- Lead applied AI research to develop novel approaches for agricultural challenges such as crop monitoring, yield forecasting, and sustainability.
- Explore and prototype emerging AI paradigms, including reasoning-enhanced LLMs (e.g., chain-of-thought, self-reflection, tool use), recursive or iterative modeling, reinforcement learning and RLHF-style training, and self-supervised or foundation models.
- Translate research ideas into validated prototypes and production-ready methods.
- Design and evaluate state-of-the-art models across computer vision, NLP, time-series, and multimodal learning (e.g., satellite/drone imagery, sensor data, text).
- Apply modern techniques such as representation learning, domain adaptation, few-shot learning, multimodal fusion, spatiotemporal modeling, and efficient fine-tuning.
- Advance model robustness, generalization, and efficiency under real-world agricultural constraints.
- Integrate domain knowledge from agronomy, climate, and geospatial data into model design and evaluation.
- Develop methods that handle noisy, sparse, seasonal, and region-dependent data, common in agricultural systems.
- Set standards for scientific experimentation, and reproducibility across AI research efforts.
- Mentor engineers and scientists on research methodology, model design, and experimental analysis.
- Collaborate with cross-functional teams and external research partners to align research outcomes with real-world impact.
- Communicate research findings clearly through technical reports, presentations, and internal knowledge sharing.
- 4+ years of experience in AI/ML model design, training, and deployment in production environments.
- Proven expertise in building and optimizing models, including LLMs, VLMs, computer vision, and multimodal architecture.
- Experience with modern learning paradigms such as transfer learning, self-supervised learning, domain generalization, and few-shot or representation learning.
- Experience with emerging and novel techniques, including retrieval-augmented generation (RAG), diffusion models, reasoning-enhanced LLMs (e.g., chain-of-thought, self-reflection), and reinforcement learning–based training or optimization.
- Strong programming skills in Python with solid knowledge of data structures, algorithms, and software engineering best practices.
- Hands-on experience with large-scale data sets, data lake architectures and distributed data processing
- Fluency in ML frameworks (e.g., PyTorch, TensorFlow, Hugging Face) and MLOps practices (CI/CD, experiment tracking, reproducibility).
- Strong technical communication skills, with the ability to document research, present results, and collaborate effectively across technical and non-technical teams.
- Proven ability to stay current with AI research, critically evaluate new methods, and apply them to complex real-world problems.
- PhD or master's in computer science, computer engineering, statistics, or mathematics
- Strong publication record in reputable conferences or journals in AI, machine learning, computer vision, NLP, or related areas
Skills Required
- 4+ years of experience in AI/ML model design, training, and deployment in production environments
- Proven expertise in building and optimizing models, including LLMs, VLMs, computer vision, and multimodal architecture
- Experience with modern learning paradigms such as transfer learning, self-supervised learning, domain generalization, few-shot or representation learning
- Experience with retrieval-augmented generation (RAG), diffusion models, reasoning-enhanced LLMs, and reinforcement learning
- Strong programming skills in Python with knowledge of data structures, algorithms, and software engineering practices
- Hands-on experience with large-scale data sets, data lake architectures and distributed data processing
- Fluency in ML frameworks (e.g., PyTorch, TensorFlow, Hugging Face) and MLOps practices
- Strong technical communication skills
- PhD or master's in computer science, computer engineering, statistics, or mathematics
What We Do
At Precision AI we are on a mission to accelerate artificial intelligence based farming practices to create healthier, happier, and more profitable farms. By leveraging our advanced drones and custom-built AI technology, we can take crop production decisions from a whole field to an individual plant level. This type of decision-making transforms an industry that has been reliant on larger and broader technology for decades. The outcome of our solutions is integrated into the agricultural technology of today and helps craft the machines of tomorrow that will feed the world. Precision AI was founded in 2017 with headquarters in Regina, Saskatchewan. We are scaling rapidly with an elite global team solving the agriculture challenges of farms around the world.






