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sampratim · 22 days
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How can I become a data scientist?
Here’s how you can become a data scientist:
If you get a bachelor’s degree in data science then you can join data science jobs after that. Even if you don’t have a bachelor’s degree in data science, then also you can be a data scientist provided you have a strong background in mathematics, statistics or linear algebra, and probability theory.
You can learn programming languages like Python and tools like SQL for data manipulation and analysis.
You can enroll yourself in data science bootcamps which provide industry-related skills in a shorter time.
Showcase your data science skills by working on personal projects. Look for datasets online or choose a topic that interests you.
Stay updated with the latest trends, tools, and technologies in data science by reading research papers, following industry blogs, and attending conferences or meetups.
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sampratim · 22 days
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How do I learn data science in 50 days?
Hi,
Learning data science in 50 days is challenging. But if you plan your day properly, then you can make a significant progress.
In the initial few(5–6) days, refresh your understanding of essential mathematical concepts like linear algebra (matrices, vectors), statistics (mean, median, standard deviation), and probability theory.
In the next step, (10 days) you can learn Python basics. Focus on variables, data types, control flow (if statements, loops), functions, and basic data structures (lists, dictionaries, tuples).
In the next few days(7 days) learn basic SQL(Structured Query Language) queries for data manipulation and retrieval from databases.
Once you are comfortable with maths, python, and SQL, learn techniques for handling missing data, data transformations, and data aggregation.
In the next few days introduce yourself to machine learning. Understand supervised and unsupervised learning concepts and model evaluation metrics (accuracy, precision, recall). Implement basic machine learning algorithms like linear regression, K-Nearest Neighbors (KNN), or decision trees using Python libraries like sci-kit-learn.
Lastly, work on small data science projects, or use open datasets to apply your newly acquired skills. This hands-on experience is crucial for solidifying your learning.
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sampratim · 23 days
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Is data science a challenging field?
Data science is a challenging field but at the same time, it is highly rewarding. Once you get to know the basics of Data science and the different aspects of Data science then the hard work you have done will start paying you rewards.
Data Science seems challenging for the following reasons:
High Technical Skills: Data science involves learning technical tools like Machine learning, Python, Matlab, and SQL (Structured Query Language). So learning these tools and using them in the real field becomes a challenge. Also learning never stops. You need to update yourself with the continuously evolving tools.
Multidisciplinary: You need to have a strong foundation in mathematics, statistics, and computer science.
Highly creative: In addition to being multidisciplinary, data science also requires creativity. You need to think outside the box and come up with unique solutions.
Learning Data Science can be challenging. But the rewards will be worth the challenges that you have faced. You can gain the upper hand in your data science career by joining a good data science certification course.
You can also enroll in the FREE online masterclass in data science which will play an important part in the growth of your career in data science.
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sampratim · 23 days
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sampratim · 26 days
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sampratim · 26 days
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sampratim · 27 days
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sampratim · 28 days
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sampratim · 28 days
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Latest Trends in Data Science
Data Science is a multidisciplinary field that combines various techniques and methods to extract insights and knowledge from structured and unstructured data. Data science continues to evolve rapidly, with new trends emerging in response to technological advancements, industry needs, and societal developments. It encompasses elements of statistics, mathematics, computer science, domain knowledge, and communication skills to analyze complex data sets and make data-driven decisions. Read more
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