How to index a csv file:
To index a csv file you need to read it as a binary file instead of a text file. Use 128, 256 or 512 block size. To build the index, you scan your file looking for the beginning of each record and then create an index file like this:
key-value-1, 0, 0
........
........
key-value-n, block, offset
key-value is the value of the key you are indexing on. Can be a composite key. block is the block number the record starts at (be aware that your records can span more than one block), and offset is a number between 0 and block-size-1 which is the offset into that block. To retrieve your record you look up the key on the index file (using perhaps binary search) and then use the block-offset to access your record directly.
You can also create multiple index files at the same time if you need to search for different criteria.
If you have CR-LF
as end of line marker be aware that the CR
can be at the exact end of the block while LF
will be at the very beginning of the next. You need to be aware of some special cases like these. Once you have created this index file (or files) you can sort it by the key and you are good to go.
Alternatively, if your software allows fast memory block moving (like C++ memmove), you can use insertion sort in combination with binary search. That way, after you finish building your index(es) they are already sorted. This is particularly efficient if the index entries are being added from a file that is being captured using a slow input device (eg. keyboard). If you are managing large amounts of records consider using a B-Tree structure for your index(es).
This schema, allows your csv database to accept record additions, deletions and updates. Additions are made at the end of the file. To delete a record, just change the first character of the record with a unique character like 0x0
and of course delete the entry from the index file. Updates can be achieved by deleting and then adding the updated record at the end of the file.
This will create some need for garbage collection on your database but most DBMS, if not all, do so. Periodically rebuild your index and get rid of the deleted records.
NOTE: For a code implementation look at this answer. Indexing a 9 Gb csv file of 6867839 lines took about 6 minutes. Joblib is quite slow to store the index on disk. The index file was 134 Mb.
Let's use a toy csv example. We will index the file by record number. For the sake of the example we will store the record number in the key part of the index although this is clearly unnecessary.
strings,numbers,colors
string1,1,blue
string2,2,red
string3,3,green
string4,4,yellow
The index file will be stored on the list idx:
idx
[[0, 0, 0], [1, 0, 24], [2, 0, 40], [3, 0, 55], [4, 0, 72], [5, 0, -1]]
Note the -1 at the last index element to indicate end of index file in case of a sequential access. You can use a code like this to access any individual row of the csv file by record number:
def get_rec(n=1,binary=False):
n=1 if n<0 else n+1
s=b'' if binary else ''
if len(idx)==0:return ''
if idx[n-1][2]==-1:return ''
f.seek(idx[n-1][1]*BLKSIZE+idx[n-1][2])
buff=f.read(BLKSIZE)
x=buff.find(b'\r')
while x==-1:
s=s+buff if binary else s+buff.decode()
buff=f.read(BLKSIZE)
x=buff.find(b'\r')
return s+buff[:x]+b'\r\n' if binary else s+buff[:x].decode()