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How do you make data analytics fun and engaging? In this episode, I chat with YouTube sensation Thu Vu. We discuss Python's growing significance, trends in the data job market, plus get a sneak peek into her new initiative, Python for AI Projects. 💌 Join 10k+ aspiring data analysts & get my tips in your inbox weekly 👉 https://www.datacareerjumpstart.com/newsletter 🆘 Feeling stuck in your data journey? Come to my next free "How to Land Your First Data Job" training 👉 https://www.datacareerjumpstart.com/training 👩‍💻 Want to land a data job in less than 90 days? 👉 https://www.datacareerjumpstart.com/daa 👔 Ace The Interview with Confidence 👉 https://www.datacareerjumpstart.com/interviewsimulator ⌚ TIMESTAMPS 05:54 - Creating cool projects with Local LLMs 13:48 - Learning and Teaching Python for AI 24:09 - Trends in Data and Tech Job Market 🔗 CONNECT WITH THU VU 🎥 YouTube Channel: https://www.youtube.com/@Thuvu5 🤝 LinkedIn: https://www.linkedin.com/in/thu-hien-vu-3766b174/ 📸 Instagram: https://www.instagram.com/thuvu.analytics/ 🎵 TikTok: https://www.tiktok.com/@thuvu.datanalytics 💻 Website: https://thuhienvu.com/ Free Data Science & AI tips thu-vu.ck.page/49c5ee08f6 Master Python for AI projects python-course-earlybird.framer.website 🔗 CONNECT WITH AVERY 🎥 YouTube Channel: https://www.youtube.com/@averysmith 🤝 LinkedIn: https://www.linkedin.com/in/averyjsmith/ 📸 Instagram: https://instagram.com/datacareerjumpstart 🎵 TikTok: https://www.tiktok.com/@verydata 💻 Website: https://www.datacareerjumpstart.com/ Mentioned in this episode: Join the last cohort of 2025! The LAST cohort of The Data Analytics Accelerator for 2025 kicks off on Monday, December 8th and enrollment is officially open!

To celebrate the end of the year, we’re running a special End-of-Year Sale, where you’ll get: ✅ A discount on your enrollment 🎁 6 bonus gifts, including job listings, interview prep, AI tools + more

If your goal is to land a data job in 2026, this is your chance to get ahead of the competition and start strong.

👉 Join the December Cohort & Claim Your Bonuses: https://DataCareerJumpstart.com/daa https://www.datacareerjumpstart.com/daa

With GenAI and LLMs comes great potential to delight and damage customer relationships—both during the sale, and in the UI/UX. However, are B2B AI product teams actually producing real outcomes, on the business side and the UX side, such that customers find these products easy to buy, trustworthy and indispensable? 

What is changing with customer problems as a result of LLM and GenAI technologies becoming more readily available to implement into B2B software? Anything?

Is your current product or feature development being driven by the fact you might be able to now solve it with AI? The “AI-first” team sounds like it’s cutting edge, but is that really determining what a customer will actually buy from you? 

Today I want to talk to you about the interplay of GenAI, customer trust (both user and buyer trust), and the role of UX in products using probabilistic technology.  

These thoughts are based on my own perceptions as a “user” of AI “solutions,” (quotes intentional!), conversations with prospects and clients at my company (Designing for Analytics), as well as the bright minds I mentor over at the MIT Sandbox innovation fund. I also wrote an article about this subject if you’d rather read an abridged version of my thoughts.

Highlights/ Skip to:

AI and LLM-Powered Products Do Not Turn Customer Problems into “Now” and “Expensive” Problems (4:03) Trust and Transparency in the Sale and the Product UX: Handling LLM Hallucinations (Confabulations) and Designing for Model Interpretability (9:44) Selling AI Products to Customers Who Aren’t Users (13:28) How LLM Hallucinations and Model Interpretability Impact User Trust of Your Product (16:10) Probabilistic UIs and LLMs Don’t Negate the Need to Design for Outcomes (22:48) How AI Changes (or Doesn’t) Our Benchmark Use Cases and UX Outcomes (28:41) Closing Thoughts (32:36)

Quotes from Today’s Episode

“Putting AI or GenAI into a product does not change the urgency or the depth of a particular customer problem; it just changes the solution space. Technology shifts in the last ten years have enabled founders to come up with all sorts of novel ways to leverage traditional machine learning, symbolic AI, and LLMs to create new products and disrupt established products; however, it would be foolish to ignore these developments as a product leader. All this technology does is change the possible solutions you can create. It does not change your customer situation, problem, or pain, either in the depth, or severity, or frequency. In fact, it might actually cause some new problems. I feel like most teams spend a lot more time living in the solution space than they do in the problem space. Fall in love with the problem and love that problem regardless of how the solution space may continue to change.” (4:51) “Narrowly targeted, specialized AI products are going to beat solutions trying to solve problems for multiple buyers and customers. If you’re building a narrow, specific product for a narrow, specific audience, one of the things you have on your side is a solution focused on a specific domain used by people who have specific domain experience. You may not need a trillion-parameter LLM to provide significant value to your customer. AI products that have a more specific focus and address a very narrow ICP I believe are more likely to succeed than those trying to serve too many use cases—especially when GenAI is being leveraged to deliver the value. I think this can be true even for platform products as well. Narrowing the audience you want to serve also narrows the scope of the product, which in turn should increase the value that you bring to that audience—in part because you probably will have fewer trust, usability, and utility problems resulting from trying to leverage a model for a wide range of use cases.” (17:18) “Probabilistic UIs and LLMs are going to create big problems for product teams, particularly if they lack a set of guiding benchmark use cases. I talk a lot about benchmark use cases as a core design principle and data-rich enterprise products. Why? Because a lot of B2B and enterprise products fall into the game of ‘adding more stuff over time.’ ‘Add it so you can sell it.’ As products and software companies begin to mature, you start having product owners and PMs attached to specific technologies or parts of a product. Figuring out how to improve the customer’s experience over time against the most critical problems and needs they have is a harder game to play than simply adding more stuff— especially if you have no benchmark use cases to hold you accountable. It’s hard to make the product indispensable if it’s trying to do 100 things for 100 people.“ (22:48) “Product is a hard game, and design and UX is by far not the only aspect of product that we need to get right. A lot of designers don’t understand this, and they think if they just nail design and UX, then everything else solves itself. The reason the design and experience part is hard is that it’s tied to behavior change– especially if you are ‘disrupting’ an industry, incumbent tool, application, or product. You are in the behavior-change game, and it’s really hard to get it right. But when you get it right, it can be really amazing and transformative.” (28:01) “If your AI product is trying to do a wide variety of things for a wide variety of personas, it’s going to be harder to determine appropriate benchmarks and UX outcomes to measure and design against. Given LLM hallucinations, the increased problem of trust, model drift problems, etc., your AI product has to actually innovate in a way that is both meaningful and observable to the customer. It doesn’t matter what your AI is trying to “fix.” If they can’t see what the benefit is to them personally, it doesn’t really matter if technically you’ve done something in a new and novel way. They’re just not going to care because that question of what’s in it for me is always sitting behind, in their brain, whether it’s stated out loud or not.” (29:32)

Links

Designing for Analytics mailing list

podcast_episode
by Val Kroll , Julie Hoyer , Tim Wilson (Analytics Power Hour - Columbus (OH) , Dr. Joe Sutherland (Search Discovery) , Moe Kiss (Canva) , Michael Helbling (Search Discovery)

Every so often, one of the co-hosts of this podcast co-authors a book. And by "every so often" we mean "it's happened once so far." Tim, along with (multi-)past guest Dr. Joe Sutherland, just published Analytics the Right Way: A Business Leader's Guide to Putting Data to Productive Use, and we got to sit them down for a chat about it! From misconceptions about data to the potential outcomes framework to economists as the butt of a joke about the absolute objectivity of data (spoiler: data is not objective), we covered a lot of ground. Even accounting for our (understandable) bias on the matter, we thought the book was a great read, and we think this discussion about some of the highlights will have you agreeing! Order now before it sells out! For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.

Neste episódio especial, celebramos 100 edições do Podcast Data Hackers que já alcançou 1,1 milhões de plays. E nada melhor que, explora tudo que moldou o universo de dados, olhando para o futuro.

Agora, chegou aquele momento do ano em que vamos tentar prever o que será tendência em Dados e AI para o ano de 2025! Será que AI generativas ainda estarão em alta? Será mesmo, que será o fim do SQL, hein? Vem com a gente pra esse papo com nossos Community Managers Mario Filho e Pietro Oliveira, e o nosso mestre dos magos e também Co-fundador Allan Senne.

Lembrando que você pode encontrar todos os podcasts da família Data Hackers no Spotify, iTunes, Google Podcast, Castbox e muitas outras plataformas. Caso queira, você também pode ouvir o episódio aqui no post mesmo!

Falamos no episódio

Nossos convidados:

Mario Filho

Pietro Oliveira

Allan Senne.

Nossa Bancada Data Hackers:

Paulo Vasconcellos — Co-founder da Data Hackers e Principal Data Scientist na Hotmart.

Monique Femme — Head of Community Management na Data Hackers

Gabriel Lages — Co-founder da Data Hackers e Data & Analytics Sr. Director na Hotmart.

podcast_episode
by Matt Colyar (Moody's Analytics) , Cosimo Pacciani (Poste Italiane) , Cris deRitis , Mark Zandi (Moody's Analytics) , Gaurav Ganguly (Moody's Analytics) , Marisa DiNatale (Moody's Analytics)

No, we aren’t referring to President Trump’s inauguration.  But we do chat about the implications of President Trump’s economic policies for Europe with Cosimo Pacciani, Head of Research for Poste Italiane and Moody’s Analytics own Gaurav Ganguly, chief EMEA economist.  Inflation and interest rates were also top of mind.  If, after listening to the podcast, you know what we are referring to, let us know. The first person who gets back to us with the correct answer will win a cowbell.    Guests: Cosimo Pacciani - Head of Research for Poste Italiane, Matt Colyar - Assistant Director economics of Moody's Analytics, Guarav Ganguly - Chief EMEA economist, Moody's   Hosts: Mark Zandi – Chief Economist, Moody’s Analytics, Cris deRitis – Deputy Chief Economist, Moody’s Analytics, and Marisa DiNatale – Senior Director - Head of Global Forecasting, Moody’s Analytics Follow Mark Zandi on 'X' and BlueSky @MarkZandi, Cris deRitis on LinkedIn, and Marisa DiNatale on LinkedIn

Questions or Comments, please email us at [email protected]. We would love to hear from you.    To stay informed and follow the insights of Moody's Analytics economists, visit Economic View.

If you're considering a career as a Data Strategy Consultant or just want to learn more about what that is, then this one is for you! In this episode, Dylan Anderson walks us through the life of a Data Strategy Consultant, the work they do, keys for success in the role, and also gives his general advice to anyone looking to build a career in data.  You'll leave with a better understanding of Data Strategy Consulting work and whether or not it might be the right fit for you and your career. What You'll Learn: What a Data Strategy Consultant does How to thrive as a Data Strategy Consultant Dylan's best advice for anyone pursuing a career in data   Register for free to be part of the next live session: https://bit.ly/3XB3A8b

Follow us on Socials: LinkedIn YouTube Instagram (Mavens of Data) Instagram (Maven Analytics) TikTok Facebook Medium X/Twitter   About our guest: Dylan Anderson is a Data Strategy Consultant, bridging the gap between data and strategy. Subscribe to The Data Ecosystem substack Follow Dylan on LinkedIn

Are you tired of applying to job after job on LinkedIn only to hear absolutely nothing? Today I share the secret LinkedIn hack-- learn how the top 1% find fresh data roles and network directly with hiring managers, how to skip the oversaturated jobs tab, and dive into the ultimate guide to finding untouched opportunities. Visit https://www.premiumdatajobs.com/ We know job hunting sucks 😫 Let us do it for you! 🤝 ⌚ TIMESTAMPS 00:00 - Introduction 01:46 - Think Like the Top 1% of Job Seekers 03:22 - Step-by-Step Guide to Accessing Hidden Jobs 07:04 - PremiumDataJobs.com 🔗 CONNECT WITH AVERY 🎥 YouTube Channel 🤝 LinkedIn 📸 Instagram 🎵 TikTok 💻 Website Mentioned in this episode: Join the last cohort of 2025! The LAST cohort of The Data Analytics Accelerator for 2025 kicks off on Monday, December 8th and enrollment is officially open!

To celebrate the end of the year, we’re running a special End-of-Year Sale, where you’ll get: ✅ A discount on your enrollment 🎁 6 bonus gifts, including job listings, interview prep, AI tools + more

If your goal is to land a data job in 2026, this is your chance to get ahead of the competition and start strong.

👉 Join the December Cohort & Claim Your Bonuses: https://DataCareerJumpstart.com/daa https://www.datacareerjumpstart.com/daa

Learning AI Tools in Tableau

As businesses increasingly rely on data to drive decisions, the role of advanced analytics and AI in enhancing data interpretation is becoming crucial. For professionals tasked with optimizing data analytics platforms like Tableau, staying ahead of the curve with the latest tools isn't just beneficial—it's essential. This insightful guide takes you through the integration of Tableau Pulse and Einstein Copilot, explaining their roles within the broader Tableau and Salesforce ecosystems. Author Ann Jackson, an esteemed analytics professional with a deep expertise in Tableau, offers a step-by-step exploration of these tools, backed by real-world use cases that demonstrate their impact across various industries. By the end of this book, you will: Understand the functionalities of Tableau Pulse and Einstein Copilot and how to use them Learn to deploy Tableau Pulse effectively, ensuring it aligns with your business objectives Navigate discussions on AI's role within Tableau, enhancing your strategic conversations Visualize how Tableau Pulse operates through detailed images and scenarios Utilize Einstein Copilot in Tableau Desktop/Prep to streamline and enhance data analysis

A look inside at the data work happening at a company making some of the most advanced technologies in the industry. Rahul Jain, data engineering manager at Snowflake, joins Tristan to discuss Iceberg, streaming, and all things Snowflake.  For full show notes and to read 6+ years of back issues of the podcast's companion newsletter, head to https://roundup.getdbt.com. The Analytics Engineering Podcast is sponsored by dbt Labs.

podcast_episode
by Dante DiAntonio (Moody's Analytics) , Cris deRitis , Glenn Hubbard (American Enterprise Institute) , Mark Zandi (Moody's Analytics) , Marisa DiNatale (Moody's Analytics)

The Inside Economics team is pleased to welcome Glenn Hubbard, Nonresident Senior Fellow at AEI and former chairman of the President’s Council of Economic Advisers, to the podcast.  Dante kicks things off with a summary of this week's "surprising" employment report.  Glenn offers his opinions on the Trump administration's policy proposals and their potential effects on the economy.  The group successfully navigates the statistics game through hints and joint effort.   Click here for the NYT article referenced  Guests: Glenn Hubbard, Nonresident Senior Fellow at the American Enterprise Institute and Dante DiAntonio, Senior Director of Economic Research, Moody's Analytics Hosts: Mark Zandi – Chief Economist, Moody’s Analytics, Cris deRitis – Deputy Chief Economist, Moody’s Analytics, and Marisa DiNatale – Senior Director - Head of Global Forecasting, Moody’s Analytics Follow Mark Zandi on 'X' and BlueSky @MarkZandi, Cris deRitis on LinkedIn, and Marisa DiNatale on LinkedIn    

Questions or Comments, please email us at [email protected]. We would love to hear from you.    To stay informed and follow the insights of Moody's Analytics economists, visit Economic View.

If you work in data or are trying to break into a data career, you might want to consider adding some Financial Modeling skills to your tool kit. In this episode, you'll get a great overview of Financial Modeling and what it takes to succeed in that career path, from none other than Giles Male, Co-Founder of Full Stack Modeller and "Humblest MVP in the world". You'll leave with a better understanding of the Financial Modeling career path, and whether or not it might be something you should consider for your own career. What You'll Learn: What a Financial Modeler does on the job Keys to success as a Financial Modeler Giles' best advice for your career   Register for free to be part of the next live session: https://bit.ly/3XB3A8b

Follow us on Socials: LinkedIn YouTube Instagram (Mavens of Data) Instagram (Maven Analytics) TikTok Facebook Medium X/Twitter

In this episode, host Jason Foster sits down with Barry Panayi, Chief Data and Insight Officer at John Lewis Partnership to discuss the evolving role of the Chief Data Officer (CDO). Barry shares his journey from coding and analytics to leading data and insights at iconic brands like John Lewis and Waitrose. He offers a unique perspective on how CDOs can transition from technical experts to strategic business leaders. Barry's candid reflections and actionable advice make this episode essential listening for data professionals, aspiring CDOs, and anyone interested in the intersection of data, technology, and business leadership. Don't miss this engaging and insightful conversation!    *****      Cynozure is a leading data, analytics and AI company that helps organisations to reach their data potential. It works with clients on data and AI strategy, data management, data architecture and engineering, analytics and AI, data culture and literacy, and data leadership. The company was named one of The Sunday Times' fastest-growing private companies in both 2022 and 2023, and recognised as The Best Place to Work in Data by DataIQ in 2023 and 2024.  

Help us become the #1 Data Podcast by leaving a rating & review! We are 67 reviews away! Cole Nussbaumer Knaflic, author of 'Storytelling with Data' and 'Daphne Draws Data,' shares her journey from studying mathematics to becoming a leading figure in data visualization. Cole discusses her career path, the importance of clear communication in data visualization, and tips on how to make complex data understandable. 💌 Join 30k+ aspiring data analysts & get my tips in your inbox weekly 👉 https://www.datacareerjumpstart.com/newsletter 🆘 Feeling stuck in your data journey? Come to my next free "How to Land Your First Data Job" training 👉 https://www.datacareerjumpstart.com/training 👩‍💻 Want to land a data job in less than 90 days? 👉 https://www.datacareerjumpstart.com/daa 👔 Ace The Interview with Confidence 👉 https://www.datacareerjumpstart.com//interviewsimulator ⌚ TIMESTAMPS 00:51 Cole's Background and Career 06:25 The Importance of Effective Data Communication 13:07 Tailoring Data Presentations to Different Audiences 16:06 Practical Tips for Data Visualization 20:23 Advice for Aspiring Data Professionals 26:36 Introducing Her New Book (Daphne Draws Data)  🔗 CONNECT WITH  COLE KNAFLIC 🤝 LinkedIn: https://www.linkedin.com/in/colenussbaumer 📕 Storytelling with Data by Cole Knafflic: https://amzn.to/3ZYHhsG 📒 Daphne Draws Data: https://amzn.to/4fJkIOt 📖 Books: https://www.storytellingwithdata.com/books 🔗 CONNECT WITH AVERY 🎥 YouTube Channel 🤝 LinkedIn 📸 Instagram 🎵 TikTok 💻 Website Mentioned in this episode: Join the last cohort of 2025! The LAST cohort of The Data Analytics Accelerator for 2025 kicks off on Monday, December 8th and enrollment is officially open!

To celebrate the end of the year, we’re running a special End-of-Year Sale, where you’ll get: ✅ A discount on your enrollment 🎁 6 bonus gifts, including job listings, interview prep, AI tools + more

If your goal is to land a data job in 2026, this is your chance to get ahead of the competition and start strong.

👉 Join the December Cohort & Claim Your Bonuses: https://DataCareerJumpstart.com/daa https://www.datacareerjumpstart.com/daa

podcast_episode
by Cris deRitis , Mark Zandi (Moody's Analytics) , Marisa DiNatale (Moody's Analytics)

On the first podcast of 2025, the Inside Economics crew discusses the outlook for the year ahead and delves into the Risk Matrix, a visual depiction of the major risks facing the global economy.  Mark, Cris and Marisa each pick a risk to highlight and then give their wildest predictions for 2025, some of which are not very serious.  To view the Risk Matrix, click here  (https://www.economy.com/content/podcast/US_Risk_Matrix.svg) Hosts: Mark Zandi – Chief Economist, Moody’s Analytics, Cris deRitis – Deputy Chief Economist, Moody’s Analytics, and Marisa DiNatale – Senior Director - Head of Global Forecasting, Moody’s Analytics Follow Mark Zandi on 'X' and BlueSky @MarkZandi, Cris deRitis on LinkedIn, and Marisa DiNatale on LinkedIn

Questions or Comments, please email us at [email protected]. We would love to hear from you.    To stay informed and follow the insights of Moody's Analytics economists, visit Economic View.

Data careers can be awesome! Challenging work, solid comp, flexibility, and opportunities to learn constantly are just some of the things that make a data career such a great option.

But as the industry has changed rapidly, a lot of newcomers are left feeling confused about which skills they need to focus on in order to thrive.

In this episode with Annie Nelson, Eevamaija Virtanen, and Lis Vinueza, you'll learn a ton about the skills you should be focused on if you want to go far in data.

What You'll Learn: The technical skills you need to succeed, and those you can skip The soft skills you can't afford to overlook Keys to success for a long and successful career in data   This session was part of our OPEN CAMPUS week in October, which included 6 days of live expert sessions.   Register for free to be part of the next live session: https://bit.ly/3XB3A8b

Follow us on Socials: LinkedIn YouTube Instagram (Mavens of Data) Instagram (Maven Analytics) TikTok Facebook Medium X/Twitter

podcast_episode
by Cris deRitis , Mark Zandi (Moody's Analytics) , Marisa DiNatale (Moody's Analytics) , Justin Begley (Moody's Analytics)

In the last Inside Economics podcast of the year, the team is joined by our colleague Justin Begley to discuss the incoming Trump administration’s seeming view that smaller government means stronger economic growth. Will the new government agency DOGE, a more relaxed anti-trust policy, and lighter regulation successfully lift the economy’s prospects?  A potentially politically charged question the team works to tackle analytically. How did we do?  And Happy New Year!  Hosts: Mark Zandi – Chief Economist, Moody’s Analytics, Cris deRitis – Deputy Chief Economist, Moody’s Analytics, and Marisa DiNatale – Senior Director - Head of Global Forecasting, Moody’s Analytics Follow Mark Zandi on 'X' and BlueSky @MarkZandi, Cris deRitis on LinkedIn, and Marisa DiNatale on LinkedIn

Questions or Comments, please email us at [email protected]. We would love to hear from you.    To stay informed and follow the insights of Moody's Analytics economists, visit Economic View.

As we look back at 2024, we're highlighting some of our favourite episodes of the year, and with 100 of them to choose from, it wasn't easy! The four guests we'll be recapping with are: Lea Pica - A celebrity in the data storytelling and visualisation space. Richie and Lea cover the full picture of data presentation, how to understand your audience, how to leverage hollywood storytelling and more. Out December 19.Alex Banks - Founder of Sunday Signal. Adel and Alex cover Alex’s journey into AI and what led him to create Sunday Signal, the potential of AI, prompt engineering at its most basic level, chain of thought prompting, the future of LLMs and more. Out December 23.Don Chamberlin - The renowned co-inventor of SQL. Richie and Don explore the early development of SQL, how it became standardized, the future of SQL through NoSQL and SQL++ and more. Out December 26.Tom Tunguz - general Partner at Theory Ventures, a $235m VC firm. Richie and Tom explore trends in generative AI, cloud+local hybrid workflows, data security, the future of business intelligence and data analytics, AI in the corporate sector and more. Out December 30. Rapid change seems to be the new norm within the data and AI space, and due to the ecosystem constantly changing, it can be tricky to keep up. Fortunately, any self-respecting venture capitalist looking into data and AI will stay on top of what’s changing and where the next big breakthroughs are likely to come from. We all want to know which important trends are emerging and how we can take advantage of them, so why not learn from a leading VC.  Tomasz Tunguz is a General Partner at Theory Ventures, a $235m early-stage venture capital firm. He blogs sat tomtunguz.com & co-authored Winning with Data. He has worked or works with Looker, Kustomer, Monte Carlo, Dremio, Omni, Hex, Spot, Arbitrum, Sui & many others. He was previously the product manager for Google's social media monetization team, including the Google-MySpace partnership, and managed the launches of AdSense into six new markets in Europe and Asia. Before Google, Tunguz developed systems for the Department of Homeland Security at Appian Corporation.  In the episode, Richie and Tom explore trends in generative AI, the impact of AI on professional fields, cloud+local hybrid workflows, data security, and changes in data warehousing through the use of integrated AI tools, the future of business intelligence and data analytics, the challenges and opportunities surrounding AI in the corporate sector. You'll also get to discover Tom's picks for the hottest new data startups. Links Mentioned in the Show: Tom’s BlogTheory VenturesArticle: What Air Canada Lost In ‘Remarkable’ Lying AI Chatbot Case[Course] Implementing AI Solutions in BusinessRelated Episode: Making Better Decisions using Data & AI with Cassie Kozyrkov, Google's First Chief Decision ScientistSign up to RADAR: AI...