Project Manager

PG ONE
London
11 months ago
Applications closed

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Company description

We are PG ONE.
We are the ideas, production and media for over 30 of the world’s most known and loved brands from the world’s biggest advertiser, P&G (Procter & Gamble). When you see Pampers, Gillette, Head & Shoulders, Fairy, Ariel, Always & Braun to name a few, that’s us.
We are made differently to conventional agencies as we believe in the power of togetherness. Under one roof you’ll find creatives, designers, strategists, account teams, producers, project managers, data scientists, PR & advocacy teams and media talent, all working as one.
And you’ll find a culture of pushing new boundaries to solve the most complex business challenges. We call this culture “Dare to be Different” and we are very proud of it. Because we know you have to keep breaking new ground, without fear, to be successful.

Our Commitment
Diversity and inclusion is a core part of who we are at PGOne. We’re committed to building an inclusive culture that encourages, celebrates and supports our wonderfully diverse employee group – whatever their age, gender identity, race, sexual orientation, physical or mental ability or ethnicity. Diversity and inclusion doesn’t just fuel our creativity and innovation, it brings us closer to our people and audiences. We will continue to strive to create a culture and environment where everyone feels empowered and more importantly comfortable enough to bring their full, authentic selves to work.

Overview
We’re looking for an Integrated Project Manager to lead innovative and creative projects across multiple channels. The ideal candidate will have hands-on experience in managing the full project lifecycle, from planning to delivery, and thrive in a fast-paced, high-pressure environment.

Key Responsibilities:

  • Oversee the delivery of multi-channel global toolkits, ensuring alignment with client processes.
  • Create and communicate detailed project plans, working closely with cross-functional teams.
  • Manage creative workflows, ensuring timely production of print, digital, social, and outdoor campaigns.
  • Provide creative support to enhance project execution and add value to creative reviews.
  • Track budgets, production costs, and work closely with finance teams to manage campaign finances.

Key Requirements:

  • Proven agency experience in managing complex, multi-channel campaigns.
  • Strong communication, organisational, and problem-solving skills.
  • Ability to manage multiple tasks & projects, prioritise effectively, and stay cool under pressure.
  • Familiarity with social, print, digital, and outdoor media, with a solid understanding of TV/Radio production processes.
  • Team player with excellent stakeholder management skills.

If you're passionate about delivering innovative campaigns and thrive in a dynamic, client-focused environment, we'd love to hear from you!

Additional information

PGOnehas fantastic benefits on offer to all of our employees. In addition to the classics, Pension, Life Assurance, Private Medical and Income Protection Plans we also offer:

  • WORK YOUR WORLDopportunity to work anywhere in the world, where there is a Publicis office, for up to 6 weeks a year.
  • REFLECTION DAYS- Two additional days of paid leave to step away from your usual day-to-day work and create time to focus on your well-being and self-care.
  • HELP@HAND BENEFITS 24/7helpline to support you on a personal and professional level. Access to remote GPs, mental health support and CBT. Wellbeing content and lifestyle coaching.
  • FAMILY FRIENDLY POLICIESWe provide 26 weeks of full pay for the following family milestones: Maternity. Adoption, Surrogacy and Shared Parental Leave.
  • HYBRID WORKING, BANK HOLIDAY SWAP & BIRTHDAY DAY OFFYou are entitled to an additional day off for your birthday.
  • AGENCY DISCOUNTS, onsite gym, and discount in our Publicis-Owned Pub – “The Pregnant Man”.

Full details of our benefits will be shared when you join us!

Publicis Groupe operates a hybrid working pattern with full time employees being office-based three days during the working week.

We are supportive of all candidates and are committed to providing a fair assessment process. If you have any circumstances (such as neurodiversity, physical or mental impairments or a medical condition) that may affect your assessment, please inform your Talent Acquisition Partner. We will discuss possible adjustments to ensure fairness. Rest assured, disclosing this information will not impact your treatment in our process.

Please make sure you check out thePublicis Career Pagewhich showcases our Inclusive Benefits and our EAG’s (Employee Action Groups).

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