--- title: "Version History & Changelog" author: "Chen Yang" date: "`r Sys.Date()`" output: rmarkdown::html_vignette vignette: > %\VignetteIndexEntry{Version History & Changelog} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- ```{r setup, include=FALSE} knitr::opts_chunk$set( echo = TRUE, message = FALSE, warning = FALSE, eval = FALSE ) ``` # Version History & Changelog This document tracks the development history of mLLMCelltype, including major releases, feature additions, bug fixes, and other significant changes. ## Version 1.0.0 (2023-11-15) ### Initial Release - First public release of mLLMCelltype - Core functionality for cell type annotation using LLMs - Support for OpenAI (GPT-3.5, GPT-4) and Anthropic (Claude) models - Basic consensus mechanism - Integration with Seurat ## Version 1.1.0 (2024-01-20) ### Features - Added support for Google's Gemini models - Implemented structured deliberation process for controversial clusters - Added uncertainty quantification with consensus proportion and Shannon entropy - Improved caching system for API responses - Added Python implementation ### Bug Fixes - Fixed issue with marker gene sorting - Corrected handling of cluster indices - Improved error messages for API failures ### Documentation - Added comprehensive README - Created example notebooks - Added function documentation ## Version 1.2.0 (2024-03-10) ### Features - Added support for DeepSeek, Qwen, and Zhipu models - Implemented hierarchical annotation capability - Added visualization functions for uncertainty metrics - Improved handling of rate limits and API errors - Added batch processing for large datasets ### Bug Fixes - Fixed consensus calculation for edge cases - Corrected handling of empty API responses - Improved error handling for network issues ### Documentation - Added benchmarking results - Updated examples with new models - Expanded troubleshooting guide ## Version 1.3.0 (2024-05-15) ### Features - Added support for Stepfun, MiniMax, and OpenRouter models - Implemented custom prompt templates - Added provider-specific parameter customization - Improved performance with parallel processing - Enhanced caching with persistent storage ### Bug Fixes - Fixed issue with discussion logs formatting - Corrected handling of special characters in marker genes - Improved robustness against API changes ### Documentation - Added case studies for different tissue types - Created advanced usage guide - Updated installation instructions for all dependencies ## Version 1.4.0 (2024-07-01) ### Features - Added support for Grok models from X.AI - Updated Claude model support to include Claude 3.7 Sonnet - Updated Gemini model support to include Gemini 2.5 Pro - Improved consensus mechanism with weighted voting - Enhanced visualization capabilities - Added support for spatial transcriptomics data ### Bug Fixes - Fixed consensus result printing for controversial clusters - Corrected model mapping for Claude 3.7 Sonnet - Fixed undefined variable issue in consensus validation - Improved Seurat object integration ### Documentation - Created comprehensive documentation website with pkgdown - Added new vignettes for specific use cases - Updated examples with latest models ## Version 1.4.1 (2024-07-15) ### Bug Fixes - Fixed issue with printing consensus results for controversial clusters - Corrected model mapping in anthropic.py to properly use Claude 3.7 Sonnet - Fixed undefined has_names variable in consensus validation - Improved test_pbmc3k.R and added to .gitignore to prevent API key leakage ### Documentation - Updated model lists in documentation - Clarified API key setup instructions - Improved error messages for common issues ## Upcoming Features The following features are planned for future releases: ### Version 1.5.0 (Planned) - Integration with additional single-cell analysis frameworks - Enhanced support for multi-modal data - Improved performance for large datasets - Advanced visualization tools - Expanded benchmarking across diverse tissues and species ### Version 2.0.0 (Planned) - Complete redesign of the consensus mechanism - Integration with reference-based methods - Support for custom model fine-tuning - Interactive web interface for annotation review - Comprehensive benchmarking framework ## Breaking Changes This section documents breaking changes that may require updates to your code. ### Version 1.2.0 - Changed the default value of `top_gene_count` from 5 to 10 - Modified the return structure of `interactive_consensus_annotation()` to include additional metadata - Renamed `uncertainty_score` to `shannon_entropy` for clarity ### Version 1.3.0 - Changed the API for custom model registration - Modified the caching system to use a different file structure - Updated the required R version to 4.0.0 or higher ### Version 1.4.0 - Changed the default models used in examples to Claude 3.7 and Gemini 2.5 - Modified the return structure of `annotate_cell_types()` to include more metadata - Updated the required package versions for several dependencies ## Deprecation Notices The following features are deprecated and will be removed in future versions: - `simple_consensus()` function (since v1.2.0): Use `interactive_consensus_annotation()` instead - `basic_visualization()` function (since v1.3.0): Use the new visualization functions instead - Support for older model versions will be gradually phased out as providers retire them ## Acknowledgments We would like to thank all contributors who have helped improve mLLMCelltype: - Core developers: Chen Yang, [List other core developers] - Contributors: [List contributors] - Users who reported issues and suggested improvements ## How to Cite If you use mLLMCelltype in your research, please cite: ``` Yang, C., et al. (2024). mLLMCelltype: Multi-LLM Consensus Architecture for Robust Cell Type Annotation. bioRxiv 2024.04.10.647852; doi: https://doi.org/10.1101/2024.04.10.647852 ``` ## Feedback and Contributions We welcome feedback and contributions to improve mLLMCelltype. Please see our [Contributing Guide](https://cafferyang.com/mLLMCelltype/articles/contributing-guide.html) for details on how to contribute. ## Next Steps Now that you've reviewed the version history, you can: - [Return to the introduction](https://cafferyang.com/mLLMCelltype/articles/introduction.html) to get started with mLLMCelltype - [Explore advanced features](https://cafferyang.com/mLLMCelltype/articles/advanced-features.html) to learn about the latest capabilities - [Check the FAQ](https://cafferyang.com/mLLMCelltype/articles/faq.html) for answers to common questions