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Tokens to Deployment: NLP, Language Models, & Production API 专项课程

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Coursera

Tokens to Deployment: NLP, Language Models, & Production API 专项课程

Ship Production-Ready NLP and AI Systems.

Master language models, multimodal pipelines, and production APIs from fine-tuning to deployment

Hurix Digital
ansrsource instructors

位教师:Hurix Digital

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4 周 完成
在 10 小时 一周
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4 周 完成
在 10 小时 一周
灵活的计划
自行安排学习进度

您将学到什么

  • Build and evaluate transformer-based NLP pipelines, fine-tuning language models for domain-specific production applications

  • Design and validate automated multimodal data pipelines that unify text, image, and audio features for scalable AI systems

  • Deploy secure, documented, and optimized production APIs for multimodal AI inference using enterprise-grade engineering practices

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授课语言:英语(English)
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专业化 - 9门课程系列

Build & Evaluate NLP Transformer Pipelines

Build & Evaluate NLP Transformer Pipelines

第 1 门课程, 小时

您将学到什么

您将获得的技能

类别:Quality Assessment
类别:MLOps (Machine Learning Operations)
类别:Large Language Modeling
类别:Performance Metric
类别:Applied Machine Learning
NLP: Fine-Tune & Preprocess Text

NLP: Fine-Tune & Preprocess Text

第 2 门课程, 小时

您将学到什么

  • Fine-tuning transforms general-purpose language models into specialized tools that significantly outperform generic models on domain-specific tasks.

  • Systematic text preprocessing pipelines are foundational to NLP success, directly impacting quality and consistency of downstream analytical models.

  • Production-ready NLP systems require both model specialization and robust data transformation workflows to deliver consistent, reliable results.

  • Proper hyperparameter tuning, validation monitoring, and automated preprocessing enable scalable NLP solutions for enterprise deployment.

您将获得的技能

类别:Natural Language Processing
类别:Data Wrangling
类别:Data Pipelines
Evaluate Language Models: Metrics for Success

Evaluate Language Models: Metrics for Success

第 3 门课程, 小时

您将学到什么

  • Effective language model evaluation requires both automated metrics & human judgment to capture quantitative performance and qualitative experience.

  • Automated metrics like BLEU, ROUGE, and BERTScore provide scalable benchmarking but miss nuanced aspects like coherence and factuality humans assess.

  • Human-in-the-loop evaluation frameworks need clear rubrics, pairwise comparisons, and feedback mechanisms to ensure reliable and actionable insights

  • Comprehensive evaluation strategies directly inform business decisions around model selection, fine-tuning priorities & deployment readiness.

您将获得的技能

类别:LLM Application
类别:Performance Metric
类别:Prompt Engineering
类别:Analysis
类别:Benchmarking
Unify Multimodal Data with Automated ETL

Unify Multimodal Data with Automated ETL

第 4 门课程, 小时

您将学到什么

  • Unified data schemas with common metadata fields enable efficient querying and joining of diverse data types for machine learning applications.

  • DAG-based orchestration platforms enable reliable data pipelines with built-in dependency control and robust error handling.

  • Strategic indexing and data type selection in schema design directly impacts storage efficiency and retrieval performance for ML training at scale.

  • Automated ETL with scheduling and monitoring converts raw multimodal data into ML-ready features while reducing manual effort .

您将获得的技能

类别:Extract, Transform, Load
类别:Data Pipelines
类别:Apache Airflow
类别:Database Design
类别:Data Integration
类别:Scalability
类别:Data Modeling
类别:Data Architecture
类别:Data Quality
类别:AI Workflows
类别:Workflow Management
类别:Data Storage
类别:Feature Engineering
Validate Multimodal Data: Ensure Quality

Validate Multimodal Data: Ensure Quality

第 5 门课程, 小时

您将学到什么

  • Data quality is the foundation of reliable multimodal AI systems - poor quality input inevitably leads to poor system performance regardless.

  • Systematic validation across modalities requires understanding the technical alignment (timestamps, IDs) and semantic consistency (content matching).

  • Automated validation pipelines are essential for scaling multimodal data operations and catching issues before they propagate to model training.

  • Cross-modal integrity checks must be designed with domain-specific knowledge about how different data types should relate to each other properly.

您将获得的技能

类别:Verification And Validation
类别:Reconciliation
类别:Auditing
类别:Data Integrity
类别:Debugging
Apply Test-Driven ML Code

Apply Test-Driven ML Code

第 6 门课程, 小时

您将学到什么

  • Test-driven development creates a safety net that enables confident refactoring and continuous improvement of ML codebases for reliable systems.

  • Modular design principles applied to ML components (data loaders, training loops) dramatically improve code reusability and team collaboration.

  • Production-quality ML code requires the same software engineering rigor as traditional development, including comprehensive testing and CI/CD.

  • Investing in code quality upfront prevents technical debt that can derail ML projects during scaling and deployment phases of development.

您将获得的技能

类别:CI/CD
类别:Test Driven Development (TDD)
类别:Unit Testing
类别:Machine Learning Methods
类别:Testability
类别:Python Programming
类别:Maintainability
类别:Model Deployment
类别:Tensorflow
类别:Software Engineering
类别:Software Testing
类别:MLOps (Machine Learning Operations)
Optimize and Manage Your ML Codebase

Optimize and Manage Your ML Codebase

第 7 门课程, 小时

您将学到什么

  • Performance optimization needs systematic profiling and targeted fixes across pipeline stages, from data prep to model execution.

  • Effective ML workflows depend on branching strategies and CI/CD practices aligned with team size, release pace, and deployment needs.

  • Production ML systems balance model accuracy with inference speed through techniques like quantization and pruning.

  • Sustainable ML codebases integrate version control with automated testing and deployment pipelines for quality and velocity.

您将获得的技能

类别:Git (Version Control System)
类别:CI/CD
类别:Version Control
类别:Model Deployment
类别:Software Versioning
类别:Continuous Delivery
类别:Performance Tuning
类别:MLOps (Machine Learning Operations)
类别:Performance Improvement
类别:Software Testing
类别:Software Development Methodologies
类别:Continuous Deployment
类别:PyTorch (Machine Learning Library)
类别:Continuous Integration
类别:Release Management
Analyze Multimodal AI for Business Insights

Analyze Multimodal AI for Business Insights

第 8 门课程, 小时

您将学到什么

  • Multimodal AI interpretation requires understanding cross-modal relationships and how different data types influence model decision-making processes.

  • Effective model evaluation includes accuracy metrics, bias detection, uncertainty quantification, and reliability assessment across modalities.

  • The bridge between AI capabilities and business value is translating technical complexity into contextual narratives for strategic decisions.

  • Professional success in AI implementation depends on communication skills that transform model outputs into actionable business intelligence

您将获得的技能

类别:Analytical Skills
类别:Multimodal Prompts
类别:Large Language Modeling
类别:Data Synthesis
类别:Customer Insights
类别:Data Presentation
类别:AI Enablement
类别:Strategic Thinking
Design, Secure & Document Multimodal APIs

Design, Secure & Document Multimodal APIs

第 9 门课程, 小时

您将学到什么

  • API versioning ensures service reliability and backward compatibility as multimodal AI models evolve over time.

  • Security and observability must be designed in early to achieve enterprise-grade, production-ready APIs.

  • OpenAPI-based documentation boosts developer productivity, testing automation, and smooth client integration.

  • Production multimodal APIs need robust data contracts and error handling for images, audio, and structured inputs.

您将获得的技能

类别:API Testing
类别:Enterprise Security
类别:Software Versioning
类别:Application Security
类别:Multimodal Prompts
类别:OAuth
类别:Middleware
类别:OpenAI API
类别:API Design
类别:Software Documentation
类别:Model Deployment
类别:Application Programming Interface (API)
类别:Restful API
类别:Data Processing
类别:Security Controls

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位教师

Hurix Digital
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