Webinar - Feb 12th - Harnessing Data and AI to Fight Financial Crime in Payments
Harnessing Data and AI to Fight Financial Crime in Payments🚀 Join us for an insightful webinar hosted by Microsoft, in collaboration with our partners Quantexa, iPiD, and EY. We'll explore the latest trends in financial crime within the payments industry, including progress on the EU's Verification of Payee (VOP) deadline and its implications. 🌐 Event Details: 📅 February 12th, 2025 🕒 11:00 AM – 11:45 AM CET Don't miss out on this golden opportunity to fortify your knowledge and network with industry leaders. Secure your spot now! 🔗 Sign Up Now: Harnessing Data and AI to Fight Financial Crime in Payments #Microsoft #MicrosoftVirtualBriefing #Data #Financial #Crime #Payments #Qalliancespowered11Views0likes0Comments5 Key Insights from the Webinar Bringing Knowledge Graphs to Life
Here are five key insights in case you missed the recent Quantexa webinar, Bringing Knowledge Graphs to Life 1. Introducing Knowledge Graphs The webinar gave a comprehensive introduction to knowledge graphs and why they’re hot right now. , , , and delved into how knowledge graphs, enabled through improved technology, bring a profound representation of entities and their relationships at scale, fostering great opportunities for impactful analysis and visualization. Knowledge graphs are applied in different ways, for graph analytics, semantic encoding, and delivering context to Large Language Models (LLMs) in AI. 2. Advantages and Challenges of knowledge graphs While there are numerous advantages of knowledge graphs, there are challenges on the journey. Depending on where and how data is sourced, knowledge graphs can be incomplete. The team emphasized the critical necessity of data quality and efficient entity resolution, because any failures diminish the ability to extract accurate and novel insights. Also, as knowledge graphs are normally very large, that compounds the need for accurate entities given the storage and compute investment, but also brings challenges of interacting with, visualizing and analyzing graph information, as Aaron noted, important for data scientists. 3. Is a Graph Database Needed? The panel noted the perceived intersection of knowledge graphs with graph databases, a domain well-marketed by graph database vendors. Ben remarked on how graph databases efficiently store and query knowledge graph data, but as knowledge graphs adapt with your organization’s data and needs, it’s important not to lock information away and be constrained by a single database. Ana highlighted how knowledge graphs can and should work across your organization’s data platforms and software. Aaron noted how data scientists, who thrive on iterative ad-hoc investigation and batch processing, benefit from direct access to knowledge graph structures. 4. Practical Implementation of knowledge graphs Knowledge graphs can be implemented across a wide spectrum of industries ranging from drug discovery to telecommunications and supply chains, and into functions like risk modeling, fraud detection, sales and marketing opportunities. Whatever the use case, it’s only a hop, skip and a jump from mainstream “tabular thinking” to “thinking graph,” given the elevation of expanded relationship information, i.e., edges, across entities, i.e. nodes. 5. Transformational Effects of knowledge graphs The panelists shared how knowledge graph technology had revolutionized their respective roles before and during their time at Quantexa. Ana pointed to the innovation opportunities leading to increased work satisfaction. Ben too appreciated how knowledge graphs unraveled unique solutions and allowed them to tackle complex problems. Steve pondered how the evolution of computational knowledge can drive change and unlock value across decision-making, science and engineering. This webinar is well worth watching to learn about the increasingly prominent role of knowledge graphs in data analysis, AI and decision-making. View the full webinar recording at Bringing Knowledge Graphs to Life Explore QKnowledgeGraph capability in the Quantexa Documentation441Views0likes0Comments📣Upcoming Webinar: The Biggest Challenges in Data Quality: How Far Can AI Go to Solve Them? 📣
In this webinar, Dan Onions, Global Head of Data Management at Quantexa, and Martin Maisey, Head of Data Management EMEA, will delve into the pressing question on every data professional's mind: "How can AI help me?" Unlock the full potential of your data strategy: As AI technologies, particularly LLMs, become increasingly integral to data management strategies, ensuring the quality and reliability of these systems' outputs is paramount. Our experts will explore the critical role of foundational data quality in harnessing AI effectively and responsibly, and address key challenges, such as achieving consistency and accuracy in AI-generated outputs and aligning them with regulatory standards already on the horizon. Attendees will gain insights into practical applications of AI in the real world, understanding how to make AI outputs on data trustworthy across the entire organization. Register Your Place Here: The Biggest Challenges in Data Quality: How Far Can AI Go to Solve Them? (quantexa.com)21Views1like0CommentsBLOG: Helping CSPs Achieve Relevant Insight that Maximize Data Value
Check out our latest CSP blog: Helping Communication Service Providers (CSP) Achieve Relevant Insights that Maximize Data Value Understand how Quantexa and Google Cloud help you to become more data-driven and customer-centric with Decision Intelligence Read the blog here: Helping Communication Service Providers Maximize Data Value Learn how Communication Service Providers can become more data-driven and customer centric through unifying data from previously siloed and scattered points. #data #decisionintelligence #Qalliancespowered21Views1like0Comments