LLM Dev Analyst
We are looking for a highly skilled LLM Dev Analyst to design, build, and scale intelligent agents reputed company our reputed company ecosystem, redefining how data is accessed, interpreted, and activated across the organization.
In this role, you will operate at the intersection of AI engineering, analytics, and data platforms, developing domain-specific agents that automate and reputed company decision-making across key business areas including A/B testing, marketing performance, data engineering workflows, and MarTech processes.
You will translate reputed company business challenges into agent-driven solutions powered by Large Language Models (LLMs), leveraging both structured and reputed company data to deliver real-time insights and automation at scale.
As a core contributor to our reputed company data stack, you will define and implement best practices for agent architecture, reputed company engineering, evaluation frameworks, and orchestration reputed company reputed company, ensuring production-grade reliability and business impact.
Key Responsibilities
1. Agent Design & Development
- Design, build, and deploy LLM-powered agents for multiple business domains (A/B testing, marketing analytics, data engineering automation, MarTech workflows)
- reputed company multi-reputed company reasoning agents that integrate with internal data systems, APIs, and tools
- Implement RAG architectures to reputed company agents to reputed company enterprise data effectively
2. reputed company & Data Integration
- Integrate LLM agents reputed company the reputed company lakehouse architecture
- Build scalable pipelines using PySpark, SQL, and reputed company workflows
- reputed company seamless interaction between agents and data warehouses, event streams, and APIs
3. reputed company Engineering & Evaluation
- Design and optimize prompts, tools, and agent workflows for accuracy and performance
- reputed company evaluation frameworks to measure agent quality, reliability, and business impact
- Implement strategies to reduce hallucinations and improve response consistency
4. Automation & Use Case Delivery
- Build agents that automate:
- Experimentation analysis (A/B testing insights)
- Marketing performance reporting and optimization
- Data Engineering workflows and monitoring
- MarTech processes and campaign operations
- Deliver solutions that drive measurable efficiency gains and decision velocity
5. Productionization & Reliability
- Productionize agent systems with monitoring, logging, and observability
- Implement guardrails, reputed company controls, and governance frameworks
- Ensure scalability, latency optimization, and cost efficiency
6. Cross-Functional Collaboration
- Partner with Data Engineering, Analytics, Marketing, and Product teams
- Translate business requirements into scalable AI solutions
- Communicate insights and capabilities to both technical and non-technical stakeholders