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How wolf packs are structured

1,833,744 次观看 • 1 年前 •via X (Twitter)

10 条评论

66𝕏92 的头像
66𝕏921 年前

Precious reactions when mother wolf returns to pack - Manitoba, Canada

Premium 的头像
Premium1 年前

What will you create with Grok 2? Let your imagination run wild.

Denise Wildfortune 的头像
Denise Wildfortune1 年前

I asked Grok if this video showed a wolf pack divided into sub-groups. "No, wolf packs do not divide themselves into discrete sub-groups as suggested by the video. In the wild, wolf packs are typically family units led by a breeding pair, with their offspring making up the rest of the pack.📷 The image caption from the post, suggesting a specific hierarchical arrangement, is inaccurate. Wolves travel in a line to save energy, with the lead wolf cutting a path through the snow, not indicating any subgroup division.📷"

curious side of 𝕏 的头像
curious side of 𝕏1 年前

Wolves were spotted tunneling through deep snow to keep moving forward

Mario Lefebvre 的头像
Mario Lefebvre1 年前

This has been debunked many times before!

JulianPan 的头像
JulianPan1 年前

Their primary care is concentrated on the pack . Wolf is a really loyal animal and team player .

Dewan Sachal 的头像
Dewan Sachal1 年前

Wolfs are also very loyal. They mate for life

GrandpaAquaman 🚀⚛️☢️🛤️ 的头像
GrandpaAquaman 🚀⚛️☢️🛤️1 年前

That's a long proven lie and it's still circulating over and over. @CommunityNotes needed

shanti 的头像
shanti1 年前

Didn't they disprove this image saying the strongest was in the front because it had to plough through the snow?

RezClayREV3 的头像
RezClayREV31 年前

Not true.

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89,578 次观看 • 1 年前