{"slug": "agriculture-is-ready-for-ai-but-its-data-isnt", "title": "Agriculture is ready for AI, but its data isn’t", "summary": "Artificial intelligence promises significant improvements in agriculture, such as a 26% increase in crop yield and 41% reduction in water use, but industry leaders must first ensure their data is accurate, structured, and governed to avoid misleading outputs. Reltio warns that AI vendors often overlook data readiness, which is critical for trustworthy predictions and recommendations in farming.", "body_md": "Sponsored\n\n# Agriculture is ready for AI, but its data isn’t\n\nData accuracy, structure, and governance are foundational components required for agricultural AI.\n\nProvided by[Reltio](https://www.reltio.com/)\n\nArtificial intelligence is transforming what is possible in agriculture, but industry leaders should be wary of investing in AI without first laying the groundwork.\n\nThe use cases are promising, especially for an industry navigating volatile fertilizer costs, unpredictable weather, and margins that leave little room for error. [Research](https://www.researchgate.net/publication/390905953_The_Integration_of_Artificial_Intelligence_in_Agriculture_Emerging_Trends_Benefits_and_Challenges) shows AI-enabled predictive models can improve crop yield by 26%, reduce water use by 41%, and cut chemical usage by 33%.\n\nHowever, what AI vendors usually won’t tell you is that these solutions are only effective if you have a clean, solid data foundation. However, at Reltio, we have experience in this area, including leading technology strategy at a major agricultural distributor and building a data platform used by enterprises worldwide–we’ve seen it first hand.\n\n**What AI vendors won’t tell you **\n\nVendor conversations in agriculture tend to follow a familiar pattern. The pitch leads with grand promises around using AI to monitor crop health in real time, optimize irrigation, and squeeze more yield from every acre.\n\nThe promise is compelling, but what rarely comes up is the question of whether the data foundation underneath those promises is accurate and complete. If not, there is a real and significant risk that AI will generate misleading outputs that seem authoritative but inspire action that is, at best, counterproductive.\n\nFor instance, a yield prediction model fed inconsistent historical data will generate imprecise forecasts. Similarly, a precision irrigation system drawing on fragmented sensor data will make watering decisions that waste resources instead of saving them.\n\nIn each case, the AI is failing because the data it was trained on was not sufficient to produce trustworthy outputs. In agriculture, every AI hallucination is a liability, and the likelihood of error is high.\n\n**Why agriculture is a uniquely challenging test case**\n\nThe data landscape across a modern agricultural operation or a large distributor serving thousands of growers is extraordinarily complex.\n\nModern farming environments make extensive use of IoT devices and machinery. Irrigation systems are automated, tractors navigate fields autonomously, and drones capture field imagery at scale.\n\nHowever, machine data is disparate by nature. Add in external sources, including weather feeds, U.S. Department of Agriculture data, and third-party market information, and the question of how you bring all of it together into something coherent becomes a significant undertaking.\n\nAgricultural AI also needs to understand more than just customer attributes; it needs to understand the land: GPS coordinates, farm boundaries, field blocks, and soil variation across a single property. Where do you apply fertilizer, and at what rate, and in which specific area of the farm? Not all parts of a field are the same, and an AI system that treats them as if they are will produce recommendations that are at best imprecise and at worst damaging.\n\nThere is also a compliance dimension due to the chemicals and the responsibility involved. Operational AI in agriculture needs significantly more checks and governance than it might in a lower-stakes environment. When a flawed recommendation gets acted upon in the field, the consequences can be severe.\n\n**What data readiness means in practice **\n\nData readiness is the difference between AI delivering on its promise vs. a “garbage in, garbage out” scenario. Fundamentally, being ready for AI means having a data model that accurately reflects how the business operates.\n\nFor a company like Wilbur-Ellis, a 104-year-old, family-owned agricultural distributor, that means understanding who your customers are, which fields they farm, which inputs they need, which suppliers those inputs come from, what they paid last season, and how all of that connects to margin. That information needs to be current, consistent, and accessible across the organization, rather than locked in separate systems that were never designed to talk to each other.\n\nSimilarly, for farming operations themselves, data readiness means having a reliable, connected picture of what is happening across every field: soil health records, input application histories, yield data from previous seasons, equipment performance, and real-time sensor readings from irrigation systems.\n\nGovernance matters just as much as structure. Prices change, relationships evolve, and suppliers come and go. An AI system drawing on data that was accurate six months ago but has not been maintained will make recommendations based on a version of the business that no longer exists.\n\n**Building the foundation that makes AI trustworthy**\n\nThe good news is that the path to data readiness is feasible. It starts with a strong data model: a single, governed source of truth that connects customers, suppliers, products, pricing, orders, and margins in a way that reflects how the organization operates.\n\nFrom there, it requires data pipelines fast enough to deliver insights when decisions need to be made, governance frameworks that keep that data trustworthy over time, and security controls that ensure sensitive commercial information is accessible to the right people under the right conditions.\n\nThis is precisely the challenge that Reltio, an SAP company, was built to solve. Reltio enables companies to unify their fragmented data so AI agents and systems can operate from a complete picture of the business. Reltio builds a trusted system of context, known as the context intelligence layer, that brings all entities, relationships, rules together under one roof and makes business data easy to access and interpret.\n\nFor Wilbur-Ellis, building that trustworthy data foundation has meant being able to ask more complex questions and trust the answers, which is the precondition for any AI system to be genuinely useful.\n\n**How agriculture can drive real value from AI**\n\nThe question worth asking before the next AI conversation is not whether the use case is promising. It almost certainly is. The question is whether the underlying data foundation is strong enough to make the output trustworthy.\n\nAgriculture has always required its leaders to make high-stakes decisions under uncertainty, and AI offers the genuine prospect of making those decisions faster and better informed. That prospect is only achievable for organizations that have done the foundational work first, and the businesses that will get the most from AI are the ones investing in that foundation now.\n\n*This content was produced by Reltio. It was not written by MIT Technology Review’s editorial staff.*\n\n### Deep Dive\n\n### Artificial intelligence\n\n### A new US phone network for Christians aims to block porn and gender-related content\n\nLaunching next week on T-Mobile's network, the cell plan takes a nuclear approach to online safety.\n\n### A startup claims it broke through a bottleneck that’s holding back LLMs\n\nSubquadratic has now shared more details about its new model. 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