User:Kritigoyal16
👋 About Me
Hi! I'm Kriti Goyal, a Machine Learning Engineer currently based in Seattle, Washington, USA. I work at Apple specializing in AI Model development and high-performance inference infra. With expertise in LLMs, multimodal models, and distributed computing, I contribute to the development of performant models that power critical Apple Intelligence experiences.
Previously at Amazon, I worked on the Machine Learning Attribution model that guides the allocation of Amazon’s advertising budget of over $10 billion.
My interests lie in building efficient, accessible, and robust machine learning models and systems that power real-world applications at scale.
🎓 Education
- M.S. in Computer Sciences – University of Wisconsin–Madison
- B.E. (Hons.) in Computer Science – BITS Pilani, Hyderabad Campus
💻 Technical Skills
ML Systems: LLMs, Multimodal models, Efficient transformers, FlashAttention, LoRA, PEFT, Quantization
Frameworks: PyTorch, JAX, TensorFlow, Hugging Face, vLLM, Spark, Ray, Git, AWS, GCP
Languages: Python, C++, Scala, C, Java, SQL, Bash
🌐 Online
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