Tworzenie inteligentnych i bezpiecznych agentów za pomocą AlloyDB

1. Wprowadzenie

W tym ćwiczeniu utworzysz inteligentny system wyszukiwania i rekomendowania sesji konferencyjnych przy użyciu AlloyDB for PostgreSQL i jej funkcji AI. Dowiesz się, jak łączyć tradycyjne wyszukiwanie z użyciem słów kluczowych z zaawansowanym semantycznym wyszukiwaniem wektorowym, używać funkcji QueryData do generowania przewidywalnych instrukcji SQL z języka naturalnego oraz korzystać z inteligentnych funkcji operatorów.

Jakie zadania wykonasz

  • Wdróż klaster AlloyDB i włącz funkcje AI.
  • Wczytaj zbiór danych konferencji i poznaj jego strukturę.
  • Włącz interfejs API dostępu do danych AlloyDB.
  • Używaj operatorów AI AlloyDB, takich jak ai.ifai.rank, do działań semantycznych.
  • Wdróż wyszukiwanie hybrydowe, które łączy wyszukiwanie semantyczne wektorowe (ScaNN) i tekstowe (RUM).
  • Włączanie QueryData w AlloyDB
  • Generowanie szablonów QueryData
  • Używanie QueryData z agentami AI

Czego potrzebujesz

  • przeglądarka, np. Chrome;
  • projekt Google Cloud z włączonymi płatnościami;

To ćwiczenie jest przeznaczone dla deweloperów na wszystkich poziomach zaawansowania, w tym dla początkujących.

Szacowany łączny czas trwania: 60–70 minut. Szacowany koszt: poniżej 3 USD (zasoby utworzone w tym laboratorium kodów kwalifikują się do standardowego poziomu bezpłatnego lub okresu próbnego).

2. Konfiguracja i wymagania

Konfiguracja projektu

Zaloguj się w konsoli Google Cloud. Jeśli nie masz jeszcze konta Gmail ani Google Workspace, musisz je utworzyć.

Używaj konta osobistego zamiast konta służbowego lub szkolnego.

Tworzenie projektu Google Cloud

  1. W konsoli Google Cloud na stronie selektora projektu wybierz lub utwórz projekt w chmurze Google.
  2. Sprawdź, czy w projekcie Cloud włączone są płatności. Dowiedz się, jak sprawdzić, czy w projekcie są włączone płatności.

Uruchom Cloud Shell

Z Google Cloud można korzystać zdalnie na laptopie, ale w tym ćwiczeniu użyjesz Google Cloud Shell, czyli środowiska wiersza poleceń działającego w chmurze.

  1. Kliknij Aktywuj Cloud Shell u góry konsoli Google Cloud.
  2. Potwierdź uwierzytelnianie:
gcloud auth list
  1. Potwierdź projekt:
gcloud config get project
  1. Ustaw go w razie potrzeby:
export PROJECT_ID=<YOUR_PROJECT_ID>
gcloud config set project $PROJECT_ID

3. Zanim zaczniesz

Włącz interfejsy API

Aby włączyć wszystkie wymagane interfejsy API, uruchom to polecenie:

gcloud services enable alloydb.googleapis.com \
                       compute.googleapis.com \
                       cloudresourcemanager.googleapis.com \
                       servicenetworking.googleapis.com \
                       aiplatform.googleapis.com \
                       geminidataanalytics.googleapis.com

Przedstawiamy interfejsy API

  • AlloyDB API (alloydb.googleapis.com) umożliwia tworzenie klastrów AlloyDB for PostgreSQL, zarządzanie nimi i ich skalowanie. Jest to usługa bazy danych zgodna z PostgreSQL w pełni zarządzana, która została zaprojektowana z myślą o wymagających firmowych zbiorach zadań transakcyjnych i analitycznych.
  • Compute Engine API (compute.googleapis.com) umożliwia tworzenie maszyn wirtualnych, dysków trwałych i ustawień sieciowych oraz zarządzanie nimi. Zapewnia podstawową infrastrukturę jako usługę (IaaS) potrzebną do uruchamiania zbiorów zadań i hostowania infrastruktury bazowej dla wielu usług zarządzanych.
  • Cloud Resource Manager API (cloudresourcemanager.googleapis.com) umożliwia zautomatyzowane zarządzanie metadanymi i konfiguracją projektu Google Cloud. Umożliwia organizowanie zasobów, obsługę zasad Identity and Access Management (IAM) i weryfikowanie uprawnień w hierarchii projektu.
  • Service Networking API (servicenetworking.googleapis.com) umożliwia automatyzację konfiguracji prywatnej łączności między siecią Virtual Private Cloud (VPC) a usługami zarządzanymi Google. Jest to szczególnie ważne w przypadku ustanawiania dostępu do usług za pomocą prywatnego adresu IP, takich jak AlloyDB, aby mogły one bezpiecznie komunikować się z innymi zasobami.
  • Interfejs Vertex AI API (aiplatform.googleapis.com) umożliwia aplikacjom tworzenie, wdrażanie i skalowanie modeli uczenia maszynowego. Zapewnia on ujednolicony interfejs dla wszystkich usług AI w Google Cloud, w tym dostęp do modeli generatywnej AI (takich jak Gemini) i trenowania modeli niestandardowych.
  • Interfejs Data Analytics API (geminidataanalytics.googleapis.com) umożliwia aplikacji korzystanie z ogólnych funkcji AI w usługach BI.

4. Aprowizowanie AlloyDB

Utwórz klaster AlloyDB i instancję główną.

Tworzenie zakresu prywatnych adresów IP

AlloyDB wymaga prywatnego zakresu adresów IP w sieci VPC. Załóżmy, że używasz sieci VPC default:

  1. Utwórz zakres prywatnych adresów IP:
gcloud compute addresses create psa-range \
    --global \
    --purpose=VPC_PEERING \
    --prefix-length=24 \
    --description="VPC private service access" \
    --network=default
  1. Nawiązywanie połączenia prywatnego:
gcloud services vpc-peerings connect \
    --service=servicenetworking.googleapis.com \
    --ranges=psa-range \
    --network=default

Tworzenie klastra AlloyDB

  1. Utwórz hasło dla użytkownika postgres:
export PGPASSWORD=`openssl rand -hex 12`
echo $PGPASSWORD
  1. Utwórz bezpłatny klaster próbny („TRIAL”) lub klaster standardowy („STANDARD”), jeśli nie robisz tego po raz pierwszy:
export REGION=us-central1
export ADBCLUSTER=alloydb-next26-ai-demo-01

gcloud alloydb clusters create $ADBCLUSTER \
    --password=$PGPASSWORD \
    --network=default \
    --region=$REGION \
    --subscription-type=TRIAL
  1. Utwórz instancję główną:
gcloud alloydb instances create $ADBCLUSTER-pr \
    --instance-type=PRIMARY \
    --cpu-count=8 \
    --region=$REGION \
    --cluster=$ADBCLUSTER

5. Konfigurowanie uprawnień do bazy danych

Włączanie uprawnień Vertex AI do generowania osadzania

PROJECT_ID=$(gcloud config get-value project)
gcloud projects add-iam-policy-binding $PROJECT_ID \
  --member="serviceAccount:service-$(gcloud projects describe $PROJECT_ID --format="value(projectNumber)")@gcp-sa-alloydb.iam.gserviceaccount.com" \
  --role="roles/aiplatform.user"

Włączanie interfejsu Data Access API

Aby używać kontekstów QueryData do tworzenia szablonów, które pomagają tworzyć przewidywalne instrukcje SQL na podstawie języka naturalnego, musisz włączyć interfejs Data Access API w klastrze AlloyDB.

W tej samej karcie terminala wykonaj to polecenie:

PROJECT_ID=$(gcloud config get-value project)
REGION=us-central1
ADBCLUSTER=alloydb-next26-ai-demo-01
curl -X PATCH \
 -H "Authorization: Bearer $(gcloud auth print-access-token)" \
 -H "Content-Type: application/json" \
 https://alloydb.googleapis.com/v1alpha/projects/$PROJECT_ID/locations/$REGION/clusters/$ADBCLUSTER/instances/$ADBCLUSTER-pr?updateMask=dataApiAccess \
 -d '{
   "dataApiAccess": "ENABLED",
 }'

Włączanie uwierzytelniania za pomocą uprawnień

W przypadku naszych narzędzi opartych na agentach musisz włączyć uwierzytelnianie z użyciem uprawnień w instancji, a następnie dodać siebie jako użytkownika.

Włącz IAM na instancji, wykonując to polecenie na tej samej karcie terminala:

PROJECT_ID=$(gcloud config get-value project)
REGION=us-central1
ADBCLUSTER=alloydb-next26-ai-demo-01
gcloud beta alloydb instances update $ADBCLUSTER-pr \
   --database-flags alloydb.iam_authentication=on \
   --region=$REGION \
   --cluster=$ADBCLUSTER \
   --project=$PROJECT_ID \
   --update-mode=FORCE_APPLY

Dodaj siebie jako użytkownika AlloyDB:

REGION=us-central1
ADBCLUSTER=alloydb-next26-ai-demo-01
gcloud alloydb users create $(gcloud config get-value account) \
--cluster=$ADBCLUSTER \
--region=$REGION \
--type=IAM_BASED \
--db-roles=alloydbsuperuser

6. Przygotowywanie przykładowej bazy danych

Łączenie z AlloyDB Studio

  1. W konsoli Google Cloud otwórz stronę AlloyDB for Postgres.
  2. Kliknij instancję główną.
  3. W panelu nawigacyjnym po lewej stronie kliknij AlloyDB Studio.
  4. Wybierz bazę danych postgres.
  5. Uwierzytelnianie za pomocą IAM database authentication

Tworzenie bazy danych

Uruchom w edytorze zapytań ten kod SQL:

CREATE DATABASE conference_db;

Przełącz się na bazę danych conference_db, wykonując te czynności:

  1. W lewym górnym rogu ekranu AlloyDB studio kliknij przycisk Current user.
  2. Kliknij przycisk Switch user/database.
  3. Wybierz nowo utworzoną bazę danych conference_db.

Włączanie pgvector

Sprawdź, czy standardowe rozszerzenie vector jest włączone:

CREATE EXTENSION IF NOT EXISTS vector;

Wczytaj przykładowe dane

Uruchom te skrypty SQL, aby utworzyć schemat i wypełnić go przykładowymi danymi:

1. Usuwanie poprzednich tabel powodujących konflikt

DROP TABLE IF EXISTS public.attendees_sessions CASCADE;
DROP TABLE IF EXISTS public.session_speaker_mapping CASCADE;
DROP TABLE IF EXISTS public.session_topic_mapping CASCADE;
DROP TABLE IF EXISTS public.session CASCADE;
DROP TABLE IF EXISTS public.attendees CASCADE;
DROP TABLE IF EXISTS public.speaker CASCADE;
DROP TABLE IF EXISTS public.session_topic CASCADE;

2. Tworzenie tabel

CREATE TABLE public.attendees (
    username character varying(100) NOT NULL PRIMARY KEY,
    name character varying(100),
    company character varying(150),
    job_title character varying(100),
    area_of_interest character varying(100),
    street_address text,
    city character varying(100),
    state_province character varying(100),
    country character varying(100),
    created_at timestamp without time zone DEFAULT CURRENT_TIMESTAMP
);

CREATE TABLE public.attendees_sessions (
    username character varying(100) NOT NULL REFERENCES public.attendees(username),
    session_id character varying(50) NOT NULL,
    registration_date timestamp without time zone DEFAULT CURRENT_TIMESTAMP,
    PRIMARY KEY (username, session_id)
);

CREATE TABLE public.session (
    session_id character varying(50) NOT NULL PRIMARY KEY,
    session_name character varying(255) NOT NULL,
    full_description text,
    full_description_embedding vector(768) GENERATED ALWAYS AS (embedding('text-embedding-005', full_description)) STORED,
    description_tsvector tsvector GENERATED ALWAYS AS (to_tsvector('english', full_description)) STORED,
    session_format character varying(50),
    learning_level character varying(50),
    session_url character varying(255),
    for_job_role character varying(250),
    session_date date,
    session_start_time time without time zone,
    session_end_time time without time zone,
    session_location character varying(100),
    capacity integer,
    remaining_capacity integer,
    interest_area character varying(100),
    industry character varying(100)
);

COMMENT ON COLUMN public.session.session_format IS 'The format of a session. Possible values are Keynotes, Breakouts, Lightning Talks.';

CREATE TABLE public.speaker (
    speaker_id integer NOT NULL PRIMARY KEY,
    speaker_name character varying(100) NOT NULL,
    job_title character varying(100),
    company character varying(100),
    type character varying(50),
    profile_pic character varying(100),
    speaker_url character varying(100)
);

CREATE TABLE public.session_speaker_mapping (
    session_id character varying(50) NOT NULL REFERENCES public.session(session_id),
    speaker_id integer NOT NULL REFERENCES public.speaker(speaker_id),
    PRIMARY KEY (session_id, speaker_id)
);

CREATE TABLE public.session_topic (
    topic character varying(100) NOT NULL PRIMARY KEY,
    topic_desc text,
    embedding vector(768) GENERATED ALWAYS AS (embedding('text-embedding-005', topic_desc)) STORED
);

CREATE TABLE public.session_topic_mapping (
    session_id character varying(50) NOT NULL REFERENCES public.session(session_id),
    topic character varying(100) NOT NULL REFERENCES public.session_topic(topic),
    PRIMARY KEY (session_id, topic)
);

3. Wypełnianie tabel przykładowymi danymi

3.1 Wypełnianie tematów sesji

-- Insert Topics
INSERT INTO public.session_topic (topic, topic_desc) VALUES
('Databases', 'Relational and non-relational database technologies.'),
('AI & Machine Learning', 'Generative AI, LLMs, and ML infrastructure.'),
('Cloud Architecture', 'Designing scalable and resilient cloud systems.'),
('Security', 'Identity, compliance, and network security.'),
('DevOps', 'CI/CD, platform engineering, and automation.') ON CONFLICT DO NOTHING;

3.2 Wypełnianie głośników

-- Insert Speakers
INSERT INTO public.speaker (speaker_id, speaker_name, job_title, company, type, profile_pic, speaker_url) VALUES
(1, 'Speaker 1', 'Director of Engineering', 'DeepMind', 'External', 'pic_1.png', 'http://speakers.com/1'),
(2, 'Speaker 2', 'Cloud Architect', 'Verily', 'External', 'pic_2.png', 'http://speakers.com/2'),
(3, 'Speaker 3', 'Product Manager', 'GlobalEnterprises', 'External', 'pic_3.png', 'http://speakers.com/3'),
(4, 'Speaker 4', 'Tech Lead', 'Google', 'Internal', 'pic_4.png', 'http://speakers.com/4'),
(5, 'Speaker 5', 'Security Engineer', 'DeepMind', 'External', 'pic_5.png', 'http://speakers.com/5'),
(6, 'Speaker 6', 'DevOps Engineer', 'DeepMind', 'External', 'pic_6.png', 'http://speakers.com/6'),
(7, 'Speaker 7', 'Product Manager', 'DataSystems', 'External', 'pic_7.png', 'http://speakers.com/7'),
(8, 'Speaker 8', 'Director of Engineering', 'Google', 'Internal', 'pic_8.png', 'http://speakers.com/8'),
(9, 'Speaker 9', 'Cloud Architect', 'Google', 'Internal', 'pic_9.png', 'http://speakers.com/9'),
(10, 'Speaker 10', 'DevOps Engineer', 'Alphabet', 'Internal', 'pic_10.png', 'http://speakers.com/10'),
(11, 'Speaker 11', 'Tech Lead', 'Alphabet', 'External', 'pic_11.png', 'http://speakers.com/11'),
(12, 'Speaker 12', 'Product Manager', 'Alphabet', 'External', 'pic_12.png', 'http://speakers.com/12'),
(13, 'Speaker 13', 'Tech Lead', 'SoftSolutions', 'Internal', 'pic_13.png', 'http://speakers.com/13'),
(14, 'Speaker 14', 'Director of Engineering', 'Verily', 'Internal', 'pic_14.png', 'http://speakers.com/14'),
(15, 'Speaker 15', 'DevOps Engineer', 'CloudNative', 'External', 'pic_15.png', 'http://speakers.com/15'),
(16, 'Speaker 16', 'Software Engineer', 'Waymo', 'External', 'pic_16.png', 'http://speakers.com/16'),
(17, 'Speaker 17', 'DevOps Engineer', 'Google', 'External', 'pic_17.png', 'http://speakers.com/17'),
(18, 'Speaker 18', 'Data Scientist', 'GlobalEnterprises', 'External', 'pic_18.png', 'http://speakers.com/18'),
(19, 'Speaker 19', 'Security Engineer', 'Waymo', 'Internal', 'pic_19.png', 'http://speakers.com/19'),
(20, 'Speaker 20', 'Tech Lead', 'SoftSolutions', 'Internal', 'pic_20.png', 'http://speakers.com/20') ON CONFLICT (speaker_id) DO NOTHING;

3.3 Wypełnianie listy uczestników

-- Insert Attendees
INSERT INTO public.attendees (username, name, company, job_title, area_of_interest, street_address, city, state_province, country) VALUES
('user_1', 'Attendee 1', 'GlobalEnterprises', 'Data Scientist', 'DevOps', '1 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_2', 'Attendee 2', 'Alphabet', 'Director of Engineering', 'DevOps', '2 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_3', 'Attendee 3', 'CloudNative', 'Data Scientist', 'AI & Machine Learning', '3 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_4', 'Attendee 4', 'SoftSolutions', 'Product Manager', 'DevOps', '4 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_5', 'Attendee 5', 'DataSystems', 'Software Engineer', 'DevOps', '5 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_6', 'Attendee 6', 'Google', 'Director of Engineering', 'Security', '6 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_7', 'Attendee 7', 'Waymo', 'Product Manager', 'AI & Machine Learning', '7 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_8', 'Attendee 8', 'Verily', 'Product Manager', 'DevOps', '8 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_9', 'Attendee 9', 'Waymo', 'Software Engineer', 'DevOps', '9 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_10', 'Attendee 10', 'Waymo', 'DevOps Engineer', 'Databases', '10 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_11', 'Attendee 11', 'GlobalEnterprises', 'Tech Lead', 'Cloud Architecture', '11 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_12', 'Attendee 12', 'Google', 'Tech Lead', 'DevOps', '12 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_13', 'Attendee 13', 'DeepMind', 'Software Engineer', 'Cloud Architecture', '13 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_14', 'Attendee 14', 'DataSystems', 'Security Engineer', 'DevOps', '14 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_15', 'Attendee 15', 'DeepMind', 'Security Engineer', 'Cloud Architecture', '15 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_16', 'Attendee 16', 'Verily', 'Security Engineer', 'Cloud Architecture', '16 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_17', 'Attendee 17', 'Google', 'Software Engineer', 'Cloud Architecture', '17 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_18', 'Attendee 18', 'GlobalEnterprises', 'Security Engineer', 'DevOps', '18 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_19', 'Attendee 19', 'CloudNative', 'Data Scientist', 'Databases', '19 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_20', 'Attendee 20', 'DataSystems', 'Cloud Architect', 'AI & Machine Learning', '20 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_21', 'Attendee 21', 'Google', 'Data Scientist', 'Databases', '21 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_22', 'Attendee 22', 'TechCorp', 'Data Scientist', 'DevOps', '22 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_23', 'Attendee 23', 'DeepMind', 'Product Manager', 'Databases', '23 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_24', 'Attendee 24', 'Google', 'Cloud Architect', 'AI & Machine Learning', '24 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_25', 'Attendee 25', 'GlobalEnterprises', 'Software Engineer', 'AI & Machine Learning', '25 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_26', 'Attendee 26', 'Verily', 'Security Engineer', 'Security', '26 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_27', 'Attendee 27', 'GlobalEnterprises', 'Tech Lead', 'Databases', '27 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_28', 'Attendee 28', 'Google', 'Tech Lead', 'Databases', '28 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_29', 'Attendee 29', 'SoftSolutions', 'Software Engineer', 'Databases', '29 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_30', 'Attendee 30', 'Verily', 'DevOps Engineer', 'Databases', '30 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_31', 'Attendee 31', 'DeepMind', 'Data Scientist', 'Databases', '31 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_32', 'Attendee 32', 'SoftSolutions', 'Software Engineer', 'Cloud Architecture', '32 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_33', 'Attendee 33', 'DeepMind', 'Tech Lead', 'Databases', '33 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_34', 'Attendee 34', 'Alphabet', 'Security Engineer', 'DevOps', '34 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_35', 'Attendee 35', 'TechCorp', 'DevOps Engineer', 'Cloud Architecture', '35 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_36', 'Attendee 36', 'DataSystems', 'Director of Engineering', 'Security', '36 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_37', 'Attendee 37', 'Google', 'Cloud Architect', 'Databases', '37 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_38', 'Attendee 38', 'Google', 'Product Manager', 'Security', '38 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_39', 'Attendee 39', 'SoftSolutions', 'Security Engineer', 'Cloud Architecture', '39 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_40', 'Attendee 40', 'Waymo', 'Director of Engineering', 'Cloud Architecture', '40 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_41', 'Attendee 41', 'SoftSolutions', 'Tech Lead', 'Security', '41 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_42', 'Attendee 42', 'DeepMind', 'Cloud Architect', 'Security', '42 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_43', 'Attendee 43', 'TechCorp', 'Cloud Architect', 'Databases', '43 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_44', 'Attendee 44', 'Alphabet', 'Security Engineer', 'AI & Machine Learning', '44 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_45', 'Attendee 45', 'CloudNative', 'Cloud Architect', 'AI & Machine Learning', '45 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_46', 'Attendee 46', 'CloudNative', 'Data Scientist', 'Security', '46 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_47', 'Attendee 47', 'DeepMind', 'Data Scientist', 'Security', '47 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_48', 'Attendee 48', 'Verily', 'DevOps Engineer', 'AI & Machine Learning', '48 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_49', 'Attendee 49', 'Verily', 'Director of Engineering', 'AI & Machine Learning', '49 Main St', 'CityVille', 'StateName', 'CountryName'),
('user_50', 'Attendee 50', 'Google', 'Director of Engineering', 'DevOps', '50 Main St', 'CityVille', 'StateName', 'CountryName') ON CONFLICT (username) DO NOTHING;

3.4 Wypełnianie sesji

-- Insert Sessions
INSERT INTO public.session (session_id, session_name, full_description, session_format, learning_level, session_url, for_job_role, session_date, session_start_time, session_end_time, session_location, capacity, remaining_capacity, interest_area, industry) VALUES
('S001', 'AlloyDB Deep Dive: Advanced Performance Tuning', 'Learn how to squeeze every drop of performance out of AlloyDB. This session covers index tuning, memory management, and advanced query optimization techniques.', 'Lightning Talks', 'Beginner', 'http://sessions.com/S001', 'Cloud Architect', '2026-04-11', '15:00:00', '15:00:00', 'Room C', 500, 192, 'Databases', 'Technology'),
('S002', 'Vector Search at Scale with ScaNN in AlloyDB', 'Discover how to use ScaNN for fast approximate nearest neighbor search in AlloyDB. Perfect for building high-scale recommendation systems.', 'Breakouts', 'Intermediate', 'http://sessions.com/S002', 'Cloud Architect', '2026-04-10', '14:00:00', '14:00:00', 'Auditorium', 100, 16, 'Databases', 'Retail'),
('S003', 'Building Gen AI Apps with Vertex AI and AlloyDB', 'A practical guide to integrating Vertex AI embeddings and LLMs with your operational data in AlloyDB to build intelligent applications.', 'Lightning Talks', 'Advanced', 'http://sessions.com/S003', 'Director of Engineering', '2026-04-11', '11:00:00', '11:00:00', 'Auditorium', 50, 28, 'Databases', 'Healthcare'),
('S004', 'Spanner: Architecting for Global Consistency', 'Learn how Spanner achieves global scale without sacrificing strong consistency. We will cover multi-region deployment patterns.', 'Keynotes', 'Intermediate', 'http://sessions.com/S004', 'Cloud Architect', '2026-04-11', '11:00:00', '11:00:00', 'Room B', 500, 441, 'Databases', 'Healthcare'),
('S005', 'BigQuery + Vertex AI: Predictive Analytics Made Easy', 'See how to combine the power of BigQuery for data warehousing with Vertex AI for machine learning to build predictive models directly on your data.', 'Breakouts', 'Advanced', 'http://sessions.com/S005', 'Product Manager', '2026-04-11', '14:00:00', '14:00:00', 'Room C', 100, 96, 'AI & Machine Learning', 'Retail'),
('S006', 'Securing Your Data: Best Practices in AlloyDB', 'Deep dive into the security features of AlloyDB, including IAM integration, encryption at rest and in transit, and audit logging.', 'Keynotes', 'Beginner', 'http://sessions.com/S006', 'Product Manager', '2026-04-09', '15:00:00', '15:00:00', 'Room C', 200, 199, 'Databases', 'Healthcare'),
('S007', 'Kubernetes for Databases: Running PostgreSQL on GKE', 'Best practices for running stateful workloads like PostgreSQL on Google Kubernetes Engine (GKE).', 'Lightning Talks', 'Intermediate', 'http://sessions.com/S007', 'Software Engineer', '2026-04-09', '16:00:00', '16:00:00', 'Room C', 100, 63, 'Databases', 'Retail'),
('S008', 'Real-time Analytics with BigQuery and Pub/Sub', 'Learn how to build real-time data pipelines using Pub/Sub and stream data directly into BigQuery for instant insights.', 'Keynotes', 'Beginner', 'http://sessions.com/S008', 'Security Engineer', '2026-04-10', '14:00:00', '14:00:00', 'Room C', 200, 65, 'Databases', 'Finance'),
('S009', 'Microservices Architecture with Spanner', 'How to design microservices that leverage Spanner''s unique capabilities for distributed transactions and scalability.', 'Keynotes', 'Beginner', 'http://sessions.com/S009', 'Software Engineer', '2026-04-11', '10:00:00', '10:00:00', 'Auditorium', 100, 25, 'Databases', 'Technology'),
('S010', 'AI-Powered Search with ScaNN and LLMs', 'Learn how to combine ScaNN vector search with Large Language Models to create powerful, context-aware search experiences.', 'Keynotes', 'Intermediate', 'http://sessions.com/S010', 'Tech Lead', '2026-04-11', '11:00:00', '11:00:00', 'Room C', 50, 27, 'AI & Machine Learning', 'Healthcare'),
('S011', 'AlloyDB Omni: Run AlloyDB Anywhere', 'Explore AlloyDB Omni, the downloadable edition of AlloyDB that lets you run the same high-performance database in your own data center or on the edge.', 'Breakouts', 'Intermediate', 'http://sessions.com/S011', 'Cloud Architect', '2026-04-09', '10:00:00', '10:00:00', 'Room B', 200, 195, 'Databases', 'Technology'),
('S012', 'Data Mesh on Google Cloud: Best Practices', 'How to implement a decentralized data mesh architecture using BigQuery, Dataplex, and other Google Cloud tools.', 'Lightning Talks', 'Intermediate', 'http://sessions.com/S012', 'Data Scientist', '2026-04-10', '16:00:00', '16:00:00', 'Room C', 100, 46, 'Cloud Architecture', 'Technology'),
('S013', 'Serverless Databases: When to use Cloud SQL vs AlloyDB', 'A comparison of Cloud SQL and AlloyDB, helping you choose the right database for your serverless and traditional applications.', 'Lightning Talks', 'Beginner', 'http://sessions.com/S013', 'DevOps Engineer', '2026-04-10', '11:00:00', '11:00:00', 'Room C', 500, 458, 'Databases', 'Manufacturing'),
('S014', 'Graph Databases on Google Cloud', 'Explore options for graph data processing on Google Cloud, including integrations with existing database services.', 'Breakouts', 'Advanced', 'http://sessions.com/S014', 'DevOps Engineer', '2026-04-11', '09:00:00', '09:00:00', 'Room C', 500, 338, 'DevOps', 'Finance'),
('S015', 'Automating DB Ops with Gemini', 'See how Gemini can help DBA and developers write better SQL, optimize queries, and manage database infrastructure.', 'Breakouts', 'Advanced', 'http://sessions.com/S015', 'Cloud Architect', '2026-04-11', '14:00:00', '14:00:00', 'Room C', 100, 53, 'AI & Machine Learning', 'Retail'),
('S016', 'High Availability and Disaster Recovery in AlloyDB', 'A deep dive into how AlloyDB ensures your data is always available, covering failover mechanisms and backup strategies.', 'Breakouts', 'Advanced', 'http://sessions.com/S016', 'Cloud Architect', '2026-04-11', '11:00:00', '11:00:00', 'Room A', 200, 52, 'Databases', 'Technology'),
('S017', 'Optimizing Costs in BigQuery', 'Practical tips for reducing your BigQuery bill without sacrificing performance, covering slot management and query optimization.', 'Lightning Talks', 'Beginner', 'http://sessions.com/S017', 'Security Engineer', '2026-04-11', '15:00:00', '15:00:00', 'Room B', 100, 65, 'Databases', 'Manufacturing'),
('S018', 'Continuous Integration for Database Schemas', 'How to apply CI/CD principles to database schema changes using tools like Liquibase or Flyway on Google Cloud.', 'Breakouts', 'Beginner', 'http://sessions.com/S018', 'Cloud Architect', '2026-04-11', '09:00:00', '09:00:00', 'Room B', 50, 30, 'Security', 'Technology'),
('S019', 'Data Governance in the Age of AI', 'Learn how to maintain data quality, privacy, and compliance when feeding enterprise data into AI models.', 'Breakouts', 'Beginner', 'http://sessions.com/S019', 'Product Manager', '2026-04-10', '10:00:00', '10:00:00', 'Room A', 100, 39, 'DevOps', 'Retail'),
('S020', 'Hybrid Search: Combining Vector and Keyword Search', 'Learn how to implement hybrid search in AlloyDB to get the best of both worlds: semantic understanding and precise keyword matching.', 'Breakouts', 'Intermediate', 'http://sessions.com/S020', 'Data Scientist', '2026-04-09', '14:00:00', '14:00:00', 'Auditorium', 500, 176, 'Databases', 'Manufacturing'),
('S021', 'Deep Dive into ScaNN for High Availability', 'Join this session to explore how ScaNN can be used for High Availability. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Advanced', 'http://sessions.com/S021', 'Software Engineer', '2026-04-11', '14:00:00', '14:00:00', 'Room B', 200, 18, 'AI & Machine Learning', 'Finance'),
('S022', 'Understanding Vertex AI for Modernization', 'Join this session to explore how Vertex AI can be used for Modernization. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Beginner', 'http://sessions.com/S022', 'Tech Lead', '2026-04-09', '09:00:00', '09:00:00', 'Room A', 50, 48, 'AI & Machine Learning', 'Finance'),
('S023', 'Securing Vertex AI for Modernization', 'Join this session to explore how Vertex AI can be used for Modernization. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Intermediate', 'http://sessions.com/S023', 'Tech Lead', '2026-04-10', '10:00:00', '10:00:00', 'Auditorium', 200, 96, 'AI & Machine Learning', 'Manufacturing'),
('S024', 'Mastering Kubernetes for Security', 'Join this session to explore how Kubernetes can be used for Security. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Beginner', 'http://sessions.com/S024', 'DevOps Engineer', '2026-04-09', '09:00:00', '09:00:00', 'Auditorium', 200, 160, 'Security', 'Technology'),
('S025', 'Mastering AlloyDB for Modernization', 'Join this session to explore how AlloyDB can be used for Modernization. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Advanced', 'http://sessions.com/S025', 'Director of Engineering', '2026-04-11', '16:00:00', '16:00:00', 'Room B', 200, 74, 'Databases', 'Healthcare'),
('S026', 'Securing Vertex AI for Automation', 'Join this session to explore how Vertex AI can be used for Automation. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Advanced', 'http://sessions.com/S026', 'Cloud Architect', '2026-04-11', '16:00:00', '16:00:00', 'Room A', 50, 25, 'AI & Machine Learning', 'Manufacturing'),
('S027', 'Mastering BigQuery for Analytics', 'Join this session to explore how BigQuery can be used for Analytics. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Intermediate', 'http://sessions.com/S027', 'Security Engineer', '2026-04-11', '10:00:00', '10:00:00', 'Room B', 200, 117, 'Databases', 'Healthcare'),
('S028', 'Deep Dive into Spanner for Integration', 'Join this session to explore how Spanner can be used for Integration. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Advanced', 'http://sessions.com/S028', 'Tech Lead', '2026-04-09', '10:00:00', '10:00:00', 'Auditorium', 50, 32, 'Databases', 'Retail'),
('S029', 'Scaling Generative AI for Automation', 'Join this session to explore how Generative AI can be used for Automation. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Intermediate', 'http://sessions.com/S029', 'Tech Lead', '2026-04-09', '10:00:00', '10:00:00', 'Room A', 200, 157, 'AI & Machine Learning', 'Healthcare'),
('S030', 'Deploying Generative AI for Analytics', 'Join this session to explore how Generative AI can be used for Analytics. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Advanced', 'http://sessions.com/S030', 'Director of Engineering', '2026-04-09', '16:00:00', '16:00:00', 'Room B', 500, 462, 'DevOps', 'Healthcare'),
('S031', 'Mastering ScaNN for High Availability', 'Join this session to explore how ScaNN can be used for High Availability. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Beginner', 'http://sessions.com/S031', 'Director of Engineering', '2026-04-10', '09:00:00', '09:00:00', 'Room C', 500, 140, 'AI & Machine Learning', 'Finance'),
('S032', 'Deploying Kubernetes for Integration', 'Join this session to explore how Kubernetes can be used for Integration. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Advanced', 'http://sessions.com/S032', 'Cloud Architect', '2026-04-11', '14:00:00', '14:00:00', 'Auditorium', 200, 22, 'Databases', 'Retail'),
('S033', 'Securing Gemini for Performance', 'Join this session to explore how Gemini can be used for Performance. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Intermediate', 'http://sessions.com/S033', 'Cloud Architect', '2026-04-09', '16:00:00', '16:00:00', 'Room B', 200, 84, 'AI & Machine Learning', 'Technology'),
('S034', 'Deploying Vertex AI for Scale', 'Join this session to explore how Vertex AI can be used for Scale. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Intermediate', 'http://sessions.com/S034', 'Director of Engineering', '2026-04-10', '10:00:00', '10:00:00', 'Room B', 500, 222, 'AI & Machine Learning', 'Finance'),
('S035', 'Deep Dive into BigQuery for Analytics', 'Join this session to explore how BigQuery can be used for Analytics. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Intermediate', 'http://sessions.com/S035', 'Security Engineer', '2026-04-11', '15:00:00', '15:00:00', 'Room A', 500, 408, 'Databases', 'Healthcare'),
('S036', 'Deploying Kubernetes for Security', 'Join this session to explore how Kubernetes can be used for Security. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Advanced', 'http://sessions.com/S036', 'Tech Lead', '2026-04-10', '09:00:00', '09:00:00', 'Room A', 200, 54, 'Security', 'Healthcare'),
('S037', 'Understanding Spanner for Integration', 'Join this session to explore how Spanner can be used for Integration. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Beginner', 'http://sessions.com/S037', 'Tech Lead', '2026-04-10', '14:00:00', '14:00:00', 'Room C', 200, 89, 'Databases', 'Technology'),
('S038', 'Deep Dive into Kubernetes for Automation', 'Join this session to explore how Kubernetes can be used for Automation. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Beginner', 'http://sessions.com/S038', 'Product Manager', '2026-04-11', '09:00:00', '09:00:00', 'Room C', 50, 47, 'AI & Machine Learning', 'Healthcare'),
('S039', 'Optimizing BigQuery for Reliability', 'Join this session to explore how BigQuery can be used for Reliability. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Beginner', 'http://sessions.com/S039', 'Director of Engineering', '2026-04-10', '14:00:00', '14:00:00', 'Auditorium', 200, 38, 'Databases', 'Retail'),
('S040', 'Deep Dive into Spanner for Cost Efficiency', 'Join this session to explore how Spanner can be used for Cost Efficiency. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Advanced', 'http://sessions.com/S040', 'Software Engineer', '2026-04-09', '14:00:00', '14:00:00', 'Auditorium', 50, 2, 'Databases', 'Healthcare'),
('S041', 'Exploring Gemini for Cost Efficiency', 'Join this session to explore how Gemini can be used for Cost Efficiency. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Intermediate', 'http://sessions.com/S041', 'Product Manager', '2026-04-10', '15:00:00', '15:00:00', 'Room A', 100, 73, 'AI & Machine Learning', 'Healthcare'),
('S042', 'Mastering ScaNN for Performance', 'Join this session to explore how ScaNN can be used for Performance. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Beginner', 'http://sessions.com/S042', 'Tech Lead', '2026-04-09', '11:00:00', '11:00:00', 'Auditorium', 100, 50, 'AI & Machine Learning', 'Manufacturing'),
('S043', 'Mastering ScaNN for Analytics', 'Join this session to explore how ScaNN can be used for Analytics. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Advanced', 'http://sessions.com/S043', 'Data Scientist', '2026-04-10', '09:00:00', '09:00:00', 'Room B', 200, 111, 'AI & Machine Learning', 'Technology'),
('S044', 'Securing Gemini for Integration', 'Join this session to explore how Gemini can be used for Integration. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Advanced', 'http://sessions.com/S044', 'Cloud Architect', '2026-04-09', '14:00:00', '14:00:00', 'Auditorium', 500, 281, 'AI & Machine Learning', 'Healthcare'),
('S045', 'Architecting Cloud SQL for Integration', 'Join this session to explore how Cloud SQL can be used for Integration. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Advanced', 'http://sessions.com/S045', 'Product Manager', '2026-04-11', '11:00:00', '11:00:00', 'Room C', 50, 6, 'AI & Machine Learning', 'Retail'),
('S046', 'Securing Kubernetes for Scale', 'Join this session to explore how Kubernetes can be used for Scale. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Beginner', 'http://sessions.com/S046', 'Security Engineer', '2026-04-11', '14:00:00', '14:00:00', 'Room B', 100, 80, 'AI & Machine Learning', 'Manufacturing'),
('S047', 'Mastering PostgreSQL for Integration', 'Join this session to explore how PostgreSQL can be used for Integration. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Advanced', 'http://sessions.com/S047', 'Tech Lead', '2026-04-10', '14:00:00', '14:00:00', 'Auditorium', 200, 134, 'Databases', 'Manufacturing'),
('S048', 'Deep Dive into Kubernetes for Cost Efficiency', 'Join this session to explore how Kubernetes can be used for Cost Efficiency. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Intermediate', 'http://sessions.com/S048', 'Data Scientist', '2026-04-11', '09:00:00', '09:00:00', 'Room C', 500, 102, 'AI & Machine Learning', 'Retail'),
('S049', 'Deep Dive into Cloud SQL for Scale', 'Join this session to explore how Cloud SQL can be used for Scale. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Beginner', 'http://sessions.com/S049', 'Security Engineer', '2026-04-09', '14:00:00', '14:00:00', 'Auditorium', 200, 127, 'AI & Machine Learning', 'Healthcare'),
('S050', 'Scaling Cloud SQL for Reliability', 'Join this session to explore how Cloud SQL can be used for Reliability. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Intermediate', 'http://sessions.com/S050', 'Software Engineer', '2026-04-10', '15:00:00', '15:00:00', 'Room A', 100, 40, 'Cloud Architecture', 'Finance'),
('S051', 'Building Vertex AI for Security', 'Join this session to explore how Vertex AI can be used for Security. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Beginner', 'http://sessions.com/S051', 'Director of Engineering', '2026-04-09', '15:00:00', '15:00:00', 'Room C', 500, 138, 'AI & Machine Learning', 'Retail'),
('S052', 'Exploring Vertex AI for Modernization', 'Join this session to explore how Vertex AI can be used for Modernization. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Intermediate', 'http://sessions.com/S052', 'DevOps Engineer', '2026-04-09', '09:00:00', '09:00:00', 'Room C', 200, 27, 'AI & Machine Learning', 'Finance'),
('S053', 'Optimizing Generative AI for Automation', 'Join this session to explore how Generative AI can be used for Automation. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Beginner', 'http://sessions.com/S053', 'Director of Engineering', '2026-04-10', '11:00:00', '11:00:00', 'Room C', 500, 65, 'Databases', 'Healthcare'),
('S054', 'Architecting PostgreSQL for Performance', 'Join this session to explore how PostgreSQL can be used for Performance. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Beginner', 'http://sessions.com/S054', 'Data Scientist', '2026-04-09', '11:00:00', '11:00:00', 'Auditorium', 200, 103, 'Databases', 'Healthcare'),
('S055', 'Mastering Generative AI for Automation', 'Join this session to explore how Generative AI can be used for Automation. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Intermediate', 'http://sessions.com/S055', 'Data Scientist', '2026-04-11', '11:00:00', '11:00:00', 'Room C', 50, 31, 'AI & Machine Learning', 'Technology'),
('S056', 'Exploring ScaNN for Reliability', 'Join this session to explore how ScaNN can be used for Reliability. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Intermediate', 'http://sessions.com/S056', 'Security Engineer', '2026-04-11', '15:00:00', '15:00:00', 'Room A', 500, 351, 'AI & Machine Learning', 'Healthcare'),
('S057', 'Deep Dive into BigQuery for Performance', 'Join this session to explore how BigQuery can be used for Performance. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Intermediate', 'http://sessions.com/S057', 'DevOps Engineer', '2026-04-11', '11:00:00', '11:00:00', 'Room B', 200, 200, 'Databases', 'Finance'),
('S058', 'Scaling Generative AI for Reliability', 'Join this session to explore how Generative AI can be used for Reliability. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Beginner', 'http://sessions.com/S058', 'Cloud Architect', '2026-04-10', '11:00:00', '11:00:00', 'Room C', 100, 61, 'Databases', 'Finance'),
('S059', 'Securing Vertex AI for High Availability', 'Join this session to explore how Vertex AI can be used for High Availability. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Beginner', 'http://sessions.com/S059', 'Data Scientist', '2026-04-11', '16:00:00', '16:00:00', 'Room B', 500, 224, 'AI & Machine Learning', 'Manufacturing'),
('S060', 'Architecting AlloyDB for Integration', 'Join this session to explore how AlloyDB can be used for Integration. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Beginner', 'http://sessions.com/S060', 'Tech Lead', '2026-04-09', '14:00:00', '14:00:00', 'Room A', 500, 223, 'Databases', 'Technology'),
('S061', 'Understanding Spanner for High Availability', 'Join this session to explore how Spanner can be used for High Availability. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Advanced', 'http://sessions.com/S061', 'Tech Lead', '2026-04-09', '16:00:00', '16:00:00', 'Room C', 100, 52, 'Databases', 'Manufacturing'),
('S062', 'Scaling Kubernetes for Cost Efficiency', 'Join this session to explore how Kubernetes can be used for Cost Efficiency. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Advanced', 'http://sessions.com/S062', 'Product Manager', '2026-04-10', '16:00:00', '16:00:00', 'Room B', 100, 0, 'Cloud Architecture', 'Retail'),
('S063', 'Architecting Kubernetes for High Availability', 'Join this session to explore how Kubernetes can be used for High Availability. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Beginner', 'http://sessions.com/S063', 'Security Engineer', '2026-04-09', '10:00:00', '10:00:00', 'Auditorium', 200, 0, 'Security', 'Finance'),
('S064', 'Mastering Gemini for Integration', 'Join this session to explore how Gemini can be used for Integration. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Advanced', 'http://sessions.com/S064', 'Security Engineer', '2026-04-10', '15:00:00', '15:00:00', 'Room B', 100, 8, 'AI & Machine Learning', 'Technology'),
('S065', 'Optimizing Generative AI for Security', 'Join this session to explore how Generative AI can be used for Security. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Beginner', 'http://sessions.com/S065', 'Tech Lead', '2026-04-09', '15:00:00', '15:00:00', 'Room C', 500, 230, 'AI & Machine Learning', 'Retail'),
('S066', 'Optimizing BigQuery for Scale', 'Join this session to explore how BigQuery can be used for Scale. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Intermediate', 'http://sessions.com/S066', 'Tech Lead', '2026-04-11', '10:00:00', '10:00:00', 'Room C', 500, 186, 'Databases', 'Healthcare'),
('S067', 'Scaling PostgreSQL for Automation', 'Join this session to explore how PostgreSQL can be used for Automation. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Beginner', 'http://sessions.com/S067', 'Product Manager', '2026-04-10', '11:00:00', '11:00:00', 'Auditorium', 100, 17, 'Databases', 'Retail'),
('S068', 'Exploring AlloyDB for Automation', 'Join this session to explore how AlloyDB can be used for Automation. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Beginner', 'http://sessions.com/S068', 'Director of Engineering', '2026-04-11', '16:00:00', '16:00:00', 'Room B', 100, 77, 'Databases', 'Retail'),
('S069', 'Securing BigQuery for Cost Efficiency', 'Join this session to explore how BigQuery can be used for Cost Efficiency. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Advanced', 'http://sessions.com/S069', 'Cloud Architect', '2026-04-09', '14:00:00', '14:00:00', 'Room A', 500, 437, 'Databases', 'Manufacturing'),
('S070', 'Deep Dive into Kubernetes for Integration', 'Join this session to explore how Kubernetes can be used for Integration. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Intermediate', 'http://sessions.com/S070', 'Cloud Architect', '2026-04-11', '11:00:00', '11:00:00', 'Room A', 50, 46, 'AI & Machine Learning', 'Technology'),
('S071', 'Architecting ScaNN for Cost Efficiency', 'Join this session to explore how ScaNN can be used for Cost Efficiency. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Intermediate', 'http://sessions.com/S071', 'Cloud Architect', '2026-04-11', '14:00:00', '14:00:00', 'Auditorium', 100, 97, 'AI & Machine Learning', 'Finance'),
('S072', 'Scaling ScaNN for Analytics', 'Join this session to explore how ScaNN can be used for Analytics. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Beginner', 'http://sessions.com/S072', 'Cloud Architect', '2026-04-09', '11:00:00', '11:00:00', 'Room C', 100, 96, 'AI & Machine Learning', 'Manufacturing'),
('S073', 'Securing Cloud SQL for Modernization', 'Join this session to explore how Cloud SQL can be used for Modernization. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Advanced', 'http://sessions.com/S073', 'Tech Lead', '2026-04-10', '16:00:00', '16:00:00', 'Room C', 200, 195, 'Security', 'Technology'),
('S074', 'Deploying ScaNN for Scale', 'Join this session to explore how ScaNN can be used for Scale. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Beginner', 'http://sessions.com/S074', 'Data Scientist', '2026-04-10', '10:00:00', '10:00:00', 'Room A', 500, 215, 'AI & Machine Learning', 'Technology'),
('S075', 'Architecting BigQuery for Automation', 'Join this session to explore how BigQuery can be used for Automation. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Advanced', 'http://sessions.com/S075', 'Product Manager', '2026-04-09', '09:00:00', '09:00:00', 'Room A', 200, 110, 'Databases', 'Healthcare'),
('S076', 'Understanding Vertex AI for Scale', 'Join this session to explore how Vertex AI can be used for Scale. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Advanced', 'http://sessions.com/S076', 'Software Engineer', '2026-04-11', '15:00:00', '15:00:00', 'Room B', 200, 15, 'AI & Machine Learning', 'Finance'),
('S077', 'Architecting PostgreSQL for Reliability', 'Join this session to explore how PostgreSQL can be used for Reliability. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Advanced', 'http://sessions.com/S077', 'Director of Engineering', '2026-04-09', '11:00:00', '11:00:00', 'Room C', 200, 133, 'Databases', 'Finance'),
('S078', 'Deploying Generative AI for Analytics', 'Join this session to explore how Generative AI can be used for Analytics. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Intermediate', 'http://sessions.com/S078', 'Product Manager', '2026-04-11', '16:00:00', '16:00:00', 'Room A', 200, 190, 'AI & Machine Learning', 'Manufacturing'),
('S079', 'Deploying ScaNN for Analytics', 'Join this session to explore how ScaNN can be used for Analytics. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Advanced', 'http://sessions.com/S079', 'Cloud Architect', '2026-04-11', '16:00:00', '16:00:00', 'Room B', 200, 95, 'AI & Machine Learning', 'Technology'),
('S080', 'Securing Spanner for Security', 'Join this session to explore how Spanner can be used for Security. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Intermediate', 'http://sessions.com/S080', 'Tech Lead', '2026-04-11', '14:00:00', '14:00:00', 'Room A', 500, 310, 'Databases', 'Healthcare'),
('S081', 'Optimizing Cloud SQL for Performance', 'Join this session to explore how Cloud SQL can be used for Performance. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Beginner', 'http://sessions.com/S081', 'Security Engineer', '2026-04-11', '11:00:00', '11:00:00', 'Room B', 100, 76, 'Databases', 'Finance'),
('S082', 'Exploring Spanner for Cost Efficiency', 'Join this session to explore how Spanner can be used for Cost Efficiency. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Advanced', 'http://sessions.com/S082', 'Tech Lead', '2026-04-11', '15:00:00', '15:00:00', 'Room C', 50, 1, 'Databases', 'Manufacturing'),
('S083', 'Understanding Kubernetes for Performance', 'Join this session to explore how Kubernetes can be used for Performance. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Beginner', 'http://sessions.com/S083', 'Product Manager', '2026-04-11', '14:00:00', '14:00:00', 'Auditorium', 100, 49, 'Security', 'Retail'),
('S084', 'Exploring Cloud SQL for Cost Efficiency', 'Join this session to explore how Cloud SQL can be used for Cost Efficiency. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Intermediate', 'http://sessions.com/S084', 'Tech Lead', '2026-04-09', '16:00:00', '16:00:00', 'Room C', 500, 91, 'Cloud Architecture', 'Healthcare'),
('S085', 'Scaling Kubernetes for Automation', 'Join this session to explore how Kubernetes can be used for Automation. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Intermediate', 'http://sessions.com/S085', 'Director of Engineering', '2026-04-10', '10:00:00', '10:00:00', 'Room B', 500, 204, 'Databases', 'Finance'),
('S086', 'Deep Dive into BigQuery for Cost Efficiency', 'Join this session to explore how BigQuery can be used for Cost Efficiency. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Beginner', 'http://sessions.com/S086', 'Product Manager', '2026-04-09', '16:00:00', '16:00:00', 'Room B', 100, 89, 'Databases', 'Finance'),
('S087', 'Deep Dive into Vertex AI for Automation', 'Join this session to explore how Vertex AI can be used for Automation. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Beginner', 'http://sessions.com/S087', 'Data Scientist', '2026-04-10', '14:00:00', '14:00:00', 'Auditorium', 100, 74, 'AI & Machine Learning', 'Retail'),
('S088', 'Mastering AlloyDB for Modernization', 'Join this session to explore how AlloyDB can be used for Modernization. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Beginner', 'http://sessions.com/S088', 'Security Engineer', '2026-04-09', '16:00:00', '16:00:00', 'Room C', 100, 39, 'Databases', 'Healthcare'),
('S089', 'Exploring AlloyDB for High Availability', 'Join this session to explore how AlloyDB can be used for High Availability. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Advanced', 'http://sessions.com/S089', 'Data Scientist', '2026-04-10', '15:00:00', '15:00:00', 'Room A', 100, 94, 'Databases', 'Healthcare'),
('S090', 'Exploring Vertex AI for Security', 'Join this session to explore how Vertex AI can be used for Security. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Intermediate', 'http://sessions.com/S090', 'Security Engineer', '2026-04-11', '10:00:00', '10:00:00', 'Room B', 50, 27, 'AI & Machine Learning', 'Retail'),
('S091', 'Mastering ScaNN for Cost Efficiency', 'Join this session to explore how ScaNN can be used for Cost Efficiency. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Advanced', 'http://sessions.com/S091', 'DevOps Engineer', '2026-04-09', '14:00:00', '14:00:00', 'Auditorium', 100, 21, 'AI & Machine Learning', 'Technology'),
('S092', 'Mastering BigQuery for Scale', 'Join this session to explore how BigQuery can be used for Scale. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Advanced', 'http://sessions.com/S092', 'Cloud Architect', '2026-04-09', '16:00:00', '16:00:00', 'Room C', 200, 67, 'Databases', 'Manufacturing'),
('S093', 'Exploring AlloyDB for Performance', 'Join this session to explore how AlloyDB can be used for Performance. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Beginner', 'http://sessions.com/S093', 'Security Engineer', '2026-04-09', '10:00:00', '10:00:00', 'Room B', 200, 171, 'Databases', 'Finance'),
('S094', 'Deploying Cloud SQL for Modernization', 'Join this session to explore how Cloud SQL can be used for Modernization. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Advanced', 'http://sessions.com/S094', 'Product Manager', '2026-04-09', '14:00:00', '14:00:00', 'Room B', 100, 71, 'DevOps', 'Healthcare'),
('S095', 'Building Spanner for Analytics', 'Join this session to explore how Spanner can be used for Analytics. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Beginner', 'http://sessions.com/S095', 'Product Manager', '2026-04-10', '15:00:00', '15:00:00', 'Room B', 500, 334, 'Databases', 'Manufacturing'),
('S096', 'Deep Dive into Vertex AI for Analytics', 'Join this session to explore how Vertex AI can be used for Analytics. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Intermediate', 'http://sessions.com/S096', 'DevOps Engineer', '2026-04-11', '14:00:00', '14:00:00', 'Room C', 100, 27, 'AI & Machine Learning', 'Healthcare'),
('S097', 'Deploying PostgreSQL for Analytics', 'Join this session to explore how PostgreSQL can be used for Analytics. We will cover best practices, real-world use cases, and advanced configuration options.', 'Breakouts', 'Beginner', 'http://sessions.com/S097', 'Cloud Architect', '2026-04-09', '11:00:00', '11:00:00', 'Room C', 50, 36, 'Databases', 'Healthcare'),
('S098', 'Architecting Kubernetes for Reliability', 'Join this session to explore how Kubernetes can be used for Reliability. We will cover best practices, real-world use cases, and advanced configuration options.', 'Lightning Talks', 'Beginner', 'http://sessions.com/S098', 'Cloud Architect', '2026-04-10', '11:00:00', '11:00:00', 'Room A', 50, 29, 'AI & Machine Learning', 'Finance'),
('S099', 'Scaling Cloud SQL for Analytics', 'Join this session to explore how Cloud SQL can be used for Analytics. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Beginner', 'http://sessions.com/S099', 'DevOps Engineer', '2026-04-09', '09:00:00', '09:00:00', 'Auditorium', 50, 21, 'Security', 'Finance'),
('S100', 'Deploying PostgreSQL for Analytics', 'Join this session to explore how PostgreSQL can be used for Analytics. We will cover best practices, real-world use cases, and advanced configuration options.', 'Keynotes', 'Advanced', 'http://sessions.com/S100', 'DevOps Engineer', '2026-04-11', '09:00:00', '09:00:00', 'Room B', 500, 141, 'Databases', 'Technology') ON CONFLICT (session_id) DO NOTHING;

3.5 Przypisywanie prelegentów do sesji

-- Insert Session-Speaker Mappings
INSERT INTO public.session_speaker_mapping (session_id, speaker_id) VALUES
('S001', 6),
('S001', 19),
('S002', 6),
('S002', 11),
('S003', 14),
('S003', 10),
('S004', 5),
('S004', 8),
('S005', 12),
('S005', 9),
('S006', 14),
('S007', 14),
('S007', 3),
('S008', 2),
('S008', 4),
('S009', 9),
('S009', 13),
('S010', 2),
('S010', 3),
('S011', 12),
('S012', 13),
('S013', 11),
('S014', 8),
('S015', 16),
('S016', 4),
('S016', 18),
('S017', 12),
('S018', 10),
('S019', 15),
('S020', 20),
('S020', 7),
('S021', 2),
('S021', 11),
('S022', 15),
('S022', 7),
('S023', 4),
('S023', 19),
('S024', 11),
('S025', 11),
('S025', 10),
('S026', 11),
('S027', 20),
('S028', 20),
('S028', 3),
('S029', 11),
('S029', 20),
('S030', 19),
('S030', 6),
('S031', 20),
('S031', 14),
('S032', 3),
('S033', 4),
('S033', 8),
('S034', 14),
('S035', 12),
('S035', 4),
('S036', 18),
('S037', 6),
('S038', 9),
('S038', 7),
('S039', 7),
('S040', 17),
('S041', 17),
('S042', 16),
('S042', 2),
('S043', 10),
('S043', 13),
('S044', 7),
('S045', 10),
('S046', 1),
('S046', 20),
('S047', 17),
('S048', 9),
('S048', 6),
('S049', 4),
('S049', 3),
('S050', 8),
('S050', 16),
('S051', 18),
('S051', 10),
('S052', 4),
('S053', 5),
('S053', 13),
('S054', 17),
('S055', 1),
('S056', 1),
('S056', 15),
('S057', 7),
('S058', 15),
('S059', 15),
('S059', 8),
('S060', 20),
('S060', 10),
('S061', 16),
('S062', 18),
('S062', 11),
('S063', 10),
('S064', 6),
('S065', 10),
('S066', 8),
('S066', 9),
('S067', 16),
('S067', 14),
('S068', 13),
('S068', 11),
('S069', 16),
('S070', 8),
('S071', 3),
('S072', 10),
('S072', 1),
('S073', 10),
('S073', 8),
('S074', 20),
('S074', 14),
('S075', 5),
('S076', 1),
('S076', 11),
('S077', 3),
('S078', 20),
('S078', 12),
('S079', 17),
('S079', 9),
('S080', 10),
('S081', 2),
('S082', 15),
('S082', 11),
('S083', 7),
('S083', 1),
('S084', 8),
('S085', 8),
('S085', 18),
('S086', 5),
('S087', 5),
('S088', 19),
('S088', 18),
('S089', 18),
('S090', 8),
('S091', 4),
('S092', 14),
('S093', 20),
('S093', 17),
('S094', 16),
('S094', 9),
('S095', 11),
('S095', 4),
('S096', 14),
('S096', 11),
('S097', 13),
('S097', 19),
('S098', 3),
('S099', 11),
('S099', 18),
('S100', 18),
('S100', 13) ON CONFLICT DO NOTHING;

3.6 Dołączanie tematów do sesji

-- Insert Session-Topic Mappings
INSERT INTO public.session_topic_mapping (session_id, topic) VALUES
('S001', 'Security'),
('S002', 'AI & Machine Learning'),
('S003', 'Cloud Architecture'),
('S003', 'AI & Machine Learning'),
('S004', 'Databases'),
('S004', 'DevOps'),
('S005', 'DevOps'),
('S005', 'Cloud Architecture'),
('S006', 'Security'),
('S006', 'AI & Machine Learning'),
('S007', 'Cloud Architecture'),
('S007', 'Databases'),
('S008', 'AI & Machine Learning'),
('S008', 'Databases'),
('S009', 'Security'),
('S009', 'DevOps'),
('S010', 'AI & Machine Learning'),
('S010', 'Cloud Architecture'),
('S011', 'Security'),
('S012', 'Databases'),
('S013', 'Cloud Architecture'),
('S014', 'Databases'),
('S015', 'DevOps'),
('S015', 'Security'),
('S016', 'AI & Machine Learning'),
('S016', 'Databases'),
('S017', 'Cloud Architecture'),
('S018', 'AI & Machine Learning'),
('S019', 'AI & Machine Learning'),
('S020', 'Security'),
('S021', 'Security'),
('S021', 'Databases'),
('S022', 'Security'),
('S022', 'Databases'),
('S023', 'DevOps'),
('S023', 'AI & Machine Learning'),
('S024', 'AI & Machine Learning'),
('S025', 'Databases'),
('S026', 'DevOps'),
('S027', 'DevOps'),
('S027', 'Cloud Architecture'),
('S028', 'DevOps'),
('S029', 'Databases'),
('S029', 'Security'),
('S030', 'DevOps'),
('S030', 'Security'),
('S031', 'Databases'),
('S032', 'Databases'),
('S033', 'Databases'),
('S034', 'AI & Machine Learning'),
('S035', 'Security'),
('S035', 'AI & Machine Learning'),
('S036', 'AI & Machine Learning'),
('S036', 'Databases'),
('S037', 'DevOps'),
('S037', 'Databases'),
('S038', 'Cloud Architecture'),
('S038', 'Security'),
('S039', 'Security'),
('S040', 'Security'),
('S040', 'AI & Machine Learning'),
('S041', 'AI & Machine Learning'),
('S042', 'Databases'),
('S043', 'AI & Machine Learning'),
('S043', 'Databases'),
('S044', 'Databases'),
('S044', 'DevOps'),
('S045', 'DevOps'),
('S045', 'Cloud Architecture'),
('S046', 'Cloud Architecture'),
('S046', 'Security'),
('S047', 'Cloud Architecture'),
('S047', 'Security'),
('S048', 'Databases'),
('S049', 'AI & Machine Learning'),
('S049', 'Databases'),
('S050', 'Cloud Architecture'),
('S050', 'AI & Machine Learning'),
('S051', 'DevOps'),
('S051', 'Databases'),
('S052', 'Databases'),
('S053', 'DevOps'),
('S053', 'Databases'),
('S054', 'Security'),
('S054', 'DevOps'),
('S055', 'AI & Machine Learning'),
('S056', 'Security'),
('S056', 'DevOps'),
('S057', 'AI & Machine Learning'),
('S058', 'Security'),
('S058', 'AI & Machine Learning'),
('S059', 'Security'),
('S060', 'AI & Machine Learning'),
('S060', 'DevOps'),
('S061', 'Security'),
('S061', 'AI & Machine Learning'),
('S062', 'DevOps'),
('S063', 'Security'),
('S063', 'DevOps'),
('S064', 'Databases'),
('S064', 'AI & Machine Learning'),
('S065', 'DevOps'),
('S066', 'AI & Machine Learning'),
('S066', 'Cloud Architecture'),
('S067', 'AI & Machine Learning'),
('S068', 'Security'),
('S069', 'Cloud Architecture'),
('S069', 'DevOps'),
('S070', 'AI & Machine Learning'),
('S071', 'AI & Machine Learning'),
('S071', 'DevOps'),
('S072', 'DevOps'),
('S072', 'Security'),
('S073', 'Security'),
('S074', 'AI & Machine Learning'),
('S074', 'Databases'),
('S075', 'AI & Machine Learning'),
('S076', 'DevOps'),
('S077', 'DevOps'),
('S077', 'AI & Machine Learning'),
('S078', 'Databases'),
('S079', 'Databases'),
('S080', 'AI & Machine Learning'),
('S080', 'Databases'),
('S081', 'Databases'),
('S082', 'Databases'),
('S083', 'Security'),
('S084', 'Security'),
('S084', 'AI & Machine Learning'),
('S085', 'AI & Machine Learning'),
('S085', 'Databases'),
('S086', 'DevOps'),
('S087', 'Databases'),
('S088', 'Security'),
('S088', 'Databases'),
('S089', 'Databases'),
('S090', 'DevOps'),
('S091', 'Databases'),
('S092', 'Databases'),
('S093', 'Security'),
('S093', 'AI & Machine Learning'),
('S094', 'Cloud Architecture'),
('S095', 'Cloud Architecture'),
('S095', 'AI & Machine Learning'),
('S096', 'AI & Machine Learning'),
('S097', 'Security'),
('S097', 'AI & Machine Learning'),
('S098', 'Databases'),
('S098', 'Security'),
('S099', 'Cloud Architecture'),
('S100', 'DevOps'),
('S100', 'Cloud Architecture') ON CONFLICT DO NOTHING;;

3.7 Przypisywanie uczestników do sesji

-- Insert Attendee-Session Mappings
INSERT INTO public.attendees_sessions (username, session_id) VALUES
('user_1', 'S100'),
('user_1', 'S008'),
('user_1', 'S060'),
('user_1', 'S090'),
('user_1', 'S057'),
('user_2', 'S086'),
('user_2', 'S033'),
('user_2', 'S006'),
('user_2', 'S043'),
('user_2', 'S050'),
('user_3', 'S066'),
('user_3', 'S099'),
('user_4', 'S004'),
('user_4', 'S043'),
('user_4', 'S092'),
('user_4', 'S033'),
('user_4', 'S074'),
('user_5', 'S014'),
('user_5', 'S088'),
('user_5', 'S093'),
('user_6', 'S075'),
('user_6', 'S033'),
('user_7', 'S014'),
('user_7', 'S021'),
('user_7', 'S047'),
('user_8', 'S051'),
('user_8', 'S081'),
('user_9', 'S048'),
('user_9', 'S100'),
('user_10', 'S037'),
('user_10', 'S059'),
('user_10', 'S083'),
('user_11', 'S007'),
('user_11', 'S099'),
('user_11', 'S054'),
('user_12', 'S006'),
('user_12', 'S046'),
('user_12', 'S077'),
('user_12', 'S032'),
('user_13', 'S020'),
('user_13', 'S029'),
('user_13', 'S054'),
('user_14', 'S052'),
('user_14', 'S070'),
('user_14', 'S028'),
('user_15', 'S054'),
('user_15', 'S050'),
('user_15', 'S025'),
('user_15', 'S066'),
('user_15', 'S081'),
('user_16', 'S099'),
('user_16', 'S073'),
('user_16', 'S027'),
('user_16', 'S058'),
('user_17', 'S092'),
('user_17', 'S089'),
('user_17', 'S076'),
('user_17', 'S062'),
('user_18', 'S083'),
('user_18', 'S094'),
('user_18', 'S097'),
('user_18', 'S031'),
('user_18', 'S040'),
('user_19', 'S078'),
('user_19', 'S072'),
('user_19', 'S049'),
('user_19', 'S017'),
('user_19', 'S084'),
('user_20', 'S023'),
('user_20', 'S003'),
('user_20', 'S016'),
('user_20', 'S068'),
('user_21', 'S071'),
('user_21', 'S058'),
('user_21', 'S043'),
('user_21', 'S079'),
('user_21', 'S067'),
('user_22', 'S076'),
('user_22', 'S038'),
('user_22', 'S049'),
('user_22', 'S033'),
('user_22', 'S070'),
('user_23', 'S032'),
('user_23', 'S099'),
('user_24', 'S022'),
('user_24', 'S065'),
('user_24', 'S060'),
('user_24', 'S084'),
('user_25', 'S077'),
('user_25', 'S080'),
('user_25', 'S097'),
('user_25', 'S010'),
('user_26', 'S063'),
('user_26', 'S052'),
('user_26', 'S086'),
('user_27', 'S054'),
('user_27', 'S094'),
('user_27', 'S018'),
('user_27', 'S061'),
('user_27', 'S052'),
('user_28', 'S064'),
('user_28', 'S070'),
('user_28', 'S050'),
('user_29', 'S009'),
('user_29', 'S012'),
('user_30', 'S058'),
('user_30', 'S056'),
('user_30', 'S072'),
('user_30', 'S093'),
('user_30', 'S045'),
('user_31', 'S001'),
('user_31', 'S094'),
('user_31', 'S065'),
('user_31', 'S031'),
('user_32', 'S048'),
('user_32', 'S011'),
('user_32', 'S065'),
('user_33', 'S021'),
('user_33', 'S081'),
('user_33', 'S063'),
('user_34', 'S068'),
('user_34', 'S026'),
('user_35', 'S044'),
('user_35', 'S054'),
('user_36', 'S023'),
('user_36', 'S051'),
('user_36', 'S100'),
('user_37', 'S047'),
('user_37', 'S053'),
('user_37', 'S057'),
('user_37', 'S048'),
('user_37', 'S080'),
('user_38', 'S003'),
('user_38', 'S038'),
('user_38', 'S046'),
('user_38', 'S005'),
('user_38', 'S076'),
('user_39', 'S046'),
('user_39', 'S020'),
('user_39', 'S043'),
('user_39', 'S002'),
('user_39', 'S100'),
('user_40', 'S019'),
('user_40', 'S098'),
('user_40', 'S053'),
('user_40', 'S007'),
('user_41', 'S100'),
('user_41', 'S032'),
('user_41', 'S048'),
('user_41', 'S064'),
('user_42', 'S086'),
('user_42', 'S030'),
('user_42', 'S049'),
('user_43', 'S033'),
('user_43', 'S008'),
('user_43', 'S049'),
('user_43', 'S093'),
('user_44', 'S078'),
('user_44', 'S071'),
('user_44', 'S067'),
('user_44', 'S012'),
('user_45', 'S043'),
('user_45', 'S056'),
('user_45', 'S079'),
('user_45', 'S062'),
('user_45', 'S039'),
('user_46', 'S054'),
('user_46', 'S031'),
('user_46', 'S018'),
('user_47', 'S035'),
('user_47', 'S100'),
('user_47', 'S083'),
('user_47', 'S080'),
('user_47', 'S037'),
('user_48', 'S097'),
('user_48', 'S026'),
('user_48', 'S065'),
('user_48', 'S030'),
('user_48', 'S074'),
('user_49', 'S022'),
('user_49', 'S089'),
('user_49', 'S038'),
('user_49', 'S047'),
('user_49', 'S073'),
('user_50', 'S074'),
('user_50', 'S033'),
('user_50', 'S069'),
('user_50', 'S036') ON CONFLICT DO NOTHING;

Powinny się wyświetlić dane wyjściowe wskazujące na pomyślne wykonanie. Sprawdź, czy tabele są wypełnione. Sprawdź np., czy w tabeli sesji jest 100 sesji:

SELECT count(*) from public.session;

7. Włączanie mechanizmu zapytań AI

Zanim zaczniesz korzystać z funkcji AI, musisz włączyć w bazie danych silnik zapytań AI.

Uruchom ten kod SQL w AlloyDB Studio (kontekst conference_db):

CREATE EXTENSION IF NOT EXISTS google_ml_integration CASCADE;
ALTER DATABASE conference_db SET google_ml_integration.enable_ai_query_engine = 'on';

Sprawdź, czy rozszerzenie jest włączone:

SELECT extversion FROM pg_extension WHERE extname = 'google_ml_integration';

Oczekiwane dane wyjściowe powinny wynosić co najmniej 1.5.9.

8. Korzystanie z funkcji AI (operatorów)

Teraz użyjemy semantycznego filtrowania i oceniania opartego na AI za pomocą funkcji ai.ifai.rank.

Filtrowanie semantyczne za pomocą ai.if

Standardowe dopasowywanie tekstu może pomijać sesje, jeśli nie występuje w nich dokładne słowo kluczowe. Znajdźmy sesje dotyczące „generatywnej AI” za pomocą ai.if.

Uruchom ten kod SQL w AlloyDB Studio:

SELECT session_name, full_description
FROM public.session
WHERE
  ai.if(
    prompt => 'Is this session description about Generative AI, LLMs or AI agents? ' || full_description
  );

W wynikach powinny się pojawić odpowiednie sesje, nawet jeśli używają innej terminologii.

Ocena semantyczna za pomocą ai.rank

Oceńmy sesje pod kątem tego, czy są odpowiednie dla początkujących. Możemy używać ai.rank do oceny semantycznej.

Uruchom ten kod SQL:

SELECT session_name, full_description, 
  ai.rank(
    prompt => 'On a scale of 0 to 1, how suitable is this session for a beginner? 1 being very suitable, 0 being advanced. Session: ' || full_description
  ) as beginner_friendly_score
FROM public.session
ORDER BY beginner_friendly_score DESC;

Przydaje się to do tworzenia spersonalizowanych rekomendacji dla uczestników konferencji na podstawie ich profilu.

9. Wdrażanie wyszukiwania hybrydowego

Wyszukiwanie hybrydowe łączy precyzję wyszukiwania słów kluczowych (leksykalnego) z kontekstowym zrozumieniem wyszukiwania wektorowego (semantycznego). Utworzymy indeksy dla obu tych typów i użyjemy wzajemnego scalania pozycji (RRF) do połączenia wyników.

Włącz skanowanie

Sprawdź, czy rozszerzenia scannrum są włączone:

CREATE EXTENSION IF NOT EXISTS alloydb_scann;
CREATE EXTENSION IF NOT EXISTS rum;

Tworzenie indeksów

Nasz schemat używa wygenerowanej kolumny do osadzania (full_description_embedding), więc są one automatycznie obliczane podczas wstawiania. Musimy tylko utworzyć odpowiednie indeksy, aby szybko pobierać dane.

Utwórz indeks RUM (indeks FTS) do wyszukiwania pełnotekstowego słów kluczowych i indeks ScaNN do szybkiego wyszukiwania podobieństw wektorowych.

Uruchom ten kod SQL w AlloyDB Studio:

-- Create RUM index for text search on session descriptions
CREATE INDEX session_text_idx ON public.session USING RUM (description_tsvector rum_tsvector_ops);

-- Create ScaNN index for vector search on session embeddings
CREATE INDEX session_vector_idx ON public.session
  USING scann (full_description_embedding cosine)
  WITH (num_leaves=10);

Uruchamianie wyszukiwania hybrydowego za pomocą RRF

Teraz chcemy wyszukać sesję na fast similarity search, ale skupimy się na ScaNN AlloyDB.

Będziemy używać wyszukiwania semantycznego i wyszukiwania słów kluczowych, a wyniki scalimy za pomocą RRF.

Uruchom ten kod SQL:

-- Enable preview features for the AI Query Engine if not already set
SET google_ml_integration.enable_preview_ai_functions = true;
SELECT s.session_id, s.session_name, s.full_description
FROM public.session s
JOIN ai.hybrid_search(
  search_inputs => ARRAY[
      '{
        "data_type": "vector",
        "table_name": "session",
        "key_column": "session_id",
        "vec_column": "full_description_embedding",
        "distance_operator": "public.<=>",
        "limit": 5,
        "query_vector": "ai.embedding(''text-embedding-005'', ''fast similarity search'')::vector"
      }'::JSONB,
      '{
        "data_type": "text",
        "table_name": "session",
        "key_column": "session_id",
        "text_column": "description_tsvector",
        "limit": 5,
        "ranking_function": "<=>",
        "query_text_input": "ScaNN"
      }'::JSONB
  ]
) AS search_results
on s.session_id = search_results.id;

Powinno pojawić się wyszukiwanie podobieństw w przypadku odpowiednich sesji, a większość wyników powinna dotyczyć sesji powiązanych z ScaNN.

10. Praca z QueryData w AlloyDB Studio

AlloyDB AI umożliwia używanie funkcji QueryData do generowania dokładnych i przewidywalnych instrukcji SQL na podstawie danych wejściowych w języku naturalnym. Z tej sekcji dowiesz się, jak utworzyć kontekst QueryData (szablony) i przetestować go bezpośrednio w AlloyDB Studio.

Tworzenie kontekstu QueryData

Kontekst QueryData to plik JSON z szablonami zapytań i aspektami, które dostarczają modelowi AI niezbędne dane i wskazówki do używania prawidłowych zapytań SQL lub ich części.

Przyjrzyjmy się przykładowemu kontekstowi JSON zaprojektowanemu dla naszego schematu konferencji. Zwróć uwagę, że nazwy tabel są zgodne z naszym schematem (np. public.session).

Oto zawartość JSON, której będziemy używać – zapisz ją w lokalnym pliku .json na laptopie lub komputerze :

{
  "templates": [
    {
      "nlQuery": "Advanced sessions that are almost full",
      "sql": "SELECT session_name, remaining_capacity, session_date, session_start_time FROM session WHERE learning_level = 'Advanced' AND remaining_capacity > 0 AND remaining_capacity < 5 ORDER BY remaining_capacity ASC",
      "intent": "Advanced sessions that are almost full (remaining capacity less than 5)",
      "manifest": "Advanced sessions that are almost full (remaining capacity less than 5)",
      "parameterized": {
        "parameterized_intent": "$1 sessions that are almost full (remaining capacity less than 5)",
        "parameterized_sql": "SELECT session_name, remaining_capacity, session_date, session_start_time FROM public.session WHERE learning_level = $1 AND remaining_capacity > 0 AND remaining_capacity < 5 ORDER BY remaining_capacity ASC"
      }
    },
    {
      "nlQuery": "Find sessions about Gemini",
      "sql": "SELECT name, format, session_date, description FROM ((SELECT s1.session_name AS name, s1.session_format AS format, s1.session_date AS session_date, s1.full_description AS description, (s1.full_description_embedding <=> public.embedding('text-embedding-005', 'Gemini')::public.vector) AS distance FROM public.session s1 ORDER BY distance LIMIT 10) UNION ALL (SELECT s2.session_name AS name, s2.session_format AS format, s2.session_date AS session_date, t.topic_desc AS description, (t.embedding <=> public.embedding('text-embedding-005', 'Gemini')::public.vector) AS distance FROM public.session s2 INNER JOIN public.session_topic_mapping stm ON s2.session_id = stm.session_id INNER JOIN public.session_topic t ON stm.topic = t.topic ORDER BY distance LIMIT 10)) AS combined_results ORDER BY distance LIMIT 10",
      "intent": "Find sessions about Gemini",
      "manifest": "Find sessions about a given topic",
      "parameterized": {
        "parameterized_intent": "Find sessions about $1",
        "parameterized_sql": "SELECT name, format, session_date, description FROM ((SELECT s1.session_name AS name, s1.session_format AS format, s1.session_date AS session_date, s1.full_description AS description, (s1.full_description_embedding <=> public.embedding('text-embedding-005', '$1')::public.vector) AS distance FROM public.session s1 ORDER BY distance LIMIT 10) UNION ALL (SELECT s2.session_name AS name, s2.session_format AS format, s2.session_date AS session_date, t.topic_desc AS description, (t.embedding <=> public.embedding('text-embedding-005', '$1')::public.vector) AS distance FROM public.session s2 INNER JOIN public.session_topic_mapping stm ON s2.session_id = stm.session_id INNER JOIN public.session_topic t ON stm.topic = t.topic ORDER BY distance LIMIT 10)) AS combined_results ORDER BY distance LIMIT 10"
      }
    }
  ]
}

Wczytywanie kontekstu QueryData w AlloyDB Studio

Aby użyć kontekstu Query Data, musimy przesłać go do bazy danych za pomocą AlloyDB Studio.

  1. Otwórz AlloyDB Studio w konsoli Google Cloud.
  2. W panelu po lewej stronie u dołu zobaczysz Zbiory kontekstowe i 3 kropki.
  3. Kliknij go i wybierz Utwórz zestaw kontekstowy.
  4. Wypełnij okno:
    • Nazwa: conference_context
    • Opis: Conference Sessions QueryData Context
    • Prześlij plik kontekstu: prześlij plik JSON utworzony na podstawie powyższej treści.
  5. Zapisz go

Testowanie kontekstu QueryData

Po przesłaniu możesz przetestować go bezpośrednio w AlloyDB Studio.

  1. Kliknij 3 kropki obok utworzonego kontekstu i wybierz Test context set (lub użyj elementu Gemini w edytorze zapytań i wybierz ten kontekst).
  2. W prompcie generowania kodu SQL w Gemini wpisz zapytanie w języku naturalnym, które pasuje do naszego szablonu:
    Advanced sessions that are almost full
    
  3. Wygeneruj zapytanie SQL i sprawdź, czy pasuje do podanego przez nas szablonu.
  4. Wypróbuj zapytanie z parametrami, zmieniając w prompcie w języku naturalnym „Zaawansowane” na „Początkujący”, i sprawdź, czy się dostosuje.

11. Czyszczenie danych

Usuwanie klastra AlloyDB

Aby uniknąć obciążenia konta Google Cloud bieżącymi opłatami, usuń zasoby utworzone podczas tego ćwiczenia.

Aby usunąć klaster AlloyDB (spowoduje to też usunięcie instancji), uruchom w Cloud Shell te polecenia:

export REGION=us-central1
export ADBCLUSTER=alloydb-next26-ai-demo-01

echo "=> Deleting AlloyDB Cluster (${ADBCLUSTER})..."
gcloud alloydb clusters delete $ADBCLUSTER --region=$REGION --force

Jeśli Twój projekt został utworzony specjalnie na potrzeby tego ćwiczenia, możesz go usunąć w całości.

Usuń zakres adresów IP i peering sieci VPC

PROJECT_ID=$(gcloud config get-value project)
echo "=> Deleting Service Networking VPC Peering..."
gcloud compute networks peerings delete servicenetworking-googleapis-com \
    --network=default \
    --project=${PROJECT_ID} --quiet || true

echo "=> Deleting Allocated IP Range for Managed Services..."
gcloud compute addresses delete psa-range \
    --global \
    --project=${PROJECT_ID} --quiet || true

Usuwanie pliku lokalnego

Usuń lokalny plik JSON utworzony w Work with QueryData in AlloyDB Studio kroku.

12. Gratulacje

Gratulacje! Udało Ci się poznać różne funkcje AlloyDB AI w ramach ujednoliconego scenariusza sesji konferencyjnych.

Omówione zagadnienia

  • Jak włączyć i używać funkcji AI (ai.if, ai.rank) do filtrowania semantycznego i oceniania.
  • Jak wdrożyć wyszukiwanie hybrydowe za pomocą indeksów ScaNN (wektorowych) i RUM (tekstowych) z porządkowaniem przy użyciu wzajemnego scalania pozycji (RRF).
  • Jak używać funkcji QueryData w AlloyDB Studio do generowania przewidywalnego kodu SQL z języka naturalnego.

Dalsze kroki

Dokumentacja