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File Organisation: The database is stored as a collection of files. Each file is a 
sequence of records. A record is a sequence of fields. Data is usually stored in the 
form of records. Records usually describe entities and their attributes, e.g., an 
employee record represents an employee entity and each field value in the record 
specifies some attributes of that employee, such as Name, Birth-date, Salary or 
Supervisor.
If every record in the file has exactly the same size (in bytes), the file is said to be 
made up of fixed length records. If different records in the file have different sizes, 
the file is said to be made up of variable length records.
Spanned versus Unspanned Records
• The records of a file must be allocated to disk blocks because a block is the 
unit of data transfer between disk and memory. When the block size is larger 
than the record size, each block will contain numerous records, although 
some of the files may have unusually large records that cannot fit in one 
block.
• Suppose that block size is B bytes. For a file of fixed length records of size R 
bytes, with B £ R, then we can fit
bfr = -
R_
records per block. The value of bfr is called the blocking factor.
• In general, R may not divide B exactly, so we have some unused space in each 
block equal to B - (bfr * R) bytes.
• To utilize this unused space, we can store part of a record on one block and 
the rest on another. A pointer at the end of the first block points to the block 
containing the remainder of the record. This organisation is called spanned.
Page 2


File Organisation: The database is stored as a collection of files. Each file is a 
sequence of records. A record is a sequence of fields. Data is usually stored in the 
form of records. Records usually describe entities and their attributes, e.g., an 
employee record represents an employee entity and each field value in the record 
specifies some attributes of that employee, such as Name, Birth-date, Salary or 
Supervisor.
If every record in the file has exactly the same size (in bytes), the file is said to be 
made up of fixed length records. If different records in the file have different sizes, 
the file is said to be made up of variable length records.
Spanned versus Unspanned Records
• The records of a file must be allocated to disk blocks because a block is the 
unit of data transfer between disk and memory. When the block size is larger 
than the record size, each block will contain numerous records, although 
some of the files may have unusually large records that cannot fit in one 
block.
• Suppose that block size is B bytes. For a file of fixed length records of size R 
bytes, with B £ R, then we can fit
bfr = -
R_
records per block. The value of bfr is called the blocking factor.
• In general, R may not divide B exactly, so we have some unused space in each 
block equal to B - (bfr * R) bytes.
• To utilize this unused space, we can store part of a record on one block and 
the rest on another. A pointer at the end of the first block points to the block 
containing the remainder of the record. This organisation is called spanned.
• If records are not allowed to cross block boundaries, the organisation is 
called unspanned.
Allocating File Blocks on Disk: There are several standard techniques for allocating 
the blocks of a file on disk
• Contiguous Allocation: The file blocks are allocated to consecutive disk 
blocks. This makes reading the whole file very fast.
• Linked Allocation: In this, each file contains a pointer to the next file block.
• Indexed Allocation: Where one or more index blocks contain pointers to the 
actual file blocks.
Files of Unordered Records (Heap Files): In the simplest type of organization 
records are placed in the file in the order in which they are inserted, so new records 
are inserted at the end of the file. Such an organisation is called a heap or pile file. 
This organisation is often used with additional access paths, such as the 
secondary indexes.
In this type of organisation, inserting a new record is very efficient. Linear search is 
used to search a record.
Files of Ordered Records (Sorted Files): We can physically order the records of a 
file on disk based on the values of one of their fields called the ordering field. This 
leads to an ordered or sequential file. If the ordering field is also a key field of the 
file, a field guaranteed to have a unique value in each record, then the field is called 
the ordering key for the file. Binary searching is used to search a record.
Indexing Structures for Files: Indexing mechanism are used to optimize certain 
accesses to data (records) managed in files, e.g., the author catalog in a library is a 
type of index. Search key (definition) attribute or combination of attributes used to 
look-up records in a file.
An index file consists of records (called index entries) of the form.
Search, key value Pointer of block in data file
Indexing structures for files
Index files are typically much smaller than the original file because only the values 
for search key and pointer are stored. The most prevalent types of indexes are 
based on ordered files (single-level indexes) and tree data structures (multilevel 
indexes).
Types of Single Level Ordered Indexes: In an ordered index file, index enteries are 
stored sorted by the search key value. There are several types of ordered Indexes 
Primary Index: A primary index is an ordered file whose records are of fixed length 
with two fields. The first field is of the same data type as the ordering key field 
called the primary key of the data file and the second field is a pointer to a disk 
block (a block address). •
• There is one index entry in the index file for each block in the data file.
• Indexes can also be characterised as dense or sparse.
• Dense index A dense index has an index entry for every search key value in 
the data file.
• Sparse index A sparse index (non-dense), on the other hand has index entries 
for only some of the search values, specifically one for each block.
Page 3


File Organisation: The database is stored as a collection of files. Each file is a 
sequence of records. A record is a sequence of fields. Data is usually stored in the 
form of records. Records usually describe entities and their attributes, e.g., an 
employee record represents an employee entity and each field value in the record 
specifies some attributes of that employee, such as Name, Birth-date, Salary or 
Supervisor.
If every record in the file has exactly the same size (in bytes), the file is said to be 
made up of fixed length records. If different records in the file have different sizes, 
the file is said to be made up of variable length records.
Spanned versus Unspanned Records
• The records of a file must be allocated to disk blocks because a block is the 
unit of data transfer between disk and memory. When the block size is larger 
than the record size, each block will contain numerous records, although 
some of the files may have unusually large records that cannot fit in one 
block.
• Suppose that block size is B bytes. For a file of fixed length records of size R 
bytes, with B £ R, then we can fit
bfr = -
R_
records per block. The value of bfr is called the blocking factor.
• In general, R may not divide B exactly, so we have some unused space in each 
block equal to B - (bfr * R) bytes.
• To utilize this unused space, we can store part of a record on one block and 
the rest on another. A pointer at the end of the first block points to the block 
containing the remainder of the record. This organisation is called spanned.
• If records are not allowed to cross block boundaries, the organisation is 
called unspanned.
Allocating File Blocks on Disk: There are several standard techniques for allocating 
the blocks of a file on disk
• Contiguous Allocation: The file blocks are allocated to consecutive disk 
blocks. This makes reading the whole file very fast.
• Linked Allocation: In this, each file contains a pointer to the next file block.
• Indexed Allocation: Where one or more index blocks contain pointers to the 
actual file blocks.
Files of Unordered Records (Heap Files): In the simplest type of organization 
records are placed in the file in the order in which they are inserted, so new records 
are inserted at the end of the file. Such an organisation is called a heap or pile file. 
This organisation is often used with additional access paths, such as the 
secondary indexes.
In this type of organisation, inserting a new record is very efficient. Linear search is 
used to search a record.
Files of Ordered Records (Sorted Files): We can physically order the records of a 
file on disk based on the values of one of their fields called the ordering field. This 
leads to an ordered or sequential file. If the ordering field is also a key field of the 
file, a field guaranteed to have a unique value in each record, then the field is called 
the ordering key for the file. Binary searching is used to search a record.
Indexing Structures for Files: Indexing mechanism are used to optimize certain 
accesses to data (records) managed in files, e.g., the author catalog in a library is a 
type of index. Search key (definition) attribute or combination of attributes used to 
look-up records in a file.
An index file consists of records (called index entries) of the form.
Search, key value Pointer of block in data file
Indexing structures for files
Index files are typically much smaller than the original file because only the values 
for search key and pointer are stored. The most prevalent types of indexes are 
based on ordered files (single-level indexes) and tree data structures (multilevel 
indexes).
Types of Single Level Ordered Indexes: In an ordered index file, index enteries are 
stored sorted by the search key value. There are several types of ordered Indexes 
Primary Index: A primary index is an ordered file whose records are of fixed length 
with two fields. The first field is of the same data type as the ordering key field 
called the primary key of the data file and the second field is a pointer to a disk 
block (a block address). •
• There is one index entry in the index file for each block in the data file.
• Indexes can also be characterised as dense or sparse.
• Dense index A dense index has an index entry for every search key value in 
the data file.
• Sparse index A sparse index (non-dense), on the other hand has index entries 
for only some of the search values, specifically one for each block.
• A primary index is a non-dense (sparse) index, since it includes an entry for 
each disk block of the data file rather than for every search value.
• It is built over ordered and key field of the given table.
Clustering Index: If file records are physically ordered on a non-key field which does 
not have a distinct value for each record that field is called the clustering field. We 
can create a different type of index, called a clustering index, to speed up retrieval 
of records that have the same value for the clustering field.
• A clustering index is also an ordered file with two fields. The first field is of the 
same type as the clustering field of the data file.
• The record field in the clustering index is a block pointer.
• A clustering index is another example of a non-dense index.
• It is possible to have only one index for a file either primary index or clustering 
index.
Secondary Index: A secondary index provides a secondary means of accessing a 
file for which some primary access already exists. The secondary index may be on 
a field which is a candidate key and has a unique value in every record or a non-key 
with duplicate values. The index is an ordered file with two fields. The first field is 
of the same data type as some non-ordering field of the data file that is an indexing 
field. The second field is either a block pointer or a record pointer. A secondary 
index usually needs more storage space and longer search time than does a 
primary index.
Multilevel Indexes: The idea behind a multilevel index is to reduce the part of the 
index. A multilevel index considers the index file, which will be referred now as the 
first (or base) level of a multilevel index. Therefore, we can create a primary index 
for the first level; this index to the first level is called the second level of the 
multilevel index and so on.
The basic idea is to create the index file for the previously created index file so that 
cost of indexing can be further reduced and memory can be used efficiently. 
Dynamic Multilevel Indexes Using B-Trees and B+ -Trees: There are two multilevel 
indexes
B-T rees
• When data volume is large and does not fit in memory, an extension of the 
binary search tree to disk based environment is the B-tree.
• In fact, since the B-tree is always balanced (all leaf nodes appear at the same 
level), it is an extension of the balanced binary search tree.
• The problem which the B-tree aims to solve is given a large collection of 
objects, each having a key and a value, design a disk based index structure 
which efficiently supports query and update.
• A B-tree of order p, when used as an access structure on a key field to search 
for records in a data file, can be defined as follows
1. Each internal node in the B-tree is of the form
where, q s p Each Pi is a tree pointer to another node in the B-tree. Each
P ,
Page 4


File Organisation: The database is stored as a collection of files. Each file is a 
sequence of records. A record is a sequence of fields. Data is usually stored in the 
form of records. Records usually describe entities and their attributes, e.g., an 
employee record represents an employee entity and each field value in the record 
specifies some attributes of that employee, such as Name, Birth-date, Salary or 
Supervisor.
If every record in the file has exactly the same size (in bytes), the file is said to be 
made up of fixed length records. If different records in the file have different sizes, 
the file is said to be made up of variable length records.
Spanned versus Unspanned Records
• The records of a file must be allocated to disk blocks because a block is the 
unit of data transfer between disk and memory. When the block size is larger 
than the record size, each block will contain numerous records, although 
some of the files may have unusually large records that cannot fit in one 
block.
• Suppose that block size is B bytes. For a file of fixed length records of size R 
bytes, with B £ R, then we can fit
bfr = -
R_
records per block. The value of bfr is called the blocking factor.
• In general, R may not divide B exactly, so we have some unused space in each 
block equal to B - (bfr * R) bytes.
• To utilize this unused space, we can store part of a record on one block and 
the rest on another. A pointer at the end of the first block points to the block 
containing the remainder of the record. This organisation is called spanned.
• If records are not allowed to cross block boundaries, the organisation is 
called unspanned.
Allocating File Blocks on Disk: There are several standard techniques for allocating 
the blocks of a file on disk
• Contiguous Allocation: The file blocks are allocated to consecutive disk 
blocks. This makes reading the whole file very fast.
• Linked Allocation: In this, each file contains a pointer to the next file block.
• Indexed Allocation: Where one or more index blocks contain pointers to the 
actual file blocks.
Files of Unordered Records (Heap Files): In the simplest type of organization 
records are placed in the file in the order in which they are inserted, so new records 
are inserted at the end of the file. Such an organisation is called a heap or pile file. 
This organisation is often used with additional access paths, such as the 
secondary indexes.
In this type of organisation, inserting a new record is very efficient. Linear search is 
used to search a record.
Files of Ordered Records (Sorted Files): We can physically order the records of a 
file on disk based on the values of one of their fields called the ordering field. This 
leads to an ordered or sequential file. If the ordering field is also a key field of the 
file, a field guaranteed to have a unique value in each record, then the field is called 
the ordering key for the file. Binary searching is used to search a record.
Indexing Structures for Files: Indexing mechanism are used to optimize certain 
accesses to data (records) managed in files, e.g., the author catalog in a library is a 
type of index. Search key (definition) attribute or combination of attributes used to 
look-up records in a file.
An index file consists of records (called index entries) of the form.
Search, key value Pointer of block in data file
Indexing structures for files
Index files are typically much smaller than the original file because only the values 
for search key and pointer are stored. The most prevalent types of indexes are 
based on ordered files (single-level indexes) and tree data structures (multilevel 
indexes).
Types of Single Level Ordered Indexes: In an ordered index file, index enteries are 
stored sorted by the search key value. There are several types of ordered Indexes 
Primary Index: A primary index is an ordered file whose records are of fixed length 
with two fields. The first field is of the same data type as the ordering key field 
called the primary key of the data file and the second field is a pointer to a disk 
block (a block address). •
• There is one index entry in the index file for each block in the data file.
• Indexes can also be characterised as dense or sparse.
• Dense index A dense index has an index entry for every search key value in 
the data file.
• Sparse index A sparse index (non-dense), on the other hand has index entries 
for only some of the search values, specifically one for each block.
• A primary index is a non-dense (sparse) index, since it includes an entry for 
each disk block of the data file rather than for every search value.
• It is built over ordered and key field of the given table.
Clustering Index: If file records are physically ordered on a non-key field which does 
not have a distinct value for each record that field is called the clustering field. We 
can create a different type of index, called a clustering index, to speed up retrieval 
of records that have the same value for the clustering field.
• A clustering index is also an ordered file with two fields. The first field is of the 
same type as the clustering field of the data file.
• The record field in the clustering index is a block pointer.
• A clustering index is another example of a non-dense index.
• It is possible to have only one index for a file either primary index or clustering 
index.
Secondary Index: A secondary index provides a secondary means of accessing a 
file for which some primary access already exists. The secondary index may be on 
a field which is a candidate key and has a unique value in every record or a non-key 
with duplicate values. The index is an ordered file with two fields. The first field is 
of the same data type as some non-ordering field of the data file that is an indexing 
field. The second field is either a block pointer or a record pointer. A secondary 
index usually needs more storage space and longer search time than does a 
primary index.
Multilevel Indexes: The idea behind a multilevel index is to reduce the part of the 
index. A multilevel index considers the index file, which will be referred now as the 
first (or base) level of a multilevel index. Therefore, we can create a primary index 
for the first level; this index to the first level is called the second level of the 
multilevel index and so on.
The basic idea is to create the index file for the previously created index file so that 
cost of indexing can be further reduced and memory can be used efficiently. 
Dynamic Multilevel Indexes Using B-Trees and B+ -Trees: There are two multilevel 
indexes
B-T rees
• When data volume is large and does not fit in memory, an extension of the 
binary search tree to disk based environment is the B-tree.
• In fact, since the B-tree is always balanced (all leaf nodes appear at the same 
level), it is an extension of the balanced binary search tree.
• The problem which the B-tree aims to solve is given a large collection of 
objects, each having a key and a value, design a disk based index structure 
which efficiently supports query and update.
• A B-tree of order p, when used as an access structure on a key field to search 
for records in a data file, can be defined as follows
1. Each internal node in the B-tree is of the form
where, q s p Each Pi is a tree pointer to another node in the B-tree. Each
P ,
is a data pointer to the record whose search key field value is equal to
Kj.
2. Within each node, IC | < K2 < .... < Kq_i
3. Each node has at most p tree pointers.
4. Each node, except the root and leaf nodes, has atleast [(p/2)] tree 
pointers.
5. A node within q tree pointers q s p, has q - 1 search key field values (and 
hence has q -1 data pointers), e.g., A B-tree of order p = 3. The values 
were inserted in the order 8, 5,1, 7, 3,12, 9, 6.
| » | Tree pointer | _ _ | Null pointer | o | Data pointer
B+ Trees
• It is the variation of the B-tree data structure.
• In a B-tree, every value of the search field appears once at some level in the 
tree, along with a data pointer. In a B+-tree, data pointers are stored only at the 
leaf nodes of the tree. Hence, the structure of the leaf nodes differs from the 
structure of internal nodes.
• The pointers in the internal nodes are tree pointers to blocks that are tree 
nodes whereas the pointers in leaf nodes are data pointers.
• B+ Tree's Structure: The structure of the B+-tree of order p is as follows
1. Each internal node is of the form < P|, Ki, P2, K2, ...., Pq-i, Kq_i, Pq> 
where, q s p and each Pi is a tree pointer.
2. Within each internal node, Ki < K2 < K3.... < Kq_i.
3. Each internal node has at most p tree pointers and except root, has 
atleast [(p/ 2)] tree pointers.
4. The root node has atleast two tree pointers, if it is an internal node.
5. Each leaf node is of the form:
< < KjPs > ,< K ;:P. >,....,< K q _ 1 :P. >,Pr .„t > 
where, q s p, each
P ,;
is a data pointer and Pnext points to the next leaf node of the B+-trees.
Difference between B/B+ tree:
The structure of leaf node is different.
Page 5


File Organisation: The database is stored as a collection of files. Each file is a 
sequence of records. A record is a sequence of fields. Data is usually stored in the 
form of records. Records usually describe entities and their attributes, e.g., an 
employee record represents an employee entity and each field value in the record 
specifies some attributes of that employee, such as Name, Birth-date, Salary or 
Supervisor.
If every record in the file has exactly the same size (in bytes), the file is said to be 
made up of fixed length records. If different records in the file have different sizes, 
the file is said to be made up of variable length records.
Spanned versus Unspanned Records
• The records of a file must be allocated to disk blocks because a block is the 
unit of data transfer between disk and memory. When the block size is larger 
than the record size, each block will contain numerous records, although 
some of the files may have unusually large records that cannot fit in one 
block.
• Suppose that block size is B bytes. For a file of fixed length records of size R 
bytes, with B £ R, then we can fit
bfr = -
R_
records per block. The value of bfr is called the blocking factor.
• In general, R may not divide B exactly, so we have some unused space in each 
block equal to B - (bfr * R) bytes.
• To utilize this unused space, we can store part of a record on one block and 
the rest on another. A pointer at the end of the first block points to the block 
containing the remainder of the record. This organisation is called spanned.
• If records are not allowed to cross block boundaries, the organisation is 
called unspanned.
Allocating File Blocks on Disk: There are several standard techniques for allocating 
the blocks of a file on disk
• Contiguous Allocation: The file blocks are allocated to consecutive disk 
blocks. This makes reading the whole file very fast.
• Linked Allocation: In this, each file contains a pointer to the next file block.
• Indexed Allocation: Where one or more index blocks contain pointers to the 
actual file blocks.
Files of Unordered Records (Heap Files): In the simplest type of organization 
records are placed in the file in the order in which they are inserted, so new records 
are inserted at the end of the file. Such an organisation is called a heap or pile file. 
This organisation is often used with additional access paths, such as the 
secondary indexes.
In this type of organisation, inserting a new record is very efficient. Linear search is 
used to search a record.
Files of Ordered Records (Sorted Files): We can physically order the records of a 
file on disk based on the values of one of their fields called the ordering field. This 
leads to an ordered or sequential file. If the ordering field is also a key field of the 
file, a field guaranteed to have a unique value in each record, then the field is called 
the ordering key for the file. Binary searching is used to search a record.
Indexing Structures for Files: Indexing mechanism are used to optimize certain 
accesses to data (records) managed in files, e.g., the author catalog in a library is a 
type of index. Search key (definition) attribute or combination of attributes used to 
look-up records in a file.
An index file consists of records (called index entries) of the form.
Search, key value Pointer of block in data file
Indexing structures for files
Index files are typically much smaller than the original file because only the values 
for search key and pointer are stored. The most prevalent types of indexes are 
based on ordered files (single-level indexes) and tree data structures (multilevel 
indexes).
Types of Single Level Ordered Indexes: In an ordered index file, index enteries are 
stored sorted by the search key value. There are several types of ordered Indexes 
Primary Index: A primary index is an ordered file whose records are of fixed length 
with two fields. The first field is of the same data type as the ordering key field 
called the primary key of the data file and the second field is a pointer to a disk 
block (a block address). •
• There is one index entry in the index file for each block in the data file.
• Indexes can also be characterised as dense or sparse.
• Dense index A dense index has an index entry for every search key value in 
the data file.
• Sparse index A sparse index (non-dense), on the other hand has index entries 
for only some of the search values, specifically one for each block.
• A primary index is a non-dense (sparse) index, since it includes an entry for 
each disk block of the data file rather than for every search value.
• It is built over ordered and key field of the given table.
Clustering Index: If file records are physically ordered on a non-key field which does 
not have a distinct value for each record that field is called the clustering field. We 
can create a different type of index, called a clustering index, to speed up retrieval 
of records that have the same value for the clustering field.
• A clustering index is also an ordered file with two fields. The first field is of the 
same type as the clustering field of the data file.
• The record field in the clustering index is a block pointer.
• A clustering index is another example of a non-dense index.
• It is possible to have only one index for a file either primary index or clustering 
index.
Secondary Index: A secondary index provides a secondary means of accessing a 
file for which some primary access already exists. The secondary index may be on 
a field which is a candidate key and has a unique value in every record or a non-key 
with duplicate values. The index is an ordered file with two fields. The first field is 
of the same data type as some non-ordering field of the data file that is an indexing 
field. The second field is either a block pointer or a record pointer. A secondary 
index usually needs more storage space and longer search time than does a 
primary index.
Multilevel Indexes: The idea behind a multilevel index is to reduce the part of the 
index. A multilevel index considers the index file, which will be referred now as the 
first (or base) level of a multilevel index. Therefore, we can create a primary index 
for the first level; this index to the first level is called the second level of the 
multilevel index and so on.
The basic idea is to create the index file for the previously created index file so that 
cost of indexing can be further reduced and memory can be used efficiently. 
Dynamic Multilevel Indexes Using B-Trees and B+ -Trees: There are two multilevel 
indexes
B-T rees
• When data volume is large and does not fit in memory, an extension of the 
binary search tree to disk based environment is the B-tree.
• In fact, since the B-tree is always balanced (all leaf nodes appear at the same 
level), it is an extension of the balanced binary search tree.
• The problem which the B-tree aims to solve is given a large collection of 
objects, each having a key and a value, design a disk based index structure 
which efficiently supports query and update.
• A B-tree of order p, when used as an access structure on a key field to search 
for records in a data file, can be defined as follows
1. Each internal node in the B-tree is of the form
where, q s p Each Pi is a tree pointer to another node in the B-tree. Each
P ,
is a data pointer to the record whose search key field value is equal to
Kj.
2. Within each node, IC | < K2 < .... < Kq_i
3. Each node has at most p tree pointers.
4. Each node, except the root and leaf nodes, has atleast [(p/2)] tree 
pointers.
5. A node within q tree pointers q s p, has q - 1 search key field values (and 
hence has q -1 data pointers), e.g., A B-tree of order p = 3. The values 
were inserted in the order 8, 5,1, 7, 3,12, 9, 6.
| » | Tree pointer | _ _ | Null pointer | o | Data pointer
B+ Trees
• It is the variation of the B-tree data structure.
• In a B-tree, every value of the search field appears once at some level in the 
tree, along with a data pointer. In a B+-tree, data pointers are stored only at the 
leaf nodes of the tree. Hence, the structure of the leaf nodes differs from the 
structure of internal nodes.
• The pointers in the internal nodes are tree pointers to blocks that are tree 
nodes whereas the pointers in leaf nodes are data pointers.
• B+ Tree's Structure: The structure of the B+-tree of order p is as follows
1. Each internal node is of the form < P|, Ki, P2, K2, ...., Pq-i, Kq_i, Pq> 
where, q s p and each Pi is a tree pointer.
2. Within each internal node, Ki < K2 < K3.... < Kq_i.
3. Each internal node has at most p tree pointers and except root, has 
atleast [(p/ 2)] tree pointers.
4. The root node has atleast two tree pointers, if it is an internal node.
5. Each leaf node is of the form:
< < KjPs > ,< K ;:P. >,....,< K q _ 1 :P. >,Pr .„t > 
where, q s p, each
P ,;
is a data pointer and Pnext points to the next leaf node of the B+-trees.
Difference between B/B+ tree:
The structure of leaf node is different.
In B+ tree, all the keys are present at leaf level, but in B tree, Some of the keys 
are present at leaf level.
B+ tree is preferred for accessing the sequential records or sequential data.
B tree is preferred for random access of data items.
Bulk Loading is allowed with B+ tree since B+ tree allows all the keys to 
appear at leaf level.
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Exam

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past year papers

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Free

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Important questions

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practice quizzes

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shortcuts and tricks

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Semester Notes

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Summary

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Viva Questions

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mock tests for examination

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Short Notes: File Organization | Short Notes for Computer Science Engineering - Computer Science Engineering (CSE)

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MCQs

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Previous Year Questions with Solutions

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pdf

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Short Notes: File Organization | Short Notes for Computer Science Engineering - Computer Science Engineering (CSE)

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Sample Paper

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video lectures

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Short Notes: File Organization | Short Notes for Computer Science Engineering - Computer Science Engineering (CSE)

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Objective type Questions

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study material

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ppt

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