TL;DR
Senior Applied Scientist (AI): Building and scaling machine learning powered features and algorithms for the hirify.global platform with an accent on streaming data analysis and anomaly detection. Focus on designing scalable models, deploying production features, and collaborating closely with engineering and product teams.
Location: Paris, France with hybrid work format
Company
hirify.global is a global SaaS company focused on cloud infrastructure monitoring and digital transformation, delivering scalable software solutions for organizations worldwide.
What you will do
- Design and research algorithms tailored to various use cases including anomaly detection and error analysis
- Build, deploy, and monitor scalable machine learning features in production
- Analyze large volumes of streaming data and communicate insights effectively
- Participate in journal clubs to stay updated on latest academic research
- Maintain models, services, and infrastructure owned by the team
- Contribute to on-call rotation for operational support
Requirements
- Location: Must be based in France or able to work hybrid in Paris
- BS/MS/PhD in Computer Science, Engineering, Machine Learning or related field or equivalent experience
- Experience with high-scale systems, production data pipelines, and applying machine learning to real business problems
- Ability to explain complex algorithms to non-technical audiences
- Focus on code simplicity and performance
- Excited to work on user-facing products
Culture & Benefits
- Competitive global benefits including stock equity and employee stock purchase plan
- Hybrid work environment valuing office culture and work-life harmony
- Opportunities to collaborate across offices in New York City and Paris
- Access to conferences, meetups, and internal mentorship programs
- Inclusive company culture with employee resource groups
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