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  1. nhs_time_of_travel nhs_time_of_travel Public

    Forked from nhsx/nhs_time_of_travel

    This GitHub repository and accompanying webpage contain the initial proof of concept and exploratory analysis for the design of a holistic and interactive mapping tool to support decision-making in…

    HTML 1

  2. gp_mapping gp_mapping Public

    Plotly chart and folium map visualizing the number of patients registered at individual GP practices in the London Commissioning Region (Y56).

    HTML 1 3

  3. nhsx/AIF_Allocation_Tool nhsx/AIF_Allocation_Tool Public

    Forked from nhsengland/AIF_Allocation_Tool

    This project is a tool built in Python to assist Integrated Care Boards (ICBs) to perform need based allocation based on defined place. It uses the most recently produced GP Registered Practice Pop…

    Python 4 7

  4. fetch-boundaries fetch-boundaries Public

    Forked from ebmdatalab/fetch-boundaries

    NHS organisation shapefile boundary fetching script for the DataLab OpenPrescribing platform

    Python 1 1

  5. antibiotic_cost antibiotic_cost Public

    Plotly chart and folium map visualizing the prescribing cost of the antibiotics Amoxicillin, Doxycycline Hyclate and Caefalexin for Clinical Commissioning Groups (CCGs).

    HTML 4 4

  6. ae_attendances_modelling ae_attendances_modelling Public

    This repository contains the raw data and a python notebook to ingest historical A&E attendance data and then use a simple Prophet model to predict the number of A&E attendances in England if the C…

    Jupyter Notebook 2 1