In this project, we gather reproduction attempts from the Challenger study. In particular, we try to reperform some of the analysis provided in *Risk Analysis of the Space Shuttle: Pre-Challenger Prediction of Failure* by *Siddhartha R. Dalal, Edward B. Fowlkes, Bruce Hoadley* published in *Journal of the American Statistical Association*, Vol. 84, No. 408 (Dec., 1989), pp. 945-957 and available at [here](https://studies2.hec.fr/jahia/webdav/site/hec/shared/sites/czellarv/acces_anonyme/OringJASA_1989.pdf) (here is [the official JASA webpage](http://www.jstor.org/stable/2290069)). On the fourth page of this article, they indicate that the maximum likelihood estimates of the logistic regression using only temperature are: $`\hat{\alpha}=5.085`$ and $`\hat{\beta}=-0.1156`$ and their asymptotic standard errors are $`s_{\hat{\alpha}}=3.052`$ and $`s_{\hat{\beta}}=0.047`$. The Goodness of fit indicated for this model was $`G^{2} = 18.086`$ with 21 degrees of freedom. Our goal is to reproduce the computation behind these values and the Figure 4 of this article, possibly in a nicer looking way. [*Here is our successful replication of Dalal et al. results using R*](challenger.pdf). 1. Try to **replicate the computation** from Dalal et al. In case it helps, we provide you with two implementations of this case study but we encourage you to **reimplement them by yourself** using both your favourite language and an other language you do not know yet. - A [Jupyter Python3 notebook](src/Python3/challenger.ipynb) - An [Rmarkdown document](src/R/challenger.Rmd) 2. Then **update the [meta-study result table available here](results.org) with your own results**.