Logs Data Model
Status: Stable
This is a data model and semantic conventions that allow to represent logs from various sources: application log files, machine generated events, system logs, etc. Existing log formats can be unambiguously mapped to this data model. Reverse mapping from this data model is also possible to the extent that the target log format has equivalent capabilities.
The purpose of the data model is to have a common understanding of what a log record is, what data needs to be recorded, transferred, stored and interpreted by a logging system.
This proposal defines a data model for Standalone Logs.
Design Notes
Requirements
The Data Model was designed to satisfy the following requirements:
It should be possible to unambiguously map existing log formats to this Data Model. Translating log data from an arbitrary log format to this Data Model and back should ideally result in identical data.
Mappings of other log formats to this Data Model should be semantically meaningful. The Data Model must preserve the semantics of particular elements of existing log formats.
Translating log data from an arbitrary log format A to this Data Model and then translating from the Data Model to another log format B ideally must result in a meaningful translation of log data that is no worse than a reasonable direct translation from log format A to log format B.
It should be possible to efficiently represent the Data Model in concrete implementations that require the data to be stored or transmitted. We primarily care about 2 aspects of efficiency: CPU usage for serialization/deserialization and space requirements in serialized form. This is an indirect requirement that is affected by the specific representation of the Data Model rather than the Data Model itself, but is still useful to keep in mind.
The Data Model aims to successfully represent 3 sorts of logs and events:
System Formats. These are logs and events generated by the operating system and over which we have no control - we cannot change the format or affect what information is included (unless the data is generated by an application which we can modify). An example of system format is Syslog.
Third-party Applications. These are generated by third-party applications. We may have certain control over what information is included, e.g. customize the format. An example is Apache log file.
First-party Applications. These are applications that we develop and we have some control over how the logs and events are generated and what information we include in the logs. We can likely modify the source code of the application if needed.
Definitions Used in this Document
In this document we refer to types any
and map<string, any>
, defined as
follows.
Type any
Value of type any
can be one of the following:
A scalar value: string, boolean, signed 64 bit integer, or double precision floating point (IEEE 754-1985)
A byte array,
An array (a list) of
any
values,A
map<string, any>
,[since 1.31.0] An empty value (e.g.
null
).
Type map<string, any>
Value of type map<string, any>
is a map of string keys to any
values. The
keys in the map are unique (duplicate keys are not allowed).
Arbitrary deep nesting of values for arrays and maps is allowed (essentially allows to represent an equivalent of a JSON object).
The representation of the map is language-dependent.
The implementation MUST by default ensure that the exported maps contain only unique keys.
The implementation MAY have an option to allow exporting maps with duplicate keys (e.g. for better performance). If such option is provided, it MUST be documented that for many receivers, handling of maps with duplicate keys is unpredictable and it is the users' responsibility to ensure keys are not duplicate.
Field Kinds
This Data Model defines a logical model for a log record (irrespective of the physical format and encoding of the record). Each record contains 2 kinds of fields:
Named top-level fields of specific type and meaning.
Fields stored as
map<string, any>
, which can contain arbitrary values of different types. The keys and values for well-known fields follow semantic conventions for key names and possible values that allow all parties that work with the field to have the same interpretation of the data. See references to semantic conventions forResource
andAttributes
fields and examples in Appendix A.
The reasons for having these 2 kinds of fields are:
Ability to efficiently represent named top-level fields, which are almost always present (e.g. when using encodings like Protocol Buffers where fields are enumerated but not named on the wire).
Ability to enforce types of named fields, which is very useful for compiled languages with type checks.
Flexibility to represent less frequent data as
map<string, any>
. This includes well-known data that has standardized semantics as well as arbitrary custom data that the application may want to include in the logs.
When designing this data model we followed the following reasoning to make a decision about when to use a top-level named field:
The field needs to be either mandatory for all records or be frequently present in well-known log and event formats (such as
Timestamp
) or is expected to be often present in log records in upcoming logging systems (such asTraceId
).The field’s semantics must be the same for all known log and event formats and can be mapped directly and unambiguously to this data model.
Both of the above conditions were required to give the field a place in the top-level structure of the record.
Log and Event Record Definition
Appendix A contains many examples that show how existing log formats map to the fields defined below. If there are questions about the meaning of the field reviewing the examples may be helpful.
Here is the list of fields in a log record:
Field Name | Description |
---|---|
Timestamp | Time when the event occurred. |
ObservedTimestamp | Time when the event was observed. |
TraceId | Request trace id. |
SpanId | Request span id. |
TraceFlags | W3C trace flag. |
SeverityText | The severity text (also known as log level). |
SeverityNumber | Numerical value of the severity. |
Body | The body of the log record. |
Resource | Describes the source of the log. |
InstrumentationScope | Describes the scope that emitted the log. |
Attributes | Additional information about the event. |
Below is the detailed description of each field.
Field: Timestamp
Type: Timestamp, uint64 nanoseconds since Unix epoch.
Description: Time when the event occurred measured by the origin clock, i.e. the time at the source. This field is optional, it may be missing if the source timestamp is unknown.
Field: ObservedTimestamp
Type: Timestamp, uint64 nanoseconds since Unix epoch.
Description: Time when the event was observed by the collection system. For events that originate in OpenTelemetry (e.g. using OpenTelemetry Logging SDK) this timestamp is typically set at the generation time and is equal to Timestamp. For events originating externally and collected by OpenTelemetry (e.g. using Collector) this is the time when OpenTelemetry’s code observed the event measured by the clock of the OpenTelemetry code. This field SHOULD be set once the event is observed by OpenTelemetry.
For converting OpenTelemetry log data to formats that support only one timestamp or when receiving OpenTelemetry log data by recipients that support only one timestamp internally the following logic is recommended:
- Use
Timestamp
if it is present, otherwise useObservedTimestamp
.
Trace Context Fields
Field: TraceId
Type: byte sequence.
Description: Request trace id as defined in W3C Trace Context. Can be set for logs that are part of request processing and have an assigned trace id. This field is optional.
Field: SpanId
Type: byte sequence.
Description: Span id. Can be set for logs that are part of a particular processing span. If SpanId is present TraceId SHOULD be also present. This field is optional.
Field: TraceFlags
Type: byte.
Description: Trace flag as defined in W3C Trace Context specification. At the time of writing the specification defines one flag - the SAMPLED flag. This field is optional.
Severity Fields
Field: SeverityText
Type: string.
Description: severity text (also known as log level). This is the original
string representation of the severity as it is known at the source. If this
field is missing and SeverityNumber
is present then the short name that
corresponds to the SeverityNumber
may be used as a substitution. This field is
optional.
Field: SeverityNumber
Type: number.
Description: numerical value of the severity, normalized to values described in this document. This field is optional.
SeverityNumber
is an integer number. Smaller numerical values correspond to
less severe events (such as debug events), larger numerical values correspond to
more severe events (such as errors and critical events). The following table
defines the meaning of SeverityNumber
value:
SeverityNumber range | Range name | Meaning |
---|---|---|
1-4 | TRACE | A fine-grained debugging event. Typically disabled in default configurations. |
5-8 | DEBUG | A debugging event. |
9-12 | INFO | An informational event. Indicates that an event happened. |
13-16 | WARN | A warning event. Not an error but is likely more important than an informational event. |
17-20 | ERROR | An error event. Something went wrong. |
21-24 | FATAL | A fatal error such as application or system crash. |
Smaller numerical values in each range represent less important (less severe)
events. Larger numerical values in each range represent more important (more
severe) events. For example SeverityNumber=17
describes an error that is less
critical than an error with SeverityNumber=20
.
Mapping of SeverityNumber
Mappings from existing logging systems and formats (or source format for
short) must define how severity (or log level) of that particular format
corresponds to SeverityNumber
of this data model based on the meaning given
for each range in the above table.
If the source format has more than one severity that matches a single range in this table then the severities of the source format must be assigned numerical values from that range according to how severe (important) the source severity is.
For example if the source format defines “Error” and “Critical” as error events
and “Critical” is a more important and more severe situation then we can choose
the following SeverityNumber
values for the mapping: “Error”->17,
“Critical”->18.
If the source format has only a single severity that matches the meaning of the range then it is recommended to assign that severity the smallest value of the range.
For example if the source format has an “Informational” log level and no other
log levels with similar meaning then it is recommended to use
SeverityNumber=9
for “Informational”.
Source formats that do not define a concept of severity or log level MAY omit
SeverityNumber
and SeverityText
fields. Backend and UI may represent log
records with missing severity information distinctly or may interpret log
records with missing SeverityNumber
and SeverityText
fields as if the
SeverityNumber
was set equal to INFO (numeric value of 9).
Reverse Mapping
When performing a reverse mapping from SeverityNumber
to a specific format
and the SeverityNumber
has no corresponding mapping entry for that format
then it is recommended to choose the target severity that is in the same
severity range and is closest numerically.
For example Zap has only one severity in the INFO range, called “Info”. When
doing reverse mapping all SeverityNumber
values in INFO range (numeric 9-12)
will be mapped to Zap’s “Info” level.
Error Semantics
If SeverityNumber
is present and has a value of ERROR (numeric 17) or higher
then it is an indication that the log record represents an erroneous situation.
It is up to the reader of this value to make a decision on how to use this fact
(e.g. UIs may display such errors in a different color or have a feature to find
all erroneous log records).
If the log record represents an erroneous event and the source format does not
define a severity or log level concept then it is recommended to set
SeverityNumber
to ERROR (numeric 17) during the mapping process. If the log
record represents a non-erroneous event the SeverityNumber
field may be
omitted or may be set to any numeric value less than ERROR (numeric 17). The
recommended value in this case is INFO (numeric 9). See
Appendix B for more mapping
examples.
Displaying Severity
The following table defines the recommended short name for each
SeverityNumber
value. The short name can be used for example for representing
the SeverityNumber
in the UI:
SeverityNumber | Short Name |
---|---|
1 | TRACE |
2 | TRACE2 |
3 | TRACE3 |
4 | TRACE4 |
5 | DEBUG |
6 | DEBUG2 |
7 | DEBUG3 |
8 | DEBUG4 |
9 | INFO |
10 | INFO2 |
11 | INFO3 |
12 | INFO4 |
13 | WARN |
14 | WARN2 |
15 | WARN3 |
16 | WARN4 |
17 | ERROR |
18 | ERROR2 |
19 | ERROR3 |
20 | ERROR4 |
21 | FATAL |
22 | FATAL2 |
23 | FATAL3 |
24 | FATAL4 |
When an individual log record is displayed it is recommended to show both
SeverityText
and SeverityNumber
values. A recommended combined string in
this case begins with the short name followed by SeverityText
in parenthesis.
For example “Informational” Syslog record will be displayed as INFO
(Informational). When for a particular log record the SeverityNumber
is
defined but the SeverityText
is missing it is recommended to only show the
short name, e.g. INFO.
When drop down lists (or other UI elements that are intended to represent the possible set of values) are used for representing the severity it is preferable to display the short name in such UI elements.
For example a dropdown list of severities that allows filtering log records by
severities is likely to be more usable if it contains the short names of
SeverityNumber
(and thus has a limited upper bound of elements) compared to a
dropdown list, which lists all distinct SeverityText
values that are known to
the system (which can be a large number of elements, often differing only in
capitalization or abbreviated, e.g. “Info” vs “Information”).
Comparing Severity
In the contexts where severity participates in less-than / greater-than
comparisons SeverityNumber
field should be used. SeverityNumber
can be
compared to another SeverityNumber
or to numbers in the 1..24 range (or to the
corresponding short names).
Field: Body
Type: any
.
Description: A value containing the body of the log record. Can be for example
a human-readable string message (including multi-line) describing the event in
a free form or it can be a structured data composed of arrays and maps of other
values. Body MUST support any
type to preserve the semantics of
structured logs emitted by the applications. Can vary for each occurrence of the
event coming from the same source. This field is optional.
Field: Resource
Type: Resource.
Description: Describes the source of the log, aka
resource. Multiple occurrences of events coming from
the same event source can happen across time and they all have the same value of
Resource
. Can contain for example information about the application that emits
the record or about the infrastructure where the application runs. Data formats
that represent this data model may be designed in a manner that allows the
Resource
field to be recorded only once per batch of log records that come
from the same source. SHOULD follow OpenTelemetry
semantic conventions for Resources.
This field is optional.
Field: InstrumentationScope
Type: Instrumentation Scope.
Description: the instrumentation scope.
Multiple occurrences of events coming from the same scope can happen across time and
they all have the same value of InstrumentationScope
. This field is optional.
Field: Attributes
Type: map<string, any>
.
Description: Additional information about the specific event occurrence. Unlike
the Resource
field, which is fixed for a particular source, Attributes
can
vary for each occurrence of the event coming from the same source. Can contain
information about the request context (other than Trace Context Fields).
The log attribute model MUST support any
type,
a superset of standard Attribute,
to preserve the semantics of structured attributes emitted by the applications.
This field is optional.
Errors and Exceptions
Additional information about errors and/or exceptions that are associated with
a log record MAY be included in the structured data in the Attributes
section
of the record.
If included, they MUST follow the OpenTelemetry
semantic conventions for exception-related attributes.
Example Log Records
For example log records see JSON File serialization.
Example Mappings
For example log format mappings, see the Data Model Appendix.
References
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