Machine Learning Engineer

Back to all jobs
Syngenta Group
Published
May 11, 2026
Location
United States of America
Category
Job Type

Machine Learning Engineer: our view in 3 lines...

  • The Role: An individual contributor role building and deploying computer vision and machine learning solutions for agricultural phenomics and breeding programs.
  • The Person: Design, build, and productionize computer vision models and cloud-based phenomics data pipelines, deploy and monitor ML services, and collaborate with research and product teams to deliver scalable imaging-derived traits.
  • Requirements: Deep learning for computer vision with PyTorch TensorFlow Keras scikit-learn XGBoost plus Python SQL Docker CI/CD MLOps MLflow Airflow and cloud platforms AWS GCP or Azure.

Job Description

Company Description

About Syngenta 

At Syngenta Seeds Field Crops, we're shaping the future of agriculture and empowering farmers to meet the ever-growing demand for food and fuel. We’re a global Ag Tech powerhouse, headquartered in the United States, with passionate, local experts collaborating with farmers to deliver solutions that create market opportunities.  We unite precision breeding, advanced biotechnology trait choice, and digital platforms for unmatched in-field performance.  Our seeds help mitigate risks such as disease, insect, weed, and extreme weather pressures, all while promoting sustainable farming practices that protect and enhance our planet. Join our mission of revolutionizing food security and transforming agriculture. 

Job Description

At Syngenta, we are building the most collaborative and trusted team in agriculture to provide leading seeds innovations that enhance the prosperity of farmers worldwide. Our Data Science and Engineering team in R&D Digital is seeking a motivated Machine Learning Engineer who will drive the development and deployment of advanced computer vision and machine learning solutions, with a primary focus on leveraging multi-modal imagery and sensor data to accelerate breeding programs and bring superior seeds to market faster.

As an individual contributor, you will use your technical expertise and scientific rigor to transform raw imagery and other multiple data sources into scalable, production-grade AI tools that empower internal and external users across research, product development, and operational workflows. This work spans not only developing research prototypes but also building and maintaining the underlying software and cloud components (data pipelines, orchestration, deployment, monitoring) required to run reliably in production.

To do so, you will engage directly with stakeholders, researchers, product managers, and technical partners to translate business objectives and scientific goals into robust, innovative machine learning solutions. You will also drive the strategic vision for next-generation phenomics and related AI capabilities, ensuring alignment with organizational goals and maximizing impact across multiple disciplines.

This is an opportunity to apply cutting-edge remote sensing and AI technologies to solve real-world agricultural challenges on a global scale.

Accountabilities: 

  • Design, develop, and deploy production-grade computer vision models that extract quantitative digital traits from multi-modal imagery (e.g., RGB, multispectral, thermal, hyperspectral, LiDAR, 3D point clouds) captured from drones, ground-based platforms, mobile devices, satellites and other kinds of sensors.
  • Build and maintain scalable phenomics pipelines that process thousands of field plots across multiple breeding programs, integrating image acquisition, preprocessing, trait extraction, quality control, and delivery to downstream data products with minimal manual intervention.
  • Collaborate with plant breeders, researchers, product managers, engineers, and data scientists to translate objectives into computer vision and machine learning solutions, validate outputs against ground truth, and ensure scientific and business relevance.
  • Shape the strategic direction for computer vision in phenomics, defining how to maximize value from proprietary imagery and sensor data through modern ML approaches (self-supervised learning, multi-modal fusion) while balancing innovation with practical deployment needs.
  • Contribute across the full lifecycle of machine learning projects, such as problem definition, data exploration, model selection, performance evaluation, deployment, and monitoring, which could include both phenomics and broader AI/ML applications.
  • Design, build, and own cloud-based data pipelines and workflow orchestrators to ingest, validate, transform, and deliver imagery and sensor-derived features at scale.
  • Drive productionalization of research code into maintainable services and pipelines, and optimize existing machine learning systems for performance, scalability, and reliability by applying best practices in software engineering, MLOps/CI-CD, containerization, infrastructure-as-code, and cloud deployment.
  • Architect and deploy mobile-first AI products that enable breeders to capture images and receive real-time identification, classification, or trait measurements.
  • Develop and operate automated image preprocessing and quality-control workflows to reliably transform raw imagery into analysis-ready data.
  • Contribute to knowledge sharing, documentation, and team learning, communicating complex machine learning concepts to non-technical stakeholders and supporting the team's knowledge base.
  • Follow an agile way of working and collaborating effectively across disciplines and global teams.

Qualifications

PLEASE NOTE: Candidates must reside in and be permanently authorized to work in the United States without current or future employer sponsorship. This includes, but is not limited to, OPT, CPT, and H-1B visa holders.

  • Master's or Doctoral degree in Computer Science, Remote Sensing, Engineering, Mathematics/Statistics, Geosciences or a related technical field with strong foundations in geospatial analysis, image processing, and machine learning.
  • Deep expertise in deep learning architectures for computer vision (CNNs, vision transformers, segmentation and detection models, etc.) and experience with machine learning frameworks (PyTorch, TensorFlow, Keras, scikit-learn, XGBoost) applied to both imagery and other modalities.
  • Demonstrated ability to productionalize ML models using strong Python and SQL engineering practices (packaging, testing, code review, Git), MLOps tooling (e.g., MLflow, Weights & Biases), containerization (Docker), CI/CD, and one or more cloud platforms (AWS, GCP, Azure).
  • Solid understanding of data structures, algorithms, statistical methods, and workflow management tools for end-to-end modeling, calibration, validation, and application.
  • Hands-on experience with data engineering and orchestration patterns (ETL/ELT, batch vs. streaming, backfills, idempotency), building and operating ML and data pipelines using workflow orchestrators (e.g., Airflow/Argo/Kubeflow/Prefect) and cloud-native services (e.g., object storage, managed compute, message queues, data warehouses).
  • Domain knowledge related to the development and deploying computer vision models specifically for plant phenotyping, agricultural applications, or biological imaging in research or commercial environments.
  • Knowledge of self-supervised learning, foundation models, transfer learning, and active learning approaches for building generalizable representations.
  • 5+ years of experience in machine learning engineering and data science roles
  • 4+ years in applied computer vision, preferably in agricultural or biological sciences.
  • Proven track record building scalable image processing pipelines with deep learning, integrating automated image ingestion, quality filtering, trait extraction, and downstream data integration.
  • Experience creating and operating production data workflows (as well as orchestrators) end-to-end: defining DAGs, implementing data validation/quality checks, handling backfills, alerting/on-call handoffs, etc.
  • Prior experience deploying computer vision models to edge devices (e.g., agricultural robots, field sensors, mobile devices) using optimization techniques like quantization, pruning, and hardware-specific acceleration frameworks is an asset
  • Strong collaborative experience working in cross-functional teams (e.g. researchers, breeders, data scientists, engineers, and IT partners) to define requirements, validate outputs, interpret results, and deliver business value.

Additional Information

Salary for this position ranges between $104,800 - $131,000 annually.

What We Offer: 

  • A culture that celebrates belonging and collaboration, promotes professional development and strives for a work-life balance that supports the team members. Offers flexible work options to support your work and personal needs. 
  • Full Benefit Package (Medical, Dental & Vision) that starts your first day. 
  • 401k plan with company match, Profit Sharing & Retirement Savings Contribution. 
  • Paid Vacation, Paid Holidays, Maternity and Paternity Leave, Education Assistance, Wellness Programs, Corporate Discounts, among other benefits. 

Syngenta has been ranked as a top employer by Science Journal. Learn more about our team and our mission here: https://www.youtube.com/watch?v=OVCN_51GbNI 

Syngenta is an Equal Opportunity Employer and does not discriminate in recruitment, hiring, training, promotion or any other employment practices for reasons of race, color, religion, gender, national origin, age, sexual orientation, marital or veteran status, disability, or any other legally protected status. 

WL: 4A

Key Skills
? Key Skills in dark blue have been inferred based on similar industry roles
Python CI/CD AWS Azure GCP Git Machine Learning ML Scikit-learn ETL Pytorch Tensorflow Docker Airflow SQL

Subscribe to Career Resources

Get the latest career advice, industry insights, and job opportunities delivered to your inbox.