Resume and JobRESUME AND JOB
Spotify logo

Staff Research Engineer - Music

Spotify

Staff Research Engineer - Music

Spotify logo

Spotify

full-time

Posted: October 23, 2025

Number of Vacancies: 1

Job Description

We are seeking a Staff Research Engineer to join our Artist-First AI Music lab. Our team pioneers and advances state-of-the-art generative technologies for music that create breakthrough experiences for fans and artists. We invent entirely new listening experiences that center and celebrate artists and creatives. All of our products will put artists and songwriters first, through these four principles:

Partnerships with record labels, distributors, and music publishers: We’ll develop new products for artists and fans through upfront agreements, not by asking for forgiveness later.
Choice in participation: We recognize there’s a wide range of views on use of generative music tools within the artistic community. Therefore, artists and rightsholders will choose if and how to participate to ensure the use of AI tools aligns with the values of the people behind the music.
Fair compensation and new revenue: We will build products that create wholly new revenue streams for rightsholders, artists, and songwriters, ensuring they are properly compensated for uses of their work and transparently credited for their contributions.
Artist-fan connection: AI tools we develop will not replace human artistry. They will give artists new ways to be creative and connect with fans. We will leverage our role as the place where more than 700 million people already come to listen to music every month to ensure that generative AI deepens artist-fan connections.

Locations

  • New York, New York, United States

Salary

Salary details available upon request

Estimated Salary Rangemedium confidence

250,000 - 400,000 USD / yearly

Source: ai estimated

* This is an estimated range based on market data and may vary based on experience and qualifications.

Skills Required

  • training or fine-tuning large machine learning models on GPUs using PyTorchintermediate
  • cloud platforms like Google Cloud Platform, AWS, or Microsoft Azureintermediate
  • debug problems in machine learning training codeintermediate
  • optimizing code for performanceintermediate
  • computer science concepts like type systems, compilers, parallelism, thread safety, encapsulationintermediate
  • audio processing and music information retrievalintermediate
  • low-level debugging tools like lldb, NVIDIA Nsightintermediate

Required Qualifications

  • You have experience training or fine-tuning large machine learning models on GPUs using PyTorch or similar frameworks. (experience)
  • You have experience working with cloud platforms like Google Cloud Platform, AWS, or Microsoft Azure. (experience)
  • You understand how to debug problems in machine learning training code. (experience)
  • You communicate effectively with global teams and are ready to work both face-to-face and asynchronously with collaborators on multiple continents. (experience)
  • You have experience optimizing code for performance and can make GPUs “go brrr” (train at maximum efficiency). (experience)
  • You learn new concepts and technologies quickly and keep up to date with the rapid pace of development in machine learning and AI. (experience)
  • You are resourceful and proactive; when faced with blockers, you seek out solutions through research, experimentation, and collaboration. (experience)
  • You have a solid grasp of computer science concepts like type systems, compilers, parallelism, thread safety, encapsulation, and the like. (experience)
  • You have an interest in learning more about audio processing and music information retrieval and you're excited about building amazing products that use these technologies. (experience)

Preferred Qualifications

  • You’re not afraid to dig deep into the stack: working with lldb, NVIDIA Nsight, or other low-level debugging tools is a plus. (experience)

Responsibilities

  • Closely collaborate with research scientists. Work side-by-side to turn new research ideas into well-engineered experiments, ensuring efficiency, clarity, and reproducibility in every implementation.
  • Improve model training pipelines. You’ll debug distributed training, optimize data loading at massive scale, and ensure smooth scaling across compute environments.
  • Optimize performance. You’ll profile and accelerate existing training and inference code to make experiments faster and production systems more responsive.
  • Integrate models into production environments. You’ll work directly with platform and product teams to deploy models into the hands of hundreds of millions of Spotify’s users.
  • Incorporate state-of-the-art research. You'll translate models and techniques described in the literature into robust, well-engineered prototypes.
  • Maintain a high-quality codebase. You’ll enforce clear structure, consistency, and testing practices to support long-term maintainability on a codebase shared between members of a fast-paced globally distributed team.
  • Enhance researcher experience. You’ll build internal tooling, libraries, and workflows to make experimentation, debugging, and deployment more efficient for the whole team.

Benefits

  • general: We offer you the flexibility to work where you work best! For this role, you can be within the North Americas region as long as we have a work location.
  • general: This team operates within the Eastern Standard time zone for collaboration.
  • general: Core working hours are CET 3pm-6pm / EST 9am-12pm.

Target Your Resume for "Staff Research Engineer - Music" , Spotify

Get personalized recommendations to optimize your resume specifically for Staff Research Engineer - Music. Takes only 15 seconds!

AI-powered keyword optimization
Skills matching & gap analysis
Experience alignment suggestions

Check Your ATS Score for "Staff Research Engineer - Music" , Spotify

Find out how well your resume matches this job's requirements. Get comprehensive analysis including ATS compatibility, keyword matching, skill gaps, and personalized recommendations.

ATS compatibility check
Keyword optimization analysis
Skill matching & gap identification
Format & readability score

Tags & Categories

MusicEngineeringMusicEngineering

Related Jobs You May Like

No related jobs found at the moment.

Spotify logo

Staff Research Engineer - Music

Spotify

Staff Research Engineer - Music

Spotify logo

Spotify

full-time

Posted: October 23, 2025

Number of Vacancies: 1

Job Description

We are seeking a Staff Research Engineer to join our Artist-First AI Music lab. Our team pioneers and advances state-of-the-art generative technologies for music that create breakthrough experiences for fans and artists. We invent entirely new listening experiences that center and celebrate artists and creatives. All of our products will put artists and songwriters first, through these four principles:

Partnerships with record labels, distributors, and music publishers: We’ll develop new products for artists and fans through upfront agreements, not by asking for forgiveness later.
Choice in participation: We recognize there’s a wide range of views on use of generative music tools within the artistic community. Therefore, artists and rightsholders will choose if and how to participate to ensure the use of AI tools aligns with the values of the people behind the music.
Fair compensation and new revenue: We will build products that create wholly new revenue streams for rightsholders, artists, and songwriters, ensuring they are properly compensated for uses of their work and transparently credited for their contributions.
Artist-fan connection: AI tools we develop will not replace human artistry. They will give artists new ways to be creative and connect with fans. We will leverage our role as the place where more than 700 million people already come to listen to music every month to ensure that generative AI deepens artist-fan connections.

Locations

  • New York, New York, United States

Salary

Salary details available upon request

Estimated Salary Rangemedium confidence

250,000 - 400,000 USD / yearly

Source: ai estimated

* This is an estimated range based on market data and may vary based on experience and qualifications.

Skills Required

  • training or fine-tuning large machine learning models on GPUs using PyTorchintermediate
  • cloud platforms like Google Cloud Platform, AWS, or Microsoft Azureintermediate
  • debug problems in machine learning training codeintermediate
  • optimizing code for performanceintermediate
  • computer science concepts like type systems, compilers, parallelism, thread safety, encapsulationintermediate
  • audio processing and music information retrievalintermediate
  • low-level debugging tools like lldb, NVIDIA Nsightintermediate

Required Qualifications

  • You have experience training or fine-tuning large machine learning models on GPUs using PyTorch or similar frameworks. (experience)
  • You have experience working with cloud platforms like Google Cloud Platform, AWS, or Microsoft Azure. (experience)
  • You understand how to debug problems in machine learning training code. (experience)
  • You communicate effectively with global teams and are ready to work both face-to-face and asynchronously with collaborators on multiple continents. (experience)
  • You have experience optimizing code for performance and can make GPUs “go brrr” (train at maximum efficiency). (experience)
  • You learn new concepts and technologies quickly and keep up to date with the rapid pace of development in machine learning and AI. (experience)
  • You are resourceful and proactive; when faced with blockers, you seek out solutions through research, experimentation, and collaboration. (experience)
  • You have a solid grasp of computer science concepts like type systems, compilers, parallelism, thread safety, encapsulation, and the like. (experience)
  • You have an interest in learning more about audio processing and music information retrieval and you're excited about building amazing products that use these technologies. (experience)

Preferred Qualifications

  • You’re not afraid to dig deep into the stack: working with lldb, NVIDIA Nsight, or other low-level debugging tools is a plus. (experience)

Responsibilities

  • Closely collaborate with research scientists. Work side-by-side to turn new research ideas into well-engineered experiments, ensuring efficiency, clarity, and reproducibility in every implementation.
  • Improve model training pipelines. You’ll debug distributed training, optimize data loading at massive scale, and ensure smooth scaling across compute environments.
  • Optimize performance. You’ll profile and accelerate existing training and inference code to make experiments faster and production systems more responsive.
  • Integrate models into production environments. You’ll work directly with platform and product teams to deploy models into the hands of hundreds of millions of Spotify’s users.
  • Incorporate state-of-the-art research. You'll translate models and techniques described in the literature into robust, well-engineered prototypes.
  • Maintain a high-quality codebase. You’ll enforce clear structure, consistency, and testing practices to support long-term maintainability on a codebase shared between members of a fast-paced globally distributed team.
  • Enhance researcher experience. You’ll build internal tooling, libraries, and workflows to make experimentation, debugging, and deployment more efficient for the whole team.

Benefits

  • general: We offer you the flexibility to work where you work best! For this role, you can be within the North Americas region as long as we have a work location.
  • general: This team operates within the Eastern Standard time zone for collaboration.
  • general: Core working hours are CET 3pm-6pm / EST 9am-12pm.

Target Your Resume for "Staff Research Engineer - Music" , Spotify

Get personalized recommendations to optimize your resume specifically for Staff Research Engineer - Music. Takes only 15 seconds!

AI-powered keyword optimization
Skills matching & gap analysis
Experience alignment suggestions

Check Your ATS Score for "Staff Research Engineer - Music" , Spotify

Find out how well your resume matches this job's requirements. Get comprehensive analysis including ATS compatibility, keyword matching, skill gaps, and personalized recommendations.

ATS compatibility check
Keyword optimization analysis
Skill matching & gap identification
Format & readability score

Tags & Categories

MusicEngineeringMusicEngineering

Related Jobs You May Like

No related jobs found at the moment.