Mistral AI

LLM

About Mistral AI

Specialization
Generative AI

Mistral AI is a French artificial intelligence company that develops open-weight and commercial large language models. The company provides frontier...

  • Address: 9 Raffles Place #24-01, Republic Plaza, Singapore 048619
  • Verified Singapore presence: Physical Singapore office
  • Email: [email protected]
  • Website: mistral.ai

Data checked 10 Jul 2026 Report incorrect data

View the full Mistral AI profile on TechDirectory.

Buyer Decision Checklist

In Singapore, buying generative AI is less about which model you pick and more about what happens to your data once it enters a prompt — so anchor your evaluation to IMDA/PDPC's Model AI Governance Framework, the PDPA, and a hard look at hosting, evaluation, and cost.

How to evaluate an LLM / generative-AI provider in Singapore

  • Decide your hosting model first: have the vendor map your specific use case to hosted API vs private/self-hosted deployment, and state plainly what data leaves your control and where it sits.
  • Get a contractual answer to whether your prompts, retrieval indexes, or fine-tuning data are ever used to train a shared model — and align the terms with IMDA and the PDPC's Model AI Governance Framework for Generative AI before sending anything sensitive.
  • Treat the PDPA as a design constraint, not paperwork: you stay accountable for any personal data put into a prompt or index, so pin down access, logging, retention limits, and sub-processor controls in writing.
  • Require an evaluation against your own content before go-live — golden test sets, retrieval-accuracy scoring, and human review — and ask to see the failure cases, with AI Verify's generative-AI testing work as a reference point.
  • Model the run cost, not just the build: ask for a per-token or per-seat (and GPU/inference) estimate tied to your expected volume, plus usage ceilings or spend alerts, and a clear split between one-off build and ongoing run.
  • If you are a bank, insurer, or capital-markets firm, confirm the provider understands MAS model-risk, explainability, and human-oversight expectations rather than treating them as your problem to solve.

Verify for Mistral AI

  • Confirm key details directly with the vendor — this listing isn't vendor-managed yet.
  • Ask for two recent Singapore client references you can speak with.
  • Ask for a written scope of services before comparing quotes.
  • Request evidence of relevant certifications and their current validity.

Questions to ask

  • Does our data — prompts, retrieval indexes, or fine-tuning sets — ever train a shared model, and where is it stored and processed?
  • Can you run an evaluation against our own documents before go-live and show us the hallucination and data-leakage failure cases?
  • What does the monthly run cost look like at our expected query and user volume, and how is build cost separated from the ongoing token, GPU, or seat bill?
  • Who owns the prompts, fine-tuned weights, and generated outputs, and what guardrails make the system refuse rather than guess?
3/100

Verified Score

Earned from verified Singapore signals only — never affected by paid plans. How it works.

  • ACRA-registered entity (UEN) No UEN on file 0/20
  • Verified ownership Unclaimed 0/10
  • Government grant eligibility None recorded 0/15
  • CSA cybersecurity trustmark None / expired 0/15
  • Listed certifications None listed 0/10
  • Verified local reviews No reviews yet 0/20
  • Profile completeness 3/10 completeness 3/10