Computational Science is a concentration offered under the computational science major at Northern Arizona University. We’ve pulled together some essential information you should know about the bachelor’s degree program in scientific computing, including how many students graduate each year, the ethnic diversity of these students, and more.
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During the 2019-2020 academic year, part-time undergraduate students at NAU paid an average of $1,058 per credit hour if they came to the school from out-of-state. In-state students paid a discounted rate of $761 per credit hour. Information about average full-time undergraduate tuition and fees is shown in the table below.
In State | Out of State | |
---|---|---|
Tuition | $10,243 | $16,248 |
Fees | $1,138 | $1,138 |
Books and Supplies | $1,000 | $1,000 |
On Campus Room and Board | $11,106 | $11,106 |
On Campus Other Expenses | $4,720 | $4,720 |
Learn more about NAU tuition and fees.
NAU does not offer an online option for its scientific computing bachelor’s degree program at this time. To see if the school offers distance learning options in other areas, visit the NAU Online Learning page.
Of the students who received their bachelor’s degree in scientific computing in 2019-2020, all of them were women.
None of the scientific computing bachelor’s degree recipients at NAU in 2019-2020 were awarded to racial-ethnic minorities*.
Race/Ethnicity | Number of Students |
---|---|
Asian | 0 |
Black or African American | 0 |
Hispanic or Latino | 0 |
Native American or Alaska Native | 0 |
Native Hawaiian or Pacific Islander | 0 |
White | 1 |
International Students | 0 |
Other Races/Ethnicities | 0 |
*The racial-ethnic minorities count is calculated by taking the total number of students and subtracting white students, international students, and students whose race/ethnicity was unknown. This number is then divided by the total number of students at the school to obtain the racial-ethnic minorities percentage.
More about our data sources and methodologies.