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The scheduling automation platform for eliminating the back-and-forth emails to find the perfect time — and so much more
Machine Learning Engineer
Location
United States
Posted
133 days ago
Salary
$168.8K - $256.2K / year
Seniority
Senior
Job Description
Machine Learning Engineer
Calendly
• Own ML powered features from design through deployment • Understand and share domain knowledge • Prioritize your work independently • Proactively seek and offer support to teammates • Understand and troubleshoot our deployment pipelines • Use our monitoring and observability tools • Serve as a subject matter expert for the features and services
Job Requirements
- 4+ years of industry experience in applied Machine Learning or closely related fields
- Deep and demonstrated ability to traverse the full spectrum of ML life cycle
- Experience developing and implementing statistical and ML models
- Hands-on experience implementing ML models using a managed service
- Understanding of foundation models and the open-source ecosystem
- Strong programming (Python / Scala / Java / SQL etc) and data engineering skills
- Proficiency in ML frameworks such as: Keras, Tensorflow and PyTorch
- Experience working with time series data and related machine learning problems
- Recognize when to seek assistance and willing to learn
- Strong verbal and written communication skills
- Authorized to work lawfully in the United States of America.
Benefits
- equity awards
- competitive benefits
- Top Performer Bonus program
- remote work options
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