--- title: Agent Ken โ€” Data-Informed PM Copilot emoji: ๐Ÿค– colorFrom: blue colorTo: purple sdk: gradio sdk_version: "6.5.1" app_file: app.py pinned: true license: mit short_description: Data-informed PM Copilot --- # ๐Ÿค– Agent Ken โ€” Your AI Companion for Product Management & Data An AI assistant that helps you **learn and practice product management** โ€” from strategy, frameworks, and execution to real-world data analysis. Agent Ken is also integrated by **Microsoft Fabric** with real product analytics: **5,000 users**, **204K events**, **90 days of metrics**, and **3 trained ML models** (churn, LTV, anomaly detection). But it's not just about data โ€” you can also ask about **PM frameworks, AI & tech, business strategy, and more**. > **This isn't a generic ChatGPT wrapper.** Ask about retention, and you'll get actual numbers. Ask about PRDs, and you'll get a structured template. Ask about AI, and you'll get practical insights. ## โšก Powered By | Component | Technology | | :--- | :--- | | ๐Ÿง  **AI Agent** | Azure AI Foundry Agent Service (GPT-5) | | ๐Ÿญ **Data Platform** | Microsoft Fabric (OneLake + MLflow) | | ๐Ÿค– **ML Models** | Churn Prediction ยท LTV Estimation ยท Anomaly Detection | | ๐Ÿ–ฅ๏ธ **Frontend** | Gradio (Hugging Face Spaces) | ## ๐Ÿš€ What Can Agent Ken Help You With? ### ๐Ÿ“Š Data-Informed (Powered by Fabric ML Pipeline) Ask about real product metrics โ€” Agent Ken answers with **specific numbers**, not vague advice: * "What's our D7 retention?" โ†’ **25.6%**, with segment breakdown by channel. * "Which channel has highest LTV?" โ†’ **Organic at $25.65** (1.9x vs Paid Social). * "Any anomalies in our metrics?" โ†’ **Nov 24-25 churn spike** (2.8x average). * "How did checkout experiment do?" โ†’ **+11.9% conversion**, p=0.027, ship it. ### ๐Ÿง  General PM (Powered by GPT-5.1 Knowledge) All the PM capabilities you'd expect from a senior product manager: * ๐Ÿ” **Product Discovery** โ€” Jobs-to-be-Done, personas, problem statements, user journeys. * ๐Ÿ“Š **Prioritization** โ€” RICE scoring, MoSCoW, trade-off analysis. * ๐Ÿ“ **PRDs & User Stories** โ€” Product requirements, acceptance criteria, MVP definition. * ๐Ÿงช **Experiment Design** โ€” A/B tests, hypothesis templates, success metrics. * ๐Ÿ“ˆ **Metrics & OKRs** โ€” North Star Metrics, funnel metrics, guardrail metrics. * ๐Ÿค **Stakeholder Communication** โ€” Decision memos, release notes, progress updates. * โ™ฟ **Inclusive Design** โ€” Accessibility, ethical considerations, vulnerable user safety. --- ## ๐Ÿ’พ What Data Powers Agent Ken? A synthetic but realistic product analytics dataset simulating a mobile app over 3 months: | Dataset | Records | What's Inside | | :--- | :--- | :--- | | **Users** | 5,000 | Channel, country, plan, age group | | **Events** | 204,356 | App open, purchase, support ticket, etc. | | **Daily Metrics** | 90 days | DAU, revenue, retention, churn, NPS | | **A/B Tests** | 5 experiments | Checkout, onboarding, push timing, pricing, dark mode | ### ๐Ÿ”‘ Key Numbers | Metric | Value | | :--- | :--- | | Avg DAU | **980** | | D7 Retention | **25.6%** | | Avg LTV | **$19.87** | | Churn Rate | **34.2%** | | 90-day Revenue | **$99,241** | --- ## ๐Ÿค– ML Models Trained in Fabric | Model | Algorithm | Score | Key Insight | | :--- | :--- | :--- | :--- | | **Churn Prediction** | Gradient Boosting | AUC: 1.00 | Users inactive 3+ days = high risk | | **LTV Estimation** | Linear Regression | Rยฒ: 0.77 | Organic users worth 1.9x more than paid | | **Anomaly Detection** | Isolation Forest | 5 anomalies | Nov 24-25 churn spike = possible incident | ## ๐Ÿงช A/B Test Results | Experiment | Lift | Significant? | Action | | :--- | :--- | :--- | :--- | | **Checkout Redesign** | +11.9% | โœ… p=0.027 | **Ship** โœ… | | **Onboarding Simplification** | +8.0% | โœ… p=0.021 | **Ship** โœ… | | **Push Notification Timing** | +22.0% | โœ… p=0.035 | **Ship** โœ… | | **Premium Pricing Test** | -5.0% | โŒ p=0.289 | **Rollback** โŒ | | **Dark Mode Default** | +3.0% | โŒ p=0.212 | **Extend test** โณ | --- ## ๐Ÿ’ก How to Use 1. **Type your question** in the chat box. 2. **Upload files** โ€” drop your CSV, PDF, Excel, or other files. I'll analyze them and give you actionable insights. 3. **Ask about data** โ€” Agent Ken will cite specific numbers from the Fabric pipeline. 4. **Ask about PM** โ€” Agent Ken will use product management expertise. 5. **Try the examples** โ€” click "Try an example" for inspiration. 6. **Start fresh** anytime with "New Conversation". ## ๐ŸŽฏ Tips for Best Results * โœ… *"What's our retention by acquisition channel?"* * โœ… *"Help me write a PRD for a referral program based on our LTV data"* * โœ… *"Score these features using RICE: push notifications, dark mode, onboarding revamp"* * โœ… *"Design an A/B test for our new premium pricing"* * โŒ Off-topic questions (biology, cooking, etc.) โ€” Agent Ken is scoped to PM & tech. ## ๐Ÿ‘ค About Built by **Kendrick Filbert** โ€” AI + PM + Social Impact Practitioner *Powered by **Azure AI Foundry** (GPT-5.1) ยท **Microsoft Fabric** (OneLake + MLflow) ยท **3 ML Models** (Churn ยท LTV ยท Anomaly)*