Staff ML Platform Engineer - Large Scale Training (LLMOps/MLOps)
Dormont Manufacturing Co
About TrueFoundry Every production AI system, whether it’s powering customer support, writing code, analyzing financial data, or diagnosing medical conditions, needs the same foundational infrastructure. A way to route between models. A way to manage tools and integrate them securely. A way to orchestrate agents and enforce governance. A unified compute layer to run it all. That infrastructure layer is being built right now. We’re TrueFoundry, and we’re building it. We’re looking for a Staff ML Platform Engineer – Large Scale Training (LLMOps/MLOps) to join the team. The Problem We’re Solving Companies are moving beyond simple chatbots to production agentic systems. These systems route between OpenAI, Anthropic, Google, and self-hosted models. They integrate dozens of tools via protocols like MCP. They orchestrate multi-agent workflows where agents coordinate with other agents. The infrastructure to support this doesn’t exist yet. You can’t just duct-tape together a few API calls and call it production-ready. You need a control plane that handles: Intelligent routing with observability, cost policies, and fallback logic Centralized tool and MCP server management with security and lifecycle controls Agent orchestration with governance and guardrails A unified compute layer to run self-hosted models, custom tools, and agents We’ve built two products to solve this: AI Gateway is the control plane, five composable components (Prompts, LLM Gateway, MCP Gateway, Guardrails, Agent Gateway) that handle routing, orchestration, and governance. AI Deploy is the compute layer, a Kubernetes-based platform that abstracts ML workloads as standard software primitives, so everything runs on unified infrastructure. We’re Series A, backed by Intel Capital and Sequoia. Companies like CVS, Mastercard, Siemens, Paytm, Synopsys, and Zscaler run production AI workloads on our platform. We’re looking for ML Systems Engineers who are passionate about scaling deep learning workloads, optimizing multi‑GPU training, and shipping production‑grade solutions. If you live and breathe PyTorch, multi‑node training, and love solving gnarly infra challenges—this is your place. What You’ll Work On Write clean, modular, and scalable Python code , with a strong emphasis on reliability and performance. Build platform for training and finetuning large‑scale ML models across multi‑GPU, multi‑node clusters with PyTorch, Kubeflow, and other orchestration tools. Own the infrastructure and code that enables high‑throughput, low‑latency inference pipelines for state‑of‑the‑art models. Build platform for developing, deploying and evaluating agentic applications for our end customers. Help shape internal standards and best practices across the engineering team for high‑scale ML workloads. What We’re Looking For 5+ years of hands‑on experience building and deploying ML systems at scale. 5+ years of writing production quality high performance code. Deep experience with multi‑GPU/multi‑node training , ideally with PyTorch as your primary framework. Experience working with torch, high‑level ML frameworks, and inference engines (vLLM or TensorRT). Experience with Kubernetes is highly preferred; exposure to Kubernetes‑native tools is a huge plus. A pragmatic mindset—you know when to optimize and when to ship. Bonus: Familiarity with open‑source LLM training/fine‑tuning. Why Join TrueFoundry? Work directly with ex‑Facebook engineers and founders from IIT Kharagpur, UC Berkeley, and Y Combinator alumni . First‑hand exposure to building and scaling a deep‑tech startup —insights you’ll carry if you want to start your own one day. Be part of a fearlessly experimental culture focused on customer success and long‑term impact. Flexible hours, learning credits, and the opportunity to work shoulder‑to‑shoulder with the co‑founders (Abhishek & Nikunj). #J-18808-Ljbffr Dormont Manufacturing Co
- Dormont Manufacturing Co is seeking a Staff ML Platform Engineer to join their team. This role focuses on building infrastructure for large-scale training of ML models, requiring deep knowledge of PyTorch and multi-node systems. Join a dynamic environment poised for growth...Training
- Responsibilities Design, deploy, and maintain large distributed ML training and inference clusters Develop... ...-to-end pipelines to manage petabyte-scale datasets and model training... ...foundation models Knowledge of cloud platforms (GCP, AWS, or Azure) and their ML/AI...Training
$209.7k - $283.8k
Dormont Manufacturing Co is looking for a staff ML engineer located in San Francisco to design and build large-scale ML pipelines. This role involves creating reliable infrastructure for training datasets and orchestrating ML workflows, as well as collaborating closely...Training$181.1k - $318.4k
Apple Inc. is looking for a Staff ML Infrastructure Engineer in San Francisco to lead pre-training initiatives for cutting-edge foundation models in machine learning. The successful candidate will have over 6 years of experience in building scalable backend systems, be...Training- ...Manufacturing Co is looking for a Software Engineer for their Pre-training Systems team in San Francisco. Your... ...that trains long-context models at scale, tackling challenges related to... ...engineering fundamentals, experience with large models, and a proactive attitude...Training
- ...Francisco is seeking a machine learning engineer to work across the full ML stack, including data, models, and... ...build data pipelines for petabyte-scale datasets. The ideal candidate has a... ...fundamentals and experience with model training and analysis. This role encourages...Training
- ...organization in San Francisco seeks an Infrastructure Engineer to design and maintain large distributed ML training and inference clusters. The ideal candidate will... ...like FSDP and DeepSpeed. Proficiency in cloud platforms and containerization is essential. Join us to...Training
$250k
...is hiring a talented ML/AI Research Engineer to join their team in... ...agents and models to be trained, evaluated, deployed and... ...and governance of large‑scale AI systems. Build end‑... ...years of experience in MLOps, ML infrastructure or backend/platform engineering. Proven experience...Training$250k - $350k
...makes them actually work. We’re hiring ML Infrastructure Engineers to tackle a hard, real-world problem... ...job sites using wearable devices, large-scale video, and AI. This isn’t clean... ...handling millions of hours of data Training and inference systems for multimodal...Training- ...ML Platform Engineer Build the data infrastructure for robots operating in... ...to help design, deploy, and scale the systems that power Foxglove... ...pipeline orchestration to training infrastructure and... ...and embedding pipelines over large, heterogeneous datasets A...TrainingRemote work
- ...grade AI systems. As an MLOps Engineer, you will design,... ...challenges and enabling ML teams to move faster.... ...pipelines. Automate model training, validation, and... ...Biases, Kubeflow Cloud Platforms: AWS (SageMaker, S3, EC... ...distributed systems and large-scale data processing....Training
- A decentralized AI platform company in the United States is seeking an experienced ML Training Platform Engineer to design and build robust infrastructure for ML training. The... ...conditions. This role is essential for enabling large-scale, collaborative AI development. #J-18808-...Training
- What You’ll Do Training Automation: Design and implement robust CI... ...degree in Computer Science, Engineering, or equivalent practical... ...years in Software Engineering, MLOps, or ML Infrastructure Strong Python... ...will define how experiments scale, how reliability is measured...TrainingImmediate startRelocation packageNight shift
- ...role requires 40 hours a week and involves working with MLOps and ML systems engineering tasks. The ideal candidate should have 2+ years of experience... ...and hands-on production experience with PyTorch at scale. Strong communication skills are essential for explaining...TrainingRemote jobContract work
$181.1k - $318.4k
AIML - Staff ML Infrastructure Engineer, ML Platform & Technology - Pre-training Infrastructure San Francisco Bay Area, California,... ...your work will include: Drive large‑scale pre‑training initiatives to support... ...training. Architect a robust MLOps platform to streamline and...TrainingRelocation- ...Machine Learning Engineer opportunities... ...preprocessing, training, testing, and deployment... ...end-to-end ML pipelines... ...Implement robust MLOps practices such... ...monitoring. Analyze large datasets to... ...pipelines that scale reliably across... ...model-serving platforms for LLM inference...TrainingFlexible hours
$295k - $405.5k
...technology wholesale platform built on the... ...the Senior Staff Machine Learning Platform Engineer, you will own... ...of Faire’s ML platform. You... ...velocity at scale. This role... ...platform including training, inference,... ..., testing, MLOps (CI/CD),... ...and improving large-scale ML or data...TrainingFull timeWork experience placementWork at officeLocal areaRemote workMonday to FridayFlexible hours3 days per week$198k - $230k
...Worldwide Influencer Marketing Platforms for Large Enterprises in 2025, was... ...work styles. Senior MLOps Engineer (Applied AI Focus) As a Senior... ...processing decisions around a scaled vector embeddings ecosystem... ...platform to fully get the training and tools you’ll need to become...TrainingWork at officeRemote workWork from homeWorldwideHome officeFlexible hours$66k - $165k
...Summary We are seeking an Engineer - MLOps & Scientific Platforms - Data Foundry to... ...You will build the ML deployment pipelines... ...agentic systems (LLMOps) to ensure system reliability... ...and performance at scale. Build dashboards... ..., versioned training and inference data....TrainingFull timeH1bVisa sponsorshipWork visaFlexible hours- ...Machine Learning Engineer with 10+ years... ...design, build, and scale production-grade... ...on end-to-end ML system ownership... ...engineering, model training, deployment,... ...of scalable ML platforms, drive best practices in MLOps, and enable reliable... ...involving large language models...Training
- Senior Staff Machine Learning Engineer, Communication & Connectivity... ...into existing platforms. Additionally, you... ...harness the power of Large Language Models (... ...will be leading ML, Data and Product... ...over large-scale software systems... ...factors, such as: training, transferable skills...TrainingWork experience placementRemote work
- Staff Machine Learning Engineer, Listings and Host Tools Data and AI Airbnb was born... ...Intelligence Machine Learning (ULM-ML) team: The ULM-ML team... ...A Typical Day: Work with large scale structured and... ...Learning best practices (eg. training/serving skew minimization,...TrainingWork experience placement
- ...Francisco seeks a Machine Learning Engineer to work with the full ML stack, implementing advanced model architectures... ...extensive data pipelines for large datasets. The ideal candidate will... ...principles, extensive experience in training models, and familiarity with...Training
$250k - $400k
...seeks experienced professionals to build and scale systems for AI-driven scientific discovery. The role involves developing training pipelines, supporting model deployment,... ...base plus equity, with opportunities for ML Engineers, ML Infra, Research Engineers, and Research...TrainingRemote job$224k - $308k
About this role As a Staff Machine Learning Platform Engineer, you will help design... ...and operate a scalable ML platform to accelerate model training, deployment, and... ...deeply critical team that scales Faire’s ability to... ...Solid understanding of MLOps best practices: CI/CD...TrainingWork experience placementLocal area- ...Join: The Growth Platform team’s vision... ...machine learning engineer or scientist,... ...seeking a Senior Staff Engineer who... ...operate globally at scale, and help... ...iteration cycles. ML/AI... ...Day: Work with large scale structured... ...practices (e.g. training/serving skew minimization...TrainingWork experience placementRemote workShift work
$172k
...Senior AI/ML Engineer, Growth & Marketing AI We're hiring... ...models using large-scale financial, transactional... ...improve infrastructure for training, serving, and... ...strategies, and scalable ML platform capabilities Help identify... ...A strong MLOps mindset with experience...TrainingFull timeWork at officeLocal areaRemote workNight shift$190k - $320k
...research and infra to prototype, train, and deploy state‑of‑the‑art... .... Squeeze silicon — scale training and inference for LLM... ...level PyTorch. Proven software engineer who loves ML; comfortable writing... ...experience training or fine‑tuning large language or other large‑...TrainingFull timeContract workFlexible hoursShift work- ...boundaries of what our ML systems can do. We’... ...a Founding ML Engineer to own the research... ...intelligence layer. Our platform indexes hundreds of... .... This is not an MLOps role. You will be researching, training, and shipping... ...data generation at scale Strong Python and PyTorch...TrainingShift work
- ...The role At Mach9, ML Engineers build the perception models at the core... ...advantage allows us to develop and train cutting edge 3D scene... ...infrastructure engineers to scale training and inference of your... ...segmentation networks. Experience with large unstructured datasets —...Training
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