a curated list of database news from authoritative sources

February 18, 2026

Explaining why throughput varies for Postgres with a CPU-bound Insert Benchmark

Throughput for the write-heavy steps of the Insert Benchmark look like a distorted sine wave with Postgres on CPU-bound workloads but not on IO-bound workloads. For the CPU-bound workloads the chart for max response time at N-second intervals for inserts is flat but for deletes it looks like the distorted sine wave. To see the chart for deletes, scroll down from here. So this looks like a problem for deletes and this post starts to explain that.

tl;dr

  • Once again, blame vacuum

History of the Insert Benchmark

Long ago (prior to 2010) the Insert Benchmark was published by Tokutek to highlight things that the TokuDB storage engine was great at. I was working on MySQL at Google at the time and the benchmark was useful to me, however it was written in C++. While the Insert Benchmark is great at showing the benefits of an LSM storage engine, this was years before MyRocks and I was only doing InnoDB at the time, on spinning disks. So I rewrote it in Python to make it easier to modify, and then the Tokutek team improved a few things about my rewrite, and I have been enhancing it slowly since then.

Until a few years ago the steps of the benchmark were:

  • load - insert in PK order
  • create 3 secondary indexes
  • do more inserts as fast as possible
  • do rate-limited inserts concurrent with range and point queries
The problem with this approach is that the database size grows forever and that limited for how long I could run the benchmark before running out of storage. So I changed it and the new approach keeps the database at a fixed size after the load. The new workflow is:
  • load - insert in PK order
  • create 3 secondary indexes
  • do inserts+deletes at the same rate, as fast as possible
  • do rate-limited inserts+deletes at the same rate concurrent with range and point queries
The benchmark treats the table like a queue, and when ordered by PK (transactionid) there are inserts at the high end and deletes at the low end. The delete statement currently looks like:
    delete from %s where transactionid in
        (select transactionid from %s where transactionid >= %d order by transactionid asc limit %d)

The delete statement is written like that because it must delete the oldest rows -- the ones that have the smallest value for transactionid. While the process that does deletes has some idea of what that smallest value is, it doesn't know it for sure, thus the query. To improve performance it maintains a guess for the value that will be <= the real minimum and it updates that guess over time.

I encountered other performance problems with Postgres while figuring out how to maintain that guess and get_actual_variable_range() in Postgres was the problem. Maintaining that guess requires a resync query every N seconds where the resync query is: select min(transactionid) from %s. The problem for this query in general is that is scans the low end of the PK index on transactionid and when vacuum hasn't been done recently, then it will scan and skip many entries that aren't visible (wasting much CPU and some IO) before finding visible rows. Unfortunately, there will be some time between consecutive vacuums to the same table and this problem can't be avoided. The result is that the response time for the query increases a lot in between vacuums. For more on how get_actual_variable_range() contributes to this problem, see this post.

I assume the sine wave for delete response time is caused by one or both of:
  • get_actual_varable_range() CPU overhead while planning the delete statement
  • CPU overhead from scanning and skipping tombstones while executing the select subquery
The structure of the delete statement above reduces the number of tombstones that the select subquery might encounter by specifying where transactionid >= %d. Perhaps that isn't sufficient. Perhaps the Postgres query planner still has too much CPU overhead from get_actual_variable_range() while planning that delete statement. I have yet to figure that out. But I have figured out that vacuum is a frequent source of problems.


    MariaDB innovation: binlog_storage_engine, small server, Insert Benchmark

     MariaDB 12.3 has a new feature enabled by the option binlog_storage_engine. When enabled it uses InnoDB instead of raw files to store the binlog. A big benefit from this is reducing the number of fsync calls per commit from 2 to 1 because it reduces the number of resource managers from 2 (binlog, InnoDB) to 1 (InnoDB).

    My previous post had results for sysbench with a small server. This post has results for the Insert Benchmark with a similar small server. Both servers use an SSD that has has high fsync latency. This is probably a best-case comparison for the feature. If you really care, then get enterprise SSDs with power loss protection. But you might encounter high fsync latency on public cloud servers.

    tl;dr for a CPU-bound workload

    • Enabling sync on commit for InnoDB and the binlog has a large impact on throughput for the write-heavy steps -- l.i0, l.i1 and l.i2.
    • When sync on commit is enabled, then also enabling the binlog_storage_engine is great for performance as throughput on the write-heavy steps is 1.75X larger for l.i0 (load) and 4X or more larger on the random write steps (l.i1, l.i2)
    tl;dr for an IO-bound workload
    • Enabling sync on commit for InnoDB and the binlog has a large impact on throughput for the write-heavy steps -- l.i0, l.i1 and l.i2. It also has a large impact on qp1000, which is the most write-heavy of the query+write steps.
    • When sync on commit is enabled, then also enabling the binlog_storage_engine is great for performance as throughput on the write-heavy steps is 4.74X larger for l.i0 (load), 1.50X larger for l.i1 (random writes) and 2.99X larger for l.i2 (random writes)
    Builds, configuration and hardware

    I compiled MariaDB 12.3.0 from source.

    The server is an ASUS ExpertCenter PN53 with an AMD Ryzen 7 7735HS CPU, 8 cores, SMT disabled, and 32G of RAM. Storage is one NVMe device for the database using ext-4 with discard enabled. The OS is Ubuntu 24.04. More details on it are here. The storage device has high fsync latency.

    I used 4 my.cnf files:
    • z12b
      • my.cnf.cz12b_c8r32 is my default configuration. Sync-on-commit is disabled for both the binlog and InnoDB so that write-heavy benchmarks create more stress.
    • z12c
    • z12b_sync
    • z12c_sync
      • my.cnf.cz12c_sync_c8r32 is like cz12c except it enables sync-on-commit for InnoDB. Note that InnoDB is used to store the binlog so there is nothing else to sync on commit.
    The Benchmark

    The benchmark is explained here. It was run with 1 client for two workloads:
    • CPU-bound - the database is cached by InnoDB, but there is still much write IO
    • IO-bound - most, but not all, benchmark steps are IO-bound
    The benchmark steps are:

    • l.i0
      • insert XM rows per table in PK order. The table has a PK index but no secondary indexes. There is one connection per client. X is 30M for CPU-bound and 800M for IO-bound.
    • l.x
      • create 3 secondary indexes per table. There is one connection per client.
    • l.i1
      • use 2 connections/client. One inserts XM rows per table and the other does deletes at the same rate as the inserts. Each transaction modifies 50 rows (big transactions). This step is run for a fixed number of inserts, so the run time varies depending on the insert rate. X is 40M for CPU-bound and 4M for IO-bound.
    • l.i2
      • like l.i1 but each transaction modifies 5 rows (small transactions) and YM rows are inserted and deleted per table. Y is 10M for CPU-bound and 1M for IO-bound.
      • Wait for S seconds after the step finishes to reduce MVCC GC debt and perf variance during the read-write benchmark steps that follow. The value of S is a function of the table size.
    • qr100
      • use 3 connections/client. One does range queries and performance is reported for this. The second does does 100 inserts/s and the third does 100 deletes/s. The second and third are less busy than the first. The range queries use covering secondary indexes. If the target insert rate is not sustained then that is considered to be an SLA failure. If the target insert rate is sustained then the step does the same number of inserts for all systems tested. This step is frequently not IO-bound for the IO-bound workload. This step runs for 1800 seconds.
    • qp100
      • like qr100 except uses point queries on the PK index
    • qr500
      • like qr100 but the insert and delete rates are increased from 100/s to 500/s
    • qp500
      • like qp100 but the insert and delete rates are increased from 100/s to 500/s
    • qr1000
      • like qr100 but the insert and delete rates are increased from 100/s to 1000/s
    • qp1000
      • like qp100 but the insert and delete rates are increased from 100/s to 1000/s
    Results: summary

    Results: summary

    The performance reports are here for:
    • CPU-bound
      • all-versions - results for z12b, z12c, z12b_sync and z12c_sync
      • sync-only - results for z12b_sync vs 12c_sync
    • IO-bound
      • all-versions - results for z12b, z12c, z12b_sync and z12c_sync
      • sync-only - results for z12b_sync vs 12c_sync
    The summary sections from the performance reports have 3 tables. The first shows absolute throughput by DBMS tested X benchmark step. The second has throughput relative to the version from the first row of the table. The third shows the background insert rate for benchmark steps with background inserts. The second table makes it easy to see how performance changes over time. The third table makes it easy to see which DBMS+configs failed to meet the SLA.

    I use relative QPS to explain how performance changes. It is: (QPS for $me / QPS for $base) where $me is the result for some version $base is the result from the base version. The base version is Postgres 12.22.

    When relative QPS is > 1.0 then performance improved over time. When it is < 1.0 then there are regressions. The Q in relative QPS measures: 
    • insert/s for l.i0, l.i1, l.i2
    • indexed rows/s for l.x
    • range queries/s for qr100, qr500, qr1000
    • point queries/s for qp100, qp500, qp1000
    Below I use colors to highlight the relative QPS values with yellow for regressions and blue for improvements.

    I often use context switch rates as a proxy for mutex contention.

    Results: CPU-bound

    The summaries are here for all-versions and sync-only.
    • Enabling sync on commit for InnoDB and the binlog has a large impact on throughput for the write-heavy steps -- l.i0, l.i1 and l.i2.
    • When sync on commit is enabled, then also enabling the binlog_storage_engine is great for performance as throughput on the write-heavy steps is 1.75X larger for l.i0 (load) and 4X or more larger on the random write steps (l.i1, l.i2)
    The second table from the summary section has been inlined below. That table shows relative throughput which is:
    • all-versions: (QPS for my config / QPS for z12b)
    • sync-only: (QPS for my z12c / QPS for z12b)
    For all-versions
    dbmsl.i0l.xl.i1l.i2qr100qp100qr500qp500qr1000qp1000
    ma120300_rel_withdbg.cz12b_c8r321.001.001.001.001.001.001.001.001.001.00
    ma120300_rel_withdbg.cz12c_c8r321.031.011.001.031.000.991.001.001.011.00
    ma120300_rel_withdbg.cz12b_sync_c8r320.041.020.070.011.011.011.001.011.001.00
    ma120300_rel_withdbg.cz12c_sync_c8r320.081.030.280.061.021.011.011.021.021.01

    For sync-only
    dbmsl.i0l.xl.i1l.i2qr100qp100qr500qp500qr1000qp1000
    ma120300_rel_withdbg.cz12b_sync_c8r321.001.001.001.001.001.001.001.001.001.00
    ma120300_rel_withdbg.cz12c_sync_c8r321.751.013.996.831.011.011.011.011.031.01

    Results: IO-bound

    The summaries are here for all-versions and sync-only.
    • Enabling sync on commit for InnoDB and the binlog has a large impact on throughput for the write-heavy steps -- l.i0, l.i1 and l.i2. It also has a large impact on qp1000, which is the most write-heavy of the query+write steps.
    • When sync on commit is enabled, then also enabling the binlog_storage_engine is great for performance as throughput on the write-heavy steps is 4.74X larger for l.i0 (load), 1.50X larger for l.i1 (random writes) and 2.99X larger for l.i2 (random writes)
    The second table from the summary section has been inlined below. That table shows relative throughput which is:
    • all-versions: (QPS for my config / QPS for z12b)
    • sync-only: (QPS for my z12c / QPS for z12b)
    For all-versions
    dbmsl.i0l.xl.i1l.i2qr100qp100qr500qp500qr1000qp1000
    ma120300_rel_withdbg.cz12b_c8r321.001.001.001.001.001.001.001.001.001.00
    ma120300_rel_withdbg.cz12c_c8r321.010.990.991.011.011.011.011.071.011.04
    ma120300_rel_withdbg.cz12b_sync_c8r320.041.000.550.101.020.971.000.800.950.55
    ma120300_rel_withdbg.cz12c_sync_c8r320.181.000.830.311.021.011.020.961.020.86

    For sync-only
    dbmsl.i0l.xl.i1l.i2qr100qp100qr500qp500qr1000qp1000
    ma120300_rel_withdbg.cz12b_sync_c8r321.001.001.001.001.001.001.001.001.001.00
    ma120300_rel_withdbg.cz12c_sync_c8r324.741.001.502.991.001.041.021.201.081.57












    February 17, 2026

    Use default encryption at rest for new Amazon Aurora clusters

    In this post, you learn how Amazon Aurora now provides encryption at rest by default for all new database clusters using AWS owned keys. You’ll see how to verify encryption status using the new StorageEncryptionType field, understand the impact on new and existing clusters, and explore migration options for unencrypted databases.

    An Open Letter to Oracle: Let’s Talk About MySQL’s Future

    What Happened at the Summits We just wrapped up two MySQL Community Summits – one in San Francisco in January, and one in Brussels right before FOSDEM. The energy in the rooms: a lot of people who care deeply about MySQL got together, exchanged ideas, and left with a clear sense that we need to […]

    February 16, 2026

    MariaDB innovation: binlog_storage_engine

    MariaDB 12.3 has a new feature enabled by the option binlog_storage_engine. When enabled it uses InnoDB instead of raw files to store the binlog. A big benefit from this is reducing the number of fsync calls per commit from 2 to 1 because it reduces the number of resource managers from 2 (binlog, InnoDB) to 1 (InnoDB).

    In this post I have results for the performance benefit from this when using storage that has a high fsync latency. This is probably a best-case comparison for the feature. A future post will cover the benefit on servers that don't have high fsync latency.

    tl;dr

    • the performance benefit from this is excellent when storage has a high fsync latency
    • my mental performance model needs to be improved. I gussed that throughput would increase by ~2X when using binlog_storage_engine relative to not using it but using sync_binlog=1 and innodb_flush_log_at_trx_commit=1. However the improvement is larger than 4X.

    Builds, configuration and hardware

    I compiled MariaDB 12.3.0 from source.

    The server is an ASUS ExpertCenter PN53 with an AMD Ryzen 7 7735HS CPU, 8 cores, SMT disabled, and 32G of RAM. Storage is one NVMe device for the database using ext-4 with discard enabled. The OS is Ubuntu 24.04. More details on it are here. The storage device has high fsync latency.

    I used 4 my.cnf files:
    • z12b
      • my.cnf.cz12b_c8r32 is my default configuration. Sync-on-commit is disabled for both the binlog and InnoDB so that write-heavy benchmarks create more stress.
    • z12c
    • z12b_sync
    • z12c_sync
      • my.cnf.cz12c_sync_c8r32 is like cz12c except it enables sync-on-commit for InnoDB. Note that InnoDB is used to store the binlog so there is nothing else to sync on commit.

    Benchmark

    I used sysbench and my usage is explained here. To save time I only run 32 of the 42 microbenchmarks 
    and most test only 1 type of SQL statement. Benchmarks are run with the database cached by Postgres.

    The read-heavy microbenchmarks run for 600 seconds and the write-heavy for 900 seconds.

    The benchmark is run with 1 client, 1 table and 50M rows. 

    Results

    The microbenchmarks are split into 4 groups -- 1 for point queries, 2 for range queries, 1 for writes. For the range query microbenchmarks, part 1 has queries that don't do aggregation while part 2 has queries that do aggregation.  

    But here I only report results for the write-heavy tests.

    I provide charts below with relative QPS. The relative QPS is the following:
    (QPS for some version) / (QPS for base version)
    When the relative QPS is > 1 then some version is faster than base version.  When it is < 1 then there might be a regression. 

    I present results for:
    • z12b, z12c, z12b_sync and z12c_sync with z12b as the base version
    •  z12b_sync and z12c_sync with z12b_sync as the base version
    Results: z12b, z12c, z12b_sync, z12c_sync

    Summary:
    • z12b_sync has the worst performance thanks to 2 fsyncs per commit
    • z12c_sync gets more than 4X the throughput vs z12b_sync. If fsync latency were the only thing that determined performance then I would expect the difference to be ~2X. There is more going on here and in the next section I mention that enabling binlog_storage_engine also reduces the CPU overhead.
    • some per-test data from iostat and vmstat is here
    • a representative sample of iostat collected at 1-second intervals during the update-inlist test is here. When comparing z12b_sync with z12c_sync
      • the fsync rate (f/s) is ~2.5X larger for z12c_sync vs z12b_sync (~690/s vs ~275/s) but fsync latency (f_await) is similar. So with binlog_storage_engine enabled MySQL is more efficient, and perhaps thanks to a lower CPU overhead, there is less work to do in between calls to fsync
    Relative to: z12b
    col-1 : z12c
    col-2 : z12b_sync
    col-3 : z12c_sync

    col-1   col-2   col-3
    1.06    0.01    0.05    delete
    1.05    0.01    0.05    insert
    1.01    0.12    0.47    read-write_range=100
    1.01    0.10    0.44    read-write_range=10
    1.03    0.01    0.11    update-index
    1.02    0.02    0.12    update-inlist
    1.05    0.01    0.06    update-nonindex
    1.05    0.01    0.06    update-one
    1.05    0.01    0.06    update-zipf
    1.01    0.03    0.20    write-only

    Results: z12b_sync, z12c_sync

    Summary:
    • z12c_sync gets more than 4X the throughput vs z12b_sync. If fsync latency were the only thing that determined performance then I would expect the difference to be ~2X. There is more going on here and below I mention that enabling binlog_storage_engine also reduces the CPU overhead.
    • some per-test data from iostat and vmstat is here and the CPU overhead per operation is much smaller with binlog_storage_engine -- see here for the update-inlist test. In general, when sync-on-commit is enabled then the CPU overhead with binlog_storage_engine enabled is between 1/3 and 2/3 of the overhead without it enabled.
    Relative to: z12b_sync
    col-1 : z12c_sync

    col-1
    6.40    delete
    5.64    insert
    4.06    read-write_range=100
    4.40    read-write_range=10
    7.64    update-index
    7.17    update-inlist
    5.73    update-nonindex
    5.82    update-one
    5.80    update-zipf
    6.61    write-only

    Relational composition and Codd's "connection trap" in PostgreSQL and MongoDB

    Relational composition is to joins what the cartesian product is to tables: it produces every result that could be true, not just what is true. This often leads to SQL mistakes and can often be suspected when a SELECT DISTINCT is added after a query starts returning more rows than expected, without the root cause being understood.

    In its mathematical definition, relational composition is the derived relation obtained by existentially joining two relations on a shared attribute and projecting away that attribute. In a database, it is meaningful only when a real‑world invariant ensures that the resulting pairs reflect actual facts. Otherwise, the result illustrates what E. F. Codd, in his 1970 paper A Relational Model of Data for Large Shared Data Banks, called the connection trap.

    Codd uses two relations in his example: a supplier supplies parts, and a project uses parts. At an intuitive level, this connection trap mirrors a syllogism: if a supplier supplies a part and a project uses that part, a join can derive that the supplier supplies the project—even when that conclusion was never stated as a fact.

    Codd observed that the connection trap was common in pre‑relational network data models, where users navigated data by following physical pointers. Path existence was often mistaken for semantic relationship. The relational model solved this problem by replacing navigational access with declarative queries over explicitly defined relations, and modern document models now do the same.

    However, while the relational model removes pointer‑based navigation, it does not eliminate the trap entirely. Joins can still compute relational compositions, and without appropriate cardinality constraints or business invariants, such compositions may represent only possible relationships rather than actual ones. In this way, the connection trap can be reintroduced at query time, even in modern relational systems such as PostgreSQL, and similarly through $lookup operations in MongoDB.

    PostgreSQL — reproducing the connection trap

    This model declares suppliers, parts, projects, and two independent many‑to‑many relationships:

    CREATE TABLE suppliers (
        supplier_id TEXT PRIMARY KEY
    );
    
    CREATE TABLE parts (
        part_id TEXT PRIMARY KEY
    );
    
    CREATE TABLE projects (
        project_id TEXT PRIMARY KEY
    );
    
    -- Supplier supplies parts
    CREATE TABLE supplier_part (
        supplier_id TEXT REFERENCES suppliers,
        part_id     TEXT REFERENCES parts,
        PRIMARY KEY (supplier_id, part_id)
    );
    
    -- Project uses parts
    CREATE TABLE project_part (
        project_id TEXT REFERENCES projects,
        part_id    TEXT REFERENCES parts,
        PRIMARY KEY (project_id, part_id)
    );
    

    This follows Codd’s classic suppliers–parts–projects example, where suppliers supply parts and projects use parts as independent relationships.

    The following data asserts that project Alpha uses parts P1 and P2, that supplier S1 supplies parts P1 and P2, and that supplier S2 supplies parts P2 and P3:

    INSERT INTO suppliers VALUES ('S1'), ('S2');
    INSERT INTO parts     VALUES ('P1'), ('P2'), ('P3');
    INSERT INTO projects  VALUES ('Alpha');
    
    -- Supplier capabilities
    INSERT INTO supplier_part VALUES
    ('S1', 'P1'),
    ('S1', 'P2'),
    ('S2', 'P2'),
    ('S2', 'P3');
    
    -- Project uses parts P1 and P2
    INSERT INTO project_part VALUES
    ('Alpha', 'P1'),
    ('Alpha', 'P2');
    

    The following query is valid SQL:

    SELECT DISTINCT
        sp.supplier_id,
        pp.project_id
    FROM supplier_part sp
    JOIN project_part pp
      ON sp.part_id = pp.part_id;
    

    However, this query falls into the connection trap:

     supplier_id | project_id
    -------------+------------
     S2          | Alpha
     S1          | Alpha
    (2 rows)
    

    As we defined only supplier–part and project–part relationships, any derived supplier–project relationship is not a fact but a relational composition. We know that Alpha uses P1 and P2, and that part P2 can be supplied by either S1 or S2, but we have no record of which supplier actually supplies Alpha.

    This query asserts “Supplier S1 supplies project Alpha”, but the data only says: “S1 and S2 supply P2” and “Alpha uses P2”.

    This is the connection trap, expressed purely in SQL.

    PostgreSQL — the correct relational solution

    If a supplier actually supplies a part to a project, that fact must be represented directly. We need a new table:

    CREATE TABLE supply (
    
        supplier_id TEXT,
        project_id  TEXT,
        part_id     TEXT,
    
        PRIMARY KEY (supplier_id, project_id, part_id),
    
        FOREIGN KEY (supplier_id, part_id)
            REFERENCES supplier_part (supplier_id, part_id),
    
        FOREIGN KEY (project_id, part_id)
            REFERENCES project_part (project_id, part_id)
    );
    

    These foreign keys encode subset constraints between relations and prevent inserting supplies of parts not supplied by the supplier or not used by the project.

    This relation explicitly states who supplies what to which project. We assume that the real‑world fact is “Alpha gets part P2 from supplier S1”:

    INSERT INTO supply VALUES
    ('S1', 'Alpha', 'P2');
    

    The correct query reads from this relation:

    SELECT supplier_id, project_id
    FROM supply;
    
     supplier_id | project_id
    -------------+------------
     S1          | Alpha
    (1 row)
    

    The relationship is now real and asserted, not inferred. In total, we have six tables:

    postgres=# \d
                 List of relations
     Schema |     Name      | Type  |  Owner
    --------+---------------+-------+----------
     public | parts         | table | postgres
     public | project_part  | table | postgres
     public | projects      | table | postgres
     public | supplier_part | table | postgres
     public | suppliers     | table | postgres
     public | supply        | table | postgres
    (6 rows)
    

    In practice, you should either store the relationship explicitly or avoid claiming it exists. Although the relational model avoids pointers, it is still possible to join through an incorrect path, so the application must enforce the correct one.

    In ad-hoc query environments such as data warehouses, data is typically organized into domains and modeled using a dimensional ("star schema") approach. Relationships like project–supplier are represented as fact tables within a single data mart, exposing only semantically valid join paths and preventing invalid joins.

    MongoDB — reproducing the connection trap

    The following MongoDB data mirrors the PostgreSQL example. MongoDB allows representing relationships either as separate collections or by embedding, depending on the bounded context. Here we start with separate collections to mirror the relational model:

    db.suppliers.insertMany([
      { _id: "S1" },
      { _id: "S2" }
    ]);
    
    db.parts.insertMany([
      { _id: "P1" },
      { _id: "P2" },
      { _id: "P3" }
    ]);
    
    db.projects.insertMany([
      { _id: "Alpha" }
    ]);
    
    // Supplier capabilities
    db.supplier_parts.insertMany([
      { supplier: "S1", part: "P1" },
      { supplier: "S1", part: "P2" },
      { supplier: "S2", part: "P2" },
      { supplier: "S2", part: "P3" }
    ]);
    
    // Project uses parts P1 and P2
    db.project_parts.insertMany([
      { project: "Alpha", part: "P1" },
      { project: "Alpha", part: "P2" }
    ]);
    

    Using the simple find() API, we cannot fall into the trap directly because there is no implicit connection between suppliers and projects. The application must issue two independent queries and combine the results explicitly.

    Simulating the connection trap in a single query therefore requires explicit composition at the application level:

    const partsUsedByAlpha = db.project_parts.find(
      { project: "Alpha" },
      { _id: 0, part: 1 }
    ).toArray();
    
    const suppliersForParts = db.supplier_parts.find(
      { part: { $in: partsUsedByAlpha.map(p => p.part) } },
      { _id: 0, supplier: 1, part: 1 }
    ).toArray();
    
    const supplierProjectPairs = suppliersForParts.map(sp => ({
      supplier: sp.supplier,
      project: "Alpha"
    }));
    
    print(supplierProjectPairs);
    

    When forced by the application logic, here is the connection trap associating suppliers and projects:

    [
      { supplier: 'S1', project: 'Alpha' },
      { supplier: 'S1', project: 'Alpha' },
      { supplier: 'S2', project: 'Alpha' }
    ]
    

    As with SQL joins, a $lookup in an aggregation pipeline can fall in the same connection trap:

    db.supplier_parts.aggregate([
      {
        $lookup: {
          from: "project_parts",
          localField: "part",
          foreignField: "part",
          as: "projects"
        }
      },
      { $unwind: "$projects" },
      {
        $project: {
          _id: 0,
          supplier: "$supplier",
          project: "$projects.project"
        }
      }
    ]);
    

    The result is similar and the projection removed the intermediate attributes:

    { "supplier": "S1", "project": "Alpha" }
    { "supplier": "S1", "project": "Alpha" }
    { "supplier": "S2", "project": "Alpha" }
    

    We reproduced the connection trap by ignoring that $lookup produces a derived relationship, not a real one, and that matching keys does not carry business meaning.

    MongoDB — normalized solution

    As with SQL, we can add an explicit supplies collection that stores the relationship between projects and suppliers:

    db.supplies.insertOne({
      project: "Alpha",
      supplier: "S1",
      part: "P2"
    });
    

    Then we simply query this collection:

    db.supplies.find(
      { project: "Alpha" },
      { _id: 0, supplier: 1, part: 1 }
    );
    
    [ { supplier: 'S1', part: 'P2' } ]
    
    

    The document model is a superset of the relational model as relations can be stored as flat collections. The difference is that referential integrity is enforced by the application rather than in-database. To enforce relationships in the database, they must be embedded as sub-documents and arrays.

    MongoDB — domain-driven solution

    It's not the only solution in a document database, as we can store a schema based on the domain model rather than normalized. MongoDB allows representing this relationship as part of an aggregate. In a project‑centric bounded context, the project is the aggregate root, and the supplier information can be embedded as part of the supply fact:

    db.projects.updateOne(
      { _id: "Alpha" },
      {
        $set: {
          parts: [
            { part: "P2", supplier: "S1" },
            { part: "P1", supplier: null }
          ]
        }
      },
      { upsert: true }
    );
    

    The query doesn't need a join and cannot fall into the connection trap:

    db.projects.find(
      { _id: "Alpha" },
      { _id: 1, "parts.supplier": 1 }
    );
    
    [
      {
        _id: 'Alpha',
        parts: [ 
          { supplier: 'S1' },
          { supplier: null }
        ]
      }
    ]
    

    This avoids the connection trap by construction. It may look like data duplication—the same supplier name may appear in multiple project documents—and indeed this would be undesirable in a fully normalized model shared across all business domains. However, this structure represents a valid aggregate within a bounded context.

    In this context, the embedded supplier information is part of the supply fact, not a reference to a global supplier record. If a supplier’s name changes, it is a business decision, not a database decision, whether that change should be propagated to existing projects or whether historical data should retain the supplier name as it was at the time of supply.

    Even when propagation is desired, MongoDB allows updating embedded data efficiently:

    db.projects.updateMany(
      // document filter
      { "parts.supplier": "S1" },
      // document update using the array's item from array filter
      {
        $set: {
          "parts.$[p].supplier": "Supplier One"
        }
      },
      // array filter defining the array's item for the update
      {
        arrayFilters: [{ "p.supplier": "S1" }]
      }
    );
    

    This update is not atomic across documents, but each document update is atomic and the operation is idempotent and can be safely retried or executed within an explicit transaction if full atomicity is required.

    Conclusion

    The connection trap occurs whenever relationships are inferred from shared keys, at query time, instead of being explicitly represented as facts, at write time. In SQL, this means introducing explicit association tables and enforcing integrity constraints, rather than deriving then though joins. In MongoDB, it means modeling relationships as explicit documents or embedded subdocuments rather than deriving them through lookups.

    In a relational database, the schema is designed to be normalized and independent of specific use cases. All many‑to‑many and fact‑bearing relationships must be declared explicitly, and queries must follow the correct relational path. Referential and cardinality constraints are essential to restrict to only actual facts.

    In MongoDB, the data model is typically driven by the domain and the application’s use cases. In a domain-driven design (DDD), strong relationships are modeled as aggregates, embedding related data directly within a document in MongoDB collections. This makes the intended semantics explicit and avoids inferring relationships at query time. Apparent duplication is not a flaw here, but a deliberate modeling choice within a bounded context.

    Ultimately, the connection trap is not fully avoided by the data model, but can be a query-time error with joins and projections: deriving relationships that were never asserted. Whether using normalized relations or domain‑driven documents, the rule is the same—if a relationship is a fact, it must be stored as one.

    February 15, 2026

    HammerDB tproc-c on a large server, Postgres and MySQL

    This has results for HammerDB tproc-c on a small server using MySQL and Postgres. I am new to HammerDB and still figuring out how to explain and present results so I will keep this simple and just share graphs without explaining the results.

    The comparison might favor Postgres for the IO-bound workloads because I used smaller buffer pools than normal to avoid OOM. I have to do this because RSS for the HammerDB client grows over time as it buffers more response time stats. And while I used buffered IO for Postgres, I use O_DIRECT for InnoDB. So Postgres might have avoided some read IO thanks to the OS page cache while InnoDB did not.

    tl;dr for MySQL

    • With vu=40 MySQL 8.4.8 uses about 2X more CPU per transaction and does more than 2X more context switches per transaction compared to Postgres 18.1. I will get CPU profiles soon.
    • Modern MySQL brings us great improvements to concurrency and too many new CPU overheads
      • MySQL 5.6 and 8.4 have similar throughput at the lowest concurrency (vu=10)
      • MySQl 8.4 is a lot faster than 5.6 at the highest concurrency (vu=40)
    tl;dr for Postgres
    • Modern Postgres has regressions relative to old Postgres
    • The regressions increase with the warehouse count, at wh=4000 the NOPM drops between 3% and 13% depending on the virtual user count (vu).
    tl;dr for Postgres vs MySQL
    • Postgres and MySQL have similar throughput for the largest warehouse count (wh=4000)
    • Otherwise Postgres gets between 1.4X and 2X more throughput (NOPM)

    Builds, configuration and hardware

    I compiled Postgres versions from source: 12.22, 13.23, 14.20, 15.15, 16.11, 17.7 and 18.1.

    I compiled MySQL versions from source: 5.6.51, 5.7.44, 8.0.45, 8.4.8, 9.4.0 and 9.6.0.

    I used a 48-core server from Hetzner
    • an ax162s with an AMD EPYC 9454P 48-Core Processor with SMT disabled
    • 2 Intel D7-P5520 NVMe storage devices with RAID 1 (3.8T each) using ext4
    • 128G RAM
    • Ubuntu 22.04 running the non-HWE kernel (5.5.0-118-generic)
    Postgres configuration files:
    • prior to v18 the config file is named conf.diff.cx10a50g_c32r128 (x10a_c32r128) and is here for versions 1213141516 and 17.
    • for Postgres 18 I used conf.diff.cx10b_c32r128 (x10b_c32r128) with io_method=sync to be similar to the config used for versions 12 through 17.
    MySQL configuration files
    • prior to 9.6 the config file is named my.cnf.cz12a50g_c32r128 (z12a50g_c32r128 or z12a50g) and is here for versions 5.6, 5.7, 8.0 and 8.4
    • for 9.6 it is named my.cnf.cz13a50g_c32r128 (z13a50g_c32r128 or z13a50g) and is here
    For both Postgres and MySQL fsync on commit is disabled to avoid turning this into an fsync benchmark. The server has 2 SSDs with SW RAID and low fsync latency.

    Benchmark

    The benchmark is tproc-c from HammerDB. The tproc-c benchmark is derived from TPC-C.

    The benchmark was run for several workloads:
    • vu=10, wh=1000 - 10 virtual users, 1000 warehouses
    • vu=20, wh=1000 - 20 virtual users, 1000 warehouses
    • vu=40, wh=1000 - 40 virtual users, 1000 warehouses
    • vu=10, wh=2000 - 10 virtual users, 2000 warehouses
    • vu=20, wh=2000 - 20 virtual users, 2000 warehouses
    • vu=40, wh=2000 - 40 virtual users, 2000 warehouses
    • vu=10, wh=4000 - 10 virtual users, 4000 warehouses
    • vu=20, wh=4000 - 20 virtual users, 4000 warehouses
    • vu=40, wh=4000 - 40 virtual users, 4000 warehouses
    The wh=1000 workloads are less heavy on IO. The wh=4000 workloads are more heavy on IO.

    The benchmark for Postgres is run by a variant of this script which depends on scripts here. The MySQL scripts are similar.
    • stored procedures are enabled
    • partitioning is used because the warehouse count is >= 1000
    • a 5 minute rampup is used
    • then performance is measured for 60 minutes
    Basic metrics: iostat

    I am still improving my helper scripts to report various performance metrics. The table here has average values from iostat during the benchmark run phase for MySQL 8.4.8 and Postgres 18.1. For these configurations the NOPM values for Postgres and MySQL were similar so I won't present normalized values (average value / NOPM) and NOPM is throughput.
    • average wMB/s increases with the warehouse count for Postgres but not for MySQL
    • r/s increases with the warehouse count for Postgres and MySQL
    iostat metrics
    * r/s = average rate of reads/s from storage
    * wMB/s = average MB/s written to storage

    my8408
    r/s     wMB/s
    22833.0 906.2   vu=40, wh=1000
    63079.8 1428.5  vu=40, wh=2000
    82282.3 1398.2  vu=40, wh=4000

    pg181
    r/s     wMB/s
    30394.9 1261.9  vu=40, wh=1000
    59770.4 1267.8  vu=40, wh=2000
    78052.3 1272.9  vu=40, wh=4000

    Basic metrics: vmstat

    I am still improving my helper scripts to report various performance metrics. The table here has average values from vmstat during the benchmark run phase for MySQL 8.4.8 and Postgres 18.1. For these configurations the NOPM values for Postgres and MySQL were similar so I won't present normalized values (average value / NOPM).
    • CPU utilization is almost 2X larger for MySQL
    • Context switch rates are more than 2X larger for MySQL
    • In the future I hope to learn why MySQL uses almost 2X more CPU per transaction and has more than 2X more context switches per transaction relative to Postgres
    vmstat metrics
    * cs - average value for cs (context switches/s)
    * us - average value for us (user CPU)
    * sy - average value for sy (system CPU)
    * id - average value for id (idle)
    * wa - average value for wa (waiting for IO)
    * us+sy - sum of us and sy

    my8408
    cs      us      sy      id      wa      us+sy
    455648  61.9    8.2     24.2    5.7     70.1    vu=40, wh=1000
    484955  50.4    9.2     19.5    21.0    59.6    vu=40, wh=2000
    487410  39.5    8.4     19.4    32.6    48.0    vu=40, wh=4000

    pg181
    cs      us      sy      id      wa      us+sy
    127486  23.5    10.1    63.3    3.0     33.6    vu=40, wh=1000
    166257  17.2    11.1    62.5    9.1     28.3    vu=40, wh=2000
    203578  13.9    11.3    59.2    15.6    25.2    vu=40, wh=4000

    Results

    My analysis at this point is simple -- I only consider average throughput. Eventually I will examine throughput over time and efficiency (CPU and IO).

    On the charts that follow y-axis does not start at 0 to improve readability at the risk of overstating the differences. The y-axis shows relative throughput. There might be a regression when the relative throughput is less than 1.0. There might be an improvement when it is > 1.0. The relative throughput is:
    (NOPM for some-version / NOPM for base-version)

    I provide three charts below:

    • only MySQL - base-version is MySQL 5.6.51
    • only Postgres - base-version is Postgres 12.22
    • Postgres vs MySQL - base-version is Postgres 18.1, some-version is MySQL 8.4.8
    Results: MySQL 5.6 to 9.6

    Legend:

    • my5651.z12a is MySQL 5.6.51 with the z12a50g config
    • my5744.z12a is MySQL 5.7.44 with the z12a50g config
    • my8045.z12a is MySQL 8.0.45 with the z12a50g config
    • my8408.z12a is MySQL 8.4.8 with the z12a50g config
    • my9500.z13a is MySQL 9.6.0 with the z13a50g config

    Summary

    • At the lowest concurrency (vu=10) MySQL 8.4.8 has similar throughput as 5.6.51 because CPU regressions in modern MySQL offset the concurrency improvements.
    • At the highest concurrency (vu=40) MySQL 8.4.8 is much faster than 5.6.51 and the regressions after 5.7 are small. This matches what I have seen elsewhere -- while modern MySQL suffers from CPU regressions it benefits from concurrency improvements. Imagine if we could get those concurrency improvements without the CPU regressions.

    And the absolute NOPM values are here:

    my5651my5744my8045my8408my9600
    vu=10, wh=1000163059183268156039155194151748
    vu=20, wh=1000210506321670283282281038279269
    vu=40, wh=1000216677454743439589435095433618
    vu=10, wh=2000107492130229111798110161108386
    vu=20, wh=2000155398225068193658190717189847
    vu=40, wh=2000178278302723297236307504293217
    vu=10, wh=400081242103406894148931688458
    vu=20, wh=4000131241179112155134152998152301
    vu=40, wh=4000146809228554234922229511230557

    Results: Postgres 12 to 18

    Legend:

    • pg1222 is Postgres 12.22 with the x10a50g config
    • pg1323 is Postgres 13.23 with the x10a50g config
    • pg1420 is Postgres 14.20 with the x10a50g config
    • pg1515 is Postgres 15.15 with the x10a50g config
    • pg1611 is Postgres 16.11 with the x10a50g config
    • pg177 is Postgres 17.7 with the x10a50g config
    • pg181 is Postgres 18.1 with the x10b50g config

    Summary

    • Modern Postgres has regressions relative to old Postgres
    • The regressions increase with the warehouse count, at wh=4000 the NOPM drops between 3% and 13% depending on the virtual user count (vu).


    The relative NOPM values are here:

    pg1222pg1323pg1420pg1515pg1611pg177pg181
    vu=10, wh=10001.0001.0001.0541.0421.0041.0100.968
    vu=20, wh=10001.0001.0351.0371.0281.0281.0010.997
    vu=40, wh=10001.0001.0400.9881.0001.0270.9980.970
    vu=10, wh=20001.0001.0261.0591.0751.0681.0811.029
    vu=20, wh=20001.0001.0221.0461.0430.9790.9720.934
    vu=40, wh=20001.0001.0141.0321.0360.9791.0100.947
    vu=10, wh=40001.0001.0271.0321.0350.9930.9980.974
    vu=20, wh=40001.0001.0051.0491.0480.9400.9270.876
    vu=40, wh=40001.0000.9911.0190.9831.0010.9790.937

    The absolute NOPM values are here:

    pg1222pg1323pg1420pg1515pg1611pg177pg181
    vu=10, wh=1000353077353048372015367933354513356469341688
    vu=20, wh=1000423565438456439398435454435288423986422397
    vu=40, wh=1000445114462851439728445144457110444364431648
    vu=10, wh=2000223048228914236231239868238117241185229549
    vu=20, wh=2000314380321380328688328044307728305452293627
    vu=40, wh=2000320347324769330444331896313553323454303403
    vu=10, wh=4000162054166461167320167761160962161716157872
    vu=20, wh=4000244598245804256593256231230037226844214309
    vu=40, wh=4000252931250634257820248584253059247610236986

    Results: MySQL vs Postgres

    Legend:

    • pg181 is Postgres 18.1 with the x10b50g config
    • my8408 is MySQL 8.4.8 with the z12a50g config

    Summary

    • Postgres and MySQL have similar throughput for the largest warehouse count (wh=4000)
    • Otherwise Postgres gets between 1.4X and 2X more throughput (NOPM)
    The absolute NOPM values are here:

    pg181my8408
    vu=10, wh=1000341688155194
    vu=20, wh=1000422397281038
    vu=40, wh=1000431648435095
    vu=10, wh=2000229549110161
    vu=20, wh=2000293627190717
    vu=40, wh=2000303403307504
    vu=10, wh=400015787289316
    vu=20, wh=4000214309152998
    by Mark Callaghan (noreply@blogger.com)

    Butlers or Architects?

    In a recent viral post, Matt Shumer declares dramatically that we've crossed an irreversible threshold. He asserts that the latest AI models now exercise independent judgment, that he simply gives an AI plain-English instructions, steps away for a few hours, and returns to a flawlessly finished product that surpasses his own capabilities. In the near future, he claims, AI will autonomously handle all knowledge work and even build the next generation of AI itself, leaving human creators completely blindsided by the exponential curve.

    This was a depressing read. The dramatic tone lands well. And by extrapolating from progress in the last six years, it's hard to argue against what AI might achieve in the next six.

    I forwarded this to a friend of mine, who had the misfortune of reading it before bed. He told me he had a nightmare about it, dreaming of himself as an Uber driver, completely displaced from his high-tech career.


    Someone on Twitter had a come back: "The thing I don't get is: Claude Code is writing 100% of Claude's code now. But Anthropic has 100+ open dev positions on their jobs page?" Boris Cherny of Anthropic replied: "The reality is that someone has to prompt the Claudes, talk to customers, coordinate with other teams, and decide what to build next. Engineering is changing, and great engineers are more important than ever."

    This is strongly reminiscent of the Shell Game podcast I wrote about recently. And it connects to my arguments in "Agentic AI and The Mythical Agent-Month" about the mathematical laws of scaling coordination. Throwing thousands of AI agents at a project does not magically bypass Brooks' Law. Agents can dramatically scale the volume of code generated, but they do not scale insight. Coordination complexity and verification bottlenecks remain firmly in place. Until you solve the epistemic gap of distributed knowledge, adding more agents simply produces a faster, more expensive way to generate merge conflicts. Design, at its core, is still very human.

    Trung Phan's recent piece on how Docusign still employs 7,000 people in the age of AI provides useful context as well. Complex organizations don't dissolve overnight. Societal constructs, institutional inertia, regulatory frameworks, and the deeply human texture of business relationships all act as buffers. The world changes slower than the benchmarks suggest.


    So we are nowhere near a fully autonomous AI that sweeps up all knowledge work and solves everything. When we step back, two ways of reading the situation come into view.

    The first is that we are all becoming butlers for LLMs: priming the model, feeding it context in careful portions, adding constraints, nudging tone, coaxing the trajectory. Then stepping back to watch it cook. We do the setup and it does the real work.

    But as a perennial optimist, I think we are becoming architects. Deep work will not disappear, rather it will become the only work that matters. We get to design the blueprint, break down logic in high-level parts, set the vision, dictate strategy, and chart trajectory. We do the real thinking, and then we make the model grind.

    In anyway, this shift brings a real danger. If we delegate execution, it becomes tempting to delegate thought gradually. LLMs make thinking feel optional. People were already reluctant to think; now they can bypass it entirely. It is unsettling to watch a statistical prediction machine stand in for reasoning. Humbling, too. Maybe we're not as special as we assumed. 

    This reminds me Ted Chiang's story "Catching Crumbs from the Table" where humanity is reduced to interpreting the outputs of a vastly superior intellect. Human scientists no longer produce breakthroughs themselves; they spend their careers reverse-engineering discoveries made by "metahumans". The tragedy is that humans are no longer the source of the insight, they are merely trying to explain metahumans' genius. The title captures the feeling really well. We're not at the table anymore. We're just gathering what falls from it.

    Even if things come to that, I know I'll keep thinking, keep learning, keep striving to build things. As I reflected in an earlier post on finding one's true calling, this pursuit of knowledge and creation is my dharma. That basic human drive to understand things and build things is not something an LLM can automate away. This I believe.



    I recently launched a free email newsletter for the blog. Subscribe here to get these essays delivered to your inbox, along with behind-the-scenes commentary and curated links on distributed systems, technology, and other curiosities. 

    February 14, 2026

    HammerDB tproc-c on a small server, Postgres and MySQL

    This has results for HammerDB tproc-c on a small server using MySQL and Postgres. I am new to HammerDB and still figuring out how to explain and present results so I will keep this simple and just share graphs without explaining the results.

    tl;dr

    • Modern Postgres is faster than old Postgres
    • Modern MySQL has large perf regressions relative to old MySQL, and they are worst at low concurrency for CPU-bound worklads. This is similar to what I see on other benchmarks.
    • Modern Postgres is about 2X faster than MySQL at low concurrency (vu=1) and when the workload isn't IO-bound (w=100). But with some concurrency (vu=6) or with more IO per transaction (w=1000, w=2000) they have similar throughput. Note that partitioning is used at w=1000 and 2000 but not at w=100.

    Builds, configuration and hardware

    I compiled Postgres versions from source: 12.22, 13.23, 14.20, 15.15, 16.11, 17.7 and 18.1.

    I compiled MySQL versions from source: 5.6.51, 5.7.44, 8.0.44, 8.4.7, 9.4.0 and 9.5.0.

    The server is an ASUS ExpertCenter PN53 with an AMD Ryzen 7 7735HS CPU, 8 cores, SMT disabled, and 32G of RAM. Storage is one NVMe device for the database using ext-4 with discard enabled. The OS is Ubuntu 24.04. More details on it are here.

    For versions prior to 18, the config file is named conf.diff.cx10a_c8r32 and they are as similar as possible and here for versions 1213141516 and 17.

    For Postgres 18 the config file is named conf.diff.cx10b_c8r32 and adds io_mod='sync' which matches behavior in earlier Postgres versions.

    For MySQL the config files are named my.cnf.cz12a_c8r32 and are here: 5.6.515.7.448.0.4x8.4.x9.x.0.

    For both Postgres and MySQL fsync on commit is disabled to avoid turning this into an fsync benchmark. The server has an SSD with high fsync latency.

    Benchmark

    The benchmark is tproc-c from HammerDB. The tproc-c benchmark is derived from TPC-C.

    The benchmark was run for several workloads:
    • vu=1, w=100 - 1 virtual user, 100 warehouses
    • vu=6, w=100 - 6 virtual users, 100 warehouses
    • vu=1, w=1000 - 1 virtual user, 1000 warehouses
    • vu=6, w=1000 - 6 virtual users, 1000 warehouses
    • vu=1, w=2000 - 1 virtual user, 2000 warehouses
    • vu=6, w=2000 - 6 virtual users, 2000 warehouses
    The w=100 workloads are less heavy on IO. The w=1000 and w=2000 workloads are more heavy on IO.

    The benchmark for Postgres is run by this script which depends on scripts here. The MySQL scripts are similar.
    • stored procedures are enabled
    • partitioning is used for when the warehouse count is >= 1000
    • a 5 minute rampup is used
    • then performance is measured for 120 minutes
    Results

    My analysis at this point is simple -- I only consider average throughput. Eventually I will examine throughput over time and efficiency (CPU and IO).

    On the charts that follow y-axis does not start at 0 to improve readability at the risk of overstating the differences. The y-axis shows relative throughput. There might be a regression when the relative throughput is less than 1.0. There might be an improvement when it is > 1.0. The relative throughput is:
    (NOPM for some-version / NOPM for base-version)

    I provide three charts below:

    • only MySQL - base-version is MySQL 5.6.51
    • only Postgres - base-version is Postgres 12.22
    • Postgres vs MySQL - base-version is Postgres 18.1, some-version is MySQL 8.4.7

    Results: MySQL 5.6 to 8.4

    Legend:

    • my5651.z12a is MySQL 5.6.51 with the z12a_c8r32 config
    • my5744.z12a is MySQL 5.7.44 with the z12a_c8r32 config
    • my8044.z12a is MySQL 8.0.44 with the z12a_c8r32 config
    • my847.z12a is MySQL 8.4.7 with the z12a_c8r32 config
    • my9400.z12a is MySQL 9.4.0 with the z12a_c8r32 config
    • my9500.z12a is MySQL 9.5.0 with the z12a_c8r32 config

    Summary

    • Perf regressions in MySQL 8.4 are smaller with vu=6 and wh >= 1000 -- the cases where there is more concurrency (vu=6) and the workload does more IO per transaction (wh=1000 & 2000). Note that partitioning is used at w=1000 and 2000 but not at w=100.
    • Perf regressions in MySQL 8.4 are larger with vu=1 and even more so with wh=100 (low concurrency, less IO per transaction).
    • Performance has mostly been dropping from MySQL 5.6 to 8.4. From other benchmarks the problem is from new CPU overheads at low concurrency.
    • While perf regressions in modern MySQL at high concurrency have been less of a problem on other benchmarks, this server is too small to support high concurrency.

    Results: Postgres 12 to 18

    Legend:

    • pg1222.x10a is Postgres 12.22 with the x10a_c8r32 config
    • pg1323.x10a is Postgres 13.23 with the x10a_c8r32 config
    • pg1420.x10a is Postgres 14.20 with the x10a_c8r32 config
    • pg1515.x10a is Postgres 15.15 with the x10a_c8r32 config
    • pg1611.x10a is Postgres 16.11 with the x10a_c8r32 config
    • pg177.x10a is Postgres 17.7 with the x10a_c8r32 config
    • pg181.x10b is Postgres 18.1 with the x10b_c8r32 config

    Summary

    • Modern Postgres is faster than old Postgres



    Results: MySQL vs Postgres

    Legend:

    • pg181.x10b is Postgres 18.1 with the x10b_c8r32 config
    • my847.z12a is MySQL 8.4.7 with the z12a_c8r32 config

    Summary

    • MySQL and Postgres have similar throughput for vu=6 at w=1000 and 2000. Note that partitioning is used at w=1000 and 2000 but not at w=100.
    • Otherwise Postgres is 2X faster than MySQL








     

    Cross join in MongoDB

    Relational database joins are, conceptually, a cartesian product followed by a filter (the join condition). Without that condition, you get a cross join that returns every possible combination. In MongoDB, you can model the same behavior at read time using $lookup, or at write time by embedding documents.

    Example

    Define two collections: one for clothing sizes and one for gender-specific fits:

    db.sizes.insertMany([  
      { code: "XS", neckCm: { min: 31, max: 33 } },  
      { code: "S",  neckCm: { min: 34, max: 36 } },  
      { code: "M",  neckCm: { min: 37, max: 39 } },  
      { code: "L",  neckCm: { min: 40, max: 42 } },  
      { code: "XL", neckCm: { min: 43, max: 46 } }  
    ]);
    
    db.fits.insertMany([
      {
        code: "MEN",
        description: "Straight cut, broader shoulders, narrower hips"
      },
      {
        code: "WOMEN",
        description: "Tapered waist, narrower shoulders, wider hips"
      }
    ]);
    
    

    Each collection stores independent characteristics, and every size applies to every fit. The goal is to generate all valid product variants.

    Cross join on read: $lookup + $unwind

    In order to add all sizes to each body shape, use a $lookup without filter condition and, as it adds them as an embedded array, use $unwind to get one document per combination:

    db.sizes.aggregate([
      {
        $lookup: {
          from: "fits",
          pipeline: [],
          as: "fit"
        }
      },
      { $unwind: "$fit" },
      { $sort: { "fit.code": 1, code: 1 } },
      {
        $project: {
          _id: 0,
          code: { $concat: ["$fit.code", "-", "$code"] }
        }
      }
    ]);
    
    

    Here is the result:

    Application-side

    For such small static reference collections, the application may simply read both and join with loops:

    const sizes = db.sizes.find({}, { code: 1, _id: 0 }).sort({ code: 1 }).toArray();
    const fits  = db.fits.find({},  { code: 1, _id: 0 }).sort({ code: 1 }).toArray();
    
    for (const fit of fits) {
      for (const size of sizes) {
        print(`${fit.code}-${size.code}`);
      }
    }
    

    While it's good to keep the reference in a database, such static data can stay in cache in the application.

    Cross join on write: embed the many-to-many

    Because sizes are inherently tied to body shapes (no size exists without a body shape), embedding them in the fits documents is often a better model:

    db.fits.aggregate([
      {
        $lookup: {
          from: "sizes",
          pipeline: [
            { $project: { _id: 0, code: 1, neckCm:1 } },
            { $sort: { code: 1 } }
          ],
          as: "sizes"
        }
      },
      {
        $merge: {
          into: "fits",
          on: "_id",
          whenMatched: "merge",
          whenNotMatched: "discard"
        }
      }
    ]);
    
    

    Here is the new shape of the single collection:

    Once embedded, the query becomes straightforward, simply unwind the embedded array:

    db.fits.aggregate([
      { $unwind: "$sizes" },
      {
        $project: {
          _id: 0,
          code: {
            $concat: ["$code", "-", "$sizes.code"]
          }
        }
      }
    ]);
    

    You may embed only the fields required, like the size code, or all fields like I did here with the neck size, and then remove the size collection:

    db.sizes.drop()
    
    

    Although this may duplicate the values for each body shape, it only requires using updateMany() instead of updateOne() when updating it. For example, the following updates one size:

    db.fits.updateMany(  
      {},  
      { $set: { "sizes.$[s].neckCm": { min: 38, max: 40 } } },  
      {  
        arrayFilters: [  
          { "s.code": "M" }  
        ]  
      }  
    ); 
    

    Duplication has the advantage of returning all required information in a single read, without joins or multiple queries, and it is not problematic for updates since it can be handled with a single bulk update operation. Unlike relational databases—where data can be modified through ad‑hoc SQL and business rules must therefore be enforced at the database level—MongoDB applications are typically domain‑driven, with clear ownership of data and a single responsibility for performing updates.

    In that context, consistency is maintained by the application's service rather than by cross‑table constraints. This approach also lets business rules evolve, such as defining different sizes for men and women, without changing the data model.

    Conclusion

    In a fully normalized relational model, all relationships use the same pattern: a one-to-many relationship between two tables, enforced by a primary (or unique) key on one side and a foreign key on the other. This holds regardless of cardinality (many can be three or one million), lifecycle rules (cascade deletes or updates), ownership (shared or exclusive parent), navigation direction (and access patterns). Even many-to-many relationships are just two one-to-many relationships via a junction table.

    MongoDB exposes these same concepts as modeling choices—handled at read time with $lookup, at write time through embedding, or in the application—instead of enforcing a single normalized representation. The choice depends on the domain data and access patterns.

    February 13, 2026

    Supabase incident on February 12, 2026

    A detailed account of the February 12 outage in us-east-2, what caused it, and the steps we are taking to prevent it from happening again.

    February 12, 2026

    Achieve near-zero downtime database maintenance by using blue/green deployments with AWS JDBC Driver

    In this post we introduce the blue/green deployment plugin for the AWS JDBC Driver, a built-in plugin that automatically handles connection routing, traffic management, and switchover detection during blue/green deployment switchovers. We show you how to configure and use the plugin to minimize downtime during database maintenance operations during blue/green deployment switchovers.

    Do You Think I Am a Goldfish?

    Academic writing has long been criticized for its formulaic nature. As I wrote about earlier, research papers are unfortunately written to please 3 specific expert reviewers who are overwhelmingly from academia. Given this twisted incentive structure (looking impressive for peer-review), the papers end up becoming formulaic, defensive, and often inpenetrable. 

    Ironically, this very uniformity makes it trivially easy for LLMs to replicate academic writing. It is easy to spot LLM use in personal essays, but I dare you to do it successfully in academic writing. 

    Aside: Ok, I baited myself with my own dare. In general, it is very hard to detect LLM usage at the paragraph level in a research paper. But LLM usage in research papers becomes obvious when you see the same definition repeated 3-4 times across consecutive pages.  The memoryless nature of LLMs causes them to recycle the same terms and phrases, and I find myself thinking "you already explained this to me four times, do you think I am a goldfish?" I have been reviewing a lot of papers recently, and this is the number one tell-tale sign. A careful read by the authors would clean this up easily, making LLM usage nearly undetectable. To be clear, I am talking about LLM assistance in polishing writing, not wholesale generation. A paper with no original ideas is a different beast entirely. They are vacuous and easy to spot. 

    Anyway, as LLM use become ubiquitous, conference/journal reviewing is facing a big crisis. There are simply too many articles being submitted, as it is easy to generate text and rush half-baked ideas into the presses. I am, of course, unhappy about this. Writing that feels effortless because an LLM smooths every step deprives you of the strain that produces "actual understanding". That strain in writing is not a defect; it creates the very impetus for discovering what you actually think, rather than faking/imitating thought.

    But here we are. We are at an inflection point in academic publishing.  I recently came across this post, which documents an experiment where an LLM replicated and extended a published empirical political science paper with near-human fidelity, at a fraction of the time and cost.

    I have been predicting the collapse of the publishing system for a decade. The flood of LLM-aided research might finally break its back. And here is where I want to take you in this post. I want to imagine how academic writing may change in this new publishing regime. Call it a 5-10 year outlook, because at this day and age, who can predict anything beyond that.

    I claim that costly signals of genuine intelligence will become the currency of survival in this new environment.

    Costly signals work because they are expensive to fake, like a peacock’s tail or an elk’s antlers. And I claim academic writing will increasingly demand features that are expensive to fake. Therefore, a distinctive voice becomes more valuable precisely because it cannot be generated without genuine intellectual engagement. Personal narratives, peculiar perspectives, unexpected conceptual leaps, and field-specific cultural fluency are things that require deep immersion and creative investment that LLMs lack. These are the costly signals that will make a paper worth publishing. 

    Literature reviews are cheap to automate, so they will shrink --as we are already seeing. But reviews with distinctive voice and genuine insight, ones that reflect on the author's own learning and thought process, will survive. Work that builds creative frameworks and surprising connections, which are expensive to produce, will flourish. When anyone can generate competent prose, only writing that screams "a specific human spent serious time thinking about this" will cut through.

    So, LLMs may accidentally force academia toward what it always claimed to value: original thinking and clear communication. The costliest signal of all is having something genuinely new to say, and saying well. I am an optimist, as you can easily tell, if you are a long time reader of this blog.

    “Simplicity and elegance are unpopular because they require hard work and discipline to achieve and education to be appreciated.”

    -- Edsger W. Dijkstra