Data science training has to be top of mind for any learning and development team. Dubbed “the sexiest job of the 21st century,” this emerging field has become a necessity as businesses try to sift through an overabundance of data.
In 2010, former Google CEO Eric Schmidt famously said that every two days we create as much data as we did from the dawn of time through 2003. And since then, the data explosion has only continued. Every minute:
- Americans use over 2.5 billion gigabytes of data
- Instagram users post 46,750 photos
- Over 15 million text messages are sent
- Google executes 3.6 million searches
Given such massive data usage, it’s no surprise that data science and its variations are the fastest-growing jobs in the United States. Unfortunately, data scientist supply hasn’t kept up with demand.
When talent development leaders implement solid data science training programs, they can help their organizations overcome the talent shortage and create competitive advantages from within.
Before you can help your organization build a data science training program, you have to understand what data science actually is.
Since the title “data scientist” was coined in 2008, the term has been used to cover a wide range of functions. But at the core, data science is the use of various tools, algorithms, and techniques to identify hidden patterns in large volumes of data.
Unlike traditional data analysis, data science aims to go beyond insight discovery to proactively make decisions and predictions based on informed historical data patterns.
The job of a data scientist is to make use of techniques like predictive and prescriptive analytics as well as machine learning to make sense of both structured and unstructured data. There’s just one mistake that talent development leaders have to avoid when building a data science training program—confusing this discipline with machine learning.
The data science courses you choose for your training program should cover both the soft skills and technical understanding necessary for success in this field.
You have a seemingly-endless array of options, but these data science courses and skills can help fill out your training program:
- Critical Thinking: Data science isn’t just about running algorithms and crunching numbers. It’s about asking great questions and working as a team to solve problems. Being able to assess problems and communicate new ideas can make all the difference between successful data scientists and those that can just run systems.
- Coding for Data Engineering and Analysis: Data engineering and data analysis are two key pieces of the data science puzzle. Beyond soft skills, data science classes must also teach the coding fundamentals for success in these areas. Specifically, Java is essential for data engineering and analysis.
- Generate Valuable Insights from Data: Java isn’t the only coding language data science classes should cover. Python is the essential language for taking raw data and turning it into business value.
- Predictive Analytics and Data Mining: Understanding the technical ins and outs of predictive analytics and data mining is important. However, these projects often consist of many data scientists working together for many weeks at a time. Successful projects need to be managed efficiently. And that means keeping control of the big picture objectives of individual projects.
- Data Governance: In the era of data breaches, data scientists can’t ignore the need for regulatory compliance and security. As they work with massive amounts of business data, data scientists need to understand the keys to keeping that data safe.
- Statistics and Mathematics: At the core of any attempt to analyze data or use machine learning is an ability to understand statistics and mathematics. And it’s not enough to just have a basic handle on stats—data scientists must be experts. That means giving them the data science courses necessary to improve statistics skills.
Providing access to data science courses that reinforce these fundamental skills and capabilities can help talent development leaders deliver business value. But if you’re aiming to kickstart an emerging data science function within your organization, you have to go a step further.
Overcoming the data scientist talent shortage means taking these courses and turning them into a guided data science training program.
The key to unlocking the value of eLearning is giving your workforce a guided set of courses to hone their skills rather than a massive library of disconnected courses.
That’s why the LinkedIn Learning library is organized with learning paths that give employees the perfect sets of courses to advance their careers.
The following learning paths can help you build an effective data science training program:
- Become a Data Scientist: Since data science is still so new, you may have employees that are just starting out with the official discipline. Whether they’re working in IT or just have an interest in entering the field, this set of courses will help your internal talent build a foundation to succeed with data science and deliver value for your organization.
- Become a Data Science Team Member: Data scientists of all levels don’t work in vacuums. By working together, your workforce will get more out of an abundance of data. Here, anyone in your organization can learn the basic mission of data science and find out how to impact a data science team as a collaborator.
- Get Ahead in Data Science: Once employees have gained the foundational skills for data science, they have to build on those skills to generate more business value. This learning path focuses on advanced statistics and data mining and offers insight into the growing fields of open data and blockchain.
- Master Python for Data Science: Python is an essential coding language for data scientists and this learning path can build competency quickly. Rather than focusing on Python as a general object-oriented language, these courses zero in on its role in the data science stack.
- Master R for Data Science: R has become the most popular data-science-specific language. This learning path teaches new data scientists all the skills necessary to build a coding resume and gain expertise with tools like Excel and Tableau.
- Advance Your Skills in the Hadoop/NoSQL Data Science Stack: Tools based on the Hadoop and NoSQL stack are becoming essential pieces of any data science career. Giving your workforce the resources necessary to learn tools like Kafka, HBase, Hive, and Cassandra will result in more effective data engineering.
The data science field may be new, but it’s growing rapidly and changing constantly. It’s not enough to take a one-and-done approach to data science training—you want a continuous approach to education to maintain competitive advantages.
These learning paths just scratch the surface of the LinkedIn Learning library for data science courses. Check out the full catalog of courses and learning paths to see what you can use to improve your data science team.
Meet a few of LinkedIn Learning's expert instructors
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DJ PatilHead of Technology at Devoted Health; Former U.S. Chief Data Scientist
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Lillian PiersonFounder of Data-Mania; Data Science Leader, Strategist & Visionary
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Jonathan ReichentalChief Information Officer, City of Palo Alto
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Michele DennedyVP and Chief Privacy Officer at Cisco
Featured LinkedIn Learning courses
- DJ Patil: Ask Me Anything
- AI The LinkedIn Way: A Conversation with Deepak Agarwal
- Understanding & Prioritizing Data Privacy
- Insights on Data Science: Lillian Pierson
- Learning Data Visualization
- Learning Data Science: Ask Great Questions
- Tableau Essential Training
- SQL: Data Reporting and Analysis
- Excel Statistics Essential Training: 1
- Power BI Essential Training