Career-Based Complete ML Ops using AWS Internship Program. Get Insights into: Learn and Practice Pandas, Data Preprocessing, Model Creation, Model Evaluation, Deep Learning & Sci Kit Learn with Project Implementation and Assignments. Stay Updated on Latest Industrial Updates.
Get ahead with the FutureTech Industrial Internship Program: gain hands-on experience, connect with industry leaders, and develop cutting-edge skills. Earn a stipend, receive expert mentorship, and obtain a certificate to boost your career prospects. Transform your future with practical, real-world learning today
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Gain practical skills in a real-world cutting-edge projects.
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AWS Overview & Account Creation: Understand AWS and set up an account.
ML Basics & AWS SageMaker
Cloud Essentials 1: Learn about EC2 (virtual machines), ELB (load balancing), and EBS (storage).
Cloud Essentials 2: Explore AWS Lambda (serverless), ECS/EKS (container management).
Cloud Essentials 3: Get familiar with RDS (databases), DynamoDB (NoSQL), and S3 (storage).
ML Basics & AWS SageMaker: Introduction to machine learning concepts and using SageMaker for model building.
Data Collection & Engineering: Learn how to use Pandas for data manipulation, and AWS Glue & Athena for ETL and querying.
Visualization & Preprocessing: Use Matplotlib, Seaborn, and AWS Data Wrangler for visualization and preprocessing (feature scaling, encoding, handling missing data).
Data Preprocessing: Handle feature scaling, encoding, null values, and outliers.
Feature Selection & Train-Test Split: Learn how to select important features and split data for training/testing.
Preprocessing with SageMaker Scikit-Learn Container: Leverage SageMaker for data preparation.
Modeling & Evaluation: Build and evaluate models (classification, regression) using metrics like accuracy and precision.
SageMaker Built-in Algorithms: Use AWS SageMaker’s pre-built algorithms for faster model development.
SageMaker Canvas & Autopilot: Explore SageMaker Canvas for visual modeling and Autopilot for automated ML workflows.
RNN & NLP Basics: Introduction to Recurrent Neural Networks (RNNs) and Natural Language Processing (NLP).
Version Control & CI/CD: Use Git, GitHub, and implement CI/CD pipelines for model deployment.
Deploying with SageMaker: Deploy machine learning models with SageMaker.
AI Services: Explore AWS AI tools like Rekognition (image analysis), Polly (text-to-speech), Lex (chatbots), and Transcribe (speech-to-text).
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Earn prestigious Dual Certification upon successful completion of our internship program. This recognition validates both your participation and the skills you have honed during the internship
Master the Latest Industrial Skills. Select a technology domain & kick off your Internship immediately.
₹1999/-
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Curious where our graduates make their mark? Our students go on to excel in leading tech companies, innovative startups, and prestigious research institutions. Their advanced skills and hands-on experience make them highly sought-after professionals in the industry.
EXCELLENT Based on 5972 reviews Swetha Senthil2024-09-18Trustindex verifies that the original source of the review is Google. I completed my python internship guidance of mentor poongodi mam. She thought us in friendly qay Durga Bala2024-09-18Trustindex verifies that the original source of the review is Google. Poongodi mam done very well She took the class very well When we ask any doubt without getting bored she will explain,we learned so much from mam,marvelous Subharanjani2024-09-18Trustindex verifies that the original source of the review is Google. I recently completed Python internship under the guidance of poongodi mam who excelled in explaining concepts in an easily understandable way S Pushpanandhini2024-09-18Trustindex verifies that the original source of the review is Google. Fantastic class we were attended..we got nice experience from this class..thank you for teaching python mam... ANTON'S CREATIONS ___ Anton Rosario Xavier2024-09-17Trustindex verifies that the original source of the review is Google. The learning experience was really worth since more than gaining just the knowledge all of the inputs were given in a friendly and sportive manner which then made it a good place to learn something with a free mindset... 👍🏻 Achu Achu2024-09-16Trustindex verifies that the original source of the review is Google. I recently completed my full stack python intership under the guidance of mentor Gowtham,who excelled in explaining concepts in an easily understand manner Nandhini Baskar2024-09-16Trustindex verifies that the original source of the review is Google. Gowtham-very interesting class and I learning so many things in full stack python development and I complete my internship in Pantech e learning and it is useful for my career
Model evaluation involves using performance metrics like accuracy, precision, recall, F1-score, mean squared error (MSE), and others to assess how well your model is performing on both the training and testing datasets.
Pandas is a Python library that provides powerful data structures for manipulating structured data (e.g., tables, CSVs). It’s commonly used for cleaning and preparing data before using it in machine learning models.
To start with AWS for machine learning, you can use services like SageMaker to handle data preprocessing, model training, and deployment. You can also use tools like AWS Glue for ETL, S3 for data storage, and EC2 for running your models.
EC2 (Elastic Compute Cloud) provides virtual servers (instances) in the cloud. You can launch and manage EC2 instances to run applications, host websites, or perform computations. To use it, you need to choose an instance type and configure security settings.
CI/CD (Continuous Integration/Continuous Deployment) automates the process of testing, integrating, and deploying changes to software, including machine learning models. It helps streamline workflows and ensures that models are continuously updated and deployed without manual intervention.
Amazon Lex is a service for building conversational interfaces (chatbots) using voice and text. It integrates with AWS Lambda and other AWS services, allowing you to create sophisticated bots with natural language understanding (NLU).
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