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.
The cost of data: A critical hurdle for Co-pilot implementation
Organizations are increasingly turning to AI tools like Microsoft Co-Pilot to enhance productivity and streamline workflows. Designed to work seamlessly within the Microsoft 365 ecosystem, Co-Pilot enables smarter collaboration, faster data access, and automation of routine tasks. While the potential benefits are substantial, successful implementation requires careful planning to navigate challenges such as data preparation and governance.
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.
Navigating data drift to future-proof your ML models
Companies are increasingly relying on machine learning models to make critical decisions. ML models come with a fundamental assumption: they expect the future to look like the past. In reality, the world is constantly changing, and so is the data it generates. This change, known as data drift, can silently undermine the performance of your models, leading to poor decisions, increased costs, and missed opportunities.
Strategies for sustainable AI adoption through robust governance
AI technologies have the potential to revolutionize industries. However, there is a complex web of regulatory surrounding AI. Companies are eager to harness the benefits of AI, but they must navigate the rules and regulation to ensure ethical and responsible use of AI. Implementing effective and efficient AI governance practices enables businesses to pursue competitive advantages through innovation and optimization in a controlled and compliant manner.
Securing the future: Navigating post-quantum cryptography
The advent of quantum computers has revolutionized the realm of computation, holding immense potential for scientific breakthroughs and technological advancements. However, the quantum revolution also poses a significant threat to the security of our digital world, as current cryptographic algorithms are vulnerable to decryption by powerful quantum machines. To safeguard our sensitive information and maintain trust in the digital infrastructure, a transition to post-quantum cryptography (PQC) is imperative.
Navigating data fragmentation: Challenges and strategies in world of borders
Data has become a valuable asset that drives innovation, business growth, and global collaboration. However, a recent trend of data localization regulations and strengthened data protection laws is disrupting the seamless flow of data across borders, challenging traditional cloud strategies and creating a new reality of data fragmentation.