Dieses Stellenangebot ist nicht mehr verfügbar
AI Scientist
- San Jose, Arizona, United States
- San Jose, Arizona, United States
Über
Are you passionate about
Generative AI
and want to apply it to one of the most impactful domains —
cybersecurity
?
Join our cutting-edge startup in the
San Francisco Bay Area
, where we are developing AI systems that transform how organizations understand, detect, and respond to cyber threats.
As an
Applied AI Scientist
, you'll bridge AI research and real-world cybersecurity use cases — designing, implementing, and optimizing models that extract, reason, and act on complex security data.
You'll work closely with
cybersecurity experts, AI infrastructure engineers, and stakeholders
to build end-to-end GenAI solutions: from concept to deployment.
This role blends
deep applied research
with
practical engineering
, ideal for someone eager to push the limits of Generative AI for meaningful impact.
Why Join Us:
- $25M Seed Funding:
Strong capital foundation to innovate and scale fast. - Early Success:
Trusted by
Fortune 500 companies
, validating real-world demand. - Experienced Leadership:
Founders with 25+ years in cybersecurity — previous ventures valued at $3B+. - Elite AI Leadership:
Heads of AI, Engineering, and Product from world-class tech companies. - Advanced AI Stack:
LLMs, embeddings, RAG systems, LangGraph orchestration, and multimodal AI. - Competitive Compensation:
Excellent salary, meaningful equity, and room for technical leadership growth. - Cybersecurity Knowledge Preferred but Not Required:
We'll teach you the domain — you bring the AI innovation.
Key Responsibilities:
Core Applied AI Research
- Collaborate with
cybersecurity researchers and stakeholders
to scope AI-driven solutions to security problems (e.g., vulnerability management, code analysis, threat detection). - Conduct
applied research
using the latest
LLMs and embedding models
(Claude, Google GenAI, Unsloth, vLLM). - Prototype, fine-tune, and evaluate
GenAI and RAG/CAG architectures
for classification, summarization, reasoning, and context synthesis. - Perform
embedding-level optimization
for text, code, and image data using Unsloth, Hugging Face, Voyage, or similar frameworks.
System Development & Integration
- Develop and test
end-to-end AI pipelines
integrating Milvus or Pinecone for semantic retrieval. - Build
agentic AI systems
using LangGraph or similar frameworks to enable autonomous reasoning and task chaining. - Collaborate with
MLOps engineers
to deploy and monitor AI models in production securely and efficiently. - Contribute to
synthetic data generation pipelines
for fine-tuning and evaluation.
Evaluation & Optimization
- Implement
evaluation frameworks
using DeepEval and GenAI tools (Claude / Google GenAI) for factuality, reliability, and robustness. - Optimize model performance across latency, accuracy, and cost using vLLM, quantization, or caching strategies.
- Maintain
reproducible experiment tracking
with MLflow, Weights & Biases, or internal tools.
Innovation & Leadership
- Stay ahead of GenAI trends — multi-modal reasoning, agentic orchestration, embedding adaptation.
- Explore
hybrid LLM deployment strategies
(local Unsloth/vLLM + cloud APIs like Claude, Google GenAI). - Document best practices, share learnings, and mentor junior scientists on applied GenAI workflows.
Qualifications:
Required
- 4+ years in
Applied AI / Machine Learning Research / Data Science
. - Strong understanding of
LLMs, embeddings, RAG systems, and multimodal learning
. - Proficiency in
Python
and frameworks like
PyTorch, Transformers, Hugging Face, or LangChain
. - Experience in
prompt engineering
,
model evaluation
, and
retrieval-based reasoning
. - Hands-on experience with
vector databases (Milvus / Pinecone)
and
orchestration frameworks (LangGraph / LangChain)
. - Strong communication skills and ability to collaborate across research and engineering functions.
Preferred
- Experience with
fine-tuning LLMs or embeddings
using Unsloth or similar frameworks. - Familiarity with
Claude / Google GenAI
APIs for cloud-based inference and evaluation. - Exposure to
cybersecurity or enterprise data
(CVEs, pluginText, network or asset logs). - Prior work on
synthetic data generation
and evaluation frameworks (DeepEval). - Experience in a
fast-paced startup or applied research environment
.
Our Culture & Team
•
Collaborative and Mission-Driven:
Every project directly advances global cybersecurity.
•
World-Class Mentorship:
Work with senior experts from top AI and security companies.
•
Growth-Oriented:
Opportunities to lead GenAI initiatives and own major research tracks.
•
Inclusive and Innovative:
We value diverse perspectives and open experimentation.
Perks & Benefits
- Comprehensive medical, dental, and vision coverage.
- Wellness and professional development stipends.
- Equity options — your impact equals ownership.
- Access to
state-of-the-art GPUs, APIs, and GenAI frameworks
.
Sprachkenntnisse
- English
Dieses Stellenangebot wurde von einem unserer Partner veröffentlicht. Sie können das Originalangebot einsehen hier.