Machine Learning Engineer

  • Berkeley Heights, NJ
  • Posted 13 hours ago | Updated 13 hours ago

Overview

On Site
Depends on Experience
Full Time

Skills

Machine Learning
Finance domain
Python
AWS
AWS Sagemaker
NLP

Job Details

Role: Machine Learning Engineer

Location: Berkeley Heights, NJ

Mode of Hire: Full Time

Skills Required:

  • 4-8 years experience of applied machine learning in BFS / Investment Management industry
  • PhD or MS in Computer Science, Statistics or related field
  • Expertise in Machine Learning algorithms and frameworks:
    • Training and tuning pre-trained models
    • Working with structured and unstructured for Fraud models
  • Deep proficiency in Python with experience developing production-quality Python modules
  • Strong domain focus on fine-tuning and enhancing fraud detection models
  • Deploying models in AWS production environments
  • Strong command on AWS cloud stack with working knowledge of architecture components i.e., SageMaker, Bedrock, Lambda, Lex, CloudWatch, CloudTrail, Redshift ML, DynamoDB, CodeBuild, CodeDeploy, S3, EC2, IAM, AMIs
  • Proficient in API development using Fast API, Flask, etc. delivering asynchronous AI inference services and scalable API solutions for AI-powered applications.
  • Good command over statistical principles of data and model quality e.g., PSI, model performance metrics etc.
  • Roles and Responsibilities:
  • Work closely with Onsite Lead, Data scientists, Data Engineers, and QA and client stakeholders.
  • Evaluate input data for various statistical properties i.e., data drift using PSI and other metrics
  • Develop methods for monitoring data and models and efficient processes for updating or replacing old models with ones trained on new data or with the latest, state-of-the-art, pretrained models available
  • Skilled in evaluation metrics like precision, recall, F1-score, and AUC-ROC, ensuring high accuracy and precision in classification and regression models for Fraud.
  • Ensure right-fitting of architecture in AWS for the models at hand to optimize model inferencing
  • Strong working command of AWS SageMaker, MLFlow, and CloudWatch is a must
  • Should have hands on experience with deploying CI/CD Pipelines in AWS
  • Assist with documentation and governance of all ML and NLP pipeline artifacts
  • Find innovative solutions that increase automation and simplify work in AI workflows
  • Refactor and productionize research code, models and data while maintaining the highest levels of deployment practices including technical design, solution development, systems configuration, test documentation/execution, issue identification and resolution.

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