MARKET RESEARCH
Send a weekly HuggingFace movers digest to the ML team by email
Each week it gathers the models in your tracked domains that gained the most downloads, has an LLM rank and summarize the top movers.
How it runs
The automated pipeline, trigger to output.
- TriggerWeekly schedule
- ActionQuery models by tracked tags sorted by weekly download growthHugging Face
- LogicRank and keep top movers above a minimum delta
- ActionWrite a ranked digest with summaries and introOpenAI
- OutputEmail the digest to the ML distribution listGmail
What it does
Produces a once-a-week email roundup of the models that gained the most adoption in your watched domains over the past seven days. Instead of per-model pings, the team gets a single ranked digest: the top movers, what each is for, how fast it's climbing, and a link, written in clean prose by an LLM.
When to use it
Use it when real-time alerts would be too noisy but the team still wants a reliable cadence for staying current. Ideal as a Monday-morning read that keeps everyone aligned on what's gaining traction in your field.
How it works
- 1A weekly schedule fires the run.
- 2HuggingFace is queried for models in your tracked tags, sorted by download growth over the trailing week.
- 3A logic step ranks the results and keeps the top movers above a minimum download delta.
- 4OpenAI writes a digest: a ranked list with one-line summaries plus a short intro framing the week's theme.
- 5The formatted digest is emailed to your ML team distribution list via Gmail.
Set it up
What you configure once, before turning it on.
- 1Connect Hugging FaceModels, datasets, spaces — the open-source hub.
- 2Connect OpenAIModels, embeddings, files.
- 3Connect GmailRead, draft, send, label.
- 4Set each agent's modelWe leave models unset so you pick the tier — fast + cheap, or top-quality.
- 5Tune it to your dataEdit the prompts, filters, and field mappings so it matches how your team works.
- 6Test, then turn it onRun once against a sample, confirm the output, then enable the trigger.
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Run it inside a business
This workflow drops into a full company template. Import the org, and this is one of the playbooks its agents run.

Run this workflow in your colony.
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