**Motivation:** I am studying graph isomorphism problem. I am trying to construct a partitioning method to reduce search cases . **Construction:** $G$ is a $r$ regular graph, $k$ connected( not a complete , cycle graph). A vertex of $G$ is $x_1$. All vertices which are not adjacent to $x_1$ create a sub-graph $C_1$. All vertices adjacent to $x_1$ create a sub-graph $, D_1 $. A vertex of $D_1$ is $x_2$. Using same method, based on adjacency of $x_2$ , $D_1$ can be divided. All vertices which are not adjacent to $x_2$ create a sub-graph $C_2$. All vertices adjacent to $x_2$ create a sub-graph $, D_2 $. In general , $ D_{y-1} $ is a graph and can be divided/ partitioned in to 2 sub graphs $C_y, D_y $ . At this stage, let me restrict the problem for simplicity of computation. Restrictions are- 1. $C_y, D_y $ are $s_y , t_y>0 $ regular graphs respectively for all iteration $y$ 2. $C_y, D_y $ cannot be complete bipartite graph (utility graph), complete graph or disjoint union of complete graphs. So, $ D_{y-1} $ is a $t_{y-1}$ regular graph and can be devided/ partitioned in to 2 sub graphs $C_y, D_y $ . $C_y, D_y $ are $s_y , t_y $ regular graphs respectively(given condition). $G$ can be divided/ partitioned maximum $\log_2(|G|)$ times , using this dividing process recursively . **Matrix representation :** $A$ is an adjacency matrix of a $r$-regular graph $G$. The matrix A can be divided into 4 sub-matrices based on adjacency of vertex $x_1 \in G$. $A_x$ is the adjacency matrix of the graph $(G-x_1)$, where $C_1$ is the adjacency matrix of the graph created by vertices which are not adjacent to $x_1$, and $D_1$ is the adjacency matrix of the graph created by vertices which are adjacent to $x_1$. $C_1,D_1$ are sub-graphs(regular) of graph $G$, $|C_1|>|D_1|$ where $|C_1|,|D_1|$ are total vertices number of graph $C_1,D_1$ respectively. $$ A_x = \left( \begin{array}{ccc} C_1 & E_1 \\ E_1^{T} & D_1 \\ \end{array} \right) $$ again, this process can be done recursively, where $A_{y+1}=D_y$, $y=$ iteration number of the recursive process. $$ A_yx = \left( \begin{array}{ccc} C_y & E_y \\ E_y^{T} & D_{y} \\ \end{array} \right) $$ $A_x$(=$A_1x$) is the matrix of 1st iteration, for 2nd iteration, $A_x$ matrix would be $A_2x$. **How restrictions can be lifted later:** 1. If $C_y, D_y $ are not regular graphs for iteration $y$, then $C_y $ or $ D_y $ can be divided into regular sub graphs where each sub graph has same valency. It is well known, from GI perspective, that , Irregular graph is easier to partition than regular graph to determine GI. So, if irregular $C_y , D_y $ will not increase search cases . 2. $C_y, D_y $ cannot be complete bipartite(utility graph), complete or disjoint union of complete graphs but GI of these graphs are easier. **Claim:** *It is not possible to have an $E_y$ matrix as a zero matrix, i.e., it is not possible to have disconnected sub-graphs $C_y,D_y$ under the given conditions that $G$ is $k$ connected $r$ regular and $C_y , D_y$ are always regular(which are not complete bipartite, complete graph nor disjoint union of complete graphs) graphs in this recursive process.* ***Argument:*** see http://mathoverflow.net/questions/211894/possibility-of-disconnected-subgraphs-of-a-k-connected-r-regular-graph-under?lq=1 and http://mathoverflow.net/questions/212482/decomposition-of-a-regular-graph-and-connected-subgraphs?lq=1 this post. **Question: Is it possible to partition a graph always as described above?**