Senior or Staff Data Scientist | Suno Β· Teeming.ai
Suno
Suno is building a future where anyone can make music. Whether you're a shower singer or a charting artist, we break barriers between you and the song you dream of making. No instrument needed, just imagination. From your mind to music.
Suno is building a future where anyone can make music. Whether you're a shower singer or a charting artist, we break barriers between you and the song you dream of making. No instrument needed, just imagination. From your mind to music.
Product: AI-first music generation platform and apps (text-to-song, audio-to-song, Suno Studio)
Headquarters: Cambridge, MA
Founders / leadership: Mikey (Michael) Shulman (co-founder & CEO); Georg Kucsko (co-founder & CTO); Martin Camacho (co-founder)
Reported funding: $375,000,000 total (evidence shows large Series B/C rounds)
Related Companies
Company
HQ
Industry
Total Funding
Clay
πΊπΈUS
Sales and Marketing
-
Gizmo
π¬π§GB
β
$4M
nexos.ai
π±πΉLT
Data and AnalyticsDeepTechInformation TechnologySoftware
-
Lovable
πΈπͺSE
Data and AnalyticsDeepTechInformation TechnologySoftware
-
Speak
πΊπΈUS
β
-
Company Overview
Problem Domain
Democratizing music creation via generative AI
Industry
Technology, Information and Internet
Funding Track Record
Series B- May 2025
125000000
Reported $125M Series B (May 2025)
Series C- November 19, 2025
250000000
Reported $250M Series C at a $2.45B post-money valuation; participants named include NVentures (NVIDIA), Hallwood Media, Lightspeed, and Matrix
Investor Signal
βSeries C led by Menlo Ventures with participation from NVentures (NVIDIA), Hallwood Media, Lightspeed, and Matrixβ
Founders
What we do
Join the Team
Senior or Staff Data Scientist
On-SiteSan Francisco Bay Area, US
On-Site β’ San Francisco Bay Area, US
Who you are
This role is perfect for someone who thrives in open-ended environments, loves getting their hands dirty with data and prototyping, and is excited about defining the future of music discovery
6+ years experience in data science or machine learning roles with direct experience on recommendation systems - ideally in consumer products, music/audio, or content platforms
Strong technical skills in Python, SQL, and statistical modeling
Experience designing and running rigorous experiments, evaluating tradeoffs, deriving clear insights, and making actionable recommendations
Excellent communication and experience working across multiple functions to influence decisions
A self-starter mentality with the ability to thrive in ambiguity, eagerness to wear multiple hats, and passion for continuous learning
What the job involves
Teeming tracks opportunities at over 24,000 AI startups, then works with you to find (and land) the one you'll love.
Backend Developer
Part-timeUtrecht, NL
Part-time β’ Utrecht, NL
AI Researcher
ContractMunich, DE
Contract β’ Munich, DE
Software Engineer
Full-timeBerlin, DE
Full-time β’ Berlin, DE
Mobile Developer
Part-timeHaifa
Part-time β’ Haifa
DevOps Engineer
InternshipUtrecht, NL
Internship β’ Utrecht, NL
Technical Writer
Part-timeRotterdam, NL
Part-time β’ Rotterdam, NL
As our founding Recommendation Data Scientist, you'll be instrumental in building Suno's music discovery and recommendation systems from the ground up
You'll help define how millions of users discover, create, and engage with music on our platform
This role combines technical expertise in recommendation systems with the creative challenge of applying strong principles and judgment to determine what truly compelling and valuable music recommendations look like
You'll work at the intersection of music, AI, and human behavior, collaborating closely with engineering, product, and growth teams to build systems that help users find their next favorite song or inspire their next creation
From hands-on data exploration and rapid prototyping to building up sophisticated ML models, you'll be deeply involved in the full spectrum of recommendation strategy and execution
Define content strategy: Partner with product and growth leaders to establish our initial content discovery strategy, recommendation goals, and success metrics
Get hands-on: Dive deep into user behavior patterns and content characteristics, using these insights to prototype and improve upon recommendation algorithms and features
Design and run experiments: Create rigorous testing frameworks to validate recommendation improvements and measure impact on user engagement, retention, and music creation
Build evaluation systems: Develop comprehensive frameworks for measuring recommendation quality across multiple dimensions - relevance, diversity, novelty, and user satisfaction
Collaborate cross-functionally: Work closely with engineering to test and implement recommendation algorithms and with product to shape user experience
Shape data culture: As a part of our growing data science team, contribute to strong data foundations and foster a nuanced and healthy company-wide relationship with data