Portal Vs Recruiting, what is King?


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From Canes Insight to Code: Finding College Football’s Portal “Sweet Spot”

I was watching Canes Insight the other day, listening to Steve Kim, when he said something that stuck with me.

Paraphrasing, he wondered out loud if there was a “sweet spot” in the transfer portal era — not too portal-heavy, not too old-school high-school recruiting — but a mix that actually correlates with winning. He also asked the natural follow-up: has anyone already done this math?

That question sent me down a rabbit hole.

Because once you strip away the talking points, the portal debate is really a data problem:

  • How much portal is too much?
  • How much continuity matters?
  • What happens when a team loads up one year… then loses those players the next?

So I built a model. Then I built a tool.

What you see below is the Portal Sweet Spot framework — the same logic powering the interactive widget under this article.


Step 1: Measuring Roster Mix (Portal vs High School)

Let’s start simple.

Let:

  • P = number of portal players added
  • H = number of high-school recruits signed

There are two useful ways to express roster mix:

Portal Share (PS)

This is the cleanest headline number.PS=PP+HPS = \frac{P}{P + H}PS=P+HP​

  • 0.00 → all high-school
  • 0.40 → 40% portal
  • 1.00 → all portal

This is the number fans intuitively understand.

Portal Ratio (PR)

For the math heads:PR=PHPR = \frac{P}{H}PR=HP​

  • PR = 1.0 → equal portal and HS
  • PR > 1.0 → portal-heavy
  • PR < 1.0 → HS-heavy

In the tool, you’ll see both — but Portal Share is what drives most of the analysis pasted.


Step 2: Winning Still Matters (A Lot)

No advanced metric should ignore the obvious.Win Percentage=WW+LWin\ Percentage = \frac{W}{W + L}Win Percentage=W+LW​

Everything we do later is anchored to winning, not vibes.


Step 3: The Missing Piece — Retention & Continuity

This is where the portal conversation usually breaks down.

Steve Kim’s point — whether explicitly or implicitly — was this:

Teams can win the portal one year… then get crushed when that class leaves.

So we track portal retention.

Let:

  • P₀ = portal players added in Year 0
  • S₁ = how many are still on the roster the next year
  • S₂, S₃ = still there two and three years later

Retention rates:R1=S1P0,R2=S2P0,R3=S3P0R_1 = \frac{S_1}{P_0}, \quad R_2 = \frac{S_2}{P_0}, \quad R_3 = \frac{S_3}{P_0}R1​=P0​S1​​,R2​=P0​S2​​,R3​=P0​S3​​

Then we combine them into a Roster Stability Score (RSS):RSS=0.60R1+0.30R2+0.10R3RSS = 0.60R_1 + 0.30R_2 + 0.10R_3RSS=0.60R1​+0.30R2​+0.10R3​

Why the weighting?

  • Immediate continuity matters most
  • Long-term retention still counts, just less

Programs that cycle players every year get exposed here.


Step 4: Penalizing Extremes (The “Sweet Spot” Idea)

The core hypothesis is simple:

Too little portal = slow roster correction
Too much portal = instability

So we define a target portal share — call it PS* (for example, 0.35).

Then we reward balance:Balance=1PSPSBalance = 1 – |PS – PS^*|Balance=1−∣PS−PS∗∣

The closer you are to the sweet spot, the higher the balance score.


Step 5: The Sweet Spot Score (SSS)

Now we combine everything into one number:SSS=(0.50×Win%)+(0.25×RSS)+(0.15×Balance)+(0.10×(1Churn))SSS = (0.50 \times Win\%) + (0.25 \times RSS) + (0.15 \times Balance) + (0.10 \times (1 – Churn))SSS=(0.50×Win%)+(0.25×RSS)+(0.15×Balance)+(0.10×(1−Churn))

This score:

  • Rewards winning
  • Rewards continuity
  • Penalizes roster whiplash
  • Penalizes extreme portal dependence

It also explains why two teams with similar records can feel very different long-term.


Why This Matters (Especially for Miami)

This model finally lets us test narratives we argue about every offseason:

  • Did a big portal year actually sustain success?
  • Did losing portal starters show up in next year’s record?
  • Who builds reloadable rosters — not just one-year spikes?

For Miami specifically, this helps separate:

  • “Portal hype” from portal efficiency
  • Volume from value
  • Short-term wins from program stability

What the Tool Below Does

The interactive widget below lets you:

  • Manually enter team-year data
  • Paste or load CSVs (including Python-generated outputs)
  • Compare teams across conferences
  • Visualize multi-year trends with sparklines
  • Rank programs by Sweet Spot Score

No database. No login. Just math.


Final Thought

Steve Kim asked the right question.

This isn’t about being pro-portal or anti-portal.
It’s about how much, how well, and for how long.

That’s the sweet spot.

👇 Use the calculator below, plug in your teams, and see where the data lands.



🧮 Simple Sweet Spot Score (Public Formula)

This is intentionally short + explainable:

PAS = Portal_In / (Portal_In + HS_Signed)

Win% = Wins / (Wins + Losses)

Sweet Spot Score =
(Win% × 100)
− |PAS − 0.40| × 30
− Churn × 15

Where:

  • 0.40 = hypothesized portal sweet spot
  • Churn = (Portal In + Portal Out) ÷ Total Adds

Score range (rough):

  • 80–100 = Elite balance
  • 65–79 = Solid / sustainable
  • 50–64 = Volatile
  • < 50 = Roster risk

I’M building The Full scale Here…https://studio1live.com/college-football-roster-sweetspot/ coming soon , a little scrape code build so it can be automatic …

Check out the simple tool below

Enter team-year data (W/L + HS + Portal In/Out). Run scores to rank teams. No database required.

Conference Presets:
Team Year W L HS Signed Portal In Portal Out Actions
Optional: Paste CSV (team,year,w,l,hs,pin,pout)
Load CSV from URL (Python output)
Tip: If the load fails, it’s usually CORS or the CSV isn’t publicly accessible. Best is to host the CSV on the same domain (studio1live.com).

https://studio1live.com/college-football-roster-sweetspot

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