Private review page · noindex

Cristallo NECTEC - Dossier Review

Version française

CRISTALLO DOSSIER - NECTEC · Public Candidate Version

July 1, 2026. Public candidate after gate corrections. Critical Fix Round patch applied.


1. WHO WE ARE

Cristallo is a human-AI collective based in Thailand: one human (Jonas) and a team of AI assistants. We build Saphan (สะพาน = the bridge): a local-first, Thai-first AI ecosystem that lets anyone run powerful open models on their own machine.

Why Thailand

Jonas first came to Thailand through his grandfather who lived here. In January 2026, he bought a ticket without knowing exactly what he would build. On March 11, 2026, he discovered artificial intelligence and dedicated himself to it fully. The simplicity of Thai life - the market, the sea, football with Thais - lets him focus on what matters.

Why This Project

When Jonas was a child, people mainly tried to "channel" him instead of understanding he learned differently. Today, seeing Thai students bored in class like he was 15 years ago, he is building the tool he would have wanted: a companion that proposes paths adapted to the learner's needs, without labeling students as weak or strong.

Our Condition

Cristallo remains independent in its product direction. The code is open-source (MIT/Apache): any funder, including NECTEC, may use it, modify it, and redistribute it freely, with no exclusivity or sole ownership rights by any party. User data stays on their own machines. Should the tool ever be used for control rather than learning, Cristallo would withdraw its name and support, and such use would violate the license.


2. THE PROBLEM

Thailand Depends on Foreign Tech

FACT: BOI approved 96 billion THB in foreign datacenter investments (2024-2025). Google (1B USD), AWS (5B USD), Microsoft (1B USD), TikTok (3.76B USD) are building in Thailand. The cloud infrastructure is overwhelmingly operated by foreign companies.

FACT: 70-80% of cybersecurity equipment used in Thailand is imported (US International Trade Administration, April 2026).

FACT: Thailand's government IT budget depends heavily on foreign licenses. The Cloud First policy pushes public entities toward clouds operated by US hyperscalers.

BUT: Thailand is beginning to react. Baker McKenzie (April 2026) reports the government is considering restrictions on foreign datacenter ownership.

Thailand is already building its national AI capabilities - ThaiLLM, Pathumma, Typhoon, OpenThaiGPT, and LANTA. Cristallo does not claim to replace these initiatives. The gap we target is the last mile: making these capabilities usable by non-specialist teachers, locally, offline, with proof and a pedagogical interface.

Thai Education Is Stuck

FACT: PISA 2022 - only 32% of Thai students reach level 2 in mathematics (69% OECD). 1.02 million children outside the school system (UNICEF, 2023).

FACT: 37,000 schools, 6.5 million students. Class sizes of 40-50. Education budget: 455.6 billion THB/year. But the conversion into practical skills is near zero.

FACT: Singapore has mandatory "Code for Fun" in primary. Finland practices phenomenon-based learning. China enforces structured AI education. Vietnam integrates STEM into the curriculum. Thailand already has programs like Coding Thailand and TH AI Academy; Cristallo complements these existing programs with a practical local step.


3. OUR SOLUTION

Saphan - The Local Companion

Laan - The Community

Data Governance / PDPA (Pilot)

The Inter-Model Bus (EMOJING)

Pedagogical Foundation

Saphan is not a chatbot. It is a learning companion designed within the framework of social constructivism (Vygotsky): the AI acts as a "more competent peer" in the student's Zone of Proximal Development. It does not give the answer. It asks the next question.

Design Principles:

Why This Approach: UNICEF and UNESCO evaluate EdTech projects on their explicit pedagogical foundation. Saphan is first and foremost a tool of trust and accompanying presence, not a simple answer generator.

Pedagogical KPIs (12-Week Pilot)

KPIInstrumentFrequencyTarget
Subject progressionAdapted MCQ (10 questions, pre/post)Start / end of cycle+15% average
Student engagementSession logs (duration, interactions/week)Weekly> 30 min/session
Self-reported confidenceAdapted Thai scale (General Self-Efficacy, Schwarzer)Start / mid / endSignificant increase
Question rateStudent questions/session counterWeekly> 20% growth over 12 weeks
Teacher retention rateContinued usage after trainingMonthly> 80% of teachers active at M3

Teacher Training

The two levels are complementary, not contradictory: one gets a teacher started, the other certifies classroom deployment.

Known Limits

Regional Linguistic Equity: Isan, Southern Thai, and Deep South Malay are currently less well served by existing models than Central Thai. The pilot will measure this gap explicitly, with the goal of publishing results by linguistic region. This is an honest limit, not a hidden blind spot.

No Prior Pilot: No class, no student has yet used Saphan (M3 - WORLD_ACTION). The 12-week pilot is the first real contact with the field. The KPIs above are the instruments for this first measurement, not already-obtained results.

Bus Factor = 1: The project currently rests on a single human lead. A Thai co-lead is being identified (M6 - WORLD_ACTION). Until then, the open-source code (MIT) and the NECTEC transfer at month 12 guarantee continuity regardless.


4. WHY NOW

The Open Model Window

FACT: International open models are available today, but their availability, licensing, sizes, and usage terms can change depending on checkpoints and providers. Cristallo does not build the school pilot on a single dependency on any foreign model.

FACT: Proprietary frontier models are controlled by their providers. Access, pricing, terms of use, and data processing remain dependent on external decisions.

Conclusion: The school pack must remain local-first, verifiable, and primarily based on Thai or Thai-specialized models whose license and checkpoint are confirmed before submission. International models serve as technical comparators, not a central dependency.

LINE Is a Channel; Saphan Is the Local Layer

FACT: LINE is a major social infrastructure in Thailand. For a school, it can remain the natural communication channel with students, parents, and teachers.

Limit We Address: messaging tools and cloud assistants generally remain hosted, closed, and difficult to audit at the school level. They do not replace a local, offline, and verifiable layer for learning.

Cristallo Position: LINE remains a communication channel. Saphan is the local learning engine. Not competing. Complementary.


5. WHAT WE ARE ASKING FOR

RequestDetail
School Pilot5-10 schools, 12 weeks, 1 machine per school, 1 champion teacher
LANTA Access108 free SHr (ThaiSC POC) for benchmarking Thai models
Thai Human EvaluatorValidation of responses by a native speaker
NECTEC MentorshipInstitutional framing, access to ThaiLLM corpus, endorsement letters
Legal Framework / VisaIdentify the appropriate route before any funded work: SMART Visa, BOI/TIESC, institutional affiliation, or other confirmed legal framework
Receiving EntityCristallo does not yet have a Thai entity. Before any disbursement: establishment of an eligible structure (company with local participation, association, or social enterprise) or attachment to a Thai host institution (partner school, university, or NECTEC) which receives the funds and contracts the lead

Estimated Budget (12 Months)

LineTHB
Pilot product coordination & operations - milestone-based disbursement600,000
Compute / electricity300,000
Thai proofreaders / testers200,000
Infra / domains / tools100,000
Pilot costs (schools)200,000
Contingency200,000
Total~1,600,000

Proposed Disbursement Milestones

MilestoneCondition
M1 - Installable Demo.exe, local model, standard machine benchmarks
M2 - Security GateProtocoled kill-tests, PDPA/safeguarding written up
M3 - Pilot5 confirmed schools, 1 champion teacher per site
M4 - ImpactStudent artifacts, feedback, offline usage
M5 - Month 13Maintenance plan, transfer, Thai structure

6. WHAT WE DELIVER

  1. A documented pilot: results, usage rates, student artifacts, teacher feedback.
  2. An "AI for Thai by Doing" module in two levels: quick onboarding to launch a first activity, then full certification before classroom deployment.
  3. Packaged models for local use: Typhoon 2.5 4B and, pending validation, Pathumma/OpenThaiGPT; exact license verified by checkpoint before inclusion.
  4. A Thai safety classifier: Thai lexicon + kill-tests under consolidation, with timestamped results to be attached before submission.
  5. A ลาน community in preparation: first resources published, first users to be confirmed.
  6. Open-source code (MIT): if Cristallo stops, everything remains usable.

Student Protocol (Safeguarding)


7. PROPOSED KPIs (12 Months)

KPITarget
Active pilot schools5-10
Student artifacts produced50+
Sessions without external API>80%
Confidence score "I dare to ask a question"+30% vs baseline
Objects published on ลาน50+
Thai models benchmarked (local)4+

8. THREE SCENARIOS

LOW (30%) - Continued Cloud Dependency

Cloud interfaces become dominant. Thai models remain difficult to use locally by schools. Schools adopt SaaS. Cristallo remains a pilot.

BASE (50%) - Slow Local Adoption

PDPA applies to EdTech. NECTEC funds 2-3 projects. 50 schools adopt Saphan. 200 regular users.

HIGH (20%) - Thailand-Owned Education AI Layer

Thai open models mature. Schools and institutions seek solutions they control locally. Cristallo becomes a reference usage layer for educational AI in Thailand.


9. CONTACT

Pre-Submission Review Method

The dossier was reviewed by committee simulations and specialized personas: technical, pedagogical, legal/PDPA, budget, institutional, and Thai cultural. These simulations do not replace human review by Thai experts; they serve to detect blockers earlier, reduce discussion time, and propose corrections before submission.


10. APPENDIX - Local Infrastructure

Dependence on Foreign Datacenters

FACT: BOI approved 96.3 billion THB in foreign datacenter investments. Google (Chonburi, 1B USD), AWS (5B USD), Microsoft (1B USD), TikTok/ByteDance (3.76B USD). US hyperscalers operate the bulk of Thai cloud infrastructure.

BUT: Baker McKenzie (April 2026) reports Thailand is considering restrictions on foreign datacenter ownership. The government is becoming aware of the dependency.

Our Response: our server hosted in Thailand. A machine under our direct operational control, used to test local inference, storage, and deployment patterns without depending on any foreign API at runtime.

LANTA - The National Supercomputer

SpecificationValue
GPUs704 × NVIDIA A100 (40 GB)
CPUsAMD EPYC 7713, 31,744 cores
Performance8.15 PFLOPS (Rmax), 13.77 PFLOPS (Rpeak)
Storage10 PB
Academic cost15 THB/SHr for government/education; GPU node = 3 SHr, i.e. 45 THB/GPU hour (published ThaiSC pricing)
Free POC108 SHr + 5 TB, 45 days

Local Continuity Plan

If access to foreign models tightens - what remains?

School pack candidates - to be finalized before submission:

Public rule: no GB total, no license, and no "distributable" status are announced until the checkpoint, license, and local availability are confirmed.


11. APPENDIX - Regional Perspective

If the pilot succeeds in Thailand, the same local-first pattern could later inspire neighboring countries with similar needs in language, education, and local data control. No expansion is planned before proof of national traction.


12. APPENDIX - Technical Architecture

Saphan Desktop Stack

EMOJING Bus (Inter-Model)

Security


Public candidate document. Gate corrections applied: internal names removed, local control terms prioritized, scenarios softened, regional perspective reduced, no out-of-scope topics.