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市场调查报告书
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农业分析市场报告:2031 年趋势、预测与竞争分析

Agriculture Analytic Market Report: Trends, Forecast and Competitive Analysis to 2031

出版日期: | 出版商: Lucintel | 英文 150 Pages | 商品交期: 3个工作天内

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简介目录

全球农业分析市场的未来充满希望,为农民、农学家、农业企业、农业研究人员和政府组织提供了机会。预计到 2031 年,全球农业分析市场规模将达到 37 亿美元,2025 年至 2031 年的复合年增长率为 12.7%。该市场的主要驱动力是对优化资源利用的需求不断增加、政府措施改进农业技术的倡议不断增多以及物联网设备的采用率不断提高。

  • Lucintel 预测,根据农业类型,畜牧业将在预测期内经历最高的成长。
  • 根据最终用途,农学家预计将经历最高的成长。
  • 从地区来看,由于农业产量的成长和对数位农业技术的投资增加,预计北美在预测期内仍将是最大的地区。

农业分析市场的策略性成长机会

资料驱动技术在各种应用中的日益普及极大地推动了农业分析市场的发展。随着农业实践不断发展以满足全球粮食需求和永续性目标,出现了一些策略性成长机会。这些机会涵盖了农业分析的一系列应用,并提供了创新和扩展的潜力。透过专注于关键应用,公司和相关人员可以利用这些机会来提高农业领域的生产力、效率和永续性。

  • 精密农业:精密农业是农业分析市场的一个重要的成长机会,这得益于 GPS 技术、感测器和资料分析的进步。该应用程式可以精确管理水、肥料和农药等作物投入,以适应特定的田间条件。透过优化资源利用和减少浪费,精密农业可以提高作物产量并减少对环境的影响。对永续农业方法和更有效率的资源管理需求不断增长,推动着精密农业解决方案的扩展。
  • 作物管理和产量预测:作物管理和产量预测的高级分析是一个主要的成长领域。透过利用卫星影像、天气预报和历史作物生长资料,这些工具可以准确预测作物产量和健康状况。这使农民能够就种植、收穫和资源分配做出明智的决定。预测作物产量的能力有助于优化农业规划,降低与产量变化相关的风险,并支持整体农场生产力和盈利。
  • 土壤健康监测:土壤健康监测作为农业分析的重要应用,正越来越受欢迎。分析土壤特性(例如养分水平、水分含量和 pH 值)的技术为土壤管理提供了宝贵的见解。此应用可帮助农民维持最佳土壤条件,改善作物生长并长期维持土壤肥力。人们越来越意识到土壤健康对农业永续性的影响,导致对土壤监测解决方案的投资增加,为该产业创造了巨大的成长机会。
  • 牲畜监测:牲畜监测是农业分析的新兴应用,专注于改善牲畜健康和生产力。使用穿戴式感测器、GPS 追踪和资料分析的解决方案可提供有关动物行为、健康和生产力的即时洞察。该应用程式使农民能够及早发现问题,优化饲养方法并加强整体牛管理。对动物福利和高效牲畜管理的日益重视推动了对先进牲畜监测技术的需求。
  • 供应链优化:供应链优化是农业分析领域的策略成长机会。追踪和分析农产品从农场到餐桌的流动过程的资料分析平台可以帮助简化业务、减少浪费并提高可追溯性。透过加强供应链管理,这些解决方案可支持更好的决策并有助于建立更有效率、更永续的农业供应链。

农业分析的策略性成长机会将透过提高精度、效率和永续性来塑造农业部门的未来。精密农业、作物管理、土壤健康监测、牲畜监测和供应链优化的应用推动了创新和成长。随着这些机会的不断发展,预计它们将对农业实践产生重大影响,有助于提高生产力并实现更永续的农业方法。

农业分析市场驱动因素与挑战

农业分析市场受到各种驱动因素​​和挑战的影响,这些因素和挑战决定了其发展。技术进步、经济因素和监管考量在推动市场成长和解决障碍方面发挥关键作用。了解这些驱动因素和挑战对于相关人员有效驾驭市场、利用成长机会并降低风险至关重要。

农业分析市场受以下因素驱动:

  • 技术进步:感测器、资料分析和人工智慧技术的快速进步将推动农业分析的发展。用于土壤和作物监测的先进感测器、用于预测分析的机器学习演算法以及用于航空摄影的无人机等技术创新将增强资料收集和分析。这些技术实现了精密农业,改善了资源管理并优化了作物产量。技术不断发展,提供新的能力和效率,推动农业分析市场向前发展。
  • 不断增长的粮食安全需求:全球人口的成长和粮食需求的增加是农业分析市场的主要驱动力。为了满足这些需求,农业需要提高生产力和效率。农业分析提供工具和见解,帮助优化作物产量、有效管理资源并确保粮食安全。随着生产更多粮食的压力越来越大,采用资料主导的解决方案对于实现永续农业至关重要。
  • 关注永续性:永续性是农业分析的关键驱动力,重点是减少环境影响和促进环境友善的农业实践。支持精密农业、土壤健康监测和资源优化的分析解决方案有助于最大限度地减少废弃物和节约资源,实现永续性目标。人们对环境问题的认识不断提高,以及采用永续做法的监管压力,正在推动对有助于农业部门更绿色的分析解决方案的需求。
  • 政府支持和投资:政府在农业技术和资料分析方面的倡议和投资推动了市场成长。许多政府推出政策并提供资金支持农业采用先进技术。这些投资将加速农业分析解决方案的开发和部署,使农民更容易获得这些解决方案并推动整体市场成长。
  • 物联网和巨量资料的采用日益增多:物联网 (IoT) 设备和巨量资料分析的采用将推动农业创新。物联网感测器提供农场营运各方面的即时资料,巨量资料分析平台则为决策提供见解。整合这些技术将使农民能够更有效地监控和管理他们的运营,从而提高效率和生产力。物联网和巨量资料的广泛应用极大地促进了农业分析的发展。

农业分析市场面临的挑战是:

  • 实施成本高:农业分析市场面临的主要挑战之一是先进技术的实施成本高。对于中小型农场来说,感测器、资料分析平台和其他技术所需的初始投资可能会过高。高昂的实施成本可能会限制农业分析和解决方案的采用,并成为一些相关人员的进入壁垒,影响整体市场的成长。
  • 资料隐私和安全问题:资料隐私和安全问题是农业分析市场面临的关键挑战。农业分析涉及敏感资料的收集和分析,这意味着存在资料外洩和滥用的风险。确保强有力的资料保护措施和解决隐私问题对于维护信任和推动分析解决方案的采用至关重要。严格的安全通讯协定的需求是市场持续面临的挑战。
  • 开发中地区技术取得受限:新兴市场对先进技术和基础设施的取得受限对农业分析市场构成了挑战。技术基础设施薄弱的地区可能较慢采用资料主导的解决方案。缩小技术差距并提供经济实惠、易于取得的解决方案对于提高农业分析的采用率并确保其效益在全球范围内实现至关重要。

农业分析市场受到技术进步、粮食安全需求、永续性目标、政府支持以及物联网和巨量资料采用的显着影响。然而,实施成本高、资料隐私问题以及新兴地区技术取得有限等挑战也对市场产生了影响。解决这些驱动因素和挑战对于农业分析的持续发展和演变至关重要,使该行业能够实现提高生产力和永续性的目标。

目录

第一章执行摘要

第二章全球农业分析市场:市场动态

  • 简介、背景和分类
  • 供应链
  • 产业驱动力与挑战

第三章 2019年至2031年市场趋势及预测分析

  • 宏观经济趋势(2019-2024)及预测(2025-2031)
  • 全球农业分析市场趋势(2019-2024)与预测(2025-2031)
  • 按农业类型分類的全球农业分析市场
    • 精密农业
    • 畜牧业
    • 水产养殖
    • 垂直农业
    • 其他的
  • 全球农业分析市场(按农场规模)
    • 大型农场
    • 中小型农场
  • 全球农业分析市场(按技术)
    • 遥感探测和卫星影像
    • 地理资讯系统
    • 机器人与自动化
    • 巨量资料和云端运算
    • 视觉化和报告
    • 区块链技术
    • 其他的
  • 全球农业分析市场(按最终用途)
    • 农民
    • 农学家
    • 农业相关产业
    • 农业研究员
    • 政府
    • 其他的

第四章2019年至2031年区域市场趋势与预测分析

  • 按地区划分:全球农业分析市场
  • 北美农业分析市场
  • 欧洲农业分析市场
  • 亚太农业分析市场
  • 世界其他地区农业分析市场

第五章 竞争分析

  • 产品系列分析
  • 业务集成
  • 波特五力分析

第六章 成长机会与策略分析

  • 成长机会分析
    • 全球农业分析市场按农业类型分類的成长机会
    • 全球农业分析市场成长机会(依农场规模)
    • 全球农业分析市场成长机会(按技术)
    • 全球农业分析市场成长机会(按最终用途划分)
    • 全球农业分析市场各区域成长机会
  • 全球农业分析市场的新趋势
  • 战略分析
    • 新产品开发
    • 扩大全球农业分析市场的容量
    • 全球农业分析市场的合併、收购和合资企业
    • 认证和许可

第七章主要企业简介

  • Deere & Company
  • IBM
  • Bayer
  • SAP
  • Trimble
  • Accenture
  • ABACO
  • DeLaval
  • Oracle
  • DTN
简介目录

The future of the global agriculture analytic market looks promising with opportunities in the farmer, agronomist, agribusiness, agricultural researcher, and government agency markets. The global agriculture analytic market is expected to reach an estimated $3.7 billion by 2031 with a CAGR of 12.7% from 2025 to 2031. The major drivers for this market are the growing need for optimal resource utilization, rising government initiatives for deploying improved agricultural techniques, and the rise in the adoption of IoT devices.

  • Lucintel forecasts that, Within the agriculture type category, livestock farming is expected to witness the highest growth over the forecast period.
  • Within the end use category, agronomist is expected to witness the highest growth.
  • In terms of regions, North America will remain the largest region over the forecast period due to expanding the region's agricultural output and investing more in digital agriculture techniques.

Gain valuable insights for your business decisions with our comprehensive 150+ page report.

Emerging Trends in the Agriculture Analytic Market

The agriculture analytics market is witnessing several emerging trends that are reshaping how data is used in farming. These trends reflect advancements in technology and changing priorities within the agricultural sector, from enhancing precision to promoting sustainability. As technology continues to evolve, these trends drive significant transformations in how agricultural data is collected, analyzed, and applied, leading to more efficient and sustainable farming practices.

  • AI and Machine Learning Integration: Artificial intelligence (AI) and machine learning (ML) are increasingly integrated into agriculture analytics, offering advanced predictive capabilities and automated decision-making. AI algorithms analyze vast amounts of data from various sources, such as satellite imagery and sensors, to provide actionable insights. This trend helps farmers optimize crop management, predict yields, and detect issues like pest infestations early. The result is more precise and data-driven farming practices that significantly enhance productivity and reduce waste.
  • Precision Agriculture Technologies: Precision agriculture technologies are transforming farming by enabling more accurate and efficient use of resources. Technologies such as GPS-guided tractors, variable rate application systems, and remote sensing tools allow farmers to apply inputs like water, fertilizers, and pesticides precisely where needed. This trend reduces the overuse of resources, minimizes environmental impact, and increases crop yields. By leveraging detailed data and advanced analytics, precision agriculture supports sustainable and efficient farming practices.
  • IoT and Smart Farming Solutions: The Internet of Things (IoT) plays a crucial role in agriculture analytics by connecting various sensors and devices to collect real-time data from the field. Smart farming solutions utilize this data to monitor soil conditions, weather patterns, and crop health. IoT-enabled devices provide continuous feedback and automation, helping farmers make informed decisions and respond quickly to changing conditions. This trend enhances operational efficiency and supports precision agriculture practices.
  • Blockchain for Traceability and Transparency: Blockchain technology is gaining traction in agriculture analytics for its ability to enhance traceability and transparency in the supply chain. By providing a secure and immutable record of transactions, blockchain helps track the origin and journey of agricultural products from farm to table. This trend improves food safety, reduces fraud, and builds consumer trust. It also supports better management of resources and adherence to quality standards.
  • Sustainable and Regenerative Farming Analytics: There is a growing emphasis on sustainable and regenerative farming practices supported by advanced analytics. Tools that analyze soil health, biodiversity, and environmental impact are becoming essential for promoting sustainable agriculture. Analytics help farmers implement practices that improve soil fertility, reduce carbon footprints, and enhance ecosystem health. This trend aligns with global efforts to address climate change and promote long-term agricultural sustainability.

These emerging trends significantly reshape the agriculture analytics market by driving innovation and enhancing farming practices. AI, precision agriculture, IoT, blockchain, and sustainability-focused analytics transform how data is used to improve productivity, efficiency, and sustainability in agriculture. As these trends continue to evolve, they promise to address critical challenges and unlock new opportunities for the agricultural sector.

Recent Developments in the Agriculture Analytic Market

The agriculture analytics market reflects the sector's ongoing transformation driven by technological innovation and a focus on optimizing agricultural practices. These advancements make data-driven approaches more accessible and effective, addressing key challenges such as resource management, productivity, and sustainability. By integrating advanced technologies, the agriculture analytics market evolves rapidly, offering new solutions and insights to enhance farming practices across the globe.

  • Advanced Sensor Technologies: Recent advancements in sensor technologies have revolutionized data collection in agriculture. Modern sensors, including those for soil moisture, nutrient levels, and weather conditions, provide real-time data that helps farmers make informed decisions. These sensors are increasingly integrated into precision farming systems, allowing for better management of resources and improved crop health monitoring. The enhanced accuracy and timeliness of data support more effective and targeted agricultural practices.
  • Big Data and Analytics Platforms: The rise of big data and advanced analytics platforms transforms agriculture by providing deeper insights into farming operations. These platforms analyze large volumes of data from various sources, such as satellites and IoT devices, to offer comprehensive insights into crop performance, soil conditions, and market trends. This development enables farmers to optimize their operations, forecast yields, and make data-driven decisions that enhance productivity and efficiency.
  • Autonomous Farming Equipment: Autonomous farming equipment, including drones and self-driving tractors, is becoming increasingly prevalent. These technologies automate tasks such as planting, harvesting, and monitoring crops, reducing the need for manual labor and increasing operational efficiency. Autonomous equipment leverages data from sensors and AI to perform tasks with high precision, leading to more consistent and reliable farming practices.
  • Cloud-Based Data Management: Cloud-based data management solutions facilitate the storage, processing, and analysis of agricultural data. These platforms offer scalable and accessible solutions for managing vast amounts of data collected from various sources. Cloud-based systems enable farmers to access real-time insights and collaborate with other stakeholders more effectively. This development supports more efficient data management and enhances decision-making capabilities.
  • Integration of Blockchain for Supply Chain Transparency: Blockchain technology is integrated into agriculture analytics to improve supply chain transparency and traceability. By providing a secure and immutable record of transactions, blockchain enhances the ability to track the origin and journey of agricultural products. This development promotes food safety, reduces fraud, and ensures compliance with quality standards, benefiting both producers and consumers.

Recent developments in agriculture analytics significantly impact the sector by introducing advanced technologies and data-driven solutions. The adoption of sensor technologies, big data platforms, autonomous equipment, cloud-based systems, and blockchain enhances productivity, efficiency, and transparency in agriculture. These developments reshape farming practices and address key challenges, paving the way for a more innovative and sustainable agricultural future.

Strategic Growth Opportunities for Agriculture Analytic Market

The agriculture analytics market witnesses significant growth driven by the increasing adoption of data-driven technologies across various applications. As agricultural practices evolve to meet global food demands and sustainability goals, several strategic growth opportunities emerge. These opportunities span different applications within agriculture analytics, offering the potential for innovation and expansion. By focusing on key applications, businesses, and stakeholders can leverage these opportunities to enhance productivity, efficiency, and sustainability in the agricultural sector.

  • Precision Agriculture: Precision agriculture is a major growth opportunity within the agriculture analytics market, driven by advancements in GPS technology, sensors, and data analytics. This application allows for the precise management of crop inputs such as water, fertilizers, and pesticides, tailored to specific field conditions. By optimizing resource use and minimizing waste, precision agriculture enhances crop yields and reduces environmental impact. The growing demand for sustainable farming practices and increased efficiency in resource management fuels the expansion of precision agriculture solutions.
  • Crop Management and Yield Prediction: Advanced analytics for crop management and yield prediction is a key growth area. By utilizing data from satellite imagery, weather forecasts, and historical crop performance, these tools provide accurate predictions of crop yields and health. This enables farmers to make informed decisions regarding planting, harvesting, and resource allocation. The ability to anticipate crop performance helps optimize agricultural planning and mitigate risks associated with yield variability, supporting overall farm productivity and profitability.
  • Soil Health Monitoring: Soil health monitoring is gaining traction as a crucial application of agriculture analytics. Technologies that analyze soil properties, such as nutrient levels, moisture content, and pH, provide valuable insights for soil management. This application helps farmers maintain optimal soil conditions, improve crop growth, and sustain long-term soil fertility. As awareness of soil health's impact on agricultural sustainability grows, investment in soil monitoring solutions increases, presenting significant growth opportunities in this segment.
  • Livestock Monitoring: Livestock monitoring is an emerging application of agriculture analytics that focuses on improving animal health and productivity. Solutions that use wearable sensors, GPS tracking, and data analytics provide real-time insights into animal behavior, health status, and productivity. This application enables farmers to detect issues early, optimize feeding practices, and enhance overall herd management. The growing emphasis on animal welfare and efficient livestock management drives the demand for advanced livestock monitoring technologies.
  • Supply Chain Optimization: Supply chain optimization is a strategic growth opportunity within agriculture analytics, driven by the need for greater transparency and efficiency in food distribution. Data analytics platforms that track and analyze the movement of agricultural products from farm to table help streamline operations, reduce waste, and improve traceability. By enhancing supply chain management, these solutions support better decision-making and contribute to a more efficient and sustainable agricultural supply chain.

The strategic growth opportunities in agriculture analytics shape the future of the agricultural sector by enhancing precision, efficiency, and sustainability. Applications in precision agriculture, crop management, soil health monitoring, livestock monitoring, and supply chain optimization drive innovation and growth. As these opportunities continue to develop, they are expected to significantly impact agricultural practices, contributing to increased productivity and a more sustainable approach to farming.

Agriculture Analytic Market Driver and Challenges

The agriculture analytics market is influenced by various drivers and challenges that shape its development. Technological advancements, economic factors, and regulatory considerations play crucial roles in driving market growth and addressing obstacles. Understanding these drivers and challenges is essential for stakeholders to navigate the market effectively and leverage opportunities for growth while mitigating risks.

The factors responsible for driving the agriculture analytics market include:

  • Technological Advancements: Rapid technological advancements in sensors, data analytics, and AI drive growth in agriculture analytics. Innovations such as advanced sensors for soil and crop monitoring, machine learning algorithms for predictive analytics, and drones for aerial imaging enhance data collection and analysis. These technologies enable precision farming, improve resource management, and optimize crop yields. As technology continues to evolve, it provides new capabilities and efficiencies that propel the agriculture analytics market forward.
  • Increasing Demand for Food Security: The growing global population and increasing demand for food are significant drivers of the agriculture analytics market. To meet these demands, there is a need for enhanced agricultural productivity and efficiency. Agriculture analytics provides tools and insights that help optimize crop yields, manage resources effectively, and ensure food security. As the pressure to produce more food intensifies, the adoption of data-driven solutions becomes essential to achieving sustainable agricultural practices.
  • Focus on Sustainability: Sustainability is a major driver of agriculture analytics, as there is a strong emphasis on reducing environmental impact and promoting eco-friendly farming practices. Analytics solutions that support precision agriculture, soil health monitoring, and resource optimization align with sustainability goals by minimizing waste and conserving resources. The increasing awareness of environmental issues and regulatory pressure to adopt sustainable practices drive the demand for analytics solutions that contribute to a greener agricultural sector.
  • Government Support and Investment: Government initiatives and investments in agricultural technology and data analytics foster market growth. Many governments implement policies and provide funding to support the adoption of advanced technologies in agriculture. These investments help accelerate the development and deployment of agriculture analytics solutions, making them more accessible to farmers and enhancing the overall growth of the market.
  • Growing Adoption of IoT and Big Data: The adoption of Internet of Things (IoT) devices and big data analytics drives innovation in agriculture. IoT sensors provide real-time data on various aspects of farming operations, while big data analytics platforms offer insights for decision-making. The integration of these technologies enables farmers to monitor and manage their operations more effectively, leading to increased efficiency and productivity. The widespread adoption of IoT and big data contributes significantly to the growth of agriculture analytics.

Challenges in the agriculture analytics market are:

  • High Implementation Costs: One of the key challenges in the agriculture analytics market is the high cost of implementing advanced technologies. The initial investment required for sensors, data analytics platforms, and other technologies can be prohibitive for small and medium-sized farms. High implementation costs may limit the adoption of agriculture analytics solutions and create barriers to entry for some stakeholders, affecting overall market growth.
  • Data Privacy and Security Concerns: Data privacy and security concerns are significant challenges in the agriculture analytics market. As agriculture analytics involves the collection and analysis of sensitive data, there is a risk of data breaches and misuse. Ensuring robust data protection measures and addressing privacy concerns are crucial for maintaining trust and encouraging the adoption of analytics solutions. The need for stringent security protocols presents an ongoing challenge for the market.
  • Limited Access to Technology in Developing Regions: Limited access to advanced technology and infrastructure in developing regions poses a challenge for the agriculture analytics market. In regions with inadequate technological infrastructure, the adoption of data-driven solutions may be slow. Bridging the technology gap and providing affordable and accessible solutions are essential to expanding the reach of agriculture analytics and ensuring its benefits are realized globally.

The agriculture analytics market is significantly influenced by technological advancements, food security demands, sustainability goals, government support, and the adoption of IoT and big data. However, challenges such as high implementation costs, data privacy concerns, and limited technology access in developing regions also impact the market. Addressing these drivers and challenges is crucial for the continued growth and evolution of agriculture analytics, ensuring that the sector can meet its goals of increased productivity and sustainability.

List of Agriculture Analytic Companies

Companies in the market compete on the basis of product quality offered. Major players in this market focus on expanding their manufacturing facilities, R&D investments, infrastructural development, and leverage integration opportunities across the value chain. through these strategies agriculture analytic companies cater increasing demand, ensure competitive effectiveness, develop innovative products & technologies, reduce production costs, and expand their customer base. Some of the agriculture analytic companies profiled in this report include-

  • Deere & Company
  • IBM
  • Bayer
  • SAP
  • Trimble
  • Accenture
  • ABACO
  • DeLaval
  • Oracle
  • DTN

Agriculture Analytic by Segment

The study includes a forecast for the global agriculture analytic by agriculture type, farm size, technology, end use, and region.

Agriculture Analytic Market by Agriculture Type [Analysis by Value from 2019 to 2031]:

  • Precision Farming
  • Livestock Farming
  • Aquaculture Farming
  • Vertical Farming
  • Others

Agriculture Analytic Market by Farm Size [Analysis by Value from 2019 to 2031]:

  • Large Farms
  • Small & Medium-Sized Farms

Agriculture Analytic Market by Technology [Analysis by Value from 2019 to 2031]:

  • Remote Sensing & Satellite Imagery
  • Geographic Information System
  • Robotics & Automation
  • Big Data & Cloud Computing
  • Visualization & Reporting
  • Blockchain Technology
  • Others

Agriculture Analytic Market by End Use [Analysis by Value from 2019 to 2031]:

  • Farmers
  • Agronomists
  • Agribusinesses
  • Agricultural Researchers
  • Government Agencies
  • Others

Agriculture Analytic Market by Region [Analysis by Value from 2019 to 2031]:

  • North America
  • Europe
  • Asia Pacific
  • The Rest of the World

Country Wise Outlook for the Agriculture Analytic Market

The agriculture analytics market is rapidly evolving, driven by technological advancements and a growing need for data-driven decision-making in farming. As global food demands rise and sustainability becomes paramount, countries are investing heavily in agricultural technology to optimize crop yields, improve resource management, and enhance overall productivity. Recent developments in the agriculture analytics market reflect this shift, with notable progress across the United States, China, Germany, India, and Japan. These advancements are shaping how data is used to address agricultural challenges and opportunities, transforming traditional farming practices into more efficient, technology-driven processes.

  • United States: In the U.S., agriculture analytics is increasingly centered on precision farming and AI-driven insights. Major developments include the integration of satellite imagery and machine learning to optimize crop management. Companies like Trimble and John Deere lead innovations in precision agriculture, offering advanced tools for real-time data collection and analysis. These technologies help farmers increase yield, reduce waste, and manage resources more efficiently. The U.S. also sees significant investment in developing autonomous farming equipment, which aims to further enhance productivity and operational efficiency.
  • China: China focuses on leveraging big data and IoT (Internet of Things) to revolutionize its agricultural sector. The government and private enterprises invest in smart farming solutions that include drone technology for crop monitoring and automated systems for precision irrigation. Companies such as DJI and Alibaba are at the forefront, using data analytics to improve crop forecasting and resource management. This push aligns with China's broader strategy to ensure food security and increase agricultural efficiency amid a growing population.
  • Germany: Germany's advancements in agriculture analytics are driven by a strong emphasis on sustainability and precision farming. Innovations include the development of advanced sensor technologies and data analytics platforms that monitor soil health and optimize nutrient use. Companies like BASF and Bayer lead these initiatives, focusing on integrating digital solutions into traditional farming practices. Germany's approach highlights the importance of environmentally friendly farming techniques and the efficient use of resources to support sustainable agricultural practices.
  • India: In India, agriculture analytics is rapidly evolving with a focus on improving smallholder farmer productivity. Developments include mobile applications and AI-powered platforms that provide real-time weather forecasts, pest detection, and crop recommendations. Startups such as AgroStar and CropIn are making significant strides in offering affordable, accessible analytics tools tailored to the needs of Indian farmers. These innovations aim to address challenges such as low productivity and resource constraints, helping farmers make informed decisions and improve their yields.
  • Japan: Japan embraces advanced robotics and data analytics to address labor shortages and enhance agricultural efficiency. Developments include the use of automated systems for planting, harvesting, and monitoring crops. Companies like Kubota and Yamaha develop robotics solutions that integrate with data analytics to optimize farming operations. Additionally, Japan's focus on precision agriculture and smart farming technologies reflects its commitment to maximizing productivity while addressing challenges such as an aging farming population and limited arable land.

Features of the Global Agriculture Analytic Market

Market Size Estimates: Agriculture analytic market size estimation in terms of value ($B).

Trend and Forecast Analysis: Market trends (2019 to 2024) and forecast (2025 to 2031) by various segments and regions.

Segmentation Analysis: Agriculture analytic market size by agriculture type, farm size, technology, end use, and region in terms of value ($B).

Regional Analysis: Agriculture analytic market breakdown by North America, Europe, Asia Pacific, and Rest of the World.

Growth Opportunities: Analysis of growth opportunities in different agriculture type, farm size, technology, end use, and regions for the agriculture analytic market.

Strategic Analysis: This includes M&A, new product development, and competitive landscape of the agriculture analytic market.

Analysis of competitive intensity of the industry based on Porter's Five Forces model.

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This report answers following 11 key questions:

  • Q.1. What are some of the most promising, high-growth opportunities for the agriculture analytic market by agriculture type (precision farming, livestock farming, aquaculture farming, vertical farming, and others), farm size (large farms and small & medium-sized farms), technology (remote sensing & satellite imagery, geographic information system, robotics & automation, big data & cloud computing, visualization & reporting, blockchain technology, and others), end use (farmers, agronomists, agribusinesses, agricultural researchers, government agencies, and others), and region (North America, Europe, Asia Pacific, and the Rest of the World)?
  • Q.2. Which segments will grow at a faster pace and why?
  • Q.3. Which region will grow at a faster pace and why?
  • Q.4. What are the key factors affecting market dynamics? What are the key challenges and business risks in this market?
  • Q.5. What are the business risks and competitive threats in this market?
  • Q.6. What are the emerging trends in this market and the reasons behind them?
  • Q.7. What are some of the changing demands of customers in the market?
  • Q.8. What are the new developments in the market? Which companies are leading these developments?
  • Q.9. Who are the major players in this market? What strategic initiatives are key players pursuing for business growth?
  • Q.10. What are some of the competing products in this market and how big of a threat do they pose for loss of market share by material or product substitution?
  • Q.11. What M&A activity has occurred in the last 5 years and what has its impact been on the industry?

Table of Contents

1. Executive Summary

2. Global Agriculture Analytic Market : Market Dynamics

  • 2.1: Introduction, Background, and Classifications
  • 2.2: Supply Chain
  • 2.3: Industry Drivers and Challenges

3. Market Trends and Forecast Analysis from 2019 to 2031

  • 3.1. Macroeconomic Trends (2019-2024) and Forecast (2025-2031)
  • 3.2. Global Agriculture Analytic Market Trends (2019-2024) and Forecast (2025-2031)
  • 3.3: Global Agriculture Analytic Market by Agriculture Type
    • 3.3.1: Precision Farming
    • 3.3.2: Livestock Farming
    • 3.3.3: Aquaculture Farming
    • 3.3.4: Vertical Farming
    • 3.3.5: Others
  • 3.4: Global Agriculture Analytic Market by Farm Size
    • 3.4.1: Large Farms
    • 3.4.2: Small & Medium-Sized Farms
  • 3.5: Global Agriculture Analytic Market by Technology
    • 3.5.1: Remote Sensing & Satellite Imagery
    • 3.5.2: Geographic Information System
    • 3.5.3: Robotics & Automation
    • 3.5.4: Big Data & Cloud Computing
    • 3.5.5: Visualization & Reporting
    • 3.5.6: Blockchain Technology
    • 3.5.7: Others
  • 3.6: Global Agriculture Analytic Market by End Use
    • 3.6.1: Farmers
    • 3.6.2: Agronomists
    • 3.6.3: Agribusinesses
    • 3.6.4: Agricultural Researchers
    • 3.6.5: Government Agencies
    • 3.6.6: Others

4. Market Trends and Forecast Analysis by Region from 2019 to 2031

  • 4.1: Global Agriculture Analytic Market by Region
  • 4.2: North American Agriculture Analytic Market
    • 4.2.1: North American Agriculture Analytic Market by Agriculture Type: Precision Farming, Livestock Farming, Aquaculture Farming, Vertical Farming, and Others
    • 4.2.2: North American Agriculture Analytic Market by End Use: Farmers, Agronomists, Agribusinesses, Agricultural Researchers, Government Agencies, and Others
  • 4.3: European Agriculture Analytic Market
    • 4.3.1: European Agriculture Analytic Market by Agriculture Type: Precision Farming, Livestock Farming, Aquaculture Farming, Vertical Farming, and Others
    • 4.3.2: European Agriculture Analytic Market by End Use: Farmers, Agronomists, Agribusinesses, Agricultural Researchers, Government Agencies, and Others
  • 4.4: APAC Agriculture Analytic Market
    • 4.4.1: APAC Agriculture Analytic Market by Agriculture Type: Precision Farming, Livestock Farming, Aquaculture Farming, Vertical Farming, and Others
    • 4.4.2: APAC Agriculture Analytic Market by End Use: Farmers, Agronomists, Agribusinesses, Agricultural Researchers, Government Agencies, and Others
  • 4.5: ROW Agriculture Analytic Market
    • 4.5.1: ROW Agriculture Analytic Market by Agriculture Type: Precision Farming, Livestock Farming, Aquaculture Farming, Vertical Farming, and Others
    • 4.5.2: ROW Agriculture Analytic Market by End Use: Farmers, Agronomists, Agribusinesses, Agricultural Researchers, Government Agencies, and Others

5. Competitor Analysis

  • 5.1: Product Portfolio Analysis
  • 5.2: Operational Integration
  • 5.3: Porter's Five Forces Analysis

6. Growth Opportunities and Strategic Analysis

  • 6.1: Growth Opportunity Analysis
    • 6.1.1: Growth Opportunities for the Global Agriculture Analytic Market by Agriculture Type
    • 6.1.2: Growth Opportunities for the Global Agriculture Analytic Market by Farm Size
    • 6.1.3: Growth Opportunities for the Global Agriculture Analytic Market by Technology
    • 6.1.4: Growth Opportunities for the Global Agriculture Analytic Market by End Use
    • 6.1.5: Growth Opportunities for the Global Agriculture Analytic Market by Region
  • 6.2: Emerging Trends in the Global Agriculture Analytic Market
  • 6.3: Strategic Analysis
    • 6.3.1: New Product Development
    • 6.3.2: Capacity Expansion of the Global Agriculture Analytic Market
    • 6.3.3: Mergers, Acquisitions, and Joint Ventures in the Global Agriculture Analytic Market
    • 6.3.4: Certification and Licensing

7. Company Profiles of Leading Players

  • 7.1: Deere & Company
  • 7.2: IBM
  • 7.3: Bayer
  • 7.4: SAP
  • 7.5: Trimble
  • 7.6: Accenture
  • 7.7: ABACO
  • 7.8: DeLaval
  • 7.9: Oracle
  • 7.10: DTN