machine learning engineer step 2
Top 6 errors novice machine learning engineers make
In machine learning, there are many ways to build a product or solution and each way assumes something different. Many times, it's not obvious how to navigate and identify which assumptions are reasonable. People new to machine learning make mistakes, which in hindsight will often feel silly. I've created a list of the top mistakes that novice machine learning engineers make. Hopefully, you can learn from these common errors and create more robust solutions that bring real value.
Top 6 errors novice machine learning engineers make
In machine learning, there are many ways to build a product or solution and each way assumes something different. Many times, it's not obvious how to navigate and identify which assumptions are reasonable. People new to machine learning make mistakes, which in hindsight will often feel silly. I've created a list of the top mistakes that novice machine learning engineers make. Hopefully, you can learn from these common errors and create more robust solutions that bring real value.
Becoming a Machine Learning Engineer Step 2: Pick a Process
After a few applied machine learning problems, you usually develop a pattern or process for quickly getting started and achieving good results. Once you have this process it is trivial to use it again and again on project after project. The more developed your process, the faster you can get to results! Let me give you a head start and teach you a 5-step systematic process that I developed while becoming a machine learning engineer. This step is all about learning more about the problem at hand.
Top 6 errors novice machine learning engineers make
In machine learning, there are many ways to build a product or solution and each way assumes something different. Many times, it's not obvious how to navigate and identify which assumptions are reasonable. People new to machine learning make mistakes, which in hindsight will often feel silly. I've created a list of the top mistakes that novice machine learning engineers make. Hopefully, you can learn from these common errors and create more robust solutions that bring real value.