Can Qwen3.6-35B-A3B on an RTX 3060 Replace Google Vision for Receipt-to-JSON Extraction?
Mirrored from r/LocalLLaMA for archival readability. Support the source by reading on the original site.
I tried replacing Google Vision in my receipt pipeline with a local Qwen model.
I had an old LINE message bot where I could send a receipt photo, it would go to Google Vision, get parsed into JSON, and saved in SQLite.
Recently I tried again, but locally.
Setup:
- RTX 3060 12GB
- llama.cpp
- Qwen3.6-35B-A3B 12GB-target GGUF quant
- Paperless-ngx for uploading receipt images
- output goes to JSON / SQLite
It worked pretty well.
On around 30 Japanese receipts, the fields I actually care about were consistently right:
- store
- date
- subtotal
- tax
- total
Speed was not great, but fine for this use case:
- ~31.75s per receipt
- ~11.06 GiB peak VRAM
I wrote the details here: https://rafaelviana.com/article/qwen-receipt
Is anyone else using local VLMs for boring document extraction stuff? Receipts, invoices, forms, etc.
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