Don't Learn Machine Learning, Instead learn this!
Summary
TLDRDeep Chen discusses the challenges of pursuing machine learning in 2024, highlighting its complexity and the need for a solid foundation in math, statistics, and programming. He notes the current job market's preference for experienced individuals over freshers due to the economic slowdown. Chen suggests that generative AI, which focuses on prompt engineering with large language models (LLMs), is a more accessible field for freshers. He advises learning backend and frontend development to complement basic machine learning knowledge for roles in generative AI, positioning oneself as an AI/ML engineer. For those not interested in full-stack development, alternative careers in data science are recommended.
Takeaways
- π§ Machine Learning is complex and requires a solid foundation in mathematics, statistics, and programming.
- π Learning ML is not a quick process; it demands years of practice and deep understanding of algorithms.
- π The job market for ML and data science roles has tightened due to economic slowdown, favoring experienced candidates.
- π Despite learning ML, freshers often lack the industry experience compared to those with 2-3 years of experience.
- πΌ Companies are increasingly seeking experienced individuals for ML and data science roles, making it difficult for freshers to break in.
- π The market is shifting towards Generative AI, which is less about deep ML knowledge and more about prompt engineering with LLMs.
- πΌ For those with ML experience, transitioning to Generative AI roles might be easier, as it requires less in-depth ML knowledge.
- π οΈ If aiming for Generative AI roles, having a basic understanding of ML and DL, along with backend and frontend development skills, is beneficial.
- π For those deeply interested in ML research, pursuing higher education like a master's or PhD is recommended.
- π Other career options in the data science industry for freshers include data engineering, MLOps engineering, AI product management, and data analysis.
Q & A
Why does the speaker suggest that machine learning might not be a good choice for some people in 2024?
-The speaker suggests that machine learning might not be a good choice due to its complexity, the need for a solid foundation in mathematics, statistics, and programming, and the current economic slowdown that has led to fewer job opportunities for freshers in the field.
What are the challenges faced by beginners when learning machine learning according to the script?
-Beginners face challenges such as the difficulty of learning the subject, the need for a solid foundation in related fields, and the complexity of topics that can be overwhelming, leading many to give up.
How has the job market for machine learning and data science roles changed according to the speaker?
-The job market has become more competitive and less welcoming to freshers due to the economic slowdown, with companies preferring experienced candidates and a shift towards roles that involve generative AI.
What is the role of generative AI in the current AI job market as per the speaker?
-Generative AI is becoming a more prominent role in the AI job market, as it involves working with large language models (LLMs) and prompt engineering, which is less technically demanding compared to traditional machine learning roles.
Why does the speaker recommend generative AI roles for freshers over traditional machine learning roles?
-The speaker recommends generative AI roles because they are less demanding in terms of deep machine learning knowledge, focus more on prompt engineering and API usage, and are in higher demand due to the current market shift towards AI integration.
What advice does the speaker give to those who have learned machine learning and deep learning but are not sure about their career path?
-The speaker advises those with knowledge in machine learning and deep learning to consider roles in generative AI, which may require some machine learning background but also involve full-stack development skills.
What are some alternative career paths in the AI field that the speaker suggests for freshers?
-The speaker suggests alternative careers such as data engineer, MLOps engineer, AI product manager, or data analyst, which may not require as deep machine learning expertise as traditional machine learning roles.
What skills does the speaker recommend learning for someone interested in generative AI roles?
-For generative AI roles, the speaker recommends learning backend development with frameworks like Django, FastAPI, or Flask for Python, and front-end development with HTML, CSS, and frameworks like React, Angular, or Vue.js.
How does the speaker describe the future of AI products in relation to generative AI?
-The speaker describes the future of AI products as being heavily based on generative AI, with many apps integrating chatbots and companies automating tasks using AI, indicating a growing demand for generative AI skills.
What does the speaker suggest for those who are passionate about deep machine learning concepts and research?
-For those passionate about deep machine learning and research, the speaker suggests pursuing higher education like a master's or a PhD to contribute significantly to the industry.
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