The world's most productive AI Workspace for projects, tasks, chat, docs, and more. All software and humans - converged.
Senior AI Engineer, Voice Platform
Location
United States
Posted
9 days ago
Salary
$200K - $250K / year
Seniority
Senior
Job Description
Senior AI Engineer, Voice Platform
ClickUp
• Design, build, and optimize real-time speech-to-text pipelines • Improve transcription accuracy through context injection • Develop and maintain LLM-powered post-processing • Build voice-to-action systems • Evaluate, benchmark, and integrate ASR models • Collaborate with product and platform teams
Job Requirements
- Experience in real-time streaming transcription and ASR pipelines
- Knowledge in language detection and transcription accuracy improvement
- Familiarity with LLM-powered post-processing
- Skills in building voice-to-action systems
- Experience evaluating ASR models
- Collaboration with product and platform teams
Benefits
- Equity
- 401k
- Health, Dental, and Vision insurance
- Spending accounts
- Life & Disability
- Paid parental leave
- Flexible paid time off
- Enhanced employee assistance program
- Employee wellness stipend
- Professional development stipend
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