Have any question ?
+91 8106-920-029
+91 6301-939-583
team@appliedaicourse.com
Register
Login
COURSES
Applied Machine Learning Course
Diploma in AI and ML
GATE CS Blended Course
Interview Preparation Course
AI Workshop
AI Case Studies
Courses
Applied Machine Learning Course
Workshop
Case Studies
Job Guarantee
Job Guarantee Terms & Conditions
Incubation Center
Student Blogs
Live Sessions
Success Stories
For Business
Upskill
Hire From Us
Contact Us
Home
Courses
Netflix Movie recommendation system
Comparison between various models.
Comparison between various models.
Instructor:
Applied AI Course
Duration:
4 mins
Full Screen
Close
This content is restricted. Please
Login
Prev
Next
Final models with all features and predictors.
Assignments
Netflix Movie Recommendation System
1.1
Business/Real world problem:Problem definition
6 min
1.2
Objectives and constraints
7 min
1.3
Mapping to an ML problem:Data overview
4 min
1.4
Mapping to an ML problem:ML problem formulation
5 min
1.5
Exploratory Data Analysis:Data preprocessing
7 min
1.6
Exploratory Data Analysis:Temporal Train-Test split.
6 min
1.7
Exploratory Data Analysis:Preliminary data analysis.
15 min
1.8
Exploratory Data Analysis:Sparse matrix representation
8 min
1.9
Exploratory Data Analysis:Average ratings for various slices
8 min
1.10
Exploratory Data Analysis:Cold start problem
5 min
1.11
Computing Similarity matrices:User-User similarity matrix
20 min
1.12
Computing Similarity matrices:Movie-Movie similarity
6 min
1.13
Computing Similarity matrices:Does movie-movie similarity work?
6 min
1.14
ML Models:Surprise library
6 min
1.15
Overview of the modelling strategy.
8 min
1.16
Data Sampling.
5 min
1.17
Google drive with intermediate files
2 min
1.18
Featurizations for regression.
11 min
1.19
Data transformation for Surprise.
2 min
1.20
Xgboost with 13 features
6 min
1.21
Surprise Baseline model.
9 min
1.22
Xgboost + 13 features +Surprise baseline model
4 min
1.23
Surprise KNN predictors
15 min
1.24
Matrix Factorization models using Surprise
5 min
1.25
SVD ++ with implicit feedback
11 min
1.26
Final models with all features and predictors.
4 min
1.27
Comparison between various models.
4 min
1.28
Assignments
4 min
Close