Principal Machine Learning & AI Engineer
Company: Quantum Search Partners
Location: Austin
Posted on: February 14, 2026
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Job Description:
Job Description Job Description Principal Machine Learning & AI
Engineer Fraud Prevention & AML Platform (Series-C)
$250,000-$300,000 base Stock Options (Potential Flexibility) Hybrid
in Austin, TX What You'll Do Feasibility Research: Conduct in-depth
research to assess the technical and product feasibility of
integrating new AI and machine learning advancements into core
offerings. Idea Generation: Proactively generate, prototype, and
validate innovative research ideas that can lead to next-generation
features and products in fraud prevention, AML, IDV, and Device
Intelligence. Algorithm Development: Design, implement, and
experiment with advanced AI algorithms, including but not limited
to deep learning, graph neural networks, reinforcement learning,
and advanced statistical modeling. Collaboration: Work closely with
the Product, Engineering, and Data Science teams to transition
successful research prototypes into production-ready features.
Knowledge Sharing: Disseminate research findings through internal
presentations, technical reports, and potentially external
publications. Embed AI in the Platform : Drive seamless integration
of generative and traditional ML capabilities into core SaaS
product, with a focus on real-time responsiveness and usability.
What You Bring Education: Masters in Computer Science, Artificial
Intelligence, Machine Learning, or a related quantitative field.
Ph.D. in Computer science is preferred. Experience: 5years of
post-doctoral or industry experience in AI research, preferably in
a domain related to fraud detection, cybersecurity, financial
technology, or risk management. Technical Expertise: Deep expertise
in multiple areas of AI/ML, such as Deep Learning, Time Series
Analysis, Natural Language Processing, or Causal Inference.
Proficiency in programming languages and frameworks commonly used
in AI research (e.g., Python, PyTorch, TensorFlow). Demonstrated
ability to formulate research questions, design experiments, and
interpret complex results. Generative AI Experience: Solid
understanding of LLM architecture, prompt engineering, embeddings,
vector search (e.g., FAISS, pgvector, Milvus), and GenAI product
patterns like RAG or tool use. Experience building AI/ML systems at
scale, ideally in a SaaS, B2B or data-heavy product environment.
Deep understanding of clustering, anomaly detection and other core
Machine Learning algorithms Expertise with AI frameworks:
Production level experience, and familiarity with AI frameworks
such as LangChain, LangFuse, Guardrails, Haystack, or similar.
Domain Knowledge: Strong understanding of the challenges and data
unique to fraud detection, AML, IDV, or Device Intelligence is
highly desirable. Cloud expertise : Preferably AWS cloud.
Problem-Solving: Proven track record of tackling highly ambiguous
and complex research problems and delivering practical, high-impact
solutions. System Design Strength : Ability to define architecture
that balances latency, scale, experimentation, and cost — with a
deep understanding of distributed systems. Mentoring and
communication: Ability to clearly communicate and explain research
results in written and spoken words. Proven track record of
successful collaboration between software engineering and research
teams to transfer research prototypes into production-ready
features.
Keywords: Quantum Search Partners, Temple , Principal Machine Learning & AI Engineer, Science, Research & Development , Austin, Texas