Overview
Syllabus
Intro
RESCUE
Source Ministry
CLIENT PROBLEM
M BACKLINKS CLASSIFY THEM
1ST APPROACH IF-OLOGY UGLY CODE FOR POC
ND APPROACH NAIVE MACHINE LEARNING
DOING WITHOUT KNOWING ISA. RECIPE FOR A FAILURE
RD APPROACH, FINAL DATA ORIENTED MACHINE LEARNING WORKFLOW
CLASSIFICATION REGRESSION CLUSTERING DIMENSIONALITY REDUCTION ASSOCIATION RULES
SUPERVISED LEARNING UNSUPERVISED LEARNING REINFORCEMENT LEARNING
OUR PROBLEM
DEVELOPERS DATASET
REGRESSION PREDICTING VALUES
CLUSTERING K-MEANS
1936, RONALD FISHER IRIS DATASET
RESULTS STABILITY
CLASSIFICATION FAST ARTIFICIAL NEURAL NETWORK
HOW TO CLASSIFY OUR DATASET AUTOMATED WAY TO FIND JUNIOR/SENIOR DEVELOPER?
TECHNOLOGY
FOCUS ON IDEAS NOT TOOLS
ML IS NOT A SINGLE RUN
IT'S A PROCESS
DEFINE A PROBLEM ANALYZE YOUR DATA UNDERSTAND YOUR DATA PREPARE DATA FOR ML SELECT & RUN ALGO(S) TUNE ALGO(S) PARAMETERS SELECT FINAL MODEL VALIDATE FINAL MODEL
Taught by
code::dive conference