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Consultas de referência para o data lake Connect Customer - Amazon Connect Customer

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Consultas de referência para o data lake Connect Customer

Este tópico fornece consultas SQL do Athena (motor Trino v3) para calcular métricas comuns do Connect Customer a partir de tabelas de data lake. Todas as consultas usam identificadores entre aspas duplas e assumem um nome de banco de dados. connect_datalake Ajuste o nome do banco de dados para corresponder à configuração do catálogo do Glue.

Substitua <YOUR_INSTANCE_ID> em cada consulta pelo ID da instância do Connect Customer.

Métricas de contato e fila

Taxa de abandono

Definição: Porcentagem de contatos desconectados pelo cliente enquanto estão na fila. Retornos de chamada excluídos.

Tabela de origem: contact_statistic_record

SELECT "queue_id", CAST(SUM("is_abandoned") AS DOUBLE) / NULLIF(SUM("is_queued"), 0) * 100.0 AS "abandonment_rate_pct" FROM "connect_datalake"."contact_statistic_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "queue_id" ORDER BY "abandonment_rate_pct" DESC;

Contatos abandonados

Definição: Contagem de contatos desconectados pelo cliente enquanto aguardam na fila.

Tabela de origem: contact_statistic_record

SELECT "queue_id", SUM("is_abandoned") AS "contacts_abandoned" FROM "connect_datalake"."contact_statistic_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "queue_id";

Contatos abandonados em X segundos

Definição: Contagem de contatos abandonados dentro de X segundos após serem enfileirados.

Tabela de origem: contact_statistic_record

SELECT "queue_id", SUM( CASE WHEN "is_abandoned" = 1 AND "queue_time_ms" <= 30000 THEN 1 ELSE 0 END ) AS "contacts_abandoned_in_30s" FROM "connect_datalake"."contact_statistic_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "queue_id";

Tempo médio de abandono da fila

Definição: Tempo médio de espera dos contatos na fila antes de serem abandonados.

Tabela de origem: contact_statistic_record

SELECT "queue_id", AVG("abandon_time_ms") / 1000.0 AS "avg_queue_abandon_time_sec" FROM "connect_datalake"."contact_statistic_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "is_abandoned" = 1 AND "abandon_time_ms" IS NOT NULL AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "queue_id";

Tempo médio de resposta na fila

Definição: Tempo médio de espera dos contatos na fila antes de serem atendidos por um agente.

Tabela de origem: contact_statistic_record

SELECT "queue_id", AVG("queue_answer_time_ms") / 1000.0 AS "avg_queue_answer_time_sec" FROM "connect_datalake"."contact_statistic_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "is_handled" = 1 AND "queue_answer_time_ms" IS NOT NULL AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "queue_id";

Nível de serviço

Definição: Contagem e porcentagem de contatos respondidos em X segundos.

Tabela de origem: contact_statistic_record

SELECT "queue_id", SUM(CASE WHEN "is_handled" = 1 AND "queue_answer_time_ms" <= 20000 THEN 1 ELSE 0 END) AS "contacts_answered_in_20s", SUM("is_queued") AS "contacts_queued", CAST(SUM(CASE WHEN "is_handled" = 1 AND "queue_answer_time_ms" <= 20000 THEN 1 ELSE 0 END) AS DOUBLE) / NULLIF(SUM("is_queued"), 0) * 100.0 AS "service_level_20s_pct" FROM "connect_datalake"."contact_statistic_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "queue_id";

Contatos na fila

Definição: Contagem de contatos colocados em uma fila.

Tabela de origem: contact_statistic_record

SELECT "queue_id", SUM("is_queued") AS "contacts_queued" FROM "connect_datalake"."contact_statistic_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "queue_id";

Contatos processados

Definição: Contagem de contatos conectados a um agente.

Tabela de origem: contact_statistic_record

SELECT "queue_id", SUM("is_handled") AS "contacts_handled" FROM "connect_datalake"."contact_statistic_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "queue_id";

Contatos transferidos para dentro

Definição: Contatos transferidos para uma fila.

Tabela de origem: contact_statistic_record

SELECT "queue_id", SUM("is_transferred_in") AS "contacts_transferred_in" FROM "connect_datalake"."contact_statistic_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "queue_id";

Contatos transferidos para fora

Definição: Contatos transferidos de uma fila.

Tabela de origem: contact_statistic_record

SELECT "queue_id", SUM("is_transferred_out") AS "contacts_transferred_out", SUM("is_transferred_out_internal") AS "transferred_out_internal", SUM("is_transferred_out_external") AS "transferred_out_external" FROM "connect_datalake"."contact_statistic_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "queue_id";

Tempo máximo em fila

Definição: Maior tempo que qualquer contato passou esperando na fila.

Tabela de origem: contact_record

SELECT "queue_id", MAX("queue_duration_ms") / 1000.0 AS "max_queued_time_sec" FROM "connect_datalake"."contact_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "queue_duration_ms" IS NOT NULL AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "queue_id";

Duração média do contato

Definição: Tempo médio desde o início do contato até a desconexão.

Tabela de origem: contact_record

SELECT "queue_id", AVG( date_diff('millisecond', "initiation_timestamp", "disconnect_timestamp") ) / 1000.0 AS "avg_contact_duration_sec" FROM "connect_datalake"."contact_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "initiation_timestamp" IS NOT NULL AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "queue_id";

Métricas de desempenho do agente

Tempo médio de processamento

Definição: Tempo médio desde a conexão do contato até a conclusão do ACW.

Tabela de origem: contact_statistic_record

SELECT "agent_id", AVG("handle_time_ms") / 1000.0 AS "avg_handle_time_sec" FROM "connect_datalake"."contact_statistic_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "is_handled" = 1 AND "handle_time_ms" IS NOT NULL AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "agent_id";

Tempo de trabalho pós-atendimento

Definição: Tempo total que os agentes passaram no estado ACW.

Tabela de origem: contact_statistic_record

SELECT "agent_id", SUM("after_contact_work_time_ms") / 1000.0 AS "total_acw_time_sec" FROM "connect_datalake"."contact_statistic_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "after_contact_work_time_ms" IS NOT NULL AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "agent_id";

Tempo de espera do cliente

Definição: Tempo total que os clientes passaram em espera após se conectarem ao agente.

Tabela de origem: contact_statistic_record

SELECT "agent_id", SUM("customer_hold_time_ms") / 1000.0 AS "total_hold_time_sec" FROM "connect_datalake"."contact_statistic_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "customer_hold_time_ms" IS NOT NULL AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "agent_id";

Tempo de ociosidade do agente

Definição: Tempo gasto pelo agente no status Disponível sem lidar com contatos.

Tabela de origem: agent_statistic_record

SELECT "user_id" AS "agent_id", SUM("agent_idle_time") / 1000.0 AS "total_idle_time_sec" FROM "connect_datalake"."agent_statistic_record" WHERE "published_date" >= TIMESTAMP '2026-06-09 00:00:00' AND "published_date" < TIMESTAMP '2026-06-10 00:00:00' AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "user_id";

Ocupação

Definição: Porcentagem de tempo em que os agentes estavam ativos nos contatos versus disponíveis e ativos.

Tabela de origem: agent_statistic_record

SELECT "user_id" AS "agent_id", CAST(SUM("agent_on_contact_time") AS DOUBLE) / NULLIF(SUM("agent_on_contact_time") + SUM("agent_idle_time"), 0) * 100.0 AS "occupancy_pct" FROM "connect_datalake"."agent_statistic_record" WHERE "published_date" >= TIMESTAMP '2026-06-09 00:00:00' AND "published_date" < TIMESTAMP '2026-06-10 00:00:00' AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "user_id";

Ausência de resposta do atendente

Definição: Contagem de contatos roteados para o agente, mas não respondidos.

Tabela de origem: agent_queue_statistic_record

SELECT "user_id" AS "agent_id", "queue_id", SUM("agent_non_response") AS "agent_non_response_count" FROM "connect_datalake"."agent_queue_statistic_record" WHERE "published_date" >= TIMESTAMP '2026-06-09 00:00:00' AND "published_date" < TIMESTAMP '2026-06-10 00:00:00' AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "user_id", "queue_id";

Taxa de atendimento do agente

Definição: Porcentagem de contatos roteados respondidos pelo agente.

Tabela de origem: agent_queue_statistic_record

SELECT "user_id" AS "agent_id", CAST(SUM("contacts_handled") AS DOUBLE) / NULLIF(SUM("contacts_offered"), 0) * 100.0 AS "agent_answer_rate_pct" FROM "connect_datalake"."agent_queue_statistic_record" WHERE "published_date" >= TIMESTAMP '2026-06-09 00:00:00' AND "published_date" < TIMESTAMP '2026-06-10 00:00:00' AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "user_id";

Tempo online

Definição: Tempo total em que o agente CCP foi definido para um status diferente de Off-line.

Tabela de origem: agent_statistic_record

SELECT "user_id" AS "agent_id", SUM("online_time") / 1000.0 AS "total_online_time_sec" FROM "connect_datalake"."agent_statistic_record" WHERE "published_date" >= TIMESTAMP '2026-06-09 00:00:00' AND "published_date" < TIMESTAMP '2026-06-10 00:00:00' AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "user_id";

Métricas do chat

Tempo médio da primeira resposta do atendente

Definição: Tempo médio para o agente enviar a primeira mensagem após obter um contato no chat.

Tabela de origem: contact_record

SELECT "queue_id", AVG("chat_contact_metrics_agent_first_response_time_ms") / 1000.0 AS "avg_agent_first_response_sec" FROM "connect_datalake"."contact_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "channel" = 'CHAT' AND "chat_contact_metrics_agent_first_response_time_ms" IS NOT NULL AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "queue_id";

Tempo médio de resposta do atendente

Definição: Tempo médio que os agentes levam para responder às mensagens dos clientes.

Tabela de origem: contact_record

SELECT "queue_id", CAST(SUM("chat_agent_metrics_total_response_time_ms") AS DOUBLE) / NULLIF(SUM("chat_agent_metrics_num_responses"), 0) / 1000.0 AS "avg_agent_response_time_sec" FROM "connect_datalake"."contact_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "channel" = 'CHAT' AND "chat_agent_metrics_total_response_time_ms" IS NOT NULL AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "queue_id";

Média total de mensagens

Definição: Média total de mensagens por contato no chat.

Tabela de origem: contact_record

SELECT "queue_id", AVG(CAST("chat_contact_metrics_total_messages" AS DOUBLE)) AS "avg_total_messages" FROM "connect_datalake"."contact_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "channel" = 'CHAT' AND "chat_contact_metrics_total_messages" IS NOT NULL AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "queue_id";

Conversas abandonadas

Definição: Contatos em que o bate-papo foi abandonado pelo agente ou cliente.

Tabela de origem: contact_record

SELECT "queue_id", COUNT(*) AS "conversations_abandoned" FROM "connect_datalake"."contact_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "channel" = 'CHAT' AND ("chat_agent_metrics_conversation_abandon" = true OR "chat_customer_metrics_conversation_abandon" = true) AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "queue_id";

Métricas de análise de conversação

Tempo médio de conversa

Definição: Tempo médio combinado de conversação entre agentes e clientes por contato de voz.

Tabela de origem: contact_lens_conversational_analytics

SELECT AVG("talk_time_total_ms") / 1000.0 AS "avg_talk_time_sec" FROM "connect_datalake"."contact_lens_conversational_analytics" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "channel" = 'VOICE' AND "instance_id" = '<YOUR_INSTANCE_ID>';

Tempo médio sem conversa

Definição: Tempo médio de espera mais o tempo de silêncio por contato de voz.

Tabela de origem: contact_lens_conversational_analytics

SELECT AVG("non_talk_time_total_ms") / 1000.0 AS "avg_non_talk_time_sec" FROM "connect_datalake"."contact_lens_conversational_analytics" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "channel" = 'VOICE' AND "instance_id" = '<YOUR_INSTANCE_ID>';

Pontuações de sentimento

Definição: pontuações gerais de sentimento para agente e cliente.

Tabela de origem: contact_lens_conversational_analytics

SELECT AVG("sentiment_overall_score_agent") AS "avg_agent_sentiment", AVG("sentiment_overall_score_customer") AS "avg_customer_sentiment", AVG("sentiment_end_score_agent") AS "avg_agent_end_sentiment", AVG("sentiment_end_score_customer") AS "avg_customer_end_sentiment" FROM "connect_datalake"."contact_lens_conversational_analytics" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "instance_id" = '<YOUR_INSTANCE_ID>';

Média de interrupções do atendente

Definição: Contagem média de interrupções do agente por contato.

Tabela de origem: contact_lens_conversational_analytics

SELECT AVG(CAST("interruptions_agent_count" AS DOUBLE)) AS "avg_agent_interruptions" FROM "connect_datalake"."contact_lens_conversational_analytics" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "channel" = 'VOICE' AND "instance_id" = '<YOUR_INSTANCE_ID>';

Métricas de agentes de IA

Taxa de sucesso de invocação de agentes de IA

Definição: Taxa de invocações bem-sucedidas do AI Agent.

Tabela de origem: ai_agent

SELECT "ai_agent_name", SUM(CASE WHEN "invocation_success" = true THEN 1 ELSE 0 END) AS "success_count", COUNT(*) AS "total_invocations", CAST(SUM(CASE WHEN "invocation_success" = true THEN 1 ELSE 0 END) AS DOUBLE) / NULLIF(COUNT(*), 0) * 100.0 AS "success_rate_pct" FROM "connect_datalake"."ai_agent" WHERE "creation_timestamp" >= CAST('2026-06-09' AS TIMESTAMP) * 1000 AND "instance_id" = '<YOUR_INSTANCE_ID>' AND "ai_agent_id" IS NOT NULL GROUP BY "ai_agent_name";

Taxa de transferência de IA

Definição: Taxa de sessões de IA que foram escaladas para agentes humanos.

Tabela de origem: ai_session

SELECT SUM(CASE WHEN "is_handed_off" = true THEN 1 ELSE 0 END) AS "ai_handoffs", COUNT(*) AS "ai_involved_contacts", CAST(SUM(CASE WHEN "is_handed_off" = true THEN 1 ELSE 0 END) AS DOUBLE) / NULLIF(COUNT(*), 0) * 100.0 AS "handoff_rate_pct" FROM "connect_datalake"."ai_session" WHERE "creation_timestamp" >= CAST('2026-06-09' AS TIMESTAMP) * 1000 AND "instance_id" = '<YOUR_INSTANCE_ID>' AND "ai_session_id" IS NOT NULL;

Pontuações de qualidade de IA

Definição: Pontuação média de sucesso, fidelidade e completude de gols.

Tabela de origem: ai_session

SELECT AVG("goal_success_rate") AS "avg_goal_success_rate", AVG("faithfulness_score") AS "avg_faithfulness_score", AVG("completeness_score") AS "avg_completeness_score" FROM "connect_datalake"."ai_session" WHERE "creation_timestamp" >= CAST('2026-06-09' AS TIMESTAMP) * 1000 AND "instance_id" = '<YOUR_INSTANCE_ID>' AND "goal_success_rate" IS NOT NULL;

Precisão da ferramenta de IA

Definição: pontuações de precisão para uso, seleção e utilização de parâmetros da ferramenta de IA.

Tabela de origem: ai_tool

SELECT "ai_tool_name", AVG("ai_tool_parameter_accuracy") AS "avg_parameter_accuracy", AVG("ai_tool_selection_accuracy") AS "avg_selection_accuracy", AVG("ai_tool_utilization_accuracy") AS "avg_use_accuracy" FROM "connect_datalake"."ai_tool" WHERE "creation_timestamp" >= CAST('2026-06-09' AS TIMESTAMP) * 1000 AND "instance_id" = '<YOUR_INSTANCE_ID>' AND "ai_tool_id" IS NOT NULL GROUP BY "ai_tool_name";

Métricas de fluxo

Fluxos iniciados

Definição: Contagem dos fluxos que iniciaram a execução.

Tabela de origem: contact_flow_events

SELECT "flow_resource_id", "flow_type", COUNT(*) AS "flows_started" FROM "connect_datalake"."contact_flow_events" WHERE "start_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "start_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "flow_resource_id", "flow_type";

Porcentagem do resultado do fluxo

Definição: Porcentagem de cada tipo de resultado de fluxo.

Tabela de origem: contact_flow_events

WITH flow_counts AS ( SELECT "flow_resource_id", "flow_outcome", COUNT(*) AS "outcome_count", SUM(COUNT(*)) OVER (PARTITION BY "flow_resource_id") AS "total_completed" FROM "connect_datalake"."contact_flow_events" WHERE "start_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "start_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "end_timestamp" IS NOT NULL AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "flow_resource_id", "flow_outcome" ) SELECT "flow_resource_id", "flow_outcome", "outcome_count", CAST("outcome_count" AS DOUBLE) / "total_completed" * 100.0 AS "outcome_pct" FROM flow_counts ORDER BY "flow_resource_id", "outcome_pct" DESC;

Tempo médio de fluxo

Definição: Duração média das execuções de fluxo.

Tabela de origem: contact_flow_events

SELECT "flow_resource_id", AVG( date_diff('millisecond', "start_timestamp", "end_timestamp") ) / 1000.0 AS "avg_flow_time_sec" FROM "connect_datalake"."contact_flow_events" WHERE "start_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "start_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "end_timestamp" IS NOT NULL AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "flow_resource_id";

Métricas de avaliação

Avaliações realizadas

Definição: Número de avaliações enviadas.

Tabela de origem: contact_evaluation_record

SELECT COUNT(DISTINCT "evaluation_id") AS "evaluations_performed" FROM "connect_datalake"."contact_evaluation_record" WHERE "evaluation_submitted_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "evaluation_submitted_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "item_type" = 'Form' AND "to_delete" = false AND ("evaluation_type" IS NULL OR "evaluation_type" != 'calibration') AND "instance_id" = '<YOUR_INSTANCE_ID>';

Pontuação de avaliação média

Definição: Pontuação média da avaliação em todas as avaliações enviadas.

Tabela de origem: contact_evaluation_record

SELECT AVG("score") AS "avg_evaluation_score_pct" FROM "connect_datalake"."contact_evaluation_record" WHERE "evaluation_submitted_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "evaluation_submitted_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "item_type" = 'Form' AND "to_delete" = false AND ("evaluation_type" IS NULL OR "evaluation_type" != 'calibration') AND "instance_id" = '<YOUR_INSTANCE_ID>';

Porcentagem de falhas automáticas

Definição: Porcentagem de avaliações que acionaram a falha automática.

Tabela de origem: contact_evaluation_record

SELECT CAST( COUNT(DISTINCT CASE WHEN "automatic_fail" = true THEN "evaluation_id" END) AS DOUBLE ) / NULLIF(COUNT(DISTINCT "evaluation_id"), 0) * 100.0 AS "automatic_fail_pct" FROM "connect_datalake"."contact_evaluation_record" WHERE "evaluation_submitted_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "evaluation_submitted_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "item_type" = 'Form' AND "to_delete" = false AND ("evaluation_type" IS NULL OR "evaluation_type" != 'calibration') AND "instance_id" = '<YOUR_INSTANCE_ID>';

Métricas da campanha externa

Contatos da campanha

Definição: Contagem de contatos externos da campanha.

Tabela de origem: contact_record

SELECT "campaign_id", COUNT(*) AS "campaign_contacts" FROM "connect_datalake"."contact_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "campaign_id" IS NOT NULL AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "campaign_id";

Resposta humana

Definição: Chamadas externas de campanha conectadas a um cliente ativo.

Tabela de origem: contact_record

SELECT "campaign_id", COUNT(*) AS "human_answered" FROM "connect_datalake"."contact_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "campaign_id" IS NOT NULL AND "answering_machine_detection_status" = 'HUMAN_ANSWERED' AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "campaign_id";

Métricas de casos

Casos criados

Definição: Total de casos criados em um período de tempo.

Tabela de origem: case_events

SELECT COUNT(DISTINCT "case_id") AS "cases_created" FROM "connect_datalake"."case_events" WHERE "event_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "event_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "event_type" = 'CASE.CREATED' AND "instance_id" = '<YOUR_INSTANCE_ID>';

Tempo médio de resolução de caso

Definição: Tempo médio desde a criação do caso até o encerramento.

Tabela de origem: case_events

SELECT AVG( date_diff('hour', "created_timestamp", "last_closed_timestamp") ) AS "avg_resolution_time_hours" FROM "connect_datalake"."case_events" WHERE "last_closed_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "last_closed_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "created_timestamp" IS NOT NULL AND "instance_id" = '<YOUR_INSTANCE_ID>';

Métricas de bots

Resultados da conversa do bot

Definição: Detalhamento percentual dos resultados da conversa do bot.

Tabela de origem: bot_conversations

WITH bot_outcomes AS ( SELECT "bot_id", "bot_conversation_outcome", COUNT(*) AS "cnt", SUM(COUNT(*)) OVER (PARTITION BY "bot_id") AS "total" FROM "connect_datalake"."bot_conversations" WHERE "bot_conversation_start_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "bot_conversation_start_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "bot_id", "bot_conversation_outcome" ) SELECT "bot_id", "bot_conversation_outcome", "cnt", CAST("cnt" AS DOUBLE) / "total" * 100.0 AS "outcome_pct" FROM bot_outcomes;

Padrões de consulta comuns

Os padrões a seguir mostram como combinar várias tabelas de data lake para criar painéis e relatórios abrangentes.

Painel de resumo diário

Definição: métricas abrangentes de filas diárias, incluindo nível de serviço.

Tabela de origem: contact_statistic_record

SELECT "queue_id", SUM("is_queued") AS "contacts_queued", SUM("is_handled") AS "contacts_handled", SUM("is_abandoned") AS "contacts_abandoned", AVG(CASE WHEN "is_handled" = 1 THEN "queue_answer_time_ms" END) / 1000.0 AS "avg_answer_time_sec", AVG(CASE WHEN "is_handled" = 1 THEN "handle_time_ms" END) / 1000.0 AS "avg_handle_time_sec", CAST(SUM(CASE WHEN "is_handled" = 1 AND "queue_answer_time_ms" <= 20000 THEN 1 ELSE 0 END) AS DOUBLE) / NULLIF(SUM("is_queued"), 0) * 100.0 AS "sl_20s_pct" FROM "connect_datalake"."contact_statistic_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY "queue_id" ORDER BY "contacts_queued" DESC;

Análise de tendências horárias

Definição: Volume de contatos por hora e tendências de nível de serviço.

Tabela de origem: contact_statistic_record

SELECT date_trunc('hour', "disconnect_timestamp") AS "hour", "queue_id", SUM("is_queued") AS "contacts_queued", SUM("is_handled") AS "contacts_handled", SUM("is_abandoned") AS "contacts_abandoned", CAST(SUM("is_abandoned") AS DOUBLE) / NULLIF(SUM("is_queued"), 0) * 100.0 AS "abandon_rate_pct", AVG(CASE WHEN "is_handled" = 1 THEN "handle_time_ms" END) / 1000.0 AS "aht_sec" FROM "connect_datalake"."contact_statistic_record" WHERE "disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND "disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND "instance_id" = '<YOUR_INSTANCE_ID>' GROUP BY date_trunc('hour', "disconnect_timestamp"), "queue_id" ORDER BY "hour";

Contatos enriquecidos com lentes de contato

Definição: Enriqueça os registros de contato com a análise de lentes de contato.

Tabela de origem: contact_record unida com contact_lens_conversational_analytics

SELECT cr."contact_id", cr."queue_id", cr."agent_id", cr."agent_interaction_duration_ms" / 1000.0 AS "interaction_sec", cl."talk_time_agent_ms" / 1000.0 AS "agent_talk_sec", cl."talk_time_customer_ms" / 1000.0 AS "customer_talk_sec", cl."sentiment_overall_score_agent", cl."sentiment_overall_score_customer" FROM "connect_datalake"."contact_record" cr JOIN "connect_datalake"."contact_lens_conversational_analytics" cl ON cr."contact_id" = cl."contact_id" AND cr."instance_id" = cl."instance_id" WHERE cr."disconnect_timestamp" >= TIMESTAMP '2026-06-09 00:00:00' AND cr."disconnect_timestamp" < TIMESTAMP '2026-06-10 00:00:00' AND cr."instance_id" = '<YOUR_INSTANCE_ID>' AND cr."channel" = 'VOICE';

Adesão ao cronograma do agente (nível de atividade)

Definição: compara o estado real da atividade de um agente (deagent_statistic_record) com suas atividades de turno programadas (das tabelas de agendamento) para cada intervalo de tempo em um dia. Produz uma determinação de adesão por intervalo: IN (o agente estava fazendo o que estava programado para fazer) ou OUT (não estava).

Colunas de saída: agente, data, início, fim, atividade agendada, atividade real, estado de adesão, duração

Tabelas de origem:

  • staff_shifts— Turnos de agente do dia (versão mais recente não excluída)

  • staff_shift_activities— Blocos de atividades programadas em cada turno

  • shift_activities— Pesquisa do nome da atividade (mapeia o ARN para um nome legível por humanos)

  • agent_statistic_record— Estado real do agente por intervalo

  • users— Nome do agente e resolução de ARN

Lógica de adesão (simplificada):

  • “Aberto” agendado — o agente está ATIVADO se o status for Disponível, Em contato ou ACW

  • “Pausa” programada — o agente entra se o status for Pausa ou Almoço

  • “Reunião” agendada — o agente está ATIVO se o status for Treinamento ou Reunião

  • Caso contrário — FORA

WITH latest_shift_versions AS ( -- Get the latest (non-deleted) shift version per shift_id SELECT shift_id, MAX(shift_version) AS max_version FROM "connect_datalake"."staff_shifts" WHERE is_deleted = false AND CAST(shift_start_timestamp AS DATE) = DATE '2026-06-10' -- SET REPORT DATE GROUP BY shift_id ), latest_shifts AS ( SELECT ss.shift_id, ss.agent_arn, ss.shift_start_timestamp, ss.shift_end_timestamp FROM "connect_datalake"."staff_shifts" ss INNER JOIN latest_shift_versions lsv ON ss.shift_id = lsv.shift_id AND ss.shift_version = lsv.max_version WHERE ss.is_deleted = false ), -- Get scheduled activity blocks with human-readable activity names scheduled_blocks AS ( SELECT ls.agent_arn, ssa.activity_start_timestamp, ssa.activity_end_timestamp, sa.shift_activity_name, CASE WHEN sa.shift_activity_name IN ('Work', 'Overtime') THEN 'Open' WHEN sa.shift_activity_name IN ('Break', 'Lunch') THEN 'Break' WHEN sa.shift_activity_name = 'Training' THEN 'Meeting' WHEN sa.shift_activity_name = 'PTO' THEN 'PTO' ELSE sa.shift_activity_name END AS scheduled_activity_label FROM "connect_datalake"."staff_shift_activities" ssa INNER JOIN latest_shifts ls ON ssa.shift_id = ls.shift_id INNER JOIN latest_shift_versions lsv ON ssa.shift_id = lsv.shift_id AND ssa.shift_version = lsv.max_version INNER JOIN "connect_datalake"."shift_activities" sa ON ssa.shift_activity_arn = sa.shift_activity_arn WHERE ssa.is_deleted = false ), -- Get actual agent state intervals for the day actual_states AS ( SELECT u.user_arn AS agent_arn, u.first_name, u.last_name, asr.interval_start_time, asr.interval_end_time, asr.agent_status_name, asr.online_time, asr.agent_idle_time, asr.agent_on_contact_time, asr.non_productive_time, CASE WHEN asr.agent_on_contact_time IS NOT NULL AND asr.agent_on_contact_time > 0 THEN 'On Inbound Call' WHEN asr.agent_idle_time IS NOT NULL AND asr.agent_idle_time > 0 THEN 'Available' WHEN asr.non_productive_time IS NOT NULL AND asr.non_productive_time > 0 THEN COALESCE(asr.agent_status_name, 'Non-Productive') WHEN asr.online_time IS NOT NULL AND asr.online_time > 0 THEN 'Available' ELSE COALESCE(asr.agent_status_name, 'Offline') END AS actual_activity_label FROM "connect_datalake"."agent_statistic_record" asr INNER JOIN "connect_datalake"."users" u ON asr.user_id = u.user_id WHERE asr.interval_start_time >= TIMESTAMP '2026-06-10 00:00:00' -- SET REPORT DATE (UTC) AND asr.interval_start_time < TIMESTAMP '2026-06-11 00:00:00' ), -- Join actual states with scheduled blocks activity_timeline AS ( SELECT act.first_name || ' ' || act.last_name AS agent_name, act.interval_start_time, act.interval_end_time, act.actual_activity_label, act.agent_status_name, COALESCE(sb.scheduled_activity_label, 'Open') AS scheduled_activity FROM actual_states act LEFT JOIN scheduled_blocks sb ON act.agent_arn = sb.agent_arn AND act.interval_start_time < sb.activity_end_timestamp AND act.interval_end_time > sb.activity_start_timestamp ) SELECT agent_name AS "AGENT", CAST(interval_start_time AS DATE) AS "DATE", DATE_FORMAT(interval_start_time, '%H:%i:%s') AS "BEGIN", DATE_FORMAT(interval_end_time, '%H:%i:%s') AS "END", scheduled_activity AS "SCHEDULED ACTIVITY", actual_activity_label AS "ACTUAL ACTIVITY", CASE WHEN scheduled_activity = 'Open' AND actual_activity_label IN ('Available', 'On Inbound Call', 'On Outbound Call', 'Call Ringing', 'Aftercall (ACW)') THEN 'IN' WHEN scheduled_activity = 'Break' AND agent_status_name IN ('Break', 'Lunch') THEN 'IN' WHEN scheduled_activity = 'Meeting' AND agent_status_name IN ('Training', 'Meeting') THEN 'IN' ELSE 'OUT' END AS "ADHERENCE STATE", CAST(DATE_DIFF('second', interval_start_time, interval_end_time) / 3600 AS VARCHAR) || ':' || LPAD(CAST((DATE_DIFF('second', interval_start_time, interval_end_time) % 3600) / 60 AS VARCHAR), 2, '0') || ':' || LPAD(CAST(DATE_DIFF('second', interval_start_time, interval_end_time) % 60 AS VARCHAR), 2, '0') AS "DURATION" FROM activity_timeline ORDER BY interval_start_time ASC;

Práticas recomendadas

  • Remoção de partições — sempre inclua filtros de partição (disconnect_timestamp,published_date, oucreation_timestamp) para minimizar os custos de digitalização.

  • Desduplicação — o Connect Customer entrega registros pelo menos uma vez. Use DISTINCT em chaves primárias quando forem necessárias contagens exatas.

  • Fusos horários — Todos os timestamps estão em UTC. Inscreva-se AT TIME ZONE para receber relatórios locais.

  • Milissegundos — A maioria dos campos de duração é armazenada em milissegundos. Divida por 1000,0 por segundos.

  • Filtro de ID de instância — Sempre filtre por instance_id em ambientes com várias instâncias.

  • Real-time métricas — Para obter métricas reais em tempo real, use a GetCurrentMetricData API. O data lake fornece somente dados históricos.