Pachyderm > Case Studies > Risk Thinking: How Riskthinking.AI Uses Machine Learning to Bring Certainty to an Uncertain World

Risk Thinking: How Riskthinking.AI Uses Machine Learning to Bring Certainty to an Uncertain World

Pachyderm Logo
Customer Company Size
SME
Region
  • America
Country
  • Canada
Product
  • CovidWisdom app
  • Pachyderm
Tech Stack
  • Machine Learning
  • AI architecture
  • Data Science
  • Docker containers
Implementation Scale
  • Enterprise-wide Deployment
Impact Metrics
  • Productivity Improvements
  • Innovation Output
Technology Category
  • Analytics & Modeling - Machine Learning
  • Application Infrastructure & Middleware - Data Exchange & Integration
Applicable Industries
  • Healthcare & Hospitals
  • Cities & Municipalities
Applicable Functions
  • Business Operation
Use Cases
  • Predictive Maintenance
  • Public Transportation Management
Services
  • Data Science Services
About The Customer
Riskthinking.AI is a company that specializes in measuring the financial risk of climate change. They work with companies and governments to help them make the best decisions when it comes to uncertain futures. For example, they might help an electric company decide whether to rebuild transformers in the same spots that caused forest fires in the past or to put them in a different configuration to reduce the chance of starting another fire in the future. They also help companies figure out how quickly they can ramp up a solar farm and where they should put it. However, they realized early on that while they had experts in predicting the future, they did not have expertise in building AI architecture.
The Challenge
Riskthinking.AI, a company specializing in measuring the financial risk of climate change, was in the early phases of ramping up their internal AI infrastructure when they took on the CovidWisdom project. The project was a response to a call from the Canadian government to assess the economic impact of major pandemic policies. The challenge was to predict the best way to implement societal-level responses like lockdowns with the minimum amount of damage to daily life and the economy. However, the team realized they had experts in predicting the future but not in building AI architecture. They had data scientists working on laptops, pulling and pushing data over VPNs to remote work spots, and even building their own Docker containers. They needed to move from ad hoc to MLOps.
The Solution
Riskthinking.AI decided to use Pachyderm, a platform that allowed their scientists to focus on the complexity of models rather than the complexity of figuring out which model was trained on which version of the dataset. It gave them the foundation to work with data and deploy any ML tool they wanted inside their machine learning loop. As Riskthinking.AI’s data scientists got more comfortable with pachctl and the command line, they used Pachyderm to run multiple models simultaneously and to visualize backtesting results with easy to understand images. The best performing model got automatically pushed to the application for the current day. The visualizations were not just for the data science team. They could also share their progress with non-technical or less technical stakeholders.
Operational Impact
  • Riskthinking.AI was able to create the CovidWisdom app, a dashboard that tracked the different approaches to shutting down during the pandemic.
  • Their models showed the economic challenges of the pandemic in bold detail, allowing city and state officials to visualize what would happen if they implemented no restrictions at all, all the way to complete lockdowns.
  • They were able to model whether targeted lockdowns of specific types of places and events could work, allowing world leaders to see what would happen if they decided to shut down concerts, bars and gyms but nothing else or if they targeted only concert halls and bars, as well as dozens of other variations.
Quantitative Benefit
  • The use of Pachyderm allowed Riskthinking.AI’s scientists to focus on the complexity of models rather than the complexity of figuring out which model was trained on which version of the dataset.
  • The platform enabled the team to run multiple models simultaneously and visualize backtesting results with easy to understand images.
  • The best performing model got automatically pushed to the application for the current day, improving efficiency and accuracy.

Case Study missing?

Start adding your own!

Register with your work email and create a new case study profile for your business.

Add New Record

Related Case Studies.

Contact us

Let's talk!
* Required
* Required
* Required
* Invalid email address
By submitting this form, you agree that IoT ONE may contact you with insights and marketing messaging.
No thanks, I don't want to receive any marketing emails from IoT ONE.
Submit

Thank you for your message!
We will contact you soon.