Completed
optimisation strategies
Class Central Classrooms beta
YouTube videos curated by Class Central.
Classroom Contents
Balancing Speed and Accuracy in Model Development
Automatically move to the next video in the Classroom when playback concludes
- 1 intro
- 2 preamble
- 3 data scientist at about & render, london, uk
- 4 today's talk
- 5 the essence of balance: speed vs accuracy
- 6 factors impacting accuracy and speed
- 7 the business impact of speed and accuracy
- 8 real-world examples
- 9 balancing act: speed, accuracy, and cost
- 10 strategic importance of the balance
- 11 how to understand business objectives
- 12 scenarios for ml-models
- 13 optimisation strategies
- 14 training data quality and quantity
- 15 what is a good dataset?
- 16 what is a bad dataset?
- 17 data pre-processing
- 18 how to find inefficiencies in data pre-processing?
- 19 yappi
- 20 most common inefficiencies
- 21 feature selection
- 22 shap values for feature selection
- 23 model selection
- 24 xgboost
- 25 lightgbm
- 26 how to choose the best option
- 27 a quick recap
- 28 thank you for your time!