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Prompt Engineering for LLMs

Large language models (LLMs) are revolutionizing the world, promising to automate tasks and solve complex problems. A new generation of software applications are using these models as building blocks to unlock new potential in almost every domain, but reliably accessing these capabilities requires new skills. This book will teach you the art and science of prompt engineering-the key to unlocking the true potential of LLMs. Industry experts John Berryman and Albert Ziegler share how to communicate effectively with AI, transforming your ideas into a language model-friendly format. By learning both the philosophical foundation and practical techniques, you'll be equipped with the knowledge and confidence to build the next generation of LLM-powered applications. Understand LLM architecture and learn how to best interact with it Design a complete prompt-crafting strategy for an application Gather, triage, and present context elements to make an efficient prompt Master specific prompt-crafting techniques like few-shot learning, chain-of-thought prompting, and RAG

Welcome to DataFramed Industry Roundups! In this series of episodes, Adel & Richie sit down to discuss the latest and greatest in data & AI. In this episode, we touch upon the brewing rivalry between OpenAI and Anthropic, discuss Claude's new computer use feature, Google's NotebookLM and how its implications for the UX/UI of AI products, and a lot more. Links mentioned in the show: Chatbot Arena LeaderboardNotebookLMAnthropic Computer UseIntroducing OpenAI o1-preview New to DataCamp? Learn on the go using the DataCamp mobile appEmpower your business with world-class data and AI skills with DataCamp for business

Learn FileMaker Pro 2024: The Comprehensive Guide to Building Custom Databases

FileMaker Pro is a development platform from Claris International Inc., a subsidiary of Apple Inc. The software makes it easy for everyone to create powerful, multi-user, cross-platform, relational database applications. This book navigates the reader through the software in a clear and logical manner, with each chapter building on the previous one. After an initial review of the user environment and application basics, the book delves into a deep exploration of the integrated development environment, which seamlessly combines the full stack of schema, business logic, and interface layers into a unified visual programming experience. Everything beginners need to get started is covered, along with advanced material that seasoned professionals will appreciate. Written by a professional developer with decades of real-world experience, "Learn FileMaker Pro 2024" is a comprehensive learning and reference guide. Join millions of users and developers worldwide in achieving a new level of workflow efficiency with FileMaker. For This New Edition This third edition includes clearer lessons and more examples, making it easier than ever to start planning, building, and deploying a custom database solution. It covers dozens of new and modified features introduced in versions 19.1 to 19.6, as well as the more recent 2023 (v20) and 2024 (v21) releases. Whatever your level of experience, this book has something new for you! What You’ll Learn · Plan and create custom tables, fields, and relationships · Write calculations using built-in and custom functions · Build layouts with dynamic objects, themes, and custom menus · Automate tasks with scripts and link them to objects and interface events · Keep database files secure and healthy · Integrate with external systems using ODBC, cURL, and the FM API · Deploy solutions to share with desktop, iOS, and web clients · Learn about summary reports, dynamic object references, and transactions · Delve into artificial intelligence with CoreML, OpenAI, and Semantic Finds Who This Book Is For Hobbyist developers, professional consultants, IT staff

Azure OpenAI: the latest innovation for AI powered business value | BRK100

Begin Ignite 2024 with a deep dive into Azure OpenAI Service’s latest product launches and capabilities. Steve Sweetman and Yina Arenas will lead a live demonstration, showcasing the power of Azure OpenAI Service in real-world applications. This session will provide attendees with a comprehensive understanding of how Azure OpenAI Service is revolutionizing industries and will feature a technical product leader from the NBA to join the speakers on stage, followed by a Q&A.

𝗦𝗽𝗲𝗮𝗸𝗲𝗿𝘀: * Yina Arenas * Charlie Rohlf * Steve Sweetman

𝗦𝗲𝘀𝘀𝗶𝗼𝗻 𝗜𝗻𝗳𝗼𝗿𝗺𝗮𝘁𝗶𝗼𝗻: This is one of many sessions from the Microsoft Ignite 2024 event. View even more sessions on-demand and learn about Microsoft Ignite at https://ignite.microsoft.com

BRK100 | English (US) | AI

MSIgnite

Episode Notes: Overview In this compelling episode, I dive into the cutting-edge world of Neuro Symbolic AI, a transformative approach to business strategy that goes beyond traditional SWOT analysis. Moving past the capabilities of older models like GPT-3.5, this episode introduces a tool that doesn’t just identify strengths, weaknesses, opportunities, and threats but also explains the deeper implications and potential future outcomes of each. Join me as I explore how Neuro Symbolic AI is setting new standards for strategic analysis. Key Topics Covered Rebranding the Show I open by explaining the recent rebranding to focus entirely on data and AI, setting the stage for a deeper, more specialized dive into AI-driven insights.Introduction to SWOT Analysis Discover the basics of SWOT analysis and its applications in evaluating businesses, projects, and even personal goals. I explore how traditional AI tools, like GPT-3.5, offer simple, list-based insights but often lack depth and context.The Limitations of Traditional AI I discuss how traditional AI, though powerful, can be too simplistic. It provides a list of strengths and weaknesses without fully explaining their significance or forecasting potential impacts. This often leaves critical details overlooked.Neuro Symbolic AI: The Next Evolution Here, I introduce Neuro Symbolic AI, a hybrid model that combines pattern recognition with rule-based logic. This allows it to not only identify key traits but also to explain why they matter and how they could influence future outcomes. Neuro Symbolic AI transforms SWOT analysis from a static list into a dynamic, predictive tool for strategic planning.Real-World Applications and Advantages Using the example of a fictional toy company, I demonstrate how Neuro Symbolic AI can reveal deeper insights and future opportunities or challenges that traditional AI might miss. This tool doesn’t just give a list—it explains how each factor contributes to the company’s overall strategy and growth potential.The Future of Strategic AI I wrap up by discussing the potential of Neuro Symbolic AI to revolutionize strategic analysis across industries. This AI model can anticipate market shifts, rank strategic priorities, and offer actionable insights, making it an invaluable asset for forward-thinking businesses.Why Listen? If you’re interested in the latest advancements in AI or seeking smarter, future-oriented approaches to business strategy, this episode is a must-listen. Neuro Symbolic AI represents a breakthrough in predictive analysis, providing the kind of context and foresight that can turn reactive strategies into proactive ones.

Additional Links: 1] Neurosymbolic AI vs. Traditional AI Blog Post 2] FREEBIES: Sign up for my substack newsletter (https://mukundansankar.substack.com) and get: free RAG cheatsheet, and wait for it... a FREE Neuro-symbolic AI Cheatsheet! 3] AI for SWOT Analysis Blog Post: https://shorturl.at/RJ9fA

We’re improving DataFramed, and we need your help! We want to hear what you have to say about the show, and how we can make it more enjoyable for you—find out more here. Data is no longer just for coders. With the rise of low-code tools, more people across organizations can access data insights without needing programming skills. But how can companies leverage these tools effectively? And what steps should they take to integrate them into existing workflows while upskilling their teams?  Michael Berthold is CEO and co-founder at KNIME, an open source data analytics company. He has more than 25 years of experience in data science, working in academia, most recently as a full professor at Konstanz University (Germany) and previously at University of California (Berkeley) and Carnegie Mellon, and in industry at Intel’s Neural Network Group, Utopy, and Tripos. Michael has published extensively on data analytics, machine learning, and artificial intelligence. In the episode, Adel and Michael explore low-code data science, the adoption of low-code data tools, the evolution of data science workflows, upskilling, low-code and code collaboration, data literacy, integration with AI and GenAI tools, the future of low-code data tools and much more.  Links Mentioned in the Show: KNIMEConnect with MichaelCode Along: Low-Code Data Science and Analytics with KNIMECourse: Introduction to KNIMERelated Episode: No-Code LLMs In Practice with Birago Jones & Karthik Dinakar, CEO & CTO at Pienso New to DataCamp? Learn on the go using the DataCamp mobile appEmpower your business with world-class data and AI skills with DataCamp for business

Send us a text

Welcome to the cozy corner of the tech world where ones and zeros mingle with casual chit-chat. Datatopics Unplugged is your go-to spot for relaxed discussions around tech, news, data, and society. Dive into conversations that should flow as smoothly as your morning coffee (but don’t), where industry insights meet laid-back banter. Whether you’re a data aficionado or just someone curious about the digital age, pull up a chair, relax, and let’s get into the heart of data, unplugged style! In this episode, we are joined by special guest Nico for a lively and wide-ranging tech chat. Grab your headphones and prepare for: Strava’s ‘Athlete Intelligence’ feature: A humorous dive into how workout apps are getting smarter—and a little sassier.Frontend frameworks: HTMX is a tough choice: A candid discussion on using React versus emerging alternatives like HTMX and when to keep things lightweight.Octoverse 2024 trends and language wars: Python takes the lead over JavaScript as the top GitHub language, and we dissect why Go, TypeScript, and Rust are getting love too.GenAI meets Minecraft: Imagine procedurally generated worlds and dreamlike coherence breaks—Minecraft-style. How GenAI could redefine gameplay narratives and NPC behavior.OpenAI’s O1 model leak: Insights on the recent leak, what’s new, and its implications for the future of AI.Tiger Beetle’s transactional databases and testing tales: Nico walks us through Tiger Style, deterministic simulation testing, and why it’s a game changer for distributed databases.Automated testing for LLMOps: A quick overview of automated testing for large language models and its role in modern AI workflows.DeepLearning.ai’s short courses: Quick, impactful learning to level up your AI skills.

Está no ar, o Data Hackers News !! Os assuntos mais quentes da semana, com as principais notícias da área de Dados, IA e Tecnologia, que você também encontra na nossa Newsletter semanal, agora no Podcast do Data Hackers !!

Aperte o play e ouça agora, o Data Hackers News dessa semana !

Para saber tudo sobre o que está acontecendo na área de dados, se inscreva na Newsletter semanal:

⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠https://www.datahackers.news/⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠

Conheça nossos comentaristas do Data Hackers News:

⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠Monique Femme⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠

Paulo Vasconcellos

⁠Matérias/assuntos comentados:

Preencha o State of Data Brazil;

Nova IA do Google vaza como extensão do Google Chrome;

Nova IA da OpenAI não terá avanço tão significativo

Demais canais do Data Hackers:

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Episode Summary: In this episode, I delve into Google’s NotebookLM, an advanced AI-powered tool designed for research, note-taking, and audio content generation. Originally adopted by content creators for podcasting, NotebookLM offers a range of possibilities beyond mere podcast generation, including making complex ideas easily understandable and serving as an educational tool. Key Discussion Points: Introduction to NotebookLM: NotebookLM, powered by Google’s Gemini 1.5, is a unique AI tool designed to convert written content into natural-sounding audio conversations. I highlight its key features, including support for uploading diverse content sources like web links, YouTube videos, and Google Docs.Functionality and User Experience: I share my firsthand experience with NotebookLM, demonstrating how it transformed a complex blog on retrieval-augmented generation into a conversational podcast format. This feature not only simplifies complex topics but makes learning more accessible and engaging.NotebookLM for Education and Supplemental Learning: I advocate for NotebookLM’s potential as a supplemental learning tool. By breaking down intricate topics, it can serve as an aid for understanding research papers, technical blogs, or any complex written material.Vision for the Future: While the tool’s podcasting capabilities are a game-changer, I envision NotebookLM’s greater impact on education and personal development. I discuss the potential of NotebookLM as a go-to resource for learning on the move, from research papers to blog posts.Takeaway Tips: Use NotebookLM to generate personalized audio content from educational materials.Transform complex topics into digestible audio formats for on-the-go learning.Experiment with NotebookLM as a supplement to traditional learning tools like YouTube or Google Search.Closing Thoughts: I emphasize the potential of NotebookLM as an educational revolution in AI, urging listeners to explore its capabilities and unlock a new way of learning complex topics easily. Additional Resources: Blog Post I used to convert to podcast using NotebookLMTune in to experience NotebookLM’s ability to make complex topics accessible and engaging, and hear my take on its potential future applications!

Send us a text Welcome to the cozy corner of the tech world where ones and zeros mingle with casual chit-chat. Datatopics Unplugged  is your go-to spot for relaxed discussions around tech, news, data, and society. Dive into conversations that should flow as smoothly as your morning coffee (but don't), where industry insights meet laid-back banter. Whether you're a data aficionado or just someone curious about the digital age, pull up a chair, relax, and let's get into the heart of data, unplugged style! In this episode, we cover: ChatGPT Search: Exploring OpenAI's new web-browsing capability, and how it transforms everything from everyday searches to complex problem-solving.ChatGPT is a Good Rubber Duck: Discover how ChatGPT makes for an excellent companion for debugging and brainstorming, offering more than a few laughs along the way.What’s New in Python 3.13: From the new free-threaded mode to the just-in-time (JIT) compiler, we break down the major (and some lesser-known) changes, with additional context from this breakdown and Reddit insights.UV is Fast on its Feet: How the development of new tools impacts the Python packaging ecosystem, with a side discussion on Poetry and the complexities of Python lockfiles.Meta’s Llama Training Takes Center Stage: Meta ramps up its AI game, pouring vast resources into training the Llama model. We ponder the long-term impact and their ambitions in the AI space.OpenAI’s Swarm: A new experimental framework for multi-agent orchestration, enabling AI agents to collaborate and complete tasks—what it means for the future of AI interactions.PGrag for Retrieval-Augmented Generation (RAG): We explore Neon's integration for building end-to-end RAG pipelines directly in Postgres, bridging vector databases, text embedding, and more.OSI’s Open Source AI License: The Open Source Initiative releases an AI-specific license to bring much-needed clarity and standards to open-source models.We also venture into generative AI, the future of AR (including Apple Vision and potential contact lenses), and a brief look at V0 by Vercel, a tool that auto-generates web components with AI prompts.

Está no ar, o Data Hackers News !! Os assuntos mais quentes da semana, com as principais notícias da área de Dados, IA e Tecnologia, que você também encontra na nossa Newsletter semanal, agora no Podcast do Data Hackers !!

Aperte o play e ouça agora, o Data Hackers News dessa semana !

Para saber tudo sobre o que está acontecendo na área de dados, se inscreva na Newsletter semanal:

⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠https://www.datahackers.news/⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠

Conheça nossos comentaristas do Data Hackers News:

⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠Monique Femme⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠

Paulo Vasconcellos

⁠Matérias/assuntos comentados:

Python é a linguagem com mais desenvolvedores no mundo;

Github lança IA capaz de criar aplicativos a partir de texto;

OpenAI lança motor de busca pra competir com Google.

Demais canais do Data Hackers:

⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠Site⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠⁠

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Send us a text Welcome to Datatopics Unplugged, where the tech world’s buzz meets laid-back banter. In each episode, we dive into the latest in AI, data science, and technology—perfect for your inner geek or curious mind. Pull up a seat, tune in, and join us for insights, laughs, and the occasional hot take on the digital world.

In this episode, we are joined by Vitale to discuss:

Meta’s video generation breakthrough: Explore Meta’s new “MovieGen” model family that generates hyper-realistic, 16-second video clips with reflections, consistent spatial details, and multi-frame coherence. Also discussed: Sora, a sneak peek at Meta’s open-source possibilities. For a look back, check out this classic AI-generated video of Will Smith eating spaghetti. Anthropic’s Claude 3.5 updates: Meet Claude 3.5 and its “computer use” feature, letting it navigate your screen for you. Easily fine-tune & train LLMs, faster with Unsloth: Discover tools that simplify model fine-tuning and deployment, making it easier for small-scale developers to harness AI’s power. Don’t miss Gerganov’s GitHub contributions in this space, too. Deno 2.0 release hype: With a splashy promo video, Deno’s JavaScript runtime enters the scene as a streamlined, secure alternative to Node.js.

The relationship between AI and ethics is both developing and delicate. On one hand, the GenAI advancements to date are impressive. On the other, extreme care needs to be taken as this tech continues to quickly become more commonplace in our lives. In today’s episode, Ovetta Sampson and I examine the crossroads ahead for designing AI and GenAI user experiences.

While professionals and the general public are eager to embrace new products, recent breakthroughs, etc.; we still need to have some guard rails in place. If we don’t, data can easily get mishandled, and people could get hurt. Ovetta possesses firsthand experience working on these issues as they sprout up. We look at who should be on a team designing an AI UX, exploring the risks associated with GenAI, ethics, and need to be thinking about going forward.

Highlights/ Skip to: (1:48) Ovetta's background and what she brings to Google’s Core ML group (6:03) How Ovetta and her team work with data scientists and engineers deep in the stack (9:09)  How AI is changing the front-end of applications (12:46) The type of people you should seek out to design your AI and LLM UXs (16:15) Explaining why we’re only at the very start of major GenAI breakthroughs (22:34) How GenAI tools will alter the roles and responsibilities of designers, developers, and product teams (31:11) The potential harms of carelessly deploying GenAI technology (42:09) Defining acceptable levels of risk when using GenAI in real-world applications (53:16) Closing thoughts from Ovetta and where you can find her

Quotes from Today’s Episode “If artificial intelligence is just another technology, why would we build entire policies and frameworks around it? The reason why we do that is because we realize there are some real thorny ethical issues [surrounding AI]. Who owns that data? Where does it come from? Data is created by people, and all people create data. That’s why companies have strong legal, compliance, and regulatory policies around [AI], how it’s built, and how it engages with people. Think about having a toddler and then training the toddler on everything in the Library of Congress and on the internet. Do you release that toddler into the world without guardrails? Probably not.” - Ovetta Sampson (10:03) “[When building a team] you should look for a diverse thinker who focuses on the limitations of this technology- not its capability. You need someone who understands that the end destination of that technology is an engagement with a human being.  You need somebody who understands how they engage with machines and digital products. You need that person to be passionate about testing various ways that relationships can evolve. When we go from execution on code to machine learning, we make a shift from [human] agency to a shared-agency relationship. The user and machine both have decision-making power. That’s the paradigm shift that [designers] need to understand. You want somebody who can keep that duality in their head as they’re testing product design.” - Ovetta Sampson (13:45) “We’re in for a huge taxonomy change. There are words that mean very specific definitions today. Software engineer. Designer. Technically skilled. Digital. Art. Craft. AI is changing all that. It’s changing what it means to be a software engineer. Machine learning used to be the purview of data scientists only, but with GenAI, all of that is baked in to Gemini. So, now you start at a checkpoint, and you’re like, all right, let’s go make an API, right? So, the skills, the understanding, the knowledge, the taxonomy even, how we talk about these things, how do we talk about the machine who speaks to us talks to us, who could create a podcast out of just voice memos?” - Ovetta Sampson (24:16) “We have to be very intentional [when building AI tools], and that’s the kind of folks you want on teams. [Designers] have to go and play scary scenarios. We have to do that. No designer wants to be “Negative Nancy,” but this technology has huge potential to harm. It has harmed. If we don’t have the skill sets to recognize, document, and minimize harm, that needs to be part of our skill set.  If we’re not looking out for the humans, then who actually is?” - Ovetta Sampson (32:10) “[Research shows] things happen to our brain when we’re exposed to artificial intelligence… there are real human engagement risks that are an opportunity for design.  When you’re designing a self-driving car, you can’t just let the person go to sleep unless the car is fully [automated] and every other car on the road is self-driving. If there are humans behind the wheel, you need to have a feedback loop system—something that’s going to happen [in case] the algorithm is wrong. If you don’t have that designed, there’s going to be a large human engagement risk that a car is going to run over somebody who’s [for example] pushing a bike up a hill[...] Why? The car could not calculate the right speed and pace of a person pushing their bike. It had the speed and pace of a person walking, the speed and pace of a person on a bike, but not the two together. Algorithms will be wrong, right?” - Ovetta Sampson (39:42) “Model goodness used to be the purview of companies and the data scientists. Think about the first search engines. Their model goodness was [about] 77%. That’s good, right? And then people started seeing photos of apes when [they] typed in ‘black people.’ Companies have to get used to going to their customers in a wide spectrum and asking them when they’re [models or apps are] right and wrong.  They can’t take on that burden themselves anymore. Having ethically sourced data input and variables is hard work. If you’re going to use this technology, you need to put into place the governance that needs to be there.” - Ovetta Sampson (44:08)

With the recent rapid advancements in AI comes the challenge of navigating an ever-changing field of play, while ensuring the tech we use serves real-world needs. As AI becomes more ingrained in business and everyday life, how do we balance cutting-edge development with practicality and ethical responsibility? What steps are necessary to ensure AI’s growth benefits society, aligns with human values, and avoids potential risks? What similarities can we draw between the way we think, and the way AI thinks for us? Terry Sejnowski is one of the most influential figures in computational neuroscience. At the Salk Institute for Biological Studies, he runs the Computational Neurobiology Laboratory, and hold the Francis Crick Chair. At the University of California, San Diego, he is a Distinguished Professor and runs a neurobiology lab. Terry is also the President of the Neural Information Processing (NIPS) Foundation, and an organizer of the NeurIPS AI conference. Alongside Geoff Hinton, Terry co-invented the Boltzmann machine technique for machine learning. He is the author of over 500 journal articles on neuroscience and AI, and the book "ChatGPT and the Future of AI". In the episode, Richie and Terry explore the current state of AI, historical developments in AI, the NeurIPS conference, collaboration between AI and neuroscience, AI’s shift from academia to industry, large vs small LLMs, creativity in AI, AI ethics, autonomous AI, AI agents, superintelligence, and much more.  Links Mentioned in the Show: NeurIPS ConferenceTerry’s Book—ChatGPT and the Future of AI: The Deep Language RevolutionConnect with TerryTerry on SubstackCourse: Data Communication ConceptsRelated Episode: Guardrails for the Future of AI with Viktor Mayer-Schönberger, Professor of Internet Governance and Regulation at the University of OxfordSign up to RADAR: Forward Edition New to DataCamp? Learn on the go using the DataCamp mobile appEmpower your business with world-class data and AI skills with DataCamp for business