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Custom AI/ML solutions for education & edtech industry
New state AI-education laws (IN, KY, RI) effective — transparency and opt-out now required for AI student decisions.
Student PII must stay out of foundation-model training data — architecture matters more than vendor brand.
Plus FERPA, COPPA, SOC 2 Type II — the compliance floor for any AI touching student data in 2026.
Achieve immediate, organization-wide results
Six measurable outcomes across underwriting, claims, and actuarial functions — deployed in months, not years.
Personalized Learning Paths
Adaptive content sequencing per student. Flags struggling learners and recommends interventions before they fall behind.
Enrollment & Yield Modeling
Per-applicant likelihood-to-enroll, financial-aid optimization, and pipeline forecasting for higher-ed admissions.
Early-Warning & Retention
Student-success models flag attendance, grade, and engagement drops 4–8 weeks before formal early-alert windows.
AI Content Moderation (Safe-for-Education)
Multi-modal classifiers tuned for K-12 and higher-ed policy with explicit FERPA / COPPA boundaries.
Administrative LLMs
Email triage, FOIA / records response, grant writing, and curriculum-alignment automation.
Research AI & Literature Synthesis
RAG-grounded research assistants over your private corpus + public literature (PubMed, arXiv, Semantic Scholar). Custom alternative to Elicit/Consensus/Scite for institutions that can't ship research data to third-party SaaS.
Capabilities across the education & edtech value chain
Personalized Learning & Outcomes
- Adaptive content sequencing per student
- Mastery and prerequisite-gap detection
- Tutor LLMs with curriculum-aligned guardrails
- Formative-assessment auto-generation
Enrollment, Retention & Student Success
- Yield modeling and financial-aid optimization
- Early-warning models for attendance and grade drops
- Student-engagement and LMS-activity analytics
- Intervention-recommendation engines for advisors
Administrative Automation & Content
- Email triage and family-communication LLMs
- FOIA / public-records response automation
- Grant writing and curriculum-alignment assistance
- Research-AI literature synthesis over private corpora + public papers
Trust, Safety & Compliance
- AI-content moderation tuned for K-12 / higher-ed policy
- Plagiarism and AI-detection with explainable scoring
- FERPA / COPPA / state-law audit trails
- Accessibility (WCAG 2.1 AA) compliance checking
How a 24-campus university system lifted first-year retention 7 points and added $18M in tuition retained
A 24-campus university system was facing 5-point first-year retention declines as the demographic cliff intensified. We built an early-warning student-success model fusing LMS engagement, attendance, grade trajectory, and financial-aid status — surfacing high-risk students 6–10 weeks before mid-semester academic alerts. Advisors received prioritized outreach lists with the specific risk driver and intervention recommendation per student (academic vs financial vs social). First-year retention lifted +7 percentage points system-wide, equivalent to $18M in tuition retained annually. The same platform now feeds yield modeling for incoming classes — improving net-tuition-revenue forecasting accuracy by 12%.
Speak with an education & edtech AI expert
A 45-minute scoping call. We’ll come prepared with your appetite, your loss-cost benchmarks, and a directional read on which models move the needle on your line of business.
Ask us about
- Adaptive learning paths and tutor LLMs with curriculum guardrails
- Enrollment yield and financial-aid optimization
- Early-warning retention models with intervention recommendations
- FERPA / COPPA-compliant ML architecture (RAG-first)
- Custom research-AI with RAG over your corpus + public literature (Elicit/Consensus alternative)
- Email and family-communication LLMs for K-12 staff
Frequently asked questions
How do you handle FERPA, COPPA, and state student-privacy laws?
Explore AI/ML solutions for education & edtech
Ready to talk education & edtech AI?
Start with a 45-minute strategy session. We come prepared with a directional read on your line of business and a scoped proposal.
