Bottega University’s Career Training Division is not accredited by DEAC
Career Training Programs
Machine Learning
Prerequisites for the course: Working knowledge of Python programming, undergraduate mathematics, and CLI experience.
Emphasis will be on hands on development, going through exercises and workshops together. Very little reading.
Cost of the Course: $5,000
- Machine Learning Overview
- Preprocessing
- Importance of data management
- Difference Between Independent and Dependent Variables in Data Science
- How to Import Data and Segment I and D Variables
- Script development for cleaning data
- Missing value management
- Setting up a Test and Training Set of Data
- Normalization and Feature Scaling
- Data categorization
- Numpy
- Arrays
- Dtype
- Upcasting: Implicit Casting, Astype, Structured Array
- Copy function
- Nan for placeholder element
- Inf for infinity
- transposing
- Arrays
- Regression
- Linear regression
- 5 Assumptions of a Linear Regression
- Simple
- Multiple
- Polynomial
- Decision Trees
- Forests
- Linear regression
- Classification
- Naive bayes
- Generative vs Discriminative Models
- Spam classification system
- K Nearest Neighbors
- Visualizations
- XOR Problem
- Decision Trees
- Information Entropy
- Maximizing Information Gain
- Random forest
- Logistic regressions
- Perceptron Concepts
- Bias-Variance
- Adaboost
- Naive bayes
- Bayesian Networks
- Overview
- Probability Management
- Exploring and Exploiting
- Threshold Management
- Building an A/B Testing system
- Multivariate Gaussian Likelihood
- Clustering
- K Means Clustering
- Hierarchy based clustering
- Cluster visualizations
- Neural Networks
- Overview
- Tensorflow
- Image recognition
- Boltzmann Machines
- Intuition Development
- Convolutional vs Artificial vs Recurrent
- LeNet
- Theano
- Facial Recognition Engine
- Convolutional Neural Networks (CNN)
- Artificial Neural Networks (ANN)
- Recurrent Neural Networks (RNN)
- Vendor Machine Learning Systems
- Google NLP engine
- AWS NLU (Natural Language Understanding)
- AWS Predictive Models
- Special Machine Learning Problem Case Studies
- Markov Decision Processes
- Rebuilding Google PageRank
- Monte Carlo
- Temporal Difference Learning
- Approximation Methods
Mobile Development with React Native
https://bottega.edu/mobiledevelopment/
The student will learn to build a functional mobile app from scratch that runs on Android and IOS. A mobile app that is dynamic, full of modern features, and connected to an API provided by Bottega University.
[ ] No Prerequisites • Full-Time Online • Tuition 4,500 USD
Estimated at 220 hours (6** weeks Full-Time).
[ ] No Prerequisites • Part-Time Online • Tuition 3,500 USD
Estimated at 220 hours (15* weeks Part-Time)
[ ] For Developers • Part-Time • Tuition 2,500 USD
Estimated at 160 hours (11* weeks Part-Time).
[ ] For React Developers • Part-Time • Tuition 1,500 USD
Estimated at 105 hours (7* weeks Part-Time)
* Part time schedule estimated time to completion based on a required minimum 15 hours per week for online study, test and quiz prep, time allotted to take tests and quizzes, course work, homework and time to build capstone. If a student dedicates more than 15 hours per week, completion time will be shorter.
**Time zone will vary. For a full-time remote student, be aware that all classes are in the Mountain Time Zone.
*************************** PART-TIME ***************************
[ ] Front End Development – Vue.js + React.js
Tuition $7,500 USD
The Vue.js + React.js curriculum. The student will learn the foundation level of the main programming languages and completes industry equivalent entry-level software programming projects. Estimated at 600 hours (10 months, 40 weeks Part-Time)