How about Wuhan Qianfeng Python?
How is Wuhan Qianfeng Python
I have been coming to Qianfeng for a while. Today I write this article just to answer the question "Qianfeng python training" How?" question. During these days, I feel that I have gained a lot. Although the foundation is not very solid, I feel that learning is a step-by-step process, coupled with continuous efforts. Only through my own continuous efforts can I achieve my ideal goal. Next, let’s talk about my own experience!
As the saying goes, “Tall buildings rise from the ground.” If you want to build a towering building, you must first lay a good foundation. I think learning python is exactly such a process, and the first stage of Qianfeng python training course is exactly the basis for us to learn the entire Python, "the master leads the door, and the practice is personal."
The first stage provides us with a learning platform and a learning method that suits us. After that, we need our own continuous efforts and continuous summary of experience to carry out independent learning and self-improvement process. .
There is a saying that goes well, "Efforts may not necessarily succeed, but giving up will definitely lead to failure." I feel that only through unremitting efforts and persistence can we surpass ourselves and sublimate ourselves; even if the results are not It’s not that beautiful, but at least I tried hard, so that even if I failed, I wouldn’t leave any regrets.
I used to see people using code to implement some small functions, and I felt very high-level and envious. Now that I have finally come into contact with the first step of programming, I feel a little excited. At the same time, I have gone through this stage of learning. , I learned many functions that seemed complicated before, such as ticket vending machines and bank withdrawals.
In fact, these can all be realized through programming, and more importantly, many problems that were difficult to solve in mathematical algorithms in the past can all be realized in Python, so I feel satisfied with my sense of accomplishment. Full!
I think that when I first came into contact with Python, I was a newbie who knew nothing about it. Even the extremely basic "Hello world" seemed to me to be very advanced. Through studying at Qianfeng python training, it can be said that I have learned a lot of valuable knowledge. At the same time, I will continue to persevere and constantly surpass myself!
Also, what I want to tell you is that if If you are really eager to change careers or improve, if your finances allow, you can consult some training institutions, such as Qianfeng! Of course, this is just my suggestion! Self-study is extremely boring and tests a person's self-discipline. Be patient! It’s easy to give up when you encounter difficulties. I was self-taught before, and only I can fully understand what I have experienced!
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