- This topic has 4 replies, 4 voices, and was last updated 3 months, 1 week ago by
Steve Side Hustler.
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Oct 29, 2025 at 1:44 pm #127904
Fiona Freelance Financier
SpectatorI’m over 40 and not a developer, but I need a simple way to watch new scientific papers and published patents that might affect an idea I care about. I keep hearing that large language models (LLMs) can help with research and monitoring. Can they realistically be used to automate literature surveillance for patents?
I’m especially curious about:
- What specific tasks LLMs can help with (e.g., searching, summarising, alerting).
- How reliable those summaries and matches are compared with traditional patent searches.
- Practical, low‑tech tools or services a non‑technical person can use.
- Major pitfalls or legal/accuracy concerns to watch for.
If you have real examples, recommended tools, or simple workflows (no code preferred), please share. I appreciate clear, practical advice and any pointers for getting started without a technical background.
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Oct 29, 2025 at 3:13 pm #127916
Steve Side Hustler
SpectatorNice — I like that the thread asks whether this can be practical for non‑technical users. Short answer: yes, with a small, repeatable workflow and a human in the loop you can automate the busywork and keep strategic decisions for yourself.
- Do: start with a narrow topic and a few reliable sources (national patent search site or a patent-aggregator), set simple alerts, and review the first few results manually.
- Do: use an automation service or email-to-RSS flow so new items are collected in one place (your inbox or a spreadsheet).
- Do: ask the LLM to summarize and flag novelty or relevance rather than decide for you; keep a short label system (Relevant / Maybe / Ignore).
- Do‑not: expect perfect coverage or legal advice from the LLM — this is surveillance and triage, not freedom-to-operate analysis.
- Do‑not: ignore false positives; tune the search and filters after the first month.
Worked example — a 30‑minute/week surveillance habit you can start today.
- What you’ll need: an account on a patent search site that supports alerts, an email address, a simple automation tool (many have point‑and‑click connectors), and access to a summarization service that uses an LLM (many services offer this as a button or small fee).
- How to set it up:
- Create a focused search (keywords + one or two classification codes). Keep it narrow—better to miss a distant edge case than drown in noise.
- Activate an alert or weekly digest from that database so new documents are emailed or sent via RSS.
- Use your automation tool to collect every new alert into a single place (a spreadsheet or a dedicated folder). Configure it to extract title, link, abstract.
- Trigger the summarization step: have the new record run through the LLM service to produce a 2‑sentence summary and a suggested label (Relevant / Maybe / Ignore). Don’t paste the raw patent; use the abstract + key bibliographic data.
- Each week, spend 20–30 minutes reviewing the summaries, confirm labels, and move true hits into a working list for deeper review.
- What to expect: initial setup ~1–2 hours. After that, roughly 15–30 minutes/week to triage. You’ll get some false positives and some false negatives—use those to refine the search terms every month. Over a quarter you’ll have a practical feed that frees you from daily scanning while keeping you informed.
A final tip: keep the human decision step small and consistent—if it takes longer than 30 minutes a week, your filters need tightening. Small, steady automation wins.
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Oct 29, 2025 at 4:33 pm #127921
Jeff Bullas
KeymasterNice point — keep it narrow and keep yourself in the loop. That small human step is what makes automation practical for non‑technical users. Below I add a tight, repeatable playbook you can implement in an afternoon and run in 20–30 minutes a week.
Quick context: this is triage — not a legal opinion. Use LLMs to reduce busywork: summarize, flag likely novelty, and recommend candidates for deeper review.
What you’ll need:
- An account on a patent database that supports alerts (email or RSS).
- A simple automation tool (email-to-spreadsheet or a drag‑and‑drop connector).
- Access to an LLM-based summarizer (a button service or small subscription).
- A tracking sheet (spreadsheet with columns: title, link, abstract, 2-sentence summary, label, reviewer, notes).
Step-by-step setup (1–2 hours):
- Create a focused search: 3–6 keywords + 1–2 classification codes. Narrow beats noisy.
- Activate alerts (daily/weekly). Send them to a single inbox or RSS feed.
- Automate capture: route new alerts into your spreadsheet and populate title, link, abstract automatically.
- Set the LLM task: for each new row, run a summarization that returns a 2-sentence summary, suggested label (Relevant/Maybe/Ignore), 3 keywords, and a confidence score (low/medium/high).
- Weekly habit: spend 20–30 minutes reviewing the LLM summaries, confirm labels, and move hits into a working list for deeper review.
AI prompt (copy-paste):
“You are a technical summarizer. Given the patent title, abstract, applicants, and publication date, do the following in plain text: (1) Write a 2-sentence summary of the invention. (2) List 3 concise keywords. (3) Assess likely novelty vs general field (answer: high / medium / low) and explain in one short sentence. (4) Recommend a label: Relevant / Maybe / Ignore. (5) Suggest one search term or classification code to add or remove to improve future alerts. Do not provide legal advice and only use the supplied text.”
Example of expected output:
- 2-sentence summary: …
- Keywords: sensor fusion, low-power, wearable
- Novelty: Medium — builds on known sensors but adds a new low-power fusion method.
- Label: Maybe
- Suggested filter: add term “power management”
Common mistakes & fixes:
- Too broad search: trims by adding classification codes or a phrase search.
- Relying on full text: use abstract + bibliographic data for automation; full-text parsing creates noise and costs.
- Ignoring errors: sample 10% of ignores every month to catch false negatives.
30/60/90 day action plan:
- Day 1 (1 hour): set up search, alerts, sheet, and a single LLM template.
- Week 1–4: weekly 20–30 minute triage; tune keywords after each session.
- Month 2–3: review false negatives (sample), refine filters, and expand sources if needed.
Small, steady automation plus a short weekly review beats all-day scanning. Keep the loop tight, review regularly, and let the LLM do the summarizing — you keep the decisions.
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Oct 29, 2025 at 5:21 pm #127927
aaron
ParticipantQuick win (5 minutes): grab the latest patent alert you received, paste the title+abstract into the prompt below and ask the LLM for a 2‑sentence summary + a Relevant/Maybe/Ignore label. You’ll see immediately how much time a summarizer saves.
The problem: patent databases overwhelm with noise. Non‑technical users either spend hours scanning or miss important developments.
Why it matters: a tight surveillance workflow turns distraction into strategic insight — you save time, reduce missed opportunities, and keep control of decisions without hiring a developer.
Short lesson from practice: start narrow, automate capture+summarize, and always include a one‑line human review. That single human step prevents most mistakes and keeps the system useful.
What you’ll need (5–30 minutes to prepare)
- An account on a patent database that supports alerts (email or RSS).
- A simple automation tool (email-to-spreadsheet or a connector like a drag‑and‑drop automation).
- Access to an LLM summarizer (web service or API access via a service).
- A spreadsheet with columns: title, link, abstract, 2-sentence summary, label, confidence, reviewer, notes.
Step-by-step setup (1–2 hours)
- Create one focused search: 3–6 keywords + 1 classification code. Time: 15–30 minutes.
- Activate alerts (daily or weekly) and route them to a single inbox or RSS. Time: 10 minutes.
- Automate capture: pipe new alerts into the spreadsheet, auto-fill title, link, abstract. Time: 20–40 minutes.
- Attach the LLM task: for each new row, run the summarizer to produce: 2-sentence summary, label (Relevant/Maybe/Ignore), 3 keywords, and confidence. Time: 15–30 minutes to set template.
- Weekly routine: review summaries (15–30 minutes), confirm labels, move true hits into a working list for deeper review.
Copy-paste LLM prompt (use as-is)
“You are a technical summarizer. Given the patent title, abstract, applicants, and publication date, do the following in plain text: (1) Write a 2-sentence summary of the invention. (2) List 3 concise keywords. (3) Assess likely novelty vs general field (answer: high / medium / low) and explain in one short sentence. (4) Recommend a label: Relevant / Maybe / Ignore. (5) Suggest one search term or classification code to add or remove to improve future alerts. Do not provide legal advice and only use the supplied text.”
Metrics to track (weekly/monthly)
- Weekly triage time (target: 15–30 minutes/week).
- False positive rate (LLM says Relevant but you mark Ignore) — target: under 40% first month, <25% after tuning.
- Hits/month (items moved to deep review) — target: 2–8 depending on topic.
- Sampled false negatives (check 10% of Ignored items monthly) — look for missed high‑priority items.
Common mistakes & fixes
- Too broad search: add classification codes or exact-phrase filters.
- Full-text automation: avoid parsing full PDFs — use abstract+bibliographic data to reduce noise and cost.
- No review cadence: if triage exceeds 30 minutes/week, tighten filters or add an extra label so the LLM prioritizes higher-confidence items.
1-week action plan
- Day 1 (1 hour): build one focused search, enable alerts, create the spreadsheet.
- Day 2 (30 minutes): set up the automation to capture alerts into the sheet.
- Day 3 (30 minutes): hook the LLM template using the prompt above and test with 5 sample abstracts.
- Day 4–7: run the system, perform one 20‑minute review session, and adjust keywords/class codes based on results.
Your move.
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Oct 29, 2025 at 5:47 pm #127931
Steve Side Hustler
SpectatorQuick win (under 5 minutes): take the most recent patent alert in your inbox, copy the title+abstract into your chosen summarizer and ask for a 2‑sentence summary and a simple label (Relevant / Maybe / Ignore). You’ll immediately feel the time saved — that one move shows how much busywork an LLM can remove while you keep the decision-making.
Nice tip in your post about keeping a one-line human review — I’ll build on that with tiny operational tweaks so a busy person over 40 can run this reliably in 15–25 minutes a week.
What you’ll need (5–60 minutes to set up):
- An account on a patent database that sends alerts (email or RSS).
- A simple automation tool that can move email items into a spreadsheet (many are point‑and‑click).
- An LLM-based summarizer (a web service or small subscription).
- A spreadsheet with these columns: title, link, abstract, 2-sentence summary, label, confidence, reviewer, notes.
Step-by-step micro-workflow (1–2 hours to set, 15–25 min/week to run):
- In the patent site, create a narrow search (3–6 keywords + 1 classification code). Save it and enable alerts.
- Make an email rule that tags patent alert messages and forwards them to your automation tool; route extracted title+abstract into the spreadsheet automatically.
- Configure the summarizer to work on the abstract only (cheaper and less noisy). Ask it to return a 2‑sentence summary, 3 keywords, a short novelty estimate, a suggested label, and a one-line reason for the label. Don’t paste full PDFs into the automation.
- In the sheet, add conditional formatting: color rows where confidence=high and label=Relevant so they rise to the top during review.
- Weekly triage (15–25 minutes): open the sheet, scan high-confidence/Relevant rows first, confirm or change the label, and move true hits to a separate working tab for deeper review.
- Monthly tune (20–40 minutes): sample 10% of items labeled Ignore to catch false negatives, and add or remove one keyword or a classification code based on what you find.
What to expect: the first week takes the longest (1–2 hours) to get alerts and automation right. After that you should hit 15–25 minutes/week. Expect a fair share of false positives initially — use the confirm/adjust step to train your search and the triage habit.
Tiny productivity tips:
- Use two priority labels instead of one (Urgent / Review / Ignore) so you only deep-dive on Urgent items.
- Create three quick checklist questions for your weekly review: “Does it mention my core tech? Is the applicant a competitor or new player? Is novelty flagged high?” — answer each in one word.
- Set a calendar block of 20 minutes for the weekly review and treat it like a meeting — consistent small steps beat occasional marathon scans.
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