ML Engineer specializing in large-scale inference platforms, generative AI, and distributed systems. Currently building ML infrastructure for Adobe Firefly's generative AI workloads. Published researcher in Graph Neural Networks and bias mitigation.
Education π
- MS in Computational Data Science β Indiana University, Bloomington (2023) β’ GPA: 3.87/4.0
- BS in Computer Science β National Institute of Technology, Patna (2015) β’ GPA: 8.32/10.0
Current Work πΌ
- Machine Learning Engineer 4 @ Adobe (Jul 2024 - Present)
- Architecting ML inference platform for Firefly's generative AI serving billions of video/image workloads
- Building distributed inference framework with vLLM, Ray Serve, and TensorRT-LLM for multi-billion parameter LLMs
Previous Experience
- Senior Software Engineer @ EvolutionIQ (2023-2024) β Data pipelines for NLP, generative AI at intersection of fintech & healthcare
- Software Dev Engineer II @ Swiggy (2019-2021) β Led Data Acquisition Platform processing 15M rows/day; built Feature Store serving 10K QPS
- Software Dev Engineer @ Flipkart (2017-2019) β Search relevance & ML Ops; first automated ML deployment workflow; Hackday 9 Winner
- Software Engineer @ Groupon, NetSpeed Systems (2015-2017) β Backend engineering & SOC simulation
Research π
- First Author β "Biased Contrastive Learning debiases Graph Neural Networks" (NetSci 2023, IC2S2 2023)
ML Inference & Serving: vLLM β’ Ray Serve β’ Ray Data β’ TensorRT-LLM β’ Triton Inference Server
ML/AI: PyTorch β’ PyTorch Lightning β’ PyTorch Geometric β’ TensorFlow β’ Scikit-learn β’ LLMs β’ GNNs β’ NLP β’ Computer Vision
Data Engineering: Apache Spark β’ Apache Kafka β’ Apache Flink β’ Hadoop HDFS β’ Airflow β’ Feature Stores
Languages: Python β’ Scala β’ C++ β’ SQL β’ Java
Cloud: AWS SageMaker β’ AWS DynamoDB β’ GPU Clusters β’ Docker β’ Kubernetes
π Portfolio: thunderock.github.io


