About The Position

Brillio is one of the fastest growing digital technology service providers and a partner of choice for many Fortune 1000 companies seeking to turn disruption into a competitive advantage through innovative digital adoption. Brillio, renowned for its world-class professionals, referred to as "Brillians", distinguishes itself through their capacity to seamlessly integrate cutting-edge digital and design thinking skills with an unwavering dedication to client satisfaction. Brillio takes pride in its status as an employer of choice, consistently attracting the most exceptional and talented individuals due to its unwavering emphasis on contemporary, groundbreaking technologies, and exclusive digital projects. Brillio's relentless commitment to providing an exceptional experience to its Brillians and nurturing their full potential consistently garners them the Great Place to Work® certification year after year.

Requirements

  • Expertise in hypothesis testing, including T-Test and Z-Test methodologies
  • Advanced proficiency in regression techniques (linear and logistic)
  • Strong programming skills in Python, PySpark, and R/R Studio
  • Hands-on experience with SAS and SPSS for statistical analysis and computing
  • In-depth knowledge of probabilistic graph models
  • Experience with forecasting methods such as Exponential Smoothing, ARIMA, and ARIMAX
  • Practical use of classification algorithms including Decision Trees and Support Vector Machines (SVM)
  • Proficiency with ML frameworks: TensorFlow, PyTorch, Sci-Kit Learn, CNTK, Keras, MXNet
  • Familiarity with distance metrics (Hamming, Euclidean, Manhattan)
  • Working knowledge of Kubeflow and BentoML for model deployment and orchestration

Nice To Haves

  • Experience implementing advanced model monitoring with Evidently AI
  • Expertise in data pipeline automation and orchestration using Kubeflow
  • Knowledge of emerging ML frameworks and architectures
  • Experience with large-scale distributed computing environments
  • Strong background in statistical validation and reproducibility best practices

Responsibilities

  • Design and implement robust statistical models and machine learning algorithms for large-scale data analysis and predictive analytics
  • Lead end-to-end development of data science projects, including hypothesis testing, regression analysis, classification, and forecasting
  • Collaborate with cross-functional teams to define business requirements, translate them into analytical solutions, and drive measurable impact
  • Optimize and automate data pipelines using Python, PySpark, and R, ensuring efficient data processing and feature engineering
  • Develop, validate, and maintain probabilistic graph models and advanced statistical computing frameworks
  • Utilize industry-leading ML frameworks such as TensorFlow, PyTorch, and Sci-Kit Learn to build, train, and deploy models
  • Establish rigorous model evaluation and monitoring processes using tools like Great Expectations and Evidently AI
  • Mentor and guide junior data scientists, fostering technical excellence and continuous learning within the team
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