•1 min read•from Data Science
Feeling Really Lost, just wrapped up my 2nd year in my DS Bachelor Degree,I do have 2-3 projects on my cv + knowledgable in Python,SQL,and all the imp libraries.What should I learn from this point onwards?Should i do AI?Cloud?go deeper in DS? ML? Would love for someone with industry exp. to help me
Our take
Navigating your career path after two years in a Data Science Bachelor’s program can be challenging, especially with the current job market. Given your skills in Python, SQL, and relevant libraries, you have a solid foundation. To enhance your employability, consider deepening your knowledge in machine learning or exploring artificial intelligence, as these areas are increasingly in demand. Additionally, gaining experience in cloud technologies can broaden your skill set.
The entry level job market being in shambles is another factor contributing to my confusion on what to learn now, also ML? AI? Further into DS? My main goal is employability. What are hiring managers looking for in fresh grads?
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