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Himansh Upadhyay

Himansh Upadhyay

BI Developer & Dashboard Consultant | SQL Expert | AI Expert

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Cover image for Himansh Upadhyay – Data Warehouse
Himansh Upadhyay – Data Warehouse & Analytics Project Welcome to the Himansh Upadhyay Data Warehouse and Analytics Project 🚀 This repository demonstrates a complete end-to-end data warehousing and analytics solution, from raw data ingestion to business-ready analytics. This project is designed as a portfolio project and highlights industry best practices in: Data Engineering Data Warehousing ETL Pipelines Data Modeling Analytics & Reporting 📐 Data Architecture This project follows the Medallion Architecture with Bronze, Silver, and Gold layers. Architecture Layers Bronze Layer Stores raw data as-is from source systems Data is ingested from CSV files into SQL Server No transformations applied Silver Layer Data cleaning, validation, and standardization Removal of duplicates and data quality issues Prepared for analytical processing Gold Layer Business-ready data Modeled using Star Schema Optimized for reporting and analytics 📌 Project Overview This project covers the full lifecycle of a modern data warehouse: Data Architecture Designing a modern warehouse using the Medallion Architecture ETL Pipelines Extracting, transforming, and loading data from source systems Data Modeling Creating fact and dimension tables optimized for analytics Analytics & Reporting SQL-based insights for business decision-making Skills Demonstrated SQL Development Data Architecture ETL Pipeline Development Data Modeling Data Analytics 🏗️ Project Requirements Building the Data Warehouse (Data Engineering) 🎯 Objective Develop a modern data warehouse using SQL Server to consolidate sales data and enable analytical reporting. 📋 Specifications Data Sources Two source systems: ERP and CRM Data provided as CSV files Data Quality Clean and resolve data quality issues before analysis Integration Combine ERP and CRM data into a single analytical data model Scope Focus on the latest available data No historical data versioning required Documentation Clear documentation for business users and analytics teams 📊 BI: Analytics & Reporting (Data Analysis) 🎯 Objective Develop SQL-based analytics to generate insights on: Customer Behavior Product Performance Sales Trends These insights empower stakeholders with key business metrics for strategic decision-making.
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Cover image for Finance Dashboard Executive Summary.
✅ What
Finance Dashboard Executive Summary. ✅ What This Dashboard Delivers 🔹 360° financial overview 🔹 Deep customer & segment insights 🔹 Product & category profitability 🔹 Region-wise contribution analysis 🔹 Rolling 12-month revenue trends 🔹 Forecasting for future planning 🔹 Cost & operational efficiency KPIs 🔹 Fully interactive filtering and drill-downs Every KPI, chart, and page has been thoughtfully structured to answer real business questions — not just display numbers.
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Cover image for 🚗 Uber Dashboard in Power
🚗 Uber Dashboard in Power BI – Real-Time Business Insights I will design a fully interactive Uber-style dashboard in Power BI, showcasing key metrics like completed bookings, revenue, booking value, customer ratings, and top locations. This dashboard transforms raw data into actionable insights for smarter decisions. 📊 Pages Included: Dashboard Overview Monthly Analytics & KPIs Booking Status Breakdown Revenue & Booking Value Charts Top Pickup/Drop Locations Driver & Customer Ratings From these 6 pages, you’ll receive: ✔️ Monthly performance trends ✔️ Visual analytics (charts, graphs, maps) ✔️ Booking and cancellation insights ✔️ Location-based ride data ✔️ Customer satisfaction metrics ✔️ Total and average ride distances Built using advanced DAX, Power Query, and clean data modeling, this dashboard is ideal for startups, MSMEs, and enterprises seeking clarity and control over operations. Whether you're pitching to investors, managing ride data, or building your MVP—this dashboard is scalable, professional, and ready to impress. Let’s turn your data into a decision-making powerhouse.
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Cover image for SaaS Revenue, Growth & Retention
SaaS Revenue, Growth & Retention Intelligence Dashboard Enterprise Analytics Architecture & Decision System Project Overview This project is an end-to-end analytics system designed to help subscription-based companies answer one core question: Is our revenue growth durable, predictable, and defensible — or are we masking structural churn with acquisition? Unlike reporting dashboards that focus on surface-level KPIs, this project is built as a decision-support system for leadership, finance, growth, and retention teams. It demonstrates how analytics should be structured, validated, and deployed to solve real business risks, not just visualize data. Business Context & Company Type This analytics solution is designed for: SaaS & subscription-based businesses B2B software companies (Series A → pre-IPO) Organizations with recurring revenue, churn risk, and customer lifecycle complexity The dataset represents a company with: Account-based subscriptions Multiple billing cycles and plan tiers Feature usage and behavioral signals Support tickets impacting churn Explicit churn events This mirrors real-world RevOps and Growth Analytics environments. Core Business Problems Solved This dashboard addresses four enterprise-critical risks: False Growth Visibility Separates true revenue growth from churn-offset acquisition. Revenue Leakage Blindness Identifies where ARR and MRR are lost by plan, customer type, and behavior. Retention & Churn Misdiagnosis Connects churn outcomes to behavioral and operational signals. Unpredictable Cash Flow Improves forecasting through billing cycle and subscription intelligence. Analytics Philosophy This project strictly follows analytics maturity standards, not ad-hoc dashboarding. LEVEL 0: MASTER FLOW OVERVIEW Business Understanding → Data Audit → Data Preparation → Data Modelling → KPI & Metrics → Analysis & Insights → Visualization & Storytelling → Validation → Deployment → Business Adoption This is the only analytics flow that scales. Everything else is a structured breakdown of this. LEVEL 1: MASTER FLOWS (Enterprise Analytics Framework) Each master flow mitigates a specific enterprise risk. 1. Business Understanding & Value Definition Risk Solved: Analytics without decision impact Defined executive, finance, growth, and retention use cases Mapped KPIs directly to leadership decisions Explicitly rejected vanity metrics Outcome: Analytics exists to drive action, not reporting. 2. Data Audit & Feasibility Assessment Risk Solved: Unreliable or misleading insights Assessed raw datasets for: Grain consistency Missing identifiers Temporal limitations Identified proxy metrics vs factual metrics Flagged analytical constraints early Outcome: No false confidence from weak data. 3. Data Preparation & Transformation Risk Solved: Inconsistent definitions across teams Cleaned and standardized subscription, account, churn, usage, and support data Normalized date logic using a dedicated Date dimension Created analysis-ready structures without altering raw facts Outcome: Stable foundation for scalable analytics. 4. Analytical Data Modelling Risk Solved: Performance bottlenecks and ambiguous logic Star-schema–oriented analytical model Clear separation of: Fact tables (Subscriptions, Churn, Usage, Tickets) Dimension tables (Account, Date, Plan, Feature) Relationships designed for analytical clarity, not convenience Outcome: High-performance, explainable model. 5. KPI, Metrics & Business Logic Layer Risk Solved: Multiple versions of truth Defined metrics at business meaning level: ARR, MRR, Net Revenue Growth Logo Churn vs Revenue Churn Activation and retention proxies Explicitly documented assumptions where proxies are used Ensured consistent filters across all pages Outcome: One version of truth for leadership. 6. Exploratory Analysis & Insight Discovery Risk Solved: Reactive decision-making Identified: Revenue concentration risks Retention decay patterns Plan-level churn exposure Tested behavioral correlations with churn and retention Outcome: Early warning signals instead of post-mortems. 7. Visualization & Dashboard Engineering Risk Solved: Dashboards that don’t get used Dashboards are structured by decision ownership, not data domains. Page 1: Executive Overview 30-second business health check for CEOs and founders. Page 2: Revenue & Subscription Intelligence Finance-grade revenue quality, billing mix, and predictability. Page 3: Customer Growth & Cohort Analysis Growth efficiency and long-term value assessment. Page 4: Churn & Retention Intelligence Root-cause analysis for customer and revenue loss. Outcome: Each page answers a clear business question. 8. Validation, Governance & Quality Control Risk Solved: Loss of trust in numbers Reconciled KPIs across pages Identified mismatches and weak metrics Highlighted where data limits interpretation Outcome: Transparent, auditable analytics. 9. Deployment, Access & Enablement Risk Solved: Analytics unused after delivery Designed for: Executive consumption Finance review Growth and retention teams Clear filtering logic and drill paths Outcome: Analytics integrated into decision workflows. 10. Business Adoption & Continuous Improvement Risk Solved: One-time dashboard projects Metrics designed to evolve with better data Structure supports future enrichment: Sales data Marketing attribution Product telemetry Outcome: Long-term analytics asset, not a static report. Fortune 500 Readiness Assessment (Honest) Design maturity: High Business framing: Strong Analytical rigor: Medium (data-limited, transparently flagged) Production readiness: Requires tighter metric reconciliation This project is not presented as production finance reporting. It is positioned correctly as a Revenue & Growth Intelligence Framework. Why This Project Matters Most dashboards answer: “What happened?” This system answers: “Why it happened, where risk exists, and what breaks next if nothing changes.” That is the difference between reporting and analytics leadership. Author Himansh Upadhyay Analytics | Business Intelligence | Decision Systems This project reflects an analytics mindset focused on profitability, risk reduction, and executive decision-making, not tool usage.
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