refresh

트렌딩 기업

트렌딩 기업

채용

채용Together AI

Research Engineer, Core ML

Together AI

Research Engineer, Core ML

Together AI

San Francisco

·

On-site

·

Full-time

·

1mo ago

About the Role

This is a research engineering role with direct production impact. You won’t be publishing ideas in isolation—you will translate new RL algorithms, scheduling methods, and inference optimizations into production-grade systems that power Together’s API. Success in this role means shipping measurable improvements in latency, throughput, cost, and model quality at scale. We are looking for researchers who enjoy owning systems end-to-end and turning frontier ideas into robust infrastructure.

The Core ML (Turbo) at Together AI team sits at the intersection of efficient inference (algorithms, architectures, engines) and post‑training / RL systems. We build and operate the systems behind Together’s API, including high‑performance inference and RL/post‑training engines that can run at production scale.

Our mandate is to push the frontier of efficient inference and RL‑driven training: making models dramatically faster and cheaper to run, while improving their capabilities through RL‑based post‑training (e.g., GRPO‑style objectives). This work lives at the interface of algorithms and systems: asynchronous RL, rollout collection, scheduling, and batching all interact with engine design, creating many knobs to tune across the RL algorithm, training loop, and inference stack. Much of the job is modifying production inference systems—for example, SGLang‑ or vLLM‑style serving stacks and speculative decoding systems such as ATLAS—grounded in a strong understanding of post‑training and inference theory, rather than purely theoretical algorithm design.

You’ll work across the stack—from RL algorithms and training engines to kernels and serving systems—to build and improve frontier models via RL pipelines. People on this team are often spiky: some are more RL‑first, some are more systems‑first. Depth in one of these areas plus appetite to collaborate across (and grow toward more full‑stack ownership over time) is ideal.

Responsibilities

  • Advance inference efficiency end‑to‑end

  • Design and prototype algorithms, architectures, and scheduling strategies for low‑latency, high‑throughput inference.

  • Implement and maintain changes in high‑performance inference engines (e.g., SGLang‑ or vLLM‑style systems and Together’s inference stack), including kernel backends, speculative decoding (e.g., ATLAS), quantization, etc.

  • Profile and optimize performance across GPU, networking, and memory layers to improve latency, throughput, and cost.

  • Unify inference with RL / post‑training

  • Design and operate RL and post‑training pipelines (e.g., RLHF, RLAIF, GRPO, DPO‑style methods, reward modeling) where 90+% of the cost is inference, jointly optimizing algorithms and systems.

  • Make RL and post‑training workloads more efficient with inference‑aware training loops—for example, async RL rollouts, speculative decoding, and other techniques that make large‑scale rollout collection and evaluation cheaper.

  • Use these pipelines to train, evaluate, and iterate on frontier models on top of our inference stack.

  • Co‑design algorithms and infrastructure so that objectives, rollout collection, and evaluation are tightly coupled to efficient inference, and quickly identify bottlenecks across the training engine, inference engine, data pipeline, and user‑facing layers.

  • Run ablations and scale‑up experiments to understand trade‑offs between model quality, latency, throughput, and cost, and feed these insights back into model, RL, and system design.

  • Own critical systems at production scale

  • Profile, debug, and optimize inference and post-training services under real production workloads, taking research ideas all the way to stable, measurable improvements in deployed systems.

  • Drive roadmap items that require real engine modification—changing kernels, memory layouts, scheduling logic, and APIs as needed.

  • Establish metrics, benchmarks, and experimentation frameworks to validate improvements rigorously.

  • Provide technical leadership (Staff level)

  • Set technical direction for cross‑team efforts at the intersection of inference, RL, and post‑training.

  • Mentor other engineers and researchers on full‑stack ML systems work and performance engineering.

Requirements

We don’t expect anyone to check every box below. People on this team typically have deep expertise in one or more areas and enough breadth (or interest) to work effectively across the stack. The closer you are to full‑stack (inference + post‑training/RL + systems), the stronger the fit—but being spiky in one area and eager to grow is absolutely okay.

You might be a good fit if you:

  • Have a bias toward implementation and shipping—you are excited to modify real engines and services, not just prototype in research code.

  • Have strong expertise in at least one of the following, and are excited to collaborate across (and grow into) the others:

  • Systems‑first profile: Large‑scale inference systems (e.g., SGLang, vLLM, Faster Transformer, TensorRT, custom engines, or similar), GPU performance, distributed serving.

  • RL‑first profile: RL / post‑training for LLMs or large models (e.g., GRPO, RLHF/RLAIF, DPO‑like methods, reward modeling), and using these to train or fine‑tune real models.

  • Model architecture design for Transformers or other large neural nets.

  • Distributed systems / high‑performance computing for ML.

  • Are comfortable working from algorithms to engines:

  • Strong coding ability in Python

  • Experience profiling and optimizing performance across GPU, networking, and memory layers.

  • Able to take a new sampling method, scheduler, or RL update and turn it into a production‑grade implementation in the engine and/or training stack.

  • Have a solid research foundation in your area(s) of depth:

  • Track record of impactful work in ML systems, RL, or large‑scale model training (papers, open‑source projects, or production systems).

  • Can read new RL / post‑training papers, understand their implications on the stack, and design minimal, correct changes in the right layer (training engine vs. inference engine vs. data / API).

  • Operate well as a full‑stack problem solver:

  • You naturally ask: “Where in the stack is this really bottlenecked?”

  • You enjoy collaborating with infra, research, and product teams, and you care about both scientific quality and user‑visible wins.

Minimum qualifications

  • 3+ years of experience working on ML systems, large‑scale model training, inference, or adjacent areas (or equivalent experience via research / open source).

  • Advanced degree in Computer Science, EE, or a related field, or equivalent practical experience.

  • Demonstrated experience owning complex technical projects end‑to‑end.

If you’re excited about the role and strong in some of these areas, we encourage you to apply even if you don’t meet every single requirement.

About Together AI

Together AI is a research-driven artificial intelligence company. We believe open and transparent AI systems will drive innovation and create the best outcomes for society, and together we are on a mission to significantly lower the cost of modern AI systems by co-designing software, hardware, algorithms, and models. We have contributed to leading open-source research, models, and datasets to advance the frontier of AI, and our team has been behind technological advancement such as Flash Attention, Hyena, Flex Gen, and Red Pajama. We invite you to join a passionate group of researchers in our journey in building the next generation AI infrastructure.

Compensation

We offer competitive compensation, startup equity, health insurance and other competitive benefits. The US base salary range for this full-time position is: $200,000 - $280,000 + equity + benefits. Our salary ranges are determined by location, level and role. Individual compensation will be determined by experience, skills, and job-related knowledge.

Equal Opportunity

Together AI is an Equal Opportunity Employer and is proud to offer equal employment opportunity to everyone regardless of race, color, ancestry, religion, sex, national origin, sexual orientation, age, citizenship, marital status, disability, gender identity, veteran status, and more.

Please see our privacy policy at https://www.together.ai/privacy

총 조회수

0

총 지원 클릭 수

0

모의 지원자 수

0

스크랩

0

Together AI 소개

Together AI

Together AI

Series B

Data annotation company.

51-200

직원 수

San Francisco

본사 위치

$1.25B

기업 가치

리뷰

3.8

10개 리뷰

워라밸

3.5

보상

2.8

문화

4.2

커리어

3.0

경영진

3.2

65%

친구에게 추천

장점

Great team culture and collaboration

Flexible work arrangements and remote options

Good work-life balance

단점

Below industry standard compensation

High workload and overwhelming demands

Limited career advancement opportunities

연봉 정보

0개 데이터

Mid/L4

Senior

Mid/L4 · Product Designer

0개 리포트

$156,800

총 연봉

기본급

$156,800

주식

-

보너스

-

$133,280

$180,320

면접 경험

3개 면접

난이도

3.0

/ 5

소요 기간

14-28주

면접 과정

1

Application Review

2

Recruiter Screen

3

Technical Phone Screen

4

Coding Rounds

5

System Design Interview

6

Final Interview

자주 나오는 질문

Coding/Algorithm

System Design

Technical Knowledge

Behavioral/STAR

Infrastructure/SRE