Description
Certification Name: Certified AI Logistics Analyst
Global Occupational Skill Standard – GOSS ID: GOSS/TL/CALA/V1
Eligibility: Graduation or Equivalent or minimum 2 years of relevant experience (experience-based learners can directly enroll and certify).
Objective: The Certified AI Logistics Analyst course is designed to provide participants with the technical and strategic knowledge to integrate AI into logistics and supply chain management. The course covers AI fundamentals, machine learning applications in logistics (such as demand forecasting, route optimization, and inventory management), natural language processing for customer service automation, and predictive analytics for risk management.
Certification: Within 5 days after Completion of Online Assessment.
Get ready to join the Journey to become a GSDCI Certified Professional – International Certification and Assessment Body.
Steps to become a GSDCI Certified Professional:
Step 1: Select your certification you want to pursue.
Step 2: Click on get certified tab, new pop up window will open.
Step 3: Click on pay certification fee, you will be redirected to billing details page.
Step 4: Fill your details and click on pay certification fee, You will be redirected to payment gateway, pay fee by any available options like Card(Debit/Credit), Wallet, Paytm, Net banking, UPI and Google pay.
Step 5: You will get Login Credentials of Online E-Books and Online assessment link on your email id, within 48 hrs of payment.
Step 6: After completion of online assessment, you can download your Certificate Immediately.
Assessment Modules:
Module 1: Fundamentals of AI in Logistics and Supply Chain: Introduction to artificial intelligence and its relevance in logistics, Core functions of logistics where AI is applied (planning, warehousing, transport), Overview of AI techniques: machine learning, deep learning, NLP, Role of AI in improving supply chain visibility and responsiveness, Key differences between AI, automation, and analytics, Global trends and case studies on AI adoption in logistics.
Module 2: Data Management and AI Readiness in Logistics: Sources of logistics data: IoT sensors, RFID, WMS, TMS, GPS, Preparing logistics data for AI: data cleaning, labeling, and normalization, Importance of structured vs unstructured data in logistics AI, Data governance, integrity, and ethical considerations, Using cloud platforms and data lakes for scalable AI solutions, Integration of ERP and SCM systems with AI tools.
Module 3: Predictive Analytics and Machine Learning Applications: Demand forecasting using time series and ML algorithms, Predictive maintenance of fleet and warehouse equipment using AI, Inventory optimization with AI-driven models, Route and delivery time prediction using historical and real-time data, Customer demand pattern recognition and segmentation, Tools and platforms: Python, TensorFlow, Scikit-learn basics for logistics.
Module 4: AI in Warehouse, Transport, and Last-Mile Optimization: Computer vision and robotics in warehouse automation, AI-based slotting and picking optimization, Dynamic route optimization using AI algorithms, Real-time tracking, anomaly detection, and ETA prediction, AI for load optimization and fuel efficiency in transport, Last-mile delivery optimization using autonomous and drone technology.
Module 5: AI-Powered Decision Support and Risk Management: Using AI for strategic and tactical logistics decision-making, Simulation and digital twin models for logistics network planning, Risk identification and mitigation using AI algorithms, NLP in document processing, contract management, and chatbot assistants, AI-enabled control towers and visibility platforms, Case study: AI-driven disruption management during supply chain crisis.
Module 6: AI Implementation Strategy and Future Trends in Logistics: Developing AI roadmap for logistics transformation, Assessing ROI and success metrics for AI projects in logistics, Talent, training, and organizational readiness for AI adoption, Challenges in AI implementation: data quality, bias, resistance to change, Emerging trends: generative AI, quantum computing, edge AI in logistics, Capstone project: AI-based solution design for a logistics challenge.
GSDCI Online Assessment Detail:
- Duration- 60 minutes.
- Number of Questions- 30.
- Number of Questions from each module: 5.
- Language: English.
- Exam Type: Multiple Choice Questions.
- Maximum Marks- 100, Passing Marks- 50%.
- There is no negative marking in any module.
| Marking System: | |||
| S.No. | No. of Questions | Marks Each Question | Total Marks |
| 1 | 10 | 5 | 50 |
| 2 | 5 | 4 | 20 |
| 3 | 5 | 3 | 15 |
| 4 | 5 | 2 | 10 |
| 5 | 5 | 1 | 5 |
| 30 | 100 | ||
| How Students will be Graded: | |||
| S.No. | Marks | Grade | |
| 1 | 91-100 | O (Outstanding) | |
| 2 | 81-90 | A+ (Excellent) | |
| 3 | 71-80 | A (Very Good) | |
| 4 | 61-70 | B (Good) | |
| 5 | 50-60 | P (Pass) | |
| 6 | 0-49 | F (Fail) | |
Benefits of Certification:
🌍 1. Global Recognition & Credibility – Stand out worldwide with a certification that opens doors across borders. Trusted by employers, respected by institutions, and recognized in over 100 countries.
📜 2. Quality Assurance through ISO Certification – Certified to global ISO standards, our programs deliver excellence, consistency, and a benchmarked learning experience that speaks for itself.
💼 3. Career Advancement & Employability – Enhances your resume and increases chances of promotions or job offers.
🤝 4. Non-Profit Trust Factor – Certifications from non-profit organizations are mission-driven rather than profit-driven.
📚 5. Access to Verified Learning & Resources – Often includes e-books, mock tests, and online support without hidden costs.
🔍 6. Transparency & Online Verification – Certifications come with a unique Enrolment ID for easy online verification by employers and institutions.
⏳ 7. Lifetime or Long-Term Validity – Certifications usually have lifetime validity or long-term recognition, reducing the need for frequent renewals.


Reviews
There are no reviews yet.