Bill Hsu's Homepage (Mobile Ver.)

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Resume for SDE/MLE
Resume for DS/DA
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Messages for Recruiters/Hiring Managers/Professors

  I am Yan-Cheng (Bill) Hsu, a Software Development Engineer with specialized expertise in AI and machine learning, drawing from a robust academic foundation with a Master’s degree from UC San Diego. At Amazon’s Artificial General Intelligence Org, I have been instrumental in engineering secure SageMaker solutions for complex LLM/VLM training, showcasing my capacity to manage extensive datasets with heightened security considerations.

   My tenure at Amazon Alexa Org exemplifies my ability to streamline onboarding processes, achieving a remarkable 90% reduction in integration time through secure backend innovations. This feat reflects my dedication to operational excellence and cybersecurity in the development of AI infrastructures.

   I have made significant strides in AI research, highlighted by my authorship of a publication in the 'Sensors' journal, where I introduced an advanced statistical feature selection algorithm for deep learning applications in vital sign monitoring. Furthermore, my expertise in time series analysis is showcased through my development of self-supervised time series transformers, a work that I have presented at the IEEE APSIPA ASC 2023 conference. This pioneering research contributes to state-of-the-art methodologies in unsupervised learning, propelling advancements in the processing and analysis of temporal data.

   Seeking to leverage my full-stack development skills, cloud computing proficiency, and innovative research background, I am poised to tackle new challenges in AI, aiming to deliver solutions that seamlessly blend technological sophistication with unwavering security and reliability.

Events of My Software Career


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  Publications

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Generalized Deep Neural Network Model for Cuffless Blood Pressure Estimation with Photoplethysmogram Signal Only
Hsu, Yan-Cheng; Li, Yung-Hui; Chang, Ching-Chun; Harfiya, Latifa N. Sensors 20, no. 19: 5668.

  • I developed a deep-neural-network model for estimating blood pressure, innovatively integrating a statistical method for feature selection. This enhanced the value of features extracted from Photoplethysmography (PPG) signals.
  • The proposed model attained cutting-edge performance in 2020, satisfying both the Association for the Advancement of Medical Instrumentation (AAMI) and the British Hypertension Society (BHS) standards for blood pressure measurement devices.
[ System Overview ] [ Paper ] [ Github ]


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On the Optimal Self-Supervised Multi-Fault Detector for Temperature Sensor Data
Latifa Nabila Harfiya; Yan-Cheng Hsu; Yung-Hui Li; Jia-Ching Wang Sensors 20, no. 19: 5668.

  • Implemented Developed self-supervised time series transformers, securing state-of-the-art performance on diverse temporal datasets.
  • Presented findings orally at the IEEE APSIPA ASC 2023 conference, highlighting innovative approaches in time series analysis.


  Work Experiences
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Project I: Olympus Models: Large Language/Visual Models (LLM/LVM) Tooling and Training Optimization on Neurons

  • Designed and delivered secure SageMaker solutions for AGI scientists, facilitating the training of LLM/LVMs with 10B+ parameters using over 1TB of data. Optimized processes with pre-compilation, caching, and distributed training capabilities.
Project II: Nova Commands & Hoverboard Environment: Sensai Secure AI Platform
  • Contributed to the understanding, maintenance, and development of authorization and authentication systems for the ML platform, reinforcing data security for AGI projects and ensuring the safe handling of large datasets.

Company: Amazon LLC
Organization: Artificial General Intelligence - Secure A.I. Foundations
Position: Software Development Engineer
Incumbency: Oct. 2023 - present

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Comcom Website: Command Line Tools on The Web

  • Developed, packaged, and deployed a decoupled web application on AWS EC2, using Linux shell scripts and Docker images. This platform facilitates online code execution and sharing across various languages, eliminating the need for local package installations.
  • Built a multi-threaded backend with a SQL database and file-sharing system, capable of managing race conditions, using Flask and Django and created RESTful APIs for request handling.
  • Built the frontend with React.js and Node.js, integrating event, state, and proxy management.
[ System Overview ]
Company: UC San Diego
Organization: Department of Computer Science
Position: Full-Stack Developer
Incumbency: Feb. 2023 - Present

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Alexa Secure AI Platform: Sensai Self-Service Onboarding Platform

  • Created and launched a decoupled web application on AWS Lambda and Cloudfront. The platform facilitates secure onboarding of apps and APIs for scientists on the Sensai Platform.
  • Developed modules in backend such as Auto-Verification (which transfer various encrypted identifications via cookies and session data), Canaries, Access Control, and Monitoring using AWS-CDK and AWS-SDK and streamlined the onboarding process for the Alexa Org team, reducing app/API integration time from 4 hours to 15 minutes - a 90% reduction.
  • Refined the existing webUI to augment the self-service capabilities of the onboarding system.
[ System Overview ] [ pptx ]
Company: Amazon LLC
Organization: Alexa AI
Position: Software Development Engineer Intern
Incumbency: Jun. 2022 - Sep. 2022

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due to non-disclosure agreement, only a brief system overview was put on this site

Prometheus Infrastructure Testing Data Analysis and Software Toolkit Development

  • Established a prototype data pipeline for production line testing data analysis.
  • Developed three comprehensive Python packages for efficient data collection, alignment, and analysis from various sources including temporal infrastructure's hardware data (Prometheus) and production line testing databases.
  • Streamlined the scope of production line performance enhancement by approximately 66% through effective information filtering and dimensionality reduction.
[ System Overview ]
Company: Wiwynn Inc
Position: Software Engineer Intern
Incumbency: Jul. 2021 - Aug. 2021

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Deep Neural Network Predictor by Introducing a new Feature Selection Algorithm

  • Designed and implemented a deep learning model for blood pressure estimation, incorporating data preprocessing, neural network selection, and a novel physiological feature selection algorithm.
  • Enhanced accuracy by ~1.8x and expanded data incorporation by ~6x compared to the predecessor model, achieving a Mean Absolute Error (MAE) of 2.73 mmHg across 2.5M+ cardiac cycles from 9000 patients.
  • Published this groundbreaking work in the international journal, Sensors 20.
[ System Overview ] [ Paper ] [ github ]
Company: MLBR Laboratory
Position: Software Research Assistant
Incumbency: Dec. 2019 - Sep. 2020


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