Kanban is a popular framework used to implement agile and DevOps software development. It requires real-time communication of capacity and full transparency of work. Work items are represented visually on a Kanban board, allowing team members to see the state of every piece of work at any time.
A Kanban board is an agile project management tool designed to help visualize work, limit work-in-progress, and maximize efficiency (or flow).
It can help both agile and DevOps teams establish order in their daily work. Kanban boards use cards, columns, and continuous improvement to help technology and service teams commit to the right amount of work, and get it done!
This course will help you explore how working on an Agile project using Kanban has benefits for your development team, your end users, and your organization as a whole.
We will identify various process flow related issues including too much work in progress, underutilization of resources, lengthy tasks, unequal sized tasks etc. using simple and easy to understand demonstrations on Kanban board.
We will not only identify these inefficiencies but also solve for the same by continuously improving the process flow using Kanban Board.
This course is ideal for software developers, project managers, software leadership, or anyone that would have an interest and gain benefit from running an Agile project and delivering maximum value early to your customers.
No prior experience is necessary to take this course. So, if even if you don’t know what Kanban is and the various principles and concepts under Kanban and Agile Project Management, not to worry.
We will cover all of these concepts from scratch.
Here is a list of the topics we will cover in this course:
Introduction to Kanban & Kanban Board
Finding Inefficiencies in the Process
Limiting Work in Progress
Under utilization of Resources
Unequal Sized Tasks
Marking the Tasks
Other Inefficiencies/Issues
Kanban Practices
Defining Done
Daily Stand up
Specifying Rules
I hope that you will enjoy the class, be challenged by it and learn a lot. The primary objective is to build a strong foundational knowledge of the principles of Kanban
It is suggested that you go through the course at a pace that makes sense for you. The topics build on each other, so it is better to slow down and really learn something than to just move on in order to keep up a certain pace.
So, I have the tools needed to get the job done. So, let’s do it, I’ll see you in class. All the best.
Kanban is a popular framework used to implement agile and DevOps software development. It requires real-time communication of capacity and full transparency of work. Work items are represented visually on a Kanban board, allowing team members to see the state of every piece of work at any time.
A Kanban board is an agile project management tool designed to help visualize work, limit work-in-progress, and maximize efficiency (or flow).
It can help both agile and DevOps teams establish order in their daily work. Kanban boards use cards, columns, and continuous improvement to help technology and service teams commit to the right amount of work, and get it done!
This course will help you explore how working on an Agile project using Kanban has benefits for your development team, your end users, and your organization as a whole.
We will identify various process flow related issues including too much work in progress, underutilization of resources, lengthy tasks, unequal sized tasks etc. using simple and easy to understand demonstrations on Kanban board.
We will not only identify these inefficiencies but also solve for the same by continuously improving the process flow using Kanban Board.
This course is ideal for software developers, project managers, software leadership, or anyone that would have an interest and gain benefit from running an Agile project and delivering maximum value early to your customers.
No prior experience is necessary to take this course. So, if even if you don’t know what Kanban is and the various principles and concepts under Kanban and Agile Project Management, not to worry.
We will cover all of these concepts from scratch.
Here is a list of the topics we will cover in this course:
Introduction to Kanban & Kanban Board
Finding Inefficiencies in the Process
Limiting Work in Progress
Under utilization of Resources
Unequal Sized Tasks
Marking the Tasks
Other Inefficiencies/Issues
Kanban Practices
Defining Done
Daily Stand up
Specifying Rules
I hope that you will enjoy the class, be challenged by it and learn a lot. The primary objective is to build a strong foundational knowledge of the principles of Kanban
It is suggested that you go through the course at a pace that makes sense for you. The topics build on each other, so it is better to slow down and really learn something than to just move on in order to keep up a certain pace.
So, I have the tools needed to get the job done. So, let’s do it, I’ll see you in class. All the best.
Master Postman for API Testing with a Postman
In the digital age, RESTful APIs have become ubiquitous, yet the complexity of starting with them has grown. They involve a variety of HTTP methods, such as GET, POST, PUT, PATCH, DELETE, as well as headers, cookies, file uploads, and various authentication mechanisms including API keys, tokens, and OAuth.
Enter Postman: an intuitive tool that simplifies the process of sending requests with necessary HTTP methods and parameters, submitting these requests, and clearly viewing the results.
This course is tailored for testing engineers, software developers, and anyone in technical roles who aim to leverage Postman for both development and post-deployment stages of an API. It ensures your API functions correctly by facilitating ongoing test implementation.
We'll embark by delving into Postman's capabilities, progressing to write API tests designed for integration with a CI server to execute tests routinely.
However, this isn't just any course. Recognizing that your needs are unique and disliking the idea of leaving you with lingering questions, the second part of this course is driven by you—addressing your inquiries, tackling problems not previously covered, and diving into specifics that cater to your particular interests.
Over 500 hours of dedicated effort have been invested in crafting this course, meticulously refining the content to ensure that students not only grasp but also retain valuable information. With a community of more than 70,000 students already benefiting from my courses, I possess the expertise to help you optimize your learning experience and extract the utmost value from my materials.
Master Postman for API Testing with a Postman
In the digital age, RESTful APIs have become ubiquitous, yet the complexity of starting with them has grown. They involve a variety of HTTP methods, such as GET, POST, PUT, PATCH, DELETE, as well as headers, cookies, file uploads, and various authentication mechanisms including API keys, tokens, and OAuth.
Enter Postman: an intuitive tool that simplifies the process of sending requests with necessary HTTP methods and parameters, submitting these requests, and clearly viewing the results.
This course is tailored for testing engineers, software developers, and anyone in technical roles who aim to leverage Postman for both development and post-deployment stages of an API. It ensures your API functions correctly by facilitating ongoing test implementation.
We'll embark by delving into Postman's capabilities, progressing to write API tests designed for integration with a CI server to execute tests routinely.
However, this isn't just any course. Recognizing that your needs are unique and disliking the idea of leaving you with lingering questions, the second part of this course is driven by you—addressing your inquiries, tackling problems not previously covered, and diving into specifics that cater to your particular interests.
Over 500 hours of dedicated effort have been invested in crafting this course, meticulously refining the content to ensure that students not only grasp but also retain valuable information. With a community of more than 70,000 students already benefiting from my courses, I possess the expertise to help you optimize your learning experience and extract the utmost value from my materials.
Dive into the depths of Azure and Large Language Model (LLM) applications with this comprehensive course. Starting with the initial setup of Azure account structures and resource groups, moving to the practical management of Azure Blob Storage, this course equips you with the essential skills to navigate and utilize Azure's extensive offerings.
We then delve into different vector stores, such as Azure Cognitive Search and PgVector, comparing their advantages and disadvantages. You will learn how to chunk raw data, embed it, and insert it into the vector store. A typical Retrieval Augmented Generation (RAG) process is performed on the vector store, primarily using Jupyter notebooks for this part of the course.
After covering the basics, we transition from notebooks to using docker-compose to locally spin up services. We'll delve deeply into how these services work.
The next step is deploying these services to the cloud, where we learn about new services like the Container Registry and App Service.
Once the Web Apps are set up, we implement an event-driven indexing process with Blob Triggers, the Event Grid, and Azure Functions to index documents upon changes in Blob Storage.
The final chapters cover basic security measures, such as setting up a firewall for the database and IP-based access restrictions.
This course is tailored for individuals with foundational knowledge of Python, Docker, and LangChain and is perfect for anyone looking to build real applications with a production-grade architecture, moving beyond simple playground apps with Streamlit.
Dive into the depths of Azure and Large Language Model (LLM) applications with this comprehensive course. Starting with the initial setup of Azure account structures and resource groups, moving to the practical management of Azure Blob Storage, this course equips you with the essential skills to navigate and utilize Azure's extensive offerings.
We then delve into different vector stores, such as Azure Cognitive Search and PgVector, comparing their advantages and disadvantages. You will learn how to chunk raw data, embed it, and insert it into the vector store. A typical Retrieval Augmented Generation (RAG) process is performed on the vector store, primarily using Jupyter notebooks for this part of the course.
After covering the basics, we transition from notebooks to using docker-compose to locally spin up services. We'll delve deeply into how these services work.
The next step is deploying these services to the cloud, where we learn about new services like the Container Registry and App Service.
Once the Web Apps are set up, we implement an event-driven indexing process with Blob Triggers, the Event Grid, and Azure Functions to index documents upon changes in Blob Storage.
The final chapters cover basic security measures, such as setting up a firewall for the database and IP-based access restrictions.
This course is tailored for individuals with foundational knowledge of Python, Docker, and LangChain and is perfect for anyone looking to build real applications with a production-grade architecture, moving beyond simple playground apps with Streamlit.
A/B Testing in R is a course offered by Code Learn Academy , focusing on the exploration of A/B testing using the R programming language. A/B testing is a common experimental design employed in both industry and academia to investigate human behavior. These tests compare two variables to determine if there is a significant difference in performance measurements and whether the measurements vary significantly by a meaningful method. By mastering A/B testing and interpreting results, you can make data-driven decisions and predictions.
In this course, you will learn what questions A/B tests answer, essential considerations for A/B testing, how to respond to existing questions, and how to visualize data. You will also discover how to determine the required sample size for an experiment, perform appropriate analyses for data and existing hypotheses, ensure that results can be confidently considered, and present results to an audience without statistical background. The course covers both parametric and non-parametric A/B tests, such as the t-test, Mann-Whitney U test, Chi-Square independence test, Fisher's exact test, and Pearson and Spearman correlation. Additionally, power analysis will be examined for each test.
The AI Ethics course has been released by the Code Learn Academy. This introductory course on artificial intelligence ethics provides a comprehensive overview of ethical considerations in the rapidly evolving field of artificial intelligence. It encompasses industry, policy-making, academia, and society in general, covering the principles of AI ethics, strategies for fostering fair and just artificial intelligence systems, methods for minimizing biases, and approaches to addressing key issues and building user trust. Throughout this course, you will learn the principles of ethical artificial intelligence and expand your understanding of common challenges and opportunities in the field of AI ethics. Through practical exercises, you will develop the skills to create ethical artificial intelligence.
The Artificial Intelligence (AI) Strategy course has been released by the Code Learn Academy. You've likely heard about various strategies such as business, data, and artificial intelligence, and have been amazed by how they interconnect. To understand how to integrate these intertwined strategies to create a robust strategic framework for organizations active in today's data-centric world, take this course. Additionally, you will explore the role of an AI strategist in successfully transforming artificial intelligence that aligns well with business strategic objectives.
When formulating an effective artificial intelligence strategy, you will begin by understanding the differences between artificial intelligence and traditional software. Such distinctions aid in developing the skill of appropriately discerning the suitability of artificial intelligence. You will also learn to set realistic business goals and define appropriate criteria for project success. As you progress, you'll gather information about evaluating the return on investment for projects that lead to the creation of such complex technology.
Data Fluency, a course on data literacy, is published by the Code Learn Academy. Data is ubiquitous, and in today's data-centric world, being data-fluent is not just a necessity for individuals but also for entire organizations. Data fluency is not only about understanding data but also about the ability to work with and effectively use data for data-driven decision-making.
This course introduces you to the exciting concept of data fluency, covering the best practices and essential skills required to master data fluency. You will start by learning the meaning of data fluency and its distinction from data literacy. Additionally, you will become familiar with the significance of data fluency in today's world.
The course provides a framework for achieving data fluency at both individual and organizational levels. Subsequently, you will explore the data-centric behaviors of individuals along with the skills they use, from identifying business problems with data from the initial stage to conveying information effectively for decision-making.
The "Data Preparation in Excel" course has been released by the Code Learn Academy. In this course, you will become familiar with the process of preparing and cleaning raw data in Excel spreadsheets. The lesson guides you on utilizing the various features available in Excel, enabling you to import data from different sources. Through filtering, sorting, and organizing your columns and rows, you'll learn to prepare your data for subsequent analyses in the most effective manner possible.
In addition to the internal features provided by Excel, you will learn to use various functions for managing and manipulating dates and text strings. Familiarity with logical functions will empower you to create new flags and classifications in your raw data. Furthermore, you'll understand how to combine different logical functions in nested formulas. The course also covers the usage of search functions in Excel to import data from various sheets and identify specific results in large datasets.
Lastly, the course provides an overview of PivotTables, a powerful Excel feature that allows you to summarize and analyze large volumes of data using dynamic tables.
"Data Visualization in Excel" is a course offered by the Code Learn Academy. In this course, you will delve into the fundamentals of Excel charts, equipping yourself with the skills to create impactful visualizations and customize various chart types. With a comprehensive understanding of series and categories, you will gain the expertise needed to transform data into engaging narratives that captivate your audience. Explore working with dual-axis series and create more advanced charts such as bullet charts, waterfall charts, or scatter plots. Additionally, we will examine various chart editing options. Data visualization, like any other field, has its best practices, and it's time to take a closer look at do's and don'ts. We will enhance our skills in selecting chart elements, using colors, legends, and labels, learning how to troubleshoot and customize visual weak points for the benefit of end users.
The course "Deep Learning for Text with PyTorch" is published by Code Learn Academy. Embark on an exciting journey of deep learning for text with PyTorch. This course introduces you to the skills of dealing with various challenges related to text. You will become familiar with the principles of text processing, including encoding and embedding. Various models such as CNNs, RNNs, GANs, and pre-trained models will be applied using textual data. Finally, you will delve into advanced topics such as transfer learning techniques, attention mechanisms, and how to safeguard your models against adversarial attacks.
By the end of this course, you will have the skills to build powerful deep learning models for text. Explore text classification and its role in Natural Language Processing (NLP). Apply your skills to implement word embeddings and develop Convolutional Neural Networks (CNNs) and Recurrent Neural Networks (RNNs) for text classification using PyTorch. Understand how to evaluate your models using appropriate metrics.
The course "Dimensionality Reduction in R" has been released by Code Learn Academy. Have you ever worked with datasets containing numerous features? Do you really need all these features? Which ones are more important? In this course, you will learn dimensionality reduction techniques that help simplify your data and models, allowing you to retain the essential information in your original data and achieve good predictive performance with the models you build. We live in the age of information, where the skill of extracting meaningful insights from data is lucrative. Models trained on reduced data learn faster. In production, smaller models mean quicker response times. Perhaps most importantly, understanding your data and building smaller models is key. Dimensionality reduction is your winning edge in the field of data science. You'll learn the difference between feature selection and feature extraction using R, identifying and removing features with little or redundant information while retaining features with the most information. This is feature selection. You'll also learn how to extract combinations of features as compact components that contain maximum information.
The "End-to-End Machine Learning" course, published by the Code Learn Academy, guides learners through the intricacies of designing, training, and deploying machine learning models. In this comprehensive course, you will delve into the world of machine learning, discovering how to design, train, and deploy final models. Through engaging examples and practical exercises, you will learn to tackle complex data challenges and build powerful ML models. By the end of this course, you will be equipped with the skills needed to create, monitor, and maintain high-performance models, along with practical insights.
You will start by learning the principles of Exploratory Data Analysis (EDA) and data preparation. You'll clean and preprocess your data, ensuring it's ready for model training. Then, you'll master the art of feature engineering and selection to optimize your models for real-world challenges.
The course covers using the Boruta library for feature selection, recording experiments with MLFlow, and fine-tuning models using k-fold cross-validation. You'll uncover the secrets of effective error metrics and explore the importance of feature stores and model registries in the context of end-to-end machine learning frameworks. You'll also learn how to monitor and evaluate your model's performance over time using Docker and AWS. The concept of data drift and how to detect it using statistical tests will be comprehensively understood.
Feedback loops, retraining, and labeling strategies will be implemented to maintain the performance of your models in the face of ever-changing data.
A/B Testing in R is a course offered by Code Learn Academy , focusing on the exploration of A/B testing using the R programming language. A/B testing is a common experimental design employed in both industry and academia to investigate human behavior. These tests compare two variables to determine if there is a significant difference in performance measurements and whether the measurements vary significantly by a meaningful method. By mastering A/B testing and interpreting results, you can make data-driven decisions and predictions.
In this course, you will learn what questions A/B tests answer, essential considerations for A/B testing, how to respond to existing questions, and how to visualize data. You will also discover how to determine the required sample size for an experiment, perform appropriate analyses for data and existing hypotheses, ensure that results can be confidently considered, and present results to an audience without statistical background. The course covers both parametric and non-parametric A/B tests, such as the t-test, Mann-Whitney U test, Chi-Square independence test, Fisher's exact test, and Pearson and Spearman correlation. Additionally, power analysis will be examined for each test.
The AI Ethics course has been released by the Code Learn Academy. This introductory course on artificial intelligence ethics provides a comprehensive overview of ethical considerations in the rapidly evolving field of artificial intelligence. It encompasses industry, policy-making, academia, and society in general, covering the principles of AI ethics, strategies for fostering fair and just artificial intelligence systems, methods for minimizing biases, and approaches to addressing key issues and building user trust. Throughout this course, you will learn the principles of ethical artificial intelligence and expand your understanding of common challenges and opportunities in the field of AI ethics. Through practical exercises, you will develop the skills to create ethical artificial intelligence.
The Artificial Intelligence (AI) Strategy course has been released by the Code Learn Academy. You've likely heard about various strategies such as business, data, and artificial intelligence, and have been amazed by how they interconnect. To understand how to integrate these intertwined strategies to create a robust strategic framework for organizations active in today's data-centric world, take this course. Additionally, you will explore the role of an AI strategist in successfully transforming artificial intelligence that aligns well with business strategic objectives.
When formulating an effective artificial intelligence strategy, you will begin by understanding the differences between artificial intelligence and traditional software. Such distinctions aid in developing the skill of appropriately discerning the suitability of artificial intelligence. You will also learn to set realistic business goals and define appropriate criteria for project success. As you progress, you'll gather information about evaluating the return on investment for projects that lead to the creation of such complex technology.
Data Fluency, a course on data literacy, is published by the Code Learn Academy. Data is ubiquitous, and in today's data-centric world, being data-fluent is not just a necessity for individuals but also for entire organizations. Data fluency is not only about understanding data but also about the ability to work with and effectively use data for data-driven decision-making.
This course introduces you to the exciting concept of data fluency, covering the best practices and essential skills required to master data fluency. You will start by learning the meaning of data fluency and its distinction from data literacy. Additionally, you will become familiar with the significance of data fluency in today's world.
The course provides a framework for achieving data fluency at both individual and organizational levels. Subsequently, you will explore the data-centric behaviors of individuals along with the skills they use, from identifying business problems with data from the initial stage to conveying information effectively for decision-making.
The "Data Preparation in Excel" course has been released by the Code Learn Academy. In this course, you will become familiar with the process of preparing and cleaning raw data in Excel spreadsheets. The lesson guides you on utilizing the various features available in Excel, enabling you to import data from different sources. Through filtering, sorting, and organizing your columns and rows, you'll learn to prepare your data for subsequent analyses in the most effective manner possible.
In addition to the internal features provided by Excel, you will learn to use various functions for managing and manipulating dates and text strings. Familiarity with logical functions will empower you to create new flags and classifications in your raw data. Furthermore, you'll understand how to combine different logical functions in nested formulas. The course also covers the usage of search functions in Excel to import data from various sheets and identify specific results in large datasets.
Lastly, the course provides an overview of PivotTables, a powerful Excel feature that allows you to summarize and analyze large volumes of data using dynamic tables.
"Data Visualization in Excel" is a course offered by the Code Learn Academy. In this course, you will delve into the fundamentals of Excel charts, equipping yourself with the skills to create impactful visualizations and customize various chart types. With a comprehensive understanding of series and categories, you will gain the expertise needed to transform data into engaging narratives that captivate your audience. Explore working with dual-axis series and create more advanced charts such as bullet charts, waterfall charts, or scatter plots. Additionally, we will examine various chart editing options. Data visualization, like any other field, has its best practices, and it's time to take a closer look at do's and don'ts. We will enhance our skills in selecting chart elements, using colors, legends, and labels, learning how to troubleshoot and customize visual weak points for the benefit of end users.
The course "Deep Learning for Text with PyTorch" is published by Code Learn Academy. Embark on an exciting journey of deep learning for text with PyTorch. This course introduces you to the skills of dealing with various challenges related to text. You will become familiar with the principles of text processing, including encoding and embedding. Various models such as CNNs, RNNs, GANs, and pre-trained models will be applied using textual data. Finally, you will delve into advanced topics such as transfer learning techniques, attention mechanisms, and how to safeguard your models against adversarial attacks.
By the end of this course, you will have the skills to build powerful deep learning models for text. Explore text classification and its role in Natural Language Processing (NLP). Apply your skills to implement word embeddings and develop Convolutional Neural Networks (CNNs) and Recurrent Neural Networks (RNNs) for text classification using PyTorch. Understand how to evaluate your models using appropriate metrics.
The course "Dimensionality Reduction in R" has been released by Code Learn Academy. Have you ever worked with datasets containing numerous features? Do you really need all these features? Which ones are more important? In this course, you will learn dimensionality reduction techniques that help simplify your data and models, allowing you to retain the essential information in your original data and achieve good predictive performance with the models you build. We live in the age of information, where the skill of extracting meaningful insights from data is lucrative. Models trained on reduced data learn faster. In production, smaller models mean quicker response times. Perhaps most importantly, understanding your data and building smaller models is key. Dimensionality reduction is your winning edge in the field of data science. You'll learn the difference between feature selection and feature extraction using R, identifying and removing features with little or redundant information while retaining features with the most information. This is feature selection. You'll also learn how to extract combinations of features as compact components that contain maximum information.
The "End-to-End Machine Learning" course, published by the Code Learn Academy, guides learners through the intricacies of designing, training, and deploying machine learning models. In this comprehensive course, you will delve into the world of machine learning, discovering how to design, train, and deploy final models. Through engaging examples and practical exercises, you will learn to tackle complex data challenges and build powerful ML models. By the end of this course, you will be equipped with the skills needed to create, monitor, and maintain high-performance models, along with practical insights.
You will start by learning the principles of Exploratory Data Analysis (EDA) and data preparation. You'll clean and preprocess your data, ensuring it's ready for model training. Then, you'll master the art of feature engineering and selection to optimize your models for real-world challenges.
The course covers using the Boruta library for feature selection, recording experiments with MLFlow, and fine-tuning models using k-fold cross-validation. You'll uncover the secrets of effective error metrics and explore the importance of feature stores and model registries in the context of end-to-end machine learning frameworks. You'll also learn how to monitor and evaluate your model's performance over time using Docker and AWS. The concept of data drift and how to detect it using statistical tests will be comprehensively understood.
Feedback loops, retraining, and labeling strategies will be implemented to maintain the performance of your models in the face of ever-changing data.
Embark on a transformative journey with "Create a Custom ChatGPT with Your Data: Custom GPTs," a cutting-edge course designed for enthusiasts eager to harness the innovative power of AI and create a personalized ChatGPT. Whether you're a professional seeking to enhance workflow automation or a hobbyist delving into the AI revolution, this course offers a comprehensive guide to crafting your own GPT models tailored to your unique data and preferences.
Course Highlights:
Hands-On Customization: Dive into the world of GPTs without the need for a technical background. This course is crafted to be accessible and engaging, guiding you through the process of modifying and optimizing your ChatGPT using conversational methods.
Mastering GPT Integration: Learn to infuse your custom GPT with additional documents, integrating external data sources for enriched conversational experiences, and making your GPT interact dynamically with DALL-E for image generation and analysis.
API and Zapier Proficiency: Gain insights into the technical facets of API integration and how to leverage Zapier to automate tasks, ensuring your ChatGPT becomes a powerhouse tool in your arsenal.
Creative and Practical Applications: The course doesn't just teach; it immerses you in real-world applications, from analyzing spreadsheet data to crafting custom GPTs for diverse scenarios like meal planning or financial document analysis.
Who This Course Will Benefit:
Professionals looking to integrate AI into their business processes for enhanced efficiency.
Content creators and marketers seeking to utilize AI for generating dynamic content.
Developers and hobbyists interested in AI and its potential for personal projects.
Educators and students exploring AI's capabilities for learning and instruction.
Transform Your Interaction with AI:
"Create a Custom ChatGPT with Your Data: Custom GPTs" isn't just a course; it's an opportunity to redefine your interaction with technology. It's about empowering you to build, share, and benefit from an AI model that resonates with your personal or professional narrative. You'll emerge from this course not only with the knowledge to create custom GPTs but also with the confidence to push the boundaries of what you can achieve with AI.
Take the step into a world where AI is personalized, and join a community of forward-thinkers shaping the future. Enroll now and start your journey towards mastering Custom GPTs.
Enroll now!
Embark on a transformative journey with "Create a Custom ChatGPT with Your Data: Custom GPTs," a cutting-edge course designed for enthusiasts eager to harness the innovative power of AI and create a personalized ChatGPT. Whether you're a professional seeking to enhance workflow automation or a hobbyist delving into the AI revolution, this course offers a comprehensive guide to crafting your own GPT models tailored to your unique data and preferences.
Course Highlights:
Hands-On Customization: Dive into the world of GPTs without the need for a technical background. This course is crafted to be accessible and engaging, guiding you through the process of modifying and optimizing your ChatGPT using conversational methods.
Mastering GPT Integration: Learn to infuse your custom GPT with additional documents, integrating external data sources for enriched conversational experiences, and making your GPT interact dynamically with DALL-E for image generation and analysis.
API and Zapier Proficiency: Gain insights into the technical facets of API integration and how to leverage Zapier to automate tasks, ensuring your ChatGPT becomes a powerhouse tool in your arsenal.
Creative and Practical Applications: The course doesn't just teach; it immerses you in real-world applications, from analyzing spreadsheet data to crafting custom GPTs for diverse scenarios like meal planning or financial document analysis.
Who This Course Will Benefit:
Professionals looking to integrate AI into their business processes for enhanced efficiency.
Content creators and marketers seeking to utilize AI for generating dynamic content.
Developers and hobbyists interested in AI and its potential for personal projects.
Educators and students exploring AI's capabilities for learning and instruction.
Transform Your Interaction with AI:
"Create a Custom ChatGPT with Your Data: Custom GPTs" isn't just a course; it's an opportunity to redefine your interaction with technology. It's about empowering you to build, share, and benefit from an AI model that resonates with your personal or professional narrative. You'll emerge from this course not only with the knowledge to create custom GPTs but also with the confidence to push the boundaries of what you can achieve with AI.
Take the step into a world where AI is personalized, and join a community of forward-thinkers shaping the future. Enroll now and start your journey towards mastering Custom GPTs.
Enroll now!