Research Papers

Sudar and the Adaptive Learning Layer (ALP) are described in academic work. Below is the primary paper, its key contributions, the full abstract, and a formatted citation.

Preprint · arXiv submission pending

Learning That Remembers You

An Open-Source AI-Native Learning Platform and Plugin Architecture for Longitudinal Learner Modelling at Scale

Dhanikesh Karunanithi·Sudar / ALP Project·2026·15 pages · 37 references
adaptive learningintelligent tutoringlearner modellingdigital learner twinopen-source LMSmultimodal learningLLMs in educationplugin architectureAI-native education

Abstract

Traditional learning management systems (LMSs) deliver static, one-size-fits-all content with no longitudinal learner model and no adaptive tutoring. Intelligent tutoring systems (ITS) that do adapt remain either narrow-domain research prototypes or products disconnected from the course-hosting infrastructure most organisations already use.

We present Sudar, a fully open-source, AI-native learning system released under the Apache 2.0 licence, making three contributions: (1) the Sudar reference platform (LAMP), a working implementation unifying authoring, delivery, and intelligence around a persistent Digital Learner Twin, adaptive sequencing, six multimodal delivery formats, an AI tutor with longitudinal cross-session memory, bounded agent orchestration (SudarAgents), and consent-gated generative personalisation; (2) the Adaptive Learning Layer (ALP), a novel plugin architecture enabling these capabilities to be deployed as independently installable services on top of existing LMSs without requiring platform replacement; and (3) an economic analysis demonstrating the full capability set can be delivered at a per-learner AI infrastructure cost below $0.02 per month, exceeding a 99% reduction relative to both incumbent commercial LMS licensing fees and proprietary AI provider stacks.

The reference implementation is open source (Apache 2.0), grounded in a broad learning-science evidence base, and designed as an extensible bedrock on which the community can build additional modalities, intelligence plugins, and LMS connectors.

Repository (GitHub)·arXiv link will appear here upon submission. See docs/research/ in the repo for the current draft

Three primary contributions

Each contribution addresses a distinct gap: the architectural gap, the integration gap, and the economic gap.

01

LAMP: Reference Platform

A fully open-source, working implementation of an AI-native learning system that unifies authoring, delivery, and intelligence around a persistent Digital Learner Twin, adaptive sequencing, six multimodal delivery formats (text + read-along TTS, animated video, audio podcast, mindmap, flashcards, SCORM), bounded agent orchestration (SudarAgents), and an AI tutor with longitudinal cross-session memory and consent-gated generative personalisation.

02

ALP: Adaptive Learning Layer

A novel plugin architecture enabling Sudar's capabilities (learner memory, adaptive tutoring, next-best-action recommendations, and modality choice) to be deployed as independently installable services on top of existing LMSs (Moodle, Canvas, Blackboard) without requiring platform replacement. Architecturally aligned with Moodle 4.5's AI subsystem. Potential reach: 500 million registered Moodle users across 233 countries.

03

Economic Analysis

Empirically observed infrastructure cost data demonstrating a >99% cost reduction relative to both incumbent commercial LMS licensing fees and proprietary AI provider stacks. Full AI-native personalised learning delivered at $0.021 per learner per month (less than the cost of a single SMS) using open-weight models and zero-cost TTS. All figures verified against Q1 2026 provider pricing.

Capability comparison

Table 1 from the paper. Sudar + ALP compared with representative systems.

Cost column shows AI infrastructure only at 1,000 learners per month (Q1 2026).

FeatureSudar + ALPKhanmigoLearnLM (Google)Typical LMS + AI
Learner modelLongitudinal Digital TwinSession-scopedStatelessNone
Tutor memoryCross-session, cross-courseWithin sessionNot claimedStateless
Open learner model✓ (inspectable + editable)NoNoNo
Modalities6 (text/listen/video/podcast/map/cards)TextText / slides / audio / mapText / video
Augments existing LMS✓ (ALP)NoNoN/A
Open source✓ Apache 2.0NoNoRarely
Cost (1,000 learners/mo)~$21~$4,000N/A$3,400-$44,000

Infrastructure cost at 1,000 learners / month

Table 3 from the paper. Empirically observed Q1 2026 pricing. AI infrastructure only; hosting costs excluded.

Supabase free tier: $0. Studio / Learn on Vercel free tier: $0. Intelligence on Railway / Render: about $5-$10/month at moderate traffic.

StackPer learner / moAnnual (1,000)
Sudar (Together AI 8B + Edge-TTS)$21$252
Sudar (Together AI 70B + Edge-TTS)$105$1,260
Self-hosted (Ollama + open-weight, GPU)~$0*~$0*
GPT-4o + OpenAI TTS-1$3,405$40,860
Claude 3.5 Sonnet + Azure TTS$3,735$44,820
Docebo (platform licence, low end)$5,830+$69,960+
Sana Labs (est., min. 300 seats)~$15,000~$180,000

*Self-hosted ~$0 per API call after hardware provisioning; excludes amortised GPU hardware. Sudar achieves a >99% cost reduction relative to both proprietary AI stacks and incumbent LMS platform fees.

Cite this paper

When using Sudar or ALP in research or derivative work, please cite:

BibTeX

@misc{karunanithi2026sudar,
  author    = {Karunanithi, Dhanikesh},
  title     = {Learning That Remembers You: An Open-Source
               {AI}-Native Learning Platform and Plugin Architecture
               for Longitudinal Learner Modelling at Scale},
  year      = {2026},
  url       = {https://github.com/Dhanikesh-Karunanithi/Sudar},
  note      = {Sudar / ALP Project. Apache-2.0 licence.
               arXiv preprint pending.}
}

APA

Karunanithi, D. (2026). Learning That Remembers You: An Open-Source AI-Native Learning Platform and Plugin Architecture for Longitudinal Learner Modelling at Scale. Sudar / ALP Project. Apache-2.0 licence. arXiv preprint pending. https://github.com/Dhanikesh-Karunanithi/Sudar

Reproducibility artefacts

All documents referenced in Appendix C of the paper are available in the repository:

  • docs/ALP_API.mdALP HTTP endpoint reference, field mappings, and integration examples
  • docs/AGENTS_PLATFORM.mdSudarAgents mission catalogue, tool catalogue, and security model
  • docs/research/COST_WORKSHEET.mdVersioned cost assumptions; fill and update at time of deployment
  • docs/research/EVALUATION_APPENDIX.mdScope and limitations for each empirical claim
  • docs/research/PILOT_PROTOCOL.mdIRB-ready pilot study protocol
  • scripts/benchmark-sudar.mjsAutomated latency and token measurement script
  • ECOSYSTEM.mdFull schema, event model, and API surface
  • RESEARCH_FOUNDATION.mdEvidence-to-feature mapping (37 citations)