Received: from malur.postgresql.org ([217.196.149.56]) by arkaria.postgresql.org with esmtps (TLS1.3) tls TLS_ECDHE_RSA_WITH_AES_256_GCM_SHA384 (Exim 4.94.2) (envelope-from ) id 1s6qg5-0026kn-T6 for pgsql-sql@arkaria.postgresql.org; Tue, 14 May 2024 11:50:43 +0000 Received: from localhost ([127.0.0.1] helo=malur.postgresql.org) by malur.postgresql.org with esmtp (Exim 4.94.2) (envelope-from ) id 1s6qg5-00DbWw-Le for pgsql-sql@arkaria.postgresql.org; Tue, 14 May 2024 11:50:41 +0000 Received: from magus.postgresql.org ([2a02:c0:301:0:ffff::29]) by malur.postgresql.org with esmtps (TLS1.3) tls TLS_ECDHE_RSA_WITH_AES_256_GCM_SHA384 (Exim 4.94.2) (envelope-from ) id 1s6qg5-00DbSw-8r for pgsql-sql@lists.postgresql.org; Tue, 14 May 2024 11:50:41 +0000 Received: from mail-ej1-x630.google.com ([2a00:1450:4864:20::630]) by magus.postgresql.org with esmtps (TLS1.3) tls TLS_ECDHE_RSA_WITH_AES_128_GCM_SHA256 (Exim 4.94.2) (envelope-from ) id 1s6qg0-000BX4-SS for pgsql-sql@lists.postgresql.org; Tue, 14 May 2024 11:50:40 +0000 Received: by mail-ej1-x630.google.com with SMTP id a640c23a62f3a-a599a298990so16353966b.2 for ; Tue, 14 May 2024 04:50:37 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gisticinc-com.20230601.gappssmtp.com; s=20230601; t=1715687436; x=1716292236; darn=lists.postgresql.org; h=cc:to:subject:message-id:date:from:in-reply-to:references :mime-version:from:to:cc:subject:date:message-id:reply-to; bh=zFJNdbjNdsuTQmGusGy4HXZm4baJCxQlNQjuxg2KIUQ=; b=s+PVQhqs83rUxPrzooWu/JpnoCEyy0l0POUisRns3W5V5y6bdxqrHJXhJyQwGMoMhc CsiY2OSt9Qd9WQpRWM3n6IvEOSZVv95ZpBE3zYy3SCQxVfRtkZqoSA9ilmNyqkz30hmb zevwRenXtTh3MdcLx4uKSXjGnh6U2Y9Z1vnFcEvdp37Qi9VPHMwhc4ci+kgFMNbs4H+G JIr8SJvZHsrr39ECcIE8uTP4AEOaW1glFdPmhYfHGAZJCKmdA6+3VUK9VTHlcHScom4T QZfUvH2K+HuKqqCxmrvWDx0VOsGCa39swuyzEWLlMoOYG3SMv8sE8KM1FrvR2Otiyyrp De8w== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20230601; t=1715687436; x=1716292236; h=cc:to:subject:message-id:date:from:in-reply-to:references :mime-version:x-gm-message-state:from:to:cc:subject:date:message-id :reply-to; bh=zFJNdbjNdsuTQmGusGy4HXZm4baJCxQlNQjuxg2KIUQ=; b=mkM9qZvoBZw351Jap/JZHjfhI1lzQ4cM+5HyHzSQH+Cz2900aBTEo1HRzGvAVLa7zm 5QparvTE9VG4sH+dWo6mMbjEnTRYWeBjRkGAtoYO653gveCVkuhFujdodqDfYHBeq1az ijzQeu5DsCkoLeDRWHbe6QwZrZ9W2Jz802x8Oa1HWMeIycKlzQrtIozGP1ibOhmW+M3n Kc73LCT+NvdB6TdVawkTCRCKcTm6vH+DOrKNcrfUgn6Sncjrg3ca3L9ItMDYBJwI/IZQ O1qq83s6g83AIZvsDSfTrZjOZ9dpZMhIa2upxEMasRyyLlTU4RybzGWr7O17BsyWu6rx zlVg== X-Gm-Message-State: AOJu0YyzgnhQvDZCZ3YhAYKdfcyudRx9Nm8r1AKQmvUppMOMMGQiQirw R364dhgrUAgBAJGaKe5JE53oxLIFxB9Ku+dErS/nuKGPls24pSKapPxMfn4K8QqWoPzSK1CLPPg z5a53RvQuy3WZgiurfSmoVa7nc0p358nrHey2XQ== X-Google-Smtp-Source: AGHT+IHEyfMYjoMxmQedg9mzE++G+zAIX+9PFuPGrdX4JAwwj3yRzQGLhjO1/nqx6b9aFWw/aik0Mn0rgUA8sXG4aFk= X-Received: by 2002:a17:907:7da3:b0:a59:d063:f5f3 with SMTP id a640c23a62f3a-a5a2d673401mr1113655366b.63.1715687436383; Tue, 14 May 2024 04:50:36 -0700 (PDT) MIME-Version: 1.0 References: <38c52cb5-91b3-b299-2f9d-f0dda06d793e@sqlexec.com> In-Reply-To: <38c52cb5-91b3-b299-2f9d-f0dda06d793e@sqlexec.com> From: Bo Guo Date: Tue, 14 May 2024 04:50:25 -0700 Message-ID: Subject: Re: Small table selection extremely slow! To: MichaelDBA Cc: pgsql-sql@lists.postgresql.org Content-Type: multipart/related; boundary="0000000000003122a00618689ca3" List-Id: List-Help: List-Subscribe: List-Post: List-Owner: List-Archive: Archived-At: Precedence: bulk --0000000000003122a00618689ca3 Content-Type: multipart/alternative; boundary="00000000000031229f0618689ca2" --00000000000031229f0618689ca2 Content-Type: text/plain; charset="UTF-8" Content-Transfer-Encoding: quoted-printable I am using pgAdmin 4 Version 8.5 Application Mode Server Current User pgadmin@linearbench.com Browser Firefox 125.0 Operating System Linux-5.15.143-1-pve-x86_64-with-glibc2.35 The performance is 0.16 ms when SELECT gly_id, gly_name FROM azgiv.layers; We do not experience any slowness on other much larger tables with SELECT * FROM OtherTable; *Bo* On Tue, May 14, 2024 at 4:26=E2=80=AFAM MichaelDBA = wrote: > You don't elaborate on where you are seeing this "20 seconds". Than mean= s > network, client application stuff, locking/waiting, or other things may > come into play here... Please provide more info. > > > Bo Guo wrote on 5/14/2024 7:11 AM: > > Hi, > > The following query took 20 seconds on a small table of 108 rows with a > dozen columns: > > SELECT * FROM azgiv.layers; > > > Here is the vacuum analyze result: > > VACUUM (VERBOSE, ANALYZE) azgiv.layers > > > INFO: vacuuming "azgiv.layers" > INFO: table "layers": found 0 removable, 200 nonremovable row versions i= n > 12 out of 12 pages > INFO: vacuuming "pg_toast.pg_toast_52182" > INFO: table "pg_toast_52182": index scan bypassed: 35 pages from table > (0.69% of total) have 140 dead item identifiers > INFO: table "pg_toast_52182": found 136 removable, 6 nonremovable row > versions in 36 out of 5070 pages > INFO: analyzing "azgiv.layers" > INFO: "layers": scanned 12 of 12 pages, containing 200 live rows and 0 > dead rows; 200 rows in sample, 200 estimated total rows > VACUUM > > > Here is what the explan shows: > > EXPLAIN (ANALYZE, BUFFERS) SELECT * FROM azgiv.layers; > > > Seq Scan on layers (cost=3D0.00..14.00 rows=3D200 width=3D233) (actual > time=3D0.010..0.087 rows=3D200 loops=3D1) > Buffers: shared hit=3D12 > Planning: > Buffers: shared hit=3D51 > Planning Time: 0.233 ms > Execution Time: 0.121 ms > > > I am afraid that I have missed something obvious. Please kindly point it > out. Many thanks! > > Bo > > > > Regards, > > Michael Vitale > > Michaeldba@sqlexec.com > > 703-600-9343 > > > > --00000000000031229f0618689ca2 Content-Type: text/html; charset="UTF-8" Content-Transfer-Encoding: quoted-printable
I am using pgAdmin 4
The performan= ce is 0.16 ms when=C2=A0

= SELECT gly_id, gly_name FROM azgiv.layers;
<= div>

We do not experience any slowness on other much lar= ger tables with SELECT * FROM OtherTable;

Bo


On Tue, May 14, 2024 at 4:26=E2=80=AFAM MichaelDBA <<= a href=3D"mailto:MichaelDBA@sqlexec.com">MichaelDBA@sqlexec.com> wro= te:
You don't elaborate on where you are seeing this "20 seconds".=C2=A0 Than means network, client application s= tuff, locking/waiting, or other things may come into play here... Please provide more info.


Bo Guo wrote on 5/14/2024 7:11 AM:
=20
Hi,=C2=A0=C2=A0

The following query took 20 seconds on a small table of 108 rows with a dozen columns:

SELECT * FROM azgiv.layers;

Here is the vacuum analyze result:

VACUUM (VERBOSE, ANALYZE) azgiv.layers

INFO: =C2=A0vacuuming "azgiv.layers"
INFO: =C2=A0table "layers": found 0 removable, 200 nonremovable row versions in 12 out of 12 pages
I= NFO: =C2=A0vacuuming "pg_toast.pg_toast_52182"
=
INFO: =C2=A0table "pg_toast_52182": index scan bypassed: = 35 pages from table (0.69% of total) have 140 dead item identifiers
INFO: =C2=A0table "pg_toast_52182": found 136 re= movable, 6 nonremovable row versions in 36 out of 5070 pages
<= /div>
INFO: =C2=A0analyzing "azgiv.layers"
I= NFO: =C2=A0"layers": scanned 12 of 12 pages, containing 200 live rows and 0 dead rows; 200 rows in sample, 200 estimated total rows
VACUUM

Here is what the explan shows:

=
EXPLAIN (ANALYZE, BUFFERS)=C2=A0SELECT * FROM azgiv.layers;
=
<= div dir=3D"ltr">

<= /div>
Seq Scan on layers =C2=A0(cost=3D0.00..14.00 rows=3D200 width=3D233) (actual time=3D0.010..0.087 rows=3D200 loops=3D1)
=
=C2=A0 Buffers: shared hit=3D12
Pl= anning:
<= div>
=C2=A0 Buffers: shared hit=3D51
=C2=A0Planning Time: 0.233 ms
= =C2=A0Execution Time: 0.121 ms
<= div dir=3D"ltr" class=3D"gmail_signature">

I am afraid that I have missed something obvious.=C2=A0 Please kindly point it out.=C2=A0 Many than= ks!

Bo


Regards,

Michael Vitale

Michaeldba@sqlexec.com

703-600-9343

=C2=A0

3D""

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