What is Different Between Data Science and Machine Learning

 How IT Supports the Data Science Operation - InformationWeek

Data Science Process

The proliferation of smartphones and digitization of so many parts of daily life have created massive amounts of data. At the same time, the continuation of Moore’s Law, the idea that computing would dramatically increase in power and decrease in relative cost over time, has made cheap computing power widely available. Data science exists as the link between these two innovations. By combining these components, data scientists can derive more insight from data than ever before.

The practice of data science requires a unique combination of skills and experience. A good data scientist is fluent in programming languages like R and Python, has knowledge of statistical methods, an understanding of database architecture, and the experience to apply these skills to real-world problems. A master's in data science may build upon existing knowledge to ensure that you are best prepared for a long career in this ever-growing field.
The Limitations of Data Science

Though it may sound obvious, data science relies on data. The massive growth of data science was spurred by the availability of massive datasets and cheap computing power. Only with these incredible resources is data science effective. Small datasets, messy data, and incorrect data can waste a lot of time, creating models that produce meaningless or misleading results. If the data doesn’t capture the actual cause of variation, data science will fail.
Careers in Data Science

Data science is needed wherever there is big data. As more and more industries begin to collect data on customers and products, the need for data scientists will continue to grow. To start on the path towards a career in data science, consider the skills needed to land your first data science job.

MSc Data Science | University of South Wales

 What is machine learning?

Machine learning creates a useful model or program by autonomously testing many solutions against the available data and finding the best fit for the problem. This means machine learning is great at solving problems that are extremely labor intensive for humans. It can inform decisions and make predictions about complex topics in an efficient and reliable way.

These strengths make machine learning useful in a huge number of different industries. The possibilities for machine learning are vast. This technology has the potential to save lives and solve important problems in healthcare, computer security and more. Google, always on the cutting edge, has decided to integrate machine learning into everything they do to stay ahead of the curve.

The Inherent Limitations of Machine Learning

Though machine learning may seem like a magic bullet to answer any question, it is not all-powerful.

Machine learning algorithms are better than ever at creating useful results with minimal intervention. However, we will always need engineers and programmers to constrain and optimize these algorithms to make them work on new questions. There will never be “one algorithm to rule them all”.

There are also plenty of problems that machine learning isn’t particularly good at solving. If a traditional program or equation can solve a problem, adding machine learning might complicate the process instead of simplifying it.

Importance of Machine Learning

Machine learning is being applied in nearly every industry. Cutting costs by letting a machine learning algorithm make decisions is a very lucrative solution to many problems.

Applying these techniques in industries like lending, hiring and medicine raise some major ethical concerns. Since these algorithms are trained on data created by humans, they incorporate social biases into their results.

Since machine learning algorithms operate without explicit rules, these biases may be hidden. Most machine learning algorithms are currently a “black box” -we know what goes in and what comes out, but not how it got there. Google is doing research to make it easier to understand how neural networks “think.” However, this work will need to go further before it can address data bias and other ethical issues with machine learning.Where do data science and machine learning intersect?

Machine learning is one of the many tools in the belt of a data scientist. In order to make machine learning work, you need a skilled data scientist who can organize data and apply the proper tools to fully make use of the numbers.

Data Scientist vs Machine Learning Engineer

 Ever consider the growth of machine learning and data science to be the reasoning behind the best and popular job attributions that are give to these fields? It’s important to understand that as the technology and data fields grow, careers may very well. Technology careers often intersect, but the difference between a machine learning engineer and data scientist is important to distinguish.

Skills Needed for Data Scientists

  • Statistics
  • Data mining and cleaning
  • Data visualization
  • Unstructured data management techniques
  • Programming languages such as R and Python
  • Understand SQL databases
  • Use big data tools like Hadoop, Hive and Pig

Skills Needed for Machine Learning Engineers

  • Computer science fundamentals
  • Statistical modeling
  • Data evaluation and modeling
  • Understanding and application of algorithms
  • Natural language processing
  • Data architecture design
  • Text representation techniques

Data science is a rapidly growing field with massive potential. It is a broad, interdisciplinary field that harnesses the widespread amounts of data and processing power available to gain insights. One of the most exciting technologies in modern data science is machine learning. Machine learning allows computers to autonomously learn from the wealth of data that is available.

The applications of these technologies are vast, but not unlimited. Though data science is powerful, it only works if you have highly skilled employees and quality data. To get involved in this growing field, take a look at some top data science masters programs.

 

 

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