Adds Home Assistant support for the National Grid's Carbon Intensity API in Great Britain.
-
Updated
Sep 10, 2018 - Python
Global climate change refers to the rise of earth's temperature, caused by human factors. It originates from the greenhouse effect of certain gases in our atmosphere like carbon dioxide (CO2) or methane (CH4) that block the escaping heat. The concentration of these gases has risen dramatically by human impact since the mid of the 20th century, with the burning of fossil fuels (oil and gas) and deforestation being main causes of this rise. The observed and expected effects include more and longer periods of draught, wildfires and an increased number of extreme weather events.
Adds Home Assistant support for the National Grid's Carbon Intensity API in Great Britain.
Overall winner of Sudo Smart City Hackathon 2019
Back-end for the eco-widgy app initiated at the 2019 Collabathon for the Open Climate Platform
Back-end for the eco-widgy app initiated at the 2019 Collabathon for the Open Climate Platform
Calculate physical quantities and metrics for CPU, GPU and DRAM. Expose them via HTTP for Prometheus consumption.
Functions for optimizing surface fluxes of some tracer to be consistent with atmospheric measurements of that tracer.
Time-series analysis for Carbon emissions prediction based on Policy decisions during COVID-19.
Implementation of EMNLP2020 accepted paper: "TopicBERT: Topic-aware BERT for Efficient Document Classification"
Poor man's carbon intensity api. Drop in replacement for latest carbon intensity api of api.electricitymap.org
Simple carbon intensity API for the GB grid
Environmental cost of metaheuristics
Open source XPRIZE carbon removal entry
Python module for interacting with the Cloverly API
Functions for optimizing surface fluxes of some tracer to be consistent with atmospheric measurements of that tracer.
The 2021 CARGO (Consumer Awareness of Real GHG Output) Hackathon (October 23-24, 2021) aims to create solutions to the problem of embedded greenhouse gas emissions created by the transportation sector, which accounts for the largest share of GHG emissions in the USA. We built a command line tool for calculating carbon emissions for domestic carg…
Increasing carbon efficiency and footprint awareness for software applications.
CLI tool to compute CO2 emissions of HPC computations following green-algorithms.org methodology
`libcbm_runner` is a python package for automating simulations of forest growth and harvesting involving the European economy, carbon budgets and their interactions.
Python library for Green Computing - uses carbon intensity APIs to make code execution low-carbon
A Python script that calculates the lower carbon footprint path among n<12 points. Has a setting to run random multitests, or you can enter the payload and points by hand. Compares the shortest path (computed dynamically) to the lower carbon footprint path. The carbon footprint is in average 10% better with the lower carbon footprint path
Created by Humanity