[PYTHON] Analysis for Data Scientists: Qiita Self-Article Summary 2020 (Practice)

Analysis for Data Scientists: Qiita Self-Article Summary 2020 https://qiita.com/kaizen_nagoya/items/ff51b03848908d38d7b3

Data is in order of likes. Here, 40 of them were cut out in descending order of Views. Next, 40 pieces were cut out in ascending order of the ratio of vs/gs.

What is characteristic is that the top 40 of Views and the top 40 of vs/gs do not have half the common items.

The exercise is to organize what can be understood from these three tables in 50 to 400 characters.

Views order

views 2020 2019 Japanese title English Title goods views vs/gs
1 11 10 Windows(MS)Python(Anaconda)Introduce (5 traps) https://qiita.com/kaizen_nagoya/items/7bfd7ecdc4e8edcbd679 5 traps, introducing Python (Anaconda) to M.S. Windows. 121 147054 1215.3
2 1 1 It is good for programmers to know how to use colors (safe colors) https://qiita.com/kaizen_nagoya/items/cb7eb3199b0b98904a35 Safety colour, everyone should know the use of colour. 1465 72675 49.6
3 5 Hypothesis / Verification (169) What I wanted to add to "The Seven Meaningless Habits of IT" that I wanted to stop in Heisei. https://qiita.com/kaizen_nagoya/items/e6f9c2e0afbf8ab4181c 273 40751 149.2
4 2 2 Introduction to programming from the age of 65 https://qiita.com/kaizen_nagoya/items/1561f910c275b22d7c9f Getting start programming at 65 years old. 661 31159 47.1
5 18 9 Machine learning with docker(3) with anaconda(3)"Intuition Deep Learning" by Antonio Gulli and Sujit Pal https://qiita.com/kaizen_nagoya/items/483ae708c71c88419c32 machine learning on docker with anaconda(3) "Deep Learning with Keras" by Antonio Gulli and Sujit Pal 39 30292 776.7
6 3 4 The program is music https://qiita.com/kaizen_nagoya/items/33c9f33581e6886f8ad8 A program is a music. 341 29978 87.9
7 25 26 Day 1 until NVIDIA GPUs are available on Macbook Pro or Mac mini https://qiita.com/kaizen_nagoya/items/6b3e06645f1cd7604d56 How tu use Nvidia GPU on Macbook Pro or Mac mini, Day 1. https://qiita.com/kaizen_nagoya/items/6b3e06645f1cd7604d56 30 29264 975.4
8 9 5 "Deep Learning from scratch 2 Natural language processing" Materials and programs that should be read before participating in the book club https://qiita.com/kaizen_nagoya/items/537b1810265bbbc70e73 Beffore joinng a reading club on "Start from scratch, Deep Learning 2, natural language version", try these exercise materials 161 26499 164.5
9 4 3 Assembly language / machine language / CPU with Qiita https://qiita.com/kaizen_nagoya/items/46f2333c2647b0e692b2 Road to Assembler, machine language and CPU on Qiita 303 25455 84
10 39 21 Machine learning with docker(17) with anaconda(17)"Deep Learning with Python and Keras": by Francois Chollet https://qiita.com/kaizen_nagoya/items/bce4fa73560370733ea2 machine learning on docker with anaconda(17) "Deep Learning with Python" by Francois Chollet 15 25227 1681.8
11 8 6 Machine learning in the manufacturing industry https://qiita.com/kaizen_nagoya/items/fbe846de16f74bea1d6f machine learning on the manufacturing industry 176 24981 141.9
12 19 13 RTL Design Style Guide Verilog HDL Edition(System Verilog compatible version) https://qiita.com/kaizen_nagoya/items/4c02f1575db1f28310a7 STARC RTL Design Style Guide Verilog HDL(System Verikog) 39 19603 502.6
13 75 MacOS:The operation cannot be completed because some required items were not found. (Error code-43) https://qiita.com/kaizen_nagoya/items/d9fd719ca942a0a91601 8 18395 2299.3
14 6 Hypothesis that few programmers are outstanding https://qiita.com/kaizen_nagoya/items/f0d22e20f6d2c58f2c1b Hypothesis that there are few innovative programmers 257 18210 70.8
15 10 100 books that influenced my life https://qiita.com/kaizen_nagoya/items/16af53acbb147a94172e 137 16085 117.4
16 12 8 Road to Quantum Computer Programs https://qiita.com/kaizen_nagoya/items/37c90488c87bbe9f2d71 Road to quantum computing 120 15653 130.4
17 7 Hypothesis / Verification (165) How much has the landscape of software development changed in 40 years? https://qiita.com/kaizen_nagoya/items/54c17cf751894eef56f8 248 14081 56.7
18 31 Getting started with curl(mac edition) https://qiita.com/kaizen_nagoya/items/f13df3e2c9fe6c3bf6fc 18 13701 761.1
19 76 pip install cupy gives an error https://qiita.com/kaizen_nagoya/items/19a66d86cd7eaf733a3e 8 10720 1340
20 40 Introduction to "Introduction to Python" https://qiita.com/kaizen_nagoya/items/22c99c5926984ede6573 15 10056 670.4
21 20 Qiita(28)Image size adjustment https://qiita.com/kaizen_nagoya/items/cef6ae1fcbdbec9e7be2 38 8892 234
22 42 M.S.Anaconda3 on Windows(python3)2019 version https://qiita.com/kaizen_nagoya/items/c05c0d690fcfd3402534 14 8876 634
23 15 7 C language/C++Misunderstanding, misunderstanding, incomprehension, exhilaration. https://qiita.com/kaizen_nagoya/items/3f3992c9722c1cee2e3a Misunderstanding, twist, unappreciation or fresh on C and/or C++ Languages 59 8709 147.6
24 47 22 Programmers use the National Diet Library (main building: Nagatacho):16 barriers(I can't read FD!)https://qiita.com/kaizen_nagoya/items/09252fdce118ec9e21aa When Programmer use National Diet Library, FD can not read! 16 Gates (Main Building: Nagatacho) 12 8296 691.3
25 21 23 Why machine learning with docker Books and sources are being created(Goal 100) https://qiita.com/kaizen_nagoya/items/ddd12477544bf5ba85e2 merit of machine learning on docker, target 100 list of books and sources, constructing now. 37 8112 219.2
26 16 31 100 language processing knocks with docker. https://qiita.com/kaizen_nagoya/items/7e7eb7c543e0c18438c4 language processing 100 fungo on docker 56 7831 139.8
27 27 17 What we did and what we did when porting the VZ editor https://qiita.com/kaizen_nagoya/items/5551be98dcbed8f41949 Porting the VZ editor(assembler made) to N5200. 27 7828 289.9
28 35 28 How can I use Docker? TOPPERS/FMP on RaspberryPi with Macintosh 5 barriers "IoT in Nagoya is OS in Nagoya" https://qiita.com/kaizen_nagoya/items/9c46c6da8ceb64d2d7af 5 Gates in TOPPERS/FMP on RaspberryPi with Macintosh 16 7101 443.8
29 32 15 Machine learning with docker(6) with anaconda(6)「 scikit-Practical machine learning with learn and TensorFlow ”by Aurélien Géron https://qiita.com/kaizen_nagoya/items/140428dfce7e3234ceb7 Hands-On Machine Learning with Scikit-Learn and TensorFlow on docker(6) 18 6992 388.4
30 13 Hypothesis / Verification (168) Three reasons why programmers' belief that they can write programs is a strength, not a weakness https://qiita.com/kaizen_nagoya/items/bc5dd86e414de402ec29 79 6828 86.4
31 17 English(3)Hypothesis / verification(88)Term conflict(Looking for terms and examples) https://qiita.com/kaizen_nagoya/items/6a8eb7ffaa45eeb16624 52 6236 119.9
32 85 Tcl on Macintosh/tk It works as it is, but it fits in 5 traps https://qiita.com/kaizen_nagoya/items/0bebb8e5a757a7d1b9f2 7 6169 881.2
33 26 18 Introduction to "Introduction to coq" https://qiita.com/kaizen_nagoya/items/13566f0b2083ea8d4998 Getting start with "Getting start with coq" 29 5975 206
34 29 12 Nagoya's IoT is Nagoya's OS,TOPPERS Summary https://qiita.com/kaizen_nagoya/items/9026c049cb0309b9d451 Iot at Nagoya wearing kernels at Nagoya, see TOPPERS summary 20 5974 298.7
35 22 14 Programmer's "Daily, Weekly, Monthly, Annual" Thoughts https://qiita.com/kaizen_nagoya/items/97ad8ac9217c12c3bb69 thinking of "daily, weekly, monthly and yearly report by programmer " 35 5669 161.9
36 58 27 Autosar Guidelines C++14 example code compile list(1-169)Nagoya's IoT is Nagoya's OS https://qiita.com/kaizen_nagoya/items/8ccbf6675c3494d57a76 Autosar Guidelines C++14 example code compile list(1-169) 10 5591 559.1
37 77 MISRA C Summary#include <misra_c.h> https://qiita.com/kaizen_nagoya/items/f1a79a7cbd281607c7c9 8 5234 654.2
38 14 As a programmer, what I keep in mind when writing programs, writing sentences, and making excuses https://qiita.com/kaizen_nagoya/items/7e5700db01727cb516fc What to keep in mind when writing programs, writing letters and excuses as a programmer. 74 4985 67.3
39 78 Wireless network (Wi-Fi) Antenna(antenna)(64)Wireshark introduction, recording, analysis https://qiita.com/kaizen_nagoya/items/d1d452d5f3eadd420d6e 8 4957 619.6
40 86 PIC instruction(assembler) https://qiita.com/kaizen_nagoya/items/700544d1988d80d7003f 7 4732 676
5041 754826 18840.4

Views/Goods in ascending order (more Goods than Views)

views 2020 2019 Japanese title English Title goods views vs/gs
1 138 TOPPERS's contribution to AUTOSAR(Updating) https://qiita.com/kaizen_nagoya/items/d363cf06e2176207b391 6 266 44.3
2 2 2 Introduction to programming from the age of 65 https://qiita.com/kaizen_nagoya/items/1561f910c275b22d7c9f Getting start programming at 65 years old. 661 31159 47.1
3 1 1 It is good for programmers to know how to use colors (safe colors) https://qiita.com/kaizen_nagoya/items/cb7eb3199b0b98904a35 Safety colour, everyone should know the use of colour. 1465 72675 49.6
4 137 Qiita(5)What I was happy and happy to write https://qiita.com/kaizen_nagoya/items/7f7796943ace8b9a99b0 6 315 52.5
5 136 Hypothesis / verification(107)Learning today https://qiita.com/kaizen_nagoya/items/bcd987f2e90ffc865873 6 337 56.1
6 7 Hypothesis / Verification (165) How much has the landscape of software development changed in 40 years? https://qiita.com/kaizen_nagoya/items/54c17cf751894eef56f8 248 14081 56.7
7 14 As a programmer, what I keep in mind when writing programs, writing sentences, and making excuses https://qiita.com/kaizen_nagoya/items/7e5700db01727cb516fc What to keep in mind when writing programs, writing letters and excuses as a programmer. 74 4985 67.3
8 6 Hypothesis that few programmers are outstanding https://qiita.com/kaizen_nagoya/items/f0d22e20f6d2c58f2c1b Hypothesis that there are few innovative programmers 257 18210 70.8
9 74 Where does AUTOSAR come from and where does it go? https://qiita.com/kaizen_nagoya/items/b605326a1aebe79b5d85 9 688 76.4
10 84 Hypothesis / Verification (153) Even if we talk about successful experiences, we do not rely on successful experiences. Yoshio Shimizu, Nobuaki Tanaka https://qiita.com/kaizen_nagoya/items/d32adfaf7b2568bfd9d2 8 615 76.8
11 24 11 "Oral communication with people" interview technology that programmers are not good at(interview technique)7 main points https://qiita.com/kaizen_nagoya/items/f322df6978853c708c99 Programmers are not good at talking with others. 7 points of interview technique. 35 2801 80
12 38 How to win all IT study sessions https://qiita.com/kaizen_nagoya/items/9f001a79ab4162220406 16 1316 82.2
13 135 Hypothesis / verification(113)To keep track of Qiita articles https://qiita.com/kaizen_nagoya/items/7fd1a6fa8e55c432788a 6 496 82.6
14 109 Synchronous communication(synchronous communication)Don't say! https://qiita.com/kaizen_nagoya/items/87705b0e68a2a7f7807f 7 579 82.7
15 4 3 Assembly language / machine language / CPU with Qiita https://qiita.com/kaizen_nagoya/items/46f2333c2647b0e692b2 Road to Assembler, machine language and CPU on Qiita 303 25455 84
16 13 Hypothesis / Verification (168) Three reasons why programmers' belief that they can write programs is a strength, not a weakness https://qiita.com/kaizen_nagoya/items/bc5dd86e414de402ec29 79 6828 86.4
17 3 4 The program is music https://qiita.com/kaizen_nagoya/items/33c9f33581e6886f8ad8 A program is a music. 341 29978 87.9
18 83 Hypothesis / verification(111)What I did instead of studying in the United States and getting a job in the United States. What you are doing. English(33) https://qiita.com/kaizen_nagoya/items/9f8e791bd6be3bed34bb 8 715 89.3
19 108 Why planner(programmer)Is it better not to use katakana?://qiita.com/kaizen_nagoya/items/d09e5ee549c4d9a17912 7 659 94.1
20 23 32 Etymology of English words that programmers should know https://qiita.com/kaizen_nagoya/items/9de6d47c47e2c211222b English word origin for programmer 35 3309 94.5
21 134 Hypothesis / Verification (148) What to do when a programmer feels uncomfortable https://qiita.com/kaizen_nagoya/items/f32ae742655621b309fb 6 569 94.8
22 46 English(22)Things and things: Over 30 English, stems, and etymologies useful for variable names and function names https://qiita.com/kaizen_nagoya/items/5f66b632ca589bb09707 13 1383 106.3
23 66 Qiita(25)I tried to see if there is a post that I can't miss://qiita.com/kaizen_nagoya/items/b25ffcf096bec554c837 10 1075 107.5
24 65 Hypothesis / verification(112)Collecting materials that may be useful for people who are not good at 3D https://qiita.com/kaizen_nagoya/items/c646254598e68a374322 10 1101 110.1
25 10 100 books that influenced my life https://qiita.com/kaizen_nagoya/items/16af53acbb147a94172e 137 16085 117.4
26 57 Hypothesis / verification(67)"Process improvement" pushes for deterioration https://qiita.com/kaizen_nagoya/items/0f3a1174f81935bb6d85 11 1297 117.9
27 17 English(3)Hypothesis / verification(88)Term conflict(Looking for terms and examples) https://qiita.com/kaizen_nagoya/items/6a8eb7ffaa45eeb16624 52 6236 119.9
28 37 16 PC initial environment construction as an IT engineer[MacOS]What I want to add to https://qiita.com/kaizen_nagoya/items/08c9f7e4b968472961fd Some comment for "Initial environment setting on PC as IT specialist, Mac os version" 16 2041 127.5
29 73 New Coronavirus Countermeasures (Draft) Organization (in IT Industry) https://qiita.com/kaizen_nagoya/items/4de09e3ba35b82ee71e7 9 1150 127.7
30 107 Raspberry Pi (with SD card) Time measurement from opening to startup https://qiita.com/kaizen_nagoya/items/8cde74c07848ec413f7b 7 899 128.4
31 64 hobby(like, hoby and life work)Programming language as(C++, python and Verilog HDL) https://qiita.com/kaizen_nagoya/items/5e0b06fd5dc2ea29c217 10 1295 129.5
32 82 TOPPERS utilization idea / application development contest winning work introduction summary in progress https://qiita.com/kaizen_nagoya/items/72b882d96b2841f25faf 8 1039 129.8
33 12 8 Road to Quantum Computer Programs https://qiita.com/kaizen_nagoya/items/37c90488c87bbe9f2d71 Road to quantum computing 120 15653 130.4
34 63 Hypothesis / Verification (185) Personality Remodeling Aiueo https://qiita.com/kaizen_nagoya/items/bfae8b4a486ee5fd72de 10 1313 131.3
35 56 Job change(4)"What was asked at the interview(For those who aim to become engineers from inexperienced)Answer example https://qiita.com/kaizen_nagoya/items/d9f633c582f12af44c7d 11 1446 131.4
36 34 Job change(1)Why did you quit an economics student and become a calculator (pre-admission, post-admission, post-graduation correspondence) https://qiita.com/kaizen_nagoya/items/06335a1d24c099733f64 17 2263 133.1
37 106 Hypothesis / verification(63)What program beginners do not need to know https://qiita.com/kaizen_nagoya/items/3eaeb88e583898b8aae7 7 968 138.2
38 16 31 100 language processing knocks with docker. https://qiita.com/kaizen_nagoya/items/7e7eb7c543e0c18438c4 language processing 100 fungo on docker 56 7831 139.8
39 105 Introduction to Control Engineering Glossary (under construction) https://qiita.com/kaizen_nagoya/items/7be5a2a962afeec77859 7 991 141.5
40 81 New Coronavirus Countermeasures (Draft) Individual Edition (in the IT industry) https://qiita.com/kaizen_nagoya/items/f6996fe6d49ee6095d61 8 1134 141.7
subtotal 4102 281236 3965.5

Recommended Posts

Analysis for Data Scientists: Qiita Self-Article Summary 2020 (Practice)
Analysis for Data Scientists: Qiita Self-Article Summary 2020
Python for Data Analysis Chapter 4
Python for Data Analysis Chapter 2
Tips for data analysis ・ Notes
Python for Data Analysis Chapter 3
Preprocessing template for data analysis (Python)
Data analysis for improving POG 3-Regression analysis-
Recommended competition site for data scientists
Python visualization tool for data analysis work
A summary of Python e-books that are useful for free-to-read data analysis
JupyterLab Basic Setting 2 (pip) for data analysis
JupyterLab Basic Setup for Data Analysis (pip)
Python practice data analysis Summary of learning that I hit about 10 with 100 knocks
Data analysis in Python Summary of sources to look at first for beginners
Data analysis for improving POG 2 ~ Analysis with jupyter notebook ~
Prepare a programming language environment for data analysis
[CovsirPhy] COVID-19 Python Package for Data Analysis: Data loading
An introduction to statistical modeling for data analysis
[Python] Data analysis, machine learning practice (Kaggle) -Data preprocessing-
How to use data analysis tools for beginners
Data analysis python
Data analysis Titanic 1
Data analysis Titanic 3
Organizing basic procedures for data analysis and statistical processing (4)
[For beginners] How to study Python3 data analysis exam
List of Python libraries for data scientists and data engineers
Organizing basic procedures for data analysis and statistical processing (2)
Analysis of measurement data ①-Memorandum of understanding for scipy fitting-
[CovsirPhy] COVID-19 Python package for data analysis: SIR-F model
[CovsirPhy] COVID-19 Python package for data analysis: S-R trend analysis
Stop thinking for use in data analysis competition LightGBM
[CovsirPhy] COVID-19 Python Package for Data Analysis: SIR model
[CovsirPhy] COVID-19 Python Package for Data Analysis: Parameter estimation