Advanced Diploma in Data Science with Deep Learning
100% JOB Assured with Globally Accepted Certificate
Intermediate
Advanced Diploma in Data Science with Deep Learning
100% JOB Assured with Globally Accepted Certificate
Overview
PG Diploma in Data Science and Machine Learning
Description
Advanced Diploma in Data Science with Deep Learning
Advanced Diploma in Data Science with Deep Learning with placement guarantee is a comprehensive programs at Cranes Varsity which covers RDBMS, Python, DAV using Numpy & Pandas, Machine Learning, Deep Learning and Tableau.
An experienced person without Data Science knowledge can make a career as a Data Scientist. While having a strong foundation in Data Science concepts and techniques is advantageous, it is not always a prerequisite for starting a career as a Data Scientist.
After completion of the Data Science course, you will develop expertise in several key areas. Firstly, you will learn data manipulation and analysis techniques using programming languages like Python. You will gain proficiency in statistical analysis and data visualization to extract insights from complex datasets. Machine learning skills will enable you to build predictive models, classification algorithms, and clustering techniques. Deep learning will empower you to work with neural networks for advanced tasks like image and text analysis. Additionally, you will acquire knowledge in data preprocessing, model evaluation, and deployment. These skills will equip you to tackle real-world challenges and unlock exciting opportunities in data-driven industries.
These capabilities will enable you to pursue various roles in the field of data science and machine learning, such as data scientist, machine learning engineer, data analyst, or AI specialist, across industries ranging from finance and healthcare to e-commerce and marketing.
Our dedicated career development sessions, resume building assistance, and interview preparation help you to enhance your employability. Our strong industry connections and collaborations enable us to provide job placement assistance, connecting you with top companies in the automotive sector. We take pride in our high placement record and strive to help you kick-start a successful career in embedded and automotive systems.
Project stream:
- Credit Risk Analysis Using Ensemble (Applies ensemble modeling, classification metrics, and model optimization techniques)
- Â Multi-Class Image Classification with CNN (Uses CNN architecture, batch normalization, dropout, and TensorFlow/Keras)
- License Plate Detection with OpenCV (Combines image processing, OCR, and deep learning for ANPR)
An experienced person without Data Science knowledge can make a career as a Data Scientist. While having a strong foundation in Data Science concepts and techniques is advantageous, it is not always a prerequisite for starting a career as a Data Scientist. Â
PG Diploma in data science and machine learning is comprehensive programs at Cranes Varsity which covers RDBMS, Python, DAV using Numpy & Pandas, Machine Learning, Deep Learning and Tableau.Â
After completion of the course, you will develop expertise in several key areas. Firstly, you will learn data manipulation and analysis techniques using programming languages like Python. You will gain proficiency in statistical analysis and data visualization to extract insights from complex datasets. Machine learning skills will enable you to build predictive models, classification algorithms, and clustering techniques. Deep learning will empower you to work with neural networks for advanced tasks like image and text analysis. Additionally, you will acquire knowledge in data preprocessing, model evaluation, and deployment. These skills will equip you to tackle real-world challenges and unlock exciting opportunities in data-driven industries.Â
These capabilities will enable you to pursue various roles in the field of data science and machine learning, such as data scientist, machine learning engineer, data analyst, or AI specialist, across industries ranging from finance and healthcare to e-commerce and marketing.Â
Our dedicated career development sessions, resume building assistance, and interview preparation help you to enhance your employability. Our strong industry connections and collaborations enable us to provide job placement assistance, connecting you with top companies in the automotive sector. We take pride in our high placement record and strive to help you kick-start a successful career in embedded and automotive systems.Â
The PG Diploma in Data Science and Machine Learning is a five-month professional program that provides in-depth data science knowledge and expertise.
Cranes mentors engineers in all critical disciplines to assist them in excelling at designing Data Science based applications that meet industry standards.
Cranes provide students with a structured framework to help them develop technical skills and knowledge. The lectures are well-planned and delivered with examples to make them more interesting and understandable. We want to help students develop a much broader range of mental representations of knowledge.
Cranes Varsity is considered as the best Data Science Course (Available Online) which offers services from training to placement as part of the Data Science training program with over 400+ participants placed in various multinational companies including Genpact, Ernst & Young, Capgemini, Vodafone, CGI, Wipro, Tata Elxsi, IBM, Lumen Technologies, Tech Mahindra, Birla Soft, HTC, Happiest Minds, Western Digital, Mearsk Global, Koireader, K7 Computing, Mphasis, Atos, Latent View, etc.
PG Diploma in Data Science with Placement
We offer the highest quality teaching, assessment and placement support through our Data Science course. The course is designed to make a novice into an expert from developing Python programming, and writing queries on SQL to building Machine learning & Deep Learning Models and Cloud computing. Our Lead mentors are industry experts and have been associated with us for decades.
If you’re looking toward building your career in Data Science and are interested in getting the Data Science Course with Placement, then Cranes Varsity is the right destination for realizing your aspirations and growing on your Career ladder.
Data Science using Python training course syllabus is classified into modules that help students better understand the subject. Which are listed below:
PG Diploma in Data Science Course Modules
Generic
- RDBMS using MySQL
- Python for Data Science
- Advanced Python (Testing and Web Scraping)
- Exploratory Data Analysis using Pandas
Data Science Specialization
- Mathematics and Statistics for Data Science
- Machine Learning using sklearn
- Machine Learning model Improvement
- Deep Learning using Tensor Flow
- Data Analysis and Visualization using Tableau
- Natural Language Processing
Projects
- Apply statistical methods to make decisions in various business problems, including bank, stock markets, etc.
- Apply regression to predict future flight price
- Apply classification to classify customer
- Use clustering to cluster banking customers
- Computer vision projects like Face recognition, Image Quality Improvement, etc.
Platform
- Anaconda Distribution Jupyter, Spyder
- Tableau
- Google Colab
Core Programming
- Introduction to databases and RDBMS,
- Database creation, concept of relation and working examples
- Creating tables. Design view of the table, Alter table operations & Key Constraints
- Read, update and delete operations on tables. Working with nulls
- Querying tables: Select statement, examples and its variations
- Filtering, Sorting, Predicates and working examples
- Joins in SQL and working examples
- Insert, Update, Delete operations and working examples
- Scalar functions in SQL and working examples
- SQL set based operations and data aggregation
- Sub-queries in SQL
- Normalization and de-normalization: Views and Temporary tables
- Transactions in SQL
- SQL programming Creating stored procedures, Cursors in SQL
- EBS(Elastic Block Storage),VPC
- EBS volumes and Snapshots
- RDS
- Introduction to Python
- Python Data types and Conditions
- Control Statements
- Python Functions
- Default arguments
- Functions with variable number of args
- Scope of Variables
- Global specifier
- Working with multiple files
- List and Tuple
- List Methods
- List Comprehension
- Map and filter functions
- String
- List comprehension with conditionals
- Set and Dictionary
- Exception Handling
- File Handling
- NumPy
- Vectorization
- Broadcasting
- Slicing of Matrices
- Filtering
- Array Creation Functions
- NumPy Functions across axis
- Stacking of arrays
- Matrix Calculation
- Pandas Data frame
- Selection Data (loc, iloc)
- Filtering Data Frames
- Working with Categorical Data
- Grouping & Aggregation
- Merging Data Frame(concat, merge)
- Sorting Data Frames
- Importing csv files
- Importing Excel Files
- Creating graphs using Matplotlib
- Customizing Plots
- Saving Plots
- Scatter Plot, Line Graph
- Bar Graph, Histogram
- Subplots
- Seaborn
- Matplotlib
- Importing Data in PowerBI
- Data Preparation in Power BI
- Data Modelling in Power BI
- Filtering Visualizing Data
- Reports in Power BI
- Introduction to DAX in Power BI
- Logarithm
- Python Scipy Library
- Data Preprocessing
- Standard Deviation
- Probability and Distribution
- Handling missing data
- Descriptive and Inferential Statistics
- Binomial Theorem
- Onehot Encoding
- Mean, Median, Mode
- Hypothesis testing
- Label encoding
- Percentile,
- Inferential Statistics
- Standardization and normalization
- Log Normal Distribution
- Chi-square test, T test
- Binning
- Mean Absolute Deviation,
- Ordinal, frequency encoding
- Transformation
- Handson Examples
- Case study: To perform Data cleaning and statistical analysis
- Introduction to excel
- Viewing, Entering, and Editing Data
- Introduction to Data Quality
- Intro to Analyzing Data Using Spreadsheets
- Converting Data with Value and Text
- Apply logical operations to data using IF
- Charting techniques in Excel
- Interactive dashboard creation
- Data analytics project using Excel
- Object Oriented Programming
- Overloading Operator
- Inheritance
- Regular Expression
- Finding Patterns of Text
- Meta characters
- Testing Fundamentals
- Unit Testing with Pytest
- Working with JSON
- Decorators
- UI Development with Tkinter
- Containers
- Iterators
- UI development Mini Project
- What is Deep Learning
- Hidden Layers
- Building project based on CNN
- Deep Learning Methods
- Activation Function
- Tensorflow, pytorch, Keras
- Deep Learning Application
- Forward and Backward propagation
- Batch Normalization, dropout
- Artificial Neural Network
- Deep Learning Libraries
- Performance measure for ANN
- CNN architecture
- CNN for computer vision
- Need for Hardwares in Deep learning
- Computer vision basics
- OpenCV
- Working with Images
- Edge detection
- Filtering
- Object detection
- Transfer Learning
- Pretrained models,
- Restnet50, Imagenet, Mobilenet
- Optimizing regression models with forward elimination, grid search cv
- Improving classification models with Ensemble modeling
- Boosting techniques,: ADA boost, Gradient Boost, XG boost
- Regularization L1 and L2 regularization
- Random Forest, Bagging
- Dimensionality Reduction with PCA
- Clustering and types
- Evaluate clustering results, Elbow Plot
- Train test split the data
- Kmeans Clustering
- Hierarchical clusterin
- Hyperparameter Tuning
- ML Project
- ML Project
- Stacking and Voting
Database
- RDBMS using MySQL
Core Programming
- Python Programming
- Advance Python
- Problem Solving and Data Structures
Analytics Specialization – 68 Hrs
- Advanced Excel
- Data Analysis & Reporting using Power BI
- Exploratory Data Analysis using Pandas
Specializations:
Machine Learning
- Machine Learning fundamentals
- Advanced Machine Learning
Experiential Project Based Learning – 20 Hrs
An end-to-end machine learning model development using scikit-learn and real-world datasets
- Introduction to databases and RDBMS,
- Database creation, concept of relation and working examples
- Creating tables. Design view of the table, Alter table operations & Key Constraints
- Read, update and delete operations on tables. Working with nulls
- Querying tables: Select statement, examples and its variations
- Filtering, Sorting, Predicates and working examples
- Joins in SQL and working examples
- Insert, Update, Delete operations and working examples
- Scalar functions in SQL and working examples
- SQL set based operations and data aggregation
- Sub-queries in SQL
- Normalization and de-normalization: Views and Temporary tables
- Transactions in SQL
- SQL programming Creating stored procedures, Cursors in SQL
- EBS(Elastic Block Storage),VPC
- EBS volumes and Snapshots
- RDS
- Introduction to Python
- Python Data types and Conditions
- Control Statements
- Python Functions
- Default arguments
- Functions with variable number of args
- Scope of Variables
- Global specifier
- Working with multiple files
- List and Tuple
- List Methods
- List Comprehension
- Map and filter functions
- String
- List comprehension with conditionals
- Set and Dictionary
- Exception Handling
- File Handling
- Introduction to Python
- Python Data types and Conditions
- Control Statements
- Python Functions
- Default arguments
- Functions with variable number of args
- Scope of Variables
- Global specifier
- Working with multiple files
- List and Tuple
- List Methods
- List Comprehension
- Map and filter functions
- String
- List comprehension with conditionals
- Set and Dictionary
- Exception Handling
- File Handling
- NumPy
- Vectorization
- Broadcasting
- Slicing of Matrices
- Filtering
- Array Creation Functions
- NumPy Functions across axis
- Stacking of arrays
- Matrix Calculation
- Pandas Data frame
- Selection Data (loc, iloc)
- Filtering Data Frames
- Working with Categorical Data
- Grouping & Aggregation
- Merging Data Frame(concat, merge)
- Sorting Data Frames
- Importing csv files
- Importing Excel Files
- Creating graphs using Matplotlib
- Customizing Plots
- Saving Plots
- Scatter Plot, Line Graph
- Bar Graph, Histogram
- Subplots
- Seaborn
- Matplotlib
- Logarithm
- Python Scipy Library
- Mean Absolute Deviation,
- Standard Deviation
- Probability and Distribution
- Normal Distribution and Z Score
- Descriptive and Inferential Statistics
- Binomial Theorem
- Visualizing Data
- Mean, Median, Mode
- Hypothesis testing
- Variance: ANOVA
- Percentile,
- Inferential Statistics
- Statistical Significance
- Log Normal Distribution
- Chi-square test, T test
- Data Preprocessing
- Standardization and normalization
- Ordinal, frequency encoding
- Transformation
- Tableau Introduction
- Traditional Visualization vs Tableau
- Tableau Architecture
- Working with sets
- Creating Groups
- Data types in Tableau
- Connect Tableau with Different Data Sources
- Visual Analytics
- Parameter Filters
- Cards in Tableau
- Charts, Dash-board
- Joins and Data Blending
- Tableau Calculations using Functions
- Building Predictive Models
- Dynamic Dashboards and Stories
- Logarithm
- Python Scipy Library
- Data Preprocessing
- Standard Deviation
- Probability and Distribution
- Handling missing data
- Descriptive and Inferential Statistics
- Binomial Theorem
- Onehot Encoding
- Mean, Median, Mode
- Hypothesis testing
- Label encoding
- Percentile,
- Inferential Statistics
- Standardization and normalization
- Log Normal Distribution
- Chi-square test, T test
- Binning
- Mean Absolute Deviation,
- Ordinal, frequency encoding
- Transformation
- Handson Examples
- Case study: To perform Data cleaning and statistical analysis
- Introduction to excel
- Viewing, Entering, and Editing Data
- Introduction to Data Quality
- Intro to Analyzing Data Using Spreadsheets
- Converting Data with Value and Text
- Apply logical operations to data using IF
- Charting techniques in Excel
- Interactive dashboard creation
- Data analytics project using Excel
- Object Oriented Programming
- Overloading Operator
- Inheritance
- Regular Expression
- Finding Patterns of Text
- Meta characters
- Testing Fundamentals
- Unit Testing with Pytest
- Working with JSON
- Decorators
- UI Development with Tkinter
- Containers
- Iterators
- UI development Mini Project
- Optimizing regression models with forward elimination, grid search cv
- Improving classification models with Ensemble modeling
- Boosting techniques,: ADA boost, Gradient Boost, XG boost
- Regularization L1 and L2 regularization
- Random Forest, Bagging
- Dimensionality Reduction with PCA
- Clustering and types
- Evaluate clustering results, Elbow Plot
- Train test split the data
- Kmeans Clustering
- Hierarchical clusterin
- Hyperparameter Tuning
- ML Project
- ML Project
- Stacking and Voting
- What is Deep Learning
- Hidden Layers
- Building project based on CNN
- Deep Learning Methods
- Activation Function
- Tensorflow, pytorch, Keras
- Deep Learning Application
- Forward and Backward propagation
- Batch Normalization, dropout
- Artificial Neural Network
- Deep Learning Libraries
- Performance measure for ANN
- CNN architecture
- CNN for computer vision
- Need for Hardwares in Deep learning
- Computer vision basics
- OpenCV
- Working with Images
- Edge detection
- Filtering
- Object detection
- Transfer Learning
- Pretrained models,
- Restnet50, Imagenet, Mobilenet
- Introduction to databases and RDBMS,
- Database creation, concept of relation and working examples
- Creating tables. Design view of the table, Alter table operations & Key Constraints
- Read, update and delete operations on tables. Working with nulls
- Querying tables: Select statement, examples and its variations
- Filtering, Sorting, Predicates and working examples
- Joins in SQL and working examples
- Insert, Update, Delete operations and working examples
- Scalar functions in SQL and working examples
- SQL set based operations and data aggregation
- Sub-queries in SQL
- Normalization and de-normalization: Views and Temporary tables
- Transactions in SQL
- SQL programming Creating stored procedures, Cursors in SQL
- EBS(Elastic Block Storage),VPC
- EBS volumes and Snapshots
- RDS
- Introduction to Python
- Python Data types and Conditions
- Control Statements
- Python Functions
- Default arguments
- Functions with variable number of args
- Scope of Variables
- Global specifier
- Working with multiple files
- List and Tuple
- List Methods
- List Comprehension
- Map and filter functions
- String
- List comprehension with conditionals
- Set and Dictionary
- Exception Handling
- File Handling
- NumPy
- Vectorization
- Broadcasting
- Slicing of Matrices
- Filtering
- Array Creation Functions
- NumPy Functions across axis
- Stacking of arrays
- Matrix Calculation
- Pandas Data frame
- Selection Data (loc, iloc)
- Filtering Data Frames
- Working with Categorical Data
- Grouping & Aggregation
- Merging Data Frame(concat, merge)
- Sorting Data Frames
- Importing csv files
- Importing Excel Files
- Creating graphs using Matplotlib
- Customizing Plots
- Saving Plots
- Scatter Plot, Line Graph
- Bar Graph, Histogram
- Subplots
- Seaborn
- Matplotlib
- Logarithm
- Python Scipy Library
- Mean Absolute Deviation,
- Standard Deviation
- Probability and Distribution
- Normal Distribution and Z Score
- Descriptive and Inferential Statistics
- Binomial Theorem
- Visualizing Data
- Mean, Median, Mode
- Hypothesis testing
- Variance: ANOVA
- Percentile,
- Inferential Statistics
- Statistical Significance
- Log Normal Distribution
- Chi-square test, T test
- Data Preprocessing
- Standardization and normalization
- Ordinal, frequency encoding
- Transformation
- Tableau Introduction
- Traditional Visualization vs Tableau
- Tableau Architecture
- Working with sets
- Creating Groups
- Data types in Tableau
- Connect Tableau with Different Data Sources
- Visual Analytics
- Parameter Filters
- Cards in Tableau
- Charts, Dash-board
- Joins and Data Blending
- Tableau Calculations using Functions
- Building Predictive Models
- Dynamic Dashboards and Stories
- Logarithm
- Python Scipy Library
- Data Preprocessing
- Standard Deviation
- Probability and Distribution
- Handling missing data
- Descriptive and Inferential Statistics
- Binomial Theorem
- Onehot Encoding
- Mean, Median, Mode
- Hypothesis testing
- Label encoding
- Percentile,
- Inferential Statistics
- Standardization and normalization
- Log Normal Distribution
- Chi-square test, T test
- Binning
- Mean Absolute Deviation,
- Ordinal, frequency encoding
- Transformation
- Handson Examples
- Case study: To perform Data cleaning and statistical analysis
- Introduction to excel
- Viewing, Entering, and Editing Data
- Introduction to Data Quality
- Intro to Analyzing Data Using Spreadsheets
- Converting Data with Value and Text
- Apply logical operations to data using IF
- Charting techniques in Excel
- Interactive dashboard creation
- Data analytics project using Excel
- Object Oriented Programming
- Overloading Operator
- Inheritance
- Regular Expression
- Finding Patterns of Text
- Meta characters
- Testing Fundamentals
- Unit Testing with Pytest
- Working with JSON
- Decorators
- UI Development with Tkinter
- Containers
- Iterators
- UI development Mini Project
- Optimizing regression models with forward elimination, grid search cv
- Improving classification models with Ensemble modeling
- Boosting techniques,: ADA boost, Gradient Boost, XG boost
- Regularization L1 and L2 regularization
- Random Forest, Bagging
- Dimensionality Reduction with PCA
- Clustering and types
- Evaluate clustering results, Elbow Plot
- Train test split the data
- Kmeans Clustering
- Hierarchical clusterin
- Hyperparameter Tuning
- ML Project
- ML Project
- Stacking and Voting
- What is Deep Learning
- Hidden Layers
- Building project based on CNN
- Deep Learning Methods
- Activation Function
- Tensorflow, pytorch, Keras
- Deep Learning Application
- Forward and Backward propagation
- Batch Normalization, dropout
- Artificial Neural Network
- Deep Learning Libraries
- Performance measure for ANN
- CNN architecture
- CNN for computer vision
- Need for Hardwares in Deep learning
- Computer vision basics
- OpenCV
- Working with Images
- Edge detection
- Filtering
- Object detection
- Transfer Learning
- Pretrained models,
- Restnet50, Imagenet, Mobilenet
Generic:
Relational Database – SQL – 10 Days
- Introduction to databases and RDBMS
- Read, update and delete operations on tables. Working with nulls
- Joins in SQL and working examples
- SQL set based operations and data aggregation, Sub-queries in SQL
- EBS (Elastic Block Storage),VPC
- Database creation, concept of relation and working examples
- Querying tables: Select statement, examples and its variations
- Insert, Update, Delete operations and working examples
- Normalization and de-normalization: Views and Temporary tables, Transactions in SQL
- EBS volumes and Snapshots
- Creating tables. Design view of the table, Alter table operations & Key Constraints
- Filtering, Sorting, Predicates and working examples
- Scalar functions in SQL and working examples
- SQL programming, Creating stored procedures, Cursors in SQL
- RDS
Python Programming – 10 Days
- Introduction to Python
- Python Functions
- Scope of Variables
- List and Tuple
- Map and filter functions
- Set and Dictionary
- Python Data types and Conditions
- Default arguments
- Global specifier
- List Methods
- String
- Exception Handling
- Control Statements
- Functions with variable number of args
- Working with multiple files
- List Comprehension
- List comprehension with conditionals
- File Handling
Exploratory Data Analysis with Pandas – 10 Days
- NumPy
- Slicing of Matrices
- NumPy Functions across axis
- Pandas Series
- Pandas Data Frame
- Working with Categorical Data
- Sorting Data Frames
- Creating graphs using Matplotlib
- Scatter Plot, Line Graph
- Seaborn
- Vectorization
- Filtering
- Stacking of arrays
- Data Cleaning
- Selection Data (loc, iloc)
- Grouping & Aggregation
- Importing csv files
- Customizing Plots
- Bar Graph, Histogram
- Matplotlib
- Broadcasting
- Array Creation Functions
- Matrix Calculation
- Handling Missing Data
- Filtering Data Frames
- Merging Data Frame (concat, merge)
- Importing Excel Files
- Saving Plots
- Subplots
Foundational Statistics 5 Days
- Logarithm
- Standard Deviation
- Descriptive and Inferential Statistics
- Mean, Median, Mode
- Percentile
- Log Normal Distribution
- Standardization and normalization
- Python Scipy Library
- Probability and Distribution
- Binomial Theorem
- Hypothesis testing
- Inferential Statistics
- Chi-square test, T test
- Ordinal, frequency encoding
- Mean Absolute Deviation
- Normal Distribution and Z Score
- Visualizing Data
- Variance: ANOVA
- Statistical Significance
- Data Preprocessing
- Transformation
Data Analysis and Visualization Using Tableau –7 Day
- Tableau Introduction
- Working with sets
- Connect Tableau with Different Data Sources
- Cards in Tableau
- Tableau Calculations using Functions
- Traditional Visualization vs Tableau
- Creating Groups
- Visual Analytics
- Charts, Dash-board
- Building Predictive Models
- Tableau Architecture
- Data types in Tableau
- Parameter Filters
- Joins and Data Blending
- Dynamic Dashboards and Stories
Data Science Specialization:
Foundational Machine learning – 7 Days
- Logarithm
- Standard Deviation
- Descriptive and Inferential Statistics
- Mean, Median, Mode
- Percentile
- Log Normal Distribution
- Mean Absolute Deviation
- Handson Examples
- Python Scipy Library
- Probability and Distribution
- Binomial Theorem
- Hypothesis testing
- Inferential Statistics
- Chi-square test, T test
- Ordinal, frequency encoding
- Data Preprocessing
- Handling missing data
- Onehot Encoding
- Label encoding
- Standardization and normalization
- Binning
- Transformation
- Case study: To perform Data cleaning and statistical analysis
Data Analysis and Visualization Using Excel –7 Day
- Introduction to excel
- Intro to Analyzing Data Using Spreadsheets
- Charting techniques in Excel
- Viewing, Entering, and Editing Data
- Converting Data with Value and Text
- Interactive dashboard creation
- Introduction to Data Quality
- Apply logical operations to data using IF
- Data analytics project using Excel
Advanced Python and Unit Testing- 10 Days
- Object Oriented Programming
- Regular Expression
- Testing Fundamentals
- Decorators
- Iterators
- Overloading Operator
- Finding Patterns of Text
- Unit Testing with Pytest
- UI Development with Tkinter
- UI development Mini Project
- Inheritance
- Meta characters
- Working with JSON
- Containers
Advanced Machine Learning and Model Improvement – 10Days
- Optimizing regression models with forward elimination, grid search cv
- Regularization L1 and L2 regularization
- Clustering and types
- Kmeans Clustering
- ML Project
- Improving classification models with Ensemble modeling
- Random Forest, Bagging
- Evaluate clustering results, Elbow Plot
- Hierarchical clustering
- SVM
- Boosting techniques,: ADA boost, Gradient Boost, XG boost
- Dimensionality Reduction with PCA
- Train test split the data
- Hyperparameter Tuning
- Stacking and Voting
Deep Learning using TensorFlow – 10Days
- What is Deep Learning
- Deep Learning Methods
- Deep Learning Application
- Artificial Neural Network
- CNN architecture
- Computer vision basics
- Edge detection
- Transfer Learning
- Hidden Layers
- Activation Function
- Forward and Backward propagation
- Deep Learning Libraries
- CNN for computer vision
- OpenCV
- Filtering
- Pretrained models
- Building project based on CNN
- Tensorflow, pytorch, Keras
- Batch Normalization, dropout
- Performance measure for ANN
- Need for Hardwares in Deep learning
- Working with Images
- Object detection
Capstone Project on using DL Methods : 5 Days
- Capstone Title Selection
- Project Basic model
- Project report Submission
- Abstract submission
- Interim Report
- Literature Survey
- Final Model Deployment with Pipeline
Hiring Partners
















































FAQs
What courses does Cranes Varsity offer in Data Science?
Cranes Varsity offers a range of courses in Data Science, including:Â
- PG Diploma in Artificial Intelligence and Data Science
- Advanced Diploma in Data science with Deep learning
Who can benefit from the Data Science courses at Cranes Varsity?
Our Data Science courses are designed for:Â
- Graduates in fields like Computer Science, Statistics, Mathematics, Engineering, and related areas.Â
- Working professionals looking to transition into data science roles or enhance their analytics skills.Â
- Business analysts seeking to deepen their understanding of data-driven decision-making.Â
Research professionals wanting to apply data science techniques in their work.Â
What is the duration of Data Science courses at Cranes Varsity?
- PG Diploma in Artificial Intelligence and Data Science-6 MonthsÂ
- Advanced Diploma in Data science with Deep learning-4 MonthsÂ
What are the eligibility criteria for enrolling in Data Science courses?
Eligibility criteria typically include:Â
- A bachelor’s degree in computer science, Statistics, Mathematics, BCA, MCA or a related field.Â
- Basic programming knowledge in languages like Python or R is advantageous but not mandatory for beginners.Â
What skills will I learn from the Data Science courses?
By completing a Data Science course at Cranes Varsity, you will acquire skills such as:Â
- Core programming -RDBMS using MySQL, Python Programming
- Analytics Specialization -Exploratory Data Analysis using Pandas, Data Visualization with Reporting, Power BI for Modern Analytics
- Experiential Project Based Learning-An end-to-end machine learning model, development using scikit-learn and real-world datasets
- AI Specialization -Machine Learning, Deep Learning, Natural Language Processing, Generative AI
Which programming languages are taught in Data Science course?
We teach Python and SQL as the core programming languages in the Data Science course. Python is used for data analysis, machine learning, and visualization, while SQL is essential for working with databases and querying structured data.
What tools and software will I work with during the Data Science course?
You’ll gain hands-on experience with a variety of tools, including:
- Jupyter Notebook and Google Colab for interactive coding
- Anaconda for environment and package management
- Git & GitHub for version control
- Power BI and Excel for data visualization
- Popular libraries like pandas, NumPy, Matplotlib, seaborn, scikit-learn, TensorFlow, and NLTK for machine learning and NLPÂ
What types of projects can I expect to work on during the Data Science course?
- Exploratory Data Analysis (EDA)
- Machine Learning models (e.g., classification, regression)
- Sentiment Analysis and Text Processing (NLP)
- Time Series Forecasting
- Interactive Dashboards and VisualizationsÂ
Does Cranes Varsity provide placement assistance for Data Science courses?
Yes, Cranes Varsity offers comprehensive placement support to students. We have connections with numerous tech companies and startups. Our placement assistance includes:Â
- Resume building and interview preparation.Â
- Access to job opportunities in data science, analytics, and related fields.Â
- Networking opportunities with industry professionals.Â
What job roles can I pursue after completing a Data Science course?
Upon completing a Data Science course at Cranes Varsity, you can pursue roles such as:Â
- Data ScientistÂ
- Data AnalystÂ
- Machine Learning EngineerÂ
- Business Intelligence AnalystÂ
What certificates will I receive on completion of the training program?
Upon successful completion of the course, all students will receive a Postgraduate Diploma Certificate issued by Cranes Varsity.
How does Cranes Varsity prepare students for industry requirements in Data Science?
Our curriculum is designed in collaboration with industry experts to meet the latest trends and demands in the data science field. We emphasize:Â
- Practical training through projects and real-world applications.Â
- Industry-relevant case studies to develop problem-solving skills.Â
- Guest lectures and workshops from data science professionals.Â
Are the Data Science courses at Cranes Varsity more theoretical or practical?
Cranes Varsity emphasizes a hands-on learning approach. While theoretical concepts are crucial, a significant portion of the course focuses on practical lab sessions, projects, and applications of data science tools and techniques.Â
What are the assessments like in the Data Science courses?
Assessments in the Data Science courses include:Â
- Hands-on coding assignments and projects.Â
- Quizzes and exams to test theoretical understanding.Â
- Capstone projects where students apply their knowledge to solve real-world problems.Â
Is there online support for the Data Science courses?
Yes, Cranes Varsity provides online learning support for Data Science courses, including:Â
- Access to recorded lectures and tutorials.Â
- Virtual labs for practical experimentation.Â
- Online assignments and assessments.Â
- Interactive Q&A sessions with faculty.Â
How can I enroll in a Data Science course at Cranes Varsity?
To enroll in a Data Science course:Â
- You can fill out the application form and the dedicated admission counsellor will contact you..Â
- You can also visit our campus for direct inquiries and enrollment assistance.Â
Who are your trainers for the program and how are they selected?
Our trainers are seasoned professionals and industry experts with over 10+ years of relevant experience teaching the AI and ML certification course. Each of them has gone through a rigorous selection process that includes profile screening, and technical evaluation before they are certified to train for us. We also ensure that only trainers with a high alumni rating continue to train for us.Â
Are there scholarships or discounts available for Data Science courses?
Yes, Cranes Varsity offers scholarships and financial assistance for eligible students based on merit and need. We also provide early-bird discounts for those who enroll before specified deadlines.Â
Testimonials
On completing my B. Tech in Computer Science and Engineering and as a fresher it was so difficult to get a better career. So, I joined Cranes Varsity for PG Diploma in Data Science and it really helped me a lot. I have learned a lot from the institution. The trainers are very professional and have in-depth knowledge about the subjects. The placement team is also very cooperative and provided me with good opportunities. I got placed in Onward Technologies Thanks to Cranes Varsity for helping me to get a better job.
I joined Cranes Varsity, in August 2021, after my engineering hoping to start my career in the Data Science domain. The trainers here are very supportive and have profound knowledge in modules like Basic and advanced python, DAV, ML, DL, Tableau, etc. They also evaluate student performance through mock tests and interviews. They provide a significant amount of placement opportunities in reputed companies. I am extremely grateful to the placement team, because of them I got placed in Kyndryl. If you are a fresher hoping to get a job in your favorite domain then the Cranes Varsity is the place for you.
I have completed my B.E in Mechatronics. As a fresher, it was very difficult to get a better career. So, I joined Cranes Varsity for doing Data Science Training Program and it has really helped me a lot. I learned a lot from Cranes Varsity. The trainers are very professional and have in-depth knowledge about the subjects. The placement team is also very cooperative and they provide a lot of opportunities. At last, I got placed in Tek systems Thanks to Cranes Varsity for helping me to get a better job.
I have completed B E in Mechatronics. I joined this institute in September 2021 for PG Diploma in Data Science in Cranes Varsity. The Trainers are good. Mock tests are regularly conducted to improve our technical and aptitude skills. They provide a many numbers of placement opportunities to all and they are very supportive and guide you for placement I got placed in TataElxsi. If we put in your right efforts in the training, you will get 100% placements.
I joined Cranes Varsity for Data Science Certification Courses after my engineering. I am 2021 passed out and I learned to start from basic python to advance python, Data analytics and visualization, RDBMS, ML, Tableau, etc. They provide multiple placement opportunities to all and they are very supportive and guide you for placement. I got placed in EY a big4 company with a very good package for a fresher. So if u need to learn new things and need placement Cranes Varsity is the best place for you.
I came to know about Cranes Varsity through Career labs as it approached my institute. Teaching in Cranes Varsity is good and for the Data Science Online Course, they covered modules like Python, Advanced Python, DAV, RDBMS, Tableau, Machine Learning and DL, Web technology, and Cloud Computing. Also, they provide many placement opportunities. They regularly have module and placement tests so that we can test our knowledge and do better in actual placements. I got placed in Genpact
Jagadeeshraju
Tushar Mishra
Mubashir
Arjun E
Dhanush Kumar S
Nikhil Gaikar