Home
Products
Biotechnology
Molecular Breeding Technology
Germplasm Innovation and Evaluation
Variety Test and Evaluation
Data Technology
Bioinformatics Analysis
Digital Agriculture
Biotechnology + Data Technology
Biological Intelligence & Big Data
Higentec Intelligent Manufacturing
iWMS Intelligent Management System
iLAB Intelligent Management System
Smart Assembly
Applications
Scientific Research
Government
Industry
News
Scientific and Technological Progress
Visit
Activities
Cooperation
Headlines
Company Culture
About Us
Introduction
History
Talent team
Contact Us
Join Us
Changsha
Beijing
Changjiang Delta
Greater Bay Area
Southwest China
Others
Enterprise
CH
Application Case
Research Cases
Government Cases
Industry case
100+ Smart Farm Innovation Consortium
The consortium aims to meet the needs of modern agricultural science and technology socialization, gather innovative scientific and technological forces, build an open competition, diversified and complementary, collaborative and efficient agricultural science and technology innovation system, and contribute to the construction of agricultural and rural modernization, the implementation of Rural Revitalization Strategy, the promotion of agricultural and rural informatization development and the transformation of China from an agricultural giant to an agricultural power, Enable and make important contributions to promoting the development of China's agricultural modernization.
View Details
Universe Agricultural smart agriculture construction project
Based on millet and maize breeding, the project successfully constructs an intelligent breeding base for customers by using breeding information management system, traceability system and other systems.
National high quality cotton whole industry chain big data project
The project has successfully provided customers with large-scale agricultural precision management services for more than 1 million mu of cotton fields across the country, helped customers effectively optimize the allocation of cotton field resources, evaluate the rationality of cotton planting plans, and effectively reduce the input-output ratio of cotton seed production and marketing.