REPORT ATTRIBUTE | DETAILS |
---|---|
MARKET SIZE (2032) | USD 3.48 Billion |
MARKET SIZE (2024) | USD 1.23 Billion |
CAGR (2023-2029) | 15.17% |
HISTORIC YEAR | 2019 |
BASE YEAR | 2023 |
FORECAST YEAR | 2032 |
BY TYPE | Cloud On-Premises |
BY APPLICATION | Farm Analytics Livestock Analytics Aquaculture Analytics |
GEOGRAPHIC ANALYSIS | North America, Europe, Asia Pacific, Latin America, and Middle East & Africa |
KEY PLAYERS | IBM Corporation, Deere & Company (John Deere), Trimble Inc., SAP SE, Monsanto Company (acquired by Bayer AG), Taranis, Farmers Edge, Agribotix LLC, Ag Leader Technology, The Climate Corporation (a subsidiary of Bayer AG). |
Introduction:
This sector is experiencing a coronation with technological solutions changed the way of our life which can be best explained through agriculture, without doubt being backbone for human livelihood. Agricultural analytics is undoubtedly one of the outcomes and stands out as a game changer, with consequences that transform farming forever. Increased reliance on data-driven decision making in agricultural practices is driving growth of the Agriculture Analytics market. Agricultural data analytics refers to using the tools and techniques of data analysis on a large or small scale depending upon farm size, end use requirements, financial situation, need to optimize crop health etc. This entails insights on soil health, weather conditions, crop performance and market trends. This data can provide farmers with actionable insights to help them improve their processes, cut down wastage and boost productivity. On the surface, agricultural analytics is really about connecting Internet of Things (IoT), devices and remote sensing technologies through software platforms.
Global Agriculture Analytics Market Size Was Estimated At USD 1.23 Billion In 2023 And Is Projected To Reach USD 3.48 Billion By 2032, At CAGR Of 28.57% (2024-2032)
Distributed Sensors: Soil sensors and weather stations are continuously monitoring farm environment. The data that is collected flows through processing algorithms to make real-time recommendations and predictions. If you are for exmaple a farmer, similar like being informed on possible plague attacks or irrigation needs. Precision agriculture is one of the biggest advantages that have been brought by agricultural analysis. Data analysis allows firms to optimize their irrigation practices for each crop and section of the field. It keeps water, fertilizer and pesticides where they need to be in the field for efficient execution of their usage upon demand. Apparently, precision agriculture is not only to produce more crops with less input but also -- or even better said--is aimed at promoting sustainable agriculture by conserving the natural resources.
Market Overview:
Agricultural analytics is nothing more than the implementation of big data, machine learning and artificial intelligence technology in agriculture. From crop optimization to water use and supply chain management, farmers can make more intelligent decisions by collecting, organizing, and analyzing complex crops with agricultural analytics. Rising yields, lower production cost and improved supply chain traceability is expected to fuel the growth of global agricultural analytics market during the forecast period. These are boost to this market as increase in demand is expected from emerging regions like; APAC, Middle East and Africa. Agricultural analytics solutions to improve the agricultural productivity and data-driven decision making Investments Increasing world population & rising demand for food, increasing use of environment friendly solutions and expansion in the field of precision agriculture coupled with big data are driving growth factors responsible as major market drivers. Moreover, the rise in popularity of Internet of Things and cloud-based technologies along with a rise in government initiatives to promote the adoption for advanced technology practices across agri-culture sector will help this market further expand over coming years.
Market Trends:
Using Iot and Smart Devices in Home
Adoption of Precision Farming
A.I (Artificial Intelligence) / Machine Learning
Blockchain in Supply chain Visibility
Greener Retail Focus
Subsidies and Government Initiatives
Cloud-Based Solutions Growth
Cooperation and Partnerships. The parties shall work together on the broadest collaborative bases for peaceful constituents as peace dialogues will arise;
Worries about Data Security and Privacy
Key Players:
IBM: Global (North & Latin America, EMEA and Asia Pacific)
Deere & Company
Global (North America, Europe, Asia-Pacific,Latin America)Trimble Inc.
SAP SE Regionals(PR North America, Europe (EMEA), Asia Pacific and Latin America)
Monsanto Company (Bayer AG): North America, Latin America and Europe
Taranis in America and Latin American, Europe
Farmers Edge: North and Latin America, Europe, Australia
Agribotix LLC: North America (potential for Europe and Latin America)
Ag Leader Technology: North American, Europe and Latin America
Climate Corporation: Global (North American, Latin America, Europe and Asia-Pacific)
Recent Development:
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June 19, 2024 /PRNewswire/ --Trimble (NASDAQ: TRMB) announced today the latest version of its Global Navigation Satellite System (GNSS) receiver SDK-- Trimble R980 GNSS system. Alongside improving the premium features offered by Trimble's highest end receiver models like the industry leadingTrimble ProPoint® positioning engine, other major updates available for introduction with R980 are advanced communication capabilities as well.
12th August 2024 – IBM is expanding its Watson Decision Platform for Agriculture©уж2019_istock-dusanpetkovic? The platform gives farmers access to cutting-edge AI and IoT drones, pairing the latest in on-farm data analytics with machine learning-generated insights. The goal of this initiative is to aid precision farming by delivering real-time insights, with immediate usability which helps in maximizing crop yields and minimizing resource wastages.
John Deere has added a new collection of smart farming tools as part of the company's Precision Ag 2.0 project, it announced on August 9. Powered by AI and machine learning, these pieces of equipment provide deep insights on soil health alongside crop performance measurements as well as machinery-related efficiency metrics. The companies said the partnership is designed to improve operational efficiencies and sustainability across today's agriculture industry.
Trimble Launches Data Integration Solution for Ag Software Suite in Time for Planting Season, August 7, 2024 So, the idea is to combine all data which comes from satellites and field sensors with these comprehensive analytic by farmers. The new platform is tailored to enable more informed decisions and improve the efficiency of farm management.
SAP Rural Development Analytics Analytical allows any difference agri-analytics SAP-er and other V3's to update their exports of such things, just not at the soundus date that always has surfaces August 5th. This refreshed tool also came equipped with enhanced visualizations and analytics in real-time mode for different stakeholders so that they can look into the data according to agriculture trending at various frequencies.
Market Drivers:
Increasing world population and demand for food
Sustainable Agriculture -> Need of Hour
Technological Advancements
Support and Scalability by the Government
Crops Yields Half the Pressure
Bunty Chor ETC of Climate Change and Weather Variability
Increased want for Value your I'm sorry adds up to
Operational cost reductions.
Stronger Supply Chain Management
Greater investments in agricultural startups
Market Restraining Factors:
Initial costs: This is probably the biggest drawback of having agricultural analytics solutions in place – they require a huge upfront investment, which can be quite high for small farmers.
Low technical knowledge: Would limit the usage due to the complication of data analysis tools and techniques which left farmers and agriculture worker's under-skilled.
There are also some privacy and security related issues — Many farmers do not use analytics since they donot want their data to be hacked or mis-used.
Less Developed Infrastructure in rural sectors: Limited infrastructure, including low internet accessibility along with shortage of government technology system can impair the implementation and utilisation of agricultural insights.
For instance, Resistance to change — Traditional farmers will reject the adoption of new technology or knowledge-based practices as they may experience fear against changing their traditional methods.
Volatile data quality: The truthfulness of the collected data, and hence the accuracy on which it is based can change over time or may even be different among sources impacting analytics solutions to a great extent.
Market Opportunities:
There will be more precision agriculture
Affordable Solutions Development
Farm Automation Integrations
Need for Organic and Sustainable Agriculture is Rising
Emerging Markets Play
Solutions Customization and Localization
Partnerships & Collaborations
Next-Gen AI & Machine Learning
Concentrate on the Supply Chain Optimisation
Data Analytics Platforms Redefined
Market Insights:
The market is forecasted to expand furiously through the next decade on account of proliferation in agriculture-specific technologies and mushrooming demand for sustainable agricultural practices across regions.
Major Players: The companies covered in the precision farming market report include IBM, John Deere A., Trimble Inc., Climate Corporation and Ageable Unmanned Aeriel Systems Its operations are groundbreaking in terms of offering fully integrated analytical solutions to the sector.
Segment analysis: The market is segmented into component (software and services), application type (farm, livestock, aquaculture), farm size (small farmer or small business enterprises, medium sized farmers and large-scale businesses). Global Agricultural Analytics Market by Function Type
Technology Integration: The blend of IoT, AI and ML technology as a trio will enhance agriculture's analytical capabilities that would assist in making more precise insights actionable for the farmers.
Agriculture Analytics Market Regional Segmentation:
Agriculture Analytics Market Growth, Trends and Demands Research Report Oxford University Press Open Access The market in NA is stable, with well-established technological infrastructure and high penetration rate of data analytics solutions specifically in the agriculture sector (precision farming & yield optimization). Europe comes next with growing investments from sustainable farming and regulatory backing for agri-innovation in Germany, France, and the Netherlands. Manifestations, such as the fast growing Asia-Pacific market (especially in countries like China and India) which have significant urbanization processes requiring increased agribusiness alternatives enabled by governmental redundancy plans.instructions. The biggest examples of growing acceptance for analytics to enhance productivity and competitiveness are Latin America, with Brazil & Argentina as the leaders. However, agriculture analytics adoption in Middle East and Africa is expected to see an uptick as countries like South Africa and the UAE roll out various programs to bolster food security through better resource management.
Market Segmentation:
By Type
Descriptive Analytics
Predictive Analytics
Prescriptive Analytics
By Application
Crop Management
Soil Management
Weather Forecasting
Pest and Disease Management
Supply Chain Management
By Deployment Mode
Cloud-Based
On-Premises
By End-User
Farmers
Agricultural Enterprises
Government Agencies
Emerging Trends
Integration with IoT
Artificial Intelligence
Big Data Analytics
By Region
North America
Europe
Asia-Pacific
Latin America
Middle East & Africa
Stakeholders For Market:
Farmers and Growers
Agribusiness/Cooperative
Technology Providers
Formal and Informal Regulators
Academic and Research Institutions
Angel Funding and Venture Capital
Consumers and End Users
Environmental Organizations
Supply Chain Players
Frequently asked questions:
Q.1 How big is Agriculture Analytics Market?
Ans: - Agriculture Analytics Market Size Was Estimated At USD 1.23 Billion In 2023 And Is Projected To Reach USD 3.48 Billion By 2032, At CAGR Of 28.57%.
Q.2 Who are major Competitors in the Agriculture Analytics Market report?
Ans: - IBM Corporation, Deere & Company (John Deere), Trimble Inc., SAP SE, Monsanto Company (acquired by Bayer AG), Taranis, Farmers Edge, Agribotix LLC, Ag Leader Technology, The Climate Corporation (a subsidiary of Bayer AG).
Q.3 Which segments are covered in report of Agriculture Analytics Market report?
Ans: - The Agriculture Analytics Market is Segmented On The Basis Of Type, Application, And Geography.
Q.4 Which regions are covered in report that having a potential scope for the Agriculture Analytics Market report?
Ans: - On the basis of Geography, The Agriculture Analytics Market is classified into North America, Europe, Asia Pacific, and the Rest of the world.
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