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AI Project Manager

Job Title: AI Project Manager

Location: Cleveland, Ohio (Onsite)

About the Role

We are seeking a highly motivated and detail-oriented AI Project Manager to lead and coordinate innovative artificial intelligence initiatives. This role offers the opportunity to work at the intersection of technology and business, driving impactful AI solutions from concept through execution.

You will collaborate with cross-functional teams, including engineering, data science, product, and stakeholders, to ensure successful delivery of AI-driven projects aligned with business goals.

Key Responsibilities

  • Lead end-to-end execution of AI and machine learning projects
  • Collaborate with data scientists, engineers, and business teams to define project scope and objectives
  • Develop project plans, timelines, and resource allocation strategies
  • Track progress, manage risks, and ensure timely delivery of milestones
  • Translate business requirements into actionable technical tasks
  • Facilitate communication between technical and non-technical stakeholders
  • Monitor project performance and provide regular updates to leadership
  • Ensure adherence to best practices in AI project lifecycle and governance

Required Skills & Qualifications

  • Strong understanding of AI/ML concepts and their real-world applications
  • Ability to manage multiple projects in a fast-paced environment
  • Excellent communication and stakeholder management skills
  • Experience working with cross-functional and technical teams
  • Familiarity with Agile, Scrum, or similar project management methodologies
  • Strong problem-solving and organizational skills
  • Ability to translate complex technical concepts into business-friendly language

Preferred Skills (Nice to Have)

  • Exposure to tools such as Python, SQL, or data visualization platforms
  • Experience with AI/ML frameworks or cloud platforms (AWS, Azure, or GCP)
  • Understanding of data pipelines, model lifecycle, or MLOps practices