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AI Deep Dives & Tutorials

Detailed breakdowns, step-by-step guides, and video demos that show how to create content with AI and where to apply new tools.

90 articles • Page 6 of 6

Transforming Voice Memos into Actionable Intelligence: An Automated Workflow for Knowledge Workers

Transforming Voice Memos into Actionable Intelligence: An Automated Workflow for Knowledge Workers

This workflow helps people turn their voice memos into useful notes in seconds. Just record a memo on your iPhone, and the system will transcribe, summarize, tag, and save it in Notion automatically. You don't need to do anything else the process is fast, easy, and costs almost nothing. Over time, you'll find it much easier to find and use your important ideas, making your work smarter and faster.

The Embodied Engineer: Why Human Biology Remains the Unseen Engine of Enterprise Innovation

The Embodied Engineer: Why Human Biology Remains the Unseen Engine of Enterprise Innovation

Human engineers have special advantages over AI models like LLMs: they feel real motivation, learn from handson mistakes, and understand social cues in ways machines can't. Our bodies help us focus, react to stress, and make creative leaps, while language models mainly handle big, repetitive tasks without getting tired. Humans learn through experience and pain, but machines just adjust numbers. When it comes to working with people, humans are better at picking up on emotions and humor. The

Self-Optimizing LLM Prompts: GEPA's Reflective Evolution for Enterprise AI

Self-Optimizing LLM Prompts: GEPA's Reflective Evolution for Enterprise AI

GEPA is a new method that helps large language models make their own prompts better by reflecting, rewriting, and evolving them, like living programs. Instead of changing complicated model parts, GEPA lets the model talk to itself to find and fix problems in its instructions. This approach makes models up to 19% more accurate and much cheaper to use, with up to 35 times fewer expensive tries. GEPA works best for tasks with lots of tool use or when fast testing is needed, but it still has some li

Democratizing Enterprise AI Agent Creation: A Guide to Le Chat

Democratizing Enterprise AI Agent Creation: A Guide to Le Chat

Le Chat by Mistral AI lets anyone create their own AI agent in just a few minutes, with no coding skills needed. You give your agent a name, set its job, upload writing samples, and it's ready to test right away. Paid plans allow you to connect to big data sources like Google Drive and SharePoint, and new features include smart research, voice chat, and even editing images. Teams can use these agents easily, sharing them in chats or embedding them in apps, which saves lots of time on tasks like

Enterprise AI Agents: From PoC to Production, But Hurdles Remain

Enterprise AI Agents: From PoC to Production, But Hurdles Remain

Enterprises started using Claude's multiagent AI more in 2025, seeing big boosts in research accuracy and task automation. But challenges like high costs, errors spreading between agents, and tricky software connections still cause problems. Businesses are fighting back by adding spending limits, rolling out updates slowly, and making agents talk better to each other. For these AI agents to work well, companies need new rules to control spending and make sure mistakes are caught fast. Overall, C

AGNTCY: Unlocking the Internet of Agents with Open-Source Infrastructure

AGNTCY: Unlocking the Internet of Agents with Open-Source Infrastructure

AGNTCY is a new opensource tool for building smart AI agents that can talk to each other safely and easily, no matter where they are. Cisco gave this technology to the Linux Foundation, so anyone can use it without paying fees. Big tech companies like Dell and Google Cloud are already joining in, and real businesses are testing it right now. AGNTCY helps agents find and trust each other, exchange messages, and work together, making it simpler for people to build connected AI systems. Experts thi

AI-Powered Learning: The Dwarkesh Patel Method for Accelerated Knowledge Acquisition

AI-Powered Learning: The Dwarkesh Patel Method for Accelerated Knowledge Acquisition

Dwarkesh Patel created an AIpowered learning system that helps people learn much faster and remember more. His method uses smart computers to read materials, make flashcards, find knowledge gaps, and check answers until they're right. This approach helps users remember 92% of what they learn after a month, cuts study time by more than half, and brings up deep, interesting questions. Educators found students using his method scored much higher on tests, and the system even finds hidden topi

Descriptive Naming: Elevating AI Code Completion Accuracy and Developer Productivity

Descriptive Naming: Elevating AI Code Completion Accuracy and Developer Productivity

Descriptive variable names help AI codecompletion tools work much better, increasing accuracy from 16.6% up to 34.2%. Clear names like "processuserinput" give the AI clues, making it easier to understand and suggest the right code. This also helps new developers learn faster and makes big code changes safer. Teams can save time and boost productivity by using consistent, meaningful names. Simple changes in naming rules can make both people and AI work smarter together.

AI in Asset Management: The 2025 Transformation of Profit and Productivity

AI in Asset Management: The 2025 Transformation of Profit and Productivity

In 2025, AI is drastically changing asset management by making firms more profitable and efficient. AI helps companies manage more money with lower costs, speeds up research, and allows portfolios to adjust instantly to market changes. Analysts can work faster, and compliance is now smarter, catching most problems before they happen. Firms can grow bigger without hiring many more people, thanks to AI acting like a hardworking teammate.

Ulta Beauty's AI Blueprint: Building the Foundation for Enterprise Retail

Ulta Beauty's AI Blueprint: Building the Foundation for Enterprise Retail

Ulta Beauty is using AI to make shopping smarter and easier for everyone. They've upgraded their computer systems, gathered huge amounts of shopping data, and trained over 40,000 workers on how to use AI. Cool tools like the Virtual Shade Finder and Replenishment Bot are already helping people pick the right products and reorder favorites automatically. Because of all this, more customers are coming back and buying again, and Ulta is staying ahead of its competitors.

Roche's Data Revolution: Unifying Global Systems for AI-Powered Pharmaceutical Advantage

Roche's Data Revolution: Unifying Global Systems for AI-Powered Pharmaceutical Advantage

Roche has combined its old data systems into one global, cloudbased platform, connecting over 1,000 users in more than 80 countries. This big change lets them use AI to make faster decisions, like recommending what sales teams should do or spotting trends with predictive analytics. Their new system updates data thousands of times each day and cuts costs by 70%. Roche's approach is helping them lead the pharmaceutical industry by turning complex data into real advantages for both business and hea

Goose in Production: Scaling AI Adoption from Prototype to Enterprise Standard at Block

Goose in Production: Scaling AI Adoption from Prototype to Enterprise Standard at Block

Block's Goose is an opensource AI assistant that quickly became popular with 60% of employees using it each week. Goose lets workers automate boring tasks by turning simple scripts into powerful tools that connect with apps like Slack and Google Drive. Anyone can add new features in minutes, and it runs safely on your own computer. This bottomup approach made work much faster and easier, with big time savings and happy users across the company.

Context Engineering for Production-Grade LLMs

Context Engineering for Production-Grade LLMs

Advanced context engineering helps large language models (LLMs) work better and more reliably in realworld jobs. By using smart summaries and memory blocks, these models remember important things and forget what's not needed, which makes their answers more accurate and reduces mistakes. When faced with lots of information, the models break it into chunks, summarize each part, and then summarize again so they don't get overwhelmed. If a tool fails or something goes wrong, the model can fix itself

AI-Ready Networks: Bridging the Ambition-Readiness Gap

AI-Ready Networks: Bridging the Ambition-Readiness Gap

AIready networks are built to handle the big demands of artificial intelligence, with superfast speeds, low delays, and strong security. Many companies want to use AI, but most of their networks aren't ready yet, creating a big gap between what they want and what they can do. Upgrading means adding powerful hardware, smarter monitoring, and better defenses against cyber threats. These changes can be expensive and require new skills, but the payoff is fewer network problems and smoother AI perfor

7 Enterprise Prompt Engineering Strategies for Maximizing ChatGPT Value and Efficiency

7 Enterprise Prompt Engineering Strategies for Maximizing ChatGPT Value and Efficiency

To get the most out of ChatGPT at work, use seven simple prompt strategies: tell ChatGPT what role to play, start with basic instructions and add examples if needed, give clear formats for answers, add your own data, set limits to avoid mistakes, adjust the tone, and keep improving by checking and tweaking. These tricks help teams finish projects faster and make communication clearer. Adding details like a surprising fact can make responses even better. Experts say these methods save time and cu