Generative Ai For Transportation Analyst And Managers
Published 6/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 379.88 MB | Duration: 2h 23m
Published 6/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 379.88 MB | Duration: 2h 23m
1000+ Prompts- Redefining Transport Planning through Prompt Engineering
What you'll learn
Understand the core principles of Generative AI and its role in modern logistics
1000+ AI prompts across all transportation and logistics operations
Master prompt engineering techniques (zero-shot, one-shot, few-shot) for transportation use cases
Generate optimal delivery routes based on real-world shipment constraints
Create dynamic routing adjustments using live traffic and weather data
Optimize hub locations and transport mode selections through AI-generated insights
Plan vehicle loads efficiently and maximize capacity utilization
Automate the generation of carrier performance reports and freight tender documents
Draft transport contracts, compare clauses, and generate rate agreements using LLMs
Auto-create customs forms, bills of lading, consignment notes, and delivery instructions
Predict ETAs, simulate transport disruptions, and build contingency plans using AI
Forecast transport demand, seasonal spikes, and multi-modal shipment volumes
Detect idle time, downtime, and SLA breaches with prompt-based analytics
Simulate cost-to-serve, budget planning, and sustainability-driven routing
Predict risks using external signals like news and weather with real-time prompt workflows
Requirements
Basic computer literacy
Familiarity with logistics or transportation processes
Description
This comprehensive course equips transportation analysts and logistics managers with the skills to harness Generative AI for strategic and operational excellence. Beginning with a strong foundation in concepts such as "What is Generative AI" and "Prompt Engineering," learners will explore how Large Language Models (LLMs) can revolutionize transportation workflows. Through a deep dive into zero-shot, one-shot, and few-shot prompting techniques, participants learn to tailor AI responses for diverse logistics scenarios. The course progresses to practical applications including generating optimal delivery routes from real-time shipment constraints, adjusting routes dynamically using traffic and weather prompts, and selecting hub locations and transport modes using AI insights.Further, learners gain expertise in vehicle load planning, capacity utilization, and automated carrier performance reporting. AI-driven support for freight tendering, bidding documents, and contract clause comparisons is covered using advanced prompting methods. Participants will also practice generating customs forms, bills of lading, consignment notes, and waybills automatically, streamlining documentation workflows. Additional modules guide users through drafting SOPs for warehousing and shipping, generating real-time ETA predictions, and building alert systems for route deviations.The course explores how Generative AI can be applied to simulate transport demand, forecast seasonal and regional capacity, and compare historical versus projected volumes. Students will generate performance KPIs, identify idle time and downtime, and analyze lead times and SLA breaches with AI-powered precision. Advanced sections include risk-based disruption planning, emergency response templates, and simulations driven by external signals like news and weather. The course culminates in a powerful library of 1000+ ready-to-use prompts for real-world transportation decision-making.Designed for modern logistics professionals, this course bridges AI technology with transportation strategy, ensuring participants can lead their organizations through a new era of data-driven, intelligent supply chain operations.
Overview
Section 1: Generative AI in Transportation and Logistics
Lecture 1 What is Generative AI? Use Cases in Transportation
Lecture 2 What is Prompt Engineering
Lecture 3 Zero-shot, One-shot, and Few-shot Prompting Techniques
Section 2: Files Dataset
Lecture 4 Dataset File
Lecture 5 Prompts used in live demos
Section 3: Smart Planning and Routing Using Generative AI
Lecture 6 Generating Optimal Delivery Routes from Shipment Constraints
Lecture 7 Dynamic Route Adjustments Using Traffic and Weather Prompts
Lecture 8 AI-Driven Hub Location Optimization and Transport Mode Selection
Lecture 9 Vehicle Load Planning and Capacity Utilization Prompts
Section 4: Freight Management and Carrier Coordination
Lecture 10 Carrier Performance Report Generation via AI
Lecture 11 Generative AI Prompts for Freight Tendering and Bidding Documents
Lecture 12 LLMs for Contract Clause Comparison and Rate Agreement Drafts
Section 5: Document Automation in Transportation
Lecture 13 Generating Bills of Lading, Packing Slips, and Waybills with AI
Lecture 14 Creating AI-Prompted Customs and Export Compliance Forms
Lecture 15 Generating Consignment Notes and Delivery Instructions
Lecture 16 Drafting SOPs for Shipping, Warehousing, and Safety
Section 6: AI-Powered Real-Time Visibility and ETA Forecasting
Lecture 17 ETA Prediction Using Generative AI and Delay Reasoning Prompts
Lecture 18 Auto-Generating Daily/Weekly Logistics Dashboards
Lecture 19 Alerting Systems for Route Deviations and Incident Response
Section 7: Demand Forecasting and Transportation Planning
Lecture 20 Using AI Prompts for Transport Demand Simulation
Lecture 21 Forecasting Transport Capacity Needs per Season or Region
Lecture 22 Generative AI for Historical vs Forecasted Volume Comparison
Lecture 23 Multi-modal Shipment Forecasting using External Signals
Section 8: Analytics and Decision Support Using LLMs
Lecture 24 Generating KPI Reports for Fleet Performance
Lecture 25 Prompt-Based Identification of Idle Time, Downtime, and Bottlenecks
Lecture 26 Cost-to-Serve Analysis and Distribution Network Simulation
Section 9: Risk Management and Disruption Response
Lecture 27 Generating Disruption Scenarios and Contingency Plans
Lecture 28 Predicting Transportation Risks from News and Real-Time Data
Lecture 29 AI-Prompted Emergency Response Templates
Section 10: 1000+ Prompts
Lecture 30 Optimal Delivery Route Planning from Constraints
Lecture 31 Dynamic Route Adjustments Using Traffic and Weather
Lecture 32 AI-Driven Hub Location Optimization
Lecture 33 Transport Mode Selection and Scenario Evaluation
Lecture 34 Vehicle Load Planning and Capacity Utilization
Lecture 35 Transport Demand Forecasting for Seasonal Spikes
Lecture 36 Multimodal Transport Planning Across Air, Rail, Truck, Sea
Lecture 37 Rescheduling Delayed Shipments Based on Priority and Cost
Lecture 38 Network Redesign for Regional Distribution Optimization
Lecture 39 M&A Impact on Transport Network Design
Lecture 40 Freight Cost Prediction from Historical Patterns
Lecture 41 Carrier Performance Dashboard Generation
Lecture 42 Lead Time Analysis and SLA Breach Detection
Lecture 43 Downtime and Bottleneck Identification via Prompts
Lecture 44 Fleet KPI Report Generation and Narrative Summaries
Lecture 45 Comparing Historical vs Forecasted Transport Volumes
Lecture 46 Route Deviation Alerting and SLA Impact Analysis
Lecture 47 AI-Powered Benchmarking of Cost per Kilometer
Lecture 48 Idle Time & Underutilization Analytics
Lecture 49 Freight Tender Document Generation via Prompts
Lecture 50 Rate Agreement Drafting from Historical Rate Tables
Lecture 51 LLM-Based Comparison of Contract Clauses
Lecture 52 Sourcing Strategy for Vendor Optimization
Lecture 53 Carrier Selection Justification Using Prompted Criteria
Lecture 54 Bills of Lading, Packing Slips, and Waybills Generation
Lecture 55 Drafting Customs and Export Compliance Forms
Lecture 56 Auto-Filling Delivery Instructions & Consignment Notes
Lecture 57 SOP Generation for Shipping, Warehousing, and Safety
Lecture 58 Document Automation for Returns and Reroutes
Lecture 59 Transportation Risk Forecasting Using News & Weather Signals
Lecture 60 Contingency Plan Generation for Route Disruptions
Lecture 61 Emergency Response Templates for High-Risk Shipments
Lecture 62 AI Simulations for Disruption Scenarios
Lecture 63 Real-Time Risk Score Generation for Shipments
Lecture 64 Cost-to-Serve Calculation by Region, Mode, and Customer
Lecture 65 Freight Budgeting Using Predictive Prompts
Lecture 66 Simulation of Mode-Switching Cost Scenarios
Lecture 67 Warehouse-to-Transport Cost Trade-off Prompts
Lecture 68 Sustainability-Driven Transport Optimization Prompts
Lecture 69 Generating Executive Summaries of Transport KPIs
Lecture 70 Board-Level Risk and Cost Reporting Templates
Lecture 71 Investor Reporting Prompts from Logistics Metrics
Lecture 72 Weekly Dashboard Summaries for Stakeholders
Lecture 73 Narrative Generation for Quarterly Performance Reviews
Lecture 74 AI-Generated ETA Updates and Delay Notifications
Lecture 75 Response Templates for Common Transport Queries
Lecture 76 Generating Personalized Client Transport Summaries
Lecture 77 Policy Comparison Emails for Transport Contracts
Lecture 78 Apology and Compensation Note Generation for Service Failures
Lecture 79 AI-Prompted Freight Invoicing and Payment Automation
Transportation Analysts seeking to automate planning, routing, and reporting tasks using AI,Logistics Managers aiming to enhance operational efficiency and decision-making with AI-generated insights,Supply Chain Professionals looking to modernize workflows with prompt engineering and LLMs,Operations and Freight Coordinators interested in automating documents, bids, and SOPs using AI tools,Business Analysts working in the logistics sector who want to integrate AI into transport analysis,Process Improvement Leads exploring Generative AI for reducing delays, errors, and manual workloads,3PL/4PL Teams and Freight Brokers aiming to optimize vendor selection, compliance, and communication,Global Logistics Teams managing multimodal and international shipments requiring scalable AI solutions,Anyone interested in using Generative AI tools like ChatGPT to streamline transport-related tasks—no coding needed