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Look for we media materials from four aspects to ensure your creative inspiration
2022-07-02 07:54:00 【Xiaoyi We Media】
A good topic selection can improve the overall quality of our article , How can we find some interesting topics in daily life ? We can find creative topics from the following channels , Let's see .
1、 We media peers
When doing we media, we will pay attention to some of our partners , If not , Hurry to pay attention to some , Don't pay attention to those who have fewer fans than you , It's best to pay attention to some fans , For example, there are tens of thousands of fans who insist on updating their accounts , Just look at their daily works , Topics are those , Then you can directly refer to !
2、 Follow the hot search list
After all, the materials we created by ourselves can't match the materials on the list , All kinds of content will be on the list every day , In our spare time, we can see whether the popular information on the list can be used by ourselves , Then combine your own content to create , You can directly use some websites with hotspot aggregation of the whole network , You can see the hotspots of the whole network for free , For example, instant hot list , Recently, Xiaobian has used a lot .
3、 Use the material tool
There are some websites that specialize in we media materials , Whether it's articles or picture materials , There are many special websites with image materials, and the one I use most is PIXabay, In addition, the article is written directly by Yi , There is a self media library , There are many articles on we media platform , A lot .
4、 Q & a platform
It is one of the better ways to find topics , We can find questions according to our own fields on the Q & a platform , In fact, the problem is the topic , We often say that we don't know what to write. It feels like the content has been written , But if someone gives you a new topic, you can write another article , In the same way, when we see new problems, we can completely record what we haven't written , Create next time ! And that is , We can also learn from the answers of many professionals , Looking at others' answers, you can not only learn, but also extract key materials
The above is my sharing , If you have any good ways to find materials , Welcome to share it actively !
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