I do not know if I can add much more to what has already been stated here, but here goes.
At my insistence, my employer purchased JMP so that I could perform the type(s) of analysis required for and by our most demanding client. While most government contracts are gray, this particular client wanted to go deeper than “what would happen if we implemented this?”¹ Or, as he put it, he wanted his study “to have a methodology and results that were defensible.” That meant following a statistical process: design of experiments, a data collection plan based on the DoE, modeling and analysis of the data, and inferencing the results from statistical analysis.
Prior to our acquisition of JMP, everything was performed in Excel. Depending on who was processing the data the workbooks that were created ran anywhere from mediocre to why. Despite the large user base, Excel is still at its core a powerful accounting ledger, so what our management incorrectly deemed to be statistical analysis was nothing more than summary analysis.² Proving this particular client’s need was not going to happen in Excel.
When we acquired a JMP license, my first thought was that a data table looks very similar to a spreadsheet, but I quickly found and realized that where Excel and other spreadsheet software typically have the cell as the base object; that is, each of the 6,871,947,674 cells is independent having no relation to any other cell unless otherwise defined by the user. As I had prior experience in SAS, it became rapidly apparent that a data table is a data model in waiting. As others have noted, columns serve as either independent variables (predictors) or dependent variables (responses), while the rows in a JMP data table are observations.
JMP’s paradigm prevents users from engaging in some of the more atrocious way in which people use Excel; such as putting multiple “tables” on a single worksheet instead of being treated as independent objects that should occupy their own worksheet. Excel while seemingly having a broad range of graphs, pales in comparison to the Graph Builder platform.
The various platforms offered in JMP have no equivalent in Excel outside of perhaps third-party add-ins. For people inexperienced with statistics, the Analysis ToolPak add-in that included, but not pre-installed in Excel reinforces the misconception that there is not much to performing statistics. Want to design an experiment? Can you employ various techniques to determine if a data set is from a normally distributed population? Need to perform analysis on non-parametric data? Do you want to perform pairwise analysis to determine the factors in your model that are significantly different? If you are using Excel, forget about addressing such needs.
Recently, a co-worker an I showed the president of the company how he could quickly explore data in JMP. The Distribution platform alone sold him, as he saw that with little effort he could rapidly see how data was distributed with histograms and box plots, as well as get quantiles and summary statistics. The capabilities of Graph Builder blew his mind. Our president later asked me if JMP can perform SQL queries, t which I answered, “Yes.” I provided him with the built-in PDF books included with JMP where he how to perform such queries.
Simply put, true data discovery and statistical analtysis software, such as JMP, are far better suited to analytics than the kludges that are applied in Excel. Excel is not designed to perform much beyond reporting summary statistics and basic graphs.
¹ It is often the case that government contracts are posed by non-technical persons at the management level. More often than not, the contractor needs to guide their client to a solid, and achievable, objective given the biding price and contract period of performance.
² One of the major issues data analysts and data scientists face is getting their supervisors and clients to realize that the generation of descriptive (summary) statistics is not the application of statistics, or more properly, statical science and data analytics that leads to statistical inference.