In the last decade, there's been a big discussion on what language is better for data science - R or Python. This talk summarises how a Python user can benefit from learning R.
NumPy Roadmap presentation at NumFOCUS ForumRalf Gommers
This presentation is an attempt to summarize the NumPy roadmap and both technical and non-technical ideas for the next 1-2 years to users that heavily rely on NumPy, as well as potential funders.
Introduction to Spark: Or how I learned to love 'big data' after all.Peadar Coyle
Slides from a talk I will give in early 2016 at the Luxembourg Data Science Meetup. Aim is to give an introduction to Apache Spark, from a Machine Learning experts point of view. Based on various other tutorials out there. This will be aimed at non-specialists.
Optimal Tooling for Machine Learning and AIBoyan Angelov
In recent years there has been an explosion of tools and technologies in the ML/AI space. While this is understandable in such a fast moving field, it also presents a challenge to newcomers who have to decide which ones to try first, and where the right mix between cutting edge and stability is. As a data scientist there is always more theory to learn, so you should maximize your productivity. This talk presents a complete and free/open-source tooling solution that you can start using right away, based on many hours of research and comparisons.
Python array API standardization - current state and benefitsRalf Gommers
Talk given at GTC Fall 2021.
The Python array API standard, which was first announced towards the end of 2020, is maturing and becoming available to Python end users. NumPy now has a reference implementation, PyTorch support is close to complete, and other libraries have started to implement support. In this talk we will discuss the current state of implementations, and look at a concrete use case of moving a scientific analysis workflow to using the API standard - thereby gaining access to GPU acceleration.
In the last decade, there's been a big discussion on what language is better for data science - R or Python. This talk summarises how a Python user can benefit from learning R.
NumPy Roadmap presentation at NumFOCUS ForumRalf Gommers
This presentation is an attempt to summarize the NumPy roadmap and both technical and non-technical ideas for the next 1-2 years to users that heavily rely on NumPy, as well as potential funders.
Introduction to Spark: Or how I learned to love 'big data' after all.Peadar Coyle
Slides from a talk I will give in early 2016 at the Luxembourg Data Science Meetup. Aim is to give an introduction to Apache Spark, from a Machine Learning experts point of view. Based on various other tutorials out there. This will be aimed at non-specialists.
Optimal Tooling for Machine Learning and AIBoyan Angelov
In recent years there has been an explosion of tools and technologies in the ML/AI space. While this is understandable in such a fast moving field, it also presents a challenge to newcomers who have to decide which ones to try first, and where the right mix between cutting edge and stability is. As a data scientist there is always more theory to learn, so you should maximize your productivity. This talk presents a complete and free/open-source tooling solution that you can start using right away, based on many hours of research and comparisons.
Python array API standardization - current state and benefitsRalf Gommers
Talk given at GTC Fall 2021.
The Python array API standard, which was first announced towards the end of 2020, is maturing and becoming available to Python end users. NumPy now has a reference implementation, PyTorch support is close to complete, and other libraries have started to implement support. In this talk we will discuss the current state of implementations, and look at a concrete use case of moving a scientific analysis workflow to using the API standard - thereby gaining access to GPU acceleration.
Data Science With Python | Python For Data Science | Python Data Science Cour...Simplilearn
This Data Science with Python presentation will help you understand what is Data Science, basics of Python for data analysis, why learn Python, how to install Python, Python libraries for data analysis, exploratory analysis using Pandas, introduction to series and dataframe, loan prediction problem, data wrangling using Pandas, building a predictive model using Scikit-Learn and implementing logistic regression model using Python. The aim of this video is to provide a comprehensive knowledge to beginners who are new to Python for data analysis. This video provides a comprehensive overview of basic concepts that you need to learn to use Python for data analysis. Now, let us understand how Python is used in Data Science for data analysis.
This Data Science with Python presentation will cover the following topics:
1. What is Data Science?
2. Basics of Python for data analysis
- Why learn Python?
- How to install Python?
3. Python libraries for data analysis
4. Exploratory analysis using Pandas
- Introduction to series and dataframe
- Loan prediction problem
5. Data wrangling using Pandas
6. Building a predictive model using Scikit-learn
- Logistic regression
This Data Science with Python course will establish your mastery of data science and analytics techniques using Python. With this Python for Data Science Course, you'll learn the essential concepts of Python programming and become an expert in data analytics, machine learning, data visualization, web scraping and natural language processing. Python is a required skill for many data science positions, so jumpstart your career with this interactive, hands-on course.
Why learn Data Science?
Data Scientists are being deployed in all kinds of industries, creating a huge demand for skilled professionals. Data scientist is the pinnacle rank in an analytics organization. Glassdoor has ranked data scientist first in the 25 Best Jobs for 2016, and good data scientists are scarce and in great demand. As a data you will be required to understand the business problem, design the analysis, collect and format the required data, apply algorithms or techniques using the correct tools, and finally make recommendations backed by data.
You can gain in-depth knowledge of Data Science by taking our Data Science with python certification training course. With Simplilearn Data Science certification training course, you will prepare for a career as a Data Scientist as you master all the concepts and techniques.
Learn more at: https://www.simplilearn.com
The evolution of array computing in PythonRalf Gommers
My PyData Amsterdam 2019 presentation.
Have you ever wanted to run your NumPy based code on multiple cores, or on a distributed system, or on your GPU? Wouldn't it be nice to do this without changing your code? We will discuss how NumPy's array protocols work, and provide a practical guide on how to start using them. We will also discuss how array libraries in Python may evolve over the next few years.
Haystack LIVE! - 5 ways to increase result diversity at web-scale - Dmitry Ka...Dmitry Kan
Promoting diversity among items in a search result has been shown to increase user satisfaction, compared to relevancy only based ranking. In this talk, we'll present how we went about implementing search result diversification methods across different vertical search engines. Starting from zero with no diversification at all, exploring simple heuristic-based methods and moving onwards to more complex ones based on entropy and determinantal point processing. We'll also discuss evaluation methods and useful tooling around that.
Presented by Dmitry Kan, Principal AI Scientist at Silo AI and Daniel Wärnå, AI Engineer, Silo AI.
YouTube recording:
https://www.youtube.com/watch?v=bri0C28mfl8
Code demoed: https://github.com/DmitryKey/bert-solr-search/tree/master/src/diversify
Up and Down the Python Data & Web Visualization Stack by Rob Story PyData SV ...PyData
In the past two years, there has been incredible progress in Python data visualization libraries, particularly those built on client-side JavaScript tools such as D3 and Leaflet. This talk will give a brief demonstration of many of the newest charting libs: mpld3 (using Seaborn/ggplot), nvd3-python, ggplot, Vincent, Bearcart, Folium,and Kartograph will be used to visualize a newly-released USGS/FAA wind energy dataset (with an assist from Pandas and the IPython Notebook). After a demo of the current state of Python and web viz, it will discuss the future of how the Python data stack can have seamless interoperability and interactivity with JavaScript visualization libraries.
Learntek is global online training provider on Big Data Analytics, Hadoop, Machine Learning, Deep Learning, IOT, AI, Cloud Technology, DEVOPS, Digital Marketing and other IT and Management courses.
Accelerating NLP with Dask and Saturn CloudSujit Pal
Slides for talk delivered at NY NLP Meetup. Abstract -- Python has a great ecosystem of tools for natural language processing (NLP) pipelines, but challenges arise when data sizes and computational complexity grows. Best case, a pipeline is left to run overnight or even over several days. Worst case, certain analyses or computations are just not possible. Dask is a Python-native parallel processing tool that enables Python users to easily scale their code across a cluster of machines. This talk presents an example of an NLP entity extraction pipeline using SciSpacy with Dask for parallelization. This pipeline extracts named entities from the CORD-19 dataset, using trained models from the SciSpaCy project, and makes them available for downstream tasks in the form of structured Parquet files. The pipeline was built and executed on Saturn Cloud, a platform that makes it easy to launch and manage Dask clusters. The talk will present an introduction to Dask and explain how users can easily accelerate Python and NLP code across clusters of machines.
ISMB/ECCB 2019 - Marcus D. R. Klarqvist
Describes algorithms for compressing and querying millions of haplotypes/genotypes. In this talk I will describe the application of extended word-aligned hybrid (EWAH) encodings coupled with the reversible positional Burrows-Wheeler transform (PBWT) for better compression and faster query speeds. Also describe a EWAH-specific context model using a range coder/arithmetic coder for extreme compression.
Matplotlib has wonderfully served the Python community as the cornerstone of scientific graphics. Recently, many additional Python plotting options have surfaced, aimed to make it easier to create graphics that are interactive and web-publishable. These slides outline some of the new options with links to easy-to-follow, IPython notebooks.
Ensemble machine learning methods are often used when the true prediction function is not easily approximated by a single algorithm. Practitioners may prefer ensemble algorithms when model performance is valued above other factors such as model complexity and training time. The Super Learner algorithm, also called "stacking", learns the optimal combination of the base learner fits. The latest version of H2O now contains a "Stacked Ensemble" method, which allows the user to stack H2O models into a Super Learner. The Stacked Ensemble method is the the native H2O version of stacking, previously only available in the h2oEnsemble R package, and now enables stacking from all the H2O APIs: Python, R, Scala, etc.
Erin is a Statistician and Machine Learning Scientist at H2O.ai. Before joining H2O, she was the Principal Data Scientist at Wise.io (acquired by GE Digital) and Marvin Mobile Security (acquired by Veracode) and the founder of DataScientific, Inc. Erin received her Ph.D. from University of California, Berkeley. Her research focuses on ensemble machine learning, learning from imbalanced binary-outcome data, influence curve based variance estimation and statistical computing.
Data science in ruby, is it possible? is it fast? should we use it?Rodrigo Urubatan
Slides used in my presentation at http://thedevelopersconference.com.br in the #ruby track this year in são Paulo,
Talking a little about data science, what are the alternatives to do it in ruby, how to integrate ruby and python and what are the best solutions available.
Python is the choice llanguage for data analysis,
The aim of this slide is to provide a comprehensive learning path to people new to python for data analysis. This path provides a comprehensive overview of the steps you need to learn to use Python for data analysis.
Data Science With Python | Python For Data Science | Python Data Science Cour...Simplilearn
This Data Science with Python presentation will help you understand what is Data Science, basics of Python for data analysis, why learn Python, how to install Python, Python libraries for data analysis, exploratory analysis using Pandas, introduction to series and dataframe, loan prediction problem, data wrangling using Pandas, building a predictive model using Scikit-Learn and implementing logistic regression model using Python. The aim of this video is to provide a comprehensive knowledge to beginners who are new to Python for data analysis. This video provides a comprehensive overview of basic concepts that you need to learn to use Python for data analysis. Now, let us understand how Python is used in Data Science for data analysis.
This Data Science with Python presentation will cover the following topics:
1. What is Data Science?
2. Basics of Python for data analysis
- Why learn Python?
- How to install Python?
3. Python libraries for data analysis
4. Exploratory analysis using Pandas
- Introduction to series and dataframe
- Loan prediction problem
5. Data wrangling using Pandas
6. Building a predictive model using Scikit-learn
- Logistic regression
This Data Science with Python course will establish your mastery of data science and analytics techniques using Python. With this Python for Data Science Course, you'll learn the essential concepts of Python programming and become an expert in data analytics, machine learning, data visualization, web scraping and natural language processing. Python is a required skill for many data science positions, so jumpstart your career with this interactive, hands-on course.
Why learn Data Science?
Data Scientists are being deployed in all kinds of industries, creating a huge demand for skilled professionals. Data scientist is the pinnacle rank in an analytics organization. Glassdoor has ranked data scientist first in the 25 Best Jobs for 2016, and good data scientists are scarce and in great demand. As a data you will be required to understand the business problem, design the analysis, collect and format the required data, apply algorithms or techniques using the correct tools, and finally make recommendations backed by data.
You can gain in-depth knowledge of Data Science by taking our Data Science with python certification training course. With Simplilearn Data Science certification training course, you will prepare for a career as a Data Scientist as you master all the concepts and techniques.
Learn more at: https://www.simplilearn.com
The evolution of array computing in PythonRalf Gommers
My PyData Amsterdam 2019 presentation.
Have you ever wanted to run your NumPy based code on multiple cores, or on a distributed system, or on your GPU? Wouldn't it be nice to do this without changing your code? We will discuss how NumPy's array protocols work, and provide a practical guide on how to start using them. We will also discuss how array libraries in Python may evolve over the next few years.
Haystack LIVE! - 5 ways to increase result diversity at web-scale - Dmitry Ka...Dmitry Kan
Promoting diversity among items in a search result has been shown to increase user satisfaction, compared to relevancy only based ranking. In this talk, we'll present how we went about implementing search result diversification methods across different vertical search engines. Starting from zero with no diversification at all, exploring simple heuristic-based methods and moving onwards to more complex ones based on entropy and determinantal point processing. We'll also discuss evaluation methods and useful tooling around that.
Presented by Dmitry Kan, Principal AI Scientist at Silo AI and Daniel Wärnå, AI Engineer, Silo AI.
YouTube recording:
https://www.youtube.com/watch?v=bri0C28mfl8
Code demoed: https://github.com/DmitryKey/bert-solr-search/tree/master/src/diversify
Up and Down the Python Data & Web Visualization Stack by Rob Story PyData SV ...PyData
In the past two years, there has been incredible progress in Python data visualization libraries, particularly those built on client-side JavaScript tools such as D3 and Leaflet. This talk will give a brief demonstration of many of the newest charting libs: mpld3 (using Seaborn/ggplot), nvd3-python, ggplot, Vincent, Bearcart, Folium,and Kartograph will be used to visualize a newly-released USGS/FAA wind energy dataset (with an assist from Pandas and the IPython Notebook). After a demo of the current state of Python and web viz, it will discuss the future of how the Python data stack can have seamless interoperability and interactivity with JavaScript visualization libraries.
Learntek is global online training provider on Big Data Analytics, Hadoop, Machine Learning, Deep Learning, IOT, AI, Cloud Technology, DEVOPS, Digital Marketing and other IT and Management courses.
Accelerating NLP with Dask and Saturn CloudSujit Pal
Slides for talk delivered at NY NLP Meetup. Abstract -- Python has a great ecosystem of tools for natural language processing (NLP) pipelines, but challenges arise when data sizes and computational complexity grows. Best case, a pipeline is left to run overnight or even over several days. Worst case, certain analyses or computations are just not possible. Dask is a Python-native parallel processing tool that enables Python users to easily scale their code across a cluster of machines. This talk presents an example of an NLP entity extraction pipeline using SciSpacy with Dask for parallelization. This pipeline extracts named entities from the CORD-19 dataset, using trained models from the SciSpaCy project, and makes them available for downstream tasks in the form of structured Parquet files. The pipeline was built and executed on Saturn Cloud, a platform that makes it easy to launch and manage Dask clusters. The talk will present an introduction to Dask and explain how users can easily accelerate Python and NLP code across clusters of machines.
ISMB/ECCB 2019 - Marcus D. R. Klarqvist
Describes algorithms for compressing and querying millions of haplotypes/genotypes. In this talk I will describe the application of extended word-aligned hybrid (EWAH) encodings coupled with the reversible positional Burrows-Wheeler transform (PBWT) for better compression and faster query speeds. Also describe a EWAH-specific context model using a range coder/arithmetic coder for extreme compression.
Matplotlib has wonderfully served the Python community as the cornerstone of scientific graphics. Recently, many additional Python plotting options have surfaced, aimed to make it easier to create graphics that are interactive and web-publishable. These slides outline some of the new options with links to easy-to-follow, IPython notebooks.
Ensemble machine learning methods are often used when the true prediction function is not easily approximated by a single algorithm. Practitioners may prefer ensemble algorithms when model performance is valued above other factors such as model complexity and training time. The Super Learner algorithm, also called "stacking", learns the optimal combination of the base learner fits. The latest version of H2O now contains a "Stacked Ensemble" method, which allows the user to stack H2O models into a Super Learner. The Stacked Ensemble method is the the native H2O version of stacking, previously only available in the h2oEnsemble R package, and now enables stacking from all the H2O APIs: Python, R, Scala, etc.
Erin is a Statistician and Machine Learning Scientist at H2O.ai. Before joining H2O, she was the Principal Data Scientist at Wise.io (acquired by GE Digital) and Marvin Mobile Security (acquired by Veracode) and the founder of DataScientific, Inc. Erin received her Ph.D. from University of California, Berkeley. Her research focuses on ensemble machine learning, learning from imbalanced binary-outcome data, influence curve based variance estimation and statistical computing.
Data science in ruby, is it possible? is it fast? should we use it?Rodrigo Urubatan
Slides used in my presentation at http://thedevelopersconference.com.br in the #ruby track this year in são Paulo,
Talking a little about data science, what are the alternatives to do it in ruby, how to integrate ruby and python and what are the best solutions available.
Python is the choice llanguage for data analysis,
The aim of this slide is to provide a comprehensive learning path to people new to python for data analysis. This path provides a comprehensive overview of the steps you need to learn to use Python for data analysis.
🌟Is Learning Python Your Career Game-Changer? 🚀🐍abhishekdf3
The Next Big Thing to look up onto is Python and there is no doubt about that. Questions related to its worth, career opportunities or available jobs are not to be worried about. As Python is rapidly ceasing the popularity amongst developers and various other fields, its contribution to the advancement of your career is immense.
There are reasons why Python is “the one”. It is easily scripted language that can be learned quickly. Hence reducing the overall development time of the project code. It has a set of different libraries and APIs that support data analysis, data visualization, and data manipulation.
Before proceeding ahead, you must check :- https://data-flair.training/blogs/python-career-path/
Semi-motivational talk about why today is a great time to learn Python. Slides include a brief overview of the current state of the language, its application areas, and Python's future.
Python has long been the language of choice for data scientists and analysts, and its popularity shows no signs of abating. With businesses and individuals producing an increasing amount of data, Python's versatility and ease of use make it a great tool for navigating this complicated world.In this blog article, we will look at how Python has transformed data science by allowing experts to analyse, visualise, and understand data with surprising efficiency and precision.
Programmers love Python because of how fast and easy it is to use. Python cuts development time in half with its simple to read syntax and easy compilation feature. Debugging your programs is a breeze in Python with its built in debugger. Using Python makes Programmers more productive and their programs ultimately better. Python is continued to be a favourite option for data scientists who use it for building and using Machine learning applications and other scientific computations.
Python runs on Windows, Linux/Unix, Mac OS and has been ported to Java and .NET virtual machines. Python is free to use, even for the commercial products, because of its OSI-approved open source license.
Python has evolved as the most preferred Language for Data Analytics and the increasing search trends on python also indicates that Python is the next "Big Thing" and a must for Professionals in the Data Analytics domain.
https://www.insight-centre.org/content/research-toolbox-data-analysis-python-waternomics-case-study
This seminar aims to highlight the flexibility of Python as a useful programming language for everyday tasks in research. It is based on the experience of the presenter in the Waternomics project and research experiments. The overall goal is to share the experience of data access, manipulation, and visualization. The seminar will focus on following main topics and their relevant Python libraries: (1) The Python ecosystem for Data Science (2) Data access with pandas, RDFlib, requests, json (3) Data manipulation with numpy, scipy, statsmodels (4) Data visualization with matplotlib, seaborn, and bokeh (5) Tips and tricks (Jupyter server, pgfplots, latex, pyCharm) (6) Advanced libraries (scikt-learn, pyomo, NLTK) The seminar is expected to use the full slot of the Reading Group session, with opportunities for questions and discussion in between each topic.
Introduction to Analytics with Azure Notebooks and PythonJen Stirrup
Introduction to Analytics with Azure Notebooks and Python for Data Science and Business Intelligence. This is one part of a full day workshop on moving from BI to Analytics
Why Python Should Be Your First Programming LanguageEdureka!
Programmers love Python because of how fast and easy it is to use. Python cuts development time in half with its simple to read syntax and easy compilation feature. Debugging your programs is a breeze in Python with its built in debugger. Using Python makes Programmers more productive and their programs ultimately better. Python is continued to be a favourite option for data scientists who use it for building and using Machine learning applications and other scientific computations.
Python runs on Windows, Linux/Unix, Mac OS and has been ported to Java and .NET virtual machines. Python is free to use, even for the commercial products, because of its OSI-approved open source license.
Python has evolved as the most preferred Language for Data Analytics and the increasing search trends on python also indicates that Python is the next "Big Thing" and a must for Professionals in the Data Analytics domain.
What is Python? An overview of Python for science.Nicholas Pringle
A brief introduction on the use of Python for scientists. Python is fast becoming a popular programming language for scientists. It is free, open source and constantly improving. Being an easy language to learn, it has a large a community of users. Its many favourable qualities make it the perfect language for scientific collaboration.
Operation “Blue Star” is the only event in the history of Independent India where the state went into war with its own people. Even after about 40 years it is not clear if it was culmination of states anger over people of the region, a political game of power or start of dictatorial chapter in the democratic setup.
The people of Punjab felt alienated from main stream due to denial of their just demands during a long democratic struggle since independence. As it happen all over the word, it led to militant struggle with great loss of lives of military, police and civilian personnel. Killing of Indira Gandhi and massacre of innocent Sikhs in Delhi and other India cities was also associated with this movement.
How to Create Map Views in the Odoo 17 ERPCeline George
The map views are useful for providing a geographical representation of data. They allow users to visualize and analyze the data in a more intuitive manner.
The Art Pastor's Guide to Sabbath | Steve ThomasonSteve Thomason
What is the purpose of the Sabbath Law in the Torah. It is interesting to compare how the context of the law shifts from Exodus to Deuteronomy. Who gets to rest, and why?
Instructions for Submissions thorugh G- Classroom.pptxJheel Barad
This presentation provides a briefing on how to upload submissions and documents in Google Classroom. It was prepared as part of an orientation for new Sainik School in-service teacher trainees. As a training officer, my goal is to ensure that you are comfortable and proficient with this essential tool for managing assignments and fostering student engagement.
Model Attribute Check Company Auto PropertyCeline George
In Odoo, the multi-company feature allows you to manage multiple companies within a single Odoo database instance. Each company can have its own configurations while still sharing common resources such as products, customers, and suppliers.
Welcome to TechSoup New Member Orientation and Q&A (May 2024).pdfTechSoup
In this webinar you will learn how your organization can access TechSoup's wide variety of product discount and donation programs. From hardware to software, we'll give you a tour of the tools available to help your nonprofit with productivity, collaboration, financial management, donor tracking, security, and more.
How to Split Bills in the Odoo 17 POS ModuleCeline George
Bills have a main role in point of sale procedure. It will help to track sales, handling payments and giving receipts to customers. Bill splitting also has an important role in POS. For example, If some friends come together for dinner and if they want to divide the bill then it is possible by POS bill splitting. This slide will show how to split bills in odoo 17 POS.
The Indian economy is classified into different sectors to simplify the analysis and understanding of economic activities. For Class 10, it's essential to grasp the sectors of the Indian economy, understand their characteristics, and recognize their importance. This guide will provide detailed notes on the Sectors of the Indian Economy Class 10, using specific long-tail keywords to enhance comprehension.
For more information, visit-www.vavaclasses.com
The Roman Empire A Historical Colossus.pdfkaushalkr1407
The Roman Empire, a vast and enduring power, stands as one of history's most remarkable civilizations, leaving an indelible imprint on the world. It emerged from the Roman Republic, transitioning into an imperial powerhouse under the leadership of Augustus Caesar in 27 BCE. This transformation marked the beginning of an era defined by unprecedented territorial expansion, architectural marvels, and profound cultural influence.
The empire's roots lie in the city of Rome, founded, according to legend, by Romulus in 753 BCE. Over centuries, Rome evolved from a small settlement to a formidable republic, characterized by a complex political system with elected officials and checks on power. However, internal strife, class conflicts, and military ambitions paved the way for the end of the Republic. Julius Caesar’s dictatorship and subsequent assassination in 44 BCE created a power vacuum, leading to a civil war. Octavian, later Augustus, emerged victorious, heralding the Roman Empire’s birth.
Under Augustus, the empire experienced the Pax Romana, a 200-year period of relative peace and stability. Augustus reformed the military, established efficient administrative systems, and initiated grand construction projects. The empire's borders expanded, encompassing territories from Britain to Egypt and from Spain to the Euphrates. Roman legions, renowned for their discipline and engineering prowess, secured and maintained these vast territories, building roads, fortifications, and cities that facilitated control and integration.
The Roman Empire’s society was hierarchical, with a rigid class system. At the top were the patricians, wealthy elites who held significant political power. Below them were the plebeians, free citizens with limited political influence, and the vast numbers of slaves who formed the backbone of the economy. The family unit was central, governed by the paterfamilias, the male head who held absolute authority.
Culturally, the Romans were eclectic, absorbing and adapting elements from the civilizations they encountered, particularly the Greeks. Roman art, literature, and philosophy reflected this synthesis, creating a rich cultural tapestry. Latin, the Roman language, became the lingua franca of the Western world, influencing numerous modern languages.
Roman architecture and engineering achievements were monumental. They perfected the arch, vault, and dome, constructing enduring structures like the Colosseum, Pantheon, and aqueducts. These engineering marvels not only showcased Roman ingenuity but also served practical purposes, from public entertainment to water supply.
9. Python has many libraries for scientist.
Scipy, Numpy, Scikit, Pandas,
Disco - Lightweight Map Reduce
NLTK - Natural Language ToolKit
Pandas - Dataframe
StatsModel - data structure
Matplotlib - Plot method of R
NetworkX http://networkx.github.
io/documentation/latest/gallery.html
Bigdata with python(2)
11. ● R is good language, but Python become
statistical/machine-learning programing language
● Especially, a half of session talked about numpy,
data manipulation, etc...
● a half of session shows the slide written in
English
○ In Japan, how many people?
My impression
12. Talked about pycon tw 2013 from datamining
engineer view.
"Numpy"
Conclusion