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Lead Security Engineer - Data Scientist

260312-South Florida Region Admin
Full-time
On-site
Wilmington, North Carolina, United States
Cyber Security Engineer
Description

Cybersecurity is one of the highest growth areas within JPMorgan and has a unique opportunity to develop and deploy Machine Learning solutions that support Cyber Operations. You will be part of a world-class global Cybersecurity team and work along side technologists and innovators who work every day to protect the assets we manage.

As a member of the Cyber Technology and Controls Product team you will be part of a highly motivated team that focuses on analyzing data and creating and delivering Machine Learning solutions that will protect the firm from a variety of cyber-related threats.Β 

Responsibilities

  • Engage with cybersecurity domain experts to understand business goals and use cases related to using real-world data to solve business problems
  • Work with cybersecurity engineers and data engineers to acquire data that addresses each use case (fraud, anomaly detection, Cyber threats)
  • Perform Exploratory Data Analysis on datasets and communicate results to stakeholders
  • Select statistical or Deep Learning models that are best positioned to achieve business results
  • Perform feature engineering or hyperparameter tuning to optimize model performance
  • Document measurements required to detect model or data drift in a Production setting
  • Perform model governance activities for model interpretability, testability and results

Required

  • Formal training or certification on Data Science and cybersecurity concepts and 5+ years data-science experience
  • Ability to perform Exploratory Data Analysis using Jupyter or SageMaker Notebooks
  • Proficient in Pandas, SQL and Data Visualization tools such as Matplotlib, Seaborn or Plotly
  • Working knowledge of probability, statistics and statistical distributions and their applicability to use cases
  • Working knowledge of Scikit-Learn for development of classification, regression and clustering models
  • Deep Learning frameworks such as Keras, Tensorflow or PyTorch
  • Experience with classification and regression trees (Random Forest, XGBoost, AdaBoost)Β 
  • Experience with feature engineering complex datasets
  • Possess the ability to explain model selection, model interpretability and performance metrics verbally and in writing.

Preferred

  • Experience deploying Statistical or Machine Learning models in a production setting
  • Experience with model monitoring and understanding data quality issues
  • Experience creating synthetic datasetsΒ 
  • Development of REST APIs using tools such as Flask or FastAPI
  • Working knowledge of Responsible AI, model fairness, and reliability and safety