Applied Data Science with AI/ML – 150 Hrs

Level 1 – 60 Hrs
Level 2 – 60 Hrs
Level 3 – 30 Hrs

Modules

Level 1 – Data Analysis 60 Hrs:
  • Exploratory Data Analysis using Pandas
  • Machine Learning
  • Python (Pre-recorded video)
Level 2 – Deep Learning and NLP 60 Hrs:
  • Deep Learning
  • Natural Language Processing (NLP)
Level 3 – AI ML Tools 30 Hrs:
  • Foundational AI/ML Tools
  • GenAI tools and AI Agents

Program Objectives

To equip learners with industry-relevant technicalskills and
enhance theirjob readiness through project-based learning,
hands-on tool exposure, and real-world application
deployment, thereby preparing them for successful
employment in core domain areas

Program Outcomes

  • Perform exploratory data analysis(EDA) using Pandas including data cleaning with proficiency in handling large datasets.
  • Build and evaluatemachine learningmodels, including regression, classification, and clustering algorithms, and apply them to solve practical business problems.
  • Develop projectsthat demonstrate the ability to apply learned concepts

Project Stream:

• Machine Learning and Deep Learning Deploy
using Streamlit or Huggingface

Experiential Project Based Learning

  • End-to-End AI Project Experience
  • Tools / Platform:

    • Google Colab /Jupyter Notebook
    • OpenAI, Gemini, Copilot
    • HuggingFace, Langchain, CrewAI

    Module 1: Exploratory Data Analysis with Pandas (30 Hours)
    NumPy Vectorization BroadcastingSlicing of Matrices FilteringArray Creation Functions
    NumPy Functions across axisStacking of arraysMatrix Calculation
    Pandas SeriesData CleaningHandling Missing Data
    Pandas Data frameSelectionData (loc, iloc)Filtering Data Frames
    Sorting Data FramesImporting DataData Visualization
    Working with Categorical DataGrouping & AggregationMerging Data Frame (concat, merge)
    Module 2: Machine Learning (30 Hours)
    Understand what is Machine LearningRegressionLogistic Regression
    Supervised machine learningSimple linear regressionNaïve Bayes Classification
    Unsupervised machine learningMultiple linear regressionDecision Trees and its types
    Train test split the dataPerformance measure for regressionK Nearest Neighbor Classification
    ML Workflow for project implementationMSE, R-Squared, MAE, SSEPerformance Measure for Classification
    ClassificationVarious types of classificationAccuracy, Recall, Precision, F1 measure
    Sorting Data FramesImporting CSV filesImporting Excel Files
    LEVEL 2: Deep Learning and NLP (60 Hrs)
    Module 3: Deep Learning (30 Hrs)
    What is Deep LearningHidden LayersBuilding project based on CNN
    Deep Learning MethodsActivation FunctionTensorFlow, PyTorch, Keras
    Deep Learning ApplicationForward and Backward propagationBatch Normalization, Dropout
    Artificial Neural NetworkDeep Learning LibrariesPerformance measure for ANN
    CNN architectureCNN for computer visionObject detection
    Computer vision basicsOpenCVWorking with Images
    Module 4: Natural Language Processing (30 Hrs)
    Natural Language processingNLP ApplicationsRegular Expression
    Tokenization, stopwordsStemming, LemmatizationWord Embeddings
    NLTKPOS TaggingNER
    bag of words, TF-IDF, unigrams, bigramsRNN, RNN architectureBidirectional LSTM – Encoders and Decoders
    Text classification using ML
    Project: Machine Learning and Deep Learning
    Apply statistical methods to make decisions in various business problems, including bank, stock marketApply regression to predict future flight priceApply classification to classify customer churn
    LEVEL 3: AI ML Tools (30 Hrs)
    Module 5: Foundational AI & ML Tools (10 Hrs)
    Data science workflowAutomated data profilingHands-on report generation
    Automated Machine Learning with PyCaretAutomated data preprocessingAutomated ML Models
    Module 6: Generative AI and LLM Tools (10 Hrs)
    Intro to GenAI, LLMsPrompt Engineering techniquesHands-on API usage
    Explore Hugging Face, CopilotRetrieval-Augmented Generation (RAG)Vector Databases, embeddings
    Module 7: AI Agents and Advanced Topics (10 Hrs)
    Core agent conceptsLeading agent frameworksBuild a basic agent
    Multi-Agent SystemsCollaborative CrewAI projectModel and agent deployment

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