Riding the Raft to Strong Consistency in ScyllaDB
How ScyllaDB is using per-tablet Raft groups to bring strong consistency to data, without sacrificing the parallelism that makes it fast Distributed systems do not give us simple guarantees for free Distributed databases live in a world where failure is normal. Nodes fail. Networks could have partitions. Clocks might be different in each area that you’re working in. Messages can be delayed or never arrive because of the network itself. A request that looks simple from the application side may cross replicas, shards, data centers, coordinators, and recovery paths before the database can safely answer it. Consistency is one of the most important contracts between the database and the application…and it’s hard. When the database says a write succeeded, what exactly does that mean? When a second client reads the same key, what state should it see? When two updates race, who wins, and can the application reason about the result? For many workloads, eventual consistency is the right approach. It gives a distributed database room to stay highly available and fast, even when part of the system is under stress. For now, these workloads are where ScyllaDB shines. But for other workloads, “eventually correct” creates too much ambiguity. Those workloads need a stronger contract. Eventual consistency was the right foundation for ScyllaDB ScyllaDB started as a high-performance, Cassandra-compatible, eventually consistent database. That model is powerful: the system is leaderless, work is distributed across shards, and applications choose consistency levels such as ONE, QUORUM, or ALL (depending on their needs). In this model, a client sends a write to a coordinator, the coordinator forwards it to replicas, and the operation is acknowledged according to the selected consistency level. Reads follow a similar pattern: replicas respond, and the coordinator waits for enough responses to satisfy the requested consistency level. Figure 1: Write and read patterns This design gives applications a flexible tradeoff between latency, availability, and consistency. It remains valuable, especially for high-scale workloads that prioritize availability and throughput. But some parts of a database should not be “eventual” Eventual consistency becomes harder when the data being changed is not naturally commutative, when different observers must agree on one order of events, or when a wrong answer is expensive. Metadata is the clearest example. Schema, topology, tablet placement, and cluster state describe the database’s internal operations. If nodes disagree about this information, the system becomes harder to operate safely. The same pattern appears in application data. Counters, account balances, inventory reservations, entitlement checks, idempotency records, and conditional updates all become simpler when the database can provide a clear, strongly ordered answer. Without that guarantee, application developers often compensate by adding retries, custom conflict resolution, reconciliation jobs, or application-side locks. Figure 2: Gossip-based topology spreads membership information without a single global source of truth, which is powerful for availability but eventually consistent by design. For example, “last-write-wins” sounds simple: keep the newest update. But if two clients update the same value at the same time, one update can disappear.Initial value: {} Client
1 writes: {A} Client 2 writes: {B} Final value: {B} Both
writes may have been accepted, but only one survives. The problem
is that last-write-wins avoids coordination, but it does not merge
intent. For mutable data, this can mean lost updates. To learn
more: https://aphyr.com/posts/294-jepsen-cassandra
Strong consistency gives the system one accepted order An
alternative approach is strong consistency. Instead of allowing
independent updates to happen concurrently and converge later, the
system establishes one accepted order for operations. In practical
terms, this means that once an operation is committed, later
operations observe that committed state according to the
consistency model. This provides correctness as well as simplicity.
Developers can reason about the database as if there is one clear
sequence of operations. Operators can reason about topology and
schema changes as deterministic state transitions. And the database
can remove entire classes of ambiguity because it no longer needs
to guess which version of the world is the right one. Strong
consistency is an all-around simpler programming model for the
parts of the application where correctness, ordering, and
predictability matter more than the lowest possible write latency.
Why Raft is the right building block Raft provides the foundation
for this stronger consistency model. At a high level, a Raft group
chooses one node to be the leader. The leader receives the request,
records it, and makes sure most of the group has the same record.
Only then does the group treat the request as accepted.
Figure 3: Raft request access by majority process Because
all nodes follow the same ordered list of accepted requests, they
all reach the same result in a clear and predictable way. This
model is especially useful in a distributed database because it
gives the system a clear answer to a hard question: Who is
allowed to decide what happens next? In Raft, the leader
proposes the order and the majority confirms it. ScyllaDB adopted
Raft because some database operations are too important to be left
to eventually converging metadata. Schema changes, topology
changes, and strongly consistent data operations all need a clear,
agreed-upon order. Without that, two nodes may observe changes in
different orders, or the system may need complex recovery logic to
repair disagreement after the fact.
Figure 4: Raft turns a distributed decision into an ordered
log: leader election, append, replicate to a majority, commit, and
apply. This is also important for elasticity. ScyllaDB’s
tablet architecture is designed for flexible data distribution
across the cluster, and Raft-managed topology allows operations
such as adding nodes and moving data to be coordinated safely.
ScyllaDB uses tablets, together with consistent topology updates,
as a foundation for faster and more flexible scaling. In other
words, ScyllaDB adopted Raft not just because Raft is a well-known
consensus algorithm, but because it gives the database a reliable
coordination layer. It replaces “every node eventually figures it
out” with “the group agrees on the order first, then applies the
result.” That is the foundation needed for strong consistency;
there’s just one: Agreed order. Committed history. Deterministic
path from request to replicated state. At ScyllaDB, the first step
in adopting Raft was to use it for topology and metadata changes.
This gave those critical operations strong consistency guarantees
while also reducing complexity across the system.
Figure 5: In ScyllaDB, shard 0 runs Raft for metadata tables
while the other shards continue doing user-data and storage-engine
work. The next milestone for ScyllaDB: strongly consistent
tables Our next step is bringing the same idea to user data through
strongly consistent tables. A strongly consistent table is built on
top of the Raft log. A write is routed to the Raft leader for the
relevant tablet group, appended to that group’s log, replicated to
a majority, committed, and applied to the storage engine.
Figure 6: High-level strongly consistent write path: route to
the tablet group leader, append to the Raft log, replicate to a
majority, commit, and apply to storage. This is a major shift
in how users can model correctness in ScyllaDB. Instead of treating
strong guarantees as a special case workaround, users can choose a
consistency model at the data-modeling level. Tables that need the
classic high throughput eventual consistency behavior can keep it.
Tables that need stronger ordering can use the strong path. It’s
important to note: ScyllaDB is not replacing eventual consistency.
We are offering multi-consistency. Our users will be able to choose
the right consistency model for each workload. And we will deliver
strong performance in both cases. Why a Raft Group for each tablet?
In ScyllaDB, we already use Raft for important system-level
coordination. For example, Raft is used to safely sequence topology
and schema metadata changes. That makes cluster operations
consistent and reliable. So a natural question is: If we
already have Group 0, why not use it as the single synchronization
point for all strongly consistent data operations? At
first glance, that sounds simpler. We already have one Raft group
in the system. We could use it as the “master sync point” for every
read, write, and data-related operation. But, unfortunately, it’s
not that simple. ScyllaDB clusters can contain many tablets.
Tablets are the basic units of data distribution: each tablet owns
a portion of a table’s data and can be independently managed and
moved across the cluster. To understand the issue, imagine a busy
system with many tablets, heavy reads, heavy writes, topology
activity, background work, maintenance operations, and user traffic
all happening at the same time. If all of these operations had to
pass through a single Raft group, that group would become a global
synchronization bottleneck. Because Raft is a consensus protocol,
operations must be ordered and committed consistently. (That’s what
gives us correctness). But if one global group is responsible for
ordering everything, then unrelated operations are forced into the
same queue. A write to one tablet may have to wait behind work for
another tablet. A read or write on one part of the dataset may be
delayed by background activity somewhere else in the cluster. All
this hurts both latency and throughput. A better option is to
“divide and conquer.” Since the tablet is already the natural unit
of data ownership, we can also make it the natural unit of
synchronization. Instead of forcing all strongly consistent
operations through one global Raft group, each tablet gets its own
Raft group. This means each tablet handles its own coordination,
replication, and bookkeeping. Operations on one tablet do not need
to block unrelated operations on another tablet. The system can
make progress in parallel, across many independent Raft groups,
instead of serializing everything through a single global queue.
The result is a much more scalable architecture with: Lower
contention: Each Raft group handles only the operations
for its own tablet. Better parallelism: Many
tablets can process strongly consistent operations at the same
time. Improved throughput: The system is no longer
limited by one global synchronization point. Lower
latency: Unrelated operations do not wait behind each
other as often. Better user experience: Strong
consistency becomes practical without turning the entire database
into a single serialized pipeline. This is the same basic reason
ScyllaDB’s tablet architecture exists in the first place: splitting
data into smaller independent units allows the system to scale,
rebalance, and operate in parallel. Tablets were designed to
support faster, more flexible scaling by separating data ownership
from fixed server ownership. A single global Raft group is nice
because it is easier to reason about. However, ScyllaDB is built
for high-throughput, low-latency workloads. A single global queue
for all of them would immediately become the bottleneck. By
assigning a Raft group to each tablet, we keep the correctness
properties of Raft while preserving the parallelism that makes
ScyllaDB fast. Each tablet becomes an independent unit of
consistency. The cluster as a whole can continue to behave like a
distributed, parallel database rather than a single synchronized
queue. In short: Group 0 is great for global
metadata. Per-tablet Raft groups are what make
strong consistency scalable for user data. Raft
leaders and followers: one voice for the group Raft is a consensus
protocol designed around a simple idea: instead of allowing every
replica to independently decide what should happen next, the group
elects one replica to act as the leader. The other
replicas become followers. This leader-based model
makes the system easier to reason about because all changes flow
through a single authority for that Raft group. The original Raft paper describes
this as one of Raft’s main design choices: decomposing consensus
into understandable pieces, especially leader election and log
replication. In normal operation, the leader is
responsible for accepting new operations, appending them to its
log, and replicating those log entries to the followers. A follower
does not independently decide the order of operations. Instead, it
follows the leader’s log and acknowledges replicated entries. Once
an entry is safely replicated to a majority of the group, it can be
considered committed and applied to the replicated state machine.
This is the core mechanism that allows multiple machines to behave
as if they agreed on one ordered history of changes. The important
point is that the leader is not “more correct” than the followers.
It is simply the replica currently elected to coordinate the group.
Followers still store the replicated state, validate the leader’s
messages according to the Raft rules, and participate in making
progress by acknowledging replicated entries. The leader can only
commit entries when it has agreement from a quorum. This is why
Raft depends on a majority of replicas being available; without a
quorum, the group cannot safely make new decisions. ScyllaDB’s
Raft documentation also highlights this quorum requirement for
Raft-managed operations. A useful way to think about it is this:
The leader proposes the order. The followers confirm and
persist that order. The majority makes it durable. Raft
leaders also send periodic heartbeat messages to followers. These
heartbeats tell the followers that the leader is still alive and
still responsible for the current term. As long as followers keep
receiving valid communication from the leader, they remain
followers. If a follower stops hearing from the leader for long
enough, it assumes the leader may have failed and starts an
election by becoming a candidate. If that candidate receives votes
from a majority, it becomes the new leader. This election mechanism
allows the group to recover automatically when the current leader
crashes or becomes unreachable. This distinction between leader and
follower is especially important in distributed databases. A
database cluster is not running on one machine. It is running
across many machines, and those machines can fail, restart,
disconnect, or see events in different orders. Without a clear
coordination model, two replicas could make conflicting decisions
at the same time. Raft avoids that by ensuring that, for a given
term and Raft group, there is one leader responsible for sequencing
new changes. In ScyllaDB, Raft has already been used to make
important metadata operations safer and more consistent, including
schema and topology changes. ScyllaDB’s work on Raft-managed
topology means topology operations are internally sequenced
consistently, rather than relying on each node to independently
converge on the same result. ScyllaDB also has one place that
coordinates topology changes together with the Raft leader. If that
leader goes down, another leader can take over and continue from
the same shared information, instead of guessing or starting from a
different view. For strongly consistent data, the same basic idea
applies: the leader of the relevant Raft group is the place where
the ordered history of that group is created. A write is not just
“sent somewhere and eventually copied.” It is placed into a
replicated log, agreed on by a majority, and then applied in the
same order by the replicas. Followers are not passive backups in
the weak sense; they are active participants in preserving the
agreed history. This model gives us a clean mental picture:
Without Raft: replicas may need to reconcile
different views after the fact. With Raft:
replicas agree on the order first, then apply the result. That is
the key difference. Raft does not remove the complexity of
distributed systems; failures, latency, partitions, and recovery
still exist. But it gives the system a disciplined way to handle
that complexity. The leader gives each Raft group a single
coordination point, the followers provide durable replicated state,
and the quorum rule ensures that progress is made only when enough
replicas agree. In other words, Raft leader/follower replication is
not about creating one “special” node forever. It is about creating
a temporary, elected coordinator that gives the group one
consistent voice. If that voice disappears, the group elects
another one. The result is a system that can keep a strongly
ordered history of changes even while individual machines come and
go. Leader awareness: sending requests to the right place Now that
we’ve seen how every Raft group has a leader, let’s look at the
next important question: How does the client know where to
send the request? In a Raft-based system, the leader is
the replica that coordinates the work for the group. It decides the
order of operations, appends new entries to the replicated log, and
drives replication to the followers. For ScyllaDB Strong
Consistency, where every tablet has its own Raft group, this means
that every tablet also has a current Raft leader. That creates an
important difference from eventual consistency. With eventual
consistency, a client request can usually be sent to one of the
replicas, and that replica can act as the coordinator for the
operation. The driver does not necessarily need to know which
replica is “special,” because there is no Raft leader that must
order the operation first. With strong consistency, the situation
is different. If a request reaches a follower, that follower cannot
independently decide the order of the operation. The leader must
coordinate the operation. The follower may have the data, and it
may be part of the Raft group, but it is not the replica currently
responsible for sequencing new writes or strongly consistent
operations. So the request has to reach the leader. Request
forwarding To make this work, ScyllaDB implements request
forwarding. It works like this: The client sends a request
to one of the replicas. If that replica is the Raft leader for the
tablet, it handles the request directly. If that replica is a
follower, it acts as a proxy for the request. The leader processes
the request through Raft. The result is returned back through the
forwarding replica to the client. This gives us an important
correctness property: Even if the client reaches the wrong
replica, the operation is still coordinated by the Raft
leader. That is exactly what we want. The leader remains
the single place where the ordered history of the tablet is
created. Followers can help route the request, but they do not
bypass the leader or make independent decisions. This forwarding
mechanism is especially useful because leadership can change. A
leader may fail, restart, become unreachable, or step down. When
that happens, the Raft group elects a new leader. Request
forwarding gives the system a way to continue operating even when
the client does not yet know about the new leadership state. The
cost of forwarding However, request forwarding has a cost. If the
client sends the request to a follower, the request has to make an
extra network hop: client → follower → leader → follower →
client Instead of the simpler path: client → leader →
client That extra communication adds latency. It also
increases the number of messages inside the cluster. For occasional
requests, this may be acceptable. But for a high-performance
database, especially under heavy read and write workloads,
unnecessary network hops matter. This is where leader awareness
becomes important.
Leader-aware drivers A leader-aware driver allows
the client driver itself to learn which replica is the leader for a
given tablet. Instead of blindly sending requests to any replica
and relying on forwarding, the driver can send future requests
directly to the leader. The first request may still go to any
replica. If it reaches a follower, the follower can forward it to
the leader. But when the response comes back, the driver can also
learn: “For this tablet, this replica is currently the
leader.” From that point on, the driver can route requests
directly to the leader. So the flow becomes: The driver sends an
initial request. If needed, ScyllaDB forwards the request to the
current leader. The response includes updated leader information.
The driver remembers the leader for that tablet. Future requests go
directly to the leader. This keeps the correctness benefit of
forwarding, while reducing its performance cost. Forwarding is
still needed Leader-aware drivers do not remove the need for
request forwarding completely. Leadership is not permanent. A Raft
leader can change at any time due to failures, restarts, topology
changes, or elections. When that happens, the driver may
temporarily have stale information. In that case, forwarding is
still the safety net: If the driver sends a request to the
old leader or to a follower, ScyllaDB can forward the request to
the new leader and update the driver again. So forwarding
remains important, but it becomes the exception rather than the
normal path. Instead of paying the forwarding cost on every
request, we mainly pay it at the beginning of
communication, after the leader has changed, or when the driver’s
leader information is stale. That is a much better model
for performance. Balancing correctness and performance Leader
awareness gives us the best of both worlds. Request forwarding
gives us correctness and simplicity: requests always reach the Raft
leader, even if the client does not know who the leader is.
Leader-aware drivers give us performance: once the driver learns
the leader, it can avoid unnecessary hops and send requests
directly to the right replica. For strongly consistent workloads,
this is a major optimization. Strong consistency already requires
coordination, replication, and quorum agreement. We do not want to
add avoidable network hops on top of that. By making the driver
aware of tablet leadership, ScyllaDB can preserve the Raft
correctness model while reducing latency and improving throughput.
In short: Request forwarding makes strong consistency
work. Leader-aware drivers make it fast.
The leader-aware driver is planned for the 2026.3
release. In 2026.2 we release forwarding. The
strongly consistent read path: reading from the leader and using a
barrier After understanding that every Raft group has a leader, and
that writes must be coordinated by that leader, the next natural
question is: What about reads? At first glance,
reads may look simpler than writes. A read does not change the
data, so it may seem safe to read from any replica. But with strong
consistency, this is not always enough. The problem is that
replicas may not all be at exactly the same point in the Raft log
at the same time. A follower can be slightly behind the leader. It
may still be catching up on committed entries. If we read from that
follower without any additional coordination, we may accidentally
read an older version of the data. For eventual consistency, this
may be acceptable depending on the chosen consistency level and
workload. For strong consistency, we need a stronger guarantee:
A read must observe the latest state that was safely
committed before the read. That means the read path also
needs to respect the Raft ordering model. Reading from the leader
The simplest way to make a strongly consistent read is to send the
read to the Raft leader. The leader is the replica that coordinates
the Raft group. It receives operations, orders them, replicates
them, and knows the current progress of the group. Because the
leader is the place where the group’s ordered history is created,
reading through the leader gives us a natural consistency point.
The basic read path looks like this: The client sends a read
request. The request is routed to the Raft leader for the tablet.
The leader makes sure it is still allowed to act as leader. The
leader reads from the state that reflects the committed Raft log.
The result is returned to the client. This keeps the read aligned
with the same ordering model used by writes. In other words:
Writes go through the leader to enter the log.
Reads go through the leader to observe the committed result
of that log. This gives the system a clean and
understandable consistency model. The leader is not only the place
where changes are ordered; it is also the safest place to observe
the latest committed state. Why reading from a follower is not
always enough A follower is still a valid replica. It participates
in the Raft group, stores the replicated log, and applies committed
entries. But a follower can temporarily lag behind the leader. For
example: A write is committed by the leader and a majority of
replicas. One follower has not applied for that committed entry
yet. A client reads from that follower. The client may see the old
value. From the point of view of that follower, nothing “wrong”
happened. It simply has not caught up yet. But from the point of
view of strong consistency, the reading may be stale. This is why
strongly consistent reads cannot blindly read from any replica
without additional coordination. If we want reads to be strongly
consistent, the system must prove that the replica serving the read
is up to date enough for that read. What is implemented today
Today, before serving a strongly consistent read, ScyllaDB runs
read_barrier(). This currently requires network
communication with a quorum and also waits for the Raft state
machine on the leader to apply any previously written commitlog
entries to memtables. In other words, the read must first make sure
the leader has caught up with all committed changes before
returning a result. In the near future, we plan to implement
Raft leases, which will allow the leader to serve
reads locally without additional network hops. Because of this, we
expect strong consistency performance to eventually be on par with
eventual consistency, and in some read-heavy cases, it may even be
better. How the leader keeps followers updated The Raft leader is
also responsible for keeping the followers up to date. When a new
operation is accepted by the leader, the leader appends it to its
local Raft log and then sends it to the followers. The followers
append the same entry to their own logs and acknowledge it back to
the leader. Once the leader receives acknowledgments from a
majority of replicas, the entry is considered committed. After
that, the committed entry can be applied to the actual database
state. The flow looks like this: Client request ↓
Raft leader appends entry to its log ↓ Leader
sends the entry to followers ↓ Followers append
the entry and acknowledge ↓ Majority
confirms ↓ Entry is committed ↓
Replicas apply the committed change The leader has two
jobs: It orders new operations. It
continuously brings followers to the same ordered state.
This is important for reads as well. A follower may temporarily be
behind the leader, even if it is healthy. That is why strongly
consistent reads usually go through the leader, or require an
additional synchronization step such as a barrier before the system
can safely answer from a known up-to-date state. How this impacts
application developers Strongly consistent tables simplify
application logic. Most developers building a payment flow, quota
system, inventory reservation, account state machine, or
idempotency layer don’t want to reason about replica divergence.
They just want the database to protect the invariant. Strong
consistency also improves predictability. Predictability is not
only about latency. It is about knowing what the system will do
when two clients race, when a node restarts, or when an operation
is retried. A deterministic ordering layer makes these cases easier
to explain, test, and debug. Users should also find that strong
consistency makes LWT and transaction workflows much better,
cleaner, and faster.
Figure 7: Application-level benefits: fewer eventual
consistency anomalies, better counters, better predictability,
simpler logic, and a path to better LWT behavior. How to use
strongly consistent tables This feature is still experimental so
please use it with caution.
Strong consistency is selected at the keyspace level. With the
strongly-consistent-tables experimental feature
enabled, create a tablets-based keyspace with consistency =
'global'. Tables created in that keyspace use the strongly
consistent path automatically, so applications continue to use
ordinary CQL reads and writes. There is no separate per-statement
switch for “strong consistency” in the query itself. CREATE
KEYSPACE sc_demo WITH replication = {'class':
'NetworkTopologyStrategy', 'replication_factor': 3} AND tablets =
{'enabled': true} AND consistency = 'global'; CREATE TABLE
sc_demo.orders ( id int PRIMARY KEY, status text, amount int );
INSERT INTO sc_demo.orders (id, status, amount) VALUES (1, 'paid',
100); SELECT * FROM sc_demo.orders WHERE id = 1; This keeps
the usage model simple: choose strong consistency when creating the
keyspace, then use ordinary CQL on the tables inside it. A
fundamental difference from eventual consistency is that strongly
consistent writes do not support user-provided timestamps, so
applications must let ScyllaDB assign them automatically.
More
about LWT Lightweight transactions are one of the places where
users already ask the database for stronger semantics. In
eventually consistent architectures, LWT is commonly implemented
through Paxos, which requires multiple phases such as prepare,
accept, and commit. That can add latency and complexity. A
Raft-backed architecture gives ScyllaDB a path toward a more
unified model: LWT-style behavior on top of a shared replicated
log. This should give you fewer duplicated mechanisms, fewer voting
rounds, and a simpler execution path. The long-term direction is
not “add another special protocol,” but “converge on one ordering
and replication layer where it makes sense.”
Figure 8: LWT can move from a separate Paxos-based path toward
a Raft-backed path with fewer voting rounds and a shared
replication layer. Performance Strong consistency is not free.
A Raft-based write requires a majority, and write latency can
increase compared with the fastest eventually consistent path. That
is the nature of asking the system to commit to one order before
acknowledging the operation. But the right comparison is not only
per-write latency. Strong consistency can also remove repair
overhead, conflict-resolution ambiguity, reconciliation logic, and
application-side complexity. For correctness-sensitive workloads,
paying a predictable coordination cost inside the database can be
far better than paying an unpredictable correctness cost across the
entire application stack.
Figure 9: Architecture convergence: Raft becomes the unified
ordering layer for topology, strongly consistent tables, and
LWT. We don’t expect our users to make every table strongly
consistent; this won’t be the default. Our goal is to give you a
choice so you don’t have to choose between a high-performance
database and a stronger correctness model. What’s available now and
what’s next The backbone implementation for strongly consistent
tables is in ScyllaDB 2026.2. Users can create a keyspace
configured for strong consistency, create strongly consistent
tables, and read and write to them. This is the foundation: the
core path proving that ScyllaDB can execute user-data operations
through a Raft-backed strong-consistency model. But there’s still
more to do. We’re still working on details like tablet migration,
tablet split and merge support, recovery behavior, and leader-aware
driver support. We’re expecting to release these features in
2026.3. That makes 2026.2 an important milestone: not the end of
the journey, but the point where the architecture becomes visible
and usable. ScyllaDB is evolving from a high-performance eventually
consistent database into a high-performance multi-consistency
distributed database.
Conclusion: strong consistency is about removing ambiguity
Distributed systems are already hard enough. The database should
remove ambiguity where ambiguity is dangerous. With Raft-backed
strong consistency, ScyllaDB gives users a clearer model for
workloads that need correctness, ordering, and predictability.
Eventual consistency remains the right choice for many high-scale
workloads. Strong consistency becomes the right choice when the
application needs one answer, one order, and one source of truth.
We’re excited to share this with you and look forward to your
feedback! The Evolution of Cassandra Data Movement at Netflix
By Guil Pires, Jennifer Prince, Jose Camacho, Ken Kurzweil, Phanindra Chunduru
Background
In a previous post, we introduced Data Bridge, a unified management plane for batch Data Movement at Netflix. Historically, several bespoke Data Movement connectors were developed across different engineering organizations to fulfill their specific requirements. Over the last few years, the Data Movement team has started centralizing these offerings through an abstraction that provides a catalog of connectors, along with simple UI and APIs to initiate Data Movement jobs.
One such case is the Cassandra to Iceberg connector. Apache Cassandra powers mission critical applications at Netflix, including Member, Billing, Recommendations, Subscriptions and many more. These use cases heavily leverage Data Movement to Apache Iceberg for many analytics and operational tasks, and central to this movement was a connector for Cassandra to Iceberg built in-house named Casspactor. As many Cassandra based Data Abstractions emerged, such as Key Value, Time Series and Graph — the need for larger and more complex Data Movement with transformations became more critical to the business.
Data movements are fundamentally fulfilled by leveraging the existing Cassandra backup infrastructure. Regularly scheduled backups are performed directly on the Apache Cassandra nodes, via a sidecar process managing the upload of all necessary SSTables and associated Metadata files directly into Amazon S3. When a Data Movement job is initiated, the job constructs the specific backup structure it needs by referencing the S3 based metadata, allowing it to precisely locate the SSTable files. The engine then downloads these files, performs the required mutation compaction and processing, and finally writes the fully transformed, compacted data directly into the target Apache Iceberg tables.
Casspactor: The Engine We Outgrew
Casspactor processed roughly 1,200 data movements per day, transferring approximately 3 PB of data from Apache Cassandra into Apache Iceberg tables. It served some of the most critical workloads at Netflix. For years, it worked. Then, two compounding challenges made it clear we needed a fundamentally different architecture.
Fragile Metadata Dependencies
Before Casspactor could move a single record, it needed to answer a deceptively simple question: which backup exists, is it complete, and what does it contain?
Casspactor assembled this answer from multiple independent systems:
Each system had its own failure modes, update cadences, and accuracy guarantees. Casspactor’s view of the world was a composite, and composites diverge from reality.
Metadata fell out of sync with actual backups, causing Casspactor to read stale or incorrect data silently. Routine maintenance on the Cassandra Clusters triggered uncoordinated snapshots, and because Casspactor required all nodes in a region to snapshot at the same clock second, a single node replacement could break data movement for an entire region.
The fix was hiding in plain sight. The answer to “which backup exists and is it complete?” already lived in the backup storage layer (Amazon S3) itself. By reading metadata directly from the backup files, we could replace the entire dependency chain with a single source of truth.
Every Connector Inherited Casspactor’s Limitations
Cassandra at Netflix does not just store raw tables. It backs higher level data abstractions, such as Key Value, Time Series, and others, each with its own data model, access patterns, and semantics. When any of these abstractions needed to move data to Iceberg, they all funneled through Casspactor.
Every abstraction inherited Casspactor’s constraints:
- Skewed partition failures: Casspactor could not handle tables with large partitions, a common pattern in Key Value and Time Series workloads. Jobs crashed with out-of-memory errors on some of Netflix’s largest datasets.
- No data model awareness: Casspactor moved raw Cassandra tables as is. Connectors for Key Value and other abstractions had to bolt on post processing to reconstruct their data models from the raw output — extra cost, extra complexity, and an extra surface for failures.
- Intermediate table bloat: Casspactor wrote to an intermediate Iceberg table before producing the final output. The Key Value connector added another intermediate table and a snapshots table. Connectors for abstractions on top of Key Value added even more. This compounded into significant storage cost overhead.
- Inability to Time Travel: by relying on multiple services to compose a backup unit, Casspactor was unable to restore prior backups in the event of cluster Topology or Keyspace schema changes.
- Monolithic design: Casspactor was built as a single connector, not as an engine. There was no way to build a family of purpose built connectors on a shared foundation.
We needed something fundamentally different: an engine that reads directly from backups in S3, produces standard Spark DataFrames, and lets each data abstraction build its own connector with full awareness of its data model. One foundation, many connectors.
The New Stack: A Layered Architecture
The new architecture, built upon the foundation of Apache Cassandra Analytics and the in-house Move Data framework, represents a fundamental shift toward a layered, purpose-built stack designed for reuse and maintainability. This new engine was conceived with clear separation of concerns, moving away from Casspactor’s monolithic design. The architecture is intentionally layered with the foundation being a core S3 reading capability: the Cassandra Analytics Wrapper, which is built on top of the Open Source Cassandra Analytics with Netflix’s internal backup representation and an S3 Client.
This layer handles the raw data retrieval from backups, translating it into standard Spark DataFrames. Sitting atop this foundation is a “Connector Factory” model, via both Java UDFs and transforms which allows individual data abstractions (Key Value, Time Series, others) to build highly optimized, data model aware connectors that process the generic Spark DataFrames, avoiding the need for complex, expensive, and failure-prone post-processing steps. This layered approach ensures that improvements to the core reading engine benefit all connectors, while the connectors themselves are focused solely on data transformation.
- Handles Skewed Partitions: By moving the mutation compaction and processing to the Executor level within Spark, the new engine can efficiently handle tables with highly skewed or wide partitions, a major pain point for Casspactor. Crucially, this processing occurs without excessive data shuffling, preventing out-of-memory errors and enabling reliable movement of Netflix’s largest datasets.
- Operates at Spark DataFrames (No Intermediary Tables): The new architecture directly generates standard Spark DataFrames from the Cassandra backups. This eliminates the need for Casspactor’s costly, multi-stage intermediate Iceberg tables, which led to storage bloat and operational complexity. This native DataFrame operation enables the “Connector Factory” by providing a universal, easily consumable interface for building diverse, model specific connectors.
- Jobs Auto Size: The engine integrates intelligent auto-sizing capabilities, allowing jobs to dynamically adjust resource consumption based on the source table’s characteristics. This removes the burden of manual tuning from engineering teams, ensuring optimal performance and cost efficiency without sacrificing reliability.
- Reduced Dependencies: By reading metadata directly from the backup files stored in S3, the new stack removes the fragile, multi-service dependency chain that plagued Casspactor. S3 becomes the single, authoritative source of truth for backup existence and completeness, vastly improving data movement reliability and consistency.
- Time Travel: A critical feature of the new stack is the ability to process the schema, cluster topology, and data as a cohesive unit at a specific point in time. This capability provides robust time travel functionality, essential for auditing, debugging, disaster recovery and reproducing past data states.
- Performance: Collectively, these architectural improvements, including native DataFrame processing, optimized partition handling, and streamlined metadata retrieval have resulted in notable performance gains, reducing overall data movement execution runtime and cost compared to the legacy Casspactor system.
- Cost: by eliminating intermediary Iceberg tables and efficient SSTable compaction on Executors, the new stack needs a significantly smaller storage and compute footprint leading to significant cost savings in the order of USD millions.
The Journey Towards a Safe Migration
The successful validation of the new stack was the critical first step, but it only marked the beginning of the most challenging phase: the migration. Large scale data migrations are inherently complex, high-risk undertakings that can be time consuming and often result in customer frustration and service disruption. To navigate the high stakes of decommissioning a mission-critical system like Casspactor and seamlessly replacing it, we needed a strategy that prioritized reliability and transparency above all else.
The migration was fundamentally enabled by a Like-for-Like strategy, which served as the cornerstone of our Platform Engineering philosophy, abstracting complexity. The core tenet was to maintain absolute consistency across the user-facing interface, the output contract, and the final data artifact. This meant ensuring that the data movement parameters defined via the Data Bridge abstraction remained unchanged, and, critically, the schema, metadata, and data within the destination Iceberg tables were identical to the legacy output. By preserving these external contracts, we eliminated the need for complex, time-consuming coordination with dozens of internal teams who relied on these data pipelines. This approach transformed the migration from a distributed, high-risk, multi-team effort into an internal platform implementation detail, allowing us to achieve a transparent, zero-impact transition and accelerate the retirement of the legacy system without requiring any code changes or validation from downstream users.
To navigate this migration, we developed a strategy anchored by three core pillars that serve as a blueprint for successful, large-scale data migrations:
- Validation: Establishing and maintaining absolute confidence in data consistency through rigorous, ongoing validation.
- Visibility: Instrumenting every part of the system to provide a clear, real-time understanding of migration progress and system health.
- Safety: Ensuring user impact is minimized or eliminated, despite the inevitable system failures, by leveraging abstractions and robust fallbacks.
The next section will provide a detailed exploration of these key pillars.
Pillar 1: Validation
Trust is earned, and in data migration, it is earned one row at a time. The first pillar is the most critical: providing a measurable guarantee to users and partners that the data produced by the new system is an exact, row-by-row replica of the data produced by the old one.
Our foundational tactic was deploying the new Move Data connector in a “shadow” testing that ran in parallel with the production Casspactor jobs. This allowed us to validate the new system with real-world, production workloads without any customer impact.
- Let C be the set of rows in the legacy Casspactor output (Iceberg table).
- Let M be the set of rows in the new Move Data output (Iceberg table).
The test for trust: prove that C = M. This required continuously checking for two conditions:
- Rows in C but not in M (C-M): The new system missed data.
- Rows in M but not in C (M-C): The new system introduced phantom or erroneous data.
Any result where the cardinality of these difference sets (the number of differing rows) was greater than zero triggered an immediate, high-priority investigation. The target was 100% similarity.
Uncovering and Resolving Disparities
The shadow mode quickly became a powerful forensic tool, exposing “unknown unknowns”, subtle discrepancies that were not bugs in the new system but rather differences in behavior between the new and old systems. Resolving these was the core work of building trust. For each problem we initiated an investigation log where we captured the details, logs, queries that allowed us to diagnose. Based on the assessment the issues were categorized so that similar differences on other datasets were later resolved affecting many of the shadow pipelines.
Maintaining an investigation log was critical to organize the outstanding issues and effectively communicate to stakeholders the progress and confidence of the new connector so that we effectively measure the appropriate level of “confidence” to initiate the migration.
We observed differences in how connectors leverage reference timestamps for Time-to-Live, Consistency Levels, backup selection, and various internal business logic. This continuous, data-driven cycle of discovery and resolution was the mechanism by which we built confidence in the new architecture.
Pillar 2: Visibility
Trust is built in the background, but an active migration requires real-time insight: Visibility. The second pillar involves instrumenting the system to provide an unambiguous, clear understanding of operational health and migration progress.
We extended our instrumentation to the overall migration workflow and its dependencies:
- Dashboards: We created centralized dashboards to track migration status, visualizing the total number of data movements migrated versus those remaining. The dashboards tracked execution status, average runtime, and cost comparisons between the two connectors.
- Dependency Tracking: Since the new system relied on a new set of APIs to fetch backup metadata, we implemented detailed metrics for failures to keep track of the APIs or dependencies failed.
- Alerting: Proactive alerts were set up for job failures (Move Data or Casspactor), failures on Move Data that triggered a fallback to Casspactor or any data discrepancy being detected.
This comprehensive instrumentation allowed the team to be proactive, fix issues as they emerged during the migration, and gain the necessary confidence to accelerate the migration timeline.
Pillar 3: Safety
Even with perfect data correctness and enhanced visibility, the third pillar, Safety is required for a zero-impact migration. The challenge is ensuring that when a system inevitably fails, the user experience is uninterrupted. Our strategy centered on decoupling the user’s workflow from the underlying connector implementation.
Leveraging Abstraction: The Decider Pattern
To achieve a transparent swap, we leveraged the Maestro workflow orchestration platform to implement the Decider pattern:
- Data Movement Abstraction: From a user’s perspective, their Data Movement job definition remained the same.
- The Decider Step: Internally the workflow responsible to execute the job was modified to include a Decider step. This step took the data movement parameters (source cluster, table name, destination) and invoked a control plane: Connector Controller.
- Connector Controller as the Registry: The control plane served as the dynamic registry. Based on the migration cohort and the data movement attributes, it determined and reported the appropriate connector to use either Casspactor (legacy) or Move Data (new).
This abstraction gave our team complete control. We could upgrade or rollback any connector for any data movement instantly by simply updating a configuration in the controller, with zero modification required to the thousands of downstream customer workflows. Crucially, this abstraction guaranteed the critical safety net: a conditional step in the Maestro workflow logic ensured that if the Move Data step fails, it would immediately execute the Casspactor step.
This pattern would increase the chances that the user’s data movement completes successfully, even if the new connector encountered a bug or transient failure during the initial rollout phases. User impact was completely eliminated; they might see a slightly longer runtime in the event of a failure and fallback, but they would never see a migration failure or suffer from stale data.
Beyond the workflow, the new system architecture itself was inherently more resilient. By building the new data movement connector on Cassandra Analytics and reading backups directly from S3, we removed fragile dependencies on deprecated internal services.
Conclusion
The migration from Casspactor to the new, layered architecture built on Cassandra Analytics and the Move Data connector was more than a typical “tech debt” project; it was a fundamental shift in our approach to data movement reliability and scalability at Netflix.
The legacy system, while serving us well for years, was ultimately constrained by monolithic design, fragile metadata dependencies, and an inability to handle the complexity of modern data abstractions. The new stack resolves these issues by delivering a robust, cost-efficient, and inherently more resilient solution that reads directly from S3, handles wide partitions gracefully, and eliminates costly intermediate tables.
Our blueprint for the migration, anchored by the three pillars of Validation, Visibility, and Safety, ensured a transparent and high-confidence transition. Through rigorous shadow testing and a data-driven audit framework, we achieved the desired data consistency. Enhanced dashboards and alerting provided the real-time operational insight necessary to manage risk. Most critically, the implementation of the Decider pattern within our workflow abstraction minimized the impact for all downstream users.
This successful migration validates a core philosophy: by abstracting complexity at the platform level, we can perform large system migrations without burdening our product engineering partners. The new foundation is now ready to support the next generation of Netflix’s data abstractions.
Looking ahead
This foundational work on the Cassandra Data Movement stack has done more than just replace a legacy system: it has become an accelerator for innovation across the entire Data Movement organization. By providing a reliable, performant engine that standardizes data retrieval into Spark DataFrames, we’ve enabled the rapid development of new, highly optimized connectors. This new “Connector Factory” approach has already delivered a dedicated Key-Value to Iceberg and Time Series connectors, both of which are fully aware of their respective data models, eliminating costly post-processing. This architecture is also paving the way for ambitious new initiatives, including the development of a solution for bulk loading data into Cassandra itself, effectively completing the data movement cycle, and enabling safer fleetwide connector rollout with canaries inspired by the Decider Pattern.
We are incredibly grateful for the extensive collaboration among the Data Movement, Data Bridge, Online Data Stores, Membership, Billing, Subscriber and Ads platform teams at Netflix; this work simply couldn’t have been accomplished without their partnership!
The Evolution of Cassandra Data Movement at Netflix was originally published in Netflix TechBlog on Medium, where people are continuing the conversation by highlighting and responding to this story.
Instaclustr product update: June 2026
Here’s a roundup of the latest features and updates that we’ve recently released.
If you have any particular feature requests or enhancement ideas that you would like to see, please get in touch with us.
Major announcements AI Search for OpenSearch is now generally available on the NetApp Instaclustr Managed PlatformAI Search for OpenSearch is generally available on the NetApp Instaclustr Managed Platform. It brings semantic search, hybrid search, and retrieval-augmented generation (RAG) without the complexity of managing software, infrastructure, or operational management. General availability expands on the public preview, adding support for external LLM and embedding services such as Amazon Bedrock and OpenAI for enterprise search, e-commerce, support chatbots, and observability-style use cases. Unlock new possibilities with AI search—learn more.
Introducing Kafka Client Telemetry: Centralized client metrics for Instaclustr Managed Apache Kafka®NetApp is introducing Client Telemetry for Instaclustr for Apache Kafka®, designed to deliver broker-integrated visibility into Kafka client and application-level metrics, with telemetry export and centralized collection. Instaclustr for Apache Kafka users can gain visibility into client behavior such as connection status, request rates, error rates, and latency from the broker, simplifying monitoring and supporting a holistic view of client interactions. Compliant Kafka clients collect metrics and push them to the brokers; brokers use an OpenTelemetry Collector to forward metrics to a customer-specified destination, with Prometheus 3.0+ and Datadog supported in this initial release.
Powering low-latency analytics with ClickHouse® and Amazon FSxInstaclustr Managed ClickHouse integrated with Amazon FSx for NetApp ONTAP is built to run analytical queries directly on file-based data that can transparently tier to lower-cost capacity, without relying on extra staging layers, ingestion pipelines, or format-specific copies to make data queryable. The integration now supports deployments where compute and storage can reside in different VPCs or AWS accounts, enabling flexible, enterprise-grade architectures with consistent storage access across network and account boundaries.
Other significant changes Apache Cassandra®- Self-service iccassandra password reset — customers can now reset their iccassandra database password directly from the console via the Connection Info page, eliminating the need to raise a support ticket. The new password is displayed for 5 days before being automatically removed.
- Released Apache Cassandra v4.1.10 into General Availability on the NetApp Instaclustr Managed Platform, delivering a stability-focused patch release, while deprecating Apache Cassandra 4.1.9.
- Kafka and Kafka Connect 3.9.2 released to General Availability.
- Kafka and Kafka Connect 4.1.2 released to General Availability.
- Karapace Schema Registry 5.2.0 and Karapace Rest Proxy 5.2.0 are added support for Kafka clusters.
- ClickHouse v25.8.24 released to General Availability.
- New c7g.8xlarge node size on the AWS provider has been added to support OpenSearch clusters.
- OpenSearch 3.5.0 released to General Availability.
- AI Search is now available on the free trial.
- PostgreSQL 18.3, 17.9, and 16.13 and PgBouncer 1.25.1 released to General Availability.
- The new AWS region, ap-southeast-6 (New Zealand), has been added.
- Cluster tag management improvements — multiple enhancements to tag search, display, and validation in the console and API, including prevention of duplicate tag keys for better data consistency.
- We’re preparing to introduce GPU nodes for OpenSearch on the NetApp Instaclustr Managed Platform, bringing dedicated machine learning capabilities directly into your managed clusters. With GPU nodes, vector indexing can be up to 10x faster and CPU load is reduced, freeing cluster capacity for mission-critical workloads. Additionally, GPUs offer superior cost-efficiency compared to traditional CPU-based vector indexing, driving down the total cost of ownership.
- We’re close to launching PostgreSQL® integrated with FSx for NetApp ONTAP (FSxN) into GA, now including NVMe support—designed to deliver improved throughput, up to 20% observed greater throughput than we achieved with our public preview. This enhancement combines enterprise-grade PostgreSQL with FSxN’s scalable, cost-efficient storage for better cost, performance, and flexibility, while enabling ONTAP snapshots for backups, mirroring, and multi-region recovery—fast snapshot/restore and daily backups for large databases.
- NetApp Instaclustr plans to release the Remote MCP Gateway Service powered by AgentGateway on the Instaclustr Managed Platform. This service will let you, in minutes, provision and configure a production-ready Model Context Protocol gateway to provide LLM access to databases, application data infrastructure services, and REST APIs.
- Coming soon, NetApp Instaclustr will be launching the
Self-Service Bring Your Own Cloud (BYOC) feature for AWS, offering
a fully guided onboarding experience that allows customers to
connect their AWS accounts and begin deploying managed clusters
directly from the console — making it faster and easier for
customers who prefer to run clusters in their own cloud
environments.
Cluster DNS will soon be available for Apache Cassandra and Apache Kafka clusters on AWS allowing you to connect to your applications using simple, stable hostnames instead of long lists of IP addresses. When node IPs change due to scaling, replacement, or maintenance there is no longer a need to update client configuration.
- Need an end-to-end pattern for streaming analytics on AWS? The same-day three-part series How to build a streaming analytics pipeline with Terraform and Instaclustr, Part 1: Setting up your first Kafka® cluster, Part 2: Designing the complete data pipeline, and Part 3: Integrating with AWS VPC show how to stand up Kafka with Terraform, connect ClickHouse and Kafka Connect into a real pipeline, and finish with VPC integration for secure networking. Together the posts bridge provisioning, data flow design, and cloud networking without skipping the glue work that usually stalls proof-of-concepts.
- Apache Kafka 4.1.0 introduces the Streams Rebalance Protocol in early access for Kafka Streams: a broker-driven assignment model that eliminates client-side coordination, reduces “stop-the-world” rebalance pauses, and delivers smoother task assignment as Streams applications scale horizontally. For a walkthrough of when you need it, how to enable it, and what to expect, see What’s new in Kafka® 4.1.0? Introducing the new Streams Rebalance Protocol.
- OpenSearch 3.6 release bundles a wide set of upstream changes: ML Commons AI agent improvement such as token usage tracking, k-NN vector search performance improvements including Lucene Better Binary Quantization, Dashboards updates across AI chat and Explore, and OpenSearch APM for observability. For a single walkthrough of those themes, see OpenSearch version 3.6 release: smart agents and fast search. We’re currently testing OpenSearch 3.6 for compatibility and security purposes. Keep an eye on our release blog for more information about when this exciting new release will be available on the managed platform.
If you have any questions or need further assistance with these enhancements to the Instaclustr Managed Platform, please contact us.
SAFE HARBOR STATEMENT: Any unreleased services or features referenced in this blog are not currently available and may not be made generally available on time or at all, as may be determined in NetApp’s sole discretion. Any such referenced services or features do not represent promises to deliver, commitments, or obligations of NetApp and may not be incorporated into any contract. Customers should make their purchase decisions based upon services and features that are currently generally available.
The post Instaclustr product update: June 2026 appeared first on Instaclustr.
Automate ScyllaDB X Cloud Clusters with Terraform
The ScyllaDB Cloud Terraform provider gives you infrastructure-as-code control over your clusters The ScyllaDB Cloud Terraform provider now supports ScyllaDB X Cloud. That means you can provision and manage elastic, autoscaling ScyllaDB clusters the same way you manage the rest of your infrastructure. The ScyllaDB Cloud Terraform Provider The provider lives atregistry.terraform.io/scylladb/scylladbcloud. You need
a ScyllaDB Cloud account and an API token from cloud.scylladb.com.
terraform { required_providers { scylladbcloud = { source =
"registry.terraform.io/scylladb/scylladbcloud" version = "~>
0.3" } } required_version = ">= 0.13" } provider "scylladbcloud"
{ token = var.scylladb_token } Pass the token through a
variable. What Is ScyllaDB X Cloud? ScyllaDB X Cloud is
ScyllaDB’s elastic cluster tier built on a tablets-based
architecture. Traditional ScyllaDB clusters use token ranges pinned
to nodes. Scaling them up or down means rebalancing large chunks of
data. X Cloud uses tablets, which are smaller, independently
moveable units of data. When you add or remove nodes, tablets
rebalance in parallel across the cluster, which makes scaling fast
and non-disruptive. In practice this means you can: Scale from 100K
to 2M ops/sec in minutes, not hours Push storage utilization up to
90% before scaling out (no wasted headroom) Scale-in when load
drops (pay for what you use) X Cloud also differs from standard
clusters in how you configure it in Terraform: instead of choosing
a fixed node type and count, you define a scaling
policy and let the platform decide the right size.
Provisioning an X Cloud Cluster Here is a complete cluster
resource: resource "scylladbcloud_cluster" "xcloud" { name =
"my-xcloud-cluster" cloud = "AWS" region = "us-east-1" cidr_block =
"172.31.0.0/16" scaling { instance_families = ["i8g"]
storage_policy { min_gb = 500 target_utilization = 0.75 }
vcpu_policy { min = 6 } } } The scaling block
is what makes this an X Cloud cluster. It is mutually exclusive
with the node_type and min_nodes fields
used by standard clusters (you use one or the other). Key Scaling
Parameters instance_families instance_families =
["i8g"] X Cloud scales within a single instance family. The
platform picks specific instance sizes within that family as load
changes. Sticking with instance_families rather than
listing explicit instance_types gives the autoscaler
more room to work with. If you do restrict it to specific types,
allow at least three different types to give the scaler meaningful
options. storage_policy.min_gb storage_policy { min_gb = 500
} The cluster will not scale below this physical storage
threshold. Set it when you know your dataset has a minimum size and
want to avoid scale-in churn. storage_policy.target_utilization
storage_policy { target_utilization = 0.75 } This is
the utilization level the autoscaler aims to maintain. The valid
range is 0.7–0.9 (default: 0.8). The scaler adds capacity when
utilization exceeds target by more than 5%, and removes capacity
when it falls more than 5% below target. For write-heavy workloads,
staying below 0.85 is a good baseline. It gives compaction and
repairs room to breathe. vcpu_policy.min vcpu_policy { min =
6 } The cluster will not scale below this vCPU count,
regardless of load. That’s good for latency-sensitive workloads
where you want compute headroom even at low traffic. Standard
Clusters (For Comparison) If you need a fixed-size cluster or
require multi-DC deployments (which will be supported soon), use
the standard configuration: resource "scylladbcloud_cluster"
"standard" { name = "my-standard-cluster" cloud = "AWS" region =
"us-east-1" node_type = "i3.large" min_nodes = 3 cidr_block =
"172.31.0.0/16" } Standard clusters use
node_type and min_nodes instead of a
scaling block. Outputs After apply, the provider
exposes: output "cluster_id" { value =
scylladbcloud_cluster.xcloud.cluster_id } output "datacenter" {
value = scylladbcloud_cluster.xcloud.datacenter } output
"node_dns_names" { value =
scylladbcloud_cluster.xcloud.node_dns_names }
node_dns_names provides the hostnames to pass to your
driver configuration. Wrapping Up The ScyllaDB Cloud Terraform
provider gives you infrastructure-as-code control over your
clusters. For X Cloud specifically, the scaling block
replaces the manual node sizing decisions. You just define the
baselines and the platform handles the rest. ScyllaDB’s
tablets-based architecture means scale events are fast enough to
respond “just-in-time” to real traffic changes – so you don’t need
to overprovision for peak capacity just in case. For more details,
see the full provider documentation at
registry.terraform.io/providers/scylladb/scylladbcloud. ScyllaDB Customer Experience Spotlight: Faisal Saeed
Welcome to the second installment of a new blog series introducing some of the experts you might encounter when you work with ScyllaDB. (In the first, we met Tyler Denton, Solutions Architect). Today we’re featuring Faisal Saeed, Principal Customer Engineer on the Customer Experience team here at ScyllaDB. He lives in Singapore and has been at ScyllaDB for more than 2 years. Let’s learn a little about Faisal… What do you do here at ScyllaDB I have a hybrid role where I work with existing customers as their Principal Customer Engineer, helping them ensure their ScyllaDB Cloud / on-prem clusters are in good health and performing according to their expectations. Secondly, I work as a pre-sales Solutions Architect for clients who are not existing ScyllaDB customers and are evaluating ScyllaDB. Here, I often help with data modeling or planning their data migration from their existing database into ScyllaDB Enterprise / ScyllaDB Cloud clusters. Please share a little about your path to ScyllaDB I have worked in the IT industry for about 30 years and have extensive database experience. Before joining ScyllaDB, I was a Principal Solutions Architect with MariaDB for 6 years. Before that, I worked with ACI Worldwide as a database architect on projects for DBS Bank in Singapore. Before that, I spent many years at NCS, working as a database architect on DBS Bank projects. Tell me about one of the most interesting projects you’ve worked on here While I work with many amazing customers, the project I cherish the most is an in-house developed tool that automates ScyllaDB Enterprise/Cloud/X Cloud clusters with a single command, allowing the user to run various workloads and perform stress testing of multiple clusters. This is the ScyllaDB Automation Framework, and I have worked on this project for more than a year. This helps various team members in ScyllaDB with their day to day tasks, whether running a demo for a customer or simulating a customer use case. What’s the most impressive ScyllaDB feat you’ve seen a team accomplish If we talk about teams in ScyllaDB, X Cloud is an amazing ScyllaDB product that lets customers save costs while running at any scale. The team has done an outstanding job. Talking about customers, every one of them is unique in some way. JioStar from India uses ScyllaDB to support IPL, World Cup Cricket, and many other supporting events where millions of users concurrently log in to ScyllaDB clusters through their app — and ScyllaDB handles them gracefully without any lags. There are many others, but I can’t mention everyone. What do you like to do when you’re not working or on-call I spend time with my wife at home, go out for long walks, watch movies, and care for two bunnies who have been with us for more than 5 years. What’s your top tip for getting the most out of ScyllaDB I can’t recommend just one thing, but ScyllaDB is designed to run almost on autopilot. Rarely is there a need to tune any aspect of the ScyllaDB cluster. But if I had to pick one thing, it would be “proper NoSQL data modeling.” I have seen many teams struggle with performance because they had a poor data model. After spending some time with them and helping them fix their data model mistakes, their ScyllaDB cluster ran smoothly with the promised single-digit P99 latencies. I recommend everyone to join ScyllaDB University (it’s free) and take the beginner and advanced data modeling courses.ScyllaDB Operator 1.21 Release — with Oracle Kubernetes Engine (OKE) Support
Introducing Oracle Kubernetes Engine support, stronger TLS, and a lighter dependency footprint ScyllaDB Operator 1.21.0 is now available. For background, ScyllaDB Operator is an open-source project that helps you run ScyllaDB on Kubernetes. It lets you manage ScyllaDB clusters deployed to Kubernetes and automate tasks related to operating a ScyllaDB cluster (e.g., installation, vertical and horizontal scaling, as well as rolling upgrades). ScyllaDB Operator 1.21 expands cloud platform support with OKE, adds ECDSA as an alternative key type for TLS certificates, and removes a hard dependency on Prometheus Operator. Oracle Kubernetes Engine (OKE) support ScyllaDB Operator 1.21 adds Oracle Container Engine for Kubernetes (OKE) as a supported platform. The new OKE support comes with comprehensive documentation covering the entire workflow , from provisioning the underlying OCI infrastructure (VCN, subnets, gateways, and node pools with Dense I/O shapes and local NVMe storage) to deploying a 3-node ScyllaDB cluster spread across fault domains. An automated setup script is also provided for one-command infrastructure provisioning. To get started with ScyllaDB on OKE, see the Set up an OKE cluster for ScyllaDB infrastructure guide and the OKE reference deployment. ECDSA support for TLS certificates ScyllaDB Operator manages TLS certificates internally for securing client-to-node communication. Until now, only RSA keys were supported for certificate generation. ScyllaDB Operator 1.21 adds elliptic curve cryptography (ECDSA) as an alternative key type. This allows smaller key sizes and faster cryptographic operations with strong security. You can opt in to ECDSA by setting the –crypto-key-type=ECDSA flag on the operator, with the curve bit-size configurable via –crypto-ecdsa-key-size (defaulting to P-384). RSA remains the default key type. The RSA key size is now configured with a dedicated –crypto-rsa-key-size flag; the previous –crypto-key-size flag is deprecated and remains accepted as an alias. Prometheus Operator is now an optional dependency Previously, ScyllaDB Operator required Prometheus Operator CRDs (monitoring.coreos.com/v1) to be installed in the cluster, even if you did not intend to use ScyllaDBMonitoring. Missing CRDs would result in error logs at startup. With ScyllaDB Operator 1.21, Prometheus Operator becomes a purely optional dependency. The operator auto-detects whether the CRDs are present at startup using Kubernetes API discovery. When they are absent, the ScyllaDBMonitoring controller is not started and no error logs are emitted. If you install Prometheus Operator after the ScyllaDB Operator is already running, restart the operator to pick up the new CRDs. Refer to the monitoring setup guide for details.Dear cqlsh: Your dependencies were killing us (P.S. We rewrote you in Rust)
A story of rewriting cqlsh in Rust…with Claude Code and a lot of planning Dearcqlsh, I vouched for
you. I told the team you were fine. I forked you, catered to you,
vendored your dependencies and your dependencies’ dependencies. I
patched things upstream that I knew you would never merge. I pinned
your Python, re-pinned it after the OS upgraded, and
explained to people (with a straight face) why that was totally
normal and not a problem at all. I wrote you twice already. You
never wrote back. I’m not even mad. I get it: you’re busy. 30+ CLI
flags, 25 CQL types, a COPY engine with enough options to fill a
man page…You’ve got a lot going on. But I found someone faster,
someone who compiles to a static binary without a runtime, without
vendoring. They don’t make me think about “which
Python are we using today?” They just…work. I hope you
understand. Yours (for now), Israel This is the story of cqlsh-rs – a ground-up
Rust rewrite of the Python
cqlsh, the interactive CQL shell used daily by
everyone working with Cassandra and ScyllaDB. It’s also a story
about what happens when you take the lessons from one AI-assisted
project and apply them to another project. Why bother rewriting?
Because packaging is a nightmare. ScyllaDB ships a relocatable
package, a self-contained bundle with its own Python
runtime baked in. The system Python can change,
upgrade, or disappear entirely, and ScyllaDB’s startup scripts and
cqlsh keep working because they’re running against a
known, pinned Python version inside the bundle. Except
cqlsh has to live inside that bundle. And
cqlsh is a Python tool. It has
dependencies, those dependencies’ dependencies have dependencies,
and they all need to be vendored in alongside the bundled
Python. Every time cqlsh or one of its
dependencies needs updating (a bug fix, a new Cassandra protocol
version, a security patch), you need to update the bundle, test the
bundle, and ship the bundle. And if something conflicts or breaks
inside that carefully pinned environment, it’s your problem to
untangle. A static Rust binary sidesteps all of this.
You compile once per target, you get a single file with zero
runtime dependencies, and you ship it. Done. The second pain point
is COPY TO/FROM, cqlsh‘s built-in feature
for bulk-exporting and importing table data to CSV. It’s one of the
most-used features, and it’s been carrying around a long list of
bugs for years. It does have parallel workers (threads and
processes), but the machinery is complicated, fragile, and
notoriously hard to test. The bug list reflects that. Both of these
are solvable in Rust. So, the question became: is now
the time to actually solve them? It all started with a BIG plan (to
the tune of The Big Bang Theory) In a previous
post, I wrote about using GitHub Copilot to bring a 4-year-old
Python idea (coodie, a Pydantic ODM for
Cassandra) back to life. That project was relatively contained:
give the AI a concept, come back to a working implementation. Fire
and forget it, more or less. cqlsh-rs is a different
category of project. The original Python
cqlsh has been around for over a decade. It has
hundreds of CLI flags, a compatibility matrix that spans multiple
database versions, a COPY engine with 30+ options per direction,
tab completion that must be schema-aware, and a type system
covering 25+ CQL types with specific formatting rules. Shipping
something that “mostly works” is not good enough if people are
going to actually switch to it. Every muscle-memory command has to
work the same way. So before writing a single line of
Rust, I started with a plan. That plan started as one
document. It grew, then it became a master design document plus
sub-plans. By the time the architecture settled, there were 19
sub-plans (SP01 through SP19) covering everything from the CLI
argument parser to the CQL type formatter to the COPY engine to a
future --ai-help flag for offline CQL error
diagnostics. Here’s what the roadmap looked like near the start:
5
out of 108 tasks. 0.4 tasks per day. The footer on that SVG read:
“Approximately 8.9 months remaining… just like Windows
said.” Reader, it did not take 8.9 months. “Wait, why is there
a skill for that?” I started in Claude web, but not because that’s
my comfort zone. With Copilot, I liked the browser because it made
the conversation visible to the team, a kind of shared thinking
space. I had the same instinct here. This way, design
conversations, architecture decisions, trade-off explorations, etc
all happened in the browser before a single file was created.
Questions like What driver to use? How to structure the CLI
argument parsing? Should we write a hand-rolled CQL parser or keep
it simple with a line-buffer approach? are genuinely better
answered in conversation than in code. The master plan came
together there. So did the first sub-plans and the initial CI
skeleton. Then I started exploring Claude Code, the CLI. Somewhere
around phase 2, I closed that browser tab once and for all. One
reason is the feedback loop: you’re in the same environment as the
code, so cargo test runs immediately after a change,
failures surface in context, and the next prompt can reference the
actual output. Another reason is just familiarity: the more you use
it, the more you learn to point it at exactly the right problem.
Skills: write your conventions once, use them forever The skills
library was also critical for this project:
/rust-testing – What to test at the unit layer vs. the
integration layer, how to use assert_cmd for CLI
tests, when to reach for insta snapshots
/rust-clippy – Run Clippy with strict
settings and fix everything it complains about
/rust-error-handling – Idiomatic error handling
patterns for this codebase /development-process – The
full loop: review the relevant sub-plan, design tests first,
implement, run tests, update the plan, commit I carried the pattern
directly from coodie. The specific skills are
different (Python vs. Rust), but the idea
is the same. Each skill you write makes every subsequent feature
cheaper to build. Living documents (or, an outdated plan is worse
than no plan) The 19 sub-plans are living documents that are
updated when decisions are made (vs written upfront and then
abandoned, like most docs). When a design decision changes
mid-implementation, the plan changes too. When a task is done, the
checkbox gets ticked. When a new edge case surfaces, it gets added.
This matters more than it might seem. An outdated plan is worse
than no plan because the AI will follow it faithfully…in the wrong
direction. What’s in the box Nothing terribly exotic; there’s: Rust
with Tokio for async. The scylla crate
for the database driver. rustyline for the REPL
and line editing. comfy-table and
owo-colors
for output formatting. testcontainers-rs
for spinning up real Cassandra instances in CI. While the stack
itself might not be exciting, the interesting part is what it takes
to get every CQL type to format exactly like the
Python implementation – right down to float
precision and frozen collection syntax. That’s where
most of the compatibility work lives. Where are we now? Here’s the
same roadmap today:
Phases 1 through 3 are done. The shell works: you can… Connect Run
queries Get formatted output with colors and pagination
Tab-complete keyspace and table names Run DESCRIBE on
anything Use SOURCE to execute a file Phase 4 –
COPY TO/FROM – is implemented. Phase 5 (testing) is in
progress, with 327 tests and counting. Takeaways Planning
pays (but living documents are a nice touch). A static
plan written at the start and never touched again is a liability. A
plan that gets updated as decisions are made is an asset – and the
primary reason Claude can work effectively across multiple sessions
on a project this size. Skills compound. A good
amount of work is required to find the right skill for the task and
adapt it to the project: the conventions, the patterns, the “this
is how we do it here” info. But once that’s written down, it
becomes easier to implement every feature. The workflow is
never done. The pace of this space is genuinely
disorienting. We now regularly use tools that didn’t even exist six
months ago. This means that what works today might not work in a
month. It’s still writing code, just differently.
(I have a bit of trouble using the word “engineering” here.) Claude
doesn’t replace judgment on architecture, on what actually matters
to users, on “is this the right trade-off?” It removes the friction
between having a clear idea of what you want and that thing
existing. Whether that makes it better or worse probably depends on
the day. Lessons from one project carry over to the
next. The skills pattern from coodie was
carried into cqlsh-rs with a different language and a
different domain. You can start from what you already learned, and
the AI follows the same process docs that you wrote last time.
Things to look forward to One idea that popped up during this: an
--ai-help flag that embeds a small local model to give
offline diagnostics when your CQL query fails. In other words,
building an AI-assisted tool with an AI assistant that will assist
with AI-assisted queries. I’m going to stop thinking about that too
hard. 😉 For the model routing, we’ll probably use
LiteLLM. I heard it’s become quite popular lately. I
had fun. Claude had fun too, probably. I didn’t ask.