As an acquisitions editor at O’Reilly, I spend appreciable time monitoring our authors’ digital footprints. Their social media posts, talking engagements, and on-line thought management don’t simply mirror experience—they instantly influence guide gross sales and reveal promotional methods price replicating. Not surprisingly, a few of our best-selling authors are social media professionals whose posting output is staggering. Maintaining with a number of superposters throughout platforms shortly turns into unsustainable.
I lately constructed an AI resolution to handle this problem. Utilizing Relay.app, I created a easy workflow to scrape LinkedIn posts from one writer (let’s name her Bridget), analyze them with ChatGPT, and ship me weekly e mail summaries about her posts and which acquired probably the most consideration. The principle aim was to comply with what she mentioned about her guide, adopted by thought management in her area. The setup took 5 minutes and labored instantly. No extra periodically reviewing her profile or worrying about lacking vital posts.
However by the second abstract, some limitations grew to become obvious. Sorted by likes and impressions with generic summaries, each LinkedIn publish was receiving the identical remedy. I had solved the data overload downside however now wanted a option to extract strategic perception.
To repair this, I labored with Claude to show the immediate into one thing nearer to an agent with primary decision-making authority. I gave it particular targets and choice standards geared toward shedding gentle on promotional patterns that aren’t all the time straightforward to comply with, not to mention analyze, in a flurry of posts: autonomously choose 10–15 precedence posts per week, prioritizing direct guide mentions; evaluate present efficiency towards historic baselines; flag uncommon engagement patterns (each constructive and destructive); and robotically modify evaluation depth based mostly on how posts are performing.
The brand new report now gives deeper evaluation targeted totally on posts mentioning the guide, not simply any widespread publish, together with strategic suggestions to enhance publish efficiency as an alternative of “this had probably the most likes.” Suggestions are sorted into short-term and long-term promotion concepts, and it has even proposed testing novel methods equivalent to posting quick video clips associated to guide chapters or incentive-driven posts.
The report isn’t good. The historic evaluation isn’t fairly proper but, and I’m engaged on producing visualizations. On the very least, it’s saving me time by automating the supply and evaluation of knowledge I might in any other case should get manually (and presumably overlook), and it’s starting to supply a place to begin for understanding what has labored in Bridget’s promotional program. Over time, with additional work, these insights may very well be shared with the writer to plan promotional campaigns for brand new books, or included into bigger comparisons of promotional methods between authors.
Whereas engaged on this, I’ve requested myself: Is that this an AI-enhanced automated workflow? An agent? An agentic workflow? Does it matter?
For my functions, I don’t suppose it does. Generally you want easy automation to seize info you would possibly miss. Generally you want extra goal-directed, versatile evaluation that ends in deeper perception and strategic suggestions. Extra of a useful assistant working behind the scenes week after week in your behalf. However getting caught up in definitions and labels generally is a distraction. As AI instruments turn out to be extra accessible to everybody within the office, a extra helpful focus is present in constructing options that handle your particular issues utilizing these new instruments—no matter you would possibly name them.
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