| Season | Team | League | GP | W | L | SV% | GAA | SO | SVe Factor | Age-Adj SV% |
|---|---|---|---|---|---|---|---|---|---|---|
| 2021-22 | — | EHL | 3 | 1 | 2 | 87.2% | 4.42 | 0 | 0.9400 | 76.0% |
| 2021-22 | — | NCDC | 8 | 2 | 5 | 88.9% | 3.94 | 0 | 0.9400 | 74.7% |
| 2020-21 | — | USPHL-Premier | 21 | 11 | 6 | 90.6% | 2.89 | 2 | 0.9400 | 85.2% |
| Season | School | Div | GP | W | L | SV% | GAA | SO |
|---|---|---|---|---|---|---|---|---|
| 2025-26 | SUNY Morrisville | D3 | 10 | — | — | 88.9% | 5.53 | — |
| 2024-25 | SUNY Morrisville | D3 | 15 | 1 | 12 | 85.0% | 6.19 | — |
| 2023-24 | SUNY Morrisville | D3 | 4 | 1 | 2 | 87.9% | 4.37 | — |
| 2022-23 | SUNY Morrisville | D3 | 8 | 2 | 3 | 88.3% | 3.95 | — |
Historical goalies with similar age-adjusted SVe profiles who went on to play NCAA D1.
| Name | Junior League | Junior SV% | Adj SVe | College | NCAA SV% | NCAA GAA |
|---|---|---|---|---|---|---|
| Daniel Hauser | WHL | 91.3% | 76.6% | Wisconsin | 90.0% | 2.49 |
| Lukas Renaud | AJHL | 92.4% | 77.8% | Long Island Univ. | 89.7% | 2.57 |
| Reid Dyck | WHL | 89.0% | 74.5% | Colgate | 89.7% | 3.17 |
| Anton Castro | USHL | 88.6% | 74.4% | Wisconsin | 78.6% | 4.27 |
| Bruno Bruveris | USHL | 89.7% | 76.1% | Miami | 86.6% | 4.15 |
Historical goalies with similar age-adjusted SVe profiles who went on to play NCAA D2/D3.
| Name | Junior League | Junior SV% | Adj SVe | College | Div | SV% | GAA |
|---|---|---|---|---|---|---|---|
| Pierce Diamond | BCHL | 88.6% | 75.8% | Albertus Magnus | D3 | 89.4% | 3.82 |
| Marcus Cumberworth | AJHL | 88.7% | 77.7% | Buffalo State | D3 | 90.8% | 3.33 |
| Hunter Thomas | USPHL-Premier | 90.2% | 77.3% | Salem State | D3 | 87.3% | 5.20 |
| Jeremy Skaife | USPHL-Premier | 89.7% | 76.7% | Johnson & Wales | D3 | 83.0% | 5.54 |
| William Goumas | OJHL | 84.8% | 74.6% | SUNY Morrisville | D3 | 89.7% | 4.12 |
How to read this: NCAAe and D3e factors convert a player's junior PPG into expected NCAA scoring at the D1 or D3 level. Harder conferences → lower projected PPG for the same player. A strong junior player (e.g. USHL 0.90 PPG) will project much higher in NESCAC than Big Ten because the D3 scoring environment is lower-difficulty.
Strength factor: conferences above 1.0 are harder than average; below 1.0 are easier. The formula is: Base NCAAe PPG ÷ Conference Strength = Projected PPG.