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SF

Applied Machine Learning Engineer at SOLANA FOUNDATION

SOLANA FOUNDATION No longer available $220,000 - $320,000/year

Job Description

Location

San Francisco

Employment Type

Full time

Location Type

On-site

Department

Engineering

Compensation
  • Estimated Base Salary $220K - $320K • Offers Equity

Help us build the systems that train specialized AI models for the fastest-growing companies in the world. If you love taking cutting edge ML techniques and turning them into products that ship, we'd love to meet you.

About Inference.net

Inference.net trains and hosts specialized language models for companies who want frontier-quality AI at a fraction of the cost. The models we train match GPT 5 accuracy but are smaller, faster, and up to 90% cheaper. Our platform handles everything end to end: distillation, training, evaluation, and planet scale hosting.

We are a well funded ten person team of engineers who work in person in downtown San Francisco on difficult, high impact engineering problems. Everyone on the team has been writing code for over 10 years, and has founded and run their own software companies. We are high agency, adaptable, and collaborative. We value creativity alongside technical prowess and humility. We work hard, and deeply enjoy the work that we do. Most of us are in the office 4 days a week in SF; hybrid works for Bay Area candidates.

About the Role

You will be responsible for building and improving the core ML systems that power our custom model training platform, while also applying these systems directly for customers. Your role sits at the intersection of applied research and production engineering. You'll lead projects from data intake to trained model, building the infrastructure and tooling along the way.

Your north star is model quality at scale, measured by how well our custom models match frontier performance, how efficiently we can train and serve them, and how smoothly we can deliver results to our customers. You'll own the full training lifecycle: processing data, creating dashboards for visibility, training models using our frameworks, running evaluations, and shipping results. This role reports directly to the founding team. You'll have the autonomy, a large compute budget / GPU reservation, and technical support to push the boundaries of what's possible in custom model training.

Key Responsibilities
  • Lead projects from data intake through the full training pipeline, including processing, cleaning, and preparing datasets for model training
  • Build and maintain data processing pipelines for aggregating, transforming, and validating training data
  • Create dashboards and visualization tools to display training metrics, data quality, and model performance
  • Train models using our internal frameworks and iterate based on evaluation results
  • Develop robust benchmarks and evaluation frameworks that ensure custom models match or exceed frontier performance
  • Build systems to automate portions of the training workflow, reducing manual intervention and improving consistency
  • Take research features and ship them into production settings
  • Apply the latest techniques in SFT, RL, and model optimization to improve training quality and efficiency
  • Collaborate with infrastructure engineers to scale training across our GPU fleet
  • Deeply understand customer use cases to inform training strategies and surface edge cases
Requirements
  • 2+ years of experience training AI models using PyTorch
  • Hands on experience with post training LLMs using SFT or RL
  • Strong understanding of transformer architectures and how they're trained
  • Experience with LLM specific training frameworks (e.g., Hugging Face Transformers, DeepSpeed, Axolotl, or similar)
  • Experience training on NVIDIA GPUs
  • Strong data processing skills and comfortable building ETL pipelines and working with large datasets
  • Track record of creating benchmarks and evaluations
  • Ability to take research techniques and apply them to production systems
Nice to Have
  • Experience with model distillation or knowledge transfer
  • Experience building dashboards and data visualization tools
  • Familiarity with vision encoders and multimodal models
  • Experience with distributed training at scale
  • Contributions to open source ML projects

You don't need to tick every box. Curiosity and the ability to learn quickly matter more.

Compensation

We offer competitive compensation, equity in a high growth startup, and comprehensive benefits. The base salary range for this role is $220,000 - $320,000, plus equity and benefits, depending on experience.

Equal Opportunity

Inference.net is an equal opportunity employer. We welcome applicants from all backgrounds and don't discriminate based on race, color, religion, gender, sexual orientation, national origin, genetics, disability, age, or veteran status.

If you're excited about building the future of custom AI infrastructure, we'd love to hear from you. Please send your resume and GitHub to and/or apply here on Ashby.

Compensation Range: $220K - $320K

$220k - $320k beats the market for Computer and Information Research Scientists nationally

National salary averages
$220k - $320k
↑ 92% vs typical mid-level
Entry
Mid
Senior
This job
$81k Market range (10th-90th percentile) $232k

Senior roles pay 76% more than entry—experience is well rewarded.

This is a strong offer—weigh total comp and growth potential.

Balanced market

High demand and responsive wages. Negotiate confidently on all fronts.

Hiring leverage
Lean candidate
Wage leverage
Moderate
Mobility
Low mobility

Who this leverage applies to

Stronger for: All experience levels, Credentialed candidates
Weaker for: Self-taught practitioners

Where to negotiate

Base salary
Sign-on bonus
Title / level
Remote flexibility
Scope & responsibility
Start date / PTO

Likely Possible Unlikely

Watch out for

Limited mobility: Few adjacent roles—switching employers is harder.

Does this path compound?

Job Growth →
High churn
Growth, flat pay
🚀 Compound
Growth + pay upside
⚠️ Plateau
Limited growth
Specialize
Experts earn more
Pay Upside →
Growth + pay upside

Both the field and your earnings can grow significantly.

+20%
10yr growth
Advanced degrees are common in this field.
Typical: Master's degree

Good time to build expertise—demand will chase supply.

Labor data: BLS 2024