mid software engineering Field Engineer ic
$270,000 – $300,000
USD per year

About this role

Together AI is hiring a mid-level Field Engineer in the software engineering function based in San Francisco, CA. The posting calls out experience with Python, LLMs, Reinforcement Learning, System Design. Compensation is listed at $270,000–$300,000 per year.

Role
Field Engineer
Function
software engineering
Level
mid
Track
Individual contributor
Employment
Full-time
Location
San Francisco, CA
Department
Customer Success

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Job description

from Together AI careers

About the role

As a Forward Deployed Engineer (FDE) focused on Inference & Post-Training, you will be a hands-on technical partner to our most strategic customers — production AI teams looking to leverage high quality models and do inference at scale. For us, FDE is not a replacement for a Solutions Architect; you will partner with our SAs as a deep-domain specialist in inference optimization, fine-tuning pipelines, and production deployment. As key contributors to both the CX, Engineering, and Sales organizations, FDEs add tremendous value by ensuring we can meet the requirements of our most complex POCs, facilitate successful platform adoption, and guide tailored optimization efforts — directly impacting customer success, company growth, and the hardening of our core platform.

Responsibilities

  • Inference Engine Optimization: Select, configure, and optimize inference engine based on hardware, model architecture, and workload profile
  • Configuration & Performance Tuning: Develop configuration updates to win critical POCs, benchmarks, and optimize customer deployments; tune KV cache, apply speculative decoding, determine optimal tensor parallelism, and determine quantization strategy to hit throughput and latency targets.
  • Post-Training & Fine-Tuning: Drive hands-on RL training runs and optimize system design; guide customers through LoRA, SFT, DPO, RLHF, and GRPO pipelines from experimentation through production.
  • This is an excerpt. Read the full job description on Together AI careers →
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