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  • Toshiba Software India Privated limited
  • Bangalore
  • 22:17 (UTC -12:00)
  • LinkedIn in/praneethareddy111

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Praneetha-reddy/README.md

Hi there, I'm Praneetha Puchalapalli

Software Development Engineer (Frontend) | 3.5 Years of Experience

I am a product-focused engineer passionate about building scalable, user-friendly applications and diving deep into architectural design patterns.

Currently, I am the Sole Frontend Engineer for my team at Toshiba, where I own the entire UI lifecycle—from architectural decisions to deployment. I specialize in refactoring legacy codebases into modern, performant React applications.

Tech Stack & Arsenal

  • Core: JavaScript (ES6+), React.js, HTML5, CSS3/SASS.
  • Backend & Architecture: Node.js, Express, Java, System Design (LLD/HLD).
  • Data & Tools: MongoDB, Git, Webpack, Babel.
  • Problem Solving: LeetCode (Top 21% & Climbing).

Specialized Skills (The "T-Shaped" Engineer)

  • Frontend Core: React.js, Redux, Performance Optimization.
  • Data Intelligence: Machine Learning (Python/Pandas), Data Visualization, and Statistical Analysis.
  • Why this matters: I bridge the gap between Data Science teams and UI implementation, ensuring complex analytics are rendered performantly.

You can find me here  

Popular repositories Loading

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