Don't Know Much

这首由Linda Ronstadt与Aaron Neville演绎的《Don't Know Much》获得了第32届格莱美最佳二重唱奖。歌词讲述了即便不了解世界万千,但深知自己深爱对方的情感。歌手们深情款款的演唱打动了无数听众。

摘要生成于 C知道 ,由 DeepSeek-R1 满血版支持, 前往体验 >


[hjp3]hjptype=song&player=5&file=http://bbs.lintongjy.com/UploadFile/2006-5/20065319414316502.mp3&backColor=8BE432&frontColor=ffffff&autoStart=false&showDownload=true&width=500&height=20[/hjp3]

“总是有这样的歌手,当我们第一次与他们的歌声邂逅时,就备感亲切,仿佛相识已久。他们用心灵精致诠释的歌曲及其焕发出的光影,瞬间就能吸引住我们…而Linda Ronstadt 与Aaron Neville就属于这样的歌手。正在播放的这首获得32届格莱美最佳二重唱奖的单曲----《Don''t Know Much》就是由他们演绎的。相信他们柔情万般、磁性撩人曼妙的歌声定能打动你。”

《Don't Know Much》
--Linda Ronstadt & Aaron Neville

Look at this face
I know the years are showing
Look at this life
I still don't know where it's going
细看这张脸
留下了岁月的痕迹
综观人生
我仍不知道它的去向
I don't know much but I know I love you
And that may be all I need to know
无须知道太多但我知道我爱你
可能那就是我所须知道的一切
Look at these eyes they never seen what matters.
Look at these dreams so beaten and so battered., hoo...ooh...
看这些眼睛他们总是在茫然寻觅
看这些梦又如此支离破碎
I don't know much but I know I love you
And that may be all I need to know
无须知道太多但我知道我爱你
可能那就是我所须知道的一切
So many questions still left unanswered
So much I've never broken through
如此多的问题仍然没有答案
这么多我从没解决的问题
And when I feel you near me ,Sometimes I see so clearly
The only truth I've ever known is me and you
当我感到你在身边,有时我清楚地知道
我所知道的唯一事实就是你和我
Look at this manm so blessed with inspiration
Look at this soul still searching for savation
看看这个男人领受着神灵的保佑
看看他的灵魂仍盼望有所皈依
I don't know much but I know I love you
And that may be all I need to know
无须知道太多但我知道我爱你
可能那就是我所须知道的一切
I don't know muchbut I know I love you
That may be all I need to know
无须知道太多但我知道我爱你
可能那就是我所须知道的一切
I don't know much but I know I love you
That may be all there is to know
Whoa... oh... oh... oh... ah...
无须知道太多但我知道我爱你
可能那就是我所需要知道的
噢……

欢迎您加入 程序员音乐空间分享音乐。
内容概要:本文详细介绍了深度学习的基本概念和技术要点,涵盖了从基础知识到高级模型的多个方面。首先,文中强调了激活函数与权重初始化的最佳实践,如ReLU搭配He初始化,Sigmoid或Tanh搭配Xavier初始化。接着,文章系统地讲解了深度学习所需的数学基础(线性代数、微积分、概率统计)、编程技能(Python、PyTorch/TensorFlow)以及机器学习基础(监督学习、无监督学习、常见算法)。此外,还深入探讨了神经网络的核心组件,包括前向传播、反向传播、激活函数、优化算法、正则化方法等,并特别介绍了卷积神经网络(CNN)、循环神经网络(RNN)、长短期记忆网络(LSTM)、注意力机制(Attention)、Transformer架构及其衍生模型(BERT、GPT)。最后,文章讨论了大模型训练、分布式训练、模型压缩、Prompt Engineering、文本生成、多模态学习等前沿话题,并提供了学习资源推荐。 适合人群:对深度学习有一定兴趣并希望深入了解其原理的研究人员、工程师或学生,尤其是那些具备一定编程基础和数学知识的人群。 使用场景及目标:①帮助读者理解深度学习中的关键概念和技术细节;②指导读者如何选择合适的激活函数和权重初始化方法;③为读者提供构建和优化神经网络模型的实际操作指南;④介绍最新的研究进展和发展趋势,拓宽读者视野。 其他说明:建议读者在学习过程中结合实际案例进行练习,积极尝试文中提到的各种技术和工具,同时关注领域内的最新研究成果,以便更好地掌握深度学习的应用技巧。
Do you like solving technical problems? Are you good at science and math? You might consider it becoming an engineer. Engineers are problem solvers who apply the theories and principles of science and mathematics to research and develop economical solutions to technical problems. Their work is the link between perceived social needs and commercial applications. However, it's always good to let students know what's ahead and help them understand how their choices may impact their life. Here we are providing the pros and cons of an engineering degree. Prose of an engineering degree. Engineering degrees usually dominate the best college degrees lists. It's a bit easier to get a job with an engineering degree than with a humanity's degree. Engineering jobs pay well and are more stable than most other careers. Also, there is a wide variety of job opportunities. If you like solving problems, then the right engineering job will keep you busily happy. You would finally know how things work in real life. You would finally learn the science or engineering behind all machines. You can design and implement your own creation. Engineers often escalate to management positions and earn excellent money over the life of their careers. If a career in research is interesting, an engineering degree can pave the way to further study. An understanding of high level math gives a greater understanding of the world around you. And application of this to real problems can be very satisfying. Abundant job opportunities worldwide. The world will always get more technically advanced, and will need more engineers. Cons of an engineering degree, the engineering coursework can be quite difficult. If you don't have the aptitude for it, then you might not be able to get through it. More time in school than an associates degree. Also, the cost for college will also be relatively high. Often, engineering students have very little opportunity to take business manufacturing, art or writing courses. The amount of stuff you learn at university is negligible to what you do in industry. In industry, you'll probably solve a problem that has never been encountered before. You need to keep learning new stuff to stay current in your field. The work can be stressful, especially when the equipment or structure has the potential to impact human life. Long work hours, it's hard to maintain a good work life balance in the initial phase of an engineering career, workload can be unpredictable and at times very high competitive atmosphere for promotion. Performance is perceived by superiors, determines one's ability to be promoted. Need to do a lot of hard work during studies and also after studies, until you get settled in a good job. Even after that, you have to continue to work hard to keep up with the latest technology. Studying never stops. Well, don't be scared. It is not that difficult as it looks to keep up with the latest technology. The bottom line is, you have to enjoy it. If you like tinkering with electronics, writing computer programs, designing buildings or taking apart engines, then you might enjoy being an engineer. It's a tough decision to make when you're young, but reach out and try to talk to some real engineers. If you're thinking about a career in engineering, it is much easier now with social media to contact people. Thank you for watching this video, and good luck for your career. 生成思维导图
06-14
评论
添加红包

请填写红包祝福语或标题

红包个数最小为10个

红包金额最低5元

当前余额3.43前往充值 >
需支付:10.00
成就一亿技术人!
领取后你会自动成为博主和红包主的粉丝 规则
hope_wisdom
发出的红包
实付
使用余额支付
点击重新获取
扫码支付
钱包余额 0

抵扣说明:

1.余额是钱包充值的虚拟货币,按照1:1的比例进行支付金额的抵扣。
2.余额无法直接购买下载,可以购买VIP、付费专栏及课程。

余额充值