Senior Software Engineer, AI Infrastructure - LVM Inference & Evaluation
Quick Summary
Design, build, and maintain cutting-edge AI infrastructure for real-time computer vision, LLM, LVM, and multimodal inference workloads.
Ambient.ai is the category creator and leader in Agentic Physical Security. Powered by Ambient Pulsar, the first reasoning Vision-Language Model purpose-built for physical security, our platform seamlessly integrates with existing security cameras and physical access control systems to unify monitoring, access control, threat assessment, response, and investigations through an always-on reasoning layer that augments security operators with superhuman capabilities. The results: 95% fewer false alarms, investigations 20x faster, and 10x faster response.
The momentum speaks for itself: we doubled new ARR in FY26, we process 200M+ video hours per day, and have delivered results for world-class customers including Cisco, ServiceNow, SentinelOne, TikTok, Bayer, and MoMA. That kind of momentum creates an environment where great people thrive, and it shows: we recently ranked #71 out of 500 on the Forbes best startup employers list.
Founded in 2017 and backed by Andreessen Horowitz, Y Combinator, and Allegion Ventures, Ambient.ai is on a fast-paced journey to fulfill our mission: prevent every security incident possible.
Ready to learn more? Connect with us on LinkedIn and YouTube
About the Role
~1 min readReporting to Raghu Nallamothu, you will design, build, and optimize the AI infrastructure that powers Ambient.ai’s real-time intelligence platform.
In this role, you will work on the systems required to run state-of-the-art deep learning models across many terabytes of video data in real time. You will help build and scale infrastructure for inference, evaluation, and continuous model improvement across computer vision models, large language models, large vision models, and multimodal AI systems.
This role is ideal for someone with a strong blend of infrastructure engineering, production ML systems, LLM/LVM inference, evaluation harnesses, and inference optimization experience. You will partner closely with research scientists and product engineering teams to bring the latest AI advancements into production for our customers.
Responsibilities
~1 min read- →
Design, build, and maintain cutting-edge AI infrastructure for real-time computer vision, LLM, LVM, and multimodal inference workloads.
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Build scalable systems for running state-of-the-art models across large volumes of video and sensor data.
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Optimize inference performance across latency, throughput, GPU utilization, reliability, and cost.
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Develop robust evaluation harnesses and benchmarking systems to measure model quality, system performance, regressions, and production readiness.
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Build infrastructure for continuous model evaluation, experimentation, and deployment.
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Partner with research scientists to productionize the latest advances in computer vision, LLMs, LVMs, RAG, and multimodal AI.
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Improve model-serving architecture, including batching, caching, routing, quantization, model parallelism, and hardware utilization.
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Develop data engines and feedback loops for collecting training data, evaluating model behavior, and continuously improving AI performance.
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Create reliable observability, monitoring, and debugging tools for production AI systems.
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Help define best practices for deploying, evaluating, and operating AI systems in real-world enterprise environments.
4+ years of industry experience building infrastructure, distributed systems, machine learning platforms, or production AI systems.
BS/MS in Computer Science or a related technical field, or equivalent practical experience.
Strong programming background, especially in Python, with solid software engineering fundamentals.
Experience designing and building scalable machine learning infrastructure for training, inference, evaluation, and deployment.
Hands-on experience running deep learning models in production, ideally including LLMs, LVMs, vision-language models, or multimodal models.
Strong understanding of inference optimization techniques, including batching, caching, quantization, parallelism, memory optimization, GPU utilization, and latency reduction.
Experience with model-serving frameworks or systems such as vLLM, Triton Inference Server or similar technologies.
Experience building evaluation frameworks, test harnesses, benchmarks, regression tests, or model-quality measurement systems.
Strong background in machine learning and deep learning; computer vision experience is a strong plus.
Experience designing data engines or pipelines for collecting, managing, and curating training and evaluation data.
Familiarity with integrating advanced AI systems such as LLMs, LVMs, RAG pipelines, embedding models, or multimodal models into production applications.
Experience with cloud infrastructure, containers, orchestration, distributed systems, and GPU-based workloads.
Strong collaboration and communication skills, with the ability to work effectively with research scientists, product teams, infrastructure teams, and stakeholders.
Proactive problem-solving ability, a strong ownership mindset, and adaptability to incorporate new AI technologies and methodologies.
Nice to Have
~1 min readExperience operating large-scale GPU infrastructure or distributed inference systems.
Experience with CUDA, NCCL, PyTorch, TensorRT, ONNX, or similar ML systems technologies.
Experience with video understanding, real-time computer vision, multimodal AI, or physical-world AI systems.
Experience with model compression, speculative decoding, distillation, pruning, or low-latency serving techniques.
Experience with prompt evaluation, model regression testing, human-in-the-loop evaluation, or automated quality gates.
Familiarity with retrieval-augmented generation, vector databases, embedding models, re-rankers, or search infrastructure.
Experience building internal ML platforms or tools used by researchers and applied ML teams.
You will be successful in this role if you can build practical, scalable infrastructure that helps Ambient.ai deploy better AI models faster and more reliably. You should be comfortable working across the full stack of production AI systems, from model behavior and evaluation to serving architecture, GPU performance, observability, and customer-facing reliability.
This is a hands-on engineering role for someone excited to help bring the next generation of AI, computer vision, LLMs, and LVMs into real-world production environments.
What We Offer
~2 min readLocation & Eligibility
Listing Details
- Posted
- July 14, 2026
- First seen
- July 14, 2026
- Last seen
- July 14, 2026
Posting Health
- Days active
- 0
- Repost count
- 0
- Trust Level
- 54%
- Scored at
- July 14, 2026
Signal breakdown
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