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The Senior AI Application Engineer will be pivotal in providing world-class post-deployment support for Ema’s Agent Assist/Chatbot product. This role requires a strong blend of technical expertise and customer-focused problem-solving. You will configure, troubleshoot, and optimize AI solutions for our customers, ensuring high performance, continuous improvement of customer workflows, and exceptional customer satisfaction. You will independently manage complex deployments and solutions for enterprise customers with minimal guidance.
Job Responsibility:
Configure and integrate AI/GenAI workflows using platform APIs and customer data, ensuring smooth and secure deployment
Translate customer requirements into technical solutions, validating workflow correctness and continuously refining prompts for optimal performance
Develop and automate tasks using Python & SQL, and build prototypes using open-source Agentic Frameworks to streamline CX workflows
Design, run, and analyze A/A experiments to measure and improve workflow quality and reliability
Monitor AI workflows using business metrics and observability dashboards, quickly responding to issues to ensure high availability
Provide proactive solutions and regular updates to customers, maintaining high CSAT through effective troubleshooting and communication
Diagnose and resolve platform issues related to APIs, data integration, and workflow configurations, collaborating with engineering when needed
Utilize APIs and integration protocols (JSON, REST, SOAP) to configure workflows and integrate with CRM/ATS tools
Write custom scripts to query databases and create reports for in-depth analysis and to demonstrate ROI to customers
Requirements:
4+ years of software engineering experience
Significant experience in AI/LLM application development, including building agents, integrations, workflows, and evaluating/improving their performance
Experience in building LLM-based evaluation frameworks & conducting UATs with real customers
Experience with prompt engineering techniques
Demonstrated the ability to manage complex deployments & solution design for an enterprise customer independently with minimal guidance
Familiarity with key support metrics (FRT, AHT, TAT, CSAT) and reporting
Strong troubleshooting and problem-solving skills, especially in production environments
Excellent communication skills to collaborate effectively with both technical and non-technical stakeholders
Proficiency in Python & SQL scripting
Understanding of Data Structures & Algorithms is a plus
Proficient at invoking platform APIs to retrieve or push data, configure workflows
Familiarity with JSON, REST, SOAP or other integration protocols
Data-driven evaluation skills, including setting up and interpreting A/A experiments
Familiarity with logging, dashboard creation, and alerting tools
Nice to have:
Experience setting up, configuring, and supporting ML Systems or AI Agents is a plus
Familiarity with integrating common CRMs/ATS tools would be a plus