Author: Derek Wilson

  • You don’t have a data problem, You have a “what to do with it” problem.

    You don’t have a data problem, You have a “what to do with it” problem.

    Welcome to What To Do With It — practical AI and data strategy for leaders who want results, not reports.

    I’ve had the same conversation dozens of times.

    A business leader — sometimes a CEO, sometimes a CDO, sometimes a VP who’s been handed the AI mandate and isn’t sure what to do with it — sits down and tells me about their data situation.

    They have dashboards. They have a data warehouse. They’ve invested in Snowflake, or Power BI, or whatever the consultant recommended three years ago. They might even have a small data team.

    Then they say some version of the same thing:

    “We have all this data. We’re just not sure we’re getting everything out of it that we should be.”

    That sentence, in one form or another, is why I started this newsletter.

    Because that feeling — the sense that there’s more value sitting in your data than you’re currently capturing — is almost universal. And it’s almost never a data problem.

    Newsletter image What to Do With your Data
    What to Do With it

    The bottleneck almost never lives where you think it does

    When companies feel like they’re not getting enough from their data, the instinct is to look at the data itself. Maybe we need more of it. Maybe it’s not clean enough. Maybe we need a better tool.

    So they invest in another platform. They hire more data engineers. They build more dashboards.

    And six months later — same feeling.

    Here’s what I’ve learned after a decade of building data teams and AI solutions across multiple industries: the bottleneck is almost never the data. It lives in the gap between the insight and the decision.

    Data tells you what happened. It doesn’t tell you what to do. That translation is where most companies are stuck — and it’s the step that gets skipped almost every time.

    That gap shows up in a few predictable patterns. See if any of these sound familiar:

    –  The data exists, but nobody trusts it. Two teams pull the same report and get different numbers. So everyone defaults to their own spreadsheet — and the dashboard collects dust.

    –  The insight lands too late. The weekly report shows up on Monday. The decision it was meant to inform was made on Friday. So the data becomes retroactive justification, not actual input.

    –  The decision-maker can’t interpret what they’re looking at. The chart is technically correct, but it doesn’t speak the language of the person who needs to act on it.

    –  There’s no clear owner of the “so what.” The data team delivers the numbers. Everyone waits for someone else to say what they mean. Nothing changes.

    These are organizational and process problems. They don’t get solved by a better dashboard. They don’t get solved by a newer model. And they don’t get solved by AI — at least not automatically.

    They get solved when data, AI, and decision-making are connected by design. When the system is built with the decision as the starting point, not the data.

    That’s a different way of thinking about this. And it’s the lens I’ll bring to every issue of this newsletter.

    What AI actually does — and doesn’t — fix

    AI is genuinely one of the most powerful tools I’ve worked with in my career. At CoreTrust, we’ve deployed AI agents that have transformed workflows that used to take days into processes that run in minutes. I’ve seen what it can do when it’s implemented well.

    But I’ve also seen the other side.

    I’ve seen companies deploy AI chatbots and call it an AI strategy. I’ve seen six-figure pilots that never made it past the demo stage. I’ve seen teams spend months building models on data nobody trusted, for decisions nobody could define.

    The pattern in every failure is the same: AI was treated as the solution to a problem that hadn’t been clearly named yet.

    AI amplifies what you already have. If you have clear decisions and trusted data, AI makes your organization faster and sharper. If you have murky decisions and messy data, AI makes you more efficiently confused.

    The good news is that clarity is achievable. The companies I’ve seen get the most from AI aren’t the ones with the biggest budgets or the most sophisticated tech stacks. They’re the ones that started with a clear answer to a deceptively simple question:

    What decision are we trying to make faster, better, or more consistently — and what data does that decision actually require?

    Everything else follows from that.

    What you can expect from “what to do with it” newsletter

    Every issue of What To Do With It will be built around one idea, framework, or real-world lesson from the front lines of AI and data leadership.

    I’m not going to summarize the latest AI research papers. There are plenty of people doing that. What I’ll bring is the practitioner perspective — what this actually looks like when you’re trying to implement it inside a real organization with real constraints.

    Here’s what’s coming in the next few issues:

    –  How to build a data culture that actually sticks — and why most companies start in the wrong place

    –  The 5-question framework I use before any AI investment to filter signal from hype

    –  What “data trust” really means, how to diagnose it, and the fastest path to fixing it

    –  Building a data team from scratch — what I got wrong the first time and what changed

    –  How to talk to your CFO about AI ROI (without getting laughed out of the room)

    If any of those land for you — you’re in the right place.

    One thing to try this week

    Before your next data or AI conversation — whether it’s a vendor demo, a team meeting, or a budget review — write this question at the top of your notes:

    “What specific decision will be different because of this?”

    Not “what insight will we get.” Not “what data will we have access to.” What decision. Who makes it. How often. And what they’re doing today without this information.

    If you can answer that question concretely before the conversation starts, you’ll run a very different meeting. And you’ll spot very quickly whether the thing being proposed is a real solution or a solution looking for a problem.

    Try it once and see what it surfaces. I’d love to hear what you find

    Glad you’re here. Let’s get into it.

    — Derek Wilson

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  • Top Artificial Intelligence Trends for 2026

    Top Artificial Intelligence Trends for 2026

    Here are the top artificial intelligence trends you need to start thinking about on your AI journey. The AI landscape is evolving faster than ever, with projections estimating a $2 trillion market boom and the creation of up to 170 million new jobs by 2026 according to neontri.com. For business leaders, this isn’t just hype—it’s a call to action. AI isn’t merely a tool anymore; it’s the engine driving efficiency, personalization, and competitive edges across industries. In this post, we’ll dive into the top AI trends shaping 2026, backed by expert insights and real-world applications. Each trend includes actionable business value to help you prioritize investments. Plus, we’ll spotlight Snowflake Cortex AI, a game-changer for data-driven enterprises. Whether you’re in finance, healthcare, or retail, staying ahead means understanding how these trends translate to ROI—think reduced costs, faster decision-making, and innovative customer experiences. Let’s explore.

    Artificial intelligence trends

    1. Agentic AI: From Assistants to Autonomous Decision-Makers

    Agentic AI represents the shift from reactive chatbots to proactive, goal-oriented systems that can plan, execute, and adapt independently. By 2026, these “AI agents” will handle complex workflows, like optimizing supply chains or personalizing marketing campaigns without constant human oversight.Business Value: Imagine slashing operational costs by 30-50% through automated decision loops—McKinsey estimates agentic AI could add $4.4 trillion in annual value to the global economy. For retailers, this means real-time inventory adjustments that prevent stockouts, boosting revenue by up to 15%. Start by piloting agents in low-risk areas like customer support; tools like OpenAI’s GPT agents can integrate seamlessly.

    2. Multimodal AI: Blending Text, Image, Video, and Beyond

    Multimodal models, which process multiple data types simultaneously, will dominate in 2026, enabling richer interactions like analyzing video for sentiment or generating code from sketches. Google’s Gemini and similar advancements will make this the norm for creative and analytical tasks.Business Value: This trend unlocks hyper-personalized experiences, such as e-commerce platforms recommending outfits via AR try-ons, potentially increasing conversion rates by 20-30%. In healthcare, multimodal AI could accelerate diagnostics by combining scans and patient notes, reducing errors and saving millions in liability costs. Businesses should invest in APIs from Hugging Face to experiment—early adopters report 40% faster content creation cycles.

    3. Vertical AI: Tailored Intelligence for Specific Industries

    Gone are the days of one-size-fits-all AI. Vertical AI focuses on sector-specific solutions, like AI for legal contract review or manufacturing predictive maintenance. Expect growth in tools customized for finance, where fraud detection hits 99% accuracy.Business Value: By 2026, vertical AI could drive $1.5 trillion in industry-specific value, per Gartner, through precision that generic models can’t match. For banks, this means compliant, real-time risk assessments that cut fraud losses by 25%. Leverage platforms like Salesforce Einstein for CRM-tuned AI—users see 35% gains in sales productivity.

    4. Physical AI: Bridging Digital and Real-World Robotics

    Physical AI integrates AI with robotics for tangible applications, from autonomous warehouses to surgical assistants. With advancements in edge computing, robots will learn on-the-fly, adapting to unpredictable environments.Business Value: Manufacturing firms could see 20-40% throughput increases, translating to billions in savings amid labor shortages. In logistics, Amazon’s warehouse bots already exemplify this; scaling it enterprise-wide via Boston Dynamics could optimize fulfillment by 50%. The key ROI? Resilience against disruptions like supply chain delays.

    5. Sovereign AI and Ethical Governance: Prioritizing Privacy and Regulation

    As AI globalizes, “sovereign AI” emphasizes localized, compliant models to protect data sovereignty. Stricter laws, like expanded EU AI Act, will mandate transparent, bias-free systems by 2026. Business Value: Non-compliance risks fines up to 6% of global revenue—proactive governance builds trust and opens markets. For multinationals, sovereign AI ensures seamless cross-border ops, potentially adding 10-15% to market share in regulated sectors like healthcare. Tools from IBM Watson offer built-in ethics audits, helping firms audit and certify AI deployments efficiently.

    6. Generative AI Evolution: Video, Authenticity, and Agentic Creativity

    Generative AI will mature with video synthesis and authenticity verification, tackling deepfakes while enabling hyper-real content creation. Agentic chatbots will proactively ideate, not just respond.Business Value: Marketing teams could produce personalized video campaigns 10x faster, driving 25% engagement lifts. Copyright tools will safeguard IP, reducing litigation costs. Platforms like Runway ML for gen video are must-tries—early pilots show 40% ROI in content marketing.

    Spotlight: Snowflake Cortex AI – Empowering Governed, Enterprise-Grade Intelligence

    In the era of data explosion, Snowflake Cortex AI stands out as a powerhouse for turning raw data into actionable insights without leaving your secure environment. Launched as part of Snowflake’s Data Cloud, Cortex integrates LLMs for natural language querying, AI agents, and multimodal analysis—all with unified governance.Key features include:

    • Cortex Analyst: Chat-based SQL generation for instant analytics.
    • Cortex Agents: Build custom AI workflows grounded in your data.
    • Snowflake Intelligence: Secure model training and deployment.

    Business Value: Organizations using Cortex report 50% faster query times and 30% cost savings on AI infrastructure, as it eliminates data silos and vendor lock-in. For finance, it enables real-time fraud detection on unstructured data; in retail, personalized recommendations that boost sales by 15%. Check out Snowflake’s Cortex overview to see demos—it’s the bridge from AI experimentation to scalable value.

    Wrapping Up: Your 2026 Artificial Intelligence Trends AI Roadmap

    2026 isn’t about adopting AI. It’s about orchestrating it strategically. From agentic autonomy to ethical sovereignty, these trends promise transformative gains, but only if harnessed with clear business alignment. Start small: Audit your data readiness, pilot one trend, and measure ROI quarterly.What trend excites you most?

    Drop a comment below, or connect on LinkedIn for tailored advice. Stay ahead—subscribe for more AI insights.

    Learn More:

  • Unlocking the Power of Data: The Benefits of Using a Snowflake Data Lake

    Leverage a Snowflake Data Lake to optimize your information from countless sources—structured databases, semi-structured JSON logs, unstructured images and videos, streaming IoT data, and more. Traditional data warehouses often fall short because they require data to be cleaned and schema-defined upfront (schema-on-write), leading to bottlenecks and high costs. Enter the data lake: a centralized repository that stores raw data in its native format using a flexible “schema-on-read” approach.

    Snowflake takes this concept further by evolving the traditional data lake into a modern data lakehouse. It combines the low-cost, scalable storage of a data lake with the performance, governance, and querying power of a data warehouse—all on a single, cloud-native platform. Whether you’re ingesting petabytes of raw data or running complex AI/ML workloads, a Snowflake data lake eliminates silos, reduces complexity, and delivers faster insights.

    Snowflake Data Lake

    For a deeper dive into Snowflake data lake fundamentals and architecture, check out Snowflake’s comprehensive guide: What Is a Data Lake? Architecture and Use Cases

    Top 3 Reasons to Build a Snowflake Data Lake

    While data lakes in general solve modern data challenges, building Snowflake data lake amplifies the advantages. Here are the top three reasons organizations are adopting this approach:

    1. Scalability and Flexibility for Any Data Type or Workload
      Traditional systems struggle with the “3 Vs” of big data: volume, variety, and velocity. A data lake lets you store structured, semi-structured, and unstructured data without upfront transformation, supporting everything from batch loads to real-time streaming. Snowflake supercharges this with near-infinite scalability—separate storage and compute mean you can handle petabytes without performance hits. It natively supports unstructured data (e.g., images, PDFs) and open formats like Apache Iceberg, making it ideal for AI/ML training or predictive analytics.
      Bonus: No more “data swamps”—Snowflake’s automatic clustering and optimization keep things query-ready.
    2. Cost-Effectiveness and Pay-As-You-Go Efficiency Storing raw data in cheap cloud object storage (like S3, Azure Blob, or Google Cloud) is a hallmark of data lakes, avoiding expensive ETL processes. Snowflake builds on this by optimizing data internally for compression and querying, while charging only for what you use. You avoid overprovisioning compute, and features like Snowpipe enable micro-batch ingestion without constant costs. Compared to traditional lakes requiring separate tools (e.g., Hadoop clusters), Snowflake reduces infrastructure overhead by up to 50% in many cases.
    3. Unified Governance, Security, and Performance One of the biggest pitfalls of traditional data lakes is turning into ungoverned “swamps” with poor discoverability and security risks. Snowflake addresses this head-on with built-in role-based access control (RBAC), data masking, encryption, auditing, and metadata cataloging—all on a single platform. Query raw data directly with SQL, Python, or Spark, achieving warehouse-like speed without moving data. This lakehouse model enables data democratization across teams while ensuring compliance.

    Why Snowflake Stands Out from Traditional Data Lakes

    Traditional data lakes (e.g., on Hadoop or raw S3) excel at cheap storage but often require glue tools for processing (Spark, Presto) and governance (Databricks, custom scripts). This leads to complexity and slower queries.

    Snowflake’s managed approach delivers:

    • Faster queries: Internal optimization vs. external tables on raw storage. sonra.io
    • No silos: One platform for ingestion, transformation (ELT), analytics, and AI. hevodata.com
    • Cross-cloud support: Run on AWS, Azure, or GCP without vendor lock-in.

    Real-world examples? Companies use Snowflake for customer 360 views, real-time analytics, and ML pipelines—gaining insights 10x faster than legacy setups.

    Getting Started with Snowflake’s Data Lake Ready to build? Start with Snowflake Data Lake workload page for architectures and best practices.

    Explore the official blog on 8 Reasons to Build Your Cloud Data Lake on Snowflake for detailed capabilities.

    For comparisons:

    In summary, a Snowflake data lake isn’t just storage—it’s a strategic asset for agile, cost-effective, and secure data management. If your organization is ready to move beyond rigid warehouses, Snowflake’s lakehouse is the future-proof choice. What are you waiting for? Dive in and transform your data chaos into actionable intelligence!

    Ready to Learn More Contact Me

    Additional Snowflake articles

    Getting Started with Snowflake Cortex AI

    The Business Value of Snowflake Semantic Models: Your Data’s Universal Translator

  • The Business Value of Snowflake Semantic Models: Your Data’s Universal Translator

    The Business Value of Snowflake Semantic Models: Your Data’s Universal Translator

    Picture this: Your sales team calls revenue one thing, your finance team calls it something else, and your marketing team has yet another definition. Meanwhile, that critical metric everyone needs is buried in a database column cryptically named amt_ttl_pre_dsc. Sound familiar?

    This isn’t just an inconvenience—it’s a multi-million dollar problem that’s quietly draining your organization’s resources and hobbling your AI initiatives. But there’s good news: Snowflake Semantic Models (officially called Semantic Views) offer a powerful solution that’s transforming how businesses bridge the gap between technical data storage and business decision-making.

    The Hidden Cost of Data Confusion

    Before we dive into solutions, let’s understand the problem. According to industry analysis, data fragmentation costs enterprises millions, with data and AI teams spending weeks reconciling conflicting definitions and reformatting data before AI projects can begin. This semantic chaos doesn’t just delay projects—it fundamentally undermines trust in data-driven decision-making.

    Consider a typical scenario: Your company wants to calculate “active customers.” Your sales platform defines this as anyone who purchased within 90 days, while marketing defines it as anyone who engaged with content in the past month. When you try to build an AI model or create a dashboard using both systems, you get conflicting results. Which definition is correct? Neither—and both. The problem isn’t the data itself; it’s the lack of a shared vocabulary.

    Snowflake Semantic Models
    Snowflake Semantic Models

    What Are Snowflake Semantic Models? A Non-Technical Explanation

    Think of Snowflake semantic models as a universal translator for your business data. Semantic views address the mismatch between how business users describe data and how it’s stored in database schemas. They create a business-friendly layer that sits between your raw data and the people (or AI systems) trying to use it.

    Here’s a simple analogy: Imagine your company’s data warehouse as a massive library where all the books are organized using a complex cataloging system only librarians understand. Semantic models are like hiring a knowledgeable librarian who can translate between what visitors ask for (“I need information about our most profitable customers”) and where that information actually lives in the stacks.

    Within a snowflake semantic model, you define logical tables that typically correspond to business entities, such as customers, orders, or suppliers. These definitions include three key elements:

    Metrics are your business’s key performance indicators—the numbers that matter. These might include total revenue, profit margin, or customer lifetime value. Metrics transform data into actionable insights through aggregation and calculation.

    Dimensions provide context by answering “who, what, where, and when” questions. They’re the categories you use to slice and dice your data: customer segments, product categories, geographic regions, or time periods.

    Facts are the underlying building blocks—the raw, row-level data that gets transformed into metrics and organized by dimensions.

    The Real Business Value: Five Game-Changing Benefits

    1. Eliminate the “Spreadsheet Hell” of Multiple Metric Definitions

    In most organizations, the same metric is calculated differently across various tools and departments. Marketing calculates customer acquisition cost one way, finance calculates it another way, and sales has their own version. The result? Meetings where everyone argues about whose numbers are correct instead of making decisions.

    If net revenue within a company always means gross revenue after discounts, the semantic view can define it consistently as a metric with the correct aggregation. This ensures a single authoritative definition that everyone uses, eliminating the dreaded “which report is right?” debate.

    Business Impact: One major retailer reported saving over 200 hours per quarter previously spent reconciling different revenue calculations across departments. That’s time redirected to actual strategic work.

    2. Accelerate AI Adoption (Without the AI Hallucinations)

    If you’ve experimented with AI for business analytics, you’ve probably encountered the frustration of AI “hallucinations”—when the AI confidently provides incorrect answers because it misunderstood your data structure.

    Semantic views make data “AI-ready,” unlocking advanced use cases such as conversational analytics and significantly reducing the risk of AI hallucinations. By providing clear context about what data means and how it relates, semantic models help AI systems like Snowflake’s Cortex Analyst understand your business logic correctly the first time.

    Business Impact: Instead of spending weeks preparing data for AI projects, companies can deploy AI analytics in days. More importantly, the AI provides trustworthy answers because it’s working with properly defined business concepts.

    3. Break Down BI Tool Silos

    Many organizations use multiple business intelligence tools—Tableau for some teams, Power BI for others, perhaps Sigma or Looker elsewhere. Each tool typically maintains its own semantic layer, which means the same business logic must be built and maintained separately in each tool.

    While many BI tools have their own built-in semantic layer, if an enterprise deploys multiple BI tools, that semantic model needs to be duplicated multiple times, and keeping them in sync is not likely to happen. Snowflake Semantic Views solve this by providing a single, centralized semantic model that lives right next to your data, accessible by all your tools.

    Business Impact: One financial services company reduced their BI maintenance overhead by 60% after consolidating five different semantic layer implementations into a single Snowflake Semantic Model.

    4. Empower Business Users to Self-Serve

    IT and data teams are constantly overwhelmed with requests for “just one more report” or “can you pull this data for me?” Meanwhile, business users wait days or weeks for simple answers, stifling agility.

    By mapping business terms to actual Snowflake tables and columns, it enables non-technical users to retrieve insights without needing SQL expertise. Business users can ask questions in plain English—”What was our revenue in the Northeast region last quarter?”—and get accurate answers without bothering the data team.

    Business Impact: Companies report 40-70% reduction in ad-hoc data requests to IT teams, freeing technical resources for strategic projects while making business teams more autonomous and data-driven.

    5. Future-Proof Your Data Strategy

    The data landscape is evolving rapidly, with new AI capabilities and analytics tools emerging constantly. Semantic models provide a stable abstraction layer that protects your business logic from technical changes underneath.

    When you upgrade your data warehouse, migrate systems, or adopt new AI tools, your business definitions remain consistent and portable. Major technology companies have recognized this value, launching the Open Semantic Interchange (OSI) initiative to standardize semantic metadata across platforms.

    Business Impact: Reduced technical debt and migration costs. When one manufacturing company restructured their data warehouse, their semantic models allowed them to maintain business continuity without retraining users or rebuilding reports.

    Real-World Application: From Theory to Practice

    Let’s walk through a concrete example. Imagine you’re a retail company tracking sales performance:

    Without Semantic Models:

    • Sales data lives in tables with cryptic names like Acct_dtl and Opty_mstr
    • Revenue calculations are scattered across dozens of spreadsheets and reports
    • Each department has slightly different formulas for key metrics
    • New analysts spend weeks learning where data lives and how to calculate basic metrics
    • AI tools struggle to understand your data structure and provide unreliable answers

    With Snowflake Semantic Models:

    • You define a semantic view for “Sales” that maps business concepts to technical tables
    • “Total Revenue” is defined once as SUM(transaction_amount * (1 - discount_rate))
    • “Store Location” clearly maps to the appropriate dimension tables
    • Business users can ask “Show me revenue by region for Q3” and get instant, accurate results
    • AI tools understand your business context and provide trustworthy insights
    • New team members are productive in days, not weeks

    Getting Started: A Practical Roadmap

    The good news is that you don’t need to boil the ocean to see value from semantic models. If you have a large, mature enterprise data warehouse consisting of clean facts and dimension tables, then build a semantic view for each business domain.

    Here’s a practical approach to get started with Snowflake Semantic Models:

    Phase 1: Start Small (Weeks 1-4)

    • Choose one critical business area (e.g., sales or customer analytics)
    • Identify the 5-10 most frequently requested metrics
    • Build a Snowflake semantic model covering these core concepts
    • Deploy to a pilot group of users

    Phase 2: Expand and Refine (Months 2-3)

    • Gather feedback from pilot users
    • Add additional metrics and dimensions based on usage patterns
    • Expand to additional business domains
    • Train power users to become semantic model champions

    Phase 3: Scale and Govern (Months 4+)

    • Establish governance processes for semantic model maintenance
    • Consider designating “Analytical Context Engineers” to own semantic model quality
    • Integrate semantic models with your AI and BI tools
    • Automate synchronization between semantic models and other metadata sources

    Overcoming Common Concerns

    “We don’t have clean data yet” Semantic models don’t require perfect data—they help you progressively define and improve your data quality. Start with what you have and refine over time.

    “This sounds expensive” Semantic views are considered metadata—they don’t store redundant data, just definitions. The ROI typically appears within the first quarter through reduced manual work and faster decision-making.

    “We already have a semantic layer in our BI tool” That’s great! Semantic models complement existing BI layers and can even be the source of truth that feeds multiple BI tools, ensuring consistency across platforms.

    “Won’t this create more work for our data team?” Initially, yes—but the long-term payoff is substantial. The upfront investment in defining semantic models is quickly recouped through reduced ad-hoc requests, fewer data quality issues, and faster AI deployment.

    The Strategic Imperative

    As we move deeper into the AI era, the quality of your data definitions becomes increasingly critical. By embedding organizational context and definitions directly into the data layer, semantic views ensure that both AI and BI systems interpret information uniformly, leading to trustworthy answers.

    Organizations that establish strong semantic foundations today will have a significant competitive advantage tomorrow. They’ll be able to deploy AI faster, make decisions more confidently, and adapt to new technologies more smoothly than competitors still struggling with data confusion.

    Taking the Next Step

    If you’re intrigued by the potential of semantic models, here are some resources to dive deeper:

    The journey to better data semantics doesn’t require a massive transformation project. Start with one business domain, define a handful of critical metrics, and let the value speak for itself. Your business users—and your bottom line—will thank you.


    Interested in learning more about how AI and data strategies can transform your business?

    Contact me for any questions on Snowflake semantic models.

    Learn More – Blog

  • Getting Started with Snowflake Cortex AI

    Getting Started with Snowflake Cortex AI

    In today’s data-driven world, businesses are racing to harness artificial intelligence (AI) to gain a competitive edge. However many businesses are struggling with the complexities of integrating AI. How to deal with fragmented data silos, security concerns, and the need for specialized expertise like data scientist and engineers.

    By leveraging Snowflake Cortex AI, a suite of generative AI services built directly into the Snowflake Data Cloud. It empowers organizations to leverage large language models (LLMs) and machine learning (ML) capabilities without leaving the secure, governed environment where their data already resides. As an AI expert, I’ve seen how Cortex AI democratizes access to advanced analytics, enabling non-technical users to derive insights from structured and unstructured data alike.

    In this post, I’ll explore what Cortex AI is, its key features, real-world examples, and the business impacts it delivers.

    What is Snowflake Cortex AI?

    Snowflake Cortex AI is Snowflake’s native AI platform, designed to simplify the creation and deployment of AI-powered applications. It integrates industry-leading LLMs from providers like Anthropic, Meta, Mistral AI, and OpenAI directly into Snowflake’s ecosystem. This means no more exporting data to external tools, managing infrastructure, or worrying about compliance—everything runs serverlessly within your governed Snowflake account. At its core, Cortex AI focuses on three pillars:

    • Understanding unstructured data (e.g., text, images, documents) through natural language processing.
    • Answering freeform questions via conversational interfaces.
    • Providing intelligent assistance for tasks like forecasting and anomaly detection.

    This setup is powerful for enterprises of all sizes, as it supports multi-cloud deployments and adheres to strict security standards, ensuring your sensitive data never leaves your Snowflake data cloud environment.

    Key Features of Snowflake Cortex AI

    Cortex AI offers a rich set of tools, from simple SQL functions to advanced agentic systems.

    1. Cortex LLM Functions

    These are SQL-based functions that let you tap into LLMs for tasks like text generation, summarization, and translation. Examples include:

    • SNOWFLAKE.CORTEX.COMPLETE: Generates text completions for chatbots or content creation.
    • SNOWFLAKE.CORTEX.SUMMARIZE: Condenses long documents into key insights.
    • SNOWFLAKE.CORTEX.SENTIMENT: Analyzes emotions in customer feedback.
    • SNOWFLAKE.CORTEX.TRANSLATE: Handles multilingual data processing.

    2. Cortex Analyst

    A conversational AI agent that translates natural language queries into SQL for structured data analysis. Business users can ask, “What were our top-selling products last quarter?” and get precise, chart-ready answers—without writing a single line of code.

    3. Cortex Search

    A hybrid search engine combining vector and keyword matching for Retrieval Augmented Generation (RAG) apps. It enables fuzzy, semantic searches over vast datasets, ideal for knowledge bases or recommendation systems.

    4. Document AI and ML Functions

    • Document AI: Extracts structured data from PDFs, images, or scans (e.g., invoice details).
    • ML Functions: Built-in forecasting, anomaly detection, and classification using models like Prophet for time-series analysis.

    Additional capabilities like Cortex Guard (for AI safety) and Cortex Fine-Tuning (for customizing models) ensure enterprise-grade reliability.

    Real-World Examples: Bringing Cortex AI to Life

    To illustrate how Cortex AI works in practice, here are 3 examples across industries.

    Example 1: Customer Sentiment Analysis in Retail

    Imagine a retail chain drowning in customer reviews from e-commerce sites and social media. Using Cortex’s SENTIMENT function, you can classify feedback as positive, negative, or neutral to prioritize product improvements.

    Example 2: Automated Document Processing in Finance

    Financial firms handle mountains of invoices and contracts. Cortex’s Document AI automates extraction, reducing manual entry errors and speeding up accounts payable.

    Example 3: Natural Language Querying with Cortex Analyst

    A marketing team wants insights from sales data without involving IT. Cortex Analyst powers a Slack-integrated chatbot where users query: “Show me regional sales trends for Q3.”

    Business Impact: Why Snowflake Cortex AI Drives ROI

    Adopting Snowflake Cortex AI isn’t just about tech—it’s about measurable outcomes. Here’s how it translates to business value:

    • Faster Time-to-Insights: Traditional analytics can take days; Cortex reduces this to minutes. One customer reported 40x faster processing times for AI-driven reports, accelerating decision-making and boosting operational efficiency by 30-50%.
    • Cost Savings and Scalability: Serverless execution means you pay only for what you use—no GPU clusters or vendor lock-in. Businesses avoid millions in infrastructure costs while scaling AI apps across teams.
    • Enhanced Customer Experiences: Sentiment analysis and translation features help personalize interactions. For instance, a global retailer used Cortex to analyze multilingual reviews, improving Net Promoter Scores (NPS) by 15% through targeted product tweaks.
    • Risk Reduction and Compliance: Features like Cortex Guard block unsafe outputs, while built-in governance ensures audit-ready AI. In regulated sectors like finance, this enables secure deployment of AI agents for fraud detection, cutting compliance risks.
    • Revenue Growth: Predictive ML functions forecast demand, optimizing inventory and reducing stockouts. A logistics firm using anomaly detection saw a 20% drop in delivery delays, directly increasing customer retention.

    Overall, organizations leveraging Cortex AI report 2-3x faster AI project rollouts and up to 25% higher ROI on data investments.

    FeatureBusiness Challenge AddressedEstimated Impact
    LLM FunctionsManual text analysis50% time savings on reporting
    Cortex AnalystSQL skill gaps3x faster self-service analytics
    Document AIData entry errors40% reduction in processing costs
    ML FunctionsUnpredictable forecasting15-20% accuracy improvement

    Conclusion: The Future of AI is in Your Data Cloud

    Snowflake Cortex AI removes the barriers to AI adoption, letting businesses focus on innovation rather than infrastructure. By embedding generative AI where your data lives, it unlocks insights that drive growth, efficiency, and smarter decisions. From sentiment-driven product enhancements to automated financial workflows, the possibilities are endless—and the business impacts are immediate.

    If you’re sitting on untapped data goldmines, now’s the time to act. What’s your first AI use case? Share in the comments—I’d love to hear how you’re transforming your business with Cortex AI!

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  • AI Strategy for Small and Medium Businesses: A Guide to Getting Started

    AI Strategy for Small and Medium Businesses: A Guide to Getting Started

    This article outlines a practical AI strategy for SMBs starting their AI journey in Q4 2025. Artificial Intelligence (AI) is a game-changer for small and medium businesses (SMBs) looking to boost efficiency, enhance customer experiences, and stay competitive. With AI becoming a competitive standard, now is the time for SMBs to build a strategic approach to adoption.

    Why AI Matters for SMBs in Q4 2025

    AI is transforming how SMBs operate by automating repetitive tasks, improving decision-making, and personalizing customer interactions. For example, SMBs using AI for customer service see improved response quality, and 72% report faster resolution times, enhancing customer satisfaction. AI also levels the playing field, allowing SMBs to compete with larger enterprises by optimizing marketing, streamlining operations, and extracting insights from data.

    However, challenges like limited resources, skill gaps, and integration complexities can hinder adoption. A clear strategy ensures SMBs maximize AI’s value while navigating these hurdles.

    AI Strategy Small and Medium Businesses
    AI Strategy Small and Medium Businesses

    Building an AI Strategy for SMBs

    To create an effective AI strategy, SMBs must align AI initiatives with business goals, prioritize practical use cases, and address implementation challenges. Here’s a step-by-step approach tailored for Q4 2025:

    1. Define Clear Business Objectives

    Start by identifying where AI can solve real problems or add value. Focus on areas like customer service, marketing, operations, or finance. For instance, AI-driven chatbots can handle 80% of customer inquiries, freeing up staff for strategic tasks. Ask yourself, what are your biggest pain points? Where can automation or data insights drive growth? Align AI goals with measurable outcomes, such as reducing response times by 30% or increasing conversion rates by 15%.

    Business Value: According to PwC, AI could add trillions to global GDP by 2030, with SMBs seeing benefits like stronger decision-making and cost savings. Explore PwC’s AI Predictions for 2025 for actionable insights.

    2. Assess AI Readiness

    Evaluate your current infrastructure, data quality, and workforce skills. Many SMBs struggle with legacy systems, making AI integration complex. Conduct an AI readiness assessment to identify gaps. For example, organizations report a shortage of AI-skilled talent, so consider partnering with AI consulting firms to bridge this gap.

    3. Prioritize High-Impact, Low-Complexity Use Cases

    Start with proven AI applications that deliver quick wins. Popular use cases for SMBs in 2025 include:

    • Customer Support: AI chatbots improve response quality and speed.
    • Marketing: Generative AI creates personalized content, boosting conversion rates by 4.4x compared to traditional SEO.
    • Operations: AI-powered inventory management optimizes stock levels using predictive analytics.

    Business Value: Intuit’s 2025 report notes 89% of SMBs use AI for automation, driving efficiency. Read about Intuit’s AI Tour for hands-on SMB AI insights.

    4. Choose the Right AI Tools

    Select tools that integrate seamlessly with existing systems. In 2025, SMBs can leverage:

    • Google Workspace AI: Automates email drafting and provides data insights in Sheets.
    • Microsoft 365 AI: Simplifies adoption with built-in updates for tasks like document summarization.
    • AWS AI Services: Offers machine learning and NLP for tasks like image recognition.
    • Naterao AI: Offers AI on Snowflake that enables document search and secure AI.

    5. Implement with Governance and Training

    Establish a Responsible AI framework to mitigate risks like data privacy or noncompliant AI actions. Train staff to use AI tools effectively, as 20% of SMB finance teams cite skill gaps. Start with pilot projects to test AI solutions before full deployment.

    Business Value: Microsoft’s AI strategy guide emphasizes governance for measurable outcomes. Learn more at Microsoft Learn.

    6. Optimize for AI-Driven Search

    Google’s AI Mode in 2025 prioritizes content with Experience, Expertise, Authoritativeness, and Trustworthiness (E-E-A-T). Optimize your website with structured data (Schema markup) and specific, question-based content to rank higher in AI-driven searches.

    7. Measure and Scale

    Track metrics like ROI, customer satisfaction, or time saved to evaluate AI’s impact. For example, 88% of employees using generative AI report time savings and faster decisions. Scale successful pilots gradually, reinvesting savings into advanced AI solutions like agentic AI.

    Business Value: Gartner’s insights show how measuring results drives growth. Access Gartner’s AI Strategy Guide.

    The Path Forward

    In Q4 2025, SMBs that adopt AI strategically will see transformative results. By aligning AI with business goals, starting with high-impact use cases, and leveraging accessible tools, SMBs can drive efficiency, enhance customer experiences, and unlock growth. Get started today with AI.

    Ready to dive in, contact me to learn how to get started

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  • How to Get Started with AI Solutions for Your Business

    How to Get Started with AI Solutions for Your Business

    Artificial Intelligence (AI) is a must have tool that businesses of all sizes can leverage to boost efficiency, enhance customer experiences, and drive growth. Get started with AI by automating routine tasks to uncovering data-driven insights, AI solutions can transform how your business operates. But where do you begin? In this post I outline a clear path to adopting AI solutions for your business, complete with a 10-step checklist and real-world examples that demonstrate tangible value.

    Why AI Matters for Your Business

    AI enables businesses to process vast amounts of data, predict trends, personalize customer interactions, and streamline operations. According to a 2023 McKinsey report, companies adopting AI see up to a 20% increase in operational efficiency and a 10-15% boost in revenue. Whether you’re a small startup or an established enterprise, integrating AI can give you a competitive edge. Get started with AI today to improve your business.

    Get Started with AI
    Get Started with AI

    10-Step Checklist to Get Started with AI Solutions

    Here’s a step-by-step guide to implementing AI in your business:

    1. Scale and Innovate
      Once your pilot proves successful, expand AI use across other business areas. Stay updated on emerging AI trends to maintain a competitive edge.
      Example: Amazon scaled its AI from recommendation engines to warehouse automation, cutting delivery times significantly.
    2. Identify Business Needs and Goals
      Pinpoint specific challenges or opportunities where AI can add value. Are you looking to automate customer support, optimize supply chains, or enhance marketing campaigns?
      Example: Shopify uses AI to recommend products to customers, increasing sales conversions by personalizing the shopping experience.
    3. Assess Your Data Readiness
      AI thrives on data. Evaluate the quality, quantity, and accessibility of your business data. Ensure it’s organized, clean, and stored securely.
    4. Define Key Performance Indicators (KPIs)
      Set measurable goals for your AI initiatives, such as reducing response times by 30% or increasing customer retention by 15%. Clear KPIs help track ROI.
      Example: Starbucks uses AI to personalize offers, boosting customer loyalty metrics.
    5. Research AI Solutions and Vendors
      Explore AI tools tailored to your industry, such as chatbots, predictive analytics, or image recognition software. Compare vendors based on scalability, cost, and ease of integration.
    6. Start with a Pilot Project
      Begin with a small, low-risk AI project to test its impact. For example, deploy a chatbot to handle basic customer inquiries before scaling to more complex tasks.
      Example: H&M piloted AI for inventory management, reducing overstock by 20%.
    7. Build or Hire AI Expertise
      Decide whether to train your team, hire AI specialists, or partner with a vendor. Basic AI tools often require minimal expertise, while custom solutions may need data scientists.
    8. Ensure Ethical AI Practices
      Address bias, transparency, and data privacy. Implement guidelines to ensure your AI solutions comply with regulations like GDPR or CCPA.
      Resource: The AI Ethics Guidelines by OECD provide a framework for responsible AI use.
    9. Integrate AI with Existing Systems
      Ensure your AI tools work seamlessly with your CRM, ERP, or other software. APIs and cloud-based platforms simplify integration.
    10. Monitor and Optimize Performance
      Continuously track your AI solution’s performance against KPIs. Use feedback to refine algorithms and improve outcomes.

    Real-World Examples of AI Delivering Value

    1. Customer Service: Zendesk
      Zendesk’s Answer Bot uses AI to resolve 20-30% of customer inquiries without human intervention, freeing up agents for complex tasks and improving response times.
    2. Marketing: HubSpot
      HubSpot’s AI tools analyze customer behavior to create targeted campaigns, resulting in up to 50% higher engagement rates for businesses.
    3. Healthcare: PathAI
      PathAI uses AI to assist pathologists in diagnosing diseases like cancer, improving accuracy by 15% and speeding up diagnosis times.
    4. Retail: Walmart
      Walmart’s AI-driven supply chain optimizes inventory and predicts demand, reducing stockouts by 10% and saving millions annually.

    Getting Started Today

    Get started with AI by starting small and focusing on high-impact areas. Leverage existing platforms to minimize costs and complexity. By following the 10-step checklist above, you can strategically integrate AI into your business, unlocking efficiency and innovation.

    Contact me if you have questions on how to get started.

  • Leveraging AI for Preventive Maintenance in Oil and Gas

    Leveraging AI for Preventive Maintenance in Oil and Gas

    A Game-Changer for Efficiency

    AI for preventive maintenance is essential in the oil and gas industry. Equipment failures can lead to costly downtime, safety risks, and environmental concerns. As global energy demands rise—partly driven by AI data centers themselves—the need for operational efficiency has never been more critical. AI-powered preventive maintenance, a transformative approach that uses data-driven insights to predict and prevent equipment failures before they occur.

    AI for Preventive Maintenance

    Why AI for Preventive Maintenance Matters

    Preventive maintenance powered by AI shifts the industry from reactive to proactive strategies. Traditional maintenance relies on scheduled checks or post-failure repairs, which often miss subtle signs of wear or inefficiency. AI, however, analyzes real-time data from sensors, historical records, and operational parameters to forecast failures with pinpoint accuracy. According to industry reports, unplanned downtime can cost oil and gas companies $220,000 per hour for offshore rigs and $50,000-$100,000 per day for onshore facilities. AI reduces these losses by predicting issues weeks in advance, enabling targeted interventions.Beyond cost savings, AI-driven maintenance:

    • Enhances Safety: Early detection of equipment issues prevents accidents, protecting workers and the environment.
    • Boosts Sustainability: Optimized operations reduce energy waste and emissions, aligning with 2025’s regulatory push for greener practices.
    • Extends Asset Life: Predictive insights allow for timely repairs, delaying costly replacements.

    With global oil demand projected to rise through 2030, per the International Energy Agency IEA, and AI adoption in the sector growing at a CAGR of 10.4% MarketsandMarkets, preventive maintenance is a strategic priority for staying competitive.

    How to Get Started with AI for Preventive Maintenance

    Implementing AI for preventive maintenance requires a structured approach to ensure scalability and ROI. Here’s a step-by-step guide:

    1. Assess Data Infrastructure
      AI thrives on data, so start by auditing your existing sensors, IoT devices, and data collection systems. Ensure these feed into a centralized platform for real-time analysis. If data gaps exist, invest in IoT retrofits.
    2. Pilot a High-Impact Use Case
      Start with a single asset, like a compressor or pipeline, to test AI models. Use historical failure data and real-time sensor inputs to train algorithms. A pilot can demonstrate ROI within 3-6 months, building stakeholder buy-in.
    3. Train Teams and Scale
      Upskill maintenance crews on AI insights through platforms like Coursera’s industrial AI courses Coursera. Once the pilot succeeds, scale to other assets, integrating AI into daily workflows via dashboards or mobile apps.

    Three Use Cases with ROI and Downtime Savings

    1. Pump Failure Prediction in Offshore Rigs

    Use Case: Offshore platforms rely on pumps for fluid transfer, where failures can halt production. AI analyzes vibration, temperature, and flow data to predict pump issues up to 30 days in advance.
    Example: A North Sea operator implemented C3 AI’s solution, reducing pump-related downtime by 25%. With downtime costs at $200,000/hour, this saved $12 million annually.
    ROI: Initial setup costs of $500,000 were recouped in under two months, with a 20x ROI in year one.
    Source: C3 AI Case Studies.

    2. Pipeline Corrosion Monitoring

    Use Case: Pipelines face corrosion risks, leading to leaks or ruptures. AI integrates sensor data (pressure, chemical composition) with weather and soil analytics to flag corrosion risks early.
    Example: A U.S. midstream company used IBM Maximo to monitor 1,000 miles of pipeline, cutting inspection costs by 30% and preventing two major leaks. Downtime was reduced by 15 days annually, saving $1.5 million at $100,000/day.
    ROI: The $1 million implementation cost yielded a 3x ROI in 18 months.
    Source: IBM Maximo Case Studies.

    3. Compressor Optimization in Refineries

    Use Case: Compressors are critical for refining, but failures cause bottlenecks. AI models predict wear in bearings or seals, scheduling maintenance during planned shutdowns.
    Example: A Middle Eastern refinery adopted GE’s Predix platform, reducing compressor failures by 20% and downtime by 10 days/year. At $80,000/day, this saved $800,000 annually.
    ROI: The $300,000 investment delivered a 2.7x ROI in year one.
    Source: GE Digital.

    The Path Forward with AI

    AI for preventive maintenance is no longer a luxury—it’s a necessity for oil and gas companies facing tight margins and rising expectations. By starting small, leveraging existing data, and partnering with proven providers, operators can unlock significant savings and efficiency. As seen in the use cases above, ROI can be achieved in months, with downtime reductions transforming operations. Don’t get left behind, if you have questions on getting started with AI please contact me.

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