Couverture de Data Fuel: SMB Data Intelligence

Data Fuel: SMB Data Intelligence

Data Fuel: SMB Data Intelligence

De : Roman Villard
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Fuel your SMB’s growth with data-driven strategies.

Data Fuel is the podcast for small and medium-sized businesses looking to harness the power of data science to drive smarter decisions, streamline operations, and unlock new revenue opportunities. Hosted by experts passionate about actionable insights, each episode dives into practical strategies, real-world examples, and cutting-edge tools tailored to SMBs.

From leveraging AI and predictive analytics to monetizing data and scaling with efficiency, Data Fuel equips you with the knowledge to transform data into your business’s most valuable asset. Whether you’re a business owner, operator, or team member, this podcast delivers the guidance you need to thrive in today’s data-driven world.

Turn your data into growth. Subscribe today and fuel your SMB’s success!

© 2025 Data Fuel: SMB Data Intelligence
Direction Economie Management Management et direction
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    Épisodes
    • Business Owners: Build Your Own Context For AI
      Sep 24 2025

      Context Is the Missing Ingredient in Your Small Business AI Strategy | Data Fuel

      🔔 Subscribe for breakdowns of AI, data, and small business automation.

      Everyone’s talking prompts—but context is the real game-changer for AI. In this episode of Data Fuel, Roman Villard unpacks what “context” actually means for AI in small businesses, how Big Tech is racing to collect it, and how you can start structuring your own data to get faster, smarter outputs from AI today.

      ⏱️ Chapters

      01:08 – Why Big Tech Wants Your Context (and How They’re Getting It)

      03:29 – Structured vs. Unstructured Context: Examples for Each

      04:42 – Building Better Data = Better AI Performance

      06:16 – Unifying Context: Notes, Transcripts, CRMs & Data Warehouses

      07:50 – Organizing SOPs, Processes, and Zapier Flows to Capture Context

      10:30 – Stop Chasing Tools—Start Structuring Smarter Data

      Key Takeaways:

      • AI doesn’t think—it predicts. Better predictions come from better context.
      • Your context = your data. The more structured and relevant it is, the better AI works for you.
      • Start with one system. Document your fields, layer in metadata, and standardize your processes.
      • Unstructured data is easier to create, but structured data is cheaper to process.
      • Big Tech is winning on data volume—you can win on data quality.

      📢 Want smarter automations and AI that actually understands your business?

      🔔 Subscribe and turn on notifications for more episodes of Data Fuel.

      Connect with us!

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      12 min
    • Creating Scalable Automations With Your Data
      Apr 14 2025

      🎙️ Why Point-to-Point Automation Is Broken—and What to Do Instead | Data Fuel Podcast

      🔔 Subscribe for smarter systems, cleaner data & automation that actually scales

      📢 Your Zaps and automations are breaking—and it’s not your fault. Tools like Zapier and Make are powerful, but when used in point-to-point setups, they create fragile, error-prone spaghetti systems. In this episode of Data Fuel, we break down:

      ✔️ Why point-to-point automation falls apart at scale

      ✔️ How a centralized data warehouse solves 80% of your issues

      ✔️ Step-by-step plan to reroute your automations through a warehouse

      ✔️ Real-world use cases and tools to get started

      ⏱️ Chapters

      00:00 – The Problem with Point-to-Point Automation (Zapier, Make, Airtable, etc.)

      01:30 – How a Centralized Data Warehouse Becomes Your Automation Hub

      02:10 – The Hub-and-Spoke Model: Replace Chaos with Clean Data

      03:00 – Benefits: Data Normalization, Less Reliance on Fragile APIs

      05:20 – Data Modeling 101: Linking IDs Across Tools (HubSpot, Billing, PM)

      06:00 – Why You Should Push from Warehouse to Apps (Not the Other Way Around)

      06:45 – Automation Use Case 1: Invoicing from a Ready-to-Bill Table

      07:30 – Automation Use Case 2: Weekly Reporting Without Breaks

      08:25 – Getting Started: The 80/20 Rule for Automation Refactoring

      09:35 – Final Thoughts: Automate Smarter, Not Harder

      Key Takeaways

      ✔️ Point-to-point automations break when data or tools change—even slightly

      ✔️ A centralized data warehouse (Snowflake, BigQuery, Postgres) creates structure and trust

      ✔️ Run automations from your warehouse using Zapier or Make, not directly from source tools

      ✔️ Fix 80% of your problems by starting with one high-friction automation

      ✔️ Warehouse-driven automation = better data integrity, scalability, and maintainability

      💡 Tools Mentioned:

      • Zapier / Make
      • Snowflake, BigQuery, Postgres
      • Stitch, Fivetran, Airbyte

      🔔 Like & Subscribe to Data Fuel for weekly episodes on systems thinking, ops automation, and scalable tech stacks.

      Connect with us!

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      9 min
    • Data-Driven Retention: Moving Beyond Churn Prediction
      Mar 10 2025

      📊 Data-Driven Retention: Moving Beyond Churn Prevention

      📢 Most companies focus on churn prevention—but what if you focused on retention instead? In this episode, we explore:

      ✔️ How predictive analytics can enhance customer retention & lifetime value

      ✔️ The key data signals that indicate customer health & engagement

      ✔️ Why proactive engagement beats last-minute churn prevention

      ✔️ How to operationalize customer success with embedded analytics


      ⏱️ Chapters

      00:00 - Introduction: Flipping the Script on Customer Retention

      00:32 - The Overlap Between Churn Prevention & Retention Strategies

      01:08 - Customer Health Scores: Why Data Quality is Everything

      02:07 - Key Metrics That Drive Retention & Reduce Churn

      03:13 - How to Identify & Track Retention Signals

      03:41 - The 80/20 Rule: Small Changes That Drive Big Retention Gains

      04:10 - The Power of Onboarding: Reducing Early Churn Risks

      04:53 - Proactive Customer Engagement: Building Stronger Relationships

      05:29 - Behavioral Triggers: Spotting Churn Before It Happens

      06:00 - How to Operationalize Retention Metrics for Daily Use

      06:53 - Why Your Happiest Customers Are Your Best Growth Channel

      07:30 - The Pitfall of Waiting Until Renewal to Engage Customers

      08:17 - Final Thoughts: Using Data to Build a More Profitable, Sustainable Business


      Key Takeaways:

      ✔️ Retention is more than preventing churn—it’s about maximizing customer lifetime value.

      ✔️ Clean, reliable data is essential for meaningful customer health scores.

      ✔️ A strong onboarding process significantly reduces future churn risk.

      ✔️ Proactive engagement beats last-minute renewal outreach every time.

      ✔️ Your happiest customers are your best referral source—don’t ignore them!


      🔔 Subscribe & turn on notifications so you never miss an episode!

      Connect with us!

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      10 min
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