Stanford University Applicant Profile
The following statistics give a general picture of the freshman andtransfer applicants and admits. We caution you against a narrow interpretation of this data. We are providing it because we are often asked to evaluate an applicant’s chances of admission based on certain criteria. To make such a judgment without reading an entire application is impossible, but the following information may prove useful to you. Bear in mind that an applicant in the top of one group may not be in the same position on another measure and that the rigor of academic programs varies considerably among schools.
Freshmen Fall 2014
|
Applicants |
Admits |
Admit Rate |
Matriculants |
|
42,167 |
2,145 |
5.1% |
1,691 |
|
GPA |
Percent of Applicants |
Admit Rate |
Percent of Admitted Class |
|
4.0 and above |
57% |
6% |
73% |
|
3.70 – 3.99 |
29% |
4% |
22% |
|
below 3.70 |
14% |
2% |
5% |
|
Rank |
Percent of Applicants |
Admit Rate |
Percent of Admitted Class |
|
Top 10% |
80% |
5% |
95% |
|
11% – 20% |
12% |
1% |
3% |
|
21% and below |
8% |
1% |
2% |
|
Score |
Percent of Applicants |
Admit Rate |
Percent of Admitted Class |
|
800 |
10% |
13% |
24% |
|
700–799 |
34% |
8% |
47% |
|
600–699 |
37% |
4% |
24% |
|
Below 600 |
18% |
2% |
5% |
|
Score |
Percent of Applicants |
Admit Rate |
Percent of Admitted Class |
|
800 |
17% |
9% |
26% |
|
700–799 |
44% |
7% |
54% |
|
600–699 |
27% |
4% |
18% |
|
Below 600 |
12% |
1% |
2% |
|
Score |
Percent of Applicants |
Admit Rate |
Percent of Admitted Class |
|
800 |
9% |
14% |
23% |
|
700–799 |
39% |
8% |
53% |
|
600–699 |
34% |
3% |
21% |
|
Below 600 |
17% |
1% |
3% |
|
Score |
Percent of Applicants |
Admit Rate |
Percent of Admitted Class |
|
30 – 36 |
72% |
6% |
89% |
|
24 – 29 |
23% |
2% |
10% |
|
18 – 23 |
5% |
1% |
1% |
|
Score |
Percent of Applicants |
Admit Rate |
Percent of Admitted Class |
|
30 – 36 |
59% |
7% |
82% |
|
24 – 29 |
32% |
2% |
16% |
|
18 – 23 |
8% |
1% |
2% |
|
12 – 17 |
1% |
0% |
0%
|
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