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Saikiran anugam

Mid-level Machine Learning Engineer specializing in MLOps, LLM/RAG systems, and scalable data pipelines

MoshiUniversity of HoustonUSA, USA3 Years ExperienceMid LevelWorks Remote

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Experience

Founding Software EngineerMoshi · Dec 2025 – Present
Software Engineer (Machine Learning & Data Platforms)Staples Inc · May 2025 – Sep 2025
Research Data Scientist (Machine Learning Engineer)University of Houston · Apr 2024 – May 2025
Data Science Intern (ML Engineering)National Science Foundation · May 2024 – Jun 2024internship
Software Developer InternSecernate Games Pvt. Ltd · Mar 2021 – Jun 2022internship

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Education

University of Houstonmaster, Engineering Data Science (2025)
Slippery Rock Universitybachelor, Computer Science and Engineering (2023)

Awards

  • Certificate of Excellence in AI - HPE AI Challenge (2024)
  • 70% Merit Scholarship - University of Houston
  • Featured in University of Houston Parameters Magazine (Fall 2025)

Languages

English

Certifications

Azure AI FundamentalsOCI Generative AINVIDIA RAPIDS GPU Data Science

Publications

3 publications

Microgravity protein aggregation (ISS/NASA research)Machine learning for startup success predictionDeep learning for speech emotion recognition

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Typically responds within 24 hours

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Saikiran anugamMid-level Machine Learning Engineer specializing in MLOps, LLM/RAG systems, and scalable data pipelines