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Architecture/Design/Development - Application Architect IIIFutran Tech Solutions Pvt. Ltd.United States
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Architecture/Design/Development - Application Architect III

Futran Tech Solutions Pvt. Ltd.
  • US
    United States
  • US
    United States

À propos

ML Ops Engineer
Location: Reading, Pennsylvania, Work from client location, 5 days a week Max bill rate - $ 100/hour 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.
  • United States

Compétences linguistiques

  • English
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