AI products like Cursor, Bolt and Replit are shattering growth records not because they're "AI agents". Or because they've got impossibly small teams (although that's cool to see 👀). It's because they've mastered the user experience around AI, somehow balancing pro-like capabilities with B2C-like UI. This is product-led growth on steroids. Yaakov Carno tried the most viral AI products he could get his hands on. Here are the surprising patterns he found: (Don't miss the full breakdown in today's bonus Growth Unhinged: https://lnkd.in/ehk3rUTa) 1. Their AI doesn't feel like a black box. Pro-tips from the best: - Show step-by-step visibility into AI processes - Let users ask, “Why did AI do that?” - Use visual explanations to build trust. 2. Users don’t need better AI—they need better ways to talk to it. Pro-tips from the best: - Offer pre-built prompt templates to guide users. - Provide multiple interaction modes (guided, manual, hybrid). - Let AI suggest better inputs ("enhance prompt") before executing an action. 3. The AI works with you, not just for you. Pro-tips from the best: - Design AI tools to be interactive, not just output-driven. - Provide different modes for different types of collaboration. - Let users refine and iterate on AI results easily. 4. Let users see (& edit) the outcome before it's irreversible. Pro-tips from the best: - Allow users to test AI features before full commitment (many let you use it without even creating an account). - Provide preview or undo options before executing AI changes. - Offer exploratory onboarding experiences to build trust. 5. The AI weaves into your workflow, it doesn't interrupt it. Pro-tips from the best: - Provide simple accept/reject mechanisms for AI suggestions. - Design seamless transitions between AI interactions. - Prioritize the user’s context to avoid workflow disruptions. -- The TL;DR: Having "AI" isn’t the differentiator anymore—great UX is. Pardon the Sunday interruption & hope you enjoyed this post as much as I did 🙏 #ai #genai #ux #plg
AI Applications That Boost User Engagement Rates
Explore top LinkedIn content from expert professionals.
Summary
AI applications that boost user engagement rates are tools powered by artificial intelligence, designed to enhance how users interact with platforms or services by providing personalized, seamless, and intuitive experiences. These applications improve user satisfaction by simplifying workflows, offering tailored suggestions, and fostering meaningful interactions.
- Design for transparency: Build user trust by implementing features like explanations for AI decisions, step-by-step processes, and options to review and edit outcomes before finalizing actions.
- Create interactive experiences: Develop AI tools that collaborate with users by offering guided suggestions, interactive tutorials, and customizable outputs to meet individual needs.
- Integrate within user workflows: Ensure AI applications complement existing workflows by offering seamless transitions, non-intrusive prompts, and proactive support to prevent disruptions.
-
-
What CTOs in Banking Should Do with AI for Customer Experience A few months ago, I sat with the CTO of a major bank who shared a familiar frustration: “We’ve invested millions in AI, but our customer experience hasn’t improved the way we expected.” I asked a simple question: “Are you using AI to solve real customer pain points, or are you using it because it’s expected?” That conversation led us down a path that many banking leaders are navigating today—leveraging AI not just for efficiency, but to truly enhance customer relationships. AI and the Future of Banking Customer Experience The global AI in banking market is expected to reach $130 billion by 2030, growing at a CAGR of 32% (Allied Market Research). This isn’t just about chatbots or fraud detection anymore; AI is redefining how banks engage with customers at every touchpoint. McKinsey reports that banks effectively using AI can increase customer satisfaction by 35% while reducing operational costs by up to 25%. The challenge, however, is execution—CTOs must ensure AI is seamlessly integrated into both digital and human interactions. How Leading CTOs Use AI for Customer Experience 1- Hyper-Personalization Example: JPMorgan Chase uses AI to analyze customer behavior and provide real-time loan and investment suggestions, increasing engagement by 40%. 2- AI-Powered Virtual Assistants Example: Bank of America’s Erica, an AI-powered assistant, has handled over 1.5 billion interactions, offering personalized financial insights. 3- Predictive Analytics for Proactive Engagement Example: A European bank using AI-driven insights reduced customer churn by 22% by proactively addressing financial concerns. 4- AI-Enhanced Fraud Detection Example: Mastercard’s AI-based fraud prevention has reduced false declines by 50%, improving trust and security. A Real-World Impact: AI in Action One of our banking clients struggled with high customer complaints about slow loan approvals. By integrating AI-driven document verification and risk assessment, approval times dropped from 5 days to 5 minutes. The result? A 30% increase in loan applications and a significant boost in customer satisfaction. The Human-AI Balance in Banking Despite AI’s capabilities, customers still value human interaction. 88% of banking customers want a mix of AI-powered convenience and human support when dealing with financial decisions (PwC). The key for CTOs is to balance automation with empathy—ensuring AI enhances, rather than replaces, the personal touch. The Road Ahead AI is no longer a futuristic concept in banking—it’s a strategic necessity. CTOs who embrace AI for customer experience, not just efficiency, will lead the industry forward. At Devsinc, we believe the future of banking isn’t just digital—it’s intelligent, personalized, and deeply customer-centric. The question is, are we using AI to replace transactions, or to build trust? Because in banking, trust isn’t just a feature—it’s the foundation.
-
We have ChatGPT for writing, Cursor for Coding… but we really need an AI for data analysis. That’s why today’s launch of Amplitude AI agents is interesting. It has at least 3 really promising use cases for PMs: 1. Feature Adoption Normally, when you launch a feature, there’s a rush the 24 hours after to watch session replays and look at the funnel. The best teams even ship small UX improvements in this time. But an AI agent could change the game. It could identify who’s engaged vs who’s stuck. It could find dropoff points in your flow. And it could even create guides for users that are struggling. All that automation would save you time digging through dashboards and allow you to focus on taking action. Talk about creating leverage for PMs. 2. Product Monitoring The current state of things breaking is: something ships or external happens, then 2-3 days later someone notices, and finally there’s a scramble to fix it. A data analysis AI agent can monitor this 24/7. That’s the promise of Amplitude’s agent. The moment conversion dips, it can analyze session replays, cross-reference recent changes, alert you, present options to take, and then take action based on what you approve. In a competitive market where inches matter, the extra 2-3 days in response time can be a game changer. 3. Monetization Upgrades Growth teams know there's a perfect moment to show upgrade prompts. Too early and you annoy users. Too late and they've already formed habits around the free version. An AI agent can learn behavioral signals that indicate readiness to pay. Usage patterns, feature engagement, time spent - all the data points humans can't track at scale. You can then steer agents to ship high-value upgrade flows and spend less time dwelling about the next pricing plan test. If you want to check out the beta (like I am), find the link in the comments. What’s your take: is this an AI agent launch worth watching?