Master in AI/ML ,Deep Learning, Generative AI & Agentic AI in just 4 Months ...

  • āœ… Live Online Classes

  • āœ… Hands-on Projects & Real Case Studies

  • āœ… Training by Industry Experts

  • āœ… Generative AI & Agentic AI Specialization

  • āœ… LMS Access with Recordings

  • āœ… Live Industry Mentorship

  • āœ… Profile Building & Placement Assistance

Complete Generative AI & Agentic AI Master Program

Master AI, Machine Learning, Deep Learning, Generative AI, and Agentic AI in just 4 months with our industry-oriented program. Learn through live online classes, hands-on projects, expert mentorship, and a complete job-ready curriculum covering Python, Statistics, ML, DL, GenAI, and Agents. Gain end-to-end practical skills and real industry experience, designed to fast-track your career growth and make you fully placement-ready.

Program Objectives

  • Build strong foundations in Python, Statistics, Machine Learning, Deep Learning, Generative AI, and Agentic AI.

  • Develop hands-on expertise through real-world projects and industry case studies.

  • Master modern AI tools, frameworks, and production-ready workflows.

  • Learn to design, train, evaluate, and deploy ML and AI models effectively.

  • Gain practical skills in LLMs, Prompt Engineering, RAG, Agents, and Multimodal AI.

  • Strengthen problem-solving, analytical thinking, and data-driven decision-making.

  • Prepare students for AI/ML job roles with profile building and placement assistance.

  • Enable learners to confidently work on end-to-end AI/ML pipelines and real business scenarios.

Course Curriculum

What you will learn in Program?

SECTION 1: PYTHON FUNDAMENTALS

  • 1.1 Introduction & Setup
    Installing Python, IDE setup, virtual environments

  • 1.2 Variables & Data Types
    Numbers, Strings, Boolean, Type Casting

  • 1.3 Operators
    Arithmetic, Comparison, Logical, Assignment, Identity, Membership

  • 1.4 Control Flow
    If-else, Loops (for, while), Break, Continue, Pass


SECTION 2: DATA STRUCTURES

  • 2.1 Lists
    Indexing, slicing, methods, list comprehension

  • 2.2 Tuples
    Immutable sequences, unpacking

  • 2.3 Dictionaries
    Key-value storage, dictionary methods, nested dictionaries

  • 2.4 Sets
    Unique elements, set operations

  • 2.5 Strings
    String methods, formatting, slicing


SECTION 3: FUNCTIONS

  • 3.1 Functions
    Defining functions, arguments, return values, lambda functions, scope, recursion


SECTION 4: FILE HANDLING

  • 4.1 File Operations
    Read, Write, Append, File modes

  • 4.2 Working with File Types
    TXT, CSV, JSON

  • 4.3 Error Handling
    Try-Except blocks, finally, raise


SECTION 5: NUMPY

  • 5.1 NumPy Basics
    Arrays, array creation, shapes, dtypes

  • 5.2 Array Operations
    Indexing, slicing, broadcasting

  • 5.3 Mathematical Operations
    Vectorized operations, aggregation functions

  • 5.4 Random Module
    Random numbers, distributions, seed


SECTION 6: PANDAS

  • 6.1 Pandas Fundamentals
    Series, DataFrames, basic operations

  • 6.2 Data Cleaning
    Handling missing data, duplicates, type conversions

  • 6.3 Data Transformation
    Apply, map, replace, renaming, sorting

  • 6.4 Data Aggregation & Grouping
    GroupBy, aggregation functions

  • 6.5 Merging & Joining
    Merge, join, concatenate

  • 6.6 Data Import/Export
    CSV, Excel, JSON, SQL


SECTION 7: DATA VISUALIZATION

  • 7.1 Matplotlib
    Basic plots, labels, titles, styling

  • 7.2 Seaborn
    Statistical plots, styling, heatmaps, pairplots

SECTION 1: BASIC STATISTICS

  • What is Statistics?

  • Types of Data

  • Descriptive vs Inferential Statistics

  • Measures of Central Tendency (Mean, Median, Mode)

  • Measures of Dispersion (Range, Variance, SD)

  • Quartiles, Percentiles & IQR

  • Outlier Detection

  • Sampling Methods

  • Data Visualization Basics


SECTION 2: PROBABILITY

  • Probability Basics & Rules

  • Conditional Probability

  • Bayes’ Theorem

  • Independence vs Dependence

  • Joint, Marginal & Conditional Distributions

  • Expected Value & Variance

  • Discrete Distributions (Binomial, Poisson, etc.)

  • Continuous Distributions (Normal, Exponential, etc.)

  • Cumulative Distribution Function (CDF)

  • Law of Large Numbers


SECTION 3: STATISTICAL INFERENCE

  • Central Limit Theorem

  • Standard Error vs Standard Deviation

  • Confidence Intervals

  • Hypothesis Testing Framework

  • Type I and Type II Errors

  • Statistical Power

  • Effect Size

  • P-values & Significance Levels

  • One-tailed vs Two-tailed Tests

  • Practical vs Statistical Significance


SECTION 4: PARAMETRIC TESTS

  • Z-Test

  • One-Sample T-Test

  • Two-Sample T-Test

  • Paired T-Test

  • One-Way ANOVA

  • Two-Way ANOVA

  • Post-Hoc Tests

  • Testing Assumptions (Normality, Homoscedasticity, Independence)


SECTION 5: NON-PARAMETRIC TESTS

  • When to Use Non-Parametric Tests

  • Mann-Whitney U Test

  • Wilcoxon Signed-Rank Test

  • Kruskal-Wallis Test

  • Sign Test


SECTION 6: CATEGORICAL DATA TESTS

  • Chi-Square Test of Independence

  • Chi-Square Goodness of Fit

  • Fisher’s Exact Test

  • McNemar’s Test


SECTION 7: MULTIPLE TESTING

  • Multiple Testing Problem

  • Bonferroni Correction

  • False Discovery Rate (FDR)


SECTION 8: REGRESSION & CORRELATION

  • Types of Correlation (Pearson, Spearman, Kendall)

  • Simple Linear Regression

  • Multiple Linear Regression

  • Regression Assumptions

  • R-Squared & Adjusted R-Squared

  • Residual Analysis

  • Multicollinearity & VIF

  • Polynomial Regression

  • Logistic Regression Basics

  • Regression Diagnostics


SECTION 9: DISTRIBUTION PROPERTIES

  • Skewness

  • Kurtosis

  • Q-Q Plots

  • Normality Tests (Shapiro-Wilk, Anderson-Darling)

  • Transformations for Normality (Log, Box-Cox, Yeo-Johnson)


SECTION 10: DATA VISUALIZATION

  • Essential Plot Types (Bar, Histogram, Boxplot, Scatter, etc.)

  • Advanced Visualizations (Heatmaps, Pairplots, Violin, KDE)

  • Identifying Patterns, Trends & Anomalies


SECTION 11: ML-SPECIFIC STATISTICS

  • Maximum Likelihood Estimation (MLE)

  • Bias-Variance Tradeoff

  • Cross-Validation Methods

  • Bootstrap & Resampling

  • Covariance Matrices

  • Information Theory (Entropy, KL Divergence)

  • PCA Statistical Foundations

  • Model Evaluation Metrics (AUC, F1, RMSE, etc.)


SECTION 12: TIME SERIES STATISTICS
  • Autocorrelation (ACF)

  • Partial Autocorrelation (PACF)

  • Stationarity

  • Moving Averages

  • Trend & Seasonality

SECTION 1: DATA PREPROCESSING & FOUNDATIONS

  • 1.1 What is Statistics?

  • 1.2 Types of Data

  • 1.3 Descriptive vs Inferential Statistics

  • 1.4 Measures of Central Tendency

  • 1.5 Measures of Dispersion

  • 1.6 Quartiles, Percentiles & IQR

  • 1.7 Outlier Detection

  • 1.8 Sampling Methods

  • 1.9 Data Visualization Basics


SECTION 2: SIMPLE SUPERVISED LEARNING

  • 2.1 Simple Linear Regression

  • 2.2 Multiple Linear Regression

  • 2.3 Ridge Regression (L2)

  • 2.4 Lasso Regression (L1)

  • 2.5 Elastic Net

  • 2.6 Polynomial Regression

  • 2.7 Logistic Regression (Binary)

  • 2.8 Multiclass Logistic Regression

  • 2.9 Evaluation Metrics for Regression


SECTION 3: CLASSIFICATION METRICS & VALIDATION

  • 3.1 Classification Metrics

  • 3.2 ROC Curves & AUC

  • 3.3 Precision–Recall Curves

  • 3.4 Cross-Validation

  • 3.5 Bias–Variance Tradeoff


SECTION 4: HANDLING REAL-WORLD PROBLEMS

  • 4.1 Class Imbalance Problem

  • 4.2 Resampling Techniques

  • 4.3 Algorithmic Approaches

  • 4.4 Evaluation for Imbalanced Data


SECTION 5: TREE-BASED MODELS

  • 5.1 Decision Trees

  • 5.2 Random Forest

  • 5.3 Bagging & Bootstrap Aggregating

  • 5.4 AdaBoost

  • 5.5 Gradient Boosting Machines (GBM)

  • 5.6 XGBoost

  • 5.7 LightGBM

  • 5.8 CatBoost

  • 5.9 Ensemble Methods (Stacking, Voting)


SECTION 6: OTHER SUPERVISED ALGORITHMS

  • 6.1 Naive Bayes

  • 6.2 K-Nearest Neighbors (KNN)

  • 6.3 Support Vector Machines (SVM)


SECTION 7: ADVANCED TOPICS

  • 7.1 Feature Engineering

  • 7.2 Feature Selection Methods

  • 7.3 Principal Component Analysis (PCA)

  • 7.4 t-SNE

  • 7.5 Linear Discriminant Analysis (LDA)

  • 7.6 UMAP


SECTION 8: UNSUPERVISED LEARNING

  • 8.1 K-Means Clustering

  • 8.2 K-Means++ Initialization

  • 8.3 Hierarchical Clustering

  • 8.4 DBSCAN

  • 8.5 HDBSCAN

  • 8.6 Gaussian Mixture Models (GMM)

  • 8.7 Isolation Forest

  • 8.8 Local Outlier Factor (LOF)

  • 8.9 One-Class SVM


SECTION 9: MODEL INTERPRETATION & DEPLOYMENT

  • 9.1 Feature Importance

  • 9.2 Permutation Importance

  • 9.3 SHAP

  • 9.4 LIME

  • 9.5 Partial Dependence Plots (PDP)

  • 9.6 Grid Search

  • 9.7 Randomized Search

  • 9.8 Bayesian Optimization

  • 9.9 Scikit-Learn Pipelines


SECTION 10: TIME SERIES (OPTIONAL)

  • 10.1 Time Series Components

  • 10.2 Stationarity & Differencing

  • 10.3 ACF & PACF

  • 10.4 Moving Averages

  • 10.5 Exponential Smoothing

  • 10.6 ARIMA

  • 10.7 SARIMA

  • 10.8 Prophet

  • 10.9 LSTM for Time Series

SECTION 1: NEURAL NETWORK FOUNDATIONS

  • 1.1 Perceptron & Multi-Layer Networks

  • 1.2 Activation Functions

  • 1.3 Forward Propagation

  • 1.4 Backpropagation & Gradient Descent

  • 1.5 Optimizers (SGD, Adam, RMSProp)

  • 1.6 Loss Functions

  • 1.7 Regularization Techniques

  • 1.8 Batch Normalization & Dropout

  • 1.9 Framework Implementation (TensorFlow/Keras, PyTorch)

  • 1.10 Practice Project


SECTION 2: NATURAL LANGUAGE PROCESSING (NLP)

  • 2.1 Text Preprocessing

  • 2.2 Text Representation

  • 2.3 Recurrent Neural Networks (RNN)

  • 2.4 Long Short-Term Memory (LSTM)

  • 2.5 Gated Recurrent Unit (GRU)

  • 2.6 Bidirectional RNNs

  • 2.7 Encoder–Decoder Architecture

  • 2.8 Attention Mechanism

  • 2.9 Sequence-to-Sequence Models

  • 2.10 Practice Projects


SECTION 3: TRANSFORMERS & MODERN NLP

  • 3.1 Transformer Architecture

  • 3.2 Self-Attention Mechanism

  • 3.3 Multi-Head Attention

  • 3.4 BERT

  • 3.5 GPT

  • 3.6 T5

  • 3.7 Model Variants (RoBERTa, DistilBERT, ALBERT)

  • 3.8 Transfer Learning & Fine-Tuning

  • 3.9 Hugging Face Transformers

  • 3.10 Practice Projects


SECTION 4: COMPUTER VISION

  • 4.1 Convolutional Neural Networks (CNNs)

  • 4.2 Convolution & Pooling Operations

  • 4.3 LeNet & AlexNet

  • 4.4 VGGNet

  • 4.5 ResNet

  • 4.6 Inception / GoogleNet

  • 4.7 MobileNet & EfficientNet

  • 4.8 Transfer Learning in Vision

  • 4.9 Data Augmentation

  • 4.10 Object Detection (YOLO, Faster R-CNN)

  • 4.11 Image Segmentation (U-Net, Mask R-CNN)

  • 4.12 Vision Transformers (ViT)

  • 4.13 Practice Project

SECTION 1: TRANSFORMER ARCHITECTURE MASTERY

  • 1.1 Attention Mechanisms

  • 1.2 Positional Encodings

  • 1.3 Encoder–Decoder Architecture

  • 1.4 Tokenization

  • 1.5 Transformer Variants


SECTION 2: LARGE LANGUAGE MODELS (LLMs)

  • 2.1 LLM Architecture Components

  • 2.2 Context Window & Memory Management

  • 2.3 Sampling & Generation

  • 2.4 Alignment Techniques

  • 2.5 Advanced Architectures

  • 2.6 Model Optimization


SECTION 3: PROMPT ENGINEERING

  • 3.1 Prompt Fundamentals

  • 3.2 Prompting Strategies

  • 3.3 Advanced Reasoning Techniques

  • 3.4 Structured Outputs

  • 3.5 Prompt Security & Optimization


SECTION 4: AGENTIC AI FOUNDATIONS

  • 4.1 Agent Fundamentals

  • 4.2 Perception-Action Loop

  • 4.3 Planning & Reasoning

  • 4.4 Agent Capabilities

  • 4.5 Agent Memory Systems

  • 4.6 Agent State Management


SECTION 5: AGENT ARCHITECTURES

  • 5.1 Single-Agent Systems

  • 5.2 ReAct Agent Implementation

  • 5.3 Multi-Agent Systems

  • 5.4 Hierarchical Agents

  • 5.5 Manager–Worker Patterns

  • 5.6 Collaborative vs Competitive Agents

  • 5.7 Advanced Agent Patterns


SECTION 6: AGENTIC FRAMEWORKS

  • 6.1 LangChain

  • 6.2 LangGraph

  • 6.3 AutoGen

  • 6.4 CrewAI

  • 6.5 Framework Comparison

  • 6.6 Human-in-the-Loop Integration


SECTION 7: RETRIEVAL-AUGMENTED GENERATION (RAG)

  • 7.1 RAG Fundamentals

  • 7.2 Embeddings & Similarity

  • 7.3 Vector Databases

  • 7.4 Document Processing

  • 7.5 Retrieval Techniques

  • 7.6 Advanced RAG Patterns

  • 7.7 Graph RAG

  • 7.8 Context Optimization

  • 7.9 RAG Evaluation


SECTION 8: MULTIMODAL AI

  • 8.1 Multimodal Fundamentals

  • 8.2 Vision-Language Models

  • 8.3 Image Generation & Editing

  • 8.4 Audio Processing

  • 8.5 Video Understanding

  • 8.6 Multimodal RAG

  • 8.7 Document Understanding

  • 8.8 Multimodal Prompting


SECTION 9: FINE-TUNING & MODEL OPTIMIZATION

  • 9.1 Fine-Tuning Fundamentals

  • 9.2 Dataset Preparation

  • 9.3 Parameter-Efficient Fine-Tuning (PEFT)

  • 9.4 Instruction Tuning

  • 9.5 Supervised Fine-Tuning (SFT)

  • 9.6 Alignment Fine-Tuning

  • 9.7 Catastrophic Forgetting

  • 9.8 Continual Learning

  • 9.9 Knowledge Distillation

  • 9.10 Model Merging


SECTION 10: MULTI-AGENT SYSTEMS

  • 10.1 Multi-Agent Architecture

  • 10.2 Communication Protocols

  • 10.3 Agent Routing & Orchestration

  • 10.4 Role Design & Delegation

  • 10.5 Coordination Mechanisms


SECTION 11: AGENT MEMORY & PERSISTENCE

  • 11.1 Memory Architecture Design

  • 11.2 Short-Term Memory

  • 11.3 Long-Term Memory

  • 11.4 Episodic Memory

  • 11.5 Semantic Memory

  • 11.6 Memory Operations

  • 11.7 Memory Summarization

  • 11.8 Cross-Session Persistence

  • 11.9 State Management


SECTION 12: REAL-TIME & EVENT-DRIVEN AGENTS

  • 12.1 Event-Driven Architecture

  • 12.2 Webhooks

  • 12.3 FastAPI for Agent APIs

  • 12.4 WebSocket Connections

  • 12.5 Background Tasks & Async Processing

  • 12.6 Streaming Responses

  • 12.7 External Integrations


SECTION 13: OBSERVABILITY & MONITORING

  • 13.1 Observability Fundamentals

  • 13.2 Tracing & Debugging

  • 13.3 LangSmith Platform

  • 13.4 Helicone Analytics

  • 13.5 Grafana Dashboards


SECTION 14: SAFETY & GUARDRAILS

  • 14.1 AI Safety Principles

  • 14.2 Content Moderation

  • 14.3 Input Validation & Sanitization

  • 14.4 Output Validation

  • 14.5 Prompt Injection Defense

  • 14.6 Jailbreak Prevention

  • 14.7 Hallucination Mitigation

  • 14.8 Constitutional Constraints

  • 14.9 Safety Classifiers

  • 14.10 Human Oversight

  • 14.11 Red-Teaming


SECTION 15: EVALUATION & TESTING

  • 15.1 Evaluation Framework Design

  • 15.2 Offline Evaluation

  • 15.3 Online Evaluation

  • 15.4 LLM-as-Judge

  • 15.5 AutoGen Evaluators

  • 15.6 RAG-Specific Evaluation

  • 15.7 Agent Evaluation

  • 15.8 Human Evaluation


SECTION 16: DOMAIN-SPECIFIC APPLICATIONS

  • 16.1 Finance & Banking

  • 16.2 Healthcare & Clinical

  • 16.3 Legal Applications

  • 16.4 Retail & E-Commerce

  • 16.5 Technology & Software Development

  • 16.6 Education & Tutoring

  • 16.7 Business Intelligence & Analytics

  • 16.8 Content Creation & Marketing

  • 16.9 Research & Knowledge Work


SECTION 17: MODEL CONTEXT PROTOCOL (MCP)

  • 17.1 MCP Fundamentals

  • 17.2 MCP Server Development

  • 17.3 MCP Client Integration

  • 17.4 LLM Connectors

  • 17.5 MCP Security

  • 17.6 MCP Deployment


SECTION 18: SPECIALIZED AGENT PATTERNS

  • 18.1 SQL Agents

  • 18.2 Code Analysis & Review Agents

  • 18.3 Test Generation Agents

  • 18.4 Documentation Agents

  • 18.5 Research & Synthesis Agents

  • 18.6 Data Curation Agents

  • 18.7 Recommendation Agents

  • 18.8 Planning & Scheduling Agents

    Talk to an Expert





    "I authorise DV Data & Analytics & its representatives to contact me with updates and notifications via Email/SMS/WhatsApp/Call. This will override DND/NDNC." Privacy Policy and Terms & Conditions

    What requirement do you need?

    There are no prerequisites to attend this course online or ofline. Elementary programming knowledge will be of advantage.

    Training Supports & Benefits

    • Learn from the World’s Best Faculty & Industry Experts
    • Learn with fun Hands-on Exercises & Assignments
    • Participate in Hackathons & Group Activities
    • Dedicated Faculty
    • 9AM to 6 PM Support
    • Participate in Hackathons & Group Activities
    • Resume Building & Mock Interview Prep​aration.
    • We offer personalized access to our Learning Management System (LMS).
    • Moc Interview Practise + Real time Test

      Talk to an Expert





      "I authorise DV Data & Analytics & its representatives to contact me with updates and notifications via Email/SMS/WhatsApp/Call. This will override DND/NDNC." Privacy Policy and Terms & Conditions

      Our Student Placed in...

      Best Training and Placement Institutes in Bangalore

      Students Reviews

      • Brings out the best in an employee. Provides multiple opportunities and avenues to excel. The management has been supportive of new ideas therein enabling a diverse learning curve. The overall culture of the organization is grounded and the fostering in a pleasant manner. The people in charge have set the standards high by practicing a hands on approach. Highly recommended for budding professionals to explore DV Analytics as a career option.

        Vivian Peter Avatar Vivian Peter

        Great place to learn! Dev Sir is very committed to every student's success. They have started offering online classes since the pandemic began. All classes are live, and all doubts are clarified. The class material and assignments is more than adequate for you to grasp all concepts. I would highly recommend for anyone interested in Data Science.

        Shreejil PV Avatar Shreejil PV

        I am a DV Student and having a great experience of learning. I have built a good programming skill. Everything seemed impossible and I was not so confident about my programming skills before joining DV but now the things have changed....I am confident enough with my programming skills. A Special Thanks to Dev Sir our Teacher who worked so hard for each and every student to be successful

        Abdul Sahid Avatar Abdul Sahid

        Best institute for Data Science. People from any educational background can join this institute in order to start career in data science or data analytics domain.Great place to learn! Dev Sir is very committed to every student's success

        Babu Hussain Avatar Babu Hussain

        DV Analytics is a highly professional institute dedicated to enlighten the students towards the path of data science.Supportive staff interactive and regular classes with a vision to make one find success. and the best parts is the placement

        Abdul Sameer. Dv analytics Avatar Abdul Sameer. Dv analytics

        DV Analytics Training Institute boasts a friendly work culture that fosters collaboration. The training environment is conducive to effective learning, with supportive instructors and a management team that genuinely cares about your CAREER

        sahal roshan Avatar sahal roshan
      • DV Analytics is a best Data Science Institute. With a wide and extraordinary classes, they also helps us with business development strategies, projects across different industries.

        rajat chaudhary Avatar rajat chaudhary

        If you really think that it's hard to be a data scientist or data Analyst then Dv Analytics is the right place to join to know how easy it is to be a data analyst . I am saying because earlier I myself even though that coding is really hard but the day I joined and started learning i came to know it's all easy if you get a right tutor because the way they will nurture you in this 6 month's will definitely make you get placed in some good MNC. #Dv Analytics #Dvtian

        Roopesh Mohapatra Avatar Roopesh Mohapatra

        On the basis of my personal experience, DV is one the best Data Science training institute in India. I really appreciate that the team of Dv Analytics take care of Each and every student from their joining into Dv to getting success in his/her life.

        Suryakanta lenka Avatar Suryakanta lenka

        It's a best institute to start a carrier in Data science, trust me you have the best teachers who are teaching here. "DV Analytics Training Institute" is a second home for me. I am a beginner to this field but before coming here i thought that this may be difficult for me, but no problem every path is hard before walking into it. Ask Dev sir for the guidance, I am 100% sure that he will guide you throughout your entire journey of Data Science. Thanks to DV analytics for providing me a nice platform where i am feeling much confident.

        raj pahan Avatar raj pahan

        Any one who wants to get into the field of Data can definitely check this place. At this place you wont just learn a lot, the placement support DV gives its students is insanely strong. Deb sir and Venky sir are genius in their field and to learn from them was just amazing experience.

        Vijith Visweswaran Avatar Vijith Visweswaran

        Dv is the great place to learn Data Science. Dev Sir is very committed to every student's success. All classes are live, and all doubts are clarified. The live projects are the key point to achieve success. The class material and assignments is more than adequate for you to grasp all concepts. I would highly recommend for anyone interested in Data Science to join DV analytics

        Abhisek Debata Avatar Abhisek Debata
      • I'm a student at DV Analytics right now, and I couldn't be more satisfied. I wholeheartedly endorse DV Analytics to anyone wishing to advance their data analytics skills, whether they are novices or seasoned professionals. The course material is interesting and applicable. Deb Sir is a true Data Scientist expert, with a wealth of knowledge and experience in the field. Thank you, DV Analytics!

        ajit Avatar ajit

        DV Analytics Training Institute boasts a friendly work culture that fosters collaboration. The training environment is conducive to effective learning, with supportive instructors and a management team that genuinely cares about your success. A fantastic place to grow your skills and build a solid foundation for a successful career.

        Prasantika Mohapatra Avatar Prasantika Mohapatra

        It's the Best institute with awesome and enthusiastic mentors.I was searching for the training institute for long time and got this. If you want to go for Data scientist/Data Analyst course must join DV.

        Priyanshi Avatar Priyanshi

        I would like to thank DV Analytics support staff and faculties especially Dev sir. I joined DV recently and I was not confident because of my non IT background but after attending regular classes and doing assignments I feel very confident that I can be a data scientist. This is one of the best institute to learn data science for IT as well as non IT students.

        Soumyaranjan Sutar Avatar Soumyaranjan Sutar

        Being a student from UK I have benefited by Dev sir's flexible approach with timing. I believe DV Analytics is one which helps you to grow and groom your career. It is an outstanding institute to enter the world of Data Science. Course has been designed in such a manner that people from any stream can follow through. Dev sir is very approachable and boosts one confidence through his teaching. "THE BEST INSTITUTE"

        B M Avatar B M

        Dv analytics is an excellent training institute which has a very good job placement track record.

        Rį“‡į“ į“€į“›ŹœŹ ᓘ s Avatar Rį“‡į“ į“€į“›ŹœŹ ᓘ s
      • DV Analytics is a best Data Science Institute. With a wide and extraordinary classes, they also helps us with business development strategies, projects across different industries. The courses that I looked to gain knowledge in Ai and machine learning and etc. One can have a decent learning experience with long hours devoted to the course. Offers project based learning which we can use in real time as it helps us to enhance our decision making abilities. Dev sir is really a good person and have broad knowledge across data analytics industry

        Chandan A Avatar Chandan A

        Dv analytics is a very good training institute with very good trainers and has helped my daughter secure a nice job in the corporate company.

        Sunitha Kumari B Avatar Sunitha Kumari B

        Best institute for learning data science for your career opportunities. I have earned a high package job thank you dv analytic

        Lokeshwari Loki Avatar Lokeshwari Loki

        I would strongly recommend DV Analytics to other individuals who require data science skills with limited time availability. The course offered by them are well structured as per the demand of recruiters, so any non IT background can easily grasp the knowledge.Thanks to all DV staffs and specially Dev sir for excelling us towards success 😊

        Rakesh Kumar Barik Avatar Rakesh Kumar Barik

        DV is best choice if you are deciding to build Data Science as a professional career. The best thing about DV is the Mentor- Mentee Strategy adopted by them for hand holding of each student till they get Placement. Further, they conduct various Trainings/ Workshops by Industry Experts who helps students to understand the use of various Data Science Tools in real world.

        Duryadha Sethi Avatar Duryadha Sethi

        DV analytics is One of the best Institutes, giving excellent training and placement with in 6 months duration, The comprehensive curriculum, expert instructors, and hands-on projects make it an unparalleled learning experience. Plus, their commitment to placements ensures you're not just trained; you're career-ready!

        Gayathri S Avatar Gayathri S

      BECOME A GLOBAL CERTIFIED

      DATA SCIENTIST

      100% Placement Assistance