Job Description
Title: Lead AI-ML Engineer Location: Westerville, OH Key Responsibilities: - Collaborate with stakeholders to understand business objectives and define requirements for anomaly detection.
- Develop, optimize, and maintain computational models for debit transaction anomaly detection using AI/ML techniques.
- Perform data analysis, generate insights, and identify patterns to support decision-making.
- Design and implement statistical models, including standard deviation calculations, variance thresholds, and probabilistic models to enhance anomaly detection accuracy.
- Work with existing models to apply backtracking methodologies and improve anomaly reduction strategies.
- Leverage machine learning algorithms (e.g., classification, clustering, time-series modeling) to predict, detect, and manage anomalies.
- Collaborate with engineers and business teams to integrate models into production systems.
- Conduct performance monitoring, fine-tuning, and validation of ML models to ensure accuracy and reliability.
- Prepare technical documentation, visualizations, and reports to communicate findings effectively to business and technology stakeholders.
Required Skills & Qualifications: - Bachelor's or Master's degree in Computer Science, Data Science, Statistics, Mathematics, or a related field.
- 10+ years of hands-on experience in data science, AI, or ML engineering.
- Strong proficiency in Python, R, or Scala with experience using data science libraries (e.g., NumPy, Pandas, Scikit-learn, PyTorch, TensorFlow).
- Solid understanding of Data Science with a heavy focus on statistical modeling and Machine Learning, hypothesis testing, regression analysis, and variance modeling.
- Experience with anomaly detection techniques - supervised, unsupervised, and hybrid approaches.
- Experience in Generative AI based implementations.
- Expertise in working with large datasets using SQL, Spark, or similar data-processing frameworks.
- Strong problem-solving, analytical thinking, and communication skills.
- Experience in deploying ML models into production environments, MLOps, preferably on AWS.
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