Preston's Summary

Dan Marx is a journalist who specializes in the printing industry. With a focus on printing technology and trends, he writes for publications such as Printing Impressions, In-plant Impressions, Wide-Format Impressions, and American Printer. His articles cover topics ranging from UV printing solutions to packaging for the cannabis industry, providing insights and information for professionals in the printing and graphic arts field.

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Geo Focus

United States (National)

Coverage Attributes:

Beta
Press Release: 31 %
Event Coverage: 17 %
Industry Specific: 12 %
Cites Data: 10 %
Private Sector Announcements: 8 %

Themes Covered:

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Most Recent Topics:

  • Supply Chain Management (SCM)
  • Trade Shows
  • Apparel Design
  • AI Platforms
  • Corporate Sustainability
  • 3D Printed Products

Pitching Insights

Dan Marx's coverage focuses on the printing industry, particularly in-plant and wide-format printing, as well as vertical markets and product promotions. Given his emphasis on press releases and events, he may be interested in receiving pitches related to new product launches or significant company announcements within the printing industry.

Since Dan often covers specific industry events or provides expert commentary, individuals with firsthand knowledge of advancements in printing technology or insights into market trends could make compelling sources for him. Additionally, given his focus on sales & marketing themes, pitches involving innovative approaches to marketing print products to different vertical markets might resonate well with him.

While Dan does not have a specified geographic focus, it is important to note that his articles appear internationally relevant due to their broad industry-specific nature.

This information evolves through artificial intelligence and human feedback. Improve this profile .

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