Manigandan Acharya's Work | ContraWork by Manigandan Acharya
Manigandan Acharya

Manigandan Acharya

Data Specialist for Clean, Organized & Smart Reports

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Cover image for πŸ“Š Sales Tracking Dashboard |
πŸ“Š Sales Tracking Dashboard | Excel + Power BI Project Built an end-to-end interactive Sales Tracking Dashboard covering 2021–2024 across the entire US market. Top-Line Numbers: πŸ’° Total Sales: $19,28,888 πŸ“ˆ Total Profit: $2,47,962 πŸ‘₯ Total Customers: 8,314 across all years What the dashboard reveals: πŸ† Best-selling sub-categories: Phones ($2,79,464) and Chairs ($2,77,058) lead the pack β€” together accounting for nearly 29% of all sales πŸ“… Profit growth year-on-year: β†’ 2021: $49,556 β†’ 2022: $61,618 β†’ 2023: $81,786 β€” consistent upward trajectory across Furniture, Office Supplies & Technology πŸ—ΊοΈ Geographic concentration: California dominates at $3,90,145 in sales. New York ($2,46,517) and Texas ($1,51,436) follow. West Virginia sits at the bottom with just $536 β€” a clear signal for regional strategy review. πŸ“¦ Technology drives profit β€” highest-margin category across all 4 years, despite Furniture holding significant volume 🧾 Seasonal trends: Q4 is king β€” November ($2,34,013) and December ($2,41,464) are the strongest months. February dips to just $59,640 β€” opportunity for targeted campaigns. πŸ‘€ Top customer by profit: Tamara Chand at $8,981, followed by Raymond Buch ($6,939) and Sanjit Chand ($5,757) Tools used: Microsoft Excel Β· Pivot Tables Β· Power Query Β· Charts & Slicers Β· Dashboard Design This project sharpened my ability to turn raw transactional data into a clean, decision-ready visual β€” with filters for state, date, year, sub-category, and month. Open to feedback! πŸ‘‡ #Excel #DataAnalytics #SalesDashboard #DataVisualization #BusinessIntelligence #MicrosoftExcel #DashboardDesign
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Cover image for 🏦 Bank Loan Portfolio Analysis
🏦 Bank Loan Portfolio Analysis | Power BI Dashboard Project Analyzed 38,576 loan records across 50 states to give a bank's lending division a unified view of portfolio health β€” something they simply didn't have before. What the data revealed: βœ… Net-positive portfolio: $435.8M disbursed, $473.1M recovered ⚠️ 13.8% bad loan rate = $28.25M net capital loss πŸ“Š Debt consolidation drives nearly half of all loan applications ⏳ 73% of borrowers chose 60-month terms over 36-month πŸ“ 60%+ of repayments concentrated in just 5 states (CA, NY, FL, TX, NJ) Tools used: PostgreSQL β†’ Excel β†’ Power Query β†’ Power BI + DAX Built two interactive dashboards: β†’ Summary: KPI cards, good vs. bad loan segmentation, loan status grid β†’ Overview: Trends, geographic maps, term/purpose/employment breakdowns The next phase? Building a predictive risk scoring layer using DTI, interest rate, and employment length to flag at-risk loans before they default. Open to feedback from data folks in the community πŸ‘‡ #PowerBI #DataAnalytics #SQL #DAX #BankingAnalytics #PortfolioAnalysis #DataVisualization
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Cover image for Every hospital generates thousands of
Every hospital generates thousands of data points daily but without the right lens, it's just noise. Built this Healthcare Analytics Dashboard to turn patient records into decisions. From tracking $1.4B in revenue across admission types to spotting a consistent dip in monthly billing trends the numbers tell a story most teams never get to read. The insight that stood out? Diabetes and Obesity quietly lead revenue by medical condition which says a lot about where healthcare demand is heading. This is what data visualization is actually for not prettier reports, but faster, clearer thinking. Tools: Power BI Β· DAX Β· PostgreSQL Β· Power Query
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Cover image for I Built a two-page Power
I Built a two-page Power BI dashboard on 190K+ FMCG transactions β€” tracking revenue, SKU performance, promotional impact, and delivery across 3 channels and 3 regions. Uncovered a balanced 33% revenue split across all channels and identified the top 3 revenue-driving SKUs for smarter inventory decisions. Tools: Power BI Β· DAX Β· Excel
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