RexGalaxy Academy
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4.8 learner satisfaction
2,500+ enrolments guided

Natural Language Processing (NLP) Professional Course

An intensive 8-month, project-led NLP program that takes learners from text-data foundations and classical machine learning to transformers, RAG, LLM applications, deployment and NLP MLOps. Build eight guided portfolio projects and learn to design responsible, production-ready language AI solutions.

Trusted by learners across Noida and NCR
Practical training with portfolio-ready delivery
Structured support for interviews and career transition
RexGalaxy Academy

RexGalaxy Academy

Structured training, practical implementation, and career-focused learning support for serious learners.

Course Duration

8 Months

Category

Artificial Intelligence / Natural Language Processing

Training Focus

Practical learning, guided modules, projects, and interview readiness.

About Course

What You Will Learn

About the NLP Professional Course

• Guided, career-focused training for building real language AI systems.

• Covers text processing, linguistic features, classical ML, embeddings, deep NLP, transformers, RAG, LLM applications, deployment and MLOps.

• Learn through labs, assignments, project work, evaluation practice and responsible-AI reviews.

• Designed for aspiring NLP, ML and AI engineers, LLM developers, search engineers, data scientists and chatbot developers.

Modules

Detailed Course Curriculum

Module 1

NLP Foundations & Text Data

• NLP tasks: classification, extraction, search, summarization, QA, chatbots and RAG.

• Text data basics: corpora, documents, Unicode, noise, metadata, datasets, labels, splits, leakage and privacy.

• Preprocessing: normalization, tokenization, sentence splitting, stop words, stemming, lemmatization and language detection.

• Python setup: Jupyter, VS Code, regex, Pandas, NumPy, scikit-learn, NLTK, spaCy and Hugging Face.

• Evaluation: accuracy, precision, recall, F1, confusion matrices, ROUGE/BLEU awareness and human review.

Module 2

Linguistic Features & Classical NLP

• Linguistic pipelines: tokenization, sentence segmentation, POS tagging, morphology and lemmatization.

• Dependency parsing, noun chunks, parse trees, relation patterns and syntactic extraction.

• Named entity recognition for people, organizations, locations, products, dates, money and custom labels.

• Rule-based matching with regex, token patterns, phrase matching, gazetteers and dictionaries.

• Build spaCy/NLTK labs for entity extraction, parsing, rules and structured reports.

Module 3

Text Representation & ML Classification

• Text features: bag-of-words, word and character n-grams, count vectors and TF-IDF.

• Classical models: Naive Bayes, Logistic Regression, Linear SVM, Random Forest and baseline selection.

• Applications: sentiment analysis, spam detection, topic classification, intent detection and support-ticket tagging.

• Evaluation: precision, recall, F1, ROC/AUC awareness, threshold tuning, imbalance handling and error analysis.

• Unsupervised analysis: LSA, LDA, NMF, clustering and document similarity.

Module 4

Embeddings & Semantic Search

• Dense vectors, cosine similarity, nearest neighbours, distance metrics and semantic similarity.

• Word2Vec, GloVe, fastText and sentence embeddings for documents, matching and clustering.

• Keyword, semantic and hybrid search with reranking, query rewriting and relevance checks.

• Vector search awareness: FAISS, Chroma, Pinecone, Qdrant, Weaviate and pgvector.

• Build a semantic-search engine with chunking, metadata, filters, retrieval metrics and feedback clustering.

Module 5

Deep Learning for NLP

• Neural NLP foundations: tensors, token IDs, padding, masks, embeddings, batches, loss functions and checkpoints.

• Text CNNs, RNNs, LSTMs, GRUs, bidirectional networks and sequence classification.

• Attention, context vectors, encoder-decoder models, sequence-to-sequence tasks and transformer motivation.

• PyTorch/Keras training workflow: dataloaders, callbacks, early stopping, TensorBoard, GPU awareness and reproducibility.

• Diagnose rare words, negation, sarcasm, label noise, class imbalance and domain mismatch.

Module 6

Transformers & Hugging Face

• Transformer architecture: self-attention, multi-head attention, positional encoding, encoders, decoders, residuals and masking.

• Model families: BERT, RoBERTa, DistilBERT, T5, GPT-style and multilingual models.

• Hugging Face workflows: pipelines, AutoTokenizer, AutoModel, datasets, Trainer, model hub and inference.

• Fine-tune for classification, token classification, NER, QA, summarization, translation and generation.

• Use LoRA/PEFT awareness, quantization, task metrics, responsible-use checks and model-card notes.

Module 7

Information Extraction, QA & Summarization

• Extract entities, relations, events, key phrases, dates, amounts, tables, sections and structured JSON.

• NER customization: label design, annotation guidelines, IOB tags, train/dev/test splits and entity-level metrics.

• Build extractive and generative QA with context windows, answer spans, no-answer cases and F1 evaluation.

• Summarization: extractive vs abstractive, length control, coverage, factual consistency and review rubrics.

• Document workflows for PDFs, OCR-aware text, invoices, contracts, resumes, policies and knowledge bases.

Module 8

LLM Apps, RAG & Agentic NLP

• LLM basics: instruction following, tokens, context windows, temperature, prompts, hallucinations and refusal behaviour.

• Prompt engineering: task framing, examples, output constraints, rubrics, versioning and tests.

• RAG: chunking, embeddings, vector search, retrieval, reranking, citations, grounding and answer faithfulness.

• Structured JSON output, validation, retries, confidence flags, tool/function calling and safe workflow automation.

• Build a RAG chatbot and tool-using assistant with PII, prompt-injection, access-control and evaluation safeguards.

Module 9

Evaluation, Deployment & NLP MLOps

• Evaluation strategy: baselines, gold labels, validation/test sets, metrics, human review, error taxonomies and release criteria.

• Test preprocessing, schemas, tokenizers, models, prompts, adversarial cases, regression checks and data validation.

• Deploy with FastAPI, Flask, Streamlit, Gradio, batch jobs, real-time APIs, model servers and containers.

• Monitor drift, confidence, latency, cost, failure rates, feedback, toxic outputs and retrieval misses.

• Use dataset/model/prompt/vector-index versioning, governance, PII redaction, audit trails, model cards and runbooks.

Module 10

Capstone, Portfolio & Interview Prep

• Plan an end-to-end NLP, ML or LLM solution with users, data, metrics, model path, deployment target and demo scope.

• Portfolio projects: preprocessing toolkit, sentiment classifier, NER extractor, semantic search, transformer fine-tune, QA bot, RAG app and deployed demo.

• Document problem statement, data, preprocessing, model choices, metrics, error analysis, limits, safety and screenshots.

• Practice interviews on tokenization, TF-IDF, embeddings, POS/NER, transformers, fine-tuning, RAG, deployment and responsible AI.

• Deliver clean notebooks, modular scripts, configs, requirements, logging, checkpoints, README, architecture diagrams and demo evidence.

Conclusion

Build a Portfolio-Ready NLP Career

• Complete eight guided portfolio projects and a final NLP capstone.

• Build practical confidence across preprocessing, ML, embeddings, deep NLP, transformers, RAG, LLM apps, deployment and MLOps.

• Explain data choices, models, metrics, production trade-offs and responsible-AI safeguards in interviews and demos.

• Prepare for NLP Engineer, ML Engineer, AI Engineer, LLM Application Developer, Search Engineer, Data Scientist and Chatbot Developer roles.

Trusted Learning

Industry-oriented training backed by guided mentorship.

Upcoming Batches

Flexible schedules for students, freshers, and working professionals.

Mentor Support

Regular doubt handling and learning guidance throughout the course.

Career Focus

Projects, interview readiness, and placement-oriented preparation.

Learning Support

A Clear Path From Enquiry To Learning

Every course detail page follows a simple path: understand the course, speak with our team, access the curriculum, and plan your batch with clarity.

Who Should Join

Beginners, graduates, working professionals, and career switchers who want structured learning with practical execution.

Training Approach

Concept clarity, guided practice, assignments, live examples, and project-based implementation in every phase of the course.

Support Beyond Classes

Session recordings, mentor assistance, interview preparation, and admission guidance to help you stay consistent.

Need Help Choosing The Right Batch?

Speak with our counsellor and get clarity on curriculum, timing, and admission support.

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Testimonials

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I enrolled in the Generative AI course at Rex Galaxy Academy, Noida. The prompt engineering modules and real-world AI projects were extremely practical. Within 3 months, I was able to build AI automation workflows confidently.

Aman Gupta

Aman Gupta

Noida