bio-batch-downloads
This Claude Code skill enables efficient bulk downloading of biomedical sequence records from NCBI's databases by implementing the history server mechanism, which stores search results on NCBI servers rather than requiring repeated transmission of large ID lists. Use it when retrieving hundreds or thousands of sequences, performing production-scale data pipelines, or working with results too large for standard API requests, as it implements proper batching and rate limiting to respect NCBI's server constraints.
git clone --depth 1 https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills /tmp/bio-batch-downloads && cp -r /tmp/bio-batch-downloads/skills/bio-batch-downloads ~/.claude/skills/bio-batch-downloadsSKILL.md
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---
name: bio-batch-downloads
description: Download large datasets from NCBI efficiently using history server, batching, and rate limiting. Use when performing bulk sequence downloads, handling large query results, or production-scale data retrieval.
tool_type: python
primary_tool: Bio.Entrez
measurable_outcome: Execute skill workflow successfully with valid output within 15 minutes.
allowed-tools:
- read_file
- run_shell_command
---
# Batch Downloads
Download large numbers of records from NCBI efficiently using the history server, batching, and proper rate limiting.
## Required Setup
```python
from Bio import Entrez
import time
Entrez.email = 'your.email@example.com' # Required by NCBI
Entrez.api_key = 'your_api_key' # Recommended for large downloads
```
## Rate Limits
| Authentication | Requests/Second | Delay Between |
|---------------|-----------------|---------------|
| Email only | 3 | 0.34 seconds |
| Email + API key | 10 | 0.1 seconds |
Get an API key at: https://www.ncbi.nlm.nih.gov/account/settings/
## History Server
The history server stores search results on NCBI servers, enabling efficient batch retrieval without re-sending large ID lists.
### How It Works
1. Search with `usehistory='y'`
2. Get `WebEnv` (session ID) and `query_key` (result set ID)
3. Fetch results in batches using these identifiers
4. Results stay available for ~15 minutes
```python
# Search with history
handle = Entrez.esearch(db='nucleotide', term='human[orgn] AND mRNA[fkey]', usehistory='y')
search = Entrez.read(handle)
handle.close()
webenv = search['WebEnv']
query_key = search['QueryKey']
total = int(search['Count'])
print(f"Found {total} records, stored in history")
```
## Core Pattern: Batch Download
```python
from Bio import Entrez, SeqIO
import time
Entrez.email = 'your.email@example.com'
def batch_download(db, term, output_file, rettype='fasta', batch_size=500):
# Search with history
handle = Entrez.esearch(db=db, term=term, usehistory='y')
search = Entrez.read(handle)
handle.close()
webenv = search['WebEnv']
query_key = search['QueryKey']
total = int(search['Count'])
print(f"Downloading {total} records...")
with open(output_file, 'w') as out:
for start in range(0, total, batch_size):
print(f" Fetching {start+1}-{min(start+batch_size, total)}...")
handle = Entrez.efetch(
db=db,
rettype=rettype,
retmode='text',
retstart=start,
retmax=batch_size,
webenv=webenv,
query_key=query_key
)
out.write(handle.read())
handle.close()
time.sleep(0.34) # Rate limiting (no API key)
print(f"Saved to {output_file}")
```
## Code Patterns
### Download All Search Results
```python
from Bio import Entrez
import time
Entrez.email = 'your.email@example.com'
Entrez.api_key = 'your_api_key' # Optional
def download_search_results(db, term, output_file, rettype='fasta', batch_size=500):
# Search with history server
handle = Entrez.esearch(db=db, term=term, usehistory='y', retmax=0)
search = Entrez.read(handle)
handle.close()
webenv = search['WebEnv']
query_key = search['QueryKey']
total = int(search['Count'])
if total == 0:
print("No records found")
return
delay = 0.1 if Entrez.api_key else 0.34
with open(output_file, 'w') as out:
for start in range(0, total, batch_size):
end = min(start + batch_size, total)
print(f"Downloading {start+1}-{end} of {total}")
attempts = 3
for attempt in range(attempts):
try:
handle = Entrez.efetch(db=db, rettype=rettype, retmode='text',
retstart=start, retmax=batch_size,
webenv=webenv, query_key=query_key)
out.write(handle.read())
handle.close()
break
except Exception as e:
if attempt < attempts - 1:
print(f" Retry {attempt+1}: {e}")
time.sleep(5)
else:
raise
time.sleep(delay)
print(f"Downloaded {total} records to {output_file}")
download_search_results('nucleotide', 'human[orgn] AND insulin[gene] AND mRNA[fkey]', 'insulin_mrna.fasta')
```
### Download by ID List
```python
def download_by_ids(db, ids, output_file, rettype='fasta', batch_size=200):
total = len(ids)
delay = 0.1 if Entrez.api_key else 0.34
with open(output_file, 'w') as out:
for start in range(0, total, batch_size):
batch = ids[start:start+batch_size]
print(f"Downloading {start+1}-{start+len(batch)} of {total}")
handle = Entrez.efetch(db=db, id=','.join(batch), rettype=rettype, retmode='text')
out.write(handle.read())
handle.close()
time.sleep(delay)
print(f"Downloaded {total} records to {output_file}")
# Example with list of IDs
ids = ['NM_007294', 'NM_000059', 'NM_000546', 'NM_001126112', 'NM_004985']
download_by_ids('nucleotide', ids, 'genes.fasta')
```
### Post IDs to History (EPost)
For very large ID lists, post them to the history server first:
```python
def post_and_download(db, ids, output_file, rettype='fasta', batch_size=500):
# Post IDs to history server
handle = Entrez.epost(db=db, id=','.join(ids))
result = Entrez.read(handle)
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