MLOps Engineer:: Reading, Pennsylvania, Work from Client location, 5 days a week


Sage IT Inc
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Job Details
Skills
- dataiku
Summary
I have an onsite position for MLOPS Engineer.
Looking for a pure MLOps Engineer with hands-on experience in Dataiku (Sage Mager is plus).
Reading, Pennsylvania, Work from Client location, 5 days a week
Responsibilities Design multi-agent architectures: define agent roles (planner, researcher, retriever, executor, reviewer), toolboxes, handoffs, memory strategy (short/long-term), and supervisor policies for safe collaboration. Build high-quality RAG: implement ingestion, chunking, embeddings, indexing, and retrieval with evaluation (precision/recall, groundedness, hallucination checks), guardrails, and citations. Productionize on AWS: leverage services like Bedrock (Agents/Knowledge Bases/Flows), Lambda, API Gateway, S3, DynamoDB, OpenSearch/Vector DB, Step Functions, and CloudWatch for tracing and alerts. MLOps/LLMOps: automate CI/CD (GitOps), containerization (Docker/Kubernetes), infra-as-code, secrets/IAM, blue green/rollbacks, and data/feature pipelines. Observability & evaluation: instrument telemetry (traces, token/cost, latency), build dashboards (Grafana/CloudWatch), add human-in-the-loop review, A/B testing, and continuous offline/online evals. Operate reliably at scale: implement caching, rate-limit management, queueing, idempotency, and backoff; proactively detect drift and degradation. Collaborate & communicate partner with infra/DevOps/data/architecture teams; document designs, SLIs/SLOs, runbooks; present status and insights to technical and non-technical stakeholders. Qualifications we seek in you! Minimum Qualifications Bachelor's degree in computer science, Data Science, Engineering, or related field-or equivalent experience. Proven experience building agentic systems (single or multi-agent) and RAG pipelines in production. Strong cloud background for AI/ML workloads; familiarity with Bedrock or equivalent LLM platforms. Solid CI/CD and containerization skills (Git, Docker, Kubernetes) and infra-as-code fundamentals. Knowledge of data governance and model accountability throughout the MLOps/LLMOps lifecycle. Excellent communication, collaboration, and problem-solving skills; ability to work independently and within cross-functional teams. Passion for Generative AI and the impact of agent-based solutions across industries. Preferred / Good to Have Experience with AWS Bedrock Agents/Knowledge Bases/Flows, OpenSearch (or other vector databases), Step Functions, Lambda, API Gateway, DynamoDB, S3.
Dataiku platform exposure-govern, approvals, artifacts, MLOps deployment flows; SageMaker for custom model hosting.
Familiarity with agent frameworks (e.g., LangGraph, crewAI, Semantic Kernel, AutoGen) and evaluation frameworks (guardrails, groundedness, hallucination checks). Covered these Dataiku Certifications (nice to have): ML Practitioner, Advanced Designer, MLOps Practitioner.
Thanks
- Dice Id: 10120222
- Position Id: 2026-95883
- Posted 3 days ago
Company Info
Sage IT is a IT services provider of innovative technology-driven solutions, services and resources. At SAGE, we believe that success results from delivering high quality service while being responsible, flexible, and innovative.
SAGE offers comprehensive application development, technology consulting, business processes re-engineering, professional staffing, implementation and support services for companies all over the world. SAGE also offers industry-specific solutions, strategic outsourcing, and integration services through a unique onsite, offsite, offshore delivery model that helps our customers achieve rapid implementation, world-class quality and reduced costs.

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