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If you’re an aspiring data scientist, you’re inquisitive – always exploring, learning, and asking questions. Online tutorials and videos can help you prepare you for your first role, but the best way to ensure that you’re ready to be a data scientist is by making sure you’re fluent in the tools people use in the industry.
I asked our data science faculty to put together seven python tools that they think all data scientists should know how to use. The Galvanize Data Science and GalvanizeU programs both focus on making sure students spend ample time immersed in these technologies, investing the time to gain a deep understanding of these tools will give you a major advantage when you apply for your first job. Check them out below:
IPython is a command shell for interactive computing in multiple programming languages, originally developed for the Python programming language, that offers enhanced introspection, rich media, additional shell syntax, tab completion, and rich history. IPython provides the following features:
Contributed by Nir Kaldero, Director of Science, Head of Galvanize Experts
GraphLab Create is a Python library, backed by a C++ engine, for quickly building large-scale, high-performance data products.
Here are a few of the features of GraphLab Create:
Contributed by Benjamin Skrainka, Lead Data Science Instructor at Galvanize
pandas is an open source, BSD-licensed library providing high-performance, easy-to-use data structures and data analysis tools for the Python programming language. Python has long been great for data munging and preparation, but less so for data analysis and modeling. pandas helps fill this gap, enabling you to carry out your entire data analysis workflow in Python without having to switch to a more domain specific language like R.
Combined with the excellent IPython toolkit and other libraries, the environment for doing data analysis in Python excels in performance, productivity, and the ability to collaborate. pandas does not implement significant modeling functionality outside of linear and panel regression; for this, look to statsmodels and scikit-learn. More work is still needed to make Python a first class statistical modeling environment, but we are well on our way toward that goal.
Contributed by Nir Kaldero, Director of Science, Head of Galvanize Experts
Linear Programming is a type of optimisation where an objective function should be maximised given some constraints. PuLP is an Linear Programming modeler written in python. PuLP can generate LP files and call on use highly optimized solvers, GLPK, COIN CLP/CBC, CPLEX, and GUROBI, to solve these linear problems.
Contributed by Isaac Laughlin, Data Science Instructor at Galvanize
matplotlib is a python 2D plotting library which produces publication quality figures in a variety of hardcopy formats and interactive environments across platforms. matplotlib can be used in python scripts, the python and ipython shell (ala MATLAB® or Mathematica®), web application servers, and six graphical user interface toolkits.
matplotlib tries to make easy things easy and hard things possible. You can generate plots, histograms, power spectra, bar charts, errorcharts, scatterplots, etc, with just a few lines of code.
For simple plotting the pyplot interface provides a MATLAB-like interface, particularly when combined with IPython. For the power user, you have full control of line styles, font properties, axes properties, etc, via an object oriented interface or via a set of functions familiar to MATLAB users.
Contributed by Mike Tamir, Chief Science Officer at Galvanize
Scikit-Learn is a simple and efficient tool for data mining and data analysis. What is so great about it is that it’s accessible to everybody, and reusable in various contexts. It is built on NumPy,SciPy, and mathplotlib. Scikit is also an open source that is commercially usable – BSD licence. Scikit-Learn has the following features:
Contributed by Isaac Laughlin, Data Science Instructor at Galvanize
Spark consists of a driver program that runs the user’s main function and executes various parallel operations on a cluster. The main abstraction Spark provides is a resilient distributed dataset (RDD), which is a collection of elements partitioned across the nodes of the cluster that can be operated on in parallel. RDDs are created by starting with a file in the Hadoop file system (or any other Hadoop-supported file system), or an existing Scala collection in the driver program, and transforming it. Users may also ask Spark to persist an RDD in memory, allowing it to be reused efficiently across parallel operations. Finally, RDDs automatically recover from node failures.
A second abstraction in Spark is shared variables that can be used in parallel operations. By default, when Spark runs a function in parallel as a set of tasks on different nodes, it ships a copy of each variable used in the function to each task. Sometimes, a variable needs to be shared across tasks, or between tasks and the driver program. Spark supports two types of shared variables: broadcast variables, which can be used to cache a value in memory on all nodes, and accumulators, which are variables that are only “added” to, such as counters and sums.
Contributed by Benjamin Skrainka, Lead Data Science Instructor at Galvanize
Still hungry for more data science? Enter our data science giveaway for a chance to win tickets awesome conferences like PyData Seattle and the Data Science Summit, or get discounts on Python resources like Effective Python and Data Science from Scratch.
Seven Python Tools All Data Scientists Should Know How to Use
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原文地址:http://www.cnblogs.com/yymn/p/4652377.html