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Amanat Doulah

Full-Stack Software Engineer

IoT and AgroTech entrepreneur

AI Software Engineer

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Amanat Doulah

Full-Stack Software Engineer

IoT and AgroTech entrepreneur

AI Software Engineer

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  • Data Center Infrastructure

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  • April 2020

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AI Automation for Project Management — Natural Language to Actions​

AI integration in existing systems

An AI-based automation system was designed and implemented for the project management module of ABC Productivity Tools, a platform positioned as a competitor to tools like ClickUp.
This system enables users to create automations — including triggers, conditions, and actions — using simple natural language commands, turning complex workflow configuration into an intelligent, effortless experience.

Project Overview
Most project management tools require manual configuration and multiple steps to set up automation workflows.
This AI-driven module streamlines the process by allowing users to describe what they want in everyday language.
The system interprets these requests, understands intent, and automatically generates the correct automation logic in the background.

How It Works

  1. Natural Language Understanding
    Natural language processing (NLP) models analyze user input to identify the components of an automation rule — such as triggers, conditions, and actions.
    For example, when a user writes “When a task is marked done, assign the next task to John and update the project status,” the AI translates it into an executable automation.

  2. Intent Classification and Entity Extraction
    The model detects the user’s intent (trigger-based, conditional, or recurring) and identifies related entities such as task names, team members, or project fields.
    This ensures the automation accurately reflects the user’s instruction.

  3. Automation Flow Generation
    Once the intent and entities are identified, the system creates a structured automation rule using dynamic logic templates.
    Each rule is validated and stored in the automation engine, ready for execution.

  4. Execution and Monitoring
    The automation engine monitors project activity and executes defined actions whenever conditions are met.
    Tasks can be reassigned, notifications sent, or statuses updated automatically.
    A monitoring layer ensures every automation runs correctly and logs performance metrics.

  5. Continuous Learning
    The AI learns from user behavior and phrasing to improve its understanding of automation intent.
    Over time, it begins suggesting relevant automation patterns proactively, reducing setup effort.

Business Value

  • Simplifies automation creation with a natural, conversational interface.

  • Reduces setup time and dependency on technical knowledge.

  • Enhances team productivity by automating repetitive tasks.

  • Improves user engagement and accessibility across all project teams.

  • Scales effectively with customizable templates and modular architecture.

Outcome
The AI automation system demonstrates how natural language understanding and intelligent workflow generation can enhance productivity and collaboration.
By translating plain-language instructions into executable automations, it enables teams to focus on higher-value work while the system handles routine operations.

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