New Research on Cloud Database Trends: Technical Risks, Cost Pressures, and Migration Triggers

Good enough until it isn’t: the database complacency trap A database is like a water heater. When all is well, it just does its job in the background. You don’t fantasize about replacing it or envy the one your friend just got. Really, you don’t even think about it — until something goes awry. But new research reveals a key difference: With databases, the problems don’t blindside you. Some 38% of technology leaders worry that their current database won’t meet their needs in the near future. However, they aren’t acting on it. They wait until some compelling event (e.g., a production incident, usage spike, budget cut, or cloud strategy pivot) pushes the database to the top of the priority list. That’s just one of the interesting findings from the Futurum Group’s latest research study, commissioned by ScyllaDB, which explores the latest trends in cloud database cost pressures, performance risks, and migration motivations. Respondents include technical decision-makers who shape cloud database strategy as well as team members directly responsible for the database. Guy Currier, Futurum Group Chief Analyst, summarizes the findings this way: “Those technology leaders expressed complacency with their cloud databases at the same time as concern and caution. This combination suggests that although they would prefer not to take immediate action, they know they will have to move when compelling events force a change.” The full report, Is Cloud Database Complacency Affecting Your Business Objectives?, is available now. Here are some key takeaways. Comfort masks concern A third of the leaders surveyed report satisfaction with the performance of their current cloud databases. Yet, 38% worry that their database isn’t fit to support future AI/ML workloads and the resulting explosion in data volume. The prime characteristic of these workloads is their unpredictability; past database performance is a poor indicator of future behavior as the technology evolves and as volumes increase. “Organizations experience what we might call ‘good enough for now’ syndrome,” Currier noted. “Their databases handle today’s workloads adequately, but leaders doubt these solutions will scale to meet tomorrow’s demands.” Cloud database costs are also a major concern. The research found that 35% of leaders want to improve performance but feel constrained by budget. Another 35% are concerned about rising costs despite being satisfied with performance. The top cloud database cost drivers include: Unexpected loads (40%) New or strict technical requirements (38%) Networking bandwidth growth (38%) Storage growth (38%) The 10% cost-savings tipping point Nearly 40% of organizations are meeting their cloud database budgets, but just as many consider their predictable costs too high. As Currier explains, “Organizations might tolerate high costs when they can plan for them. However, this tolerance creates an opening for solutions that can deliver similar predictability at lower price points.” That opening is quite specific: A 10% cost reduction is all it would take for many tech leaders to consider migrating their cloud database. Why so low? Likely, the answer lies in scale. When database costs climb into the millions annually – which is not unusual for platforms like DynamoDB, according to the research – even a modest 10% translates to substantial savings. Event-driven database migration triggers Still, technical leaders don’t proactively seek alternatives that are more cost-efficient or better prepared for the technical needs of current/future AI/ML workloads. They wait for trigger events that force them into a crisis-driven decision. Leadership changes (36%) and major production incidents (32%) emerged as the primary catalysts. Other significant triggers include: Load spikes (32%) Cost reductions of 10% or more (31%) Maintenance burdens (31%) Performance issues (29%) Volatile costs (28%) Most of these triggers highlight the reactive nature of these migrations, rather than proactive, strategic changes. Note that volatile database costs drive 28% of switching decisions, suggesting that sheer unpredictability can be nearly as disruptive as high costs. “Database decisions are rarely made in a vacuum,” the research report notes. “Even when teams identify performance or cost inefficiencies, acting on them competes with feature delivery, roadmap commitments, limited operational bandwidth, and against their familiar tech stack.” Early warning signs While water heater issues tend to surface without warning, database issues can usually be anticipated. There are several early warning signs that a database is starting to become a constraint: Cost is growing faster than throughput. When database spend rises faster than the throughput it’s handling, the system may not be as scalable as it appears. Teams patch their way forward (e.g., with caches) to sustain performance. But the cost per query keeps climbing. Rising tail latency. When P95 or P99 latency starts to climb during peak periods or background operations, it indicates the system is nearing its breaking point. These changes might be dismissed if they don’t immediately violate SLAs, but they’re canaries in the coal mine. Increasing operational friction. More manual tuning, more frequent capacity adjustments, more time spent managing the database to maintain the same level of performance…all these signal diminishing returns from the current architecture. Disproportionate complexity for organic growth. When routine scaling or new workload support requires outsized engineering effort, it’s a sign that the database has become a constraint rather than an enabler. From reactive to strategic Recognizing these signals is one thing, but actually acting on them before a crisis forces your hand is another. Some due diligence now will help you stay ahead of it. Get a general sense of what options are available for your use cases Define vendor-neutral evaluation criteria Stress test your existing database to understand its breaking point – before production traffic exposes it for you Set clear decision triggers (e.g., specific performance thresholds, cost targets, and capability gaps) Map your database capabilities against your 12–24 month strategic roadmap, not just your current workloads As Currier concludes: “Your database might be ‘good enough for now,’ but if that isn’t aligned with where your business needs to go, complacency is already costing you.” Download the full report here; you’ll also get access to an expert panel discussing the research findings.

Native Vector Search for the DynamoDB API

Developers building on the DynamoDB API can run vector similarity search without the complexity of bolted-on “Zero ETL” For users in the DynamoDB environment, implementing vector search has been overly complicated. Amazon’s “Zero ETL” forces a dual-service approach (managing both DynamoDB and OpenSearch) and requires using two separate APIs just for Vector Semantic Search queries. ScyllaDB believes this is unnecessary complexity. We’re eliminating the heavy lifting by integrating vector search capabilities into Alternator, our DynamoDB-compatible API. This gives DynamoDB users high-performance similarity search within their familiar API, without the need for extra clusters or constant API context-switching. Architectural Differences: Unified vs. Fragmented Amazon’s approach to vector search exports data to S3 and then syncs it to OpenSearch via DynamoDB Streams. While “Zero ETL” sounds hands-off, you’re still responsible for the cost and complexity of a separate search cluster. The AWS cost is composed of DynamoDB, DynamoDB Streams, S3, OpenSearch, and the OSIS pipeline. Each of these elements’ pricing is complex on its own. Amazon Vector Search (using Open Search) for DynamoDB architecture. Source: AWS Blog. ScyllaDB Alternator simplifies this by integrating the vector store engine directly into the backend. Simple module: The ScyllaDB database hosts both the data and the vector index. Native API: You perform vector searches using DynamoDB Query operations. Performance: 10 Million Vectors on a Budget In our latest benchmark using a 10-million-vector dataset (768-dimensional Cohere embeddings), a modest five-node ScyllaDB cluster delivered over 12K QPS with single-digit millisecond latency.
Setup: 10M vectors; 768 dimensions; K: 10 (retrieve top K values); No Quantization
Results Recall: ~90% Throughput: 12,763 QPS P99 Latency: 7.8 ms Cost: $1,643 / Month for 1Y full up front Estimating the AWS cost for this case is not trivial. The write-path includes DynamoDB (storage+ops), DynamoDB streams, S3 (storage, API), OpenSearch (data nodes, master nodes, EBS), and the OSIS pipeline. To read more on the pricing of Amazon Zero ETL, see Implementing search on Amazon DynamoDB data using zero-ETL integration with Amazon OpenSearch service. Code Examples Note: The exact JSON format might change in the next few months. 1. Enabling a Vector Index You can enable vector indexing during CreateTable or via UpdateTable. Note the new VectorSecondaryIndexUpdates parameter. // Adding a vector index to an existing table { "TableName": "ProductCatalog", "AttributeDefinitions": [ {"AttributeName": "ProductEmbedding", "AttributeType": "V"} ], "VectorSecondaryIndexUpdates": [ { "Create": { "IndexName": "VectorIdx", "VectorAttribute": { "AttributeName": "ProductEmbedding", "Dimensions": 768 }, "IndexOptions": { "SimilarityFunction": "COSINE", "M": 32, "ef_construction": 256 } } } ] } Pro Tip: You will get the best results with ScyllaDB’s optimized “V” (Vector) type. Although you can use standard DynamoDB Lists, the “V” type will store data as a tight array of 32-bit floats – and that saves storage while boosting performance. 2. Performing a Vector Search To search, use the Query operation with the ScyllaDB VectorSearch parameter. { "TableName": "ProductCatalog", "IndexName": "VectorIdx", "VectorSearch": { "QueryVector": [0.12, 0.05, ..., 0.88], "Oversampling": 1.5 }, "Limit": 10, "ReturnVectorSearchSimilarity": "SIMILARITY" } Example Use Cases Semantic Product Search Instead of relying on exact keyword matches, users can find products based on intent. For example, a search for “waterproof rugged hiking gear” can surface relevant items even if those exact words aren’t in the title. RAG (Retrieval-Augmented Generation) For knowledge bases, precision is non-negotiable. Using the High Recall configuration, ScyllaDB delivers 99.2% recall. That way, the LLM receives the most accurate context possible for generating responses. Semantic Deduplication At the Max Throughput end of the spectrum, ScyllaDB can quickly scan millions of incoming vectors to find near-duplicates. That prevents redundant data from cluttering your system – reducing costs and improving performance. Conclusion With ScyllaDB, DynamoDB users now have a “fast track” to AI-ready infrastructure. By unifying storage and vector search into a single API, you eliminate the operational tax of “Zero ETL” without sacrificing the sub-millisecond performance ScyllaDB is known for.

ScyllaDB Vector Search Benchmark: 10M Vectors on a Compact Cluster

Even a small, compact setup achieved up to 12,840 QPS at k=10 with a serial P99 latency of 5.5 ms Our 1-billion-vector benchmark demonstrated that ScyllaDB Vector Search can sustain 252,000 QPS with 2 ms P99 latency across a large-scale deployment. But not every workload starts at a billion vectors. Many production use cases (e.g., product catalogs, knowledge bases for RAG, and semantic caches) live comfortably in the 10–100 million range. This post presents a smaller benchmark: a 10-million-vector dataset of 768-dimensional Cohere embeddings on a compact five-node cluster. It used three modest storage nodes and two memory-optimized search nodes, all running on AWS Graviton. We explore four index configurations that span the recall-throughput spectrum, from near-perfect recall to maximum throughput. The results show that even this small setup can deliver up to 12,840 QPS at k=10 with a serial P99 latency of 5.5 ms — without any quantization. Architecture at a Glance First, some background. ScyllaDB Vector Search separates storage and indexing responsibilities while keeping the system unified from the user’s perspective. The ScyllaDB storage nodes hold both the structured attributes and the vector embeddings in the same distributed table. Meanwhile, a dedicated Vector Store service — implemented in Rust and powered by the USearch engine — consumes updates from ScyllaDB via CDC and builds approximate nearest neighbor (ANN) indexes in memory. Queries are issued through standard CQL: SELECT … ORDER BY vector_column ANN OF ? LIMIT k; The queries are internally routed to the Vector Store service, which performs the HNSW similarity search and returns the candidate rows. This design allows each layer to scale independently, optimizing for its own workload characteristics and eliminating resource interference. For a detailed architectural deep-dive, see the 1-billion-vector benchmark and the technical blog Building a Low-Latency Vector Search Engine for ScyllaDB. Benchmark Setup Here’s a look at the dataset and hardware used for the benchmark. Dataset Property Value Vectors 10,000,000 Dimensions 768 Embedding model Cohere Similarity function COSINE Quantization None (f32) Hardware Role Instance vCPUs RAM Count Storage nodes i8g.large 2 16 GB 3 Search nodes r7g.2xlarge 8 64 GB 2 With 768-dimensional f32 vectors and M values up to 64, the in-memory index size can be estimated as: Memory ≈ N × (D × 4 + M × 16) × 1.2 For the largest configuration (M=64): 10M × (768 × 4 + 64 × 16) × 1.2 ≈ 49 GB, which fits comfortably in the 64 GB of a single r7g.2xlarge search node. No quantization is needed at this scale. Experiments We tested four HNSW index configurations, progressively lowering graph connectivity (M) and search effort (ef_search) to shift the balance from recall toward throughput. Experiment M ef_construction ef_search k tested #1 (high quality) 64 384 192 100, 10 #2 (balanced) 32 256 128 100, 10 #3 (high throughput) 24 256 64 100, 10 #4 (max throughput) 20 256 48 10 The three HNSW parameters control different aspects of the index: M (maximum_node_connections): Maximum edges per node in the HNSW graph. Higher values create a richer, better-connected graph that improves recall at the cost of more memory and slower inserts and queries. ef_construction (construction_beam_width): Controls how thoroughly the algorithm searches for the best neighbors when inserting a new vector. Higher values produce a higher-quality graph but slow down index building. This is a one-time cost. ef_search (search_beam_width): The main tuning knob for query performance. Controls the size of the candidate beam during search. Higher values evaluate more candidates, which improves recall but increases query latency. Since vector index options cannot be changed after creation, each experiment required dropping and recreating the index. Here are the CQL statements used: -- Experiment #1: M=64, ef_construction=384, ef_search=192 CREATE CUSTOM INDEX vdb_bench_collection_vector_idx ON vdb_bench.vdb_bench_collection (vector) USING 'vector_index' WITH OPTIONS = { 'search_beam_width': '192', 'construction_beam_width': '384', 'maximum_node_connections': '64', 'similarity_function': 'COSINE' }; -- Experiment #2: M=32, ef_construction=256, ef_search=128 CREATE CUSTOM INDEX vdb_bench_collection_vector_idx ON vdb_bench.vdb_bench_collection (vector) USING 'vector_index' WITH OPTIONS = { 'search_beam_width': '128', 'construction_beam_width': '256', 'maximum_node_connections': '32', 'similarity_function': 'COSINE' }; -- Experiment #3: M=24, ef_construction=256, ef_search=64 CREATE CUSTOM INDEX vdb_bench_collection_vector_idx ON vdb_bench.vdb_bench_collection (vector) USING 'vector_index' WITH OPTIONS = { 'search_beam_width': '64', 'construction_beam_width': '256', 'maximum_node_connections': '24', 'similarity_function': 'COSINE' }; -- Experiment #4: M=20, ef_construction=256, ef_search=48 CREATE CUSTOM INDEX vdb_bench_collection_vector_idx ON vdb_bench.vdb_bench_collection (vector) USING 'vector_index' WITH OPTIONS = { 'search_beam_width': '48', 'construction_beam_width': '256', 'maximum_node_connections': '20', 'similarity_function': 'COSINE' }; The benchmark was run using VectorDBBench with the upcoming ScyllaDB Python driver built on a Rust core (a dev version is available at python-rs-driver). VectorDBBench ramps concurrency from 1 to 150 concurrent search clients and measures QPS, P99 and average latency at each level. A separate serial run of 1,000 queries measures recall and nDCG against brute-force ground truth. Results Peak QPS Comparison To start our analysis, let’s examine the maximum throughput that each index configuration can sustain under peak concurrency. When strictly looking at the highest throughput achieved: The bar chart highlights the dramatic impact of index parameters at k=10: throughput rises sharply as the index becomes lighter. At k=100, the differences are much smaller; all configurations cluster between 2,300 and 3,000 QPS. QPS vs Concurrency The chart below shows how each index configuration scales as concurrency ramps from 1 to 150 clients. At k=10, the lighter configurations (Experiments #3 and #4) scale nearly linearly up to 60–80 concurrent clients before saturating. Experiment #4 demonstrates the benefit of a leaner graph: it achieves 5.5X higher peak QPS than Experiment #1 at k=10. At k=100, all configurations converge to a narrower throughput band (2,300–3,025 QPS). This shows that retrieving 100 neighbors dominates the per-query cost regardless of index parameters. P99 and Average Latency vs Concurrency As expected, increasing throughput adds queuing delay, and that leads to higher tail latencies. <!-- Note: The original document had 6 images. The source note lists the order as 4-1-2-3-5-6. The text contains 7 [image] placeholders. Based on the document's structure, I will assume the sixth placeholder corresponds to the last chart (Average Latency) and omit the extra placeholder, as the source note only accounts for six images. I will adjust the numbering below. The original list was 4-1-2-3-5-6. I will use the final placeholder (Image 6 from source) here. The next section has another chart, so I will add a seventh placeholder and mark it as 'Source Unknown'. Lighter configurations start at dramatically lower baseline latencies. Experiment #4 maintains sub-6 ms P99 latency up to 30 concurrent clients, while Experiment #1 starts above 13 ms, even at concurrency 1. All configurations show latency rising proportionally once throughput saturates. This is the expected queuing behavior when the system is at capacity. QPS vs P99 Latency (Pareto View) Plotting throughput directly against tail latency provides a Pareto frontier of our benchmark configurations: This view makes the operational trade-off easier to read than the concurrency charts alone. At k=10, Experiments #3 and #4 push the frontier outward, with much higher QPS at the same or lower tail latency. At k=100, the frontier is tighter, which again shows that returning more neighbors dominates the total cost per query. Recall vs Peak QPS Finally, plotting recall helps select the optimal index strategy based on business requirements: This chart summarizes the core choice in a single picture: should you spend compute on accuracy or throughput? Experiment #1 sits at the high-recall end, Experiment #4 at the high-throughput end, and Experiment #2 emerges as the practical middle ground for workloads that need both. Scenario Analysis With the charts above as a visual reference, let’s examine the three main usage scenarios that emerge from the data. Scenario 1: Maximum Throughput Experiments #3 (M=24, ef_search=64) and #4 (M=20, ef_search=48) target workloads where throughput is the primary objective and moderate recall is acceptable — for example, coarse candidate retrieval stages in recommendation pipelines or semantic deduplication. At k=10, Experiment #4 reached a peak of 12,840 QPS at concurrency 100, with a serial P99 latency of just 5.5 ms and recall of 92.0%. Experiment #3 achieved 9,719 QPS with marginally better recall at 95.0% and a serial P99 of 6.0 ms. Even at k=100, these lightweight configurations delivered competitive throughput: Experiment #3 peaked at 3,025 QPS (87.9% recall), which is comparable to the heavier configurations. Retrieval of 100 neighbors per query inherently requires more work, which limits the throughput range across all configurations. Scenario 2: High Recall Experiment #1 (M=64, ef_search=192) prioritizes accuracy for applications that cannot tolerate missed results (e.g., high-fidelity semantic search, retrieval-augmented generation [RAG] pipelines, or compliance-sensitive retrieval). At k=10, the system delivered 99.2% recall and 99.1% nDCG — essentially indistinguishable from exact brute-force search. Peak QPS reached 2,324 with a serial P99 latency of 14.6 ms. At k=100, recall was 96.8% with 2,345 QPS and a serial P99 of 15.2 ms. The higher latency and lower throughput are a direct consequence of the richer graph (64 connections per node) and wider search beam (192 candidates), which evaluate substantially more distance computations per query. Scenario 3: Balanced Experiment #2 (M=32, ef_search=128) takes the middle ground, offering strong recall with significantly better throughput than the high-recall configuration. At k=10, it achieved 97.7% recall with 4,897 QPS — roughly double the throughput of Experiment #1, with only a 1.5 percentage-point recall reduction. The serial P99 was 8.7 ms. At k=100, recall was 92.0% with 2,975 QPS and a serial P99 of 9.6 ms. This configuration represents a practical sweet spot for many production deployments where both recall and throughput matter. Summary Tables k=100 Metric #1 M=64 ef_s=192 #2 M=32 ef_s=128 #3 M=24 ef_s=64 Peak QPS 2,345 (c=150) 2,975 (c=40) 3,025 (c=40) QPS @ c=10 947 1,314 1,489 Serial P99 Latency 15.2 ms 9.6 ms 7.8 ms P99 Latency @ c=1 15.5 ms 9.9 ms 8.1 ms P99 Latency @ c=100 81.2 ms 49.9 ms 49.6 ms Recall 96.8% 92.0% 87.9% nDCG 97.3% 93.1% 89.7% k=10 Metric #1 M=64 ef_s=192 #2 M=32 ef_s=128 #3 M=24 ef_s=64 #4 M=20 ef_s=48 Peak QPS 2,324 (c=100) 4,897 (c=80) 9,719 (c=80) 12,840 (c=100) QPS @ c=10 1,054 1,602 2,046 2,311 Serial P99 Latency 14.6 ms 8.7 ms 6.0 ms 5.5 ms P99 Latency @ c=1 14.0 ms 8.5 ms 6.2 ms 5.5 ms P99 Latency @ c=100 81.0 ms 38.1 ms 18.0 ms 12.3 ms Recall 99.2% 97.7% 95.0% 92.0% nDCG 99.1% 97.6% 94.9% 92.0% Key Takeaways k=10 vs k=100: At k=10, lighter index parameters yield massive throughput gains (up to 5.5X) with modest recall loss. At k=100, all configurations converge to a narrow QPS band (~1.3X range) because retrieving more neighbors dominates per-query cost. Recall trade-offs are favorable: At k=10, recall drops only 7.2 pp (99.2% to 92.0%) for a 5.5X QPS increase. At k=100, the trade-off is steeper: 8.9 pp for just 1.3X gain. Latency tracks index weight: Serial P99 drops from 14.6 ms to 5.5 ms at k=10, and from 15.2 ms to 7.8 ms at k=100, as lighter graphs require fewer distance computations. Saturation points differ: Experiments #1–#3 plateau around c=40–80; Experiment #4 scales further to c=100 before saturating, reflecting its lower per-query compute cost. Conclusion These results show that ScyllaDB Vector Search delivers strong performance even on a compact, five-node cluster with 10 million 768-dimensional vectors. A pair of r7g.2xlarge search nodes provides enough memory to hold the full HNSW index at f32 precision – without requiring any quantization. The three storage nodes with replication factor 3, combined with vector search nodes distributed across availability zones, also provide high availability. The system is designed to tolerate node failures without data loss or service interruption. Depending on the index configuration, the system can prioritize near-perfect recall (99.2% at k=10) or maximize throughput (12,840 QPS at k=10 with 92% recall), with practical balanced options in between. This 10M scenario represents the accessible end of the scale. For workloads that push into hundreds of millions or billions of vectors, quantization, additional search nodes and larger instances extend the same architecture. See the ScyllaDB 1-billion-vector benchmark for results at extreme scale, and look for our upcoming 100-million-vector benchmark post. At K=10, the performance bottleneck resides within the vector index nodes, leaving ScyllaDB with significant headroom. This means you can likely add a Vector Search index to your cluster and continue running a similar workload on your existing ScyllaDB infrastructure without needing to scale your database nodes. The full Jupyter notebook with interactive charts and all data is available in this repository. Ready to try it yourself? Follow the ScyllaDB Vector Search Quick Start Guide to get started.

ScyllaDB X Cloud: Your Questions Answered

A technical FAQ on ScyllaDB X Cloud: architecture, autoscaling, compression, use cases, and more It’s been a few months since ScyllaDB X Cloud landed. In case you missed the news, here’s a quick recap… ScyllaDB X Cloud is the next generation of ScyllaDB’s fully-managed database-as-a-service. It’s a truly elastic database designed to support variable/unpredictable workloads with consistent low latency as well as low costs. Users can scale out and scale in almost instantly to match actual usage. For example, you can scale all the way from 100K OPS to 2M OPS in just minutes, with consistent single-digit millisecond P99 latency. This means you don’t need to overprovision for the worst-case scenario or suffer the lag traditionally associated with ramping up capacity in response to a sudden surge. Some key features (all covered in Introducing ScyllaDB X Cloud: A (Mostly) Technical Overview): Tablets + just-in-time autoscaling Up to 90% storage utilization Support for mixed size clusters File-based streaming Dictionary-based compression Flex credit Here’s a look at ScyllaDB X Cloud in action:  Not surprisingly, users have been quite curious about all these changes and new options. So we thought we’d collect some of the most common questions here, along with our answers. In no particular order… What are the key differences between a “standard” ScyllaDB Cloud database and “ScyllaDB X Cloud”? Compared to a standard ScyllaDB Cloud database, ScyllaDB  X Cloud provides two major advantages: Faster scaling in and out. Higher storage utilization (90% vs. 70%). The above advantages are the result of two technical updates: X Cloud always uses Tablets, while standard databases can use a mix of vNode and Tablets keyspaces. X Cloud enables mixed sized clusters, so you can define more granular cluster and storage sizes. In which cases should you choose a “standard” ScyllaDB Cloud Database vs X Cloud? None! We’ve reached full parity now. Materialized views, CDC, Alternator (DynamoDB API), even counters – it’s all supported. Can I migrate from one type of ScyllaDB Cloud database to the other? Yes. If you are using a standard database with Tablets only, you can migrate this database to X Cloud. If you are using vNode keyspaces, you cannot (yet). How does X Cloud achieve higher storage utilization? Two factors enable higher storage utilization: Faster scaling removes the need to over-reserve storage space (or “sandbag”) while waiting for the cluster to expand Support for mixed instance sizes allows for more granular cluster size How can I start an X Cloud cluster? Simply choose the “X Cloud” Cluster Type on ScyllaDB Cloud’s Launch Cluster page. How can I set the scaling policy? Can I change it later, while the database is in production? (UI/API) The scaling policy is part of the X Cloud cluster properties. You can either set it when launching the cluster or update it later. The policy is optional. It defines the minimum required resources for your database in terms of vCPU and Storage. If you’re not sure how to set it, you can keep the default minimum values (zero) as is. The cluster will scale automatically if and when storage is approaching the threshold, and you can scale the vCPU as required by your workload. Note that the parameters affect each other since more storage may require more compute power. How are X Cloud and Tablets related? X Cloud takes advantage of (and depends on) Tablets to achieve faster scale and higher storage utilization. That means all Keyspaces in X Cloud must use Tablets, which is already the default for ScyllaDB Cloud. How can X Cloud help reduce database costs? There are a few ways that X Cloud reduces cost. The primary factor is the extreme elasticity. You can scale the cluster in and out, even multiple times per day, to meet the demand. If you cannot reliably plan the cluster usage, you can reserve a minimal deployment and pay for bursts using Flex Credit. The higher storage utilization means you use less cloud resources. Improved compression, both on the wire and at rest, reduces cost further. What’s a good use case for ScyllaDB X Cloud? Am I a good candidate for ScyllaDB X Cloud? New (greenfield) workloads should use X Cloud. Workloads that require frequent scaling out/in will benefit the most. For example: A workload with significant fluctuation throughout the day (e.g., peak hours during the evening). A workload with expected high demand on specific days of the year (e.g., Super Bowl, IPL games, or Black Friday). With X Cloud, scaling can be done days in advance. You don’t need to do it one or more weeks ahead. Difficult-to-predict workloads, with common (but volatile) bursts. How many times per day can X Cloud scale? As often as required. Although new nodes start serving requests very fast, it still takes time for the data balancing to be complete if you’re working with rather large nodes. Does X Cloud support multi-DC (region) deployment? Does each region scale independently? X Cloud does not yet support multi-datacenter deployment. Multi-DC support is coming with the 2026.2 release. Scaling Policy: I asked for storage of Y TB and got a bigger cluster with storage of W TB…why? Same for vCPU? vCPU, RAM, and Storage are not independent variables. ScyllaDB will allocate each of these 3 variables to support the required value of the other two. For example, higher storage requires more RAM – which requires more vCPU. The policy UI reflects the expected deployment per each resource selection. Can I suspend / resume the dynamic scaling? Currently: no. Can I restore a backup from X Cloud database to a standard database and vice versa? Yes, you can. Is X Cloud production ready? Absolutely, customers are already using it in production. Why should I care about advanced compression? What is the advantage of having it? ScyllaDB already supported compression before X Cloud – including at-rest and in-transit. However, dictionary-based compression is much more effective in reducing data overhead. By compressing data further, you save on disk space utilization (combined with up to 90% disk space utilization) as well as inter-AZ networking for data replication and high availability. X Cloud claims faster scaling. How fast is it really? The legacy vNode-based architecture imposed some limitations: Nodes could only be added one at a time, even across DCs. Data was replicated in rows – that is, rows were being transferred over the wire. A node only started serving requests after its streaming was fully completed. This process could easily take hours, if not days, to complete on large clusters. Now, X Cloud leverages tablets to remove those limits: Nodes can be added in parallel, multiple nodes at a time, including across DCs. Nodes join the cluster instantly, then start streaming data later. Streaming under Tablets relies on file-based streaming, transferring gigabytes of data per second in a very efficient process. As Tablet transfers complete, nodes start to serve requests immediately; this increases as more transfers complete, until the cluster rebalancing is completed. This allows X Cloud to scale to an unlimited number of nodes at a single step – and streaming data is made super efficient by file-based streaming. A cluster can go from 100K ops per second to 2M ops per second in a matter of a few minutes, not hours or days. Can I use Vector Search with X Cloud? Yes, you can! Enable the Vector Search option at the bottom of the Launch Cluster page and choose the Vector Search instances. Note that Vector Search index nodes scale independently from ScyllaDB nodes. You can learn more about Vector Search here.

6 Reasons ScyllaDB Costs a Fraction of DynamoDB

Why teams typically experience 50% (or greater) cost reductions when moving from DynamoDB to ScyllaDB DynamoDB is expensive at scale. Some of that cost is fundamental to the managed service model. But much of it is the pricing model, the way DynamoDB charges per read, per write, per byte, and per region. ScyllaDB rethinks pricing from first principles. The result: teams typically see more than 50% cost reductions on equivalent workloads. In this post, I’ll share a few reasons why. Cheap writes DynamoDB charges 5x more for writes than reads. Write a 1 KB item and it costs 5 write capacity units. Read the same 1 KB item and it costs 0.25 read capacity units. ScyllaDB pricing is based on provisioned cluster capacity (nodes), not per operation. Whether you do 10K writes/sec or 100K writes/sec on a 3-node cluster, the ScyllaDB cost remains the same. Write-heavy workloads for AI, real-time analytics, logging, time-series data and IoT sensors often see the biggest savings. Take a look at our AI Feature Store example. A batch workload scenario with overnight peaks approximately 3x the daytime average on DynamoDB will cost $2.2M/year. The same workload on ScyllaDB would cost $145K/year. In other words, that’s at least 15x savings just switching to ScyllaDB. No need for a separate cache DynamoDB’s baseline latency is in the 10-20ms range. For many applications, that’s unacceptable. In those cases, teams commonly deploy DAX, Redis, or Memcached on top. That adds cost, complexity, and another service to operate and monitor. ScyllaDB was built for low latency. Internal caching and a shard-per-core architecture deliver sub-millisecond latencies on reads. For most workloads, an external cache is unnecessary. Let’s look at a retail example with a read-heavy workload that is cached and running on demand. On DynamoDB running with DAX, that workload would cost $1.6M/year. The same workload on ScyllaDB would cost $271K/year (and even less if you switch to a hybrid plan). That’s at least 6x cheaper using ScyllaDB. Plus: there are fewer moving parts, simpler operations, and no cache coherency headaches. Affordable multi-region data centers DynamoDB Global Tables charge replicated writes (rWCUs) at a premium: roughly 2x the cost of normal writes. Moreover, cross-region data transfer incurs AWS’s standard rates: $0.02-0.09/GB. For a workload doing 10K writes/sec with 5 KB payloads across 2 regions, data transfer alone can add $10K+/month. A social media scenario modeled across 3 regions on DynamoDB would cost $11.0M/year. The huge cost is partly because the write capacity cannot be reserved, and you effectively pay twice for the writes. The same workload on ScyllaDB would cost $591K/year. That’s a monstrous +$10M/year saving by switching to ScyllaDB. ScyllaDB handles multi-DC replication natively. You provision nodes in each data center, and replication is built into the protocol along with shard-aware and rack-aware drivers. This helps minimize network overhead and avoids the per-operation premium. You pay for the cluster nodes; replication comes with the territory. Large items don’t cost more In DynamoDB, a 1 KB write costs 1 WCU, and a 10KB write costs 10 WCUs. Item size directly drives billing. This incentivizes shrinking payloads, compressing data, and splitting tables. Architectural decisions are driven by cost, not design. A simple on-demand scenario with DynamoDB using 3 KB item sizes would cost $633K/year. ScyllaDB would cost $39K/year. Along with multi-region, item size remains one of the biggest cost levers to pull when looking for savings on DynamoDB. ScyllaDB billing is independent of item size. Store 1 KB items or 100 KB items and the cluster cost is unchanged. You architect around performance and correctness, not billing thresholds. Making multi-tenancy work for you DynamoDB is multi-tenant infrastructure. That’s how AWS achieves efficiency. But it also means: You pay for provisioned capacity AWS oversubscribes hardware Idle capacity benefits AWS, not you You pay for the full machine, but AWS shares it with everyone else. Multi-tenant infrastructure reduces cost for AWS but increases risk for users. Large DynamoDB outages (like us-east-1) impact thousands of customers simultaneously. When shared infrastructure fails, the blast radius is enormous. ScyllaDB flips that model. You get a dedicated cluster, which gives you: Isolation by design The ability to run multiple workloads The option to share idle capacity internally This is especially powerful for: Multi-tenant SaaS Microservices Multiple environments (dev/staging/prod) Instead of provisioning 100 tables separately, you provision one cluster and use it fully. You control your infrastructure. AWS monetizes multi-tenancy. ScyllaDB lets you monetize it. Flexible and predictable pricing DynamoDB is excellent for certain use cases: serverless applications with unpredictable spikes, multi-tenant services that need table-level isolation, and teams that prioritize operational simplicity over cost. But if you’re running a predictable, scale-intensive workload – especially one that’s write-heavy, multi-region, or stores large items – then DynamoDB’s per-operation pricing model becomes a massive cost driver. ScyllaDB’s node-based, cluster-centric model is fundamentally more cost-efficient for these scenarios. Combined with its performance and operational features, it’s why teams see more than 50% cost reductions. Want to see the actual numbers for your workload? Use the ScyllaDB Cost Calculator at calculator.scylladb.com to model a comparison between your current DynamoDB spend and equivalent ScyllaDB infrastructure.

Apache Cassandra® 6 Accord transactions: What you need to know

There have always been architectural trade-offs when considering a distributed database like Apache Cassandra versus a relational database. Cassandra excels at linear horizontal scalability, multi-region replication, and fault-tolerant uptime that relational systems couldn’t match. This comes at the expense of general-purpose ACID (Atomicity, Consistency, Isolation, Durability) transactions which allows the ability to express complex, multi-row operations with guaranteed consistency.

With Cassandra 6 on its way to general availability status (and an alpha already released), we’re approaching a turning point where we can revisit whether these trade-offs will still exist. The latest version delivers general-purpose ACID transactions through a new protocol called Accord. With Cassandra 6, those transactional guarantees will be native, without compromising Cassandra’s operational model or availability.

Transactions

In database parlance, a transaction says, “These operations belong together. They must all be applied, or none of them.” The classic example is a bank transfer. When you move money from one account to another, two things must happen: a debit and a credit. If the debit succeeds but the credit fails, money has disappeared. A transaction prevents this issue by guaranteeing the two operations are atomic, meaning they succeed or fail as a unit; combined with isolation, no other process can see an immediate or half-finished state.

Experiences like these depend on transactional guarantees at the data layer, which rely on ACID semantics, particularly atomicity and isolation, to prevent inconsistent intermediate states.

For most developers who have worked with relational databases, transactions are so fundamental they’re almost invisible. For Cassandra users, comparable guarantees across multiple partitions or tables historically required significant application-level coordination or weren’t natively supported.

Coordination at scale is fundamentally hard

Because Cassandra is designed to deal with data replication and scaling, coordinating atomic changes across multiple nodes is inherently challenging (e.g., decrement a balance here, increment one there). All participating replicas must agree on an order of operations. Distributed consensus protocols exist to solve exactly this, but prior approaches came with trade-offs.

Raft and Zab are examples of protocols that use leaders, which is not suitable for Cassandra since nodes are treated equally.

More information about prior solutions can be found in more details in CEP-15, but generally, leader-based approaches pose issues at scale.

The Accord protocol

The Accord protocol, proposed in CEP-15, is built to achieve fast, general-purpose distributed transactions that remain stable under the same failure conditions Cassandra already tolerates— with no elected leaders.

How it orders transactions

Accord is leaderless so any node can coordinate any transaction. Transactions are assigned unique timestamps using hybrid logical clocks, where each node appends its own unique ID to its clock value to ensure global uniqueness across the cluster. Conflicting transactions execute in timestamp order across all replicas. Under normal conditions, a transaction reaches consensus in a single round trip.

The reorder buffer

The challenge with timestamp-based ordering in a geo-distributed system is that two transactions started concurrently from different regions might arrive at replicas in different orders, breaking fast-path consensus. Accord solves this by having replicas buffer incoming transactions. The wait time is precisely bounded to be just long enough to account for clock differences between nodes and network latency, and no longer. This guarantees that replicas always process transactions in the correct order without needing extra message rounds.

Fast-path electorates

When replicas fail, other leaderless protocols fall back to slower, more expensive message patterns. Accord avoids this by dynamically adjusting which replicas participate in fast-path decisions as failures occur. The result is that Accord maintains fast-path availability under failure, avoiding the degradation to slower message patterns that other leaderless protocols experience.

The net effect: strict serializable isolation across multiple partitions and tables, in a single round trip, with no leaders, and preserving performance characteristics under the same minority‑failure conditions that Cassandra is designed to tolerate.

New CQL syntax to support transactions

The most visible change for developers is new CQL syntax. Transactions in Cassandra 6 are wrapped in BEGIN TRANSACTION and COMMIT TRANSACTION blocks, similar to SQL syntax.

Let’s examine a flight booking transaction that must simultaneously reserve a seat and deduct loyalty miles from two separate tables. Note: Cassandra 6 is pre-release. Syntax shown reflects the current alpha and may evolve before general availability.

BEGIN TRANSACTION LET seat = (SELECT available FROM flight_seats WHERE flight_id = 'ZZ101' AND seat_number = '14C'); LET miles = (SELECT balance FROM loyalty_accounts WHERE member_id = 'M-7823'); IF seat.available = true AND miles.balance >= 25000 THEN UPDATE flight_seats SET available = false, booked_by = 'M-7823' WHERE flight_id = 'ZZ101' AND seat_number = '14C'; UPDATE loyalty_accounts SET balance = miles.balance - 25000 WHERE member_id = 'M-7823'; END IF COMMIT TRANSACTION ;

Everything between BEGIN TRANSACTION and COMMIT TRANSACTION executes atomically with strict serializable isolation from the perspective of all other concurrent transactions. The LET clause reads current values from the database and binds them to variables. The IF block uses those values to guard the writes. If the seat is already taken or the member doesn’t have enough miles, nothing happens. Both updates either apply together or not at all, across two different tables and two different partition keys.

This is logic that previously had to live in the application, complete with retry handling, race condition guards, and compensating operations if something failed halfway through. Now it lives in the database.

Enabling Accord in Cassandra 6: The CMS dependency

We can’t talk about Accord without discussing Cluster Metadata Service (CMS). Before Accord transactions are functional, Cluster Metadata Service (CMS), introduced alongside Accord as CEP-21, must be enabled. For teams upgrading from Cassandra 5, this is the most significant operational change in the release.

CMS is required. Accord needs every replica to have the same authoritative view of cluster topology showing which nodes own which data, and which replicas participate in a given transaction. Before Cassandra 6, this information was propagated via the eventually consistent Gossip Protocol. This is suitable for normal reads and writes, but Accord’s correctness depends on knowing precisely who the transaction participants are before committing. CMS replaces Gossip-based metadata propagation with a distributed, linearized transaction log, giving all nodes a consistent view of cluster state. Without it, Accord’s guarantees don’t hold.

Upgrading from Cassandra 5 to 6—plan carefully

The upgrade cannot begin until every node in the cluster is running Cassandra 6. CMS initialization requires full cluster agreement; no mixed-version clusters are supported. Before upgrading, disable any automation that could trigger schema changes, node bootstrapping, decommissions, or replacements. These operations are blocked during the upgrade window, and if they fire on an older node before CMS is initialized, the migration can fail in ways that require manual intervention to recover.

Once all nodes are upgraded, run nodetool cms initialize on one node to activate CMS. This creates the service with a single member, which is enough to unblock metadata operations but is not suitable for production. Follow up immediately with nodetool cms reconfigure to add more members. CMS uses Paxos internally and requires a minimum of three nodes for a viable quorum, with more recommended for production depending on cluster size.

Important: CMS initialization is not easily reversible. Plan the upgrade window accordingly and treat it as a one-way operational step.

On a fresh Cassandra 6 cluster that wasn’t migrated from a previous version, CMS is automatically enabled. First, one node is designated as the initial CMS member. From there, CMS membership scales automatically based on cluster size, with the service adding members as the cluster grows without requiring manual intervention.

Of course, for Instaclustr users, our platform and techops team will take care of most of this for you and walk you through any requirements on your side when the time comes to upgrade.

Coexistence with Lightweight Transactions (LWT)

Existing LWT syntax (IF NOT EXISTS, IF EXISTS, conditional UPDATE/INSERT statements) continues to work and fundamentally differs from Accord transactions as LWT is scoped to a single partition and is extremely limited. Accord doesn’t replace or break existing applications. Using BEGIN TRANSACTION/END TRANSACTION is how developers opt into the broader cross-partition guarantees.

Why this is architecturally significant

Every prior approach to distributed transactions required accepting one of three constraints: a global leader (single point of failure, WAN latency penalty), limited to single-partition scope (LWT), or degraded performance under failure (prior leaderless protocols). The Accord paper’s central claim is that these constraints are not fundamental. They are artifacts of specific protocol design choices.

By combining flexible fast-path electorates with a timestamp reorder buffer on top of a leaderless execution model, Accord achieves:

  • True cross-partition atomicity across multiple tables and partition keys
  • Strict serializable isolation with formally proven correctness
  • Single round-trip latency under normal operating conditions
  • Failure‑tolerant steady‑state performance, avoiding the systematic degradation seen in earlier leaderless protocols
  • No elected leaders, consistent with Cassandra’s existing operational model

This opens workloads that were previously natively incompatible with Cassandra: financial transaction processing, distributed inventory reservation, multi-step workflow coordination, and any application where ‘commit these changes together or not at all’ is a strict correctness requirement.

Looking ahead

Though the Accord protocol is still maturing, the fundamental capability is finally here. We now have general-purpose, leaderless, multi-partition ACID transactions natively in Apache Cassandra.

The historically difficult problem of achieving strict serializable isolation in a geo-distributed system without compromising fault tolerance now has a proven, working answer.

For Cassandra users, this raises an exciting question: which workloads have you been routing to relational databases specifically because they needed transactional guarantees? It is time to reevaluate.

Stay tuned for a preview release of Cassandra 6 on the Instaclustr Platform and get ready to experience the power of ACID transactions on Cassandra for yourself!

The post Apache Cassandra® 6 Accord transactions: What you need to know appeared first on Instaclustr.

4 DynamoDB Configuration Changes for Significant Cost Savings

Learn about ways to cut DynamoDB costs with minimal code changes, zero migration, and no architectural upheaval If you’re running DynamoDB at scale, your bill might be tens of thousands of dollars higher than it needs to be. However, most teams don’t need a complete migration or architecture overhaul to save significantly. These configuration changes, all easily implemented, can reduce your costs by 50-80%. This guide covers the biggest wins for DynamoDB cost optimization, with the real math behind each recommendation. We will be sharing links to the ScyllaDB Cost Calculator at calculator.scylladb.com, which lets you model different workload scenarios with customized parameters and compare ScyllaDB pricing to DynamoDB pricing at the click of a button.   Switch from on-demand to provisioned + reserved capacity This is the single biggest DynamoDB cost lever for most teams. On-demand capacity is convenient at first, with no planning required and just pay-as-you-go. But it’s also expensive. After AWS’s recent price reduction, on-demand costs 7.5x more than provisioned capacity. Before the drop, it was roughly 15x. Either way, the math is brutal. Let’s look at a simple example: a mid-sized workload running 10,000 reads/sec and 10,000 writes/sec, 24/7. On-Demand: ~$239K/year Provisioned: ~$71K/year Reserved: ~$34K/year That’s a 7x difference between on-demand and reserved. Even if your workload isn’t perfectly predictable, reserved capacity often pays for itself within months. The trade-off here is that you need a predictable load and the financial flexibility to commit. If your traffic varies wildly (or you’re short-term focused) provisioned mode without reservation is the middle ground. Still, it’s 3.3x cheaper than on-demand. Optimize item sizes DynamoDB’s billing is granular: writes are charged per 1KB of item size, and reads per 4KB. This means a 1.1KB item costs the same as a 2KB item on writes. If your items are consistently over these thresholds by a small margin, you’re paying 2-3x more than necessary. Let’s look at the same simple example, but with increasing item size for comparison. On-Demand with 1KB items: ~$239K/year On-Demand with 10KB items: ~$2M/year On-Demand with 100KB items: ~$20M/year Common culprits for higher DynamoDB costs here: Nested JSON with whitespace or redundant fields Variable-length strings with no trimming Metadata or audit fields added to every item Base64-encoded payloads What should you do? Compress JSON payloads before storage, remove redundant attributes, move infrequently accessed data to a separate table, or use a columnar storage strategy. Trimming just 200 bytes per item – across millions of items and thousands of writes/sec – adds up to thousands per month. Deploy DAX (DynamoDB Accelerator) for read-heavy workloads If your workload skews heavily toward reads and you’re not using an in-memory cache layer yet, DAX is one of the highest ROI moves you can make. DAX sits in front of DynamoDB and caches frequently accessed items in memory. Cache hits bypass DynamoDB entirely, meaning you avoid the RCU charge. For hot items queried thousands of times per minute, a single DAX cluster can reduce DynamoDB read capacity needs. Let’s look at another simple example: a read-heavy workload running 80,000 reads/sec and 1,000 writes/sec, 24/7. On-Demand: ~$335K/year On-Demand with DAX: ~$158K/year The cost math: a medium sized DAX cluster (3 nodes, cache.r5g.8xlarge) costs roughly $9K/month. A high hit rate on your cache will proportionally reduce your more expensive read costs. That can lead to potentially hundreds of thousands of dollars saved with DynamoDB. Bonus: DAX also improves latency dramatically. Cache hits respond in microseconds rather than milliseconds. Use the DynamoDB Infrequent Access (IA) table class Not all tables are created equal. If you have tables where data is accessed rarely but storage is high (think audit logs, historical records, compliance archives, or cold lookup tables), then the Standard-IA table class can save you substantially on storage. The pricing difference: Standard class: $0.25/GB Standard-IA class: $0.10/GB (up to 60% savings) The catch is that IA has a minimum item size of 100 bytes and a minimum billing duration. It’s designed for cold data. So, if you’re frequently scanning or querying these tables, IA isn’t the right fit (read costs are identical, but you lose the write discount). However, for true archive tables accessed only occasionally, it’s a no-brainer. The bottom line These four DynamoDB changes require minimal code changes, zero migration, and no architectural upheaval. They’re configuration changes, caching tweaks, and data optimization. Combined, they typically deliver massive cost reductions. Start with switching to provisioned + reserved (highest impact), then layer in the others based on your workload shape. Ready to model your savings? Use the ScyllaDB Cost Calculator at calculator.scylladb.com to compare your current DynamoDB costs against these optimizations. And to save even more, see how ScyllaDB compares.

Shrinking the Search: Introducing ScyllaDB Vector Quantization

Learn how ScyllaDB Vector Quantization shrinks your vector index memory by up to 30x for cost-efficient, real-time AI applications Earlier this year, ScyllaDB launched integrated Vector Search, delivering sub-2ms P99 latencies for billion-vector datasets. However, high-dimensional vectors are notoriously memory-hungry. To help with memory efficiency, ScyllaDB recently introduced Vector Quantization. This allows you to shrink the index memory footprint for storing vectors by up to 30x (excluding index structure) without sacrificing the real-time performance ScyllaDB is known for. What is Quantization? To understand how we compress massive AI datasets, let’s look to the fundamentals of computer science. As Sam Rose explains in the ngrok blog on quantization, computers store numbers in bits, and representing high-precision decimal numbers (floating point) requires a significant number of them. Standard vectors use 32-bit floating point (f32) precision, where each dimension takes 4 bytes. Quantization is the process of compromising on this “floating point precision” to save space. By sacrificing some significant figures of accuracy, we can represent vectors as smaller 16-bit floats or even 8-bit or 1-bit integers. As Sam notes, while this results in a “precision compromise,” modern AI models are remarkably robust to this loss of information. They often maintain high quality even when compressed significantly. The Trade-off: Memory vs. Accuracy In ScyllaDB 2026.1, quantization is an index-only feature. The original source data remains at full precision in storage, while the in-memory HNSW index is compressed. This allows you to choose the level of “information loss” you are willing to accept for a given memory budget: Level Bytes/Dim Memory Savings Best For f32 (default) 4 1x (None) Small datasets, highest possible recall. f16 / bf16 2 ~2x Good balance of accuracy and memory. i8 1 ~4x Large datasets with moderate recall loss. b1 0.125 ~32x Maximum savings for massive datasets. CRITICAL NOTE: Quantization only compresses the vector data itself. The HNSW graph structure (the “neighbor lists” that make search fast) remains uncompressed to ensure query performance. Because of this fixed graph overhead, an i8 index typically provides a total memory reduction of ~3x rather than a raw 4x. Calculating Your Memory Needs To size your ScyllaDB Vector Search cluster effectively, be sure to consider both vector data and graph overhead. The total memory required for a vector index can be estimated with this formula: Memory ≈ N * (D * B + m * 16) * 1.2 N: Total number of vectors. D: Dimensions (e.g., 768 or 1536). B: Bytes per dimension based on quantization level (f32=4, i8=1, b1=0.125). m: Maximum connections per node (default 16). 1.2: 20% operational headroom for system processes and query handling. Example: 10 Million OpenAI Embeddings (768 Dimensions) Using this formula, let’s see how quantization affects your choice of AWS EC2 instances on ScyllaDB Cloud (which primarily utilizes the r7g Graviton and r7i Intel families): f32 (No Quantization): Requires ~40 GB RAM. You would need an r7g.2xlarge (64 GB) to ensure headroom. i8 Quantization: Requires ~12 GB RAM. You can comfortably drop to an r7g.xlarge (32 GB). b1 (1-bit): Requires ~4 GB RAM. This fits on a tiny r7g.medium (8 GB). By moving from f32 to i8, you can drop 2-3 instance tiers. This gets you significant cost savings. Improving Accuracy with Oversampling and Rescoring To mitigate the accuracy loss from quantization, ScyllaDB provides two complementary mechanisms. Oversampling retrieves a larger candidate set during the initial index search, increasing the chance that the true nearest neighbors are included. When a client requests the top K vectors, the algorithm retrieves ceiling(K * oversampling) candidates, sorts them by distance, and returns only the top K. A larger candidate pool means better recall without any extra round-trips to the application. Even without quantization, setting oversampling above 1.0 can improve recall on high-dimensionality datasets. Rescoring is a second-pass operation that recalculates distances using the original full-precision vectors stored in ScyllaDB, then re-ranks candidates before returning results. Because it must fetch and recompute exact distances for every candidate, rescoring can reduce search throughput by roughly 2x – so enable it only when high recall is critical. Note that rescoring is only beneficial when quantization is enabled; for unquantized indexes (default f32), the index already contains full-precision data, making the rescoring pass redundant. Both features are configured as index options when creating a vector index: CREATE CUSTOM INDEX ON myapp.comments(comment_vector) USING 'vector_index' WITH OPTIONS = { 'similarity_function': 'COSINE', 'quantization': 'i8', 'oversampling': '5.0', 'rescoring': 'true' }; When (and When Not) to Use Quantization Use quantization when: You are managing millions or billions of vectors and need to control costs. You are memory-constrained but can tolerate a small drop in recall. You are using high-dimensional vectors (≥ 768), where the savings are most pronounced. Avoid quantization when: You have a small dataset where memory is not a bottleneck. Highest possible recall is your only priority. Your application cannot afford the ~2x throughput reduction that comes with rescoring—the process of recalculating exact distances using the original f32 data to improve accuracy. Choosing the Right Configuration for Your Scenario Here are some guidelines to help you select the right configuration: Scenario Recommendation Small dataset, high recall required Use default f32 — no quantization needed. Large dataset, memory-constrained Use i8 or f16 with oversampling of 3.0–10.0. Add rescoring: true only if very high recall is required. Very large dataset, approximate results acceptable Use b1 for maximum memory savings. Enable oversampling to compensate for accuracy loss. High-dimensionality vectors (≥ 768) Consider oversampling > 1.0 even with f32 to improve recall. Try ScyllaDB Vector Search Now Quantization is just one part of the ScyllaDB 2026.1 release, which also includes Filtering, Similarity Values, and Real-Time Ingestion. With these tools, you can build production-grade RAG applications that are both blazingly fast and cost-efficient. Vector Search is available in ScyllaDB Cloud. Get Started: Check out the Quick Start Guide to Vector Search in ScyllaDB Cloud. Deep Dive: Read our past posts on building a Movie Recommendation App or our 1-billion vector benchmark. Documentation: View the full ScyllaDB Cloud Vector Search Documentation. Try ScyllaDB Cloud for free today and see how quantization can supercharge your AI infrastructure.