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  3. /We built an AI that spots problems in your product data
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  2. /Story
  3. /We built an AI that spots problems in your product data
Nov 24, 2025 at 10:25 AM EST

We built an AI that spots problems in your product data

aarushyadav
1 points
1 comments

Mood

informative

Sentiment

positive

Category

startup_launch

Key topics

Ai

Product_data

Data_quality

Discussion Activity

Light discussion

First comment

N/A

Peak period

2

Hour 1

Avg / period

2

Comment distribution2 data points
Loading chart...

Based on 2 loaded comments

Key moments

  1. 01Story posted

    Nov 24, 2025 at 10:25 AM EST

    11h ago

    Step 01
  2. 02First comment

    Nov 24, 2025 at 10:25 AM EST

    0s after posting

    Step 02
  3. 03Peak activity

    2 comments in Hour 1

    Hottest window of the conversation

    Step 03
  4. 04Latest activity

    Nov 24, 2025 at 10:40 AM EST

    11h ago

    Step 04

Generating AI Summary...

Analyzing up to 500 comments to identify key contributors and discussion patterns

Discussion (1 comments)
Showing 2 comments
HughParry
11h ago
Please don't capture my cursor on your homepage, and if you have to, please don't apply smoothing to is so that it doesn't go where I want it to! I appreciate that it's pretty, but making your site annoying to use can only increase churn
aarushyadav
11h ago
I built a tool called Counsel that connects to your product and revenue stack (PostHog, Stripe, GA4, GitHub, Linear, Gmail, Slack, Notion, etc.) and runs a continuous analysis loop to surface insights, anomalies, missed opportunities, and suggested actions.

The goal is simple: founders often have the data but not the time to dig through it. Counsel tries to close that gap by running a weekly insight cycle. It generates hypotheses, tests them across your data sources, and produces a ranked list of findings. Examples: checkout friction, retention patterns, activation dropoffs, failed onboarding paths, pricing bottlenecks, unhandled error clusters, correlation between support volume and feature releases.

Right now we are running a private pilot with a few early stage B2C SaaS teams. They keep telling us the value comes from the insights they were not expecting. Small things they did not know to look for.

We are still early but would love feedback from HN.

If you want to try it, we are opening a small set of new pilot spots. Happy to share the technical details, architecture decisions, or lessons from building multi source agents if that is useful.

Link: https://www.withcounsel.co

Happy to answer any questions.

View full discussion on Hacker News
ID: 46035089Type: storyLast synced: 11/24/2025, 3:26:07 PM

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