Netskope

Senior Staff / Principal Machine Learning Scientist, AI Inference & Optimization

Netskope$182K — $260K *
Enterprise Technology
8 - 10 years of experience
Job Overview by Ladders

Qualifications

  • 10+ years of overall industry experience, with 4+ years hands-on in ML/AI.
  • Experience in fine-tuning and quantization of models.
  • Familiarity with inference runtimes such as TensorRT-LLM and ONNX Runtime.
  • Strong Python skills and ability to work with C++ at a low level.
  • Solid understanding of transformer internals related to inference performance.
  • Interest and experience in agentic coding systems.

Responsibilities

  • Build and optimize the model inference path focusing on quantization and latency tuning.
  • Fine-tune and evaluate models for real tasks with a focus on accuracy and security.
  • Design and develop the task execution runtime for dynamic task generation.
  • Enhance hardware acceleration for larger models as the platform evolves.
  • Collaborate with systems engineers to implement and refine production capabilities.

Benefits

  • High-impact ownership of a new model layer in cutting-edge product development.
  • Work with a unique and challenging technology stack.
  • Utilize real-world production signals from a large customer base for faster iteration.
Full Job Description
About the role

As a Senior Staff Machine Learning Scientist, you own the inference and optimization layer that makes AI in agentic workflows fast, efficient, and production-grade. You fine-tune and evaluate models, push latency and throughput on real hardware, and build the runtime that executes bounded AI tasks, validated against usage from Netskope's large customer base so you optimize where the data points, not where you guess.
What9s in it for you
  • High-impact ownership. You own the model layer of a net-new product that changes the performance and economics of agentic AI.
  • Cutting-edge, unusual stack. The hard, interesting inference problems live here: quantization, KV-cache and memory management, sparsity, fine-tuning, and hardware acceleration under real-world resource constraints.
  • Real scale to build against. Netskope's customer footprint gives you production signals most teams never see, so you deploy, validate, and iterate fast.
What you will be doing
  • Build and optimize the model inference path: quantization, KV-cache optimization, batching, and latency/memory/throughput tuning on constrained, commodity hardware.
  • Fine-tune and evaluate models for bounded tasks; build eval harnesses that gate a capability to release on real accuracy, latency, and security relevance.
  • Design and grow the task execution runtime (bounded sub-agents), pushing toward dynamic task generation and context compaction.
  • Drive hardware acceleration / sparsity and support for larger models as the platform matures.
  • Partner with the systems and backend engineers to ship capabilities end-to-end and iterate on real production signals.
Required skills and experience
  • 10+ years of overall industry experience, with 4+ years hands-on in ML/AI (model development, fine-tuning, and inference optimization).
  • Hands-on with fine-tuning (e.g. LoRA/QLoRA), quantization (GGUF/AWQ/GPTQ), and inference runtimes (vLLM/SGLang, TensorRT-LLM, ONNX Runtime, llama.cpp, or MLX/CoreML). On-device or edge inference experience is a strong plus.
  • Strong Python; comfort reaching into C++ for low-level interop is a plus.
  • Solid grasp of transformer internals and the levers that move real inference performance and cost: KV cache, attention, batching, memory footprint.
  • Fluency with agentic coding systems and genuine curiosity about agent harnesses like Claude Code, Pi, and Codex, so you should already be building with them, or itching to.
  • Clear communication: able to distill a model or infra bottleneck into an actionable concept for cross-functional teammates.
Education
  • MS in Computer Science, Machine Learning, Electrical Engineering, or equivalent technical degree required, with a focus in AI/ML research; PhD in a related field strongly preferred.


Compensation:

At Netskope, salary is one component of our competitive total rewards package. The salary range for this position is as listed below. This is a national range. For purposes of complying with applicable laws, the range applies to candidates in California, Colorado, Illinois, Maryland, New York, Washington, and other states.

The successful candidate's starting pay will also be determined based on job-related skills, experience, qualifications, location, and market conditions.

For all sales roles, the posted salary range is the On Target Earnings (OTE) range for the role, which is the sum of base salary and target commission amount at 100% goal achievement.

In addition to salary, candidates may be eligible for other forms of compensation such as participation in a bonus plan (for non-sales roles) and a stock award program. Candidates may also be eligible for a comprehensive health plan and other benefits that can be reviewed at Netskope Benefits site.

Salary Range

$182,500-$260,500 USD

The application window for this position is expected to close within 50 days. You may apply by filling out the below information, or visiting our Netskope Careers site.

About Netskope

Netskope is an American software company providing a computer security platform. The platform offers cloud-native solutions to businesses for data protection and defense against threats in cloud applications, cloud infrastructure, and the web. Netskope is considered a "leader in its field" status for its Cloud Access Security Brokers product from Gartner. Netskope is based in Santa Clara, California, with a software development facility in Bangalore, India, and further offices in San Francisco, Redmond, New York, St. Louis, London, Melbourne, Leganés and Singapore. Netskope was founded in 2012 by Sanjay Beri, Lebin Cheng, Ravi Ithal, and Krishna Narayanaswamy with an initial venture capital of approximately $21m. In October 2013, one year after being founded, Netskope launched its first openly available security software. In that same month, it announced the formation of an advisory team and appointed Enrique Salem, former Symantec chairman and CEO to its board of directors. In 2014, Netskope raised $35m in funding. By mid-2015, the company announced plans to expand to the Australia and New Zealand market and in September, Netskope raised a further $75m in a round led by ICONIQ Capital. In 2016, the first two patents were issued to Netskope - Patents 9,270,765 and 9,398,102 for security for network delivered services. In June 2017, Netskope closed the most successful funding round yet, securing $100m in a round led by Lightspeed Venture Partners. The following month, Netskope acquired Sift Security, also a software company with a focus on next-generation cloud infrastructure security. The acquisition brought Sift’s IaaS ‘Cloud Hunter’ into Netskope’s Security Cloud. A year later, in June 2018, Patent 9,928,377 for context-aware data loss prevention was issued to Netskope. 2018 also saw another round of funding for Netskope, as the company raised a further $168.7m in November.
Learn more about Netskope
Industry
Founded
2012

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