最美情侣中文字幕电影,在线麻豆精品传媒,在线网站高清黄,久久黄色视频

歡迎光臨散文網(wǎng) 會(huì)員登陸 & 注冊(cè)

ergvdo

2023-08-29 11:18 作者:23rjog3  | 我要投稿

For a lot of higher level courses in Machine Learning and Data Science, you find you need to freshen up on the basics in mathematics - stuff you may have studied before in school or university, but which was taught in another context, or not very intuitively, such that you struggle to relate it to how it’s used in Computer Science. This specialization aims to bridge that gap, getting you up to speed in the underlying mathematics, building an intuitive understanding, and relating it to Machine Learning and Data Science.

In the first course on Linear Algebra we look at what linear algebra is and how it relates to data. Then we look through what vectors and matrices are and how to work with them.

The second course, Multivariate Calculus, builds on this to look at how to optimize fitting functions to get good fits to data. It starts from introductory calculus and then uses the matrices and vectors from the first course to look at data fitting.

The third course, Dimensionality Reduction with Principal Component Analysis, uses the mathematics from the first two courses to compress high-dimensional data. This course is of intermediate difficulty and will require Python and numpy knowledge.

At the end of this specialization you will have gained the prerequisite mathematical knowledge to continue your journey and take more advanced courses in machine learning.

應(yīng)用的學(xué)習(xí)項(xiàng)目

Through the assignments of this specialisation you will use the skills you have learned to produce mini-projects with Python on interactive notebooks, an easy to learn tool which will help you apply the knowledge to real world problems. For example, using linear algebra in order to calculate the page rank of a small simulated internet, applying multivariate calculus in order to train your own neural network, performing a non-linear least squares regression to fit a model to a data set, and using principal component analysis to determine the features of the MNIST digits data set.


ergvdo的評(píng)論 (共 條)

分享到微博請(qǐng)遵守國(guó)家法律
大竹县| 阿拉善右旗| 裕民县| 化州市| 崇文区| 抚宁县| 泸溪县| 平山县| 南和县| 合山市| 沅陵县| 鲁山县| 泾源县| 太和县| 威远县| 都兰县| 苏尼特右旗| 陵川县| 华阴市| 玉树县| 秀山| 永胜县| 旬邑县| 奇台县| 鹤岗市| 明溪县| 泰来县| 浑源县| 乐至县| 集贤县| 科技| 奉贤区| 明溪县| 枣阳市| 镇雄县| 赤峰市| 安岳县| 鲁甸县| 囊谦县| 岑巩县| 灌云县|