SchoolAI

https://schoolai.com/

Teacher-created "Spaces" (structured AI workspaces) where Dot, the student-facing assistant, guides learners through agendas. Student interaction data — completion, errors, time-on-task — surfaces to teachers via dashboards. Memory is within-space session context; the teacher holds the persistent profile, not the AI itself.

At a glance

Type
Teacher-configured Spaces with observable session logs
Tier
T2
Created
2023 (co-founded January 2023 by Caleb Hicks Kevin Morrill Cahlan Sharp; Lehi UT)
Latest release
not applicable — not OSS
License
not applicable — not OSS
GitHub
not applicable — no GitHub repo
Pricing
Free tier available; paid depends on student count/features
Funding
Seed · 2023-01

Taxonomy

storage
relational
retrieval
injection
persistence
cross-session
update
append-only
unit
episode
governance
auditable
conflict
append

When to use

Optimised for: learner profile + spaced repetition + assessment-driven adaptation

Anti-fit: not for non-educational use cases

Pros & cons

Pros

Strongest teacher-visibility layer in this set — all student AI interactions are logged and observable, directly addressing the oversight gap in consumer AI tools used in classrooms.

Cons

Persistent "memory" is a teacher-readable log, not a student-facing adaptive model; no mechanism for the AI to carry context across different Spaces or subjects.

Claims & capabilities

1M+ classrooms in 80+ countries; 400+ district partnerships. Raised $25M April 2025.

Technical surface

API surface
searched not found
Backend storage
searched not found
Deployment
Web (K-12 classroom deployment)
Embedding model
searched not found
Multi-tenancy
searched not found
MCP
no MCP support advertised — vertical product, no MCP server / client integration documented
A2A
no A2A protocol support advertised — vertical product, no A2A integration documented
OpenTelemetry
no OpenTelemetry integration advertised — vendor logs/observability not publicly documented

Similar systems

Other vertical / domain-specific ai memory in the catalog, ranked by inbound references.

  • NVIDIA ReMEmbR T3

    Builds long-horizon memory by captioning video segments with VILA, storing captions with timestamps + 3D position coordinates in MilvusDB. At query time, LLM iterates retrieval across text, time, and position modalities. Deployed on Nova Carter robot (Jetson Orin).

  • Abridge T1

    Clinician-assist ambient documentation. Source mapping: every AI-generated summary element traced back to the source utterance. Audit-and-trust layer over episodic memory. Built on proprietary 1.5M+ medical-encounter dataset.

  • ASAPP GenerativeAgent T1

    Treats memory as first-class architecture. Captures the digital footprint of every interaction; retrieves preference and history at engagement time. Public example: airline knowing a frequent flyer wants aisle seats with her son — preference-aware, not just history-lookup.

  • BenevolentAI T1

    Target identification / drug repurposing / mechanism tracing. 85+ data sources, petabyte-scale, rebuilt every few weeks. Wet-lab results re-enter the graph and shift downstream predictions — institutional experimental memory closing a feedback loop.

  • Causaly T1

    Drug discovery / target identification / causal mechanism tracing. The graph is the memory: 7 years of curated biomedical cause-effect relationships compounding with each new ingestion. Scientific RAG retrieves from a versioned causal substrate.

  • Character.ai T1

    Chat Memories (user-defined facts), auto-memories for c.ai+ subscribers, pinned memories, in-context retention. PipSqueak 2 model (April 2026) reduces in-conversation drift. Memory Visualization meter forthcoming.

Row last verified 2026-05-14. Catalog data is CC-BY-4.0 — see how to read this.