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Data Scientist & AI Engineer

YOGESH GAVHANE

// Python · LangGraph · Prompt Engineering · Power BI · SQL

Building AI-powered analytics, agentic LLM workflows & intelligent data systems. Transforming raw datasets into strategic insight through EDA automation, LangGraph orchestration, and precision prompt engineering.

Agentic AI LangGraph Prompt Engineering EDA Automation Power BI Python SQL Streamlit
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Technical Arsenal01/04

CORE SKILLS

🐍
Python
Advanced data wrangling, pipeline automation, ML workflows using Pandas, NumPy, Streamlit, and Plotly.
PROFICIENCY92%
📊
Statistics & EDA
Descriptive and inferential statistics, hypothesis testing, distribution analysis, outlier detection and correlation mapping.
PROFICIENCY90%
🗃️
SQL
Complex joins, CTEs, window functions, aggregation pipelines, and performance-tuned queries for BI and data extraction.
PROFICIENCY85%
📈
Power BI & Excel
Interactive dashboards, DAX formulas, data modeling, and executive-ready reports communicating insight with clarity.
PROFICIENCY88%
🤖
LangGraph
Stateful multi-agent systems with conditional routing, memory persistence, tool-calling nodes, and agentic orchestration graphs.
PROFICIENCY80%
💬
Prompt Engineering
Chain-of-thought reasoning, few-shot design, system prompt architecture, structured output extraction and LLM reliability engineering.
PROFICIENCY87%
Featured Work02/04

DATA SCIENCE PROJECT

Featured Project

AUTOMATED EDA TOOL

Built a full-stack Automated Exploratory Data Analysis tool that dramatically streamlines understanding and visualizing any dataset. Upload a CSV or Excel file and instantly receive comprehensive analytical insights — no coding required.

PythonStreamlitPlotlyPandasNumPy
Impact: Significantly reduces manual effort in exploratory analysis — enabling data analysts and non-technical stakeholders to gain instant insights without writing a single line of code.
01
📊 Dataset Intelligence
Auto-displays shape, data types, missing values and full summary statistics the moment a file is uploaded.
02
📉 Dynamic Visualizations
Generates histograms, scatter plots, box plots and correlation heatmaps automatically using interactive Plotly charts.
03
🔍 Data Quality Audit
Highlights quality issues, potential outliers and anomaly patterns with intelligent flagging and automated alerts.
04
📄 Instant Report Export
Exports professional summary reports in PDF and HTML formats, ready for stakeholder presentation immediately.
AI Engineering03/04

AGENTIC AI & LLM
ENGINEERING

Specializing in the frontier of AI engineering — designing multi-agent systems where LLMs autonomously plan, execute, and iterate. LangGraph enables stateful graph-based orchestration where agents coordinate tool use, memory, and decision branching with precision. Combined with surgical prompt engineering, these systems behave reliably at production scale.
graph = StateGraph(AgentState)
graph.add_node("planner", plan_step)
graph.add_node("executor", exec_step)
graph.add_node("critic", critique)

graph.add_conditional_edges(
  "critic", should_continue,
  {"continue": "planner",
   "end": END}
)
// Stateful agentic loop
ORCHESTRATION
🕸️
LangGraph Workflows
Building complex stateful agent graphs with conditional routing, parallel execution branches, and persistent memory across steps.
  • StateGraph architecture design
  • Conditional edge routing
  • Tool-calling agent nodes
  • Memory & checkpointing
CORE EXPERTISE
🧠
Prompt Engineering
Precision prompts producing reliable, structured, hallucination-resistant outputs from large language models across diverse domains.
  • Chain-of-thought prompting
  • Few-shot & zero-shot design
  • Structured JSON extraction
  • System prompt architecture
AI ANALYTICS
AI-Powered Analytics
Integrating LLMs into data pipelines for natural language queries, automated insight generation and intelligent anomaly reporting.
  • LLM-driven EDA insights
  • NL to SQL generation
  • Auto report narration
  • Anomaly explanation agents
Academic Background04/04

EDUCATION & LEARNING

🎓
Bachelor of Business Administration
Computer Applications
CURRENTLY ENROLLED
DEGREE
BBA in Computer ApplicationsBusiness Administration with Computing focus
STATUS
Currently PursuingActively enrolled and progressing
LANGUAGES
English · Hindi · MarathiTrilingual communicator
CONTACT
yogeshgavhane7767@gmail.com+91 9130625154
SELF-DIRECTED FOCUS AREAS
Data ScienceMachine LearningLLM Engineering LangGraphPrompt EngineeringAgentic AI Power BISQL AnalyticsEDA Automation

LET'SCONNECT

// OPEN TO DATA SCIENCE & AI ENGINEERING ROLES

🌐 Available Immediately