1) Does “Edge Found 20” mean 20 guaranteed wins?

No.
Edge Found only means: under the current league view, sample window, and filters, the system detected 20 candidates where Model vs Market disagreement exceeds a threshold.
It is not a profit promise and not “sure wins.”
Correct use: treat it as a research shortlist → check league context → verify via logs and post-match audit.


2) If Model > Market, should I always follow the Model?

Not always.
A Model–Market gap is a mispricing hypothesis, not certainty. Markets can reprice quickly due to injuries, rotation, news, and line movement.
Correct use: look for consistency, confirm it matches the league “weather” (Trends), and validate using closing line / post-match audit.


3) Does Market Volatility mean “more volatility = easier profit”?

No.
On this dashboard, Market Volatility / Deviation is a drift indicator: how much recent outcomes differ from what the market implied.
A larger drift can reflect market adjustment, changing conditions, or sample effects. It does not automatically mean “more profit.”


4) Does awayLean mean “always back the away team”?

No.
awayLean indicates a league-level drift in the current sample window (home outcomes under/over performing market assumptions).
It is context, not a fixed strategy. Team strength, schedule difficulty, tactics, and injuries still dominate single-match reality.


5) Is this dashboard a “score prediction” tool?

No.
This dashboard is primarily about:

  1. estimating probabilities (Model)
  2. comparing against market pricing (Market)
  3. generating a verifiable shortlist of candidates (Value Detection)

Brand standard: not tips, no guarantees — auditability first.
See: verification.md and signal-glossary.md.

6) Does “Efficiency = 100%” mean “accuracy = 100%”?

No.
Efficiency is a dashboard quality indicator for the current filtered shortlist (implementation-specific).
It typically reflects things like filter consistency, data completeness, or rule pass-rate for the candidates shown — not match outcomes.

It does not mean:

  • 100% win rate
  • 100% prediction accuracy
  • guaranteed profit

Correct use: treat Efficiency as “the shortlist is clean under current rules,” then rely on verification logs and post-match audit for actual performance evaluation.


OddsFlow Football League Dashboard: AI vs Bookmakers

This page explains how to read the OddsFlow dashboard shown in our tutorials: Market (Bookmakers) vs Model (AI), plus league-level context and value detection.

Educational analytics only — not betting advice.
No guaranteed profit. Evidence-first. Verification-first.


What this dashboard does (one sentence)

It compares market-implied probability (from bookmaker pricing) against AI-estimated probability, then highlights meaningful gaps (Edge) under league-aware filters.


How to read it in 30 seconds

  1. Choose a league (EPL / LaLiga / Serie A / Bundesliga / Ligue 1 / UCL)
  2. Read league context first (Market Trends: Volatility + Home/Away drift)
  3. Then review Value Detection (Edge Found → shortlist)
  4. Verify post-match (logs + timestamps)

Principle: Don’t trust opinions. Trust logs.


Dashboard blocks

A) Probability Analysis (left)

Shows Market vs Model for selected outcomes (examples: Over 2.5, Draw).

  • Market: what odds imply (market pricing)
  • Model: what the AI estimates
  • The goal is not certainty — it’s pricing disagreement.

B) Market Trends (center)

League “weather” — how reality is drifting vs market expectations.

  1. Market Volatility / Deviation
    A drift meter between:
  • Implied (what market pricing expects)
  • Actual (what happened in the sample window)
  • Deviation (Actual − Implied)
  1. Home Advantage / awayLean
    Shows whether home teams are over/under performing vs market assumptions in the current league window.

C) Value Detection (right)

Turns disagreement into a shortlist after filters.

  • Edge Found: number of candidates where Model vs Market exceeds threshold
  • Filtered: remaining candidates after constraints
  • Efficiency: a quality indicator for the current shortlist (implementation-specific)

Why league tabs matter

Leagues differ in:

  • scoring distribution and tempo
  • home advantage strength
  • market bias patterns

So “intuition” from one league often fails in another. OddsFlow makes league context explicit before you interpret any edge.


Verification-first workflow (recommended)

  1. Read league context (Trends)
  2. Inspect shortlist (Value Detection)
  3. Cross-check with public verification logs:
  • docs/verification.md
  • docs/signal-glossary.md (for log field meaning)

Next

  • Dashboard glossary (UI terms): ./dashboard-glossary.md
  • Signal glossary (log/schema terms): ./signal-glossary.md