Complete library
The complete collection of all our insights, offering a comprehensive range of articles spanning foundational concepts to advanced strategies, providing guidance and inspiration for every stage of the algorithmic business journey.
Artificial discrimination: AI, gender bias, and objectivity
Does AI discriminate based on gender? In an ideal world it wouldn’t, but our models are only ever as good as the data they’re trained on. In this article we will dive into several studies that explore gender bias in AI, the consequences it has, and how it happens everywhere, all the time. At Algorithma, we therefore believe that it is extremely important to talk about bias as soon as we talk about working with, and training, AI.
Building the algorithmic business: Our guide to AI maturity
Businesses are increasingly adopting AI to gain an edge, but success requires more than just the right technology. To fully leverage AI, a structured approach is key. Algorithma's AI Maturity Framework helps organizations assess where they stand and plan their path forward.
Extending Algorithma’s use-case framework: Effective data governance to mitigate AI bias
Artificial intelligence is an operational necessity in many industries, in particular financial services, driving everything from credit scoring to fraud detection. But with great power comes great responsibility: AI systems, if not managed properly, can reinforce biases and inequalities, leading to unfair lending, discriminatory insurance pricing, or biased fraud alerts. In finance, bias in AI can mean denying loans to certain groups, charging higher premiums unfairly, or disproportionately flagging transactions as suspicious—all of which have significant real-world impacts on people's lives. As AI becomes more central to finance, effective data governance is key to ensuring these systems are fair, transparent, and accountable.
Advancing ESG reporting with AI solutions
Effective ESG reporting is crucial for transparency and for meeting regulatory requirements, such as the new Corporate Sustainability Reporting Directive (CSRD) in the EU, and attracting investors. In this context, artificial intelligence can be a powerful tool to transform and enhance this reporting, providing accurate, comprehensive, and real-time insights. By automating complex processes and delivering deeper insights, AI can support organizations in improving their ESG performance and transparency, paving the way for more sustainable and responsible business practices.
“Responsible AI by Design”: Practical sustainability considerations in adopting Gen AI
AI offers significant opportunities for innovation and efficiency. However, alongside these advancements it is important to ensure AI is developed and deployed responsibly. We have all heard about “by design”-approaches, and now is the time for "Responsible AI by design". This approach mitigates risks, reduces long-term AI model maintenance costs, and builds trust with stakeholders. It is also key to reducing the environmental impact of AI.
AI as a tool to advance the circular economy
With a growing world population and escalating consumption levels, production and consumption patterns need to shift towards sustainability. To combat climate change effectively, business models must separate resource use from economic gain. This could be the circular business model, which revolves around reusing and recycling resources within an infinite system. Through this approach, known as decoupling, the link between resource consumption and environmental degradation can be broken. Transitioning to a circular economy is essential to meet climate targets and pave the way for a more sustainable future.
Large language models: Power, potential, and the sustainability challenge
Large language models (LLMs) have revolutionized how we interact with machines, enabling tasks such as text generation, translation, and question answering. However, these features come at a cost, as LLMs require high amounts of computational power both for training and inference. Transformer models, which LLMs are built on, have simultaneously increased in size since their inception and the trend seems to continue due to the clear performance benefit. With widespread adoption of LLMs thus comes concerns about environmental impact, contradictory to most companies’ sustainability agendas to reach the SBTi targets.
Explainable AI: emerging practices to ensure responsible transparency
AI increasingly governs critical decision-making processes. But relying on inscrutable systems becomes increasingly problematic. AI systems are often black boxes characterized by opacity.
The field of “explainable AI” (XAI) aims to give AI models interpretability, and thereby to enable stakeholders to understand AI decision-making.
Driving impact through strategic AI and human-centric design
HCD stands for human-centered design. It is an approach to designing products, services, systems, and experiences that prioritizes understanding the needs, desires, and behaviors of the people who will use or interact with them. HCD involves iterative processes of observation, ideation, prototyping, and testing to ensure that the final design solutions are both functional and user-friendly.
Responsible AI: A cornerstone of our approach
Making responsible considerations within the field of AI has never been more critical. At Algorithma, we believe that responsible AI is not an add-on feature but rather a cornerstone of our approach to developing and deploying AI solutions. We are committed to ensuring that our AI technologies are used responsibly, transparently, and in a way that respects human values.
AI and sustainability: Driving environmental impact
The pursuit of sustainability has become a cornerstone of responsible business practices. Algorithma, recognizes the transformative power of AI to address global environmental challenges and shape a more sustainable future. Our unwavering commitment to ethical AI is deeply intertwined with our dedication to environmental stewardship.