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AbhijeetP21/README.md

Abhijeet S Pachpute

Software Engineer with strong fundamentals in backend systems, data structures, and system design, with hands-on experience building reliable, production-grade software and applied AI systems.

MS in Computer Science @ University of Utah (May 2026).

I’ve worked across software engineering, applied AI, and security — building backend and full stack systems with a focus on clean architecture, performance, and measurable impact. I use modern AI tools to enhance real systems, not to ship demos.

Focus

  • Backend and distributed systems
  • System design, scalability, and performance engineering
  • Applied AI and ML systems (agent-based workflows, RAG, inference pipelines, evaluation)
  • Writing clean, reliable, well-documented code

What I’m working on

  • End-to-end projects with production-style engineering: testing, CI, observability, and documentation
  • Deepening fundamentals in system design, concurrency, databases, and performance tuning
  • Open to Software Engineering and related roles 2026 new grad roles (US)

Experience snapshot

  • Software Engineering internships building backend services and production features
  • AI engineering experience shipping GenAI tools used by real stakeholders
  • Strong grounding in algorithms, operating systems, databases, and security

Featured work

Pinned repositories highlight projects that emphasize:

  • End-to-end system design
  • Measurable performance or reliability improvements
  • Practical use of AI in real workflows

Tech

Languages: Python, Java, C/C++, JavaScript/TypeScript, SQL
Backend: REST APIs, authentication, databases, caching, concurrency, testing
Web: React.js, Node.js, Next.js, HTML/CSS, Tailwind
Infra: Docker, AWS, Linux, CI/CD
ML: PyTorch, CNNs, embeddings, retrieval, evaluation pipelines

Links

Pinned Loading

  1. multi-agent-data-wrangler multi-agent-data-wrangler Public

    A multi-agent data wrangler project for data profiling, transformation, and quality scoring

    Python 29

  2. Pact Pact Public

    Serverless, end-to-end encrypted P2P video calling for small groups. Audio and video never touch a server (WebRTC mesh, DTLS-SRTP). On-device noise suppression and background blur, ephemeral chat. …

    TypeScript

  3. SynapticaAI-v2.0 SynapticaAI-v2.0 Public

    Advanced and more mature version of SynapticaAI OpenAI Compatible Gateway for efficient routing of AI queries. more updates coming soon

    Python

  4. ClipSync ClipSync Public

    Self-hostable clipboard manager web app. Next.js (App Router) + TypeScript + React frontend, Supabase as the entire backend (auth, Postgres DB, file storage, realtime sync). It syncs text, code sni…

    TypeScript 10

  5. Good_Bowls Good_Bowls Public

    Full stack salad bowl restaurant app with React, Node.js, MongoDB, and Stripe payments. Features menu browsing, custom bowl builder, cart management, secure checkout, user authentication, and admin…

    JavaScript 23 2

  6. Synthea Synthea Public

    Citation-grounded clinical Q&A over synthetic FHIR records: RAG with per-sentence source citations, abstention on insufficient evidence, Presidio PHI redaction, and a CI-gated evaluation harness.

    Python 1