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AI Tinkerers - San Francisco
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Team

Clan AI

Project Concept

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Entry

Status: Submitted

Last saved: October 25 at 5:58 PM PDT

Team Roster

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Aryan Kumar Team Lead RSVP Approved

Student at San Jose State University
Handled Red-flag ruleset, triage LLM prompt, evaluation harness. Expanded rule list with clinical phrasing variants.
I am currently pursuing MS in CS from San Jose State University. I have 2+ years of industrial experience with backend engineering and web application. I am always looking for opportunities to skill up. I am interested to grow a career in the AI/ML field and am open to internships and new roles.
I am particulary interested in AI/ML or Data Science and also backend engineering.
I am currently working on NLP based projects.

Amrutha Konchada RSVP Approved

Student at San Jose State University
Handled FastAPI service, Redis schema, embeddings, retrieval, endpoints, debug APIs.
I am a Computer Science student at San Jose State University in San Jose, California. With 3 years of hands‑on experience, she has cultivated a solid foundation in software development and emerging technologies, actively tinkering with projects in computer science and artificial intelligence. Amrutha is open to full‑time opportunities and seeks mentors and advisors to deepen her expertise and contribute to innovative teams. Passionate about bridging theory and practice, she aims to leverage her academic background and practical skills to drive impactful solutions in the tech industry.
Internship opportunities, entry-level software engineering roles, NLP/ML engineering roles, full-stack web application development (Vanilla JS frontend, Flask backend), applied NLP prototyping (BERT, PKE, NLTK), backend APIs & relational databases (SQLAlchemy, PostgreSQL), deployment (Netlify, Render).
A real-time, turn-based Match-3 puzzle game where two players share the same game board and take alternating turns to make matches, competing for the highest score. Real-time WebSocket communication, automated turn orchestration via state machines, and globally distributed frontend hosting. Frontend: Next.js 14 + React 18 + TypeScript, TailwindCSS + Framer Motion.

Atharva Kulkarni RSVP Approved

Student @SJSU at San Jose State University
Handled sending data back to front-end. Doctor & Patient pages, API wiring, UX polish..
Hello I'm Atharva Kulkarni, I’m a passionate software engineer in my first year of Masters at SJSU, and problem solver who loves turning creative ideas into working prototypes. I enjoy collaborating in fast-paced hackathon environments to design, build, and deploy innovative solutions that make an impact.
Experienced in transforming legacy architectures into cloud-native, distributed systems powered by AI-driven automation and data intelligence. Eager to grow in designing scalable, intelligent software that bridges enterprise systems and modern technologies.

Tejas Sawant RSVP Approved

Student at San Jose state university
Handled processing of data internally. Runbooks, containers, Redis GUI, sample data, demo narrative.
Tejas Sawant is a graduate student at San José State University, pursuing a Master’s in Data Analytics. With a background in computer science and experience as a Programmer Analyst at Cognizant, he’s passionate about data-driven problem solving, AI, and automation. Outside academics, he enjoys exploring new tech tools, contributing to team projects, and participating in campus events that blend innovation with community impact.
I’m interested in data engineering, machine learning, and AI-driven analytics. I’m looking to learn more about real-world data pipeline design, cloud-based data solutions, and opportunities to collaborate on innovative data projects or research that bridge analytics and automation.
I’m currently working on a data pipeline project that automates data collection, transformation, and visualization using Python, SQL, and Power BI. I’m also experimenting with small-scale machine learning models to analyze trends and improve data-driven decision-making.