David Quispe

I'm a

About

I am a Data Scientist with a unique blend of technical expertise and a passion for applying cutting-edge technology, particularly Artificial Intelligence, to drive meaningful change in complex systems like energy, manufacturing, and the environment. I am an advocate for sustainability and strive to forge technology that places people at its core, seeking to bridge the gap between research and practical applications to solve real-world challenges.

Data Scientist & AI Applied Researcher

I work on developing and deploying Machine Learning models based on sensor and geospatial data using Big Data tools for the energy and financial industry. I have also been exploring the use of Reinforcement Learning to optimize grid management by making real-time decisions on energy distribution, storage control, and load management.

  • Research Interests: Explainable AI, AI for Climate Change Mitigation, Industrial AI.
  • Website: www.example.com
  • Location: Toronto, Canada
  • Outside of Research: I enjoy running, going on long bike rides, and organizing / cleaning.
  • Degree: Master of Applied Science (UofT)
  • Email: david.quispe@mail.utoronto.ca

I obtained my MASc. from the University of Toronto advised by Prof. Greg Jamieson and Prof. Scott Sanner. I worked on Machine Learning for Condition-Based Maintenance and developed an open source platform ARDAS to evaluate Explainable AI approaches on human performance in industrial settings.
Before that, I completed my BASc. in Electronics & Control Engineering at the National Polytechnic School in Ecuador, where I was fortunate to work on developing and implementing a control system for Enap Sipetrol's oil production facilities. This automated system was successfully operationalized in 2011 and has been in consistent use ever since.

Facts

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Citations of my academic publications

Projects in industry & academia

Hours Of Support volunteer activities and mentorship

Countries working as an Engineer/Data Scientist (including the Ecuadorian Amazon jungle)

Skills

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Modeling 90%
Quantitative Analysis 75%
Data Visualization 85%
Deep Learning 70%
JavaScript 55%
Databricks 85%
Python 100%
PySpark/MLlib 85%
SQL 90%
TensorFlow 80%
HTML/CSS 65%
Snowflake 90%

Resume

9+ years of engineering and research experience working on academic and industry projects with 5+ years of experience applying machine learning and deep learning algorithms to leverage data in industrial environments.

  • Toronto, ON, Canada
  • +1 6479147796
  • dav.quispeg@gmail.com / david.quispe@mail.utoronto.ca
Research Interests: Intersection of Automation & Control, Machine Learning, and Human-Centered AI to boost the adoption of robust AI-based systems in industrial applications for climate change mitigation.


Download Full Academic CV

Education

Master of Applied Science

2018 - 2019

University of Toronto, Toronto, Canada

Specialization: Machine Learning and Human-Automation Interaction
Thesis: Micro-World Simulation Platform for Condition-Based Maintenance using Machine Learning Algorithms
Source code: https://github.com/Davjes15/ardas_platform
Research areas: Explainable AI, Recommender Systems
Advisor: Prof. Greg Jamieson and Prof. Scott Sanner

Climate Change AI Summer School

2022

Climate Change Artificial Intelligence, USA

Deep Learning School

2021

Mila - Quebec Artificial Intelligence Institute, Canada

Project Management Certification

2017

School of Continuing Studies, University of Toronto, Canada

Research Experience

Senior Data Scientist

Sept 2020 - Present

Intact Financial Corporation | Toronto, Canada.

  • Research at the intersection of Machine Learning and Big Data for Usage-Based Insurance (UBI), designing and deploying models that predict business risk based on behavioral, contextual, and psychological factors.
  • Lead contributor in the development and deployment of ML models in production, UBI3.0 Ontario and UBI 4.0 Alberta, to predict the client’s insurance premium based on their driving behaviour.
  • Analyzed telematic and geospatial data to engineer behavioural and contextual features that improve the model performance and the explainability of the model to support user interaction.
  • Lead the development of data pipelines for Big Data to optimize the generation and selection of features and implemented modeling pipelines to speed up the deployment of ML algorithms in production.

Research Data Scientist

July 2021 – May 2022

Siemens Gamesa Renewable Energy | Madrid, Spain

  • Lead researcher developing an ML-based Recommender System for wind turbine operation, optimizing operational efficiency by integrating ML algorithms with domain-specific knowledge to minimize downtime.
  • Pioneering the digital transformation of the wind industry by applying ML algorithms and Industry 4.0 paradigms to automate industrial and business processes.
  • Developed data pipelines using Big Data tools to process operational data and facilitate the selection of features, expediting the deployment of ML algorithms in production environments.

Research Consultant

Jan 2020 – Dec 2020

IFE Institutt for Energiteknikk | Remote, Norway

  • Conducted in-depth research about the application and challenges in Human-Automation Interaction in industrial settings to advance the research in Human-AI collaboration for future nuclear power plants.
  • Explored critical topics including Latent Automation Failures, operator vigilance in automated systems, and implications of the Industry 4.0 paradigm on human performance.
  • Summarized findings to motivate a domain-specific empirical research program, aimed at enhancing the technical foundation for Human-Automation collaboration in future nuclear power facilities.

Entrepreneur In Residence

Sept 2020 – Dec 2020

Entrepreneur First | Toronto, Canada

  • Leverage my expertise in ML algorithms for time series data, robotics, and explainable AI to build a startup developing conversational interfaces that help technicians and operators to analyze big data collected by Distributed Control Systems.
  • Engaged in rigorous ideation and business model development, merging technological innovations with sustainable, market-driven solutions.

Research Scientist

Jun 2020 – Sept 2020

Data-Driven Decision Making Lab | University of Toronto, Canada

  • Implemented code to study continual learning (CL) methods in computer vision for LG Science Park and designed experiments to evaluate the accuracy and forgetting in classification tasks.
  • Understanding of CL approaches, reviewing/debugging code, and running experiments to validate the performance of current and novel CL algorithms.

R&D Scientist Intern

Oct 2019 – Dec 2019

ABB Corporate Research Center | Ladenburg, Germany

  • Researcher evaluating solutions to advance the application of ML algorithms for predictive maintenance.
  • Implemented two ML models to cluster and classify operational and sensor data, for failure prediction and anomaly detection, by analyzing sensor signals to extract relevant features from an industrial test rig.

Research Scientist

Jan 2018 – Jan 2020

Cognitive Engineering Lab | University of Toronto, Canada

  • Designed, developed, and deployed a decision support system (ARDAS) for condition-based maintenance backed up by ML algorithms and a graphical user interface to contribute with an experimental platform to the industrial Explainable AI community.
  • Researched explainability methods to design a novel web user interface that supports operators in their interaction with AI-based systems for condition-based maintenance.
  • Implemented predictive and classification algorithms to predict failures and detect anomalies based on sensor and operational data for a hydraulic process.

Selected Projects

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Services

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Contact

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Location:

Toronto, ON, Canada

Call:

+1 6479147796

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