Michael Jjingo
“The greatest threat to our planet is the belief that someone else will save it”, saud Robert Swan.
Some people continue to argue that, we do not inherit the earth from our ancestors, we borrow it from our children. We live on this planet as if we have another one, as an alternative.
We certainly need to do some work on our environment, lest we have trouble to bequeath the next generation. Let’s not forget! We are the generation that feels the full effect of the climate change
and the last generation that has the opportunity to do something about it.
“An algorithm must be seen to be believed,” said Donald Kruth. It seems that the natural world is the
greatest source of excitement, the greatest source of visual beauty, the greatest source of intellectual interest. It is the greatest source of so much in life that makes life worth living.
Where is the problem?
We continue to cut trees, and construct in the wetlands as we destroy them. The factories that we crave so much continue to emit very dangerous gases into the atmosphere. Our vehicles are super polluters. The waste and refuse management is still wanting; Kiteezi incident is only one of the many.
With algorithms, we understand, and solve complex problems at a scale and efficiency that human effort alone cannot match. Many people are not that keen towards an environment where excellence is promoted and emphasized.
Let’s not forget that no one else will save our environment. All our environmental problems become easier to solve with simplified solutions, drawing guidance and leverage on the algorithms.
Why are algorithms essential?
Complexity: Environmental and societal problems are interconnected. Algorithms can handle this complexity by considering multiple variables and constraints simultaneously. Speed: Algorithms work faster than humans, enabling rapid responses to urgent problems.
Accuracy: They reduce human error and bias, providing reliable solutions. Algorithms using Machine learning can help mitigate and manage climate change effects by improving the accuracy of global climate models and predictions.
For instance, extreme weather events such as wildfires and hurricanes can be predicted by analyzing data from satellite images and weather station data in real time.
Optimizing Resource Allocation: Algorithms can analyze data to allocate resources (e.g., water, energy, food) more efficiently.
Supply Chain Optimization: Reducing waste and ensuring timely delivery of goods.
Renewable Energy Management: Algorithms balance energy demand and supply using
solar, wind, and other renewable sources.
We need to embark on tackling Pollution. Algorithms; power air, water, and soil monitoring systems can detect pollution in real-time.
In Air Quality Forecasting: AI predicts pollution spikes and suggests preventive measures. Similarly, in Ocean/ lake Cleanup: Autonomous systems, guided by algorithms, map and remove plastic waste.
Regarding climate models, algorithms simulate climate scenarios, helping policymakers make informed decisions.
Carbon Footprint Reduction: Smart algorithms in transportation reduce emissions by optimizing traffic flow or promoting public transit. Additionally, energy-efficient algorithms power smart grids and (Internet of Things) IoT devices.
Another pain point that all of us must manage is waste and recycling. We are still grappling with the aftereffects of the Kiteezi garbage slide that claimed several lives. Algorithms in waste sorting systems automate the identification and separation of recyclables from non-recyclables. Circular Economy Support: We could use AI to identify opportunities to reuse materials, reducing overall waste.
All sustainable economies and institutions are striving to enhance disaster response mechanisms. During natural disasters, algorithms help with: Predicting events (e.g., hurricanes, floods, wildfires), optimizing evacuation routes and resource deployment to save lives, and analyzing satellite imagery for damage assessment.
Algorithms are key at restoring sustainable ecosystems. They analyze ecosystems to help restore biodiversity, by identifying areas for reforestation, tracking endangered species with AI-powered drones and monitoring coral reefs using underwater robotics.
Since our communities are very key at sustainability management, we need to educate and empower our people. Algorithms personalize education and outreach about environmental issues. An Examples of this entails Apps for Sustainability that Suggest eco-friendly habits based on personal data. Crowdsourced Cleanup Efforts: Platforms like Litterati use algorithms to map litter hotspots.
In some instances, large scale data analytics shall be pertinent. Environmental challenges produce vast amounts of data (e.g., climate, pollution, wildlife). Algorithms do extract meaningful insights from this data, plus identifying patterns and correlations invisible to human observers.
In conclusion, all sustainability-conscious outfits are very interested in strategies that are scalable and automatable. Several algorithms could be used to automate repetitive tasks using (e.g., data collection, analysis, or logistics), allowing solutions to scale. e.g Automated monitoring of deforestation using satellite imagery.
The writer is a General Manager Commercial banking at Centenary Bank.