CocoIndex and CocoInsight have added a Query mode. The result is directly linked and can be traced back step by step to how data is generated on the indexing path.CocoIndex and CocoInsight have added a Query mode. The result is directly linked and can be traced back step by step to how data is generated on the indexing path.

Developers Gain Direct Insight Into Data Flows With CocoIndex Update

We are launching a major feature in both CocoIndex and CocoInsight to help users fast iterate with the indexing strategy, and trace back all the way to the data — to make the transformation experience more seamlessly integrated with the end goal. With the new launch, you can define query handlers, so that you can easily run queries in tools like CocoInsight.

Checkout CocoIndex - https://github.com/cocoindex-io/cocoindex

CocoInsight

Does my data transformation creates meaningful index for retrieval?

In CocoInsight, we’ve added a Query mode. You can enable this by adding a CocoIndex Query Handler. You can quickly query index, and view the collected information for any entity.

Query mode

\ The result is directly linked and can be traced back step by step to how data is generated on the indexing path.

Where are the results coming from?

For example, this snippet comes from the file docs/docs/core/flow_def.mdx . The file was split into 30 chunks after transformation.

trace back data

Why is my chunk / snippet not showing in the search result?

When you perform a query, on the ranking path, you’d usually have a scoring mechanism. On the CocoInsight, you can quickly find any files you have in your mind, and for any chunks, you can scan the scoring in the same context.

Missing chunks

This gives you a powerful toolset with direct insight to end to end data transformation, to quickly iterate data indexing strategy without any headaches of building any additional UI or tools.

Integrate Query Logic with CocoIndex

Query Handler

To run queries in CocoInsight, you need to define query handlers. You can use any libraries or frameworks of your choice to perform queries.

You can read more in the documentation about Query Handler.

Query handlers let you expose a simple function that takes a query string and returns structured results. They are discoverable by tools like CocoInsight so you can query your indexes without building your own UI.

For example:

# Declaring it as a query handler, so that you can easily run queries in CocoInsight. @code_embedding_flow.query_handler(     result_fields=cocoindex.QueryHandlerResultFields(         embedding=["embedding"], score="score"     ) ) def search(query: str) -> cocoindex.QueryOutput:     # Get the table name, for the export target in the code_embedding_flow above.     table_name = cocoindex.utils.get_target_default_name(         code_embedding_flow, "code_embeddings"     )     # Evaluate the transform flow defined below with the input query, to get the embedding.     query_vector = code_to_embedding.eval(query)     # Run the query and get the results.     with connection_pool().connection() as conn:         register_vector(conn)         with conn.cursor() as cur:             cur.execute(                 f"""                 SELECT filename, code, embedding, embedding <=> %s AS distance, start, "end"                 FROM {table_name} ORDER BY distance LIMIT %s             """,                 (query_vector, TOP_K),             )             return cocoindex.QueryOutput(                 query_info=cocoindex.QueryInfo(                     embedding=query_vector,                     similarity_metric=cocoindex.VectorSimilarityMetric.COSINE_SIMILARITY,                 ),                 results=[                     {                         "filename": row[0],                         "code": row[1],                         "embedding": row[2],                         "score": 1.0 - row[3],                         "start": row[4],                         "end": row[5],                     }                     for row in cur.fetchall()                 ],             ) 

This code defines a query handler that:

  1. Turns the input query into an embedding vector. code_to_embedding is a shared transformation flow between Query and Index path, see detailed explanation below.
  2. Searches a database of code embeddings using cosine similarity.
  3. Returns the top matching code snippets with their filename, code, embedding, score, and positions.

Sharing Logic Between Indexing and Query

Sometimes, transformation logic needs to be shared between indexing and querying, e.g. when we build a vector index and query against it, the embedding computation needs to be consistent between indexing and querying.

You can find the documentation about Transformation Flow.

You can use @cocoindex.transform_flow() to define shared logic. For example

@cocoindex.transform_flow() def text_to_embedding(text: cocoindex.DataSlice[str]) -> cocoindex.DataSlice[NDArray[np.float32]]:     return text.transform(         cocoindex.functions.SentenceTransformerEmbed(             model="sentence-transformers/all-MiniLM-L6-v2")) 

In your indexing flow, you can directly call it

with doc["chunks"].row() as chunk:     chunk["embedding"] = text_to_embedding(chunk["text"]) 

In your query logic, you can call the eval() method with a specific value

def search(query: str) -> cocoindex.QueryOutput:     # Evaluate the transform flow defined below with the input query, to get the embedding.     query_vector = code_to_embedding.eval(query) 

Examples

  • Text Embedding (PostgreSQL)
  • Text Embedding (Qdrant)
  • Code Embedding

Beyond Vector Index

We use vector index in this blog. CocoIndex is a powerful data transformation framework that is beyond vector index. You can use it to build vector index, knowledge graph, structured extraction and transformation and any custom logic towards your need on efficient retrieval from fresh data.

Support Us

We’re constantly adding more examples and improving our runtime. ⭐ Star CocoIndex on GitHub and share the love ❤️ !

And let us know what are you building with CocoIndex — we’d love to feature them.

Market Opportunity
Griffin AI Logo
Griffin AI Price(GAIN)
$0.002927
$0.002927$0.002927
-3.14%
USD
Griffin AI (GAIN) Live Price Chart
Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact service@support.mexc.com for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.

You May Also Like

US Congress Proposes AI Export Oversight Bill

US Congress Proposes AI Export Oversight Bill

US Congress introduces bipartisan bill for AI chip export oversight, affecting Nvidia and Trump policies.
Share
bitcoininfonews2026/01/22 21:02
Ubisoft (UBI) Stock: Restructuring Efforts and Game Cancellations Prompt 33% Dip

Ubisoft (UBI) Stock: Restructuring Efforts and Game Cancellations Prompt 33% Dip

TLDR Ubisoft’s stock dropped 33% following organizational changes and the cancellation of six games. The company plans to shut down studios in Halifax and Stockholm
Share
Blockonomi2026/01/22 20:50
This U.S. politician’s suspicious stock trade just returned over 200% in weeks

This U.S. politician’s suspicious stock trade just returned over 200% in weeks

The post This U.S. politician’s suspicious stock trade just returned over 200% in weeks appeared on BitcoinEthereumNews.com. United States Representative Cloe Fields has seen his stake in Opendoor Technologies (NASDAQ: OPEN) stock return over 200% in just a matter of weeks. According to congressional trade filings, the lawmaker purchased a stake in the online real estate company on July 21, 2025, investing between $1,001 and $15,000. At the time, the stock was trading around $2 and had been largely stagnant for months. Receive Signals on US Congress Members’ Stock Trades Stocks Stay up-to-date on the trading activity of US Congress members. The signal triggers based on updates from the House disclosure reports, notifying you of their latest stock transactions. Enable signal The trade has since paid off, with Opendoor surging to $10, a gain of nearly 220% in under two months. By comparison, the broader S&P 500 index rose less than 5% during the same period. OPEN one-week stock price chart. Source: Finbold Assuming he invested a minimum of $1,001, the purchase would now be worth about $3,200, while a $15,000 stake would have grown to nearly $48,000, generating profits of roughly $2,200 and $33,000, respectively. OPEN’s stock rally Notably, Opendoor’s rally has been fueled by major corporate shifts and market speculation. For instance, in August, the company named former Shopify COO Kaz Nejatian as CEO, while co-founders Keith Rabois and Eric Wu rejoined the board, moves seen as a return to the company’s early innovative spirit.  Outgoing CEO Carrie Wheeler’s resignation and sale of millions in stock reinforced the sense of a new chapter. Beyond leadership changes, Opendoor’s surge has taken on meme-stock characteristics. In this case, retail investors piled in as shares climbed, while short sellers scrambled to cover, pushing prices higher.  However, the stock is still not without challenges, where its iBuying model is untested at scale, margins are thin, and debt tied to…
Share
BitcoinEthereumNews2025/09/18 04:02