• Stars
    star
    16
  • Rank 1,311,288 (Top 26 %)
  • Language
    Jupyter Notebook
  • License
    GNU General Publi...
  • Created over 6 years ago
  • Updated about 5 years ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Progress towards global asset localisation using remote sensing and computer vision, beginning with solar PV.

More Repositories

1

global-fossil-fuel-supply-chain

The global fossil fuel supply chain, mapped at the asset-level.
Jupyter Notebook
183
star
2

solar-pv-global-inventory

Repository for machine learning and remote sensing pipeline described in Kruitwagen, L., Story, K., Friedrich, J, et. al. (2019) , used to produce a global inventory of utility-scale solar photvoltaic generating stations.
Jupyter Notebook
124
star
3

deepsentinel

DeepSentinel: a sentinel-1 and -2 self-supervised sensor fusion model for general purpose semantic embedding
Python
40
star
4

flask-dash

A template repo to rapidly build and deploy web apps for data science projects. Built with Flask and Dash on a PostgreSQL database, complete with a user login.
Python
10
star
5

deepsentinel-osm

A repository to generate land cover labels from OpenStreetMap
Python
6
star
6

teaching_spatial_methods

A repo for materials relating to the teaching of spatial methods, MSc in SSEE 2021
HTML
5
star
7

solarpv-teamlabelling

A quick repo for collaboratively hand-labelling solar pv in remote sensing imagery
Python
3
star
8

biblio_mapper

A pipeline for capturing citation data from publications and mapping cross-referencing
Python
3
star
9

power_sector_networks

Jupyter Notebook
2
star
10

Cournot

A multi-firm generalised Cournot model
Python
2
star
11

torch-slack-sacred-HW

Python
1
star
12

hexo_static

A repo for hexo blog static files
HTML
1
star
13

UK_Capacity_Factors

A script to harvest UK generating station data and to parse and calculate capacity factors.
Python
1
star
14

shapefile_query

A tool to query a shapefile using a set of lat/lon coordinates, returning geospatial distances and queried metadata.
Python
1
star