Where You'll Make an Impact:
- Significantly improve models that help farmers optimize irrigation, conserve water, and understand field conditions (e.g., rainfall, evapotranspiration, water balance).
- Advance Arable's predictive capabilities through the application of novel ML techniques and sensor data analysis.
- Contribute directly to tools supporting climate resilience and sustainable practices in agriculture.
What You Will Do:
- Lead End-to-End Model Development: Drive the full lifecycle of core machine learning models – from research, prototyping, and validation to deployment (Python, Docker, Flask, AWS/SageMaker) and ongoing performance monitoring and improvement. Key areas include water balance, ET, rainfall, and irrigation insights.
- Conduct Applied Research & Innovation: Identify opportunities and execute applied R&D projects to enhance model accuracy, leverage new data sources (internal sensor streams, external weather data), and develop novel predictive features, balancing exploration with pragmatic delivery.
- Collaborate for Impact: Work closely with cross-functional teams – Product (defining requirements, translating features), Sensors/IoT (understanding data, calibration and validation), and Software (API integration, production pipelines) – to ensure data science solutions effectively meet business and user needs.
- Ensure Solution Quality & Provide Expertise: Uphold high standards for model performance and data integrity through rigorous validation, anomaly detection, and addressing operational analytical needs. Serve as a subject matter expert in your domain areas and contribute to the team's technical strategy and best practices, potentially mentoring junior members.
Required Experience and Skills:
- MS or PhD in a quantitative field or equivalent deep practical experience.
- 5-8+ years relevant hands-on experience developing & deploying ML/DS solutions.
- ML & Statistical Depth: Strong theoretical understanding and practical expertise in machine learning (especially time-series), statistical modeling, and validation techniques.
- R&D Acumen: Demonstrated ability to conduct applied research, tackle ambiguous problems, and deliver impactful, data-driven solutions.
- Technical Implementation: Proficiency in Python for data science (NumPy, pandas, scikit-learn, etc.), strong software engineering practices (Git, testing, docs), and experience deploying models via APIs (Flask) using containers (Docker) on cloud platforms (AWS).
- Communication & Collaboration: Excellent ability to communicate complex concepts clearly and collaborate effectively within a cross-functional environment.
Preferred Experience and Skills:
- Domain Knowledge: Background or strong interest in agriculture, hydrology, meteorology, soil science, or related environmental sciences.
- Sensor Data & Techniques: Experience with real-world IoT sensor data (including CalVal), anomaly detection, and leveraging external datasets (weather, geospatial).
- Startup Environment: Proven ability to thrive and take ownership in a fast-paced, dynamic startup setting.
- AWS ML Ecosystem: Deep familiarity with AWS services, particularly SageMaker.
- Mentoring: Experience guiding or mentoring other technical team members.
Top Skills
What We Do
People can solve natural resource challenges if they possess the right tools. Arable enables data-driven decisions in agriculture and natural resource management using Measurements that Matter.
With real-time, continuous visibility and predictive analytics of over 40 metrics, the Arable Mark is a straightforward and versatile tool that can be adapted to any field's demands, and can satisfy any producer's need to know even the most granular tidbit of information about her harvest.
Collecting data on rainfall, crop water demand, water stress, microclimate, canopy biomass, and chlorophyll levels can help farmers build on their own experience to refine crop growth, harvest timing, yield, and the ultimate quality of their produce.
Arable's own output is never complete, but constantly improving to keep our contributions universally applicable, yet tailored to individual needs. We are defined by our users' success.