Careers
Build the infrastructure for safe enterprise AI
Join a seed-stage team making privacy-preserving AI the default. We help enterprises ship AI when sensitive data is the blocker. Your work turns restricted datasets into synthetic data with provable privacy guarantees that AI, legal, security, and compliance teams all approve.
Why Secludy
Make privacy-preserving AI the default
We are building a proprietary generative engine that creates privacy-guaranteed synthetic data for regulated industries like fintech, healthcare, and life sciences. Small team, high ownership, direct work with the founders.
High ownership
Small team, real scope. You own problems end to end and ship work the founders and customers feel right away.
Pragmatism
Write clean abstractions when they pay off. Ship a small script when the team needs an answer today.
Privacy-first
We make individual privacy hold as AI scales. Provable privacy guarantees are the product, not an afterthought.
Speed
We turn math hypotheses into testable code fast and keep the loop between research and production tight.
Open role
The role we are hiring for now
Machine Learning Engineer
SF Bay Area, Hybrid
The opportunity
Secludy is a San Francisco-based, venture-backed startup on a mission to make privacy-preserving AI the industry default and keep individual privacy intact as AI scales. The platform lets organizations use sensitive data through synthetic data generation with provable privacy guarantees.
Fintech, healthcare, and life-sciences customers trust Secludy to protect sensitive data and IP while training AI models.
You will be the first engineering hire at a seed-stage startup solving the data bottleneck for regulated industries. You will build the infrastructure that lets the team iterate much faster and deliver to enterprise customers at a high standard.
What you will do
Accelerate the research loop
- Partner with the founders to turn mathematical hypotheses into testable code.
- Build reusable modules and keep the codebase simple by questioning every new file and library.
- Push performance through simpler architecture, not patches.
- Investigate failures that span infrastructure and math, like out-of-memory errors, race conditions, loss divergence, and gradient explosion.
- Build the harness that shows exactly how metrics change when the model changes.
Productionize the engine
- Orchestrate distributed training and generation across GPU clusters with Kubernetes using minimal, self-healing deployments.
- Own the deployment pipeline.
- Build logging that explains why a generation job failed, not just that it failed.
Who you are
- You work across infra and modeling. You can debug latency and Docker issues, read loss curves, and diagnose overfitting.
- You take ownership of broken training runs. You profile GPUs, inspect dataloaders, and find the bottleneck fast.
- You stay pragmatic. You write clean abstractions when they pay off and ship a small script when the team needs an answer today.
Requirements
- 3 to 6 years in ML engineering or applied research.
- Strong PyTorch. You can write a custom training loop from scratch.
- Experience with generative models like diffusion, VAEs, and transformers beyond inference.
- A track record of taking experimental code to production.
- Comfortable with tabular, free-text, or time-series data.
Interview process
No LeetCode1. Screen
30 minutes
Align on mission and background.
2. Technical deep dive
60 minutes
ML system design, debugging war stories, and generative concepts.
3. Working session
90 minutes
Diagnose and fix a real broken piece of research code in your own environment while we collaborate.
4. Founder chat
30 minutes
Final vision alignment.
Ready to build the infrastructure for safe enterprise AI
ApplyAlways hiring exceptional people
Do not wait for a posting. If you want to make privacy-preserving AI the default and you think you would move this work forward, tell us what you would build. Send a short note and a few sentences on the hardest problem you have shipped.
Want to help build this
Reach out at careers@secludy.com or read the open role to see where you would fit. We move fast and we read every note.
