Robots & Pencils
AI

AI Engineer (AI System Calibration Optimization)

Robots & Pencils · Seattle, WA

Actively hiring Posted 7 months ago

Robots & Pencils is seeking an outcome-oriented AI Engineer to partner with a strategic client on a high-impact AI system calibration and optimization engagement. You'll embed directly with the client's AI and product engineering teams to improve the accuracy, reliability, and transparency of their Azure-hosted, fine-tuned GPT model through systematic prompt optimization and RAG calibration.

As an AI Engineer, you'll serve as technical thought partner, actively coding and leveraging your software engineering experience to build calibration pipelines, optimize prompts using prompt optimization frameworks, and establish repeatable improvement workflows. You'll work on-site with the client, driving measurable outcomes that maximize their AI system performance.

Key Responsibilities
*Client Engagement & Solution Development
*

  • Embed with strategic client as their technical partner for AI system calibration and prompt optimization.
  • Build production-grade calibration systems using Python within the client's Azure environment.
  • Implement DSPy framework and GEPA optimizer to systematically improve prompt quality and retrieval performance.
  • Design and develop Golden Dataset curation workflows using Azure Data Labeling, establishing gold/silver data tier schemas.
  • Create evaluation frameworks to measure model accuracy, precision/recall, latency, and hallucination rates.
  • Architect prompt optimization pipelines for retrieval, context synthesis, and answer generation tailored to client needs.
  • Own the path to production - evaluation pipelines, Azure ML workflows, KPI dashboards, and optimization automation.
  • Iterate rapidly based on client feedback and KPI results, translate business goals into technical calibration improvements.

Outcome Ownership & Business Impact

  • Own end-to-end delivery of calibration systems from initial baseline to production-ready optimization workflows.
  • Establish measurable KPIs and demonstrate accuracy improvements, latency reduction, and hallucination mitigation.
  • Provide strategic guidance on RAG architecture improvements and retrieval parameter optimization.
  • Accelerate client time-to-value through hands-on development and comprehensive knowledge transfer.
  • Deliver operational playbooks and documentation enabling the client team to maintain calibration systems independently.

Engineering Leadership & In-Field Delivery Excellence

  • Lead complex, multi-stakeholder calibration initiatives on-site and remotely; drive clarity, remove blockers, and keep execution on track.
  • Set coding standards and architectural patterns for calibration components; write clear docs, runbooks, and technical specifications.
  • Mentor client engineers through code reviews, pairing sessions, and technical workshops on DSPy, GEPA, and evaluation best practices.
  • Make sound tradeoffs under real-world constraints - Azure cost optimization, data quality, performance requirements, and security.
  • Align delivery with Robots & Pencils' responsible AI practices and client governance requirements.

Cross-Functional Collaboration

  • Work closely with client's AI SMEs and product engineering teams to understand product catalog structure and validation workflows.
  • Collaborate with internal R&P product, engineering, and delivery teams on calibration methodology and best practices.
  • Share insights from client engagement to improve R&P's prompt optimization frameworks and tooling.
  • Contribute reusable patterns, evaluation frameworks, and documentation back to R&P's core platform.
  • Collaborate across time zones with distributed teams.

Required Skills & Qualifications

  • Bachelor's degree in computer science, Engineering, or equivalent experience.
  • 7+ years of professional software development with significant ownership of architecture and delivery.
  • 3+ years of Python in ML/AI systems with a strong focus on data processing and evaluation pipelines.
  • 2+ years building with Generative AI including hands-on prompt engineering and optimization work.
  • Experience with prompt optimization frameworks - DSPy strongly preferred, or similar systematic approaches to prompt improvement.
  • Deep understanding of RAG architectures - retrieval quality, latency/cost tuning, hallucination mitigation, and evaluation methods.
  • Hands-on experience designing evaluation metrics and building assessment frameworks for LLM systems.
  • Knowledge of systematic experimentation methods - A/B testing, parameter tuning, performance benchmarking.
  • Experience with data curation, labeling workflows, and dataset quality management for AI systems.
  • Strong Azure cloud experience with focus on AI/ML services - Azure Machine Learning, Azure AI Search, Azure OpenAI Service.
  • Experience with Azure Data Labeling, Azure Blob Storage, and Azure infrastructure fundamentals.
  • Understanding vector search platforms and retrieval optimization (Azure AI Search, Weaviate, Qdrant, Pinecone).
  • Strong IaC background (Terraform or ARM templates) plus containerization and distributed systems knowledge.
  • Solid SDLC practices - testing strategies, CI/CD, code reviews, observability, and operational excellence.
  • Upper-intermediate English for client communication.
  • Experience leading complex technical projects with multiple stakeholders.
  • Strong communication skills for technical and executive audiences.
  • Ability to context-switch and adapt to client environments.
  • Willingness to travel to client sites.

Nice to Have

  • Direct hands-on experience with DSPy framework and GEPA optimizer.
  • Understanding systematic optimization principles: evolutionary algorithms, Bayesian optimization, multi-objective optimization, and Pareto efficiency concepts.
  • Familiarity with prompt optimization frameworks and methods - experience with any of: MIPROv2, TextGrad, EvoPrompt, AutoPrompt, or reinforcement learning approaches (GRPO, PPO).
  • Experience with LLM-as-judge patterns and automated evaluation pipelines.
  • Knowledge of advanced RAG patterns - Adaptive RAG, Self-RAG, Corrective RAG - and retrieval evaluation methods (MRR, NDCG, precision@k).
  • Understanding of agentic AI patterns - ReAct, Chain-of-Thought, Tool Use - and their application in RAG systems.
  • Experience building evaluation dashboards with Azure Monitor, Application Insights, or similar observability tools.
  • Familiarity with MLOps practices - model versioning, experiment tracking, metric logging for evaluation systems.
  • Experience with AWS or GCP AI/ML platforms (Bedrock, SageMaker, Vertex AI) and cross-cloud architecture patterns.
  • Experience with product catalog systems, cross-reference matching, or e-commerce search optimization.
  • Background in manufacturing, industrial equipment, or technical specification systems.
  • Prior consulting or professional services experience with enterprise clients.

Personal Competencies

  • Accountability – Owns full client engagement cycle with quality, reliability, and attention to detail.
  • Adaptability – Thrives in dynamic, fast-paced client environments.
  • Collaboration – Builds strong partnerships across teams and time zones.
  • Execution-Focused – Delivers maintainable, scalable solutions without overengineering.
  • Innovation-Minded – Brings curiosity and experimentation to technology decisions.
  • Craftsmanship – Cares deeply about documentation and code quality, architecture, and user experience.

Why Join Robots & Pencils?
We don't just ship features, we build digital-first products that matter. As a Senior Forward Deploy Engineer, you'll join a team that values deep craft, cross-functional collaboration, and relentless focus on quality. You'll work on impactful agentic AI applications using modern technologies, while influencing engineering culture and best practices across the organization.

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Fulltime Remote Ai Ai Engineer Machine Learning Mlops Generative Ai
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