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Webinar

Think About Your Audience Before Choosing a Webinar Title


Sponsored by devops.com   


 

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You’ve gathered your data, built your machine learning model, linked libraries and code. Now comes the hardest part: Deploying your machine learning model. Pure code deployments have benefited greatly from automated CI/CD pipelines that have made continuous integration and continuous deployment practically seamless. But deploying machine learning models doesn’t yet have that luxury–and deployment remains one of the most painful parts of the entire process. How do we make ML deployments painless? When so many models need lots of libraries and code mixed into a long and unwieldy chain, it can seem impossible to make inference simple–or at least more seamless. In this program, we’ll talk with some top AI/ML experts about how to simplify the process of deploying ML models and serving them to powerful end-user applications.

Key Takeaways:

  • Why is deployment so challenging? Is there a one-size-fits-all deployment solution?
  • Can we emulate what CI/CD does for pure code systems in ML deployments? What would that pipeline look like? 
  • Are organizations better off writing their own deployment engines?
  • Are there any emerging standards in deployment?
Lee Baker
General Secretary - AI Infrastructure Alliance
Lee is the general secretary for the AI Infrastructure Alliance. Based out of the UK, he is responsible for crafting and nurturing relationships with companies to build a canonical stack for AI and ML. He has spent the last 8 years helping launch and grow MLOps startups. When not shuttling his 3 children around, he can most often be found cycling, running and swimming around England's South Coast.
Manasi Vartak
Founder and CEO - Verta
Manasi Vartak is the founder and CEO of Verta, the Menlo Park, Calif.-based provider of the Verta Operational AI platform and Verta Model Catalog. Manasi invented experiment management and tracking while at MIT CSAIL when she created ModelDB, the first open-source model management system deployed at Fortune-500 companies and the progenitor of MLflow. After earning her Ph.D. from MIT, Vartak went on to data science positions at Twitter, where she worked on deep learning for content recommendation, and Google, where she worked on dynamic ad-targeting, before founding Verta. 
Mike Vizard
Chief Content Officer - Techstrong Group
Mike Vizard is a seasoned IT journalist with over 25 years of experience. He also contributed to IT Business Edge, Channel Insider, Baseline and a variety of other IT titles. Previously, Vizard was the editorial director at Ziff-Davis Enterprise as well as editor-in-chief at CRN and InfoWorld.

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What You’ll Learn in This Webinar

You’ve probably written a hundred abstracts in your day, but have you come up with a template that really seems to resonate? Go back through your past webinar inventory and see what events produced the most registrants. Sure – this will vary by topic but what got their attention initially was the description you wrote.

Paint a mental image of the benefits of attending your webinar. Often times this can be summarized in the title of your event. Your prospects may not even make it to the body of the message, so get your point across immediately.  Capture their attention, pique their interest, and push them towards the desired action (i.e. signing up for your event). You have to make them focus and you have to do it fast. Using an active voice and bullet points is great way to do this.

Always add key takeaways. Something like this....In this session, you’ll learn about:

  • You know you’ve cringed at misspellings and improper grammar before, so don’t get caught making the same mistake.
  • Get a second or even third set of eyes to review your work.
  • It reflects on your professionalism even if it has nothing to do with your event.