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Cultivating Innovation in Agribusiness: Drafting AI Patents—Part 2

March 19, 2024

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Written By Lorelei Graham, Fred Barbieri and Ahmed Elmallah

This blog is part two of a two-part series on patents and artificial intelligence technology in the AgTech and Agribusiness industry. Part one—Cultivating Innovation in Agribusiness: The Surge of AI Patents—discusses the growing number of filed and granted artificial intelligence patents in the agricultural sector, including some particularly innovative examples.

In this follow-up blog, we explore the intricacies of artificial intelligence (AI) patents in the AgTech and Agribusiness industry, highlighting significant hurdles and strategic considerations essential to keep front of mind when crafting robust AI patent applications.

AI Patents in AgTech: Key Challenges

Patenting AI technologies, particularly within the agricultural sector, presents unique challenges. We outline three primary obstacles below.

Determining Patent Eligibility

The core of many AI systems—mathematical algorithms—are generally not patentable across various jurisdictions. The mere implementation of these algorithms via computers does not inherently qualify them as patentable subject matter. This is particularly relevant for machine learning models, which at their essence, are complex mathematical algorithms.

Ensuring Novelty and Non-Obviousness

For an AI invention to be patentable, it must not only be new but also represent a non-obvious advancement over existing technologies. This criterion is critical when considering the application of machine learning models in agriculture, where the novelty often lies in the application rather than the technology itself.

Adequate Disclosure

A patent application must provide sufficient detail about the invention, ensuring that someone skilled in the field could replicate the AI system. Vague descriptions, such as the use of "any machine learning model," are insufficient for meeting the disclosure requirements.

AI Patents in AgTech: Strategic Considerations

To effectively navigate these challenges, several key considerations can help when drafting AI patent applications in the agriculture space.

Addressing Real-World Agricultural Problems

Illustrating how the AI technology solves specific, real-world problems in agriculture can help establish its patentability. This approach aligns with the concept of "Applied AI”—demonstrating the application of AI models to address tangible issues such as:

Demonstrating Improvements in Computer Functionality

Even if the primary innovation does not lie in its practical application, an AI invention may still be patentable if it enhances computer functionality. This could include, for example, adaptations of AI models that:

Incorporating the Hardware Environment

AI models in agricultural settings often operate within specific hardware environments. Describing this hardware context can lend a physical aspect to the invention, aiding in overcoming patent eligibility hurdles. Relevant examples include:

Focusing on Post-Processing of AI Outputs

How the outputs of an AI model are utilized, especially if they effect a physical change or control in the agricultural domain, can further support the case for patentability. This might include using AI to:

Detailing the AI Model

It is ideal to describe at least one implementation of the AI model in detail, rather than suggesting that any model could be used. This includes the architecture of the model, any unique configurations and how it is adapted for specific agricultural applications. Relevant examples include:

Explaining Model Training

Detailing the training process of the AI model, including the type of data used and any unique pre-processing methods, can address disclosure requirements and highlight the novelty of the approach. Relevant examples include:

As the Agribusiness landscape increasingly integrates AI and machine learning innovations, the critical role of securing these advancements through patent protection becomes ever more apparent. The agricultural sector faces its own set of unique challenges in the realm of AI patenting. However, it is our hope that the outlined strategic considerations offer valuable insights for industry pioneers to navigate these hurdles effectively. For organizations delving into the intricate process of AI patenting, the expertise of specialized legal practitioners, such as Bennett Jones' Intellectual Property Law group, proves indispensable in safeguarding and enhancing your most valuable ideas and processes.

For any questions or guidance on safeguarding intellectual property rights within the sphere of agricultural innovations, feel free to reach out to the authors. We are here to provide thorough support and expert advice tailored to your business needs.

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