Wheat blast and rust disease forecasts are arriving direct to farmer’s phones
An early warning system set to deliver wheat disease predictions directly to farmers’ phones is being piloted in Bangladesh and Nepal by interdisciplinary researchers.
by International Maize and Wheat Improvement Center (CIMMYT) | Apr 20, 2020 | CGIAR Updates
An early warning system set to deliver wheat disease predictions directly to farmers’ phones is being piloted in Bangladesh and Nepal by interdisciplinary researchers.
by Hannah Craig | Mar 12, 2020 | Communities of Practice, Geospatial CoP, News, Webinar
Webinar organized by the Geospatial Data Community of Practice of the CGIAR Platform for Big Data in Agriculture.
by World Agroforestry (ICRAF) | Feb 21, 2020 | CGIAR Updates, News
Complex but adaptive: a fresh look at smallholder value chains and their development
Anne
Fri, 02/21/2020 – 08:33
The post Complex but adaptive: a fresh look at smallholder value chains and their development appeared first on CGIAR.
by International Livestock Research Institute (ILRI) | Feb 14, 2020 | CGIAR Updates, Livestock CoP
A ‘lean’ household survey system for ‘minimal effort, maximum information’ comes of age.
by Hannah Craig | Feb 4, 2020 | 2019, Agronomy CoP, Blog Competition, News
This blog is a submission to the Community of Practice on Data-Driven Agronomy’s blog competition on digital extension—an opportunity for those working in the digital extension in agriculture field to share their experiences with their technologies, business models, key challenges, and major bottlenecks, as well as how they solved such challenges, when creating and implementing innovative solutions.
CGIAR Platform for Big Data in Agriculture advocates open data for agricultural research for development. It considers that opening up research data for scrutiny and reuse confers significant benefits to society.
However, the Platform appreciates that not all research data can be open and that a broad range of legitimate circumstances may require data to be restricted.
As an integral component of its advocacy for open data, the Platform promotes responsible data management through the entire research data lifecycle from planning, collecting, storing, disclosing or publishing, transferring, discovery and archiving.
These guidelines were created from information collected from: review on best and emerging practices across various sectors in the fast changing landscape of privacy and ethics (130 external resources); privacy and ethic materials sourced from seven CGIAR centers; first draft was circulated for input and feedback across CGIAR and incorporated into this edition. It’s important to note that this is an evolving document, the next stage is to consult externally for further input.
These Guidelines are intended to assist agricultural researchers handle privacy and personally identifiable information (PII) in the research project data lifecycle.
Ensure compatibility with the DMP-PII (as above) and also the purpose for which prior informed consent has been obtained
Ensure PII is stored securely to protect privacy, through organizational or project specific safeguards to prevent unauthorized access, accidental disclosure or breach of data (physical & technical)
Don’t store data in unsecured locations or on unsecured devices or servers
Don’t store encrypted data and encryption keys in locations where they can be easily accessed simultaneously
Don’t underestimate the importance and value of administrative safeguards to standardize practices (i.e. organizational policies, procedures and maintenance of security measures that are designed to protect private information, data and access)