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biu_tb_26ai_tech.sql Normal file
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create or replace TRIGGER "BIU_TB_26AI_TECH"
before insert or update
on TB_26AI_TECH
for each row
begin
:new.ID_INSIGHT := SEQ_26AI_TECH.NEXTVAL;
end;
/

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biu_tb_26ai_tech_v2.sql Normal file
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create or replace TRIGGER "BIU_TB_26AI_TECH_V2"
before insert or update
on TB_26AI_TECH_V2
for each row
begin
:new.ID_INSIGHT := SEQ_26AI_TECH.NEXTVAL;
end;
/

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pck_26ai_apis.plb Normal file
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create or replace package body pck_26ai_apis
as
procedure api_text2speech (p_text in varchar2,
p_filename in varchar2,
p_bucket in varchar2 ,
p_comp_id in varchar2,
p_credential in varchar2 default 'OCI_CRED',
p_speaker in varchar2 default 'Felix',
p_language_code in varchar2 default 'pt-BR')
as
--
-- Gerar audio a partir de TXT
--
-- API para gerar speech do resultado: https://docs.oracle.com/en-us/iaas/api/#/en/speech/20220101/SynthesizeSpeech/SynthesizeSpeech
-- https://apexapps.oracle.com/pls/apex/r/dbpm/livelabs/run-workshop?p210_wid=3135&p210_wec=&session=107708964662539
--
-- Text to Speech is only available in the US West (Phoenix) commercial region.
-- https://docs.oracle.com/en-us/iaas/Content/speech/using/speech.htm
-- Text to speech supports maximum 10000 characters per request.
--
-- Pre requisito: https://docs.oracle.com/en-us/iaas/Content/speech/using/policies.htm
-- Policy: ai-service-speech-family
--
-- ALLOW GROUP <my_group> TO USE ai-services IN COMPARTMENT autonomous-db-compartment
--
--
-- URL da API OCI Synthesize Speech
l_url VARCHAR2(4000) := 'https://speech.aiservice.us-phoenix-1.oci.oraclecloud.com/20220101/actions/synthesizeSpeech';
-- definicao do object storage para armazenar o MP3
-- especifique com / no final
v_object_storage varchar2(500) := p_bucket;
-- Variáveis para a requisição e resposta
l_request_body CLOB;
l_request_blob BLOB;
l_response_body BLOB;
begin
-- Criar o JSON do corpo da requisição
l_request_body := '{
"audioConfig": {
"configType": "BASE_AUDIO_CONFIG"
},
"compartmentId": "' || p_comp_id || '",
"configuration": {
"modelDetails": {
"modelName": "TTS_2_NATURAL",
"languageCode":"' || p_language_code || '",
"voiceId": "' || p_speaker || '"
},
"modelFamily": "ORACLE",
"speechSettings": {
"outputFormat": "MP3",
"sampleRateInHz": 23600,
"textType": "TEXT"
}
},
"isStreamEnabled": false,
"text": "' || replace(replace(replace(replace(p_text,
chr(13),''),
chr(10),''),
'"',''),
'\n','') || '" }';
l_request_blob := apex_util.clob_to_blob(p_clob => l_request_body,p_charset => 'AL32UTF8');
-- Limpar os cabeçalhos antes de definir novos
APEX_WEB_SERVICE.CLEAR_REQUEST_HEADERS;
-- Definir os cabeçalhos da requisição
APEX_WEB_SERVICE.G_REQUEST_HEADERS(1).NAME := 'Content-Type';
APEX_WEB_SERVICE.G_REQUEST_HEADERS(1).VALUE := 'application/json';
APEX_WEB_SERVICE.G_REQUEST_HEADERS(2).NAME := 'Accept';
APEX_WEB_SERVICE.G_REQUEST_HEADERS(2).VALUE := 'audio/mpeg';
-- Chamar a API REST da OCI
l_response_body := APEX_WEB_SERVICE.MAKE_REST_REQUEST_B(
p_url => l_url,
p_http_method => 'POST',
p_body_blob => l_request_blob,
p_credential_static_id => 'apex_cred'
);
-- Salvar o áudio no Object Storage
DBMS_CLOUD.PUT_OBJECT(
credential_name => p_credential,
object_uri => v_object_storage || p_filename,
contents => l_response_body
);
end;
--
-- Visio: https://docs.oracle.com/pt-br/solutions/ai-vision-extract-data/index.html#GUID-A4FD65D0-BF62-472B-B4C7-0ADF5425A566
--
function api_visio( p_id in number, p_feature_type in varchar2 , p_comp_id in varchar2)
return clob
as
/*
p_feature_type: https://docs.oracle.com/en-us/iaas/api/#/en/vision/20220125/datatypes/ImageFeature
IMAGE_CLASSIFICATION: Label the image.
OBJECT_DETECTION: Identify objects in the image with bounding boxes.
TEXT_DETECTION: Recognize text at the word and line level.
FACE_DETECTION: Identify faces in the image with bounding boxes and face landmarks.
*/
base64_image CLOB;
v_endpoint varchar2(500) := 'https://vision.aiservice.us-chicago-1.oci.oraclecloud.com/20220125/actions/analyzeImage';
request_json CLOB;
l_response_body clob;
begin
select APEX_WEB_SERVICE.BLOB2CLOBBASE64( FILE_BLOB ,'N','N' )
into base64_image
from TB_26AI_MANUFATURA --TB_26AI_FINANCE
where id = p_id;
request_json := to_clob('{
"compartmentId": "' || p_comp_id || '",
"image": {
"source":"INLINE",
"data":"' || base64_image || '"
},
"features":[
{
"featureType":"' || p_feature_type || '",
"maxResults": 5
}
]
}' );
-- Definir os cabeçalhos da requisição
APEX_WEB_SERVICE.G_REQUEST_HEADERS(1).NAME := 'Content-Type';
APEX_WEB_SERVICE.G_REQUEST_HEADERS(1).VALUE := 'application/json';
APEX_WEB_SERVICE.G_REQUEST_HEADERS(2).NAME := 'Accept';
APEX_WEB_SERVICE.G_REQUEST_HEADERS(2).VALUE := 'application/json';
-- Faça a chamada POST usando APEX_WEB_SERVICE e a credencial OCI
l_response_body := APEX_WEB_SERVICE.make_rest_request(
p_url => v_endpoint,
p_http_method => 'POST',
p_body => request_json,
p_credential_static_id => 'apex_cred'
);
return l_response_body;
end ;
--
-- Document Understanding: https://docs.oracle.com/en-us/iaas/api/#/en/document-understanding/20221109/
--
function api_doc_understanding(p_id in number, p_feature_type in varchar2 , p_comp_id in varchar2)
return clob
as
/*
p_feature_type: https://docs.oracle.com/en-us/iaas/api/#/en/document-understanding/20221109/datatypes/DocumentClassificationFeature
DOCUMENT_CLASSIFICATION
TABLE_EXTRACTION
TEXT_EXTRACTION
LANGUAGE_CLASSIFICATION
KEY_VALUE_EXTRACTION
*/
v_endpoint varchar2(500) := 'https://document.aiservice.sa-saopaulo-1.oci.oraclecloud.com/20221109/actions/analyzeDocument';
request_json CLOB;
v_base64 CLOB;
l_response_body clob;
begin
select APEX_WEB_SERVICE.BLOB2CLOBBASE64( FILE_BLOB ,'N','N' )
into v_base64
from TB_26AI_MANUFATURA_CATALOGO
where id = p_id;
if upper(p_feature_type) = 'KEY_VALUE_EXTRACTION' then
request_json := to_clob('{
"compartmentId": "' || p_comp_id || '",
"features": [
{
"featureType": "' || upper(p_feature_type) || '",
"selectionMarkDetection": true
}
],
"documentType": "INVOICE",
"document": {
"source": "INLINE",
"data": "' || v_base64 || '"
}
}');
else
request_json := to_clob('{
"compartmentId": "' || p_comp_id || '",
"features": [
{
"featureType": "' || upper(p_feature_type) || '",
"selectionMarkDetection": true
}
],
"document": {
"source": "INLINE",
"data": "' || v_base64 || '"
}
}');
end if;
-- Definir os cabeçalhos da requisição
APEX_WEB_SERVICE.G_REQUEST_HEADERS(1).NAME := 'Content-Type';
APEX_WEB_SERVICE.G_REQUEST_HEADERS(1).VALUE := 'application/json';
APEX_WEB_SERVICE.G_REQUEST_HEADERS(2).NAME := 'Accept';
APEX_WEB_SERVICE.G_REQUEST_HEADERS(2).VALUE := 'application/json';
-- Faça a chamada POST usando APEX_WEB_SERVICE e a credencial OCI
l_response_body := APEX_WEB_SERVICE.make_rest_request(
p_url => v_endpoint,
p_http_method => 'POST',
p_body => request_json,
p_credential_static_id => 'apex_cred'
);
return l_response_body;
end;
--
-- Language: https://docs.oracle.com/en-us/iaas/api/#/en/language/20221001/
--
function api_translate(p_data_text in clob,p_source_code in varchar2 default 'en', p_target_code in varchar2 default 'pt-BR' , p_comp_id in varchar2 )
return clob
as
/*
https://docs.oracle.com/en-us/iaas/api/#/en/language/20221001/BatchLanguageTranslation/BatchLanguageTranslation
*/
v_endpoint varchar2(500) := 'https://language.aiservice.sa-saopaulo-1.oci.oraclecloud.com/20221001/actions/batchLanguageTranslation';
request_json CLOB;
l_response_body clob;
begin
request_json := to_clob('{
"compartmentId": "' || p_comp_id || '",
"documents":[{
"key":"1",
"text":"' || p_data_text || '",
"languageCode":"' || p_source_code || '" }],
"targetLanguageCode":"' || p_target_code || '"
}
');
-- Definir os cabeçalhos da requisição
APEX_WEB_SERVICE.G_REQUEST_HEADERS(1).NAME := 'Content-Type';
APEX_WEB_SERVICE.G_REQUEST_HEADERS(1).VALUE := 'application/json';
-- Faça a chamada POST usando APEX_WEB_SERVICE e a credencial OCI
l_response_body := APEX_WEB_SERVICE.make_rest_request(
p_url => v_endpoint,
p_http_method => 'POST',
p_body => request_json,
p_credential_static_id => 'apex_cred'
);
return json_value( l_response_body, '$.documents[0].translatedText');
end;
end; -- package;
/

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pkg_26ai_auto_load.plb Normal file
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create or replace package body pkg_26ai_auto_load
as
/*
Criado por: fernando.leal@oracle.com
Data: Mar/2026
Objetivo: demonstrar casos de Vetorizacao em massa com ONNX e modelos externos do Oracle AI Database 26ai
v1 - Auto Load - leal
*/
--
-- Rotina que define a lista de dados a serem vetorizados
-- Define-se o tipo de embedding para que outros jobs ja existentes possam continuar execucao sem impacto de novas cargas, e assim, testar novos embeddings
--
PROCEDURE prc_refresh_files(p_oci_cred IN VARCHAR2 default 'OCI_CRED',
p_bucket in varchar2 default null,
p_mimetype in varchar2 default 'PDF',
p_embedding_name in varchar2 default 'COHERE')
as
-- ao levar para ambiente de cliente, definir parametro para p_bucket
-- default: associado ao bucket de testes - Leal 25-03-26
v_bucket varchar2(600) := 'https://objectstorage.sa-saopaulo-1.oraclecloud.com/n/idi1o0a010nx/b/bucket-database-26ai/o/'; -- := p_bucket
begin
if p_mimetype = 'PDF' then
-- apenas processar arquivos nao existentes no log de controle tb_26ai_auto_load
-- tabela de controle dos arquivos que devem ser processados
-- (1) os nomes de arquivos sao unicos para processamento, por isso ha uma clausula not in que nao insere nomes de arquoivos da fila
-- (2) os arquivos com status "NULL" ainda nao foram vetorizados pela rotina PROC_EMBED_FILES
-- (3) os arquivos com status "P" foram vetorizados pela rotina PROC_EMBED_FILES
insert into tb_26ai_auto_load(dt_ref,
object_name,
status,
worker_id,
bytes,
created,
last_modified,
EMBEDDING_NAME,
EMBEDDING_MIMETYPE)
SELECT sysdate,
UTL_URL.ESCAPE( object_name ,TRUE,'AL32UTF8'), -- cuidado: caracteres especiais tem tratamento de acesso para object storage
null,
null,
BYTES,
CREATED,
LAST_MODIFIED,
p_embedding_name,
p_mimetype
FROM DBMS_CLOUD.LIST_OBJECTS(p_oci_cred, v_bucket)
WHERE UTL_URL.ESCAPE( object_name ,TRUE,'AL32UTF8') NOT IN (
SELECT object_name
FROM TB_26ai_AUTO_LOAD
where EMBEDDING_MIMETYPE = 'PDF'
and EMBEDDING_NAME = p_embedding_name)
AND UTL_URL.ESCAPE( lower(object_name) ,TRUE,'AL32UTF8') like '%pdf'; -- ajuste leal 250226
end if; -- pdf
if p_mimetype = 'CLOB' then
-- apenas processar arquivos nao existentes no log de controle tb_26ai_auto_load
insert into tb_26ai_auto_load(dt_ref,
object_name,
status,
worker_id,
bytes,
created,
last_modified,
EMBEDDING_NAME,
EMBEDDING_MIMETYPE)
SELECT sysdate,
src.p_partkey,
null,
null, -- inicia em null, mas o job faz asociacao ao seu ID em prc_reserve_files
dbms_lob.getlength( 'Name: ' || src.p_name || ' Color: ' || src.p_color || ' Size: ' || src.p_size || ' Type: ' || src.p_type || ' Container: ' || src.p_container ),
sysdate,
null,
p_embedding_name,
p_mimetype
FROM ssb.PART src
--WHERE src.dat_ref = p_data_id
where rownum<=5000
and (src.p_partkey) NOT IN (
SELECT al.object_name
FROM TB_26ai_AUTO_LOAD al
where EMBEDDING_MIMETYPE = 'CLOB'
and EMBEDDING_NAME = p_embedding_name);
end if;
if p_mimetype = 'JPG' then
-- apenas processar arquivos nao existentes no log de controle tb_26ai_auto_load
-- tabela de controle dos arquivos que devem ser processados
-- (1) os nomes de arquivos sao unicos para processamento, por isso ha uma clausula not in que nao insere nomes de arquoivos da fila
-- (2) os arquivos com status "NULL" ainda nao foram vetorizados pela rotina PROC_EMBED_FILES
-- (3) os arquivos com status "P" foram vetorizados pela rotina PROC_EMBED_FILES
insert into tb_26ai_auto_load(dt_ref,
object_name,
status,
worker_id,
bytes,
created,
last_modified,
EMBEDDING_NAME,
EMBEDDING_MIMETYPE)
SELECT sysdate,
UTL_URL.ESCAPE( object_name ,TRUE,'AL32UTF8'), -- cuidado: caracteres especiais tem tratamento de acesso para object storage
null,
null,
BYTES,
CREATED,
LAST_MODIFIED,
p_embedding_name,
p_mimetype
FROM DBMS_CLOUD.LIST_OBJECTS(p_oci_cred, v_bucket)
WHERE UTL_URL.ESCAPE( object_name ,TRUE,'AL32UTF8') NOT IN (
SELECT object_name
FROM TB_26ai_AUTO_LOAD
where EMBEDDING_MIMETYPE = 'JPG'
and EMBEDDING_NAME = p_embedding_name)
AND ( UTL_URL.ESCAPE( lower(object_name) ,TRUE,'AL32UTF8') like '%jpg'
or UTL_URL.ESCAPE( lower(object_name) ,TRUE,'AL32UTF8') like '%jpeg' ) ;
end if; -- jpg
commit;
end;
--
-- Isola de modo unico, por worker id (job), o batch de dados que deverao ser processados. Status definido em R (Reservado)
-- Nao é chamado diretamente, mas faz parte da rotina de embedding
--
PROCEDURE prc_reserve_files (
p_limit IN NUMBER,
p_worker_id IN VARCHAR2, -- sera setado via job para definir que este bloco de dados sera usado pelo job N
p_oci_cred IN VARCHAR2 default 'OCI_CRED',
p_bucket in varchar2 ,
p_docs OUT SYS.ODCIVARCHAR2LIST,
p_mimetype in varchar2 default 'PDF',
p_embedding_name in varchar2 default 'COHERE'
)
IS
BEGIN
-- inicialização obrigatória
p_docs := SYS.ODCIVARCHAR2LIST();
FOR r1 IN (
SELECT object_name
FROM tb_26ai_auto_load
WHERE status IS NULL
and ROWNUM <= p_limit -- CUIDADO: requer ajustes de acordo com tamanho dos dados e servidor
and EMBEDDING_NAME = p_embedding_name
and EMBEDDING_MIMETYPE = p_mimetype
FOR UPDATE SKIP LOCKED
) LOOP
UPDATE tb_26ai_auto_load
SET status = 'R', -- reserved
worker_id = p_worker_id -- sera setado via job para definir que este bloco de dados sera usado pelo job N
WHERE object_name = r1.object_name
and EMBEDDING_NAME = p_embedding_name
and EMBEDDING_MIMETYPE = p_mimetype
and status IS NULL;
p_docs.EXTEND;
p_docs(p_docs.COUNT) := r1.object_name;
END LOOP;
commit;
END;
--
-- Rotina principal de Embedding
-- Status de Reserva (R) torna se Started (S)
-- Se concluir com sucesso, Started (S) torna se Processado (P)
-- Senao, torna-se Error (E)
--
-- Para usar ONNX, importe previamente o ONNX ao banco com comando abaixo. Em seguida, ajuste string de uso, com nome do modelo, nas linhas de codigo do inicio desta rotina.
--
/* -- importacao do modelo ao banco
BEGIN
DBMS_VECTOR.LOAD_ONNX_MODEL(directory=>'DATA_PUMP_DIR',
file_name=>'clip-vit-large-patch14_img.onnx',
model_name=>'OPENAI_CLIP_MULTI_IMG',
metadata=>JSON('{"function" : "embedding", "embeddingOutput":"embedding", "input": {"input": ["DATA"]}}') );
END;
*/
--
-- Pre requisito: create sequence seq_26ai_auto_load MINVALUE 1 INCREMENT BY 1 START WITH 1 CACHE 20 NOORDER NOCYCLE NOKEEP NOSCALE GLOBAL ;
--
--
PROCEDURE proc_embed_files(p_limit in number default 10,
p_worker_id in number,
p_stop_process_list in varchar2 default 'N',
p_mimetype in varchar2 default 'PDF',
p_embedding_name in varchar2 default 'COHERE')
AS
v_error CLOB;
v_session_id NUMBER;
v_dt_start TIMESTAMP;
v_oci_cred VARCHAR2(20) := 'OCI_CRED';
v_bucket VARCHAR2(600) := 'https://objectstorage.sa-saopaulo-1.oraclecloud.com/n/idi1o0a010nx/b/bucket-database-26ai/o/';
l_docs SYS.ODCIVARCHAR2LIST;
-- CREATE OR REPLACE TYPE t_audio_id_list AS TABLE OF VARCHAR2(600);
v_all_ids SYS.ODCIVARCHAR2LIST;
v_json_embedding varchar2(2000);
BEGIN
IF p_stop_process_list != 'N' THEN
RETURN;
END IF;
if p_embedding_name = 'COHERE' then
v_json_embedding := '{"provider": "OCIGenAI","credential_name": "OCI_CRED","url": "https://inference.generativeai.us-chicago-1.oci.oraclecloud.com/20231130/actions/embedText","batch_size": 50,"model": "cohere.embed-v4.0"}';
elsif p_embedding_name = 'VLLM' then
v_json_embedding := '{"provider": "openai","url": "https://hub-gpus.DOMINIO.com.br/embed/v1/embeddings","host":"local","batch_size": 100,"model": "Qwen/Qwen3-Embedding-4B"}';
elsif p_embedding_name = 'OPENAI' then
v_json_embedding := '{"provider" : "openai","credential_name" : "CRED_OPENAI", "url":"https://api.openai.com/v1/chat/completions", "model" : "gpt-4.1-mini" }';
elsif p_embedding_name = 'ONNX-E5' then
v_json_embedding := '{"provider":"database", "model":"MULTILINGUAL_E5_BASE"}';
elsif p_embedding_name = 'ONNX-VIT' then
v_json_embedding := '{"provider":"database", "model":"VIT_BASE_PATCH16_224"}';
end if;
--
-- rotina que reserva arquivos de modo exclusivo, permitindo uso de scheduler paralelos no banco
-- objetivo: embedding em sessoes paralelas do banco para diminui tempo de carga
-- (1) deve ser definido um valor adequado de arquivos por job, definido no limite de linhas (limit)
-- (2) cada job tem seu worker id definido pelo proprio scheduler
--
prc_reserve_files(
p_limit => p_limit,
p_worker_id=>p_worker_id,
p_oci_cred=> v_oci_cred,
p_bucket=> v_bucket,
p_docs=>l_docs,
p_mimetype => p_mimetype,
p_embedding_name => p_embedding_name ) ;
v_dt_start := CURRENT_TIMESTAMP;
-- create sequence seq_26ai_auto_load MINVALUE 1 INCREMENT BY 1 START WITH 1 CACHE 20 NOORDER NOCYCLE NOKEEP NOSCALE GLOBAL ;
v_session_id := seq_26ai_auto_load.nextval;
if p_mimetype = 'CLOB' then
-- Marca batch como Iniciado
UPDATE tb_26ai_auto_load
SET status = 'S', -- started
dt_start_process = SYSDATE
WHERE worker_id = p_worker_id
and EMBEDDING_NAME = p_embedding_name
and EMBEDDING_MIMETYPE = p_mimetype
and status = 'R';
COMMIT;
-- embedding
BEGIN
INSERT INTO tb_26ai_auto_load_vector (
ID, FILE_NAME, CREATED_DATE, CREATED_BY,
EMBED_ID, EMBED_DATA, EMBED_VECTOR, EMBED_MODE,
attr1, attr2, attr3, attr4, attr5, attr6, attr7,
attr8, attr9, attr10, attr11, attr12, attr13,
attr14, attr15, attr16
)
SELECT
v_session_id,
src.p_partkey,
CURRENT_TIMESTAMP,
'admin3',
et.embed_id,
et.text_chunk,
et.embed_vector,
p_embedding_name,
NULL,
src.p_name,
src.p_color,
src.p_type,
src.p_size,
src.p_container,
null,
null,
null,
null,
null,
null,
null,
null,
null,
p_mimetype
FROM SSB.PART src
CROSS JOIN TABLE(
DBMS_VECTOR_CHAIN.UTL_TO_EMBEDDINGS(
DBMS_VECTOR_CHAIN.UTL_TO_CHUNKS(
dbms_vector_chain.utl_to_text( 'Name: ' || src.p_name || ' Color: ' || src.p_color || ' Size: ' || src.p_size || ' Type: ' || src.p_type || ' Container: ' || src.p_container ) ,
JSON('{"by":"words","max":"300","split":"sentence","normalize":"all","overlap":"30"}')
),
JSON(v_json_embedding)
)
) t
CROSS JOIN JSON_TABLE(
t.column_value, '$[*]'
COLUMNS (
embed_id NUMBER PATH '$.embed_id',
text_chunk VARCHAR2(4000) PATH '$.embed_data',
embed_vector CLOB PATH '$.embed_vector'
)
) AS et
WHERE src.p_partkey IN ( SELECT object_name
FROM tb_26ai_auto_load src
WHERE worker_id = p_worker_id
and status = 'S' -- started
);
--AND src.dat_ref = p_worker_id;
-- Marca batch como processado
UPDATE tb_26ai_auto_load
SET status = 'P', -- processado
dt_end_process = SYSDATE
WHERE worker_id = p_worker_id
and status = 'S';
COMMIT;
EXCEPTION
WHEN OTHERS THEN
v_error := SQLERRM;
INSERT INTO tb_26ai_auto_load_debug
VALUES ('JOB_WORKER_' || p_worker_id , v_error, null, SYSDATE);
-- Marca batch como ERRO
UPDATE tb_26ai_auto_load
SET status = 'E',
dt_end_process = SYSDATE,
error_msg = v_error
WHERE worker_id = p_worker_id
and status = 'S';
COMMIT;
END;
end if; -- clob
if p_mimetype = 'PDF' then
SELECT object_name
BULK COLLECT INTO v_all_ids
FROM (
SELECT object_name
FROM tb_26ai_auto_load src
WHERE worker_id = p_worker_id
and status = 'R'
and EMBEDDING_NAME = p_embedding_name
and EMBEDDING_MIMETYPE = p_mimetype
);
-- Marca batch de PDF como Iniciado
UPDATE tb_26ai_auto_load
SET status = 'S', -- started
dt_start_process = SYSDATE
WHERE worker_id = p_worker_id
and status = 'R'
and EMBEDDING_NAME = p_embedding_name
and EMBEDDING_MIMETYPE = p_mimetype;
COMMIT;
-- copia temporaria para banco
FOR i IN 1 .. v_all_ids.COUNT LOOP
DBMS_CLOUD.GET_OBJECT(
credential_name => v_oci_cred,
object_uri => v_bucket || UTL_URL.ESCAPE( v_all_ids(i) ,TRUE,'AL32UTF8') ,
directory_name => 'DATA_PUMP_DIR',
file_name => lower( replace( v_all_ids(i) ,' ','_') ) );
END LOOP;
-- embedding
BEGIN
FORALL i IN 1 .. v_all_ids.COUNT
INSERT INTO tb_26ai_auto_load_vector (
ID, FILE_NAME, CREATED_DATE, CREATED_BY,
EMBED_ID, EMBED_DATA, EMBED_VECTOR, EMBED_MODE,
attr1, attr2, attr3, attr4, attr5, attr6, attr7,
attr8, attr9, attr10, attr11, attr12, attr13,
attr14, attr15, attr16
)
SELECT
v_session_id,
lower(replace( v_all_ids(i) ,' ','_')),
CURRENT_TIMESTAMP,
'admin',
et.embed_id,
et.text_chunk,
et.embed_vector,
p_embedding_name,
null,
null,
null,
null,
null,
null,
null,
null,
null,
null,
null,
null,
null,
null,
null,
p_mimetype
FROM dual
CROSS JOIN TABLE(
DBMS_VECTOR_CHAIN.UTL_TO_EMBEDDINGS(
DBMS_VECTOR_CHAIN.UTL_TO_CHUNKS(
dbms_vector_chain.utl_to_text( to_blob(bfilename('DATA_PUMP_DIR', lower( replace( v_all_ids(i) ,' ','_') ) ) ) ),
JSON('{"by":"words","max":"' || 400 || '","split":"sentence","normalize":"all","overlap":' || 40 || '}')
),
JSON(v_json_embedding)
)
) t
CROSS JOIN JSON_TABLE(
t.column_value, '$[*]'
COLUMNS (
embed_id NUMBER PATH '$.embed_id',
text_chunk VARCHAR2(4000) PATH '$.embed_data',
embed_vector CLOB PATH '$.embed_vector'
)
) AS et;
-- Marca batch de PDF como processado
UPDATE tb_26ai_auto_load
SET status = 'P', -- processado
dt_end_process = SYSDATE
WHERE worker_id = p_worker_id
and status = 'S';
COMMIT;
EXCEPTION
WHEN OTHERS THEN
v_error := SQLERRM;
INSERT INTO tb_26ai_auto_load_debug
VALUES ('JOB_WORKER_' || p_worker_id , v_error, null, SYSDATE);
-- Marca batch de PDF como erro
UPDATE tb_26ai_auto_load
SET status = 'E', -- erro
dt_end_process = SYSDATE
WHERE worker_id = p_worker_id
and status = 'S';
COMMIT;
END;
-- eliminacao dos arquivos temporarianete gravados paras DATA_PUMP_DIR
FOR i IN 1 .. v_all_ids.COUNT LOOP
DBMS_CLOUD.DELETE_FILE( directory_name => 'DATA_PUMP_DIR',
file_name => lower( replace( v_all_ids(i) ,' ','_') ) );
END LOOP;
end if; -- pdf
if p_mimetype = 'JPG' then
SELECT object_name
BULK COLLECT INTO v_all_ids
FROM (
SELECT object_name
FROM tb_26ai_auto_load src
WHERE worker_id = p_worker_id
and status = 'R'
and EMBEDDING_NAME = p_embedding_name
and EMBEDDING_MIMETYPE = p_mimetype
);
-- Marca batch de PDF como Iniciado
UPDATE tb_26ai_auto_load
SET status = 'S', -- started
dt_start_process = SYSDATE
WHERE worker_id = p_worker_id
and status = 'R'
and EMBEDDING_NAME = p_embedding_name
and EMBEDDING_MIMETYPE = p_mimetype;
COMMIT;
-- copia temporaria para banco
FOR i IN 1 .. v_all_ids.COUNT LOOP
DBMS_CLOUD.GET_OBJECT(
credential_name => v_oci_cred,
object_uri => v_bucket || UTL_URL.ESCAPE( v_all_ids(i) ,TRUE,'AL32UTF8') ,
directory_name => 'DATA_PUMP_DIR',
file_name => lower( replace( v_all_ids(i) ,' ','_') ) );
END LOOP;
-- embedding
BEGIN
FORALL i IN 1 .. v_all_ids.COUNT
INSERT INTO tb_26ai_auto_load_vector (
ID, FILE_NAME, CREATED_DATE, CREATED_BY,
EMBED_ID, EMBED_DATA, EMBED_VECTOR, EMBED_MODE,
attr1, attr2, attr3, attr4, attr5, attr6, attr7,
attr8, attr9, attr10, attr11, attr12, attr13,
attr14, attr15, attr16
)
SELECT
v_session_id,
lower(replace( v_all_ids(i) ,' ','_')),
CURRENT_TIMESTAMP,
'admin',
rownum embed_id,
null text_chunk,
t.vec,
p_embedding_name,
null,
null,
null,
null,
null,
null,
null,
null,
null,
null,
null,
null,
null,
null,
null,
p_mimetype
FROM (
select DBMS_VECTOR.UTL_TO_EMBEDDING(
to_blob(bfilename('DATA_PUMP_DIR', lower( replace( v_all_ids(i) ,' ','_') ) ) ) ,
'image',
JSON('{
"provider": "OCIGenAI",
"credential_name": "OCI_CRED",
"url": "https://inference.generativeai.us-chicago-1.oci.oraclecloud.com/20231130/actions/embedText",
"model": "cohere.embed-v4.0"}')
) vec) t;
-- Marca batch de PDF como processado
UPDATE tb_26ai_auto_load
SET status = 'P', -- processado
dt_end_process = SYSDATE
WHERE worker_id = p_worker_id
and status = 'S';
COMMIT;
EXCEPTION
WHEN OTHERS THEN
v_error := SQLERRM;
INSERT INTO tb_26ai_auto_load_debug
VALUES ('JOB_WORKER_' || p_worker_id , v_error, null, SYSDATE);
-- Marca batch de PDF como erro
UPDATE tb_26ai_auto_load
SET status = 'E', -- erro
dt_end_process = SYSDATE
WHERE worker_id = p_worker_id
and status = 'S';
COMMIT;
END;
-- eliminacao dos arquivos temporarianete gravados paras DATA_PUMP_DIR
FOR i IN 1 .. v_all_ids.COUNT LOOP
DBMS_CLOUD.DELETE_FILE( directory_name => 'DATA_PUMP_DIR',
file_name => lower( replace( v_all_ids(i) ,' ','_') ) );
END LOOP;
end if; -- jpg
COMMIT;
END;
PROCEDURE proc_remove_jobs
AS
BEGIN
-- nao pode fazer pelo numero de jobs existentes pois senao a eliminacao seria falha:
-- cada job tem um padrao de ome associado ao worker id, e nao a contabilizacao que pode ter gaps
-- ajustar de acordo com maximo permitido pelo item de definicao de novos jobs
FOR i IN 1..300 LOOP
begin
DBMS_SCHEDULER.STOP_JOB( job_name => 'JOB_WORKER_' || i );
exception
when others then null;
end;
begin
DBMS_SCHEDULER.DROP_JOB( job_name => 'JOB_WORKER_' || i );
exception
when others then null;
end;
update tb_26ai_auto_load
set status = null, worker_id = null
where status = 'R'; -- estava reservado, mas com remocao do job volta pra status null sem worker id definido
commit;
END LOOP;
END;
PROCEDURE proc_add_jobs(p_limit in number,
p_total_jobs in number,
p_mimetype in varchar2,
p_embedding_name in varchar2 default 'COHERE')
AS
v_job_count number;
v_has number;
BEGIN
select count(1)
into v_job_count
from user_scheduler_jobs
where JOB_NAME like 'JOB_WORKER_%';
-- if p_total_jobs <= v_job_count or p_total_jobs is null then
--raise_application_error(-20002,'The number of scheduler jobs must be greater than what already exists');
-- else
FOR i IN 1..p_total_jobs LOOP
select count(1)
into v_has
from user_scheduler_jobs
where JOB_NAME = 'JOB_WORKER_' || i;
if v_has = 0 then -- nao existe com worker id "i"
DBMS_SCHEDULER.CREATE_JOB(
job_name => 'JOB_WORKER_' || i,
job_type => 'PLSQL_BLOCK',
job_action => 'BEGIN pkg_26ai_auto_load.proc_embed_files(p_limit=>' || p_limit || ',p_worker_id=>' || i || ',p_mimetype=>''' || p_mimetype || ''',p_embedding_name=>''' || p_embedding_name || '''); END;',
start_date => SYSTIMESTAMP,
repeat_interval => 'FREQ=SECONDLY; INTERVAL=10;',
enabled => TRUE
);
else -- cria-se um novo job alem do ultimo
DBMS_SCHEDULER.CREATE_JOB(
job_name => 'JOB_WORKER_' || to_char(i+v_job_count),
job_type => 'PLSQL_BLOCK',
job_action => 'BEGIN pkg_26ai_auto_load.proc_embed_files(p_limit=>' || p_limit || ',p_worker_id=>' || to_char(i+v_job_count) || ',p_mimetype=>''' || p_mimetype || ''',p_embedding_name=>''' || p_embedding_name || '''); END;',
start_date => SYSTIMESTAMP,
repeat_interval => 'FREQ=SECONDLY; INTERVAL=10;',
enabled => TRUE
);
end if;
END LOOP;
-- end if;
END;
end;
/

534
pkg_26ai_traffic_load.plb Normal file
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@@ -0,0 +1,534 @@
create or replace package body pkg_26ai_TRAFFIC_LOAD
as
/*
Criado por: fernando.leal@oracle.com
Data: Abril/2026
Objetivo: Identificar informacoes de imagens como placas, modelo do veiculo e infracoes (uso de celular)
v1 - Tarffic Load - leal
*/
--
-- chamada a API do Vision. Definir modo de extracao com p_feature_type
--
function fnc_26ai_traffic_vision( p_base64_image in clob,
p_feature_type in varchar2)
return clob
--
-- Visio: https://docs.oracle.com/pt-br/solutions/ai-vision-extract-data/index.html#GUID-A4FD65D0-BF62-472B-B4C7-0ADF5425A566
--
as
/*
p_feature_type: https://docs.oracle.com/en-us/iaas/api/#/en/vision/20220125/datatypes/ImageFeature
IMAGE_CLASSIFICATION: Label the image.
OBJECT_DETECTION: Identify objects in the image with bounding boxes.
TEXT_DETECTION: Recognize text at the word and line level.
FACE_DETECTION: Identify faces in the image with bounding boxes and face landmarks.
*/
v_endpoint varchar2(500) := 'https://vision.aiservice.us-chicago-1.oci.oraclecloud.com/20220125/actions/analyzeImage';
request_json CLOB;
l_response_body clob;
begin
request_json := to_clob('{
"compartmentId": "' || g_comp_id || '",
"image": {
"source":"INLINE",
"data":"' || p_base64_image || '"
},
"features":[
{
"featureType":"' || p_feature_type || '",
"maxResults": 1
}
]
}' );
-- Definir os cabeçalhos da requisição
APEX_WEB_SERVICE.G_REQUEST_HEADERS(1).NAME := 'Content-Type';
APEX_WEB_SERVICE.G_REQUEST_HEADERS(1).VALUE := 'application/json';
APEX_WEB_SERVICE.G_REQUEST_HEADERS(2).NAME := 'Accept';
APEX_WEB_SERVICE.G_REQUEST_HEADERS(2).VALUE := 'application/json';
-- Faça a chamada POST usando APEX_WEB_SERVICE e a credencial OCI
l_response_body := APEX_WEB_SERVICE.make_rest_request(
p_url => v_endpoint,
p_http_method => 'POST',
p_body => request_json,
p_credential_static_id => 'apex_cred'
);
return l_response_body;
end;
--
-- funcao de rag para extracao de informacoes da imagem
--
function fnc_26ai_traffic_rag (p_base64_image IN clob,
p_oci_cred IN VARCHAR2 )
return clob
as
-- modelos: https://docs.oracle.com/en-us/iaas/Content/generative-ai/pretrained-models.htm
-- cuidado com pre requisito (1)
gen_ai_endpoint varchar2(500) := 'https://inference.generativeai.us-chicago-1.oci.oraclecloud.com';
gen_ai_model varchar2(500) := 'meta.llama-4-maverick-17b-128e-instruct-fp8';
chat_resp dbms_cloud_types.RESP;
request_json_part1 CLOB;
request_json_part2 CLOB;
request_body BLOB;
BEGIN
-- create temp blobs
dbms_lob.createtemporary(request_body, FALSE);
request_json_part1 := to_clob(
'{
"compartmentId": "' || g_comp_id || '",
"servingMode":
{
"modelId": "' || gen_ai_model || '",
"servingType": "ON_DEMAND"
}
,
"chatRequest": {
"apiFormat": "GENERIC",
"messages": [
{
"role": "USER",
"content": [
{
"type": "TEXT",
"text": "' || 'Gere um JSON com a placa do veiculo, modelo do veiculo e se motorista estiver visivel com uso celular na direção, aponte a infração. Exemplo de saida: {placa:XXXX,modelo:XXXXXXXXXXXXXXXXX,infracao:XXXXXXXXXXXXXX}. Retorne apenas o JSON, sem nenhuma mensagem de introducao nem de explicacao.' || '"
},
{
"type": "IMAGE",
"imageUrl": {
"url": "data:image/' || 'png' || ';base64,');
request_json_part2 := to_clob('"
}
}
]
}
],
"temperature": 0.4,
"numGenerations": 5,
"topK": 1
}
}');
-- append part1 json to request blob
dbms_lob.append(request_body, apex_util.clob_to_blob(p_clob => request_json_part1,p_charset => 'AL32UTF8'));
-- append base64 image to request blob
dbms_lob.append(request_body, apex_util.clob_to_blob(p_clob => p_base64_image,p_charset => 'AL32UTF8'));
-- append part2 json to request blob
dbms_lob.append(request_body, apex_util.clob_to_blob(p_clob => request_json_part2,p_charset => 'AL32UTF8'));
-- call Gen AI Chat
chat_resp := dbms_cloud.send_request(
credential_name => p_oci_cred,
uri => gen_ai_endpoint || '/20231130/actions/chat',
method => dbms_cloud.METHOD_POST,
body => request_body
);
-- clear temp blobs
dbms_lob.freetemporary(request_body);
RETURN json_value( dbms_cloud.get_response_text(chat_resp),'$.chatResponse.choices[0].message.content[0].text') ;
END;
--
-- Rotina que define a lista de dados a serem vetorizados
-- Define-se o tipo de embedding para que outros jobs ja existentes possam continuar execucao sem impacto de novas cargas, e assim, testar novos embeddings
--
PROCEDURE prc_refresh_files(p_oci_cred IN VARCHAR2 default 'OCI_CRED',
p_bucket in varchar2 default null,
p_mimetype in varchar2 default 'PNG',
p_embedding_name in varchar2 default 'COHERE')
as
-- ao levar para ambiente de cliente, definir parametro para p_bucket
-- default: associado ao bucket de testes - Leal 17-04-26
v_bucket varchar2(600) := 'https://objectstorage.sa-saopaulo-1.oraclecloud.com/p/cCeVS9davcdjSieWS1H4JOkJs51Ae_-roo4Cr9DGMCE0A7tmx3cHs60ex75D-BX7/n/idi1o0a010nx/b/bucket-public-sector/o/'; -- := p_bucket
begin
-- apenas processar arquivos nao existentes no log de controle tb_26ai_TRAFFIC
-- tabela de controle dos arquivos que devem ser processados
-- (1) os nomes de arquivos sao unicos para processamento, por isso ha uma clausula not in que nao insere nomes de arquivos da fila
-- (2) os arquivos com status "NULL" ainda nao foram vetorizados pela rotina proc_process_files
-- (3) os arquivos com status "P" foram vetorizados pela rotina proc_process_files
insert into tb_26ai_traffic(dt_ref,
object_name,
status,
worker_id,
bytes,
created,
last_modified,
EMBEDDING_NAME,
EMBEDDING_MIMETYPE,
IMAGE_BASE64)
SELECT sysdate,
object_name , -- cuidado: caracteres especiais tem tratamento de acesso para object storage
null,
null,
BYTES,
CREATED,
LAST_MODIFIED,
p_embedding_name,
p_mimetype,
APEX_WEB_SERVICE.BLOB2CLOBBASE64(
DBMS_CLOUD.GET_OBJECT(
credential_name => p_oci_cred,
object_uri => v_bucket || object_name
),'N','N' )
FROM table(dbms_cloud.list_objects(credential_name => p_oci_cred,
location_uri => v_bucket)) mod
WHERE UTL_URL.ESCAPE( object_name ,TRUE,'AL32UTF8') NOT IN (
SELECT UTL_URL.ESCAPE( object_name ,TRUE,'AL32UTF8')
FROM tb_26ai_TRAFFIC)
AND ( UTL_URL.ESCAPE( lower(object_name) ,TRUE,'AL32UTF8') like '%jpg'
or UTL_URL.ESCAPE( lower(object_name) ,TRUE,'AL32UTF8') like '%jpeg'
or UTL_URL.ESCAPE( lower(object_name) ,TRUE,'AL32UTF8') like '%png')
order by CREATED;
commit;
end;
--
-- Isola de modo unico, por worker id (job), o batch de dados que deverao ser processados. Status definido em R (Reservado)
-- Nao é chamado diretamente, mas faz parte da rotina de embedding
--
PROCEDURE prc_reserve_files (
p_limit IN NUMBER,
p_worker_id IN VARCHAR2, -- sera setado via job para definir que este bloco de dados sera usado pelo job N
p_oci_cred IN VARCHAR2 default 'OCI_CRED',
p_bucket in varchar2 ,
p_docs OUT SYS.ODCIVARCHAR2LIST,
p_mimetype in varchar2 default 'PNG',
p_embedding_name in varchar2 default 'COHERE'
)
IS
BEGIN
-- inicialização obrigatória
p_docs := SYS.ODCIVARCHAR2LIST();
FOR r1 IN (
SELECT object_name
FROM tb_26ai_TRAFFIC
WHERE status IS NULL
and ROWNUM <= p_limit -- CUIDADO: requer ajustes de acordo com tamanho dos dados e servidor
and EMBEDDING_NAME = p_embedding_name
and EMBEDDING_MIMETYPE = p_mimetype
FOR UPDATE SKIP LOCKED
) LOOP
UPDATE tb_26ai_TRAFFIC
SET status = 'R', -- reserved
worker_id = p_worker_id -- sera setado via job para definir que este bloco de dados sera usado pelo job N
WHERE object_name = r1.object_name
and EMBEDDING_NAME = p_embedding_name
and EMBEDDING_MIMETYPE = p_mimetype
and status IS NULL;
p_docs.EXTEND;
p_docs(p_docs.COUNT) := r1.object_name;
END LOOP;
commit;
END;
--
-- Rotina principal de Embedding
-- Status de Reserva (R) torna se Started (S)
-- Se concluir com sucesso, Started (S) torna se Processado (P)
-- Senao, torna-se Error (E)
--
-- Para usar ONNX, importe previamente o ONNX ao banco com comando abaixo. Em seguida, ajuste string de uso, com nome do modelo, nas linhas de codigo do inicio desta rotina.
--
/* -- importacao do modelo ao banco
BEGIN
DBMS_VECTOR.LOAD_ONNX_MODEL(directory=>'DATA_PUMP_DIR',
file_name=>'clip-vit-large-patch14_img.onnx',
model_name=>'OPENAI_CLIP_MULTI_IMG',
metadata=>JSON('{"function" : "embedding", "embeddingOutput":"embedding", "input": {"input": ["DATA"]}}') );
END;
*/
--
-- Pre requisito: create sequence seq_26ai_TRAFFIC MINVALUE 1 INCREMENT BY 1 START WITH 1 CACHE 20 NOORDER NOCYCLE NOKEEP NOSCALE GLOBAL ;
--
--
PROCEDURE proc_process_files(p_limit in number default 10,
p_worker_id in number,
p_stop_process_list in varchar2 default 'N',
p_mimetype in varchar2 default 'PNG',
p_embedding_name in varchar2 default 'COHERE')
AS
v_error CLOB;
v_session_id NUMBER;
v_dt_start TIMESTAMP;
v_oci_cred VARCHAR2(20) := 'OCI_CRED';
v_bucket VARCHAR2(600) := 'https://objectstorage.sa-saopaulo-1.oraclecloud.com/p/cCeVS9davcdjSieWS1H4JOkJs51Ae_-roo4Cr9DGMCE0A7tmx3cHs60ex75D-BX7/n/idi1o0a010nx/b/bucket-public-sector/o/';
l_docs SYS.ODCIVARCHAR2LIST;
-- CREATE OR REPLACE TYPE t_audio_id_list AS TABLE OF VARCHAR2(600);
v_all_ids SYS.ODCIVARCHAR2LIST;
v_json_embedding varchar2(2000);
--
-- CUIDADI: geracao de vetores ira onerar tempo de processamento das imagens
--
v_call_vector_embedding varchar2(1) := 'N';
v_call_rag varchar2(1) := 'Y';
BEGIN
IF p_stop_process_list != 'N' THEN
RETURN;
END IF;
if p_embedding_name = 'COHERE' then
v_json_embedding := '{"provider": "OCIGenAI","credential_name": "OCI_CRED","url": "https://inference.generativeai.us-chicago-1.oci.oraclecloud.com/20231130/actions/embedText","batch_size": 50,"model": "cohere.embed-v4.0"}';
elsif p_embedding_name = 'VLLM' then
v_json_embedding := '{"provider": "openai","url": "https://hub-gpus.DOMINIO.com.br/embed/v1/embeddings","host":"local","batch_size": 100,"model": "Qwen/Qwen3-Embedding-4B"}';
elsif p_embedding_name = 'OPENAI' then
v_json_embedding := '{"provider" : "openai","credential_name" : "CRED_OPENAI", "url":"https://api.openai.com/v1/chat/completions", "model" : "gpt-4.1-mini" }';
elsif p_embedding_name = 'ONNX-E5' then
v_json_embedding := '{"provider":"database", "model":"MULTILINGUAL_E5_BASE"}';
elsif p_embedding_name = 'ONNX-VIT' then
v_json_embedding := '{"provider":"database", "model":"VIT_BASE_PATCH16_224"}';
end if;
--
-- rotina que reserva arquivos de modo exclusivo, permitindo uso de scheduler paralelos no banco
-- objetivo: embedding em sessoes paralelas do banco para diminui tempo de carga
-- (1) deve ser definido um valor adequado de arquivos por job, definido no limite de linhas (limit)
-- (2) cada job tem seu worker id definido pelo proprio scheduler
--
prc_reserve_files(
p_limit => p_limit,
p_worker_id=>p_worker_id,
p_oci_cred=> v_oci_cred,
p_bucket=> v_bucket,
p_docs=>l_docs,
p_mimetype => p_mimetype,
p_embedding_name => p_embedding_name ) ;
v_dt_start := CURRENT_TIMESTAMP;
-- create sequence seq_26ai_TRAFFIC MINVALUE 1 INCREMENT BY 1 START WITH 1 CACHE 20 NOORDER NOCYCLE NOKEEP NOSCALE GLOBAL ;
v_session_id := seq_26ai_TRAFFIC.nextval;
SELECT object_name
BULK COLLECT INTO v_all_ids
FROM (
SELECT UTL_URL.ESCAPE( object_name ,TRUE,'AL32UTF8') object_name
FROM tb_26ai_TRAFFIC src
WHERE worker_id = p_worker_id
and status = 'R'
and EMBEDDING_NAME = p_embedding_name
and EMBEDDING_MIMETYPE = p_mimetype
);
-- Marca batch de processamento como Iniciado
UPDATE tb_26ai_TRAFFIC
SET status = 'S', -- started
dt_start_process = SYSDATE
WHERE worker_id = p_worker_id
and status = 'R'
and EMBEDDING_NAME = p_embedding_name
and EMBEDDING_MIMETYPE = p_mimetype;
COMMIT;
-- embedding
BEGIN
if v_call_vector_embedding = 'Y' then
FORALL i IN 1 .. v_all_ids.COUNT
INSERT INTO tb_26ai_TRAFFIC_vector (
ID, FILE_NAME, CREATED_DATE, CREATED_BY,
EMBED_ID, EMBED_DATA, EMBED_VECTOR, EMBED_MODE, MIMETYPE
)
SELECT
v_session_id,
lower(replace( v_all_ids(i) ,' ','_')),
CURRENT_TIMESTAMP,
'admin',
rownum embed_id,
null text_chunk,
t.vec,
p_embedding_name,
p_mimetype
FROM (
select DBMS_VECTOR.UTL_TO_EMBEDDING(
DBMS_CLOUD.GET_OBJECT(
credential_name => v_oci_cred,
object_uri => v_bucket || v_all_ids(i) ),
'image',
JSON('{
"provider": "OCIGenAI",
"credential_name": "OCI_CRED",
"url": "https://inference.generativeai.us-chicago-1.oci.oraclecloud.com/20231130/actions/embedText",
"model": "cohere.embed-v4.0"}')
) vec) t;
end if; -- v_call_vector_embedding
-- Marca batch omo processado e gera analise da imagem com RAG
if v_call_rag = 'Y' then
UPDATE tb_26ai_TRAFFIC
SET status = 'P', -- processado
dt_end_process = SYSDATE,
JSON_DATA = fnc_26ai_traffic_rag (p_base64_image => IMAGE_BASE64, p_oci_cred => v_oci_cred )
WHERE worker_id = p_worker_id
and status = 'S';
else -- Marca batch omo processado
UPDATE tb_26ai_TRAFFIC
SET status = 'P', -- processado
dt_end_process = SYSDATE
WHERE worker_id = p_worker_id
and status = 'S';
end if;
COMMIT;
EXCEPTION
WHEN OTHERS THEN
v_error := SQLERRM;
INSERT INTO tb_26ai_TRAFFIC_debug
VALUES ('JOB_TRAFFIC_WORKER_' || p_worker_id , v_error, null, SYSDATE);
-- Marca batch de PDF como erro
UPDATE tb_26ai_TRAFFIC
SET status = 'E', -- erro
dt_end_process = SYSDATE
WHERE worker_id = p_worker_id
and status = 'S';
COMMIT;
END;
COMMIT;
END;
PROCEDURE proc_remove_jobs
AS
BEGIN
-- nao pode fazer pelo numero de jobs existentes pois senao a eliminacao seria falha:
-- cada job tem um padrao de ome associado ao worker id, e nao a contabilizacao que pode ter gaps
-- ajustar de acordo com maximo permitido pelo item de definicao de novos jobs
FOR i IN 1..300 LOOP
begin
DBMS_SCHEDULER.STOP_JOB( job_name => 'JOB_TRAFFIC_WORKER_' || i );
exception
when others then null;
end;
begin
DBMS_SCHEDULER.DROP_JOB( job_name => 'JOB_TRAFFIC_WORKER_' || i );
exception
when others then null;
end;
update tb_26ai_TRAFFIC
set status = null, worker_id = null
where status = 'R'; -- estava reservado, mas com remocao do job volta pra status null sem worker id definido
commit;
END LOOP;
END;
PROCEDURE proc_add_jobs(p_limit in number,
p_total_jobs in number,
p_mimetype in varchar2,
p_embedding_name in varchar2 default 'COHERE')
AS
v_job_count number;
v_has number;
BEGIN
select count(1)
into v_job_count
from user_scheduler_jobs
where JOB_NAME like 'JOB_TRAFFIC_WORKER_%';
-- if p_total_jobs <= v_job_count or p_total_jobs is null then
--raise_application_error(-20002,'The number of scheduler jobs must be greater than what already exists');
-- else
FOR i IN 1..p_total_jobs LOOP
select count(1)
into v_has
from user_scheduler_jobs
where JOB_NAME = 'JOB_TRAFFIC_WORKER_' || i;
if v_has = 0 then -- nao existe com worker id "i"
DBMS_SCHEDULER.CREATE_JOB(
job_name => 'JOB_TRAFFIC_WORKER_' || i,
job_type => 'PLSQL_BLOCK',
job_action => 'BEGIN pkg_26ai_TRAFFIC_LOAD.proc_process_files(p_limit=>' || p_limit || ',p_worker_id=>' || i || ',p_mimetype=>''' || p_mimetype || ''',p_embedding_name=>''' || p_embedding_name || '''); END;',
start_date => SYSTIMESTAMP,
repeat_interval => 'FREQ=SECONDLY; INTERVAL=2;',
enabled => TRUE
);
else -- cria-se um novo job alem do ultimo
DBMS_SCHEDULER.CREATE_JOB(
job_name => 'JOB_TRAFFIC_WORKER_' || to_char(i+v_job_count),
job_type => 'PLSQL_BLOCK',
job_action => 'BEGIN pkg_26ai_TRAFFIC_LOAD.proc_process_files(p_limit=>' || p_limit || ',p_worker_id=>' || to_char(i+v_job_count) || ',p_mimetype=>''' || p_mimetype || ''',p_embedding_name=>''' || p_embedding_name || '''); END;',
start_date => SYSTIMESTAMP,
repeat_interval => 'FREQ=SECONDLY; INTERVAL=2;',
enabled => TRUE
);
end if;
END LOOP;
-- end if;
END;
end;
/