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Senior Machine Learning Engineer (Remote)

Posted 16 days agoViewed

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πŸ’Ž Seniority level: Senior, 5+ years

πŸ“ Location: United States

πŸ” Industry: Software Development

🏒 Company: AuditBoard

πŸ—£οΈ Languages: English

⏳ Experience: 5+ years

πŸͺ„ Skills: AWSDockerNode.jsPostgreSQLPythonSoftware DevelopmentSQLJavaJavascriptKerasKubernetesMachine LearningNumpyPyTorchAlgorithmsData StructuresTensorflowCommunication SkillsAnalytical SkillsAgile methodologiesRESTful APIsSoftware EngineeringData analytics

Requirements:
  • 5+ years of hands-on experience in developing and deploying machine learning models
  • Ability to write scalable production-quality code
  • Proficiency in classical machine learning methods and familiarity with newer techniques like LLMs
  • Excellent programming skills in Python, Java, or similar languages
  • Experience with machine learning frameworks such as TensorFlow, PyTorch, Hugging Face, Keras, MXNet, or scikit-learn.
  • Familiarity with search/information retrieval and ranking systems
  • Strong communication skills and the ability to work collaboratively
  • Analytically minded with a focus on metrics and evaluation
Responsibilities:
  • Build, ship, and own end-to-end product features like predictive analytics, automated risk assessments, intelligent data extraction, and personalized insights.
  • Work with engineers, designers, and product managers to create high-performing product features.
  • Design and implement AI solutions using classical ML methods and advanced techniques like LLMs
  • Write well-designed, maintainable, and testable code
  • Write clear and well-defined design documentation
  • Troubleshoot, debug and resolve software bugs
  • Be product-minded and think about the customer
  • Stay updated on AI/ML advancements and explore new techniques and tools.
  • Participate in an Agile software development life cycle
  • Work with Python, JavaScript, Node.JS, Docker, PostgreSQL, Kubernetes, etc
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