Communications & Storytelling Lead, AI-Native Engineering
Location
United Kingdom
Posted
3 days ago
Salary
0
Seniority
Senior
Job Description
Communications & Storytelling Lead, AI-Native Engineering
Pfizer
• Set and lead the storytelling strategy for Pfizer’s AI-native engineering transformation, translating platform capabilities and engineering impact into narratives that resonate across the organization and shape how executive leadership understands the value being created. • Define and lead the strategic approach to high-impact live moments (showcases, demo days, and events) that put builders’ work in front of peers and senior stakeholders • Deliver a regular cadence of flagship storytelling pieces that raise the visibility and credibility of the team’s work and influence executive leadership’s continued confidence and investment. • Establish and lead a systematic communications operating model across the organization, including a shared content calendar, reliable content-sourcing pipelines from engineering teams, and clearly defined roles and responsibilities within the team. • Own the storytelling and communications budget, resourcing a core team supplemented by contract talent to deliver exceptional creative output. • Directly lead, coach, and develop a high-performing storytelling team, complemented by contract and agency talent. Setting clear goals and priorities, managing performance, and building the team’s bench strength and capabilities over time. • Own the creative agency relationship lifecycle. From sourcing and selection through briefing, creative direction, and ongoing performance management to ensure external partner consistently deliver exceptional work. • Apply an audience-first approach to content strategy, tailoring formats, channels, and creative execution to the preferences and needs of each target audience, from individual engineers to the executive leadership team. • Build and leverage strong relationships across engineering and senior leadership to source stories directly from the work, understanding what is being built, for whom, and why it matters. Use that insight to shape strategic communications priorities. • Establish and track success measures focused on builder engagement, community growth, and leadership confidence, and use these insights to inform team strategy and continuous improvement. • Anticipate and manage the organizational change involved in shifting how Pfizer engineers work and are perceived, preparing engineering and business stakeholders across the organization for new ways of working.
Job Requirements
- Bachelor’s degree in Communications, Marketing, or other relevant field with significant relevant experience.
- Proven experience owning brand, communications, or campaign strategy.
- Demonstrated ability to create and ship content that resonates with its intended audience.
- Strong grasp of communications and visual design techniques — including narrative structure, visual storytelling, and design principles — and the ability to apply them across video, deck, podcasts, and live-event formats.
- Proven experience directly managing, coaching, and developing a team, including goal setting, performance management, and contributing to talent and succession planning; experience managing external or contract talent.
- Sufficient technical curiosity and fluency to engage credibly with engineers and translate complex technical work into accessible narratives.
- Experience managing a communications, marketing, creative agencies budget.
- Solid stakeholder Management experience, leading executive partnerships, representing engineering at the highest levels.
Benefits
- Flexibility
- Professional development opportunities
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