Lectur · Adaptive LMSIn closed pilot

Learning that adapts.Teaching that scales.

Adaptive quizzes, spaced repetition, an AI tutor that reads each student's profile, and a teacher dashboard with cohort analytics. One LMS for everything a classroom needs.

Status
Piloting with leading Quebec institutions
Available in
English · Français
concordia.lectur.ca / c / mcb-3010 / quiz
Screenshot of an adaptive quiz session in Lectur, showing a DNA replication question and the student's mastery sidebar.
In closed pilot

In closed pilot with Quebec institutions.

Secondary, collegiate, university, and continuing-education contexts. Same platform, different shapes.

Secondary
High schools
Adaptive quizzes from sec. 1 onward.
Collegiate
CEGEPs
Multi-program, multi-campus, bilingual by default.
Tertiary
Universities
Per-faculty branded subdomains, SSO, LTI roadmap.
Professional
Business & executive
Cohort-based mastery tracking for continuing education.
Platform

One LMS. Three things it does well.

An adaptive learning engine, a teacher dashboard, and an enterprise-ready deployment — built to work together, not bolted on.

01 / Intelligence

Adaptive learning engine.

Models each student's knowledge individually.

  • Adaptive quiz enginePer-student mastery scoring. Sessions pause and resume without losing state.
  • FSRS spaced repetitionThe current state-of-the-art scheduler for long-term retention.
  • Knowledge componentsMastery tracked per concept, not per chapter.
  • AI tutorAware of each student's profile, misconceptions, trajectory.
  • Learning MapA zoomable topic constellation per course.
02 / Productivity

Teacher dashboard.

Cohort visibility and AI grading.

  • Teacher dashboardCohort heatmap, at-risk roster, today's actions.
  • AI auto-gradingPer-answer feedback on every submission.
  • Assignment builderConfigurable rubrics, mixed question types.
  • Real-time analyticsTopic-level mastery, prediction cards, trends.
  • Semantic searchAcross every data source in the course.
03 / Deployment

Enterprise-ready.

SSO, multi-tenant, branded to your institution.

  • SSOOIDC & SAML with per-tenant encrypted config.
  • Multi-tenantSubdomain per organization.
  • BrandingPer-tenant color, logo, domain.
  • BilingualEnglish & French at every surface.
  • Access controlOwner, admin, teacher, student roles.
Product

The teacher dashboard, the Learning Map, the AI tutor.

All three read from the same student model — the quiz, the dashboard, and the tutor agree on what a student knows.

01 / Teacher dashboard

One view of the cohort.

KPI strip, cohort heatmap, at-risk roster, and prioritized actions for the week. The data under it is the same student model that the quiz engine uses.

  • Cohort heatmap — students × topics, live mastery.
  • At-risk roster — trajectory-ranked, evidence-backed.
  • Today's actions — prioritized by student model.
concordia.lectur.ca / dashboard
Teacher dashboard showing a dark navy hero band, stat cards, assignment funnel, cohort mastery heatmap, and a today's-actions list.
02 / Learning Map

A live map of each student's knowledge.

Topic graph per course. Each node is a knowledge component, colored by mastery, wired by prerequisites. Click a node to open the quiz for that concept.

  • Mastery-colored — every node reflects live progress.
  • Prerequisite graph — topology, not alphabetical order.
  • Drill-down drawer — deep-link to the adaptive quiz.
concordia.lectur.ca / c / mcb-3010 / learning-map
Learning Map canvas with rectangular topic nodes — some mastered, some in progress, some unlocked — connected by prerequisite edges.
03 / AI tutor

An AI tutor with the student's profile loaded.

Chat sessions start with the student's current mastery, active misconceptions, and the recommended next step already in context. Not a generic chatbot.

  • Profile-aware — mastery, misconceptions, trajectory.
  • Evidence-backed — cites the student's own data.
  • Source-grounded — reads the course's data sources.
concordia.lectur.ca / c / mcb-3010 / tutor
AI tutor chat panel showing a student question, the tutor's reply citing the student's misconception, and a live profile panel on the right.
How it works

From setup to a running cohort.

Four steps. A course is typically live within a week.

1. Set up your course

Create a course, upload PDFs, lecture slides, textbooks. Lectur extracts topics and knowledge components automatically.

2. AI generates content

Adaptive quizzes, lessons, and practice questions are generated from your materials. Every item tagged by knowledge component.

3. Students learn adaptively

FSRS spaced repetition, AI tutor that reads each student's profile, Learning Map that grows with them.

4. Educators stay in control

Dashboard surfaces who needs help. AI auto-grades. Assignment funnel tracks the whole class.

Research foundations

Built on published research.

The algorithms behind Lectur are not our invention — they're the current best-in-class in learning-science literature.

REF 01

FSRS spaced repetition

The current state-of-the-art spaced-repetition scheduler.

Ye, J., Su, J., Cao, Y. FSRS: An evolution of the SM-2 algorithm, 2024.

REF 02

Knowledge-component mastery

Tracks mastery per concept, not per chapter.

Koedinger, K., McLaughlin, E., Stamper, J. A data-driven approach to the discovery of learning curves, 2012.

REF 03

Bayesian trajectory prediction

Projects each student's mastery under three scenarios to surface who needs help before the midterm.

Yudelson, M., Koedinger, K., Gordon, G. Individualized Bayesian Knowledge Tracing Models, AIED 2013.

Roadmap · 2026–2027

What's shipped. What's next.

Quarterly cadence. Every item below is committed work, not a wishlist.

Quarterly cadence
You are here · Q2 2026
Q1 2026
Shipped

Foundation.

  • Adaptive quiz engine
  • Multi-tenant architecture & SSO scaffolding
  • Collaborative documents, discussion forums
  • Course authoring wizard & lesson builder
  • Data-source uploads (PDFs, slides, textbooks)
Q2 2026
In progress

Intelligence, dashboard, enterprise readiness.

  • FSRS spaced repetition & KC mastery
  • Learning intelligence layer & Learning Map
  • Teacher dashboard with at-risk detection
  • Gamification — XP, streaks, quiz challenges
  • SSO (OIDC + SAML), bilingual EN / FR, branding
  • SOC 2 readiness, incorporation, vendor & legal docs
Q3 2026
Next

Personalization & reach.

  • Mobile-responsive across every surface
  • Deeper AI data integration & per-student personalization
  • LTI 1.3 integration — phase one
Q4 2026
Later

Deeper exam prep.

  • AI writing & long-answer grading
  • Exam simulation — timed, multi-topic mocks
  • Predictive grade forecasting

Dates reflect commitments to our pilot institutions, not a wishlist.

Request a demo & quote

Bring Lectur to
your institution.

Every institution is different — cohort size, rollout timeline, add-ons. Tell us about yours and we'll come back with a demo and a pricing proposal sized to the context. No commitment, no pressure.

  • A live demo tailored to your cohort
  • Pricing proposal sized to your institution
  • Dedicated onboarding and rollout support