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OMG Technology logo
OMG Technology

Location: Remote Candidate rate: Open market rate Docs required: ID proof will be required. Location: New Jersey, New Jersey (Remote) Employment Type: Contractor Minimum Experience: Experienced

Supply Chain Functional AI Lead

AI EngineerMachine Learning EngineerOtherRemoteTeam 11-50

Location

United States

Posted

109 days ago

Salary

0

Job Description

Supply Chain Functional AI Lead

OMG Technology

Supply Chain Functional AI Lead (Remote – EST) We are looking to hire a candidate with the skills sets mentioned and experience for one of our clients within the pharmaceutical Industry. This is a 6+ month contracting role, with potential for extension. This is a Remote role, with a preference for candidates in the EST zone to facilitate coordination with teams across EST, PST, and EU time zones. Role Summary: You are the AI forward-deployed engineer embedded with Supply Chain leadership - identifying, validating, building, and shipping AI capabilities that improve day-to-day operations. You translate operational problems into deployable solutions using our stack (AWS, Dataiku, Databricks, OpenAI) and partner closely with planners and supply chain leaders to drive measurable impact and ChatGPT adoption in daily workflows. A core requirement is balancing near-term value delivery with longer-term platform readiness. While the business pushes for quick wins, enterprise data and AI infrastructure will continue maturing in parallel (for example: reusable AI patterns, agent frameworks, MCP server patterns, A2A approaches, governance, and scalable integrations). You create a practical vision and execution path that connects quick wins to durable capabilities. Key Responsibilities: - Opportunity discovery & prioritization: Run process discovery with supply chain teams (planning, scheduling, inventory, procurement, logistics) to map and size AI opportunities; build a sequenced backlog tied to measurable outcomes. - Hands-on POCs to MVPs: Rapidly build POCs and evolve the best into MVPs using AWS + Databricks + Dataiku + OpenAI, integrating with enterprise data sources and real workflows. - Roadmap ownership: Produce and maintain a capability roadmap (90 days/6 months/12 months) with dependencies, data readiness needs, and adoption/change requirements. - Kinaxis-enabled use cases: Design solutions that complement and enhance Kinaxis workflows (exception management, scenario narratives, decision support, insight generation, planning explainability). - Balance quick wins vs foundations: Deliver short cycle wins that work today while shaping requirements for scalable infrastructure as IT builds out data/AI foundations (reusable components, standard integration patterns, agent orchestration approaches, monitoring/evaluation patterns). - Vision and transition plan: Define a north-star vision and pragmatic transition plan bridging today's constraints to the medium/long-term target state (platform, governance, integration patterns, reusable AI assets). - Production-minded engineering: Define architecture, evaluation metrics, guardrails, monitoring, and last-mile integration patterns; partner with platform/data teams while remaining personally hands-on. - Drive ChatGPT adoption: Build role-based prompt libraries, playbooks, templates, and enablement sessions; measure adoption and iterate based on usage and impact. - Stay current and apply responsibly: Maintain working knowledge of the rapidly evolving AI landscape (GenAI, agents, evaluation, toolchains) and translate relevant advances into practical solutions aligned to enterprise guardrails. Required Skills/Qualifications: - 8+ years of experience across supply chain analytics, digital transformation, and/or applied AI (or equivalent delivery depth). - Primary stack: AWS, Dataiku, Databricks, OpenAI, and Kinaxis in Supply Chain. - Strong hands-on build capability: Python/SQL, data modeling, rapid prototyping, and turning prototypes into usable tools. - Practical experience applying GenAI/LLMs (prompting, RAG, evaluation, guardrails, agentic workflows) to real business processes. - Experience with AWS, and at least one of Databricks or Dataiku used in delivery. - Kinaxis (RapidResponse) experience and/or supply planning integrations. - Experience with MLOps, model monitoring, and enterprise risk/controls for AI. - A clear, socialized AI opportunity map and prioritized backlog for Supply Chain. - ChatGPT adoption in supply chain routines. - Credible supply chain domain knowledge (planning, S&OP/IBP concepts, scheduling, inventory, procurement, logistics). - Proven ability to operate as a business-facing IC: ambiguity tolerance, strong writing, and demo-driven delivery. - Demonstrated ability to balance immediate impact with long-term scalability in environments where platform capabilities are evolving. - Familiarity with regulated operations and documentation controls. Other Job Details: - Job Type: C2C or W2. - Duration: 6 – 12 months with high possibility of extension. - Location: Remote (preferred candidates in the EST zone to facilitate coordination with teams across EST, PST, and EU time zones). - Pay Rate: $78/hr. on C2C. or $68/hr. on W2. - Interviews: Video interviews. - Docs required: ID proof will be required. Location REMOTE, New Jersey (Remote) Employment Type Contractor Minimum Experience Experienced

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