8 golden rules for breaking into Data Science

Data Science is a complex and constantly evolving field. It can be difficult to know where to start and how to succeed. Here are some keys to help you get started on the right path:

  1. Take notes of everything you try. This will allow you to track your progress and understand what is working and what is not. The world of data science is filled with complexities and there are countless parameters to explore. Don't rely solely on your memory to remember every detail; Complete documentation can be your best ally.

  2. Use a single metric to compare your trials. This will help you stay focused on your goal and avoid getting distracted.

  3. Never watch your code run. If it takes more than a few seconds, work with a sample data. This will save you time and resources.

  4. Change just one thing between each try. This will allow you to draw clear conclusions from your tests.

  5. Following these tips will help you improve in Data Science and succeed in this field.

  6. Stay organized. Data Science can be a very complex field, so it is important to stay organized. Use tools like notebooks, spreadsheets, or databases to track your data, testing, and results.

  7. Be patient. Data Science takes time and effort. Don't get discouraged if you don't see results right away. Keep working hard and you will eventually succeed.

  8. Don't be afraid to ask for help. There are many resources available to help you learn Data Science. Don’t hesitate to ask for help from your peers, mentors, or experts in the matter.

8 golden rules in Data Science

With patience, perseverance and help, you can succeed in Data Science.

It may seem simple at first glance, but make no mistake, data science is a complex and challenging journey. However, with a solid methodology and unwavering will, you can overcome the challenges that come your way. Go forward, the world of data science is waiting for you! 💪

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