• Get International real-time project exposure by attending the Industry Immersion Program in Singapore Sponsored by Geeklurn.

  • Become a Certified Data Science Professional from IBM.

  • Work as Jr. Data Science Research Associate in NASSCOM based AI Startups founded by IITians.

  • Get government recognised program completion certification from NSDC.

  • Get International career opportunities through NSDC International & OPPTY.AI.

  • Get International real-time project exposure by attending the Industry Immersion Program in Singapore Sponsored by Geeklurn.

  • Become a Certified Data Science Professional from IBM.

  • Work as Jr. Data Science Research Associate in NASSCOM based AI Startups founded by IITians.

  • Get government recognised program completion certification from NSDC.

  • Get International career opportunities through NSDC International & OPPTY.AI.

2200+

Alumni Students

Online

Format

6 Months

Program Duration

110+

Hiring Partners

EMI Options

Rs 5000+ * per month

IBM Certification Achieved by Geeklurn Students

We feel overjoyed in sharing the success of our students who have completed their training program at Geeklurn and received their IBM certifications in Data Science. We congratulate them on their amazing accomplishment and wish them the best in all their future endeavours.

Industry Immersion Program, Singapore

Industry Immersion Program in Singapore - 3 Days

Free Guidance & Counseling on H1B VISA for all Geeklurn students

Geeklurn is elated to announce that we’re providing consultancy and counselling services to our students wanting to avail abroad employment.We’re here to guide them through the whole process and here to make it hassle free. Our team of experienced professionals will take care of every documentation process, application and more to ensure a fruitful experience for you.

Free Guidance & Counseling on H1B VISA for all Geeklurn students

Geeklurn is elated to announce that we’re providing consultancy and counselling services to our students wanting to avail abroad employment.We’re here to guide them through the whole process and here to make it hassle free.Our team of experienced professionals will take care of every documentation process, application and more to ensure a fruitful experience for you.

Program Overview

Key Highlights

  • 6-Months Course Duration

  • Remote or Hybrid International internship opportunity

  • 210+ hours Live Interactive Sessions with Eminent Data Scientists.

  • Get International real-time project exposure by attending the Industry Immersion Program in Singapore sponsored by Geeklurn.

  • Start paying your EMI only after placements at the end of the course

  • Get Certified from International Business Machines

  • 360 Degree Career Support that includes Mock interview, Aptitude test, Group discussion & more

  • Get the opportunity to conduct research work with Singapore based GEEKLURN AI

  • Work on 40+ Data tools, 30+ Real Time Case Studies and upto 10 Capstone Projects

  • Enjoy scholarships from Day One up to Rs 1.20 Lakhs based on the type of Research Projects

  • 1-1 Mentoring and Career support

Program Certificates

Data Science Architect Program Overview

Guaranteed Job Opportunities

Secure exciting Data Science jobs in top companies through our network of over 500 hiring partners and HR companies.

1-on-1 Career Mentorship

Enhance your resume, prepare for technical interviews, and gain career growth hacks with valuable insights from industry experts and principal data scientists.

Easy Financing Options

GeekLurn offers an easy financing option with our finance partners.

Learn Now Pay Later

Student gets an opportunity to complete the program* and pay after getting placement.

Placement Stats

30% Average Salary Hike

16 LPA Average Salary

8000 + Jobs Sourced

500+ Hiring Partners

Where Our Learners Work

Our Alumni

Meet Our GeekLurn-ers who are now Certified Data Science Professionals and were placed in Top MNCs by our HR Team!.

Mahadev Kadam

Data Scientist at Hexaware Technologies

Offered 29 LPA

Product Development Architect - Senior Specialist In FIS

Data Scientist

Teena Prithviraj Jain

Data Scientist at Hexaware Technologies

Adinath Solutions Logo Software Developer at Adinath Solutions

Data Scientist

Bhargav Nishanth

Data Scientist at Hexaware Technologies

Offered 5.5 LPA

Technical Support Specialist at Tech Mahindra

Data Scientist

Shashi Kiran

Data Scientist at
Tata Consultancy Services

Offered 14 LPA

Data Analyst at HCL

Machine Learning Engineer

Vamshi Krishna

Data Scientist
at Accenture

Software Test Engineer

Data Scientist

Shammer Khan

Professional 1 Product Delivery at DXC Technology

Offered 9 LPA

Data Science Trainee

Professional 1 Product Delivery

Chethan

Data Scientist at smart Data Enterprises Inc.

Offered 8 LPA

Design Engineer at Vengala Engineering Design Services (VEDS)

Data Scientist

Jay Prakash

Assistant Manager at Flipkart

Offered 30% Hike

Machine Learning Trainer at Vaidehi Software Technologies

Assistant Manager

Abhirami KV

DataScience Intern at Bayer

Offer 3.6 LPA

Fresher

Data Science Consultant

Tejasvi M

Data Scientist Trainee at ByteIQ Analytics pvt ltd

Offered 3.36 LPA

Fresher

Data Scientist Trainee

Anuj Kumar

Data Scientist Trainee at ByteIQ Analytics pvt ltd

Offered 3.36 LPA

Telecom Domain

Data Scientist Trainee

Student Reviews

International Student Reviews

Jay Prakash Sethy
Jay Prakash Sethy
Senior Executive Data Analyst @ Flipkart
Read More
I attended the 24-month Data Science Architect program at GEEKLURN and it was a fantastic experience. The curriculum is structured to help students master the essential vocabulary in Python (and R). All-in-all I felt the program delivered exactly the skills that I was looking to build. I'd recommend it highly to anybody who wants an effective foundation in Data Science and wants to Upscale.

Shameer Khan
Shameer Khan
Product Delivery Manager @ DXC Technology Massachusetts Institute of Technology
Read More
Great place to learn Machine Learning/Data Science and related tools and technologies! Provides excellent placement support as well. I can say from my personal experience that it is the place to go for learning Data Science.

Sagar Talele
Sagar Talele
Project Lead at LTI @ Larsen & Toubro Infotech Pvt. Ltd, Pune
Read More
Great Course!. Very well structured modules and neat concepts. The trainers were amazing. I would highly recommend to anyone looking out to kickstart their career and upgrade in the field of Data Science, Geeklurn is the place, guys!.

Sashi Kiran C
Sashi Kiran C
Senior Data Analyst @ HCL Technologies , Bangalore
Read More
The session was good, I had a good learning experience . I had taken few courses before but I found Geeklurn’s curriculum upto the mark and better according to job requirements standards. The mentor well experienced and held expertise in their following field. I would certainly recommend this course to every Data enthusiast

Deepak edukula
Deepak edukula
SAP BASIS & Hana Senior Analyst at HCL in India
Read More
It is an amazing place to learn Data science from scratch. All trainers are working as data scientist professional in top companies. Hence trainers teach topic which are irrelevant to industry standard. Since trainers are using very simple language, it is easy for us to understand and it makes more interesting towards our learning. Assessment and mock interview will be conducted after completion of each module. Good to join. Hope I made good decision.

Krushna Bhalke
Krushna Bhalke
Junior Engineer at Pinnacle Piling (India) Pvt Ltd
Read More
Teaching is good, Support and assistance is great. They give you special time for your doubts.

Chaitra Raju
Chaitra Raju
Data Science Intern at GEEKLURN ASIA
Read More
I’m glad to be a part of Geeklurn. Thanks to my trainer and entire team of Geeklurn for helping me achieve my dream job.

Naresh Katturi
Naresh Katturi
Datascience(Research Associate) at GeekLurn
Read More
It's been great pleasure to mention my words about geeklurn. For the last 6 months I have been getting trained from geeklurn by the trainer Adhvaith sir. He teaches every topic from basic level so that any person can understand the concept easily. And the support from geeklurn in terms of LMS and mentoring session for doubts clarification also very helpfull. I hope this will continue till I get a job. Thank you Geeklurn Team.

Ayush Sharma
Ayush Sharma
EV Technical Expert at Morris Garages India
Read More
It's been great pleasure to write about geeklurn. For the last 6-7 months I have been getting trained from geeklurn by the trainer Adhvaith sir. He teaches every topic from scratch so that any person can understand the concept easily and the support from geeklurn in terms of LMS and mentoring session for doubts clarification also is very helpfull. I hope this will continue till I get a job. Thank you Geeklurn Team and Special thanks to Mr. Advaith.

Gurukiran PS
Gurukiran PS
WFM Real Time Analyst at Groupon
Read More
Best institute to learn Data Science. 1. Well designed course 2. Good Advisors (Mr. Murthy Adivi sir) 3. Daily assignments 4. Ensuring best placements. 5. We can start this course with completely no prior knowledge. 6. Best institute to become Data scientist.

Harshini T
Harshini T
Associate Consultant at Capgemini
Read More
Very Good course to start learning data science that has a curated content, well structured from the basics. Very Helpful instructor's and Geeklurn team.

Previous
Next

Alumni Success Meet at GeekLurn HQ

Core Stages of Our DSAP Program

Stage 1

A conducive learning environment with 6 months of live interactive real-time training sessions with 1:1 mentorship offered by top industry experts who are working as Principal & Senior Data Scientists

Stage 2

Students will participate in Industry Immersion Program in Singapore for 3 days to gain real-time industry project experience.

Stage 3

Students will get an opportunity to work as a research associate in NASSCOM based AI startups founded by IITians.

Stage 4

Students will attend graduation day to get program completion certificate in the presence Data Science and AI startups and HR community.

Stage 5

Placement activities will be initiated and students will avail 50+ job interview opportunities.

Data Science Architect Program Overview

GEEKLURN’s Data Science Architect Program is designed by industry experts and practitioners. It will provide you with tech-enabled job-relevant skills through the design, development and deployment of Big Data to convert it into real-time applications. The course is intended for both freshers and working professionals and will aim to positively and significantly impact their careers. Work on real-time case studies, & gain project mentorships & certifications through our Guaranteed Job Opportunities program that, will make you job-ready and more relevant in the industry for various data science job roles.
With exposure to the key concepts and tools, towards the end of this program, you will have expertise in Testing, Analysis Modules, Hadoop Development, Administration, Statistical Computing, working with Real Analytics, analysing machine-generated data, and developing NoSQL Applications along with the mastering of Deep Learning and Artificial intelligence.
Who should take this Program
  • Students from NON-IT background like B.Com & MBA who wants to build a career in Business Analytics / Data Analytics / Data Science Project Management.
  • Any Engineering / BCA / MCA graduate who wants to build a career in Data Science.
  • IT and Computer Science Graduates who want to build a career in Data Science.
  • IT Professionals who wish to make a career shift to Data Sciences.
  • Data Science Professionals who wish to Upskill and become Data Architects.
What is the pre-requisite for taking up this training course?
There are no prerequisites as such to get on-board this program.
Why should you Take up This Program?
  • On a daily basis, over 5 billion consumers interact with data and that
    number will increase to 6 billion by 2025, representing
    three-quarters of the world’s population.
  • The Global Big Data Market is expected to reach $122 billion in revenue by
    2025 – Frost & Sullivan
  • Research shows 94% of data science graduates
    have gotten jobs in this field since 2011.
To reap out the benefits of this growing career opportunity,
embrace Data and secure your career as a Data Scientist by
getting certified with our 100% Job Guarantee Data Science Architect Program  Today!.

After completion of this course, the Learner will be eligible for any of the following Job Roles:

Tech Talks by Eminent Industry Experts

Mr. Havish Madhvapaty

Founder – Havish M Consulting

Mr. Priyank Ahuja

Product Manager – Accenture

Mr. Dhaval Thanki

Vice President, APAC, MEA  – LogiNext

Mr. Anand Gurumurthy

CEO and Founder – Cosmitude Softwares Pvt Ltd

Mr Sujit Sukumaran

Founder & CEO – Optimus Management Consultants, Dubai, United Arab Emirates

Dr.Rajashekhar Karjagi

Manager – Analytics Solutions & POC – Accenture

Mr. Mukesh Jain

Global CTIO “Data”, Global Head of Innovation & VP Insights & Data – Capgemini

Mr. Joshua Devadas

Data Science Manager – Accenture

Mr. Nitin Bhosekar

Head Advanced Analytics, Artificial Intelligence, Automation, Big Data, DW Practice & Executive Vice President – Aress Software

Mr. Utsab Chakraborty

Senior Analytics Manager (Asst. Director) – Flipkart

Major Dr. Alexander M John

Vice President, Operations – Foundation AI

Mr. Manoj Kumar Rajendran

Principal Data Scientist – MiQ Digital India

Mr. Vinayakaram Gururajan

Data Scientist – Tata Consultancy Services

Mr Shriram Vasudevan

Project Manager – L&T Technology Service Ltd

Mr Balaji Subudhi

Senior Data Scientist – Mojro

Mr. Anish Raj

Human Resources Director

Mrs. Keru Chen

Analytics Manager – Product Grab, Singapore

Mrs. Mithila Harish

Data Scientist Micron Technology, Singapore

Mr. Ravi Parthasarathy

CEO/Director People Plus Consultants, Singapore

Advisors

Advisors

Advaith R PData Scientist at ExcelR
Read More
He is our ace trainer working one of the leading market research company based out of London, has a extensive experience in the field of Analytics. He is with us over 2 years.
Adivi MurthyPrincipal Data Scientist, Technical Trainer at Geeklurn Educational Services
Read More
MBA with 8.5 years of experience in Reporting, Analytics, Operational & Functional Excellence, Business Intelligence, Project Management and Marketing Research. Subject Matter Expert with skills in Analytics-General & Primary Research (NPS). Skilled in executing projects for data driven solutions and providing comprehensive reporting & visualisation analytical solutions through extensive marketing research.
Thejasvi T VData Science Manager
Read More
Data Scientist and a Certified Six Sigma Black Belt (ASQ) with 15+ years of experience in applying statistical techniques for solving business problems across industry verticals. Rich experience in applying six sigma methodology and quality improvement. Focus on new developments in analytics and data mining. Development and Implementation of data mining and machine learning techniques/algorithms in different domains. Hands-on experience in the use of R and KNIME.
Udayan GoswamiStatistics-Masters in Data Science & FinTech at University of London
Read More
Experience in building predictive and statistical model with a demonstrated history of working in the information technology and services industry. Skilled in python, pyspark, Hive(basic),Excel, Powerpoint, R and SPSS, SQL,Spark and Retail Banking.
Sumanth meenanData Scientist
Read More
Data scientist with 4+ years of experience in building Machine Learning and Deep Learning models. Worked extensively on Python3, from webscrapping on JS enabled webpages using BeautifulSoup and Selenium to building Machine Learning Models using libraries like sklearn, libsvm, xgboost, nltk, spacy, etc., to their deployment in production, maintaining and monitoring them using Kubeflow.
Vinod vedaSr. Applied Data Scientist
Read More
Course Instructor (Data Science) data science for business courses with and also at Excelr solutions. Whille he continues to work at a corporate firm at Bengaluru.
Prashanth NayalakantiManager, Strategy & Analytics, AI & Data Science
Read More
A 14+ years of experience teaches passionately to our trainees from deloitte
Anagha Sathyanarayana K SCo-founder & CEO at Scion Agricos
Read More
Co-founder & CEO at Scion Agricos is a certified SQL, Tableue and Power BI
Mohan ATech Lead Data Scientist at INVESCO (HYDERABAD) PRIVATE LIMITED
Read More
I am meticulous, results-oriented, and skilled professional offering more than four years of experience and expertise in collecting, analyzing and interpreting large datasets, developing new forecasting models and performing data management tasks. I am adept in providing strategic direction for the company by identifying opportunities in large, rich data sets and creating and implementing data driven strategies including revenue and profits.
Sandeepa MSData Science Expert @ HP Sales Ops
Read More
Data Science professional with strong Statistical background, deep knowledge of Statistical concepts ,existing Machine Learning, Data Mining algorithms. Passionate about data which can be used to build intelligent systems for solving important problems with the help of Statistics.Expertise in understanding complex business requirements and communicates effectively with clients. Specialities: Machine Learning,Statistical Modeling,Predictive Modeling, R, Python ,SQL,SAS, SPSS and analytics.
Shreehari NalaboluData Scientist at Novartis | Ex-Verizon | AI Mentor
Read More
As a part of the Analytics team, I help the business in improving customer satisfaction and reduce operation costs through data driven techniques. Identify the key pain points in the business, convert the business problem into Data Science problem and solve them through Advanced Analytics.
Chandra Shekar GogulaConsultant at TCS (Data Scientist)
Read More
Chandra Sekhar is a Data Scientist professional with close to 9+ years of experience in Machine Learning, Statistical Modelling, Data Science, Predictive Analytics & Business Consulting. He has a demonstrated history of working in domains like BFSI, Retail, e-Commerce, Media & Entertainment etc. He is a graduate from Andhra University . Specialties: FMCG | Market Research | Click stream data | Banking & Finance | Predictive Analytics | Data Science | Advanced Statistics | Data Mining | Machine Learning | SAS | R| VBA | SawTooth | SQL |Power BI | Python | SPSS |Excel based Simulators.
Tushit DaveData consultant
Read More
Data Scientist by using Python for Machine Learning, Artificial Intelligence , data visualization, predictive analysis and exploratory data analysis within Data Science space consulting firms. Focus on Natural Language Processing(NLP), Machine Learning(ML) , Computer Vision and Deep Learning(DL). Language & Framework: Python (pandas, numpy, scikit-learn, scrapy, flask, etc...) | Deep Learning (Keras/Tensorflow, Pytorch) | Docker | Spark | R | SQL | AutoML(TPOT) |
Mithun DJSenior manager Data Sciences
Read More
10 years of experience as a Data science Trainer. Expert in R, Python, SPSS, ORANGE, TABLEAU, Machine Learning, Deep Learning, NLP. Certification: AWS Academy Graduate - AWS Academy Machine Learning Foundations AWS Academy Educator IBM certified Trainer Enterprise Design Thinker Projects Handled: Campaign Response Models for AVIVA Supply chain Analytics, Malaysian Analytics Airport Analytics, Bank Defualter and Fraud Analytics
Raja SrivatasavaSoftware Developer at Publicis Sapient | Ex-TCSer
Read More
An experienced Data Science professional with a strong background on Statistics, statistical modeling,, data mining, machine learning, and deep learning frameworks for NLP and Computer vision.
Advaith R PData Scientist at ExcelR
Read More
He is our ace trainer working one of the leading market research company based out of London, has a extensive experience in the field of Analytics. He is with us over 2 years.
Thejasvi T VData Science Manager
Read More
Data Scientist and a Certified Six Sigma Black Belt (ASQ) with 15+ years of experience in applying statistical techniques for solving business problems across industry verticals. Rich experience in applying six sigma methodology and quality improvement. Focus on new developments in analytics and data mining. Development and Implementation of data mining and machine learning techniques/algorithms in different domains. Hands-on experience in the use of R and KNIME.
Udayan GoswamiStatistics-Masters in Data Science & FinTech at University of London
Read More
Experience in building predictive and statistical model with a demonstrated history of working in the information technology and services industry. Skilled in python, pyspark, Hive(basic),Excel, Powerpoint, R and SPSS, SQL,Spark and Retail Banking.
Sumanth meenanData Scientist
Read More
Data scientist with 4+ years of experience in building Machine Learning and Deep Learning models. Worked extensively on Python3, from webscrapping on JS enabled webpages using BeautifulSoup and Selenium to building Machine Learning Models using libraries like sklearn, libsvm, xgboost, nltk, spacy, etc., to their deployment in production, maintaining and monitoring them using Kubeflow.
Vinod vedaSr. Applied Data Scientist
Read More
Course Instructor (Data Science) data science for business courses with and also at Excelr solutions. Whille he continues to work at a corporate firm at Bengaluru.
Prashanth NayalakantiManager, Strategy & Analytics, AI & Data Science
Read More
A 14+ years of experience teaches passionately to our trainees from deloitte
Anagha Sathyanarayana K SCo-founder & CEO at Scion Agricos
Read More
Co-founder & CEO at Scion Agricos is a certified SQL, Tableue and Power BI
Mohan ATech Lead Data Scientist at INVESCO (HYDERABAD) PRIVATE LIMITED
Read More
I am meticulous, results-oriented, and skilled professional offering more than four years of experience and expertise in collecting, analyzing and interpreting large datasets, developing new forecasting models and performing data management tasks. I am adept in providing strategic direction for the company by identifying opportunities in large, rich data sets and creating and implementing data driven strategies including revenue and profits.
Sandeepa MSData Science Expert @ HP Sales Ops
Read More
Data Science professional with strong Statistical background, deep knowledge of Statistical concepts ,existing Machine Learning, Data Mining algorithms. Passionate about data which can be used to build intelligent systems for solving important problems with the help of Statistics.Expertise in understanding complex business requirements and communicates effectively with clients. Specialities: Machine Learning,Statistical Modeling,Predictive Modeling, R, Python ,SQL,SAS, SPSS and analytics.
Shreehari NalaboluData Scientist at Novartis | Ex-Verizon | AI Mentor
Read More
As a part of the Analytics team, I help the business in improving customer satisfaction and reduce operation costs through data driven techniques. Identify the key pain points in the business, convert the business problem into Data Science problem and solve them through Advanced Analytics.
Chandra Shekar GogulaConsultant at TCS (Data Scientist)
Read More
Chandra Sekhar is a Data Scientist professional with close to 9+ years of experience in Machine Learning, Statistical Modelling, Data Science, Predictive Analytics & Business Consulting. He has a demonstrated history of working in domains like BFSI, Retail, e-Commerce, Media & Entertainment etc. He is a graduate from Andhra University . Specialties: FMCG | Market Research | Click stream data | Banking & Finance | Predictive Analytics | Data Science | Advanced Statistics | Data Mining | Machine Learning | SAS | R| VBA | SawTooth | SQL |Power BI | Python | SPSS |Excel based Simulators.
Tushit DaveData consultant
Read More
Data Scientist by using Python for Machine Learning, Artificial Intelligence , data visualization, predictive analysis and exploratory data analysis within Data Science space consulting firms. Focus on Natural Language Processing(NLP), Machine Learning(ML) , Computer Vision and Deep Learning(DL). Language & Framework: Python (pandas, numpy, scikit-learn, scrapy, flask, etc...) | Deep Learning (Keras/Tensorflow, Pytorch) | Docker | Spark | R | SQL | AutoML(TPOT) |
Mithun DJSenior manager Data Sciences
Read More
10 years of experience as a Data science Trainer. Expert in R, Python, SPSS, ORANGE, TABLEAU, Machine Learning, Deep Learning, NLP. Certification: AWS Academy Graduate - AWS Academy Machine Learning Foundations AWS Academy Educator IBM certified Trainer Enterprise Design Thinker Projects Handled: Campaign Response Models for AVIVA Supply chain Analytics, Malaysian Analytics Airport Analytics, Bank Defualter and Fraud Analytics
Raja SrivatasavaSoftware Developer at Publicis Sapient | Ex-TCSer
Read More
An experienced Data Science professional with a strong background on Statistics, statistical modeling,, data mining, machine learning, and deep learning frameworks for NLP and Computer vision.
Introduction to Data Science

Learning Objectives: Business Intelligence vs Data Analysis vs Data Scientist

Data Scientist Roles

Different Disciplines of Data Science:

  • Machine Learning
  • Natural Language Processing
  • Deep Learning

Applications of Machine Learning

Why Machine Learning is the Future

  • Creating the “Hello World” code
  • Demonstrating Conditional Statements
  • Variables
  • Demonstrating Loops

What are Prerequisites for Data Science?

  • Statistics
  • Python Essentials for Data Science
Statistics & Probability
  • Descriptive Statistics and Inferential Statistics
  • Sample and Population
  • Variables and Data types
  • Percentiles   
  • Measures of Central Tendency
  • Measures of Spread
  • Skewness, Kurtosis
  • Degrees of freedom
  • Variance, Covariance, Correlation
  • Descriptive statistics and Inferential Statistics in Python
  • Test of Hypothesis
  • Confidence Interval
  • Sampling Distribution
  • Standard Probability Distribution Functions
  • Bernoulli, Binomial-Distributions
  • Normal Distributions
EDA and Data Visualization
  • Data Transformations
  • Outlier Detection and Management
  • Charts and Graphs
  • One Dimensional Chart
  • Box plots
  • Bar graph
  • Histogram
  • Scatter plots
  • Multi-Dimensional Charts
  •  
Introduction to Python

Learning Objectives: You will get a brief idea of what Python is and touch on the basics.

Topics:

  • Overview of Python
  • Different Applications where Python is used
  • Values, Types, Variables
  • Conditional Statements
  • Command Line Arguments
  • The Companies using Python
  • Discuss Python Scripts on UNIX/Windows
  • Operands and Expressions
  • Loops
  • Writing to the screen

Hands-On/Demo: 

  • Creating the “Hello World” code
  • Demonstrating Conditional Statements
  • Variables
  • Demonstrating Loops

Skills:

  • Fundamentals of Python Programming
Deep Dive – Functions, OOPs, Modules, Errors, and Exceptions

Learning Objectives: In this module, you will learn how to create generic Python scripts, how to address errors/exceptions in code and finally how to extract/filter content using regex.

Topics:

  • Functions
  • Global Variables
  • Lambda Functions
  • Standard Libraries
  • The Import Statements
  • Package Installation Ways
  • Handling Multiple Exceptions
  • Function Parameters
  • Variable Scope and Returning Values
  • Object-Oriented Concepts
  • Modules Used in Python
  • Module Search Path
  • Errors and Exception Handling

Hands-On/Demo:

  • Functions – Syntax, Arguments, Keyword Arguments, Return Values
  • Sorting – Sequences, Dictionaries, Limitations of Sorting
  • Packages and Module – Modules, Import Options, Sys Path
  • Lambda – Features, Syntax, Options, Compared with the Functions
  • Errors and Exceptions – Types of Issues, Remediation

Skills:

  • Error and Exception Management in Python
  • Working with Functions in Python
Data Manipulation

Learning Objectives: Through this module, you will understand in-detail about Data Manipulation

Topics:

  • Basic Functionalities of a data object
  • Concatenation of Data objects
  • Exploring a Dataset
  • Merging of Data Objects
  • Types of Joins on data Objects
  • Analysing a Dataset

Hands-On/Demo:

  • Pandas Function- Ndim(), axes(), values(), head(), tail(), sum(), std(), iteritems(), iterrows(), itertuples()
  • Aggregation
  • Merging
  • GroupBy operations
  • Concatenation
  • Joining

Skills:

  • Python in Data Manipulation
Introduction to Machine Learning with Python

Learning Objectives: In this module, you will learn the concept of Machine Learning and its types.

Topics:

  • Python Revision (Numpy, Pandas, scikit learn, matplotlib)
  • Machine Learning Use-Cases
  • Machine Learning Categories
  • Gradient Descent
  • What is Machine Learning?
  • Machine Learning Process Flow
  • Linear Regression

Hands-On/Demo:

  • Linear Regression – Boston Dataset

Skills:

  • Machine Learning Concepts
  • Linear Regression Implementation
  • Machine Learning Types
Supervised Learning - I

Learning Objectives: In this module, you will explore Supervised Learning Techniques and their implementation, for example, Decision Trees, Random Forest Classifier, etc.

Topics:

  • What are Classification and its use cases?
  • Algorithm for Decision Tree Induction
  • Confusion Matrix
  • What is Decision Tree?
  • Creating a Perfect Decision Tree
  • What is a Random Forest?

Hands-On/Demo:

  • Implementation of Logistic Regression
  • Random Forest
  • Decision Tree

Skills:

  • Supervised Learning Concepts
  • Evaluating Model Output
  • Implementing different types of Supervised Learning Algorithms
Dimensionality Reduction

Learning Objectives: In this module, you will learn about the impact of dimensions within data. You will be taught to perform factor analysis using PCA and compress dimensions. Also, you will be developing the LDA model.

Topics:

  • Introduction to Dimensionality
  • PCA
  • Scaling Dimensional Model
  • Why Dimensionality Reduction
  • Factor Analysis
  • LDA

Hands-On/Demo: 

  • PCA
  • Scaling

Skills: 

  • Implementing Dimensionality Reduction Technique
Supervised Learning - II

Learning Objectives: In this module, you will learn Supervised Learning Techniques and their implementation, 

Topics:

  • What is Naïve Bayes?
  • Implementing Naïve Bayes Classifier
  • Illustrate how Support Vector Machine works?
  • Grid Search vs Random Search
  • How Naïve Bayes works?
  • What is Support Vector Machine?
  • Hyperparameter Optimization
  • Implementation of Support Vector Machine for Classification

Hands-On/Demo:

  • Implementation of Naïve Bayes, SVM

Skills:

  • Supervised Learning Concepts
  • Evaluating Model Output
  • Implementing different types of Supervised Learning Algorithms
Unsupervised Learning

Learning Objectives: In this module, you will learn about Unsupervised Learning and the various types of clustering that can be used to analyse the data.

Topics:

  • What is Clustering & its Use Cases?
  • How does the K-means algorithm work?
  • What is C-means Clustering?
  • How does Hierarchical Clustering works?
  • What is K-means Clustering?
  • How to do Optimal clustering
  • What is Hierarchical Clustering?

Hands-On/Demo:

  • Implementing K-means Clustering
  • Implementing Hierarchical Clustering

Skills:

  • Unsupervised Learning
  • Implementation of Clustering – Various Types

 

Association Rules Mining and Recommendation Systems

Learning Objectives: In this module, you will learn Association rules and their extension towards recommendation engines with the Apriori Algorithm.

Topics:

  • What are Association Rules?
  • Calculating Association Rule Parameters
  • How do Recommendation Engines work?
  • Content-Based Filtering
  • Association Rule Parameters
  • Recommendation Engines
  • Collaborative Filtering

Hands-On/Demo:

  • Apriori Algorithm
  • Market Basket Analysis

Skills:

  • Data Mining using Python
  • Recommender Systems using Python
Reinforcement Learning

Learning Objectives: In this module, you will learn about Unsupervised Learning and the various types of clustering that can be used to analyse the data.

Topics:

  • What is Reinforcement Learning?
  • Elements of Reinforcement Learning
  • Epsilon Greedy Algorithm
  • Q values and V values
  • α values
  • Why Reinforcement Learning
  • Exploration vs Exploitation dilemma
  • Markov Decision Process (MDP)
  • Q – Learning

Hands-On/Demo:

  • Calculating Reward
  • Calculating Optimal quantities
  • Setting up an Optimal Action
  • Discounted Reward
  • Implementing Q – Learning

Skills:

  • Implement Reinforcement Learning using Python
  • Developing Q – Learning model in Python
Time Series Analysis

Learning Objectives: In this module, you will learn about Time Series Analysis to forecast dependent variables based on time. You will be taught different models for Time Series Modeling such that you analyse a real time-dependent data for forecasting.

Topics:

  • What is Time Series Analysis?
  • Components of TSA
  • AR Model
  • ARMA Model
  • Stationarity
  • Importance of TSA
  • White Noise
  • MA Model
  • ARIMA Model
  • ACF & PACF

Hands-on/demo:

  • Checking Stationarity
  • Implementing the Dickey-Fuller Test
  • Generating the ARIMA plot
  • Converting a non-stationary data to stationary
  • Plot ACF and PACF
  • TSA Forecasting

Skills:

  • TSA in Python
Model Selection and Boosting

Learning Objectives: In this module, you will learn about selecting one model over another. Also, you will learn about Boosting and its importance in Machine Learning. You will learn on how to convert weaker algorithms into stronger ones.

Topics:

  • What is the Model Selection?
  • Cross-Validation
  • How Boosting Algorithms work?
  • Adaptive Boosting
  • The need for Model Selection
  • What is Boosting?
  • Types of Boosting Algorithms

Hands-On/Demo:

  • Cross-Validation
  • AdaBoost

Skills:

  • Model Selection
  • Boosting algorithm using Python
Sequences and File Operations

Learning Objectives: Learn different types of sequence structures, related operations and their usage. Also learn diverse ways of opening, reading, and writing to files.

Topics:

  • Python files I/O Functions
  • Strings and Related Operations
  • Lists and Related Operations
  • Sets and Related Operations
  • Numbers
  • Tuples and related operations
  • Dictionaries and related operations

Hands-On/Demo:

  • Tuple – properties, Related Operations, compared with a list
  • Dictionary – properties, related operations
  • List – properties, related operations
  • Set – properties, Related Operations

Skills:

  • File Operations using Python
  • Working with data types of Python
Introduction to NumPy, Pandas and Matplotlib

Learning Objectives: This module helps you get familiar with the basics of statistics, different types of measures and probability distributions, and the supporting libraries in Python that assist in these operations. Also, you will learn in detail about data visualisation.

Topics:

  • NumPy – Arrays
  • Indexing Slicing and iterating
  • Pandas – Data Structures & Index Operations
  • Matplotlib Library
  • Markers, Colours, Fonts and Styling
  • Contour Plots
  • Operations on Arrays
  • Reading and Writing Arrays on Files
  • Reading and Writing Data from Excel/CSV formats into Pandas
  • Grids, Axes, Plots
  • Types of Plots – Bar Graphs, Pie Charts, Histograms

Hands-On/Demo:

  • NumPy Library- Creating NumPy array, operations performed on NumPy array
  • Matplotlib – Using Scatterplot, histogram, bar graph, a pie chart to show information, Styling of Plot
  • Pandas Library- Creating series and data frames, Importing and exporting data

Skills:

  • Probability Distributions in Python
  • Python for Data Visualisation
Which Case Studies will be a part of this Python Certification Course ?

This course comprises of 40 case studies that will enrich your learning experience. In addition, we also have 4 Projects that will enhance your implementation skills. Below are a few case studies, which are part of this course:

  • Case Study 1: Maple Leaves Ltd is a start-up company that makes herbs from different types of plants and leaves. Currently, the system they use to classify the trees that they import in a batch is quite manual. A labourer from his experience decides the leaf type and subtype of the plant family. They have asked us to automate this process and remove any manual intervention from this process.
  • Case Study 2: BookRent is the largest online and offline book rental chain in India. The company charges a fixed fee per month plus rental per book. So, the company makes more money when the user rents more books. You are an ML expert and must model a recommendation engine so that the user gets a recommendation of books based on the behaviour of similar users. This will ensure that users are renting books based on their individual tastes. The company is still unprofitable and is looking to improve both revenue and profit. Compare the Error using two approaches – User-Based vs Item Based. You have to classify the plant leaves by various classifiers from different metrics of the leaves and to choose the best classifier for future reference.
  • Case Study 3: Handle missing values and fit a decision tree and compare its accuracy with a random forest classifier. Predict the survival of a horse based on various observed medical conditions. Load the data from ‘horses.csv’ and observe whether it contains missing values. Replace the missing values by the most frequent value in each column. Fit a decision tree classifier and observe the accuracy. Fit a random forest classifier and observe the accuracy.
  • Case Study 4: Principal component analysis using scikit learn. Load the digits dataset from sklearn and write a helper function to plot the image. Fit a logistic regression model and observe the accuracy. Using scikit learn to perform a PCA transformation such that the transformed dataset can explain 95% of the variance in the original dataset. Compare it with a model and also comment on the accuracy. Compute the confusion matrix and count the number of instances that have gone wrong. For each of the wrong sample, plot the digit along with the predicted and original label.
  • Case Study 5: Handling GIS data and working with maps. Creating, cleaning, collating and visualizing maps of India at different levels – state, district, taluka, and villages. Using Geo Pandas, Mapviz, and Leaflet in Python to perform spatial analytics and visualizing statistics with geographical context. Using public data of government expenditure, identify the areas and districts with the highest expenditure per capita in different states and all over India.
Which kind of projects will be a part of this Python Certification Course?

Project #1: Industry: Social Media

  • Problem Statement: You, as ML expert, have to do analysis and modeling to predict the number of shares of an article given the input parameters.
  • Actions to be performed: Load the corresponding dataset. Perform data wrangling, visualisation of the data and detect the outliers, if any. Use the plotly library in Python to draw useful insights out of data. Perform regression modeling on the dataset as well as decision tree regressor to achieve your Learning Objectives. Also, use scaling processes, PCA along with boosting techniques to optimise your model to the fullest.

Project #2: Industry: FMCG

  • Problem Statement: You as an ML expert have to cluster the countries based on various sales data provided to you across years.
  • Actions to be performed: You have to apply an unsupervised learning technique like K means or Hierarchical clustering so as to get the final solution. But before that, you have to bring the exports (in tons) of all countries down to the same scale across the years. Plus, as this solution needs to be repeatable you will have to do PCA so as to get the principal components that explain the max variance.
Natural Language Processing with deep Learning in Python

WHAT YOU WILL LEARN

  • Understand and implement word2vec
  • Understand the CBOW method in word2vec
  • Understand the skip-gram method in word2vec
  • Understand the negative sampling optimisation in word2vec
  • Understand and implement GloVe using gradient descent and alternating least squares
  • Use recurrent neural networks for parts-of-speech tagging
  • Use recurrent neural networks for named entity recognition
  • Understand and implement recursive neural networks for sentiment analysis
  • Understand and implement recursive neural tensor networks for sentiment analysis
Natural Language Processing in TensorFlow

WHAT YOU WILL LEARN

  • Build natural language processing systems using TensorFlow
  • Process text, including tokenisation and representing sentences as vectors 
  • Apply RNNs, GRUs, and LSTMs in TensorFlow 
  • Train LSTMs on existing text to create original poetry and more
Module 1 : Introduction to Natural Language Processing
  • Getting Started 

  • Knowing each other 

  • Welcome to the Course 

  • About the Course

  • Introduction to Natural Language Processing 

  • Exercise: Introduction to Natural Language Processing 

  • Podcast with NLP Researcher Sebastian Ruder

Module 2 : A Refresher to Python
  • Installation steps for Linux

  • Installation steps for Mac 

  • Installation steps for Windows

  • Packages Installation 

  • Introduction to Python 

  • Variables and Operators 

  • Exercise: Variables and Operators 

  • Python Lists 

  • Exercise: Python Lists

  • Dictionaries 

  • Exercise: Dictionaries 
  • Conditional Statements 
  • Exercise: Conditional Statements 
  • Loops 
  • Exercise: Loops 
  • Functions 
  • Python Functions Practice 
  • Exercise: Functions 
  • Packages 
  • Exercise: Packages 
  • Files 
  • Exercise: Files

Module 3 : Learn to use Regular Expressions
  • Welcome to Module 
  • Understanding Regular Expression 
  • Implementing Regular Expression in Python 
  • Exercise: Implementing Regular Expression in Python 
  • Regular Expressions in Action
Module 4 : First Step of NLP - Text Processing
  •  Welcome to Module 
  • Tokenization and Text Normalisation 
  • Exercise: Tokenisation and Text Normalisation 
  • Exploring Text Data 
  • Part of Speech Tagging and Grammar Parsing 
  • Exercise: Part of Speech Tagging and Grammar Parsing 
  • Implementing Text Pre-processing Using NLTK
  • Exercise: Implementing Text Pre-processing Using NLTK 
  • Natural Language Processing Techniques using spaCy
Module 5 : Extracting Named Entities from Text
  • Welcome to Module 
  • Understanding Named Entity Recognition 
  • Exercise: Understanding Named Entity Recognition 
  • Implementing Named Entity Recognition
  • Exercise: Implementing Named Entity Recognition 
  • Named Entity Recognition and POS tagging using spaCy
  • POS and NER in Action: Text Data Augmentation 
  • Assignment: Share your learning and build your profile
Module 6 : Feature Engineering for Text
  • Introduction to Text Feature Engineering 

  • Count Vector, TFIDF Representations of Text 

  • Exercise: Introduction to Text Feature Engineering 

  • Understanding Vector Representation of Text 

  • Exercise: Understanding Vector Representation of Text 

  • Understanding Word Embeddings 

  • Word Embeddings in Action – Word2Vec

  • Word Embeddings in Action – GloVe

Module 7 : Mastering the Art of Text Cleaning
  • Introduction to Text Cleaning Techniques Part 1 

  • Exercise: Introduction to Text Cleaning Techniques Part 1 

  • Introduction to Text Cleaning Techniques Part 2 

  • Exercise: Introduction to Text Cleaning Techniques Part 2 

  • Text Cleaning Implementation 

  • Exercise: Text Cleaning Implementation 

  • NLP Techniques using spaCy

Module 8 : Project I - Social Media Information Extraction
  • Project I – Social Media Information Extraction

Module 9 : Interpreting Patterns from Text - Topic Modelling
  • Introduction to Topic Modelling 
  • Exercise: Introduction to Topic Modelling
  • Understanding LDA 
  • Exercise: Understanding LDA 
  • Implementation of Topic Modelling 
  • Exercise: Implementation of Topic Modelling 
  • LSA for Topic Modelling
Module 10: Project II - Categorisation of Sports Articles
  • Understanding the Problem Statement 
  • Importing Dataset 
  • Text Cleaning and Pre-processing 
  • Categorising Articles using Topic Modelling
Module 11.1 : Machine Learning Algorithms
  • Types of Machine Learning Algorithms 
  • Logistic Regression 
  • Decision Tree 
  • Naive Bayes 
  • SVM (Support Vector Machine) 
  • Random Forest
Module 11.2 : Understanding Text Classification
  • Overview of Text Classification 
  • Exercise: Overview of Text Classification 
  • Assignment: Share your learning and build your profile
Module 12.1 : Introduction to Deep Learning (Optional)
  • Getting started with Neural Network 
  • Exercise: Getting started with Neural Network 
  • Understanding Forward Propagation 
  • Exercise: Forward Propagation 
  • Math Behind forwarding Propagation 
  • Exercise: Math Behind forwarding Propagation 
  • Error and Reason for Error
  • Exercise: Error and Reason for Error 
  • Gradient Descent Intuition 
  • Understanding Math Behind Gradient Descent
  • Exercise: Gradient Descent 
  • Optimiser 
  • Exercise: Optimiser 
  • Back Propagation 
  • Exercise: Back Propagation 
  • Why Keras? 
  • Exercise: Why Keras? 
  • Building a Neural Network for Text Classification 
  • Why CNN? 
  • Exercise: Why CNN? 
  • Understanding the working of CNN Filters
  • Exercise: Understanding the working of CNN Filters 
  • Introduction to Padding 
  • Exercise: Introduction to Padding 
  • Padding Strategies 
  • Exercise: Padding Strategies 
  • Padding Strategies in Keras 
  • Exercise: Padding Strategies in Keras 
  • Introduction to Pooling 
  • Exercise: Introduction to Pooling 
  • CNN architecture and it’s working 
  • Exercise: CNN architecture and it’s working
Module 12.2 : Deep Learning for NLP
  • Deep Learning for NLP Part 1 
  • Exercise: Deep Learning for NLP Part 1 
  • Deep Learning for NLP Part 2 
  • Exercise: Deep Learning for NLP Part 2 
  • Text Generation Using LSTM 
  • Exercise : Text Generation Using LSTM
Module 13 : Project III – SMS Spam Classification
  • Dataset download 
  • Text Cleaning
  • Feature Engineering 
  • Advanced Feature Engineering 
  • Combining Features
  • ML Classifier 
  • Spam Classification using Deep Learning
Module 14 : Project IV – Hate Speech Classification
  • Project III
Module 15 : Project V – Building Auto-Tagging System
  • Overview of Auto-Tagging System 
  • Introduction to Dataset and Performance Metrics
  • Auto-Tagging Implementation Using Machine Learning Part-1 
  • Auto-Tagging Implementation Using Machine Learning Part-2 
  • Auto-Tagging Implementation Using Deep Learning
Module 16 : Recurrent Neural Networks
  • Why RNN
  • Introduction to RNN: Shortcomings of an MLP 
  • Introduction to RNN: RNN Architecture 
  • Training an RNN: Forward propagation 
  • Training an RNN: Backpropagation through time 
  • Need for LSTM/GRU 
  • Long Short Term Memory (LSTM) 
  • Gated Recurrent Unit (GRU) 
  • Project: Categorisation of websites using LSTM and GRU I 
  • Dataset and Notebook 
  • Project: Categorisation of websites using LSTM and GRU II
Module 17 : Introduction to Language Modelling in NLP
  • Overview: Language Modelling 
  • What is a Language Model in NLP? 
  • N-gram Language Model 
  • Implementing an N-gram Language Model – I 
  • Implementing an N-gram Language Model – II 
  • Neural Language Model
  • Implementing a Neural Language Model
Module 18 : Sequence-to-Sequence Modelling
  • Intuition Behind Sequence-to-Sequence Modelling 
  • Need for Sequence-to-Sequence Modelling 
  • Understanding the Architecture of Sequence-to-Sequence 
  • Understanding the Functioning of Encoder and Decoder 
  • Case Study: Building a Spanish to English Machine Translation Model 
  • Pre-processing of Text Data 
  • Converting Text to Integer Sequences 
  • Model Building and Inference
Module 19 : Project VI - Summarisation of Customer Reviews
  • Introduction 
  • Pre-processing and Feature Creation 
  • Model Building and Summary Genera
Module 20 : Project VII - Build your first Chatbot
  • Introduction 
  • About this module 
  • Overview of Conversational Agents 
  • Project – Foodbot 
  • Overview of Rasa Framework 
  • System Setup 
  • Rasa NLU: Understanding user intent from a message
  • Rasa NLU: Extracting intents from a user’s message 
  • Rasa Core: Making your chatbot conversational 
  • Working with Zomato API 
  • Create a Workspace in Slack 
  • Deploying to Slack 
  • Assignment: Share your learning and build your profile
Module 21 : Bonus Section (Advance NLP tools)
  • Getting started with Bonus Section 
  • Text Classification & Word Representations using FastText (An NLP library by Facebook)
  • Introduction to Flair for NLP: A Simple yet Powerful State-of-the-Art NLP Library 
  • Introduction to Stanford NLP: An Incredible State-of-the-Art NLP Library for 53 Languages (with Python code) 
  • A Step-by-Step NLP Guide to Learn Elmo for Extracting Features from Text
  • Tutorial on Text Classification (NLP) using ULMFiT and fastai Library in Python 
  • 8 Excellent Pretrained Models to get you started with Natural Language Processing (NLP) 
  • Geo-coding using NLP by Shantanu Bhattacharyya and Farhat Habib 
  • Demystifying the What, the Why and How of Chatbot by Sonny Laskar 
  • Sentiment Analysis using NLP and Deep Learning by Jeeban Swain 
  • Identifying Location using Clustering and Language Model – By Divya Choudhary 
  • Building Intelligent Chatbots from Scratch
Project : VIII Stock Prices Predictor

This is another interesting machine learning project idea for data scientists/machine learning engineers working or planning to work with the finance domain. Stock prices predictor is a system that learns about the performance of a company and predicts future stock prices. The challenges associated with working with stock price data are that it is very granular, and moreover there are different types of data like volatility indices, prices, global macroeconomic indicators, fundamental indicators, and more. One good thing about working with stock market data is that the financial markets have shorter feedback cycles making it easier for data experts to validate their predictions on new data. To begin working with stock market data, you can pick up a simple machine learning problem like predicting 6-month price movements based on fundamental indicators from an organisations’ quarterly report. You can download Stock Market datasets from Quandl.com or Quantopian.com.

Project : IX Human Activity Recognition using Smartphone Dataset

The smartphone dataset consists of fitness activity recordings of 30 people captured through smartphone-enabled with inertial sensors. The goal of this machine learning project is to build a classification model that can precisely identify human fitness activities. Working on this machine learning project will help you understand how to solve multi-classification problems. One can become a master of machine learning only with lots of practice and experimentation. Having theoretical surely helps but it’s the application that helps progress the most. No amount of theoretical knowledge can replace hands-on practice. There are many other machine learning projects for beginners like the ones mentioned above that you can work with. However, it will help if you familiarise yourself with the above-listed projects first. If you are a beginner and new to machine learning then working on machine learning projects designed by industry experts at DeZyre will make some of the best investments of your time. These machine learning projects have been designed for beginners to help them enhance their applied machine learning skills quickly whilst giving them a chance to explore interesting business use cases across various domains – Retail, Finance, Insurance, Manufacturing, and more. So, if you want to enjoy learning machine learning, stay motivated, and make quick progress then DeZyre’s machine learning interesting projects are for you. Plus, add these machine learning projects to your portfolio and land a top gig with a higher salary and rewarding perks.

Project : X Learn to build Recommender Systems with Movielens Dataset

From Netflix to Hulu, the need to build an efficient movie recommender system has gained importance over time with increasing demand from modern consumers for customised content. One of the most popular datasets available on the web for beginners to learn how to build recommender systems is the Movielens Dataset which contains approximately 1,000,209 movie ratings of 3,900 movies made by 6,040 Movielens users. You can get started working with this dataset by building a world-cloud visualisation of movie titles to build a movie recommender system.

Project : XI Social Media Sentiment Analysis using Twitter Dataset

This course comprises of 40 case studies that will enrich your learning experience. In addition, we also have 4 Projects that will enhance your implementation skills. Below are a few case studies, which are part of this course:

Case Study 1: Maple Leaves Ltd is a start-up company that makes herbs from different types of plants and leaves. Currently, the system they use to classify the trees which they import in a batch is quite manual. A laborer from his experience decides the leaf type and subtype of the plant family. They have asked us to automate this process and remove any manual intervention from this process.

Project : XII AutoBot

Build a system that can have a conversation with you. The user types messages and your system replies based on the user’s text. Many approaches here … you could use a large twitter corpus and do language similarity.

Cloud Computing & Deployment of Machine Learning Modals to Cloud
  • Flask basics
  • Deployment of the model on Heroku
  • AWS basics 
    •  S3 
    •  EC2 
    •  AWS Lambda 
  • Deployment of the model on EC2
  • Deployment on AWS Lambda (Optional)
  • Google Cloud Platform Basics
  • Deployment of the Model on GCP
  • Microsoft Azure basics
  • Deployment of the Model on Azure
  •  Pyspark Basics
  • DeVops Concepts
Business & Data Analytics
  • Data Visualization with Tableau & Power BI
  • SQL
  • MSOFFICE
  •  Introduction to Operational , HR, Finance, Marketing Analytics
Data Science Project Management
  •  Leading Data Science Teams & Processes
  • Exploring Methodologies
  •  How to manage data science projects and lead a data science team
  •  Agile Data Science
  • Scrum Data Science
  •  Emerging Approaches – Microsoft TDSP
  • Data Science Methodology understanding
  • Business & Data understanding
  • Modelling & Evaluation
  • Plan Deployment
  • Data Science Project Report
Big Data , Spark & Kafka , MongoDB, CICD
  • Introduction to Bigdata & HDFS along with Linux concepts , its importance in data science
  • Core Components of Hadoop
  • HDFS Architecture
  • HDFS Commands
MapReduce Concepts & programming
  • Apache Scoop Fundamentals & basics
  • Apache Spark fundamentals & advanced concepts and its importance in data science
  • Introduction to Kafka
  • Bigdata on Cloud and its importance in Data Science

Addon Syllabus

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Program Highlights

  • 6 Months of live Interactive Classes by Principal or Senior Data Scientists across Industry

  • Get International real-time project exposure by attending the Industry Immersion Program in Singapore Sponsored by Geeklurn.

  • Guaranteed Job Opportunities

Our Data Science & AI Community

Real-Time Projects

Identifying and classifying images between animals using CNN architecture according to its visual content

The main objective is to classify whether the image is of Dog or a Cat using CNN Architecture.

Developing a Machine Learning based Predictor to predict the different brand Laptop price

The main objective is to predict the price of different brand laptops based on their configurations.

Spam Classifier

The main objective is built an AI-ML model that can classify any SMS/Emails into Spam or Not Spam Message.

A content based movie recommender engine using cosine similarity

The main objective is to build a content based movie recommendation engine using cosine similarity

Vehicle Brand Classification using Densenet

The main objective is to identify and classify multiple brand vehicles

A content based anime recommender engine using cosine similarity

The main objective is to build a content based anime recommendation engine using cosine similarity

Deep Learning Facial Recognition Multi Task Cascade project using CNN archtiecture

The main objective is identifying similar faces and check various aspects in pictures which includes: facial shape, its skin tonality and positions and other aspects of facial parts

Analyzing behavioral pattern using Whatsapp Chat Data

The main objective is to analyze the behavioural pattern of individuals and understand how the behavioural pattern changes when they are conversing alone and when they are in social circle

Toxicity classification with Natural Langauage Processing using BERT Transformers

The main objective is to build a multi-headed model that's capable of detecting different types of toxicity like threats,obscenity, insults, and identity-based hate. The dataset is of comments from Wikipedia's talk page edits

Project Certificate

Data Science Architect Project Certification from Top MNCs

Complete the designated project to acquire this prestigious certification from reputed research centres.

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Guidance from Corporate Specialists

Resolve all theory and project related queries from our with our mentors, who are eminent industry experts.

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Participate in workshops and live webinars to understand technical terms and trends and make your learning reasonable.

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Peer Networking

Build a cohesive learning network with workmates, mentors, and experts to share ideas, address intra-queries, and resolve projects, and practical learning ambiguities.

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Our one-of-a-kind learning program promises Guaranteed Job Opportunities and prepares you to be industry ready and equipped with all the requisites for a successful career in Data Science Industry.

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