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Applying Neural Networks

A Guide to Pre-trained Models

Alper Tellioglu

Unlock the power of pre-trained models. This course will teach you how to use and fine-tune pre-trained models for a range of applications, including natural language processing and image recognition.

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Unlock the power of pre-trained models. This course will teach you how to use and fine-tune pre-trained models for a range of applications, including natural language processing and image recognition.

In the evolving environment of artificial intelligence, harnessing the power of pre-trained models is becoming increasingly crucial for efficient and effective solutions.

In this course, Applying Neural Networks: A Guide to Pre-trained Models, you'll gain the ability to use existing AI models to accelerate your projects.

First, you’ll explore the world of pre-trained models and understand their significance.

Next, you’ll discover how to find the most popular models, and how to integrate them.

Finally, you’ll learn how to adapt these models to your specific needs, exploring techniques for fine-tuning and transfer learning.

When you’re finished with this course, you’ll have the skills and knowledge of pre-trained models needed to significantly improve your project results.

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What's inside

Syllabus

Course Overview
Understanding Pre-trained Models
Fine-Tuning, Evaluation, and Practical Insights

Good to know

Know what's good
, what to watch for
, and possible dealbreakers
Introduces essential concepts of pre-trained models
Offers a practical understanding of pre-trained models through hands-on applications
Facilitates the integration of pre-trained models into existing projects
Provides a comprehensive overview of pre-trained models and their real-world applications
Covers advanced techniques such as fine-tuning and transfer learning for customizing pre-trained models
Suitable for learners with some background in machine learning and artificial intelligence

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Career center

Learners who complete Applying Neural Networks: A Guide to Pre-trained Models will develop knowledge and skills that may be useful to these careers:
Machine Learning Engineer
Machine Learning Engineers develop and maintain machine learning models. As an ML Engineer, you'd use pre-trained models, such as the ones that you will study in this course, to build and improve machine learning solutions. Applying Neural Networks: A Guide to Pre-trained Models can be a useful addition to your training as it will teach the concepts, patterns, and best practices around pre-trained models.
Data Scientist
Data Scientists use data and machine learning to solve business problems. In this role, you will benefit from understanding pre-trained models. Understanding how to use and fine-tune pre-trained models will help you build better and more powerful machine learning solutions. Applying Neural Networks: A Guide to Pre-trained Models may be helpful as it will improve your comprehension of pre-trained models.
Software Engineer
A Software Engineer builds and maintains software systems. In this role, you may use pre-trained models to improve the functionality of the software systems that you build. Applying Neural Networks: A Guide to Pre-trained Models may be helpful as it can provide you with an understanding of pre-trained models and their applications.
Quantitative Analyst
Quantitative Analysts develop and use mathematical and statistical models to analyze data and make predictions. Leveraging pre-trained models in this field can accelerate and enhance these processes. Applying Neural Networks: A Guide to Pre-trained Models may be helpful as it will improve your understanding of pre-trained models and their applications.
Product Manager
Product Managers plan and oversee the development of products. Incorporating pre-trained models into products is a growing trend that can give your products an edge over the competition. Applying Neural Networks: A Guide to Pre-trained Models may be helpful as it will improve your understanding of pre-trained models and their applications.
Business Analyst
Business Analysts gather and analyze data to help businesses make better decisions. Incorporating pre-trained models into your analysis can lead to more accurate and insightful results. Applying Neural Networks: A Guide to Pre-trained Models may be helpful as it will improve your understanding of pre-trained models and their applications.
Consultant
Consultants provide advice and expertise to businesses and organizations. Adding knowledge of pre-trained models to your skillset can increase your value to potential clients. Applying Neural Networks: A Guide to Pre-trained Models may be helpful as it will provide you with a comprehensive understanding of pre-trained models and their applications.
Operations Research Analyst
Operations Research Analysts use mathematical and analytical techniques to solve business problems. Incorporating pre-trained models into your work can increase the efficiency and effectiveness of your analyses. Applying Neural Networks: A Guide to Pre-trained Models may be helpful as it will improve your understanding of pre-trained models and their applications.
Data Analyst
Data Analysts collect, process, and analyze data to help businesses make better decisions. By understanding how to use and fine-tune pre-trained models, you can improve the accuracy and efficiency of your analyses. Applying Neural Networks: A Guide to Pre-trained Models may be helpful as it will improve your understanding of pre-trained models and their applications.
Actuary
Actuaries use mathematical and statistical methods to assess risk and uncertainty. Pre-trained models can help you to build more accurate and sophisticated risk models. Applying Neural Networks: A Guide to Pre-trained Models may be helpful as it will improve your understanding of pre-trained models and their applications.
Financial Analyst
Financial Analysts use financial data to make investment recommendations and other financial decisions. Pre-trained models can help you to analyze financial data more quickly and accurately. Applying Neural Networks: A Guide to Pre-trained Models may be helpful as it will improve your understanding of pre-trained models and their applications.
Risk Analyst
Risk Analysts identify and assess risks to businesses and organizations. Pre-trained models can help you to develop more accurate and robust risk assessments. Applying Neural Networks: A Guide to Pre-trained Models may be helpful as it will improve your understanding of pre-trained models and their applications.
Market Researcher
Market Researchers gather and analyze data to help businesses understand their customers and markets. Pre-trained models can help you to analyze market data more quickly and accurately. Applying Neural Networks: A Guide to Pre-trained Models may be helpful as it will improve your understanding of pre-trained models and their applications.
Biostatistician
Biostatisticians use statistical methods to design and analyze medical studies. Pre-trained models can help you to design more efficient and effective studies. Applying Neural Networks: A Guide to Pre-trained Models may be helpful as it will improve your understanding of pre-trained models and their applications.
Data Engineer
Data Engineers build and maintain the data infrastructure that businesses need to store and process their data. Pre-trained models can help you to build more efficient and scalable data pipelines. Applying Neural Networks: A Guide to Pre-trained Models may be helpful as it will improve your understanding of pre-trained models and their applications.

Reading list

We've selected seven books that we think will supplement your learning. Use these to develop background knowledge, enrich your coursework, and gain a deeper understanding of the topics covered in Applying Neural Networks: A Guide to Pre-trained Models.
Provides a comprehensive overview of deep learning, covering the fundamentals of neural networks, convolutional neural networks, recurrent neural networks, and more. It valuable resource for anyone who wants to learn about deep learning and its applications.
Provides a practical guide to machine learning, covering the basics of supervised and unsupervised learning, feature engineering, and model evaluation. It valuable resource for anyone who wants to learn about machine learning and its applications.
Provides a comprehensive guide to TensorFlow, the leading open-source deep learning library. It valuable resource for anyone who wants to learn about TensorFlow and its applications.
Provides a comprehensive guide to natural language processing with PyTorch, the leading open-source deep learning library for natural language processing. It valuable resource for anyone who wants to learn about natural language processing and its applications.
Provides a comprehensive introduction to reinforcement learning, a powerful technique for training AI agents to solve complex problems. It valuable resource for anyone who wants to learn about reinforcement learning and its applications.

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