TQL Syntax
How to properly format TQL queries
Query syntax for the Tensor Query Language (TQL)
CONTAINS and ==
# Exact match, which generally requires that the sample
# has 1 value, i.e. no lists or multi-dimensional arrays
select * where tensor_name == 'text_value' # If value is numeric
select * where tensor_name == numeric_value # If values is text
select * where contains(tensor_name, 'text_value')Any special characters in tensor or group names should be wrapped with double-quotes:
select * where contains("tensor-name", 'text_value')
select * where "tensor_name/group_name" == numeric_valueSHAPE
select * where shape(tensor_name)[dimension_index] > numeric_value
select * where shape(tensor_name)[1] > numeric_value # Second array dimension > valueLIMIT
select * where contains(tensor_name, 'text_value') limit num_samplesAND, OR, NOT
select * where contains(tensor_name, 'text_value') and NOT contains(tensor_name_2, numeric_value)
select * where contains(tensor_name, 'text_value') or tensor_name_2 == numeric_value
select * where (contains(tensor_name, 'text_value') and shape(tensor_name_2)[dimension_index]>numeric_value) or contains(tensor_name, 'text_value_2')UNION and INTERSECT
(select * where contains(tensor_name, 'value')) intersect (select * where contains(tensor_name, 'value_2'))
(select * where contains(tensor_name, 'value') limit 100) union (select * where shape(tensor_name)[0] > numeric_value limit 100)ORDER BY
# Order by requires that sample is numeric and has 1 value,
# i.e. no lists or multi-dimensional arrays
# The default order is ASCENDING (asc)
select * where contains(tensor_name, 'text_value') order by tensor_name ascANY, ALL, and ALL_STRICT
all adheres to NumPy and list logic where all(empty_sample) returns True
all_strict is more intuitive for queries so all_strict(empty_sample) returns False
select * where all(tensor_name==0) # Returns True for empty samples
select * where all_strict(tensor_name[:,2]>numeric_value) # Returns False for empty samples
select * where any(tensor_name[0:6]>numeric_value)IN and BETWEEN
Only works for scalar numeric values and text references to class_names
select * where tensor_name in (1, 2, 6, 10)
select * where class_label_tensor_name in ('car', 'truck')
select * where tensor_name between 5 and 20LOGICAL_AND and LOGICAL_OR
select * where any(logical_and(tensor_name_1[:,3]>numeric_value, tensor_name_2 == 'text_value'))REFERENCING SAMPLES IN EXISTING TENORS
# Select based on index
select * where row_number() == 10SAMPLE BY
select * sample by weight_choice(expression_1: weight_1, expression_2: weight_2, ...)
replace True limit Nweight_choiceresolves the weight that is used when multiple expressions evaluate toTruefor a given sample. Options aremax_weight, sum_weight. For example, ifweight_choiceismax_weight, then the maximum weight will be chosen for that sample.replacedetermines whether samples should be drawn with replacement. It defaults toTrue.limitspecifies the number of samples that should be returned. If unspecified, the sampler will return the number of samples corresponding to the length of the dataset
EMBEDDING SEARCH
Deep Lake supports several vector operations for embedding search. Typically, vector operations are called by returning data ordered by the score based on the vector search method.
select * from (select tensor_1, tensor_2, <VECTOR_OPERATION> as score) order by score desc limit 10
# THE SUPPORTED VECTOR_OPERATIONS ARE:
l1_norm(<embedding_tensor> - ARRAY[<search_embedding>]) # Order should be asc
l2_norm(<embedding_tensor> - ARRAY[<search_embedding>]) # Order should be asc
linf_norm(<embedding_tensor> - ARRAY[<search_embedding>]) # Order should be asc
cosine_similarity(<embedding_tensor>, ARRAY[<search_embedding>]) # Order should be desc
VIRTUAL TENSORS
Virtual tensors are the result of a computation and are not tensors in the Deep Lake dataset. However, they can be treated as tensors in the API.
# "score" is a virtual tensor
select * from (select tensor_1, tensor_2, <VECTOR_OPERATION> as score) order by score desc limit 10
# "box_beyond_image" is a virtual tensor
select *, any(boxes[:,0])<0 as box_beyond_image where ....
# "tensor_sum" is a virtual tensor
select *, tensor_1 + tensor_3 as tensor_sum where ......When combining embedding search with filtering (where conditions), the filter condition is evaluated prior to the embedding search.
GROUP BY AND UNGROUP BY
Group by creates a sequence of data based on the common properties that are being grouped (i.e. frames into videos). Ungroup by splits sequences into their individual elements (i.e. videos into images).
select * group by label, video_id # Groups all data with the same label and video_id in to the same sequence
select * ungroup by split # Splits sequences into their original piecesEXPAND BY
Expand by includes samples before and after a query condition is satisfied.
select * where <condition> expand by rows_before, rows_after Last updated
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