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Gen AI QA :: SFO, CA

Jobs via Dice San Francisco, California, United States

hybridfull-time
Posted Jan 31, 2026Apply by Mar 2, 2026

Role & seniority: Gen AI QA Architect (senior-level; hands-on architect/lead for AI-driven quality solutions)

Location & work type: San Francisco, CA — hybrid onsite; full-time

Stack/tools

  • AI/ML: LLMs, Agentic AI (orchestration, autonomous agents, RAG, prompt engineering), vector DBs

  • Data/ML: PyTorch, TensorFlow, Keras; Databricks; ML/DL tooling

  • Data/DBs: Relational SQL, NoSQL databases

  • Data/ETL/Big data: Hadoop, Spark, Kafka

  • Languages: Python, Java, C++, Scala

  • Cloud & ops: Azure, AWS; CI/CD; MLOps; APIs/API Graph; distributed systems

  • QA/SDLC: test automation, CI, code reviews, defect root-cause analysis; design documentation

Top 3 responsibilities

  1. Architect, build, maintain end-to-end SDLC AI agents; design/implement automated testing, performance testing, A/B testing solutions

  2. Integrate AI-driven quality checks into CI/CD with DevOps/SRE; develop agents for code reviews, security scans, performance optimization; monitor production for anomalies and self-healing

  3. Lead pilots/POCs, evaluate AI/ML tools, establish scalable MLOps practices; mentor teams on Gen AI adoption and quality improvements

Must-have skills

  • 10 years software engineering; 3+ years applying AI/ML/GenAI to workflows

  • Deep understanding of LLM/Agentic AI concepts, prompt engineering, vector DBs, RAG

  • Experience with SQL/NoSQL, Hadoop/Spark/Kafka, Python/Scala/Java/C++

  • Cloud experience (Azure/AWS), Databricks; DL frameworks (PyTorch, Tenso

Full Description

Dice is the leading career destination for tech experts at every stage of their careers. Our client, Enexus Global, is seeking the following. Apply via Dice today!

Role: Gen AI QA

location: San Francisco, CA (hybrid onsite)

Architect, build, maintain, and improve end-to-end SDLC AI Agents

Implement end-to-end solutions for automated testing, performance testing and A/B testing

Collaborate with Product,PMO, Engineering, and DevOps on planning new capabilities

Establish scalable, efficient, automated processes for data analysis, model development, validation, and implementation

Write efficient and well-organized software to ship products in an iterative, continual-release environment

Actively participate in code review and test solutions to ensure it meet best practice specifications

Write efficient and well-organized software in an iterative, continual-release environment

Actively participate in code review and test solutions to ensure it meets best practice specifications.

Contribute to and promote good software engineering practices across the team

Excellent communication skills, with the ability to explain complex technical concepts to technical and non-technical audiences

Responsibilities

Provide hands-on technical expertise, guidance, and mentorship to develop Agentic AI driven quality solutions, across multiple SDLC phases. Design and implement AI agents to autonomously analyze requirements, generate code, generate test scenarios, create/maintain automated test scripts, and identify gaps, risks and potential defects early in the cycle.

Partner with DevOps and SRE teams to integrate AI-driven quality checks into CI/CD pipelines. Develop AI agents for code reviews, security scans, performance optimization and monitor production environments for anomaly detection and self-healing recommendations.

Lead innovation pilots and POCs, evaluating emerging AI/ML tools, and recommend scalable adoption strategies. Establish and maintain MLOps practices for the AI lifecycle (model training, deployment, monitoring, and governance) and automate processes across the engineering pipeline. Coach and mentor technical teams on leveraging Gen AI and Agentic AI for productivity and quality improvements.

We're excited about you if you have

10 years of experience in the Software engineering space

3+ years of proven experience applying AI/ML or GenAI solutions to Develop workflows

Deep understanding of LLM models, Agentic AI concepts (LLM orchestration, autonomous agents, RAG, prompt engineering, vector DBs), and AI/ML toolkits to solve quality engineering challenges

Experience working with a variety of relational SQL and NoSQL databases

Experience working with: Hadoop, Spark, Kafka, Scala, Python, etc.

Knowledge of cloud platforms, Experience with Azure, AWS or equivalent cloud platforms

Hands-on Experience working with Databricks

Experience with deep learning frameworks such as PyTorch, TensorFlow, Keras or similar

Experience with object-oriented/object function scripting languages: Python, Java, C++, Scala, etc.

Industry experiences building and productionizing creative end-to-end Machine Learning systems

Experience with building and operationalizing a feature

Experience working with distributed systems, service-oriented architectures, and designing APIs/ API Graph.

Experience using opensource LLMs

Knowledge of data pipeline and workflow management tools

Expert in standard software engineering methodology, e.g. Functional testing, test automation, continuous integration, defect root cause analysis, code reviews, and design documentation

Excellent communication and interpersonal skills, including the ability to work effectively with technical and non-technical staff

Strong leadership and stakeholder management skills.

multi-location

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