This document is under construction and is actively being updated.
We recommend that the university identify and standardize a core set of enrollment data that accommodates the varied nature of an institution as complex as Tufts University while also providing real-time, actionable data that clarifies fiscal realities and supports institutional goals.
The model for providing ongoing enrollment analytics data/insights should be:
flexible: can integrate new requirements rapidly without requiring wholesale changes
robust: can withstand uncertainty, constant changes, variety of dataset size, and missing data without compromising overall integrity or validity
comprehensive: all schools, programs, centers and units
with programs or courses that ultimately generate a transcriptare includedinclusive: ensuring our core data reflects as accurately as possible the multiple disparate identities that every single prospect, applicant, and student brings with them
Challenges
Accommodating all kinds of schools and programs, especially “non-traditional cycle” graduate & professional programs
multiple annual entry terms
spring or summer start dates
“unaligned” start dates (e.g. late July starts in Medical and Dental)
alternate application stages, including interviewing and traffic rules
small application populations
programs with external admissions vendors
Accommodating a variety of dataset sizes; not all programs will have statistically significant numbers or numbers that make sense
Aligning our consumption of external admissions vendors (e.g. CAS/Liaison) data with our standards
Points of ambiguity
Which programs are included?anything that ‘admits’?anything that generates a transcript?anything that generates an enrollment record?corner cases include programs where students enroll in their coursework through University College, but are admitted into a program (GSBS: PREP)
What counts as a “cycle”?
Application changes within cycle (MPH change concentration or start term from spring to fall)
Clearly define when admissions stops being the “system of record” (e.g., if a student withdraws during add/drop, does admissions update their decision stack?)
SIS quick admit
SIS history of admit decline? Program Action codes?
What counts as a complete application?
Deferrals
Withdrawals
Deny vs. Do Not Interview
our policies vs. external reporting organization requirements/policies (i.e., what APTA considers complete vs. what TUSMGP PT consider complete.
different prompts in different systems, need for consistent classifications
race
gender (e.g. is X an option?)
gender identity (East Asian vs. West Asian, Hispanic country of origin, etc.)
veteran status
Initial Data points
Biodemo
gender identity
legal sex
race/ethnicity
veteran status
state of residence
US citizenship status
other country or countries of citizenship
year of birth
Programmatic
school
program
concentration
degree
start term/year
application deadline(s)
target enrollment number
Application cycle dates for each person
application started
application submitted
application
invited to interview
interview
decision
committed
cancelled
deferred
enrolled
Sources
Paid marketing
{needs to accommodate different ways of attributing sources?]
Recruitment Activities
Campus Visit: anything where they physically come to us (admitted students day, in-person interviews)
External Event: anything where we physically go to them (tabling at a conference, school visit or fair, etc)
Online event (online recruitment fair, information session, or interview)
Mailing campaign
Scholarship(s)
Decline Data?!
What school attending
Why?
Yield Activities---what of this is our responsibility?
[dataset of programs; then dataset scoped entity for cycle open date. CONSIDER USING EXPORT DATA ON DATASET FOR FEED THROUGH KAFKA]
Application open and close
Program start/open semester/term
Program history (i.e., DPT started Jan 2021)
Open House/key recruitment dates (interview timing?)
Key dates for cycle based on program type (i.e., MD has plan to enroll, commit to enroll “traffic rules”)
At what point do we do a data freeze? What sort of auditing reports/processes would we need for each program to comply? What does a clean data set look like, anyway?
everyone has a decision (bonus points if it is the correct one)
Phase I
review data needs with stakeholders
EADs
Admissions directors
OIR?
Marketing?
Consultants?
explore Denodo and Tableau
Identify sources of data (Slate, Hubspot, etc.)
Milestone: report of key pain points/problems to be solved with this project? Roadblocks?
Phase II
Identify core data needed for reporting:
Develop data dictionary/common definitions/crosswalk
Identify which data need to be restructured(?) and which cannot be; accommodate these differences across instances/schools/programs
Plan for how to implement any updates/new fields in each Slate instance
timed to application cycles?
auditing and correcting old data?
Develop model for operational querying and reporting out of local Slate instances, differentiate that from analytics and dashboards based in Denodo/Tableau, provide appropriate access, and support this distinction with robust retention policies in individual Slate instances.
current versus year over year
single school versus multiple
admission operations versus marketing and communications
Develop initial model/templates for enrollment analytics reports/dashboards
identify which data is required for each and how it needs to be structured
Who gets access to which dashboards?
Build out connections between systems (Denodo, Slate, DW, etc.)
Phase III
Launch initial dashboards
Process for data auditing and maintenance
Process for requesting/accommodating new data (in Slate or for Tableau reporting)
Advanced/custom reporting and dashboards (by school/program?)
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