Healthcare programs face important challenges managing huge quantities of knowledge whereas sustaining regulatory compliance, safety, and efficiency. This publish explores methods for implementing a multi-tenant healthcare system utilizing Amazon OpenSearch Service.
On this context, tenants are distinct healthcare entities, sharing a typical platform whereas sustaining remoted information environments. Hospital departments (like emergency, radiology, or affected person care), clinics, insurance coverage suppliers, laboratories, and analysis establishments are examples of those tenants.
On this publish, we tackle frequent multi-tenancy challenges and supply actionable options for safety, tenant isolation, workload administration, and price optimization throughout various healthcare tenants.
Understanding multi-tenant healthcare programs
Tenants in healthcare programs are various and have distinct necessities. For instance, emergency departments want round the clock excessive availability with subsecond response occasions for affected person care, together with strict entry controls for delicate trauma information. Analysis departments run advanced, resource-intensive queries which can be much less time-sensitive however require strong anonymization protocols to keep up HIPAA compliance when working with affected person information. Outpatient clinics function throughout enterprise hours with predictable utilization patterns and reasonable efficiency necessities. Administrative programs concentrate on monetary information with scheduled batch processing and require entry to billing info and insurance coverage particulars solely. Specialty departments like radiology and cardiology have distinctive necessities particular to the duties they carry out. For instance, radiology requires excessive storage capability and bandwidth for giant medical imaging information, together with specialised indexing for metadata searches.
Understanding tenant necessities is important for designing an efficient multi-tenant structure that balances useful resource sharing with applicable isolation whereas sustaining regulatory compliance.
Isolation fashions
OpenSearch’s hierarchical construction consists of 4 fundamental ranges. On the prime stage is the area, which incorporates a number of nodes that retailer and search information. Throughout the area, indexes comprise paperwork and outline how they’re saved and searched. Paperwork are particular person information or information entries saved inside an index, and every doc consists of fields, that are particular person information components with particular information sorts and values.
Indexes embody mappings and settings. Mappings outline the schema of paperwork inside an index, specifying area names and their information sorts. Settings configure numerous operational facets of an index, such because the variety of main shards and duplicate shards.
The isolation mannequin in a multi-tenant OpenSearch system might be at area, index, or doc stage. The mannequin you choose on your multi-tenant healthcare system impacts safety, efficiency, and price. For healthcare organizations, as depicted within the following diagram, a hybrid strategy usually works finest, matching isolation ranges to tenant necessities.

Multi-Tenancy Isolation Fashions
For emergency models, take into account domain-based isolation, offering most separation by deploying separate OpenSearch domains for every tenant. Though it’s costlier, it reduces useful resource rivalry and gives constant efficiency for vital programs. This isolation simplifies compliance by bodily separating delicate affected person information.
Equally, for medical analysis tenants, take into account domain-based isolation regardless of its increased price. Given the resource-intensive nature of analysis workloads—notably genomics and inhabitants well being analytics that course of terabytes of knowledge with advanced algorithms—separate domains forestall these demanding operations from impacting different tenants.
For specialty departments like cardiology or radiology, the place workload patterns are comparable however information entry patterns are distinct, index-based isolation is an effective match. These departments share a site however preserve separate indexes. This strategy gives sturdy logical separation whereas permitting extra environment friendly useful resource utilization.
For administrative departments the place information is much less delicate, a document-based isolation is ample, and a number of tenants can share the identical indexes.
Information modeling
Efficient information modeling is essential for sustaining efficiency and manageability in a multi-tenant healthcare system. Implement a constant index naming conference that comes with tenant identifiers, information classes, and time intervals like {tenant-id}-{data-type}-{time-period}
. Tenant-id
identifies the entity, for instance, cardiology. Examples of the indexes are cardiology-ecg-202505
or radiology-mri-202505
. This structured strategy simplifies information administration, entry management, and lifecycle insurance policies.
Think about information entry patterns when designing your index technique. For instance, for time-series information like important indicators or telemetry readings, time-based indexes with applicable rotation insurance policies will enhance efficiency and simplify information lifecycle administration.
For shared indexes utilizing document-based isolation, be certain that tenant identifiers are constantly utilized and listed for environment friendly tenant-based filtering.
Tenant administration
Efficient tenant administration prevents useful resource rivalry and gives constant efficiency throughout your healthcare system. Implement a hybrid isolation mannequin utilizing a tenant tiering framework based mostly on criticality. The next desk outlines the tiering framework.
Tier | Tenant Sort | SLA | Assets | Operational Limits | Conduct |
Tier-1 Important | Emergency departments ICU/Important care Working rooms | 24/7 SLA 99.99% Sub-second response RPO: Close to zero RTO: Lower than quarter-hour | Assured 50% CPU, 50% reminiscence Devoted scorching nodes 2 replicas minimal | 100 concurrent requests 20 MB request measurement 30-second timeout No throttling | Precedence question routing Preemptive scaling Automated failover |
Tier-2 Pressing | Inpatient models Specialty departments Radiology/imaging | 24/7 SLA with 99.9% availability Lower than 2-second response time RPO: Lower than quarter-hour RTO: Lower than 1 hour | Assured 30% CPU, 30% reminiscence Shared scorching nodes 1–2 replicas | 50 concurrent requests 15 MB request measurement 60-second timeout Restricted throttling throughout peak | Excessive-priority question routing Automated scaling Automated restoration |
Tier-3 Normal | Outpatient clinics Major care Pharmacy Laboratory | Enterprise hours SLA (8 AM – 8 PM) 99.5% availability Lower than 5-second response time RPO: Lower than 1 hour RTO: Lower than 4 hours | Assured 15% CPU, 15% reminiscence Shared nodes 1 duplicate | 25 concurrent requests 10 MB request measurement 120-second timeout Reasonable throttling | Normal question routing Truthful thread allocation Handbook scaling Enterprise hours optimization |
Tier-4 Analysis | Scientific analysis Genomics Inhabitants well being | Finest-effort SLA, as much as 99% availability Lower than 30-second response time RPO: Lower than 24 hours RTO: Lower than 24 hours | Assured 5% CPU, 10% reminiscence Burst capability throughout off-hours 0–1 replicas | 10 concurrent requests 50 MB request measurement 300-second timeout Aggressive throttling throughout pea | Compute optimized cases Giant heap measurement Analysis-specific plugins |
Tier-5 Admin | Billing/finance HR programs Stock administration | Enterprise hours SLA (9 AM – 5 PM) 99% availability Lower than 10-second response time RPO: Lower than 24 hours RTO: Lower than 48 hours | No assured assets Burstable capability UltraWarm for historic 1 duplicate | 5 concurrent requests 5 MB request measurement 180-second timeout Aggressive throttling | Lowest precedence question routing Batch processing most popular Off-hours scheduling Price-optimized storage |
Workload administration
While you use OpenSearch Service for multi-tenancy, you have to stability your tenants’ workloads to be sure you ship the assets wanted for every to ingest, retailer, and question their information successfully. A multi-layered workload administration framework with a rule-based proxy and OpenSearch Service workload administration can successfully tackle these challenges. For particulars, see this weblog publish: Workload administration in OpenSearch-based multi-tenant centralized logging platforms.
Safety framework
Healthcare information requires safety resulting from its delicate nature and regulatory necessities. The OpenSearch Service safety framework is particularly adaptable to healthcare’s strict safety necessities. This framework combines a number of layers of entry management, captured within the following diagram.

Multi-tenancy fine-grained entry management in Amazon OpenSearch Service
An essential step on this framework is position mapping, the place AWS Identification and Entry Administration (IAM) roles are mapped to OpenSearch roles for role-based entry management (RBAC). For instance, emergency departments can implement the ED-Doctor
position with entry to affected person historical past throughout departments, and the ED-Workers
position with entry to important signal and drugs information. You may map emergency division roles to OpenSearch roles.
With document-level safety (DLS), you possibly can restrict emergency division employees to energetic emergency sufferers solely whereas proscribing entry to discharged affected person information solely to the suppliers who deal with them. With field-level safety (FLS), you possibly can permit entry to medical fields whereas masking billing and insurance coverage information. You may also present attribute-based entry management (ABAC) insurance policies to permit entry based mostly on affected person standing.
For analysis departments, you possibly can create Scientific-Researcher
roles with read-only entry to datasets. Combine educational roles to analysis roles to ensure researchers solely entry information for research they’re approved to conduct. For DLS, implement filters to ensure researchers solely entry permitted paperwork. Use FLS to anonymize HIPAA identifiers. For analysis departments, ABAC ought to consider the examine section and researcher’s location.
For outpatient care, you possibly can outline Medical-Supplier
roles with full entry to assigned sufferers’ information and Medical-Assistant
roles restricted to documenting vitals and preliminary info. For DLS, restrict entry to affected person’s physicians solely. For FLS, limit entry to medical information solely, whereas limiting nurses to demographic, important indicators, and drugs fields. Implement time-aware ABAC insurance policies that limit entry to affected person information exterior of enterprise hours except the supplier is on-call.
For administrative departments, you possibly can implement Monetary
roles with entry to cost codes and insurance coverage info however no medical information. For DLS, be certain that monetary employees solely entry billing paperwork. FLS gives entry to billing codes, dates of service, and insurance coverage fields whereas masking medical content material.
For specialty departments, you possibly can create technician roles like Radiologist
and apply DLS filters proscribing entry to the info to those roles and referring doctor. FLS permits technicians to see medical historical past and former findings particular to their specialty.
Allow complete audit logging to trace entry to protected well being info. Configure these logs to seize person id, accessed information, timestamp, and entry context. These audit trails are important for regulatory compliance and safety investigations.
Managing information lifecycle for compliance
Index State Administration (ISM) capabilities mixed with OpenSearch Service storage tiering allow an elaborate strategy to information lifecycle administration that may be tailor-made to various tenant wants. ISM gives a sturdy strategy to automate the lifecycle of indexes by defining insurance policies that dictate transitions between Sizzling, UltraWarm, and Chilly storage tiers based mostly on standards like index age or measurement. This automation can prolong to the archive tier by creating snapshots, that are saved in Amazon Easy Storage Service (Amazon S3) and might be additional transitioned to Amazon S3 Glacier or Glacier Deep Archive for long-term, cost-effective archiving of knowledge that’s hardly ever accessed.
Body your ISM coverage alongside the next pointers:
Preserve vital affected person information in scorching storage for 180 days to assist instant entry. Transition to heat storage for the subsequent 12 months, then transfer to chilly storage for years 2–7. After 7 years, archive information.
For analysis information advantages, use project-based lifecycle insurance policies reasonably than strictly time-based transitions. Keep analysis datasets in scorching storage throughout energetic venture phases, no matter information age. When initiatives conclude, transition information to heat storage for 12 months. Transfer to chilly storage for the next 5–10 years based mostly on analysis significance. Afterward, archive information.
For outpatient clinic information, preserve latest affected person information in scorching storage for 90 days, aligning index rollover with typical follow-up home windows. Transition to heat storage for months 4–18, coinciding with frequent annual go to patterns. Transfer to chilly storage for years 2–7. Archive after 7 years.
For administrative information, preserve present fiscal 12 months information in scorching storage with automated transitions at year-end boundaries. Transfer earlier fiscal 12 months information to heat storage for 18 months to assist auditing and reporting. Transition to chilly storage for years 3–7. Archive monetary information after 7 years.
For the specialty division information, preserve latest metadata in scorching storage for 90 days whereas shifting massive information, like photos, to heat storage after 30 days. Transition full information to chilly storage after 18 months. Archive after 7 years.
Price administration and optimization
Healthcare organizations should stability efficiency necessities with finances constraints. Efficient price administration methods are important for sustainable operations.
Implement complete tagging methods that mirror your index naming conventions to create a unified strategy to useful resource administration and price monitoring. Just like the index naming conference, design your tags to establish the tenant, software, and information sort (for instance, “tenant=cardiology
” or “software=ecg
“). These tags, mixed with AWS Price Explorer, present visibility into bills throughout organizational boundaries.
Develop price allocation mechanisms that pretty distribute bills throughout totally different tenants. Think about implementing tiered pricing buildings based mostly on information quantity, question complexity, and service-level ensures. This strategy aligns prices with worth and encourages environment friendly useful resource utilization.
Optimize your infrastructure based mostly on tenant-specific metrics and utilization patterns. Monitor doc counts, indexing charges, and question patterns to right-size your clusters and node sorts. Use totally different occasion sorts for various workloads—for instance, use compute-optimized cases for query-intensive purposes.
Use OpenSearch Service storage tiering to optimize prices. UltraWarm gives important price financial savings for occasionally accessed information whereas sustaining affordable question efficiency. Chilly storage provides even larger financial savings for information that’s hardly ever accessed however have to be retained for compliance functions.
Conclusion
Constructing a multi-tenant healthcare system on OpenSearch Service requires cautious planning and implementation. By addressing tenant isolation, safety, information lifecycle administration, workload management, and price optimization, you possibly can create a platform that delivers improved operational effectivity whereas sustaining strict compliance with healthcare rules.
In regards to the Authors
Ezat Karimi is a Senior Options Architect at AWS, based mostly in Austin, TX. Ezat focuses on designing and delivering modernization options and techniques for database purposes. Working intently with a number of AWS groups, Ezat helps clients migrate their database workloads to the AWS Cloud.
Jon Handler is a Senior Principal Options Architect at Amazon Internet Providers based mostly in Palo Alto, CA. Jon works intently with OpenSearch and Amazon OpenSearch Service, offering assist and steerage to a broad vary of consumers who’ve vector, search, and log analytics workloads that they need to transfer to the AWS Cloud. Previous to becoming a member of AWS, Jon’s profession as a software program developer included 4 years of coding a large-scale, ecommerce search engine. Jon holds a Bachelor’s of the Arts from the College of Pennsylvania, and a Grasp’s of Science and a PhD in Laptop Science and Synthetic Intelligence from Northwestern College.