• August 2018 marked the start of the Autonomous Greenhouses Challenge as five international teams try to grow cucumbers at a distance with the use of artificial intelligence at the facilities of Wageningen University & Research (WUR).

  • Artificial intelligence (AI) has come to occupy an important role in Beijing’s ‘Made in China 2025’ blueprint. China wants to become a global leader in the field by 2030 and now has an edge in terms of academic papers, patents and both cross-border and global AI funding. 

  • It has gone mostly under the radar, but the use of artificial intelligence (AI) by African tech startups is on the rise, with the sector becoming bigger by the week and attracting more funding.

  • Once traditional, Brazilian agribusiness is undergoing a very rapid technological revolution. At the heart of this transformation, AI in agriculture emerges as a key player, marking a significant shift in farming practices.

    With the advancement of AI, agribusiness companies are heavily investing – either alone or in partnership with research institutes – in developing solutions to automate processes and daily activities on farms, fields, and other segments.

     
    Do you know the most interesting applications of AI in agriculture?

    We invited Jayme Barbedo, a researcher and supervisor of the Scientific Computing, Information Engineering, and Automation Research Group at Embrapa Agricultura Digital, to discuss the topic. Good reading!

    What is the importance of Artificial Intelligence in agriculture?

    AI is becoming increasingly integrated into daily life and various sectors, including agriculture. 

    Farms generate a lot of information every day. Recording, entering data into spreadsheets, and analyzing it is a task that requires time, attention, and expertise. With AI, this is starting to change.

    New digital tools and algorithms, trained and fed with vast amounts of data, are making field management and operations more efficient, precise, and sustainable.

    Jayme Barbedo notes that several digital technologies are already applied in the field. “We have automatic milking and automatic weed detection in crops for targeted action. These technologies are already a reality,” he states.

    Furthermore, with the development of generative AI and large language models (e.g., ChatGPT), a whole new universe of applications has opened up across all sectors, including agriculture. 

       Artificial intelligence (AI) innovations are reshaping animal health diagnostics
    However, Embrapa's researcher highlights that these technologies still need to evolve. “We must not lose sight that they are in the hands of companies that may introduce biases in the responses to serve their own interests.” 

    Therefore, even though there are very powerful technological options, it's important for countries like Brazil to invest in developing national technologies that use reliable sources and meet the true interests of their populations.

    6 main applications of AI in agriculture

    With the ability to process large volumes of data, learn complex patterns, and make decisions, AI can radically transform how agricultural activities are performed.

    Consequently, there are many applications of AI in agribusiness. With extensive experience in the field, Jayme Barbedo highlights the six most interesting ones. Check it out!

    1 - Advanced geospatial data analysis

    Increasing numbers of satellites are generating high-resolution spatial, temporal, and spectral data. However, analyzing these data and extracting useful information is still very manual. 

    According to the Embrapa researcher, this is attracting many research groups. “They are developing techniques for automatic and objective analysis of this data,” he says. 

    In agriculture, practical applications include:


    Detecting stresses in crops 
    Such measures help speed up decision-making and take action to address problems. 

    “Given the interest in this subject, I believe there will be a proliferation of such tools in the coming years,” adds Barbedo.

    2 - Real-Time Crop Monitoring

    Besides satellite monitoring, various sensors and techniques based on the data they collect are being developed for crop monitoring. 

    The generated data includes images of the crops, weather variables, pest information from smart traps, soil sensing, etc. 

    According to Barbedo, monitoring can be done in two ways: 

    Static, with sensors installed at strategic points on the property
    Dynamic, using drones, agricultural machines, and soil robots 
    There are various technologies aimed at crop monitoring, some already used in practice, but many still need further development to handle the huge challenges posed by the agricultural environment.

     
    3 - Automation of repetitive tasks

    Automation of repetitive tasks has been a major driver of industrial development over the last two centuries. This automation has been growing in both scope and sophistication. 

    In agriculture, there are many examples of sophisticated machinery capable of planting and harvesting autonomously, especially for grains. 

    However, in areas like fruit farming, where careful harvesting is needed to avoid damaging the product, Barbedo notes that this has been a challenging problem to solve. 

    “There are robots capable of harvesting fruits without causing damage, but they still have several limitations that are gradually being overcome in research,” states the researcher.

    Other repetitive activities such as transportation, packaging, and sorting of products are also being automated, and with the rapid development of AI-based technologies, this trend is expected to intensify in the coming years.

    4 - Optimization of irrigation and fertilization

    Irrigation and fertilization are still often done subjectively and based on a set of information that does not always reflect the real needs of the crops. 

    With the advancement and reduction in cost of field sensors, farmers now have access to a vast amount of data that, if properly utilized, can lead to near-ideal management. 

    However, this is not a trivial task and can be challenging even with models developed through careful scientific research. “This is where AI tends to be more useful,” says Barbedo. 

    Well-trained AI models with high-quality data can implicitly learn all patterns related to the problem being addressed, providing responses very close to the ideal without the need to model each parameter explicitly. 

    In recent years, there has been a rapid proliferation of such technologies, but not all producers are willing to adopt them.  “Training and convincing are still necessary,” suggests the researcher.

     
    5 - More precise application of inputs

    As mentioned earlier, agricultural machines equipped with devices to detect and eliminate weeds automatically and locally are already available. 

    The goal is to develop similar technologies for diseases, pests, and nutrition, taking AI in agriculture to a new level. 

    However, according to the Embrapa researcher, the major challenge today is generating enough data to represent the variety of conditions encountered in practice. Once this issue is resolved, advancements will be rapid. 

    “Once this problem is solved, new technologies offering sufficient robustness to handle real-world crops should emerge quickly.”

    6 - Harvest and weather forecasting

    Crop forecasting models based on weather conditions have existed for a long time and contribute to agriculture in various ways.

    However, with the development of AI in agriculture, more variables are being incorporated into these models, including satellite images and other information previously inaccessible due to the limitations of conventional models. 

    “With these advances, the accuracy of crop forecasting models is increasing rapidly, and this is a trend that is expected to continue in the coming years,” affirms Jayme Barbedo.

    Given these numerous applications, it is clear that the use of AI in agriculture has the power to push agribusiness beyond the limits of what is currently possible. 

    As we explore and implement future AI trends, we have the opportunity to create a more efficient, precise, and sustainable agricultural sector.

  • Digital transformation is the adoption of advanced technologies and the rise of innovations as companies and individuals reorganise to be mobile- and digital-first, multimodal, and intelligence-driven. It is a catalyst for engendering agility, and has become crucial for organisations to stay competitive, achieve successes, and even survive.

  • Unless you’ve been lucky enough to be stranded on a desert island for the past few years, you’re no doubt aware that the farming industry is on the cusp of a so-called ‘technological revolution’. The enabler of this revolution: Artificial Intelligence (AI).

  • A rural farmer in Tanzania hovers over a wilting cassava plant with her phone. In seconds she gets a diagnosis of the disease affecting her plant and how best to manage it to boost her production.

  • The Artificial Intelligence in Agriculture Market size is projected to grow from USD 1.7 billion in 2023 to USD 4.7 billion by 2028; growing at a Compound Annual Growth Rate (CAGR) of 23.1% from 2023 to 2028.

    AI in agriculture offers several advantages to the farmers such as real-time insights from their fields, monitor soil quality, plant health, temperature, automate irrigation, pesticide process- all of which are helping to improve the overall harvest quality and accuracy. AI in agriculture has various applications aimed at optimizing the efficiency of crop production such as precision farming, livestock monitoring, drone analytics, agriculture robots, labor management.  Increasing crop productivity through deep learning technology driving the growth of the AI in agriculture market.

    The objective of the report is to define, describe, and forecast the artificial intelligence in agriculture market share based on technology, offering, application and region.

    Artificial Intelligence in Agriculture Market Forecast to 2028

    Rising need for real-time data by growers and farmers to take preventive measures

    Increasing agricultural activities and the growing need for real-time data largely drive the market for AI in agriculture. Real-time data from agricultural farms help make prompt decisions regarding preventive measures. Farmers from North America, South America, and Europe use sensors, drones, guidance technologies, and soil sampling techniques to gather data on soil moisture and nutrient levels across their fields. Farmers and growers from the US, Canada, Brazil, and most Western European countries are turning to high-tech tools for data collection and data analysis. Drone-enabled scouting is one of the most convenient ways of collecting farm data.

     Artificial Intelligence in Agriculture Market Size, Share and Growth

    Government schemes encouraging adoption of AI solutions to manage small farms

    There are over 570 million farms worldwide, and 95% of all these farms are less than 5 hectares in size. AI solutions are predominantly implemented in farms with over 100 hectares of land. This can be attributed to the high initial investment required for implementing AI solutions. Farmers owning lands over 100 hectares generally have the capability to invest in AI-based solutions for farm management and other applications. However, with governments around the world supporting the use of AI for agricultural applications and providing aid to farmers with small farms, there is an opportunity for solution providers to focus on farms with less than 5 hectares of land. For instance, in the US, the Department of Agriculture provides small and mid-size producers with programs that avail farmers with easy loans and improve their technological know-how to use the best technology for farming.

    High cost of AI-driven precision farming equipment

    The major restraining factor for the AI in agricultural market is the high cost of AI-enabled farming products and solutions, including sensors, software, and robots. Many factors are responsible for the high cost of gathering precise field data. For instance, companies develop AI-powered solutions or platforms according to customer requirements. They offer AI-powered prebuilt and custom-built solutions such as analytics systems, virtual assistants, and chatbots. Similarly, AI features and AI management are also important factors that incur additional costs.

    Availability of limited workforce with technological expertise

    Artificial intelligence (AI) is a complex system, and for developing, managing, and successfully implementing AI systems, farmers require certain skill sets. For instance, people dealing with AI systems should know about technologies such as cognitive computing, machine learning, deep learning, and image recognition. In addition, the integration of AI solutions in existing systems is a difficult task that requires extensive data processing to replicate the behavior of a human brain. Even a minor error can result in system failure or adversely affect the desired result.

    Artificial Intelligence in Agriculture Market Segmentation

    Machine learning enabled AI in agriculture contributes largest market share through the forecast period.”

    Machine learning-enabled solutions are being significantly adopted by agricultural organizations and farmers worldwide to enhance farm productivity and to gain a competitive edge in business operations. Technological advancement and proliferation in farm data generation are some of the major driving factors for the AI in agriculture market. With the use of machine learning farmers able to capture the factor of soil, seeds quality fertilizer application, environmental variables and irrigation.

    AI in agriculture market for software segment is to hold the largest market share through the forecast period.

    artificial intelligence in agriculture market share has been segmented based on offerings into hardware, software, AI-as-a-service, and service. Software segment is to hold the largest market share through the forecast period. The software integrated into a computer system is responsible for carrying out complex operations. It synthesizes the data received from the hardware and processes it in the AI system to generate an intelligent response. Furthermore software segment is segmented into AI platform and AI solution. Where in AI platform data is combined with a decision-making algorithm to enable developers to create a business solution.

    Precision farming application of AI in agriculture to hold significant share during the forecast period”

    The market for precision farming applications was valued at USD 542 million in 2022 and is projected to reach USD 1,432 million by 2028; it is expected to grow at a CAGR of 20.5% during the forecast period. This segment is likely to continue to hold the second-largest market share in the coming years due to the high adoption rate of AI technologies for precision farming applications. Precision farming and automatization in food production are priorities for food growers in the current situation, and AI fuels the gains.

    Market for computer vision technology based AI products is expected to grow at highest CAGR during forecasted period.

    The AI in agriculture market has been segmented based on technology into machine learning, computer vision, and predictive analytics. Artificial intelligence in agriculture market for computer vision technology based AI products is expected to grow at highest CAGR during forecasted period. This high growth rate is attributed to the rising need for continuous monitoring and analysis of crop health and increasing use of computer vision technology in agricultural applications such as sorting the produce according to weight, color, size, and ripeness and identifying defects in agricultural produce.

    Artificial Intelligence in Agriculture Industry Regional Analysis

    North America is to contribute the largest in the market during the forecast period

    The North America held the largest artificial intelligence in agriculture market share during the forecast period. The AI in agriculture industry in this region has been segmented into US, Canada and Mexico. North America has large scale agriculture players in the region are already using AI technology to significantly improve the speed and accuracy of their planting and crop management techniques. The demand for advanced agricultural solutions is expected to drive the growth of the AI in agriculture market in this region.

  • Human beings have been obsessed with the concept of intelligence and have developed various instruments to understand and measure it. Intelligence is essentially the use of the brain to understand complex and diverse phenomena.

  • While artificial intelligence is commonly employed within customer service, manufacturing, and retail, one sector that may not immediately spring to mind when one thinks of AI is agriculture. Nevertheless, farmers are increasingly relying on this technology to produce their crops.

  • The Fourth Industrial Revolution is, ostensibly, upon us. The term was coined in 2016 by Klaus Schwab, the founder and executive chairman of the World Economic Form.

  • The AI in agriculture market was valued at USD 600 million in 2018 and is expected to reach USD 2.6 billion by 2025.

  • According to a Gartner Survey of over 3,000 CIOs, Artificial intelligence (AI) was by far the most mentioned technology and takes the spot as the top game-changer technology away from data and analytics, which is now occupying a second place. 

  • A group of maize farmers stands huddled around an agronomist and his computer on the side of an irrigation pivot in central South Africa.

  • The age of artificial intelligence (AI) in agriculture is in motion.

  • Robotisation of food production has major advantages. Robots are light and make staff superfluous.

  • Trade wars, labor shortages, and drastic weather really tested our patience and our commitment to farming.

  • Robovision develops and hires out artificial ‘brains’. These make it very easy for companies to automate complex production systems and machinery, such as a combine harvester. We spoke to Jonathan Berte, the (human!) brain behind the Belgian company Robovision.

  • Innovation is more important in modern agriculture than ever before.

  • When the elephant arrived in the night, on the hunt for sugarcane, Uthorn Kanthong was waiting for him.