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Mammoth Club All levels 5 sections 36 lectures

AI Engineering for Data Scientists – Training and Fine-Tuning Large Models with 10 Exams

Behind each tutorial is human creativity, AI support and the careful oversight of human editors. Build the skills to shape AI systems for real-world impact. As AI grows, so does the need to manage and adapt large-scale models.

01
Skill level
All levels
02
Sections
5
03
Lectures
36
04
Instructor
Team Mammoth
What's inside

This course includes.

5
Sections
6
Quizzes
Certificate of completion
Included
Mobile and desktop access
Included
AI learning assistance
Included
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Course content

Curriculum & lectures.

5 sections · 36 lectures
+ 01 AI Engineering Foundations & The Rise of LLMs 8 lectures Preview
01 What AI Engineering means in today’s AI landscape Locked
02 Why "training model from scratch" is rare now Locked
03 The new role of data scientists in the LLM era Locked
04 Anatomy of Transformers Locked
05 Evolution Locked
06 Comparing Open vs. Closed Models Locked
07 Pretraining: scale and limits Locked
08 Why fine-tuning is cost-effective and accessible Locked
+ 02 Data Foundations for Training & Fine-Tuning 9 lectures
01 Importance of scale and diversity Locked
02 Structured vs. Unstructured vs. Synthetic Data Locked
03 Licensing and copyright concerns Locked
04 Deduplication, Filtering, and Noise Reduction Locked
05 Domain Adaptation Through Curated Corpora Locked
06 Detecting and mitigating bias at the data level Locked
07 Dataset sourcing challenges Locked
08 Balancing Performance with Fairness Locked
09 Responsible Dataset Release Practice Locked
+ 03 Fine-Tuning Strategies & Adaptation 4 lectures
01 Full Fine-Tuning Locked
02 Parameter-Efficient Fine-Tuning (PEFT) Locked
03 Instruction Tuning & RLHF Locked
04 Domain-Specific Adaptation Locked
+ 04 Evaluation, Deployment, and Scaling 10 lectures
01 Why Evaluation Matters in AI Engineering Locked
02 Metrics: perplexity, BLEU, MMLU, HELM Locked
03 Human vs. automated evaluation Locked
04 Measuring hallucinations and truthfulness Locked
05 Model serving strategies Locked
06 Inference optimization Locked
07 Scaling Serving with Distributed Systems Locked
08 Continuous Integration and Deployment for LLMs Locked
09 Monitoring drift and model performance in the wild Locked
10 Logging conversations and observability Locked
+ 05 Security, Governance & The Future of AI Engineering 5 lectures
01 Security & Compliance in LLMs Locked
02 AI Governance & Regulation Locked
03 Future of LLM Engineering Locked
04 Career Roadmap: Data Scientist → AI Engineer Locked
05 Closing Discussion: “AI Engineering is the New Software Engineering.” Locked
Description

About this course.

This course explores how data scientists can train, fine-tune, and evaluate models, focusing on methods that make AI systems more efficient and aligned with specific tasks.


✅ Train and adapt models for specialized applications

✅ Explore techniques for fine-tuning large architectures

✅ Learn evaluation methods to measure performance

✅ Reinforce learning with 10 structured exams


AI engineering combines experimentation with systematic refinement, helping turn cutting-edge models into tools for practical use.


🎁 Build the skills to shape AI systems for real-world impact.

Ready to start building?

Behind each tutorial is human creativity, AI support and the careful oversight of human editors. Build the skills to shape AI systems for real-world impact. As AI grows, so does the need to manage and adapt large-scale models.

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