Difference between revisions of "Automated Scoring"
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− | |keywords=ChatGPT, artificial, intelligence, machine, learning, GPT-4, GPT-5, NLP, NLG, NLC, NLU, models, data, singularity, moonshot, Sentience, AGI, Emergence, Moonshot, Explainable, TensorFlow, Google, Nvidia, Microsoft, Azure, Amazon, AWS, Hugging Face, OpenAI, Tensorflow, OpenAI, Google, Nvidia, Microsoft, Azure, Amazon, AWS, Meta, LLM, metaverse, assistants, agents, digital twin, IoT, Transhumanism, Immersive Reality, Generative AI, Conversational AI, Perplexity, Bing, You, | + | |keywords=ChatGPT, artificial, intelligence, machine, learning, GPT-4, GPT-5, NLP, NLG, NLC, NLU, models, data, singularity, moonshot, Sentience, AGI, Emergence, Moonshot, Explainable, TensorFlow, Google, Nvidia, Microsoft, Azure, Amazon, AWS, Hugging Face, OpenAI, Tensorflow, OpenAI, Google, Nvidia, Microsoft, Azure, Amazon, AWS, Meta, LLM, metaverse, assistants, agents, digital twin, IoT, Transhumanism, Immersive Reality, Generative AI, Conversational AI, Perplexity, Bing, You, Gemini, Ernie, prompt Engineering LangChain, Video/Image, Vision, End-to-End Speech, Synthesize Speech, Speech Recognition, Stanford, MIT |description=Helpful resources for your journey with artificial intelligence; videos, articles, techniques, courses, profiles, and tools |
<!-- Google tag (gtag.js) --> | <!-- Google tag (gtag.js) --> | ||
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* [[Case Studies]] | * [[Case Studies]] | ||
− | ** [[Human Resources (HR)]] | + | ** [[Human Resources (HR)]] ... Write a Resume optimized for Applicant Tracking Systems (ATS) |
** [[Education]] | ** [[Education]] | ||
* [[Strategy & Tactics]] ... [[Project Management]] ... [[Best Practices]] ... [[Checklists]] ... [[Project Check-in]] ... [[Evaluation]] ... [[Evaluation - Measures|Measures]] | * [[Strategy & Tactics]] ... [[Project Management]] ... [[Best Practices]] ... [[Checklists]] ... [[Project Check-in]] ... [[Evaluation]] ... [[Evaluation - Measures|Measures]] | ||
* [[Large Language Model (LLM)]] ... [[Natural Language Processing (NLP)]] ...[[Natural Language Generation (NLG)|Generation]] ... [[Natural Language Classification (NLC)|Classification]] ... [[Natural Language Processing (NLP)#Natural Language Understanding (NLU)|Understanding]] ... [[Language Translation|Translation]] ... [[Natural Language Tools & Services|Tools & Services]] | * [[Large Language Model (LLM)]] ... [[Natural Language Processing (NLP)]] ...[[Natural Language Generation (NLG)|Generation]] ... [[Natural Language Classification (NLC)|Classification]] ... [[Natural Language Processing (NLP)#Natural Language Understanding (NLU)|Understanding]] ... [[Language Translation|Translation]] ... [[Natural Language Tools & Services|Tools & Services]] | ||
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* [https://en.wikipedia.org/wiki/Automated_essay_scoring Automated essay scoring | Wikipedia] | * [https://en.wikipedia.org/wiki/Automated_essay_scoring Automated essay scoring | Wikipedia] | ||
* [https://www.rapidparser.com/ CV Parsing with RapidParser] | * [https://www.rapidparser.com/ CV Parsing with RapidParser] | ||
* [https://www.ets.org/Media/Research/pdf/RR-04-45.pdf Automated Essay Scoring With E-rater® v.2.0 2005] | * [https://www.ets.org/Media/Research/pdf/RR-04-45.pdf Automated Essay Scoring With E-rater® v.2.0 2005] | ||
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+ | |||
+ | |||
+ | = What is Automated Scoring = | ||
+ | |||
+ | Automated scoring with AI is a process of using artificial intelligence (AI) to score submissions, such as essays, exams, and code. Overall, AI is a powerful tool that can be used to automate the scoring of submissions in a variety of settings. AI-powered scoring can help to save time, improve efficiency, and reduce bias. AI can be used to score submissions in a variety of ways, including: | ||
+ | |||
+ | * <b>Identifying keywords and phrases</b>: AI can be used to identify keywords and phrases that are relevant to the topic of the submission. This can be helpful for scoring essays and exams, where the goal is to assess the student's understanding of the material. | ||
+ | * <b>Identifying patterns</b>: AI can be used to identify patterns in the submission. This can be helpful for scoring code, where the goal is to assess the student's ability to write correct and efficient code. | ||
+ | * <b>Comparing submissions to a reference set</b>: AI can be used to compare submissions to a reference set of high-quality submissions. This can be helpful for scoring essays and exams, where the goal is to assess the student's writing skills and knowledge of the material. | ||
+ | |||
+ | AI can be used to score highly technical submissions by being trained on a large dataset of high-quality submissions. This dataset should include submissions from a variety of students and should cover a wide range of topics. Once the AI model is trained, it can be used to score new submissions by comparing them to the reference set of high-quality submissions. AI can also be used to identify noncompliance in submissions. For example, AI can be used to identify plagiarism, code that does not compile, and essays that do not meet the required word count. AI can also be used to identify submissions that contain harmful or offensive content. | ||
+ | |||
+ | Here are some examples of how AI is being used in automated scoring today: | ||
+ | |||
+ | * <b>Educational institutions</b>: Many educational institutions are using AI to score student essays and exams. This can help to free up teachers' time so that they can focus on other tasks, such as lesson planning and grading student work. | ||
+ | * <b>Companies</b>: Some companies are using AI to score job applications and resumes. This can help to identify qualified candidates more quickly and efficiently. | ||
+ | * <b>Government agencies</b>: Some government agencies are using AI to score applications for grants and other programs. This can help to ensure that the most deserving applicants are awarded funding. | ||
+ | |||
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= Automated Compliance Scoring = | = Automated Compliance Scoring = | ||
− | PROMPT TO | + | PROMPT TO GEMINI: Projects have to provide documentation on how they are using and mapping to the enterprise's architecture, the architecture has predefined criteria, architectural artifacts, how could ai be used to score the project's submission? |
− | + | GEMINI'S RESPONSE: | |
− | + | AI can be a valuable tool for scoring project submissions related to enterprise architecture alignment. Here's how: | |
− | + | <b>Analyzing Documentation:</b> | |
− | + | * Keyword Matching: Train an AI model to identify keywords or phrases related to specific architectural artifacts, criteria, and mapping methods within the project documentation. This can flag submissions that lack crucial details or use incorrect terminology. | |
− | * Train an AI model to | + | * Sentiment Analysis: AI can analyze the overall tone and clarity of the documentation. This can help identify submissions that are vague, poorly written, or lack confidence in their approach. |
− | * | ||
− | + | <b>Code Analysis (if applicable):</b> | |
+ | * Pattern Recognition: If project submissions include code or configuration files, AI can be used to identify patterns that indicate adherence to architectural principles. This could involve looking for specific coding styles, library usage, or adherence to established design patterns. | ||
− | + | <b>Scoring and Feedback:</b> | |
− | * | + | * Weighted Scoring: Assign different weights to various criteria based on their importance. The AI can then score submissions based on the presence and quality of these elements in the documentation or code. |
− | + | * Feedback Generation: AI can be used to generate automated feedback reports highlighting areas where the submission meets or misses the mark. This can point the project team towards specific sections of the documentation that need improvement. | |
− | |||
− | + | <b>Important Considerations:</b> | |
+ | * Training Data: The effectiveness of AI for scoring relies heavily on the quality of the training data. This data should include well-documented, high-scoring projects that exemplify good architectural alignment. | ||
+ | * Human Oversight: AI should not replace human judgment entirely. A human reviewer should examine flagged submissions and the AI's feedback to ensure accuracy and catch nuances AI might miss. | ||
+ | * Bias Mitigation: Be mindful of potential biases in the training data that could skew the AI's scoring. Regularly review and adjust the training data to ensure fairness and alignment with evolving architectural principles. | ||
− | |||
− | |||
− | |||
− | |||
− | + | Overall, AI can be a powerful tool to streamline the initial evaluation of project submissions, but human expertise remains crucial for in-depth analysis and final decisions. | |
= How to Write A Proposal = | = How to Write A Proposal = |
Latest revision as of 14:25, 16 March 2024
Youtube search......Google search
- Case Studies
- Human Resources (HR) ... Write a Resume optimized for Applicant Tracking Systems (ATS)
- Education
- Strategy & Tactics ... Project Management ... Best Practices ... Checklists ... Project Check-in ... Evaluation ... Measures
- Large Language Model (LLM) ... Natural Language Processing (NLP) ...Generation ... Classification ... Understanding ... Translation ... Tools & Services
- Automated essay scoring | Wikipedia
- CV Parsing with RapidParser
- Automated Essay Scoring With E-rater® v.2.0 2005
Contents
What is Automated Scoring
Automated scoring with AI is a process of using artificial intelligence (AI) to score submissions, such as essays, exams, and code. Overall, AI is a powerful tool that can be used to automate the scoring of submissions in a variety of settings. AI-powered scoring can help to save time, improve efficiency, and reduce bias. AI can be used to score submissions in a variety of ways, including:
- Identifying keywords and phrases: AI can be used to identify keywords and phrases that are relevant to the topic of the submission. This can be helpful for scoring essays and exams, where the goal is to assess the student's understanding of the material.
- Identifying patterns: AI can be used to identify patterns in the submission. This can be helpful for scoring code, where the goal is to assess the student's ability to write correct and efficient code.
- Comparing submissions to a reference set: AI can be used to compare submissions to a reference set of high-quality submissions. This can be helpful for scoring essays and exams, where the goal is to assess the student's writing skills and knowledge of the material.
AI can be used to score highly technical submissions by being trained on a large dataset of high-quality submissions. This dataset should include submissions from a variety of students and should cover a wide range of topics. Once the AI model is trained, it can be used to score new submissions by comparing them to the reference set of high-quality submissions. AI can also be used to identify noncompliance in submissions. For example, AI can be used to identify plagiarism, code that does not compile, and essays that do not meet the required word count. AI can also be used to identify submissions that contain harmful or offensive content.
Here are some examples of how AI is being used in automated scoring today:
- Educational institutions: Many educational institutions are using AI to score student essays and exams. This can help to free up teachers' time so that they can focus on other tasks, such as lesson planning and grading student work.
- Companies: Some companies are using AI to score job applications and resumes. This can help to identify qualified candidates more quickly and efficiently.
- Government agencies: Some government agencies are using AI to score applications for grants and other programs. This can help to ensure that the most deserving applicants are awarded funding.
|
|
Automated Essay Scoring (AES)
AES is the use of computer programs to grade essays written in an educational setting. It is a form of educational assessment and an application of natural language processing. AES systems are trained on a set of essays that have been carefully human-scored. The system then uses this training data to learn how to identify and score different features of essays, such as grammar, spelling, organization, and argument strength.
How does AES work?
AES systems typically work by first extracting a set of features from the essay. These features can include things like the number of words, the number of sentences, the average sentence length, the number of different words used, and the presence of certain grammatical errors. The system then uses a machine learning algorithm to learn how to combine these features to predict the essay's overall score.
What are the benefits of AES?
AES has a number of potential benefits, including:
- Speed: AES systems can grade essays much faster than human graders. This can be especially beneficial for large-scale assessments, such as standardized tests.
- Consistency: AES systems are more consistent than human graders. This is because they are not influenced by subjective factors, such as fatigue or bias.
- Accuracy: AES systems can be very accurate, especially if they are trained on a large dataset of high-quality training data.
What are the drawbacks of AES? AES also has some potential drawbacks, including:
- Cost: Developing and deploying AES systems can be expensive.
- Fairness: AES systems can be biased against certain groups of students, such as those who speak English as a second language.
- Accuracy: AES systems can sometimes make mistakes, especially if they are not trained on a high-quality dataset or if the essays being graded are very complex.
Overall, AES is a promising technology with the potential to revolutionize the way that essays are graded. However, it is important to be aware of the potential drawbacks of AES before using it in a high-stakes setting.
Automated Compliance Scoring
PROMPT TO GEMINI: Projects have to provide documentation on how they are using and mapping to the enterprise's architecture, the architecture has predefined criteria, architectural artifacts, how could ai be used to score the project's submission?
GEMINI'S RESPONSE: AI can be a valuable tool for scoring project submissions related to enterprise architecture alignment. Here's how:
Analyzing Documentation:
- Keyword Matching: Train an AI model to identify keywords or phrases related to specific architectural artifacts, criteria, and mapping methods within the project documentation. This can flag submissions that lack crucial details or use incorrect terminology.
- Sentiment Analysis: AI can analyze the overall tone and clarity of the documentation. This can help identify submissions that are vague, poorly written, or lack confidence in their approach.
Code Analysis (if applicable):
- Pattern Recognition: If project submissions include code or configuration files, AI can be used to identify patterns that indicate adherence to architectural principles. This could involve looking for specific coding styles, library usage, or adherence to established design patterns.
Scoring and Feedback:
- Weighted Scoring: Assign different weights to various criteria based on their importance. The AI can then score submissions based on the presence and quality of these elements in the documentation or code.
- Feedback Generation: AI can be used to generate automated feedback reports highlighting areas where the submission meets or misses the mark. This can point the project team towards specific sections of the documentation that need improvement.
Important Considerations:
- Training Data: The effectiveness of AI for scoring relies heavily on the quality of the training data. This data should include well-documented, high-scoring projects that exemplify good architectural alignment.
- Human Oversight: AI should not replace human judgment entirely. A human reviewer should examine flagged submissions and the AI's feedback to ensure accuracy and catch nuances AI might miss.
- Bias Mitigation: Be mindful of potential biases in the training data that could skew the AI's scoring. Regularly review and adjust the training data to ensure fairness and alignment with evolving architectural principles.
Overall, AI can be a powerful tool to streamline the initial evaluation of project submissions, but human expertise remains crucial for in-depth analysis and final decisions.
How to Write A Proposal
Grant