Introduction
As industrial and manufacturing corporations embark on their digital transformation journey, they wish to leverage superior applied sciences for elevated effectivity, productiveness, high quality management, flexibility, value discount, provide chain optimization, and aggressive benefit within the quickly evolving digital period. AWS prospects within the manufacturing and industrial house, more and more leverage AWS IoT SiteWise to modernize their industrial information technique and unlock the total potential of their operational expertise. AWS IoT SiteWise empowers you to effectively gather, retailer, set up, and monitor information from industrial tools at scale.It additionally allows you to derive actionable insights, optimize operations, and drive innovation by way of data-driven choices.
The journey usually begins with a Proof of Worth (PoV) case examine in a improvement surroundings. This strategy supplies you with a chance to discover how information assortment and asset modelling with an answer that features AWS IoT SiteWise might help. As you grow to be comfy with the answer, you would scale extra belongings or services right into a manufacturing surroundings from staging over time. This weblog put up supplies an summary of the structure and pattern code emigrate the belongings and information in AWS IoT SiteWise from one deployment to a different, whereas guaranteeing information integrity and minimizing operational overhead.
Getting began with AWS IoT SiteWise
Through the PoV part, you determine information ingestion pipelines to stream close to real-time sensor information from on-premises information historians, or OPC-UA servers, into AWS IoT SiteWise. You’ll be able to create asset fashions that digitally signify your industrial tools to seize the asset hierarchy and important metadata inside a single facility or throughout a number of services. AWS IoT SiteWise supplies API operations that can assist you import your asset mannequin information (metadata) from various programs in bulk, comparable to course of historians in AWS IoT SiteWise at scale. Moreover, you’ll be able to outline frequent industrial efficiency indicators (KPIs) utilizing the built-in library of operators and features out there in AWS IoT SiteWise. It’s also possible to create customized metrics which might be triggered by tools information on arrival or computed at user-defined intervals.
Establishing a number of non-production environments on a manufacturing facility ground may be difficult attributable to legacy networking and strict laws related to the plant ground – along with delays in {hardware} procurement. Many purchasers transition the identical {hardware} from non-production to manufacturing by designating and certifying the {hardware} for manufacturing use after validation completes.
To speed up and streamline the deployment course of, you want a well-defined strategy emigrate their IoT SiteWise sources (asset, hierarchies, metrics, transforms, time-series, and metadata) between AWS accounts as a part of your normal DevOps practices.
AWS IoT SiteWise shops information throughout storage tiers that may assist coaching machine studying (ML) fashions or historic information evaluation in manufacturing. By way of this blogpost we offer an overview about the right way to migrate the asset fashions, asset hierarchies, and historic time sequence information from the event surroundings to the staging and manufacturing environments which might be hosted on AWS.
Resolution Walkthrough
Let’s start by discussing the technical features of migrating AWS IoT SiteWise sources and information between AWS accounts. We offer a step-by-step information on the right way to export and import asset fashions and hierarchies utilizing IoT SiteWise APIs. We additionally focus on the right way to switch historic time sequence information utilizing Amazon Easy Storage Service (Amazon S3) and the AWS IoT SiteWise BatchPutAssetPropertyValue API operation.
By following this strategy, you’ll be able to promote your AWS IoT SiteWise setup and information by way of the event lifecycle as you scale your industrial IoT functions into manufacturing. The next is an summary of the method:
- AWS IoT Sitewise metadata switch:
- Export AWS IoT SiteWise fashions and belongings from one AWS account (
improvement account
) by operating a bulk export job. You should utilize filters to export the fashions and/or belongings. - Import the exported fashions and/or belongings right into a second AWS account (
staging account)
by operating a bulk import job. The import information should observe the AWS IoT SiteWise metadata switch job schema.
- Export AWS IoT SiteWise fashions and belongings from one AWS account (
- AWS IoT Sitewise telemetry information switch
- Use the next API operations emigrate telemetry information throughout accounts:
- BatchGetAssetPropertyValueHistory retrieves historic telemetry information from the
improvement account
. - CreateBulkImportJob ingests the retrieved telemetry information into the
staging account
.
- BatchGetAssetPropertyValueHistory retrieves historic telemetry information from the
- Use the next API operations emigrate telemetry information throughout accounts:
The information migration steps in our resolution make the next assumptions:
- The
staging account
doesn’t have AWS IoT SiteWise belongings or fashions configured the place it makes use of the identical title or hierarchy because theimprovement account
. - You’ll replicate the AWS IoT SiteWise metadata from the
improvement account
to thestaging account
. - You’ll transfer the AWS IoT SiteWise telemetry information from the
improvement account
to thestaging account
.
1: Migrate AWS IoT SiteWise fashions and belongings throughout AWS accounts
AWS IoT SiteWise helps bulk operations with belongings and fashions. The metadata bulk operations assist to:
- Export AWS IoT SiteWise fashions and belongings from the
improvement account
by operating a bulk export job. You’ll be able to select what to export once you configure this job. For extra info, see Export metadata examples.- Export all belongings and asset fashions, and filter your belongings and asset fashions.
- Export belongings and filter your belongings.
- Export asset fashions and filter your asset fashions.
- Import AWS IoT SiteWise fashions and belongings into the staging account by operating a bulk import job. Just like the export job, you’ll be able to select what to import. For extra info, see Import metadata examples.
- The import information observe a particular format. For extra info, see AWS IoT SiteWise metadata switch job schema.
2: Migrate AWS IoT SiteWise telemetry information throughout AWS accounts
AWS IoT SiteWise helps ingesting excessive quantity historic information utilizing the CreateBulkImportJob API operation emigrate telemetry information from the improvement account
to the staging account
.
2.1 Retrieve information from the improvement account utilizing BatchGetAssetPropertyValueHistory
AWS IoT SiteWise has information and SQL API operations to retrieve telemetry outcomes. You should utilize the export file from the Export AWS IoT SiteWise fashions and belongings by operating a bulk export job step to get a listing of AWS IoT SiteWise asset IDs and property IDs to question utilizing the BatchGetAssetPropertyValueHistory API operation. The next pattern code demonstrates retrieving information for the final two days:
import boto3
import csv
import time
import uuid
"""
Connect with the IoT SiteWise API and outline the belongings and properties
to retrieve information for.
"""
sitewise = boto3.shopper('iotsitewise')
# restrict for under 10 AssetIds/PropertyIDs/EntryIDs per API name
asset_ids = ['a1','a2','a3']
property_ids = ['b1','b2','b3']
"""
Get the beginning and finish timestamps for the date vary of historic information
to retrieve. At present set to the final 2 days.
"""
# Convert present time to Unix timestamp (seconds since epoch)
end_time = int(time.time())
# Begin date 2 days in the past
start_time = end_time - 2*24*60*60
"""
Generate a listing of entries to retrieve property worth historical past.
Loops by way of the asset_ids and property_ids lists, zipping them
collectively to generate a novel entry for every asset-property pair.
Every entry incorporates a UUID for the entryId, the corresponding
assetId and propertyId, and the beginning and finish timestamps for
the date vary of historic information.
"""
entries = []
for asset_id, property_id in zip(asset_ids, property_ids):
entry = {
'entryId': str(uuid.uuid4()),
'assetId': asset_id,
'propertyId': property_id,
'startDate': start_time,
'endDate': end_time,
'qualities': [ "GOOD" ],
}
entries.append(entry)
"""
Generate entries dictionary to map entry IDs to the total entry information
for retrieving property values by entry ID.
"""
entries_dict = {entry['entryId']: entry for entry in entries}
"""
The snippet beneath retrieves asset property worth historical past from AWS IoT SiteWise utilizing the
`batch_get_asset_property_value_history` API name. The retrieved information is then
processed and written to a CSV file named 'values.csv'.
The script handles pagination through the use of the `nextToken` parameter to fetch
subsequent pages of information. As soon as all information has been retrieved, the script
exits the loop and closes the CSV file.
"""
token = None
with open('values.csv', 'w') as f:
author = csv.author(f)
whereas True:
"""
Make API name, passing entries and token if on subsequent name.
"""
if not token:
property_history = sitewise.batch_get_asset_property_value_history(
entries=entries
)
else:
property_history = sitewise.batch_get_asset_property_value_history(
entries=entries,
nextToken=token
)
"""
Course of success entries, extracting values into a listing of dicts.
"""
for entry in property_history['successEntries']:
entry_id = entry['entryId']
asset_id = entries_dict[entry_id]['assetId']
property_id = entries_dict[entry_id]['propertyId']
for history_values in entry['assetPropertyValueHistory']:
value_dict = history_values.get('worth')
values_dict = {
'ASSET_ID': asset_id,
'PROPERTY_ID': property_id,
'DATA_TYPE': str(checklist(value_dict.keys())[0]).higher().change("VALUE", ""),
'TIMESTAMP_SECONDS': history_values['timestamp']['timeInSeconds'],
'TIMESTAMP_NANO_OFFSET': history_values['timestamp']['offsetInNanos'],
'QUALITY': 'GOOD',
'VALUE': value_dict[list(value_dict.keys())[0]],
}
author.writerow(checklist(values_dict.values()))
"""
Verify for subsequent token and break when pagination is full.
"""
if 'nextToken' in property_history:
token = property_history['nextToken']
else:
break
2.2 Ingest information to the staging account utilizing CreateBulkImportJob
Use the values.csv
file to import information into AWS IoT SiteWise utilizing the CreateBulkImportJob API operation. Outline the next parameters whilst you create an import job utilizing CreateBulkImportJob
. For a code pattern, see CreateBulkImportJob within the AWS documentation.
- Exchange the
adaptive-ingestion-flag
withtrue
orfalse
. For this train, set the worth to true.- By setting the worth to
true
, the majority import job does the next:- Ingests new information into AWS IoT SiteWise.
- Calculates metrics and transforms, and helps notifications for information with a time stamp that’s inside seven days.
- Should you have been to set the worth to
false
, the majority import job ingests historic information into AWS IoT SiteWise.
- By setting the worth to
- Exchange the
delete-files-after-import-flag
withtrue
to delete the info from the Amazon S3 information bucket after ingesting into AWS IoT SiteWise heat tier storage. For extra info, see Create a bulk import job (AWS CLI).
Clear Up
After you validate the ends in the staging account
, you’ll be able to delete the info from the improvement account
utilizing AWS IoT SiteWise DeleteAsset and DeleteAssetModel API operations. Alternatively, it’s possible you’ll proceed to make use of the improvement account
to proceed different improvement and testing actions with the historic information.
Conclusion
On this weblog put up, we addressed the problem industrial prospects face when scaling their AWS IoT SiteWise deployments. We mentioned transferring from PoV to manufacturing throughout a number of vegetation and manufacturing strains and the way AWS IoT SiteWise addresses these challenges. Migrating metadata (comparable to asset fashions, asset/enterprise hierarchies, and historic telemetry information) between AWS accounts ensures constant information context. It additionally helps selling Industrial IoT belongings and information by way of the event lifecycle. For added particulars please see Bulk operations with belongings and fashions.
Writer biographies