NEURASPHERE

Data science

Course Duration: 4 months (29 classes, 2 classes per week)

Week 1

# Class 1-2 Details
1 Introduction to the Course and Artificial Intelligence, Use cases of AI, Introduction to Python. A glimpse of AI, what are the career paths, What I do in this space and so on, Setting up Environment,
Syntax (Variables, Inputs, Datatypes, If-else, Mathematical Operations), Loops, Functions, Break, Continue, Pass Keywords.

Week 2

# Class 3-4 Details
1 Python Data Structures & Key Functions,
Parallel Lists, Exception Handling, List Comprehension, List Slicing
Data Structures (List, Arrays, Set, Dictionary, Tuple), Map, Apply, Filter, Regex & Recursion,
Parallel Lists, Exception Handling, List Comprehension, List Slicing + Assignment Discussion

Week 3

# Class 5-6 Details
1 Data Extraction, Data Extraction ++ Playing with CVSs, JSON, RSS feeds, Data Scraping, Extraction via Restful APIs

Week 4

# Class 7-8 Details
1 Intro to Pandas, Intro to
NumPy + Seaborn + SciPy
Merge, concat, dropping duplicates, removal of Nulls, filtering records etc) with a real-world dataset, feature engineering
NumPy arrays & some handy functions, Analytical library used in plotting different interactive graphs. SciPy

Week-5

# Class 9-10 Details
1 Introduction to SQL Introduction
to SQL ++
DDL, DML, WHERE Statements, Different Types of Joins, SubQueries Union, Intersect, Triggers, Stored Procedures, Wildcards and CTEs.

Week-6

# Class 11-12 Details
1 Data Engineering Pipeline Data Engineering Advance Deploying a full fledge pipeline which includes Data Extraction, Cleaning, Validations and Ingestion Introduction to T-SQL, Hadoop, Spark, Airflow, Databricks, Cloud (Azure, AWS, GCP)

Week-7

# Class 13-14 Details
1 Data Engineering Advance
Assignment 1,2,3 Solution
Discussion
Datawarehouse, DataMart’s, OLTP vs OLAP, ELT vs ETL, SIT vs STAGE vs PROD

Week-8

# Class 15-16 Details
1 Introduction to Statistics Statistics ++ Basic Statistics - Plan to have a session by an external resource
ANOVA Test, Chi-Square - Plan to have a session by an external resource

Week-9

# Class 17-18 Details
1 Introduction to Machine Learning Linear Regression, Types of Regression Supervised, Unsupervised, Reinforcement Learning with examples How it works, in what problems we use this? How to interpret and a demo notebook where we'd extracted results with Linear Regression

Week-10

# Class 19-20 Details
1 Overfitting & Underfitting, Cross validation Train-test split, Hyperparameters tuning Concepts + examples and solutions to each problem Different train-test split variants and types of Hyper-parameters tuning

Week-11

# Class 21-22 Details
1 Machine Learning Models Confusion Matrix & Classification Report Logistic Regression, SVM, Decision Trees etc How a model is correct acc to our use-case, will discuss different metrics

Week-12

# Class 23-24 Details
1 Associative Rule Mining Introduction to Deep Learning FP-Tree, Apriori Algos | A small glimpse of Nueral Networks, CNN, RNNs, LSTM and GANs etc so that they have idea about it

Week-13

# Class 25-26 Details
1 Dashboard (PowerBI or Looker or Tableau) Business Use case External Person will come to teach this A hands-on approach which will enhance Cognitive Skills that how we can think like a business and deliver some solutions to them

Week-14

# Class 27-28 Details
1 Upwork Session Capstone Project How to win clients at Upwork as Data Analyst, Data Engineering and Machine Learning niche A project in which all concepts will be revised through coding.

Week-15

# Class 29 Details
1 Project Presentations Reviewed by External Members