Best Software Training Institute in Hyderabad – Version IT

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📅 Course Duration

3 Months

💰 Course Price

₹ 25000

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📄 Course Content

Best Data Science Training in Pune

Data Science simplifies complex data within an organization into meaningful, actionable information. If you want to pursue a career in this area, our Data Science course in Pune offers the most important Science packages such as Tableau, Power BI, SQL and advanced Excel. You will be taught how to visualize and analyze data efficiently, develop interactive dashboards, and present the results that can be used to make decisions.

What is Data Science?

Imparting skills and practical experience applicable to existing relevant tasks in the industry, this Data Science training in Pune challenges you with the knowledge and skills to succeed and excel in the rapidly expanding area of data analytics and data Science, ensuring you are prepared to work in areas of data analysis, business intelligence, and beyond.

What does a Data Analyst do?

A Data Analyst is a job role that involves gathering, processing and analysis of data to assist organisations to make informed and data driven decisions. Their task is to process raw information into applicable findings, locate trends, and produce reports that advance the business- strategies. Such major tasks are data cleaning, statistical analysis, data Science, and making the results easily comprehensible. With these skills Learned, data analysts are important in making decisions pertaining to the business. In case you want to pursue the career of Data Analyst, we at Version IT offer the best Data Science training in Pune providing you all the skills required in data analysis, data Science software (Tableau and Power BI) and how to convert the data into effective stories to sell the business.

Why attend Data Science Training in Pune?

Data Analysts need to have skills to analyze, interpret, and visualize data to be able to make data-driven decisions. Data Science online course in Pune at Version IT provides an intense training in the several types of data Science tools and techniques enabling you to convert complex data into simple and actionable data. You will be provided with practical experience of such tools as Tableau, Power BI, and advanced Excel, data cleaning, statistical analysis, and creating reports. At the end of the course, you will be able to assume such roles as:

  • Data Analyst
  • Data Science Specialist II.
  • Business Intelligence Analyst.
  • Data Scientist
  • Reporting Analyst

Data Science Training Curriculum

  • Data Science basics and storytelling principles.
  • Matplotlib Charts & Graphs.
  • Serious visual analytics using Seaborn.
  • Plotly non-HTML interactive dashboards.
  • Tableau and Power BI Business Intelligence.
  • Best practices of data preparation and Science.
  • The real world of Science projects and uses.

Data Science Program Highlights

10+ Practical Assignments

Practical learning and use of concepts: on over 10 real-world tasks, have hands-on experience cementing theoretical and practical insights and degrees.

200+ Hiring Partner Companies

Version IT is related to more than 200 companies, and it allows the students to allocate employment opportunities in different spheres.

Placement Support System

Get special placement help once an individual completed the course in SAP, interview guidance, and profile development.

Job Readiness Program

Our Job Ready Programs will provide the learners with the necessary skills in the industry, resume support and mock interviews to enable them make a confident entry into the professional world.

Data Science Certificate

 Data Science Certification Program by Version IT helps to develop the expertise that will be strong in Python, analytics, machine learning, deep learning, and real-time data projects. The course focuses on practice and practical tasks including case studies in the industry.

Resuming the role of an aspiring data scientist, there are no more barriers to implementing data science solutions to address the challenges of a real business setup. You are now ready to launch your career in one of the most promising industries.

What makes Version IT the Best Data Science Online Training in Pune?

Version IT provides a full course offering of Data Science training  to develop robust practical skills in Python, machine learning, deep learning, artificial intelligence, SQL, tableau/power bi, and projects. Our employment opportunities driven curriculum helps the learner to get ready for the high demand data jobs through practicality and professional project mentorship.

Expert Faculty

Benefit by proven experience, mentoring, and realistic advice from Data Scientists and industry experts who offer real-time advice, tips, and even personalized mentorship to build your analysis and technical capacity.

Hands-On Practical Learning

Get a wide level of practical experience via the years of real datasets, capstone initiatives, case studies, and tasks, where you are ready to take on issues and actual business in the world.

Flexible Learning Options

Online or classroom training with the benefits of flexible batch times to fit students, working professionals, and career switchers.

Why is Data Science Training at Version IT Special?

  • Advanced program Python, ML, DL, AI, SQL, Big Data tools and dashboards For BI
  • Technical Competencies that are applicable to the industry and are in line with the current hiring requirements.
  • Examination on beneficent course completion.
  • Viable Placement Support comprising resume construction and mock interview.
  • 200+ Hiring Partners to enhance the placement opportunities.
  • Workshops and technological sessions incorporated into learning activities.

What Will You Learn in the Data Science Training Program?

  • Python-based full workflow of Data Science with real data.
  • Preprocessing of the data, exploration of data analysis, feature engineering and model testing.
  • Algorithms of Machine Learning and Deep Learning.
  • Tableau / power BI GIS.
  • ML models implementation and API creation.
  • Resume construction and interviewing preparation.

Become an IT Pro at Version IT and Build a High-Growth Career

No matter your level of expertise (beginner or upskilling professional), this training will make you ready to be hired as a Data Analyst, Data Scientist, ML Engineer, or BI Analyst.

Topics You will Learn

Python

● Introduction to Data Science
○ Introduction to Data Science
○ Discussion on Course Curriculum
○ Introduction to Programming
● Python Basics
○ Introduction to Python: Installation and Running (Jupyter Notebook, .pyf
ile from terminal, Google Colab)
○ Data types and type conversion
○ Variables
○ Operators
○ Flow Control : If, Elif, Else
○ Loops
○ Python Identifier
○ Building Funtions (print, type, id, sys, len)
● Python – Data Types & Utilities
○ List, List of Lists and List Comprehension
○ List creation
○ Create a list with variable
○ List mutable concept
○ len() || append() || pop()
○ insert() || remove() || sort() || reverse()
○ Forward indexing
○ Backward Indexing
○ Forward slicing
○ Backward slicing
○ Step slicing
● Set
○ SET creation with variable
○ len() || add() || remove() || pop()
○ union() | intersection() || difference()
● Tuple
○ TUPLE Creation
○ Create Tuple with variable
○ Tuple Immutable concept
○ len() || count() || index()
○ Forward indexing
○ Backward Indexing
● Dictionary and Dictionary comprehension
○ create a dictionary using variable
○ keys:values concept
○ len() || keys() || values() || items()
○ get() || pop() || update()
○ comparision of datastructure
○ Introduce to range()
○ pass range() in the list
○ range() arguments
○ For loop introduction using range()
● Functions
○ Inbuilt vs User Defined
○ User Defined Function
○ Function Argument
○ Types of Function Arguments
○ Actual Argument
○ Global variable vs Local variable
○ Anonymous Function | LAMBDA
● Packages
● Map Reduce
● OOPs
● Class & Object
○ what is mean by inbuild class
○ how to creat user class
○ crate a class & object
○ __init__ method
○ python constructor
○ constructor, self & comparing objects
○ instane variable & class variable
● Methods
○ what is instance method
○ what is class method
○ what is static method
○ Accessor & Mutator
● Python DECORATOR
○ how to use decorator
○ inner class, outerclass
○ Inheritence
● Polymorphism
○ duck typing
○ operator overloading
○ method overloading
○ method overridding
○ Magic method
○ Abstract class & Abstract method
○ Iterator
○ Generators in python
● Python – Production Level
○ Error / Exception Handling
○ File Handling
○ Docstrings
○ Modularization
● Pickling & Unpickling
● Pandas
○ Introduction, Fundamentals, Importing Pandas, Aliasing, DataFrame
○ Series – Intro, Creating Series Object, Empty Series Object, Create series
from List/Array/Column from DataFrame, Index in Series, Accessing
values in Series
○ NaN Value
○ Series – Attributes (Values, index, dtypes, size)
○ Series – Methods – head(), tail(), sum(), count(), nunique() etc.,
○ Date Frame
○ Loading Different Files
○ Data Frame Attributes
○ Data Frame Methods
○ Rename Column & Index
○ Inplace Parameter
○ Handling missing or NaN values
○ iLoc and Loc
○ Data Frame – Filtering
○ Data Frame – Sorting
○ Data Frame – GroupBy
○ Merging or Joining
○ Data Frame – Concat
○ DataFrame – Adding, dropping columns & rows
○ DataFrame – Date and time
○ DataFrame – Concatenate Multiple csv files
● Numpy
○ Introduction, Installation, pip command, import numpy package, Module
Not Found Error, Famous Alias name to Numpy
○ Fundamentals – Create Numpy Array, Array Manipulation, Mathematical
Operations, Indexing & Slicing
○ Numpy Attributes
○ Important Methods- min(),max(), sum(), reshape(), count_nonzero(),
sort(), flatten() etc.,
○ adding value to array of values
○ Diagonal of a Matrix
○ Trace of a Matrix
○ Parsing, Adding and Subtracting Matrices
○ “Statistical Functions: numpy.mean()
○ numpy.median()
○ numpy.std()
○ numpy.sum()
○ numpy.min()”
○ Filter in Numpy
● Matplotlib
○ Introduction
○ Pyplot
○ Figure Class
○ Axes Class
○ Setting Limits and Tick Labels
○ Multiple Plots
○ Legend
○ Different Types of Plots
○ Line Graph
○ Bar Chart
○ Histograms
○ Scatter Plot
○ Pie Chart
○ 3D Plots
○ Working with Images
○ Customizing Plots
● Seaborn
○ catplot() function
○ stripplot() function
○ boxplot() function
○ violinplot() function
○ pointplot() function
○ barplot() function
○ Visualizing statistical relationship with Seaborn relplot() function
○ scatterplot() function
○ regplot() function
○ lmplot() function
○ Seaborn Facetgrid() function
○ Multi-plot grids
○ Statistical Plots
○ Color Palettes
○ Faceting
○ Regression Plots
○ Distribution Plots
○ Categorical Plots
○ Pair Plots
● Scipy
○ Signal and Image Processing (scipy.signal, scipy.ndimage):
○ Linear Algebra (scipy.linalg)
○ Integration (scipy.integrate)
○ Statistics (scipy.stats)
○ Spatial Distance and Clustering (scipy.spatial)
● Statsmodels
○ Linear Regression (statsmodels.regression)
○ Time Series Analysis (statsmodels.tsa)
○ Statistical Tests (statsmodels.stats)
○ Anova (statsmodels.stats.anova)
○ Datasets (statsmodels.datasets)

Mathematics

● Set Theory
○ Data Representation & Database Operations
● Combinatorics
○ Feature Selection
○ Permutations and Combinations for Sampling
○ Hyper parameter Tuning
○ Experiment Design
○ Data Partitioning and Cross-Validation
● Probability
○ Basics
○ Theoretical Probability
○ Empirical Probability
○ Addition Rule
○ Multiplication Rule
○ Conditional Probability
○ Total Probability
○ Probability Decision Tree
○ Bayes Theorem
○ Sensitivity & Specificity in Probability
○ • Bernouli Naïve Bayes, Gausian Naïve Bayes, Multinomial Naïve Bayes
● Distributions
○ Binomial, Poisson, Normal Distribution, Standard Normal Distribution
○ Gaussian Distribution, Uniform Distribution
○ Z Score
○ Skewness
○ Kurtosis
○ Geometric Distribution
○ Hypergeometric Distribution
○ Markov Chain
● Linear Algebra
○ Linear Equations
○ Matrices(Matrix Algebra: Vector Matrix Vector matrix multiplication
Matrix matrix multiplication)
○ Determinant
○ Eigen Value and Eigenvector
● Euclidean Distance & Manhattan Distance
● Calculus
○ Differentiation
○ Partial Differentiation
○ Max & Min
● Indices & Logarithms

Statistics

● Introduction
○ Population & Sample
○ Reference & Sampling technique
● Types of Data
○ Qualitative or Categorical – Nominal & Ordinal
○ Quantitative or Numerical – Discrete & Continuous
○ Cross Sectional Data & Time Series Data
● Measures of Central Tendency
○ Mean, Mode & Median – Their frequency distribution
● Descriptive statistic Measures of symmetry
○ skewness (positive skew, negative skew, zero skew)
○ kurtosis (Leptokurtic, Mesokurtic, Platykurtic)
● Measurement of Spread
○ Range, Variance, Standard Deviation
● Measures of variability
○ Interquartile Range (IQR)
○ Mean Absolute Deviation (MAD)
○ Coefficient of variation
○ Covariance
● Levels of Data Measurement
○ Nominal, Ordinal, Interval, Ratio
● Variable
○ Types of Variables.
○ Categorical Variables – Nominal variable & ordinal variables
○ Numerical Variables: discrete & continuous
○ Dependent Variable
○ Independent Variable
○ Control Moderating & Mediating
● Frequency Distribution Table
○ Nominal, Ordinal, Interval, Ratio
● Types of Variables
○ Categorical Variables – Nominal variable & ordinal variables
○ Numerical Variables: discrete & continuous
○ Dependent Variable
○ Independent Variable
○ Control Moderating & Mediating
● Frequency Distribution Table
○ Relative Frequency, Cumulative Frequency
○ Histogram
○ Scatter Plots
○ Range
○ Calculate Class Width
○ Create Intervals
○ Count Frequencies
○ Construct the Table
● Correlation, Regression & Collinearity
○ Pearson & Spearman Correlation Methods
○ Regression Error Metrics
● Others
○ Percentiles, Quartiles, Interquartile Range
○ Different types of Plots for Continuous, Categorical variable
○ Box Plot, Outliers
○ Confidence Intervals
○ Central Limit Theorem
○ Degree of freedom
● Bias and Variance in ML
● Entropy in ML
● Information Gain
● Surprise in ML
● Loss Function & Cost Function
○ Mean Squared Error, Mean Absolute Error – Loss Function
○ Huber Loss Function
○ Cross Entropy Loss Function
● Inferential Statistics
○ Hypothesis Testing: One tail, two tail and p-value
○ Formulation of Null & Alternative Hypothesis
○ Type-I error & Type-II error
○ Statistical Tests
○ Sample Test
○ ANOVA Test
○ Chi-square Test
○ Z-Test & T-Test

SQL

● Introduction
○ DBMS vs RDBMS
○ Intro to SQL
○ SQL vs NoSQL
○ MySQL Installation
● Keys
○ Primary Key
○ Foreign Key
● Constraints
○ Unique
○ Not NULL
○ Check
○ Default
○ Auto Increment
● CRUD Operations
○ Create
○ Retrieve
○ Update
○ Delete
● SQL Languages
○ Data Definition Language (DDL)
○ Data Query Language
○ Data Manipulation Language (DML)
○ Data Control Language
○ Transaction Control Language
● SQL Commands
○ Create
○ Insert
○ Alter, Modify, Rename, Update
○ Delete, Truncate, Drop
○ Grant, Revoke
○ Commit, Rollback
○ Select
● SQL Clause
○ Where
○ Distinct
○ OrderBy
○ GroupBy
○ Having
○ Limit
● Operators
○ Comparison Operators
○ Logical Operators
○ Membership Operators
○ Identity Operators
● Wild Cards

● Aggregate Functions
● SQL Joins
○ Inner Join & Outer Join
○ Left Join & Right Join
○ Self & Cross Join
○ Natural Join

EDA & ML

● EDA
○ Univariate Analysis
○ Bivariate Analysis
○ Multivariate Analysis
● Data Visualisation
○ Various Plots on different data types
○ Plots for Continuous Variables
○ Plots for Discrete Variables
○ Plots for Time Series Variables
● ML Introduction
○ What is Machine Learning?
○ Types of Machine Learning Methods
○ Classification problem in general
○ Validation Techniques: CV,OOB
○ Different types of metrics for Classification
○ Curse of dimensionality
○ Feature Transformations
○ Feature Selection
○ Imbalanced Dataset and its effect on Classification
○ Bias Variance Tradeoff
● Important Element of Machine Learning
● Multiclass Classification
○ One-vs-All
○ Overfitting and Underfitting
○ Error Measures
○ PCA learning
○ Statistical learning approaches
○ Introduce to SKLEARN FRAMEWORK
● Data Processing
○ Creating training and test sets, Data scaling and Normalisation
○ Feature Engineering – Adding new features as per requirement,
Modifying the data
○ Data Cleaning – Treating the missing values, Outliers
○ Data Wrangling – Encoding, Feature Transformations, Feature Scaling
○ Feature Selection – Filter Methods, Wrapper Methods, Embedded
Methods
○ Dimension Reduction – Principal Component Analysis (Sparse PCA &
Kernel PCA), Singular Value Decomposition
○ Non Negative Matrix Factorization
● Regression
○ Introduction to Regression
○ Mathematics involved in Regression
○ Regression Algorithms
○ Simple Linear Regression
○ Multiple Linear Regression
○ Polynomial Regression
○ Lasso Regression
○ Ridge Regression
○ Elastic Net Regression
● Evaluation Metrics for Regression
○ Mean Absolute Error (MAE)
○ Mean Squared Error (MSE)
○ Root Mean Squared Error (RMSE)
○ R²
○ Adjusted R²
● Classification
○ Introduction
○ K-Nearest Neighbors
○ Logistic Regression
○ Support Vector Machines (Linear SVM)
○ Linear Classification
○ Kernel-based classification
○ Non-linear examples
○ 2 features forms straight line & 3 features forms plane
○ Hyperplane and Support vectors
○ Controlled support vector machines
○ Support vector Regression
○ Kernel SVM (Non-Linear SVM)
○ Naives Bayes
○ Decision Trees
○ Random Forest / Bagging
○ Ada Boost
○ Gradient Boost
○ XG Boost
○ Evaluation Metrics for Classification
● Clustering
● Introduction
● K-Means Clustering
○ Finding the optimal number of clusters
○ Optimizing the inertia
○ Cluster instability
○ Elbow method
● Hierarchical Clustering
● Agglomerative clustering
● DBSCAN Clustering
● Association Rules
○ Market Basket Analysis
○ Apriori Algorithm
● Recommendation Engines
○ Collaborative Filtering
○ User based collaborative filtering
○ Item based collaborative filtering
○ Recommendation Engines
● Time Series & Forecasting
○ What is Time series data
○ Different components of time series data
○ Stationary of time series data
○ ACF, PACF
○ Time Series Models
○ AR
○ ARMA
○ ARIMA
○ SARIMAX
● Model Selection & Evaluation
● Over Fitting & Under Fitting
○ Bianca-Variance Tradeoff
○ Hyper Parameter Tuning
○ Joblib And Pickling
● Others
○ Dummy Variable, One Hot Encoding
○ gridsearchcv vs randomizedsearchcv
● ML Pipeline
● ML Model Deployment in Flask

Power BI

● Introduction
○ Power BI for Data scientist
○ Types of reports
○ Data source types
○ Installation
● Basic Report Design
○ Data sources and Visual types
○ Canvas and fields
○ Table and Tree map
○ Format button and Data Labels
○ Legend,Category and Grid
○ CSV and PDF Exports
● Visual Sync, Grouping
○ Slicer visual
○ Orientation, selection process
○ Slicer: Number, Text, slicer list
○ Bin count,Binning
● Hierarchies, Filters
○ Creating Hierarchies
○ Drill Down options
○ Expand and show
○ Visual filter,Page filter,Report filter
○ Drill Thru Reports
● Power Query
○ Power Query transformation
○ Table and Column Transformations
○ Text and time transformations
○ Power query functions
○ Merge and append transformations
● DAX Functions
○ DAX Architecture,Entity Sets
○ DAX Data types,Syntax Rules
○ DAX measures and calculations
○ Creating measures
○ Creating Columns

Deep Learning

● Deep learning at Glance
○ Introduction to Neural Network
○ Biological and Artificial Neuron
○ Introduction to perceptron
○ Perceptron and its learning rule and drawbacks
○ Multilayer Perceptron, loss function
○ Neural Network Activation function
● Training MLP: Backpropagation
● Cost Function
● Gradient Descent Backpropagation – Vanishing and Exploding Gradient Problem
● Introduce to Py-torch
● Regularization
● Optimizers
● Hyperparameters and tuning of the same
● TENSORFLOW FRAMEWORK
○ Introduction to TensorFlow
○ TensorFlow Basic Syntax
○ TensorFlow Graphs
○ Variables and Placeholders
○ TensorFlow Playground
● ANN (Artificial Neural Network)
○ ANN Architecture
○ Forward & Backward Propagation, Epoch
○ Introduction to TensorFlow, Keras
○ Vanishing Gradient Descend
○ Fine-tuning neural network hyperparameter
○ Number of hidden layers, Number of neurons per hidden layer
○ Activation function
○ INSTALLATION OF YOLO V8, KERAS, THEANO
● PY-TORCH Library
● RNN (Recurrent Neural Network)
○ Introduction to RNN
○ Backpropagation through time
○ Input and output sequences
○ RNN vs ANN
○ LSTM (Long Short-Term Memory)
○ Different types of RNN: LSTM, GRU
○ Bidirectional RNN
○ Sequential-to-sequential architecture (Encoder Decoder)
○ BERT Transformers
○ Text generation and classification using Deep Learning
○ Generative-AI (Chat-GPT)
● Basics of Image Processing
○ Histogram of images
○ Basic filters applied on the images
● Convolutional Neural Networks (CNN)
○ ImageNet Dataset
○ Project: Image Classification
○ Different types of CNN architectures
○ Recurrent Neural Network (RNN)
○ Using pre-trained model: Transfer Learning

Natural Language Processing (NLP)

● Natural Language Processing (NLP)
○ Text Cleaning
○ Texts, Tokens
○ Basic text classification based on Bag of Words
● Document Vectorization
○ Bag of Words
○ TF-IDF Vectorizer
○ n-gram: Unigran, Bigram
○ Word vectorizer basics, One Hot Encoding
○ Countvectorizer
○ Word cloud and gensim
○ Word2Vec and Glove
○ Text classification using Word2Vec and Glove
○ Parts of Speech Tagging (PoS Tagging or POST)
○ Topic Modelling using LDA
○ Sentiment Analysis
● Twitter Sentiment Analysis Using Textblob
○ TextBlob
○ Installing textblob library
○ Simple TextBlob Sentiment Analysis Example
○ Using NLTK’s Twitter Corpus
● Spacy Library
○ Introduction, What is a Token, Tokenization
○ Stop words in spacy library
○ Stemming
○ Lemmatization
○ Lemmatization through NLTK
○ Lemmatization using spacy
○ Word Frequency Analysis
○ Counter
○ Part of Speech, Part of Speech Tagging
○ Pos by using spacy and nltk
○ Dependency Parsing
○ Named Entity Recognition(NER)
○ NER with NLTK
○ NER with spacy

Computer Vision

● Human vision vs Computer vision
○ CNN Architecture
○ Convolution – Max Pooling – Flatten Layer – Fully Connected Layer
○ CNN Architecture
○ Striding and padding
○ Max pooling
○ Data Augmentation
○ Introduction to OpenCV & YoloV3 Algorithm
● Image Processing with OpenCV
○ Image basics with OpenCV
○ Opening Image Files with OpenCV
○ Drawing on Images, Image files with OpenCV
○ Face Detection with OpenCV
● Video Processing with OpenCV
○ Introduction to Video Basics, Object Detection
○ Object Detection with OpenCV
● Reinforcement Learning
○ Introduction to Reinforcement Learning
○ Architecture of Reinforcement Learning
○ Reinforcement Learning with Open AI
○ Policy Gradient Theory
● Open AI
○ Introduction to Open AI
○ Generative AI
○ Chat Gpt (3.5)
○ LLM (Large Language Model)
○ Classification Tasks with Generative AI
○ Content Generation and Summarization with Generative AI
○ Information Retrieval and Synthesis workflow with Gen AI
● Time Series and Forecasting
○ Time Series Forecasting using Deep Learning
○ Seasonal-Trend decomposition using LOESS (STL) models.
○ Bayesian time series analysis
● MakerSuite Google
○ PaLM API
○ MUM models
● Azure ML

FAQ's

Under systematic instructions and training then, anyone is able to learn irrespective of the background.
Undergo orderly data cleaning, correct algorithms accordingly, test models deeply, employ appropriate metrics of evaluation, record workflow, test with real-life data, and provide easily understood and intelligible outcomes to make decisions.
This starts with the basics of Python and statistics, real projects, practice on datasets, and advanced projects, learn and practice on platforms such as Kaggle; learn tools such as ML and BI dashboards and practice with practice guided training.

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