dbf (also known as python dbase) is a module for reading/writing dBase III, FP, VFP, and Clipper .dbf database files. It's an ancient format that still finds lots of use (the most common I'm aware of is retrieving legacy data so it can be stored in a newer database system; other uses include GIS, stand-alone programs such as Family History, Personal Finance, etc.).
Table -- represents a single .dbf/.dbt (or .fpt) file combination and provides access to records; suports the sequence access and 'with' protocols. Temporary tables can also live entirely in memory.
Record -- repesents a single record/row in the table, with field access returning native or custom data types; supports the sequence, mapping, attribute access (with the field names as the attributes), and 'with' protocols. Updates to a record object are reflected on disk either immediately (using gather() or write()), or at the end of a 'with' statement.
Index -- nonpersistent index for a table.
Fields: dBase III (Null not supported)
    Character --> unicode
    Date      --> datetime.date or None
    Logical   --> bool or None
    Memo      --> unicode or None
    Numeric   --> int/float depending on field definition or None
    Float     --> same as numeric
Clipper (Null not supported)
    Character --> unicode  (character fields can be up to 65,519)
Foxpro (Null supported)
    General   --> str (treated as binary)
    Picture   --> str (treated as binary)
Visual Foxpro (Null supported)
    Currency  --> decimal.Decimal
    douBle    --> float
    Integer   --> int
    dateTime  --> datetime.datetime
If a field is uninitialized (Date, Logical, Numeric, Memo, General,
Picture) then None is returned for the value.
Custom data types:
Null     -->  used to support Null values
Char     -->  unicode type that auto-trims trailing whitespace, and
              ignores trailing whitespace for comparisons
Date     -->  date object that allows for no date
DateTime -->  datetime object that allows for no datetime
Time     -->  time object that allows for no time
Logical  -->  adds Unknown state to bool's: instead of True/False/None,
              values are Truth, Falsth, and Unknown, with appropriate
              tri-state logic; while bool(None) is False, bool(Unknown)
              raises a TypeError;  __index__ of Unknown is 2
Quantum  -->  similar to Logical, but implements boolean algebra (I think)
import datetime
import dbf
table = dbf.Table(':test:', 'name C(25); age N(3,0); birth D; qualified L')
table.open()
for datum in (
        ('Spanky', 7, dbf.Date.fromymd('20010315'), False),
        ('Spunky', 23, dbf.Date(1989, 07, 23), True),
        ('Sparky', 99, dbf.Date(), dbf.Unknown),
        ):
    table.append(datum)
for record in table:
    print record
    print '--------'
    print record[0:3]
    print record['name':'birth']
    print [record.name, record.age, record.birth]
    print '--------'
custom = table.new(
        filename='test_on_disk',
        default_data_types=dict(C=dbf.Char, D=dbf.Date, L=dbf.Logical),
        )
with custom:    # automatically opened and closed
    for record in table:
        custom.append(record)
    for record in custom:
        dbf.write(record, name=record.name.upper())
        print record
        print '--------'
        print record[0:3]
        print record['name':'birth']
        print [record.name, record.age, record.birth]
        print '--------'
table.close()