In this episode, we have Thomas J Fan sharing how his open source contributions and physics background paved the way for his successful transition into a machine learning career
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Timestamps
0:00 🤝Meet Thomas
01:19 🚀 Transition from Software Engineer to Machine Learning Engineer
02:48 🛤️ Steps to Becoming a Machine Learning Engineer
03:42 🔍 Differences Between Data Engineers and Machine Learning Engineers
04:25 🌐 Connecting Machine Learning to Domain Expertise
04:53 💻 Breaking into Software Engineering Through Open Source
05:51 🌟 Benefits of Open Source Contributions
07:29 🏁 Getting Started with Open Source Projects
08:40 📚 Recommended Open Source Communities for Machine Learning
09:31 📈 Leveraging Open Source Contributions in Job Searches
14:23 🎤 Preparing for Tech Talks
15:22 📄 Reframing Your Resume for Tech Roles
16:35 📝 Machine Learning Engineer Interview Process
17:37 🌟 Future Opportunities in Machine Learning
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