Model garden

OmniParser

Instantly via the EU router or as a dedicated GPU deployment. Data stays in Europe.

This model hub includes a finetuned version of YOLOv8 and a finetuned BLIP-2 model on the above dataset respectively. For more details of the models used and finetuning, please refer to the paper.

microsoft/OmniParser
text+image->text · microsoft · EU-hosted
Parameters
Context window
24GB
Minimum VRAM
POST /api/v1/chat/completions200 OK

Specifications

Minimum VRAM 24 GB
Architecture Blip2ForConditionalGeneration (vLLM)
License mit
Modality text+image->text
Released October 2024
Publisher microsoft ↗

Pricing

€0.10
Input (per 1M tokens)
€0.18
Output (per 1M tokens)

Shared EU router, pay-per-token, scale-to-zero. Dedicated GPU deployments are billed hourly — see pricing.

Call it now

Drop-in replacement for OpenAI: change only the base URL and API key. The Anthropic format (/v1/messages) is supported too.

curl https://hostyourai.com/api/v1/chat/completions \
  -H "Authorization: Bearer hyai-..." \
  -H "Content-Type: application/json" \
  -d '{
    "model": "microsoft/OmniParser",
    "messages": [{"role": "user", "content": "Hello!"}]
  }'

Frequently asked questions

Can I run OmniParser in the EU?

Yes. HostYourAI runs OmniParser on GPUs in European datacenters via vLLM. Prompts and outputs never leave the EU and there is no US cloud provider in the chain.

Is hosting OmniParser GDPR-compliant?

Yes. All processing happens inside the EU, a Data Processing Agreement (DPA) is available and the subprocessor list is public. Open-source weights also mean: no training on your data.

How much does OmniParser cost?

Via the shared EU router you pay €0.10 per million input tokens and €0.18 per million output tokens, with no fixed costs. For high volume or isolation you can also run OmniParser as a dedicated hourly GPU instance.

Is the API OpenAI-compatible?

Yes. You use the standard OpenAI SDKs with a custom base URL (https://hostyourai.com/api/v1). The Anthropic Messages API is supported as a drop-in as well.

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