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Evogene Announces Completion of First-In-Class Foundation Model for Generative Molecule Design, Developed in Collaboration with Google Cloud

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Evogene (NASDAQ: EVGN) has completed version 1.0 of its generative AI foundation model for small molecule design, developed with Google Cloud. The model enhances ChemPass AI's capabilities by simultaneously addressing multiple complex product criteria in pharmaceutical and agricultural applications. The proprietary model achieves 90% precision in novel molecule designs, compared to 29% in traditional GPT AI models, and is built on a dataset of 38 billion molecular structures. The technology enables the creation of potent, synthesizable, and patentable molecules while ensuring strong IP portfolios. Evogene is already developing version 2.0, focusing on enhanced multi-parameter optimization for therapeutic and agricultural applications.
Evogene (NASDAQ: EVGN) ha completato la versione 1.0 del suo modello di intelligenza artificiale generativa per la progettazione di piccole molecole, sviluppato in collaborazione con Google Cloud. Il modello potenzia le capacità di ChemPass AI affrontando simultaneamente molteplici criteri complessi per applicazioni farmaceutiche e agricole. Questo modello proprietario raggiunge una precisione del 90% nella progettazione di molecole nuove, rispetto al 29% dei modelli GPT AI tradizionali, ed è basato su un dataset di 38 miliardi di strutture molecolari. La tecnologia permette di creare molecole potenti, sintetizzabili e brevettabili, garantendo al contempo portafogli di proprietà intellettuale solidi. Evogene sta già sviluppando la versione 2.0, con un focus sull'ottimizzazione multi-parametrica avanzata per applicazioni terapeutiche e agricole.
Evogene (NASDAQ: EVGN) ha completado la versión 1.0 de su modelo base de inteligencia artificial generativa para el diseño de pequeñas moléculas, desarrollado junto con Google Cloud. El modelo mejora las capacidades de ChemPass AI al abordar simultáneamente múltiples criterios complejos para aplicaciones farmacéuticas y agrícolas. El modelo propietario alcanza un 90% de precisión en el diseño de moléculas novedosas, en comparación con el 29% de los modelos tradicionales de IA GPT, y está construido sobre un conjunto de datos de 38 mil millones de estructuras moleculares. La tecnología permite crear moléculas potentes, sintetizables y patentables, asegurando al mismo tiempo carteras sólidas de propiedad intelectual. Evogene ya está desarrollando la versión 2.0, centrada en una optimización multiparamétrica mejorada para aplicaciones terapéuticas y agrícolas.
Evogene(NASDAQ: EVGN)는 Google Cloud와 함께 개발한 소분자 설계용 생성 AI 기반 모델 버전 1.0을 완료했습니다. 이 모델은 ChemPass AI의 기능을 향상시켜 제약 및 농업 분야의 복잡한 여러 제품 기준을 동시에 충족합니다. 독자적인 이 모델은 380억 개의 분자 구조 데이터셋을 기반으로 하며, 새로운 분자 설계에서 90%의 정밀도를 달성하여 기존 GPT AI 모델의 29%에 비해 크게 향상되었습니다. 이 기술은 강력하고 합성 가능하며 특허 출원이 가능한 분자를 생성하는 동시에 강력한 지식재산권 포트폴리오를 보장합니다. Evogene는 이미 치료 및 농업 응용을 위한 다중 매개변수 최적화에 중점을 둔 버전 2.0 개발을 진행 중입니다.
Evogene (NASDAQ : EVGN) a achevé la version 1.0 de son modèle fondamental d'IA générative pour la conception de petites molécules, développé avec Google Cloud. Ce modèle améliore les capacités de ChemPass AI en répondant simultanément à plusieurs critères complexes pour des applications pharmaceutiques et agricoles. Le modèle propriétaire atteint une précision de 90 % dans la conception de molécules nouvelles, contre 29 % pour les modèles IA GPT traditionnels, et repose sur un ensemble de données de 38 milliards de structures moléculaires. Cette technologie permet de créer des molécules puissantes, synthétisables et brevetables tout en assurant des portefeuilles de propriété intellectuelle solides. Evogene travaille déjà sur la version 2.0, axée sur une optimisation multiparamétrique améliorée pour des applications thérapeutiques et agricoles.
Evogene (NASDAQ: EVGN) hat Version 1.0 seines generativen KI-Grundmodells für das Design kleiner Moleküle abgeschlossen, das in Zusammenarbeit mit Google Cloud entwickelt wurde. Das Modell verbessert die Fähigkeiten von ChemPass AI, indem es gleichzeitig mehrere komplexe Produktkriterien in pharmazeutischen und landwirtschaftlichen Anwendungen berücksichtigt. Das proprietäre Modell erreicht eine Präzision von 90 % bei der Gestaltung neuartiger Moleküle, verglichen mit 29 % bei herkömmlichen GPT-KI-Modellen, und basiert auf einem Datensatz von 38 Milliarden molekularen Strukturen. Die Technologie ermöglicht die Erstellung potenter, synthetisierbarer und patentierbarer Moleküle und sichert gleichzeitig starke IP-Portfolios. Evogene entwickelt bereits Version 2.0, die sich auf eine verbesserte Mehrparameteroptimierung für therapeutische und landwirtschaftliche Anwendungen konzentriert.
Positive
  • 90% precision rate in novel molecule designs compared to 29% in traditional GPT AI models
  • Built on extensive dataset of 38 billion molecular structures
  • Enables simultaneous consideration of multiple complex product requirements
  • Facilitates development of strong, defensible IP portfolios
  • Version 2.0 already in development with enhanced capabilities
Negative
  • None.

Insights

Evogene's new AI model dramatically improves precision in novel molecule design from 29% to 90%, potentially transforming pharmaceutical and agricultural product development.

Evogene has achieved a significant technological breakthrough with its new generative AI foundation model for small molecule design. The model addresses a fundamental challenge in both pharmaceutical and agricultural industries: discovering novel molecules that simultaneously satisfy multiple complex criteria. The most impressive technical achievement is the 90% precision in novel molecule design compared to just 29% in traditional GPT AI models.

What makes this development particularly valuable is the model's ability to optimize for multiple parameters simultaneously rather than sequentially. This represents a paradigm shift from traditional discovery methods that typically narrow options and reduce success probability by addressing challenges one after another. The foundation model was built on an impressive dataset of approximately 38 billion molecular structures and leverages Google Cloud's advanced AI infrastructure.

The strategic advantage here is two-fold: first, Evogene can now explore previously untapped areas of chemical space, creating truly novel molecular structures; second, this novelty translates directly to stronger intellectual property positions. For pharmaceutical applications, this means developing compounds with potentially higher efficacy and fewer side effects while maintaining patentability. For agricultural applications, this enables the creation of more effective and sustainable chemicals with robust IP protection.

The company is already developing version 2.0 with enhanced flexibility for multi-parameter optimization, suggesting a clear product roadmap and continued innovation. This technological advancement significantly strengthens Evogene's ChemPass AI tech-engine and potentially positions the company as a valuable partner for pharmaceutical and agricultural companies seeking more efficient R&D pathways.

The new model addresses the challenge of identifying novel small molecules that meet multiple product criteria, an essential requirement for pharma and agriculture applications

REHOVOT, Israel, June 10, 2025 /PRNewswire/ -- Evogene Ltd. (NASDAQ: EVGN) (TASE: EVGN), a leading computational biology company focused on revolutionizing life-science product discovery and development, today announced the completion of its generative AI foundation model, version 1.0, for small molecule design, developed in collaboration with Google Cloud. The new model expands the existing capabilities of ChemPass AI, Evogene's tech-engine for small molecule discovery and optimization, by addressing one of the core challenges faced by both the pharmaceutical and agriculture industries: identifying novel small molecules that meet multiple complex product criteria.

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In both pharma and agriculture, successful product development depends on identifying molecules that meet complex performance criteria while also being patentable. Traditional discovery methods typically address these challenges sequentially, a process that reduces success probability. In addition, they tend to steer towards well-explored or saturated areas of chemical space. This limits the potential for innovation, making it difficult to secure robust intellectual property and achieve meaningful product differentiation.

In contrast, generative AI models support companies in their small molecule discovery process by enabling the simultaneous consideration of multiple complex product requirements, all while creating truly novel molecular structures. This approach also facilitates the development of strong, defensible IP portfolios. Evogene's first-in-class foundation model is designed to do exactly that.

Developed in-house by Evogene's algorithm teams, this proprietary foundation model marks a dramatic advance over traditional generative AI. Internal computational analysis shows that it delivers approximately 90% precision in successful and precise, novel molecule designs (vs. approximately 29% in traditional GPT AI-model), ensuring that each compound simultaneously meets essential parameters. This breakthrough paves the way for creating highly potent, synthesizable, and patentable molecules across life-science products. 

Built on a large dataset of approximately 38 billion molecular structures, the model was trained and deployed using Google Cloud's advanced AI infrastructure, including high-performance GPUs and scalable storage. The result is a foundation model that not only powers Evogene's ChemPass AI today but will also provide a scalable base for future enhancements.

Ofer Haviv, President and CEO of Evogene, stated: "Completing our foundation model is a major milestone in our offering. It unlocks new frontiers for ChemPass AI, giving us the power to generate wholly novel molecules—ones that not only perform but also create new IP space. This is key to overcoming long-standing challenges in life-science R&D: from reducing late-stage failure in pharma to developing ag-chemicals that are effective, sustainable, and proprietary."

Boaz Maoz, Managing Director, Google Cloud Israel, commented: "We're pleased to collaborate with Evogene's innovation in AI-powered molecule design. Their progress with ChemPass AI highlights the strength of pairing advanced AI infrastructure with deep scientific insight. We look forward to seeing the impact of this new model in drug discovery and agriculture."

Evogene also announces that development is already underway on version 2.0 of its generative AI foundation model, with a focus on enhanced flexibility for multi-parameter optimization. The updated version will incorporate predefined, customized parameters tailored to therapeutic contexts or specific agriculture requirements. It will enable ChemPass AI to better balance complex real-world constraints, such as efficacy, toxicity, and stability, significantly improving its ability to generate molecules optimized for clinical, commercial, and regulatory success.

Evogene welcomes continued engagement with partners across the pharmaceutical and agriculture industries interested in accessing or integrating ChemPass AI for next-generation product development.

About Evogene Ltd.

Evogene Ltd. (NASDAQ: EVGN) (TASE: EVGN) is a computational biology company leveraging big data and artificial intelligence, aiming to revolutionize the development of life-science based products by utilizing cutting-edge technologies to increase the probability of success while reducing development time and cost.

Evogene established three unique tech-engines – MicroBoost AI, ChemPass AI and GeneRator AI. Each tech-engine is focused on the discovery and development of products based on one of the following core components: microbes (MicroBoost AI), small molecules (ChemPass AI), and genetic elements (GeneRator AI).

Evogene uses its tech-engines to develop products through strategic partnerships and collaborations, and its four subsidiaries including:

  • Biomica Ltd. (www.biomicamed.com) – developing and advancing novel microbiome-based therapeutics to treat human disorders powered by MicroBoost AI;
  • Lavie Bio (www.lavie-bio.com) – developing and commercially advancing, microbiome based ag-biologicals powered by MicroBoost AI;
  • AgPlenus Ltd. (www.agplenus.com) – developing next generation ag-chemicals for effective and sustainable crop protection powered by ChemPass AI; and
  • Casterra Ag (www.casterra.co) – developing and marketing superior castor seed varieties producing high yield and high-grade oil content, on an industrial scale for the biofuel and other industries powered by GeneRator AI.

For more information, please visit: www.evogene.com.  

Forward-Looking Statements

This press release contains "forward-looking statements" relating to future events. These statements may be identified by words such as "may", "could", "expects", "hopes" "intends", "anticipates", "plans", "believes", "scheduled", "estimates", "demonstrates" or words of similar meaning. For example, Evogene and its subsidiaries are using forward-looking statements in this press release when it discusses the ability of the AI foundation model to identify novel small molecules that meet multiple complex product criteria while also being patentable, the ability of the AI foundation model to create highly potent, synthesizable, and patentable molecules across life-science products, the ability of the AI foundation model to reduce late-stage failure in pharma to and develop ag-chemicals that are effective, sustainable, and proprietary, and the development of version 2.0 of Evogene's generative AI foundation model, with a focus on enhanced flexibility for multi-parameter optimization.  Such statements are based on current expectations, estimates, projections and assumptions, describe opinions about future events, involve certain risks and uncertainties which are difficult to predict and are not guarantees of future performance. Therefore, actual future results, performance or achievements of Evogene and its subsidiaries may differ materially from what is expressed or implied by such forward-looking statements due to a variety of factors, many of which are beyond the control of Evogene and its subsidiaries, including, without limitation, the current war between Israel and Hamas and any worsening of the situation in Israel such as further mobilizations or escalation in the northern border of Israel and those risk factors contained in Evogene's reports filed with the applicable securities authority. In addition, Evogene and its subsidiaries rely, and expect to continue to rely, on third parties to conduct certain activities, such as their field-trials and pre-clinical studies, and if these third parties do not successfully carry out their contractual duties, comply with regulatory requirements or meet expected deadlines, Evogene and its subsidiaries may experience significant delays in the conduct of their activities. Evogene and its subsidiaries disclaim any obligation or commitment to update these forward-looking statements to reflect future events or developments or changes in expectations, estimates, projections and assumptions.

Contact:

[email protected]
Tel: +972-8-9311901

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SOURCE Evogene

FAQ

What is the precision rate of Evogene's (EVGN) new AI foundation model for molecule design?

Evogene's new AI foundation model achieves approximately 90% precision in novel molecule designs, compared to about 29% in traditional GPT AI models.

How many molecular structures were used to train Evogene's (EVGN) AI foundation model?

The model was trained on a large dataset of approximately 38 billion molecular structures.

What are the main advantages of Evogene's (EVGN) new AI foundation model?

The model enables simultaneous consideration of multiple complex product requirements, creates novel molecular structures, ensures strong IP portfolios, and delivers high precision in molecule designs.

What is Evogene (EVGN) planning for version 2.0 of their AI foundation model?

Version 2.0 will focus on enhanced flexibility for multi-parameter optimization, incorporating predefined parameters for therapeutic contexts and agricultural requirements.

Who did Evogene (EVGN) collaborate with to develop their AI foundation model?

Evogene developed the AI foundation model in collaboration with Google Cloud, utilizing their advanced AI infrastructure including high-performance GPUs and scalable storage.
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