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smakov-data/README.md

Hi, I’m Ruslan Smakov I specialize in building analytics and AI-driven systems that translate business problems into scalable data solutions.

Analytics Consultant with 10+ years of experience delivering business-facing analytics and data enablement initiatives across enterprise environments.

I specialize in translating complex business requirements into structured KPI frameworks, scalable data models, and executive-ready reporting layers. My focus is not just building datasets — but designing analytics environments that drive measurable operational impact.

Core Expertise: • Business Intelligence & KPI Strategy
• SQL-Centric Data Warehousing (Star Schema, Fact & Dimension Modeling)
• Reporting Layer Architecture & Metric Standardization
• Databricks Lakehouse (Bronze–Silver–Gold)
• Data Validation, Reconciliation & Metric Governance

What I Deliver:

• Design of structured KPI frameworks aligned with business objectives
• Development of analytics-ready data marts for BI and executive reporting
• Implementation of SQL-driven warehouse models supporting operational analytics
• Construction of Bronze–Silver–Gold Lakehouse pipelines for BI consumption
• Data quality controls ensuring metric consistency and reporting reliability
• Alignment between business stakeholders and technical data teams

I build analytics systems that connect business strategy with reliable, production-ready data foundations.

Selected Projects

🟢 AI Sales Call Intelligence AI pipeline that converts unstructured sales calls into structured business signals (objections, intent, company insights) using LLM (phi3), with normalization, storage, and analytics.

Key Concepts:

  • LLM-based information extraction
  • Handling noisy model outputs (JSON parsing)
  • Data normalization into business categories
  • End-to-end pipeline (LLM → DB → Analytics)

https://github.com/smakov-data/ai-sales-call-intelligence

🟢 AI Dispatch Decision System AI-powered logistics decision system that simulates a pharmacy delivery network, evaluates operational risk, and generates dispatch recommendations using state vector modeling and an interactive Streamlit dashboard.

Key Concepts Demonstrated:

  • Operational AI decision systems
  • State vector modeling for system monitoring
  • Risk scoring and confidence evaluation
  • AI-assisted operational recommendations
  • Synthetic logistics network simulation
  • Real-time monitoring dashboards
  • Modular decision engine architecture

https://github.com/smakov-data/ai-pharmacy-dispatch-system

🟢 FMCG Databricks Lakehouse
End-to-end analytics platform designed to support KPI monitoring, BI dashboards, and executive reporting.

Highlights:

  • Lakehouse architecture (Delta Lake, Bronze–Silver–Gold)
  • Batch ingestion of structured CSV data from AWS S3
  • Full and incremental data loads
  • Dimensional modeling (facts & dimensions)
  • Gold-layer analytical views for BI consumption

https://github.com/smakov-data/fmcg-databricks-lakehouse

🟢 SQL Retail Data Warehouse
SQL-centric analytics data warehouse designed for sales analytics and reporting use cases.

Highlights:

  • Star schema design (Sales Data Mart)
  • Fact & dimension modeling
  • Business-aligned analytical queries
  • BI-ready datasets for reporting and ad-hoc analysis

https://github.com/smakov-data/sql-retail-dwh

💼 Professional Background

Background includes supporting enterprise analytics and data platforms across large-scale retail environments, working closely with data engineers on ingestion pipelines, data models, and data quality validation for reporting and analytics.

Pinned Loading

  1. ai-pharmacy-dispatch-system ai-pharmacy-dispatch-system Public

    AI-powered logistics decision system with operational risk modeling and interactive Streamlit dashboard

    Python

  2. ai-sales-call-intelligence ai-sales-call-intelligence Public

    AI-powered pipeline for extracting structured insights (company, objections, intent) from sales call transcripts using LLM (phi3). Includes normalization, storage, and analytics.

    Python

  3. fmcg-databricks-lakehouse fmcg-databricks-lakehouse Public

    Databricks Lakehouse for FMCG Analytics (Medallion Architecture: Bronze–Silver–Gold).

    Jupyter Notebook

  4. sql-retail-dwh sql-retail-dwh Public

    SQL Server Data Warehouse for Retail (Medallion Architecture: Bronze–Silver–Gold).

    TSQL 1