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What is my first step to becoming a Data scientist with no academic knowledge? Becoming a data scientist without academic knowledge can be challenging, but it's not impossible. Here are some steps to help you get started on your journey: Understand the Role of a Data Scientist: Research and understand what data scientists do, their responsibilities, and the skills required. Data scientists use data to derive insights and make informed decisions. They work with programming, statistics, machine learning, and domain knowledge to solve problems. Learn the Fundamentals of Programming: Data science often involves programming in languages like Python or R. Start by learning the basics of programming, such as variables, loops, functions, and data structures. Learn Data Manipulation and Analysis: Familiarize yourself with libraries like NumPy and Pandas in Python. These libraries are essential for data manipulation and analysis. Study Statistics and Mathematics: Data scientists need a solid understanding of statistics and mathematics to work with data effectively. Focus on concepts like probability, distributions, hypothesis testing, and regression. Learn Data Visualization: Data visualization is crucial for presenting insights. Study libraries like Matplotlib and Seaborn in Python to create meaningful visualizations. Explore Machine Learning: While academic knowledge may not be necessary, a basic understanding of machine learning concepts can be beneficial. Start with simple algorithms like linear regression and gradually explore more complex ones. Complete Online Courses and Tutorials: There are numerous online resources and platforms like Coursera, Udemy, and DataCamp that offer data science courses and tutorials. These can help you gain structured knowledge and hands-on experience. Work on Real Projects: Practice is essential in data science. Work on real-world projects using datasets available online or from Kaggle. Building a portfolio of projects will showcase your skills to potential employers. Join Online Communities: Engage with data science communities and forums to ask questions, seek guidance, and learn from experienced data scientists. Networking and Collaboration: Connect with professionals in the field, and attend data science meetups, conferences, and webinars. Collaborating on projects with others can accelerate your learning. Stay Curious and Be Persistent: Data science is a rapidly evolving field, and continuous learning is key. Stay curious, keep up with the latest trends, and be persistent in your efforts. Seek Internship or Entry-Level Opportunities: Once you feel confident in your skills, start looking for internships or entry-level positions in data-related roles. Practical experience will be invaluable in honing your skills further. Remember that becoming a data scientist without academic knowledge may take more time and effort, but with dedication and a strong commitment to learning, you can succeed in the field. Focus on building a strong foundation and gaining practical experience through projects and real-world applications. Visit - https://sites.google.com/view/future-of-data-science-/home
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