Asana, inc. (20240378560). SYSTEMS AND METHODS TO GENERATE RECORDS WITHIN A COLLABORATION ENVIRONMENT BASED ON A MACHINE LEARNING MODEL TRAINED FROM A TEXT CORPUS simplified abstract

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SYSTEMS AND METHODS TO GENERATE RECORDS WITHIN A COLLABORATION ENVIRONMENT BASED ON A MACHINE LEARNING MODEL TRAINED FROM A TEXT CORPUS

Organization Name

asana, inc.

Inventor(s)

Steve B. Morin of San Francisco CA (US)

SYSTEMS AND METHODS TO GENERATE RECORDS WITHIN A COLLABORATION ENVIRONMENT BASED ON A MACHINE LEARNING MODEL TRAINED FROM A TEXT CORPUS - A simplified explanation of the abstract

This abstract first appeared for US patent application 20240378560 titled 'SYSTEMS AND METHODS TO GENERATE RECORDS WITHIN A COLLABORATION ENVIRONMENT BASED ON A MACHINE LEARNING MODEL TRAINED FROM A TEXT CORPUS

Simplified Explanation: This patent application describes systems and methods for generating records within a collaboration environment. The process involves managing environment state information, uploading digital assets, obtaining input information, generating transcription information, utilizing machine-learning models, and creating new records based on the transcripts.

  • Manage environment state information within a collaboration environment
  • Present a user interface for uploading digital assets like recorded audio and video content
  • Obtain input information defining the digital assets through the user interface
  • Generate transcription information characterizing the recorded content
  • Input the transcription information into a trained machine-learning model
  • Obtain output from the model to define new records based on the transcripts

Key Features and Innovation: - Integration of machine-learning models for record generation - User-friendly interface for uploading digital assets - Efficient transcription of audio and video content - Automation of record creation process - Enhanced collaboration environment management

Potential Applications: - Online collaboration platforms - Content creation tools - Educational platforms - Business meeting recording systems - Legal transcription services

Problems Solved: - Streamlining record generation process - Improving transcription accuracy - Enhancing user experience in collaboration environments - Automating repetitive tasks - Facilitating content management

Benefits: - Time-saving in record creation - Increased accuracy in transcription - Improved organization of digital assets - Enhanced productivity in collaborative work - Simplified management of collaboration environments

Commercial Applications: Title: Automated Record Generation System for Collaboration Environments This technology can be utilized in various industries such as online education, content creation, legal services, and business meetings. It offers a more efficient and accurate way to manage and generate records within collaborative environments, leading to increased productivity and streamlined workflows.

Questions about Automated Record Generation System for Collaboration Environments: 1. How does this technology improve the efficiency of record generation in collaboration environments? 2. What are the potential implications of using machine-learning models for transcription and record creation in collaborative settings?


Original Abstract Submitted

systems and methods to generate records within a collaboration environment are described herein. exemplary implementations may perform one or more of: manage environment state information maintaining a collaboration environment; effectuate presentation of a user interface through which users upload digital assets representing recorded audio and/or video content; obtain input information defining the digital assets input via the user interface; generate transcription information characterizing the recorded audio and/or video content of the digital assets; provide the transcription information as input into a trained machine-learning model; obtain the output from the trained machine-learning model, the output defining one or more new records based on the transcripts; and/or other operations.