Nexority Infotech

Technology

AUTOMATING PERMIT PARSING FOR AN EDTECH CLIENT AND ACHIEVING 80% FASTER PROCESSING

ai driven assesment genaration

Background of
the study

An Edtech client approached Nexority Infotech with a critical need
to automate their permit parsing process. Their existing manual
system was slow, error-prone, and unable to handle the
complexity of nested hierarchies and unstructured data. The
client’s objectives were:

Challenges

  1. Handling Nested Hierarchies: Extracting data from deeply nested sections while maintaining context.
  2. Improving Accuracy: Ensuring high accuracy in data extraction despite unstructured and low-quality documents.
  3. Balancing Performance and Scalability: Developing a solution that could process large volumes of permits quickly without compromising accuracy.
  4. Integration with Existing Systems: Providing structured outputs compatible with the client’s data pipelines.

 

Nexority’s Solution 

  1. Dataset Preparation
    Converted permit PDFs into images and annotated them using LabelMe to create a diverse training dataset of sections, subsections, and tables.
  2. Model Selection & Fine-Tuning
    Chose the Faster R-CNN model from Detectron2 and fine-tuned it on the dataset by adjusting hyperparameters like learning rate and batch size for improved accuracy.
  3. Custom Parsing Logic
    Implemented regex-based logic to extract data from nested hierarchies and complex document structures.
  4. Integration with Permit Parser
    Integrated the trained model into the NexoParser app to automate data extraction, outputting structured results in JSON and Excel formats.

 

Results & Impact 

  • Time Savings – Manual processing time was reduced by 80%, allowing the team to focus on high-value activities.
  • Increased Accuracys – Data extraction accuracy improved to 93%, minimizing errors in nested and complex information.
  • Faster Processing –  Documents were processed four times faster, enabling the client to handle more permits in less time.
  • Cost Savings – Automation reduced operational costs by 30%, optimizing resource allocation.
  • Enhanced Usability – Structured outputs in JSON and Excel formats simplified data analysis and reporting.

Send Message