- Mastering Machine Learning with R(Second Edition)
- Cory Lesmeister
- 304字
- 2021-07-09 18:23:54
Deployment
If everything is done according to the plan up to this point, it might just come down to flipping a switch and your model goes live. Assuming that this is not the case, here are the tasks for this step:
- Deploying the plan.
- Monitoring and maintaining the plan.
- Producing the final report.
- Reviewing the project.
After the deployment and monitoring/maintenance and underway, it is crucial for you and those who will walk in your steps to produce a well-written final report. This report should include a white paper and briefing slide. I have to say that I resisted the drive to put my findings in a white paper as I was an indentured servant to the military's passion for PowerPoint slides. However, slides can and will be used against you, cherry-picked or misrepresented by various parties for their benefit. Trust me, that just doesn't happen with a white paper as it becomes an extension of your findings and beliefs. Use PowerPoint to brief stakeholders, but use that the white paper as the document of record and as a preread, should your organization insist on one. It is my standard procedure to create this white paper in R using knitr and LaTex.
Now for the all-important process review, you may have your own proprietary way of conducting it; but here is what it should cover, whether you conduct it in a formal or informal way:
- What was the plan?
- What actually happened?
- Why did it happen or not happen?
- What should be sustained in future projects?
- What should be improved upon in future projects?
- Create an action plan to ensure sustainment and improvement happen
That concludes the review of the CRISP-DM process, which provides a comprehensive and flexible framework to guarantee the success of your project and make you an agent of change.
- Python絕技:運用Python成為頂級數據工程師
- 大數據可視化
- Oracle RAC 11g實戰指南
- 工業大數據分析算法實戰
- 大數據:規劃、實施、運維
- Neural Network Programming with TensorFlow
- Hadoop大數據實戰權威指南(第2版)
- OracleDBA實戰攻略:運維管理、診斷優化、高可用與最佳實踐
- Hadoop 3.x大數據開發實戰
- Microsoft Power BI數據可視化與數據分析
- 數據挖掘原理與SPSS Clementine應用寶典
- 網站數據庫技術
- 一本書講透Elasticsearch:原理、進階與工程實踐
- Hands-On System Programming with C++
- 大數據隱私保護技術與治理機制研究