Project Management Intern

Oeson
Sheffield
1 year ago
Applications closed

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About Oeson:

Oeson is a leading global IT corporation recognized for its expertise in delivering exceptional IT and Ed-tech services. Our specialties include digital marketing, data science, data analytics, business analytics, cybersecurity, data engineering, UI/UX design, web development, and app development. We are committed to innovation, excellence, and empowering talents worldwide.

About the Role:

Oeson is seeking enthusiastic individuals eager to learn about Project Management while engaging with live projects on an international scale. Join us in a flexible work environment, collaborating with a global team across Oceania, Asia, Europe, and the Americas.

Key Responsibilities:

  • Assist in project planning, scheduling, and coordination under the guidance of experienced project managers.
  • Support the tracking of project progress, timelines, and deliverables.
  • Prepare reports and presentations for internal stakeholders.
  • Participate in meetings and document detailed minutes.
  • Help identify and resolve project issues as they arise.
  • Contribute to improving project management processes and documentation.
  • Collaborate with cross-functional teams to ensure alignment on project goals.
  • Perform administrative tasks to support project activities as needed.

Qualifications:

  • Currently enrolled in a Bachelor’s or Master’s program in Business Administration, Project Management, or a related field.
  • Strong organizational skills and attention to detail.
  • Excellent written and verbal communication skills.
  • Proficiency in Microsoft Office Suite (Word, Excel, PowerPoint).
  • Ability to work effectively both independently and as part of a team.
  • Proactive attitude and eagerness to learn.

Preferred Qualifications:

  • Previous internship experience in project management or related fields.
  • Familiarity with project management software (e.g., Microsoft Project, Asana, Trello).
  • Understanding of basic project management concepts (e.g., scope, schedule, budget).

Benefits:

  • Gain practical experience in project management within a supportive and dynamic environment.
  • Learn from experienced professionals through mentorship and guidance.
  • Contribute to impactful projects that drive our company’s success.
  • Competitive compensation or stipend, depending on the internship duration and location.
  • Potential for future career opportunities based on performance and business needs.

Note:

This position is unpaid. Upon application, our team will reach out to provide further details about the application process and joining.


Location: United Kingdom.

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