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    AI Frontier Plus Program

    Kickstart Your Future in AI Today! Enroll in our "Career Launch AI Internship" for 3rd and 4th-year engineering students. Work on real AI projects, get mentored by industry experts, and step confidently into the world of AI careers. Apply now and secure your spot!

    Career Accelerator : This accelerated hybrid program is limited to 10% of the students. Experience a unique blend of expert-led instruction and real-world corporate exposure. The first four months focus on comprehensive foundational knowledge and practical skills in neural networks and deep learning through live interactive sessions with industry experts, supported by full curriculum access on our intuitive Learning Management System (LMS). For the final two months, students gain invaluable hands-on corporate experience and direct interaction with industry professionals at our company premises

    Description:

    This program offers 2 months of hands-on corporate
    experience and close mentorship and Personalized guidance with industry experts. Its a unique combination of expert-led instruction and real-world corporate exposure, preparing participants for high-demand AI/ML roles. Students build a strong foundation in neural networks and deep learning through live interactive sessions with industry experts, supported by full curriculum access on our intuitive Learning Management System (LMS) for flexible learning. I

    Eligibility is limited to students ranking in the top 15% in the intake assessment with a solid command of Python. Graduates of this program not only acquire enhanced practical skills and a deep understanding of industry workflows but also gain significant corporate exposure, increasing their potential for full-time employment in AI/ML roles. With competitive salary prospects of ₹5-6 LPA and job titles such as AI/ML Project Intern, Associate Machine Learning Engineer, Deep Learning Developer (Junior), and AI Solutions Analyst, this program offers a fast-tracked pathway to a rewarding AI/ML career.

    Course Content:

    Beginner to Advanced with Python & PyTorch

    • Course Overview and Learning Objectives
    • Introduction to AI and Neural Networks
    • What You Will Learn and Build
    • Account and Environment Setup (Jupyter, Colab, PyTorch, GitHub)
    • Software/Tools Required
    • Git Fundamentals: Version Control from Day 1
    • Setting up Python and Notebooks
    • Python Basics Refresher
    • Data Types, Loops, Conditionals
    • Functions and Basic I/O
    • Six JARs Framework and Expert Systems
    • Rule-Based Systems and Decision Making
    • Vectors and Matrices for ML
    • Numpy Basics, Vector/Matrix Operations
    • Hands-on: Linear Algebra with Python
    • Understanding Data Types: Numerical, Categorical, Time-Series, Image
    • Pandas and Numpy for Preprocessing
    • Tokenization and Vectorization Techniques
    • Handling Missing Values and Outliers
    • Visualizing Data Distributions
    • Time-Series Slicing and Windowing
    • Image Preprocessing and Augmentation (OpenCV, torchvision)
    • Hands-on: Data Pipelines for Deep Learning
    • McCulloch-Pitts (MP) Neuron Model
    • Binary Inputs/Outputs, Threshold Logic
    • The Perceptron Algorithm
    • Single-layer Learning
    • Python: MP & Perceptron Implementation
    • Hands-on: Build and Test in Python
    • Applying Theory in Practice
    • Project 1.1: Mobile Phone Like/Dislike Classifier

    Binary Classification with User Data

    • Sigmoid Activation and Learning
    • Real-Valued Outputs
    • Loss Functions (MSE, Cross-Entropy Intro)
    • Gradient Descent: Intuition and Steps
    • Python: Sigmoid & Gradient Descent Implementation
    • Visualize Learning with Code
    • Improve and Tune Gradient Descent
    • Probability Essentials for ML
    • Bayes’ Theorem, Conditional Probability
    • Entropy, KL Divergence, Cross-Entropy
    • Sigmoid + Cross Entropy Combined
    • Python: Implementing Probabilistic Concepts
    • Error Analysis and Improvements
    • Project 1.2: Binary Text Classifier
    • Project 1.3: Enhanced Text Classifier with Vectorization and Evaluation
    • Function Approximation and Universality
    • Feedforward Neural Networks (FNNs)
    • Layer Types and Activations
    • Python: FNN from Scratch
    • Training Deep Networks Step-by-step
    • Backpropagation: Intuition and Chain Rule
    • Manual Derivatives and Scalar Implementation
    • Vectorized Backprop for Efficiency
    • Python: Full Training Implementation
    • Common Pitfalls in Backprop (Vanishing, Exploding Gradients)
    • PyTorch Debugging Tools and Gradient Checks
    • SGD, Momentum, RMSProp
    • Adam, AdaGrad – Pros and Cons
    • Custom Optimizer Implementations
    • Adaptive Learning Rates and Schedulers
    • GPU Acceleration: torch.cuda Essentials
    • Project 1.3 Deep Dive:
      • Evaluation Metrics: ROC-AUC, Confusion Matrix, Precision/Recall
      • Using PyTorch’s Model.eval() and torchmetrics
      • Git Branching and Collaborative Coding
    • Activation Functions and Initialization (ReLU, Leaky ReLU, Xavier, He)
    • Regularization Techniques: L1, L2, Dropout, Early Stopping
    • Python: Effects of Initialization and Regularization
    • PyTorch Basics: Tensors, Datasets, Modules
    • Writing Models and Custom Data loaders
    • Training Loops and Model Saving
    • Model Check pointing and Resume Training
    • Convolution Concepts: Filters, Padding, Strides
    • CNN Architectures: LeNet, AlexNet, VGG
    • PyTorch: Building CNNs
    • Advanced CNNs: ResNet, Inception
    • Custom Architectures
    • Visualizing Feature Maps and Layers (Grad-CAM)
    • Batch Normalization and Dropout
    • PyTorch: Implementing Robust CNNs
    • Quantization and Knowledge Distillation Overview
    • Pruning Networks for Deployment
    • Hyperparameter Tuning: Grid Search, Random Search
    • Logging and Experiment Tracking using MLflow
    • Debugging Training: Visualizing Loss, Gradients, Weights
    • Visual Tools: TensorBoard and Custom Dashboards
    • Practice: CNN vs FNN on the Same Dataset
    • Sequential Data and Applications
    • RNNs: Basics and Memory
    • Vanishing/Exploding Gradients in RNNs
    • LSTM & GRUs: Intuition and Structure
    • PyTorch: Implementing LSTM Models
    • Real-life Examples: Text, IoT, and Time-Series
    • Encoder-Decoder Architectures
    • Attention Mechanisms & Transformers (Overview)
    • Object Detection: YOLO, SSD, R-CNN
    • Model Exporting with TorchScript
    • Model Deployment 101:
      • Build an API with Flask/FastAPI
      • Introduction to Docker for ML
      • Model Monitoring and Logging
      • Versioning Models and Data with DVC
      • Deploying on Google AI Platform (Conceptual)
    • End-to-End Deep Learning Pipeline
      • Data Preparation
      • Model Design and Training
      • Evaluation and Optimization
      • Deployment and API Creation
      • Git Integration and Collaboration
      • Monitoring and Final Reporting

    Complimentary:

    - One-on-one onboarding and roadmap call

    - Resume and LinkedIn review with feedback

    - Priority access to closed-door career masterclasses

    - Lifetime access to Fullstack Career Community

    - Project portfolio assessment and GitHub polish-up

    Highlights :

    Who this course is for?

    Course Details:

    Lesson Duration

    6 Months

    Lessons

    45

    Places for Students

    12

    Language:

    English

    Certifications

    Digital, Physical

    Enroll Now








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      Frequently Asked Questions

      Yes. We provide assistance in resume building, LinkedIn optimization, mock interviews, and job referrals through our XINNO Launchpad Job Portal and other partner network of Oracle ERP hiring firms and tech companies.

      Absolutely. We provide Oracle certification-focused modules, mock exams, and personal mentoring to help you get certified.

      Definitely! Our training includes mock implementation projects simulating real-life business processes (SIT, UAT, PROD cycles).

      Yes, you’ll receive Guided one-on-one mentorship sessions, doubt clarification calls, and direct access to instructors via a support channel (WhatsApp, Slack, LMS, or email).

      We offer flexible formats: Live Online Instructor-Led Training, Self-paced Recordings, and Offline (in-person) batches in Hyderabad

      Yes, all students get lifetime access to recorded sessions, learning materials, and updates.

      More questions drop an email at training@XINNO.co.in

      XINNO Launchpad, a next-generation IT consulting and enterprise solutions company committed to transforming the way businesses operate in a digital-first world

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