Introduction to Pre-trained Models Training Course
Pre-trained models serve as a fundamental pillar of contemporary artificial intelligence, providing ready-made capabilities that can be tailored for diverse applications. This course introduces participants to the core principles of pre-trained models, their architectural designs, and their practical implementation scenarios. Attendees will learn how to harness these models for tasks such as text classification, image recognition, and others.
This instructor-led, live training (available online or on-site) is designed for beginners in the field who want to grasp the concept of pre-trained models and discover how to apply them to solve real-world problems without having to build models from the ground up.
By the end of this training, participants will be able to:
- Grasp the concept and advantages of pre-trained models.
- Explore various pre-trained model architectures and their respective use cases.
- Fine-tune a pre-trained model for specific tasks.
- Implement pre-trained models in simple machine learning projects.
Course Format
- Interactive lecture and discussion.
- Extensive exercises and practice.
- Hands-on implementation in a live-lab environment.
Course Customization Options
- To request a customized training for this course, please contact us to arrange.
Course Outline
Introduction to Pre-trained Models
- What are pre-trained models?
- Benefits of using pre-trained models
- Overview of popular pre-trained models (e.g., BERT, ResNet)
Understanding Pre-trained Model Architectures
- Model architecture basics
- Transfer learning and fine-tuning concepts
- How pre-trained models are built and trained
Setting Up the Environment
- Installing and configuring Python and relevant libraries
- Exploring pre-trained model repositories (e.g., Hugging Face)
- Loading and testing pre-trained models
Hands-On with Pre-trained Models
- Using pre-trained models for text classification
- Applying pre-trained models to image recognition tasks
- Fine-tuning pre-trained models for custom datasets
Deploying Pre-trained Models
- Exporting and saving fine-tuned models
- Integrating models into applications
- Basics of deploying models in production
Challenges and Best Practices
- Understanding model limitations
- Avoiding overfitting during fine-tuning
- Ensuring ethical use of AI models
Future Trends in Pre-trained Models
- Emerging architectures and their applications
- Advances in transfer learning
- Exploring large language models and multimodal models
Summary and Next Steps
Requirements
- Basic understanding of machine learning concepts
- Familiarity with Python programming
- Basic knowledge of data handling using libraries like Pandas
Audience
- Data scientists
- AI enthusiasts
Open Training Courses require 5+ participants.
Introduction to Pre-trained Models Training Course - Booking
Introduction to Pre-trained Models Training Course - Enquiry
NobleProg offers professional training programs designed specifically for companies and organizations. These trainings are not intended for individuals.
Upcoming Courses
Related Courses
AdaBoost Python for Machine Learning
14 HoursThis instructor-led live training in France (online or onsite) is intended for data scientists and software engineers who wish to apply AdaBoost for developing boosting algorithms in machine learning using Python.
By the end of this training, participants will be able to:
- Set up the required development environment to commence building machine learning models with AdaBoost.
- Comprehend the ensemble learning approach and learn how to implement adaptive boosting.
- Discover how to construct AdaBoost models to enhance machine learning algorithms in Python.
- Utilize hyperparameter tuning to boost the accuracy and performance of AdaBoost models.
Anaconda Ecosystem for Data Scientists
14 HoursThis instructor-led, live training in France (online or onsite) is designed for data scientists who want to use the Anaconda ecosystem to capture, manage, and deploy packages and data analysis workflows in a single platform.
By the end of this training, participants will be able to:
- Install and configure Anaconda components and libraries.
- Understand the core concepts, features, and benefits of Anaconda.
- Manage packages, environments, and channels using Anaconda Navigator.
- Use Conda, R, and Python packages for data science and machine learning.
- Get to know some practical use cases and techniques for managing multiple data environments.
AutoML with Auto-Keras
14 HoursThis instructor-led live training in France (online or onsite) is designed for data scientists and non-technical professionals who wish to utilize Auto-Keras to automate the selection and optimization of machine learning models.
By the end of this training, participants will be able to:
- Automate the process of training highly efficient machine learning models.
- Automatically search for the best parameters for deep learning models.
- Build highly accurate machine learning models.
- Use the power of machine learning to solve real-world business problems.
AutoML Essentials
14 HoursThis instructor-led, live training (available online or onsite) is designed for technical professionals with a background in machine learning who want to optimize models for identifying complex patterns in big data using AutoML frameworks.
Creating Custom Chatbots with Google AutoML
14 HoursThis instructor-led, live training in France (online or onsite) targets participants with varying levels of expertise who aim to utilize Google's AutoML platform to develop customized chatbots for diverse applications.
Upon completion of this training, participants will be able to:
- Grasp the fundamentals of chatbot development.
- Navigate the Google Cloud Platform and access AutoML.
- Prepare data for training chatbot models.
- Train and assess custom chatbot models using AutoML.
- Deploy and integrate chatbots into various platforms and channels.
- Monitor and optimize chatbot performance over time.
Pattern Recognition
21 HoursThis instructor-led, live training in France (online or on-site) provides an introduction into the field of pattern recognition and machine learning. It touches on practical applications in statistics, computer science, signal processing, computer vision, data mining, and bioinformatics.
By the end of this training, participants will be able to:
- Apply core statistical methods to pattern recognition.
- Use key models like neural networks and kernel methods for data analysis.
- Implement advanced techniques for complex problem-solving.
- Improve prediction accuracy by combining different models.
DataRobot
7 HoursThis instructor-led live training in France (online or onsite) is designed for data scientists and data analysts who wish to automate, evaluate, and manage predictive models using DataRobot's machine learning capabilities.
Upon completion of this training, participants will be able to:
- Import datasets into DataRobot to analyze, assess, and perform quality checks on data.
- Construct and train models to identify key variables and achieve prediction goals.
- Interpret models to derive actionable insights that support business decision-making.
- Monitor and manage models to ensure optimal prediction performance.
Google Cloud AutoML
7 HoursThis instructor-led, live training in France (online or onsite) is designed for data scientists, data analysts, and developers interested in exploring AutoML products and features to create and deploy custom ML training models with minimal effort.
By the end of this training, participants will be able to:
- Explore the AutoML product line to implement various services for different data types.
- Prepare and label datasets to create custom ML models.
- Train and manage models to produce accurate and fair machine learning models.
- Make predictions using trained models to meet business objectives and needs.
Kaggle
14 HoursThis instructor-led, live training in France (online or onsite) is designed for data scientists and developers who wish to learn and build their careers in Data Science using Kaggle.
By the end of this training, participants will be able to:
- Learn about data science and machine learning.
- Explore data analytics.
- Learn about Kaggle and how it works.
Machine Learning for Mobile Apps using Google’s ML Kit
14 HoursThis instructor-led live training, offered online or onsite, is intended for developers who aim to use Google’s ML Kit to build machine learning models optimized for mobile device processing.
Upon completion of this training, participants will be able to:
- Set up the necessary development environment to start developing machine learning features for mobile apps.
- Integrate new machine learning technologies into Android and iOS apps using the ML Kit APIs.
- Enhance and optimize existing apps using the ML Kit SDK for on-device processing and deployment.
Accelerating Python Pandas Workflows with Modin
14 HoursThis instructor-led live training in France (online or on-site) is intended for data scientists and developers who wish to use Modin to build and implement parallel computations with Pandas for faster data analysis.
By the end of this training, participants will be able to:
- Configure the necessary environment to begin developing scalable Pandas workflows with Modin.
- Gain an understanding of Modin's features, architecture, and benefits.
- Distinguish between Modin, Dask, and Ray.
- Execute Pandas operations more efficiently using Modin.
- Implement the full Pandas API and its functions.
Machine Learning with Random Forest
14 HoursThis instructor-led, live training in France (online or onsite) is designed for data scientists and software engineers who wish to use Random Forest to build machine learning algorithms for large datasets.
Upon completion of this training, participants will be able to:
- Set up the necessary development environment to start building machine learning models with Random Forest.
- Understand the advantages of Random Forest and how to implement it to resolve classification and regression problems.
- Learn how to handle large datasets and interpret multiple decision trees in Random Forest.
- Evaluate and optimize machine learning model performance by tuning the hyperparameters.
Advanced Analytics with RapidMiner
14 HoursThis instructor-led, live training in France (online or onsite) is designed for intermediate-level data analysts who wish to learn how to use RapidMiner to estimate and project values and utilize analytical tools for time series forecasting.
By the end of this training, participants will be able to:
- Learn to apply the CRISP-DM methodology, select appropriate machine learning algorithms, and enhance model construction and performance.
- Use RapidMiner to estimate and project values, and utilize analytical tools for time series forecasting.
RapidMiner for Machine Learning and Predictive Analytics
14 HoursRapidMiner is an open-source data science software platform designed for rapid application prototyping and development. It provides an integrated environment for data preparation, machine learning, deep learning, text mining, and predictive analytics.
In this instructor-led live training, participants will learn how to leverage RapidMiner Studio for data preparation, machine learning, and the deployment of predictive models.
By the end of this training, participants will be able to:
- Install and configure RapidMiner
- Prepare and visualize data with RapidMiner
- Validate machine learning models
- Mashup data and create predictive models
- Operationalize predictive analytics within a business process
- Troubleshoot and optimize RapidMiner
Audience
- Data scientists
- Engineers
- Developers
Format of the Course also allows for the evaluation of participants.
- A blend of lecture, discussion, exercises, and extensive hands-on practice
Note
- To request a customized training for this course, please contact us to arrange.
GPU Data Science with NVIDIA RAPIDS
14 HoursThis instructor-led, live training in France (online or onsite) is designed for data scientists and developers who wish to use RAPIDS to build GPU-accelerated data pipelines, workflows, and visualizations, applying machine learning algorithms such as XGBoost and cuML.
By the end of this training, participants will be able to:
- Set up the necessary development environment to build data models with NVIDIA RAPIDS.
- Understand the features, components, and advantages of RAPIDS.
- Leverage GPUs to accelerate end-to-end data and analytics pipelines.
- Implement GPU-accelerated data preparation and ETL with cuDF and Apache Arrow.
- Learn how to perform machine learning tasks with XGBoost and cuML algorithms.
- Build data visualizations and execute graph analysis with cuXfilter and cuGraph.