10 Tips Students Can Follow for Data Science Self-Study in 2022

by Sayantani Sanyal

December 27, 2021

Follow these tips to learn data science on your own and get your dream job!

Since the pandemic enhanced the need for an advanced work environment, data science took over the business operations to make manufacturing and service production more efficient and customer-centric. The applications of data science have increased market competition in every global industry. Data science has been on a roll since technologies like artificial intelligence have become more accessible to businesses. The accelerated growth rate of the field also shows an uptrend in career opportunities, resulting in students from both tech and non-tech backgrounds joining the data science sector. Many of these aspiring students try to learn the fundamentals of data science on their own. The vast number of online certifications and courses available on the internet has made data science self-study possible. In this article, we have listed a few tips for data science self-study that might help students guide themselves to get their dream jobs.

  • Set a course: Expert says that there is no right way to start learning data science. The process of education will itself help them understand their strengths and weaknesses. But it is important to set a course beforehand. It will help them understand which branch of data science they would want to dive into further, rather than learning aimlessly towards no defined goal.
  • Focus on learning programming languages: Programming languages are an integral part of data science. Data scientists have to build algorithms and various database systems using these programming languages. Languages like Python and JavaScript are extensively used in data science algorithms to handle large-scale information and communicate those insights using robust and enhanced visualizations.
  • Practice data science: Professionals in this domain have to ensure that the insights they provide are of high quality. And for self-learners, this can be achieved by involving in internships or volunteer projects. The students gain different kinds of skills that they can use in real-world data science environments to manage basic operations like data cleaning and managing the insights.
  • Constantly increase the degree of difficulty: Data science is a vast domain, and there are several learning parameters for aspirants to achieve. After practicing a project or an algorithm several times, it will become easier and, that’s when the aspirants need to increase the degrees of their learning and constantly keep focusing on more advanced topics. Gaining a deeper understanding of the fundamentals will help self-learners achieve industry-specific knowledge.
  • Dive into learning data science tools and platforms: There are several tools and platforms that data professionals use on a daily basis to manage, process, and visualize insights. Tools like GitHub, TensorFlow, Tableau, SAS, Hadoop, and Spark are extensively used in this domain. Experts suggest that rather than focusing on one particular tool, it is better to start playing around with more than one tool; this will help them understand their most preferred tools for professional use.
  • Use authentic sources to study: With the exponential growth of the industry, students use several self-learning materials to gain more knowledge and achieve maximum growth in the industry. This has led to the emergence of various authentic and inauthentic websites providing study materials and guides for students in various fields of data science. It is important to identify these inauthentic sources to avoid getting the wrong information.
  • Get help from online bootcamps and sources: There is an array of options that aspiring data professionals can look out for to gain knowledge in data science. Online bootcamps, courses, and certifications are a good way to start the self-learning journeys.
  • Get help from peers: Data science can become more interesting if it turns into teamwork. Data scientists and engineers have to work in teams and also collaborate with team members across different platforms of the organization. Learning together with peers can help aspiring professionals get a basic picture of working in teams, and using this process they can exchange knowledge and information.
  • Work on the soft skills: Besides working on the fundamentals and technical skills, professionals should also focus on their soft skills. Good communication, presentation, leadership, and such other skills are also quite crucial for the data science industry. These skills act as bonuses in interviews as employers focus on looking for efficient employees rather than just knowledgeable ones.
  • Practice interview questions and answers: There are several online websites and courses that provide interview practice courses and exercises to ace the data science interviews. Aspiring data science professionals can get a rough idea about how to proceed to get their desired jobs and prepare for the interview.

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