Intelligent Receipt OCR

Reciept Automation

Receipt processing can be a daunting task. Due to the huge variations in in receipts, classical approaches to document interpretation has proved insufficient. Lucidtech's machine learning models can easily be trained to interpret receipts in any language and in any format.

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Relevant training data is critical for any machine learning model. Train powerful ML models on your receipts and enjoy human level accuracy.

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No templates or rules

Free yourself from maintaining complex rules, and let our machine learning models do the job for you.

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Our API can be integrated in existing software in a matter of hours. We provide SDKs for major languages.


Accurate data extraction
from any receipt.

With Lucidtech's proprietary end-to-end machine learning models for data extraction, every prediction comes with a confidence. This enables you to know when the results can be trusted and when manual verification is needed.

Use cases

Lucidtech's Receipt API can be used in a broad range of applications, from automating data entry in expense software to RPA.


Expense automation

Automate your expense and reconciliation processes. Increase efficiency, and reduce time and cost.


ERP Software

Spend your development resources on differentiating your business. Let us take care of receipt data capture.


Robotic Process Automation (RPA)

Don't allow unstructured receipts be a showstopper in RPA.

How can I get started?

Training your own receipt automation model is easy. No machine learning expertise is required, and you can get up and running in a matter of days!


Collect training data from your ERP system, database or archive.


Train our machine learning models on your data. The training process usually takes 2-5 days.


Your newly trained API is ready to automate your business process.

Learn more about the training process in the documentation.