If I understand the question properly, you can have ONE single algorithm, which will work by accepting one of several *reference* graphs as its input (in addition to the input of the unknown graph which isomorphism with the reference graph is to be asserted).

It appears that you seek to assert whether a given graph is *exactly* identical to another graph rather than asserting if the graphs are isomorph relative to a particular set of operations or characteristics. This implies that the algorithm be supplied some *specific* reference graph, rather than working off some set of "abstract" rules such as whether neither graphs have loops, or both graphs are fully connected etc. even though the graphs may differ in some other fashion.

**Edit**, following confirmation that:

*Yeah, the algorithm would be supplied a reference graph (which is the answer), and will then check the user's graph to see if it is isomorphic (including the values of edges and nodes) to the reference*

In that case, **yes, it is quite possible to develop a relatively simple algorithm** which would assert isomorphism of these two graphs. Note that the considerations mentioned in other remarks and answers and relative to the fact that the problem may be *NP-Hard* are merely indicative that a simple algorithm [or *any* algorithm for that matter] may not be sufficient to solve the problem *in a reasonable amount of time* for graphs which size and complexity are too big. However, assuming relatively small graphs and taking *advantage* (!) of the requirement that the weights of edges and nodes also need to match, the following algorithm should generally be applicable.

**General idea**:

For each sub-graph that is disconnected from the rest of the graph, identify one (or possibly several) node(s) in the user graph which must match a particular node of the reference graph. By following the paths from this node [in an orderly fashion, more on this below], assert the identity of other nodes and/or determine that there are some nodes which cannot be matched (and hence that the two structures are not isomorphic).

**Rough**** pseudo code**:

1. For both the reference and the user supplied graph, **make the the list of their** *Connected Components* i.e. the list of sub-graphs therein which are disconnected from the rest of the graph. Finding these connected components is done by following either a breadth-first or a depth-first path from starting at a given node and "marking" all nodes on that path with an arbitrary [typically incremental] element ID number. Once a given path has been fully visited, repeat the operation from any other non-marked node, and do so until there are no more non-marked nodes.

2. Build a **"database" of the characteristics of each graph**.
This will be useful to identify matching candidates and also to determine, early on, instances of non-isomorphism.
Each "database" would have two kinds of "records" : node and edge, with the following fields, respectively:
- node_id, Connected_element_Id, node weight, number of outgoing edges, number of incoming edges, sum of outgoing edges weights, sum of incoming edges weight.
node
- edge_id, Connected_element_Id, edge weight, node_id_of_start, node_id_of_end, weight_of_start_node, weight_of_end_node

3. Build a **database of the Connected elements** of each graph

Each record should have the following fields: Connected_element_id, number of nodes, number of edges, sum of node weights, sum of edge weights.

4. [optionally] **Dispatch the easy cases of non-isomorphism**:

4.a mismatch of the number of connected elements

4.b mismatch of of number of connected elements, grouped-by all fields but the id (number of nodes, number of edges, sum of nodes weights, sum of edges weights)

5. For each connected element in the reference graph

5.1 Identify candidates for the matching connected element in the user-supplied graph. The candidates must have the same connected element characteristics (number of nodes, number of edges, sum of nodes weights, sum of edges weights) *and* contain the same list of nodes and edges, again, counted by grouping by all characteristics but the id.

5.2 For each candidate, finalize its confirmation as an isomorph graph relative to the corresponding connected element in the reference graph. This is done by starting at a candidate node-match, i.e. a node, hopefully unique which has the exact same characteristics on both graphs. In case there is not such a node, one needs to disqualify each possible candidate until isomorphism can be confirmed (or all candidates are exhausted). For the candidate node match, walk the graph, in, say, breadth first, and by finding matches for the other nodes, on the basis of the direction and weight of the edges and weight of the nodes.

The main tricks with this algorithm is are to keep proper accounting of the candidates (whether candidate connected element at higher level or candidate node, at lower level), and to also remember and mark other identified items as such (and un-mark them if somehow the hypothetical candidate eventually proves to not be feasible.)

I realize the above falls short of a formal algorithm description, but that should give you an idea of what is required and possibly a starting point, would you decide to implement it.

You can remark that the requirement of matching nodes and edges weights may appear to be an added *difficulty* for asserting isomorphism, effectively *simplify* the algorithm because the underlying node/edge characteristics render these more unique and hence make it more likely that the algorithm will a) find unique node candidates and b) either quickly find other candidates on the path and/or quickly assert non-isomorphism.