AI FOR EDUCATION & EDTECH

Custom AI/ML solutions for education & edtech industry

Custom AI and ML for K-12 districts, higher-ed institutions, and edtech platforms. Personalized learning, enrollment intelligence, content moderation, and outcomes analytics — built for FERPA and accreditation.
Jan 1, 2026

New state AI-education laws (IN, KY, RI) effective — transparency and opt-out now required for AI student decisions.

RAG-required

Student PII must stay out of foundation-model training data — architecture matters more than vendor brand.

WCAG 2.1 AA

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

Enrollment, Retention & Student Success

Administrative Automation & Content

Trust, Safety & Compliance

From the playbook

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%.

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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.

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    Frequently asked questions

    How do you handle FERPA, COPPA, and state student-privacy laws?
    FERPA and COPPA compliance are non-negotiable. All training and inference happens in your environment or single-tenant cloud under a school-official designation. We use RAG architectures that prevent student PII from entering foundation-model training data. We comply with state-level student-privacy laws (CA SB 1177, NY Education Law 2-d, IN/KY/RI 2026 laws, plus 30+ state-specific frameworks).
    Yes — by default. AI-generated content (tutoring responses, summarized materials, generated assessments) ships with semantic HTML, ARIA labels, alt text, and keyboard-navigable controls. We test against AXE-core and ANDI automated scanners plus manual screen-reader review. Outputs flow into LMSes that support accessibility (Canvas, Brightspace, Schoology) without breaking compliance.
    Every model that touches student-level decisions (grades, discipline flags, performance predictions, intervention recommendations) ships with model cards, decision-explainability artifacts, and an opt-out mechanism per student/parent. Documentation supports the disclosure requirements of new 2026 state laws in Indiana, Kentucky, Rhode Island, and similar emerging frameworks.
    Yes. The underlying ML platform (data ingest, feature store, model registry, monitoring, FERPA audit logging) is reusable across customer types. Domain models differ — K-12 focuses on adaptive learning and safety, higher-ed on retention and yield, edtech vendors on personalization and content moderation — but most multi-segment players run one shared stack with multiple model families.

    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.