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Product Adoption & Churn Intelligence Assistant

An end-to-end agentic decision system that analyzes customer usage signals to surface feature adoption opportunities, actionable enablement playbooks, and explainable churn risk, translating raw telemetry into CSM-ready guidance.

Tags & Technologies

Product Analytics Agentic AI Explainable Systems Customer Intelligence Python Streamlit Modular Architecture

Key Impact & KPIs

Project Overview

1. Agentic Decision Pipeline

Designed an agentic decision pipeline that unifies customer usage telemetry, feature exposure, and behavioral signals into a single assistant—enabling Customer Success teams to move from raw activity data to prioritized, action-ready recommendations.

2. Modular Agent Core Architecture

Built a modular Agent Core and tool-based architecture that orchestrates discrete capabilities (usage summarization, feature exposure analysis, recommendation ranking, churn signal detection), ensuring clarity, extensibility, and production-readiness without monolithic logic.

3. Explainable Adoption Recommendations

Implemented explainable, rules-driven adoption recommendations that identify high-impact, under-utilized features and generate a concise 1–3 step enablement playbook for the top opportunity—preserving transparency over black-box scoring.

4. Interpretable Churn-Risk Framework

Developed an interpretable churn-risk framework that consolidates multiple behavioral indicators (engagement trends, inactivity patterns, support signals) into human-readable Low / Medium / High risk labels with explicit reasoning for each classification.

5. Demo-Ready Extensible System

Delivered a demo-ready, extensible system with typed data models, in-repo mock telemetry, memory/context tracking, and dual interfaces (CLI + Streamlit), demonstrating how agentic analytics systems can be operationalized responsibly in customer- and revenue-sensitive environments.

Model Selection Rationale