Keivan Ebrahimi

Principal Data Scientist at Tarana Wireless, Inc.
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Contact Information
us****@****om
(386) 825-5501
Location
United States, US
Languages
  • English Full professional proficiency
  • Persian Native or bilingual proficiency

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5.0

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Abbas Maazallahi

Keivan has been my classmate for four years, and during that time, I have had the pleasure of working closely with him on multiple projects. Keivan has demonstrated exceptional skills in analyzing and interpreting complex data sets as a data scientist. He deeply understands statistical methods and programming languages such as R and Python. Keivan has a proven track record of delivering high-quality work that is accurate, insightful, and actionable. In addition to his technical skills, Keivan is an excellent collaborator who consistently demonstrates strong communication skills. He is adept at working with cross-functional teams, providing valuable insights, and presenting complex information clearly and concisely. Keivan is a true team player who is always willing to go above and beyond to ensure that projects are completed on time and to the highest standard.

Aditya Dayal, Ph.D.

As a senior data scientist on my team, Keivan worked on multiple products involving sensor data. He led the acquisition and analysis of thermal IR sensor data for measuring elevated temperatures, as well as our neural-network based occupancy sensors. Keivan also worked on the data quality modules for our IoT (air quality) sensors. Keivan's proactive, detailed and can-do attitude in the way he approached products: willingness and ability to learn the data source (hardware), understand and develop end-to-end software, (well beyond the data science modules!) was a big asset to our team and the company. I'd recommend Keivan strongly and without any hesitation.

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Credentials

  • Python for Time Series Data Analysis
    Udemy
    Jun, 2019
    - Nov, 2024
  • Artificial Intelligence Foundations: Machine Learning
    LinkedIn
    Apr, 2019
    - Nov, 2024
  • Building Deep Learning Applications with Keras 2.0
    LinkedIn
    Apr, 2019
    - Nov, 2024
  • Building a Recommendation System with Python Machine Learning & AI
    LinkedIn
    Apr, 2019
    - Nov, 2024
  • Neural Networks and Convolutional Neural Networks Essential Training
    LinkedIn
    Apr, 2019
    - Nov, 2024
  • OpenCV for Python Developers
    LinkedIn
    Apr, 2019
    - Nov, 2024
  • Advanced NoSQL for Data Science
    LinkedIn
    Mar, 2019
    - Nov, 2024
  • Advanced Python
    LinkedIn
    Mar, 2019
    - Nov, 2024
  • Advanced SQL for Data Scientists
    LinkedIn
    Mar, 2019
    - Nov, 2024
  • Agile Software Development
    LinkedIn
    Mar, 2019
    - Nov, 2024
  • Apache PySpark by Example
    LinkedIn
    Mar, 2019
    - Nov, 2024
  • Data Science on Google Cloud Platform: Building Data Pipelines
    LinkedIn
    Mar, 2019
    - Nov, 2024
  • Deep Learning: Image Recognition
    LinkedIn
    Mar, 2019
    - Nov, 2024
  • Designing for Neural Networks and AI Interfaces
    LinkedIn
    Mar, 2019
    - Nov, 2024
  • DevOps for Data Scientists
    LinkedIn
    Mar, 2019
    - Nov, 2024
  • NLP with Python for Machine Learning Essential Training
    LinkedIn
    Mar, 2019
    - Nov, 2024
  • Python Essential Training
    LinkedIn
    Mar, 2019
    - Nov, 2024
  • Python: Programming Efficiently
    LinkedIn
    Mar, 2019
    - Nov, 2024

Experience

    • United States
    • Telecommunications
    • 200 - 300 Employee
    • Principal Data Scientist
      • Dec 2022 - Present

      Building the data science and machine learning applications on telemetry, events, and logs big data from ground-up Building the data science and machine learning applications on telemetry, events, and logs big data from ground-up

    • United States
    • Software Development
    • 300 - 400 Employee
    • Senior Data Scientist and Software Lead
      • Aug 2019 - Nov 2022

      May 2020: I was selected for the Rock Star Spot Award for stellar contribution and performance in View Inc. COVID-SENSE AI-VISION product to fight the Corona-virus COVID-SENSE: Developing AI-based solutions for re-entry to the workplace after COVID pandemic including Face Mask Detection, Sneeze & Cough Detection based on audio sensors, Sanitization Reminders based on Human Activity Detection, and Social Distancing Monitoring based on Human Detection and Pose Estimation Optimizing the AI models and CV algorithms to run efficiently on edge devices such as NVIDIA Jetson Nano, Google Coral, and Raspberry Pi Data Quality Module: Anomaly detection & missing value imputation in time-series data of temperature, humidity, CO2, light, and sound sensors via GAN \& LSTM models to increase accuracy by 15-30% Adjust for Drift and Obstruction of Air Quality, Light, Acoustics, and Thermal Sensors Thermal Wellness: Fever Detection based on the combination of thermal IR and visual cameras via facial landmarks detection models Extract patterns & insights from office buildings thermal and humidity sensors time-series data to enhance occupants' wellness Show less

    • United States
    • Higher Education
    • 700 & Above Employee
    • Research Assistant
      • Aug 2015 - Aug 2019

      Research: Distributed Adversarially Robust Machine Learning via Saddle Dynamics We propose a novel discrete-time dynamical system-based framework for achieving adversarial robustness in machine learning models. Our algorithm is originated from robust optimization, which aims to find the saddle point of a min-max optimization problem in the presence of uncertainties. The robust learning problem is formulated as a robust optimization problem, and we introduce a discrete-time algorithm based on a saddle-point dynamical system (SDS) to solve this problem. Under the assumptions that the cost function is convex and uncertainties enter concavely in the robust learning problem, we analytically show that using a diminishing step-size, the stochastic version of our algorithm, SSDS converges asymptotically to the robust optimal solution. The algorithm is deployed for the training of adversarially robust deep neural networks. Although such training involves highly non-convex non-concave robust optimization problems, empirical results show that the algorithm can achieve significant robustness for deep learning. We compare the performance of our SSDS model to other state-of-the-art robust models, e.g., trained using the projected gradient descent (PGD)-training approach. From the empirical results, we find that SSDS training is computationally inexpensive (compared to PGD-training) while achieving comparable performances. SSDS training also helps robust models to maintain a relatively high level of performance for clean data as well as under black-box attacks. Show less

    • United States
    • Computer Hardware Manufacturing
    • 700 & Above Employee
    • Data Science Intern
      • Jun 2018 - Aug 2018

      Software Development: Setting up a pipeline for data collection, data extraction, noise reduction, feature extraction, and faulty wafer detection by tree-based and support vector machines classification methodsEfficiency Achievement: Boosted the run-time speed of data analysis software for silicon wafers classification (3x improvement from 6.5 to 2 hours)Theoretical Contribution: Extracting ‘twice accurate’ characteristics from the magnetic field data, thanks to exploring the intrinsic properties of datasetData Visualization: Coming up with new ways of interactive and declarative data visualization as per team's desire with Bokeh and Altair Python librariesBig Data Processing: Analyzing the big data of manufacturing and development processes of silicon wafers in a parallelized manner for more efficiency (the largest data-set worked with: TB order)User-Friendly Software: Setting up a GUI to make data analysis and visualization easily accessible by the team with limited knowledge of data science Show less

    • Data Scientist
      • Jun 2018 - Aug 2018

Education

  • Iowa State University
    Doctor of Philosophy (PhD), Electrical and Computer Engineering
    2015 - 2019
  • Sharif University of Technology
    Master of Science (MS), Electrical Engineering
    2012 - 2014
  • Sharif University of Technology
    Bachelor of Science (BSc), Electrical Engineering
    2007 - 2011

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