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  1. trinops-accounting trinops-accounting Public

    AR/AP accounting automation: branded invoices with auto-chasing, plus rules-first supplier invoice extraction from email with AI fallback only

    Python

  2. trinops-booking-pipeline trinops-booking-pipeline Public

    Email-to-booking automation: rules-first extraction, calendar availability check, PDF invoicing and confirmation emails, with an ONHOLD review queue

    Python

  3. trinops-onboarding trinops-onboarding Public

    Employee onboarding automation: welcome email, calendar events, welcome-pack PDF and Slack alert from one webhook, fault-tolerant with per-step retry

    Python

  4. Auto-admin-system-for-transfer-company Auto-admin-system-for-transfer-company Public

    An custom NER model is applied to incoming booking emails for a transfer company, their availability checked and the client responded to and invoiced (using GMail & Google Calendar API's)

    Python

  5. Prophets-of-Profit-Evaluating-Synthetic-Data-Techniques-in-Financial-Forecasting-Models Prophets-of-Profit-Evaluating-Synthetic-Data-Techniques-in-Financial-Forecasting-Models Public

    An comparative investigation into WGAN-GP, CTGAN, TimeGAN and DoppelGANger usage for generating synthetic time series finance data for use in forecasting model

    Jupyter Notebook 11 1

  6. Yolov7-litter-detection-site-E2- Yolov7-litter-detection-site-E2- Public

    Code to train an Yolov7 litter detection model and use it in a basic web app to identify litter in uploaded images

    Jupyter Notebook