From Cows to the Cloud: How TINE is Revolutionizing the Norwegian Dairy Industry Using Machine Learning on AWS
Customer Company Size
Large Corporate
Region
- Europe
Country
- Norway
Product
- AWS Machine Learning
- AWS Cloud Services
- IoT devices
Tech Stack
- Machine Learning
- Cloud Computing
- Internet of Things (IoT)
Implementation Scale
- Enterprise-wide Deployment
Impact Metrics
- Cost Savings
- Environmental Impact Reduction
- Productivity Improvements
Technology Category
- Platform as a Service (PaaS) - Data Management Platforms
Applicable Industries
- Agriculture
- Food & Beverage
Applicable Functions
- Discrete Manufacturing
- Quality Assurance
Use Cases
- Predictive Maintenance
- Machine Condition Monitoring
- Real-Time Location System (RTLS)
Services
- Data Science Services
- Cloud Planning, Design & Implementation Services
About The Customer
TINE SA is Norway's largest producer, distributor, and exporter of dairy products with 11,400 members (owners) and 9,000 cooperative farms. TINE’s mission is to provide consumers with food that provides a healthier and more positive food experience. TINE has a long history of developing decision-making tools for farmers and collecting data from different dairy products at the farm level. The Norwegian farmers who work with TINE are technologically savvy and have understood the value of collecting data on their animals and dairy production for decades. TINE has conducted structured research to examine the ‘optimal cow’ for dairy production using collected data. They found that focusing on the individuality of a cow enables farmers to discern when each cow is happy, stressed, anxious, and healthy. When their animals are healthier and happier, the quality of their milk is improved, which allows TINE to make even better dairy products while improving the welfare of the animal.
The Challenge
TINE SA, a Norwegian cooperative owned by farmers, has been collaborating with Norway’s farmers for over 160 years to understand their challenges and help them drive efficiency, productivity, and high-quality dairy product development. As market demands increase, so does each farmer’s need to bring products to market more efficiently. TINE has a long history of developing decision-making tools for farmers and collecting data from different dairy products at the farm level. However, as TINE considered the future of dairy production at both the farm and national level, its data science team realized there would be changes to the breadth and depth of its data sources, types of data, and data analysis capabilities available to develop decision-making tools for farmers to use in production. TINE knew it would have to change its approach to data and technology by becoming more data driven as an organization to drive better predictability of milk production and other key data points related to a cow’s health and the quality of milk produced.
The Solution
To identify the technologies and platforms that would help improve TINE’s insights, predictions, and analyses, TINE brought in the experts at Crayon, an AWS Partner Network (APN) Advanced Consulting Partner and AWS Machine Learning (ML) Competency Partner. Inmeta, a subsidiary of Crayon, worked directly with the customer, providing ideas for data-driven innovation. Crayon approached the innovation project with TINE in four distinct phases. First, the team focused on data readiness, availability, quality, and relevance. During this phase, Crayon concluded that TINE had useful and relevant data but lacked historical timeseries. Next, the team moved on to Methodology and model selection. Crayon chose a simple model initially to demonstrate the use of a convolutional neural network to predict milk production based on the condition on the farm. During this phase, the teams concluded that the model and data were viable for milk production predictions. Then Crayon moved on to revising and refining the modelling process. Based on the finding from the previous phase, the team chose a decision tree model and then expanded to predict the conditions on the farm in the future, which would support better and more accurate forecasting. The model, which uses an ML solution that runs on AWS, predicts cow births and the total number of cows in the herd in addition to milk production. Finally, Crayon established a data lake optimized for analysis and ML models for prediction. This enables further improvements in the ML models while supporting ML initiatives for other applications within TINE.
Operational Impact
Quantitative Benefit
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