Datasets

/

Electric scooters social media dataset

Electric scooters social media dataset

87,765 social media mentions about Electric scooters across 8 social networks.

8 social networks

2022 - 2026

Updated monthly

Mentions

87,765

Views

181.0M

Engagement

7.5M

Sample data

[ { "platform": "[redacted]", "type": "content", "content_type": "video", "id": "7620702316471258386", "url": "[redacted]", "title": null, "text": "Unboxing the Segway Ninebot GT3 Electric Scooter #segway #segwayninebot #escooter ", "text_snippet": null, "timestamp": "2026-03-24T06:46:10Z", "lang": "en", "hashtags": [ "segway", "segwayninebot", "escooter" ], "author": { "id": "6700734535816037382", "username": "insertrichie", "display_name": "Insert Richie" }, "engagement": { "like_count": 89100, "comment_count": 865, "share_count": 4771, "bookmark_count": 7661, "play_count": 1900000 }, "media": [ { "type": "video", "url": "[redacted]" } ], "metadata": null }, { "platform": "[redacted]", "type": "content", "content_type": "video", "id": "7620849767999982870", "url": "[redacted]", "title": null, "text": "A fleeing suspect lost control and tumbled from an illegal e-scooter after trying and failing to outrun a police officer on a bicycle. Graham McCarthy was later plead guilty to dangerous driving, driving without insurance and driving without a licence, criminal damage. He also pleaded guilty to possessing Class B drugs with intent to supply. He's now been jailed for 75 weeks and disqualified from driving for 19 months. #police #escooter #crime", "text_snippet": null, "timestamp": "2026-03-24T15:49:24Z", "lang": "en", "hashtags": [ "police", "escooter", "crime" ], "author": { "id": "6646858005663072262", "username": "itvnews", "display_name": "ITV News", "verified": true }, "engagement": { "like_count": 6776, "comment_count": 187, "share_count": 988, "bookmark_count": 383, "play_count": 252600 }, "media": [ { "type": "video", "url": "[redacted]" } ], "metadata": null }, { "platform": "[redacted]", "type": "content", "content_type": "image", "id": "t3_1s3gosp", "url": "[redacted]", "title": "Imma be upfront, where do African Americans hang out in Denver?", "text": "As the title says, Hello. I am a 33M POC that moved here 7 months ago. I live at CoLab of Colfax Ave, I own a e scooter and I love RTD. I love public transit. I love this city and the freedom I feel having the freedom to smoke weed without the fear of going to jail is life changing; coming from someone who lived in Texas for +30 years. However, I feel extremely isolated and Im reaching out to find any of my people who wants to hang out? I WFM permanently for a bank, therefore I rarely leave the ", "text_snippet": null, "timestamp": "2026-03-25T17:07:23.432000Z", "lang": "en", "hashtags": null, "author": { "id": "t2_3zfhew01", "username": "iminlovewithyoucamp" }, "engagement": { "like_count": 1049, "comment_count": 371 }, "media": [ { "type": "image", "url": "[redacted]" } ], "metadata": { "flair": "Moving/Relocation", "flair_url": null, "award_count": 0, "is_archived": false, "is_locked": false } } ]

About this dataset

This dataset captures 87,765 social media mentions about Electric scooters across 8 social networks.

Data is collected using Datashake's data collection infrastructure covering Reddit, YouTube, TikTok, Instagram, Facebook, X, Bluesky, and LinkedIn.

Boolean query used

"electric scooter" OR "e-scooter" OR "#escooter"

This dataset is generated by running the above query across social networks. All matching posts and their comments are included.

Data fields included

platform

string

url

string

type

string

content_type

string

id

string

text

string

timestamp

ISO 8601

lang

string

hashtags

array

author

object

mentions

array

engagement

object

media

object

metadata

object

title

string

text_snippet

string

$84

Based on 87,765 mentions at $0.00096/mention

Buy dataset

Delivered via JSON/CSV

Mentions

87,765

Views

181.0M

Engagement

7.5M

Social networks

8

Date range

2022 - 2026

Format

JSON / CSV

Want your own dataset?

Tell us the topic, keywords, and timeframe. We'll build a custom dataset from 8+ social media networks.

Get in touch →