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작물 수량 예측용 기계학습 시장 보고서(2026년)

Machine Learning For Crop Yield Prediction Global Market Report 2026

발행일: | 리서치사: 구분자 The Business Research Company | 페이지 정보: 영문 250 Pages | 배송안내 : 2-10일 (영업일 기준)

    
    
    




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작물 수량 예측용 기계학습 시장의 규모는 최근 비약적으로 확대하고 있습니다. 이 시장은 2025년 9억 9,000만 달러에서 2026년에는 12억 4,000만 달러로 성장하며, CAGR은 25.0%에 달할 전망입니다. 지난 수년간의 성장 요인으로는 작물 수확량 변동성 증가, 과거 기상 데이터세트에 대한 의존도 증가, 예측 모델링 툴의 조기 도입, 최적화된 농업 투입물에 대한 수요 증가, 농업의 위험 감소에 대한 필요성 증가 등을 들 수 있습니다.

작물 수량 예측용 기계학습 시장의 규모는 향후 수년간 비약적인 성장이 전망되고 있습니다. 2030년에는 24.2%의 CAGR로 29억 5,000만 달러에 달할 것으로 예측됩니다. 예측 기간의 성장 요인으로는 AI를 활용한 수확량 예측 시스템의 보급 확대, 클라우드 기반 분석 기능과의 통합 발전, 정밀농업에 대한 지식에 대한 수요 증가, 위성 및 드론 이미지 데이터의 가치 향상, 실시간 환경 모니터링의 광범위한 활용 등을 꼽을 수 있습니다. 예측 기간의 주요 동향으로는 다변량 환경 데이터 활용 확대, 수확량 모델에 원격 감지 기술 통합 촉진, 실시간 작물 모니터링 기법 보급, 데이터베이스 농업 의사결정 프레임워크 채택 확대, 고급 토양 및 작물 관계 모델링 활용 확대 등을 꼽을 수 있습니다.

지속가능한 농업 관행에 대한 요구가 향후 작물 수량 예측용 머신러닝 시장의 성장을 촉진할 것으로 예측됩니다. 지속가능한 농업은 자원을 보존하고, 생물 다양성을 증진하며, 경제적 지속가능성을 보장하고, 현재와 미래 세대를 위한 사회적 형평성을 보장하면서 식량과 기타 농산물을 생산하는 데 중점을 둔 통합적 농업 접근 방식입니다. 지속가능한 농업의 부상은 환경 악화, 자원 고갈, 기후 변화에 대한 우려, 그리고 장기적인 식량안보와 지역 사회의 복지를 보장하는 보다 건강하고 탄력적인 식량 시스템에 대한 요구에 의해 주도되고 있습니다. 작물 수량 예측용 머신러닝은 데이터베이스 의사결정을 가능하게 하고, 자원 활용을 최적화하고, 폐기물을 최소화하며, 작물 생산성을 높이고, 환경에 미치는 영향을 줄이면서 효율성을 높여 지속가능한 농업을 지원합니다. 예를 들어 2025년 2월 독일에 본부를 둔 비영리단체 IFOAM Organics International은 2023년 약 9,890만 헥타르의 토지가 유기농으로 관리되고 있으며, 2022년에 비해 2.6%(약 250만 헥타르)가 증가했다고 보고했습니다. 따라서 지속가능한 농업 관행에 대한 요구가 작물 수량 예측용 머신러닝 시장을 주도하고 있습니다.

작물 수량 예측용 머신러닝 시장의 주요 기업은 혁신적인 데이터베이스 솔루션 개발을 강화하기 위해 GenAI(Generative AI)를 통합한 플랫폼 개발에 우선순위를 두고 있습니다. 이러한 플랫폼은 생성형 AI를 다른 기술과 결합하여 다양한 산업과 용도에서 AI를 활용한 지식의 생성, 커스터마이징, 배포를 가능하게 합니다. 예를 들어 2024년 7월 인도에 본사를 둔 애그테크 기업 크롭인(CropIn)은 미국에 본사를 둔 기술 기업 구글(Gemini)과 제휴하여 생성형 AI를 활용한 농업 인텔리전스 플랫폼 '세이지(Sage)'를 발표했습니다. Sage의 주요 강점은 생성형 AI, 고급 작물 및 기후 모델, 지구관측 데이터를 통합하여 다양한 기간 중 작물의 거동에 대한 상세한 그리드 기반 인사이트을 제공한다는 점입니다. 이 통합을 통해 Sage는 독자적인 그리드 기반 농업 데이터 맵을 생성할 수 있게 되어 규모, 정확성, 속도 면에서 탁월한 성능을 발휘할 수 있게 되었습니다. 이를 통해 이해관계자들이 작물 동태, 기후 영향 및 최적의 농업 관행을 분석하는 방식에 혁명을 일으켜 전 세계 농업 비즈니스에서 다국어로 정보에 입각한 데이터베이스 의사결정을 촉진할 수 있습니다.

자주 묻는 질문

  • 작물 수량 예측용 기계학습 시장의 규모는 어떻게 변화하고 있나요?
  • 작물 수량 예측용 기계학습 시장의 성장 요인은 무엇인가요?
  • 지속 가능한 농업 관행이 작물 수량 예측용 머신러닝 시장에 미치는 영향은 무엇인가요?
  • 작물 수량 예측용 머신러닝 시장의 주요 기업은 어떤 기술을 통합하고 있나요?
  • 작물 수량 예측용 머신러닝 시장에서 주목할 만한 플랫폼은 무엇인가요?

목차

제1장 개요

제2장 시장의 특징

제3장 시장 공급망 분석

제4장 세계 시장 동향과 전략

제5장 최종 용도 산업의 시장 분석

제6장 시장 : 금리, 인플레이션, 지정학, 무역 전쟁과 관세의 영향, 관세 전쟁과 무역 보호주의에 의한 공급망에 대한 영향, Covid가 시장에 미치는 영향을 포함한 거시경제 시나리오

제7장 세계의 전략 분석 프레임워크, 현재 시장 규모, 시장 비교 및 성장률 분석

제8장 시장의 세계 TAM(Total Addressable Market)

제9장 시장 세분화

제10장 지역별·국가별 분석

제11장 아시아태평양 시장

제12장 중국 시장

제13장 인도 시장

제14장 일본 시장

제15장 호주 시장

제16장 인도네시아 시장

제17장 한국 시장

제18장 대만 시장

제19장 동남아시아 시장

제20장 서유럽 시장

제21장 영국 시장

제22장 독일 시장

제23장 프랑스 시장

제24장 이탈리아 시장

제25장 스페인 시장

제26장 동유럽 시장

제27장 러시아 시장

제28장 북미 시장

제29장 미국 시장

제30장 캐나다 시장

제31장 남미 시장

제32장 브라질 시장

제33장 중동 시장

제34장 아프리카 시장

제35장 시장 규제 상황과 투자환경

제36장 경쟁 구도와 기업 개요

제37장 기타 대기업과 혁신적 기업

제38장 세계의 시장 경쟁 벤치마킹과 대시보드

제39장 주요 합병과 인수

제40장 시장의 잠재력이 높은 국가, 부문, 전략

제41장 부록

KSA 26.04.22

Machine learning for crop yield prediction involves using ML algorithms and models to estimate the quantity of crops that can be harvested from a given farmland area. This approach utilizes historical and real-time data, including environmental conditions, soil characteristics, weather patterns, crop types, and farming practices, to generate accurate and data-driven forecasts.

The primary components of machine learning for crop yield prediction include software and services. Software consists of programs and instructions that enable computers to analyze agricultural data and optimize predictions. These solutions can be deployed both on the cloud and on-premises, catering to small, medium, and large-sized farms. The key end users include farmers, agricultural cooperatives, research institutions, government agencies, and others.

Note that the outlook for this market is being affected by rapid changes in trade relations and tariffs globally. The report will be updated prior to delivery to reflect the latest status, including revised forecasts and quantified impact analysis. The report's Recommendations and Conclusions sections will be updated to give strategies for entities dealing with the fast-moving international environment.

Tariffs are influencing the machine learning for crop yield prediction market by increasing costs for imported sensors, data acquisition hardware, satellite imaging components, and cloud infrastructure equipment, slowing deployment for farmers, cooperatives, and government agencies. Regions reliant on foreign electronics particularly North America, Europe, and Asia-Pacific face higher operational expenses and delayed adoption of advanced analytics systems. However, tariffs can encourage domestic innovation in data platforms, strengthen local supplier ecosystems, and promote region-specific yield prediction solutions, ultimately supporting long-term competitiveness.

The machine learning for crop yield prediction market research report is one of a series of new reports from The Business Research Company that provides machine learning for crop yield prediction market statistics, including machine learning for crop yield prediction industry global market size, regional shares, competitors with a machine learning for crop yield prediction market share, detailed machine learning for crop yield prediction market segments, market trends and opportunities, and any further data you may need to thrive in the machine learning for crop yield prediction industry. This machine learning for crop yield prediction market research report delivers a complete perspective of everything you need, with an in-depth analysis of the current and future scenario of the industry.

The machine learning for crop yield prediction market size has grown exponentially in recent years. It will grow from $0.99 billion in 2025 to $1.24 billion in 2026 at a compound annual growth rate (CAGR) of 25.0%. The growth in the historic period can be attributed to increasing variability in crop yields, growing reliance on historical weather datasets, early adoption of predictive modeling tools, rising demand for optimized farm inputs, heightened need for risk mitigation in farming.

The machine learning for crop yield prediction market size is expected to see exponential growth in the next few years. It will grow to $2.95 billion in 2030 at a compound annual growth rate (CAGR) of 24.2%. The growth in the forecast period can be attributed to expanding adoption of AI-powered yield prediction systems, increasing integration of cloud-based analytics, rising demand for precision farming insights, growing value of satellite and drone imaging data, wider use of real-time environmental monitoring. Major trends in the forecast period include increasing use of multivariate environmental data inputs, growing integration of remote sensing into yield models, expansion of real-time crop monitoring practices, rising adoption of data-driven farm decision frameworks, greater use of advanced soil-crop relationship modeling.

The need for sustainable agriculture practices is expected to drive the growth of the machine learning for crop yield prediction market going forward. Sustainable agriculture is an integrated farming approach that focuses on producing food and other agricultural products while conserving resources, promoting biodiversity, supporting economic viability, and ensuring social equity for both present and future generations. The rise in sustainable agriculture is driven by concerns about environmental degradation, resource scarcity, climate change, and the need for healthier, more resilient food systems that ensure long-term food security and community well-being. Machine learning for crop yield prediction supports sustainable agriculture by enabling data-driven decision-making to optimize resource use, minimize waste, increase crop productivity, and improve efficiency while reducing environmental impact. For example, in February 2025, IFOAM Organics International, a Germany-based non-profit organization, reported that in 2023, approximately 98.9 million hectares of land were organically managed, marking a 2.6% increase (about 2.5 million hectares) compared to 2022. Therefore, the need for sustainable agriculture practices is fueling the machine learning for crop yield prediction market.

Leading companies in the machine learning for crop yield prediction market are prioritizing the development of GenAI-integrated platforms to enhance the creation of innovative, data-driven solutions. These platforms combine generative artificial intelligence with other technologies, allowing for the generation, customization, and deployment of AI-driven insights across various industries and applications. For instance, in July 2024, CropIn, an India-based agtech company, collaborated with Google (Gemini), a US-based technology company, to introduce Sage, a GenAI-powered agri-intelligence platform. Sage's key advantage lies in its ability to deliver detailed, grid-based insights into crop behavior over different time periods by integrating generative AI, advanced crop and climate models, and Earth observation data. This integration enables Sage to produce a proprietary grid-based agricultural data map, offering exceptional scale, accuracy, and speed. It revolutionizes the way stakeholders analyze crop dynamics, climate effects, and optimal agricultural practices, facilitating informed, data-driven decisions in multiple languages across global farming operations.

In April 2024, AGCO Corporation, a US-based agricultural machinery manufacturer, acquired Trimble Agriculture in a $2 billion deal. This acquisition enables AGCO to incorporate Trimble's cutting-edge precision agriculture technologies into its product portfolio, which is expected to enhance farming efficiency and productivity significantly. Trimble Agriculture, a US-based company, specializes in providing machine learning solutions for crop yield prediction.

Major companies operating in the machine learning for crop yield prediction market are Microsoft Corp., BASF SE, International Business Machines Corp., Bayer AG, Raven Industries Inc., Cropin Technology Solutions Pvt., Terramera Inc., FarmWise Labs Inc., Sentera Inc., Taranis, Ceres Imaging Inc., CropX Inc., PrecisionHawk, Aerobotics Ltd., Fasal, IUNU Inc., AgriWebb Pty Ltd., Trace Genomics Inc., Bloomfield Robotics, Agrograph Inc., AiDOOS Corp., FruitSpec

North America was the largest region in the machine learning for crop yield prediction market in 2025. The regions covered in the machine learning for crop yield prediction market report are Asia-Pacific, South East Asia, Western Europe, Eastern Europe, North America, South America, Middle East, Africa.

The countries covered in the machine learning for crop yield prediction market report are Australia, Brazil, China, France, Germany, India, Indonesia, Japan, Taiwan, Russia, South Korea, UK, USA, Canada, Italy, Spain

The machine learning for crop yield prediction market includes revenues earned by entities by providing services such as yield forecasting consulting, soil health and fertility analysis, weather impact analysis and field zone mapping. The market value includes the value of related goods sold by the service provider or included within the service offering. Only goods and services traded between entities or sold to end consumers are included.

The market value is defined as the revenues that enterprises gain from the sale of goods and/or services within the specified market and geography through sales, grants, or donations in terms of the currency (in USD unless otherwise specified).

The revenues for a specified geography are consumption values that are revenues generated by organizations in the specified geography within the market, irrespective of where they are produced. It does not include revenues from resales along the supply chain, either further along the supply chain or as part of other products.

Machine Learning For Crop Yield Prediction Market Global Report 2026 from The Business Research Company provides strategists, marketers and senior management with the critical information they need to assess the market.

This report focuses machine learning for crop yield prediction market which is experiencing strong growth. The report gives a guide to the trends which will be shaping the market over the next ten years and beyond.

Reasons to Purchase

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Where is the largest and fastest growing market for machine learning for crop yield prediction ? How does the market relate to the overall economy, demography and other similar markets? What forces will shape the market going forward, including technological disruption, regulatory shifts, and changing consumer preferences? The machine learning for crop yield prediction market global report from the Business Research Company answers all these questions and many more.

The report covers market characteristics, size and growth, segmentation, regional and country breakdowns, total addressable market (TAM), market attractiveness score (MAS), competitive landscape, market shares, company scoring matrix, trends and strategies for this market. It traces the market's historic and forecast market growth by geography.

  • The market characteristics section of the report defines and explains the market. This section also examines key products and services offered in the market, evaluates brand-level differentiation, compares product features, and highlights major innovation and product development trends.
  • The supply chain analysis section provides an overview of the entire value chain, including key raw materials, resources, and supplier analysis. It also provides a list competitor at each level of the supply chain.
  • The updated trends and strategies section analyses the shape of the market as it evolves and highlights emerging technology trends such as digital transformation, automation, sustainability initiatives, and AI-driven innovation. It suggests how companies can leverage these advancements to strengthen their market position and achieve competitive differentiation.
  • The regulatory and investment landscape section provides an overview of the key regulatory frameworks, regularity bodies, associations, and government policies influencing the market. It also examines major investment flows, incentives, and funding trends shaping industry growth and innovation.
  • The market size section gives the market size ($b) covering both the historic growth of the market, and forecasting its development.
  • The forecasts are made after considering the major factors currently impacting the market. These include the technological advancements such as AI and automation, Russia-Ukraine war, trade tariffs (government-imposed import/export duties), elevated inflation and interest rates.
  • The total addressable market (TAM) analysis section defines and estimates the market potential compares it with the current market size, and provides strategic insights and growth opportunities based on this evaluation.
  • The market attractiveness scoring section evaluates the market based on a quantitative scoring framework that considers growth potential, competitive dynamics, strategic fit, and risk profile. It also provides interpretive insights and strategic implications for decision-makers.
  • Market segmentations break down the market into sub markets.
  • The regional and country breakdowns section gives an analysis of the market in each geography and the size of the market by geography and compares their historic and forecast growth.
  • Expanded geographical coverage includes Taiwan and Southeast Asia, reflecting recent supply chain realignments and manufacturing shifts in the region. This section analyzes how these markets are becoming increasingly important hubs in the global value chain.
  • The competitive landscape chapter gives a description of the competitive nature of the market, market shares, and a description of the leading companies. Key financial deals which have shaped the market in recent years are identified.
  • The company scoring matrix section evaluates and ranks leading companies based on a multi-parameter framework that includes market share or revenues, product innovation, and brand recognition.

Scope

  • Markets Covered:1) By Component: Software; Services
  • 2) By Deployment Model: Cloud-Based; On-Premises
  • 3) By Farm Size: Small; Medium; Large
  • 4) By End User: Farmers; Agricultural Cooperatives; Research Institutions; Government Agencies; Other End Users
  • Subsegments:
  • 1) By Software: Predictive Analytics Software; AI-Powered Crop Monitoring Software; Weather And Climate Data Analytics Software; Remote Sensing And Satellite Imaging Software; Farm Management Software
  • 2) By Services: Consulting And Advisory Services; Implementation And Integration Services; Training And Support Services; Data Analytics And Custom Modeling Services; Cloud-Based Agricultural AI Services
  • Companies Mentioned: Microsoft Corp.; BASF SE; International Business Machines Corp.; Bayer AG; Raven Industries Inc.; Cropin Technology Solutions Pvt.; Terramera Inc.; FarmWise Labs Inc.; Sentera Inc.; Taranis; Ceres Imaging Inc.; CropX Inc.; PrecisionHawk; Aerobotics Ltd.; Fasal; IUNU Inc.; AgriWebb Pty Ltd.; Trace Genomics Inc.; Bloomfield Robotics; Agrograph Inc.; AiDOOS Corp.; FruitSpec
  • Countries: Australia; Brazil; China; France; Germany; India; Indonesia; Japan; Taiwan; Russia; South Korea; UK; USA; Canada; Italy; Spain
  • Regions: Asia-Pacific; South East Asia; Western Europe; Eastern Europe; North America; South America; Middle East; Africa
  • Time Series: Five years historic and ten years forecast.
  • Data: Ratios of market size and growth to related markets, GDP proportions, expenditure per capita,
  • Data Segmentations: country and regional historic and forecast data, market share of competitors, market segments.
  • Sourcing and Referencing: Data and analysis throughout the report is sourced using end notes.
  • Delivery Format: Word, PDF or Interactive Report
  • + Excel Dashboard
  • Added Benefits
  • Bi-Annual Data Update
  • Customisation
  • Expert Consultant Support

Added Benefits available all on all list-price licence purchases, to be claimed at time of purchase. Customisations within report scope and limited to 20% of content and consultant support time limited to 8 hours.

Table of Contents

1. Executive Summary

  • 1.1. Key Market Insights (2020-2035)
  • 1.2. Visual Dashboard: Market Size, Growth Rate, Hotspots
  • 1.3. Major Factors Driving the Market
  • 1.4. Top Three Trends Shaping the Market

2. Machine Learning For Crop Yield Prediction Market Characteristics

  • 2.1. Market Definition & Scope
  • 2.2. Market Segmentations
  • 2.3. Overview of Key Products and Services
  • 2.4. Global Machine Learning For Crop Yield Prediction Market Attractiveness Scoring And Analysis
    • 2.4.1. Overview of Market Attractiveness Framework
    • 2.4.2. Quantitative Scoring Methodology
    • 2.4.3. Factor-Wise Evaluation
  • Growth Potential Analysis, Competitive Dynamics Assessment, Strategic Fit Assessment And Risk Profile Evaluation
    • 2.4.4. Market Attractiveness Scoring and Interpretation
    • 2.4.5. Strategic Implications and Recommendations

3. Machine Learning For Crop Yield Prediction Market Supply Chain Analysis

  • 3.1. Overview of the Supply Chain and Ecosystem
  • 3.2. List Of Key Raw Materials, Resources & Suppliers
  • 3.3. List Of Major Distributors and Channel Partners
  • 3.4. List Of Major End Users

4. Global Machine Learning For Crop Yield Prediction Market Trends And Strategies

  • 4.1. Key Technologies & Future Trends
    • 4.1.1 Artificial Intelligence & Autonomous Intelligence
    • 4.1.2 Digitalization, Cloud, Big Data & Cybersecurity
    • 4.1.3 Internet Of Things (IoT), Smart Infrastructure & Connected Ecosystems
    • 4.1.4 Industry 4.0 & Intelligent Manufacturing
    • 4.1.5 Autonomous Systems, Robotics & Smart Mobility
  • 4.2. Major Trends
    • 4.2.1 Increasing Use Of Multivariate Environmental Data Inputs
    • 4.2.2 Growing Integration Of Remote Sensing Into Yield Models
    • 4.2.3 Expansion Of Real-Time Crop Monitoring Practices
    • 4.2.4 Rising Adoption Of Data-Driven Farm Decision Frameworks
    • 4.2.5 Greater Use Of Advanced Soil-Crop Relationship Modeling

5. Machine Learning For Crop Yield Prediction Market Analysis Of End Use Industries

  • 5.1 Farmers
  • 5.2 Agricultural Cooperatives
  • 5.3 Research Institutions
  • 5.4 Government Agencies
  • 5.5 Agri-Tech Solution Providers

6. Machine Learning For Crop Yield Prediction Market - Macro Economic Scenario Including The Impact Of Interest Rates, Inflation, Geopolitics, Trade Wars and Tariffs, Supply Chain Impact from Tariff War & Trade Protectionism, And Covid And Recovery On The Market

7. Global Machine Learning For Crop Yield Prediction Strategic Analysis Framework, Current Market Size, Market Comparisons And Growth Rate Analysis

  • 7.1. Global Machine Learning For Crop Yield Prediction PESTEL Analysis (Political, Social, Technological, Environmental and Legal Factors, Drivers and Restraints)
  • 7.2. Global Machine Learning For Crop Yield Prediction Market Size, Comparisons And Growth Rate Analysis
  • 7.3. Global Machine Learning For Crop Yield Prediction Historic Market Size and Growth, 2020 - 2025, Value ($ Billion)
  • 7.4. Global Machine Learning For Crop Yield Prediction Forecast Market Size and Growth, 2025 - 2030, 2035F, Value ($ Billion)

8. Global Machine Learning For Crop Yield Prediction Total Addressable Market (TAM) Analysis for the Market

  • 8.1. Definition and Scope of Total Addressable Market (TAM)
  • 8.2. Methodology and Assumptions
  • 8.3. Global Total Addressable Market (TAM) Estimation
  • 8.4. TAM vs. Current Market Size Analysis
  • 8.5. Strategic Insights and Growth Opportunities from TAM Analysis

9. Machine Learning For Crop Yield Prediction Market Segmentation

  • 9.1. Global Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion
  • Software, Services
  • 9.2. Global Machine Learning For Crop Yield Prediction Market, Segmentation By Deployment Model, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion
  • Cloud-Based, On-Premises
  • 9.3. Global Machine Learning For Crop Yield Prediction Market, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion
  • Small, Medium, Large
  • 9.4. Global Machine Learning For Crop Yield Prediction Market, Segmentation By End User, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion
  • Farmers, Agricultural Cooperatives, Research Institutions, Government Agencies, Other End Users
  • 9.5. Global Machine Learning For Crop Yield Prediction Market, Sub-Segmentation Of Software, By Type, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion
  • Predictive Analytics Software, AI-Powered Crop Monitoring Software, Weather And Climate Data Analytics Software, Remote Sensing And Satellite Imaging Software, Farm Management Software
  • 9.6. Global Machine Learning For Crop Yield Prediction Market, Sub-Segmentation Of Services, By Type, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion
  • Consulting And Advisory Services, Implementation And Integration Services, Training And Support Services, Data Analytics And Custom Modeling Services, Cloud-Based Agricultural AI Services

10. Machine Learning For Crop Yield Prediction Market Regional And Country Analysis

  • 10.1. Global Machine Learning For Crop Yield Prediction Market, Split By Region, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion
  • 10.2. Global Machine Learning For Crop Yield Prediction Market, Split By Country, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

11. Asia-Pacific Machine Learning For Crop Yield Prediction Market

  • 11.1. Asia-Pacific Machine Learning For Crop Yield Prediction Market Overview
  • Region Information, Market Information, Background Information, Government Initiatives, Regulations, Regulatory Bodies, Major Associations, Taxes Levied, Corporate Tax Structure, Investments, Major Companies
  • 11.2. Asia-Pacific Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

12. China Machine Learning For Crop Yield Prediction Market

  • 12.1. China Machine Learning For Crop Yield Prediction Market Overview
  • Country Information, Market Information, Background Information, Government Initiatives, Regulations, Regulatory Bodies, Major Associations, Taxes Levied, Corporate Tax Structure, Investments, Major Companies
  • 12.2. China Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

13. India Machine Learning For Crop Yield Prediction Market

  • 13.1. India Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

14. Japan Machine Learning For Crop Yield Prediction Market

  • 14.1. Japan Machine Learning For Crop Yield Prediction Market Overview
  • Country Information, Market Information, Background Information, Government Initiatives, Regulations, Regulatory Bodies, Major Associations, Taxes Levied, Corporate Tax Structure, Investments, Major Companies
  • 14.2. Japan Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

15. Australia Machine Learning For Crop Yield Prediction Market

  • 15.1. Australia Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

16. Indonesia Machine Learning For Crop Yield Prediction Market

  • 16.1. Indonesia Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

17. South Korea Machine Learning For Crop Yield Prediction Market

  • 17.1. South Korea Machine Learning For Crop Yield Prediction Market Overview
  • Country Information, Market Information, Background Information, Government Initiatives, Regulations, Regulatory Bodies, Major Associations, Taxes Levied, Corporate Tax Structure, Investments, Major Companies
  • 17.2. South Korea Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

18. Taiwan Machine Learning For Crop Yield Prediction Market

  • 18.1. Taiwan Machine Learning For Crop Yield Prediction Market Overview
  • Country Information, Market Information, Background Information, Government Initiatives, Regulations, Regulatory Bodies, Major Associations, Taxes Levied, Corporate Tax Structure, Investments, Major Companies
  • 18.2. Taiwan Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

19. South East Asia Machine Learning For Crop Yield Prediction Market

  • 19.1. South East Asia Machine Learning For Crop Yield Prediction Market Overview
  • Region Information, Market Information, Background Information, Government Initiatives, Regulations, Regulatory Bodies, Major Associations, Taxes Levied, Corporate Tax Structure, Investments, Major Companies
  • 19.2. South East Asia Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

20. Western Europe Machine Learning For Crop Yield Prediction Market

  • 20.1. Western Europe Machine Learning For Crop Yield Prediction Market Overview
  • Region Information, Market Information, Background Information, Government Initiatives, Regulations, Regulatory Bodies, Major Associations, Taxes Levied, Corporate Tax Structure, Investments, Major Companies
  • 20.2. Western Europe Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

21. UK Machine Learning For Crop Yield Prediction Market

  • 21.1. UK Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

22. Germany Machine Learning For Crop Yield Prediction Market

  • 22.1. Germany Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

23. France Machine Learning For Crop Yield Prediction Market

  • 23.1. France Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

24. Italy Machine Learning For Crop Yield Prediction Market

  • 24.1. Italy Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

25. Spain Machine Learning For Crop Yield Prediction Market

  • 25.1. Spain Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

26. Eastern Europe Machine Learning For Crop Yield Prediction Market

  • 26.1. Eastern Europe Machine Learning For Crop Yield Prediction Market Overview
  • Region Information, Market Information, Background Information, Government Initiatives, Regulations, Regulatory Bodies, Major Associations, Taxes Levied, Corporate Tax Structure, Investments, Major Companies
  • 26.2. Eastern Europe Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

27. Russia Machine Learning For Crop Yield Prediction Market

  • 27.1. Russia Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

28. North America Machine Learning For Crop Yield Prediction Market

  • 28.1. North America Machine Learning For Crop Yield Prediction Market Overview
  • Region Information, Market Information, Background Information, Government Initiatives, Regulations, Regulatory Bodies, Major Associations, Taxes Levied, Corporate Tax Structure, Investments, Major Companies
  • 28.2. North America Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

29. USA Machine Learning For Crop Yield Prediction Market

  • 29.1. USA Machine Learning For Crop Yield Prediction Market Overview
  • Country Information, Market Information, Background Information, Government Initiatives, Regulations, Regulatory Bodies, Major Associations, Taxes Levied, Corporate Tax Structure, Investments, Major Companies
  • 29.2. USA Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

30. Canada Machine Learning For Crop Yield Prediction Market

  • 30.1. Canada Machine Learning For Crop Yield Prediction Market Overview
  • Country Information, Market Information, Background Information, Government Initiatives, Regulations, Regulatory Bodies, Major Associations, Taxes Levied, Corporate Tax Structure, Investments, Major Companies
  • 30.2. Canada Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

31. South America Machine Learning For Crop Yield Prediction Market

  • 31.1. South America Machine Learning For Crop Yield Prediction Market Overview
  • Region Information, Market Information, Background Information, Government Initiatives, Regulations, Regulatory Bodies, Major Associations, Taxes Levied, Corporate Tax Structure, Investments, Major Companies
  • 31.2. South America Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

32. Brazil Machine Learning For Crop Yield Prediction Market

  • 32.1. Brazil Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

33. Middle East Machine Learning For Crop Yield Prediction Market

  • 33.1. Middle East Machine Learning For Crop Yield Prediction Market Overview
  • Region Information, Market Information, Background Information, Government Initiatives, Regulations, Regulatory Bodies, Major Associations, Taxes Levied, Corporate Tax Structure, Investments, Major Companies
  • 33.2. Middle East Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

34. Africa Machine Learning For Crop Yield Prediction Market

  • 34.1. Africa Machine Learning For Crop Yield Prediction Market Overview
  • Region Information, Market Information, Background Information, Government Initiatives, Regulations, Regulatory Bodies, Major Associations, Taxes Levied, Corporate Tax Structure, Investments, Major Companies
  • 34.2. Africa Machine Learning For Crop Yield Prediction Market, Segmentation By Component, Segmentation By Deployment Model, Segmentation By Farm Size, Historic and Forecast, 2020-2025, 2025-2030F, 2035F, $ Billion

35. Machine Learning For Crop Yield Prediction Market Regulatory and Investment Landscape

36. Machine Learning For Crop Yield Prediction Market Competitive Landscape And Company Profiles

  • 36.1. Machine Learning For Crop Yield Prediction Market Competitive Landscape And Market Share 2024
    • 36.1.1. Top 10 Companies (Ranked by revenue/share)
  • 36.2. Machine Learning For Crop Yield Prediction Market - Company Scoring Matrix
    • 36.2.1. Market Revenues
    • 36.2.2. Product Innovation Score
    • 36.2.3. Brand Recognition
  • 36.3. Machine Learning For Crop Yield Prediction Market Company Profiles
    • 36.3.1. Microsoft Corp. Overview, Products and Services, Strategy and Financial Analysis
    • 36.3.2. BASF SE Overview, Products and Services, Strategy and Financial Analysis
    • 36.3.3. International Business Machines Corp. Overview, Products and Services, Strategy and Financial Analysis
    • 36.3.4. Bayer AG Overview, Products and Services, Strategy and Financial Analysis
    • 36.3.5. Raven Industries Inc. Overview, Products and Services, Strategy and Financial Analysis

37. Machine Learning For Crop Yield Prediction Market Other Major And Innovative Companies

  • Cropin Technology Solutions Pvt., Terramera Inc., FarmWise Labs Inc., Sentera Inc., Taranis, Ceres Imaging Inc., CropX Inc., PrecisionHawk, Aerobotics Ltd., Fasal, IUNU Inc., AgriWebb Pty Ltd., Trace Genomics Inc., Bloomfield Robotics, Agrograph Inc.

38. Global Machine Learning For Crop Yield Prediction Market Competitive Benchmarking And Dashboard

39. Key Mergers And Acquisitions In The Machine Learning For Crop Yield Prediction Market

40. Machine Learning For Crop Yield Prediction Market High Potential Countries, Segments and Strategies

  • 40.1 Machine Learning For Crop Yield Prediction Market In 2030 - Countries Offering Most New Opportunities
  • 40.2 Machine Learning For Crop Yield Prediction Market In 2030 - Segments Offering Most New Opportunities
  • 40.3 Machine Learning For Crop Yield Prediction Market In 2030 - Growth Strategies
    • 40.3.1 Market Trend Based Strategies
    • 40.3.2 Competitor Strategies

41. Appendix

  • 41.1. Abbreviations
  • 41.2. Currencies
  • 41.3. Historic And Forecast Inflation Rates
  • 41.4. Research Inquiries
  • 41.5. The Business Research Company
  • 41.6. Copyright And Disclaimer
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