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Machine Learning Engineer

Posted 3 days agoViewed

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💎 Seniority level: Junior, 2+ years

🔍 Industry: Artificial Intelligence, Machine Learning

🏢 Company: OfferFit👥 51-100💰 $25,000,000 Series B about 1 year agoArtificial Intelligence (AI)Machine LearningMarketing Automation

🗣️ Languages: English

⏳ Experience: 2+ years

Requirements:
  • 2+ years of experience working with Python in a product setting, including 1+ years in the data/machine learning ecosystem.
  • Experience working with at least one major cloud platform (GCP, AWS, Azure, etc.).
  • Experience putting ML models into production.
  • General understanding of supervised learning principles is a plus but not required.
  • Must be fluent in English, both written and verbal.
Responsibilities:
  • Use robust software engineering best practices to design, implement, and improve modular components in a cutting-edge ML product.
  • Work closely with OfferFit customers to understand, translate and generalize particular use cases to generic platform components.
  • Apply extensive knowledge of Python to produce clean, readable, and extendible code, and coach team members.
  • Collaborate with teams responsible for OfferFit’s product strategy and roadmap.
  • Support teams implementing OfferFit for customers to ensure their success.
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